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Load Data from IBM Db2 to Databricks Using dlt in Python

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IBM Db2 is a robust database solution designed to protect, enhance performance, and ensure resilience for your applications and analytics, whether on-premises or in the cloud. It aims to reduce costs and complexity through a single, cloud-native engine built for all workloads. Databricks is a unified data analytics platform created by the originators of Apache Spark™, which accelerates innovation by integrating data science, engineering, and business operations. Using the open-source Python library dlt, you can seamlessly load data from IBM Db2 to Databricks, enabling efficient data processing and analysis. For more details on IBM Db2, visit IBM Db2 Product Page.

dlt Key Features

  • Pipeline Metadata: dlt pipelines leverage metadata to provide governance capabilities, including load IDs for tracking data loads and facilitating data lineage and traceability. Read more about lineage.
  • Schema Enforcement and Curation: Ensure data consistency and quality by enforcing and curating schemas. This helps maintain data integrity and standardized data handling practices. Learn more about adjusting a schema.
  • Schema Evolution Alerts: dlt notifies users of schema changes, allowing them to review and validate changes, update downstream processes, or perform impact analysis. Learn more about schema evolution.
  • Scaling and Finetuning: dlt offers various mechanisms and configuration options to scale up and fine-tune pipelines, including parallel extraction, normalization, and loading. Read more about performance.
  • Advanced Features: dlt is a constantly growing library that supports many features and use cases needed by the community. Join our Slack to find recent releases or discuss what you can build with dlt.

Getting started with your pipeline locally

0. Prerequisites

dlt requires Python 3.8 or higher. Additionally, you need to have the pip package manager installed, and we recommend using a virtual environment to manage your dependencies. You can learn more about preparing your computer for dlt in our installation reference.

1. Install dlt

First you need to install the dlt library with the correct extras for Databricks:

pip install "dlt[databricks]"

The dlt cli has a useful command to get you started with any combination of source and destination. For this example, we want to load data from IBM Db2 to Databricks. You can run the following commands to create a starting point for loading data from IBM Db2 to Databricks:

# create a new directory
mkdir sql_database_db2_pipeline
cd sql_database_db2_pipeline
# initialize a new pipeline with your source and destination
dlt init sql_database databricks
# install the required dependencies
pip install -r requirements.txt

The last command will install the required dependencies for your pipeline. The dependencies are listed in the requirements.txt:


sqlalchemy>=1.4
dlt[databricks]>=0.4.7

You now have the following folder structure in your project:

sql_database_db2_pipeline/
├── .dlt/
│ ├── config.toml # configs for your pipeline
│ └── secrets.toml # secrets for your pipeline
├── sql_database/ # folder with source specific files
│ └── ...
├── sql_database_pipeline.py # your main pipeline script
├── requirements.txt # dependencies for your pipeline
└── .gitignore # ignore files for git (not required)

2. Configuring your source and destination credentials

The dlt cli will have created a .dlt directory in your project folder. This directory contains a config.toml file and a secrets.toml file that you can use to configure your pipeline. The automatically created version of these files look like this:

generated config.toml

# put your configuration values here

[runtime]
log_level="WARNING" # the system log level of dlt
# use the dlthub_telemetry setting to enable/disable anonymous usage data reporting, see https://dlthub.com/docs/telemetry
dlthub_telemetry = true

generated secrets.toml

# put your secret values and credentials here. do not share this file and do not push it to github

[sources.sql_database.credentials]
drivername = "drivername" # please set me up!
database = "database" # please set me up!
password = "password" # please set me up!
username = "username" # please set me up!
host = "host" # please set me up!
port = 0 # please set me up!

[destination.databricks]
dataset_name = "dataset_name" # please set me up!

[destination.databricks.credentials]
catalog = "catalog" # please set me up!
server_hostname = "server_hostname" # please set me up!
http_path = "http_path" # please set me up!
access_token = "access_token" # please set me up!

2.1. Adjust the generated code to your usecase

Further help setting up your source and destinations
  • Read more about setting up the IBM Db2 source in our docs.
  • Read more about setting up the Databricks destination in our docs.

