Microsoft Fabric: Implement and Manage Analytics Solutions

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Microsoft Fabric: Implement and Manage Analytics Solutions

Coursera · Intermediate ·🔄 Data Engineering ·3mo ago

Key Takeaways

Implements and manages analytics solutions using Microsoft Fabric's integrated services

Original Description

This comprehensive certification course is designed for data professionals aiming to master end-to-end analytics design, implementation, and management using Microsoft Fabric. Dive deep into Microsoft’s unified data platform and learn how to configure, secure, and orchestrate data solutions across Fabric’s integrated services, covering data engineering, data science, and business intelligence workloads. The course delivers approximately 6–7 hours of video lectures, combining conceptual understanding with hands-on demonstrations mapped to the official Microsoft Certified: Fabric Data Engineer Associate (Exam DP-700) objectives. Each module includes quizzes and in-video assessments to reinforce key learning outcomes and prepare you for real-world analytics challenges. Enroll in “Microsoft Fabric: Implement and Manage Analytics Solutions” to gain the expertise required to build, secure, and scale modern analytics environments in Microsoft Fabric. Course Modules: Implement and Manage an Analytics Solutions Ingest and transform data Monitor and optimize an analytics solution By end of this course, you will be able to learn about - You’ll explore Microsoft Fabric’s core architecture, ecosystem, and governance features, - You will learn how to administer environments, secure data access, and orchestrate analytics workflows through real-world examples and guided demos. - From CI/CD implementation and workspace management to security, compliance, and data pipeline orchestration, this course equips you with the expertise to operationalize analytics at scale in enterprise settings. As a candidate for this exam, you should have subject matter expertise with data loading patterns, data architectures, and orchestration processes. You work closely with analytics engineers, architects, analysts, and administrators to design and deploy data engineering solutions for analytics. You should be skilled at manipulating and transforming data by using Structured Query Language
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
I Built My Second ETL Pipeline. This Time, I Started Thinking Like a Data Engineer
Learn how to build a production-ready ETL pipeline with Python, Docker, PostgreSQL, and Kestra by thinking like a data engineer
Towards Data Science
📰
JuiceFS Sync for PB-Scale Data Transfers: Resumable Sync, Encryption, and Bandwidth Control
Learn how to efficiently transfer large volumes of data using JuiceFS Sync, which offers resumable sync, encryption, and bandwidth control, ideal for PB-scale data transfers.
Dev.to AI
📰
How Airflow is using AI to make data engineering more resilient, not more complex
Airflow uses AI to make data engineering more resilient by detecting data drift, resuming failed pipelines, and fixing issues automatically, reducing complexity and improving reliability.
Medium · AI
📰
What Can We Do When Memory Becomes the New Bottleneck in Data Engineering?
Learn how to overcome memory bottlenecks in data engineering using Pandas chunking, Dask, and Polars, and why it matters for processing large datasets
Towards Data Science
Up next
A Moment Frozen in Time | Arnav Iyengar | TEDxJenks Youth
TEDx Talks
Watch →