# nixtla-timegpt-finetune-lab > Enables TimeGPT model fine-tuning on custom datasets with Nixtla SDK. Guides dataset preparation, job submission, status monitoring, model comparison, and accuracy benchmarking. Activates when user needs TimeGPT fine-tuning, custom model training, domain-specific optimization, or zero-shot vs fine-tuned comparison. - Author: jeremylongshore - Repository: jeremylongshore/claude-code-plugins-nixtla - Version: 20260109183454 - Stars: 0 - Forks: 0 - Last Updated: 2026-02-08 - Source: https://github.com/jeremylongshore/claude-code-plugins-nixtla - Web: https://mule.run/skillshub/@@jeremylongshore/claude-code-plugins-nixtla~nixtla-timegpt-finetune-lab:20260109183454 --- --- name: nixtla-timegpt-finetune-lab description: Enables TimeGPT model fine-tuning on custom datasets with Nixtla SDK. Guides dataset preparation, job submission, status monitoring, model comparison, and accuracy benchmarking. Activates when user needs TimeGPT fine-tuning, custom model training, domain-specific optimization, or zero-shot vs fine-tuned comparison. allowed-tools: "Read,Write,Glob,Grep,Edit" version: "1.0.0" license: MIT --- # Nixtla TimeGPT Fine-Tuning Lab Guide users through production-ready TimeGPT fine-tuning workflows. ## Overview This skill manages TimeGPT fine-tuning: - **Dataset preparation**: Validate and format training data - **Job submission**: Submit fine-tuning jobs to TimeGPT API - **Status monitoring**: Track job progress until completion - **Model comparison**: Compare zero-shot vs fine-tuned performance ## Prerequisites **Required**: - Python 3.8+ - `nixtla` package - `NIXTLA_API_KEY` environment variable **Installation**: ```bash pip install nixtla pandas utilsforecast export NIXTLA_API_KEY='your-api-key' ``` **Get API Key**: https://dashboard.nixtla.io ## Instructions ### Step 1: Prepare Dataset Ensure data is in Nixtla schema: ```bash python {baseDir}/scripts/prepare_finetune_data.py \ --input data/sales.csv \ --output data/finetune_train.csv ``` ### Step 2: Configure Fine-Tuning ```bash python {baseDir}/scripts/configure_finetune.py \ --train data/finetune_train.csv \ --model_name "sales-model-v1" \ --horizon 14 \ --freq D ``` ### Step 3: Submit Job ```bash python {baseDir}/scripts/submit_finetune.py \ --config forecasting/finetune_config.yml ``` ### Step 4: Monitor Progress ```bash python {baseDir}/scripts/monitor_finetune.py \ --job_id ``` ### Step 5: Compare Models ```bash python {baseDir}/scripts/compare_finetuned.py \ --test data/test.csv \ --finetune_id ``` ## Output - **forecasting/finetune_config.yml**: Fine-tuning configuration - **forecasting/artifacts/finetune_model_id.txt**: Saved model ID - **forecasting/results/comparison_metrics.csv**: Performance comparison ## Error Handling 1. **Error**: `NIXTLA_API_KEY not set` **Solution**: Export your API key: `export NIXTLA_API_KEY='...'` 2. **Error**: `Insufficient training data` **Solution**: Need 100+ observations per series 3. **Error**: `Fine-tuning job failed` **Solution**: Check data format, ensure no NaN values 4. **Error**: `Model ID not found` **Solution**: Verify job completed, check artifacts directory ## Examples ### Example 1: Basic Fine-Tuning ```bash # Prepare data python {baseDir}/scripts/prepare_finetune_data.py \ --input sales.csv --output train.csv # Submit job python {baseDir}/scripts/submit_finetune.py \ --train train.csv \ --model_name "my-sales-model" \ --horizon 14 ``` **Output**: ``` Fine-tuning job submitted: job_abc123 Model ID saved to: artifacts/finetune_model_id.txt ``` ### Example 2: Compare Zero-Shot vs Fine-Tuned ```bash python {baseDir}/scripts/compare_finetuned.py \ --test test.csv \ --finetune_id my-sales-model ``` **Output**: ``` Model Comparison: TimeGPT Zero-Shot: SMAPE=12.3% TimeGPT Fine-Tuned: SMAPE=8.7% Improvement: 29.3% ``` ## Resources - Scripts: `{baseDir}/scripts/` - TimeGPT Docs: https://docs.nixtla.io/ - Fine-Tuning Guide: https://docs.nixtla.io/docs/finetuning **Related Skills**: - `nixtla-schema-mapper`: Prepare data before fine-tuning - `nixtla-experiment-architect`: Create baseline experiments - `nixtla-usage-optimizer`: Evaluate cost-effectiveness