Wenn Sie sich für diesen Kurs anmelden, werden Sie auch für dieses berufsbezogene Zertifikat angemeldet.
Lernen Sie neue Konzepte von Branchenexperten
Gewinnen Sie ein Grundverständnis bestimmter Themen oder Tools
Erwerben Sie berufsrelevante Kompetenzen durch praktische Projekte
Erwerben Sie ein Berufszertifikat von Microsoft zur Vorlage
In diesem Kurs gibt es 5 Module
This course provides a comprehensive overview of data storage and management approaches for big data. Learners will explore structured, semi-structured, and unstructured data formats, compare SQL and NoSQL database technologies, and implement data lakes and data warehouses. The course includes working with various file formats and understanding the differences between batch and real-time processing approaches.
Course Learning Objectives:
By the end of this course, you will be able to:
- Compare and implement SQL and NoSQL database solutions for different big data scenarios
- Work effectively with structured, semi-structured, and unstructured data formats
- Design and implement data lakes and data warehouses for big data workloads
- Build data pipelines using ETL and ELT approaches with Azure Data Factory
- Differentiate between batch and real-time processing methodologies and implement appropriate solutions
Data Storage Technologies (SQL vs NoSQL) guides learners through the core principles of modern data storage and the trade-offs that shape today’s big data systems. The module examines how relational databases manage structured data, where they encounter limitations at scale, and how techniques such as partitioning, indexing, and lakehouse architectures mitigate performance gaps. Learners compare major NoSQL categories—including document, key-value, and column-family databases—to understand how flexible schemas and distributed designs support high-volume, high-velocity workloads. Through hands-on activities with SQL Server, Azure Synapse, and Azure Cosmos DB, learners practice essential operations, evaluate storage technologies based on workload requirements, and build the skills needed to select and implement effective database solutions for big data environments.
Das ist alles enthalten
6 Videos3 Lektüren8 Aufgaben
Infos zu Modulinhalt anzeigen
6 Videos•Insgesamt 22 Minuten
When Relational Databases Hit Their Limits•3 Minuten
Optimizing SQL Server for Big Data Workloads•2 Minuten
Breaking Free from Tables•3 Minuten
Mapping Data Patterns to NoSQL Types•5 Minuten
Cosmos DB Success Stories•3 Minuten
Building Production-Ready Cosmos DB Solutions•6 Minuten
3 Lektüren•Insgesamt 30 Minuten
Relational Databases in the Big Data Era•10 Minuten
NoSQL Database Landscape•10 Minuten
Azure Cosmos DB Implementation Guide•10 Minuten
8 Aufgaben•Insgesamt 240 Minuten
SQL Performance Optimization and Delta Lake Operations•30 Minuten
Database Performance Analysis and Lakehouse Operations•30 Minuten
Working with Data Formats (Structured, Semi-structured, Unstructured)
Modul 2•5 Stunden abzuschließen
Moduldetails
Working with Data Formats (Structured, Semi-structured, Unstructured) helps learners build a clear understanding of how different data formats function within big data systems and why format selection matters for performance, storage, and analytical success. The module introduces structured formats, such as CSV and TSV, and explores flexible semi-structured formats, including JSON and XML. It also examines optimized file types, including Parquet, Avro, and ORC, that support large-scale analytics. Learners practice transforming data between formats using Azure Data Factory, working with nested structures, applying schema inference, and evaluating performance trade-offs across file types. Through demonstrations, code exercises, and hands-on labs, this module equips learners to select, convert, and manage data formats effectively for diverse big data scenarios.
Das ist alles enthalten
6 Videos3 Lektüren8 Aufgaben
Infos zu Modulinhalt anzeigen
6 Videos•Insgesamt 20 Minuten
The Foundation of Data Analytics•3 Minuten
Processing Structured Data with Azure Data Factory•5 Minuten
Embracing Flexible Data Structures•3 Minuten
Data Format Conversions with Azure Data Factory•3 Minuten
Optimizing for Scale and Performance•3 Minuten
File Format Performance Analysis•4 Minuten
3 Lektüren•Insgesamt 30 Minuten
Structured Data Best Practices•10 Minuten
Semi-structured Data Processing Techniques•10 Minuten
Big Data File Format Optimization•10 Minuten
8 Aufgaben•Insgesamt 240 Minuten
Structured Data Pipeline•30 Minuten
Structured Data Management Assessment•30 Minuten
JSON Data Transformation•30 Minuten
Format Transformation Pipeline•30 Minuten
Semi-structured Data Processing Assessment•30 Minuten
File Format Performance Comparison•30 Minuten
File Format Optimization Assessment•30 Minuten
Data Formats Mastery Assessment•30 Minuten
Data Lakes and Data Warehouses Implementation
Modul 3•4 Stunden abzuschließen
Moduldetails
Data Lakes and Data Warehouses Implementation guides learners through the architectural foundations and hands-on skills needed to build modern analytical environments. The module explores the purpose and structure of data lakes, highlighting the zones of raw, cleaned, enriched, and curated data, and demonstrates how thoughtful design supports flexibility, governance, and large-scale analytics. Learners also study core data warehouse concepts, including dimensional modeling, star schemas, and data marts, to understand how structured storage enables high-performance querying. Through practical work with Azure Data Lake Storage Gen2 and Azure Synapse Analytics, learners design zone architectures, implement dimensional models, configure SQL pools, and apply best practices for partitioning, distribution, and optimization. By the end, they gain the ability to organize, govern, and integrate data across both lake and warehouse environments, supporting scalable, enterprise-ready analytics.
