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timesfm-forecasting

K-Dense-AI
업데이트됨 1 month ago
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정보

이 스킬은 Google의 TimesFM 모델을 사용하여 판매량이나 센서 판독값과 같은 단변량 데이터에 대해 별도의 맞춤형 학습 없이 제로샷 시계열 예측을 제공합니다. CSV, DataFrame 또는 배열 입력을 받아 점 예측치와 예측 구간을 출력합니다. 첫 사용 전 시스템 리소스를 확인하는 사전 점검 기능이 포함되어 있습니다.

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Claude Code

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기본
npx skills add K-Dense-AI/claude-scientific-skills -a claude-code
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/plugin add https://github.com/K-Dense-AI/claude-scientific-skills
Git 클론대체
git clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/timesfm-forecasting

Claude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요

문서

TimesFM Forecasting

Overview

TimesFM (Time Series Foundation Model) is a pretrained decoder-only foundation model developed by Google Research for time-series forecasting. It works zero-shot — feed it any univariate time series and it returns point forecasts with calibrated quantile prediction intervals, no training required.

This skill wraps TimesFM for safe, agent-friendly local inference. It includes a mandatory preflight system checker that verifies RAM, GPU memory, and disk space before the model is ever loaded so the agent never crashes a user's machine.

Key numbers: TimesFM 2.5 uses 200M parameters (~800 MB on disk, ~1.5 GB in RAM on CPU, ~1 GB VRAM on GPU). The archived v1/v2 500M-parameter model needs ~32 GB RAM. Always run the system checker first.

When to Use This Skill

Use this skill when:

  • Forecasting any univariate time series (sales, demand, sensor, vitals, price, weather)
  • You need zero-shot forecasting without training a custom model
  • You want probabilistic forecasts with calibrated prediction intervals (quantiles)
  • You have time series of any length (the model handles 1–16,384 context points)
  • You need to batch-forecast hundreds or thousands of series efficiently
  • You want a foundation model approach instead of hand-tuning ARIMA/ETS parameters

Do not use this skill when:

  • You need classical statistical models with coefficient interpretation → use statsmodels
  • You need time series classification or clustering → use aeon
  • You need multivariate vector autoregression or Granger causality → use statsmodels
  • Your data is tabular (not temporal) → use scikit-learn

Note on Anomaly Detection: TimesFM does not have built-in anomaly detection, but you can use the quantile forecasts as prediction intervals — values outside the 90% CI (q10–q90) are statistically unusual. See the examples/anomaly-detection/ directory for a full example.

⚠️ Mandatory Preflight: System Requirements Check

CRITICAL — ALWAYS run the system checker before loading the model for the first time.

python scripts/check_system.py

This script checks:

  1. Available RAM — warns if below 4 GB, blocks if below 2 GB
  2. GPU availability — detects CUDA/MPS devices and VRAM
  3. Disk space — verifies room for the ~800 MB model download
  4. Python version — requires 3.10+
  5. Existing installation — checks if timesfm and torch are installed

Note: Model weights are NOT stored in this repository. TimesFM weights (~800 MB) download on-demand from HuggingFace on first use and cache in ~/.cache/huggingface/. The preflight checker ensures sufficient resources before any download begins.

flowchart TD
    accTitle: Preflight System Check
    accDescr: Decision flowchart showing the system requirement checks that must pass before loading TimesFM.

