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id | node_id | number | title | user | state | locked | assignee | milestone | comments | created_at | updated_at ▲ | closed_at | author_association | active_lock_reason | draft | pull_request | body | reactions | performed_via_github_app | state_reason | repo | type |
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2089084562 | PR_kwDOAMm_X85kd6jT | 8622 | Update min deps in docs | jhamman 2443309 | closed | 0 | 0 | 2024-01-18T21:35:49Z | 2024-01-19T00:12:08Z | 2024-01-19T00:12:07Z | MEMBER | 0 | pydata/xarray/pulls/8622 | Follow up to https://github.com/pydata/xarray/pull/8586 |
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1953088785 | PR_kwDOAMm_X85dUY1- | 8346 | Bump minimum numpy version | jhamman 2443309 | closed | 0 | 3 | 2023-10-19T21:31:58Z | 2023-10-19T22:16:23Z | 2023-10-19T22:16:22Z | MEMBER | 0 | pydata/xarray/pulls/8346 | I believe this was missed in v2023.08.0 (Aug 18, 2023). xref: https://github.com/conda-forge/xarray-feedstock/pull/97 |
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33637243 | MDU6SXNzdWUzMzYzNzI0Mw== | 131 | Dataset summary methods | jhamman 2443309 | closed | 0 | 0.2 650893 | 10 | 2014-05-16T00:17:56Z | 2023-09-28T12:42:34Z | 2014-05-21T21:47:29Z | MEMBER | Add summary methods to Dataset object. For example, it would be great if you could summarize a entire dataset in a single line. (1) Mean of all variables in dataset.
(2) Mean of all variables in dataset along a dimension:
In the case where a dimension is specified and there are variables that don't use that dimension, I'd imagine you would just pass that variable through unchanged. Related to #122. |
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1562712670 | PR_kwDOAMm_X85I1FYF | 7488 | Attempt to reproduce #7079 in CI | jhamman 2443309 | closed | 0 | 1 | 2023-01-30T15:57:44Z | 2023-09-20T00:11:39Z | 2023-09-19T23:52:20Z | MEMBER | 0 | pydata/xarray/pulls/7488 |
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1822860755 | PR_kwDOAMm_X85Wd1dG | 8022 | (chore) min versions bump | jhamman 2443309 | closed | 0 | 1 | 2023-07-26T17:31:12Z | 2023-07-27T04:27:44Z | 2023-07-27T04:27:40Z | MEMBER | 0 | pydata/xarray/pulls/8022 |
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1705857851 | PR_kwDOAMm_X85QS3VM | 7836 | Fix link to xarray twitter page | jhamman 2443309 | closed | 0 | 0 | 2023-05-11T13:53:14Z | 2023-05-11T23:00:36Z | 2023-05-11T23:00:35Z | MEMBER | 0 | pydata/xarray/pulls/7836 |
Thanks @pierre-manchon for the report! |
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1699112787 | PR_kwDOAMm_X85P8LbF | 7825 | test: Fix test_write_read_select_write for Zarr V3 | jhamman 2443309 | closed | 0 | 1 | 2023-05-07T15:26:56Z | 2023-05-10T02:43:22Z | 2023-05-10T02:43:22Z | MEMBER | 0 | pydata/xarray/pulls/7825 | Previously, the first context manager in this test was closed before accessing the data. This resulted in key errors when trying to access the opened dataset.
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1550109629 | PR_kwDOAMm_X85ILNM- | 7461 | bump minimum versions, drop py38 | jhamman 2443309 | closed | 0 | 18 | 2023-01-19T23:38:42Z | 2023-04-21T14:07:09Z | 2023-01-26T16:57:10Z | MEMBER | 0 | pydata/xarray/pulls/7461 | This updates our minimum versions based on our 24/18/12 month policy. Details are shown below.
```
❯ ./ci/min_deps_check.py ./ci/requirements/min-all-deps.yml
...
Package Required Policy Status
----------------- -------------------- -------------------- ------
python 3.9 (2020-10-07) 3.9 (2020-10-07) =
boto3 1.20 (2021-11-08) 1.20 (2021-11-08) =
bottleneck 1.3 (2021-01-20) 1.3 (2021-01-20) =
cartopy 0.20 (2021-09-17) 0.20 (2021-09-17) =
cdms2 3.1 (- ) - (- ) (!)
cfgrib 0.9 (2019-02-25) 0.9 (2019-02-25) =
cftime 1.5 (2021-05-20) 1.5 (2021-05-20) =
dask-core 2022.1 (2022-01-14) 2022.1 (2022-01-14) =
distributed 2022.1 (2022-01-14) 2022.1 (2022-01-14) =
flox 0.5 (2022-05-02) 0.3 (2021-12-28) > (!)
