Hands-on Cloud Analytics with Microsoft Azure Stack
US$ 19.95
The publisher has enabled DRM protection, which means that you need to use the BookFusion iOS, Android or Web app to read this eBook. This eBook cannot be used outside of the BookFusion platform.
Description
Contents
Reviews
Language
English
ISBN
9789389898149
Cover Page
Title Page
Copyright Page
Dedication Page
About the Author
About the Reviewer
Acknowledgement
Preface
Errata
Table of Contents
1. Data and its Power
Structure
Objective
1.1 Introduction to data
1.2 Types of data
1.3 Characteristics of data
1.4 Where does data gets generated
1.5 How different datasets link to each other to produce more data
Conclusion
Multiple choice questions
Answers
2. Evolution of Analytics and its Types
Structure
Objective
2.1 Reporting and visualization
2.2 Descriptive analytics
2.2 Diagnostic analytics
2.3 Predictive analytics
2.4 Prescriptive analytics
2.5 Other types of machine learning
Conclusion
Multiple choice questions
Answers
3. Internet of Things
Structure
Objective
3.1 IoT
3.2 Sensors
3.3 Gateway
3.4 Edge
3.5 Automation
3.6 Where IoT can be used?
Conclusion
Multiple choice questions
Answers
4. AI and ML
Structure
Objective
4.1 Introduction to AI and ML
4.2 Supervised learning
4.3 Unsupervised learning
4.4 Deep learning
4.5 Models
4.6 Cognitive
Conclusion
Multiple choice questions
Answers
5. Why Cloud?
Structure
Objective
5.1 Introduction to cloud
5.2 Types of cloud
5.2.1 IaaS
5.2.2 PaaS
5.2.3 SaaS
5.3 Compute
5.4 Storage
5.5 Pay-as-you-go
Conclusion
Multiple choice questions
Answers
6. What is a Data Lake and a Modern Datawarehouse/Mart
Structure
Objective
6.1 Advent of data lakes
6.2 Data lake high-level architecture
6.3 Data ingestion
6.4 Data storage
6.5 Data transformation/processing
6.6 Data quality
6.7 Data lineage
6.8 Data cataloging
6.9 Auditing
6.10 Logging
6.11 Monitoring
6.12 Orchestration
6.13 Reporting/data visualization
6.14 Virtualization
6.15 Modern data warehouse/datamart
Conclusion
Multiple choice questions
Answers
7. Introduction to Azure Services
Structure
Objective
7.1 Azure Data Factory
7.2 Azure Virtual Machine
7.3 Azure Synapse Analytics
7.4 Azure BOT Service
7.5 Azure Databricks
7.6 Azure Data Explorer
7.7 Azure Blockchain Service (preview)
7.8 App Service
7.9 Azure Web App
7.10 Azure Data Catalog
7.11 Azure Data Share
7.12 Azure Functions
7.13 Azure DevOps
7.14 Azure DevTest Labs
7.15 Azure SQL Database
7.16 Azure ExpressRoute
7.17 Azure Sentinel
7.18 Azure database for PostgreSQL
7.19 Azure IoT Hub
7.20 Azure IoT Edge
7.21 Azure Backup
7.22 Azure Maps
7.23 Azure Content Delivery Network (CDN)
7.24 Azure Active Directory
7.25 Azure Machine Learning
7.26 Azure Stream Analytics
7.27 Azure Time Series Insights
7.28 Azure Cosmos DB
7.29 Azure Advisor
7.30 Azure Automation
7.31 Azure Cognitive Search
7.32 Computer Vision
7.33 Face
7.34 Content moderator
7.35 Azure Data Lake Storage
7.36 Azure Analysis Service
7.37 Logic apps
7.38 Azure API for FHIR
7.39 Azure Database Migration Service
7.40 Azure Cache for Redis
7.41 Event Grid
7.42 Azure SQL Database Edge (Preview)
Conclusion
Multiple choice questions
Answers
8. Types of Data
Structure
Objective
8.1 Traditional operational systems like Enterprise Resource Planning (ERP)
8.2 Sensor data
8.3 Historical data and current data
8.4 Real-time and batch usage of data
Conclusion
Multiple choice questions
Answers
9. Azure Data Factory
Structure
Objective
9.1 Runtime
9.2 Pipelines
9.3 Linked service
9.4 Data flows
9.5 SSIS
9.6 Custom and Web ADF activities
9.7 Pricing
Conclusion
Multiple choice questions
Answers
10. Stream Analytics
Structure
Objective
10.1 Pipeline architecture
10.2 Input
