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FILES
Description
Reads a data file from cloud storage. FILES() accesses cloud storage with the path-related properties of the file, infers the table schema of the data in the file, and returns the data rows. You can directly query the data rows using SELECT, load the data rows into an existing table using INSERT, or create a new table and load the data rows into it using CREATE TABLE AS SELECT.
Currently, the FILES() function supports the following data sources and file formats:
Data sources:
- AWS S3
File formats:
- Parquet
- ORC
Syntax
FILES( data_location , data_format [, StorageCredentialParams ] )
data_location ::=
"path" = "s3://<s3_path>"
data_format ::=
"format" = "{parquet | orc}"
Parameters
All parameters are in the "key" = "value"
pairs.
Key | Required | Description |
---|---|---|
path | Yes | The URI used to access the file. Example: s3://testbucket/parquet/test.parquet . |
format | Yes | The format of the data file. Valid values: parquet and orc . |
StorageCredentialParams
The authentication information used by CelerData to access your storage system.
Use the IAM user-based authentication to access AWS S3:
"aws.s3.access_key" = "xxxxxxxxxx", "aws.s3.secret_key" = "yyyyyyyyyy", "aws.s3.region" = "<s3_region>"
Key Required Description aws.s3.access_key Yes The Access Key ID that you can use to access the Amazon S3 bucket. aws.s3.secret_key Yes The Secret Access Key that you can use to access the Amazon S3 bucket. aws.s3.region Yes The region in which your AWS S3 bucket resides. Example: us-west-2
.
Examples
Example 1: Query the data from the Parquet file parquet/par-dup.parquet within the AWS S3 bucket inserttest
:
MySQL > SELECT * FROM FILES(
"path" = "s3://inserttest/parquet/par-dup.parquet",
"format" = "parquet",
"aws.s3.access_key" = "XXXXXXXXXX",
"aws.s3.secret_key" = "YYYYYYYYYY",
"aws.s3.region" = "us-west-2"
);
+------+---------------------------------------------------------+
| c1 | c2 |
+------+---------------------------------------------------------+
| 1 | {"1": "key", "1": "1", "111": "1111", "111": "aaaa"} |
| 2 | {"2": "key", "2": "NULL", "222": "2222", "222": "bbbb"} |
+------+---------------------------------------------------------+
2 rows in set (22.335 sec)
Example 2: Insert the data rows from the Parquet file parquet/insert_wiki_edit_append.parquet within the AWS S3 bucket inserttest
into the table insert_wiki_edit
:
MySQL > INSERT INTO insert_wiki_edit
SELECT * FROM FILES(
"path" = "s3://inserttest/parquet/insert_wiki_edit_append.parquet",
"format" = "parquet",
"aws.s3.access_key" = "XXXXXXXXXX",
"aws.s3.secret_key" = "YYYYYYYYYY",
"aws.s3.region" = "us-west-2"
);
Query OK, 2 rows affected (23.03 sec)
{'label':'insert_d8d4b2ee-ac5c-11ed-a2cf-4e1110a8f63b', 'status':'VISIBLE', 'txnId':'2440'}
Example 3: Create a table named ctas_wiki_edit
and insert the data rows from the Parquet file parquet/insert_wiki_edit_append.parquet within the AWS S3 bucket inserttest
into the table:
MySQL > CREATE TABLE ctas_wiki_edit AS
SELECT * FROM FILES(
"path" = "s3://inserttest/parquet/insert_wiki_edit_append.parquet",
"format" = "parquet",
"aws.s3.access_key" = "XXXXXXXXXX",
"aws.s3.secret_key" = "YYYYYYYYYY",
"aws.s3.region" = "us-west-2"
);
Query OK, 2 rows affected (22.09 sec)
{'label':'insert_1a217d70-2f52-11ee-9e4a-7a563fb695da', 'status':'VISIBLE', 'txnId':'3248'}