AI Product Manager

The role

Dyad is seeking an AI Product Manager to lead product work on our AI features. This role fits someone who can translate ambiguous clinical and commercial problems into well-scoped AI product work, partner credibly with our AI Platform team on the technology itself, and ensure AI features ship with solid product discipline.

AI work at Dyad proceeds in a discovery-led and often exploratory way, at a different cadence and resolution than the rest of product engineering. The role is designed with that reality in mind. It prioritises framing, evaluation, and delivery discipline in equal measure; evaluation is a first-class product activity, not a QA hand-off.

Reporting to the Chief Clinical Product Officer, you will operate as part of the product team and in close collaboration with our BetterLetter product manager, sharing accountability for the overall product experience.

This role is offered on a hybrid basis from our London office.


Core responsibilities

Product management

  • Frame AI problems in terms of user and clinical value, not just architecture or capability.
  • Define and prioritise the AI Platform roadmap in partnership with the CCPO and other stakeholders.
  • Ensure every AI feature has a clear intended use, acceptance criteria, and evaluation plan before it enters delivery.
  • Work with the BetterLetter PM and the Head of Regulatory so that clinical safety is a first-class part of the development process and medical-device requirements are adhered to.

Discovery, framing, and evaluation

  • Translate ambiguous clinical information problems into well-posed AI tasks.
  • Define what “good” looks like in terms the team can measure: precision and recall, hallucination behaviour, coverage, clinician trust, and practice coding preferences and standards for BetterLetter.
  • Commission and interpret evaluation work with the AI Platform team, and feed the results into the Commercial team.
  • Decide when an AI feature is ready to ship, expand, or pull back.

Delivery and customer engagement

  • Break AI features into work that BetterLetter and AI Platform can jointly commit to, coordinating sequencing with the VP Engineering and BetterLetter PM so AI features integrate without special handling.
  • Ensure rollout, monitoring, and fallback behaviour are defined as part of each feature, not bolted on afterwards.
  • Run targeted discovery on AI workflows and model outputs with clinical and administrative users where AI-specific validation requires it.
  • Observe AI outputs in real customer contexts and feed error classes back to the AI Platform team.


Requirements

Experience and background

A track record of managing and shipping AI or ML-powered features in a commercial setting is a must, with at least 3 years of product experience. We are seeking candidates who have shipped features at a scale where the AI aspects were non-trivial: evaluation, rollout, regression, and incident response are all important parts of delivery. You should also be comfortable translating ambiguous clinical or commercial problems into well-posed, measurable AI tasks. Experience in a regulated or high-assurance domain is highly desirable.

You might come from a commercial AI product background, or you might be an ML engineer or applied researcher who has moved into product with demonstrated product judgement and the ability to work within a product process. What we are not looking for is a generalist PM who has only consumed AI products (e.g. “used Claude extensively”); this role must be a credible product partner to AI practitioners from day one. Healthcare experience is a plus but not required.

In product terms, a good candidate for this role will express good product judgement through shipped, measurable outcomes and be comfortable with the discovery-led cadence of AI work without losing that shipping discipline. On a personal level, a good fit for this role will include a comfort with collaborative work with peer product managers and a focus on understanding and communicating the risks and trade-offs associated with AI features clearly along with mitigation.

Related technical knowledge includes an understanding of how systems based on neurosymbolic approaches, including knowledge graphs, as well as ML and LLM-based systems, are built, evaluated, and deployed in production; and the trade-offs between statistical, symbolic, and generative approaches. Evaluation design, grounding, and guardrail patterns: gold sets, error taxonomies, precision and recall, regression testing, hallucination behaviour, schema-constrained generation, retrieval, and knowledge-graph validation are all concepts that are benficial for a candidate for this role to be familiar with, as is experience of the cost, latency, and reliability trade-offs for AI systems at customer scale.

Our hiring process

  1. Introductory screening interview (30 minutes)
  2. Interviews with senior leadership and cross-functional partners
  3. Final interview and offer

Benefits

  • Competitive salary
  • Company pension
  • 25 days of paid annual leave (pro-rata)
  • Flexible hybrid working environment
  • Employee Assistance Programme
  • Modern, dog-friendly office near Chancery Lane with free drinks

Dyad's mission is to improve the delivery and efficiency of healthcare.

We are building a platform to model and manage the flow of information within healthcare organisations, improving outcomes for patients, payers, and healthcare providers. We believe data handling in current healthcare systems is needlessly complex and disconnected, leading to isolated and inefficient decision making. To showcase how this technology can advance the delivery of healthcare and improve lives, we build and deploy products for healthcare providers and payers into the UK and US markets.

Dyad is an energetic, health-tech startup, currently around forty employees. Our team is growing as we explore new markets and opportunities. We are passionate about technology and its applications in worthwhile ventures. New joiners will have a significant impact on the direction of the company, as well as our culture.

Our products

Dyad's Platform: Dyad's products are founded upon our Semantic AI platform, which enables payers and providers to access cutting-edge AI capabilities for their own use cases and applications. Our partners either use the platform APIs directly or work with us to develop applications for their use cases. For more information, please see our Platform page.

Primary care operations: Dyad develops a suite of products for healthcare operations, including:

  • BetterLetter, our AI tool helping practices decrease their admin burden in processing clinical letters. We use this to reduce staff time spent identifying codes to be applied to the record as well as suggesting follow-up tasks and workflow optimisations. BetterLetter helps providers save time, save cost, improve performance under audit and build staffing resilience.

Product

London, United Kingdom

Partager sur :

Conditions d’utilisationConfidentialitéCookiesAlimenté par Rippling