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213 lines
109 KiB
Markdown
213 lines
109 KiB
Markdown
# Scientific Skills
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## Scientific Databases
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- **AlphaFold DB** - Comprehensive AI-predicted protein structure database from DeepMind providing 200M+ high-confidence protein structure predictions covering UniProt reference proteomes and beyond. Includes confidence metrics (pLDDT for per-residue confidence, PAE for pairwise accuracy estimates), structure quality assessment, predicted aligned error matrices, and multiple structure formats (PDB, mmCIF, AlphaFold DB format). Supports programmatic access via REST API, bulk downloads through Google Cloud Storage, and integration with structural analysis tools. Enables structure-based drug discovery, protein function prediction, structural genomics, comparative modeling, and structural bioinformatics research without experimental structure determination
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- **BRENDA** - World's most comprehensive enzyme information system containing detailed enzyme data from scientific literature. Query kinetic parameters (Km, kcat, Vmax), reaction equations, substrate specificities, organism information, and optimal conditions for 45,000+ enzymes with millions of kinetic data points via SOAP API. Supports enzyme discovery by substrate/product, cross-organism comparisons, environmental parameter analysis (pH, temperature optima), cofactor requirements, inhibition/activation data, and thermophilic homolog identification. Includes helper scripts for parsing BRENDA response formats, visualization of kinetic parameters, and enzymatic pathway construction. Use cases: metabolic engineering, enzyme engineering and optimization, kinetic modeling, retrosynthesis planning, industrial enzyme selection, and biochemical research requiring comprehensive enzyme kinetic data
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- **ChEMBL** - Comprehensive manually curated database of bioactive molecules with drug-like properties maintained by EMBL-EBI. Contains 2M+ unique compounds, 19M+ bioactivity measurements, 13K+ protein targets, and 1.1M+ assays from 90K+ publications. Provides detailed compound information including chemical structures (SMILES, InChI), bioactivity data (IC50, EC50, Ki, Kd values), target information (protein families, pathways), ADMET properties, drug indications, clinical trial data, and patent information. Features REST API access, web interface, downloadable data files, and integration with other databases (UniProt, PubChem, DrugBank). Use cases: drug discovery, target identification, lead optimization, bioactivity prediction, chemical biology research, and drug repurposing
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- **ClinPGx** - Clinical pharmacogenomics database (successor to PharmGKB) providing gene-drug interactions, CPIC clinical guidelines, allele functions, drug labels, and pharmacogenomic annotations for precision medicine and personalized pharmacotherapy (consolidates PharmGKB, CPIC, and PharmCAT resources)
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- **ClinVar** - NCBI's public archive of genomic variants and their clinical significance with standardized classifications (pathogenic, benign, VUS), E-utilities API access, and bulk FTP downloads for variant interpretation and precision medicine research
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- **ClinicalTrials.gov** - Comprehensive registry of clinical studies conducted worldwide (maintained by U.S. National Library of Medicine) with API v2 access for searching trials by condition, intervention, location, sponsor, study status, and phase; retrieve detailed trial information including eligibility criteria, outcomes, contacts, and locations; export to CSV/JSON formats for analysis (public API, no authentication required, ~50 req/min rate limit)
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- **COSMIC** - Catalogue of Somatic Mutations in Cancer, the world's largest database of somatic cancer mutations (millions of mutations across thousands of cancer types, Cancer Gene Census, mutational signatures, structural variants, and drug resistance data)
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- **DrugBank** - Comprehensive bioinformatics and cheminformatics database containing detailed drug and drug target information (9,591+ drug entries including 2,037 FDA-approved small molecules, 241 biotech drugs, 96 nutraceuticals, 6,000+ experimental compounds) with 200+ data fields per entry covering chemical structures (SMILES, InChI), pharmacology (mechanism of action, pharmacodynamics, ADME), drug-drug interactions, protein targets (enzymes, transporters, carriers), biological pathways, external identifiers (PubChem, ChEMBL, UniProt), and physicochemical properties for drug discovery, pharmacology research, interaction analysis, target identification, chemical similarity searches, and ADMET predictions
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- **ENA (European Nucleotide Archive)** - Comprehensive public repository for nucleotide sequence data and metadata with REST APIs for accessing sequences, assemblies, samples, studies, and reads; supports advanced search, taxonomy lookups, and bulk downloads via FTP/Aspera (rate limit: 50 req/sec)
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- **Ensembl** - Genome browser and bioinformatics database providing genomic annotations, sequences, variants, and comparative genomics data for 250+ vertebrate species (Release 115, 2025) with comprehensive REST API for gene lookups, sequence retrieval, variant effect prediction (VEP), ortholog finding, assembly mapping (GRCh37/GRCh38), and region analysis
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- **FDA Databases** - Comprehensive access to all FDA (Food and Drug Administration) regulatory databases through openFDA API covering drugs (adverse events, labeling, NDC, recalls, approvals, shortages), medical devices (adverse events, 510k clearances, PMA, UDI, classifications), foods (recalls, adverse events, allergen tracking), animal/veterinary medicines (species-specific adverse events), and substances (UNII/CAS lookup, chemical structures, molecular data) for drug safety research, pharmacovigilance, regulatory compliance, and scientific analysis
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- **GEO (Gene Expression Omnibus)** - NCBI's comprehensive public repository for high-throughput gene expression and functional genomics data. Contains 264K+ studies, 8M+ samples, and petabytes of data from microarray, RNA-seq, ChIP-seq, ATAC-seq, and other high-throughput experiments. Provides standardized data submission formats (MINIML, SOFT), programmatic access via Entrez Programming Utilities (E-utilities) and GEOquery R package, bulk FTP downloads, and web-based search and retrieval. Supports data mining, meta-analysis, differential expression analysis, and cross-study comparisons. Includes curated datasets, series records with experimental design, platform annotations, and sample metadata. Use cases: gene expression analysis, biomarker discovery, disease mechanism research, drug response studies, and functional genomics research
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- **GWAS Catalog** - NHGRI-EBI catalog of published genome-wide association studies with curated SNP-trait associations (thousands of studies, genome-wide significant associations p≤5×10⁻⁸), full summary statistics, REST API access for variant/trait/gene queries, and FTP downloads for genetic epidemiology and precision medicine research
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- **HMDB (Human Metabolome Database)** - Comprehensive metabolomics resource with 220K+ metabolite entries, detailed chemical/biological data, concentration ranges, disease associations, pathways, and spectral data for metabolite identification and biomarker discovery
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- **KEGG** - Kyoto Encyclopedia of Genes and Genomes, comprehensive database resource integrating genomic, chemical, and systemic functional information. Provides pathway databases (KEGG PATHWAY with 500+ reference pathways, metabolic pathways, signaling pathways, disease pathways), genome databases (KEGG GENES with gene catalogs from 5,000+ organisms), chemical databases (KEGG COMPOUND, KEGG DRUG, KEGG GLYCAN), and disease/drug databases (KEGG DISEASE, KEGG DRUG). Features pathway enrichment analysis, gene-to-pathway mapping, compound searches, molecular interaction networks, ortholog identification (KO - KEGG Orthology), ID conversion across databases, and visualization tools. Supports REST API access, KEGG Mapper for pathway mapping, and integration with bioinformatics tools. Use cases: pathway enrichment analysis, metabolic pathway reconstruction, drug target identification, comparative genomics, systems biology, and functional annotation of genes
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- **Metabolomics Workbench** - NIH Common Fund metabolomics data repository with 4,200+ processed studies, standardized nomenclature (RefMet), mass spectrometry searches, and comprehensive REST API for accessing metabolite structures, study metadata, experimental results, and gene/protein-metabolite associations
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- **OpenAlex** - Comprehensive open catalog of 240M+ scholarly works, authors, institutions, topics, sources, publishers, and funders. Provides complete bibliometric database for academic literature search, citation analysis, research trend tracking, author publication discovery, institution research output analysis, and open access paper identification. Features REST API with no authentication required (100k requests/day, 10 req/sec with email), advanced filtering (publication year, citations, open access status, topics, authors, institutions), aggregation/grouping capabilities, random sampling for research studies, batch ID lookups (DOI, ORCID, ROR, ISSN), and comprehensive metadata (titles, abstracts, citations, authorships, topics, funding). Supports literature reviews, bibliometric analysis, research output evaluation, citation network analysis, and academic database queries across all scientific domains
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- **Open Targets** - Comprehensive therapeutic target identification and validation platform integrating genetics, omics, and chemical data (200M+ evidence strings, target-disease associations with scoring, tractability assessments, safety liabilities, known drugs from ChEMBL, GraphQL API) for drug target discovery, prioritization, evidence evaluation, drug repurposing, competitive intelligence, and mechanism research
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- **NCBI Gene** - Comprehensive gene-specific database from NCBI providing curated information about genes from 500+ organisms. Contains gene nomenclature (official symbols, aliases, full names), genomic locations (chromosomal positions, exons, introns), sequences (genomic, mRNA, protein), gene function and phenotypes, pathways and interactions, orthologs and paralogs, variation data (SNPs, mutations), expression data, and cross-references to 200+ external databases (UniProt, Ensembl, HGNC, OMIM, Reactome). Supports programmatic access via E-utilities API (Entrez Programming Utilities) and NCBI Datasets API, bulk downloads, and web interface. Enables gene annotation, comparative genomics, variant interpretation, pathway analysis, and integration with other NCBI resources (PubMed, dbSNP, ClinVar). Use cases: gene information retrieval, variant annotation, functional genomics, disease gene discovery, and bioinformatics workflows
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- **Protein Data Bank (PDB)** - Worldwide repository for 3D structural data of proteins, nucleic acids, and biological macromolecules. Contains 200K+ experimentally determined structures from X-ray crystallography, NMR spectroscopy, and cryo-electron microscopy. Provides comprehensive structure information including atomic coordinates, experimental data, structure quality metrics, ligand binding sites, protein-protein interfaces, and metadata (authors, methods, citations). Features advanced search capabilities (by sequence, structure similarity, ligand, organism, resolution), REST API and FTP access, structure visualization tools, and integration with analysis software. Supports structure comparison, homology modeling, drug design, structural biology research, and educational use. Maintained by wwPDB consortium (RCSB PDB, PDBe, PDBj, BMRB). Use cases: structural biology research, drug discovery, protein engineering, molecular modeling, and structural bioinformatics
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- **PubChem** - World's largest free chemical information database maintained by NCBI. Contains 110M+ unique chemical compounds, 270M+ bioactivity test results, 300M+ chemical structures, and 1M+ patents. Provides comprehensive compound information including chemical structures (2D/3D structures, SMILES, InChI), physicochemical properties (molecular weight, logP, H-bond donors/acceptors), bioactivity data (assays, targets, pathways), safety and toxicity data, literature references, and vendor information. Features REST API (PUG REST, PUG SOAP, PUG View), web interface with advanced search, bulk downloads, and integration with other NCBI resources. Supports chemical similarity searches, substructure searches, property-based filtering, and cheminformatics analysis. Use cases: drug discovery, chemical biology, lead identification, ADMET prediction, chemical database mining, and molecular property analysis
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- **PubMed** - NCBI's comprehensive biomedical literature database containing 35M+ citations from MEDLINE, life science journals, and online books. Provides access to abstracts, full-text articles (when available), MeSH (Medical Subject Headings) terms, author information, publication dates, and citation networks. Features advanced search capabilities with Boolean operators, field tags (author, title, journal, MeSH terms, publication date), filters (article type, species, language, publication date range), and saved searches with email alerts. Supports programmatic access via E-utilities API (Entrez Programming Utilities), bulk downloads, citation export in multiple formats (RIS, BibTeX, MEDLINE), and integration with reference management software. Includes PubMed Central (PMC) for open-access full-text articles. Use cases: literature searches, systematic reviews, citation analysis, research discovery, and staying current with scientific publications
