Senior Data Analyst
Cologne, Nordrhein-Westfalen / €60000 - €85000
€60000 - €85000
Senior Data Analyst
Keywords: Data Analytics, Analytics Consulting, Python, SQL, Tableau, QlikSense, R
Location: Cologne (Köln) Germany (On-Site/Hybrid/Remote)
Our client is a successful Cologne (Köln) based company in the retail and e-commerce industry. They are currently growing their entire analytics department and bringing on exciting new projects in digital analytics and business intelligence.
The Role and tasks/responsibilities
A senior data analyst is a professional who is responsible for analyzing and interpreting complex data sets to help organizations make informed decisions. They typically have several years of experience working with data and possess advanced skills in data management, statistics, and data visualization.
Some common responsibilities of a senior data analyst include:
- Collecting, cleaning, and organizing data from various sources.
- Conducting statistical analysis and creating predictive models to identify trends and patterns in data.
- Creating data visualizations and dashboards to communicate insights to stakeholders.
- Collaborating with other teams to identify business opportunities and areas for improvement.
- Mentoring and providing guidance to junior data analysts.
To be successful as a senior data analyst, one must have strong analytical skills, excellent communication skills, and a deep understanding of data analysis tools and techniques. They must also be able to work effectively in a team environment and be comfortable presenting their findings to senior management.
YOUR SKILLS & EXPERIENCE:
- A background in IT, mathematics, or statistics (university degree, vocational training, or comparable practical
- Fluent in German and English
- At least 4 years of Experience in Business Intelligence
- Great communication skills
- A passion for Data
- Strong analytical and conceptual thinking skills
Attractive remuneration model
Hybrid working & flexible working hours
Open feedback culture
Job bike & job ticket
Working with the latest technologies
Unforgettable team events with events abroad
Own further education program
Subsidized sports activities
Healthy snacks & fresh fruit
How to apply
Please register your interest by sending your CV to Donal Leahy via the Apply link on this page.
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