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299 lines
13 KiB
Markdown
---
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slug: /en/sql-reference/table-functions/s3
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sidebar_position: 180
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sidebar_label: s3
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keywords: [s3, gcs, bucket]
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---
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# s3 Table Function
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Provides a table-like interface to select/insert files in [Amazon S3](https://aws.amazon.com/s3/) and [Google Cloud Storage](https://cloud.google.com/storage/). This table function is similar to the [hdfs function](../../sql-reference/table-functions/hdfs.md), but provides S3-specific features.
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If you have multiple replicas in your cluster, you can use the [s3Cluster function](../../sql-reference/table-functions/s3Cluster.md) instead to parallelize inserts.
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When using the `s3 table function` with [`INSERT INTO...SELECT`](../../sql-reference/statements/insert-into#inserting-the-results-of-select), data is read and inserted in a streaming fashion. Only a few blocks of data reside in memory while the blocks are continuously read from S3 and pushed into the destination table.
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**Syntax**
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``` sql
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s3(url [, NOSIGN | access_key_id, secret_access_key, [session_token]] [,format] [,structure] [,compression_method])
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s3(named_collection[, option=value [,..]])
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```
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:::tip GCS
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The S3 Table Function integrates with Google Cloud Storage by using the GCS XML API and HMAC keys. See the [Google interoperability docs]( https://cloud.google.com/storage/docs/interoperability) for more details about the endpoint and HMAC.
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For GCS, substitute your HMAC key and HMAC secret where you see `access_key_id` and `secret_access_key`.
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:::
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**Parameters**
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`s3` table function supports the following plain parameters:
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- `url` — Bucket url with path to file. Supports following wildcards in readonly mode: `*`, `**`, `?`, `{abc,def}` and `{N..M}` where `N`, `M` — numbers, `'abc'`, `'def'` — strings. For more information see [here](../../engines/table-engines/integrations/s3.md#wildcards-in-path).
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:::note GCS
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The GCS url is in this format as the endpoint for the Google XML API is different than the JSON API:
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```
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https://storage.googleapis.com/<bucket>/<folder>/<filename(s)>
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```
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and not ~~https://storage.cloud.google.com~~.
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:::
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- `NOSIGN` — If this keyword is provided in place of credentials, all the requests will not be signed.
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- `access_key_id` and `secret_access_key` — Keys that specify credentials to use with given endpoint. Optional.
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- `session_token` - Session token to use with the given keys. Optional when passing keys.
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- `format` — The [format](../../interfaces/formats.md#formats) of the file.
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- `structure` — Structure of the table. Format `'column1_name column1_type, column2_name column2_type, ...'`.
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- `compression_method` — Parameter is optional. Supported values: `none`, `gzip/gz`, `brotli/br`, `xz/LZMA`, `zstd/zst`. By default, it will autodetect compression method by file extension.
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Arguments can also be passed using [named collections](/docs/en/operations/named-collections.md). In this case `url`, `access_key_id`, `secret_access_key`, `format`, `structure`, `compression_method` work in the same way, and some extra parameters are supported:
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- `filename` — appended to the url if specified.
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- `use_environment_credentials` — enabled by default, allows passing extra parameters using environment variables `AWS_CONTAINER_CREDENTIALS_RELATIVE_URI`, `AWS_CONTAINER_CREDENTIALS_FULL_URI`, `AWS_CONTAINER_AUTHORIZATION_TOKEN`, `AWS_EC2_METADATA_DISABLED`.
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- `no_sign_request` — disabled by default.
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- `expiration_window_seconds` — default value is 120.
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**Returned value**
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A table with the specified structure for reading or writing data in the specified file.
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**Examples**
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Selecting the first 5 rows from the table from S3 file `https://datasets-documentation.s3.eu-west-3.amazonaws.com/aapl_stock.csv`:
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``` sql
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SELECT *
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FROM s3(
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'https://datasets-documentation.s3.eu-west-3.amazonaws.com/aapl_stock.csv',
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'CSVWithNames'
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)
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LIMIT 5;
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```
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```response
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┌───────Date─┬────Open─┬────High─┬─────Low─┬───Close─┬───Volume─┬─OpenInt─┐
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│ 1984-09-07 │ 0.42388 │ 0.42902 │ 0.41874 │ 0.42388 │ 23220030 │ 0 │
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│ 1984-09-10 │ 0.42388 │ 0.42516 │ 0.41366 │ 0.42134 │ 18022532 │ 0 │
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│ 1984-09-11 │ 0.42516 │ 0.43668 │ 0.42516 │ 0.42902 │ 42498199 │ 0 │
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│ 1984-09-12 │ 0.42902 │ 0.43157 │ 0.41618 │ 0.41618 │ 37125801 │ 0 │
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│ 1984-09-13 │ 0.43927 │ 0.44052 │ 0.43927 │ 0.43927 │ 57822062 │ 0 │
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└────────────┴─────────┴─────────┴─────────┴─────────┴──────────┴─────────┘
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```
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:::note
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ClickHouse uses filename extensions to determine the format of the data. For example, we could have run the previous command without the `CSVWithNames`:
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``` sql
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SELECT *
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FROM s3(
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'https://datasets-documentation.s3.eu-west-3.amazonaws.com/aapl_stock.csv'
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)
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LIMIT 5;
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```
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ClickHouse also can determine the compression method of the file. For example, if the file was zipped up with a `.csv.gz` extension, ClickHouse would decompress the file automatically.
