AI/ML Engineer - Silicon Development Automation
Position Overview
We are seeking an AI/ML Engineer to design and implement AI-enabled workflows that accelerate silicon development processes across the chip design lifecycle. You will apply deep learning and generative AI techniques to optimize EDA (Electronic Design Automation) workflows, spanning frontend design through backend physical design and Design-for-Test (DFT) implementation.
Key Responsibilities
Workflow Development & Optimization
- Develop AI-enabled automation solutions for frontend and backend silicon development domains including circuit design, design verification, formal verification, static code analysis, debugging, or for backend physical design workflows.
- Contribute to agentic workflows that coordinate silicon development tasks
AI/ML Model Development
- Implement Generative AI systems using Context Engineering, Retrieval-Augmented Generation (RAG) and Agentic techniques to integrate domain-specific EDA tooling with LLM capabilities
- Apply context engineering techniques to encode chip design constraints and specifications into model inputs
- Participate in building evaluation suites and internally relevant benchmark data for silicon development AI applications
Technical Implementation
- Write production Python and C++ code for AI inference and training pipelines
- Build data pipelines for processing design databases, netlists, and verification artifacts
- Develop evaluation frameworks with domain-specific metrics for design quality and convergence
Required Qualifications
Education & Background
- Bachelor's or Master's degree in Computer Science, Electrical Engineering, or related field
- Documented evidence of deep learning, generative AI, or chip design/verification expertise through one of: published papers, thesis work, GitHub repositories, or research projects
Technical Proficiency
- Strong Python programming for ML development and data processing
- Solid C++ programming skills
- Familiarity with optimization algorithms and their applications
- Hands-on work with RAG systems or agentic AI workflows
Domain Knowledge
- Working knowledge of VLSI design flows, chip design, or verification methodologies
- Understanding of EDA tools and design automation concepts
Preferred Qualifications
- Hands-on experience with PyTorch and deep learning frameworks
- Contributions to open-source EDA tools or design automation projects
- Prior coursework or projects in EDA or silicon development related activities
- Experience with model evaluation frameworks and AI development best practices
Technical Competencies
- Python ML Development
- C++ Programming
- VLSI/Silicon Design Fundamentals
- Generative AI Applications
- RAG & Context Engineering Basics
- Optimization Algorithm Implementation
The base salary range for this role is between $140,000 - $160,000