    start["🚀 Run check_system.py"] --> ram{"RAM ≥ 4 GB?"}
    ram -->|"Yes"| gpu{"GPU available?"}
    ram -->|"No (2-4 GB)"| warn_ram["⚠️ Warning: tight RAM<br/>CPU-only, small batches"]
    ram -->|"No (< 2 GB)"| block["🛑 BLOCKED<br/>Insufficient memory"]
    warn_ram --> disk
    gpu -->|"CUDA / MPS"| vram{"VRAM ≥ 2 GB?"}
    gpu -->|"CPU only"| cpu_ok["✅ CPU mode<br/>Slower but works"]
    vram -->|"Yes"| gpu_ok["✅ GPU mode<br/>Fast inference"]
    vram -->|"No"| cpu_ok
    gpu_ok --> disk{"Disk ≥ 2 GB free?"}
    cpu_ok --> disk
    disk -->|"Yes"| ready["✅ READY<br/>Safe to load model"]
    disk -->|"No"| block_disk["🛑 BLOCKED<br/>Need space for weights"]

    classDef ok fill:#dcfce7,stroke:#16a34a,stroke-width:2px,color:#14532d
    classDef warn fill:#fef9c3,stroke:#ca8a04,stroke-width:2px,color:#713f12
    classDef block fill:#fee2e2,stroke:#dc2626,stroke-width:2px,color:#7f1d1d
    classDef neutral fill:#f3f4f6,stroke:#6b7280,stroke-width:2px,color:#1f2937

    class ready,gpu_ok,cpu_ok ok
    class warn_ram warn
    class block,block_disk block
    class start,ram,gpu,vram,disk neutral

Hardware Requirements by Model Version

ModelParametersRAM (CPU)VRAM (GPU)DiskContext
TimesFM 2.5 (recommended)200M≥ 4 GB≥ 2 GB~800 MBup to 16,384
TimesFM 2.0 (archived)500M≥ 16 GB≥ 8 GB~2 GBup to 2,048
TimesFM 1.0 (archived)200M≥ 8 GB≥ 4 GB~800 MBup to 2,048

Recommendation: Always use TimesFM 2.5 unless you have a specific reason to use an older checkpoint. It is smaller, faster, and supports 8× longer context.

🔧 Installation

Step 1: Verify System (always first)

python scripts/check_system.py

Step 2: Install TimesFM

# Using uv (recommended by this repo)
uv pip install timesfm[torch]

# Or using pip
pip install timesfm[torch]

# For JAX/Flax backend (faster on TPU/GPU)
uv pip install timesfm[flax]

Step 3: Install PyTorch for Your Hardware

# CUDA 12.1 (NVIDIA GPU)
pip install torch>=2.0.0 --index-url https://download.pytorch.org/whl/cu121

# CPU only
pip install torch>=2.0.0 --index-url https://download.pytorch.org/whl/cpu

# Apple Silicon (MPS)
pip install torch>=2.0.0  # MPS support is built-in

Step 4: Verify Installation

import timesfm
import numpy as np
print(f"TimesFM version: {timesfm.__version__}")
print("Installation OK")

🎯 Quick Start

Minimal Example (5 Lines)

import torch, numpy as np, timesfm

torch.set_float32_matmul_precision("high")

model = timesfm.TimesFM_2p5_200M_torch.from_pretrained(
    "google/timesfm-2.5-200m-pytorch"
)
model.compile(timesfm.ForecastConfig(
    max_context=1024, max_horizon=256, normalize_inputs=True,
    use_continuous_quantile_head=True, force_flip_invariance=True,
    infer_is_positive=True, fix_quantile_crossing=True,
))

point, quantiles = model.forecast(horizon=24, inputs=[
    np.sin(np.linspace(0, 20, 200)),  # any 1-D array
])
# point.shape == (1, 24)        — median forecast
# quantiles.shape == (1, 24, 10) — 10th–90th percentile bands

Forecast from CSV

import pandas as pd, numpy as np

df = pd.read_csv("monthly_sales.csv", parse_dates=["date"], index_col="date")

# Convert each column to a list of arrays
inputs = [df[col].dropna().values.astype(np.float32) for col in df.columns]

point, quantiles = model.forecast(horizon=12, inputs=inputs)

# Build a results DataFrame
for i, col in enumerate(df.columns):
    last_date = df[col].dropna().index[-1]
    future_dates = pd.date_range(last_date, periods=13, freq="MS")[1:]
    forecast_df = pd.DataFrame({
        "date": future_dates,
        "forecast": point[i],
        "lower_80": quantiles[i, :, 2],  # 20th percentile
        "upper_80": quantiles[i, :, 8],  # 80th percentile
    })
    print(f"\n--- {col} ---")
    print(forecast_df.to_string(index=False))

Forecast with Covariates (XReg)

TimesFM 2.5+ supports exogenous variables through forecast_with_covariates(). Requires timesfm[xreg].

