Job Closed
This listing is no longer active.
We help people develop a healthy relationship with digital media.
Mandatory internship, Statistics, Data Analytics, Data Science
Location
Germany
Posted
29 days ago
Salary
€400 / month
Seniority
Entry Level
Job Description
Mandatory internship, Statistics, Data Analytics, Data Science
detoxi Health GmbH
• Application of theoretical methodological knowledge in a practice-oriented environment. • Analysis of objective smartphone usage data and subjective data from a large sample. • Descriptive and analytical examination of the dataset.
Job Requirements
- Enrolled at a German university in Statistics, Data Science, Psychology, or a comparable program.
- Solid methodological knowledge for application in a real-world setting.
- Ability to work independently and collaboratively in a team.
- Fluent in German or English.
Benefits
- Insight into the way a startup operates and the opportunity to apply your theoretical knowledge to real data.
- Open team with a constructive error culture.
- Family-friendly with flexible solutions for personal life situations.
- Supervision by a Diplom-trained psychologist.
- Financial internship allowance.
Related Guides
Related Categories
Related Job Pages
More Data Analyst Jobs
Data Analyst, ACO Operations – Part Time, Contract
Pearl HealthDemocratizing access to value in healthcare
• Organize and analyze data across a variety of formats to support Pearl’s provider submission process, inclusive of ACO Operations team workflows. • Build and maintain structured datasets and tracking tools to support team reporting, leveraging AI tools. • Collaborate cross-functionally to address provider submission and workflow gaps. • Adapt quickly to shifting priorities, bringing exceptional attention to detail and a proactive, solutions-oriented approach to every task.
• Own client-facing analytics: build, maintain, and continuously improve dashboards and reports. • Partner closely with Customer Success to understand client needs and deliver insights. • Design and build production-quality LookML models, explores, and dashboards in Looker. • Write complex SQL queries across Redshift, Aurora/MySQL, and Athena. • Develop Python scripts and notebooks for data wrangling and automated reporting. • Leverage AI tools in day-to-day analytics work. • Identify and champion AI-powered use cases within the analytics workflow. • Proactively explore data to surface trends, anomalies, and present findings.
• Partner with Product Managers to define KPIs, measure success, and support continuous discovery practices • Analyze product usage, customer behavior, and funnel performance to identify trends and opportunities • Support experimentation and A/B testing efforts by measuring results and translating findings into actionable recommendations • Build and maintain dashboards and reporting in tools such as Metabase and Amplitude • Develop analyses that help teams improve product adoption, engagement, and retention • Work with cross-functional teams to ensure consistent metric definitions and trusted reporting • Leverage SQL, dbt, and analytics tools to transform and analyze product data • Enable self-service analytics by training stakeholders on dashboards, reporting tools, and best practices • Communicate complex findings clearly and effectively to both technical and non-technical audiences • Help foster a culture of experimentation, curiosity, and data-driven decision-making across Product and Engineering teams
• Develop, maintain, and evolve strategic dashboards and reports in Power BI; • Ensure performance, scalability, and analytical quality of solutions; • Build and optimize data models using best practices in dimensional modeling (Star Schema) and DAX; • Perform queries, extractions, and data analyses using SQL; • Translate business needs into clear, actionable analytical solutions; • Work autonomously to manage requests and prioritize deliveries; • Participate in agile ceremonies and collaborate in Scrum environments; • Support stakeholders in interpreting KPIs, metrics, and strategic analyses; • Identify continuous improvement opportunities in processes, workflows, and data structures; • Maintain organized technical documentation and transparency in deliverables; • Share knowledge and contribute to the team’s technical growth; • Propose alternative, feasible solutions for technical and business challenges; • Operate in environments with multiple products and diverse business areas.



