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Import CSV Files from Amazon S3 or GCS into TiDB Cloud
Learn how to import CSV files from Amazon S3 or GCS into TiDB Cloud.
/tidbcloud/migrate-from-amazon-s3-or-gcs
/tidbcloud/migrate-from-aurora-bulk-import

Import CSV Files from Amazon S3 or GCS into TiDB Cloud

This document describes how to import CSV files from Amazon Simple Storage Service (Amazon S3) or Google Cloud Storage (GCS) into TiDB Cloud.

Limitations

  • To ensure data consistency, TiDB Cloud allows to import CSV files into empty tables only. To import data into an existing table that already contains data, you can use TiDB Cloud to import the data into a temporary empty table by following this document, and then use the INSERT SELECT statement to copy the data to the target existing table.

  • If a TiDB Cloud Dedicated cluster has a changefeed or has Point-in-time Restore enabled, you cannot import data to the cluster (the Import Data button will be disabled), because the current import data feature uses the physical import mode. In this mode, the imported data does not generate change logs, so the changefeed and Point-in-time Restore cannot detect the imported data.

Step 1. Prepare the CSV files

  1. If a CSV file is larger than 256 MB, consider splitting it into smaller files, each with a size around 256 MB.

    TiDB Cloud supports importing very large CSV files but performs best with multiple input files around 256 MB in size. This is because TiDB Cloud can process multiple files in parallel, which can greatly improve the import speed.

  2. Name the CSV files as follows:

    • If a CSV file contains all data of an entire table, name the file in the ${db_name}.${table_name}.csv format, which maps to the ${db_name}.${table_name} table when you import the data.
    • If the data of one table is separated into multiple CSV files, append a numeric suffix to these CSV files. For example, ${db_name}.${table_name}.000001.csv and ${db_name}.${table_name}.000002.csv. The numeric suffixes can be inconsecutive but must be in ascending order. You also need to add extra zeros before the number to ensure all the suffixes are in the same length.
    • TiDB Cloud supports importing compressed files in the following formats: .gzip, .gz, .zstd, .zst and .snappy. If you want to import compressed CSV files, name the files in the ${db_name}.${table_name}.${suffix}.csv.${compress} format, in which ${suffix} is optional and can be any integer such as '000001'. For example, if you want to import the trips.000001.csv.gz file to the bikeshare.trips table, you need to rename the file as bikeshare.trips.000001.csv.gz.

    Note:

    • You only need to compress the data files, not the database or table schema files.
    • To achieve better performance, it is recommended to limit the size of each compressed file to 100 MiB.
    • The Snappy compressed file must be in the official Snappy format. Other variants of Snappy compression are not supported.
    • For uncompressed files, if you cannot update the CSV filenames according to the preceding rules in some cases (for example, the CSV file links are also used by your other programs), you can keep the filenames unchanged and use the Mapping Settings in Step 4 to import your source data to a single target table.

Step 2. Create the target table schemas

Because CSV files do not contain schema information, before importing data from CSV files into TiDB Cloud, you need to create the table schemas using either of the following methods:

  • Method 1: In TiDB Cloud, create the target databases and tables for your source data.

  • Method 2: In the Amazon S3 or GCS directory where the CSV files are located, create the target table schema files for your source data as follows:

    1. Create database schema files for your source data.

      If your CSV files follow the naming rules in Step 1, the database schema files are optional for the data import. Otherwise, the database schema files are mandatory.

      Each database schema file must be in the ${db_name}-schema-create.sql format and contain a CREATE DATABASE DDL statement. With this file, TiDB Cloud will create the ${db_name} database to store your data when you import the data.

      For example, if you create a mydb-scehma-create.sql file that contains the following statement, TiDB Cloud will create the mydb database when you import the data.

      {{< copyable "sql" >}}

      CREATE DATABASE mydb;
    2. Create table schema files for your source data.

      If you do not include the table schema files in the Amazon S3 or GCS directory where the CSV files are located, TiDB Cloud will not create the corresponding tables for you when you import the data.

      Each table schema file must be in the ${db_name}.${table_name}-schema.sql format and contain a CREATE TABLE DDL statement. With this file, TiDB Cloud will create the ${db_table} table in the ${db_name} database when you import the data.

      For example, if you create a mydb.mytable-schema.sql file that contains the following statement, TiDB Cloud will create the mytable table in the mydb database when you import the data.

      {{< copyable "sql" >}}

      CREATE TABLE mytable (
      ID INT,
      REGION VARCHAR(20),
      COUNT INT );

      Note:

      Each ${db_name}.${table_name}-schema.sql file should only contain a single DDL statement. If the file contains multiple DDL statements, only the first one takes effect.

Step 3. Configure cross-account access

To allow TiDB Cloud to access the CSV files in the Amazon S3 or GCS bucket, do one of the following:

  • If your CSV files are located in Amazon S3, configure Amazon S3 access.

    You can use either an AWS access key or a Role ARN to access your bucket. Once finished, make a note of the access key (including the access key ID and secret access key) or the Role ARN value as you will need it in Step 4.

  • If your CSV files are located in GCS, configure GCS access.

Step 4. Import CSV files to TiDB Cloud

To import the CSV files to TiDB Cloud, take the following steps:

  1. Open the Import page for your target cluster.

    1. Log in to the TiDB Cloud console and navigate to the Clusters page of your project.

      Tip:

      If you have multiple projects, you can click in the lower-left corner and switch to another project.

