Commit Graph

29 Commits

Author SHA1 Message Date
Vijay Janapa Reddi
6491a7512e Clean up repository: remove temp files, organize modules, prepare for PyPI publication
- Removed temporary test files and audit reports
- Deleted backup and temp_holding directories
- Reorganized module structure (07->09 spatial, 09->07 dataloader)
- Added new modules: 11-14 (tokenization, embeddings, attention, transformers)
- Updated examples with historical ML milestones
- Cleaned up documentation structure
2025-09-24 10:13:37 -04:00
Vijay Janapa Reddi
e82bc8ba97 Complete comprehensive system validation and cleanup
🎯 Major Accomplishments:
•  All 15 module dev files validated and unit tests passing
•  Comprehensive integration tests (11/11 pass)
•  All 3 examples working with PyTorch-like API (XOR, MNIST, CIFAR-10)
•  Training capability verified (4/4 tests pass, XOR shows 35.8% improvement)
•  Clean directory structure (modules/source/ → modules/)

🧹 Repository Cleanup:
• Removed experimental/debug files and old logos
• Deleted redundant documentation (API_SIMPLIFICATION_COMPLETE.md, etc.)
• Removed empty module directories and backup files
• Streamlined examples (kept modern API versions only)
• Cleaned up old TinyGPT implementation (moved to examples concept)

📊 Validation Results:
• Module unit tests: 15/15 
• Integration tests: 11/11 
• Example validation: 3/3 
• Training validation: 4/4 

🔧 Key Fixes:
• Fixed activations module requires_grad test
• Fixed networks module layer name test (Dense → Linear)
• Fixed spatial module Conv2D weights attribute issues
• Updated all documentation to reflect new structure

📁 Structure Improvements:
• Simplified modules/source/ → modules/ (removed unnecessary nesting)
• Added comprehensive validation test suites
• Created VALIDATION_COMPLETE.md and WORKING_MODULES.md documentation
• Updated book structure to reflect ML evolution story

🚀 System Status: READY FOR PRODUCTION
All components validated, examples working, training capability verified.
Test-first approach successfully implemented and proven.
2025-09-23 10:00:33 -04:00
Vijay Janapa Reddi
93711f4efe Save current state before examples cleanup
Committing all remaining autograd and training improvements:
- Fixed autograd bias gradient aggregation
- Updated optimizers to preserve parameter shapes
- Enhanced loss functions with Variable support
- Added comprehensive gradient shape tests

This commit preserves the working state before cleaning up
the examples directory structure.
2025-09-21 15:45:23 -04:00
Vijay Janapa Reddi
1611af0b78 Add progressive demo system with repository reorganization
Implements comprehensive demo system showing AI capabilities unlocked by each module export:
- 8 progressive demos from tensor math to language generation
- Complete tito demo CLI integration with capability matrix
- Real AI demonstrations including XOR solving, computer vision, attention mechanisms
- Educational explanations connecting implementations to production ML systems

Repository reorganization:
- demos/ directory with all demo files and comprehensive README
- docs/ organized by category (development, nbgrader, user guides)
- scripts/ for utility and testing scripts
- Clean root directory with only essential files

Students can now run 'tito demo' after each module export to see their framework's
growing intelligence through hands-on demonstrations.
2025-09-18 17:36:32 -04:00
Vijay Janapa Reddi
791d1e3153 Update generated notebooks and package exports
- Regenerate all .ipynb files from fixed .py modules
- Update tinytorch package exports with corrected implementations
- Sync package module index with current 16-module structure

These generated files reflect all the module fixes and ensure consistent
.py ↔ .ipynb conversion with the updated module implementations.
2025-09-18 16:42:57 -04:00
Vijay Janapa Reddi
4de61031d1 Implement interactive ML Systems questions and standardize module structure
Major Educational Framework Enhancements:
• Deploy interactive NBGrader text response questions across ALL modules
• Replace passive question lists with active 150-300 word student responses
• Enable comprehensive ML Systems learning assessment and grading

TinyGPT Integration (Module 16):
• Complete TinyGPT implementation showing 70% component reuse from TinyTorch
• Demonstrates vision-to-language framework generalization principles
• Full transformer architecture with attention, tokenization, and generation
• Shakespeare demo showing autoregressive text generation capabilities

