NVIDIA
Data Center Operations
TechnicalProjectManager,DataAnalytics
Neural analysis suggests this role is
optimal for Senior candidates.
“Technical Project Manager, Data Analytics at NVIDIA. Skills: Technical Project Management, Data Analytics, Data Engineering, Data Center Operations, SQL, ETL/ELT. Lead analytics projects for Nvidia's on prem data centers. Develop the future of data engineering at NVIDIA”
What You'll Achieve.
Ensure high-quality insights across the full data center lifecycle; Ensure trust in metrics, dashboards, and reports; Provide insight into data center capacity, utilization, health, and operational efficiency
Industry & Context.
Identify data gaps; Drive solutions with data and system owners
What They're Looking For.
Must Have
More than 8 years of experience in a data center operations–related area (e.g., data center engineering, facilities/operations, planning, infrastructure operations), BS, BA, or BEng degree in a technical field, or equivalent experience, Demonstrated ability in providing analytics solutions (data products, dashboards, pipelines, reporting) in roles such as Data Engineer, Product Owner, Analytics PM, or equivalent, Proficiency with SQL for data exploration and validation on large datasets, including time series data, Experience implementing pipelines / ETL/ELT, including understanding dependencies, SLAs, and failure modes, Experience handling data center infrastructure information: racks and devices, asset inventories, power consumption, equipment needs and orders, ASN/shipping details, and lifecycle events (install, break/fix, decommission), Proven skill in gathering and documenting requirements, composing clear user stories and acceptance criteria, and working closely with engineers, Superb communication able to align technical teams and operations collaborators and bring decisions to completion
Nice to Have
Experience with building software prototypes using AI tools such as Cursor, Vibe or Lovable, Experience with InfluxDB (or similar time series database), Databricks, Nautobot DCIM and SAP backend procurement data
What You'll Do.
Lead analytics projects for Nvidia's on prem data centers
Develop the future of data engineering at NVIDIA
Translate business needs into clear technical requirements
Lead all aspects of delivery of data pipelines and analytics products
Ensure high-quality insights across the full data center lifecycle: planning
equipment demand and procurement
Partner with collaborators to understand use cases
and capture detailed requirements
Map business requirements to existing data structures
and drive solutions with data and system owners
Develop user requirements and success partner with engineers to segment work into tasks and handle backlogs
Lead end-to-end delivery of analytics projects
and communication with collaborators
Support building and deployment of data pipelines and models
including large time series datasets (e.g.
and data quality checks to ensure trust in metrics
Help define and refine benchmarks and reporting that provide insight into data center capacity
and operational efficiency
How You'll Work.
Team & Collaboration
Partner with collaborators to understand use cases, define scope, and capture detailed requirements; Map business requirements to existing data structures, identify data gaps, and drive solutions with data and system owners; Partner with engineers to segment work into tasks and handle backlogs; Communication with collaborators; Align technical teams and operations collaborators
Communication Scope
Superb communication able to align technical teams and operations collaborators and bring decisions to completion; Communication with collaborators
Process & Methodology
Technical Project Management, Lead analytics projects, Define scope, Lead end-to-end delivery of analytics projects, Planning, Prioritization, Execution tracking, Handle backlogs
Full Job Description
We are seeking a Technical Project Manager to lead analytics projects for Nvidia's on prem data centers. This role offers an outstanding opportunity to develop the future of data engineering at NVIDIA, a company known for its groundbreaking innovations and outstanding talent. You will translate business needs into clear technical requirements, lead all aspects of delivery of data pipelines and analytics products, and ensure high-quality insights across the full data center lifecycle: planning, equipment demand and procurement, asset management, installs, power utilization, break/fix, and decommissioning. **What you will be doing:** * Partner with collaborators to understand use cases, define scope, and capture detailed requirements. * Map business requirements to existing data structures, identify data gaps, and drive solutions with data and system owners. * Develop user requirements and success criteria; partner with engineers to segment work into tasks and handle backlogs. * Lead end-to-end delivery of analytics projects, including planning, prioritization, execution tracking, and communication with collaborators. * Support building and deployment of data pipelines and models, including large time series datasets (e.g., power/utilization, telemetry, capacity metrics). * Define baselines, validation criteria, and data quality checks to ensure trust in metrics, dashboards, and reports. * Help define and refine benchmarks and reporting that provide insight into data center capacity, utilization, health, and operational efficiency. **What we need to see:** * More than 8 years of experience in a data center operations–related area (e.g., data center engineering, facilities/operations, planning, infrastructure operations). * BS, BA, or BEng degree in a technical field, or equivalent experience. * Demonstrated ability in providing analytics solutions (data products, dashboards, pipelines, reporting) in roles such as Data Engineer, Product Owner, Analytics PM, or equivale
Applying for this Technical Project Manager, Data Analytics role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Workday
- Workday has a multi-step form — save your progress after every section.
- "Apply With LinkedIn" can fail or lose data; manual entry is more reliable.
- Watch for the "Submit for Review" final step — hitting "Save" alone does not submit.
- Job requisition numbers are useful when following up with HR by email.
ANONYMOUS · UNFILTERED
What do employees actually say about NVIDIA?
Real rants from real employees. Read before you apply.