Key takeaways
- Data Analytics turns raw data into evidence for decisions, replacing guesswork in areas like marketing, operations and strategy.
- It breaks down into four types, descriptive, diagnostic, predictive and prescriptive, and runs on tools like SQL, Python and Tableau.
- It is one of the most accessible routes into tech in Germany: no degree needed, and fully fundable through a Bildungsgutschein.

Table of Contents
What is Data Analytics?
Data Analytics is the process of collecting, transforming and analysing raw data to uncover patterns and turn them into insights that guide decisions. It answers practical questions: why sales dropped last quarter, which customers are likely to leave, or where a process is losing time and money.
Every industry relies on it. A retailer studies purchase data to decide which products to stock, a marketing team measures which campaigns convert, and a logistics company optimises delivery routes. The common thread is moving from raw numbers to a clear, defensible decision.
Data Analytics sits alongside related fields. It overlaps with Data Science and business intelligence, but it has its own focus: making current and historical data understandable and actionable, rather than building complex predictive systems from scratch.
What are the four types of Data Analytics?
There are four types of Data Analytics, and each answers a different question. Together they take you from understanding the past to deciding what to do next.
| Type | Question it answers | Example |
|---|---|---|
| Descriptive | What happened? | Last quarter’s sales fell 8% on the previous one |
| Diagnostic | Why did it happen? | A price rise drove the drop in one region |
| Predictive | What is likely to happen? | Demand will rebound next quarter based on past trends |
| Prescriptive | What should we do? | Run a targeted promotion in the affected region |
Most analyst roles focus on descriptive and diagnostic work, explaining what happened and why. Predictive and prescriptive analytics lean more on statistics and machine learning, skills you build as you progress into more senior positions.
What does a Data Analyst do? Skills, tools and the workflow
A Data Analyst turns messy data into clear answers by following a repeatable workflow. The steps are broadly the same whatever the industry:
- Identify the question the business needs answered
- Collect the relevant raw data from databases, tools or APIs
- Clean it, fixing errors, duplicates and gaps
- Analyse it to find patterns and relationships
- Visualise and present the findings so others can act
The core skills sit underneath that workflow. Most analysts use SQL to query databases, Python (or R) for analysis and automation, statistics to interpret results honestly, and data visualisation to communicate them clearly. Business sense matters just as much, because a chart only helps if it answers the right question.
The tools are learnable and consistent across the field. Expect SQL with a database like MySQL or BigQuery, a visualisation tool such as Tableau or Looker Studio, spreadsheets, and Python libraries like Pandas. None of this requires a maths degree to begin.

Data Analyst vs Data Scientist
A Data Analyst interprets existing data to explain trends and support decisions, while a Data Scientist builds predictive models using advanced machine learning. Analysts mostly answer “what happened and why”, and scientists focus more on “what will happen” using heavier statistical and programming methods. The analyst role is the more common entry point into data and a natural stepping stone toward Data Science. For a full breakdown, see our guide on the difference between Data Analytics and Data Science.
Data Analyst salaries and demand in Germany
Data Analyst salaries in Germany are competitive and rise quickly with experience. Based on Glassdoor figures, entry-level analysts earn around €43,000 to €50,000, mid-level analysts around €55,000 to €70,000, and senior analysts roughly €70,000 to €80,000 per year.
Demand is broad because almost every team now works with data. Common job titles include Data Analyst, Business Intelligence Analyst, Marketing Analyst, Product Analyst, Operations Analyst and Reporting Analyst, across startups, corporates and the public sector.
For career changers in Germany, the entry barrier is lower than many expect. You do not need a computer science degree, and the training itself can be fully funded. If you are eligible, a Bildungsgutschein from the Agentur für Arbeit or Jobcenter can cover the entire cost of a course.
How to become a Data Analyst: two paths at WBS CODING SCHOOL
WBS CODING SCHOOL offers two fully remote, fundable routes into Data Analytics, depending on how much time you have and how far you want to go. Both are taught live by instructors and built around hands-on projects rather than passive video.
| Data Analytics Course | Data Analytics & AI Course | |
|---|---|---|
| Length | 13 weeks, full-time | 10 months, full-time |
| Format | 100% online | 100% online |
| Language | English | English or German |
| Core skills | SQL, Python, Tableau, statistics | SQL, Python, Tableau, Azure, NoSQL, GenAI |
| Certification | PCEP | DP900, PCEP, Tableau Desktop Foundations |
| Extras | AI assistant NOVA | MacBook Air, guaranteed 2-month internship |
| Funding | €0 with Bildungsgutschein | €0 with Bildungsgutschein |
The Data Analytics Course is the faster route. In 13 weeks it takes you from foundations to a portfolio project, covering SQL, Python, Tableau, A/B testing, automated ETL pipelines with web scraping and APIs, and dedicated SQL interview preparation, with the PCEP Python certification included.
The Data Analytics & AI Course goes deeper over 10 months and adds cloud platforms, AI tools and a guaranteed two-month internship. You work on realistic challenges like the Eniac/Magist case study, where you act as a data consultant analysing a potential merger and present your findings in a simulated CEO boardroom, and you build pipelines from live data sources rather than static spreadsheets.
Choose the Data Analytics Course if you want a fast, focused entry into analyst roles. Choose the Data Analytics & AI Course if you want broader skills, AI and cloud exposure, three certifications and built-in work experience. Both can be fully funded through a Bildungsgutschein.
Frequently asked questions
Do I need programming experience to start in Data Analytics?
No. Most beginners start with no coding background. You learn SQL and Python step by step, and a structured course takes you from the basics to job-ready projects without assuming prior experience.
Can I work in Data Analytics without a university degree?
Yes. Employers in Germany increasingly hire on demonstrated skills and a portfolio rather than a specific degree. A focused course plus real projects is a recognised route into analyst roles, especially for career changers.
Do I need to be good at maths?
You need to be comfortable with numbers, not advanced maths. Day-to-day analytics relies on logic, basic statistics and clear thinking, and the deeper statistical methods are introduced gradually as you need them.
How long does it take to become a Data Analyst?
It depends on the path. An intensive full-time course can make you job-ready in around 13 weeks, while a longer programme with an internship runs about 10 months and adds work experience and extra certifications.
Related blogs
- Data Analytics vs Data Science: what is the difference?
- How to become a Data Analyst
- Data Analytics salary in Germany
Conclusion
Getting into Data Analytics comes down to how much time you have and how deep you want to go. You do not need a degree or a maths background, just structured training and hands-on practice. The faster Data Analytics Course gets you job-ready in 13 weeks, while the deeper Data Analytics & AI Course adds AI, cloud skills and a guaranteed internship over 10 months. Both are fully online and fundable through a Bildungsgutschein, so you can retrain for an in-demand role at no cost to you.









