Software Engineering Manager-AI/ML
Listed on 2026-06-02
-
IT/Tech
AI Engineer, Data Analyst
Company Overview
KLA is a global leader in diversified electronics for the semiconductor manufacturing ecosystem. Virtually every electronic device in the world is produced using our technologies. No laptop, smartphone, wearable device, voice‑controlled gadget, flexible screen, VR device or smart car would have made it into your hands without us. KLA invents systems and solutions for the manufacturing of wafers and reticles, integrated circuits, packaging, printed circuit boards and flat panel displays.
The innovative ideas and devices that are advancing humanity all begin with inspiration, research and development. KLA focuses more than average on innovation and we invest 15% of sales back into R&D. Our expert teams of physicists, engineers, data scientists and problem‑solvers work together with the world’s leading technology providers to accelerate the delivery of tomorrow’s electronic devices. Life here is exciting and our teams thrive on tackling really hard problems.
There is never a dull moment with us.
The Information Technology (IT) group at KLA is involved in every aspect of the global business. IT’s mission is to enable business growth and productivity by connecting people, process, and technology. It focuses not only on enhancing the technology that enables our business to thrive but also on how employees use and are empowered by technology. This integrated approach to customer service, creativity and technological excellence enables employee productivity, business analytics, and process excellence.
Job DescriptionKey Responsibilities
- Manage and grow a team of AI engineers, ML engineers, and/or software engineers working on AI initiatives.
- Set clear goals, expectations, and success metrics; conduct regular 1:1s, performance reviews, and career development planning.
- Coach team members on technical excellence, delivery discipline, and responsible AI practices.
- Own delivery of AI and GenAI initiatives from concept through production, ensuring scope, timelines, and quality standards are met.
- Guide teams in building production‑grade AI systems, including data pipelines, model training, LLM applications, deployment, and monitoring.
- Balance experimentation with operational rigor—ensuring solutions are scalable, secure, and supportable.
- Provide architectural and design guidance for ML pipelines and model lifecycle management, LLM applications (e.g., RAG, agents, copilots, tool/function calling), and integration of AI services into enterprise applications.
- Review designs and key technical decisions; ensure alignment with platform standards and best practices.
- Partner with data, cloud, and platform teams to ensure AI solutions align with enterprise architecture.
- Collaborate with security, legal, and governance teams to ensure responsible AI, privacy, and compliance requirements are met.
- Communicate status, risks, and outcomes clearly to leadership and stakeholders.
- Ensure AI systems meet standards for reliability, monitoring, cost management, and incident response.
- Establish guardrails for responsible AI: data privacy, model risk, transparency, bias awareness, and auditability.
- Drive continuous improvement through retrospectives, metrics, and adoption of best practices.
- Managing teams building LLM‑based applications or GenAI platforms.
- Familiarity with cloud platforms (Azure, AWS, or GCP) and modern data stacks.
- Exposure to MLOps practices, model monitoring, and AI governance frameworks.
- Experience delivering AI solutions in enterprise domains such as manufacturing, supply chain, finance, or customer operations.
- People Leadership: coaching, feedback, performance management, hiring.
- AI Delivery: ML lifecycle, LLM applications, production readiness.
- Technical Judgment: architecture reviews, trade‑off decisions.
- Execution: roadmap planning, dependency management, risk mitigation.
- Collaboration:
product partnership, stakeholder communication. - Responsible AI: security, privacy, governance awareness.
- Bachelor’s degree in Computer Science, Engineering, or related field (or equivalent experience).
- 10+ years of experience in software…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).