At a Glance
- Tasks: Help invent cutting-edge AI accelerator chips and define their architecture.
- Company: Join Normal Computing, a leader in innovative semiconductor technology.
- Benefits: Competitive salary, equity options, and a dynamic work environment.
- Other info: Collaborative team culture with opportunities for growth and impact.
- Why this job: Shape the future of AI with your contributions visible in real silicon.
- Qualifications: Degree in engineering or equivalent experience; passion for innovation required.
Location: New York City; London
Employment Type: Full time
Location Type: On-site
Department: Hardware
Compensation: $234,001 – $298,252 • Offers Equity
We are committed to competitive and equitable compensation based on role, skills, and experience. Salary ranges are guidelines, with final compensation varying by role, experience, and location and reviewed regularly for fairness.
Normal Computing | Incredible Opportunities
The Normal Team builds foundational software and hardware that help move technology forward, supporting the semiconductor industry, critical AI infrastructure, and the broader systems that power our world. We work as one team across New York, San Francisco, Copenhagen, Seoul, and London.
Your Role in Our Mission
Look at the AI accelerator roadmaps coming out of every major silicon company right now and you will notice something strange: they are all building the same chip. Bigger systolic arrays. More HBM. More of the same architecture, scaled harder. The industry has placed a collective bet that the way to win the next decade of AI inference is to refine the GPU paradigm until it cannot be refined any further. We know that bet is wrong. Normal is building ASICs purpose-built for image and video diffusion inference, grounded in the physics of computation rather than the assumptions everyone else has inherited. The compute substrate has to be invented, not specified, and we are looking for the person who wants to help invent it.
You will work directly alongside our lead architect and research engineers, contributing across the full architecture stack: compute core microarchitecture, memory subsystem, interconnect, and the FPGA prototyping that proves the decisions before silicon. The team is small. The scope is wide. The architecture is being shaped now, not refined, and your contributions will be visible in the chip when it tapes out. If the appeal of working on a chip that has to be invented is greater to you than iterating on one that already exists, keep reading.
Responsibilities
- Help define the architecture and microarchitecture of novel AI accelerator compute blocks.
- PE array design, datapath organization, and support for efficiency techniques such as sparsity exploitation and reduced-precision computation.
- The compute tile is the surface where Normal's research advantages have to show up in silicon, and you are one of the people responsible for making sure they do.
- Translate workload analysis and research findings into hardware specifications.
- Identify where architectural innovation creates the most leverage, define the structures that realize it, and produce microarchitecture documents unambiguous enough for RTL engineers to implement against.
- You work closely with them through implementation, not over the wall from it.
- Reason across the full stack and defend PPA tradeoffs at every level.
- Move between algorithm-level workload behavior, memory hierarchy, on-chip interconnect, and physical design constraints.
- Make the call when the data is incomplete, and articulate why under scrutiny from the lead architect and the research team.
- Partner with the compiler lead on ISA co-design.
- The compute tile must be compilable and programmable, not just simulatable.
- The programming model and the microarchitecture are defined together, and you are accountable for both sides meeting in the middle.
- Own the FPGA prototyping work.
- Scope what the FPGA implementation actually proves, drive the implementation through to bring-up, and use it to de-risk architecture decisions before tapeout.
- You decide which questions are worth answering in FPGA versus cycle‑accurate simulation.
- Stay current with the AI accelerator research landscape and be able to articulate clearly where Normal's approach differs from existing solutions and why that matters.
- This is a research‑adjacent seat and you are expected to read, not just consume.
What We're Looking For
- A degree in Electrical Engineering, Computer Engineering, Computer Science, or equivalent work experience. PhD welcome but not required; the bar is the work, not the credential.
- Substantial experience in architecture or microarchitecture of high-performance digital systems. AI accelerators, compute engines, or similarly complex logic.
- You have shaped the structures inside a chip, not just consumed them from the outside.
- Fluency moving between algorithm-level analysis and hardware specification.
- You can read a profile of a workload and translate it into datapath widths, pipeline stages, and area/power estimates without losing the thread on either side.
- Experience with simulation‑driven architecture.
- You have used cycle‑accurate or analytical models to make and defend design decisions before RTL exists, and you know which questions each tool can answer and which it cannot.
- Familiarity with quantization and reduced‑precision approaches for inference and their implementation implications.
- You understand the cost of a bit at the hardware level, not just the model level.
- Experience writing microarchitecture specifications and working closely with RTL engineers through implementation.