h5netcdf 0.13 (2022-01-12) 0.13 (2022-01-12) =
h5py 3.6 (2021-11-17) 3.6 (2021-11-17) =
hdf5 1.12 (2021-01-01) 1.12 (2021-01-01) =
iris 3.1 (2021-11-23) 3.1 (2021-11-23) =
lxml 4.7 (2021-12-14) 4.7 (2021-12-14) =
matplotlib-base 3.5 (2021-11-17) 3.5 (2021-11-17) =
nc-time-axis 1.4 (2021-10-23) 1.4 (2021-10-23) =
netcdf4 1.5.7 (2021-04-19) 1.5 (2021-04-19) = (w)
numba 0.55 (2022-01-14) 0.55 (2022-01-14) =
numpy 1.21 (2021-06-22) 1.21 (2021-06-22) =
packaging 21.3 (2021-11-18) 21.3 (2021-11-18) =
pandas 1.3 (2021-07-02) 1.3 (2021-07-02) =
pint 0.18 (2021-10-26) 0.18 (2021-10-26) =
pseudonetcdf 3.2 (2021-10-16) 3.2 (2021-10-16) =
pydap 3.2 (2020-10-13) 3.2 (2020-10-13) =
rasterio 1.2 (2021-09-02) 1.2 (2021-09-02) =
scipy 1.7 (2021-06-27) 1.7 (2021-06-27) =
seaborn 0.11 (2020-09-19) 0.11 (2020-09-19) =
sparse 0.13 (2021-08-28) 0.13 (2021-08-28) =
toolz 0.11 (2020-09-23) 0.11 (2020-09-23) =
typing_extensions 4.0 (2021-11-17) 4.0 (2021-11-17) =
zarr 2.10 (2021-09-19) 2.10 (2021-09-19) =
Errors:
-------
1. not found in conda: cdms2
```
|
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1644566201 | PR_kwDOAMm_X85NGfRt | 7693 | add to_zarr method to dataarray | jhamman 2443309 | closed | 0 | 0 | 2023-03-28T19:49:00Z | 2023-04-03T15:53:39Z | 2023-04-03T15:53:35Z | MEMBER | 0 | pydata/xarray/pulls/7693 | This PR add's the
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1644429340 | I_kwDOAMm_X85iBAAc | 7692 | Feature proposal: DataArray.to_zarr() | jhamman 2443309 | closed | 0 | 5 | 2023-03-28T18:00:24Z | 2023-04-03T15:53:37Z | 2023-04-03T15:53:37Z | MEMBER | Is your feature request related to a problem?It would be nice to mimic the behavior of Describe the solution you'd likeThis should be possible:
Describe alternatives you've consideredNone. Additional contextxref |
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1642922680 | PR_kwDOAMm_X85NA9uq | 7689 | add reset_encoding to dataset/dataarray/variable | jhamman 2443309 | closed | 0 | 6 | 2023-03-27T22:34:27Z | 2023-03-30T21:28:53Z | 2023-03-30T21:09:16Z | MEMBER | 0 | pydata/xarray/pulls/7689 |
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1642635191 | I_kwDOAMm_X85h6J-3 | 7686 | Add reset_encoding to Dataset and DataArray objects | jhamman 2443309 | closed | 0 | 2 | 2023-03-27T18:51:39Z | 2023-03-30T21:09:17Z | 2023-03-30T21:09:17Z | MEMBER | Is your feature request related to a problem?Xarray maintains the encoding of datasets read from most of its supported backend formats (e.g. NetCDF, Zarr, etc.). This is very useful when you want to perfectly roundtrip but it often gets in the way, causing conflicts when writing a modified dataset or when appending to another dataset. Most of the time, the solution is to just remove the encoding from the dataset and continue on. The following code sample is found in a number of issues that reference this problem. ```python for v in list(ds.coords.keys()): if ds.coords[v].dtype == object: ds[v].encoding.clear()
``` A sample of issues that show variants of this problem.
Describe the solution you'd likeIn many cases, the solution to these problems is to leave the original dataset encoding behind and either use Xarray's default encoding (or the backends default) or to specify one's own encoding options. Both cases would benefit from a convenience method to reset the original encoding. Something like would serve this process:
Describe alternatives you've consideredVariations on the API above could also be considered:
or even:
We can/should also do a better job of surfacing inconsistent encoding in our backends (e.g. Additional contextNo response |
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1624835973 | PR_kwDOAMm_X85MEd7D | 7631 | Remove incomplete sentence in IO docs | jhamman 2443309 | closed | 0 | 0 | 2023-03-15T06:22:21Z | 2023-03-15T12:04:08Z | 2023-03-15T12:04:06Z | MEMBER | 0 | pydata/xarray/pulls/7631 |
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1558497871 | I_kwDOAMm_X85c5MpP | 7479 | Use NumPy's SupportsDType | jhamman 2443309 | closed | 0 | 0 | 2023-01-26T17:21:32Z | 2023-02-28T23:23:47Z | 2023-02-28T23:23:47Z | MEMBER | What is your issue?Now that we've bumped our minimum NumPy version to 1.21, we can address this comment: I decided not to tackle this as part of #7461 but we may be able to do something like this:
xref: #6834 cc @headtr1ck |
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1549639421 | PR_kwDOAMm_X85IJnRV | 7458 | Lint with ruff | jhamman 2443309 | closed | 0 | 1 | 2023-01-19T17:40:47Z | 2023-01-30T18:12:18Z | 2023-01-30T18:12:13Z | MEMBER | 0 | pydata/xarray/pulls/7458 | This switches our primary linter to Ruff. As adervertised, Ruff is very fast. Plust we get the benefit of using a single tool that combines the previous functionality of pyflakes, isort, and pyupgrade.
cc @max-sixty, @TomNicholas |
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1532648441 | PR_kwDOAMm_X85HWTes | 7436 | pin scipy version in doc environment | jhamman 2443309 | closed | 0 | 1 | 2023-01-13T17:08:50Z | 2023-01-13T17:37:59Z | 2023-01-13T17:37:59Z | MEMBER | 0 | pydata/xarray/pulls/7436 | This should fix our doc build.
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1456026667 | PR_kwDOAMm_X85DQfj3 | 7301 | deprecate pynio backend | jhamman 2443309 | closed | 0 | 3 | 2022-11-19T00:15:11Z | 2022-11-26T15:41:07Z | 2022-11-26T15:40:36Z | MEMBER | 0 | pydata/xarray/pulls/7301 | This PR finally deprecates the PyNIO backend. PyNIO is technically in maintenance mode but it hasn't had any maintenance in 4+ years. Its conda packages cannot be installed in any of our test environments. I have added a future warning to the
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1455786576 | PR_kwDOAMm_X85DPqH_ | 7300 | bump min deps | jhamman 2443309 | closed | 0 | 2 | 2022-11-18T20:53:45Z | 2022-11-19T04:15:23Z | 2022-11-19T04:15:23Z | MEMBER | 0 | pydata/xarray/pulls/7300 | The min versions checks are failing in #6475. This hopefully fixes those failures.
