Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Microsoft Build 2018 Analytic Solutions with Azure Data Factory and Azure SQL Data Warehouse
1.
2.
3.
4.
5.
6. A fully-managed data integration service in the cloud
A Z U R E D A TA F A C T O R Y
H Y B R I D S C A L A B L EP R O D U C T I V E T R U S T E D
Serverless scalability
with no infrastructure
to manage
Drag & Drop UI
Codeless Data
Movement
Orchestrate where
your data lives
Lift SSIS packages
to Azure
Certified compliant
Data Movement
7. Modernize your enterprise data warehouse at scale
A Z U R E D A T A F A C T O R Y
Social
LOB
Graph
IoT
Image
CRM STORE
Azure Data Lake
and Azure Storage
MODEL &
SERVE
Azure SQL DW
HDInsight
Data Lake
PREP &
TRANSFORM
Data Transformation
Machine Learning
INGEST
Data orchestration,
scheduling
and monitoring
Apps and
Insights
Integrate via Azure Data Factory
Cloud
VNet
On-premise
8. EXTRACT TRANSFORM LOAD MODEL & SERVE
Drought
Weather
Counties
NOAA
Azure
Analysis Services
Azure SQL Data
Warehouse
Data Marts
for ML
Azure Databricks
Azure Data Factory
Power BI
Polybase
Data
Transformation
Apps and
Insights
17. Secure. Compliant. Reliable.Unlimited scale
Seamlessly compatible across Microsoft and
other leading BI & Data Integration ser vices
The fast, flexible, and secure hub for all your data
TrustedFast
Fits your needs
Flexible
18. Introducing SQL Data Warehouse Gen2
5x improvement in performance
4x concurrent queries
5x scalability
Retains all elastic functionality
A data factory can have one or more pipelines. A pipeline is a logical grouping of activities that together perform a task. The activities in a pipeline define actions to perform on your data. For example, you might use a copy activity to copy data from an on-premises SQL Server to Azure Blob storage. Then, you might use a Hive activity that runs a Hive script on an Azure HDInsight cluster to process data from Blob storage to produce output data. Finally, you might use a second copy activity to copy the output data to Azure SQL Data Warehouse, on top of which business intelligence (BI) reporting solutions are built.
A dataset is a named view of data that references the data and the structure of the data you want to use in your activities as inputs and outputs. Datasets identify data within different data stores, such as tables, files, folders, and documents. For example, an Azure Blob dataset specifies the blob container and folder in Blob storage from which the activity should read the data.
Before you create a dataset, you must create a linked service to link your data store to the data factory. Linked services are much like connection strings, which define the connection information needed for Data Factory to connect to external resources. Think of it this way; the dataset represents the structure of the data within the linked data stores, and the linked service defines the connection to the data source. For example, an Azure Storage linked service links a storage account to the data factory. An Azure Blob dataset represents the blob container and the folder within that Azure storage account that contains the input blobs to be processed.