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:::
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## Usage
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Suppose that we have several files with following URIs on S3:
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/some_prefix/some_file_1.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/some_prefix/some_file_2.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/some_prefix/some_file_3.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/some_prefix/some_file_4.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/another_prefix/some_file_1.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/another_prefix/some_file_2.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/another_prefix/some_file_3.csv'
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- 'https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/another_prefix/some_file_4.csv'
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Count the amount of rows in files ending with numbers from 1 to 3:
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``` sql
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SELECT count(*)
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FROM s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/{some,another}_prefix/some_file_{1..3}.csv', 'CSV', 'name String, value UInt32')
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```
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``` text
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┌─count()─┐
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│ 18 │
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└─────────┘
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```
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Count the total amount of rows in all files in these two directories:
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``` sql
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SELECT count(*)
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FROM s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/{some,another}_prefix/*', 'CSV', 'name String, value UInt32')
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```
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``` text
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┌─count()─┐
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│ 24 │
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└─────────┘
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```
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:::tip
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If your listing of files contains number ranges with leading zeros, use the construction with braces for each digit separately or use `?`.
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:::
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Count the total amount of rows in files named `file-000.csv`, `file-001.csv`, ... , `file-999.csv`:
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``` sql
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SELECT count(*)
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FROM s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/big_prefix/file-{000..999}.csv', 'CSV', 'name String, value UInt32');
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```
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``` text
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┌─count()─┐
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│ 12 │
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└─────────┘
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```
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Insert data into file `test-data.csv.gz`:
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``` sql
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INSERT INTO FUNCTION s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/test-data.csv.gz', 'CSV', 'name String, value UInt32', 'gzip')
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VALUES ('test-data', 1), ('test-data-2', 2);
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```
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Insert data into file `test-data.csv.gz` from existing table:
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``` sql
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INSERT INTO FUNCTION s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/test-data.csv.gz', 'CSV', 'name String, value UInt32', 'gzip')
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SELECT name, value FROM existing_table;
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```
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Glob ** can be used for recursive directory traversal. Consider the below example, it will fetch all files from `my-test-bucket-768` directory recursively:
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``` sql
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SELECT * FROM s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/**', 'CSV', 'name String, value UInt32', 'gzip');
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```
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The below get data from all `test-data.csv.gz` files from any folder inside `my-test-bucket` directory recursively:
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``` sql
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SELECT * FROM s3('https://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/**/test-data.csv.gz', 'CSV', 'name String, value UInt32', 'gzip');
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```
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Note. It is possible to specify custom URL mappers in the server configuration file. Example:
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``` sql
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SELECT * FROM s3('s3://clickhouse-public-datasets/my-test-bucket-768/**/test-data.csv.gz', 'CSV', 'name String, value UInt32', 'gzip');
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```
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The URL `'s3://clickhouse-public-datasets/my-test-bucket-768/**/test-data.csv.gz'` would be replaced to `'http://clickhouse-public-datasets.s3.amazonaws.com/my-test-bucket-768/**/test-data.csv.gz'`
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Custom mapper can be added into `config.xml`:
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``` xml
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<url_scheme_mappers>
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<s3>
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<to>https://{bucket}.s3.amazonaws.com</to>
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</s3>
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<gs>
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<to>https://{bucket}.storage.googleapis.com</to>
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</gs>
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<oss>
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<to>https://{bucket}.oss.aliyuncs.com</to>
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</oss>
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</url_scheme_mappers>
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```
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For production use cases it is recommended to use [named collections](/docs/en/operations/named-collections.md). Here is the example:
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``` sql
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CREATE NAMED COLLECTION creds AS
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access_key_id = '***',
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secret_access_key = '***';
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SELECT count(*)
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FROM s3(creds, url='https://s3-object-url.csv')
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```
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## Partitioned Write
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If you specify `PARTITION BY` expression when inserting data into `S3` table, a separate file is created for each partition value. Splitting the data into separate files helps to improve reading operations efficiency.