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- **Reactome** - Curated pathway database for biological processes and molecular interactions (2,825+ human pathways, 16K+ reactions, 11K+ proteins) with pathway enrichment analysis, expression data analysis, and species comparison using Content Service and Analysis Service APIs
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- **STRING** - Protein-protein interaction network database (5000+ genomes, 59.3M proteins, 20B+ interactions) with functional enrichment analysis, interaction partner discovery, and network visualization from experimental data, computational prediction, and text-mining
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- **UniProt** - Universal Protein Resource for protein sequences, annotations, and functional information (UniProtKB/Swiss-Prot reviewed entries, TrEMBL unreviewed entries) with REST API access for search, retrieval, ID mapping, and batch operations across 200+ databases
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- **USPTO** - United States Patent and Trademark Office data access including patent searches, trademark lookups, patent examination history (PEDS), office actions, assignments, citations, and litigation records; supports PatentSearch API (ElasticSearch-based patent search), TSDR (Trademark Status & Document Retrieval), Patent/Trademark Assignment APIs, and additional specialized APIs for comprehensive IP analysis
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- **ZINC** - Free database of commercially-available compounds for virtual screening and drug discovery maintained by UCSF. Contains 230M+ purchasable compounds from 100+ vendors in ready-to-dock 3D formats (SDF, MOL2) with pre-computed conformers. Provides compound information including chemical structures, vendor information and pricing, physicochemical properties (molecular weight, logP, H-bond donors/acceptors, rotatable bonds), drug-likeness filters (Lipinski's Rule of Five, Veber rules), and substructure search capabilities. Features multiple compound subsets (drug-like, lead-like, fragment-like, natural products), downloadable subsets for specific screening campaigns, and integration with molecular docking software (AutoDock, DOCK, Glide). Supports structure-based and ligand-based virtual screening workflows. Use cases: virtual screening campaigns, lead identification, compound library design, high-throughput docking, and drug discovery research
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- **bioRxiv** - Preprint server for the life sciences providing Python-based tools for searching and retrieving preprints. Supports comprehensive searches by keywords, authors, date ranges, and subject categories, returning structured JSON metadata including titles, abstracts, DOIs, and citation information. Features PDF downloads for full-text analysis, filtering by bioRxiv subject categories (neuroscience, bioinformatics, genomics, etc.), and integration with literature review workflows. Use cases: tracking recent preprints, conducting systematic literature reviews, analyzing research trends, monitoring publications by specific authors, and staying current with emerging research before formal peer review
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## Scientific Integrations
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### Laboratory Information Management Systems (LIMS) & R&D Platforms
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- **Benchling Integration** - Toolkit for integrating with Benchling's R&D platform, providing programmatic access to laboratory data management including registry entities (DNA sequences, proteins), inventory systems (samples, containers, locations), electronic lab notebooks (entries, protocols), workflows (tasks, automation), and data exports using Python SDK and REST API
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### Cloud Platforms for Genomics & Biomedical Data
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- **DNAnexus Integration** - Comprehensive toolkit for working with the DNAnexus cloud platform for genomics and biomedical data analysis. Covers building and deploying apps/applets (Python/Bash), managing data objects (files, records, databases), running analyses and workflows, using the dxpy Python SDK, and configuring app metadata and dependencies (dxapp.json setup, system packages, Docker, assets). Enables processing of FASTQ/BAM/VCF files, bioinformatics pipelines, job execution, workflow orchestration, and platform operations including project management and permissions
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### Laboratory Automation
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- **Opentrons Integration** - Toolkit for creating, editing, and debugging Opentrons Python Protocol API v2 protocols for laboratory automation using Flex and OT-2 robots. Enables automated liquid handling, pipetting workflows, hardware module control (thermocycler, temperature, magnetic, heater-shaker, absorbance plate reader), labware management, and complex protocol development for biological and chemical experiments
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### Electronic Lab Notebooks (ELN)
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- **LabArchives Integration** - Toolkit for interacting with LabArchives Electronic Lab Notebook (ELN) REST API. Provides programmatic access to notebooks (backup, retrieval, management), entries (creation, comments, attachments), user authentication, site reports and analytics, and third-party integrations (Protocols.io, GraphPad Prism, SnapGene, Geneious, Jupyter, REDCap). Includes Python scripts for configuration setup, notebook operations, and entry management. Supports multi-regional API endpoints (US, UK, Australia) and OAuth authentication
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### Workflow Platforms & Cloud Execution
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- **LatchBio Integration** - Integration with the Latch platform for building, deploying, and executing bioinformatics workflows. Provides comprehensive support for creating serverless bioinformatics pipelines using Python decorators, deploying Nextflow/Snakemake pipelines, managing cloud data (LatchFile, LatchDir) and structured Registry (Projects, Tables, Records), configuring computational resources (CPU, GPU, memory, storage), and using pre-built Latch Verified workflows (RNA-seq, AlphaFold, DESeq2, single-cell analysis, CRISPR editing). Enables automatic containerization, UI generation, workflow versioning, and execution on scalable cloud infrastructure with comprehensive data management
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### Microscopy & Bio-image Data
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- **OMERO Integration** - Toolkit for interacting with OMERO microscopy data management systems using Python. Provides comprehensive access to microscopy images stored in OMERO servers, including dataset and screening data retrieval, pixel data analysis, annotation and metadata management, regions of interest (ROIs) creation and analysis, batch processing, OMERO.scripts development, and OMERO.tables for structured data storage. Essential for researchers working with high-content screening data, multi-dimensional microscopy datasets, or collaborative image repositories
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### Protocol Management & Sharing
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- **Protocols.io Integration** - Integration with protocols.io API for managing scientific protocols. Enables programmatic access to protocol discovery (search by keywords, DOI, category), protocol lifecycle management (create, update, publish with DOI), step-by-step procedure documentation, collaborative development with workspaces and discussions, file management (upload data, images, documents), experiment tracking and documentation, and data export. Supports OAuth authentication, protocol PDF generation, materials management, threaded comments, workspace permissions, and institutional protocol repositories. Essential for protocol standardization, reproducibility, lab knowledge management, and scientific collaboration
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## Scientific Packages
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### Bioinformatics & Genomics
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- **AnnData** - Python package for handling annotated data matrices, specifically designed for single-cell genomics data. Provides efficient storage and manipulation of high-dimensional data with associated annotations (observations/cells and variables/genes). Key features include: HDF5-based h5ad file format for efficient I/O and compression, integration with pandas DataFrames for metadata, support for sparse matrices (scipy.sparse) for memory efficiency, layered data organization (X for main data matrix, obs for observation annotations, var for variable annotations, obsm/varm for multi-dimensional annotations, obsp/varp for pairwise matrices), and seamless integration with Scanpy, scvi-tools, and other single-cell analysis packages. Supports lazy loading, chunked operations, and conversion to/from other formats (CSV, HDF5, Zarr). Use cases: single-cell RNA-seq data management, multi-modal single-cell data (RNA+ATAC, CITE-seq), spatial transcriptomics, and any high-dimensional annotated data requiring efficient storage and manipulation
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- **Arboreto** - Python package for efficient gene regulatory network (GRN) inference from single-cell RNA-seq data using ensemble tree-based methods. Implements GRNBoost2 (gradient boosting-based network inference) and GENIE3 (random forest-based inference) algorithms optimized for large-scale single-cell datasets. Key features include: parallel processing for scalability, support for sparse matrices and large datasets (millions of cells), integration with Scanpy/AnnData workflows, customizable hyperparameters, and output formats compatible with network analysis tools. Provides ranked lists of potential regulatory interactions (transcription factor-target gene pairs) with confidence scores. Use cases: identifying transcription factor-target relationships, reconstructing gene regulatory networks from single-cell data, understanding cell-type-specific regulatory programs, and inferring causal relationships in gene expression
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- **BioPython** - Comprehensive Python library for computational biology and bioinformatics providing tools for sequence manipulation, database access, and biological data analysis. Key features include: sequence objects (Seq, SeqRecord, SeqIO) for DNA/RNA/protein sequences with biological alphabet validation, file format parsers (FASTA, FASTQ, GenBank, EMBL, Swiss-Prot, PDB, SAM/BAM, VCF, GFF), NCBI database access (Entrez Programming Utilities for PubMed, GenBank, BLAST, taxonomy), BLAST integration (running searches, parsing results), sequence alignment (pairwise and multiple sequence alignment with Bio.Align), phylogenetics (tree construction and manipulation with Bio.Phylo), population genetics (Hardy-Weinberg, F-statistics), protein structure analysis (PDB parsing, structure calculations), and statistical analysis tools. Supports integration with NumPy, pandas, and other scientific Python libraries. Use cases: sequence analysis, database queries, phylogenetic analysis, sequence alignment, file format conversion, and general bioinformatics workflows
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- **BioServices** - Python library providing unified programmatic access to 40+ biological web services and databases. Supports major bioinformatics resources including KEGG (pathway and compound data), UniProt (protein sequences and annotations), ChEBI (chemical entities), ChEMBL (bioactive molecules), Reactome (pathways), IntAct (protein interactions), BioModels (biological models), and many others. Features consistent API across different services, automatic result caching, error handling and retry logic, support for both REST and SOAP web services, and conversion of results to Python objects (dictionaries, lists, BioPython objects). Handles authentication, rate limiting, and API versioning. Use cases: automated data retrieval from multiple biological databases, building bioinformatics pipelines, database integration workflows, and programmatic access to biological web resources without manual web browsing
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- **Cellxgene Census** - Python package for querying and analyzing large-scale single-cell RNA-seq data from the CZ CELLxGENE Discover census. Provides access to 50M+ cells across 1,000+ datasets with standardized annotations and metadata. Key features include: efficient data access using TileDB-SOMA format for scalable queries, integration with AnnData and Scanpy for downstream analysis, cell metadata filtering and querying, gene expression retrieval, and support for both human and mouse data. Enables subsetting datasets by cell type, tissue, disease, or other metadata before downloading, reducing data transfer and memory requirements. Supports local caching and batch operations. Use cases: large-scale single-cell analysis, cell-type discovery, cross-dataset comparisons, reference dataset construction, and exploratory analysis of public single-cell data
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- **gget** - Command-line tool and Python package for efficient querying of genomic databases with a simple, unified interface. Provides fast access to Ensembl (gene information, sequences, orthologs, variants), UniProt (protein sequences and annotations), NCBI (BLAST searches, gene information), PDB (protein structures), COSMIC (cancer mutations), and other databases. Features include: single-command queries without complex API setup, automatic result formatting, batch query support, integration with pandas DataFrames, and support for both command-line and Python API usage. Optimized for speed and ease of use, making database queries accessible to users without extensive bioinformatics experience. Use cases: quick gene lookups, sequence retrieval, variant annotation, protein structure access, and rapid database queries in bioinformatics workflows
