Loading ...
Loading ...
工作类型: Full-time
Loading ...
工作内容
Google welcomes people with disabilities.Minimum qualifications:
- Bachelor’s degree in Electrical Engineering or Computer Science, or equivalent practical experience.
- 2 years of experience working in Software development, Computer Architecture or ML accelerators.
- Experience with Python and C or C++.
- Master’s or PhD in Computer Science, Electrical Engineering or related technical field.
- Experience with ML Accelerators (e.g. having worked on complex ML Software models or accelerator architectures).
- Experience writing Machine Learning algorithms (e.g. a good understanding of recommendation systems, NLP).
- Experience architecting and optimizing compilers.
- Experience with software development in one or more programming languages, and with data structures/algorithms.
- Understanding of compiler flows software involved in translating a high-level language (e.g. TensorFlow) to hardware instructions.
Our computational challenges are so big, complex and unique we can’t just purchase off-the-shelf hardware, we’ve got to make it ourselves. Your team designs and builds the hardware, software and networking technologies that power all of Google’s services. As a Hardware Engineer, you design and build the systems that are the heart of the world’s largest and most powerful computing infrastructure. You develop from the lowest levels of circuit design to large system design and see those systems all the way through to high volume manufacturing. Your work has the potential to shape the machinery that goes into our cutting-edge data centers affecting millions of Google users.
Google’s mission is to organize the world’s information and make it universally accessible and useful. Our team combines the best of Google AI, Software, and Hardware to create radically helpful experiences. We research, design, and develop new technologies and hardware to make computing faster, seamless, and more powerful. We aim to make people’s lives better through technology.
Responsibilities
- Improve the compiler flows and related tools for architectural analysis.
- Build up the data analysis, visualization tools and dashboards for TPU PPA bottleneck analysis.
- Analyze important Machine Learning (ML) workloads, evaluate power and performance and propose architecture or compiler improvements.
- Collaborate with other teams (Hardware, Compiler, ML researchers) to improve the end to end flow and results.
Loading ...
Loading ...
最后期限: 20-12-2024
点击免费申请候选人
报告工作
Loading ...
相同的工作
-
⏰ 05-12-2024🌏 板橋區, 新北市
-
⏰ 05-12-2024🌏 板橋區, 新北市
-
⏰ 05-12-2024🌏 板橋區, 新北市
-
⏰ 05-12-2024🌏 板橋區, 新北市
Loading ...
-
⏰ 05-12-2024🌏 板橋區, 新北市
-
⏰ 05-12-2024🌏 板橋區, 新北市
-
⏰ 05-12-2024🌏 板橋區, 新北市
-
⏰ 05-12-2024🌏 板橋區, 新北市
Loading ...
-
⏰ 05-12-2024🌏 板橋區, 新北市