Vijay Janapa Reddi 0f3134aa79 Rename examples to exciting names and remove incomplete placeholders
- Rename xor_network/ → xornet/ (more exciting!)
- Rename cifar10_classifier/ → cifar10/ (simpler, cleaner)
- Remove incomplete optimization_comparison/ and text_generation/
  (were placeholder templates, not working implementations)
- Update README.md to reflect new exciting names
- Streamline to only working, tested examples

Final structure:
- xornet/ - 100% XOR accuracy
- cifar10/ - 57.2% real image classification

Clean, exciting names that students will remember!
2025-09-21 15:54:05 -04:00

TinyTorch 🔥

Build ML Systems From First Principles

Python License Documentation Status

A Harvard University course that teaches ML systems engineering by building a complete deep learning framework from scratch. From tensors to transformers, understand every line of code powering modern AI.

🎯 What You'll Build

A complete ML framework capable of:

  • Training CNNs on CIFAR-10 to 75%+ accuracy
  • Building GPT-style language models
  • Implementing modern optimizers (Adam, learning rate scheduling)
  • Production deployment with monitoring and MLOps

All built from scratch using only NumPy - no PyTorch, no TensorFlow!

🚀 Quick Start

# Clone and setup
git clone https://github.com/mlsysbook/TinyTorch.git
cd TinyTorch
python -m venv .venv
source .venv/bin/activate  # On Windows: .venv\Scripts\activate
pip install -r requirements.txt
pip install -e .

# Start learning
cd modules/source/01_setup
jupyter lab setup_dev.py

# Track progress
tito checkpoint status

📚 Course Structure

16 Progressive Modules

Module Topic What You Build
Foundations
01 Setup Development environment
02 Tensors N-dimensional arrays
03 Activations ReLU, Sigmoid, Softmax
04 Layers Dense layers
05 Networks Sequential models
Deep Learning
06 Spatial CNNs for vision
07 Attention Transformers
08 DataLoader Efficient data pipelines
09 Autograd Automatic differentiation
10 Optimizers SGD, Adam
Production
11 Training Complete training loops
12 Compression Model optimization
13 Kernels Performance optimization
14 Benchmarking Profiling tools
15 MLOps Production deployment
Language Models
16 TinyGPT Complete GPT implementation

🎓 Learning Philosophy

Most courses teach you to USE frameworks. TinyTorch teaches you to UNDERSTAND them.

# Traditional Course:
import torch
model.fit(X, y)  # Magic happens

# TinyTorch:
# You implement every component
# You measure memory usage
# You optimize performance
# You understand the systems

Why Build Your Own Framework?

Deep Understanding - Know exactly what loss.backward() does
Systems Thinking - Understand memory, compute, and scaling
Debugging Skills - Fix problems at any level of the stack
Production Ready - Learn patterns used in real ML systems

🛠️ Key Features

For Students

  • Interactive Demos: Rich CLI visualizations for every concept
  • Checkpoint System: Track your learning progress
  • Immediate Testing: Validate your implementations instantly
  • Real Datasets: Train on CIFAR-10, not toy examples

For Instructors

  • NBGrader Integration: Automated grading workflow
  • Progress Tracking: Monitor student achievements
  • Jupyter Book: Professional course website
  • Complete Solutions: Reference implementations included

📊 Example: Train a CNN on CIFAR-10

from tinytorch.core.networks import Sequential
from tinytorch.core.spatial import Conv2D
from tinytorch.core.activations import ReLU
from tinytorch.core.dataloader import CIFAR10Dataset
from tinytorch.core.training import Trainer
from tinytorch.core.optimizers import Adam

# Load real data
dataset = CIFAR10Dataset(download=True)
train_loader = DataLoader(dataset.train_data, batch_size=32)

# Build CNN
model = Sequential([
    Conv2D(3, 32, kernel_size=3),
    ReLU(),
    Conv2D(32, 64, kernel_size=3),
    ReLU(),
    Dense(64*28*28, 10)
])

# Train
trainer = Trainer(model, loss=CrossEntropyLoss(), optimizer=Adam())
trainer.fit(train_loader, epochs=30)
# Achieves 75%+ accuracy!

🧪 Testing & Validation

All demos and modules are thoroughly tested:

# Test all demos
python test_all_demos.py

# Validate implementations
python validate_demos.py

# Run checkpoint tests
tito checkpoint test 01

100% test coverage across 8 interactive demos
48 validation checks ensuring correctness
16 capability checkpoints tracking progress

📖 Documentation

🤝 Contributing

We welcome contributions! See CONTRIBUTING.md for guidelines.

📄 License

MIT License - see LICENSE for details.

🙏 Acknowledgments

Created by Prof. Vijay Janapa Reddi at Harvard University.

Special thanks to students and contributors who helped refine this educational framework.


Start Small. Go Deep. Build ML Systems.

Description
No description provided
Readme MIT 505 MiB
Languages
Python 84.5%
Jupyter Notebook 7.4%
HTML 2.8%
TeX 2.2%
JavaScript 1.3%
Other 1.8%