Data Scientist

Guildford
2 months ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist - London

Data Scientist | London | AI-Powered SaaS Company

Data Scientist (12-Month Contract)
Location: Guildford / Hybrid
About the Role
We are seeking a skilled Data Scientist to join our client’s team in Guildford for a 12-month contract. This role is ideal for someone with strong expertise in data analysis, modelling, and SAP tools, who thrives in a collaborative environment and is passionate about delivering actionable insights to drive business decisions.
You will play a key role in transforming data into meaningful reports and dashboards, ensuring data integrity, and supporting the transition of Data Warehouse reports into SAP Analytics Cloud (SAC).
Key Responsibilities
Collaborate with stakeholders to design and deliver impactful reports and dashboards for business intelligence.
Work closely with the database administrator to ensure clean, accessible, and reliable data.
Develop and maintain a single source of truth for all data-driven decisions.
Transfer and optimize existing Data Warehouse reports into SAP Analytics Cloud (SAC).
Design, develop, and maintain data models, ETL processes, and visualizations.
Integrate data from multiple sources, ensuring data quality and integrity.
Test, troubleshoot, and optimize reports and dashboards for performance and usability.
Document data models, report specifications, and development processes.
Collaborate with cross-functional teams to gather requirements and deliver successful outcomes.
Stay updated on the latest trends in data warehousing and business intelligence.
Experience Required
Technical Expertise
Strong experience in data analysis, modelling, and ETL processes.
Proficiency in SAP Analytics Cloud (SAC) and SAP DataSphere.
Knowledge of data warehousing and business intelligence tools.
Industry Knowledge
Experience working with MRP (Material Requirements Planning) and ERP (Enterprise Resource Planning) data.
Familiarity with handling protected and sensitive data (e.g., ITAR regulations).
Soft Skills
Excellent stakeholder management and prioritization skills.
Strong communication and collaboration abilities.
A proactive approach to problem-solving and continuous learning.
Why Apply?
This is a fantastic opportunity to work on impactful projects, leverage cutting-edge tools like SAP Analytics Cloud, and contribute to data-driven decision-making in a dynamic environment

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