At a Glance
- Tasks: Lead the vision for AI models and ensure their quality and commercial impact.
- Company: Join a forward-thinking tech company focused on AI innovation.
- Benefits: Enjoy flexible working, private medical insurance, and a supportive wellbeing programme.
- Other info: Diverse and inclusive workplace with excellent career growth opportunities.
- Why this job: Shape the future of AI while making a real difference in the industry.
- Qualifications: Experience with predictive models and a passion for data storytelling.
The predicted salary is between 60000 - 80000 £ per year.
This role sits within the Product & Tech organisation at Intent and partners closely with Data Science, Engineering, Client Services (to design and maintain quality standards) and other Product Managers. IntentAI is the inference layer that turns raw behavioural and device signals into the brands, topics, moments and, eventually, forward‑looking predictions (move, buy, churn) that make IntentOne valuable. It includes an Intent Semantic Layer that selects the right context for each goal and agent at scale, and is our core technical moat. Today that moat is real but under‑explained. This role owns that gap: setting the model north star, raising the bar on model quality and measurement, and making the intelligence legible to buyers, sellers, and the team.
Role Summary
- Owning the product roadmap and north star for IntentAI: what our models predict, how good they need to be, and how that quality compounds into commercial value.
- Harmonising the Intent Semantic Layer across device and cloud signals, so behaviour captured on the device and in the cloud resolves into one consistent, trustworthy view of human context.
- Setting and operationalising the quality bar for models and enrichments (coverage, precision, recall, lift, freshness, drift, and cost at scale) so model performance is measured, visible, and improving.
- This role will be heavily data‑ and metric‑driven.
- Owning the product story of the semantic layer: explaining clearly why it is differentiated, how it makes sense of human context against a goal, and why it is hard to replicate.
- Translating model and signal capability into outputs customers trust, with explainability and confidence built in rather than bolted on.
- Partnering with Data Science and Engineering to prioritise the model roadmap, close evaluation and monitoring gaps, and turn research into shipped, reliable product.
Core Responsibilities
- Own the model north star and vision.
- Define what “good” looks like across the model portfolio (brand and topic affinity, intent segments, moments of need, propensity and churn), with a clear understanding of how it ladders to customer ROI.
- Maintain a prioritised model roadmap grounded in commercial impact, not research novelty, and make the hard calls on where signal and model depth create real advantage.
- Articulate a durable vision for how the intelligence layer compounds, with better signals and scale driving better models at lower unit cost.
- Set the evaluation standard for inference quality, coverage, cost, and scalability, measured by lift, precision, recall, and proxy outcomes against ground truth and in‑market results.
- Work with QA to close known gaps in evaluation, drift detection, and performance monitoring so quality is continuously observed, not discovered in incidents.
- Define maturity indicators, confidence thresholds, and suppression rules so we never ship outputs that are misleading or unexplained.
- Own clear, layered explanations of the semantic layer for technical and non‑technical audiences, covering how it harmonises device and cloud signals, selects relevant context per goal, and keeps the platform accurate and cost‑efficient at billions of events.
- Ensure outputs are grounded in model evidence, with explainable scoring and clear confidence, so enterprise buyers trust how they are generated and how their own rules are handled, removing the “black box” objection.
- Translate model needs into clear product requirements and reusable platform capability with Data Science and Engineering, and own the trade‑offs across model richness, latency, cost, and time‑to‑value.
What you’ll bring
- Deep fluency across the modelling stack, from supervised learning, propensity and uplift, to representation and embedding models, alongside modern LLM‑based systems.
- You understand how predictive models are trained, evaluated, and shipped, not just prompted.
- A metrics‑first instinct: fluent in precision, recall, lift, AUC, drift, and the economics of running models at scale.
- You explain complex intelligence simply and hold a high bar without stalling delivery.
- An exceptional flair for data translation and storytelling. You can turn complex models, signals, and analytical outputs into clear, compelling narratives that make the intelligence intuitive, credible, and actionable for technical and non‑technical audiences alike.
Diversity & Inclusion
Intent HQ is an equal opportunities employer with an ethos of commitment to promoting and practicing diversity, equality and inclusion at work. At IHQ, different perspectives, ideas and experiences are valued and respected, with fair and equal opportunities provided for all.
