PyTables is a DuckDB extension that makes running SQL on arbitrary data sources as easy as writing a Python function. If you can access it from Python, you can run SQL against it. Some things this enables you to query:
- Live data behind a REST API with a Python SDK
- Files on disk in an obscure format
- A proof of concept model built with Pandas/numpy/etc that you'd like integrate with SQL data, or
- Any other data source of your chosing that you've always wanted to query via SQL.
This is to say, I'm not telling you you should run SQL against data on an FTP server, just noting that you could.
Best of all, you don't need to know Python! Check out the companion Python package for out of the box data source functions for AWS, Github, Google Sheets, Google Analytics, ChatGPT, and much more.
Lets start with an example. Here is a Python function that uses the PyGithub library to enumerate a user's Github repos, in a file named ghub.py
:
from github import Github
g = Github()
def repos_for(username):
for r in g.get_user(username).get_repos():
yield (r.name, r.description, r.language)
Using the pytable
function in a SQL query, we can invoke this function and use the output as if it were a database table.
> load pytables;
> SELECT *
FROM pytable('ghub:repos_for', 'duckdb',
columns = {'repo': 'VARCHAR', 'description': 'VARCHAR', 'language': 'VARCHAR'})
WHERE repo = 'duckdb';
┌─────────┬─────────────────────────────────────────────────────────────┬──────────┐
│ repo │ description │ language │
│ varchar │ varchar │ varchar │
├─────────┼─────────────────────────────────────────────────────────────┼──────────┤
│ duckdb │ DuckDB is an in-process SQL OLAP Database Management System │ C++ │
└─────────┴─────────────────────────────────────────────────────────────┴──────────┘
First, install DuckDB v0.8.0 or above.
Second, ensure you have python shared library along with your interpreter libpython3.X.so
. Note that for Linux distributions in particular, this is often contained in the separate package. So if you installed python via:
apt-get install -y python3.9
To get the shared library, you'll need to run:
apt-get install -y libpython3.9
Note to be sure to use the version of python you want to use with DuckDB. For instance, if you're using a virtualenv, be sure to source it before running the command below. Alternatively, if you have both Python 3.8 and Python 3.9 installed, and you'd prefer to use version 3.9, replace python
in the curl command below with python3.9
.
curl -L https://github.com/MarkRoddy/duckdb-pytables/releases/download/latest/get-pytables.py | python
Determine the major/minor version of python you'll be using, for instance Python 3.10. In this case you would use 3.10
where PYTHON_VERSION is referenced below.
Next, start the DuckDB shell using the 'unsigned' option.
duckdb -unsigned
Run the following commands in the DuckDB REPL to install the extension and activate it:
SET custom_extension_repository='net.ednit.duckdb-extensions.s3.us-west-2.amazonaws.com/pytables/latest/python${PYTHON_VERSION}';
INSTALL pytables;
LOAD pytables;
The pytable()
table function can be referenced anywhere a named database table maybe referenced. This includes the FROM
clause as well as part of a join.
When invoking, the first argument must be a string with a value in the form of '<module>:<function>'
, where module is the name of the importable module containing your function, and 'function' is the name of a function or other callable value in the module. For example, if you have a module foo
in a package bar
, containing a function bizbaz()
, you would format this as foo.bar:bizbaz
All other non-named arguments will be passed as an argument to the python function specified. For example:
SELECT *
FROM pytable('<module>:<function>', 'arg1', 2, 'arg3',
columns = {'columnA': 'INT', 'columnB': 'VARCHAR'})
This will import the name <module>
, reference the value named <function>
. Note this value can be a function, or any other type that supports the callable protocol. The extension will then call <function>
, passing in the values 'arg1'
, 2
, and 'arg3'
.
Please see the table below for a further breakdown of each of the named arguments.
named argument | description |
---|---|
columns | Required in some circumstances. A struct mapping column names to expected DuckDB data types. Required when invoking a function that does annotate its return types. May be desirable to use if you want well formed column names. |
kwargs | Optional. A struct mapping named arguments to be passed to the python function. In python, this is passed as if you called func(**kwargs) . |
Python functions can accept an arbitrary number of primitive data which can be invoked in a positional manner.
These functions must return an iterator (or use the 'yield' syntax). Each value in this iterator will represent a single row in the database table. As such, the number of values in each row must be consistent across all rows, and it must match the number of columns specified when the function is invoked from SQL. Additionally, the data type for each value should be convertable to the column data type specified. If the conversion is not possible a null value will be substituted.
Since anything you can do in Python can now show up in DuckDB as a table, the world is your oyster here. In particular, it's trivial to make any external resource that has a python library associated with it show up as a database table. Some things you might want to try (all of which can be found in the examples/ directory). Note, be sure to include the relevant file from the examples/
directory in your Python path or these won't work.
Note this queries the names of objects themselves, not their contents. This can be useful for combing through buckets that have massive amounts of objects in them.
Note these are not inherent limitations that can not be overcome, but presently have yet to be overcome. Feel free to help with that!
- Binaries only available for Linux and OSX on x64 architectures. Builds for Windows and OSX on amd (ala M1 chips) coming soon.
- Not all DuckDB and Python datatypes have been fully mapped. Please file an issue if you find one unsupported.
- Builds only available for Python 3.8 and later.
Clone the repo being sure to use the recurse-submodules
option:
git clone --recurse-submodules [email protected]:MarkRoddy/duckdb-python-udf.git
Note that --recurse-submodules
will ensure the correct version of duckdb is pulled allowing you to get started right away.
Python3.9 development version. On a Ubuntu system, you can install these via:
sudo apt-get -y install python3.9-dev
To build the extension:
make
The main binaries that will be built are:
./build/release/duckdb
./build/release/test/unittest
./build/release/extension/pytables/pytables.duckdb_extension
duckdb
is the binary for the duckdb shell with the extension code automatically loaded.unittest
is the test runner of duckdb. Again, the extension is already linked into the binary.pytables/pytables.duckdb_extension
is the loadable binary as it would be distributed.
To run the extension code, simply start the shell with ./build/release/duckdb
.
Now we can use the features from the extension directly in DuckDB. Included in this extension is the ability to execute python functions. Bundled with this repository is a python file named 'udfs.py' that contains some example functions. You can invoke a function in this module by specifying the module name, the function name, and a single string argument to be passed to the function:
D select pycall('udfs:reverse', 'Jane') as result;
┌───────────────┐
│ result │
│ varchar │
├───────────────┤
│ enaJ │
└───────────────┘
Different tests can be created for DuckDB extensions. The primary way of testing DuckDB extensions should be the SQL tests in ./test/sql
. These SQL tests can be run using:
make test