# Requires: uv pip install timesfm[xreg]
point, quantiles = model.forecast_with_covariates(
    inputs=inputs,
    dynamic_numerical_covariates={"price": price_arrays},
    dynamic_categorical_covariates={"holiday": holiday_arrays},
    static_categorical_covariates={"region": region_labels},
    xreg_mode="xreg + timesfm",  # or "timesfm + xreg"
)
Covariate TypeDescriptionExample
dynamic_numericalTime-varying numericprice, temperature, promotion spend
dynamic_categoricalTime-varying categoricalholiday flag, day of week
static_numericalPer-series numericstore size, account age
static_categoricalPer-series categoricalstore type, region, product category

XReg Modes:

  • "xreg + timesfm" (default): TimesFM forecasts first, then XReg adjusts residuals
  • "timesfm + xreg": XReg fits first, then TimesFM forecasts residuals

See examples/covariates-forecasting/ for a complete example with synthetic retail data.

Anomaly Detection (via Quantile Intervals)

TimesFM does not have built-in anomaly detection, but the quantile forecasts naturally provide prediction intervals that can detect anomalies:

point, q = model.forecast(horizon=H, inputs=[values])

# 90% prediction interval
lower_90 = q[0, :, 1]  # 10th percentile
upper_90 = q[0, :, 9]  # 90th percentile

# Detect anomalies: values outside the 90% CI
actual = test_values  # your holdout data
anomalies = (actual < lower_90) | (actual > upper_90)

# Severity levels
is_warning = (actual < q[0, :, 2]) | (actual > q[0, :, 8])  # outside 80% CI
is_critical = anomalies  # outside 90% CI
SeverityConditionInterpretation
NormalInside 80% CIExpected behavior
WarningOutside 80% CIUnusual but possible
CriticalOutside 90% CIStatistically rare (< 10% probability)

See examples/anomaly-detection/ for a complete example with visualization.

# Requires: uv pip install timesfm[xreg]
point, quantiles = model.forecast_with_covariates(
    inputs=inputs,
    dynamic_numerical_covariates={"temperature": temp_arrays},
    dynamic_categorical_covariates={"day_of_week": dow_arrays},
    static_categorical_covariates={"region": region_labels},
    xreg_mode="xreg + timesfm",  # or "timesfm + xreg"
)

📊 Understanding the Output

Quantile Forecast Structure

TimesFM returns (point_forecast, quantile_forecast):

  • point_forecast: shape (batch, horizon) — the median (0.5 quantile)
  • quantile_forecast: shape (batch, horizon, 10) — ten slices:
IndexQuantileUse
0MeanAverage prediction
10.1Lower bound of 80% PI
20.2Lower bound of 60% PI
30.3
40.4
50.5Median (= point_forecast)
60.6
70.7
80.8Upper bound of 60% PI
90.9Upper bound of 80% PI

Extracting Prediction Intervals

point, q = model.forecast(horizon=H, inputs=data)

# 80% prediction interval (most common)
lower_80 = q[:, :, 1]  # 10th percentile
upper_80 = q[:, :, 9]  # 90th percentile

# 60% prediction interval (tighter)
lower_60 = q[:, :, 2]  # 20th percentile
upper_60 = q[:, :, 8]  # 80th percentile

# Median (same as point forecast)
median = q[:, :, 5]
flowchart LR
    accTitle: Quantile Forecast Anatomy
    accDescr: Diagram showing how the 10-element quantile vector maps to prediction intervals.

