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Refactor descriptions in markdown-mermaid-writing and timesfm-forecasting skills for clarity and conciseness, removing redundant details while maintaining essential information.
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---
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name: markdown-mermaid-writing
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description: >
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Comprehensive markdown and Mermaid diagram writing skill that establishes text-based
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diagrams as the DEFAULT documentation standard. Use this skill when creating ANY
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scientific document, report, analysis, or visualization — it ensures all outputs are
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in version-controlled, token-efficient markdown with embedded Mermaid diagrams as the
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source of truth, with clear pathways to downstream Python or AI-generated images.
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Includes full style guides (markdown + mermaid), 24 diagram type references, and
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9 document templates ready to use.
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description: Comprehensive markdown and Mermaid diagram writing skill. Use when creating any scientific document, report, analysis, or visualization. Establishes text-based diagrams as the default documentation standard with full style guides (markdown + mermaid), 24 diagram type references, and 9 document templates.
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allowed-tools: Read Write Edit Bash
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license: Apache-2.0
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metadata:
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@@ -1,14 +1,6 @@
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---
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name: timesfm-forecasting
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description: >
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Zero-shot time series forecasting with Google's TimesFM foundation model. Use this
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skill when forecasting ANY univariate time series — sales, sensor readings, stock prices,
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energy demand, patient vitals, weather, or scientific measurements — without training a
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custom model. Automatically checks system RAM/GPU before loading the model, supports
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CSV/DataFrame/array inputs, and returns point forecasts with calibrated prediction
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intervals. Includes a preflight system checker script that MUST be run before first use
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to verify the machine can load the model. For classical statistical time series models
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(ARIMA, SARIMAX, VAR) use statsmodels; for time series classification/clustering use aeon.
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description: Zero-shot time series forecasting with Google's TimesFM foundation model. Use for any univariate time series (sales, sensors, energy, vitals, weather) without training a custom model. Supports CSV/DataFrame/array inputs with point forecasts and prediction intervals. Includes a preflight system checker script to verify RAM/GPU before first use.
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allowed-tools: Read Write Edit Bash
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license: Apache-2.0 license
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metadata:
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