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Add a Roadmap #27478
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@@ -16,3 +16,4 @@ Development | |
internals | ||
extending | ||
developer | ||
roadmap |
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.. _roadmap: | ||
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======= | ||
Roadmap | ||
======= | ||
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This page provides an overview of the major themes pandas' development. Implementation | ||
of these goals may be hastened with dedicated funding. | ||
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Extensibility | ||
------------- | ||
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Pandas Extension Arrays provide 3rd party libraries the ability to | ||
extend pandas' supported types. In theory, these 3rd party types can do | ||
everything one of pandas. In practice, many places in pandas will unintentionally | ||
convert the ExtensionArray to a NumPy array of Python objects, causing | ||
performance issues and the loss of type information. These problems are especially | ||
pronounced for nested data. | ||
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We'd like to improve the handling of extension arrays throughout the library, | ||
making their behavior more consistent with the handling of NumPy arrays. | ||
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String Dtype | ||
------------ | ||
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Currently, pandas stores text data in an ``object`` -dtype NumPy array. | ||
Each array stores Python strings. While pragmatic, since we rely on NumPy | ||
for storage and Python for string operations, this is memory inefficient | ||
and slow. We'd like to provide a native string type for pandas. | ||
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The most obvious alternative is Apache Arrow. Currently, Arrow provides | ||
storage for string data. We can work with the Arrow developers to implement | ||
the operations needed for pandas users (for example, ``Series.str.upper``). | ||
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Apache Arrow Interoperability | ||
----------------------------- | ||
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`Apache Arrow <https://arrow.apache.org>`__ is a cross-language development | ||
platform for in-memory data. The Arrow logical types are closely aligned with | ||
typical pandas use cases (for example, support for nullable integers). | ||
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We'd like have a pandas DataFrame be backed by Arrow memory and data types | ||
by default. This should simplify pandas internals and ensure more consistent | ||
handling of data types through operations. | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Not sure if there is agreement on also implementing DataFrames based on memory maps too. I think it was discussed in the past. If people is happy with it, we could mention it here too. There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. I'm not sure I know enough about memmaps to know whether this is a good idea / feasible for pandas. |
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Block Manager Rewrite | ||
--------------------- | ||
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We'd like to replace pandas current internal data structures (a collection of | ||
1 or 2-D arrays) with a simpler collection of 1-D arrays. | ||
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Pandas internal data model is quite complex. A DataFrame is made up of | ||
one or more 2-dimension "blocks", with one or more blocks per dtype. This | ||
collection of 2-D arrays is managed by the BlockManager. | ||
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The primary benefit of the BlockManager is improved performance on certain | ||
operations (construction from a 2D array, binary operations, reductions across the columns), | ||
especially for wide DataFrames. However, the BlockManager substantially increases the | ||
complexity and maintenance burden of pandas'. | ||
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By replacing the BlockManager we hope to achieve | ||
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* Substantially simpler code | ||
* Easier extensibility with new logical types | ||
* Better user control over memory use and layout | ||
* Improved microperformance | ||
* Option to provide a C / Cython API to pandas' internals | ||
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See `these design documents <https://dev.pandas.io/pandas2/internal-architecture.html#removal-of-blockmanager-new-dataframe-internals>`__ | ||
for more. | ||
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Weighted Operations | ||
------------------- | ||
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In many fields, sample weights are necessary to correctly estimate population | ||
statistics. We'd like to support weighted operations (like `mean`, `sum`, `std`, | ||
etc.), possibly with an API similar to `DataFrame.groupby`. | ||
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See https://github.com/pandas-dev/pandas/issues/10030 for more. | ||
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Package Docstring Validation | ||
---------------------------- | ||
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To improve the quality and consistency of pandas docstrings, we've developed | ||
tooling to check docstrings in a variety of ways. | ||
https://github.com/pandas-dev/pandas/blob/master/scripts/validate_docstrings.py | ||
contains the checks. | ||
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Like many other projects, pandas uses the | ||
[numpydoc](https://numpydoc.readthedocs.io/en/latest/) style for writing | ||
docstrings. With the collaboration of the numpydoc maintainers, we'd like to | ||
move the checks to a package other than pandas so that other projects can easily | ||
use them as well. | ||
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Performance Monitoring | ||
---------------------- | ||
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Pandas uses [airspeed velocity](https://asv.readthedocs.io/en/stable/) to | ||
monitor for performance regressions. ASV itself is a fabulous tool, but requires | ||
some additional work to be integrated into an open source project's workflow. | ||
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The [asv-runner](https://github.com/asv-runner) organization, currently made up | ||
of pandas maintainers, provides tools built on top of ASV. We have a physical | ||
machine for running a number of project's benchmarks, and tools managing the | ||
benchmark runs and reporting on results. | ||
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We'd like to fund improvements and maintenance of these tools to | ||
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* Be more stable. Currently, they're maintained on the nights and weekends when | ||
a maintainer has free time. | ||
* Tune the system for benchmarks to improve stability, following | ||
https://pyperf.readthedocs.io/en/latest/system.html | ||
* Build a GitHub bot to request ASV runs *before* a PR is merged. Currently, the | ||
benchmarks are only run nightly. | ||
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