Module Structure Standardization:
• Fix section ordering across all modules: Tests → Questions → Summary
• Ensure Module Summary is always the final section for consistency
• Standardize comprehensive testing patterns before educational content

Interactive Question Implementation:
• 3 focused questions per module replacing 10-15 passive questions
• NBGrader integration with manual grading workflow for text responses
• Questions target ML Systems thinking: scaling, deployment, optimization
• Cumulative knowledge building across the 16-module progression

Technical Infrastructure:
• TPM agent for coordinated multi-agent development workflows
• Enhanced documentation with pedagogical design principles
• Updated book structure to include TinyGPT as capstone demonstration
• Comprehensive QA validation of all module structures

Framework Design Insights:
• Mathematical unity: Dense layers power both vision and language models
• Attention as key innovation for sequential relationship modeling
• Production-ready patterns: training loops, optimization, evaluation
• System-level thinking: memory, performance, scaling considerations

Educational Impact:
• Transform passive learning to active engagement through written responses
• Enable instructors to assess deep ML Systems understanding
• Provide clear progression from foundations to complete language models
• Demonstrate real-world framework design principles and trade-offs
2025-09-17 14:42:24 -04:00
Vijay Janapa Reddi
7f94cc4809 Complete north star validation and demo pipeline
- Export all modules with CIFAR-10 and checkpointing enhancements
- Create demo_cifar10_training.py showing complete pipeline
- Fix module issues preventing clean imports
- Validate all components work together
- Confirm students can achieve 75% CIFAR-10 accuracy goal

Pipeline validated:
 CIFAR-10 dataset downloading
 Model creation and training
 Checkpointing for best models
 Evaluation tools
 Complete end-to-end workflow
2025-09-17 00:32:13 -04:00
Vijay Janapa Reddi
cdbdba0b35 Comprehensive TinyTorch framework evaluation and analysis
Assessment Results:
- 75% real implementation vs 25% educational scaffolding
- Working end-to-end training on CIFAR-10 dataset
- Comprehensive architecture coverage (MLPs, CNNs, Attention)
- Production-oriented features (MLOps, profiling, compression)
- Professional development workflow with CLI tools

Key Findings:
- Students build functional ML framework from scratch
- Real datasets and meaningful evaluation capabilities
- Progressive complexity through 16-module structure
- Systems engineering principles throughout
- Ready for serious ML systems education

Gaps Identified:
- GPU acceleration and distributed training
- Advanced optimizers and model serialization
- Some memory optimization opportunities

Recommendation: Excellent foundation for ML systems engineering education
2025-09-16 22:41:07 -04:00
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
Vijay Janapa Reddi
05391eb550 feat: Restructure integration tests and optimize module timing
- Flattened tests/ directory structure (removed integration/ and system/ subdirectories)
- Renamed all integration tests with _integration.py suffix for clarity
- Created test_utils.py with setup_integration_test() function
- Updated integration tests to use ONLY tinytorch package imports
- Ensured all modules are exported before running tests via tito export --all
- Optimized module test timing for fast execution (under 5 seconds each)
- Fixed MLOps test reliability and reduced timing parameters across modules
- Exported all modules (compression, kernels, benchmarking, mlops) to tinytorch package
2025-07-14 23:37:50 -04:00
Vijay Janapa Reddi
19d957e1d7 Proper: Use tito export for module control and consistency
- Switched from direct nbdev_export to tito export for proper control
- tito export 09_training: Managed conversion and export workflow
- tito export 08_optimizers: Ensured proper dependency resolution
- All modules automatically re-exported through tito system
- Updated _modidx.py with proper module index

Benefits of tito export:
- Consistent with TinyTorch CLI workflow
- Proper control over export process
- Professional export summary and feedback
- Handles conversion from .py to .ipynb automatically
- Maintains proper module dependencies and order
- Integrates with tito test system seamlessly

Test results:
- 09_training: 6/6 inline tests passed
- 08_optimizers: 5/5 inline tests passed
- 17/17 integration tests passed
- All tito-exported components working correctly
- Complete training pipeline functional via tito system
2025-07-14 01:03:39 -04:00
Vijay Janapa Reddi
eafbb4ac8d Fix comprehensive testing and module exports
🔧 TESTING INFRASTRUCTURE FIXES:
- Fixed pytest configuration (removed duplicate timeout)
- Exported all modules to tinytorch package using nbdev
- Converted .py files to .ipynb for proper NBDev processing
- Fixed import issues in test files with fallback strategies