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- **geniml** - Genomic interval machine learning toolkit providing unsupervised methods for building ML models on BED files. Key capabilities include Region2Vec (word2vec-style embeddings of genomic regions and region sets using tokenization and neural language modeling), BEDspace (joint embeddings of regions and metadata labels using StarSpace for cross-modal queries), scEmbed (Region2Vec applied to single-cell ATAC-seq data generating cell-level embeddings for clustering and annotation with scanpy integration), consensus peak building (four statistical methods CC/CCF/ML/HMM for creating reference universes from BED collections), and comprehensive utilities (BBClient for BED caching, BEDshift for genomic randomization preserving context, evaluation metrics for embedding quality, Text2BedNN for neural search backends). Part of BEDbase ecosystem. Supports Python API and CLI workflows, pre-trained models on Hugging Face, and integration with gtars for tokenization. Use cases: region similarity searches, dimension reduction of chromatin accessibility data, scATAC-seq clustering and cell-type annotation, metadata-aware genomic queries, universe construction for standardized references, and any ML task requiring genomic region feature vectors
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- **gtars** - High-performance Rust toolkit for genomic interval analysis providing specialized tools for overlap detection using IGD (Integrated Genome Database) indexing, coverage track generation (uniwig module for WIG/BigWig formats), genomic tokenization for machine learning applications (TreeTokenizer for deep learning models), reference sequence management (refget protocol compliance), fragment processing for single-cell genomics (barcode-based splitting and cluster analysis), and fragment scoring against reference datasets. Offers Python bindings with NumPy integration, command-line tools (gtars-cli), and Rust library. Key modules include: tokenizers (convert genomic regions to ML tokens), overlaprs (efficient overlap computation), uniwig (ATAC-seq/ChIP-seq/RNA-seq coverage profiles), refget (GA4GH-compliant sequence digests), bbcache (BEDbase.org integration), scoring (fragment enrichment metrics), and fragsplit (single-cell fragment manipulation). Supports parallel processing, memory-mapped files, streaming for large datasets, and serves as foundation for geniml genomic ML package. Ideal for genomic ML preprocessing, regulatory element analysis, variant annotation, chromatin accessibility profiling, and computational genomics workflows
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- **pysam** - Read, write, and manipulate genomic data files (SAM/BAM/CRAM alignments, VCF/BCF variants, FASTA/FASTQ sequences) with pileup analysis, coverage calculations, and bioinformatics workflows
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- **PyDESeq2** - Python implementation of the DESeq2 differential gene expression analysis method for bulk RNA-seq data. Provides statistical methods for determining differential expression between experimental conditions using negative binomial generalized linear models. Key features include: size factor estimation for library size normalization, dispersion estimation and shrinkage, hypothesis testing with Wald test or likelihood ratio test, multiple testing correction (Benjamini-Hochberg FDR), results filtering and ranking, and integration with pandas DataFrames. Handles complex experimental designs, batch effects, and replicates. Produces fold-change estimates, p-values, and adjusted p-values for each gene. Use cases: identifying differentially expressed genes between conditions, RNA-seq experiment analysis, biomarker discovery, and gene expression studies requiring rigorous statistical analysis
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- **Scanpy** - Comprehensive Python toolkit for single-cell RNA-seq data analysis built on AnnData. Provides end-to-end workflows for preprocessing (quality control, normalization, log transformation), dimensionality reduction (PCA, UMAP, t-SNE, ForceAtlas2), clustering (Leiden, Louvain, hierarchical clustering), marker gene identification, trajectory inference (PAGA, diffusion maps), and visualization. Key features include: efficient handling of large datasets (millions of cells) using sparse matrices, integration with scvi-tools for advanced analysis, support for multi-modal data (RNA+ATAC, CITE-seq), batch correction methods, and publication-quality plotting functions. Includes extensive documentation, tutorials, and integration with other single-cell tools. Supports GPU acceleration for certain operations. Use cases: single-cell RNA-seq analysis, cell-type identification, trajectory analysis, batch correction, and comprehensive single-cell genomics workflows
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- **scvi-tools** - Probabilistic deep learning models for single-cell omics analysis. PyTorch-based framework providing variational autoencoders (VAEs) for dimensionality reduction, batch correction, differential expression, and data integration across modalities. Includes 25+ models: scVI/scANVI (RNA-seq integration and cell type annotation), totalVI (CITE-seq protein+RNA), MultiVI (multiome RNA+ATAC integration), PeakVI (ATAC-seq analysis), DestVI/Stereoscope/Tangram (spatial transcriptomics deconvolution), MethylVI (methylation), CytoVI (flow/mass cytometry), VeloVI (RNA velocity), contrastiveVI (perturbation studies), and Solo (doublet detection). Supports seamless integration with Scanpy/AnnData ecosystem, GPU acceleration, reference mapping (scArches), and probabilistic differential expression with uncertainty quantification
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### Data Management & Infrastructure
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- **LaminDB** - Open-source data framework for biology that makes data queryable, traceable, reproducible, and FAIR (Findable, Accessible, Interoperable, Reusable). Provides unified platform combining lakehouse architecture, lineage tracking, feature stores, biological ontologies (via Bionty plugin with 20+ ontologies: genes, proteins, cell types, tissues, diseases, pathways), LIMS, and ELN capabilities through a single Python API. Key features include: automatic data lineage tracking (code, inputs, outputs, environment), versioned artifacts (DataFrame, AnnData, SpatialData, Parquet, Zarr), schema validation and data curation with standardization/synonym mapping, queryable metadata with feature-based filtering, cross-registry traversal, and streaming for large datasets. Supports integrations with workflow managers (Nextflow, Snakemake, Redun), MLOps platforms (Weights & Biases, MLflow, HuggingFace, scVI-tools), cloud storage (S3, GCS, S3-compatible), array stores (TileDB-SOMA, DuckDB), and visualization (Vitessce). Deployment options: local SQLite, cloud storage with SQLite, or cloud storage with PostgreSQL for production. Use cases: scRNA-seq standardization and analysis, flow cytometry/spatial data management, multi-modal dataset integration, computational workflow tracking with reproducibility, biological ontology-based annotation, data lakehouse construction for unified queries, ML pipeline integration with experiment tracking, and FAIR-compliant dataset publishing
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- **Modal** - Serverless cloud platform for running Python code with minimal configuration, specialized for AI/ML workloads and scientific computing. Execute functions on powerful GPUs (T4, L4, A10, A100, L40S, H100, H200, B200), scale automatically from zero to thousands of containers, and pay only for compute used. Key features include: declarative container image building with uv/pip/apt package management, automatic autoscaling with configurable limits and buffer containers, GPU acceleration with multi-GPU support (up to 8 GPUs per container), persistent storage via Volumes for model weights and datasets, secret management for API keys and credentials, scheduled jobs with cron expressions, web endpoints for deploying serverless APIs, parallel execution with `.map()` for batch processing, input concurrency for I/O-bound workloads, and resource configuration (CPU cores, memory, disk). Supports custom Docker images, integration with Hugging Face/Weights & Biases, FastAPI for web endpoints, and distributed training. Free tier includes $30/month credits. Use cases: ML model deployment and inference (LLMs, image generation, embeddings), GPU-accelerated training, batch processing large datasets in parallel, scheduled compute-intensive jobs, serverless API deployment with autoscaling, scientific computing requiring distributed compute or specialized hardware, and data pipeline automation
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### Cheminformatics & Drug Discovery
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- **Datamol** - Python library for molecular manipulation and featurization built on RDKit with enhanced workflows and performance optimizations. Provides utilities for molecular I/O (reading/writing SMILES, SDF, MOL files), molecular standardization and sanitization, molecular transformations (tautomer enumeration, stereoisomer generation), molecular featurization (descriptors, fingerprints, graph representations), parallel processing for large datasets, and integration with machine learning pipelines. Features include: optimized RDKit operations, caching for repeated computations, molecular filtering and preprocessing, and seamless integration with pandas DataFrames. Designed for drug discovery and cheminformatics workflows requiring efficient processing of large compound libraries. Use cases: molecular preprocessing for ML models, compound library management, molecular similarity searches, and cheminformatics data pipelines
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- **DeepChem** - Deep learning framework for molecular machine learning and drug discovery built on TensorFlow and PyTorch. Provides implementations of graph neural networks (GCN, GAT, MPNN, AttentiveFP) for molecular property prediction, molecular featurization (molecular graphs, fingerprints, descriptors), pre-trained models, and MoleculeNet benchmark suite (50+ datasets for molecular property prediction, toxicity, ADMET). Key features include: support for both TensorFlow and PyTorch backends, distributed training, hyperparameter optimization, model interpretation tools, and integration with RDKit. Includes datasets for quantum chemistry, toxicity prediction, ADMET properties, and binding affinity prediction. Use cases: molecular property prediction, drug discovery, ADMET prediction, toxicity screening, and molecular machine learning research
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- **DiffDock** - State-of-the-art diffusion-based molecular docking method for predicting protein-ligand binding poses and binding affinities. Uses diffusion models to generate diverse, high-quality binding poses without requiring exhaustive search. Key features include: fast inference compared to traditional docking methods, generation of multiple diverse poses, confidence scoring for predictions, and support for flexible ligand docking. Provides pre-trained models and Python API for integration into drug discovery pipelines. Achieves superior performance on standard benchmarks (PDBbind, CASF) compared to traditional docking methods. Use cases: virtual screening, lead optimization, binding pose prediction, structure-based drug design, and initial pose generation for refinement with more expensive methods
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||
- **MedChem** - Python library for medicinal chemistry analysis and drug-likeness assessment. Provides tools for calculating molecular descriptors, ADMET (Absorption, Distribution, Metabolism, Excretion, Toxicity) property prediction, drug-likeness filters (Lipinski's Rule of Five, Veber rules, Egan rules, Muegge rules), molecular complexity metrics, and synthetic accessibility scoring. Features include: integration with RDKit, parallel processing for large datasets, and comprehensive property calculators. Supports filtering compound libraries based on drug-like properties, identifying potential ADMET issues early in drug discovery, and prioritizing compounds for further development. Use cases: lead optimization, compound library filtering, ADMET prediction, drug-likeness assessment, and medicinal chemistry analysis in drug discovery workflows
|
||
- **Molfeat** - Comprehensive Python library providing 100+ molecular featurizers for converting molecules into numerical representations suitable for machine learning. Includes molecular fingerprints (ECFP, MACCS, RDKit, Pharmacophore), molecular descriptors (2D/3D descriptors, constitutional, topological, electronic), graph-based representations (molecular graphs, line graphs), and pre-trained models (MolBERT, ChemBERTa, Uni-Mol embeddings). Features unified API across different featurizer types, caching for performance, parallel processing, and integration with popular ML frameworks (scikit-learn, PyTorch, TensorFlow). Supports both traditional cheminformatics descriptors and modern learned representations. Use cases: molecular property prediction, virtual screening, molecular similarity searches, and preparing molecular data for machine learning models
|
||
- **PyTDC** - Python library providing access to Therapeutics Data Commons (TDC), a collection of curated datasets and benchmarks for drug discovery and development. Includes datasets for ADMET prediction (absorption, distribution, metabolism, excretion, toxicity), drug-target interactions, drug-drug interactions, drug response prediction, molecular generation, and retrosynthesis. Features standardized data formats, data loaders with automatic preprocessing, benchmark tasks with evaluation metrics, leaderboards for model comparison, and integration with popular ML frameworks. Provides both single-molecule and drug-pair datasets, covering various stages of drug discovery from target identification to clinical outcomes. Use cases: benchmarking ML models for drug discovery, ADMET prediction model development, drug-target interaction prediction, and drug discovery research
|
||