    input["📈 Input Series<br/>1-D array"] --> model["🤖 TimesFM<br/>compile + forecast"]
    model --> point["📍 Point Forecast<br/>(batch, horizon)"]
    model --> quant["📊 Quantile Forecast<br/>(batch, horizon, 10)"]
    quant --> pi80["80% PI<br/>q[:,:,1] – q[:,:,9]"]
    quant --> pi60["60% PI<br/>q[:,:,2] – q[:,:,8]"]
    quant --> median["Median<br/>q[:,:,5]"]

    classDef data fill:#dbeafe,stroke:#2563eb,stroke-width:2px,color:#1e3a5f
    classDef model fill:#f3e8ff,stroke:#9333ea,stroke-width:2px,color:#581c87
    classDef output fill:#dcfce7,stroke:#16a34a,stroke-width:2px,color:#14532d

    class input data
    class model model
    class point,quant,pi80,pi60,median output

🔧 ForecastConfig Reference

All forecasting behavior is controlled by timesfm.ForecastConfig:

timesfm.ForecastConfig(
    max_context=1024,                    # Max context window (truncates longer series)
    max_horizon=256,                     # Max forecast horizon
    normalize_inputs=True,               # Normalize inputs (RECOMMENDED for stability)
    per_core_batch_size=32,              # Batch size per device (tune for memory)
    use_continuous_quantile_head=True,   # Better quantile accuracy for long horizons
    force_flip_invariance=True,          # Ensures f(-x) = -f(x) (mathematical consistency)
    infer_is_positive=True,              # Clamp forecasts ≥ 0 when all inputs > 0
    fix_quantile_crossing=True,          # Ensure q10 ≤ q20 ≤ ... ≤ q90
    return_backcast=False,               # Return backcast (for covariate workflows)
)
ParameterDefaultWhen to Change
max_context0Set to match your longest historical window (e.g., 512, 1024, 4096)
max_horizon0Set to your maximum forecast length
normalize_inputsFalseAlways set True — prevents scale-dependent instability
per_core_batch_size1Increase for throughput; decrease if OOM
use_continuous_quantile_headFalseSet True for calibrated prediction intervals
force_flip_invarianceTrueKeep True unless profiling shows it hurts
infer_is_positiveTrueSet False for series that can be negative (temperature, returns)
fix_quantile_crossingFalseSet True to guarantee monotonic quantiles

📋 Common Workflows

Workflow 1: Single Series Forecast

flowchart TD
    accTitle: Single Series Forecast Workflow
    accDescr: Step-by-step workflow for forecasting a single time series with system checking.

    check["1. Run check_system.py"] --> load["2. Load model<br/>from_pretrained()"]
    load --> compile["3. Compile with ForecastConfig"]
    compile --> prep["4. Prepare data<br/>pd.read_csv → np.array"]
    prep --> forecast["5. model.forecast()<br/>horizon=N"]
    forecast --> extract["6. Extract point + PI"]
    extract --> plot["7. Plot or export results"]

    classDef step fill:#f3f4f6,stroke:#6b7280,stroke-width:2px,color:#1f2937
    class check,load,compile,prep,forecast,extract,plot step
import torch, numpy as np, pandas as pd, timesfm

# 1. System check (run once)
# python scripts/check_system.py

# 2-3. Load and compile
torch.set_float32_matmul_precision("high")
model = timesfm.TimesFM_2p5_200M_torch.from_pretrained(
    "google/timesfm-2.5-200m-pytorch"
)
model.compile(timesfm.ForecastConfig(
    max_context=512, max_horizon=52, normalize_inputs=True,
    use_continuous_quantile_head=True, fix_quantile_crossing=True,
))

# 4. Prepare data
df = pd.read_csv("weekly_demand.csv", parse_dates=["week"])
values = df["demand"].values.astype(np.float32)

# 5. Forecast
point, quantiles = model.forecast(horizon=52, inputs=[values])

# 6. Extract prediction intervals
forecast_df = pd.DataFrame({
    "forecast": point[0],
    "lower_80": quantiles[0, :, 1],
    "upper_80": quantiles[0, :, 9],
})