📊 TESTING RESULTS:
- 145 tests passing, 15 failing, 16 skipped
- Major improvement from previous import errors
- All modules now properly exported and testable
- Analysis tool working correctly on all modules

🎯 MODULE QUALITY STATUS:
- Most modules: Grade C, Scaffolding 3/5
- 01_tensor: Grade C, Scaffolding 2/5 (needs improvement)
- 07_autograd: Grade D, Scaffolding 2/5 (needs improvement)
- Overall: Functional but needs educational enhancement

 RESOLVED ISSUES:
- All import errors resolved
- NBDev export process working
- Test infrastructure functional
- Analysis tools operational

🚀 READY FOR NEXT PHASE: Professional report cards and improvements
2025-07-13 09:20:32 -04:00
Vijay Janapa Reddi
9247784cb7 feat: Enhanced tensor and activations modules with comprehensive educational content
- Added package structure documentation explaining modules/source/ vs tinytorch.core.
- Enhanced mathematical foundations with linear algebra refresher and Universal Approximation Theorem
- Added real-world applications for each activation function (ReLU, Sigmoid, Tanh, Softmax)
- Included mathematical properties, derivatives, ranges, and computational costs
- Added performance considerations and numerical stability explanations
- Connected to production ML systems (PyTorch, TensorFlow, JAX equivalents)
- Implemented streamlined 'tito export' command with automatic .py → .ipynb conversion
- All functionality preserved: scripts run correctly, tests pass, package integration works
- Ready to continue with remaining modules (layers, networks, cnn, dataloader)
2025-07-12 17:51:00 -04:00
Vijay Janapa Reddi
f1d47330b3 Simplify export workflow: remove module_paths.txt, use dynamic discovery
- Remove unnecessary module_paths.txt file for cleaner architecture
- Update export command to discover modules dynamically from modules/source/
- Simplify nbdev command to support --all and module-specific exports
- Use single source of truth: nbdev settings.ini for module paths
- Clean up import structure in setup module for proper nbdev export
- Maintain clean separation between module discovery and export logic

This implements a proper software engineering approach with:
- Single source of truth (settings.ini)
- Dynamic discovery (no hardcoded paths)
- Clean CLI interface (tito package nbdev --export [--all|module])
- Robust error handling with helpful feedback
2025-07-12 17:19:22 -04:00
Vijay Janapa Reddi
84c4f54dd5 Add multiple solution blocks example to NBGrader assignment
- Add complex_calculation() function demonstrating multiple solution blocks within single function
- Shows how NBGrader can guide students through step-by-step implementation
- Each solution block replaced with '# YOUR CODE HERE' + 'raise NotImplementedError()' in student version
- Update total points from 85 to 95 to account for new 10-point problem
- Add comprehensive test coverage for multi-step function
- Demonstrate educational pattern: Step 1 → Step 2 → Step 3 within one function
- Perfect example of NBGrader's guided learning capabilities
2025-07-12 12:47:30 -04:00
Vijay Janapa Reddi
3d81f76897 Clean up stale documentation - remove outdated workflow patterns
- Remove 5 outdated development guides that contradicted clean NBGrader/nbdev architecture
- Update all documentation to reflect assignments/ directory structure
- Remove references to deprecated #| hide approach and old command patterns
- Ensure clean separation: NBGrader for assignments, nbdev for package export
- Update README, Student Guide, and Instructor Guide with current workflows
2025-07-12 12:36:31 -04:00
Vijay Janapa Reddi
83fb269d9f Complete migration from modules/ to assignments/source/ structure
- Migrated all Python source files to assignments/source/ structure
- Updated nbdev configuration to use assignments/source as nbs_path
- Updated all tito commands (nbgrader, export, test) to use new structure
- Fixed hardcoded paths in Python files and documentation
- Updated config.py to use assignments/source instead of modules
- Fixed test command to use correct file naming (short names vs full module names)
- Regenerated all notebook files with clean metadata
- Verified complete workflow: Python source → NBGrader → nbdev export → testing

All systems now working: NBGrader (14 source assignments, 1 released), nbdev export (7 generated files), and pytest integration.

