Member of Technical Staff, Research Engineering job opportunity at Listen Labs.



Date bot
Listen Labs Member of Technical Staff, Research Engineering
Experience: General
Pattern: FullTime
apply Apply Now
Salary:
Status:

Research Engineering

Copy Link Report
degreeOND
loacation San Francisco, CA, United States
loacation San Francisco,..........United States
Auto GPT Summarize Enabled

Member of Technical Staff, ProductTL;DR: Listen is building the human layer of AI. We're Sequoia-backed, raised $100M, and our customers include Anthropic, Google, and Cursor. We're hiring engineers who can build a complex AI-native product on a small team of former founders and top-tier builders.BackgroundAs AI gets better at building things, the bottleneck shifts to knowing what to build. We're the bridge between AI systems and what humans actually want. Today our customers are companies. Soon, AIs themselves will be our customers.Our platform runs AI-moderated video interviews at massive scale. We find the right people from a network of millions, our AI conducts open-ended conversations with thousands of them in parallel, and we surface what to build next. What used to take research teams weeks per study, we do in hours.Where it's going: every interview feeds a human preference model. We simulate human behavior at scale: how people react to new ideas, how they make decisions, how preferences shape markets, and how change ripples through society. We expose this as the Human API. An AI agent writes code, asks Listen whether users would actually want a feature, gets a grounded answer back, and iterates. Closed loop product development at AI speed. Every coding agent will eventually need this signal.Company highlightsSeries B with $100M raised from Sequoia, Conviction, Ribbit, AI Grant, and Pear VC.Selective team of <20 engineers including VC-backed founders, IOI medalists, and engineers from Jane Street and Tesla Autopilot.Customers include Anthropic, Cursor, Perplexity, Google, Microsoft, Robinhood, Nestlé, P&G, and Sweetgreen.Post-PMF growth: 20x year-over-year revenue.Huge market: clear path to $1M+ contracts at over 50% of the Fortune 2000.Technical ChallengesDatabase of Humanity. Listen maintains a database of millions of people. We match profiles based on voice, face, and device IDs. Those profiles let us see how opinions change over time, prevent fraud, and find any niche audience.Emotional Intelligence. There's a gap between what people say and what they think. Our AI interviewer reads tone, hesitation, and facial micro-expressions to go beyond the transcript. We've shipped the first version. We're working on surpassing even the best humans.Preference Model. Updating the preference model is a research problem: what we already know, when to refresh it, which questions give the highest signal, and how to quantify the uncertainty in our predictions.Human API. A model of millions of humans is only useful if you can call it from where decisions happen. We want to embed this into Slack, Linear, IDEs, and coding agents themselves. Imagine an agent shipping code, asking Listen what humans actually want, taking action, and iterating.Agent Evals. Every part of our product is built AI-first. Study Composer helps customers scope and design studies. Research Agent analyzes thousands of responses and writes the report. The ceiling is what McKinsey does for $1M per engagement. The bottleneck is evaluating those qualitative outputs. Once you have the eval, you can hill-climb.What we look forYou solve problems end to end. The team is split vertically, so every engineer owns a part of the product and makes decisions across the LLM pipeline, infrastructure, backend, and UX.Future or past founder. You scope your own work, think about the customers, and own your decisions.You care about getting things right. Moving fast is essential, but a 100% solution is much more powerful than an 80% one. When something breaks, you go to root cause.You're excited about pushing LLMs to their limits. We work directly with the frontier model labs on new releases and constantly probe where they break.You communicate complex ideas in writing. We work independently with one meeting a week, so writing is how tradeoffs, problems, and decisions get worked through together.You're highly technical. Most of our team started coding as teenagers and nerd out on details from language design to compilers.Life at Listen LabsTop of market compensation with meaningful equity.Comprehensive healthcare and dental, flexible time off, a culture that values balance and trust.Joining at an inflection point. PMF is real, the market ahead is enormous, the team is still small enough that every engineer's work shapes the company.

Other Ai Matches

Account Executive, Strategic Accounts Applicants are expected to have a solid experience in handling Strategic Accounts related tasks
Lead GTM Engineer Applicants are expected to have a solid experience in handling Job related tasks
Founding Events Lead Applicants are expected to have a solid experience in handling Job related tasks
Member of Technical Staff, Applied AI Applicants are expected to have a solid experience in handling Applied AI related tasks