Data Analyst Lead

Randstad (Schweiz) AG
London
3 days ago
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About Us Sling Money allows anyone in 140+ countriesto send money to each other instantly, with just a couple of taps.You don’t need to know anything about the recipient’s bank account,and you don’t have to worry about foreign exchange. We believe allof this should be possible at low or no cost and at the moment,Sling Money is completely free. We’re building the world’s firstbillion-user financial app, and we’d love your help. About the RoleAs Sling Money’s first Data Scientist, you’ll play a foundationalrole in shaping the way we understand our users, our product, andour growth. This is a rare opportunity to build the data functionfrom the ground up at a fast-growing fintech. You’ll work acrossproduct, marketing, and business teams to uncover insights, designexperiments, and power the decision-making that will drive us toour next stage of growth. You’ll combine deep technical expertisewith strong storytelling to connect the dots between our data andour goals. From analyzing user behavior and improving the customerjourney, to building the systems that measure and forecast growth,you’ll own the data defining success. This role has high ownershipand impact. You’ll work closely with engineers, designers,marketers, and leadership to build a culture of data-drivendecision-making at Sling Money. Key Responsibilities - ShapeProduct Development: Use data to help prioritize what we build,identify opportunities to improve the user experience, and measurethe impact of new features. - Accelerate Growth: Partner withmarketing and product teams to design and evaluate experiments,optimize acquisition channels, and identify the levers that driveorganic growth, engagement, and retention. - Foster a Data Culture:Help embed analytics into every part of the organization,empowering teams to make smarter decisions with data. - Build &Scale Systems: Build and operate our data pipeline from Postgres toBigQuery. Define our core data models and build upon them tounderstand our product and user behavior as we scale. - Solve HardProblems: Analyze complex data sets using statistical methods,quantitative analysis to answer our biggest business and productquestions. - Tell Data-Driven Stories: Translate your insights intoclear, actionable recommendations that influence product strategy,marketing investments, and business decisions. About You -Experience: 8+ years of experience in data science, analytics, or arelated field, ideally in a fast-paced startup or technologycompany. - Technical Skills: Proficiency in SQL and Python. Strongstatistical and experimental design expertise. Experience withtools like BigQuery, Fivetran, and DBT is desired. - Collaboration:You thrive in cross-functional teams, working with engineers,marketers, designers, and leadership to drive impact together. -Product & Marketing Mindset: You can connect the dots betweendata and product strategy, and you have experience analyzing userbehavior, growth funnels, and marketing performance. - Curiosity& Creativity: You’re excited to tackle ambiguous problems,explore new hypotheses, and find answers in the data. -Communication: You don’t just analyze data—you know how to tellcompelling stories and influence decisions with your insights. -Growth Mentality: You’re focused on learning and iterating everyday. You get things wrong, but you never stop improving. Nice tohave - Experience in consumer fintech, payments, or social apps. -Experience at a Series A startup. - Ability to work from our Londonoffice two days a week. Why join us? - High Impact: You’ll shapethe foundation of Sling Money’s data function and influence thetrajectory of a global fintech. - Big Opportunity: We’re solving amassive, global problem and we’re just getting started. -Collaborative Team: Work with ambitious, curious, and kindteammates who want to change how the world moves money. - GrowthPotential: As one of our first data hires, there’s huge scope togrow your role as we scale. Compensation, Perks & Benefits -Competitive salary and equity package. - Free lunch in the officeand flexible working arrangements. - Professional developmentopportunities, team offsites, and events. - The chance to be partof a fast-growing, mission-driven startup.#J-18808-Ljbffr

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