The modules/ directory has been retired and replaced with standard NBGrader structure.
2025-07-12 12:06:56 -04:00
Vijay Janapa Reddi
27208e3492 🏗️ Restructure repository for optimal student/instructor experience
- Move development artifacts to development/archived/ directory
- Remove NBGrader artifacts (assignments/, testing/, gradebook.db, logs)
- Update root README.md to match actual repository structure
- Provide clear navigation paths for instructors and students
- Remove outdated documentation references
- Clean root directory while preserving essential files
- Maintain all functionality while improving organization

Repository is now optimally structured for classroom use with clear entry points:
- Instructors: docs/INSTRUCTOR_GUIDE.md
- Students: docs/STUDENT_GUIDE.md
- Developers: docs/development/

 All functionality verified working after restructuring
2025-07-12 11:17:36 -04:00
Vijay Janapa Reddi
77150be3a6 Module 00_setup migration: Core functionality complete, NBGrader architecture issue discovered
 COMPLETED:
- Instructor solution executes perfectly
- NBDev export works (fixed import directives)
- Package functionality verified
- Student assignment generation works
- CLI integration complete
- Systematic testing framework established

⚠️ CRITICAL DISCOVERY:
- NBGrader requires cell metadata architecture changes
- Current generator creates content correctly but wrong cell types
- Would require major rework of assignment generation pipeline

📊 STATUS:
- Core TinyTorch functionality:  READY FOR STUDENTS
- NBGrader integration: Requires Phase 2 rework
- Ready to continue systematic testing of modules 01-06

🔧 FIXES APPLIED:
- Added #| export directive to imports in enhanced modules
- Fixed generator logic for student scaffolding
- Updated testing framework and documentation
2025-07-12 09:08:45 -04:00
Vijay Janapa Reddi
25e1e77492 Improve CLI: remove redundant --module flags
- Update test, export, and clean commands to use positional arguments
- Change from 'tito module test --module dataloader' to 'tito module test dataloader'
- Eliminates redundant --module flag within module command group
- Update help text and examples to reflect new syntax
- Maintains backward compatibility with --all flag
- More intuitive and consistent CLI design
2025-07-12 00:56:00 -04:00
Vijay Janapa Reddi
39a04bbe65 feat: Add modules command and clean up CLI duplication
- Add new 'tito modules' command for comprehensive module status checking
  - Scans all modules in modules/ directory automatically
  - Shows file structure (dev file, tests, README)
  - Runs tests with --test flag
  - Provides detailed breakdown with --details flag

- Remove duplicate/stub commands:
  - Remove 'tito status' (unimplemented stub)
  - Remove 'tito submit' (unimplemented stub)

- Update 'tito test' command:
  - Focus on individual module testing with detailed output
  - Redirect 'tito test --all' to 'tito modules --test' with recommendation
  - Better error handling with available modules list

- Add comprehensive documentation:
  - docs/development/testing-separation.md - explains module vs package checking
  - docs/development/command-cleanup-summary.md - documents CLI cleanup

Key benefit: Clear separation between module development status (tito modules)
and TinyTorch package functionality (tito info) with no confusing overlaps.
2025-07-11 22:14:53 -04:00
Vijay Janapa Reddi
7c2b98a2b9 refactor: rename data module to dataloader
- Rename modules/data/ → modules/dataloader/
- Rename data_dev.py → dataloader_dev.py
- Update NBDev export target: core.data → core.dataloader
- Rename test files: test_data.py → test_dataloader.py
- Update package exports to tinytorch.core.dataloader
- Update module imports and internal references

This makes the module name more descriptive and aligned with ML industry standards.
2025-07-11 18:59:09 -04:00
Vijay Janapa Reddi
c483426008 docs: Clarify MLP is a use case, not a fundamental module; remove empty mlp/ dir
- Added note to Networks README explaining MLP is a pattern of composition, not a new primitive
- Removed empty modules/mlp/ directory for clarity
2025-07-10 23:29:47 -04:00
Vijay Janapa Reddi
0ee3efd45e feat: Add matrix multiplication scaffolding to Layers module
- Add matmul_naive function with for-loop implementation for learning
- Update Dense layer to support both NumPy (@) and naive matrix multiplication
- Add comprehensive tests comparing both implementations (correctness & performance)
- Include step-by-step computation visualization for 2x2 matrices
- Fix missing imports in tensor.py and activations.py
- Export both tensor and activations modules to package

