- Added progressive complexity guidelines (Foundation/Intermediate/Advanced)
- Added measurement function consolidation to prevent information overload
- Fixed all diagnostic issues in losses_dev.py
- Fixed markdown formatting across all modules
- Consolidated redundant analysis functions in foundation modules
- Fixed syntax errors and unused variables
- Ensured all educational content is in proper markdown cells for Jupyter
IMPORT PATH FIXES: All modules now reference correct directories
Fixed Paths:
✅ 02_tensor → 01_tensor (in all modules)
✅ 03_activations → 02_activations (in all modules)
✅ 04_layers → 03_layers (in all modules)
✅ 05_losses → 04_losses (in all modules)
✅ Added comprehensive fallback imports for 07_training
Module Test Status:
✅ 01_tensor, 02_activations, 03_layers: All tests pass
✅ 06_optimizers, 08_spatial: All tests pass
🔧 04_losses: Syntax error (markdown in Python)
🔧 05_autograd: Test assertion failure
🔧 07_training: Import paths fixed, ready for retest
All import dependencies now correctly reference reorganized module structure.
CLEANUP: Removed duplicate/obsolete configuration files
Removed Files:
- All old numbered .yml files (02_tensor.yml, 03_activations.yml, etc.)
- These were leftover from the module reorganization
- Had incorrect dependencies (still referenced 'setup')
Current State:
✅ CLI correctly uses module.yaml files (19 modules)
✅ All module.yaml files have correct dependencies
✅ No more duplicate/conflicting configuration files
✅ Clean module structure with single source of truth
The CLI was already using module.yaml correctly, so this cleanup removes
the confusing duplicate files without affecting functionality.
- Removed 01_setup module (archived to archive/setup_module)
- Renumbered all modules: tensor is now 01, activations is 02, etc.
- Added tito setup command for environment setup and package installation
- Added numeric shortcuts: tito 01, tito 02, etc. for quick module access
- Fixed view command to find dev files correctly
- Updated module dependencies and references
- Improved user experience: immediate ML learning instead of boring setup