    2. Click the name of your target cluster to go to its overview page, and then click Import in the left navigation pane.

  2. Select Import data from S3.

    If this is your first time importing data into this cluster, select Import From Amazon S3.

  3. On the Import Data from Amazon S3 page, provide the following information for the source CSV files:

    • Import File Count: select One file or Multiple files as needed.
    • Included Schema Files: this field is only visible when importing multiple files. If the source folder contains the target table schemas, select Yes. Otherwise, select No.
    • Data Format: select CSV.
    • File URI or Folder URI:
      • When importing one file, enter the source file URI and name in the following format s3://[bucket_name]/[data_source_folder]/[file_name].csv. For example, s3://sampledata/ingest/TableName.01.csv.
      • When importing multiple files, enter the source file URI and name in the following format s3://[bucket_name]/[data_source_folder]/. For example, s3://sampledata/ingest/.
    • Bucket Access: you can use either an AWS Role ARN or an AWS access key to access your bucket. For more information, see Configure Amazon S3 access.
      • AWS Role ARN: enter the AWS Role ARN value.
      • AWS Access Key: enter the AWS access key ID and AWS secret access key.
  4. Click Connect.

  5. In the Destination section, select the target database and table.

    When importing multiple files, you can use Advanced Settings > Mapping Settings to define a custom mapping rule for each target table and its corresponding CSV file. After that, the data source files will be re-scanned using the provided custom mapping rule.

    When you enter the source file URI and name in Source File URIs and Names, make sure it is in the following format s3://[bucket_name]/[data_source_folder]/[file_name].csv. For example, s3://sampledata/ingest/TableName.01.csv.

    You can also use wildcards to match the source files. For example:

    • s3://[bucket_name]/[data_source_folder]/my-data?.csv: all CSV files starting with my-data followed by one character (such as my-data1.csv and my-data2.csv) in that folder will be imported into the same target table.

    • s3://[bucket_name]/[data_source_folder]/my-data*.csv: all CSV files in the folder starting with my-data will be imported into the same target table.

    Note that only ? and * are supported.

    Note:

    The URI must contain the data source folder.

  6. Click Start Import.

  7. When the import progress shows Completed, check the imported tables.

  1. Open the Import page for your target cluster.

    1. Log in to the TiDB Cloud console and navigate to the Clusters page of your project.

      Tip:

      If you have multiple projects, you can click in the lower-left corner and switch to another project.

    2. Click the name of your target cluster to go to its overview page, and then click Import in the left navigation pane.

  2. Click Import Data in the upper-right corner.

    If this is your first time importing data into this cluster, select Import From GCS.

  3. On the Import Data from GCS page, provide the following information for the source CSV files:

    • Import File Count: select One file or Multiple files as needed.
    • Included Schema Files: this field is only visible when importing multiple files. If the source folder contains the target table schemas, select Yes. Otherwise, select No.
    • Data Format: select CSV.
    • File URI or Folder URI:
      • When importing one file, enter the source file URI and name in the following format gs://[bucket_name]/[data_source_folder]/[file_name].csv. For example, gs://sampledata/ingest/TableName.01.csv.
      • When importing multiple files, enter the source file URI and name in the following format gs://[bucket_name]/[data_source_folder]/. For example, gs://sampledata/ingest/.
    • Bucket Access: you can use a GCS IAM Role to access your bucket. For more information, see Configure GCS access.
  4. Click Connect.

  5. In the Destination section, select the target database and table.

    When importing multiple files, you can use Advanced Settings > Mapping Settings to define a custom mapping rule for each target table and its corresponding CSV file. After that, the data source files will be re-scanned using the provided custom mapping rule.

    When you enter the source file URI and name in Source File URIs and Names, make sure it is in the following format gs://[bucket_name]/[data_source_folder]/[file_name].csv. For example, gs://sampledata/ingest/TableName.01.csv.

    You can also use wildcards to match the source files. For example:

    • gs://[bucket_name]/[data_source_folder]/my-data?.csv: all CSV files starting with my-data followed by one character (such as my-data1.csv and my-data2.csv) in that folder will be imported into the same target table.

    • gs://[bucket_name]/[data_source_folder]/my-data*.csv: all CSV files in the folder starting with my-data will be imported into the same target table.

    Note that only ? and * are supported.

    Note:

    The URI must contain the data source folder.

  6. Click Start Import.

  7. When the import progress shows Completed, check the imported tables.

When you run an import task, if any unsupported or invalid conversions are detected, TiDB Cloud terminates the import job automatically and reports an importing error.

If you get an importing error, do the following:

  1. Drop the partially imported table.
  2. Check the table schema file. If there are any errors, correct the table schema file.
  3. Check the data types in the CSV files.
  4. Try the import task again.

Troubleshooting

Resolve warnings during data import

After clicking Start Import, if you see a warning message such as can't find the corresponding source files, resolve this by providing the correct source file, renaming the existing one according to Naming Conventions for Data Import, or using Advanced Settings to make changes.

After resolving these issues, you need to import the data again.

Zero rows in the imported tables

After the import progress shows Completed, check the imported tables. If the number of rows is zero, it means no data files matched the Bucket URI that you entered. In this case, resolve this issue by providing the correct source file, renaming the existing one according to Naming Conventions for Data Import, or using Advanced Settings to make changes. After that, import those tables again.