<?xml version="1.0" encoding="UTF-8"?>
<source>
  <jobs>
    <job>
      <externalid>9c235fca-4e3</externalid>
      <Title>Senior/Staff Machine Learning Engineer, General Agents, Enterprise GenAI</Title>
      <Description><![CDATA[<p>As a Senior/Staff Machine Learning Engineer on the General Agents team, you&#39;ll play a critical role in designing, building, and deploying production-ready AI agents that solve high-impact enterprise problems.</p>
<p>You will work across the full agent lifecycle,from model and system design to evaluation, deployment, and iteration,bridging cutting-edge agentic techniques with the constraints and requirements of real customer environments.</p>
<p>Key responsibilities include:</p>
<ul>
<li>Design and implement end-to-end agent systems that combine LLM reasoning, tool use, memory, and control logic to solve recurring enterprise use cases.</li>
<li>Build scalable, reliable agent architectures that can be deployed across many customers with varying data, tools, and constraints.</li>
<li>Develop evaluation frameworks, datasets, environments, and metrics to measure agent performance, reliability, and business impact in production settings.</li>
<li>Collaborate closely with product managers, customers, data annotators, and other engineering teams to translate enterprise requirements into robust agent designs.</li>
<li>Productionize frontier agent techniques (e.g., planning, multi-step reasoning and tool-use, multi-agent patterns) into maintainable, observable systems.</li>
<li>Own deployment, monitoring, and iteration of agent systems, including failure analysis and continuous improvement based on real-world usage.</li>
<li>Contribute to technical direction and architectural decisions for general agent development best practices and methods, with increasing scope and leadership at the Staff level.</li>
</ul>
<p>Ideal candidates will have:</p>
<ul>
<li>5+ years of experience building and deploying machine learning or AI systems for real-world, production use cases.</li>
<li>Strong engineering fundamentals, supported by a Bachelor’s and/or Master’s degree in Computer Science, Machine Learning, AI, or equivalent practical experience.</li>
<li>Deep understanding of modern LLMs, prompt-, context-, and system-level optimization, and agentic system design.</li>
<li>Proven proficiency in Python, including writing production-quality, testable, and maintainable code.</li>
<li>Experience building systems that integrate models with external tools, APIs, databases, and services.</li>
<li>Ability to operate in ambiguous problem spaces, balancing research-driven approaches with pragmatic product constraints.</li>
<li>Strong communication skills and comfort working in customer-facing or cross-functional environments.</li>
</ul>
<p>Nice-to-haves include hands-on experience building AI agents using modern generative AI stacks, experience with agent frameworks, orchestration layers, or workflow systems, familiarity with evaluation, monitoring, and observability for LLM-powered systems in production, and experience deploying ML systems in cloud environments and operating them at scale.</p>
<p style="margin-top:24px;font-size:13px;color:#666;">XML job scraping automation by <a href="https://yubhub.co">YubHub</a></p>]]></Description>
      <Jobtype>full-time</Jobtype>
      <Experiencelevel>senior|staff</Experiencelevel>
      <Workarrangement>hybrid</Workarrangement>
      <Salaryrange>$264,800-$331,000 USD</Salaryrange>
      <Skills>Machine Learning, Artificial Intelligence, Python, LLMs, Agentic System Design, Generative AI Stacks, Agent Frameworks, Orchestration Layers, Workflow Systems, Evaluation, Monitoring, and Observability</Skills>
      <Category>Engineering</Category>
      <Industry>Technology</Industry>
      <Employername>Scale AI</Employername>
      <Employerlogo>https://logos.yubhub.co/scale.com.png</Employerlogo>
      <Employerdescription>Scale AI provides data foundation for AI, helping organisations build and deploy reliable production AI applications.</Employerdescription>
      <Employerwebsite>https://scale.com/</Employerwebsite>
      <Compensationcurrency></Compensationcurrency>
      <Compensationmin></Compensationmin>
      <Compensationmax></Compensationmax>
      <Applyto>https://job-boards.greenhouse.io/scaleai/jobs/4658162005</Applyto>
      <Location>San Francisco, CA; New York, NY</Location>
      <Country></Country>
      <Postedate>2026-04-18</Postedate>
    </job>
  </jobs>
</source>