Member of Technical Staff — Developer Relations & Product
Job Description
Product
TensorZero is building an automated AI engineer (”TensorZero Autopilot”) powered by our open-source LLMOps platform (”TensorZero Stack”).
TensorZero Stack
We started by building an open-source LLMOps platform for full-stack LLM engineering:
Gateway: access every LLM provider through a unified API (<1ms p99 latency)
Observability: monitor your LLM systems, programmatically or with a UI
Optimization: optimize your prompts, models, and inference strategies
Evaluations: benchmark individual inferences or end-to-end workflows
Experimentation: deploy with built-in A/B testing, fallbacks, etc.
Today, the TensorZero Stack is used by companies ranging from frontier AI startups to Fortune 50 enterprises.
TensorZero Autopilot
Now we’re working on TensorZero Autopilot, an automated AI engineer powered by our open-source LLMOps platform. Think of it like “Claude Code for TensorZero”.
TensorZero Autopilot collaborates with engineering teams to automate LLM engineering — with full visibility and control. For example, it can:
Analyze millions of inferences to surface error patterns and optimization opportunities
Recommend models and inference strategies to improve quality, cost, and latency
Generate and refine prompts based on human feedback, metrics, and evaluations
Drive optimization workflows like fine-tuning, reinforcement learning, and distillation
Set up evaluations, prevent regressions, and align LLM judges to real-world scenarios
Run A/B tests to validate changes, identify winners, and close the feedback loop
By itself, TensorZero Autopilot drove substantial performance improvements for LLM systems in benchmarks and synthetic environments ranging from data extraction to customer support agents.
Role
We're looking for a Member of Technical Staff with a background that combines product and engineering. As the first product hire at TensorZero, you'll wear many hats and quickly grow with the company. Early on, the role will be especially focused on our developer community. From coding to content creation, you'll work on whatever it takes to drive adoption: demos, integrations & partnerships, documentation, videos, social media, events, and more. You're a "wartime product manager" who can think outside the box, with the technical background to scale your impact independently.
Team & Culture
We’re a small, deeply technical team based in NYC (in person). As an early contributor, you’ll work closely with us and have a significant impact on the project’s future and vision.
Viraj Mehta (Co-Founder & CTO) is an ML researcher with deep expertise in reinforcement learning and LLMs. He received a PhD from CMU with an emphasis on data-efficient RL for nuclear fusion and LLMs, and previously worked in machine learning at KKR and a fintech startup. He holds a BS in math and an MS in computer science from Stanford.
Gabriel Bianconi (Co-Founder & CEO) was the chief product officer at Ondo Finance ($20B+ valuation) and previously spent years consulting on machine learning for companies ranging from early-stage tech startups to some of the largest financial firms. He holds BS and MS degrees in computer science from Stanford.
Aaron Hill (MTS) is a back-end engineer with deep expertise in Rust. He became one of the maintainers of the Rust compiler while still in college. Later, he worked on back-end infrastructure at AWS and Svix. He’s also an active contributor to many notable open-source Rust projects (e.g. Ruffle).
Andrew Jesson (MTS) is an ML researcher with deep expertise in Bayesian ML, causal inference, RL, and LLMs. He recently completed a postdoc at Columbia and previously received a PhD from Oxford, during which he interned at Meta. He has 4k+ citations and several first-author papers at NeurIPS and other top ML venues.
Alan Mishler (MTS) is an ML researcher with a background in causal inference, sequential decision making, uncertainty quantification, and algorithmic fairness (1.2k+ citations). Previously, he was an AI Research Lead at JPMorgan AI Research and received a PhD in Statistics from CMU, during which he interned at Google and Box.
Shuyang Li (MTS) previously was a staff software engineer at Google focused on next-generation search infrastructure, LLM-based search, and many other specialized search products (local, travel, shopping, maps, enterprise, etc.). Before that, he worked on ML/analytics products at Palantir and graduated summa cum laude from Notre Dame.
Simeon Lee (MTS) previously was the Head of Design at Merge from inception through Series B. He was also a founding & senior design engineer at multiple startups in AI and developer tools. Earlier in his career, he worked in investment banking and graduated from USC.
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What We Offer
Competitive compensation — We believe that great talent deserves great compensation (salary, equity, benefits), even at an early-stage startup.
Open-source contributions — Much of your work will be open-source and public.
Learning and growth opportunities — You'll work alongside experts in front-end, back-end, and ML to build high-impact user-facing products.
Small, technical, in-person team — You’ll work alongside a 100% technical team and help shape our vision, culture, and engineering practices.
Best-in-class investors — We’re lucky to be have raised $7.3M+ from leading funds like FirstMark (backed ClickHouse), Bessemer (backed Anthropic), Bedrock (backed OpenAI), and many angels. We have years of runway and a long-term mindset.
We’re Looking For
Strong technical background — You’ve tackled hard technical problems. You can code as needed to scale your impact in product and GTM.
Community leadership — You're excited to build a community of developers, teach them about TensorZero, and more.
Technical writing & speaking — You're comfortable writing technical content, public speaking, organizing events, and more.
Hungry for personal growth — There are no speed limits at TensorZero. You’re excited about learning and contributing across the company while wearing many hats.
Wartime product manager — "Either you win with grace or by force. But you have to win." TensorZero is a "win by force" company, and you're a "do whatever it takes to win" person.
In-person in NYC — We work in-person five days a week in NYC. We work hard and obsess about the craft.