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(EasyDel Former) is a utility library designed to simplify and enhance the development in JAX

Project description

eformer (EasyDel Former)

License Python JAX PyPI version

eformer (EasyDel Former) is a utility library designed to simplify and enhance the development of machine learning models using JAX. It provides a comprehensive collection of tools for distributed computing, custom data structures, numerical optimization, and high-performance operations. Eformer aims to make it easier to build, scale, and optimize models efficiently while leveraging JAX's capabilities for high-performance computing.

Project Structure Overview

The library is organized into several core modules:

  • aparser: Advanced argument parsing utilities with dataclass integration
  • callib: Custom function calling and Triton kernel integration
  • common_types: Shared type definitions and sharding constants
  • escale: Distributed sharding and parallelism utilities
  • executor: Execution management and hardware-specific optimizations
  • jaximus: Custom PyTree implementations and structured array utilities
  • mpric: Mixed precision training and dynamic scaling infrastructure
  • ops: Optimized operations including Flash Attention and quantization
  • optimizers: Flexible optimizer configuration and factory patterns
  • pytree: Enhanced tree manipulation and transformation utilities

Key Features

1. Mixed Precision Training (mpric)

Advanced mixed precision utilities supporting float8, float16, and bfloat16 with dynamic loss scaling, enabling faster training and reduced memory footprint.

2. Distributed Sharding (escale)

Tools for efficient sharding and distributed computation in JAX, allowing you to scale your models across multiple devices with various sharding strategies:

  • Data Parallelism (DP)
  • Fully Sharded Data Parallel (FSDP)
  • Tensor Parallelism (TP)
  • Expert Parallelism (EP)
  • Sequence Parallelism (SP)

3. Custom PyTrees (jaximus)

Enhanced utilities for creating custom PyTrees and ArrayValue objects, updated from Equinox, providing flexible data structures for your models.

4. Triton Integration (callib)

Custom function calling utilities with direct integration of Triton kernels in JAX, allowing you to optimize performance-critical operations.

5. Optimizer Factory

A flexible factory for creating and configuring optimizers like AdamW, Adafactor, Lion, and RMSProp, making it easy to experiment with different optimization strategies.

6. Optimized Operations (ops)

  • Flash Attention 2 implementation for GPUs/TPUs (via Triton and Pallas) for faster attention computations
  • 8-bit and NF4 quantization for efficient model deployment
  • Additional optimized operations under active development

API Documentation

For detailed API references and usage examples, see:

Installation

You can install eformer via pip:

pip install eformer

Getting Started

Mixed Precision Handler with mpric

from eformer.mpric import PrecisionHandler

# Create a handler with float8 compute precision
handler = PrecisionHandler(
    policy="p=f32,c=f8_e4m3,o=f32",  # params in f32, compute in float8, output in f32
    use_dynamic_scale=True
)

Custom PyTree Implementation

import jax
from eformer.jaximus import ArrayValue, implicit
from eformer.ops.quantization.quantization_functions import dequantize_row_q8_0, quantize_row_q8_0

class Array8B(ArrayValue):
    scale: jax.Array
    weight: jax.Array
    
    def __init__(self, array: jax.Array):
        self.weight, self.scale = quantize_row_q8_0(array)
    
    def materialize(self):
        return dequantize_row_q8_0(self.weight, self.scale)

array = jax.random.normal(jax.random.key(0), (256, 64), "f2")
qarray = Array8B(array)

Contributing

We welcome contributions! Please read our Contributing Guidelines to get started.

License

This project is licensed under the Apache License 2.0. See the LICENSE file for details.

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