AI/ML RTL Design Engineer, TPU, Google Cloud

2 Hours ago • 3 Years + • Research & Development

About the job

Job Description

This role involves designing and implementing AI/ML hardware acceleration, specifically for Google's Tensor Processing Units (TPUs). Responsibilities include RTL implementation and quality checks of modules, contributing to design methodologies and libraries, collaborating with DV and Physical Design teams, and optimizing for power, performance, and area. The engineer will participate in synthesis, timing/power closure, and FPGA/silicon bring-up. The work focuses on creating custom silicon solutions for Google's most demanding AI/ML applications and involves solving complex technical problems with innovative logic solutions. This position is part of a team developing System-on-a-chip (SoC) to accelerate machine learning computation in data centers.
Must have:
  • Bachelor's degree in relevant field
  • 3+ years ASIC/SoC development (Verilog/SystemVerilog)
  • Experience with ML/graphics IP design, low precision numerics
  • ASIC design verification, synthesis, timing/power analysis, DFT
  • RTL implementation and quality checks
  • Collaboration with DV and Physical Design teams
Good to have:
  • Python, C/C++, Perl programming
  • SoC design and integration
  • High-performance/low-power design
  • Neural networks, arithmetic units, processor design
  • Accelerators, bus architectures, memory hierarchies
Not hearing back from companies?
Unlock the secrets to a successful job application and accelerate your journey to your next opportunity.

Minimum qualifications:

  • Bachelor's degree in Computer Science, Electrical Engineering, Computer Engineering, a related technical field, or equivalent practical experience.
  • 3 years of experience in ASIC/SoC development with Verilog/SystemVerilog.
  • Experience in design of Machine Learning IPs, or graphics IPs, managing low precision/mixed precision numerics.
  • Experience in ASIC design verification, synthesis, timing/power analysis, and Design for Testing (DFT).

Preferred qualifications:

  • Experience with programming languages (e.g., Python, C/C++ or Perl).
  • Experience in SoC designs and integration flows.
  • Knowledge of high performance and low power design techniques
  • Knowledge of neural networks, arithmetic units, processor design, accelerators, bus architectures or memory hierarchies.

About the job

In this role, you’ll work to shape the future of AI/ML hardware acceleration. You will have an opportunity to drive cutting-edge TPU (Tensor Processing Unit) technology that powers Google's most demanding AI/ML applications. You’ll be part of a diverse team that pushes boundaries, developing custom silicon solutions that power the future of Google's TPU. You'll contribute to the innovation behind products loved by millions worldwide, and leverage your design and verification expertise to verify complex digital designs, with a specific focus on TPU architecture and its integration within AI/ML-driven systems.

In this role, you will be part of a team developing System-on-a-chip (SoC) used to accelerate machine learning computation in data centers. You will solve technical problems with innovative and practical logic solutions, and evaluate design options with complexity, performance, power and area. You will collaborate with members of architecture, verification, power and performance, physical design to specify and deliver high quality designs for next generation data center accelerators.

Behind everything our users see online is the architecture built by the Technical Infrastructure team to keep it running. From developing and maintaining our data centers to building the next generation of Google platforms, we make Google's product portfolio possible. We're proud to be our engineers' engineers and love voiding warranties by taking things apart so we can rebuild them. We keep our networks up and running, ensuring our users have the best and fastest experience possible.

Responsibilities

  • Participate in implementation of AI/ML Compute intensive IPs and subsystems.
  • Take ownership of Register-Transfer Level (RTL) implementation and quality checks of one or more modules.
  • Contribute to design methodology, libraries, debug, code review in coordination with other IPs Design Verification (DV) teams and Physical Design teams.
  • Identify and drive power, performance and area improvements for the modules owned.
  • Participate in synthesis, timing/power closure, and FPGA/silicon bring-up.
View Full Job Description

Add your resume

80%

Upload your resume, increase your shortlisting chances by 80%

About The Company

A problem isn't truly solved until it's solved for all. Googlers build products that help create opportunities for everyone, whether down the street or across the globe. Bring your insight, imagination and a healthy disregard for the impossible. Bring everything that makes you unique. Together, we can build for everyone.

View All Jobs

Get notified when new jobs are added by Google

Similar Jobs

Patterned Learning Career - Junior Website Developer

Patterned Learning Career, (Remote)

Social Discovery Ventures - Product Owner, MarTech

Social Discovery Ventures, Serbia (Remote)

G5 Games - 2D Illustrator (HOG project)

G5 Games, Armenia (Remote)

Codvoai - Data Scientist (Remote)

Codvoai, India (Remote)

Scanline VFX - Research Scientist

Scanline VFX, United States (Hybrid)

Get notifed when new similar jobs are uploaded

Similar Skill Jobs

Wargaming - Director of AI Engineering

Wargaming, Poland (On-Site)

10times - Data Scientist

10times, India (On-Site)

Instawork - Senior ML Engineer

Instawork, India (On-Site)

Patterned Learning Career - Junior iOS Developer

Patterned Learning Career, (Remote)

Nomiso - Data Scientist

Nomiso, India (On-Site)

Patterned Learning Career - Junior Machine Learning Engineer

Patterned Learning Career, (Remote)

Sinch - Machine Learning Engineer (LLMs)

Sinch, Belgium (Hybrid)

Get notifed when new similar jobs are uploaded

Research & Development Jobs

Get notifed when new similar jobs are uploaded