Corporate Training

At Modatics, we understand that every individual and organization has unique training needs. That’s why we provide a range of training options tailored to your specific requirements. Whether you’re looking to enhance your data modelling skills, master advanced SQL and data engineering techniques, explore cloud technologies, delve into different data platforms, or specialize in industry-specific engineering, our comprehensive training programs ensure you can choose the path that offers the highest value and relevance to meet your goals. Empower yourself with the knowledge and expertise you need to excel in the world of data science.

Our training paths include:

  1. Data modeling and data mapping: Gain expertise in structuring and organizing data, understanding data relationships, and creating effective data models to support your organization’s data-driven initiatives.
  2. Advanced SQL and data engineering: Master the intricacies of SQL programming and learn advanced data engineering techniques to manipulate, transform, and optimize data for improved performance and analytics.
  3. Cloud technologies (AWS, Azure, and GCP): Explore the power of cloud platforms like Amazon Web Services (AWS), Microsoft Azure, and Google Cloud Platform (GCP) to leverage scalable and flexible data storage, processing, and analytics capabilities.

4. Data platforms (MPP, Hadoop, columnar, query engines, traditional and RDBMS): Dive into different data platforms, including massively parallel processing (MPP) systems, Hadoop ecosystem, columnar databases, and various query engines to understand their strengths and apply them effectively in your data engineering and data science workflows.

5. Industry-specific engineering: Discover specialized techniques and best practices tailored to specific industries such as finance, healthcare, retail, or manufacturing, enabling you to address industry-specific data challenges and optimize data processes accordingly.

6. Programming languages for data engineering: Explore programming languages commonly used in data engineering, such as Python, Java, or Scala, and learn how to apply them in data processing, analysis, and automation tasks, enhancing your capabilities as a data engineer.