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1217821452 | PR_kwDOAMm_X8425iyT | 6530 | Doc index update | jhamman 2443309 | closed | 0 | 2 | 2022-04-27T20:00:10Z | 2022-05-31T18:28:13Z | 2022-05-31T18:28:13Z | MEMBER | 0 | pydata/xarray/pulls/6530 | In light of the new splash page site (https://xarray.dev), this PR updates the documentation site's index page to simply provide pointers to key parts of Xarray's documentation. TODOs: - [x] Get feedback on the content and layout - [x] Update the Icon SVGs (these along with the layout were borrowed, in part, from Pandas). cc @andersy005, @rabernat |
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1247083449 | PR_kwDOAMm_X844ZETT | 6635 | Feature/to dict encoding | jhamman 2443309 | closed | 0 | 0 | 2022-05-24T20:21:24Z | 2022-05-26T19:50:53Z | 2022-05-26T19:17:35Z | MEMBER | 0 | pydata/xarray/pulls/6635 | This adds an
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1247014308 | I_kwDOAMm_X85KU-2k | 6634 | Optionally include encoding in Dataset to_dict | jhamman 2443309 | closed | 0 | 0 | 2022-05-24T19:10:01Z | 2022-05-26T19:17:35Z | 2022-05-26T19:17:35Z | MEMBER | Is your feature request related to a problem?When using Xarray's Describe the solution you'd likeThe feature request may be resolved by simply adding an
Describe alternatives you've consideredIt is currently possible to manually extract encoding attributes but this is a less desirable solution. xref: https://github.com/pangeo-forge/pangeo-forge-recipes/issues/256 |
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636449225 | MDU6SXNzdWU2MzY0NDkyMjU= | 4139 | [Feature request] Support file-like objects in open_rasterio | jhamman 2443309 | closed | 0 | 2 | 2020-06-10T18:11:26Z | 2022-04-19T17:15:21Z | 2022-04-19T17:15:20Z | MEMBER | With some acrobatics, it is possible to open file-like objects to rasterio. It would be useful if xarray supported this workflow, particularly for working with cloud optimized geotiffs and fs-spec. MCVE Code Sample```python with open('my_data.tif', 'rb') as f: da = xr.open_rasterio(f) ``` Expected OutputDataArray -> equivalent to Problem DescriptionWe only currently allow str, rasterio.DatasetReader, or rasterio.WarpedVRT as inputs to VersionsOutput of <tt>xr.show_versions()</tt>INSTALLED VERSIONS ------------------ commit: 2a288f6ed4286910fcf3ab9895e1e9cbd44d30b4 python: 3.8.2 | packaged by conda-forge | (default, Apr 24 2020, 07:56:27) [Clang 9.0.1 ] python-bits: 64 OS: Darwin OS-release: 18.7.0 machine: x86_64 processor: i386 byteorder: little LC_ALL: None LANG: en_US.UTF-8 LOCALE: en_US.UTF-8 libhdf5: None libnetcdf: None xarray: 0.15.2.dev68+gb896a68f pandas: 1.0.4 numpy: 1.18.5 scipy: None netCDF4: None pydap: None h5netcdf: None h5py: None Nio: None zarr: None cftime: None nc_time_axis: None PseudoNetCDF: None rasterio: 1.1.5 cfgrib: None iris: None bottleneck: None dask: 2.18.1 distributed: 2.18.0 matplotlib: None cartopy: None seaborn: None numbagg: None pint: None setuptools: 46.1.3.post20200325 pip: 20.1 conda: None pytest: 5.4.3 IPython: 7.13.0 sphinx: 3.0.3xref: https://github.com/pangeo-data/pangeo-datastore/issues/109 |
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1118974427 | PR_kwDOAMm_X84x0GoS | 6214 | update HOW_TO_RELEASE.md | jhamman 2443309 | closed | 0 | 2 | 2022-01-31T05:01:14Z | 2022-03-03T13:05:04Z | 2022-01-31T18:35:27Z | MEMBER | 0 | pydata/xarray/pulls/6214 | This PR updates our step-by-step guide for releasing Xarray. It makes a few minor changes to account for #6206 and officially documents the switch to CALVER. This should be clearly documented in Also, note that this should probably wait until we make the 0.20.1 patch release.
