Product Analyst

The Stepstone Group
London
2 months ago
Applications closed

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Job Description

The job at a glance:

Join our team and you’ll be responsible for working with stakeholders across E-commerce, Growth, and Product teams to define and solve business problems using data. Your work will drive insights into customer behavior, conversion optimization, and revenue growth, leveraging advanced analytics to improve both the product experience and e-commerce performance. Solutions could take any form, from customer journey analysis to pricing impact evaluations and A/B testing.

By joining our team, you will be playing a vital role as together we reimagine the labor market to make it work for everybody.

Your responsibilities:

Partner and consult E-commerce, Growth, and Product teams on defining, monitoring, and improving key performance indicators (KPIs) Defining behavioral tracking requirements and measurement plans in order to capture the right user data. Source the necessary data for building dashboards and performance analysis (data pipes building). Visualize and explore performance and KPIs using Adobe Analytics, PowerBI, Python (or other data visualization tools). Perform deep dive analysis into user journeys, funnel drop-offs, pricing impact, and promotional effectiveness, identifying opportunities to optimize engagement and revenue. Support the e-com team in evaluating campaign performance across different acquisition channels.

Qualifications

Your skills and Qualifications:

Intermediate level of SQL, Python, and BI Tools (e.g. Looker, PowerBI, Tableau) with expertise in Adobe Analytics or Google Analytics or other e-commerce tracking tools. Ability to set up behavioral tracking measurement plans (e.g. designing events schemas). Strong analytical skills, including A/B Testing, e-commerce funnel analysis, customer segmentation, revenue modeling, foundational Machine Learning concepts, Data Visualization, and Storytelling. Good communication and stakeholder management skills, experience working in cross functional / embedded analytics teams. Strong strategic and business thinking, with the ability to anticipate key e-commerce and product questions that drive revenue growth, user engagement.

Additional Information

Our commitment:

Equal opportunities are important to us. We believe that diversity and inclusion at The Stepstone Group are critical to our success as a global company, so we want to recruit, develop, and keep the best talent. We encourage applications from everyone, regardless of background, gender identity, sexual orientation, disability status, ethnicity, belief, age, family or parental status, and any other characteristic. 

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