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The first step to using a database system is to insert data into that system. DuckDB provides can directly connect to many popular data sources and offers several data ingestion methods that allow you to easily and efficiently fill up the database. On this page, we provide an overview of these methods so you can select which one is best suited for your use case.
INSERT
Statements
INSERT
statements are the standard way of loading data into a database system. They are suitable for quick prototyping, but should be avoided for bulk loading as they have significant per-row overhead.
INSERT INTO people VALUES (1, 'Mark');
For a more detailed description, see the page on the INSERT statement
.
CSV Loading
Data can be efficiently loaded from CSV files using several methods. The simplest is to use the CSV file's name:
SELECT * FROM 'test.csv';
Alternatively, use the read_csv
function to pass along options:
SELECT * FROM read_csv('test.csv', header = false);
Or use the COPY
statement:
COPY tbl FROM 'test.csv' (HEADER false);
It is also possible to read data directly from compressed CSV files (e.g., compressed with gzip):
SELECT * FROM 'test.csv.gz';
DuckDB can create a table from the loaded data using the CREATE TABLE ... AS SELECT
statement:
CREATE TABLE test AS
SELECT * FROM 'test.csv';
For more details, see the page on CSV loading.
Parquet Loading
Parquet files can be efficiently loaded and queried using their filename:
SELECT * FROM 'test.parquet';
Alternatively, use the read_parquet
function:
SELECT * FROM read_parquet('test.parquet');
Or use the COPY
statement:
COPY tbl FROM 'test.parquet';
For more details, see the page on Parquet loading.
JSON Loading
JSON files can be efficiently loaded and queried using their filename:
SELECT * FROM 'test.json';
Alternatively, use the read_json_auto
function:
SELECT * FROM read_json_auto('test.json');
Or use the COPY
statement:
COPY tbl FROM 'test.json';
For more details, see the page on JSON loading.
Appender
In several APIs (C, C , Go, Java, and Rust), the Appender can be used as an alternative for bulk data loading. This class can be used to efficiently add rows to the database system without using SQL statements.