Renesas Electronics

semiconductor

PrincipalEngineer,AutomatedDerivatives

$250–400k ~AI est. Austin, Texas, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for director candidates.

The Brief

“Principal Engineer, Automated Derivatives at Renesas Electronics. Skills: AI-augmented RTL, Intelligent verification, Rapid physical implementation, Machine learning. Evaluate RTL code with ML predictors. Automate RTL wrapper creation”

What You'll Achieve.

Achieve ultra-fast turnaround times; Reduce RTL-to-GDS iterations; Hit aggressive power targets; Slash simulation time; Reduce compute costs; Achieve 10x faster convergence

Industry & Context.

semiconductor
Problems you'll solve

Root cause analysis; Debugging; Troubleshooting

What They're Looking For.

Must Have

Master’s degree in EE, CS, or CE, 12–15 years semiconductor experience, SystemVerilog for RTL design, UVM for functional verification, Synthesis, P&R, STA understanding, Expert Python skills, Tcl/Python for feature extraction, Git mastery, CI/CD pipelines mastery

Nice to Have

ML-based predictors evaluation, Generative AI prompts development, AI for logic optimization, AI-driven verification environments, ML for test case prioritization, Pattern-recognition models deployment, AI for floorplan constraints, AI for timing assertions, AI for reusing P&R solutions

What You'll Do.

Evaluate RTL code with ML predictors

Automate RTL wrapper creation

Automate memory map creation

Automate bus interconnect creation

Identify redundant logic with AI

Identify clock-gating opportunities with AI

Build AI-driven verification environments

Automatically adjust constraints

Automatically adjust coverage goals

Prioritize test cases with ML

Identify bug-prone modules with models

Generate floorplan constraints with AI

Generate timing assertions with AI

Drive physical implementation of derivatives

Reuse placement solutions

Reuse routing solutions

How You'll Work.

Process & Methodology

CI/CD pipelines

Full Job Description

In this multi-disciplinary role, you will lead the end-to-end delivery of derivative SoCs , focusing on the intersection of RTL design, functional verification, and physical implementation. You will not just execute flows; you will build an AI-augmented "Silicon Factory" that uses machine learning to bridge the gap between architectural intent and GDSII. Your goal is to achieve ultra-fast turnaround times by using AI to predict physical outcomes during RTL coding and to automate the verification of design variants. Key Responsibilities 1. AI-Augmented RTL & Architecture * Physical-Aware RTL: Use ML-based predictors to evaluate RTL code for timing and congestion bottlenecks before synthesis, reducing the number of "RTL-to-GDS" iterations. * Derivative Generation: Develop scripts and Generative AI prompts to automate the creation of RTL wrappers, memory maps, and bus interconnects for design variants. * Logic Optimization: Employ AI to identify redundant logic or clock-gating opportunities to hit aggressive power targets in derivative designs. 2. Intelligent Verification * Automated Testbench Scaling: Build AI-driven verification environments that automatically adjust constraints and coverage goals when a design derivative (e.g., changed cache size or port count) is instantiated. * Smart Regression Management: Use ML to prioritize test cases that are most likely to fail based on historical RTL changes, slashing simulation time and compute costs. * Bug Prediction: Deploy pattern-recognition models to identify "bug-prone" modules in the RTL based on complexity metrics and previous tape-out data. 3. Rapid Physical Implementation * Seamless Handoff: Ensure a "zero-friction" path from RTL to Physical Design by using AI to automatically generate floorplan constraints and timing assertions from the design spec. * Closure Acceleration: Drive the physical implementation of derivatives, using AI to "reuse" placement and routing solutions from parent designs to achieve 10x faste

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