Das ist alles enthalten
6 Videos3 Lektüren7 Aufgaben
Infos zu Modulinhalt anzeigen
6 Videos•Insgesamt 25 Minuten
Building the Foundation for Data-Driven Innovation•3 Minuten
Implementing Data Lake Zones•6 Minuten
The Art and Science of Dimensional Modeling•3 Minuten
Designing Effective Data Warehouse Schemas•4 Minuten
Synapse Implementation Best Practices Assessment•30 Minuten
Data Storage Architecture Mastery Assessment•30 Minuten
Building Data Pipelines (ETL/ELT with Azure Data Factory)
Modul 4•5 Stunden abzuschließen
Moduldetails
Building Data Pipelines (ETL/ELT with Azure Data Factory) equips learners with the skills to design, implement, and manage scalable data integration workflows using modern, cloud-native approaches. The module examines the differences between ETL and ELT, helping learners understand when each methodology delivers the best performance, flexibility, and cost efficiency. Learners gain hands-on experience with Azure Data Factory, configuring linked services, datasets, activities, and core orchestration components, and practice building both simple and advanced pipelines. The module also introduces transformation logic, control flow patterns, parameterization, and error handling strategies that support production-ready data engineering solutions. Through walkthroughs, labs, code exercises, and scenario-based decisions, learners learn to monitor pipelines, troubleshoot failures, and design reliable data workflows that support enterprise-scale analytics.
Das ist alles enthalten
6 Videos3 Lektüren9 Aufgaben
Infos zu Modulinhalt anzeigen
6 Videos•Insgesamt 22 Minuten
The Great ETL vs ELT Debate•4 Minuten
Architecting ETL and ELT Solutions•5 Minuten
Data Factory as the Integration Hub•3 Minuten
Building Your First Data Factory Pipeline•4 Minuten
Production-Ready Pipeline Engineering•3 Minuten
Engineering Robust Data Pipelines•4 Minuten
3 Lektüren•Insgesamt 30 Minuten
ETL vs ELT Strategic Decision Framework•10 Minuten
Azure Data Factory Implementation Guide•10 Minuten
Advanced Data Factory Pipeline Design•10 Minuten
9 Aufgaben•Insgesamt 270 Minuten
ETL vs ELT Analysis•30 Minuten
Data Integration Strategy Assessment•30 Minuten
Azure Data Factory Pipeline JSON•30 Minuten
Data Factory Pipeline Creation•30 Minuten
Data Factory Fundamentals Assessment•30 Minuten
Advanced Data Factory Pipeline Configuration•30 Minuten
Advanced Pipeline Development•30 Minuten
Advanced Pipeline Design Assessment•30 Minuten
Data Pipeline Engineering Mastery Assessment•30 Minuten
Batch and Real-Time Processing Fundamentals
Modul 5•5 Stunden abzuschließen
Moduldetails
Batch and Real-Time Processing Fundamentals introduces learners to the core processing models that power modern big data systems, helping them understand when each approach delivers the most value. The module explores batch architectures, scheduling methods, and optimization strategies for large-scale historical processing, while also examining real-time stream processing concepts, including event handling, latency trade-offs, and throughput requirements. Learners gain hands-on experience implementing both models—building batch workflows with Azure Data Factory and configuring streaming pipelines using Event Hubs and Stream Analytics. Through architectural analysis, code exercises, and practical labs, learners learn to evaluate business needs, select the right processing approach, and design hybrid systems that combine batch and streaming for comprehensive analytics.
Our goal at Microsoft is to empower every individual and organization on the planet to achieve more.
In this next revolution of digital transformation, growth is being driven by technology. Our integrated cloud approach creates an unmatched platform for digital transformation. We address the real-world needs of customers by seamlessly integrating Microsoft 365, Dynamics 365, LinkedIn, GitHub, Microsoft Power Platform, and Azure to unlock business value for every organization—from large enterprises to family-run businesses. The backbone and foundation of this is Azure.
When will I have access to the lectures and assignments?
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
What will I get if I subscribe to this Certificate?
When you enroll in the course, you get access to all of the courses in the Certificate, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Finanzielle Unterstützung verfügbar, weitere Informationen
¹ Einige Aufgaben in diesem Kurs werden mit AI bewertet. Für diese Aufgaben werden Ihre Daten in Übereinstimmung mit Datenschutzhinweis von Courseraverwendet.