The default sql_database pipeline is configured to connect to an example postgres database. The sql_database source supports all sql dialects supported by SQLAlchemy. Please refer to the IBM Db2 PyPi Project docs for additional info.

To connect to IBM Db2 with this example pipeline, you'll need to install an IBM Db2 Python DB API driver:

pip install ibm-db-sa

And use an IBM Db2 Server connection String in your code:

credentials = ConnectionStringCredentials(
"db2+ibm_db://username:password@host:50000/database"
)

Or your secrets.toml:

[sources.sql_database.credentials]
drivername = "db2+ibm_db"
database = "database"
password = "password"
username = "username"
host = "host"
port = 50000

3. Running your pipeline for the first time

The dlt cli has also created a main pipeline script for you at sql_database_pipeline.py, as well as a folder sql_database that contains additional python files for your source. These files are your local copies which you can modify to fit your needs. In some cases you may find that you only need to do small changes to your pipelines or add some configurations, in other cases these files can serve as a working starting point for your code, but will need to be adjusted to do what you need them to do.

The main pipeline script will look something like this:


import sqlalchemy as sa
import humanize

import dlt
from dlt.common import pendulum
from dlt.sources.credentials import ConnectionStringCredentials

from sql_database import sql_database, sql_table, Table


def load_select_tables_from_database() -> None:
"""Use the sql_database source to reflect an entire database schema and load select tables from it.

This example sources data from the public Rfam MySQL database.
"""
# Create a pipeline
pipeline = dlt.pipeline(
pipeline_name="rfam", destination='databricks', dataset_name="rfam_data"
)

# Credentials for the sample database.
# Note: It is recommended to configure credentials in `.dlt/secrets.toml` under `sources.sql_database.credentials`
credentials = ConnectionStringCredentials(
"mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam"
)
# To pass the credentials from `secrets.toml`, comment out the above credentials.
# And the credentials will be automatically read from `secrets.toml`.

# Configure the source to load a few select tables incrementally
source_1 = sql_database(credentials).with_resources("family", "clan")
# Add incremental config to the resources. "updated" is a timestamp column in these tables that gets used as a cursor
source_1.family.apply_hints(incremental=dlt.sources.incremental("updated"))
source_1.clan.apply_hints(incremental=dlt.sources.incremental("updated"))

# Run the pipeline. The merge write disposition merges existing rows in the destination by primary key
info = pipeline.run(source_1, write_disposition="merge")
print(info)

# Load some other tables with replace write disposition. This overwrites the existing tables in destination
source_2 = sql_database(credentials).with_resources("features", "author")
info = pipeline.run(source_2, write_disposition="replace")
print(info)

# Load a table incrementally with append write disposition
# this is good when a table only has new rows inserted, but not updated
source_3 = sql_database(credentials).with_resources("genome")
source_3.genome.apply_hints(incremental=dlt.sources.incremental("created"))

info = pipeline.run(source_3, write_disposition="append")
print(info)


def load_entire_database() -> None:
"""Use the sql_database source to completely load all tables in a database"""
pipeline = dlt.pipeline(
pipeline_name="rfam", destination='databricks', dataset_name="rfam_data"
)

# By default the sql_database source reflects all tables in the schema
# The database credentials are sourced from the `.dlt/secrets.toml` configuration
source = sql_database()

# Run the pipeline. For a large db this may take a while
info = pipeline.run(source, write_disposition="replace")
print(
humanize.precisedelta(
pipeline.last_trace.finished_at - pipeline.last_trace.started_at
)
)
print(info)


def load_standalone_table_resource() -> None:
"""Load a few known tables with the standalone sql_table resource, request full schema and deferred
table reflection"""
pipeline = dlt.pipeline(
pipeline_name="rfam_database",
destination='databricks',
dataset_name="rfam_data",
full_refresh=True,
)

# Load a table incrementally starting at a given date
# Adding incremental via argument like this makes extraction more efficient
# as only rows newer than the start date are fetched from the table
# we also use `detect_precision_hints` to get detailed column schema
# and defer_table_reflect to reflect schema only during execution
family = sql_table(
credentials="mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam",
table="family",
incremental=dlt.sources.incremental(
"updated",
),
detect_precision_hints=True,
defer_table_reflect=True,
)
# columns will be empty here due to defer_table_reflect set to True
print(family.compute_table_schema())

