Job Description
Google Cloud is hiring a Silicon Senior uArch/RTL Engineer in Bengaluru. Lead RTL Implementation and microarchitecture development for AI accelerators, driving performance, power, and scalability. Collaborate across teams to deliver production-ready silicon solutions. Ideal for experienced uArch/RTL Engineers with strong Python and ASIC/SoC expertise. Apply now for this full-time opportunity.
Qualification: Bachelor’s Degree or equivalent experience
Apply: Apply Now
Main Duties
- Own microarchitecture and implementation of complex IPs and subsystems for AI accelerators.
- Take responsibility for RTL implementation, validation, and quality checks of modules.
- Collaborate with architecture, verification, and physical design teams to deliver production-ready silicon.
- Drive improvements in Power, Performance, and Area (PPA) metrics for hardware modules.
- Participate in synthesis, timing closure, power analysis, and silicon bring-up activities.
- Contribute to design methodologies, debugging, and code reviews across engineering teams.
- Evaluate design trade-offs considering complexity, performance, and scalability requirements.
Essential Qualifications
- Bachelor’s degree in Electrical Engineering or Computer Engineering or Computer Science or related fields.
- 8+ years of experience in ASIC and SoC development through their work with Verilog and SystemVerilog.
- Advanced skills for designing microarchitecture, developing subsystems and IP components.
- Experience with ASIC verification plus synthesis and timing analysis and power analysis and design for testability.
- Delivered complex silicon projects within actual production settings.
- Strong skills in analytical thinking and collaborative work and problem-solving.
Preferred Qualifications
- Programming experience through Python, C, C++ and Perl.
- Knowledge about SoC integration pipelines and complete chip design workflows.
- Processor systems which include accelerators, bus systems, NoC networks, and memory system designs.
- Methods which enhance both performance and energy efficiency in design processes.
- Professional experience which involves working on ML acceleration systems and hardware components used in data centers.