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ProductFull-timeSan Francisco (On-site)

Product Manager (AI Hardware)

About Artificial Analysis

Artificial Analysis is the leading independent AI benchmarking company. We support labs, engineers and enterprises to understand AI capabilities and make critical decisions about their AI strategies. We are the go-to authority for understanding AI, from AI labs and enterprises to media, investors, and policymakers. Our benchmarks don't just measure the cutting edge of AI, they are actively shaping the frontier.

Our benchmarks and analysis are trusted by hundreds of thousands of users and are the go-to reference for leading AI labs including OpenAI, Google, Meta, NVIDIA and Anthropic, and major publications including the Wall Street Journal, Bloomberg, the Financial Times and The Economist.

We are a team of 35+, on track to triple by year end, backed by Nat Friedman (Github, Meta), Daniel Gross (SSI), Andrew Ng (Google Brain, DeepLearning.ai, Amazon), Adam D'Angelo (Quora, Poe, OpenAI), Clem Delangue (Hugging Face) and other industry leaders.

The Opportunity

We're hiring for a Product Manager focused on AI hardware — the inference chips and accelerators that the entire AI industry runs on (GPUs, TPUs, and the growing wave of custom silicon). You'll work closely with us to develop and enhance our hardware benchmarks and leaderboards, contributing to product strategy and execution at the intersection of silicon and AI.

This is a hands-on, technical product role: you'll drive day-to-day operations for our hardware benchmarking offering and be a key contributor to product development, collaborating closely with engineering and analysis colleagues, as well as our founders. You'll design and run performance benchmarks, build cost and throughput models, and work with top chipmakers and inference providers to benchmark their latest accelerators.

If you're excited about cutting-edge AI silicon and care deeply about how the economics and performance of inference are evolving (from hyperscale deployments to startups optimizing every dollar of compute), this role offers a front-row seat to the next wave of AI.

What You’ll Do

  • Product Development for Hardware AI Benchmarking: Contribute to AI hardware product strategy and help execute the roadmap for our accelerator evaluation platforms, covering GPUs, TPUs, custom inference silicon, and emerging architectures — including working with engineers on our team to develop features and potentially coding features yourself
  • Curate and Develop Hardware Evaluation Frameworks: Build and maintain comprehensive benchmarking methodologies that measure throughput, latency (e.g. tokens per second, time-to-first-token), and price-performance across accelerators and inference configurations, reflecting how the industry actually deploys models in production today and how it will in the coming months and years
  • Hardware Operations: Ensure that coverage of chips and accelerators across Artificial Analysis stays up to date by benchmarking new silicon and providers as they launch — both working with our development team and using our internal tooling yourself
  • Price-Performance & Cost Analysis: Deeply understand the economics of AI inference — how cost-per-token, utilization, and hardware choice interact — and translate these insights into evaluation frameworks that help users make real deployment and procurement decisions
  • Strategic Marketing Support and Community Engagement: Help amplify the impact of our hardware benchmarks, collaborating with our team to maximize impact of our content across platforms and audiences
  • Industry Engagement: Work with leading chipmakers and inference providers to benchmark their accelerators, understanding their capabilities and helping shape industry standards for how AI hardware performance and efficiency are evaluated
  • Become AI-Native: Embrace an AI-native workflow, using the latest AI tools to generate leverage in a fast-changing industry and maintain our competitive edge in AI benchmarking

What We’re Looking For

Required:

  • Strong analytical and critical thinking skills
  • Excitement about AI and eagerness to work at the forefront of technological innovation
  • Demonstrated excellence, both academically and professionally
  • Real interest in AI hardware and the silicon powering modern AI

Beyond that, this opportunity could potentially suit a wide range of backgrounds. We believe that the following skills and experience would likely be helpful for success in this role. We're not expecting any single candidate to tick off the entire list, but these are some things that we think would be valuable:

  • Experience at an AI hardware startup, inference/infrastructure company, or chip company (e.g. Cerebras, Groq, SambaNova, Tenstorrent, Together AI, Fireworks, Baseten, or similar) — especially in roles touching AI accelerators or inference hardware
  • Experience with GPU/accelerator performance benchmarking, characterization, or systems performance engineering
  • Understanding of inference economics and price-performance — cost-per-token, utilization, total cost of ownership of compute
  • Experience in strategy consulting
  • Academic success in a technical degree programme, especially related to AI, computer architecture, or hardware (e.g. Computer Science, Electrical/Computer Engineering), or in a related technical field (e.g. Physics, Maths)
  • Strong writing skills, especially in relation to explaining technical topics to both technical and non-technical audiences
  • Visual communication skills (e.g. making slides, visualizing data)
  • A strong perspective on AI scaling laws — and specifically their implications for inference hardware and compute demand
  • Familiarity with the inference software stack (e.g. CUDA, TensorRT, vLLM, or similar serving frameworks) and how it interacts with underlying hardware
  • Familiarity with modern AI language models (e.g. developing systems leveraging LLMs as a component)
  • Experience working in software engineering or data science
  • Proficiency in Python and data analysis libraries (e.g. pandas, numpy, matplotlib); experience with AI/ML frameworks (e.g. PyTorch, TensorFlow)

Why Artificial Analysis?

  • Shape how AI gets built: The leading AI labs track our benchmarks and use them to guide their development priorities. Your work will directly influence the direction of AI.
  • Become a world expert in AI: You will evaluate every major model and accelerator, across every major capability, as they are released. Very few roles offer this breadth of exposure to frontier AI.
  • Work with the most important players in AI: You'll manage relationships with teams at the leading chipmakers, AI labs and major enterprises as a trusted, independent voice.
  • Join at a defining moment: We're 35+ people and growing fast, backed by some of the most connected investors in AI. The people who join now will shape the product, the team, and the strategy as we scale.
  • Competitive compensation including equity

Interested in this role?

Send us your application and we'll get back to you.

Apply now