Load mysql table with ConnectorX & Arrow
info
The source code for this example can be found in our repository at: https://github.com/dlt-hub/dlt/tree/devel/docs/examples/connector_x_arrow
About this Example
The example script below takes genome data from public mysql instance and then loads it into duckdb. Mind that your destination
must support loading of parquet files as this is the format that dlt
uses to save arrow tables. Connector X allows to
get data from several popular databases and creates in memory Arrow table which dlt
then saves to load package and loads to the destination.
tip
You can yield several tables if your data is large and you need to partition your load.
We'll learn:
- How to get arrow tables from connector X and yield them.
- That merge and incremental loads work with arrow tables.
- How to enable incremental loading for efficient data extraction.
- How to use build in ConnectionString credentials.
Full source code
import connectorx as cx
import dlt
from dlt.sources.credentials import ConnectionStringCredentials
def read_sql_x(
conn_str: ConnectionStringCredentials = dlt.secrets.value,
query: str = dlt.config.value,
):
yield cx.read_sql(
conn_str.to_native_representation(),
query,
return_type="arrow2",
protocol="binary",
)
def genome_resource():
# create genome resource with merge on `upid` primary key
genome = dlt.resource(
name="genome",
write_disposition="merge",
primary_key="upid",
standalone=True,
)(read_sql_x)(
"mysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam", # type: ignore[arg-type]
"SELECT * FROM genome ORDER BY created LIMIT 1000",
)
# add incremental on created at
genome.apply_hints(incremental=dlt.sources.incremental("created"))
return genome
if __name__ == "__main__":
pipeline = dlt.pipeline(destination="duckdb")
genome = genome_resource()
load_info = pipeline.run(genome)
print(load_info)
print(pipeline.last_trace.last_normalize_info)
# NOTE: run pipeline again to see that no more records got loaded thanks to incremental loading
# check that stuff was loaded
row_counts = pipeline.last_trace.last_normalize_info.row_counts
assert row_counts["genome"] == 1000