- **RDKit** - Open-source cheminformatics toolkit for molecular informatics and drug discovery. Provides comprehensive functionality for molecular I/O (reading/writing SMILES, SDF, MOL, PDB files), molecular descriptors (200+ 2D and 3D descriptors), molecular fingerprints (Morgan, RDKit, MACCS, topological torsions), SMARTS pattern matching for substructure searches, molecular alignment and 3D coordinate generation, pharmacophore perception, reaction handling, and molecular drawing. Features high-performance C++ core with Python bindings, support for large molecule sets, and extensive documentation. Widely used in pharmaceutical industry and academic research. Use cases: molecular property calculation, virtual screening, molecular similarity searches, substructure matching, molecular visualization, and general cheminformatics workflows
|
||
- **TorchDrug** - PyTorch-based machine learning platform for drug discovery with 40+ datasets, 20+ GNN models for molecular property prediction, protein modeling, knowledge graph reasoning, molecular generation, and retrosynthesis planning
|
||
|
||
### Proteomics & Mass Spectrometry
|
||
- **matchms** - Processing and similarity matching of mass spectrometry data with 40+ filters, spectral library matching (Cosine, Modified Cosine, Neutral Losses), metadata harmonization, molecular fingerprint comparison, and support for multiple file formats (MGF, MSP, mzML, JSON)
|
||
- **pyOpenMS** - Comprehensive mass spectrometry data analysis for proteomics and metabolomics (LC-MS/MS processing, peptide identification, feature detection, quantification, chemical calculations, and integration with search engines like Comet, Mascot, MSGF+)
|
||
|
||
### Medical Imaging & Digital Pathology
|
||
- **histolab** - Digital pathology toolkit for whole slide image (WSI) processing and analysis. Provides automated tissue detection, tile extraction for deep learning pipelines, and preprocessing for gigapixel histopathology images. Key features include: multi-format WSI support (SVS, TIFF, NDPI), three tile extraction strategies (RandomTiler for sampling, GridTiler for complete coverage, ScoreTiler for quality-driven selection), automated tissue masks with customizable filters, built-in scorers (NucleiScorer, CellularityScorer), pyramidal image handling, visualization tools (thumbnails, mask overlays, tile previews), and H&E stain decomposition. Supports multiple tissue sections, artifact removal, pen annotation exclusion, and reproducible extraction with seeding. Use cases: creating training datasets for computational pathology, extracting informative tiles for tumor classification, whole-slide tissue characterization, quality assessment of histology samples, automated nuclei density analysis, and preprocessing for digital pathology deep learning workflows
|
||
- **PathML** - Comprehensive computational pathology toolkit for whole slide image analysis, tissue segmentation, and machine learning on pathology data. Provides end-to-end workflows for digital pathology research including data loading, preprocessing, feature extraction, and model deployment
|
||
- **pydicom** - Pure Python package for working with DICOM (Digital Imaging and Communications in Medicine) files. Provides comprehensive support for reading, writing, and manipulating medical imaging data from CT, MRI, X-ray, ultrasound, PET scans and other modalities. Key features include: pixel data extraction and manipulation with automatic decompression (JPEG/JPEG 2000/RLE), metadata access and modification with 1000+ standardized DICOM tags, image format conversion (PNG/JPEG/TIFF), anonymization tools for removing Protected Health Information (PHI), windowing and display transformations (VOI LUT application), multi-frame and 3D volume processing, DICOM sequence handling, and support for multiple transfer syntaxes. Use cases: medical image analysis, PACS system integration, radiology workflows, research data processing, DICOM anonymization, format conversion, image preprocessing for machine learning, multi-slice volume reconstruction, and clinical imaging pipelines
|
||
|
||
### Healthcare AI & Clinical Machine Learning
|
||
- **NeuroKit2** - Comprehensive biosignal processing toolkit for analyzing physiological data including ECG, EEG, EDA, RSP, PPG, EMG, and EOG signals. Use this skill when processing cardiovascular signals, brain activity, electrodermal responses, respiratory patterns, muscle activity, or eye movements. Key features include: automated signal processing pipelines (cleaning, peak detection, delineation, quality assessment), heart rate variability analysis across time/frequency/nonlinear domains (SDNN, RMSSD, LF/HF, DFA, entropy measures), EEG analysis (frequency band power, microstates, source localization), autonomic nervous system assessment (sympathetic indices, respiratory sinus arrhythmia), comprehensive complexity measures (25+ entropy types, 15+ fractal dimensions, Lyapunov exponents), event-related and interval-related analysis modes, epoch creation and averaging for stimulus-locked responses, multi-signal integration with unified workflows, and extensive signal processing utilities (filtering, decomposition, peak correction, spectral analysis). Includes modular reference documentation across 12 specialized domains. Use cases: heart rate variability for cardiovascular health assessment, EEG microstates for consciousness studies, electrodermal activity for emotion research, respiratory variability analysis, psychophysiology experiments, affective computing, stress monitoring, sleep staging, autonomic dysfunction assessment, biofeedback applications, and multi-modal physiological signal integration for comprehensive human state monitoring
|
||
- **PyHealth** - Comprehensive healthcare AI toolkit for developing, testing, and deploying machine learning models with clinical data. Provides specialized tools for electronic health records (EHR), physiological signals, medical imaging, and clinical text analysis. Key features include: 10+ healthcare datasets (MIMIC-III/IV, eICU, OMOP, sleep EEG, COVID-19 CXR), 20+ predefined clinical prediction tasks (mortality, hospital readmission, length of stay, drug recommendation, sleep staging, EEG analysis), 33+ models (Logistic Regression, MLP, CNN, RNN, Transformer, GNN, plus healthcare-specific models like RETAIN, SafeDrug, GAMENet, StageNet), comprehensive data processing (sequence processors, signal processors, medical code translation between ICD-9/10, NDC, RxNorm, ATC systems), training/evaluation utilities (Trainer class, fairness metrics, calibration, uncertainty quantification), and interpretability tools (attention visualization, SHAP, ChEFER). 3x faster than pandas for healthcare data processing. Use cases: ICU mortality prediction, hospital readmission risk assessment, safe medication recommendation with drug-drug interaction constraints, sleep disorder diagnosis from EEG signals, medical code standardization and translation, clinical text to ICD coding, length of stay estimation, and any clinical ML application requiring interpretability, fairness assessment, and calibrated predictions for healthcare deployment
|
||
|
||
### Clinical Documentation & Decision Support
|
||
- **Clinical Decision Support** - Generate professional clinical decision support (CDS) documents for pharmaceutical and clinical research settings. Includes patient cohort analyses (biomarker-stratified with outcomes) and treatment recommendation reports (evidence-based guidelines with decision algorithms). Features GRADE evidence grading, statistical analysis (hazard ratios, survival curves, waterfall plots), biomarker integration (genomic alterations, gene expression signatures, IHC markers), and regulatory compliance. Use cases: pharmaceutical cohort reporting, clinical guideline development, comparative effectiveness analyses, treatment algorithm creation, and evidence synthesis for drug development
|
||
- **Clinical Reports** - Write comprehensive clinical reports following established guidelines and standards. Covers case reports (CARE guidelines), diagnostic reports (radiology, pathology, laboratory), clinical trial reports (ICH-E3, SAE, CSR), and patient documentation (SOAP notes, H&P, discharge summaries). Includes templates, regulatory compliance (HIPAA, FDA, ICH-GCP), and validation tools. Use cases: journal case reports, diagnostic findings documentation, clinical trial reporting, patient progress notes, and regulatory submissions
|
||
- **Treatment Plans** - Generate concise (3-4 page), focused medical treatment plans in LaTeX/PDF format for all clinical specialties. Supports general medical treatment, rehabilitation therapy, mental health care, chronic disease management, perioperative care, and pain management. Features SMART goal frameworks, evidence-based interventions, HIPAA compliance, and professional formatting. Use cases: individualized patient care plans, rehabilitation programs, psychiatric treatment plans, surgical care pathways, and pain management protocols
|
||
|
||
### Neuroscience & Electrophysiology
|
||
- **Neuropixels-Analysis** - Comprehensive toolkit for analyzing Neuropixels high-density neural recordings using SpikeInterface, Allen Institute, and International Brain Laboratory (IBL) best practices. Supports the full workflow from raw data to publication-ready curated units. Key features include: data loading from SpikeGLX, Open Ephys, and NWB formats, preprocessing pipelines (highpass filtering, phase shift correction for Neuropixels 1.0, bad channel detection, common average referencing), motion/drift estimation and correction (kilosort_like and nonrigid_accurate presets), spike sorting integration (Kilosort4 GPU, SpykingCircus2, Mountainsort5 CPU), comprehensive postprocessing (waveform extraction, template computation, spike amplitudes, correlograms, unit locations), quality metrics computation (SNR, ISI violations, presence ratio, amplitude cutoff, drift metrics), automated curation using Allen Institute and IBL criteria with configurable thresholds, AI-assisted visual curation for uncertain units using Claude API, and export to Phy for manual review or NWB for sharing. Supports Neuropixels 1.0 (960 electrodes, 384 channels) and Neuropixels 2.0 (single and 4-shank configurations). Use cases: extracellular electrophysiology analysis, spike sorting from silicon probes, neural population recordings, systems neuroscience research, unit quality assessment, publication-ready neural data processing, and integration of AI-assisted curation for borderline units
|
||
|
||
### Protein Engineering & Design
|
||
- **Adaptyv** - Cloud laboratory platform for automated protein testing and validation. Submit protein sequences via API or web interface and receive experimental results in approximately 21 days. Supports multiple assay types including binding assays (biolayer interferometry for protein-target interactions, KD/kon/koff measurements), expression testing (quantify protein expression levels in E. coli, mammalian, yeast, or insect cells), thermostability measurements (DSF and CD for Tm determination and thermal stability profiling), and enzyme activity assays (kinetic parameters, substrate specificity, inhibitor testing). Includes computational optimization tools for pre-screening sequences: NetSolP/SoluProt for solubility prediction, SolubleMPNN for sequence redesign to improve expression, ESM for sequence likelihood scoring, ipTM (AlphaFold-Multimer) for interface stability assessment, and pSAE for aggregation risk quantification. Platform features automated workflows from expression through purification to assay execution with quality control, webhook notifications for experiment completion, batch submission support for high-throughput screening, and comprehensive results with kinetic parameters, confidence metrics, and raw data access. Use cases: antibody affinity maturation, therapeutic protein developability assessment, enzyme engineering and optimization, protein stability improvement, AI-driven protein design validation, library screening for expression and function, lead optimization with experimental feedback, and integration of computational design with wet-lab validation in iterative design-build-test-learn cycles
|
||
- **ESM (Evolutionary Scale Modeling)** - State-of-the-art protein language models from EvolutionaryScale for protein design, structure prediction, and representation learning. Includes ESM3 (1.4B-98B parameter multimodal generative models for simultaneous reasoning across sequence, structure, and function with chain-of-thought generation, inverse folding, and function-conditioned design) and ESM C (300M-6B parameter efficient embedding models 3x faster than ESM2 for similarity analysis, classification, and feature extraction). Supports local inference with open weights and cloud-based Forge API for scalable batch processing. Use cases: novel protein design, structure prediction from sequence, sequence design from structure, protein embeddings, function annotation, variant generation, and directed evolution workflows
|
||
|
||
### Machine Learning & Deep Learning
|
||
- **aeon** - Comprehensive scikit-learn compatible Python toolkit for time series machine learning providing state-of-the-art algorithms across 7 domains: classification (13 algorithm categories including ROCKET variants, deep learning with InceptionTime/ResNet/FCN, distance-based with DTW/ERP/LCSS, shapelet-based, dictionary methods like BOSS/WEASEL, and hybrid ensembles HIVECOTE), regression (9 categories mirroring classification approaches), clustering (k-means/k-medoids with temporal distances, deep learning autoencoders, spectral methods), forecasting (ARIMA, ETS, Theta, Threshold Autoregressive, TCN, DeepAR), anomaly detection (STOMP/MERLIN matrix profile, clustering-based CBLOF/KMeans, isolation methods, copula-based COPOD), segmentation (ClaSP, FLUSS, HMM, binary segmentation), and similarity search (MASS algorithm, STOMP motif discovery, approximate nearest neighbors). Includes 40+ distance metrics (elastic: DTW/DDTW/WDTW/Shape-DTW, edit-based: ERP/EDR/LCSS/TWE/MSM, lock-step: Euclidean/Manhattan), extensive transformations (ROCKET/MiniRocket/MultiRocket for features, Catch22/TSFresh for statistics, SAX/PAA for symbolic representation, shapelet transforms, wavelets, matrix profile), 20+ deep learning architectures (FCN, ResNet, InceptionTime, TCN, autoencoders with attention mechanisms), comprehensive benchmarking tools (UCR/UEA archives with 100+ datasets, published results repository, statistical testing), and performance-optimized implementations using numba. Features progressive model complexity from fast baselines (MiniRocket: <1 second training, 0.95+ accuracy on many benchmarks) to state-of-the-art ensembles (HIVECOTE V2), GPU acceleration support, and extensive visualization utilities. Use cases: physiological signal classification (ECG, EEG), industrial sensor monitoring, financial forecasting, change point detection, pattern discovery, activity recognition from wearables, predictive maintenance, climate time series analysis, and any sequential data requiring specialized temporal modeling beyond standard ML