# 7. Plot
import matplotlib.pyplot as plt
fig, ax = plt.subplots(figsize=(12, 5))
ax.plot(values[-104:], label="Historical")
x_fc = range(len(values[-104:]), len(values[-104:]) + 52)
ax.plot(x_fc, forecast_df["forecast"], label="Forecast", color="tab:orange")
ax.fill_between(x_fc, forecast_df["lower_80"], forecast_df["upper_80"],
                alpha=0.2, color="tab:orange", label="80% PI")
ax.legend()
ax.set_title("52-Week Demand Forecast")
plt.tight_layout()
plt.savefig("forecast.png", dpi=150)
print("Saved forecast.png")

Workflow 2: Batch Forecasting (Many Series)

import pandas as pd, numpy as np

# Load wide-format CSV (one column per series)
df = pd.read_csv("all_stores.csv", parse_dates=["date"], index_col="date")
inputs = [df[col].dropna().values.astype(np.float32) for col in df.columns]

# Forecast all series at once (batched internally)
point, quantiles = model.forecast(horizon=30, inputs=inputs)

# Collect results
results = {}
for i, col in enumerate(df.columns):
    results[col] = {
        "forecast": point[i].tolist(),
        "lower_80": quantiles[i, :, 1].tolist(),
        "upper_80": quantiles[i, :, 9].tolist(),
    }

# Export
import json
with open("batch_forecasts.json", "w") as f:
    json.dump(results, f, indent=2)
print(f"Forecasted {len(results)} series → batch_forecasts.json")

Workflow 3: Evaluate Forecast Accuracy

import numpy as np

# Hold out the last H points for evaluation
H = 24
train = values[:-H]
actual = values[-H:]

point, quantiles = model.forecast(horizon=H, inputs=[train])
pred = point[0]

# Metrics
mae = np.mean(np.abs(actual - pred))
rmse = np.sqrt(np.mean((actual - pred) ** 2))
mape = np.mean(np.abs((actual - pred) / actual)) * 100

# Prediction interval coverage
lower = quantiles[0, :, 1]
upper = quantiles[0, :, 9]
coverage = np.mean((actual >= lower) & (actual <= upper)) * 100

print(f"MAE:  {mae:.2f}")
print(f"RMSE: {rmse:.2f}")
print(f"MAPE: {mape:.1f}%")
print(f"80% PI Coverage: {coverage:.1f}% (target: 80%)")

⚙️ Performance Tuning

GPU Acceleration

import torch

# Check GPU availability
if torch.cuda.is_available():
    print(f"GPU: {torch.cuda.get_device_name(0)}")
    print(f"VRAM: {torch.cuda.get_device_properties(0).total_mem / 1e9:.1f} GB")
elif hasattr(torch.backends, "mps") and torch.backends.mps.is_available():
    print("Apple Silicon MPS available")
else:
    print("CPU only — inference will be slower but still works")

# Always set this for Ampere+ GPUs (A100, RTX 3090, etc.)
torch.set_float32_matmul_precision("high")

Batch Size Tuning

# Start conservative, increase until OOM
# GPU with 8 GB VRAM:  per_core_batch_size=64
# GPU with 16 GB VRAM: per_core_batch_size=128
# GPU with 24 GB VRAM: per_core_batch_size=256
# CPU with 8 GB RAM:   per_core_batch_size=8
# CPU with 16 GB RAM:  per_core_batch_size=32
# CPU with 32 GB RAM:  per_core_batch_size=64

model.compile(timesfm.ForecastConfig(
    max_context=1024,
    max_horizon=256,
    per_core_batch_size=32,  # <-- tune this
    normalize_inputs=True,
    use_continuous_quantile_head=True,
    fix_quantile_crossing=True,
))

