High-performance composable JAX library
Project description
xtrax
A set of composable building blocks for JAX/Equinox training loops — engine + trainer orchestration, safety-checked steps, axis tiling strategies, inference-time sparsification, distributed/sharding helpers, streaming output callbacks, and orbax checkpointing — extracted from the author's research code.
Status
xtrax is alpha, experimental software built primarily for the author's personal research use. APIs may change without notice between releases; no backward-compatibility guarantees pre-1.0. Issues and pull requests are welcome, but support is best-effort — the project exists first to serve the author's own JAX training workflows.
Why xtrax?
jax.jit specializes and freezes: it traces your function into a program where every shape is a compile-time constant, and XLA plans all memory for that program up front. The compiler makes the program you gave it fast, but it never restructures it — it cannot narrow a vmap that doesn't fit in memory, cannot batch ragged inputs without a recompile per shape, and cannot notice that most of a batch is duplicates. Those decisions happen in Python, before tracing — and the code that makes them is exactly what gets copy-pasted between research projects.
xtrax packages that pre-trace layer, plus the conveniences that surround it:
- Axis tiling — declare axes with
AxisSpec;BatchPlannerselectsVmap,SafeMap(chunked viajax.lax.map),Scan, bucketing, or dedup-gather per axis, andxtrax explainreports why - Composable training steps —
TrainerorSafetyTrainStepwith your own loss functions and optimizers - Safety-checked arithmetic — opt-in checkify NaN/Inf detection and safe ops (
safe_norm,safe_reciprocal) - Inference sparsification — structured sparsity masks with
SparseConfigandsparsify_model, fixed compile shapes - Distributed helpers —
init_dist,LogicalMesh, and sharding utilities over JAX's native machinery
For the full rationale — why this layer has to live above the JIT boundary — see Why xtrax exists.
Installation
pip install xtrax
Requires Python 3.13 or later.
Quick Start
import jax.numpy as jnp
import optax
from xtrax import Trainer, ResumableState, Engine, save_checkpoint, load_checkpoint
# 1. Create a simple loss function
def loss_fn(model, batch):
predictions = model(batch["inputs"])
return jnp.mean((predictions - batch["targets"]) ** 2)
# 2. Set up trainer with optimizer
optimizer = optax.adam(1e-3)
trainer = Trainer(loss_fn=loss_fn, optimizer=optimizer)
# 3. Initialize training state
model = ... # Your equinox model
opt_state = optimizer.init(...)
state = ResumableState(model=model, opt_state=opt_state, step=0)
# 4. Run a training step
new_state, metrics = trainer.step(state, batch={"inputs": x, "targets": y})
print(f"Loss: {metrics['loss']}")
For a complete training loop with callbacks and checkpointing, use the Engine:
from xtrax import Engine, DataModule
# Create or load a DataModule (must implement train_iter())
data = DataModule(...)
# Create an engine with trainer and optional callbacks
engine = Engine(trainer=trainer)
# Run multi-epoch training with checkpoint saving
final_state = engine.fit_sync(
state=state,
data=data,
num_epochs=10,
checkpoint_dir="./checkpoints"
)
Getting Results Out
Streaming Callbacks
Log metrics asynchronously to files or external services:
from xtrax.io import BoundedCallbackHandler, async_indexed_stream
# Create a custom async callback
class LogCallback:
async def on_step_end(self, state, metrics):
print(f"Step {state.step}: {metrics}")
# Use in your Engine
engine = Engine(
trainer=trainer,
callbacks=[LogCallback()]
)
Checkpoint Save and Load
Save model state and restore for inference or resumption:
from xtrax import save_checkpoint, load_checkpoint
# After training
save_checkpoint(checkpoint_dir="./checkpoints/final", state=final_state)
# Load for inference
restored_state = load_checkpoint(checkpoint_dir="./checkpoints/final")
model = restored_state.model
# Run inference
predictions = model(test_inputs)
Documentation
Full API docs, architecture guides, and advanced examples at xtrax.readthedocs.io.
Project links
License
Licensed under the Apache License 2.0.
Citation
If you use xtrax in research, please cite it:
@software{xtrax,
title = {xtrax: High-Performance Composable JAX Training},
author = {Russo, Marielle},
version = {0.4.0a2},
year = {2026},
url = {https://github.com/maraxen/xtrax}
}
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