|
||
- **PufferLib** - High-performance reinforcement learning library achieving 1M-4M steps/second through optimized vectorization, native multi-agent support, and efficient PPO training (PuffeRL). Use this skill for RL training on any environment (Gymnasium, PettingZoo, Atari, Procgen), creating custom PufferEnv environments, developing policies (CNN, LSTM, multi-input architectures), optimizing parallel simulation performance, or scaling multi-agent systems. Includes Ocean suite (20+ environments), seamless framework integration with automatic space flattening, zero-copy vectorization with shared memory buffers, distributed training support, and comprehensive reference guides for training workflows, environment development, vectorization optimization, policy architectures, and third-party integrations
|
||
- **PyMC** - Comprehensive Python library for Bayesian statistical modeling and probabilistic programming. Provides intuitive syntax for building probabilistic models, advanced MCMC sampling algorithms (NUTS, Metropolis-Hastings, Slice sampling), variational inference methods (ADVI, SVGD), Gaussian processes, time series models (ARIMA, state space models), and model comparison tools (WAIC, LOO). Features include: automatic differentiation via Aesara (formerly Theano), GPU acceleration support, parallel sampling, model diagnostics and convergence checking, and integration with ArviZ for visualization and analysis. Supports hierarchical models, mixture models, survival analysis, and custom distributions. Use cases: Bayesian data analysis, uncertainty quantification, A/B testing, time series forecasting, hierarchical modeling, and probabilistic machine learning
|
||
- **PyMOO** - Python framework for multi-objective optimization using evolutionary algorithms. Provides implementations of state-of-the-art algorithms including NSGA-II, NSGA-III, MOEA/D, SPEA2, and reference-point based methods. Features include: support for constrained and unconstrained optimization, multiple problem types (continuous, discrete, mixed-variable), performance indicators (hypervolume, IGD, GD), visualization tools (Pareto front plots, convergence plots), and parallel evaluation support. Supports custom problem definitions, algorithm configuration, and result analysis. Designed for engineering design, parameter optimization, and any problem requiring optimization of multiple conflicting objectives simultaneously. Use cases: multi-objective optimization problems, Pareto-optimal solution finding, engineering design optimization, and research in evolutionary computation
|
||
- **PyTorch Lightning** - Deep learning framework that organizes PyTorch code to eliminate boilerplate while maintaining full flexibility. Automates training workflows (40+ tasks including epoch/batch iteration, optimizer steps, gradient management, checkpointing), supports multi-GPU/TPU training with DDP/FSDP/DeepSpeed strategies, includes LightningModule for model organization, Trainer for automation, LightningDataModule for data pipelines, callbacks for extensibility, and integrations with TensorBoard, Wandb, MLflow for experiment tracking
|
||
- **PennyLane** - Cross-platform Python library for quantum computing, quantum machine learning, and quantum chemistry. Enables building and training quantum circuits with automatic differentiation, seamless integration with PyTorch/JAX/NumPy, and device-independent execution across simulators and quantum hardware (IBM, Amazon Braket, Google, Rigetti, IonQ). Key features include: quantum circuit construction with QNodes (quantum functions with automatic differentiation), 100+ quantum gates and operations (Pauli, Hadamard, rotation, controlled gates), circuit templates and layers for common ansatze (StronglyEntanglingLayers, BasicEntanglerLayers, UCCSD for chemistry), gradient computation methods (parameter-shift rule for hardware, backpropagation for simulators, adjoint differentiation), quantum chemistry module (molecular Hamiltonian construction, VQE for ground state energy, differentiable Hartree-Fock solver), ML framework integration (TorchLayer for PyTorch models, JAX transformations, TensorFlow deprecated), built-in optimizers (Adam, GradientDescent, QNG, Rotosolve), measurement types (expectation values, probabilities, samples, state vectors), device ecosystem (default.qubit simulator, lightning.qubit for performance, hardware plugins for IBM/Braket/Cirq/Rigetti/IonQ), and Catalyst for just-in-time compilation with adaptive circuits. Supports variational quantum algorithms (VQE, QAOA), quantum neural networks, hybrid quantum-classical models, data encoding strategies (angle, amplitude, IQP embeddings), and pulse-level programming. Use cases: variational quantum eigensolver for molecular simulations, quantum circuit machine learning with gradient-based optimization, hybrid quantum-classical neural networks, quantum chemistry calculations with differentiable workflows, quantum algorithm prototyping with hardware-agnostic code, quantum machine learning research with automatic differentiation, and deploying quantum circuits across multiple quantum computing platforms
|
||
- **Qiskit** - World's most popular open-source quantum computing framework for building, optimizing, and executing quantum circuits with 13M+ downloads and 74% developer preference. Provides comprehensive tools for quantum algorithm development including circuit construction with 100+ quantum gates (Pauli, Hadamard, CNOT, rotation gates, controlled gates), circuit transpilation with 83x faster optimization than competitors producing circuits with 29% fewer two-qubit gates, primitives for execution (Sampler for bitstring measurements and probability distributions, Estimator for expectation values and observables), visualization tools (circuit diagrams in matplotlib/LaTeX, result histograms, Bloch sphere, state visualizations), backend-agnostic execution (local simulators including StatevectorSampler and Aer, IBM Quantum hardware with 100+ qubit systems, IonQ trapped ion, Amazon Braket multi-provider), session and batch modes for iterative and parallel workloads, error mitigation with configurable resilience levels (readout error correction, ZNE, PEC reducing sampling overhead by 100x), four-step patterns workflow (Map classical problems to quantum circuits, Optimize through transpilation, Execute with primitives, Post-process results), algorithm libraries including Qiskit Nature for quantum chemistry (molecular Hamiltonians, VQE for ground states, UCCSD ansatz, multiple fermion-to-qubit mappings), Qiskit Optimization for combinatorial problems (QAOA, portfolio optimization, MaxCut), and Qiskit Machine Learning (quantum kernels, VQC, QNN), support for Python/C/Rust with modular architecture, parameterized circuits for variational algorithms, quantum Fourier transform, Grover search, Shor's algorithm, pulse-level control, IBM Quantum Runtime for cloud execution with job management and queuing, and comprehensive documentation with textbook and tutorials. Use cases: variational quantum eigensolver for molecular ground state energy, QAOA for combinatorial optimization problems, quantum chemistry simulations with multiple ansatze and mappings, quantum machine learning with kernel methods and neural networks, hybrid quantum-classical algorithms, quantum algorithm research and prototyping across multiple hardware platforms, quantum circuit optimization and benchmarking, quantum error mitigation and characterization, quantum information science experiments, and production quantum computing workflows on real quantum hardware
|
||
- **QuTiP** - Quantum Toolbox in Python for simulating and analyzing quantum mechanical systems. Provides comprehensive tools for both closed (unitary) and open (dissipative) quantum systems including quantum states (kets, bras, density matrices, Fock states, coherent states), quantum operators (creation/annihilation operators, Pauli matrices, angular momentum operators, quantum gates), time evolution solvers (Schrödinger equation with sesolve, Lindblad master equation with mesolve, quantum trajectories with Monte Carlo mcsolve, Bloch-Redfield brmesolve, Floquet methods for periodic Hamiltonians), analysis tools (expectation values, entropy measures, fidelity, concurrence, correlation functions, steady state calculations), visualization (Bloch sphere with animations, Wigner functions, Q-functions, Fock distributions, matrix histograms), and advanced methods (Hierarchical Equations of Motion for non-Markovian dynamics, permutational invariance for identical particles, stochastic solvers, superoperators). Supports tensor products for composite systems, partial traces, time-dependent Hamiltonians, multiple dissipation channels, and parallel processing. Includes extensive documentation, tutorials, and examples. Use cases: quantum optics simulations (cavity QED, photon statistics), quantum computing (gate operations, circuit dynamics), open quantum systems (decoherence, dissipation), quantum information theory (entanglement dynamics, quantum channels), condensed matter physics (spin chains, many-body systems), and general quantum mechanics research and education
|
||
- **scikit-learn** - Industry-standard Python library for classical machine learning providing comprehensive supervised learning (classification: Logistic Regression, SVM, Decision Trees, Random Forests with 17+ variants, Gradient Boosting with XGBoost-compatible HistGradientBoosting, Naive Bayes, KNN, Neural Networks/MLP; regression: Linear, Ridge, Lasso, ElasticNet, SVR, ensemble methods), unsupervised learning (clustering: K-Means, DBSCAN, HDBSCAN, OPTICS, Agglomerative/Hierarchical, Spectral, Gaussian Mixture Models, BIRCH, MeanShift; dimensionality reduction: PCA, Kernel PCA, t-SNE, Isomap, LLE, NMF, TruncatedSVD, FastICA, LDA; outlier detection: IsolationForest, LocalOutlierFactor, OneClassSVM), data preprocessing (scaling: StandardScaler, MinMaxScaler, RobustScaler; encoding: OneHotEncoder, OrdinalEncoder, LabelEncoder; imputation: SimpleImputer, KNNImputer, IterativeImputer; feature engineering: PolynomialFeatures, KBinsDiscretizer, text vectorization with CountVectorizer/TfidfVectorizer), model evaluation (cross-validation: KFold, StratifiedKFold, TimeSeriesSplit, GroupKFold; hyperparameter tuning: GridSearchCV, RandomizedSearchCV, HalvingGridSearchCV; metrics: 30+ evaluation metrics for classification/regression/clustering including accuracy, precision, recall, F1, ROC-AUC, MSE, R², silhouette score), and Pipeline/ColumnTransformer for production-ready workflows. Features consistent API (fit/predict/transform), extensive documentation, integration with NumPy/pandas/SciPy, joblib persistence, and scikit-learn-compatible ecosystem (XGBoost, LightGBM, CatBoost, imbalanced-learn). Optimized implementations using Cython/OpenMP for performance. Use cases: predictive modeling, customer segmentation, anomaly detection, feature engineering, model selection/validation, text classification, image classification (with feature extraction), time series forecasting (with preprocessing), medical diagnosis, fraud detection, recommendation systems, and any tabular data ML task requiring interpretable models or established algorithms
|
||
- **scikit-survival** - Survival analysis and time-to-event modeling with censored data. Built on scikit-learn, provides Cox proportional hazards models (CoxPHSurvivalAnalysis, CoxnetSurvivalAnalysis with elastic net regularization), ensemble methods (Random Survival Forests, Gradient Boosting), Survival Support Vector Machines (linear and kernel), non-parametric estimators (Kaplan-Meier, Nelson-Aalen), competing risks analysis, and specialized evaluation metrics (concordance index, time-dependent AUC, Brier score). Handles right-censored data, integrates with scikit-learn pipelines, and supports feature selection and hyperparameter tuning via cross-validation
|
||
- **SHAP** - Model interpretability and explainability using Shapley values from game theory. Provides unified approach to explain any ML model with TreeExplainer (fast exact explanations for XGBoost/LightGBM/Random Forest), DeepExplainer (TensorFlow/PyTorch neural networks), KernelExplainer (model-agnostic), and LinearExplainer. Includes comprehensive visualizations (waterfall plots for individual predictions, beeswarm plots for global importance, scatter plots for feature relationships, bar/force/heatmap plots), supports model debugging, fairness analysis, feature engineering guidance, and production deployment
|
||
- **Stable Baselines3** - PyTorch-based reinforcement learning library providing reliable implementations of RL algorithms (PPO, SAC, DQN, TD3, DDPG, A2C, HER, RecurrentPPO). Use this skill for training RL agents on standard or custom Gymnasium environments, implementing callbacks for monitoring and control, using vectorized environments for parallel training, creating custom environments with proper Gymnasium API implementation, and integrating with deep RL workflows. Includes comprehensive training templates, evaluation utilities, algorithm selection guidance (on-policy vs off-policy, continuous vs discrete actions), support for multi-input policies (dict observations), goal-conditioned learning with HER, and integration with TensorBoard for experiment tracking
|
||
- **statsmodels** - Statistical modeling and econometrics (OLS, GLM, logit/probit, ARIMA, time series forecasting, hypothesis testing, diagnostics)
|
||
- **Torch Geometric** - Graph Neural Networks for molecular and geometric data
|
||
- **Transformers** - State-of-the-art machine learning models for NLP, computer vision, audio, and multimodal tasks. Provides 1M+ pre-trained models accessible via pipelines (text-classification, NER, QA, summarization, translation, text-generation, image-classification, object-detection, ASR, VQA), comprehensive training via Trainer API with distributed training and mixed precision, flexible text generation with multiple decoding strategies (greedy, beam search, sampling), and Auto classes for automatic architecture selection (BERT, GPT, T5, ViT, BART, etc.)
