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Objectives & Optimization · Awesome GitHub Repositories

2 repos

Awesome GitHub RepositoriesObjectives & Optimization

Explore 2 awesome GitHub repositories matching artificial intelligence & ml · Objectives & Optimization. Refine with filters or upvote what's useful.

  1. Home
  2. Artificial Intelligence & ML
  3. Machine Learning
  4. Infrastructure
  5. Machine Learning Training
  6. Objectives & Optimization

Awesome Objectives & Optimization GitHub Repositories

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  • keras-team/keras

    keras-team/keras

    63,858GitHubView on GitHub↗

    Keras is a high-level deep learning framework designed for constructing and training neural networks through the composition of modular, functional layers. It serves as a comprehensive modeling toolkit that provides standardized procedures for defining, evaluating, and deploying complex architectures. By utilizing a di

    Pythondata-sciencedeep-learningjax
  • unslothai/unsloth

    unslothai/unsloth

    52,461GitHubView on GitHub↗

    Unsloth is a high-performance training and inference platform designed to optimize the lifecycle of large language and multimodal models. It provides a comprehensive engine for fine-tuning, executing, and managing models locally, with a focus on reducing memory consumption and increasing compute speed on consumer-grade

    Pythonagentdeepseekdeepseek-r1

Explore sub-tags

  • Mathematical Training Objectives1 sub-tagCore mathematical components that define how a model learns, including loss functions, reward logic, and optimization strategies, distinct from infrastructure by focusing on the learning objective.
  • Model Tuning1 sub-tagSystems that automate the search for optimal model configurations by defining and exploring specific parameter search spaces.
  • Weight OptimizersAlgorithms for adjusting model parameters to minimize loss functions.