With a career at The Home Depot, you can be yourself and also be part of something bigger.
Position Purpose:
The Senior Software Engineer for Applied AI Acceleration is responsible for the technical architecture, development, and scaling of enterprise-grade AI and agentic automation solutions designed to drive operational efficiency across the broader IT and Marketing ecosystems. Rather than focusing on isolated software refactoring, this position leads the construction of our "Digital Workforce Ecosystem"—a flexible, multi-agent operating model that orchestrates autonomous AI subagents across the entire campaign lifecycle, from insights and planning to execution and real-time optimization.
As a Senior Engineer, you will transition high-value AI use cases into production-ready platform capabilities, scaling agentic workflows across enterprise channels and platforms. You will be responsible for ensuring all AI systems are built on a rock-solid operational foundation, embedding core enterprise guardrails—including model governance, strict AI observability, data privacy, and ethical AI frameworks—directly into the production stack. Additionally, you will collaborate with cross-functional IT and business teams, mentoring engineers of all experience levels to foster a culture of rapid AI exploration, evaluation, and delivery.
Key Responsibilities:
50% Delivery and Execution -
- Agentic Framework Architecture: Designs, builds, and deploys scalable multi-agent systems and orchestration layers that power a flexible digital workforce capable of autonomous business planning, content generation, and execution.
- Enterprise AI Scaling: Drives the technical execution of prioritized enterprise AI use cases, taking successful prototypes and rapidly industrializing them into stable, high-throughput production solutions across channels and platforms.
- AI Foundation & Guardrail Integration: Implements core platform safety and performance layers, integrating model governance, comprehensive observability tracking, data protection, and ethical AI validation checks directly into the model lifecycle.
- End-to-End Workflow Automation: Connects autonomous AI agents and subagents (e.g., Content Operations, Workflow Automation, and Analytics agents) with core enterprise databases and MarTech platform layers to completely eliminate manual process friction.
- Model Optimization & RAG Engineering: Architectures robust Retrieval-Augmented Generation (RAG) pipelines, semantic caching, and vector database structures to ensure enterprise AI models remain context-aware, highly accurate, and performant.
- Asynchronous Agent Evaluation: Develops advanced automated testing suites (including functional, regression, and destructive stress testing) tailored for non-deterministic AI outputs and complex multi-agent loop systems.
- TechOps Automation Synergy: Partners occasionally with the internal TechOps support function to build self-healing automation loops, leveraging AI to enhance the IT organization's primary incident detection and automated triage capabilities.
20% Learns and Grows -
- Learns through successful and failed experiment when tackling new problems; Actively seeks ways to grow and be challenged using both formal and informal development channels
20% Plans and Aligns -
- Collaborates with other team members in agile processes; Creates new and better ways for the organization to be successful; Works the Product Team to ensure user stories are valuable, developer ready, easy to understand and testable; Delivers multi-mode communications that convey a clear understanding of the unique needs of different audiences; Adapts approach and demeanor in real time to match the shifting demands of different situations; Relates openly and comfortably with diverse groups of people
10% Supports and Enables -
- Helps grow junior engineers by providing guidance on modern software development frameworks, and leading technical discussions
Direct Manager/Direct Reports:
- This position typically reports to Software Engineer Manager or Sr. Manager
- This position has 0 Direct Reports
Travel Requirements:
- No travel required.
Physical Requirements:
- Most of the time is spent sitting in a comfortable position and there is frequent opportunity to move about. On rare occasions there may be a need to move or lift light articles.
Working Conditions:
- Located in a comfortable indoor area. Any unpleasant conditions would be infrequent and not objectionable.
Minimum Qualifications:
- Must be eighteen years of age or older.
- Must be legally permitted to work in the United States.
Preferred Qualifications:
- 3–6 years of professional software engineering experience, with a heavy emphasis on distributed systems, AI/ML application architecture, or intelligent workflow automation.
- Strong proficiency in scripting and object-oriented programming languages foundational to modern enterprise AI development (preferably Python, Java, or Go).
- Direct hands-on experience building multi-agent systems or working with agent orchestration frameworks (e.g., LangChain, LangGraph, AutoGen, CrewAI, Semantic Kernel).