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**Examples**
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1. Using partition ID in a key creates separate files:
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```sql
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INSERT INTO TABLE FUNCTION
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s3('http://bucket.amazonaws.com/my_bucket/file_{_partition_id}.csv', 'CSV', 'a String, b UInt32, c UInt32')
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PARTITION BY a VALUES ('x', 2, 3), ('x', 4, 5), ('y', 11, 12), ('y', 13, 14), ('z', 21, 22), ('z', 23, 24);
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```
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As a result, the data is written into three files: `file_x.csv`, `file_y.csv`, and `file_z.csv`.
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2. Using partition ID in a bucket name creates files in different buckets:
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```sql
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INSERT INTO TABLE FUNCTION
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s3('http://bucket.amazonaws.com/my_bucket_{_partition_id}/file.csv', 'CSV', 'a UInt32, b UInt32, c UInt32')
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PARTITION BY a VALUES (1, 2, 3), (1, 4, 5), (10, 11, 12), (10, 13, 14), (20, 21, 22), (20, 23, 24);
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```
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As a result, the data is written into three files in different buckets: `my_bucket_1/file.csv`, `my_bucket_10/file.csv`, and `my_bucket_20/file.csv`.
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## Accessing public buckets
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ClickHouse tries to fetch credentials from many different types of sources.
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Sometimes, it can produce problems when accessing some buckets that are public causing the client to return `403` error code.
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This issue can be avoided by using `NOSIGN` keyword, forcing the client to ignore all the credentials, and not sign the requests.
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``` sql
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SELECT *
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FROM s3(
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'https://datasets-documentation.s3.eu-west-3.amazonaws.com/aapl_stock.csv',
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NOSIGN,
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'CSVWithNames'
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)
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LIMIT 5;
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```
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## Working with archives
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Suppose that we have several archive files with following URIs on S3:
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- 'https://s3-us-west-1.amazonaws.com/umbrella-static/top-1m-2018-01-10.csv.zip'
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- 'https://s3-us-west-1.amazonaws.com/umbrella-static/top-1m-2018-01-11.csv.zip'
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- 'https://s3-us-west-1.amazonaws.com/umbrella-static/top-1m-2018-01-12.csv.zip'
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Extracting data from these archives is possible using ::. Globs can be used both in the url part as well as in the part after :: (responsible for the name of a file inside the archive).
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``` sql
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SELECT *
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FROM s3(
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'https://s3-us-west-1.amazonaws.com/umbrella-static/top-1m-2018-01-1{0..2}.csv.zip :: *.csv'
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);
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```
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## Virtual Columns {#virtual-columns}
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- `_path` — Path to the file. Type: `LowCardinalty(String)`. In case of archive, shows path in a format: "{path_to_archive}::{path_to_file_inside_archive}"
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- `_file` — Name of the file. Type: `LowCardinalty(String)`. In case of archive shows name of the file inside the archive.
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- `_size` — Size of the file in bytes. Type: `Nullable(UInt64)`. If the file size is unknown, the value is `NULL`. In case of archive shows uncompressed file size of the file inside the archive.
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- `_time` — Last modified time of the file. Type: `Nullable(DateTime)`. If the time is unknown, the value is `NULL`.
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## Hive-style partitioning {#hive-style-partitioning}
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When setting `use_hive_partitioning` is set to 1, ClickHouse will detect Hive-style partitioning in the path (`/name=value/`) and will allow to use partition columns as virtual columns in the query. These virtual columns will have the same names as in the partitioned path, but starting with `_`.
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**Example**
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Use virtual column, created with Hive-style partitioning
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``` sql
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SET use_hive_partitioning = 1;
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SELECT * from s3('s3://data/path/date=*/country=*/code=*/*.parquet') where _date > '2020-01-01' and _country = 'Netherlands' and _code = 42;
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```
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## Storage Settings {#storage-settings}
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- [s3_truncate_on_insert](/docs/en/operations/settings/settings.md#s3_truncate_on_insert) - allows to truncate file before insert into it. Disabled by default.
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- [s3_create_new_file_on_insert](/docs/en/operations/settings/settings.md#s3_create_new_file_on_insert) - allows to create a new file on each insert if format has suffix. Disabled by default.
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- [s3_skip_empty_files](/docs/en/operations/settings/settings.md#s3_skip_empty_files) - allows to skip empty files while reading. Disabled by default.
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**See Also**
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- [S3 engine](../../engines/table-engines/integrations/s3.md)
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