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Cognition

Applied AI Engineer

Reposted 9 Days Ago
In-Office
San Francisco, CA, USA
180K-225K Annually
Senior level
In-Office
San Francisco, CA, USA
180K-225K Annually
Senior level
The AI Enablement Engineer leads programs for engineering teams to integrate AI, teaches best practices, and develops scalable learning models.
The summary above was generated by AI
We are an applied AI lab building end-to-end software agents.

We're the makers of Devin, the first AI software engineer, and Windsurf, the AI-native IDE. Together, they represent our vision for collaborative AI teammates that enable engineers to focus on more interesting problems and empower teams to strive for more ambitious goals.

Our team is small and talent-dense. Among our founding team, we have world-class competitive programmers, former founders, and leaders from companies at the cutting edge of AI including Scale AI, Palantir, Cursor, Waymo, Tesla, Lunchclub, Modal, Google DeepMind, and Nuro.

Building Devin is just the first step—our hardest challenges still lie ahead. If you’re excited to solve some of the world’s biggest problems and build AI that can reason on real-world tasks, apply to join us.

About the Role

Applied AI Engineers are how Cognition operationalizes AI modernization at the enterprise level. You don't demo Devin - you deploy it. You embed with engineering teams, integrate agentic workflows into how they actually build and ship, and drive the kind of measurable productivity gains that make adoption irreversible.

As one of our first Applied AI Engineers, you'll also shape the function itself - turning individual customer engagements into repeatable playbooks, digital learning content, and partner-driven enablement models that allow Cognition to reach hundreds of thousands of engineers worldwide.

This role is perfect for someone who has strong engineering fundamentals, enjoys working directly with customers, and finds deep satisfaction in driving product adoption and having users unlock their potential with Devin - while also thinking systematically about how to scale those learnings to the next 100 teams.

In this role, you will:
  • Embed with enterprise engineering teams to drive deep, lasting adoption of Devin — owning outcomes, not just onboarding

  • Architect and implement agentic workflows across engineering, QA, support, data, and product — identifying where AI creates the highest leverage and building toward it

  • Lead interactive programs for enterprise engineering teams (live workshops, pair programming sessions)

  • Guide customers through installing, configuring, and optimizing Devin and its associated tools (DeepWiki, MCP integrations, etc.)

  • Pair-program on live production problems to demonstrate high-value usage patterns and accelerate the team's applied AI fluency

  • Quantify impact — tracking productivity metrics, surfacing ROI stories, and making the business case for expanding Devin's footprint within accounts

  • Work with leadership to scale field learnings into structured playbooks and best practices that scale beyond individual engagements

  • Create enablement materials, best practices, and shared playbooks based on customer learnings

Requirements for the Role:
  • Degree in a STEM field or equivalent hands-on experience

  • 3+ years as a software engineer, technical consultant, deployment strategist, forward deployed engineer, solutions engineer or similar roles with strong coding proficiency (Python, JavaScript/TypeScript, or similar)

  • Proven ability to communicate complex technical topics to diverse audiences

  • Proven track record of driving technical adoption and measurable impact inside engineering organizations

  • Strong commercial instincts; you understand that successful engagements grow accounts, and you operate accordingly

  • Excellent verbal and written communication skills

  • Demonstrated ability to learn and adapt exceptionally fast

You might excel if you…
  • You've led developer enablement, platform adoption, or internal AI modernization initiatives — and you can point to the before/after metrics

  • Have deployed or integrated LLM or agent-based systems in production settings

  • Have previously founded or joined early-stage startups where autonomy and execution speed were critical

  • You're energized by seeing a team's velocity compound after working with them — and you engineer those outcomes deliberately

Equal Opportunity

Cognition is an equal opportunity employer. We do not discriminate on the basis of race, color, religion, sex, sexual orientation, gender identity, national origin, age, disability, veteran status, or any other protected characteristic under applicable law. We are committed to providing reasonable accommodations for candidates with disabilities throughout the hiring process - please let us know if you need any.

HQ

Cognition San Francisco, California, USA Office

San Francisco, CA, United States

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