Home Depot is a Fortune 500 company and the world's largest specialty retailer of home-improvement products. Founded in 1978 with its first two stores in Atlant
Senior AI Engineer
Location
Colorado
Posted
3 days ago
Salary
$100K - $180K / year
Seniority
Senior
Job Description
Senior AI Engineer
Home Depot
• responsible for designing, building, scaling, and optimizing production-grade Agentic AI systems • collaborating and pairing with other product team members (UX, engineering, and product management) • documenting, reviewing, and ensuring all quality and change control standards are met • writing custom code or scripts to automate infrastructure, monitoring services, and test cases • configuring commercial off the shelf solutions to align with evolving business needs • creating meaningful dashboards, logging, alerting, and responses to ensure that issues are captured and addressed proactively • participating in learning activities around modern software design, machine learning, and development core practices • monitoring tools and participating in conversations to encourage collaboration across product teams
Job Requirements
- 6+ years of experience in AI, Machine Learning Engineering, or Software Engineering
- strong Python development skills and modern software engineering practices
- proven experience building and deploying production-grade AI solutions using LLMs, SLMs, RAG frameworks, copilots, agents, and multi-agent systems
- deep understanding of AI/ML foundations, including transformers, embeddings, deep learning, prompt engineering, agentic reasoning patterns, and vector databases
- experience developing orchestration layers (task execution, routing, planning, workflows) and seamlessly integrating AI solutions with enterprise platforms, APIs, and business systems
- expertise in cloud-native architectures, containerization (Docker) and orchestration (Kubernetes/GKE), infrastructure as code (e.g., Terraform)
- hands-on implementation of MLOps/LLMOps best practices (CI/CD, automated testing, model versioning and registries, governance, compliance, and security)
- experience building automated CI/CD pipelines for AI/agentic systems, implementing progressive rollout strategies (canary, blue-green, and shadow deployments) with automated rollback
- excellent cross-functional communication and collaboration skills
Benefits
- health care benefits
- 401K
- ESPP
- paid time off
- success sharing bonus
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