About the job
We are seeking a Technical Program Manager to lead execution of AI cluster engineering programs with deep focus on GPU platforms, rack-level solutions, and AI Cluster validation. This role is responsible for driving end-to-end delivery from GPU + server integration through rack bring-up, scale testing, failure analysis, and system debug closure, ensuring platform readiness for hyperscale and enterprise AI deployments. This role operates at the intersection of hardware, firmware, networking, and scale-test execution, and requires strong technical depth combined with disciplined program execution.
Responsibilities
Define, plan, and drive program plans for AI infrastructure systems validation and readiness, including server integration, rack bring-up, and cluster-scale deployment readiness. Create and maintain core PM artifacts: schedules, dependency maps, resource forecasts, risk/issue logs, and program dashboards/status reports. Identify and drive mitigation plans for issues/risks, including cross-team escalations and corrective actions across multiple engineering areas. Drive regular execution reviews with engineering teams and provide concise, data-driven updates to senior leadership. Own program execution for GPU-based AI platforms, spanning system bring-up, qualification, scale readiness, and deployment validation across server, rack, and cluster levels. Drive alignment across GPU, CPU, firmware, BIOS/BMC, and system teams to ensure readiness for scale testing and customer workloads. Track platform issues, and debug dependencies; ensure risks are clearly documented, owned, and mitigated. Own program planning and execution for multi-node and multi-rack scale testing, including test strategy, scheduling, coverage tracking, and readiness gates. Lead end-to-end delivery of rack-level AI solutions, including compute trays, switch trays, cabling, power, cooling, and management infrastructure. Ensure rack bring-up plans are executable, resourced, and gated with clear entry/exit criteria across EVT, DVT, and scale phases. Drive coordination across lab operations, infrastructure, and engineering teams to unblock rack access, power, networking, and test readiness. Partner with scale, performance, and automation teams to ensure workloads, stress tests, and regressions plans are ready before hardware arrives. Act as the execution lead for platform debug, coordinating across engineering teams to ensure fast triage, root-cause analysis, and resolution of system-level issues. Track high-impact failures (GPU, HSIO, FW, rack, network) through debug forums ensuring clear ownership and closure plans. Balance debug depth vs. program timelines, escalating tradeoffs when needed and ensuring leadership has a clear view of risk and impact.
Qualifications
Minimum
Experience leading complex hardware or AI infrastructure programs with ownership across bring-up, validation, and deployment phases. Strong technical understanding of GPU-based AI systems, rack architectures, and datacenter infrastructure. Proven ability to manage ambiguity, drive debug execution, and lead cross-functional teams without direct authority. Strong written and verbal communication skills, including executive-level status reporting. Proficiency with program management and execution tools (Jira, Confluence, dashboards, Excel/PowerPoint).
Preferred
Hands-on experience with GPU cluster scale testing, system stress, or performance validation. Familiarity with rack-level bring-up, power/cooling constraints, networking, and failure modes at scale. Experience working through hardware/firmware debug cycles in pre-production or customer-facing environments.