Energy Integration Manager

Meta Meta · Big Tech · Reston, VA +2

This role focuses on building the connective tissue within Meta's Energy organization by integrating fragmented data sources, enhancing portfolio health visibility, and applying AI/agentic tooling to automate reporting, flag anomalies, and accelerate procurement decisions. The primary goal is to create a unified, AI-accelerated view of portfolio health to enable faster and more confident energy procurement at scale.

What you'd actually do

  1. Integrate energy data across the org by partnering with data and analytics teams to connect fragmented sources into a coherent, decision-grade portfolio picture — defining the shared data model, definitions, and source of truth that asset management, origination, and wholesale all rely on
  2. Up-level portfolio health visibility by taking reporting from periodic and manual to continuous, predictive, and trusted — surfacing risk, exposure, and opportunity early enough to act on, and setting the metrics, cadence, and review forums leadership runs the portfolio by
  3. Expand the operating model across all Energy teams by bringing a consistent, lightweight program operating system to data, analytics, asset management, energy origination, and wholesale — ensuring cross-team initiatives have clear ownership, dependencies are visible, and execution doesn't stall at the seams between functions
  4. Apply AI to scale the work by standing up AI and agentic tooling that automates portfolio reporting, flags anomalies and risks, drafts decision briefs, and compresses the time from data to insight to procurement action — serving as the org's pathfinder for where AI meaningfully accelerates energy operations
  5. Be a thought partner to all energy and partner teams by translating the integrated portfolio view into clear, executive-ready narratives that drive resourcing, prioritization, and procurement strategy for the years ahead

Skills

Required

  • Demonstrated experience standing up operating cadences, portfolio/health reporting, and governance that leaders actually run their business by
  • Proven track record of leading complex, cross-functional programs or operations in energy and infrastructure
  • Hands-on experience applying AI/automation to operational or analytical work, with sound judgment on where it adds leverage versus where it does not
  • Strong data fluency — comfortable defining metrics and data models, working directly with analytics teams, and turning messy multi-source data into trusted decision-grade reporting
  • Executive communication skills with the ability to distill complexity into crisp narratives for leadership and influence without authority across specialist teams
  • Demonstrated ability to integrate AI tools to optimize/redesign workflows and drive measurable impact (e.g., efficiency gains, quality improvements)
  • Experience adhering to and implementing responsible, ethical AI practices (e.g., risk assessment, bias mitigation, quality and accuracy reviews)
  • Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent orchestration) and staying current with emerging AI technologies
  • Domain knowledge of large energy portfolio metrics, energy markets, procurement, and the energy origination process
  • Experience driving alignment and operational cohesion across multiple teams by establishing shared processes, visibility, and cross-functional coordination
  • Experience building AI/agentic workflows in a production setting (e.g., automated reporting, anomaly detection, decision-support tooling) with demonstrated ability to optimize/redesign workflows and drive measurable impact

Nice to have

  • Background spanning both technical (data/analytics) and commercial (procurement/origination/wholesale) contexts

What the JD emphasized

  • AI-accelerated view of portfolio health
  • AI and agentic tooling that automates portfolio reporting
  • pathfinder for where AI meaningfully accelerates energy operations
  • Demonstrated ability to integrate AI tools to optimize/redesign workflows and drive measurable impact
  • Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent orchestration)
  • Experience building AI/agentic workflows in a production setting

Other signals

  • AI-accelerated view of portfolio health
  • AI and agentic tooling that automates portfolio reporting
  • pathfinder for where AI meaningfully accelerates energy operations