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Easy-to-use YouTube Analytics client enables Java-based applications to easily consume YouTube Analytics Traffic, Sources, Demographics, Subscribers, etc.

ETL YouTube Analytics in Oracle Data Integrator



This article shows how to transfer YouTube Analytics data into a data warehouse using Oracle Data Integrator.

Leverage existing skills by using the JDBC standard to read and write to YouTube Analytics: Through drop-in integration into ETL tools like Oracle Data Integrator (ODI), the CData JDBC Driver for YouTube Analytics connects real-time YouTube Analytics data to your data warehouse, business intelligence, and Big Data technologies.

JDBC connectivity enables you to work with YouTube Analytics just as you would any other database in ODI. As with an RDBMS, you can use the driver to connect directly to the YouTube Analytics APIs in real time instead of working with flat files.

This article walks through a JDBC-based ETL -- YouTube Analytics to Oracle. After reverse engineering a data model of YouTube Analytics entities, you will create a mapping and select a data loading strategy -- since the driver supports SQL-92, this last step can easily be accomplished by selecting the built-in SQL to SQL Loading Knowledge Module.

Install the Driver

To install the driver, copy the driver JAR (cdata.jdbc.youtubeanalytics.jar) and .lic file (cdata.jdbc.youtubeanalytics.lic), located in the installation folder, into the ODI appropriate directory:

  • UNIX/Linux without Agent: ~/.odi/oracledi/userlib
  • UNIX/Linux with Agent: ~/.odi/oracledi/userlib and $ODI_HOME/odi/agent/lib
  • Windows without Agent: %APPDATA%\Roaming\odi\oracledi\userlib
  • Windows with Agent: %APPDATA%\odi\oracledi\userlib and %APPDATA%\odi\agent\lib

Restart ODI to complete the installation.

Reverse Engineer a Model

Reverse engineering the model retrieves metadata about the driver's relational view of YouTube Analytics data. After reverse engineering, you can query real-time YouTube Analytics data and create mappings based on YouTube Analytics tables.

  1. In ODI, connect to your repository and click New -> Model and Topology Objects.
  2. On the Model screen of the resulting dialog, enter the following information:
    • Name: Enter YouTubeAnalytics.
    • Technology: Select Generic SQL (for ODI Version 12.2+, select Microsoft SQL Server).
    • Logical Schema: Enter YouTubeAnalytics.
    • Context: Select Global.
  3. On the Data Server screen of the resulting dialog, enter the following information:
    • Name: Enter YouTubeAnalytics.
    • Driver List: Select Oracle JDBC Driver.
    • Driver: Enter cdata.jdbc.youtubeanalytics.YouTubeAnalyticsDriver
    • URL: Enter the JDBC URL containing the connection string.

      YouTube Analytics uses the OAuth authentication standard. You can use the embedded CData OAuth credentials or you can register an application with Google to obtain your own.

      In addition to the OAuth values, to access YouTube Analytics data set ChannelId to the Id of a YouTube channel. You can obtain the channel Id in the advanced account settings for your channel. If not specified, the channel of the currently authenticated user will be used.

      If you want to generate content owner reports, specify the ContentOwnerId property. This is the Id of the copyright holder for content in YouTube's rights management system. The content owner is the person or organization that claims videos and sets their monetization policy.

      Built-in Connection String Designer

      For assistance in constructing the JDBC URL, use the connection string designer built into the YouTube Analytics JDBC Driver. Either double-click the JAR file or execute the jar file from the command-line.

      java -jar cdata.jdbc.youtubeanalytics.jar

      Fill in the connection properties and copy the connection string to the clipboard.

      Below is a typical connection string:

      jdbc:youtubeanalytics:ContentOwnerId=MyContentOwnerId;ChannelId=MyChannelId;InitiateOAuth=GETANDREFRESH
  4. On the Physical Schema screen, enter the following information:
    • Name: Select from the Drop Down menu.
    • Database (Catalog): Enter CData.
    • Owner (Schema): If you select a Schema for YouTube Analytics, enter the Schema selected, otherwise enter YouTubeAnalytics.
    • Database (Work Catalog): Enter CData.
    • Owner (Work Schema): If you select a Schema for YouTube Analytics, enter the Schema selected, otherwise enter YouTubeAnalytics.
  5. In the opened model click Reverse Engineer to retrieve the metadata for YouTube Analytics tables.

Edit and Save YouTube Analytics Data

After reverse engineering you can now work with YouTube Analytics data in ODI. To edit and save YouTube Analytics data, expand the Models accordion in the Designer navigator, right-click a table, and click Data. Click Refresh to pick up any changes to the data. Click Save Changes when you are finished making changes.

Create an ETL Project

Follow the steps below to create an ETL from YouTube Analytics. You will load Groups entities into the sample data warehouse included in the ODI Getting Started VM.

  1. Open SQL Developer and connect to your Oracle database. Right-click the node for your database in the Connections pane and click new SQL Worksheet.

    Alternatively you can use SQLPlus. From a command prompt enter the following:

    sqlplus / as sysdba
  2. Enter the following query to create a new target table in the sample data warehouse, which is in the ODI_DEMO schema. The following query defines a few columns that match the Groups table in YouTube Analytics: CREATE TABLE ODI_DEMO.TRG_GROUPS (CONTENTDETAILS_ITEMCOUNT NUMBER(20,0),Snippet_Title VARCHAR2(255));
  3. In ODI expand the Models accordion in the Designer navigator and double-click the Sales Administration node in the ODI_DEMO folder. The model is opened in the Model Editor.
  4. Click Reverse Engineer. The TRG_GROUPS table is added to the model.
  5. Right-click the Mappings node in your project and click New Mapping. Enter a name for the mapping and clear the Create Empty Dataset option. The Mapping Editor is displayed.
  6. Drag the TRG_GROUPS table from the Sales Administration model onto the mapping.
  7. Drag the Groups table from the YouTube Analytics model onto the mapping.
  8. Click the source connector point and drag to the target connector point. The Attribute Matching dialog is displayed. For this example, use the default options. The target expressions are then displayed in the properties for the target columns.
  9. Open the Physical tab of the Mapping Editor and click GROUPS_AP in TARGET_GROUP.
  10. In the GROUPS_AP properties, select LKM SQL to SQL (Built-In) on the Loading Knowledge Module tab.

You can then run the mapping to load YouTube Analytics data into Oracle.