Jobs
Benefits & Perks
•Parental leave
•Competitive salary and equity package
•Flexible work arrangements
•Team events and activities
•Parental Leave
•Equity
•Flexible Hours
Required Skills
TypeScript
JavaScript
PostgreSQL
About Us
At Lang Chain, 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.
Today, Lang Chain, Lang Graph, Lang Smith, and Agent Builder are used by teams shipping real AI products across startups and large enterprises. Millions of developers trust Lang Chain to power AI teams at companies like Replit, Clay, Coinbase, Workday, Lyft, Cloudflare, Harvey, Rippling, Vanta, and 35% of the Fortune 500.
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. Lang Chain is a place where your contributions can shape how this technology shows up in the real world.
About the Team
The Deployed Engineering team works directly with companies building and running AI agents in production, helping turn ideas and prototypes into systems teams can rely on.
This is a hands-on, highly technical team that partners closely with customer engineers across the full lifecycle, from pre-sales evaluations to post-deployment advisory work. The focus is on achieving the technical win, co-designing agent architectures, and helping customers operate agents reliably at scale using the Lang Chain suite.
Deployed Engineers sit at the intersection of engineering, product, and go-to-market, shaping how Lang Chain is adopted in the field and feeding real-world insights back into the platform.
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.
Location(s)
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West: San Francisco, Pacific Northwest, Southern California
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Central: Austin, Chicago, Denver
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East: New York, Atlanta
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EMEA: London, Amsterdam
What You’ll Do
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Co-architect and co-build production AI agents with customer engineering teams
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Own the technical win in pre-sales by designing POCs, answering deep technical questions, and guiding evaluations
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Help customers deploy and operate agent-based applications such as conversational agents, research agents, and multi-step workflows
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Advise customers post-sale on architecture, best practices, and roadmap-level decisions
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Run technical demos, trainings, and workshops for developer audiences
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Surface field feedback and contribute reusable patterns, cookbooks, and example code that scale across customers
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Occasionally contribute code upstream when it meaningfully improves customer outcomes
What You’ll Bring
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3+ years in a relevant technical role (software engineering, customer engineering, solutions engineering, founding/product engineering), ideally in a startup or scale-up
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Strong Python, JavaScript and systems fundamentals
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Have designed agent-based or LLM-powered applications beyond simple API calls, including multi-step workflows, orchestration, and failure handling
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Are comfortable working directly with customers during POCs, architecture reviews, and technical evaluations
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Can explain technical tradeoffs clearly and build trust with developer audiences
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Take responsibility for outcomes, not just recommendations
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Have a bias toward action and enjoy figuring things out as you go
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Are excited about operating AI agents in production, not just building demos
Nice to Have’s:
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You’ve deployed AI agents in production, especially using Lang Chain, Lang Graph, or similar frameworks
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Worked with LLM evaluation, observability, or guardrails
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Have experience with cloud environments (AWS, GCP, Azure), containers, and basic Kubernetes concepts
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Have shipped and operated production software and are comfortable owning systems under real-world constraints
Compensation & Benefits
We offer competitive compensation that includes base salary, variable compensation for relevant roles, meaningful equity, benefits, and perks. Benefits include things like medical, dental, and vision coverage, flexible vacation, a 401(k) plan, and life insurance. 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.
Annual OTE range: $150,000 –$250,000 USD
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About LangChain

LangChain
Series BA platform that provides open-source frameworks and tools for engineering and deploying language model agents.
51-200
Employees
San Francisco
Headquarters
$200M
Valuation
Reviews
3.4
3 reviews
Work Life Balance
2.5
Compensation
3.0
Culture
2.8
Career
3.2
Management
2.3
35%
Recommend to a Friend
Pros
Working with cutting-edge AI technologies like LangChain and RAG
Hands-on experience building end-to-end AI projects
Exposure to modern applied AI development
Cons
Uncertainty about long-term career prospects and employability
Projects rarely make it to production use
Lack of senior developer mentorship and guidance
Salary Ranges
9 data points
Mid/L4
Mid/L4 · Product Designer
1 reports
$178,619
total / year
Base
$155,147
Stock
-
Bonus
-
$178,619
$178,619
Interview Experience
10 interviews
Difficulty
2.7
/ 5
Duration
14-28 weeks
Offer Rate
60%
Experience
Positive 50%
Neutral 40%
Negative 10%
Interview Process
1
Application Review
2
Recruiter Screen
3
Technical Assessment/Take-home
4
Technical Interview
5
Virtual Onsite/Final Round
6
Offer
Common Questions
System Design
Machine Learning/AI Knowledge
Coding/Algorithm
Technical Architecture
Behavioral/STAR
News & Buzz
LangChain: $125 Million Raised To Advance Agent Engineering Platform - Pulse 2.0
Source: Pulse 2.0
News
·
19w ago
LangChain Raises $125M in Series B, Hits $1.25B Unicorn Valuation - WebProNews
Source: WebProNews
News
·
19w ago
Sequoia backs AI agent tools LangChain at $1.3b valuation - Tech in Asia
Source: Tech in Asia
News
·
19w ago
LangChain becomes unicorn with $1.25B valuation in Series B - The Tech Buzz
Source: The Tech Buzz
News
·
19w ago