- Deep technical understanding of Large Language Models (LLMs), prompt engineering paradigms, vector databases (e.g., Pinecone, Milvus, Chroma), and embedding techniques.
- Experience establishing AI Observability & Evaluation systems to track model drift, latency, costs, hallucination rates, and agent-to-agent performance (e.g., using LangSmith, TruLens, Phoenix).
- Experience with MLOps pipelines and cloud-native AI infrastructures (AWS, GCP, or Azure AI ecosystems) for scaling model deployments and managing asynchronous workloads.
- Familiarity with enterprise data streaming, API management, and integration layers (e.g., connecting AI agents to CDPs, CRMs, and Content Management Systems).
- Strong understanding of enterprise software design patterns, microservices architecture, and source code version control (Git).
- Exposure to security frameworks, ethical AI guidelines, and regulatory model compliance (data governance, privacy protection) within corporate environments.
- Proven tracking record of breaking down complex, ambiguous business requirements into lean, high-impact technical architectures.
- Experience mentoring junior engineering talent and leading architectural design reviews across cross-functional technology teams.
Minimum Education:
- The knowledge, skills and abilities typically acquired through the completion of a bachelor's degree program or equivalent degree in a field of study related to the job.
Preferred Education:
- No additional education
Minimum Years of Work Experience:
- 3
Preferred Years of Work Experience:
- No additional years of experience
Minimum Leadership Experience:
- None
Preferred Leadership Experience:
- None
Certifications:
- None
Competencies:
- Global Perspective
- Manages Ambiguity
- Nimble Learning
- Self-Development
- Collaborates
- Cultivates Innovation
- Situational Adaptability
- Communicates Effectively
- Drives Results
- Interpersonal Savvy
For California, Colorado, Connecticut, Rhode Island, Nevada, New York City, Ithaca (NY), Westchester County (NY), and Washington residents:
Skills Required
- Must be eighteen years of age or older.
- Must be legally permitted to work in the United States.
- Bachelor's degree or equivalent in a related field.
- Minimum 3 years of professional software engineering experience.
- 3-6 years professional software engineering experience with distributed systems, AI/ML architecture, or intelligent workflow automation.
- Proficiency in scripting and object-oriented languages (preferably Python, Java, or Go).
- Hands-on experience building multi-agent systems or using agent orchestration frameworks (e.g., LangChain, LangGraph, AutoGen, CrewAI, Semantic Kernel).
- Deep understanding of LLMs, prompt engineering, embedding techniques, and vector databases (Pinecone, Milvus, Chroma).
- Experience establishing AI observability and evaluation systems (e.g., LangSmith, TruLens, Phoenix).
- Experience with MLOps pipelines and cloud-native AI infrastructure (AWS, GCP, or Azure AI).
- Familiarity with enterprise data streaming, API management, and integrations with CDPs, CRMs, and CMS.
- Strong understanding of enterprise software design patterns, microservices architecture, and Git.
- Exposure to security frameworks, ethical AI guidelines, and regulatory model compliance (data governance, privacy protection).
- Experience mentoring junior engineers and leading architectural design reviews.
The Home Depot Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about The Home Depot and has not been reviewed or approved by The Home Depot.
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Retirement Support — A 401(k) plan with company matching supports long-term savings alongside core pay. Retirement programs are consistently positioned as a meaningful part of total compensation.
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Equity Value & Accessibility — An Employee Stock Purchase Plan enables discounted stock ownership as a core element of compensation. Equity opportunities complement wages and are accessible beyond full-time salaried roles.
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Strong & Reliable Incentives — Profit-sharing and store-performance bonuses offer additional earnings opportunities beyond base pay. Incentive programs are described as recurring and tied to store results.
The Home Depot Insights
What We Do
The Home Depot, the world’s largest home improvement specialty retailer, values and rewards dedicated, knowledgeable and experienced professionals. We operate over 2,200 retail stores in all 50 states, the District of Columbia, Puerto Rico, the U.S. Virgin Islands, Guam, Canada and Mexico. All of our associates have one thing in mind — helping our customers build and improve upon their homes. Join The Home Depot team today and see for yourself why we are consistently ranked as a top Fortune 500 company.









