TDWI Data Quality Fundamentals Training in Germany

  • Learn via: Classroom / Virtual Classroom / Online
  • Duration: 1 Day
  • Price: Please contact for booking options
We can host this training at your preferred location. Contact us!

Managing data quality is among the most vexing of information management issues. Most organizations have persistent and long-standing data quality problems—troubles that grow and propagate with the challenges of data redundancy, purchased applications and databases, legacy databases, multiple data providers and consumers, missing documentation, and uncertainty in defining data quality.

Stepping up to data quality improvement isn’t easy. It demands an understanding of quality management principles and practices, and the ability to apply those practices to a complex and continuously changing data resource. Whether your goal is a broad enterprise-wide data quality program or a highly targeted data quality project, you must begin by understanding the practices and processes of data quality assessment and improvement. This course is designed specifically to provide that foundational knowledge.

There are no prerequisites for this course.

Data quality and data governance professionals; BI/DW managers, architects, designers, and developers; data stewards, data architects, and data administrators; information systems analysts, designers, and developers; anyone with a role in data quality or information systems testing

  • Definitions and dimensions of quality
  • How to create an actionable definition of data quality
  • Typical causes of data quality problems
  • Roles, responsibilities, and accountabilities in data quality management
  • Roles, uses, and limits of data quality tools and technology
  • Processes and techniques for data quality assessment and data quality improvement

Module One: Data Quality Concepts 

Defining Data Quality

  • Common definitions of quality
  • Applying quality definitions to data
  • Data correctness and data integrity
  • Actionable data quality

Dimensions of Data Quality

  • Accuracy
  • Completeness
  • Consistency & dependency
  • Precision & granularity
  • Timeliness
  • Structural integrity

Common Causes of DQ Problems

  • Definition
  • Design & modeling
  • Data entry & data collection
  • Conversion and consolidation
  • Integration

Module Two: Data Quality Practices and Processes

Quality Management Practices

  • Quality Assurance (QA) vs. Quality Control (QC)
  • Quality economics
  • Inspection and detection
  • Correction and prevention

Quality Management and Data

  • Business applications and operational data
  • Integrated data and business information
  • Data quality and defect propagation

Data Quality Organizations

  • Governance
  • Ownership
  • Stewardship
  • Custodianship
  • Architecture
  • Usage (access, update, and application)

Data Quality Processes

  • Data profiling
  • Data quality assessment
  • Data cleansing
  • Process improvement

Data Quality Tools and Technology

  • Profiling
  • Verification & standardization
  • Matching & grouping
  • De-duplication
  • Data transformation

Module Three: Data Quality Assessment

Planning & Preparation

  • Project planning
  • Assessment team
  • Assessment resources

Conducting the Assessment

  • DQ Rule identification
  • DQ Rule execution
  • Analysis and tuning

Assessment Results

  • Error catalog
  • Data quality measures and metrics
  • DQ scorecard

Applied Results

  • Communication & expectations
  • Root cause analysis
  • Quality improvement
  • Process improvement
  • Data cleansing
  • Data governance

Module Four: Data Quality Improvement

Procedural Data Quality

  • Standardization
  • Verification
  • Classification
  • Parsing
  • Geo-coding Matching
  • Grouping
  • De-Duplication

Rule-Based Data Quality

  • Five kinds of data correctness rules
  • Six kinds of data integrity rules
  • Four kinds of timeliness rules
  • Applied DQ rules

IT Processes and Data Quality

  • System architecture & standards
  • Application and database development processes
  • Conversion & migration processes
  • Data warehousing & BI processes

Business Processes and Data Quality

  • Defining Data
  • Creating and updating data
  • Access, analysis, and reporting

Module Five: Summary and Conclusion

  • Summary of Key Points
  • References & Resources


Contact us for more detail about our trainings and for all other enquiries!

Upcoming Trainings

Join our public courses in our Germany facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

Classroom / Virtual Classroom
06 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
07 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
10 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
06 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
07 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
19 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
20 November 2024
Berlin, Hamburg, Münih
1 Day
Classroom / Virtual Classroom
10 November 2024
Berlin, Hamburg, Münih
1 Day
TDWI Data Quality Fundamentals Training Course in Germany

The Federal Republic of Germany is the second most populous country in Europe and is located in Central Europe. The official language of the country is German. Germany is one of the richest countries in the world. The main exports of the country include motor vehicles and iron and steel products.

Here are some fun facts about Germany:
The fairy tale writer, the Brothers Grimm, came from Germany and wrote many famous stories such as Cinderella, Snow White, and Sleeping Beauty.
Germany is home to the largest theme park in Europe, the Europa-Park.
The famous composer Ludwig van Beethoven was born in Germany.
The Autobahn, the German highway system, is known for having no general speed limit.


Berlin was divided by the Berlin Wall from 1961 to 1989. Known for its street art, Berlin has many colorful murals and graffiti throughout the city. Also, Berlin is home to many famous museums, such as the Pergamon Museum and the Museum Island. Many clubs and bars stay open until the early hours of the morning in this big city.

Another popular city is Munich, which is famous for its Oktoberfest beer festival that attracts millions of visitors every year. Munich is also home to many historic buildings, including Nymphenburg Palace and the Marienplatz town square.

The country's capital and largest city is Berlin, however Frankfurt is considered to be the business and financial center of Germany. It is home to the Frankfurt Stock Exchange, the European Central Bank, and many other financial institutions. Because of its central location within Europe and its status as a major financial hub, Frankfurt is often referred to as the "Mainhattan," a play on the city's name and its association with the Manhattan financial district in New York City.

Frankfurt is also a major transportation hub, with the largest airport in Germany and one of the largest in Europe, Frankfurt Airport. Additionally, it is a popular destination for tourists, with its historic city center, beautiful parks, and vibrant cultural scene.

Some of the top German technology companies like Siemens AG, Bosch, SAP SE, Deutsche Telekom, Daimler AG and Volkswagen has business centers in Frankfurt. The country has a strong tradition of engineering and innovation, and is home to many other world-class technology companies and research institutions.

Tailored to meet the specific needs of Germany, Bilginç IT Academy combines cutting-edge training methodologies with our comprehensive range of Certification Exam preparation courses and accredited corporate training programs. Experience a transformative approach to IT training that will redefine your expectations.
By using this website you agree to let us use cookies. For further information about our use of cookies, check out our Cookie Policy.