Deployed Engineer (Denver)

Langchain
US
Remote

Who this role is best for

Best suited to mid-level engineers with Python and JavaScript expertise who thrive in customer-facing technical roles and have deployed AI agents in production.

Best fit for

  • Engineers who enjoy fast feedback loops and visible impact in production AI systems.
    — “The feedback loop is fast, the impact is visible
  • Candidates comfortable co-building with customers and owning technical wins in pre-sales.
    — “Co-architect and co-build production AI agents with customer engineering teams
  • Developers who prioritize outcomes over recommendations and thrive in action-oriented roles.
    — “Take responsibility for outcomes, not just recommendations

Things to consider

  • Role requires direct customer interaction during POCs and technical evaluations.
    — “working directly with customers during POCs
  • Expect to contribute reusable patterns and code beyond individual customer engagements.
    — “contribute reusable patterns, cookbooks, and example code

How to stand out

  • Highlight specific examples of multi-step LLM workflows you've designed and deployed.
    — “multi-step workflows, orchestration, and failure handling
  • Demonstrate your ability to explain technical tradeoffs clearly to developer audiences.
    — “explain technical tradeoffs clearly and build trust
  • Showcase production deployments, especially using LangChain or similar frameworks.
    — “deployed AI agents in production
Pace · Fast PacedCollaboration · HighAutonomy · MediumDecision Impact · TeamLevel · Mid Level

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • co-architect and co-build production AI agents
  • own the technical win in pre-sales
  • advise customers post-sale
  • surface field feedback and contribute reusable patterns
Typical background
software engineeringcustomer engineeringsolutions engineering

Skills & requirements

Required

PythonJavaScriptSystems FundamentalsDesigning Agent-based Or Llm-powered ApplicationsWorking Directly With CustomersExplaining Technical TradeoffsTaking Responsibility For Outcomes

Preferred

Deploying AI Agents In ProductionLLM EvaluationCloud EnvironmentsContainersKubernetes ConceptsOperating Production Software

Stack & domain

PythonJavaScriptSystems FundamentalsLlm-powered ApplicationsMulti-step WorkflowsOrchestrationFailure HandlingCloud EnvironmentsAWSGCPAzureContainersKubernetesProduction SoftwareCommunicationProblem-solvingTeamworkLeadershipCustomer InteractionTechnical TradeoffsBias Toward ActionAISoftware EngineeringCustomer EngineeringSolutions EngineeringFounder/product Engineering

About the role

As a Deployed Engineer at LangChain, you'll collaborate with customer engineering teams to architect and build production-ready AI agents, ensuring that these systems are robust and reliable for real-world applications. This role is ideal for someone who thrives in a fast-paced environment and is passionate about shaping the future of AI in practical, scalable ways.

Original posting from Langchain via Ashby

ABOUT US

At LangChain, our mission is to make intelligent agents ubiquitous. We build the foundation for agent engineering in the real world, helping developers move from prototypes to production-ready AI agents that teams can rely on. We began as widely adopted open-source tools and have grown to also offer a platform for building, evaluating, deploying, and operating agents at scale.

With $125M raised at Series B from IVP, Sequoia, Benchmark, CapitalG, and Sapphire Ventures, we’re at a stage where we’re continuing to develop new products, growth is accelerating, and all team members have meaningful impact on what we build and how we work together. LangChain is a place where your contributions can shape how this technology shows up in the real world.

Today, LangChain, LangGraph, LangSmith, and Fleet are used by teams shipping real AI products across startups and large enterprises. Millions of developers trust LangChain to power AI teams at companies like Replit, Clay, Coinbase, Workday, Lyft, Cloudflare, Harvey, Rippling, Vanta, and 35% of the Fortune 500.

ABOUT THE ROLE

The Deployed Engineer…You’ll work on some of the hardest problems in applied AI — not demos, not research, but systems that real teams depend on in production. The feedback loop is fast, the impact is visible, and the work you do directly shapes how AI agents are built in the real world.

WHAT YOU’LL DO

  • Co-architect and co-build production AI agents with customer engineering teams
  • Own the technical win in pre-sales by designing POCs, answering deep technical questions, and guiding evaluations
  • Help customers deploy and operate agent-based applications such as conversational agents, research agents, and multi-step workflows
  • Advise customers post-sale on architecture, best practices, and roadmap-level decisions
  • Run technical demos, trainings, and workshops for developer audiences
  • Surface field feedback and contribute reusable patterns, cookbooks, and example code that scale across customers
  • Occasionally contribute code upstream when it meaningfully improves customer outcomes

WHAT YOU’LL BRING

  • 3+ years in a relevant technical role (software engineering, customer engineering, solutions engineering, founding/product engineering), ideally in a startup or scale-up
  • Strong Python, JavaScript and systems fundamentals
  • Have designed agent-based or LLM-powered applications beyond simple API calls, including multi-step workflows, orchestration, and failure handling
  • Are comfortable working directly with customers during POCs, architecture reviews, and technical evaluations
  • Can explain technical tradeoffs clearly and build trust with developer audiences
  • Take responsibility for outcomes, not just recommendations
  • Have a bias toward action and enjoy figuring things out as you go
  • Are excited about operating AI agents in production, not just building demos

NICE TO HAVE’S:

  • You’ve deployed AI agents in production, especially using LangChain, LangGraph, or similar frameworks
  • Worked with LLM evaluation, observability, or guardrails
  • Have experience with cloud environments (AWS, GCP, Azure), containers, and basic Kubernetes concepts
  • Have shipped and operated production software and are comfortable owning systems under real-world constraints

COMPENSATION

Annual OTE range: $150,000–$250,000 USD

Compensation Philosophy:

We offer competitive compensation that includes base salary, variable compensation for relevant roles, meaningful equity, benefits, and perks. Actual compensation and offerings will vary based on role, level, and location. Team members in the EU, UK, and APAC receive locally competitive benefits aligned with regional norms and regulations.

BENEFITS

Benefits include medical, dental, and vision coverage, flexible vacation, a 401(k) plan, meals on in-office days in the US and more.

Source: Langchain careers (Ashby)

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