Memory-Constrained Environments

import gc, torch

# Force garbage collection before loading
gc.collect()
if torch.cuda.is_available():
    torch.cuda.empty_cache()

# Load model
model = timesfm.TimesFM_2p5_200M_torch.from_pretrained(
    "google/timesfm-2.5-200m-pytorch"
)

# Use small batch size on low-memory machines
model.compile(timesfm.ForecastConfig(
    max_context=512,        # Reduce context if needed
    max_horizon=128,        # Reduce horizon if needed
    per_core_batch_size=4,  # Small batches
    normalize_inputs=True,
    use_continuous_quantile_head=True,
    fix_quantile_crossing=True,
))

# Process series in chunks to avoid OOM
CHUNK = 50
all_results = []
for i in range(0, len(inputs), CHUNK):
    chunk = inputs[i:i+CHUNK]
    p, q = model.forecast(horizon=H, inputs=chunk)
    all_results.append((p, q))
    gc.collect()  # Clean up between chunks

🔗 Integration with Other Skills

With statsmodels

Use statsmodels for classical models (ARIMA, SARIMAX) as a comparison baseline:

# TimesFM forecast
tfm_point, tfm_q = model.forecast(horizon=H, inputs=[values])

# statsmodels ARIMA forecast
from statsmodels.tsa.arima.model import ARIMA
arima = ARIMA(values, order=(1,1,1)).fit()
arima_forecast = arima.forecast(steps=H)

# Compare
print(f"TimesFM MAE: {np.mean(np.abs(actual - tfm_point[0])):.2f}")
print(f"ARIMA MAE:   {np.mean(np.abs(actual - arima_forecast)):.2f}")

With matplotlib / scientific-visualization

Plot forecasts with prediction intervals as publication-quality figures.

With exploratory-data-analysis

Run EDA on the time series before forecasting to understand trends, seasonality, and stationarity.

📚 Available Scripts

scripts/check_system.py

Mandatory preflight checker. Run before first model load.

python scripts/check_system.py

Output example:

=== TimesFM System Requirements Check ===

[RAM]       Total: 32.0 GB | Available: 24.3 GB  ✅ PASS
[GPU]       NVIDIA RTX 4090 | VRAM: 24.0 GB      ✅ PASS
[Disk]      Free: 142.5 GB                        ✅ PASS
[Python]    3.12.1                                 ✅ PASS
[timesfm]   Installed (2.5.0)                      ✅ PASS
[torch]     Installed (2.4.1+cu121)                ✅ PASS

VERDICT: ✅ System is ready for TimesFM 2.5 (GPU mode)
Recommended: per_core_batch_size=128

scripts/forecast_csv.py

End-to-end CSV forecasting with automatic system check.

python scripts/forecast_csv.py input.csv \
    --horizon 24 \
    --date-col date \
    --value-cols sales,revenue \
    --output forecasts.csv

📖 Reference Documentation

Detailed guides in references/:

FileContents
references/system_requirements.mdHardware tiers, GPU/CPU selection, memory estimation formulas
references/api_reference.mdFull ForecastConfig docs, from_pretrained options, output shapes
references/data_preparation.mdInput formats, NaN handling, CSV loading, covariate setup

Common Pitfalls

  1. Not running system check → model load crashes on low-RAM machines. Always run check_system.py first.
  2. Forgetting model.compile()RuntimeError: Model is not compiled. Must call compile() before forecast().
  3. Not setting normalize_inputs=True → unstable forecasts for series with large values.
  4. Using v1/v2 on machines with < 32 GB RAM → use TimesFM 2.5 (200M params) instead.
  5. Not setting fix_quantile_crossing=True → quantiles may not be monotonic (q10 > q50).
  6. Huge per_core_batch_size on small GPU → CUDA OOM. Start small, increase.
  7. Passing 2-D arrays → TimesFM expects a list of 1-D arrays, not a 2-D matrix.
  8. Forgetting torch.set_float32_matmul_precision("high") → slower inference on Ampere+ GPUs.
  9. Not handling NaN in output → edge cases with very short series. Always check np.isnan(point).any().
  10. Using infer_is_positive=True for series that can be negative → clamps forecasts at zero. Set False for temperature, returns, etc.