# Load all data from another table
genome = sql_table(
credentials="mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam",
table="genome",
detect_precision_hints=True,
defer_table_reflect=True,
)

# Run the resources together
info = pipeline.extract([family, genome], write_disposition="merge")
print(info)
# Show inferred columns
print(pipeline.default_schema.to_pretty_yaml())


def select_columns() -> None:
"""Uses table adapter callback to modify list of columns to be selected"""
pipeline = dlt.pipeline(
pipeline_name="rfam_database",
destination='databricks',
dataset_name="rfam_data_cols",
full_refresh=True,
)

def table_adapter(table: Table) -> None:
print(table.name)
if table.name == "family":
# this is SqlAlchemy table. _columns are writable
# let's drop updated column
table._columns.remove(table.columns["updated"])

family = sql_table(
credentials="mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam",
table="family",
chunk_size=10,
detect_precision_hints=True,
table_adapter_callback=table_adapter,
)

# also we do not want the whole table, so we add limit to get just one chunk (10 records)
pipeline.run(family.add_limit(1))
# only 10 rows
print(pipeline.last_trace.last_normalize_info)
# no "updated" column in "family" table
print(pipeline.default_schema.to_pretty_yaml())


def select_with_end_value_and_row_order() -> None:
"""Gets data from a table withing a specified range and sorts rows descending"""
pipeline = dlt.pipeline(
pipeline_name="rfam_database",
destination='databricks',
dataset_name="rfam_data",
full_refresh=True,
)

# gets data from this range
start_date = pendulum.now().subtract(years=1)
end_date = pendulum.now()

family = sql_table(
credentials="mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam",
table="family",
incremental=dlt.sources.incremental( # declares desc row order
"updated", initial_value=start_date, end_value=end_date, row_order="desc"
),
chunk_size=10,
)
# also we do not want the whole table, so we add limit to get just one chunk (10 records)
pipeline.run(family.add_limit(1))
# only 10 rows
print(pipeline.last_trace.last_normalize_info)


def my_sql_via_pyarrow() -> None:
"""Uses pyarrow backend to load tables from mysql"""

# uncomment line below to get load_id into your data (slows pyarrow loading down)
# dlt.config["normalize.parquet_normalizer.add_dlt_load_id"] = True

# Create a pipeline
pipeline = dlt.pipeline(
pipeline_name="rfam_cx",
destination='databricks',
dataset_name="rfam_data_arrow_4",
)

def _double_as_decimal_adapter(table: sa.Table) -> None:
"""Return double as double, not decimals"""
for column in table.columns.values():
if isinstance(column.type, sa.Double):
column.type.asdecimal = False

sql_alchemy_source = sql_database(
"mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam?&binary_prefix=true",
backend="pyarrow",
table_adapter_callback=_double_as_decimal_adapter,
).with_resources("family", "genome")

info = pipeline.run(sql_alchemy_source)
print(info)


def create_unsw_flow() -> None:
"""Uploads UNSW_Flow dataset to postgres via csv stream skipping dlt normalizer.
You need to download the dataset from https://github.com/rdpahalavan/nids-datasets
"""
from pyarrow.parquet import ParquetFile

# from dlt.destinations import postgres

# use those config to get 3x speedup on parallelism
# [sources.data_writer]
# file_max_bytes=3000000
# buffer_max_items=200000

# [normalize]
# workers=3

data_iter = ParquetFile("UNSW-NB15/Network-Flows/UNSW_Flow.parquet").iter_batches(
batch_size=128 * 1024
)

pipeline = dlt.pipeline(
pipeline_name="unsw_upload",
# destination=postgres("postgres://loader:loader@localhost:5432/dlt_data"),
destination='databricks',
progress="log",
)
pipeline.run(
data_iter,
dataset_name="speed_test",
table_name="unsw_flow_7",
loader_file_format="csv",
)


def test_connectorx_speed() -> None:
"""Uses unsw_flow dataset (~2mln rows, 25+ columns) to test connectorx speed"""
import os