10.3 Output
10.4 Query and partition (transform)
10.5 Streaming units
10.6 Geospatial data
10.7 Integration with Azure Machine Learning
10.8 Recommended usage scenarios
10.9 Pricing
Conclusion
Multiple choice questions
Answers
11. Azure Data Lake Store and Azure Storage
Structure
Objective
11.1 Azure Data Lake Storage Gen 2
11.1.1 Query acceleration (currently preview)
11.1.2 Creating an ADLS Gen 2 account
11.2 Folders
11.3 Hierarchy namespace
11.4 APIs
11.4.1 File operations (for the file system)
11.4.2 Path operations (for directories)
11.5 Access from Power BI
11.6 Connectivity to other Azure components
11.6.1 Data ingestion
11.6.2 Events ingestion
11.6.3 Streaming data
11.6.4 Processing data
11.6.5 Extracting data out of ADLS Gen 2
11.6.6 Other services
11.7 Azure Storage
Conclusion
Multiple choice questions
Answers
12. Cosmos DB
Structure
Objective
12.1 Fitment and use cases
12.2 Graph database
12.3 Multi-model database
12.4 SQL query
12.5 Consistency choices
12.6 Partitioning
12.7 Analytics
12.8 Pricing
Conclusion
Multiple choice questions
Answers
13. Synapse Analytics
Structure
Objective
13.1 Features other than storage and why this is the most powerful storage choice
13.2 Security options
13.3 Data querying
13.4 Compute and storage
13.5 Apache Spark and SQL engines
13.6 External tables
13.7 Real-time analytics
13.8 Azure Synapse Analytics workspace (in preview as this being written)
Conclusion
Multiple choice questions
Answers
14. Azure Databricks
Structure
Objective
14.1 Azure Databricks
14.1.1 Analytical workloads
14.2 Apache Spark environment
14.3 Mount storage
14.4 Workspace
14.5 Clusters and auto-scale
14.6 Notebooks
14.7 Jobs
14.8 Machine Learning
14.8.1 Apache Spark MLlib
14.9 MLFlow
14.10 Deep learning
14.10.1 TensorFlow
14.10.2 Keras
14.10.3 PyTorch
14.10.4 Model inference
14.10.5 Reference solutions
14.11 Graph analysis
14.12 Genomics
14.13 Structured streaming
14.14 Spark SQL
14.15 Spark streaming
Conclusion
Multiple choice questions
Answers
15. Azure Analysis Services
Structure
Objective
15.1 In memory versus direct query
15.2 Multidimensional versus tabular
15.3 Models in AAS
15.4 Size tiers and how to pick
15.5 Pause, resume, and other concepts
15.6 DAX
15.7 Compression
15.8 Scale up and down
15.9 Firewall
15.10 RLS (Row Level Security)
15.11 Automation
15.12 AAS in Power BI
Conclusion
Multiple choice questions
Answers
16. Power BI
Structure
Objective
16.1 Introduction to Reports
16.2 Power BI desktop
16.3 Self-service data preparation with dataflows
16.4 PBI Premium
16.5 Power BI Q&A
16.5.1 From dashboard in Power BI service
16.5.2 Featured questions
16.5.3 Q&A Visuals
16.5.4 Linguistic schema
16.5.5 Phrasing
16.5.6 Attributes phrasing
16.5.7 Name phrasing
16.5.8 Multiple phrasings
16.5.9 Types of visuals in Power BI
16.5.10 R visual
16.5.11 Power Apps visual
16.6 Data sources
Conclusion
Multiple choice questions
Answers
17. Azure Machine Learning
Structure
Objective
17.1 ML Studio (Designer)
17.1.1 Pipelines
17.1.2 Compute resources
17.1.3 Deploy
17.1.4 Publish
17.2 Choosing an algorithm
17.2.1 Predict values
17.2.2 Generate recommendations
17.2.3 Predict between several categories
17.2.4 Extract information from text
17.2.5 Discover structure
17.2.6 Find unusual occurrences
17.2.7 Predict between two categories
17.2.8 Image classification
17.3 Azure ML pipelines
17.4 Automated ML
17.4.1 Regression model
17.4.2 Time series
17.4.3 Understanding ML results
17.5 Overfitting challenges
17.5 Imbalanced data
17.6 MLOps
17.6.1 Scoring
17.6.2 Retrain model on new data
17.7 Interpretability
17.8 Deep learning
17.9 Azure AI gallery
17.10 Examples to try
Example 1: Forecasting model with Auto ML