This provides students with immediate success using NumPy while allowing them to
understand the underlying computation through explicit for-loops. The scaffolding
includes performance comparisons and educational insights about why NumPy is faster.
2025-07-10 23:27:02 -04:00
Vijay Janapa Reddi
15f5a84863 RESTORE: Complete CLI functionality in new architecture
- Ported all commands from bin/tito.py to new tito/ CLI architecture
- Added InfoCommand with system info and module status
- Added TestCommand with pytest integration
- Added DoctorCommand with environment diagnosis
- Added SyncCommand for nbdev export functionality
- Added ResetCommand for package cleanup
- Added JupyterCommand for notebook server
- Added NbdevCommand for nbdev development tools
- Added SubmitCommand and StatusCommand (placeholders)
- Fixed missing imports in tinytorch/core/tensor.py
- All commands now work with 'tito' command in shell
- Maintains professional architecture while restoring full functionality

Commands restored:
 info - System information and module status
 test - Run module tests with pytest
 doctor - Environment diagnosis
 sync - Export notebooks to package
 reset - Clean tinytorch package
 nbdev - nbdev development commands
 jupyter - Start Jupyter server
 submit - Module submission
 status - Module status
 notebooks - Build notebooks from Python files

The CLI now has both the professional architecture and all original functionality.
2025-07-10 22:39:23 -04:00
Vijay Janapa Reddi
b47c8ef259 feat: Create clean modular architecture with activations → layers separation
��️ Major architectural improvement implementing clean separation of concerns:

 NEW: Activations Module
- Complete activations module with ReLU, Sigmoid, Tanh implementations
- Educational NBDev structure with student TODOs + instructor solutions
- Comprehensive testing suite (24 tests) with mathematical correctness validation
- Visual learning features with matplotlib plotting (disabled during testing)
- Clean export to tinytorch.core.activations

🔧 REFACTOR: Layers Module
- Removed duplicate activation function implementations
- Clean import from activations module: 'from tinytorch.core.activations import ReLU, Sigmoid, Tanh'
- Updated documentation to reflect modular architecture
- Preserved all existing functionality while improving code organization

🧪 TESTING: Comprehensive Test Coverage
- All 24 activations tests passing 
- All 17 layers tests passing 
- Integration tests verify clean architecture works end-to-end
- CLI testing with 'tito test --module' works for both modules

📦 ARCHITECTURE: Clean Dependency Graph
- activations (math functions) → layers (building blocks) → networks (applications)
- Separation of concerns: pure math vs. neural network components
- Reusable components across future modules
- Single source of truth for activation implementations

�� PEDAGOGY: Enhanced Learning Experience
- Week-sized chunks: students master activations, then build layers
- Clear progression from mathematical foundations to applications
- Real-world software architecture patterns
- Modular design principles in practice

This establishes the foundation for scalable, maintainable ML systems education.
2025-07-10 21:32:25 -04:00
Vijay Janapa Reddi
13438173c6 Adds Tensor class with basic operations
Introduces a Tensor class that wraps numpy arrays, enabling
fundamental ML operations like addition, subtraction,
multiplication, and division.

Adds utility methods such as reshape, transpose, sum, mean, max,
min, item, and numpy to the Tensor class.

Updates tests to accommodate both scalar and Tensor results
when checking mean values.
2025-07-10 14:30:41 -04:00
Vijay Janapa Reddi
0a53597e27 feat: Complete Setup module and enhance CLI functionality
 Setup Module Implementation:
- Created comprehensive setup_dev.ipynb with TinyTorch workflow tutorial
- Added hello_tinytorch(), add_numbers(), and SystemInfo class
- Updated README with clear learning objectives and development workflow
- All 11 tests passing for complete workflow validation

🔧 CLI Enhancements:
- Added --module flag to 'tito sync' for module-specific exports
- Implemented 'tito reset' command with --force option
- Smart auto-generated file detection and cleanup
- Interactive confirmation with safety preservations

📚 Documentation Updates:
- Updated all references to use [module]_dev.ipynb naming convention
- Enhanced test coverage for new functionality
- Clear error handling and user guidance

This establishes the foundation workflow that students will use throughout TinyTorch development.
2025-07-10 13:09:10 -04:00
Vijay Janapa Reddi
5fc55f8cbe Been refactoring the structure, got setup working 2025-07-10 11:13:45 -04:00