# from dlt.destinations import filesystem

unsw_table = sql_table(
"postgresql://loader:loader@localhost:5432/dlt_data",
"unsw_flow_7",
"speed_test",
# this is ignored by connectorx
chunk_size=100000,
backend="connectorx",
# keep source data types
detect_precision_hints=True,
# just to demonstrate how to setup a separate connection string for connectorx
backend_kwargs={"conn": "postgresql://loader:loader@localhost:5432/dlt_data"},
)

pipeline = dlt.pipeline(
pipeline_name="unsw_download",
destination='databricks',
# destination=filesystem(os.path.abspath("../_storage/unsw")),
progress="log",
full_refresh=True,
)

info = pipeline.run(
unsw_table,
dataset_name="speed_test",
table_name="unsw_flow",
loader_file_format="parquet",
)
print(info)


def test_pandas_backend_verbatim_decimals() -> None:
pipeline = dlt.pipeline(
pipeline_name="rfam_cx",
destination='databricks',
dataset_name="rfam_data_pandas_2",
)

def _double_as_decimal_adapter(table: sa.Table) -> None:
"""Emits decimals instead of floats."""
for column in table.columns.values():
if isinstance(column.type, sa.Float):
column.type.asdecimal = True

sql_alchemy_source = sql_database(
"mysql+pymysql://rfamro@mysql-rfam-public.ebi.ac.uk:4497/Rfam?&binary_prefix=true",
backend="pandas",
table_adapter_callback=_double_as_decimal_adapter,
chunk_size=100000,
# set coerce_float to False to represent them as string
backend_kwargs={"coerce_float": False, "dtype_backend": "numpy_nullable"},
# preserve full typing info. this will parse
detect_precision_hints=True,
).with_resources("family", "genome")

info = pipeline.run(sql_alchemy_source)
print(info)


if __name__ == "__main__":
# Load selected tables with different settings
load_select_tables_from_database()

# load a table and select columns
# select_columns()

# load_entire_database()
# select_with_end_value_and_row_order()

# Load tables with the standalone table resource
# load_standalone_table_resource()

# Load all tables from the database.
# Warning: The sample database is very large
# load_entire_database()

Provided you have set up your credentials, you can run your pipeline like a regular python script with the following command:

python sql_database_pipeline.py

4. Inspecting your load result

You can now inspect the state of your pipeline with the dlt cli:

dlt pipeline sql_database info

You can also use streamlit to inspect the contents of your Databricks destination for this:

# install streamlit
pip install streamlit
# run the streamlit app for your pipeline with the dlt cli:
dlt pipeline sql_database show

5. Next steps to get your pipeline running in production

One of the beauties of dlt is, that we are just a plain Python library, so you can run your pipeline in any environment that supports Python >= 3.8. We have a couple of helpers and guides in our docs to get you there:

The Deploy section will show you how to deploy your pipeline to

  • Deploy with GitHub Actions: Learn how to deploy your pipeline using GitHub Actions, a CI/CD runner that you can use for free. Read more
  • Deploy with Airflow and Google Composer: Follow this guide to deploy your pipeline with Airflow and Google Composer, a managed Airflow environment provided by Google. Read more
  • Deploy with Google Cloud Functions: Explore how to deploy your pipeline using Google Cloud Functions, a serverless execution environment. Read more
  • Other Deployment Options: Discover various other methods to deploy your pipeline using dlt. Read more

The running in production section will teach you about:

  • How to Monitor your pipeline: Learn how to effectively monitor your dlt pipelines in production to ensure they are running smoothly by following the guide here.
  • Set up alerts: Set up alerts to get notified about any issues or important events in your dlt pipeline. Detailed instructions can be found here.
  • And set up tracing: Implement tracing to get detailed insights into the performance and execution of your dlt pipelines. Find out how here.

Additional pipeline guides

This demo works on codespaces. Codespaces is a development environment available for free to anyone with a Github account. You'll be asked to fork the demo repository and from there the README guides you with further steps.
The demo uses the Continue VSCode extension.

Off to codespaces!

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