- Your specs are read, not just filed.
- Proficiency in Python or C++ for performance modeling and analysis, and familiarity with SystemVerilog or equivalent RTL.
- Comfort operating in an environment where the architecture is actively being discovered alongside the work.
- You do not need the answer to be already known to make progress on it.
Mindset and Impact
This role is not for everyone. You will spend years on a chip that does not exist yet, defending decisions that cannot be fully validated until silicon comes back, on a bet most of the industry has not made. The people who thrive here, run toward the hard stuff. They are steady in ambiguity, comfortable when the data is incomplete, and they take the hardest problem on the board first because that is where the answer is hiding. They are not waiting for the architecture to be handed to them. They want to be the ones who define it. If you have spent your career suspecting you are one of those people, this is where you find out. The chip you help build will be the silicon behind a generation of image and video AI — the work people watch, the work people create with, the work that shapes what the next decade of visual computing looks like.
Equal Employment Opportunity Statement
Normal Computing is an Equal Opportunity Employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, veteran status, or any other legally protected status.
Accessibility Accommodations
Normal Computing is committed to providing reasonable accommodations to individuals with disabilities. If you need assistance or an accommodation due to a disability, please let us know at accommodations@normalcomputing.com.
Privacy Notice
By submitting your application, you agree that Normal Computing may collect, use, and store your personal information for employment‑related purposes in accordance with our Privacy Policy.
Silicon Architect, Diffusion ASICs employer: Drive Capital
Normal Computing is an exceptional employer that fosters a collaborative and innovative work culture, where employees are empowered to shape the future of AI technology. With competitive compensation packages, including equity options, and a commitment to employee growth through hands-on experience in cutting-edge projects, team members can thrive in an environment that values creativity and critical thinking. Located in vibrant cities like New York and London, Normal offers unique opportunities to work alongside industry leaders on groundbreaking silicon architecture, making a tangible impact in the world of image and video AI.
StudySmarter Expert Advice🤫
We think this is how you could land Silicon Architect, Diffusion ASICs
✨Tip Number 1
Network like a pro! Get out there and connect with folks in the industry. Attend meetups, conferences, or even online webinars. You never know who might have the inside scoop on job openings or can put in a good word for you.
✨Tip Number 2
Show off your skills! Create a portfolio or GitHub repository showcasing your projects and contributions. This is your chance to demonstrate your expertise in silicon architecture and AI accelerators, making you stand out from the crowd.
✨Tip Number 3
Prepare for interviews by diving deep into the company’s tech stack and recent projects. Be ready to discuss how your experience aligns with their mission. We want to see your passion for innovation and how you can contribute to shaping the future of AI.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team at Normal Computing.
We think you need these skills to ace Silicon Architect, Diffusion ASICs
Some tips for your application 🫡
Tailor Your Application:Make sure to customise your CV and cover letter for the Silicon Architect role. Highlight your experience with AI accelerators and microarchitecture, and show us how your skills align with our mission at Normal.
Showcase Your Projects:Include specific examples of projects you've worked on that relate to high-performance digital systems. We want to see how you've shaped chip structures and tackled complex logic challenges in your past roles.
Be Clear and Concise:When writing your application, keep it straightforward. Use clear language to explain your technical expertise and avoid jargon that might confuse us. We appreciate clarity as much as complexity!
Apply Through Our Website:We encourage you to submit your application directly through our website. This way, we can ensure your application gets the attention it deserves and you can easily track its progress!
How to prepare for a job interview at Drive Capital
✨Know Your Stuff
Make sure you’re well-versed in the architecture and microarchitecture of high-performance digital systems. Brush up on AI accelerators and be ready to discuss how your experience aligns with the role. The interviewers will want to see that you can translate complex workload analyses into hardware specifications.
✨Show Your Problem-Solving Skills
Prepare to tackle some tough questions that test your ability to reason through incomplete data. Think about examples from your past where you had to make decisions without all the answers, and be ready to articulate your thought process clearly.
✨Get Familiar with FPGA Prototyping
Since this role involves owning FPGA prototyping work, it’s crucial to understand its implications. Be prepared to discuss how you would scope FPGA implementations and what questions you’d prioritise answering before tapeout.
✨Stay Current with Industry Trends
Research the latest developments in AI accelerator technology and be ready to explain how Normal's approach differs from existing solutions. This shows your passion for the field and your commitment to contributing to innovative projects.