Senior Product Analyst - AI Chat

Cleo AI
London
8 months ago
Applications closed

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As a Senior Product Analyst in our chat pillar you’ll enable your team to make better decisions, faster. Working as part of a cross-functional squad alongside Product Managers, Designers, and Engineers, you’ll apply your expertise to drive the future of what we build at Cleo. You will leverage rich user data and sophisticated analytical techniques to see your insights move key metrics and improve the quality of Cleo’s conversations. 

You’ll also sit within the wider data function here at Cleo; a hotshot chapter of 50 Data Scientists, Product Analysts, and Analytic Engineers with significant industry experience who are at the heart of everything we do at Cleo. 

We are looking for a self-starter, focused on results, with a demonstrated background in using analytics to drive the understanding, growth, and success of a product.

Conduct deep-dive analysis of our chat data to understand user behaviour, and help us understand if our AI chat is helping users to meet their needs effectively Influence the roadmap of your team through presentation of data-based recommendations Define how we quantitatively evaluate success, setting KPIs, designing tracking to measure what really matters, and help to establish robust measures of ‘chat quality’ Conduct regular A/B tests and causal analyses to determine the impact of product changes on success metrics Work with Analytics Engineering to prioritise data modelling needs in your area as well as directly contributing to our transformed data codebase

About you

3+ years of experience doing quantitative analysis within a digital product environment A strong ability to communicate findings to non-technical stakeholders in a concise and engaging manner Experience conducting large scale A/B experiments and interpreting results to drive product and business decisions Ability to define new product metrics from complex, unstructured data Knowledge of statistics (e.g. hypothesis testing, regressions) Excellent SQL skills Fluency in Python and its application in data analysis is a nice-to-have, but not essential Experience with data visualisation tools such as Tableau, Looker, or Periscope

What do you get for all your hard work?

A competitive compensation package (base + equity). This is an AX3 position as described in our public skills framework - The band for this role is £70k-£90k Work at afast-growing UK startup, backed by top VC firms - Sofina, Balderton, EQT Ventures - that still has a sense of its valuesA clear progression plan.We want you to keep growing. You will always have a clear development plan, built using our skills framework, and a people-manager who works hard to help you on that journey.Hybrid-first:Join our hybrid-first team, where we blend the best of both remote and in-office work. We expect our team members to be in our London office 1-2 times a week. On Thursdays, we buy you lunch but you can come in whichever days work best!And the rest!Performance reviews every 8 months, with generous pay increases and equity top-ups for high performers Private Medical Insurance, dental cover, life assurance 25 days annual leave + 1 additional day for every year you spend at Cleo (+ public holidays) 6% employer-matched pension 1 month paid sabbatical after 4 years at Cleo Enhanced parental leave Access to Learnerbly, Reforge, and other L&D portals Online mental health support via Spill We'll pay for your OpenAI subscription Regular socials and activities, online and in-person And more! Check out our full benefits package here

UK App access:The Cleo app is no longer downloadable in the UK. Why? 99% of our users are based in the US – where financial health is often overlooked. We’ve shifted our focus to where we can provide the most value and make the greatest impact for users. We’ll be returning to support UK users in the future.

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