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1108564253 | I_kwDOAMm_X85CE1kd | 6176 | Xarray versioning to switch to CalVer | jhamman 2443309 | closed | 0 | 10 | 2022-01-19T21:09:45Z | 2022-03-03T04:32:10Z | 2022-01-31T18:35:27Z | MEMBER | Xarray is planning to switch to Calendar versioning (calver). This issue serves as a general announcement. The idea has come up in multiple developer meetings (#4001) and is part of a larger effort to increase our release cadence (#5927). Today's developer meeting included unanimous consent for the change. Other projects in Xarray's ecosystem have also made this change recently (e.g. https://github.com/dask/community/issues/100). While it is likely we will make this change in the next release or two, users and developers should feel free to voice objections here. The proposed calver implementation follows the same schema as the Dask project, that is; ```python In [1]: import xarray as xr currentIn [2]: xr.version Out[2]: '0.19.1' proposedIn [2]: xr.version Out[2]: '2022.01.0' ``` cc @pydata/xarray |
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1129263296 | PR_kwDOAMm_X84yVrKT | 6262 | [docs] update urls throughout documentation | jhamman 2443309 | closed | 0 | 0 | 2022-02-10T00:41:54Z | 2022-02-10T19:44:57Z | 2022-02-10T19:44:52Z | MEMBER | 0 | pydata/xarray/pulls/6262 | We are in the process of moving our documentation url from https://xarray.pydata.org to https://docs.xarray.dev. This PR makes that change throughout the documentation. Additionally, I corrected some broken links and fixed some missing https urls in the process. cc @andersy005 |
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636451398 | MDExOlB1bGxSZXF1ZXN0NDMyNjIxMjgy | 4140 | support file-like objects in xarray.open_rasterio | jhamman 2443309 | closed | 0 | 6 | 2020-06-10T18:15:18Z | 2021-12-03T19:22:14Z | 2021-11-15T16:17:59Z | MEMBER | 0 | pydata/xarray/pulls/4140 |
cc @scottyhq and @martindurant xref: https://github.com/pangeo-data/pangeo-datastore/issues/109 |
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1047795001 | PR_kwDOAMm_X84uPpLm | 5956 | Create CITATION.cff | jhamman 2443309 | closed | 0 | 1 | 2021-11-08T18:40:15Z | 2021-11-09T20:56:25Z | 2021-11-09T18:15:01Z | MEMBER | 0 | pydata/xarray/pulls/5956 | This adds a new file to the root of the Xarray repository, The author list is based on the latest Zenodo release (0.20.1) and I did my best to find everyone's ORCIDs. |
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139064764 | MDU6SXNzdWUxMzkwNjQ3NjQ= | 787 | Add Groupby and Rolling methods to docs | jhamman 2443309 | closed | 0 | 2 | 2016-03-07T19:10:26Z | 2021-11-08T19:51:00Z | 2021-11-08T19:51:00Z | MEMBER | The injected |
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985498976 | MDExOlB1bGxSZXF1ZXN0NzI0Nzg1NjIz | 5759 | update development roadmap | jhamman 2443309 | closed | 0 | 1 | 2021-09-01T18:50:15Z | 2021-09-07T15:30:49Z | 2021-09-07T15:03:06Z | MEMBER | 0 | pydata/xarray/pulls/5759 |
cc @pydata/xarray |
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663968779 | MDU6SXNzdWU2NjM5Njg3Nzk= | 4253 | [community] Backends refactor meeting | jhamman 2443309 | closed | 0 | 13 | 2020-07-22T18:39:19Z | 2021-03-11T20:42:33Z | 2021-03-11T20:42:33Z | MEMBER | In today's dev call, we opted to schedule a separate meeting to discuss the backends refactor that BOpen (@alexamici and his team) is beginning to work on. This issue is meant to coordinate the scheduling of this meeting. To that end, I've created the following Doodle Poll to help choose a time: https://doodle.com/poll/4mtzxncka7gee4mq Anyone from @pydata/xarray should feel free to join if there is interest. At a minimum, I'm hoping to have @alexamici, @aurghs, @shoyer, and @rabernat there. Please respond to the poll by COB tomorrow so I can quickly get the meeting on the books. Thanks! |
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473795509 | MDExOlB1bGxSZXF1ZXN0MzAxODY2NzAx | 3166 | [Feature] Backend entrypoint | jhamman 2443309 | closed | 0 | 3 | 2019-07-28T23:01:47Z | 2021-01-12T16:41:23Z | 2021-01-12T16:41:23Z | MEMBER | 0 | pydata/xarray/pulls/3166 | In this PR, I'm experimenting with using the entrypoints package to support 3rd party backends. This does not attempt to solidify the API for what the store is, I feel like that should happen in a second PR. Here's how it would work... In @rabernat's
Xarray would then be able to discover this backend at runtime and users could use the store directly in
Note: I recognize that Now a list of caveats and things to consider:
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287223508 | MDU6SXNzdWUyODcyMjM1MDg= | 1815 | apply_ufunc(dask='parallelized') with multiple outputs | jhamman 2443309 | closed | 0 | 17 | 2018-01-09T20:40:52Z | 2020-08-19T06:57:55Z | 2020-08-19T06:57:55Z | MEMBER | I have an application where I'd like to use Code Sample, a copy-pastable example if possible```python def func(foo, bar):
foo = xr.DataArray(np.zeros((10, 10))).chunk() bar = xr.DataArray(np.zeros((10, 10))).chunk() + 5 xrfunc = xr.apply_ufunc(func, foo, bar, output_core_dims=[[], []], dask='parallelized') ``` Problem descriptionThis currently raises a Expected OutputMultiple dask arrays. In my example above, two dask arrays. Output of
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588165025 | MDExOlB1bGxSZXF1ZXN0MzkzOTY0MzE4 | 3897 | expose a few zarr backend functions as semi-public api | jhamman 2443309 | closed | 0 | 3 | 2020-03-26T05:24:22Z | 2020-08-10T15:20:31Z | 2020-03-27T22:37:26Z | MEMBER | 0 | pydata/xarray/pulls/3897 |
