search Where Thought Leaders go for Growth
Sacred : Lightweight experiment tracking for machine learning

Sacred : Lightweight experiment tracking for machine learning

Sacred : Lightweight experiment tracking for machine learning

No user review

Are you the publisher of this software? Claim this page

Sacred: in summary

Sacred is an open-source Python library designed to facilitate reproducible machine learning experiments by helping researchers and developers organize, configure, log, and track experiments in a lightweight and flexible way. Originally developed by the Swiss AI lab IDSIA, Sacred is used in academic and research contexts where structured experiment management, traceability, and minimal setup overhead are important.

Unlike full-featured platforms, Sacred provides a code-centric, dependency-free approach to experiment monitoring, with optional integrations for storage and visualization (e.g., with MongoDB and Sacredboard).

Key benefits:

  • Simple, code-based way to log configurations, results, and metadata

  • Designed for reproducibility and minimal external dependencies

  • Suitable for researchers and developers working in Python environments

What are the main features of Sacred?

Configuration management and reproducibility

  • Tracks all configurable parameters of an experiment via decorators

  • Uses named configurations and ingredients to manage complex setups

  • Automatically captures source code versions, command-line arguments, and dependencies

  • Ensures that experiments can be re-executed identically

Logging and result tracking

  • Logs metrics, status, artifacts, and exceptions during execution

  • Supports structured result output and custom observers

  • Records start/end time, host information, and exit codes

  • Integrates with MongoDB to persist experiment runs and metadata

Observers and extensibility

  • Uses observer classes to send experiment data to different backends

  • Built-in observers: MongoDB, file storage, Slack (notifications), SQL, and more

  • Developers can create custom observers for new storage or notification systems

  • Modular architecture allows easy extension for specific needs

Minimalistic and framework-agnostic

  • Does not depend on any specific ML library or data pipeline tool

  • Can be integrated with any training loop, model, or data source

  • Lightweight and suitable for academic and scripting-based workflows

  • Maintains high compatibility with standard Python workflows

Optional visualization with Sacredboard

  • Sacredboard provides a web interface to browse, search, and compare experiments

  • Displays configurations, logs, metrics, and outputs

  • Helps analyze and navigate experiment history from MongoDB storage

  • Useful for collaborative research and reviewing long-running experiments

Why choose Sacred?

  • Designed for clarity, simplicity, and reproducibility in ML experiments

  • Lightweight, open-source, and easy to integrate into existing workflows

  • Highly flexible thanks to custom observers and code-centric configuration

  • Ideal for academic research, rapid prototyping, and offline experiment tracking

  • Enables transparent documentation of all experiment settings and outcomes

Sacred: its rates

Standard

Rate

On demand

Clients alternatives to Sacred

Comet.ml

Experiment tracking and performance monitoring for AI

No user review
close-circle Free version
close-circle Free trial
close-circle Free demo

Pricing on request

Enhance experiment tracking and collaboration with version control, visual analytics, and automated logging for efficient data management.

chevron-right See more details See less details

Comet.ml offers robust tools for monitoring experiments, allowing users to track metrics and visualize results effectively. With features like version control, it simplifies collaboration among team members by enabling streamlined sharing of insights and findings. Automated logging ensures that every change is documented, making data management more efficient. This powerful software facilitates comprehensive analysis and helps in refining models to improve overall performance.

Read our analysis about Comet.ml
Learn more

To Comet.ml product page

Neptune.ai

Centralized experiment tracking for AI model development

No user review
close-circle Free version
close-circle Free trial
close-circle Free demo

Pricing on request

This software offers robust tools for tracking, visualizing, and managing machine learning experiments, enhancing collaboration and efficiency in development workflows.

chevron-right See more details See less details

Neptune.ai provides an all-in-one solution for monitoring machine learning experiments. Its features include real-time tracking of metrics and parameters, easy visualization of results, and seamless integration with popular frameworks. Users can organize projects and collaborate effectively, ensuring that teams stay aligned throughout the development process. With advanced experiment comparison capabilities, it empowers data scientists to make informed decisions in optimizing models for better performance.

Read our analysis about Neptune.ai
Learn more

To Neptune.ai product page

ClearML

End-to-end experiment tracking and orchestration for ML

No user review
close-circle Free version
close-circle Free trial
close-circle Free demo

Pricing on request

This software offers seamless experiment tracking, visualization tools, and efficient resource management for machine learning workflows.

chevron-right See more details See less details

ClearML provides an integrated platform for monitoring machine learning experiments, allowing users to track their progress in real-time. Its visualization tools enhance understanding by displaying relevant metrics and results clearly. Additionally, efficient resource management features ensure optimal use of computational resources, enabling users to streamline their workflows and improve productivity across various experiments.

Read our analysis about ClearML
Learn more

To ClearML product page

See every alternative

Appvizer Community Reviews (0)
info-circle-outline
The reviews left on Appvizer are verified by our team to ensure the authenticity of their submitters.

Write a review

No reviews, be the first to submit yours.