GGML

GGML is a tensor library for machine learning to enable large models and high performance on commodity hardware.
 GGML is a tensor library for machine learning to
Product Information
This tool is verified because it is either an established company, has good social media presence or a distinctive use case
Release date9 June, 2023
PlatformDesktop

GGML Features

GGML (Generic Graph Machine Learning) is a powerful tensor library that caters to the needs of machine learning practitioners. It provides a robust set of features and optimizations that enable the training of large-scale models and high-performance computing on commodity hardware.

Key Features:

  • C-based Implementation: GGML is written in C, providing efficiency and compatibility across platforms.
  • 16-bit Float Support: Supports 16-bit floating-point operations, reducing memory requirements and improving computation speed.
  • Integer Quantization: Enables optimization of memory and computation by quantizing model weights and activations to lower bit precision.

Use Cases:

  • Large-scale Model Training: GGML is ideal for training machine learning models that require extensive computational resources.
  • High-Performance Computing: GGML's optimizations make it well-suited for high-performance computing tasks in machine learning.

GGML is a powerful tensor library designed to meet the demands of machine learning practitioners.

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