Example 2: Classification model for handwritten digits with Keras library
Example 3: Simple logistic regression model using R
Example 4: Multi-class image classification
17.11 Integration with other services
Conclusion
Multiple choice questions
Answers
18. Sample Real-Time and Batch Architectures and Synergies
Structure
Objective
18.1 Real-time streaming
18.1.1 Apache Kafka
18.1.2 Apache Storm on HDInsight
18.2 Real-time analytics
18.2.1 Real-time anomaly detection
18.2.2 Frozen foods movement
18.2.3 Clickstreams real-time analysis
18.2.4 Live match analytics
18.3 Feedback into systems
18.4 Batch ingestion and processing
18.5 Lambda architecture
18.6 Kappa architecture
Conclusion
Multiple choice questions
Answers
19. Azure Data Catalog
Structure
Objective
19.1 Data asset
19.2 Data democratization
19.3 How Data Catalog works
19.4 Enrich
19.5 Discover
19.6 Consume
19.7 Business glossary
Conclusion
Multiple choice questions
Answers
20. Azure Active Directory
Structure
Objective
20.1 On-prem to Azure AD sync
20.2 User principal
20.3 Application/service principal
20.4 Single sign-on
20.5 MFA (Multi-Factor Authentication)
20.6 Add subscription to the tenant
20.7 Conditional access
Conclusion
Multiple choice questions
Answers
21. Azure Web Apps
Structure
Objective
21.1 Platforms and types of apps
21.2 Load balancing
21.3 CI/CD
21.4 Security and networking
21.5 App with DB
21.6 Web app in analytics
Conclusion
Multiple choice questions
Answers
22. Power Apps
Structure
Objective
22.1 Power apps basics
22.2 Connectors
22.3 Canvas apps
22.4 Model-driven apps
22.5 Portals
22.6 AI Builder
22.6 Power apps plans
Conclusion
Multiple choice questions
Answers
23. IoT Time Series Insights
Structure
Objective
23.1 Data Flow
23.2 Integration
Conclusion
Multiple choice questions
Answers
24. Azure Cognitive Services
Structure
Objective
24.1 Vision APIs
24.2 Speech APIs
24.3 Search APIs
24.4 Language APIs
24.5 Decision APIs
Conclusion
Multiple choice questions
Answers
25. Azure Logic Apps
Structure
Objective
25.1 Connectors
25.2 Actions
25.3 Triggers
25.4 Workflows
25.5 Pricing
25.6 Logic Apps for B2B capabilities
Conclusion
Multiple choice questions
Answers
26. Azure Virtual Machine
Structure
Objective
26.1 Machine learning server
26.2 Data science virtual machines
26.3 GPU virtual machines
26.4 Virtual machines tiers
26.5 Usage as integrated runtimes and OPDGs (on-premise data gateway)
26.6 VM images for 3P software
26.7 Other concepts
Conclusion
Multiple choice questions
Answers
27. Azure Functions
Structure
Objective
27.1 Serverless compute
27.2 Stateless
27.3 Machine learning
27.4 IoT Edge and Functions
27.5 Functions Pricing plans
Conclusion
Multiple choice questions
Answers
28. Azure Containers
Structure
Objective
28.1 Container registry
28.2 Pipelines
28.3 Geo-replication and scaling
28.4 Patching images
28.5 Use cases
Conclusion
Multiple choice questions
Answers
29. Azure Kubernetes
Structure
Objective
29.1 Serverless Kubernetes
29.2 Security
29.3 CI/CD Continuous Integration Continuous Deployment
29.4 Cloud migration
29.5 Compute for analytics workloads through Azure ML
29.6 IoT Edge device deployment
29.7 Streaming
29.8 Ease and benefits of using AKS
Conclusion
Multiple choice questions
Answers
30. Use Case 1
Structure
Objective
30.1 Problem
30.2 Analysis
30.3 Solution
30.3.1 Design
30.3.2 Implementation
30.3.2.1 Data Lake
30.2.3 Descriptive and diagnostic reports
Conclusion
Multiple choice questions
Answers
31. Use Case 2
Structure
Objective
31.1 Problem
31.2 Analysis
31.3 Solution
31.3.1 Recommendations
31.3.2 Community building
31.3.3 Sentiment analysis
Conclusion
Multiple choice questions
Answers
Loading...