tFileInputDelimited properties for Apache Spark Batch
These properties are used to configure tFileInputDelimited running in the Spark Batch Job framework.
The Spark Batch tFileInputDelimited component belongs to the File family.
The component in this framework is available in all Talend products with Big Data and Talend Data Fabric.
Basic settings
Define a storage configuration component |
Select the configuration component to be used to provide the configuration information for the connection to the target file system such as HDFS. If you leave this check box clear, the target file system is the local system. The configuration component to be used must be present in the same Job. For example, if you have dropped a tHDFSConfiguration component in the Job, you can select it to write the result in a given HDFS system. |
Property type |
Either Built-In or Repository. |
Built-In: No property data stored centrally. |
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Repository: Select the repository file where the properties are stored. The properties are stored centrally under the Hadoop Cluster node of the Repository tree. For further information about the Hadoop Cluster node, see the Getting Started Guide. |
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Schema and Edit Schema |
A schema is a row description. It defines the number of fields (columns) to be processed and passed on to the next component. When you create a Spark Job, avoid the reserved word line when naming the fields. Click Edit
schema to make changes to the schema.
Information noteNote: If you
make changes, the schema automatically becomes built-in.
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Built-In: You create and store the schema locally for this component only. |
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Repository: You have already created the schema and stored it in the Repository. You can reuse it in various projects and Job designs. |
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Folder/File |
Browse to, or enter the path pointing to the data to be used in the file system. If the path you set points to a folder, this component will
read all of the files stored in that folder, for example,
/user/talend/in; if sub-folders exist, the sub-folders are automatically
ignored unless you define the property
spark.hadoop.mapreduce.input.fileinputformat.input.dir.recursive to be
true in the Advanced properties table in the
Spark configuration tab.
If the file to be read is a compressed one, enter the file name with its extension; then this component automatically decompresses it at runtime. The supported compression formats and their corresponding extensions are:
The button for browsing does not work with the Spark Local mode; if you are using the other Spark Yarn modes that the Studio supports with your distribution, ensure that you have correctly configured the connection in a configuration component in the same Job, such as tHDFSConfiguration. Use the configuration component depending on the filesystem to be used. |
Die on error |
Select the check box to stop the execution of the Job when an error occurs. |
Row separator |
The separator used to identify the end of a row. |
Field separator |
Enter a character, a string, or a regular expression to separate fields for the transferred data. |
Header |
Enter the number of rows to be skipped in the beginning of file. Information noteNote: This option works correctly if you do not enter a large number.
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CSV options |
Select this check box to include CSV specific parameters such as
Escape char and Text enclosure.
Information noteImportant: With Spark version 2.0
and onward, special characters must be escaped, that is "\\" and
"\"" instead of "\" and
""".
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Splittable | Select this check box to enable your Spark cluster to use
multiple executors to read large files in parallel. This check box is only available when you select the CSV options check box. |
Use multiline option |
Select this check box to enable two lines to result in one in the input file. This check box is only available when you select the CSV options check box. |
Skip empty rows |
Select this check box to skip the empty rows. |
Advanced settings
Set minimum partitions |
Select this check box to control the number of partitions to be created from the input data over the default partitioning behavior of Spark. In the displayed field, enter, without quotation marks, the minimum number of partitions you want to obtain. When you want to control the partition number, you can generally set at least as many partitions as the number of executors for parallelism, while bearing in mind the available memory and the data transfer pressure on your network. |
Custom Encoding |
You may encounter encoding issues when you process the stored data. In that situation, select this check box to display the Encoding list. Then select the encoding to be used from the list or select Custom and define it manually. |
Advanced separator (for number) |
Select this check box to change the separator used for numbers. By default, the thousands separator is a comma (,) and the decimal separator is a period (.). |
Trim all columns |
Select this check box to remove the leading and trailing whitespaces from all columns. When this check box is cleared, the Check column to trim table is displayed, which lets you select particular columns to trim. |
Check column to trim |
This table is filled automatically with the schema being used. Select the check box(es) corresponding to the column(s) to be trimmed. |
Check each row structure against schema |
Select this check box to check whether the total number of columns in each row is consistent with the schema. If not consistent, an error message will be displayed on the console. |
Check date |
Select this check box to check the date format strictly against the input schema. |
Decode String for long, int, short, byte Types |
Select this check box if any of your numeric types (long, integer, short, or byte type), will be parsed from a hexadecimal or octal string. |
Usage
Usage rule |
This component is used as a start component and requires an output link. This component, along with the Spark Batch component Palette it belongs to, appears only when you are creating a Spark Batch Job. Note that in this documentation, unless otherwise explicitly stated, a scenario presents only Standard Jobs, that is to say traditional Talend data integration Jobs. |
Spark Connection |
In the Spark
Configuration tab in the Run
view, define the connection to a given Spark cluster for the whole Job. In
addition, since the Job expects its dependent jar files for execution, you must
specify the directory in the file system to which these jar files are
transferred so that Spark can access these files:
This connection is effective on a per-Job basis. |