Learning Systems Data Engineer
About the Team The Education team at OpenAI is building systems that help make ChatGPT a highly effective learning partner. As AI progress continues to accelerate, our goal is to design learning capabilities that help individuals, developers, educators, and organizations move from curiosity to mastery with the help of
What this role actually needs.
About the Team The Education team at OpenAI is building systems that help make ChatGPT a highly effective learning partner. As AI progress continues to accelerate, our goal is to design learning capabilities that help individuals, developers, educators, and organizations move from curiosity to mastery with the help of Responsibilities: - Build AI-Native Learning Infrastructure: Develop core systems for AI education, including dynamic experiences, progress tracking, and assessments. - Enable Adaptive Learning: Develop capabilities that allow learning experiences to dynamically adapt to learners’ knowledge, goals, and behaviors over time. - Design Data Systems for Insights: Build data pipelines and analytics systems to help educators understand learner outcomes, engagement patterns, and skill development. - Empower Educators: Build systems that allow non-engineers to design, configure, and experiment with learning experiences without requiring direct engineering support. - Help launch new AI learning experiences that reach a broad set of learners. - Refine infrastructure that allows educators to deliver adaptive learning and assessments. Requirements: - 5–10+ years of experience in software, data, or learning engineering. - Experience building data systems or infrastructure that support education & training. - Experience working with learning data, analytics pipelines, or educational metrics. - Comfort translating learning or pedagogical goals into technical systems. - Background in learning science, instructional design, or education research. - Experience building LMS platforms or training infrastructure. Company context: OpenAI builds frontier AI systems, research infrastructure, and applied products for developers, enterprises, and global users.
Day-to-day expectations
OpenAI lists these responsibilities for the Learning Systems Data Engineer role.
- Build AI-Native Learning Infrastructure: Develop core systems for AI education, including dynamic experiences, progress tracking, and assessments.
- Enable Adaptive Learning: Develop capabilities that allow learning experiences to dynamically adapt to learners’ knowledge, goals, and behaviors over time.
- Design Data Systems for Insights: Build data pipelines and analytics systems to help educators understand learner outcomes, engagement patterns, and skill development.
- Empower Educators: Build systems that allow non-engineers to design, configure, and experiment with learning experiences without requiring direct engineering support.
- Help launch new AI learning experiences that reach a broad set of learners.
- Refine infrastructure that allows educators to deliver adaptive learning and assessments.
What a strong candidate brings
These requirements are extracted from the source listing and normalized for UpJobz readers.
- 5–10+ years of experience in software, data, or learning engineering.
- Experience building data systems or infrastructure that support education & training.
- Experience working with learning data, analytics pipelines, or educational metrics.
- Comfort translating learning or pedagogical goals into technical systems.
- Background in learning science, instructional design, or education research.
- Experience building LMS platforms or training infrastructure.
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Source: jobs.ashbyhq.com · Source ID: 9c55e073-886d-466a-86a3-435a291e19d2 · Confidence: 97/100 · Last checked: May 7, 2026
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