Skip to main content

A performance-focused reimplementation of Textual's DataTable widget, with a pluggable data storage backend.

Project description

textual-fastdatatable

A performance-focused reimplementation of Textual's DataTable widget, with a pluggable data storage backend.

Textual's built-in DataTable widget is beautiful and powerful, but it can be slow to load large datasets.

Here are some benchmarks on my relatively weak laptop. For each benchmark, we initialize a Textual App that loads a dataset from a parquet file and mounts a data table; it then scrolls around the table (10 pagedowns and 15 right arrows).

For the built-in table and the others marked "from Records", the data is loaded into memory before the timer is started; for the "Arrow from Parquet" back-end, the timer is started immediately.

The times in each column represent the time to the first paint of the table, and the time after scrolling is completed (we wait until the table is fully rendered after each scroll):

Records Built-In DataTable FastDataTable (Arrow from Parquet) FastDataTable (Arrow from Records) FastDataTable (Numpy from Records)
lap_times_100.parquet 0.019s / 1.716s 0.012s / 1.724s 0.011s / 1.700s 0.011s / 1.688s
lap_times_1000.parquet 0.103s / 1.931s 0.011s / 1.859s 0.011s / 1.799s 0.015s / 1.848s
lap_times_10000.parquet 0.977s / 2.824s 0.013s / 1.834s 0.016s / 1.812s 0.078s / 1.869s
lap_times_100000.parquet 11.773s / 13.770s 0.025s / 1.790s 0.156s / 1.824s 0.567s / 2.347s
lap_times_538121.parquet 62.960s / 65.760s 0.077s / 1.803s 0.379s / 2.234s 3.324s / 5.031s
wide_10000.parquet 5.110s / 10.539s 0.024s / 3.373s 0.042s / 3.278s 0.369s / 3.461s
wide_100000.parquet 51.144s / 56.604s 0.054s / 3.294s 0.429s / 3.642s 3.628s / 6.732s

NB: FastDataTable currently does not support rows with a height of more than one line. See below for more limitations, relative to the built-in DataTable.

Installation

pip install textual-fastdatatable

Usage

If you already have data in Apache Arrow or another common table format:

from textual_fastdatatable import DataTable
data_table = DataTable(data = my_data)

The currently supported types are:

AutoBackendType = Union[
    pa.Table,
    pa.RecordBatch,
    Path, # to parquet only
    str, # path to parquet only
    Sequence[Iterable[Any]],
    Mapping[str, Sequence[Any]],
]

To override the column labels and widths supplied by the backend:

from textual_fastdatatable import DataTable
data_table = DataTable(data = my_data, column_labels=["Supports", "[red]Console[/]", "Markup!"], column_widths=[10, 5, None])

You can also pass in a backend manually (if you want more control or want to plug in your own).

from textual_fastdatatable import ArrowBackend, DataTable, create_backend
backend = create_backend(my_data)
backend = ArrowBackend(my_arrow_table)
# from python dictionary in the form key: col_values
backend = ArrowBackend.from_pydict(
    {
        "col one": [1, 2, 3 ,4],
        "col two": ["a", "b", "c", "d"],
    }
)
# from a list of tuples or another sequence of iterables
backend = ArrowBackend.from_records(
    [
        ("col one", "col two"),
        (1, "a"),
        (2, "b"),
        (3, "c"),
        (4, "d"),
    ]
)
# from a path to a Parquet file:
backend = ArrowBackend.from_parquet("path/to/file.parquet")

Limitations and Caveats

The DataTable does not currently support rows with a height of more than one line. Only the first line of each row will be displayed.

The DataTable does not currently support row labels.

The ArrowBackend is optimized to be fast for large, immutable datasets. Mutating the data, especially adding or removing rows, may be slow.

The ArrowBackend cannot be initialized without data, however, the DataTable can (either with or without column_labels).

The ArrowBackend cannot store arbitrary Python objects or Rich Renderables as values. It may widen types to strings unnecessarily.

Additional Features

Copying Data from the Table

ctrl+c will post a SelectionCopied message with a list of tuples of the values selected by the cursor. To use, initialize with cursor_type=range from an app that does NOT inherit bindings.

from textual.app import App, ComposeResult

from textual_fastdatatable import ArrowBackend, DataTable


class TableApp(App, inherit_bindings=False):
    BINDINGS = [("ctrl+q", "quit", "Quit")]

    def compose(self) -> ComposeResult:
        backend = ArrowBackend.from_parquet("./tests/data/lap_times_538121.parquet")
        yield DataTable(backend=backend, cursor_type="range")


if __name__ == "__main__":
    app = TableApp()
    app.run()

Truncating long values

The DataTable will automatically calculate column widths; if you set a max_column_content_width at initialization, it will truncate any long values at that width; the full value will be visible on hover in a tooltip (and the full value will always be copied to the clipboard).

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

textual_fastdatatable-0.6.2.tar.gz (30.5 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

textual_fastdatatable-0.6.2-py3-none-any.whl (30.0 kB view details)

Uploaded Python 3

File details

Details for the file textual_fastdatatable-0.6.2.tar.gz.

File metadata

  • Download URL: textual_fastdatatable-0.6.2.tar.gz
  • Upload date:
  • Size: 30.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.6.1 CPython/3.10.13 Linux/6.2.0-1018-azure

File hashes

Hashes for textual_fastdatatable-0.6.2.tar.gz
Algorithm Hash digest
SHA256 ddd6645b80c648d53b16840912fbfded5abe3e7852c17d81b42441b58f55f51d
MD5 43925b8fa36c1d65dd48acfa28623f16
BLAKE2b-256 0e1dc11c747d3966a2ac88eca3907d2d1ad55738d4cd4672d754d089c59c0d7b

See more details on using hashes here.

File details

Details for the file textual_fastdatatable-0.6.2-py3-none-any.whl.

File metadata

File hashes

Hashes for textual_fastdatatable-0.6.2-py3-none-any.whl
Algorithm Hash digest
SHA256 ce9dc25483a3ae0a125db84f570d51f11e395546ac2c6720b1eb93f40c0cf887
MD5 f7401c39eae29d6dcf971cca4ec82778
BLAKE2b-256 db4848273d17d5512376179c08beac7ba8c1bf9fed024b72f3a6b61e1c04f308

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page