Company

Engineering

AIEngineer(Mid-Level)

$180–400k San Francisco, California, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid candidates.

The Brief

“AI Engineer (Mid-Level). Skills: Agentic systems, LLM services, RAG pipelines”

What You'll Achieve.

Ship features with impact; Deliver robust AI experiences; Ensure reliability beyond demos

Industry & Context.

Engineering
Problems you'll solve

Reasoning components

What They're Looking For.

Must Have

2–8 years software engineering experience, Shipped user-facing products, Shipped backend products, Deployed LLMs in production, Deployed LLM-based services, Proficiency across the stack, Python proficiency, TypeScript proficiency, React proficiency, Cloud platforms proficiency, AWS proficiency, GCP proficiency, Relational databases knowledge, NoSQL databases knowledge, Working knowledge of RAG patterns, Working knowledge of vector databases, Working knowledge of embeddings, Working knowledge of retrieval pipelines, Experience building automated tests, Experience building evaluations, Experience building monitoring for AI systems, Experience designing API-driven systems, Experience designing high-throughput systems, Experience designing real-time product features

Nice to Have

Experience with agent frameworks, Experience with workflow frameworks, Experience with orchestration tools, Familiarity with fine-tuning, Familiarity with parameter-efficient tuning, Familiarity with multi-modal model integration, Background building multi-tenant systems, Background building enterprise-ready systems, Prior experience in regulated industries

How You'll Work.

Team & Collaboration

Collaborate with founders; Collaborate with product; Collaborate with design

Full Job Description

ABOUT THE ROLE Join a fast-moving, pre-seed-backed AI startup building the next generation of agentic systems that automate complex, multi-step workflows across regulated and enterprise domains — including healthcare, legal, fintech, logistics, and compliance. As a mid-level AI Engineer on the core product team, you'll own production LLM-based services end-to-end, collaborate closely with founders and product, and ship features that deliver measurable impact for real users. WHAT YOU'LL DO - Design, build, and maintain agentic systems that automate complex, multi-step workflows across regulated industries. - Own production retrieval-augmented generation (RAG) pipelines and retrieval infrastructure, including vector databases, embeddings, and indexing for domain-specific search at scale. - Implement multi-agent orchestration, tool-calling, memory, and reasoning components to deliver robust AI-driven user experiences. - Develop evaluation and safety infrastructure to measure model performance, surface regressions, and enforce enterprise-level trust and reliability. - Ship full-stack AI products from MVP to enterprise-grade — designing APIs and data models, writing frontend and backend code, and operating production systems with CI/CD, monitoring, and testing. - Collaborate with founders, product, and design to prioritize work, define success metrics, and iterate based on user feedback and telemetry. WHAT WE'RE LOOKING FOR Must-haves: - 2–8 years of software engineering experience with demonstrated delivery of shipped user-facing or backend products. - Practical experience deploying LLMs or LLM-based services in production, including prompt design, orchestration, and tool integration. - Proficiency across the stack: Python plus TypeScript/React (or equivalent), cloud platforms (AWS or GCP), and relational or NoSQL databases. - Working knowledge of RAG patterns, vector databases, embeddings, and retrieval pipelines, with sound judgment on when to apply each approach. - E

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