Commit Graph

5 Commits

Author SHA1 Message Date
Vijay Janapa Reddi
7826e167b6 Reorganize repository structure and add build tooling
## Repository Organization
- Move scripts from bin/ to scripts/ directory
  - activate-tinytorch: Environment activation script
  - generate_module_metadata.py: Module metadata generator
  - generate_student_notebooks.py: Student notebook generator
  - tito: TinyTorch CLI tool

## Build System
- Add site/build.sh: Jupyter Book 1.x build automation script
  - Auto-detects project root or site directory
  - Activates virtual environment if available
  - Handles clean builds with proper error handling

## Documentation
- Add docs/history/ for migration documentation
  - ROLLBACK_TO_JB1.md: Jupyter Book 1.x rollback documentation
  - MIGRATION_TO_V2.md: Jupyter Book 2.0 migration attempt notes

## Infrastructure Updates
- Update all site/modules/*_ABOUT.md symlinks: modules/ → src/
- Update all src/*/ABOUT.md symlinks: modules/ → src/
- Update .envrc: Reflect new scripts/ directory structure
- Update pyproject.toml: Add build system dependencies

This commit completes the src-modules separation restructuring and
adds necessary tooling for the new repository layout.

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-25 11:29:41 -05:00
Vijay Janapa Reddi
90d472913b Remove temporary documentation and planning files
Deleted Category 1 temporary documentation files:
- Root directory: review reports, fix summaries, implementation checklists
- docs/development: testing plans, review checklists, quick references
- instructor/guides: analysis reports and implementation plans
- tests: testing strategy document

These were completed work logs and planning documents no longer needed.
All active documentation (site content, module ABOUT files, READMEs) preserved.
2025-11-19 16:21:24 -05:00
Vijay Janapa Reddi
c59d9a116a MILESTONE: Complete Phase 2 CNN training pipeline
 Phase 1-2 Complete: Modules 1-10 aligned with tutorial master plan
 CNN Training Pipeline: Autograd → Spatial → Optimizers → DataLoader → Training
 Technical Validation: All modules import and function correctly
 CIFAR-10 Ready: Multi-channel Conv2D, BatchNorm, MaxPool2D, complete pipeline

Key Achievements:
- Fixed module sequence alignment (spatial now Module 7, not 6)
- Updated tutorial master plan for logical pedagogical flow
- Phase 2 milestone achieved: Students can train CNNs on CIFAR-10
- Complete systems engineering focus throughout all modules
- Production-ready CNN pipeline with memory profiling

Next Phase: Language models (Modules 11-15) for TinyGPT milestone
2025-09-23 18:33:56 -04:00
Vijay Janapa Reddi
7e6eccae4a feat: Implement comprehensive student protection system for TinyTorch
🛡️ **CRITICAL FIXES & PROTECTION SYSTEM**

**Core Variable/Tensor Compatibility Fixes:**
- Fix bias shape corruption in Adam optimizer (CIFAR-10 blocker)
- Add Variable/Tensor compatibility to matmul, ReLU, Softmax, MSE Loss
- Enable proper autograd support with gradient functions
- Resolve broadcasting errors with variable batch sizes

**Student Protection System:**
- Industry-standard file protection (read-only core files)
- Enhanced auto-generated warnings with prominent ASCII-art headers
- Git integration (pre-commit hooks, .gitattributes)
- VSCode editor protection and warnings
- Runtime validation system with import hooks
- Automatic protection during module exports

**CLI Integration:**
- New `tito system protect` command group
- Protection status, validation, and health checks
- Automatic protection enabled during `tito module complete`
- Non-blocking validation with helpful error messages

**Development Workflow:**
- Updated CLAUDE.md with protection guidelines
- Comprehensive validation scripts and health checks
- Clean separation of source vs compiled file editing
- Professional development practices enforcement

**Impact:**
 CIFAR-10 training now works reliably with variable batch sizes
 Students protected from accidentally breaking core functionality
 Professional development workflow with industry-standard practices
 Comprehensive testing and validation infrastructure

This enables reliable ML systems training while protecting students
from common mistakes that break the Variable/Tensor compatibility.
2025-09-21 12:22:18 -04:00
Vijay Janapa Reddi
8cccf322b5 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