Director, Applied AI Engineering jobs in United States
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3E · 8 hours ago

Director, Applied AI Engineering

3E is a mission-driven company dedicated to creating a safer and more sustainable world by providing regulatory expertise and technology solutions. As the Director of Applied AI Engineering, you will lead a team to develop AI-powered solutions and redesign the AI-native software development lifecycle to enhance product compliance and customer outcomes.

Environmental EngineeringManufacturingMental HealthSupply Chain Management
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H1B Sponsor Likelynote

Responsibilities

Redesign and operationalize an AI-native software development lifecycle (SDLC), including:
AI-assisted and AI-generated code
Autonomous and semi-autonomous engineering AI agents
Model-driven development and test generation
AI-enabled code review, quality, and observability
Lead AI Engineering Strategy & Execution: Define the technical roadmap, architecture standards, and delivery approach for AI-powered products and platforms—from prototype to production
Architect Secure, Autonomous AI Systems: Design and guide development of agent-based tools leveraging solutions like Claude Code, MCPs, A2A, Gemini CLI, the OpenAI Agents SDK, and Knowledge Graph concepts to solve complex, high-value problems
Develop A2A Systems: Build frameworks to enable LLMs to work together internally and externally, increasing the reach of 3E-enabled generative AI systems
Bridge Product & Engineering: Partner with Product, Engineering, and Customer teams to embed AI into tools that enhance usability, decision-making, and automation
Build Seamless API Integrations: Create scalable, secure APIs that connect AI models with web applications, internal systems, and external platforms. Integrate these with MCP for agentic use
Operationalize Production AI: Establish best practices for inference serving, MLOps pipelines, evaluation, observability, and shared services to ensure reliability and performance
Contribute to Responsible AI Practices: Stay current with AI advancements and help define responsible development standards, alignment strategies, and safety protocols
Build and Grow the Team: Hire, mentor, and develop a high-performing team; create a culture of accountability, transparency, and continuous improvement

Qualification

AI Engineering StrategyProduction-grade AI SystemsMLOps PipelinesAPI IntegrationsAI-native SDLCGenerative AICloud-based ArchitecturesAI Safety PracticesTeam LeadershipCollaboration Skills

Required

Bachelor's degree in Computer Science, Data Science, Machine Learning, or a related field or equivalent experience developing and deploying production-grade AI systems and/or SaaS platforms at scale
Demonstrated success leading application engineering organizations through meaningful transformation, including measurable improvements in speed, quality, reliability, and team leverage
Proven experience re-architecting SDLCs and engineering workflows (CI/CD, quality gates, testing strategy, release practices, observability) to materially improve delivery speed and quality; experience designing or operating AI-native or AI-augmented engineering organizations
Deep, hands-on experience developing and deploying production-grade AI systems as a Software Engineer or Machine Learning Engineer (or similar role)
Hands-on experience with LLMs, generative AI, and agentic frameworks such as MCP, A2A, and the OpenAI Agents SDK
Proven ability in AI infrastructure: production-grade inference serving, MLOps pipelines, evaluation practices, and shared services
Solid understanding of AI safety, alignment, privacy, and ethical development practices
Hands-on experience with local/open LLM runtime and serving tools (e.g., Ollama) and similar tooling for controlled deployments
Background in modern cloud-based, SaaS, or platform-oriented architectures, including scalable service patterns and secure API design
Physically located on the U.S. East Coast and willing to work effectively across multiple time zones (North America, Europe, and Asia)

Preferred

Master's degree or Ph.D. in Computer Science, Data Science, Machine Learning, or a related field
Experience with agent orchestration frameworks such as Claude Subagents, AutoGen, or CrewAI
Expertise in prompt engineering, context engineering, RAG pipelines, and optimization
Expertise in deploying open-source LLMs into production (e.g., Qwen, DeepSeek, Llama, Mistral, Gemma)
Familiarity with cloud-based AI tools (e.g., AWS Bedrock, GCP Vertex AI, Azure ML)
Experience integrating AI capabilities into legacy web applications, desktop applications, and APIs

Benefits

Health, dental, and vision insurance
Life insurance and disability coverage
Open PTO and parental leave
401(k) plan with company matching
Employee assistance program
Voluntary supplemental benefits (Accident, Hospital Indemnity, Critical Illness)

Company

3E

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3E provides environmental health and safety (EHS) compliance and information management services.

H1B Sponsorship

3E has a track record of offering H1B sponsorships. Please note that this does not guarantee sponsorship for this specific role. Below presents additional info for your reference. (Data Powered by US Department of Labor)
Distribution of Different Job Fields Receiving Sponsorship
Represents job field similar to this job
Trends of Total Sponsorships
2024 (2)

Funding

Current Stage
Late Stage

Leadership Team

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Greg Gartland
Chief Executive Officer
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Marcus Daley
CTO
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Company data provided by crunchbase