Principal Supply Chain Modeling Engineer
About the role
This role serves as the core technical architect and strategic partner to the Vice President of Supply Network Simulation. The ideal candidate will not manage a team but will personally own and compose highly complex mathematical models that dictate global hardware procurement strategy.
Responsibilities
End-to-End Code Execution: Write, debug, and scale advanced simulation models in Python, MATLAB, and Excel from scratch.
AI Augmentation: Upgrade traditional simulations by building and deploying Machine Learning (ML) and AI models to predict supply anomalies, market disruptions, and non-linear demand shifts.
Material Forecasting: Build deterministic and stochastic models to simulate multi-variable demand scenarios for silicon wafers, memory, substrates, and critical long-lead-time sub-assemblies.
Executive Partnership: Translate complex algorithmic and AI-driven outputs into clear, actionable financial and operational recommendations directly for the VP.
Data Integrity & Architecture: Audit massive datasets to ensure extreme precision, as model outputs will directly commit millions of dollars in spend.
Continuous Optimization: Constantly stress-test, refine, and modernize legacy planning sheets into automated, high-performance computing scripts.
Partnership: Partner closely with supply chain, procurement, finance, and engineering teams to evaluate scenario-based planning and long-range sourcing strategies.
Requirements
Bachelor’s degree within Operations Research, Industrial Engineering, Computer Science, Data Science, Mathematics, Statistics, Physics, or an equivalent quantitative engineering discipline (or equivalent experience).
Expert Modeling & Coding: Proficiency in Python (specifically libraries like Pandas, NumPy, SciPy) and MATLAB is non-negotiable.
15+ Years of Quantitative Experience: With proven track record of personally building, running, and deploying complex mathematical, simulation, or financial models.
Hands-on AI/ML Experience: 2+ years of practical, hands-on experience designing, training, and deploying AI or algorithms based on learning from data (not just theoretical knowledge).
Ability to build complex, formula-dense spreadsheets, macro automation, and data models where rapid prototyping is required.
Extreme Detail Orientation: Demonstrated success in identifying edge-case anomalies in massive datasets that others miss.
Demonstrated experience presenting raw data and model architectures directly to VP-level leadership.
Qualifications
Advanced degree (Master’s or PhD) with a focus on optimization, simulation, or machine learning, or equivalent experience.
Prior background in the technology hardware, semiconductor, or electronics supply chain sectors.
Familiarity with capacity planning, inventory theory, or procurement logistics.
Experience deploying AI models into live cloud environments (e.g., AWS, Azure, GCP).
Benefits
Base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 240,000 USD - 379,500 USD. Eligible for equity and benefits.
Schedule
The posting is for an existing vacancy. Applications are accepted at least until July 3, 2026.
Pay
Your base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 240,000 USD - 379,500 USD.