At a Glance
- Tasks: Transform raw data into strategic insights that shape our product's future.
- Company: Join Wordsmith, a fast-growing legal operations platform revolutionising in-house legal teams.
- Benefits: Competitive salary, benefits, and the chance to impact the legal industry.
- Other info: Work in a dynamic office environment with a motivated team focused on innovation.
- Why this job: Be the analytical voice driving product development and user experience.
- Qualifications: 3-5 years in product analytics, strong SQL and Python skills, and a passion for user behaviour.
The predicted salary is between 60000 - 80000 £ per year.
Wordsmith is building the legal operations platform for in‑house teams, and we are growing fast. We believe in‑house legal is becoming one of the most important functions in the AI era. Every business is moving faster, but legal work is still too often scattered across inboxes, chats, documents, and disconnected systems. Wordsmith brings that work into one system. Requests come in from across the business, AI agents handle the routine, lawyers stay in control where judgment matters, and every step is captured as work happens. We are built for in‑house legal, not law firms. Our goal is to help legal teams move faster, reduce unnecessary external counsel spend, and become a function the business can run with. More than 500 companies, including Financial Times, Safelite, Trip.com, Canva, Starling, and Sage, use Wordsmith. Backed by $100M from Index Ventures, General Catalyst, Highland Europe, and others, we are building one of the defining companies in legal AI.
The Role: As our product scales across global enterprises, understanding exactly how users interact with our AI agents is critical to our success. This role exists to turn raw usage data into the strategic insights that will shape the future of our product roadmap. You will sit directly at the intersection of Product, Engineering, and Design, acting as the analytical conscience of the team. This is a high‑impact role requiring a blend of deep technical skill and product intuition. You will define what 'good' looks like for our platform and build the metrics, models, and experiments to track it. This isn't a passive reporting or basic data‑pull role. It combines advanced product analytics, experimental design, and strategic decision support. Your mission is to uncover the behavioural patterns that drive core adoption, optimise user retention, and ensure our AI agents deliver maximum value to every customer.
What You’ll Do:
- Product Analytics & Metrics Framework: Instrument Core Analytics: Design, instrument, and validate product analytics—including event tracking, funnels, retention curves, and feature‑adoption metrics. Build the Metrics Infrastructure: Build and maintain the core metrics framework and the dashboards that surface them to the broader company. Improve Data Quality: Partner with engineering to improve data instrumentation, event schemas, and tracking quality at the source. Empower Self‑Serve Access: Build intuitive self‑serve analytics tooling and data models so internal stakeholders can easily answer their own day‑to‑day questions.
- Experimentation & Deep‑Dive Analysis: Own Statistical Rigour: Design, run, and assess A/B tests and other controlled experiments; own the statistical validity of our testing culture from hypothesis definition to the final decision. Analyze User Behavior: Conduct deep‑dive behavioural analyses, cohort performance tracking, and churn driver investigations to uncover critical product friction points. Develop Predictive Models: Build predictive and segmentation models to anticipate user needs, flag churn risk, and identify expansion opportunities.
- Cross‑Functional Collaboration: Translate Ambiguity: Translate ambiguous or open‑ended product questions into well‑scoped technical analyses and clear, actionable recommendations. Advocate for the User: Act as the voice of user behaviour within the GTM and Product teams, feeding builders with empirical insight on how users actually interact with the platform.
What We’re Looking For:
- Essential: 3–5+ years of experience in a dedicated product data science or product analytics role. Strong technical toolkit: Advanced proficiency in SQL and Python/R for data manipulation, statistical analysis, and predictive modelling. Genuinely product‑minded: Deeply curious about why users behave the way they do, not just what the top‑line numbers say. Rigorous experimentation background: Hands‑on experience designing and analysing A/B tests with a firm grasp of experimental statistics. Exceptional communication skills: Able to translate complex data findings crisply into clear stories for non‑technical audiences, influencing product direction without direct authority. Thrives in ambiguity: Self‑directed operator who can navigate an unmapped environment and point themselves toward the highest‑impact questions. Bias toward action: Highly pragmatic approach to balancing scientific rigour with startup execution speed.