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663962183 | MDExOlB1bGxSZXF1ZXN0NDU1MjgyNTI2 | 4252 | update docs to point to xarray-contrib and xarray-tutorial | jhamman 2443309 | closed | 0 | 1 | 2020-07-22T18:27:29Z | 2020-07-23T16:34:18Z | 2020-07-23T16:34:10Z | MEMBER | 0 | pydata/xarray/pulls/4252 |
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318988669 | MDU6SXNzdWUzMTg5ODg2Njk= | 2094 | Drop win-32 platform CI from appveyor matrix? | jhamman 2443309 | closed | 0 | 3 | 2018-04-30T18:29:17Z | 2020-03-30T20:30:58Z | 2020-03-24T03:41:24Z | MEMBER | Conda-forge has dropped support for 32-bit windows builds (https://github.com/conda-forge/cftime-feedstock/issues/2#issuecomment-385485144). Do we want to continue testing against this environment? The point becomes moot after #1876 gets wrapped up in ~7 months. |
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578017585 | MDU6SXNzdWU1NzgwMTc1ODU= | 3851 | Exposing Zarr backend internals as semi-public API | jhamman 2443309 | closed | 0 | 3 | 2020-03-09T16:04:49Z | 2020-03-27T22:37:26Z | 2020-03-27T22:37:26Z | MEMBER | We recently built a prototype REST API for serving xarray datasets via a Fast-API application (see #3850 for more details). In the process of doing this, we needed to use a few internal functions in Xarray's Zarr backend:
Obviously, none of these imports are really meant for use outside of Xarray's backends so I'd like to discuss how we may go about exposing these functions (or variables) as semi-public (advanced use) API features. Thoughts? cc @rabernat |
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197920258 | MDU6SXNzdWUxOTc5MjAyNTg= | 1188 | Should we deprecate the compat and encoding constructor arguments? | jhamman 2443309 | closed | 0 | 5 | 2016-12-28T21:41:26Z | 2020-03-24T14:34:37Z | 2020-03-24T14:34:37Z | MEMBER | In https://github.com/pydata/xarray/pull/1170#discussion_r94078121, @shoyer writes:
@pydata/xarray and others, what do we think about deprecating the |
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578005145 | MDExOlB1bGxSZXF1ZXN0Mzg1NjY1Nzk1 | 3850 | Add xpublish to related projects | jhamman 2443309 | closed | 0 | 0 | 2020-03-09T15:46:14Z | 2020-03-10T06:06:08Z | 2020-03-10T06:06:08Z | MEMBER | 0 | pydata/xarray/pulls/3850 | We've recently released Xpublish. This PR adds the project to the _related-projects` page in the Xarray documentation. To find out more about Xpublish, check out the docs or the release announcement blogpost. |
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508743579 | MDU6SXNzdWU1MDg3NDM1Nzk= | 3413 | Can apply_ufunc be used on arrays with different dimension sizes | jhamman 2443309 | closed | 0 | 2 | 2019-10-17T22:04:00Z | 2019-12-11T22:32:23Z | 2019-12-11T22:32:23Z | MEMBER | We have an application where we want to use ```python def diff_mean(X, y): ''' a function that only works on 1d arrays that are different lengths''' assert X.ndim == 1, X.ndim assert y.ndim == 1, y.ndim assert len(X) != len(y), X return X.mean() - y.mean() X = np.random.random((10, 4, 5)) y = np.random.random((6, 4, 5)) Xda = xr.DataArray(X, dims=('t', 'x', 'y')).chunk({'t': -1, 'x': 2, 'y': 2}) yda = xr.DataArray(y, dims=('t', 'x', 'y')).chunk({'t': -1, 'x': 2, 'y': 2}) ``` Then, we'd like to use
This fails with an error when aligning the ```python-tracebackValueError Traceback (most recent call last) <ipython-input-4-e90cf6fba482> in <module> 9 dask="parallelized", 10 output_dtypes=[np.float], ---> 11 input_core_dims=[['t'], ['t']], 12 ) ~/miniconda3/envs/xarray-ml/lib/python3.7/site-packages/xarray/core/computation.py in apply_ufunc(func, input_core_dims, output_core_dims, exclude_dims, vectorize, join, dataset_join, dataset_fill_value, keep_attrs, kwargs, dask, output_dtypes, output_sizes, *args) 1042 join=join, 1043 exclude_dims=exclude_dims, -> 1044 keep_attrs=keep_attrs 1045 ) 1046 elif any(isinstance(a, Variable) for a in args): ~/miniconda3/envs/xarray-ml/lib/python3.7/site-packages/xarray/core/computation.py in apply_dataarray_vfunc(func, signature, join, exclude_dims, keep_attrs, *args) 222 if len(args) > 1: 223 args = deep_align( --> 224 args, join=join, copy=False, exclude=exclude_dims, raise_on_invalid=False 225 ) 226 ~/miniconda3/envs/xarray-ml/lib/python3.7/site-packages/xarray/core/alignment.py in deep_align(objects, join, copy, indexes, exclude, raise_on_invalid, fill_value) 403 indexes=indexes, 404 exclude=exclude, --> 405 fill_value=fill_value 406 ) 407 ~/miniconda3/envs/xarray-ml/lib/python3.7/site-packages/xarray/core/alignment.py in align(join, copy, indexes, exclude, fill_value, *objects) 321 "arguments without labels along dimension %r cannot be " 322 "aligned because they have different dimension sizes: %r" --> 323 % (dim, sizes) 324 ) 325 ValueError: arguments without labels along dimension 't' cannot be aligned because they have different dimension sizes: {10, 6} ``` https://nbviewer.jupyter.org/gist/jhamman/0e52d9bb29f679e26b0878c58bb813d2 I'm curious if this can be made to work with Output of
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527830145 | MDExOlB1bGxSZXF1ZXN0MzQ1MDAzOTU4 | 3568 | add environment file for binderized examples | jhamman 2443309 | closed | 0 | 1 | 2019-11-25T04:00:59Z | 2019-11-25T15:57:19Z | 2019-11-25T15:57:19Z | MEMBER | 0 | pydata/xarray/pulls/3568 |
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505409694 | MDExOlB1bGxSZXF1ZXN0MzI2ODQ4ODk1 | 3389 | OrderedDict --> dict, some python3.5 cleanup too | jhamman 2443309 | closed | 0 | 9 | 2019-10-10T17:30:43Z | 2019-10-23T07:07:10Z | 2019-10-12T21:33:34Z | MEMBER | 0 | pydata/xarray/pulls/3389 |
See below for inline comments where I could use some input from @shoyer and @crusaderky |
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503700649 | MDU6SXNzdWU1MDM3MDA2NDk= | 3380 | [Release] 0.14 | jhamman 2443309 | closed | 0 | 19 | 2019-10-07T21:28:28Z | 2019-10-15T01:08:11Z | 2019-10-14T21:26:59Z | MEMBER | 3358 is going to make some fairly major changes to the minimum supported versions of required and optional dependencies. We also have a few bug fixes that have landed since releasing 0.13 that would be good to get out.From what I can tell, the following pending PRs are close enough to get into this release. - [ ] ~tests for arrays with units #3238~ - [x] map_blocks #3276 - [x] Rolling minimum dependency versions policy #3358 - [x] Remove all OrderedDict's (#3389) - [x] Speed up isel and __getitem__ #3375 - [x] Fix concat bug when concatenating unlabeled dimensions. #3362 - [ ] ~Add hypothesis test for netCDF4 roundtrip #3283~ - [x] Fix groupby reduce for dataarray #3338 - [x] Need a fix for https://github.com/pydata/xarray/issues/3377 Am I missing anything else that needs to get in? I think we should aim to wrap this release up soon (this week). I can volunteer to go through the release steps once we're ready. |
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505617351 | MDExOlB1bGxSZXF1ZXN0MzI3MDEzMDQx | 3392 | fix for #3377 | jhamman 2443309 | closed | 0 | 1 | 2019-10-11T03:32:19Z | 2019-10-11T11:30:52Z | 2019-10-11T11:30:51Z | MEMBER | 0 | pydata/xarray/pulls/3392 |
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406035264 | MDExOlB1bGxSZXF1ZXN0MjQ5ODQ1MTAz | 2737 | add h5netcdf+dask tests | jhamman 2443309 | closed | 0 | 7 | 2019-02-02T23:50:20Z | 2019-02-12T06:31:01Z | 2019-02-12T05:39:19Z | MEMBER | 0 | pydata/xarray/pulls/2737 |
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407548101 | MDExOlB1bGxSZXF1ZXN0MjUwOTk3NTYx | 2750 | remove references to cyordereddict | jhamman 2443309 | closed | 0 | 0 | 2019-02-07T05:32:27Z | 2019-02-07T18:30:01Z | 2019-02-07T18:30:01Z | MEMBER | 0 | pydata/xarray/pulls/2750 |
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406049155 | MDExOlB1bGxSZXF1ZXN0MjQ5ODUzNTA1 | 2738 | reintroduce pynio/rasterio/iris to py36 test env | jhamman 2443309 | closed | 0 | 1 | 2019-02-03T03:43:31Z | 2019-02-07T00:08:49Z | 2019-02-07T00:08:17Z | MEMBER | 0 | pydata/xarray/pulls/2738 |
xref: #2683 |
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297227247 | MDU6SXNzdWUyOTcyMjcyNDc= | 1910 | Pynio tests are being skipped on TravisCI | jhamman 2443309 | closed | 0 | 3 | 2018-02-14T20:03:31Z | 2019-02-07T00:08:17Z | 2019-02-07T00:08:17Z | MEMBER | Problem descriptionCurrently on Travis, the Pynio tests are being skipped. The https://travis-ci.org/pydata/xarray/jobs/341426116#L2429-L2518 I can't look at this right now in depth but I'm wondering if this is related to #1531. reported by @WeatherGod |
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406187700 | MDExOlB1bGxSZXF1ZXN0MjQ5OTQyODM1 | 2741 | remove xfail from test_cross_engine_read_write_netcdf4 | jhamman 2443309 | closed | 0 | 0 | 2019-02-04T05:35:18Z | 2019-02-06T22:49:19Z | 2019-02-04T14:50:16Z | MEMBER | 0 | pydata/xarray/pulls/2741 | This is passing in my local test environment. We'll see on CI...
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400841236 | MDExOlB1bGxSZXF1ZXN0MjQ1OTM1OTA4 | 2691 | try no rasterio in py36 env | jhamman 2443309 | closed | 0 | 4 | 2019-01-18T18:35:58Z | 2019-02-03T03:44:11Z | 2019-01-18T21:47:44Z | MEMBER | 0 | pydata/xarray/pulls/2691 | As described in #2683, our test suite is failing on Travis with an unfortunate segfault. For now, I've just taken cc @max-sixty
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406023579 | MDExOlB1bGxSZXF1ZXN0MjQ5ODM4MTA3 | 2736 | remove bottleneck dev build from travis | jhamman 2443309 | closed | 0 | 0 | 2019-02-02T21:18:29Z | 2019-02-03T03:32:38Z | 2019-02-03T03:32:21Z | MEMBER | 0 | pydata/xarray/pulls/2736 | This dev build is failing due to problems with bottlenecks setup script. Generally, the bottleneck package seems to be missing some maintenance effort so until a new release is issued, I don't think we need to be testing against its dev state.
xref: #2661 |
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405955807 | MDExOlB1bGxSZXF1ZXN0MjQ5Nzk2MzQx | 2735 | add tests for handling of empty pandas objects in constructors | jhamman 2443309 | closed | 0 | 3 | 2019-02-02T06:54:42Z | 2019-02-02T23:18:21Z | 2019-02-02T07:47:58Z | MEMBER | 0 | pydata/xarray/pulls/2735 |
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405038519 | MDExOlB1bGxSZXF1ZXN0MjQ5MDg2NjYx | 2730 | improve error message for invalid encoding | jhamman 2443309 | closed | 0 | 1 | 2019-01-31T01:20:49Z | 2019-01-31T17:27:03Z | 2019-01-31T17:26:54Z | MEMBER | 0 | pydata/xarray/pulls/2730 | Improved error message for invalid encodings.
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395431629 | MDExOlB1bGxSZXF1ZXN0MjQxODg3MjU2 | 2645 | Remove py2 compat | jhamman 2443309 | closed | 0 | 14 | 2019-01-03T01:20:51Z | 2019-01-25T16:46:22Z | 2019-01-25T16:38:45Z | MEMBER | 0 | pydata/xarray/pulls/2645 | I was feeling particularly zealous today so I decided to see what it would take to strip out all the Python 2 compatibility code in xarray. I expect some will feel its too soon to merge this so I'm mostly putting this up for show-and-tell and to highlight some of the knots we've tied ourselves into over the years.
