Files
TinyTorch/tests
Vijay Janapa Reddi f9309e8b9d 🔧 Complete module restructuring and integration fixes
📦 Module File Organization:
- Renamed networks_dev.py → dense_dev.py in 05_dense module
- Renamed cnn_dev.py → spatial_dev.py in 06_spatial module
- Added new 07_attention module with attention_dev.py
- Updated module.yaml files to reference correct filenames
- Updated #| default_exp directives for proper package exports

🔄 Core Package Updates:
- Added tinytorch.core.dense (Sequential, MLP architectures)
- Added tinytorch.core.spatial (Conv2D, pooling operations)
- Added tinytorch.core.attention (self-attention mechanisms)
- Updated all core modules with latest implementations
- Fixed tensor assignment issues in compression module

🧪 Test Integration Fixes:
- Updated integration tests to use correct module imports
- Fixed tensor activation tests for new module structure
- Ensured compatibility with renamed components
- Maintained 100% individual module test success rate

Result: Complete 14-module TinyTorch framework with proper organization,
working integrations, and comprehensive test coverage ready for production use.
2025-07-18 02:10:49 -04:00
..
2025-07-15 10:03:05 -04:00

🧪 TinyTorch Integration Tests

⚠️ CRITICAL DIRECTORY - DO NOT DELETE

This directory contains 17 integration test files that verify cross-module functionality across the entire TinyTorch system. These tests represent significant development effort and are essential for:

  • Module integration validation
  • Cross-component compatibility
  • Real-world ML pipeline testing
  • System-level regression detection

📁 Test Structure

  • test_*_integration.py - Cross-module integration tests
  • test_utils.py - Shared testing utilities
  • test_integration_report.md - Test documentation

🧪 Integration Test Coverage

Foundation Integration

  • test_tensor_activations_integration.py - Tensor + Activations
  • test_layers_networks_integration.py - Layers + Dense Networks
  • test_tensor_autograd_integration.py - Tensor + Autograd

Architecture Integration

  • test_tensor_attention_integration.py - NEW: Tensor + Attention mechanisms
  • test_attention_pipeline_integration.py - NEW: Complete transformer-like pipelines
  • test_tensor_cnn_integration.py - Tensor + Spatial/CNN
  • test_cnn_networks_integration.py - Spatial + Dense Networks
  • test_cnn_pipeline_integration.py - Complete CNN pipelines

Training & Data Integration

  • test_dataloader_tensor_integration.py - DataLoader + Tensor
  • test_training_integration.py - Complete training workflows
  • test_ml_pipeline_integration.py - End-to-end ML pipelines

Inference Serving Integration

  • test_compression_integration.py - Model compression
  • test_kernels_integration.py - Custom operations
  • test_benchmarking_integration.py - Performance measurement
  • test_mlops_integration.py - Deployment and serving

🔧 Usage

# Run all integration tests
pytest tests/ -v

# Run specific module integration
pytest tests/test_tensor_attention_integration.py -v
pytest tests/test_attention_pipeline_integration.py -v

# Run attention-related tests
pytest tests/ -k "attention" -v

🚨 Recovery Instructions

If accidentally deleted:

git checkout HEAD -- tests/
git status  # Verify recovery

📊 Test Coverage

These integration tests complement the inline tests in each module's *_dev.py files, providing comprehensive system validation with focus on:

  • Real component integration (not mocks)
  • Cross-module compatibility
  • Realistic ML workflows (classification, seq2seq, transformers)
  • Performance and scalability