awesome-repositories.com
© 2026 Bringes Technology SRL·VAT RO45896025·hello@bringes.io
MCPSitemapPrivacyTerms
Model Pruning Techniques · Awesome GitHub Repositories

1 repo

Awesome GitHub RepositoriesModel Pruning Techniques

Methods for reducing the size and complexity of neural networks by removing or consolidating layers.

Distinguishing note: Focuses on structural reduction of the network architecture to decrease latency, distinct from precision-based compression.

Explore 1 awesome GitHub repository matching artificial intelligence & ml · Model Pruning Techniques. Refine with filters or upvote what's useful.

  1. Home
  2. Artificial Intelligence & ML
  3. Model Pruning Techniques

Awesome Model Pruning Techniques GitHub Repositories

Describe the repository you're looking for…
Find the best repos with AI.We'll search the best matching repositories with AI.
  • deepspeedai/DeepSpeed

    deepspeedai/DeepSpeed

    41,638View on GitHub↗

    DeepSpeed is a high-performance library designed to scale deep learning model training and inference across massive clusters of GPUs and compute nodes. It provides a comprehensive suite of tools for distributed training, enabling the execution of models that exceed the memory capacity of single devices through advanced parameter partitioning, pipeline-based model parallelism, and memory-efficient state offloading. The framework distinguishes itself through specialized communication-efficient optimizers and hardware-aware acceleration techniques. By utilizing gradient compression, quantization

    The framework decreases inference latency by reducing the number of hidden layers in a neural network while maintaining consistent layer width.

    Pythonbillion-parameterscompressiondata-parallelism
    41,638View on GitHub↗