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AI and Innovation Engineer

Job in Denver, Denver County, Colorado, 80285, USA
Listing for: Oracle
Full Time position
Listed on 2026-01-02
Job specializations:
  • IT/Tech
    AI Engineer, Machine Learning/ ML Engineer
Job Description & How to Apply Below
Position: AI Applications and Innovation Engineer

Job Description

We are at the forefront of developing cutting-edge AI solutions that push the boundaries of machine learning, LLM applications, and agentic AI. Our team builds real-world AI systems and deploys scalable, production-ready solutions across Oracle’s enterprise customers.

We are seeking a highly experienced engineer to contribute to the design and deployment of advanced AI systems, including LLM-powered agents, Retrieval-Augmented Generation (RAG) pipelines, and structured AI workflows. As part of our growing team, you will evaluate, prototype, and optimize next-generation agentic AI technologies. This role is ideal for individuals passionate about building and delivering AI solutions that are accurate, reliable, and trusted at enterprise scale.

You will play a key role in advancing Oracle’s AI strategy—especially in LLMs, Generative AI, and intelligent agent-driven applications.

Responsibilities AI & LLM System Development
  • Design, implement, and deploy AI-driven applications using STOA LLM, Oracle GenAI technologies, and agent evaluation frameworks.
  • Build and optimize LLM-powered agents for industry-specific workflows.
  • Implement RAG pipelines, structured outputs, and function/tool calling to enable grounded, traceable, and multi-step reasoning.
  • Select, version, and optimize foundation models and prompt strategies to meet privacy, latency, cost, and safety objectives.
  • Implement guardrails, uncertainty handling, human-in-the-loop processes, and evidence-grounded citations.
  • Adapt LLMs to customer domains using prompt engineering, instruction tuning, preference optimization, and domain-specific data.
Evaluation & Quality Assurance
  • Evaluate AI methods on industry-relevant datasets to ensure outputs are accurate, reliable, and trustworthy.
  • Maintain evaluation harnesses, regression tests, and golden datasets to monitor model performance.
  • Conduct systematic error analysis, bias assessments, red-teaming, and active learning to improve quality and close gaps.
  • Present insights and findings to internal and external technical audiences.
Data & Platform Engineering
  • Integrate search and NLP technologies, including semantic search, conversational search, and summarization.
  • Work with Oracle Vector Database and other retrieval systems to optimize AI performance.
  • Build and optimize ETL/ELT pipelines and scalable data flows supporting domain adaptation.
  • Ensure data security, privacy, and compliance with PHI/PII regulations across all AI workflows.
Production & Cloud-Native Operations
  • Productionize AI services with CI/CD pipelines, containerization, orchestration, and autoscaling.
  • Instrument traces, metrics, and logs across prompts, retrieval, tools, agents, and model outputs.
  • Enforce SLAs through canary and blue‑green rollouts with safe rollback procedures.
  • Collaborate with cross-functional teams to scale AI offerings across enterprise environments.
  • Mentor engineers and foster a culture of engineering excellence.
Software Development & Tooling
  • Develop and maintain robust software toolkits in Python, Node.js, and Java to support applied scientists in building, testing, and deploying ML models and agent frameworks.
  • Design and implement cloud-based services and APIs for model execution, orchestration, asynchronous communication, and multimodal workflows.
  • Produce well-structured sample code and reference implementations, including integrations with LLM APIs, to promote best practices.
  • Apply deep knowledge of algorithms, data structures, concurrent programming, and distributed systems to build high-performance and maintainable software.
Collaboration & Technical Leadership
  • Partner closely with applied scientists, platform engineers, and cloud infrastructure teams to gather requirements and deliver frictionless ML workflows.
  • Produce clear and comprehensive documentation for infrastructure, APIs, designs, troubleshooting, and best practices.
  • Participate in code reviews, provide mentorship, incorporate feedback, and help shape engineering standards.
  • Conduct systematic error analysis, bias assessments, red‑team exercises, and active learning to continuously improve quality and close gaps.
  • Stay current with emerging trends in AI…
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