49 production-ready Python recipes for supply chain management
-
Updated
Mar 25, 2026 - Jupyter Notebook
49 production-ready Python recipes for supply chain management
The complete supply chain data science handbook as Jupyter notebooks
Multi-modal transportation route planner — road, rail, ocean, air intermodal
12 Lessons - Build autonomous AI agents for supply chain planning procurement and logistics
Transportation procurement tender management and bid evaluation tool
Intermodal truck-rail cost transit
19 Lessons - Master AI for Supply Chain Management from fundamentals to production
Build supply chain optimization models from zero - pure implementation step by step
My GitHub profile — Founder & CEO @Quantisage | AI + Supply Chain + Climate Tech
Hyperlocal delivery network model with dark stores and micro-hubs
SC scenario modeling with Monte Carlo uncertainty quantification
Activity-Based Costing for manufacturing — Kaplan & Cooper
Min-cost network flow supply chain
Inventory risk pooling consolidation simulator
AI demand orchestrator for unified demand planning across channels
Freight market rate analysis with lane-level benchmarking
Supply chain risk quantification via Monte Carlo simulation
Supplier network graph analysis with centrality and vulnerability
Truck load planning mixed SKU shipments
Multi-tier supply chain visibility mapping and risk propagation analyzer
Add a description, image, and links to the quantisage topic page so that developers can more easily learn about it.
To associate your repository with the quantisage topic, visit your repo's landing page and select "manage topics."