Support DuckDB, Parquet, CSV and JSON Lines files in Datasette. Depends on DuckDB.
There is a demo at https://dux.fly.dev/parquet
Compare a query using Parquet on DuckDB vs the same query on SQLite. The DuckDB query is ~3-5x faster. On a machine with more than 1 core, DuckDB would outperform by an even higher margin.
Install this plugin in the same environment as Datasette.
datasette install datasette-parquet
You can use this plugin to access a DuckDB file, or a directory of CSV/Parquet/JSON files.
To mount the /data/mydb.duckdb
file as a database called mydb
, create a metadata.json like:
{
"plugins": {
"datasette-parquet": {
"mydb": {
"file": "/data/mydb.duckdb"
}
}
}
}
Say you have a directory of your favourite CSVs, newline-delimited JSON and parquet files that looks like this:
/data/census.csv
/data/books.tsv
/data/tweets.jsonl
/data/geonames.parquet
/data/sales/january.parquet
/data/sales/february.parquet
You can expose these in a Datasette database called trove
by something
like this in your metadata.json
:
{
"plugins": {
"datasette-parquet": {
"trove": {
"directory": "/data",
"watch": true
}
}
}
}
Then launch Datasette via datasette --metadata metadata.json
You will have 5 views in the trove
database: census
, books
, tweets
, geonames
and sales
.
The sales
view will be the union of all the files in that directory -- this works for all of the file types, not just Parquet.
Because you passed the watch
option with a value of true
, Datasette will automatically discover when
files are added or removed, and create or remove views as needed.
These options can be used in either mode.
httpfs
- set to true
to enable the HTTPFS extension
Warning
You know that old canard, that if it walks like a duck and quacks like a duck, it's probably a duck? This plugin tries to teach DuckDB to walk like SQLite and talk like SQLite. It's difficult, and frankly, I just winged this part. If you come across broken features, let me know and I'll try to fix them up.
- No timeouts: A core feature of Datasette is that it's safe to let the unwashed masses run arbitrary queries. This is because the data is immutable, and there are timeouts to prevent runaway CPU usage. DuckDB does not currently support timeouts. Think carefully about letting anonymous users use a Datasette instance with this plugin.
- You will likely want to disable facet suggestions from the CLI, or install datasette-ui-extras, which disables facet suggestions.
- Joining with existing data: This plugin uses DuckDB, not SQLite. This means that you cannot join against your existing SQLite tables.
- Read-only: the data in the files can only be queried, not changed.
- Performance: the files are queried in-place. Performance will be limited by the file type -- parquet files have a zippy binary format, but large CSV and JSONL files might be slow.
- Facets: DuckDB supports a different set of syntax than SQLite. This means some Datasette features are incompatible, and will be disabled for DuckDB-backed files.
This plugin has a mix of accidental complexity and essential complexity. The essential complexity comes from things like "DuckDB supports a different dialect of SQL". The accidental complexity comes from things like "it's called the Law of Demeter, Colin, not the Strongly Held Opinion of Demeter".
This is a loose journal of things I ran into:
-
DuckDB's Python API is similar to the
sqlite3
module's interface, but not the same. Datasette expects to talk to an interface that conforms tosqlite3
, so this plugin crufts up some proxy objects to give a "convincing" facade. I mostly YOLOd this part. I wouldn't trust it for write queries, or for reading sensitive data.- DuckDB doesn't have the concept of a separate cursor class.
- sqlite3's cursor is an iterable
- Datasette uses sqlite3.Row objects, which support indexing by name
- sqlite3 supports parameterized queries like
execute('SELECT :p', {'p': 123})
. These need to be rewritten to use numbered parameters and a list.
-
SQLite supports slightly different syntax than DuckDB. We use sqlglot to transpile queries into DuckDB's dialect.
- In homage to MySQL, SQLite supports string literals delimited by double quotes. Datasette uses this feature, see simonw/datasette#2001
- In homage to SQL Server, SQLite supports quoting identifiers with square brackets. Datasette uses this feature, see simonw/datasette#2013
-
Unfortunately, using sqlglot brings its own challenges: it doesn't recognize the
GLOB
operator, see tobymao/sqlglot#1066 -
Datasette passes extraneous parameters to the sqlite3 connection. A writable canned query will post a
csrftoken
for security purposes, which ends up as part of the query parameters. DuckDB is strict on the parameters matching the SQL query, so it fails. -
Datasette expects some SQLite internals to be around, like certain
PRAGMA ...
functions, or the shape of theEXPLAIN
output. We work around this by detecting those queries and telling bald-faced lies to Datasette. -
Datasette expects
json_type(...)
to throw asqlite3.OperationalError
on invalid JSON, but DuckDB will (of course) throw its own type:duckdb.InvalidInputException
-
DuckDB is missing some functions from SQLite:
json_each(...)
,date(...)
-
rowid
columns in SQLite are stable identifiers. This is not true in DuckDB. -
SQLite's Python interface supports interrupting long-running queries. DuckDB's C API supports this, too, but it has not yet been exposed to the Python API. See duckdb/duckdb#5938 and duckdb/duckdb#3749
-
Datasette's CustomJSONEncoder only expects objects of the sort that SQLite can store. DuckDB has native support for the
date
type, which requires patching.
To set up this plugin locally, first checkout the code. Then create a new virtual environment:
cd datasette-parquet
python3 -m venv venv
source venv/bin/activate
Now install the dependencies and test dependencies:
pip install -e '.[test]'
To run the tests:
pytest