Job Details:Job Description:About the RoleWe are seeking a highly accomplished
Physical Design Technical Lead who thrives at the intersection of disciplined engineering excellence and bold technical innovation. In this role you will own complex SOC and block-level implementation challenges end-to-end - from floorplan and power intent through final signoff - while actively shaping the evolution of our ML/AI-driven implementation flows. This is a high-visibility, high-impact position with a direct path to senior technical leadership.
Why This Role Stands Out- Best-in-class EDA toolchain: Synopsys Fusion Compiler, Cadence Innovus, industry-leading signoff suite
- ML/AI-first flow strategy - you will help define it, not just use it
- Tapeout cadence on leading-edge nodes
- Collaborative, no-ego culture with world-class peers across design, DFT, and analog teams
- Clear career ladder to Principal Engineer / Sr. Principal Engineer
Key Responsibilities:SOC & Block-Level Implementation Leadership- Own floorplan architecture and power domain partitioning for large, multi-million instance SOC designs
- Drive block-level implementation through synthesis, place-and-route, CTS, and ECO closure with sign-off quality results
- Lead cross-functional convergence on timing, power, and area targets across multiple concurrent tapeout projects
- Collaborate with RTL, DFT, packaging, and analog teams to resolve integration challenges proactively
- Define and enforce physical design guidelines, constraint authoring (SDC/UPF), and methodology standards
Advanced Closure & Signoff- Achieve full signoff closure: STA (multi-corner multi-mode), IR drop, electromigration, DRC/LVS, antenna
- Drive PPA optimization strategies including innovative floorplanning, clock topology, and routing resource planning
- Lead critical-path analysis and timing-driven ECO resolution in partnership with design and library teams
- Manage hierarchy and partitioning trade-offs for hierarchical vs. flat implementation flows
ML/AI Flow Innovation- Champion the integration of ML/AI-based optimization engines into production PnR flows
- Hands-on experience with AI-assisted place-and-route, ML-based timing prediction, or reinforcement-learning PPA optimization
- Evaluate and productize emerging AI tools from EDA vendors and internal research teams
- Develop and maintain feedback loops between signoff results and ML training data pipelines
- Partner with CAD and automation teams to deploy AI-driven ECO, congestion prediction, and closure acceleration scripts
- Present findings and flow enhancements at internal design reviews and external EDA forums
Mentorship & Technical Leadership- Mentor and technically guide a team of 3-8 physical design engineers across multiple project tracks
- Lead design reviews, closure reviews, and retrospectives; drive continuous improvement culture
- Represent Physical Design in architecture planning meetings and influence design-for-implementability decisions
- Contribute to internal white papers, methodology documentation, and IP reuse initiatives
Salary RangeThe pay range below is for Bay Area California only. Actual salary may vary based on a number of factors including job location, job-related knowledge, skills, experiences, trainings, etc. We also offer incentive opportunities that reward employees based on individual and company performance.
$209,500 - 299,200 USDWe use artificial intelligence to screen, assess, or select applicants for the position. Applicants must be eligible for any required U.S. export authorizations.
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Qualifications:Minimum Qualifications:Master's degree in Electrical Engineering, Computer Engineering, or a related discipline with
15+ years of industry experience in physical design, physical implementation, or SoC backend design, including the following:
- 15+ years of progressive experience in physical design, physical implementation, or SoC backend development for advanced semiconductor products.
- 4+ years of experience in a technical lead, senior lead, or principal-level physical design role with ownership over complex physical design execution and delivery.
- 3+ successful tapeouts with direct hands-on physical design ownership at advanced process nodes, including 7nm or below.
- 5+ years of SoC-level floorplanning, top-level integration, and full-chip physical implementation experience, beyond block-level physical design ownership.
- 10+ years of hands-on experience with industry-standard physical design implementation tools such as Synopsys Fusion Compiler and/or Cadence Innovus.
- 8+ years of experience performing static timing analysis and timing closure using tools such as Synopsys PrimeTime, including MMMC analysis, SI/crosstalk closure, and path-based analysis.
- 5+ years of hands-on experience with power integrity analysis and signoff using tools such as Ansys RedHawk or Cadence Voltus for static and dynamic IR drop and electromigration (EM) analysis.
- 5+ years of experience implementing multi-voltage and low-power design methodologies using UPF and/or CPF, including MTCMOS, retention, isolation, and power intent implementation.
- 5+ years of experience with physical verification and signoff flows using tools such as Mentor Calibre DRC/LVS, with exposure to Cadence PVS and/or equivalent signoff tools.
- 8+ years of scripting and automation experience in physical design environments using Tcl, with 3+ years of experience using Python, Perl, or similar languages to improve design flow automation and engineering productivity.
- 2+ years of experience using or evaluating ML/AI-driven physical design tools or methodologies, such as Synopsys DSO.ai, Fusion Compiler AI, Cadence Cerebrus, or equivalent technologies.
- 2+ years of experience applying or supporting custom ML/AI-based physical design workflows for use cases such as timing prediction, hotspot detection, congestion modeling, or PPA optimization.
- 2+ years of experience interpreting ML model outputs, design metrics, or optimization recommendations and translating them into actionable physical implementation decisions.
- 2+ years of experience working with Python-based data pipelines, design metric collection, result analysis, or visualization workflows in support of physical design optimization.
Preferred Qualifications:- Experience with FPGA or structured-ASIC fabric implementation - Altera-specific knowledge is a distinct advantage
- Exposure to 3DIC / chiplet integration: UCIe, EMIB, hybrid bonding physical design constraints
- Prior work on high-speed I/O integration (PCIe Gen 5/6, HBM PHY, SerDes) within SOC physical implementation
- Contributions to EDA vendor beta programs, academic publications, or conference presentations (DAC, ICCAD, SLIP)
- Experience with formal verification handoff flows and CDC/RDC methodology integration
- Familiarity with advanced signoff (path-delay rules, SI-aware fixing, advanced node design rule awareness)
- Prior experience at semiconductor IP companies, EDA vendors, or top-tier fabless design houses
Job Type: Regular
Shift:Shift 1 (United States of America)
Primary Location:San Jose, California, United States
Additional Locations: