Senior AI Engineer

Re:Build ManufacturingBoston, MA
Remote

About The Position

Reflow is building an AI-powered platform for hardware product development. This platform aims to bridge the gap between hardware teams by listening across existing tools, maintaining a structured program overview, and proactively coordinating across disciplines during changes. This is an early-stage role for a hands-on AI engineer to design and build the core agents of the platform, supported by a parent company with extensive experience in engineering and manufacturing. The engineer will be responsible for the AI systems that differentiate the product, focusing on agents that understand hardware workflows, anticipate issues, and act on behalf of engineering teams.

Requirements

  • 5+ years of production software engineering experience, with 2+ years focused on bringing LLM-based applications or agent systems to market
  • Demonstrated proficiency using AI coding tools (Cursor, Copilot, Claude, etc.) to accelerate development
  • Hands-on experience building and deploying agentic systems using frameworks such as LangChain/LangGraph, CrewAI, AutoGen, or custom orchestration
  • Strong understanding of LLM fundamentals: prompt engineering, function/tool calling, retrieval-augmented generation (RAG), context window management, and token economics
  • Proficiency with Python in production environments
  • Experience integrating LLM-powered features with external APIs, databases, and third-party tools
  • Experience designing and operating background job / async task pipelines (Celery, RQ, Temporal, or similar) for long-running agent runs and reliable retries
  • Experience building multi-agent systems with planning, delegation, and inter-agent communication patterns
  • Demonstrated ability to evaluate and adopt new AI tools and frameworks quickly, with a track record of staying ahead of a fast-moving field
  • Strong software engineering fundamentals: clean architecture, testing, version control, and code review practices
  • Ability to balance rapid experimentation with production-grade reliability

Nice To Haves

  • Direct experience with LangChain's DeepAgent or LangGraph for multi-step agent orchestration
  • Background in evaluation frameworks for LLM outputs (automated scoring, human-in-the-loop evaluation, regression testing for prompts)
  • Familiarity with vector databases and embedding pipelines (Pinecone, Weaviate, pgvector, or similar)
  • Experience with model serving infrastructure, fine-tuning workflows, or model selection/routing strategies
  • Understanding of authentication/authorization patterns (OIDC, JWT) and secure handling of user data in LLM contexts
  • Background in B2B SaaS platforms, project management tools, or technical collaboration products
  • Familiarity with hardware development, engineering workflows, or project management concepts (phases, gates, dependencies, requirements traceability)
  • TypeScript / React fluency, enough to pair with frontend engineers on streaming agent UIs and reasoning-transparency surfaces

Responsibilities

  • Designing, building, and iterating on LLM-powered agents that coordinate across engineering disciplines, surface project risks, and generate structured deliverables (proposals, SOWs, status reports)
  • Owning the agent orchestration layer (currently LangChain DeepAgent) and continuously evaluating whether to extend, replace, or supplement it as new frameworks and patterns emerge
  • Implementing robust tool-use patterns that connect agents to external systems (project management tools, CAD/PLM platforms, communication channels) via APIs and integrations
  • Designing and tuning prompts, chains, and retrieval strategies to maximize agent reliability, accuracy, and usefulness across diverse hardware project contexts
  • Building evaluation and observability infrastructure for agent performance, including tracing, cost tracking, latency monitoring, and automated quality benchmarks
  • Developing streaming agent interfaces that surface real-time progress, reasoning transparency, and proactive alerts to end users
  • Staying current with rapid advances in LLMs, agent frameworks, and related tooling, and translating that awareness into actionable recommendations for the team
  • Collaborating with frontend engineers on the UX of AI-powered features and with backend engineers on data pipelines and API design
  • Contributing to AI architecture decisions, code reviews, and engineering best practices

Benefits

  • Full health/dental/vision
  • Bonus program
  • Generous 401K
  • Paid time off
  • Annual learning stipend
  • Participation in Re:Build's LTIP equity program
  • Opportunity for founder equity in potential spin-out

Stand Out From the Crowd

Upload your resume and get instant feedback on how well it matches this job.

Upload and Match Resume

What This Job Offers

Job Type

Full-time

Career Level

Senior

Education Level

No Education Listed

Number of Employees

101-250 employees

© 2026 Teal Labs, Inc
Privacy PolicyTerms of Service