|
||
- **UMAP-learn** - Python implementation of Uniform Manifold Approximation and Projection (UMAP) for dimensionality reduction and manifold learning. Provides fast, scalable nonlinear dimensionality reduction that preserves both local and global structure of high-dimensional data. Key features include: support for both supervised and unsupervised dimensionality reduction, ability to handle mixed data types, integration with scikit-learn API, and efficient implementation using numba for performance. Produces low-dimensional embeddings (typically 2D or 3D) suitable for visualization and downstream analysis. Often outperforms t-SNE in preserving global structure while maintaining local neighborhoods. Use cases: data visualization, feature extraction, preprocessing for machine learning, single-cell data analysis, and exploratory data analysis of high-dimensional datasets
|
||
|
||
### Materials Science & Chemistry
|
||
- **Astropy** - Comprehensive Python library for astronomy and astrophysics providing core functionality for astronomical research and data analysis. Includes coordinate system transformations (ICRS, Galactic, FK5, AltAz), physical units and quantities with automatic dimensional consistency, FITS file operations (reading, writing, manipulating headers and data), cosmological calculations (luminosity distance, lookback time, Hubble parameter, Planck/WMAP models), precise time handling across multiple time scales (UTC, TAI, TT, TDB) and formats (JD, MJD, ISO), table operations with unit support (FITS, CSV, HDF5, VOTable), WCS transformations between pixel and world coordinates, astronomical constants, modeling framework, visualization tools, and statistical functions. Use for celestial coordinate transformations, unit conversions, FITS image/table processing, cosmological distance calculations, barycentric time corrections, catalog cross-matching, and astronomical data analysis
|
||
- **COBRApy** - Python package for constraint-based reconstruction and analysis (COBRA) of metabolic networks. Provides tools for building, manipulating, and analyzing genome-scale metabolic models (GEMs). Key features include: flux balance analysis (FBA) for predicting optimal metabolic fluxes, flux variability analysis (FVA), gene knockout simulations, pathway analysis, model validation, and integration with other COBRA Toolbox formats (SBML, JSON). Supports various optimization objectives (biomass production, ATP production, metabolite production), constraint handling (reaction bounds, gene-protein-reaction associations), and model comparison. Includes utilities for model construction, gap filling, and model refinement. Use cases: metabolic engineering, systems biology, biotechnology applications, understanding cellular metabolism, and predicting metabolic phenotypes
|
||
- **Pymatgen** - Python Materials Genomics (pymatgen) library for materials science computation and analysis. Provides comprehensive tools for crystal structure manipulation, phase diagram construction, electronic structure analysis, and materials property calculations. Key features include: structure objects with symmetry analysis, space group determination, structure matching and comparison, phase diagram generation from formation energies, band structure and density of states analysis, defect calculations, surface and interface analysis, and integration with DFT codes (VASP, Quantum ESPRESSO, ABINIT). Supports Materials Project database integration, structure file I/O (CIF, POSCAR, VASP), and high-throughput materials screening workflows. Use cases: materials discovery, crystal structure analysis, phase stability prediction, electronic structure calculations, and computational materials science research
|
||
|
||
### Engineering & Simulation
|
||
- **MATLAB/Octave** - Numerical computing environment for matrix operations, data analysis, visualization, and scientific computing. MATLAB is commercial software optimized for matrix operations, while GNU Octave is a free open-source alternative with high compatibility. Key features include: matrix operations (creation, manipulation, linear algebra), comprehensive mathematics (eigenvalues, SVD, FFT, ODEs, optimization, statistics), 2D/3D visualization (plot, surf, contour, with extensive customization), data import/export (CSV, Excel, MAT files, images), programming constructs (functions, scripts, control flow, OOP), signal processing (FFT, filtering, convolution), and Python integration (calling Python from MATLAB and vice versa). Supports vectorized operations for performance, anonymous functions, tables for mixed data types, and cell arrays for heterogeneous data. GNU Octave provides compatibility with most MATLAB scripts with minor differences (comments with #, block terminators like endif, compound operators like +=). Scripts can be executed via `matlab -nodisplay -r "run('script.m'); exit;"` or `octave script.m`. Use cases: numerical simulations, signal processing, image processing, control systems, statistical analysis, algorithm prototyping, data visualization, and any scientific computing task requiring matrix operations or numerical methods
|
||
- **FluidSim** - Object-oriented Python framework for high-performance computational fluid dynamics (CFD) simulations using pseudospectral methods with FFT. Provides solvers for periodic-domain equations including 2D/3D incompressible Navier-Stokes equations (with/without stratification), shallow water equations, and Föppl-von Kármán elastic plate equations. Key features include: Pythran/Transonic compilation for performance comparable to Fortran/C++, MPI parallelization for large-scale simulations, hierarchical parameter configuration with type safety, comprehensive output management (physical fields in HDF5, spatial means, energy/enstrophy spectra, spectral energy budgets), custom forcing mechanisms (time-correlated random forcing, proportional forcing, script-defined forcing), flexible initial conditions (noise, vortex, dipole, Taylor-Green, from file, in-script), online and offline visualization, and integration with ParaView/VisIt for 3D visualization. Supports workflow features including simulation restart/continuation, parametric studies with batch execution, cluster submission integration, and adaptive CFL-based time stepping. Use cases: 2D/3D turbulence studies with energy cascade analysis, stratified oceanic and atmospheric flows with buoyancy effects, geophysical flows with rotation (Coriolis effects), vortex dynamics and fundamental fluid mechanics research, high-resolution direct numerical simulation (DNS), parametric studies exploring parameter spaces, validation studies (Taylor-Green vortex), and any periodic-domain fluid dynamics research requiring HPC-grade performance with Python flexibility
|
||
|
||
### Data Analysis & Visualization
|
||
- **Dask** - Parallel computing for larger-than-memory datasets with distributed DataFrames, Arrays, Bags, and Futures
|
||
- **Data Commons** - Programmatic access to public statistical data from global sources including census bureaus, health organizations, and environmental agencies. Provides unified Python API for querying demographic data, economic indicators, health statistics, and environmental datasets through a knowledge graph interface. Features three main endpoints: Observation (statistical time-series queries for population, GDP, unemployment rates, disease prevalence), Node (knowledge graph exploration for entity relationships and hierarchies), and Resolve (entity identification from names, coordinates, or Wikidata IDs). Seamless Pandas integration for DataFrames, relation expressions for hierarchical queries, data source filtering for consistency, and support for custom Data Commons instances
|
||
- **GeoPandas** - Python library extending pandas for working with geospatial vector data including shapefiles, GeoJSON, and GeoPackage files. Provides GeoDataFrame and GeoSeries data structures combining geometric data with tabular attributes for spatial analysis. Key features include: reading/writing spatial file formats (Shapefile, GeoJSON, GeoPackage, PostGIS, Parquet) with Arrow acceleration for 2-4x faster I/O, geometric operations (buffer, simplify, centroid, convex hull, affine transformations) through Shapely integration, spatial analysis (spatial joins with predicates like intersects/contains/within, nearest neighbor joins, overlay operations for union/intersection/difference, dissolve for aggregation, clipping), coordinate reference system (CRS) management (setting CRS, reprojecting between coordinate systems, UTM estimation), and visualization (static choropleth maps with matplotlib, interactive maps with folium, multi-layer mapping, classification schemes with mapclassify). Supports spatial indexing for performance, filtering during read operations (bbox, mask, SQL WHERE), and integration with cartopy for cartographic projections. Use cases: spatial data manipulation, buffer analysis, spatial joins between datasets, dissolving boundaries, calculating areas/distances in projected CRS, reprojecting coordinate systems, creating choropleth maps, converting between spatial file formats, PostGIS database integration, and geospatial data analysis workflows
|
||
- **Matplotlib** - Comprehensive Python plotting library for creating publication-quality static, animated, and interactive visualizations. Provides extensive customization options for creating figures, subplots, axes, and annotations. Key features include: support for multiple plot types (line, scatter, bar, histogram, contour, 3D, and many more), extensive customization (colors, fonts, styles, layouts), multiple backends (PNG, PDF, SVG, interactive backends), LaTeX integration for mathematical notation, and integration with NumPy and pandas. Includes specialized modules (pyplot for MATLAB-like interface, artist layer for fine-grained control, backend layer for rendering). Supports complex multi-panel figures, color maps, legends, and annotations. Use cases: scientific figure creation, data visualization, exploratory data analysis, publication graphics, and any application requiring high-quality plots
|
||
- **NetworkX** - Comprehensive toolkit for creating, analyzing, and visualizing complex networks and graphs. Supports four graph types (Graph, DiGraph, MultiGraph, MultiDiGraph) with nodes as any hashable objects and rich edge attributes. Provides 100+ algorithms including shortest paths (Dijkstra, Bellman-Ford, A*), centrality measures (degree, betweenness, closeness, eigenvector, PageRank), clustering (coefficients, triangles, transitivity), community detection (modularity-based, label propagation, Girvan-Newman), connectivity analysis (components, cuts, flows), tree algorithms (MST, spanning trees), matching, graph coloring, isomorphism, and traversal (DFS, BFS). Includes 50+ graph generators for classic (complete, cycle, wheel), random (Erdős-Rényi, Barabási-Albert, Watts-Strogatz, stochastic block model), lattice (grid, hexagonal, hypercube), and specialized networks. Supports I/O across formats (edge lists, GraphML, GML, JSON, Pajek, GEXF, DOT) with Pandas/NumPy/SciPy integration. Visualization capabilities include 8+ layout algorithms (spring/force-directed, circular, spectral, Kamada-Kawai), customizable node/edge appearance, interactive visualizations with Plotly/PyVis, and publication-quality figure generation. Use cases: social network analysis, biological networks (protein-protein interactions, gene regulatory networks, metabolic pathways), transportation systems, citation networks, knowledge graphs, web structure analysis, infrastructure networks, and any domain involving pairwise relationships requiring structural analysis or graph-based modeling
|
||
- **Polars** - High-performance DataFrame library written in Rust with Python bindings, designed for fast data manipulation and analysis. Provides lazy evaluation for query optimization, efficient memory usage, and parallel processing. Key features include: DataFrame operations (filtering, grouping, joining, aggregations), support for large datasets (larger than RAM), integration with pandas and NumPy, expression API for complex transformations, and support for multiple data formats (CSV, Parquet, JSON, Excel, Arrow). Features query optimization through lazy evaluation, automatic parallelization, and efficient memory management. Often 5-30x faster than pandas for many operations. Use cases: large-scale data processing, ETL pipelines, data analysis workflows, and high-performance data manipulation tasks
|
||
- **Plotly** - Interactive scientific and statistical data visualization library for Python with 40+ chart types. Provides both high-level API (Plotly Express) for quick visualizations and low-level API (graph objects) for fine-grained control. Key features include: comprehensive chart types (scatter, line, bar, histogram, box, violin, heatmap, contour, 3D plots, geographic maps, financial charts, statistical distributions, hierarchical charts), interactive features (hover tooltips, pan/zoom, legend toggling, animations, rangesliders, buttons/dropdowns), publication-quality output (static images in PNG/PDF/SVG via Kaleido, interactive HTML with embeddable figures), extensive customization (templates, themes, color scales, fonts, layouts, annotations, shapes), subplot support (multi-plot figures with shared axes), and Dash integration for building analytical web applications. Plotly Express offers one-line creation of complex visualizations with automatic color encoding, faceting, and trendlines. Graph objects provide precise control for specialized visualizations (candlestick charts, 3D surfaces, sankey diagrams, gauge charts). Supports pandas DataFrames, NumPy arrays, and various data formats. Use cases: scientific data visualization, statistical analysis, financial charting, interactive dashboards, publication figures, exploratory data analysis, and any application requiring interactive or publication-quality visualizations
|
||
