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google/grain

Grain - Feeding JAX Models

Continuous integration PyPI version

Installation | Quickstart | Reference docs

Grain is a Python library for reading and processing data for training and evaluating JAX models. It is flexible, fast and deterministic.

Grain allows to define data processing steps in a simple declarative way:

import grain.python as grain

dataset = (
    grain.MapDataset.source([0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10])
    .shuffle(seed=10)  # Shuffles elements globally.
    .map(lambda x: x+1)  # Maps each element.
    .batch(batch_size=2)  # Batches consecutive elements.
)

for batch in dataset:
  # Training step.

Grain is designed to work with JAX models but it does not require JAX to run and can be used with other frameworks as well.

Installation

Grain is available on PyPI and can be installed with pip install grain.

Supported platforms

Grain does not directly use GPU or TPU in its transformations, the processing within Grain will be done on the CPU by default.

Linux Mac Windows
x86_64 yes WIP no
aarch64 yes WIP n/a

Quickstart

Existing users

Grain is used by MaxText, kauldron and multiple internal Google projects.