$250,000 – $300,000 per year

TLDR

Own end-to-end agent improvements—from prompting strategies to evaluation pipelines and production-ready LLM features—that measurably boost reliability and user outcomes.

We’re hiring an Applied AI Engineer to push the boundaries of our Cofounder agent. You’ll own core backend systems and applied LLM work: advancing agent reliability and autonomy, building evaluation pipelines, and shipping techniques that measurably improve agent performance. This is a hands-on role with high ownership across research-to-production: prototyping, instrumenting, evaluating, and deploying improvements that show up directly in user outcomes.

What You’ll Do

  • Design and implement agent improvements end-to-end: prompting strategies, tool selection, action planning, memory usage, safety/guardrails, and recovery paths

  • Build robust evaluation pipelines for the agent: offline evals (golden tasks, regression suites, behavior tests), online metrics (latency, success rate, fallout modes, cost efficiency), and experimentation frameworks (A/B, canaries, guardrail thresholds)

  • Productionize applied LLM techniques: function/tool-calling orchestration, self-reflection, retrieval/RAG, multi-agent handoffs, caching/embedding strategies, and hallucination reduction

  • Improve core backend systems: reliable job orchestration, retries/backoff, idempotency, and auditability; scalable memory and context routing; data pipelines across Gmail, Slack, Notion, Linear, Google Workspace, etc.; observability and tracing for agent actions/outcomes

  • Partner with product and infra to define success metrics and ship fast, safe iterations

  • Write clean, well-tested code; document design decisions and runbooks

What You’ll Bring

  • 4+ years backend engineering experience, preferably Python (we care about impact over years)

  • Hands-on LLM experience: prompt engineering, function-calling, retrieval, embeddings, evaluation design; you’ve shipped LLM features to production

  • Track record building evaluation harnesses and using them to drive improvements (regression suites, task success metrics, cost/runtime tradeoffs)

  • Solid distributed systems fundamentals: concurrency, reliability, performance, data modeling, lifecycle management

  • Pragmatic experimentation: hypothesis → prototype → measured improvement → rollout

  • Excellent debugging and instrumentation skills; you enjoy finding and fixing edge cases in the wild

Nice To Have

  • Experience with agent frameworks, tool orchestration, and memory architectures

  • RAG systems in production (chunking, retrieval quality, freshness strategies)

  • Redis, Postgres/Supabase, queues (e.g., Celery/Arq/SQS), and event-driven designs

  • Observability stacks (Datadog, OpenTelemetry), and cost/latency optimization

Why Join Us

  • Mission: build autonomous agents that run entire businesses

  • Impact: ship core agent improvements that users feel immediately

  • Velocity: small, senior team; fast decision cycles; high ownership

  • Stack: modern tooling across AI orchestration, integrations, and memory systems

Compensation

  • Competitive salary and meaningful equity

  • Comprehensive benefits and flexible work setup

Benefits

Equity Compensation

Meaningful equity

Flexible Work Hours

Flexible work setup

Health Insurance

Comprehensive benefits

General Intelligence develops advanced AI solutions that automate business processes by seamlessly integrating with popular tools like Gmail and Slack. Our platform empowers startups by enabling them to create and manage workflows through natural language, effectively acting as an operating system for one-person, billion-dollar companies.

Founded
Founded 2025
Industry
Internet Software & Services
View company profile
Apply for this job

Pro members saw this job first

New jobs unlock for everyone after 24 hours. Startup Jobs Pro shows them right away, with instant alerts and salary filters. From $7/month.

Get Pro