Docker, Inc Logo

Docker, Inc

Senior Manager, Engineering, AI Developer Tools

Reposted 9 Days Ago
Be an Early Applicant
In-Office
Seattle, WA
Senior level
In-Office
Seattle, WA
Senior level
Lead a new team to create AI-powered developer tools and build a self-service platform, enhancing productivity and operational efficiency at Docker.
The summary above was generated by AI

At Docker, we make app development easier so developers can focus on what matters. Our remote-first team spans the globe, united by a passion for innovation and great developer experiences. With over 20 million monthly users and 20 billion image pulls, Docker is the #1 tool for building, sharing, and running apps—trusted by startups and Fortune 100s alike. We’re growing fast and just getting started. Come join us for a whale of a ride!

Docker seeks a Senior Manager of Engineering to build and lead a new AI Developer Tools team that will revolutionize how developers build software—both internally at Docker and for our customers worldwide. This is a rare opportunity to establish a greenfield team at the intersection of AI and developer experience, where you'll build cutting-edge AI-powered developer tools and create the platform that enables teams across Docker to rapidly prototype, deploy, and scale their own AI developer tools.

Your team will own two critical mandates

Build AI-Powered Developer Tools: Create and ship innovative AI agents and tools that accelerate developer productivity, provide observability insights, and automate operational reviews. Build tools and programs that make it easier for teams to adopt an AI-native mindset and accelerate adoption and usage of AI developer tools such as Claude Code, Cursor, Warp, or other AI tools as they gain traction within Docker teams. Your team will build tools such as AI-powered code review and refactoring assistants, automated test generators and local environment setup tools, deployment pipeline diagnostic agents, and agents that simplify on-call tasks when handling incidents. These tools will directly impact how Docker's engineers build, deploy, and operate services powering 20 million users.

Enable Self-Service AI Developer Tools Platform: Build the foundational infrastructure and self-service capabilities that empower product and platform teams across Docker to unblock themselves by rapidly prototyping, building, and deploying their own AI developer tools. Teams will be able to experiment with AI solutions for their unique pain points without waiting for centralized platform teams, iterate quickly on tool ideas, and graduate successful prototypes into production-ready services. The result: development teams ship capabilities to customers faster, operations teams spend less time firefighting, and engineering velocity compounds across the organization.

As these internal AI developer tools demonstrate value and gain traction, you'll partner with product leadership to explore productization opportunities—transforming proven internal tools into new commercial offerings for Docker's customers.

Reporting to the Director of Platform Infrastructure & AI Developer Tools, you'll work closely with engineering leadership across Docker, product engineering teams, platform teams, and ultimately customers as internal tools evolve into product offerings.

What Would Make Someone Successful in This Role

You're energized by the intersection of AI, developer experience, and platform engineering. You've built teams before and have a track record of shipping developer-facing tools or platforms that engineers love to use. You think in terms of platforms and leverage—building once and enabling dozens of teams to move faster. You understand AI technology deeply enough to separate signal from noise, making pragmatic decisions about when to build custom solutions versus integrating existing tools. You have a product mindset for internal tooling and can envision how today's internal experiments become tomorrow's commercial offerings. You thrive in ambiguity, building roadmaps from first principles while staying grounded in real developer pain points. Most importantly, you know how to attract exceptional engineers, build team culture from scratch, and create an environment where innovation thrives.

Responsibilities
  • Build and Scale the AI Developer Tools Team: Hire, onboard, and develop a high-performing engineering team from the ground up with expertise in AI/LLM integration, platform engineering, and developer experience; establish team culture, technical standards, and operating norms

  • Ship AI-Powered Developer Tools: Deliver production-ready AI agents for developer productivity (automated PR reviews, code generation, documentation), observability insights (anomaly detection, root cause analysis), and operational automation (deployment pre-reviews and failure investigations, incident response assistance)

  • Build Self-Service AI Developer Tools Platform: Create and operate the foundational infrastructure that enables teams across Docker to build, deploy, host, and scale their own AI developer tools including deployment frameworks (ArgoCD/GitOps), observability integration (Grafana), security controls, cost management, and operational tooling

  • Drive Platform Adoption and Developer Experience: Establish the AI Developer Tools platform as the default path for teams building AI-powered tooling; deliver self-service capabilities, comprehensive documentation, templates, and best practices that reduce time-to-production from weeks to days