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302930480 | MDU6SXNzdWUzMDI5MzA0ODA= | 1971 | Should we be testing against multiple dask schedulers? | jhamman 2443309 | closed | 0 | 5 | 2018-03-07T01:25:37Z | 2019-01-13T20:58:21Z | 2019-01-13T20:58:20Z | MEMBER | Almost all of our unit tests are against the dask's default scheduler (usually dask.threaded). While it is true that beauty of dask is that one can separate the scheduler from the logical implementation, there are a few idiosyncrasies to consider, particularly in xarray's backends. To that end, we have a few tests covering the integration of the distributed scheduler with xarray's backends but the test coverage is not particularly complete. If nothing more, I think it is worth considering tests that use the threaded, multiprocessing, and distributed schedulers for a larger subset of the backends tests (those that use dask). Note, I'm bringing this up because I'm seeing some failing tests in #1793 that are unrelated to my code change but do appear to be related to dask and possibly a different different default scheduler (example failure). |
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395004129 | MDExOlB1bGxSZXF1ZXN0MjQxNTgxMjY0 | 2637 | DEP: drop python 2 support and associated ci mods | jhamman 2443309 | closed | 0 | 3 | 2018-12-31T16:35:59Z | 2019-01-02T04:52:18Z | 2019-01-02T04:52:04Z | MEMBER | 0 | pydata/xarray/pulls/2637 | This is a WIP. I expect the CI changes to take a few iterations.
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293414745 | MDU6SXNzdWUyOTM0MTQ3NDU= | 1876 | DEP: drop Python 2.7 support | jhamman 2443309 | closed | 0 | 2 | 2018-02-01T06:11:07Z | 2019-01-02T04:52:04Z | 2019-01-02T04:52:04Z | MEMBER | The timeline for dropping Python 2.7 support for new Xarray releases is the end of 2018. This issue can be used to track the necessary documentation and code changes to make that happen. xref: #1830 |
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377423603 | MDExOlB1bGxSZXF1ZXN0MjI4MzcwMzUz | 2545 | Expand test environment for Python 3.7 | jhamman 2443309 | closed | 0 | 2 | 2018-11-05T14:27:50Z | 2018-11-06T16:29:35Z | 2018-11-06T16:22:46Z | MEMBER | 0 | pydata/xarray/pulls/2545 | Just adding a full environment for python 3.7.
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377075253 | MDExOlB1bGxSZXF1ZXN0MjI4MTMwMzQx | 2538 | Stop loading tutorial data by default | jhamman 2443309 | closed | 0 | 6 | 2018-11-03T17:24:26Z | 2018-11-05T15:36:17Z | 2018-11-05T15:36:17Z | MEMBER | 0 | pydata/xarray/pulls/2538 |
In working on an xarray/dask tutorial, I've come to realize we eagerly load the tutorial datasets in One option would be to create a new function ( |
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362913084 | MDExOlB1bGxSZXF1ZXN0MjE3NDkyNDIy | 2432 | switch travis language to generic | jhamman 2443309 | closed | 0 | 3 | 2018-09-23T04:37:38Z | 2018-09-26T23:27:55Z | 2018-09-26T23:27:54Z | MEMBER | 0 | pydata/xarray/pulls/2432 | Following up on #2271. This switches the set language in our Travis-CI config from "python" to "generic". Since we don't use any of the Travis Python utilities, we didn't really need the python setting and the generic setting gives a few benefits:
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339197312 | MDExOlB1bGxSZXF1ZXN0MTk5OTI1NDg3 | 2271 | dev/test build for python 3.7 | jhamman 2443309 | closed | 0 | 3 | 2018-07-08T05:02:19Z | 2018-09-22T23:09:43Z | 2018-09-22T20:13:28Z | MEMBER | 0 | pydata/xarray/pulls/2271 |
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323765896 | MDU6SXNzdWUzMjM3NjU4OTY= | 2142 | add CFTimeIndex enabled date_range function | jhamman 2443309 | closed | 0 | 1 | 2018-05-16T20:02:08Z | 2018-09-19T20:24:40Z | 2018-09-19T20:24:40Z | MEMBER | Pandas' Code Sampl and expected output```python In [1]: import xarray as xr In [2]: xr.date_range('2000-02-26', '2000-03-02') Out[2]: DatetimeIndex(['2000-02-26', '2000-02-27', '2000-02-28', '2000-02-29', '2000-03-01', '2000-03-02'], dtype='datetime64[ns]', freq='D') In [3]: xr.date_range('2000-02-26', '2000-03-02', calendar='noleap') Out[3]: CFTimeIndex(['2000-02-26', '2000-02-27', '2000-02-28', '2000-03-01', '2000-03-02'], dtype='cftime.datetime', freq='D') ``` |
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361453268 | MDExOlB1bGxSZXF1ZXN0MjE2NDIxMTE3 | 2421 | Update NumFOCUS donate link | jhamman 2443309 | closed | 0 | 1 | 2018-09-18T19:40:53Z | 2018-09-19T05:59:28Z | 2018-09-19T05:59:28Z | MEMBER | 0 | pydata/xarray/pulls/2421 |
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357720579 | MDExOlB1bGxSZXF1ZXN0MjEzNjY4MTgz | 2403 | add some blurbs about numfocus sponsorship to docs | jhamman 2443309 | closed | 0 | 3 | 2018-09-06T15:54:06Z | 2018-09-19T05:37:34Z | 2018-09-11T02:14:18Z | MEMBER | 0 | pydata/xarray/pulls/2403 | Xarray is now a fiscally sponsored project of NumFOCUS. This PR adds a few blurbs of text highlighting that on the main readme and index page of the docs. TODO: - Update flipcause to xarray specific donation page |
