Product Operations Manager, Feedback Loops

Anthropic Anthropic · AI Frontier · San Francisco, CA · Product Management, Support, & Operations

Product Operations Manager to own and improve how customer signal flows into product and research decisions at Anthropic. This role will build a shared operating system for voice of the customer, using AI-enabled systems for synthesis and triage, and ensuring feedback influences model training priorities.

What you'd actually do

  1. Own the single, org-wide pipeline that captures customer feedback from every channel — field teams, support, early access programs, in-product signals — into one structured system of record that serves every product surface.
  2. Build intake workflows that meet teams where they already work (Slack, Gong, CRM) without creating a documentation tax. Obsess over the submitter experience so that sharing feedback is faster than not sharing it.
  3. Build Claude-powered pipelines that enrich, tag, cluster, and summarize unstructured feedback into trackable issues — doing the first-pass work so humans focus on verification and judgment.
  4. Design the human-in-the-loop model: Claude proposes, PMs and field teams correct, and the system learns from those corrections over time.
  5. Establish clear routing so the right feedback reaches the right product or research owner at the right time — including the path from product signal back into model training priorities.

Skills

Required

  • 7+ years in product operations, customer insights, voice of the customer programs, or related roles in fast-paced tech companies
  • personally shipped AI-enabled processes and systems
  • owned a customer feedback program end-to-end
  • operated at earlier-stage and scaling companies
  • operated in horizontal, cross-org roles
  • comfortable with ambiguity and can create structure where none exists
  • service-oriented and obsessed with making it easy for others to do great work

Nice to have

  • written the prompts
  • built the evals
  • iterated on production LLM workflows yourself
  • talk about model behavior with specificity
  • customer mix can be enterprise, PLG, design partner, or dev community
  • built the v1 of a system and iterated it into something teams rely on

What the JD emphasized

  • personally shipped AI-enabled processes and systems
  • owned a customer feedback program end-to-end
  • built the evals
  • iterated on production LLM workflows yourself
  • built things that didn't exist yet
  • shipped v1s in weeks not quarters
  • iterated in public

Other signals

  • building AI-enabled systems
  • customer signal flows into product and research decisions
  • build the shared operating system for voice of the customer
  • AI-enabled synthesis and triage
  • partner with Engineering and Research on tooling strategy, evals, and the closed-loop data that makes synthesis quality measurably improve
  • path from product signal back into model training priorities