R&D Engineering, Sr Engineer
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Synopsys is the leader in engineering solutions from silicon to systems, enabling customers to rapidly innovate AI-powered products. We deliver industry-leading silicon design, IP, simulation and analysis solutions, and design services. We partner closely with our customers across a wide range of industries to maximize their R&D capability and productivity, powering innovation today that ignites the ingenuity of tomorrow.
You Are
You are a passionate software engineer with electrical engineering background. You have learned electrical circuits, VLSI design, semiconductor physics or related areas, and proficient with C++ programming and designing efficient algorithms.
You are comfortable moving between electromagnetic theory and production C++ code. You can work on a quasi-static model in one day and spend another day optimizing a data structure that must handle billions of elements without falling over. When a foundry sends you a challenging new process modeling spec or a customer describes an accuracy problem, you do not panic, you dig in, reproduce it, and figure out where the model is missing.
Building things that must be right matters to you. Not approximately right for a demo, correct when someone tapes out a chip worth millions of dollars. You ask hard questions about accuracy versus runtime tradeoffs, and you care about both. You know that an extraction model that adds 10% runtime but catches a critical coupling issue is worth it.
At Synopsys, you will work on StarRC, the tool that sets the standard for parasitic extraction across the industry, and what you build will directly affect whether advanced designs close on schedule.
What You'll Be Doing
Research, design, and implement new transistor level extraction capabilities for StarRC, focusing on modeling accuracy for FinFET and gate-all-around devices at 3nm, 2nm, and beyond
Develop parasitic models for interconnect capacitance, inductance, and resistance using pattern-matching techniques and field solver methods
Design efficient algorithms and data structures in C++ that handle massive layout datasets while maintaining extraction accuracy and runtime performance
Apply computational electromagnetics principles to solve complex extraction problems for advanced process nodes
Collaborate with engineers across layout, simulation, timing, and physical verification teams to ensure StarRC integrates seamlessly into customer signoff flows
Work directly with foundries and customers to resolve extraction challenges in CPU designs, 3D IC systems, and advanced packaging structures
The Impact You Will Have
Enable accurate signoff for chips at the most advanced process nodes, directly affecting whether billion-dollar designs can tape out on schedule
Improve extraction runtime and capacity so customers can close timing on larger, more complex SoCs without sacrificing accuracy
Delivering capabilities that help foundries and design teams understand parasitic effects in new process technologies before they become yield problems
Strengthening StarRC's position as the gold standard extraction tool by solving problems competitors cannot
Help customers across CPU, AI accelerator, and memory design teams achieve first-pass silicon success by catching parasitic issues early
Shape the technical direction of extraction technology through direct collaboration with leading foundries and design houses
What You'll Need
MS or PhD in Electrical Engineering, Computer Science, or Computer Engineering with 1+ years of relevant EDA software development experience
Proficiency in C++ programming, algorithm design, and data structures for large scale software systems
Strong background in computational electromagnetics, including experience with full-wave or quasi-static EM modeling, Maxwell's equations, and numerical methods such as FEM, BEM, or MoM
Understanding how parasitic effects impact circuit performance and signoff, experience with LVS, extraction, or circuit simulation flows is a plus
Familiarity with field solver technology or transmission line analysis is a plus
Who You Are
You are a passionate software engineer with electrical engineering background. Graduate level research in electromagnetics a strong plus.
You are self-motivated, innovative and enjoy collaboration with similar technical minds to solve tough technical problems
You care about correctness at scale, an algorithm that works on a test case but crashes on a real customer design is not a solution
You are comfortable being wrong in a design review if it means the team catches a problem before it ships
You do not wait for perfect specs, when a foundry provides a spec, you identify the corner case scenarios, ask the right questions
The Team You'll Be Part Of
You will be a member of a high performing R&D team contributing to the development of StarRC, the EDA industry's gold standard for parasitic extraction. The team works on modeling physical effects for advanced process technologies, including FinFET at 7nm, 5nm, 3nm, 2nm, and beyond. You will collaborate closely with other product developers across layout design, simulations, timing, reliability verification, and physical verification.
Rewards and Benefits
We offer a comprehensive range of health, wellness, and financial benefits to cater to your needs. Our total rewards include both monetary and non-monetary offerings.
In addition to the base salary, this role may be eligible for an annual bonus, equity, and other discretionary bonuses. Synopsys offers comprehensive health, wellness, and financial benefits as part of a competitive total rewards package. The actual compensation offered will be based on a number of job-related factors, including location, skills, experience, and education. The base salary range for this role is across the U.S.
At Synopsys, we want talented people of every background to feel valued and supported to do their best work. Synopsys considers all applicants for employment without regard to race, color, religion, national origin, gender, sexual orientation, age, military veteran status, or disability.
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