Location: Bristol, Cambridge, Edinburgh
Role Overview:
Early stage start up specialising in AI chip design
Key Responsibilities:
- Collaborate with our team to design, develop, and optimize a new chip architecture for our AI processor.
- Conduct research and analysis to identify cutting-edge trends, techniques, and technologies in the field.
- Develop and implement innovative solutions to address power, performance, and area (PPA) challenges.
- Evaluate and optimize algorithms and models for implementation in hardware.
- Collaborate with software and hardware engineers to ensure seamless chip integration with other system components.
- Create and maintain design documentation, including specifications, block diagrams, and interface definitions.
- Support prototype testing, debugging, and performance evaluation.
Experience Required:
- BS / MS / PhD in Electrical Engineering, Computer Engineering, or a related field.
- Excellent academic record in integrated circuit (IC) design, ideally focusing on AI accelerators or related technologies.
- Proficiency in ASIC or FPGA design flow, RTL design, and verification (using Verilog)
- Strong understanding of digital circuit design and computer architecture.
- Familiarity with neural network algorithms and computational models
- Experience with industry-standard EDA tools (e.g., Vivado or Cadence, Synopsys, or Mentor Graphics)
- Strong problem-solving skills and the ability to work independently and collaboratively
- Excellent communication and interpersonal skills
Nice-to-have:
- Publications or patents in GPU / AI accelerator design or related fields
- Experience with FPGA prototyping and emulation
- Knowledge of machine learning frameworks (e.g., TensorFlow, PyTorch)
Whats Offered:
- Salary : Competitive and commensurate with experience and qualifications
- Equity : Stock options in our early-stage startup, providing significant potential for financial growth as the company succeeds
- Bonus : Performance-based annual bonuses, subject to company and individual performance metrics