003-skills/.claude/skills-backup-20251210-155310/nixtla-experiment-architect/SKILL.md
Scaffolds production-ready forecasting experiments with Nixtla libraries. Creates configuration files, experiment harnesses, multi-model comparisons, and cross-validation workflows for StatsForecast, MLForecast, and TimeGPT. Activates when user needs experiment setup, forecasting pipeline creation, model benchmarking, or multi-model comparison framework.
npx skillsauth add intent-solutions-io/plugins-nixtla nixtla-experiment-architectInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Design and scaffold complete forecasting experiments using Nixtla's libraries.
This skill creates production-ready experiment harnesses:
Required:
statsforecast, utilsforecastOptional:
mlforecast: For ML modelsnixtla: For TimeGPTNIXTLA_API_KEY: TimeGPT accessInstallation:
pip install statsforecast mlforecast nixtla utilsforecast pyyaml
Collect experiment parameters:
python {baseDir}/scripts/generate_config.py \
--data data/sales.csv \
--target sales \
--horizon 14 \
--freq D \
--output forecasting/config.yml
python {baseDir}/scripts/scaffold_experiment.py \
--config forecasting/config.yml \
--output forecasting/experiments.py
python forecasting/experiments.py
cat forecasting/results/metrics_summary.csv
Error: Data file not found
Solution: Verify data source path in config
Error: Column not found
Solution: Check column names match your data
Error: Missing required package
Solution: Install missing dependencies with pip
Error: Cross-validation failed
Solution: Ensure enough data for n_windows
python {baseDir}/scripts/generate_config.py \
--data data/sales.csv \
--target revenue \
--horizon 30 \
--freq D \
--id_col store_id
Output config.yml:
data:
source: data/sales.csv
target: revenue
unique_id: store_id
forecasting:
horizon: 30
freq: D
models:
- SeasonalNaive
- AutoETS
- AutoARIMA
python {baseDir}/scripts/generate_config.py \
--data data/energy.csv \
--target consumption \
--horizon 24 \
--freq H
{baseDir}/scripts/{baseDir}/assets/templates/Related Skills:
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