Senior Software Engineer - Orange Apron Media (Remote)

The Home DepotGEORGIA - VIRTUAL - GA01, GA
$80,000 - $180,000Remote

About The Position

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. 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.

Requirements

  • Must be eighteen years of age or older.
  • Must be legally permitted to work in the United States.
  • 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.
  • 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.

Nice To Haves

  • No additional education
  • None

Responsibilities

  • 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.
  • 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.
  • 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.
  • 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.
  • 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.
  • Develops advanced automated testing suites (including functional, regression, and destructive stress testing) tailored for non-deterministic AI outputs and complex multi-agent loop systems.
  • 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.
  • 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.
  • 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.
  • Helps grow junior engineers by providing guidance on modern software development frameworks, and leading technical discussions.

Benefits

  • The pay range for this position is between $80,000.00 - $180,000.00
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