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Senior Business Intelligence Engineer - AI Team

Tripledot Studios
City of London
3 days ago
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Tripledot is one of the largest independent mobile games companies in the world. We are a multi-award-winning organisation, with a global 2,500+ strong team across 12 studios. Our expanded portfolio includes some of the biggest titles in mobile gaming, collectively reaching top chart positions around the world and engaging over 25 million daily active users. Tripledot’s guiding principle is that when people love what they do, what they do will be loved by others. We’re building a company we’re proud of – one filled with driven, incredibly smart and detail‑orientated people, who LOVE making games. Our ambition is to be the most successful games company in the world, and we’re just getting started.


The role is working within our AI group


The group AI team is a central function that works both with other central groups like marketing and game solutions and the game studios which are part of Tripledot.


Department: Operations
Employment Type: Permanent - Full Time
Location: London, UK
Workplace type: Hybrid
Reporting To: Galina Shubina


Role Overview

As the Senior BI Analyst within the AI team, you will lead the BI work closely with ML engineers and data scientists to unlock deep insights from vast volumes of game and player data. You will be the critical bridge between advanced AI models and game‑changing business decisions, ensuring that our AI‑driven insights directly enhance user acquisition, player engagement, retention, and monetisation. The goal of the group AI team is to make Tripledot an AI first company. Progression opportunities will be within the AI group or to studios in the group. You’ll be reporting into the VP of AI.


Key Responsibilities

  • Design and iterate on high‑impact dashboards, reports, and visualisations that communicate complex trends in simple, actionable ways.
  • Translate business needs from marketing teams, product managers, and executives into data analysis strategies.
  • Collaborate with AI teams to validate models, interpret predictions and measure real‑world business impact on KPIs.
  • Ensure the quality, reliability, and accessibility of core metrics and data pipelines used across the organisation.
  • Communicate insights and recommendations to stakeholders at all levels with clarity and impact.
  • Grow and lead the BI function within the AI team, mentoring analysts and collaborating with data scientists and engineers to shape data products and AI‑powered insights.
  • Stay at the forefront of mobile gaming trends and analytics best practices, bringing fresh thinking to the table.

Required Skills, Knowledge and Expertise

  • 6+ years of experience in business intelligence, data analytics, or product analytics, with at least 2 years in a leadership role.
  • Advanced SQL skills and knowledge of cloud data warehouses (Snowflake, BigQuery).
  • Strong proficiency in Looker (preferred) or similar BI tools (e.g. Tableau, Power BI).
  • Experience with event tracking, data pipelines, and ETL processes is a plus.
  • Strong understanding of data modelling, cohort analysis, retention curves, funnel analysis and LTV modelling.
  • Great attention to detail and the ability to ensure accuracy and consistency in documentation and reporting.
  • Familiarity with AI/ML concepts and working alongside data science / machine learning teams.
  • A business‑first mindset – ability to connect data to business strategy and communicate with both technical and non‑technical stakeholders.
  • Experience in mobile games, free‑to‑play apps or similar data‑rich digital products.
  • Comfortable working in a fast‑paced, agile and highly collaborative environment.
  • Experience with Python for data exploration is a bonus.
  • Experience with using generative AI copilots or agents in daily work is a bonus.

Working at Tripledot

  • 25 days paid holiday in addition to bank holidays.
  • Hybrid Working: Office 3 days a week – Tuesdays, Wednesdays, and a third day of your choice.
  • 20 days fully remote working: Work from anywhere in the world, in addition to the hybrid policy.
  • Daily Free Lunch: In the office you receive £12 every day to order from JustEat.
  • Regular company events and rewards: Quarterly on‑site and off‑site events that celebrate cultural events, achievements and team spirit.
  • Employee Assistance Program
  • Family Forming Support
  • Life Assurance & Group Income Cover
  • Continuous Professional Development
  • Private Medical Cover & Health Cash Plan
  • Dental Cover
  • Cycle to Work Scheme
  • Pension Plan

About Tripledot

We are Tripledot Studios, our mission is to bring the knowledge and experience of a chart‑topping mobile games company into a close‑knit, collaborative environment. Our teams drive projects together from conception to launch in an indie‑style process combining data and creativity to make games that can be enjoyed by everyone.


Apply Now


Our Hiring Process

  1. Stage 1 – Talent Acquisition Interview
  2. Stage 2 – Manager Interview
  3. Stage 3 – Director Interview
  4. Stage 4 – Final interview
  5. Stage 5 – Hired


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