Zurück zur Stellenangebote
XX
Founding Machine Learning EngineerComposite.aiUnited States
XX

Founding Machine Learning Engineer

Composite.ai
  • US
    United States
  • US
    United States

Über

Founding Machine Learning Engineer
San Francisco Compensation
Estimated base salary $150K – $220K • Offers Equity • Offers Bonus We invest in our team's success with comprehensive benefits Generous Compensation Above-market salary and equity package with incredible upside. Complete Health Coverage Full medical, dental, and vision coverage for you and your family. Daily Meals & Snacks Breakfast, lunch, dinner, snacks, and drinks provided daily. San Francisco Office Energetic in-person culture in our beautiful office in the heart of SF. Immigration Support Comprehensive visa sponsorship including O-1, green card, TN, H-1B, and F-1/J-1. About the Role
We're looking for founding Machine Learning Engineers (MLEs) to own and improve our core action models end-to-end - the intelligence that powers Composite's proactive automation platform. You'll work at the intersection of LLM inference, browser understanding, and low-latency systems, shipping models that need to feel instant while reasoning over complex page state and user context. Unlike hosted browser solutions that introduce latency and auth barriers, or consumer-focused "AI browsers," we run AI directly through professionals' existing browsers via a Chrome extension, creating instant response times with zero migration or IT friction. This architecture creates unique ML challenges. This is a high-ownership role on our small, exceptional team where your work ships directly to users and has the potential to tangibly improve the work lives of hundreds of millions of people. What You'll Work On
Improve the accuracy and latency of our core models across diverse web applications to predict users' intended next actions and execute them faster than manual input Design and optimize LLM inference pipelines, including token caching strategies, streaming architectures, and network-level optimizations between client and server Build evaluation frameworks and data pipelines to measure and improve model quality at scale Experiment with retrieval-augmented approaches using vector databases for contextual memory Develop synthetic data generation pipelines for browser interaction training data Work with DOM states, accessibility trees, and user interaction data to improve browser understanding Ship features end-to-end that go directly to users — this is not a research-only role What We're Looking For
ML & Systems
Strong ML fundamentals with hands-on experience training and deploying models in production Obsessive about latency — experience optimizing inference pipelines to feel instant to end users Deep care about data quality, with the instinct to build tooling that ensures it Experience with LLMs, transformer architectures, or sequence prediction problems Comfortable working across the stack — our system spans a Chrome extension, Electron app, Cloudflare Workers edge proxy, and inference providers Core Qualities
Character:
You're someone we'd want to work closely with for the next ten years. You approach challenges with curiosity rather than ego. You're a team player, a great communicator, and aren't afraid to be wrong. Work Ethic:
You're energized by hard problems and comfortable working intensely toward ambitious goals. Raw Intelligence:
You can quickly understand complex systems and solve novel, ambiguous problems with self-guidance. Bonus
Experience with browser automation, Chrome extensions, or web scraping at scale Familiarity with accessibility tree / DOM parsing for page understanding Background in RL or online learning from user interaction data Experience with vector databases (e.g., Turbopuffer, Pinecone) and hybrid search Full-stack development experience (TypeScript, Node.js, React) Our Values
Disagree and commit:
Respectfully challenge decisions you disagree with, even when it's uncomfortable. Don't censor yourself or your ideas. Once a decision is determined, everyone commits wholly. Clear and consistent standards:
Decisions are made based on a shared framework that applies for everyone. We don't leave room for "rules for you, not for me" or any perceived hypocrisy. Over-communicate:
Nothing slows down a company more than confusion, mis-, or under-communication. Leave no room for ambiguity. Ask dumb questions. Write things down clearly. Health is #1:
Stay hydrated. Eat a balanced diet. Sleep 8 hours a night. Exercise frequently. Maintain good social and mental health. Not doing so affects your mood and long-term productivity. Do the right thing.
  • United States

Sprachkenntnisse

  • English
Hinweis für Nutzer

Dieses Stellenangebot stammt von einer Partnerplattform von TieTalent. Klick auf „Jetzt Bewerben”, um deine Bewerbung direkt auf deren Website einzureichen.