Data Scientist

Michael Page
Weybridge
6 months ago
Create job alert
Competitive Salary PF&Gratuity

About Our Client

The client is a global Fortune 500 company with a presence in over 40 countries and territories. Known for its strong international footprint and commitment to excellence, the organization is a recognized leader in its industry, driving innovation and growth across diverse markets.

Job Description

Collaborate with cross-functional teams, including Marketing, Merchandising, Technology, and Business Units

Lead and deliver advanced analytics projects that support business strategy and decision-making

Understand business requirements and translate them into analytical approaches

Perform data cleaning, transformation, and exploratory data analysis (EDA)

Build statistical and machine learning models tailored to business objectives

Present insights and deliverables in a clear, actionable, and visually polished formatKey Skills & Tools

Statistical & Analytical Tools: Python, R, KNIME

Data Analysis & Modeling: Data cleaning, EDA, regression, classification, clustering, predictive modeling

Data Handling: SQL, MySQL, Microsoft SQL Server

Big Data & Cloud Platforms: AWS, Azure, GCP, Hadoop, Spark

Business Intelligence & Visualization: Power BI, Tableau, Alteryx

Database Systems: Relational (MySQL, SQL Server), Non-relational (MongoDB, DynamoDB)

Productivity Tools: Microsoft Excel, Microsoft Office Suite

The Successful Applicant

Strong communication skills and the ability to collaborate effectively across departments and global teams

Hands-on experience with data science tools and statistical modeling techniques

Experience managing and executing full-cycle analytics projects from scoping to delivery

A problem-solving mindset with a strong foundation in data-driven decision-making

Ability to translate complex business problems into appropriate analytical methods

Comfort in presenting complex insights clearly to both technical and non-technical audiences

Highly organized and detail-oriented, with a track record of delivering high-quality, actionable outputs

A proactive approach to driving business impact through data

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