Data Analyst (Cars Data Science & Analytics) - Manchester, UK

Randstad Technologies Recruitment
Manchester
3 weeks ago
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Role: Data Analyst (Cars Data Science & Analytics)
Type: Contract (6 Months)
Location: Manchester, UK
Working Model: Hybrid (2 days per week in office)

Payrate:
£30 - £42 per Hour on PAYE
£37 - £47 per Hour on RUPAYE
£46 - £56 per Hour INSIDE IR35 Umbrella

The Mission:
We are looking for a data-driven storyteller to help us revolutionize the "Deep Link" experience for our car booking customers. When a user clicks a paid search ad, they should land exactly where they need to be. You will join our Cars Data Science & Analytics team to bridge the gap between user behavior and engineering execution, turning app data into a seamless booking journey.

What You'll Do:

Optimize the Journey: Analyze how customers move from search ads into our app, identifying friction points and growth opportunities.
Partner with Product: Work alongside Engineers and Product Managers to define OKRs and track the success of new features.
Data Storytelling: Don't just pull the data-explain it. You'll translate complex Hadoop/SQL datasets into actionable insights for non-technical stakeholders.
Innovate: Use Python, R, and Tableau to build intuitive visualizations and experiment with new ways to measure customer value.

The Ideal Profile:

The Tech: Strong SQL skills are a must. Experience with Python or R for statistical analysis and Tableau for visualization is highly preferred.
The Experience: 3+ years in a quantitative role (or a Master's degree).
The Niche: Experience in App Analytics or CRO (Conversion Rate Optimization) is a massive advantage. You should understand deep-linking and attribution.
The Mindset: You are curious, independent, and love digging into disparate data sources to find the "why" behind the "what."

This is an urgent vacancy with a deadline where the hiring manager is shortlisting for an interview immediately. Please apply with a copy of your CV or send it praveen. sukkala2 @ randstaddigital. Com

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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