# TimesFM Forecast Report: Global Temperature Anomaly (2025) **Model:** TimesFM 1.0 (200M) PyTorch **Generated:** 2026-02-21 **Source:** NOAA GISTEMP Global Land-Ocean Temperature Index --- ## Executive Summary TimesFM forecasts a mean temperature anomaly of **1.19°C** for 2025, slightly below the 2024 average of 1.25°C. The model predicts continued elevated temperatures with a peak of 1.30°C in March 2025 and a minimum of 1.06°C in December 2025. --- ## Input Data ### Historical Temperature Anomalies (2022-2024) | Date | Anomaly (°C) | Date | Anomaly (°C) | Date | Anomaly (°C) | |------|-------------|------|-------------|------|-------------| | 2022-01 | 0.89 | 2023-01 | 0.87 | 2024-01 | 1.22 | | 2022-02 | 0.89 | 2023-02 | 0.98 | 2024-02 | 1.35 | | 2022-03 | 1.02 | 2023-03 | 1.21 | 2024-03 | 1.34 | | 2022-04 | 0.88 | 2023-04 | 1.00 | 2024-04 | 1.26 | | 2022-05 | 0.85 | 2023-05 | 0.94 | 2024-05 | 1.15 | | 2022-06 | 0.88 | 2023-06 | 1.08 | 2024-06 | 1.20 | | 2022-07 | 0.88 | 2023-07 | 1.18 | 2024-07 | 1.24 | | 2022-08 | 0.90 | 2023-08 | 1.24 | 2024-08 | 1.30 | | 2022-09 | 0.88 | 2023-09 | 1.47 | 2024-09 | 1.28 | | 2022-10 | 0.95 | 2023-10 | 1.32 | 2024-10 | 1.27 | | 2022-11 | 0.77 | 2023-11 | 1.18 | 2024-11 | 1.22 | | 2022-12 | 0.78 | 2023-12 | 1.16 | 2024-12 | 1.20 | **Statistics:** - Total observations: 36 months - Mean anomaly: 1.09°C - Trend (2022→2024): +0.37°C --- ## Raw Forecast Output ### Point Forecast and Confidence Intervals | Month | Point | 80% CI | 90% CI | |-------|-------|--------|--------| | 2025-01 | 1.259 | [1.141, 1.297] | [1.248, 1.324] | | 2025-02 | 1.286 | [1.141, 1.340] | [1.277, 1.375] | | 2025-03 | 1.295 | [1.127, 1.355] | [1.287, 1.404] | | 2025-04 | 1.221 | [1.035, 1.290] | [1.208, 1.331] | | 2025-05 | 1.170 | [0.969, 1.239] | [1.153, 1.289] | | 2025-06 | 1.146 | [0.942, 1.218] | [1.128, 1.270] | | 2025-07 | 1.170 | [0.950, 1.248] | [1.151, 1.300] | | 2025-08 | 1.203 | [0.971, 1.284] | [1.186, 1.341] | | 2025-09 | 1.191 | [0.959, 1.283] | [1.178, 1.335] | | 2025-10 | 1.149 | [0.908, 1.240] | [1.126, 1.287] | | 2025-11 | 1.080 | [0.836, 1.176] | [1.062, 1.228] | | 2025-12 | 1.061 | [0.802, 1.153] | [1.037, 1.217] | ### JSON Output ```json { "model": "TimesFM 1.0 (200M) PyTorch", "input": { "source": "NOAA GISTEMP Global Temperature Anomaly", "n_observations": 36, "date_range": "2022-01 to 2024-12", "mean_anomaly_c": 1.089 }, "forecast": { "horizon": 12, "dates": ["2025-01", "2025-02", "2025-03", "2025-04", "2025-05", "2025-06", "2025-07", "2025-08", "2025-09", "2025-10", "2025-11", "2025-12"], "point": [1.259, 1.286, 1.295, 1.221, 1.170, 1.146, 1.170, 1.203, 1.191, 1.149, 1.080, 1.061] }, "summary": { "forecast_mean_c": 1.186, "forecast_max_c": 1.295, "forecast_min_c": 1.061, "vs_last_year_mean": -0.067 } } ``` --- ## Visualization ![Temperature Anomaly Forecast](forecast_visualization.png) --- ## Findings ### Key Observations 1. **Slight cooling trend expected**: The model forecasts a mean anomaly 0.07°C below 2024 levels, suggesting a potential stabilization after the record-breaking temperatures of 2023-2024. 2. **Seasonal pattern preserved**: The forecast shows the expected seasonal variation with higher anomalies in late winter (Feb-Mar) and lower in late fall (Nov-Dec). 3. **Widening uncertainty**: The 90% CI expands from ±0.04°C in January to ±0.08°C in December, reflecting typical forecast uncertainty growth over time. 4. **Peak temperature**: March 2025 is predicted to have the highest anomaly at 1.30°C, potentially approaching the September 2023 record of 1.47°C. ### Limitations - TimesFM is a zero-shot forecaster without physical climate model constraints - The 36-month training window may not capture multi-decadal climate trends - El Niño/La Niña cycles are not explicitly modeled ### Recommendations - Use this forecast as a baseline comparison for physics-based climate models - Update forecast quarterly as new observations become available - Consider ensemble approaches combining TimesFM with other methods --- ## Reproducibility ### Files | File | Description | |------|-------------| | `temperature_anomaly.csv` | Input data (36 months) | | `forecast_output.csv` | Point forecast with quantiles | | `forecast_output.json` | Machine-readable forecast | | `forecast_visualization.png` | Fan chart visualization | | `run_forecast.py` | Forecasting script | | `visualize_forecast.py` | Visualization script | | `run_example.sh` | One-click runner | ### How to Reproduce ```bash # Install dependencies uv pip install "timesfm[torch]" matplotlib pandas numpy # Run the complete example cd scientific-skills/timesfm-forecasting/examples/global-temperature ./run_example.sh ``` --- ## Technical Notes ### API Discovery The TimesFM PyTorch API differs from the GitHub README documentation: **Documented (GitHub README):** ```python model = timesfm.TimesFm( context_len=512, horizon_len=128, backend="gpu", ) model.load_from_google_repo("google/timesfm-2.5-200m-pytorch") ``` **Actual Working API:** ```python hparams = timesfm.TimesFmHparams(horizon_len=12) checkpoint = timesfm.TimesFmCheckpoint( huggingface_repo_id="google/timesfm-1.0-200m-pytorch" ) model = timesfm.TimesFm(hparams=hparams, checkpoint=checkpoint) ``` ### TimesFM 2.5 PyTorch Issue The `google/timesfm-2.5-200m-pytorch` checkpoint downloads as `model.safetensors`, but the TimesFM loader expects `torch_model.ckpt`. This causes a `FileNotFoundError` at model load time. Using TimesFM 1.0 PyTorch resolves this issue. --- *Report generated by TimesFM Forecasting Skill (claude-scientific-skills)*