- **Seaborn** - Statistical data visualization with dataset-oriented interface, automatic confidence intervals, publication-quality themes, colorblind-safe palettes, and comprehensive support for exploratory analysis, distribution comparisons, correlation matrices, regression plots, and multi-panel figures
|
||
- **SimPy** - Process-based discrete-event simulation framework for modeling systems with processes, queues, and resource contention (manufacturing, service operations, network traffic, logistics). Supports generator-based process definition, multiple resource types (Resource, PriorityResource, PreemptiveResource, Container, Store), event-driven scheduling, process interaction mechanisms (signaling, interruption, parallel/sequential execution), real-time simulation synchronized with wall-clock time, and comprehensive monitoring capabilities for utilization, wait times, and queue statistics
|
||
- **SymPy** - Symbolic mathematics in Python for exact computation using mathematical symbols rather than numerical approximations. Provides comprehensive support for symbolic algebra (simplification, expansion, factorization), calculus (derivatives, integrals, limits, series), equation solving (algebraic, differential, systems of equations), matrices and linear algebra (eigenvalues, decompositions, solving linear systems), physics (classical mechanics with Lagrangian/Hamiltonian formulations, quantum mechanics, vector analysis, units), number theory (primes, factorization, modular arithmetic, Diophantine equations), geometry (2D/3D analytic geometry), combinatorics (permutations, combinations, partitions, group theory), logic and sets, statistics (probability distributions, random variables), special functions (gamma, Bessel, orthogonal polynomials), and code generation (lambdify to NumPy/SciPy functions, C/Fortran code generation, LaTeX output for documentation). Emphasizes exact arithmetic using rational numbers and symbolic representations, supports assumptions for improved simplification (positive, real, integer), integrates seamlessly with NumPy/SciPy through lambdify for fast numerical evaluation, and enables symbolic-to-numeric pipelines for scientific computing workflows
|
||
- **Vaex** - High-performance Python library for lazy, out-of-core DataFrames to process and visualize tabular datasets larger than available RAM. Processes over a billion rows per second through memory-mapped files (HDF5, Apache Arrow), lazy evaluation, and virtual columns (zero memory overhead). Provides instant file opening, efficient aggregations across billions of rows, interactive visualizations without sampling, machine learning pipelines with transformers (scalers, encoders, PCA), and seamless integration with pandas/NumPy/Arrow. Includes comprehensive ML framework (vaex.ml) with feature scaling, categorical encoding, dimensionality reduction, and integration with scikit-learn/XGBoost/LightGBM/CatBoost. Supports distributed computing via Dask, asynchronous operations, and state management for production deployment. Use cases: processing gigabyte to terabyte datasets, fast statistical aggregations on massive data, visualizing billion-row datasets, ML pipelines on big data, converting between data formats, and working with astronomical, financial, or scientific large-scale datasets
|
||
- **ReportLab** - Python library for programmatic PDF generation and document creation. Provides comprehensive tools for creating PDFs from scratch including text formatting, tables, graphics, images, charts, and complex layouts. Key features include: high-level Platypus framework for document layout, low-level canvas API for precise control, support for fonts (TrueType, Type 1), vector graphics, image embedding, page templates, headers/footers, and multi-page documents. Supports barcodes, forms, encryption, and digital signatures. Can generate reports, invoices, certificates, and complex documents programmatically. Use cases: automated report generation, document creation, invoice generation, certificate printing, and any application requiring programmatic PDF creation
|
||
|
||
### Phylogenetics & Trees
|
||
- **ETE Toolkit** - Python library for phylogenetic tree manipulation, visualization, and analysis. Provides comprehensive tools for working with phylogenetic trees including tree construction, manipulation (pruning, collapsing, rooting), tree comparison (Robinson-Foulds distance, tree reconciliation), annotation (node colors, labels, branch styles), and publication-quality visualization. Key features include: support for multiple tree formats (Newick, Nexus, PhyloXML), integration with phylogenetic software (PhyML, RAxML, FastTree), tree annotation with metadata, interactive tree visualization, and export to various image formats (PNG, PDF, SVG). Supports species trees, gene trees, and reconciliation analysis. Use cases: phylogenetic analysis, tree visualization, evolutionary biology research, comparative genomics, and teaching phylogenetics
|
||
|
||
### Genomics Tools
|
||
- **deepTools** - Comprehensive suite of Python tools for exploring and visualizing next-generation sequencing (NGS) data, particularly ChIP-seq, RNA-seq, and ATAC-seq experiments. Provides command-line tools and Python API for processing BAM and bigWig files. Key features include: quality control metrics (plotFingerprint, plotCorrelation), coverage track generation (bamCoverage for creating bigWig files), matrix generation for heatmaps (computeMatrix, plotHeatmap, plotProfile), comparative analysis (multiBigwigSummary, plotPCA), and efficient handling of large files. Supports normalization methods, binning options, and various visualization outputs. Designed for high-throughput analysis workflows and publication-quality figure generation. Use cases: ChIP-seq peak visualization, RNA-seq coverage analysis, ATAC-seq signal tracks, comparative genomics, and NGS data exploration
|
||
- **FlowIO** - Python library for reading and manipulating Flow Cytometry Standard (FCS) files, the standard format for flow cytometry data. Provides efficient parsing of FCS files (versions 2.0, 3.0, 3.1), access to event data (fluorescence intensities, scatter parameters), metadata extraction (keywords, parameters, acquisition settings), and conversion to pandas DataFrames or NumPy arrays. Features include: support for large FCS files, handling of multiple data segments, access to text segments and analysis segments, and integration with flow cytometry analysis workflows. Enables programmatic access to flow cytometry data for downstream analysis, visualization, and machine learning applications. Use cases: flow cytometry data analysis, high-throughput screening, immune cell profiling, and automated processing of FCS files
|
||
- **scikit-bio** - Python library for bioinformatics providing data structures, algorithms, and parsers for biological sequence analysis. Built on NumPy, SciPy, and pandas. Key features include: sequence objects (DNA, RNA, protein sequences) with biological alphabet validation, sequence alignment algorithms (local, global, semiglobal), phylogenetic tree manipulation, diversity metrics (alpha diversity, beta diversity, phylogenetic diversity), distance metrics for sequences and communities, file format parsers (FASTA, FASTQ, QIIME formats, Newick), and statistical analysis tools. Provides scikit-learn compatible transformers for machine learning workflows. Supports efficient processing of large sequence datasets. Use cases: sequence analysis, microbial ecology (16S rRNA analysis), metagenomics, phylogenetic analysis, and bioinformatics research requiring sequence manipulation and diversity calculations
|
||
- **Zarr** - Python library implementing the Zarr chunked, compressed N-dimensional array storage format. Provides efficient storage and access to large multi-dimensional arrays with chunking and compression. Key features include: support for NumPy-like arrays with chunked storage, multiple compression codecs (zlib, blosc, lz4, zstd), support for various data types, efficient partial array reading (only load needed chunks), support for both local filesystem and cloud storage (S3, GCS, Azure), and integration with NumPy, Dask, and Xarray. Enables working with arrays larger than available RAM through lazy loading and efficient chunk access. Supports parallel read/write operations and is optimized for cloud storage backends. Use cases: large-scale scientific data storage, cloud-based array storage, out-of-core array operations, and efficient storage of multi-dimensional datasets (genomics, imaging, climate data)
|
||
|
||
### Multi-omics & AI Agent Frameworks
|
||
- **BIOMNI** - Autonomous biomedical AI agent framework from Stanford SNAP lab for executing complex research tasks across genomics, drug discovery, molecular biology, and clinical analysis. Combines LLM reasoning with code execution and ~11GB of integrated biomedical databases (Ensembl, NCBI Gene, UniProt, PDB, AlphaFold, ClinVar, OMIM, HPO, PubMed, KEGG, Reactome, GO). Supports multiple LLM providers (Claude, GPT-4, Gemini, Groq, Bedrock). Includes A1 agent class for autonomous task decomposition, BiomniEval1 benchmark framework, and MCP server integration. Use cases: CRISPR screening design, single-cell RNA-seq analysis, ADMET prediction, GWAS interpretation, rare disease diagnosis, protein structure analysis, literature synthesis, and multi-omics integration
|
||
- **Denario** - Multiagent AI system for scientific research assistance that automates complete research workflows from data analysis through publication. Built on AG2 and LangGraph frameworks, orchestrates specialized agents for hypothesis generation, methodology development, computational analysis, and LaTeX paper writing. Supports multiple LLM providers (Google Vertex AI, OpenAI) with flexible pipeline stages allowing manual or automated inputs. Key features include: end-to-end research automation (data description → idea generation → methodology → results → paper), journal-specific formatting (APS and others), GUI interface via Streamlit, Docker deployment with LaTeX environment, reproducible research with version-controlled outputs, literature search integration, and integration with scientific Python stack (pandas, sklearn, scipy). Provides both programmatic Python API and web-based interface. Use cases: automated hypothesis generation from datasets, research methodology development, computational experiment execution with visualization, publication-ready manuscript generation, time-series analysis research, machine learning experiment automation, and accelerating the complete scientific research lifecycle from ideation to publication
|
||
- **HypoGeniC** - Automated hypothesis generation and testing using large language models to accelerate scientific discovery. Provides three frameworks: HypoGeniC (data-driven hypothesis generation from observational data), HypoRefine (synergistic approach combining literature insights with empirical patterns through an agentic system), and Union methods (mechanistic combination of literature and data-driven hypotheses). Features iterative refinement that improves hypotheses by learning from challenging examples, Redis caching for API cost reduction, and customizable YAML-based prompt templates. Includes command-line tools for generation (hypogenic_generation) and testing (hypogenic_inference). Research applications have demonstrated 14.19% accuracy improvement in AI-content detection and 7.44% in deception detection. Use cases: deception detection in reviews, AI-generated content identification, mental stress detection, exploratory research without existing literature, hypothesis-driven analysis in novel domains, and systematic exploration of competing explanations
|
||
|
||
### Scientific Communication & Publishing
|
||
- **Citation Management** - Comprehensive citation management for academic research. Search Google Scholar and PubMed for papers, extract accurate metadata from multiple sources (CrossRef, PubMed, arXiv), validate citations, and generate properly formatted BibTeX entries. Features include converting DOIs, PMIDs, or arXiv IDs to BibTeX, cleaning and formatting bibliography files, finding highly cited papers, checking for duplicates, and ensuring consistent citation formatting. Use cases: building bibliographies for manuscripts, verifying citation accuracy, citation deduplication, and maintaining reference databases
|
||
- **Generate Image** - AI-powered image generation and editing for scientific illustrations, schematics, and visualizations using OpenRouter's image generation models. Supports multiple models including google/gemini-3-pro-image-preview (high quality, recommended default) and black-forest-labs/flux.2-pro (fast, high quality). Key features include: text-to-image generation from detailed prompts, image editing capabilities (modify existing images with natural language instructions), automatic base64 encoding/decoding, PNG output with configurable paths, and comprehensive error handling. Requires OpenRouter API key (via .env file or environment variable). Use cases: generating scientific diagrams and illustrations, creating publication-quality figures, editing existing images (changing colors, adding elements, removing backgrounds), producing schematics for papers and presentations, visualizing experimental setups, creating graphical abstracts, and generating conceptual illustrations for scientific communication
|
||
- **LaTeX Posters** - Create professional research posters in LaTeX using beamerposter, tikzposter, or baposter. Support for conference presentations, academic posters, and scientific communication with layout design, color schemes, multi-column formats, figure integration, and poster-specific best practices. Features compliance with conference size requirements (A0, A1, 36×48"), complex multi-column layouts, and integration of figures, tables, equations, and citations. Use cases: conference poster sessions, thesis defenses, symposia presentations, and research group templates