  • Partner on AI Strategy and Technology: Work closely with engineering leadership and Agent Dev technical leadership to align on AI technology choices, architectural patterns, and integration strategies; stay current on LLM advancements and developer tooling trends

  • Explore Productization Opportunities: As internal AI developer tools demonstrate value, partner with product management and go-to-market teams to evaluate commercial viability; prototype, validate, and transition successful internal tools into customer-facing product offerings

  • Deliver Measurable Impact: Define and track success metrics for both AI developer tools (adoption rates, productivity gains, time saved) and platform capabilities (time-to-deploy new tools, number of teams using platform, operational efficiency)

  • Cross-Functional Collaboration: Partner with product engineering teams (Hub, Registry, Cloud/AI, Scout, Accounts & Billing), platform teams (Infrastructure, Security, Data), and product leadership to understand requirements, gather feedback, and align on priorities

  • Operational Excellence: Ensure reliability, security, and performance of AI developer tools and the hosting platform; establish SLOs, monitoring, and incident response for production AI systems serving internal developers

  • Team Development and Culture: Mentor and grow engineers on your team; foster a culture of experimentation, rapid prototyping, and learning; attract diverse talent excited about AI and developer experience

Qualifications
  • 5+ years managing high-performing engineering teams, with demonstrated experience hiring, developing, and retaining diverse technical talent; experience building teams from scratch highly valued

  • 5+ years as a software developer with hands-on experience building developer tools, platform engineering systems, DevOps, or SRE infrastructure

  • Strong understanding of AI/ML technologies, LLM integration patterns, and practical applications of AI in developer workflows; hands-on experience building AI-powered tools or agents preferred

  • Track record of building platforms or internal tools that enable other teams and measurably improve developer productivity

  • Deep technical knowledge of modern cloud-native infrastructure including Kubernetes, GitOps deployment patterns, observability systems, and CI/CD pipelines

  • Experience with infrastructure-as-code frameworks (Terraform, Pulumi) and cloud platforms (AWS, GCP, Azure)

  • Product mindset with ability to envision how internal tools can become commercial offerings; experience with productization of internal platforms a plus

  • Strong verbal and written communication skills with ability to influence cross-functional stakeholders, evangelize platform adoption, and partner with product and go-to-market teams

  • Comfortable with autonomous work, ambiguity, and building in uncharted territory; proven ability to define roadmaps and priorities from first principles

  • Passion for developer experience, AI innovation, and creating leverage through platform thinking

What to ExpectFirst 30 Days
  • Understand Docker's current AI and developer tooling landscape including Agent Dev project status, existing internal AI experiments, and developer pain points ripe for AI solutions

  • Meet with engineering leadership across Docker, Agent Dev technical leadership, and key stakeholders across product engineering to understand AI strategy, technology choices, and priority use cases

  • Identify priority AI developer tool initiatives including productivity agents and observability insights

  • Assess current developer tooling infrastructure (deployment, observability, security) to understand what can be leveraged and what needs to be built for AI tools hosting platform

  • Begin hiring process for initial team members with focus on engineers experienced in AI/LLM integration, platform engineering, and developer experience

First 90 Days
  • Hire and onboard initial team members with clear specialization areas (AI tools development, platform infrastructure, developer experience)

  • Ship first production AI developer tool demonstrating value (e.g., automated PR review agent, deployment failure investigation assistant, or observability insights bot) with measurable adoption and impact metrics

  • Deliver v1 of self-service AI Developer Tools platform enabling at least one other team to deploy their own AI agent to production with reduced friction

  • Establish team goals, success metrics, and OKRs including AI tool adoption rates, platform usage, developer productivity improvements, and operational metrics

  • Create comprehensive documentation, templates, and best practices for teams building AI developer tools on the platform

  • Present 90-day retrospective including shipped tools, platform capabilities, adoption metrics, team composition, and next-phase roadmap to leadership

First Year Outlook
  • Build a fully-staffed, high-performing AI Developer Tools team with clear expertise distribution across AI/LLM engineering, platform infrastructure, and developer experience

  • Ship multiple production AI developer tools with demonstrated adoption across Docker's engineering organization and quantified productivity improvements (time saved, faster deployments, reduced incidents, faster failure resolution)