- Valued: Experience working in a fast‑moving B2B SaaS or enterprise technology environment. Exposure to LLM‑based products and the unique measurement challenges they bring (e.g., system latency, output quality, user trust, hallucination rates). Proven track record of analytical work that directly changed a core product design or strategic roadmap decision.
Why This Role Matters: You will be the foundational analytical voice for our product, directly influencing feature development, user experience, and roadmap prioritisation. You will have the autonomy to define our experimentation and analytics framework from the ground up—this is a high‑visibility, high‑ownership role at a company moving fast. You will work with a sharp, motivated team that operates with intensity and takes genuine ownership of outcomes.
What You Can Expect: The opportunity to solve novel measurement and evaluation problems at the absolute frontier of enterprise generative AI application design. The chance to collaborate deeply with product, engineering, and design in a data‑informed environment where your insights directly drive build cycles. Competitive compensation, benefits, and the opportunity to make a genuine impact on the legal industry.
How We Work: We’re an in‑office team. We work together because it helps us collaborate closely across product, engineering, and GTM teams. You should expect to be in the office as your default. This is a high ownership role. You’ll be trusted to run projects, work directly with core product metrics, and drive outcomes without heavy oversight.
Data Scientist (Product Analytics) employer: Wordsmith AI
At Wordsmith, we pride ourselves on being an exceptional employer that fosters a collaborative and innovative work culture. Our Edinburgh and London offices offer a dynamic environment where Data Scientists can thrive, with ample opportunities for professional growth and the chance to make a significant impact in the rapidly evolving field of legal AI. We provide competitive compensation and benefits, empowering our team members to take ownership of their projects while working alongside passionate colleagues dedicated to transforming the legal industry.
StudySmarter Expert Advice🤫
We think this is how you could land Data Scientist (Product Analytics)
✨Tip Number 1
Network like a pro! Reach out to people in your field on LinkedIn or at industry events. A friendly chat can lead to opportunities that aren’t even advertised yet.
✨Tip Number 2
Show off your skills! Create a portfolio or a GitHub repository showcasing your data projects. This gives potential employers a taste of what you can do and sets you apart from the crowd.
✨Tip Number 3
Prepare for interviews by practising common data science questions and case studies. We recommend doing mock interviews with friends or using online platforms to get comfortable with the format.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, we love seeing candidates who are proactive about their job search!
We think you need these skills to ace Data Scientist (Product Analytics)
Some tips for your application 🫡
Show Your Passion for Product Analytics:When writing your application, let us see your enthusiasm for product analytics shine through! Share specific examples of how you've used data to drive product decisions and improve user experiences. We love seeing candidates who are genuinely curious about user behaviour.
Be Clear and Concise:We appreciate clarity in communication, especially when it comes to complex data findings. Make sure your application is easy to read and gets straight to the point. Use bullet points if necessary to highlight your key achievements and skills.
Tailor Your Application:Don’t just send a generic application! Tailor your CV and cover letter to reflect the specific requirements of the Data Scientist role at Wordsmith. Highlight your experience with SQL, Python/R, and any relevant projects that showcase your analytical skills.
Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows us you’re proactive and keen to join our team!
How to prepare for a job interview at Wordsmith AI
✨Know Your Data Tools
Make sure you brush up on your SQL and Python/R skills before the interview. Be ready to discuss how you've used these tools in past roles, especially in product analytics. Having specific examples of how you've manipulated data or built predictive models will show that you're not just familiar with the tools, but that you can use them effectively.
✨Understand User Behaviour
Since this role is all about understanding user interactions with AI agents, come prepared with insights into user behaviour analysis. Think about how you've previously identified friction points or improved user retention. Being able to articulate your thought process and findings will demonstrate your product-minded approach.
✨Experimentation Experience
Be ready to talk about your experience with A/B testing and experimental design. Prepare to explain a specific experiment you've run, including your hypothesis, methodology, and the impact it had on product decisions. This will highlight your statistical rigour and ability to drive results through experimentation.
✨Communicate Clearly
Practice translating complex data findings into simple, actionable insights. You might be asked to explain a technical concept to a non-technical audience during the interview. Show that you can communicate effectively across teams, as this role requires collaboration with product, engineering, and design.