At a Glance
- Tasks: Lead AI/ML product strategy and execution to drive impactful business decisions.
- Company: Join Sony Interactive Entertainment, a leader in innovation and inclusivity.
- Benefits: Competitive salary, diverse work culture, and opportunities for professional growth.
- Other info: Be part of a dynamic team that values diversity and empowers creativity.
- Why this job: Shape the future of analytics and make a real difference in player value understanding.
- Qualifications: 12+ years in product management with strong data science and cross-functional leadership skills.
The predicted salary is between 55000 - 65000 £ per year.
We are seeking a Staff Product Manager, with a focus in Analytics, Experimentation, and CLV/LTV modelling, to lead the strategy, prioritization, and execution of AI/ML capabilities and products that drive business decision‑making. This role operates at the intersection of business, product, data science, and engineering, and is responsible for leading high‑impact problem spaces that span teams, while improving the effectiveness, consistency, and scalability of analytics product management practices. This includes technical ML solutions that help the business understand where player value is coming from and how it changes over time. The role is also responsible for creating the conditions for high‑performing Data Science and ML teams to deliver quality, production‑grade products that drive measurable business value.
As a Staff‑level individual contributor, this role goes beyond squad ownership to drive alignment across teams, establish best practices, and influence portfolio‑level decisions. You will partner closely with Integrated Analytics Partners, Data Science leadership, and Engineering to ensure that analytics investments are coordinated, scalable, and focused on the highest‑impact opportunities. This role is critical to enabling a cohesive, product‑driven analytics ecosystem, where work is not only delivered effectively within squads but also aligned and leveraged across the organization, including value modelling and player understanding use cases.
Key Responsibilities
- Analytics Product Strategy & Lifecycle Ownership: Lead discovery and definition of ambiguous, high‑impact AI/ML problem spaces that require coordination across teams, including applications that improve understanding of player value and value drivers. Drive alignment across squads to ensure coordinated execution and avoid duplication of effort. Identify opportunities to scale solutions, reuse components, and standardise approaches across analytics, experimentation, forecasting, and value modelling use cases. Lead product thinking across the end‑to‑end ML lifecycle, from opportunity framing and evaluation design through deployment, monitoring, iteration, and long‑term value realisation.
- Prioritisation & Roadmap Management: Own prioritisation across multiple squads, balancing business impact, feasibility, technical maturity, adoption potential, and resource constraints. Partner with Integrated Analytics Partners and senior Data Science and Product leaders to align work to business strategy. Help shape how analytics work is sequenced and balanced across new feature development, operationalisation, and productisation, including road‑maps for technical ML teams.
- Experimentation & Decision Frameworks: Partner with Data Science leaders to ensure statistical rigor and methodological consistency across experimentation, modelling, forecasting, and player value analysis. Drive adoption of experimentation and value‑based analytical techniques as core decision‑making tools across business functions.
- Cross‑Functional Leadership: Partner closely with other Product Management teams and cross‑functional leaders to operate as a unified team to deliver cohesive strategies and stakeholder communication. Align Analytics strategy, prioritisation, and execution through collaboration with the Integrated Analytics Partners, Data Science leadership, and Engineering leadership. Coordinate work across multiple squads to deliver integrated analytics solutions. Influence stakeholders across functions to drive alignment and execution.
- Scaling & Adoption: Drive thinking around scalability, reuse, and long‑term sustainability of analytics solutions, particularly where shared capabilities can improve understanding of player value. Partner with AI/ML Engineering to transition high‑ROI, high‑SLA capabilities into scalable, production‑grade systems. Define success criteria for analytics and ML products, including business impact, adoption, reliability, interpretability, and operational sustainability. Ensure successful adoption of AI/ML capabilities by end users. Ensure analytics and ML capabilities are embedded into business workflows and decision‑making processes so that technical outputs translate into durable operational impact. Advocate for investments in shared capabilities and platforms when beneficial.
- Stakeholder Engagement: Engage with business stakeholders to understand needs, gather feedback, communicate progress, and clarify how analytics and ML outputs inform player value understanding. Support Integrated Analytics Partners in translating strategic priorities into actionable work. Communicate outcomes and impact of analytics initiatives clearly and effectively, including how they support business understanding of value, growth, and customer lifecycle dynamics.
- Standards & Best Practices: Define and promote best practices for analytics product management, including prioritisation, experimentation, and lifecycle management. Mentor and support other Analytics Experimentation & Product Leads. Identify gaps in how work progresses through the lifecycle and drive improvements. Raise the overall quality and consistency of work across teams. Create the conditions for high‑performing Data Science and ML teams by clarifying priorities, reducing delivery friction, and strengthening cross‑functional ways of working across discovery, development, deployment, and adoption.
Qualifications and Education Requirements
- Bachelor’s degree in Business, Data Science, Computer Science, or a related field.
- 12+ years of relevant experience, including 6+ years in digital product management.
- Proven experience leading complex, cross‑functional initiatives involving data science and engineering teams.
- Proven experience partnering with high‑performing Data Science, ML, and Engineering teams to ship production‑grade products that deliver measurable business outcomes.
- Strong understanding of data science workflows, including experimentation, modelling, forecasting, value analysis, and productionisation.
- Demonstrated ability to operate in highly ambiguous environments and drive alignment across teams.
- Experience influencing prioritisation and decision‑making across multiple teams or domains.
- Experience in Agile product management methodologies and working with cross‑functional squads.
- Strong communication and stakeholder management skills, including working with senior leaders.
- Strong mentorship skills and experience elevating the capabilities of other product managers or analytics leaders.
Preferred Skills
- Proven ability to evaluate trade‑offs in scaling AI/ML solutions, balancing model sophistication with reliability, performance, interpretability, and operational complexity in production environments.
- Experience defining quality standards and success metrics for analytics and ML products, including adoption, reliability, interpretability, and business impact.
- Familiarity with analytics and data tools such as SQL, Python, or similar.
- Experience with experimentation and measurement frameworks (A/B testing, causal inference, incrementality) or related analytical approaches such as forecasting, scenario modelling, CLV/LTV modelling, and model evaluation.
- Ability to operate effectively in fast‑paced environments and manage multiple initiatives simultaneously.
- Experience identifying opportunities for reuse, platform development, and scaling analytics capabilities.
- Demonstrated ability to partner effectively with other Product Management teams and cross‑functional leaders, operating as a unified team to deliver cohesive strategies and stakeholder messaging.
Equal Opportunity Statement
Sony is an Equal Opportunity Employer. All persons will receive consideration for employment without regard to gender (including gender identity, gender expression and gender reassignment), race (including colour, nationality, ethnic or national origin), religion or belief, marital or civil partnership status, disability, age, sexual orientation, pregnancy, maternity or parental status, trade union membership or membership in any other legally protected category. We strive to create an inclusive environment, empower employees and embrace diversity. We encourage everyone to respond. Sony Interactive Entertainment is a Fair Chance employer and qualified applicants with arrest and conviction records will be considered for employment.
Data Science Product Manager in London employer: Sony Playstation
At Sony Interactive Entertainment, we pride ourselves on fostering a dynamic and inclusive work culture that empowers our employees to thrive. As a Staff Product Manager in Data Science, you will have the opportunity to lead innovative AI/ML projects that drive significant business impact while collaborating with talented cross-functional teams. Our commitment to employee growth is evident through mentorship opportunities and a focus on best practices, ensuring that you can develop your skills in a supportive environment that values diversity and creativity.
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