Model Versions

timeline
    accTitle: TimesFM Version History
    accDescr: Timeline of TimesFM model releases showing parameter counts and key improvements.

    section 2024
        TimesFM 1.0 : 200M params, 2K context, JAX only
        TimesFM 2.0 : 500M params, 2K context, PyTorch + JAX
    section 2025
        TimesFM 2.5 : 200M params, 16K context, quantile head, no frequency indicator
VersionParamsContextQuantile HeadFrequency FlagStatus
2.5200M16,384✅ Continuous (30M)❌ RemovedLatest
2.0500M2,048✅ Fixed buckets✅ RequiredArchived
1.0200M2,048✅ Fixed buckets✅ RequiredArchived

Hugging Face checkpoints:

  • google/timesfm-2.5-200m-pytorch (recommended)
  • google/timesfm-2.5-200m-flax
  • google/timesfm-2.0-500m-pytorch (archived)
  • google/timesfm-1.0-200m-pytorch (archived)

Resources

Examples

Three fully-working reference examples live in examples/. Use them as ground truth for correct API usage and expected output shape.

ExampleDirectoryWhat It DemonstratesWhen To Use It
Global Temperature Forecastexamples/global-temperature/Basic model.forecast() call, CSV -> PNG -> GIF pipeline, 36-month NOAA contextStarting point; copy-paste baseline for any univariate series
Anomaly Detectionexamples/anomaly-detection/Two-phase detection: linear detrend + Z-score on context, quantile PI on forecast; 2-panel vizAny task requiring outlier detection on historical + forecasted data
Covariates (XReg)examples/covariates-forecasting/forecast_with_covariates() API (TimesFM 2.5), covariate decomposition, 2x2 shared-axis vizRetail, energy, or any series with known exogenous drivers

Running the Examples

# Global temperature (no TimesFM 2.5 needed)
cd examples/global-temperature && python run_forecast.py && python visualize_forecast.py

# Anomaly detection (uses TimesFM 1.0)
cd examples/anomaly-detection && python detect_anomalies.py

# Covariates (API demo -- requires TimesFM 2.5 + timesfm[xreg] for real inference)
cd examples/covariates-forecasting && python demo_covariates.py

Expected Outputs

ExampleKey output filesAcceptance criteria
global-temperatureoutput/forecast_output.json, output/forecast_visualization.pngpoint_forecast has 12 values; PNG shows context + forecast + PI bands
anomaly-detectionoutput/anomaly_detection.json, output/anomaly_detection.pngSep 2023 flagged CRITICAL (z >= 3.0); >= 2 forecast CRITICAL from injected anomalies
covariates-forecastingoutput/sales_with_covariates.csv, output/covariates_data.pngCSV has 108 rows (3 stores x 36 weeks); stores have distinct price arrays

Quality Checklist

Run this checklist after every TimesFM task before declaring success:

  • Output shape correct -- point_fc shape is (n_series, horizon), quant_fc is (n_series, horizon, 10)
  • Quantile indices -- index 0 = mean, 1 = q10, 2 = q20 ... 9 = q90. NOT 0 = q0, 1 = q10.
  • Frequency flag -- TimesFM 1.0/2.0: pass freq=[0] for monthly data. TimesFM 2.5: no freq flag.
  • Series length -- context must be >= 32 data points (model minimum). Warn if shorter.
  • No NaN -- np.isnan(point_fc).any() should be False. Check input series for gaps first.
  • Visualization axes -- if multiple panels share data, use sharex=True. All time axes must cover the same span.
  • Binary outputs in Git LFS -- PNG and GIF files must be tracked via .gitattributes (repo root already configured).
  • No large datasets committed -- any real dataset > 1 MB should be downloaded to tempfile.mkdtemp() and annotated in code.
  • matplotlib.use('Agg') -- must appear before any pyplot import when running headless.
  • infer_is_positive -- set False for temperature anomalies, financial returns, or any series that can be negative.

