Senior Data Product Manager - Experimentation
As a Senior Data Product Manager – Experimentation, you will own the vision, strategy, and roadmap of our internal experimentation platform. Your primary focus will be defining “ what ” we build and “ why ” —ensuring our teams have robust, intuitive tools for A/B testing, audience segmentation, feature flag management, and data-driven decision-making. Through close collaboration with Engineering, Data Science, Marketing, and Product teams, you will champion a hypothesis-driven culture, transforming how we learn, iterate, and innovate at scale. Your work will empower every team at SuperBet to rapidly experiment, reduce time-to-insight, and drive measurable business impact.
- Develop a clear, long-term product vision for the Experimentation Platform, aligning with the broader data-driven objectives.
- Stay attuned to industry best practices, academic research, and emerging technologies to keep our platform at the cutting edge.
- Translate business goals and user requirements into well-defined problem statements, expected business impact, and success metrics.
- Advocate for the importance of hypothesis-driven development, evangelizing experimentation methodologies across the organization.
- Build and maintain a prioritized product roadmap for experimentation, balancing quick wins with strategic, long-term initiatives.
- Collaborate with cross-functional stakeholders (Product, Marketing, Data Science, Engineering) to gather feedback, refine requirements, and drive alignment.
- Partner closely with the Senior Engineering Manager to transform high-level product objectives into a scalable, reliable, and efficient technical platform.
- Collaborate with Data Scientists and Analysts to define statistical engines, experiment design templates, and consistent KPI frameworks.
- Work with Marketing and Product teams to ensure the experimentation platform meets diverse needs—ranging from audience segmentation to feature flagging and surveys.
- Clearly communicate product requirements, user stories, and acceptance criteria to engineering teams.
- Manage the development cycle in an Agile environment, providing clarity on priorities and monitoring progress.
- Ensure each initiative launches with a defined Problem to Solve, Business Impact, and Success Measurement, tracking progress to inform continuous improvement.
- Define robust product success metrics (adoption rates, number of experiments run, time-to-insight, etc.) and implement tracking mechanisms.
- Analyze usage data and experiment results to validate assumptions, identify gaps, and inform product enhancements.
- Champion experimentation quality measurements—ensuring teams follow best practices and extract meaningful insights.
- Work with user communities to collect feedback, refine feature requirements, and iterate on platform improvements.
- Serve as the in-house expert on experimentation methodologies, statistical significance, confidence intervals, and advanced testing frameworks.
- Lead initiatives like an Experimentation Embassy, workshops, and knowledge-sharing sessions to promote best practices across the company.
- Own the narrative around experimentation—communicating platform updates, success stories, and impact to both technical and non-technical audiences.
- Continuously evangelize the power of a hypothesis-driven, data-informed approach within the organisation, aligning executives and teams on key objectives.
- Bachelor’s or Master’s degree in Business, Computer Science, Data Science, Statistics, or a related field (or equivalent practical experience).
- 6–8+ years of product management experience, ideally with a focus on data products, analytics, or experimentation platforms.
- Strong familiarity with A/B testing, multivariate testing, feature flag management, and audience segmentation.
- Understanding of statistical methods (confidence intervals, p-values, hypothesis testing) and ability to collaborate with data scientists on experiment designs.
- Exposure to data infrastructure, ETL pipelines, BI tools, and relevant technologies.
- Proven track record in leading cross-functional teams (Engineering, Data Science, UX) using Agile methodologies.
- Ability to convert complex data or statistical concepts into clear business value and actionable product requirements.
- Skilled in developing roadmaps, facilitating stakeholder alignment, and prioritizing high-impact features.
- Hands-on experience building experimentation platforms, customer segmentation systems, or ML evaluation frameworks.
- Previous work in entertainment, online gaming, or sports betting industries, especially around experimentation and user experience improvements.
- Previous experience driving large-scale data product initiatives, from ideation to launch.




