Lead Gtm Data Operations Analyst, AI Workflows

Klaviyo Klaviyo · Enterprise · Boston, MA · Go-To-Market Operations

This role operates, tunes, and extends an existing agentic data quality pipeline for GTM data. It involves running production pipeline sessions, diagnosing and resolving failures, maintaining orchestration scripts, refining agent logic, evaluating agent accuracy, and managing the handoff between automated output and human review. The role focuses on operating and improving AI systems rather than building them from scratch.

What you'd actually do

  1. Run and monitor production pipeline sessions (Cartographer, Sentinel, Resolver) across scheduled cadences; diagnose and resolve failures (API errors, session timeouts, data anomalies) without escalating to the function lead.
  2. Execute pipeline runs in Claude Claude and tmux; manage long-running batch processes; interpret logs and output to confirm data integrity before downstream handoff.
  3. Maintain pipeline orchestration scripts and configuration; extend agent coverage as new data elements are prioritized by GTM leadership.
  4. Refine detection rules, prompt logic, and confidence thresholds based on output analysis and false-positive/negative patterns.
  5. Evaluate agent accuracy by segment (Enterprise vs. MM/SMB) and recommend rule or workflow changes backed by evidence.

Skills

Required

  • Data Ops, Sales Ops, or GTM Ops experience
  • Experience operating and improving AI systems
  • Ability to diagnose and resolve failures in production systems
  • Experience with prompt logic and confidence thresholds
  • Experience evaluating AI output and recommending improvements
  • Experience managing handoffs between automated systems and human review
  • Experience with data quality monitoring and enrichment workflows
  • Familiarity with CRM systems (e.g., SFDC)
  • Understanding of data engineering concepts (source availability, ID mapping, lineage)

Nice to have

  • Experience with Claude Claude and tmux
  • Experience with vendor vs. AI enrichment bake-offs
  • Experience with data dictionaries, SOPs, and runbooks

What the JD emphasized

  • agentic AI–first
  • multi-agent pipeline
  • operate, tune, and extend our agentic data quality pipeline
  • run them, evaluate their output
  • Refine detection rules, prompt logic, and confidence thresholds

Other signals

  • agentic AI–first operating model
  • multi-agent pipeline
  • operate, tune, and extend our agentic data quality pipeline
  • run them, evaluate their output
  • Refine detection rules, prompt logic, and confidence thresholds