Benefits
- Private Medical Insurance (subject to eligibility)
- Income Protection with Employee Assistance Programme (EAP)
- Life Assurance
- Higher than statutory maternity & paternity benefits
- Pension scheme
- Flexible working
- 26 days holiday (increasing with service)
- Tech pack
- Training opportunities
- Wellbeing programme
- Oliva mental health platform & counselling
- Cycle to Work scheme
- Free access to onsite gym (including towel‑served changing rooms and showers)
- Free breakfast daily & healthy weekly lunch (when in office)
AI Product Manager London · employer: Intent HQ
Intent is an exceptional employer that fosters a collaborative and innovative work culture, where employees are empowered to drive meaningful change in AI product development. Located in London, the company offers a comprehensive benefits package including flexible working, generous holiday allowances, and a strong focus on employee wellbeing and growth opportunities. With a commitment to diversity and inclusion, Intent values unique perspectives and provides a supportive environment for all team members to thrive.
StudySmarter Expert Advice🤫
We think this is how you could land AI Product Manager London ·
✨Join Product Management Meetups
Get involved in local product management meetups or workshops. These events are perfect for meeting industry folks, sharing ideas, and staying updated on trends. Plus, you never know who might be hiring—it's a fantastic way to make connections that could lead to a job at places like Intent HQ!
✨Show Off Your Product Sense
Create case studies or mini-projects showcasing your product management skills, and share them on platforms like Medium or LinkedIn. This not only puts your skills on display but also boosts your visibility in the product community. Imagine how impressed the hiring team at Intent HQ would be by your initiative!
✨Utilise Online Communities
Dive into online product management communities like Product Coalition or Mind the Product. Engage in discussions, ask questions, and share your insights. These platforms are goldmines for networking and finding hidden job opportunities—many companies often scout talent from within these circles.
✨Leverage Your University Network
If you’ve recently graduated or are still in uni, tap into your alumni network for connections in product management. Many universities have their own job boards and affinity resources to help graduates land roles. Don't forget to keep an eye out for job openings at Intent HQ through your school's career services!
We think you need these skills to ace AI Product Manager London ·
Some tips for your application 🫡
Show Off Your Product Passion:When applying for a product management role like AI Product Manager London ·, let your passion for developing products shine through in your cover letter. Share specific examples of products you've managed, how you solved user needs, and any successful outcomes you've achieved. This is your chance to showcase your understanding of the product lifecycle!
Highlight Your Cross-Functional Skills:Product management isn't just about understanding the product; it’s about collaborating with different teams! Make sure to emphasise your experience working with developers, designers, and marketers. Use your CV to showcase your ability to bridge gaps between these areas, and include relevant experiences that demonstrate your communication and leadership skills!
Include Your Metrics and Achievements:In a full-time product management application, data speaks volumes! Quantify your achievements wherever possible. Did you increase user retention by a certain percentage? Launch a product ahead of schedule? Include these metrics in your CV to paint a picture of your impact and effectiveness in previous roles.
Tailor Your CV to the Role:Make sure your CV is tailored for the AI Product Manager London · position at Intent HQ. Use keywords from the job description and ensure your relevant experiences are front and centre. Highlight any certifications or relevant training you’ve completed that will make you stand out as a strong candidate for the role. And remember, we’re excited to see your application on our website!
How to prepare for a job interview at Intent HQ
✨Understand the Product Life Cycle
As a product management candidate, we need to get our head around the complete product life cycle. Be prepared to discuss real-world examples of how you’ve managed product development from ideation to launch. Bring specific insights on tools like JIRA or Trello that can help streamline these processes.
✨Showcase Your Cross-Functional Skills
Product management is all about collaboration. We should be ready to highlight how we’ve worked across teams—think marketing, engineering, and design. Prepare to discuss scenarios where you had to mediate differing opinions and how you got everyone on board with a shared vision.
✨Prepare for Case Studies
In a full-time role, we can expect to encounter case study questions during our interviews. Practise solving hypothetical product problems on the spot, such as prioritising features for a new app or improving user engagement metrics. This will show our analytical thinking and decision-making skills.
✨Know Your Metrics
Let’s face it, numbers are our best friends in product management. We should prepare to discuss key performance indicators (KPIs) and how we've used analytics to inform product decisions. Dive into examples where data has driven our strategy for improvements or justified product changes.