|
||
- **Market Research Reports** - Generate comprehensive market research reports (50+ pages) in the style of top consulting firms (McKinsey, BCG, Gartner). Features professional LaTeX formatting, extensive visual generation, deep integration with research-lookup for data gathering, and multi-framework strategic analysis including Porter's Five Forces, PESTLE, SWOT, TAM/SAM/SOM, and BCG Matrix. Use cases: investment decisions, strategic planning, competitive landscape analysis, market sizing, and market entry evaluation
|
||
- **Paper-2-Web** - Autonomous pipeline for transforming academic papers into multiple promotional formats using the Paper2All system. Converts LaTeX or PDF papers into: (1) Paper2Web - interactive, layout-aware academic homepages with responsive design, interactive figures, and mobile support; (2) Paper2Video - professional presentation videos with slides, narration, cursor movements, and optional talking-head generation using Hallo2; (3) Paper2Poster - print-ready conference posters with custom dimensions, professional layouts, and institution branding. Supports GPT-4/GPT-4.1 models, batch processing, QR code generation, multi-language content, and quality assessment metrics. Use cases: conference materials, video abstracts, preprint enhancement, research promotion, poster sessions, and academic website creation
|
||
- **Perplexity Search** - AI-powered web search using Perplexity models via LiteLLM and OpenRouter for real-time, web-grounded answers with source citations. Provides access to multiple Perplexity models: Sonar Pro (general-purpose, best cost-quality balance), Sonar Pro Search (most advanced agentic search with multi-step reasoning), Sonar (cost-effective for simple queries), Sonar Reasoning Pro (advanced step-by-step analysis), and Sonar Reasoning (basic reasoning). Key features include: single OpenRouter API key setup (no separate Perplexity account), real-time access to current information beyond training data cutoff, comprehensive query design guidance (domain-specific patterns, time constraints, source preferences), cost optimization strategies with usage monitoring, programmatic and CLI interfaces, batch processing support, and integration with other scientific skills. Installation uses uv pip for LiteLLM, with detailed setup, troubleshooting, and security documentation. Use cases: finding recent scientific publications and research, conducting literature searches across domains, verifying facts with source citations, accessing current developments in any field, comparing technologies and approaches, performing domain-specific research (biomedical, clinical, technical), supplementing PubMed searches with real-time web results, and discovering latest developments post-database indexing
|
||
- **PPTX Posters** - Create professional research posters using PowerPoint/HTML formats for researchers who prefer WYSIWYG tools over LaTeX. Features design principles, layout templates, quality checklists, and export guidance for poster sessions. Use cases: conference posters when LaTeX is not preferred, quick poster creation, and collaborative poster design
|
||
- **Scientific Schematics** - Create publication-quality scientific diagrams using Nano Banana Pro AI with smart iterative refinement. Uses Gemini 3 Pro for quality review with document-type-specific thresholds (journal: 8.5/10, conference: 8.0/10, poster: 7.0/10). Specializes in neural network architectures, system diagrams, flowcharts, biological pathways, and complex scientific visualizations. Features natural language input, automatic quality assessment, and publication-ready output. Use cases: creating figures for papers, generating workflow diagrams, visualizing experimental designs, and producing graphical abstracts
|
||
- **Scientific Slides** - Build slide decks and presentations for research talks using PowerPoint and LaTeX Beamer. Features slide structure, design templates, timing guidance, and visual validation. Emphasizes visual engagement with minimal text, research-backed content with proper citations, and story-driven narrative. Use cases: conference presentations, academic seminars, thesis defenses, grant pitches, and professional talks
|
||
- **Venue Templates** - Access comprehensive LaTeX templates, formatting requirements, and submission guidelines for major scientific publication venues (Nature, Science, PLOS, IEEE, ACM), academic conferences (NeurIPS, ICML, CVPR, CHI), research posters, and grant proposals (NSF, NIH, DOE, DARPA). Provides ready-to-use templates and detailed specifications for successful academic submissions. Use cases: manuscript preparation, conference papers, research posters, and grant proposals with venue-specific formatting
|
||
|
||
### Document Processing & Conversion
|
||
- **MarkItDown** - Python utility for converting 20+ file formats to Markdown optimized for LLM processing. Converts Office documents (PDF, DOCX, PPTX, XLSX), images with OCR, audio with transcription, web content (HTML, YouTube transcripts, EPUB), and structured data (CSV, JSON, XML) while preserving document structure (headings, lists, tables, hyperlinks). Key features include: Azure Document Intelligence integration for enhanced PDF table extraction, LLM-powered image descriptions using GPT-4o, batch processing with ZIP archive support, modular installation for specific formats, streaming approach without temporary files, and plugin system for custom converters. Supports Python 3.10+. Use cases: preparing documents for RAG systems, extracting text from PDFs and Office files, transcribing audio to text, performing OCR on images and scanned documents, converting YouTube videos to searchable text, processing HTML and EPUB books, converting structured data to readable format, document analysis pipelines, and LLM training data preparation
|
||
|
||
### Laboratory Automation & Equipment Control
|
||
- **PyLabRobot** - Hardware-agnostic, pure Python SDK for automated and autonomous laboratories. Provides unified interface for controlling liquid handling robots (Hamilton STAR/STARlet, Opentrons OT-2, Tecan EVO), plate readers (BMG CLARIOstar), heater shakers, incubators, centrifuges, pumps, and scales. Key features include: modular resource management system for plates, tips, and containers with hierarchical deck layouts and JSON serialization; comprehensive liquid handling operations (aspirate, dispense, transfer, serial dilutions, plate replication) with automatic tip and volume tracking; backend abstraction enabling hardware-agnostic protocols that work across different robots; ChatterboxBackend for protocol simulation and testing without hardware; browser-based visualizer for real-time 3D deck state visualization; cross-platform support (Windows, macOS, Linux, Raspberry Pi); and integration capabilities for multi-device workflows combining liquid handlers, analytical equipment, and material handling devices. Use cases: automated sample preparation, high-throughput screening, serial dilution protocols, plate reading workflows, laboratory protocol development and validation, robotic liquid handling automation, and reproducible laboratory automation with state tracking and persistence
|
||
|
||
### Tool Discovery & Research Platforms
|
||
- **Get Available Resources** - Detect available computational resources and generate strategic recommendations for scientific computing tasks at the start of any computationally intensive scientific task. Automatically identifies CPU capabilities, GPU availability (NVIDIA CUDA, AMD ROCm, Apple Silicon Metal), memory constraints, and disk space. Creates JSON file with resource information and recommendations for parallel processing (joblib, multiprocessing), out-of-core computing (Dask, Zarr), GPU acceleration (PyTorch, JAX), or memory-efficient strategies. Use cases: determining optimal computational approaches before data analysis, model training, or large file operations
|
||
- **ToolUniverse** - Unified ecosystem providing standardized access to 600+ scientific tools, models, datasets, and APIs across bioinformatics, cheminformatics, genomics, structural biology, and proteomics. Enables AI agents to function as research scientists through: (1) Tool Discovery - natural language, semantic, and keyword-based search for finding relevant scientific tools (Tool_Finder, Tool_Finder_LLM, Tool_Finder_Keyword); (2) Tool Execution - standardized AI-Tool Interaction Protocol for running tools with consistent interfaces; (3) Tool Composition - sequential and parallel workflow chaining for multi-step research pipelines; (4) Model Context Protocol (MCP) integration for Claude Desktop/Code. Supports drug discovery workflows (disease→targets→structures→screening→candidates), genomics analysis (expression→differential analysis→pathways), clinical genomics (variants→annotation→pathogenicity→disease associations), and cross-domain research. Use cases: accessing scientific databases (OpenTargets, PubChem, UniProt, PDB, ChEMBL, KEGG), protein structure prediction (AlphaFold), molecular docking, pathway enrichment, variant annotation, literature searches, and automated scientific workflows
|
||
|
||
### Research Methodology & Proposal Writing
|
||
- **Research Grants** - Write competitive research proposals for NSF, NIH, DOE, and DARPA. Features agency-specific formatting, review criteria understanding, budget preparation, broader impacts statements, significance narratives, innovation sections, and compliance with submission requirements. Covers project descriptions, specific aims, technical narratives, milestone plans, budget justifications, and biosketches. Use cases: federal grant applications, resubmissions with reviewer response, multi-institutional collaborations, and preliminary data sections
|
||
- **Research Lookup** - Look up current research information using Perplexity's Sonar Pro Search or Sonar Reasoning Pro models through OpenRouter. Intelligently selects models based on query complexity. Provides access to current academic literature, recent studies, technical documentation, and general research information with proper citations. Use cases: finding latest research, literature verification, gathering background research, finding citation sources, and staying current with emerging trends
|
||
- **Scholar Evaluation** - Apply the ScholarEval framework to systematically evaluate scholarly and research work. Provides structured evaluation methodology based on peer-reviewed research assessment criteria for analyzing academic papers, research proposals, literature reviews, and scholarly writing across multiple quality dimensions. Use cases: evaluating research papers for quality and rigor, assessing methodology design, scoring data analysis approaches, benchmarking research quality, and assessing publication readiness
|
||
|
||
### Regulatory & Standards Compliance
|
||
- **ISO 13485 Certification** - Comprehensive toolkit for preparing ISO 13485:2016 certification documentation for medical device Quality Management Systems. Provides gap analysis of existing documentation, templates for all mandatory documents, compliance checklists, and step-by-step documentation creation. Covers 31 required procedures including Quality Manuals, Medical Device Files, and work instructions. Use cases: starting ISO 13485 certification process, conducting gap analysis, creating or updating QMS documentation, preparing for certification audits, transitioning from FDA QSR to QMSR, and harmonizing with EU MDR requirements
|
||
|
||
## Scientific Thinking & Analysis
|
||
|
||
### Analysis & Methodology
|
||
- **Exploratory Data Analysis** - Comprehensive EDA toolkit with automated statistics, visualizations, and insights for any tabular dataset
|
||
- **Hypothesis Generation** - Structured frameworks for generating and evaluating scientific hypotheses
|
||
- **Literature Review** - Systematic literature search and review toolkit with support for multiple scientific databases (PubMed, bioRxiv, Google Scholar), citation management with multiple citation styles (APA, AMA, Vancouver, Chicago, IEEE, Nature, Science), citation verification and deduplication, search strategies (Boolean operators, MeSH terms, field tags), PDF report generation with formatted references, and comprehensive templates for conducting systematic reviews following PRISMA guidelines
|
||
- **Peer Review** - Comprehensive toolkit for conducting high-quality scientific peer review with structured evaluation of methodology, statistics, reproducibility, ethics, and presentation across all scientific disciplines
|
||
- **Scientific Brainstorming** - Conversational brainstorming partner for generating novel research ideas, exploring connections, challenging assumptions, and developing creative approaches through structured ideation workflows
|
||
- **Scientific Critical Thinking** - Tools and approaches for rigorous scientific reasoning and evaluation
|
||
- **Scientific Visualization** - Best practices and templates for creating publication-quality scientific figures with matplotlib and seaborn, including statistical plots with automatic confidence intervals, colorblind-safe palettes, multi-panel figures, heatmaps, and journal-specific formatting
|
||
- **Scientific Writing** - Comprehensive toolkit for writing, structuring, and formatting scientific research papers using IMRAD format, multiple citation styles (APA, AMA, Vancouver, Chicago, IEEE), reporting guidelines (CONSORT, STROBE, PRISMA), effective figures and tables, field-specific terminology, venue-specific structure expectations, and core writing principles for clarity, conciseness, and accuracy across all scientific disciplines
|
||
- **Statistical Analysis** - Comprehensive statistical testing, power analysis, and experimental design
|
||
|
||
### Document Processing
|
||
- **XLSX** - Spreadsheet creation, editing, and analysis with support for formulas, formatting, data analysis, and visualization
|
||
|