hugging-face-trackio

star 35.8k

Track and visualize ML training experiments with Trackio. Use when logging metrics during training (Python API) or retrieving/analyzing logged metrics (CLI). Supports real-time dashboard visualization, HF Space syncing, and JSON output for automation.

patchy631 By patchy631 schedule Updated 1/23/2026

name: hugging-face-trackio

description: Track and visualize ML training experiments with Trackio. Use when logging metrics during training (Python API) or retrieving/analyzing logged metrics (CLI). Supports real-time dashboard visualization, HF Space syncing, and JSON output for automation.


Trackio - Experiment Tracking for ML Training

Trackio is an experiment tracking library for logging and visualizing ML training metrics. It syncs to Hugging Face Spaces for real-time monitoring dashboards.

Two Interfaces

| Task | Interface | Reference |

|------|-----------|-----------|

| Logging metrics during training | Python API | references/logging_metrics.md |

| Retrieving metrics after/during training | CLI | references/retrieving_metrics.md |

When to Use Each

Python API → Logging

Use import trackio in your training scripts to log metrics:

  • Initialize tracking with trackio.init()

  • Log metrics with trackio.log() or use TRL's report_to="trackio"

  • Finalize with trackio.finish()

Key concept: For remote/cloud training, pass space_id — metrics sync to a Space dashboard so they persist after the instance terminates.

→ See references/logging_metrics.md for setup, TRL integration, and configuration options.

CLI → Retrieving

Use the trackio command to query logged metrics:

  • trackio list projects/runs/metrics — discover what's available

  • trackio get project/run/metric — retrieve summaries and values

  • trackio show — launch the dashboard

  • trackio sync — sync to HF Space

Key concept: Add --json for programmatic output suitable for automation and LLM agents.

→ See references/retrieving_metrics.md for all commands, workflows, and JSON output formats.

Minimal Logging Setup


import trackio



trackio.init(project="my-project", space_id="username/trackio")

trackio.log({"loss": 0.1, "accuracy": 0.9})

trackio.log({"loss": 0.09, "accuracy": 0.91})

trackio.finish()

Minimal Retrieval


trackio list projects --json

trackio get metric --project my-project --run my-run --metric loss --json
Install via CLI
npx skills add https://github.com/patchy631/ai-engineering-hub --skill hugging-face-trackio
Repository Details
star Stars 35,830
call_split Forks 5,945
navigation Branch main
article Path SKILL.md
More from Creator