Common Mistakes

These bugs have appeared in this skill's examples. Learn from them:

  1. Quantile index off-by-one -- The most common mistake. quant_fc[..., 0] is the mean, not q0. q10 = index 1, q90 = index 9. Always define named constants: IDX_Q10, IDX_Q20, IDX_Q80, IDX_Q90 = 1, 2, 8, 9.

  2. Variable shadowing in comprehensions -- If you build per-series covariate dicts inside a loop, do NOT use the loop variable as the comprehension variable. Accumulate into separate dict[str, ndarray] outside the loop, then assign.

    # WRONG -- outer `store_id` gets shadowed:
    covariates = {store_id: arr[store_id] for store_id in stores}  # inside outer loop over store_id
    # CORRECT -- use a different name or accumulate beforehand:
    prices_by_store: dict[str, np.ndarray] = {}
    for store_id, config in stores.items():
        prices_by_store[store_id] = compute_price(config)
    
  3. Wrong CSV column name -- The global-temperature CSV uses anomaly_c, not anomaly. Always print(df.columns) before accessing.

  4. tight_layout() warning with sharex=True -- Harmless; suppress with plt.tight_layout(rect=[0, 0, 1, 0.97]) or ignore.

  5. TimesFM 2.5 required for forecast_with_covariates() -- TimesFM 1.0 does NOT have this method. Install pip install timesfm[xreg] and use checkpoint google/timesfm-2.5-200m-pytorch.

  6. Future covariates must span the full horizon -- Dynamic covariates (price, promotions, holidays) must have values for BOTH the context AND the forecast horizon. You cannot pass context-only arrays.

  7. Anomaly thresholds must be defined once -- Define CRITICAL_Z = 3.0, WARNING_Z = 2.0 as module-level constants. Never hardcode 3 or 2 inline.

  8. Context anomaly detection uses residuals, not raw values -- Always detrend first (np.polyfit linear, or seasonal decomposition), then Z-score the residuals. Raw-value Z-scores are misleading on trending data.

Validation & Verification

Use the example outputs as regression baselines. If you change forecasting logic, verify:

# Anomaly detection regression check:
python -c "
import json
d = json.load(open('examples/anomaly-detection/output/anomaly_detection.json'))
ctx = d['context_summary']
assert ctx['critical'] >= 1, 'Sep 2023 must be CRITICAL'
assert any(r['date'] == '2023-09' and r['severity'] == 'CRITICAL'
           for r in d['context_detections']), 'Sep 2023 not found'
print('Anomaly detection regression: PASS')"

# Covariates regression check:
python -c "
import pandas as pd
df = pd.read_csv('examples/covariates-forecasting/output/sales_with_covariates.csv')
assert len(df) == 108, f'Expected 108 rows, got {len(df)}'
prices = df.groupby('store_id')['price'].mean()
assert prices['store_A'] > prices['store_B'] > prices['store_C'], 'Store price ordering wrong'
print('Covariates regression: PASS')"

GitHub 저장소

K-Dense-AI/claude-scientific-skills
경로: skills/timesfm-forecasting
0
agent-skillsai-scientistbioinformaticschemoinformaticsclaudeclaude-skills
FAQ

Frequently asked questions

What is the timesfm-forecasting skill?

timesfm-forecasting is a Claude Skill by K-Dense-AI. Skills package instructions and resources that Claude loads on demand, so Claude can perform timesfm-forecasting-related tasks without extra prompting.

How do I install timesfm-forecasting?

Use the install commands on this page: add timesfm-forecasting to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.

What category does timesfm-forecasting belong to?

timesfm-forecasting is in the Other category, tagged ai and data.

Is timesfm-forecasting free to use?

Yes. timesfm-forecasting is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.

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