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toolkit for training pytorch models

Project description

🚀 ML Trainer Package

Ruff Code style: black PyPi version License: MIT

A flexible and powerful PyTorch training framework with built-in logging, metrics tracking, and early stopping capabilities!

📦 Key Components

  • Trainer: Main training loop with validation and reporting
  • TrainerSettings: Configuration management for training parameters
  • Models: Collection of CNN and RNN architectures
  • Metrics: Customizable evaluation metrics
  • Preprocessors: Data preparation utilities

🛠️ Installation

Use uv, or if you want to use the 10-100x slower pip, i wont stop you.

uv add mltrainer # recommended
pip install mltrainer # i cant stop you

Distributed hypertuning with Ray is an optional extra (it pulls in ray and friends). You will need it if you want to hypertune with ray, and want to use ReportTypes.RAY:

uv add 'mltrainer[tune]'

🖥️ Platform Support

mltrainer runs on Linux, Windows, and Apple Silicon (M-series) Macs, on Python 3.11–3.13.

Intel Macs (x86_64) are not supported because torch and ray releases stopped publishing macOS x86_64 wheels (PyTorch's last Intel-Mac wheel was 2.2.2).

Workaround are using either earlier versions of mltrainer, or creating your own pyproject.toml with torch/ray version that work on your machine.

🎯 Quick Start

Here's a simple example using a CNN model with MNIST:

from trainer import Trainer, TrainerSettings
from imagemodels import CNN
from metrics import Accuracy
from preprocessors import BasePreprocessor
from settings import ReportTypes
from pathlib import Path

# Define training settings
settings = TrainerSettings(
    epochs=10,
    metrics=[Accuracy()],
    logdir=Path("./logs"),
    train_steps=100,
    valid_steps=20,
    reporttypes=[ReportTypes.TENSORBOARD, ReportTypes.TOML],
    optimizer_kwargs={"lr": 0.001},
    scheduler_kwargs={"factor": 0.1, "patience": 5},
    earlystop_kwargs={"patience": 7, "save": True}
)

# Initialize model and trainer
model = CNN(num_classes=10, kernel_size=3, filter1=32, filter2=64)
trainer = Trainer(
    model=model,
    settings=settings,
    loss_fn=nn.CrossEntropyLoss(),
    optimizer=torch.optim.Adam,
    traindataloader=train_loader,  # Your DataLoader
    validdataloader=valid_loader,  # Your DataLoader
    scheduler=torch.optim.lr_scheduler.ReduceLROnPlateau,
    device="cuda" if torch.cuda.is_available() else "cpu"
)

# Start training
trainer.loop()

📊 Report Types

The package supports multiple reporting backends:

  • 📈 TENSORBOARD: Real-time training visualization
  • 📝 TOML: Configuration and model architecture serialization. See https://pypi.org/project/tomlserializer/ for details
  • 📊 MLFLOW: Experiment tracking and model management
  • 🔄 RAY: Distributed training support (requires the tune extra: uv add 'mltrainer[tune]')

Configure them in TrainerSettings:

settings = TrainerSettings(
    reporttypes=[ReportTypes.TENSORBOARD, ReportTypes.MLFLOW],
    # ... other settings
)

🔍 Metrics

Built-in metrics include:

  • Accuracy: Classification accuracy
  • MAE: Mean Absolute Error
  • MASE: Mean Absolute Scaled Error (for time series)

Metrics are PyTorch-native and handle device placement automatically:

from metrics import Accuracy, MAE

settings = TrainerSettings(
    metrics=[Accuracy(), MAE()],
    # ... other settings
)

🔄 Preprocessors

Two main preprocessors are available:

  1. BasePreprocessor: Standard batch processing for fixed-size inputs

    preprocessor = BasePreprocessor()
    batch_x, batch_y = preprocessor(batch)
    
  2. PaddedPreprocessor: Handles variable-length sequences with padding

    preprocessor = PaddedPreprocessor()
    padded_x, batch_y = preprocessor(sequence_batch)
    

🧠 Available Models

The package includes several model architectures:

Image Models

  • CNN with configurable filters
  • Neural Network with customizable layers

RNN Models

  • Base RNN
  • GRU with optional attention
  • NLP models with embedding support

Example using AttentionGRU:

config = {
    "input_size": 10,
    "hidden_size": 64,
    "output_size": 1,
    "num_layers": 2,
    "dropout": 0.1
}
model = AttentionGRU(config)

⚙️ Advanced Configuration

TrainerSettings supports comprehensive training configuration:

settings = TrainerSettings(
    epochs=100,
    metrics=[Accuracy()],
    logdir=Path("./experiments"),
    train_steps=500,
    valid_steps=50,
    reporttypes=[ReportTypes.TENSORBOARD, ReportTypes.MLFLOW],
    optimizer_kwargs={
        "lr": 1e-3,
        "weight_decay": 1e-5
    },
    scheduler_kwargs={
        "factor": 0.1,
        "patience": 10
    },
    earlystop_kwargs={
        "save": True,
        "verbose": True,
        "patience": 10
    }
)

🔔 Early Stopping

The trainer includes built-in early stopping with model checkpointing:

settings = TrainerSettings(
    earlystop_kwargs={
        "patience": 7,      # Episodes to wait before stopping
        "save": True,       # Save best model
        "verbose": True,    # Print progress
        "delta": 0.001     # Minimum improvement threshold
    },
    # ... other settings
)

📝 Logging

The package uses loguru for comprehensive logging. All training progress, early stopping events, and potential issues are automatically logged:

from loguru import logger

# Logs are automatically created in your logdir
# Example log message:
# [2024-02-13 14:30:22] INFO: Epoch 5 train 0.3421 test 0.2891 metric [0.8934]

🤝 Contributing

Contributions are welcome! Please feel free to submit a Pull Request.

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