  • Establish mature, self-service AI Developer Tools platform with multiple teams successfully building and hosting their own AI agents

  • Deliver measurable improvements in AI tool adoption and usage, early-stage development metrics including commit frequency and PR velocity, deployment times, CI run times, and incident response times, while ensuring pipeline rollback rates remain stable or improve

  • Position AI Developer Tools team as center of excellence for AI in developer workflows at Docker, with regular demos, evangelism, and knowledge sharing across engineering

  • Demonstrate sustained positive impact on direct reports through career development, skill growth in AI technologies, and team satisfaction scores

  • Define multi-year strategic roadmap for AI Developer Tools including advanced agents, expanded platform capabilities, and additional productization opportunities

Docker considers sponsorship on a case-by-case basis based on business needs.

We use Covey as part of our hiring and / or promotional process for jobs in NYC and certain features may qualify it as an AEDT. As part of the evaluation process we provide Covey with job requirements and candidate submitted applications. We began using Covey Scout for Inbound on April 13, 2024.

Please see the independent bias audit report covering our use of Covey here.

Perks

  • Freedom & flexibility; fit your work around your life

  • Designated quarterly Whaleness Days plus end of year Whaleness break

  • Home office setup; we want you comfortable while you work

  • 16 weeks of paid Parental leave

  • Technology stipend equivalent to $100 net/month

  • PTO plan that encourages you to take time to do the things you enjoy

  • Training stipend for conferences, courses and classes

  • Equity; we are a growing start-up and want all employees to have a share in the success of the company

  • Docker Swag

  • Medical benefits, retirement and holidays vary by country

  • Remote-first culture, with offices in Seattle and Paris

Docker embraces diversity and equal opportunity. We are committed to building a team that represents a variety of backgrounds, perspectives, and skills. The more inclusive we are, the better our company will be.

#LI-REMOTE

Top Skills

AI
AWS
Azure
GCP
Gitops
Grafana
Kubernetes
Llm
Pulumi
Terraform

Similar Jobs

54 Minutes Ago
Remote or Hybrid
United States
Senior level
Senior level
Fintech • Software
The Director of GTM Tools & Systems will oversee DFIN's GTM technology stack, ensuring optimized workflows, data integrity, and the development of a unified Customer 360 view for data-driven decision-making.
Top Skills: Ai-Enabled SystemsCpqGongHg InsightsSalesforceZoominfo
55 Minutes Ago
Remote or Hybrid
3 Locations
105K-163K Annually
Senior level
105K-163K Annually
Senior level
Cloud • Computer Vision • Information Technology • Sales • Security • Cybersecurity
The Global Partner Services Manager leads a global team to scale delivery programs, driving partner enablement and governance, while ensuring customer satisfaction and measurable business outcomes.
Top Skills: SalesforceTableau
55 Minutes Ago
Remote or Hybrid
USA
170K-260K Annually
Expert/Leader
170K-260K Annually
Expert/Leader
Cloud • Computer Vision • Information Technology • Sales • Security • Cybersecurity
Responsible for driving operational excellence across IT, optimizing GTM processes, managing budgets and metrics, and enhancing IT services.
Top Skills: AnalyticsBillingCpqCRMWorkboard

What you need to know about the Seattle Tech Scene

Home to tech titans like Microsoft and Amazon, Seattle punches far above its weight in innovation. But its surrounding mountains, sprinkled with world-famous hiking trails and climbing routes, make the city a destination for outdoorsy types as well. Established as a logging town before shifting to shipbuilding and logistics, the Emerald City is now known for its contributions to aerospace, software, biotech and cloud computing. And its status as a thriving tech ecosystem is attracting out-of-town companies looking to establish new tech and engineering hubs.

Key Facts About Seattle Tech

  • Number of Tech Workers: 287,000; 13% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Amazon, Microsoft, Meta, Google
  • Key Industries: Artificial intelligence, cloud computing, software, biotechnology, game development
  • Funding Landscape: $3.1 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Madrona, Fuse, Tola, Maveron
  • Research Centers and Universities: University of Washington, Seattle University, Seattle Pacific University, Allen Institute for Brain Science, Bill & Melinda Gates Foundation, Seattle Children’s Research Institute

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account