Microsoft
Advanced Analytics & AI Optimization with Microsoft Fabric
Microsoft

Advanced Analytics & AI Optimization with Microsoft Fabric

 Microsoft

位教师: Microsoft

包含在 Coursera Plus

深入了解一个主题并学习基础知识。
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5 小时 完成
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自行安排学习进度
深入了解一个主题并学习基础知识。
中级 等级

推荐体验

5 小时 完成
灵活的计划
自行安排学习进度

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作业

25 项作业

授课语言:英语(English)

了解顶级公司的员工如何掌握热门技能

Petrobras, TATA, Danone, Capgemini, P&G 和 L'Oreal 的徽标

该课程共有5个模块

Build the foundation for enterprise-wide self-service analytics by mastering Power BI semantic model development in Microsoft Fabric. You'll design reusable semantic models that connect to Lakehouse data, create sophisticated business calculations using DAX programming language, implement proper table relationships, and optimize models for performance. Through hands-on exercises and guided demonstrations, you'll learn how well-structured semantic models enable consistent business logic, accurate cross-filtering, and scalable analytics performance. This module provides the expertise needed to create semantic models that serve as a reliable foundation for all downstream analytics and reporting. Note:Unlike traditional import mode, DirectLake creates a direct connection to your Lakehouse data. When column names change, tables are restructured, or data types are modified, your Power BI reports can fail immediately. Best Practice: Define a version-controlled abstraction layer (views or gold tables) before connecting Power BI to DirectLake mode. This prevents schema changes from breaking visuals. Quick Recovery Tips: Keep a backup semantic model (.pbix) that you can quickly republish Use consistent naming conventions to minimize future conflicts Consider using views in your lakehouse for an abstraction layer Set up alerts to monitor report failures after schema changes

涵盖的内容

6个作业

Implement advanced data connectivity and refresh strategies to maximize performance while minimizing data duplication in Microsoft Fabric. You'll explore DirectLake mode for real-time analytics on Lakehouse data, compare its benefits to traditional import approaches, design effective partitioning strategies for large datasets, and configure incremental refresh policies that optimize update processes. Through practical exercises and performance comparisons, you'll develop the skills to implement data connections that balance query performance with freshness requirements. This module equips you with techniques to handle enterprise-scale datasets efficiently while maintaining responsive analytics experiences. Note: For optimization, large datasets may exceed trial compute credits during refresh operations. Start with a subset of data and review Incremental Refresh Best Practices before scaling up.

涵盖的内容

5个作业

Extend the reach and intelligence of your Power BI solutions by implementing embedded analytics and AI-powered visualizations. You'll learn to securely publish and share Power BI reports, embed interactive dashboards into applications and portals, implement AI visuals that automatically discover patterns in your data, and configure natural language capabilities that enable conversational analytics. Through hands-on implementation exercises, you'll create compelling analytics experiences that integrate seamlessly with business applications while leveraging artificial intelligence to enhance insight discovery. This module bridges the gap between standard reporting and intelligent, accessible analytics.

涵盖的内容

5个作业

Accelerate data development workflows through AI-powered assistance and automation in Microsoft Fabric. You'll harness Copilot's capabilities to build data pipelines using natural language, generate optimized SQL queries, create documentation summaries, configure Data Agents for automated tasks, and implement lightweight automation with Copilot Studio. Through guided explorations and practical exercises, you'll experience how AI assistance transforms data development productivity while maintaining quality and best practices. This module demonstrates how conversational AI can dramatically reduce development time while enabling broader participation in data engineering activities. Important Safety Note: Always review generated steps before execution, never paste secrets or sensitive information into AI prompts, and verify the preview/GA status of Copilot features in your tenant before implementation.

涵盖的内容

5个作业

Master advanced architectural design and optimization techniques that ensure your Microsoft Fabric implementation is performant, cost-effective, and future-ready. You'll design mesh architectures with decentralized data domains, apply systematic performance optimization through caching, partitioning, and indexing, implement comprehensive cost monitoring and control strategies, and explore machine learning integration options. Throughout the module, you'll use a decision log template to capture cost/performance trade-offs for each architectural choice (e.g., DirectLake vs Import, Lakehouse vs Warehouse) to build systematic decision-making skills. Through architecture workshops and optimization exercises, you'll develop the skills to design, optimize, and govern enterprise-scale data platforms. This module provides the expertise needed to create sustainable, high-performance data architectures that balance business needs with technical and financial considerations.

涵盖的内容

4个作业

位教师

 Microsoft
256 门课程2,090,406 名学生

提供方

Microsoft

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