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358870903 | MDExOlB1bGxSZXF1ZXN0MjE0NTAwNjk5 | 2409 | Numfocus | jhamman 2443309 | closed | 0 | 0 | 2018-09-11T03:15:52Z | 2018-09-11T05:13:51Z | 2018-09-11T05:13:51Z | MEMBER | 0 | pydata/xarray/pulls/2409 | followup PR fixing two small typos in my previous PR. |
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345300237 | MDExOlB1bGxSZXF1ZXN0MjA0NDg4NDI2 | 2320 | Fix for zarr encoding bug | jhamman 2443309 | closed | 0 | 1 | 2018-07-27T17:05:27Z | 2018-08-14T03:46:37Z | 2018-08-14T03:46:34Z | MEMBER | 0 | pydata/xarray/pulls/2320 |
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340489812 | MDExOlB1bGxSZXF1ZXN0MjAwODg4Mzc0 | 2282 | fix dask get_scheduler warning | jhamman 2443309 | closed | 0 | 1 | 2018-07-12T05:01:02Z | 2018-07-14T16:19:58Z | 2018-07-14T16:19:53Z | MEMBER | 0 | pydata/xarray/pulls/2282 |
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327905732 | MDExOlB1bGxSZXF1ZXN0MTkxNTg1ODU4 | 2204 | update minimum versions and associated code cleanup | jhamman 2443309 | closed | 0 | 0.11 2856429 | 6 | 2018-05-30T21:27:14Z | 2018-07-08T00:55:36Z | 2018-07-08T00:55:32Z | MEMBER | 0 | pydata/xarray/pulls/2204 |
This updates the following minimum versions:
and drops our tests for python 3.4. |
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288465429 | MDU6SXNzdWUyODg0NjU0Mjk= | 1829 | Drop support for Python 3.4 | jhamman 2443309 | closed | 0 | 0.11 2856429 | 13 | 2018-01-15T02:38:19Z | 2018-07-08T00:55:32Z | 2018-07-08T00:55:32Z | MEMBER | Python 3.7-final is due out in June (PEP 537). When do we want to deprecate 3.4 and when should we drop support all together. @maxim-lian brought this up in a PR he's working on: https://github.com/pydata/xarray/pull/1828#issuecomment-357562144. For reference, we dropped Python 3.3 in #1175 (12/20/2016). |
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327893262 | MDU6SXNzdWUzMjc4OTMyNjI= | 2203 | Update minimum version of dask | jhamman 2443309 | closed | 0 | 6 | 2018-05-30T20:47:57Z | 2018-07-08T00:55:32Z | 2018-07-08T00:55:32Z | MEMBER | Xarray currently states that it supports dask version 0.9 and later. However, 1) I don't think this is true and my quick test shows that some of our tests fail using dask 0.9, and 2) we have a growing number of tests that are being skipped for older dask versions:
I'd like to see xarray bump the minimum version number of dask to something around 0.15.4 (Oct. 2017) or 0.16 (Nov. 2017). cc @mrocklin, @pydata/xarray |
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327875183 | MDU6SXNzdWUzMjc4NzUxODM= | 2200 | DEPS: drop numpy < 1.12 | jhamman 2443309 | closed | 0 | 0 | 2018-05-30T19:52:40Z | 2018-07-08T00:55:31Z | 2018-07-08T00:55:31Z | MEMBER | Pandas is dropping Numpy 1.11 and earlier in their 0.24 release. It is probably easiest to follow suit with xarray. |
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331752926 | MDExOlB1bGxSZXF1ZXN0MTk0NDA3MzU5 | 2228 | fix zarr chunking bug | jhamman 2443309 | closed | 0 | 2 | 2018-06-12T21:04:10Z | 2018-06-13T13:07:58Z | 2018-06-13T05:51:36Z | MEMBER | 0 | pydata/xarray/pulls/2228 |
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331415995 | MDU6SXNzdWUzMzE0MTU5OTU= | 2225 | Zarr Backend: check for non-uniform chunks is too strict | jhamman 2443309 | closed | 0 | 3 | 2018-06-12T02:36:05Z | 2018-06-13T05:51:36Z | 2018-06-13T05:51:36Z | MEMBER | I think the following block of code is more strict than either dask or zarr requires: It should be possible to have uneven chunks in the last position of multiple dimensions in a zarr dataset. Code Sample, a copy-pastable example if possible```python In [1]: import xarray as xr In [2]: import dask.array as dsa In [3]: da = xr.DataArray(dsa.random.random((8, 7, 11), chunks=(3, 3, 3)), dims=('x', 'y', 't')) In [4]: da Out[4]: <xarray.DataArray 'da.random.random_sample-1aed3ea2f9dd784ec947cb119459fa56' (x: 8, y: 7, t: 11)> dask.array<shape=(8, 7, 11), dtype=float64, chunksize=(3, 3, 3)> Dimensions without coordinates: x, y, t In [5]: da.data.chunks Out[5]: ((3, 3, 2), (3, 3, 1), (3, 3, 3, 2)) In [6]: da.to_dataset('varname').to_zarr('/Users/jhamman/workdir/test_chunks.zarr')
/Users/jhamman/anaconda/bin/ipython:1: FutureWarning: the order of the arguments on DataArray.to_dataset has changed; you now need to supply ValueError Traceback (most recent call last) <ipython-input-7-32fa9a7d0276> in <module>() ----> 1 da.to_dataset('varname').to_zarr('/Users/jhamman/workdir/test_chunks.zarr') ~/anaconda/lib/python3.6/site-packages/xarray/core/dataset.py in to_zarr(self, store, mode, synchronizer, group, encoding, compute) 1185 from ..backends.api import to_zarr 1186 return to_zarr(self, store=store, mode=mode, synchronizer=synchronizer, -> 1187 group=group, encoding=encoding, compute=compute) 1188 1189 def unicode(self): ~/anaconda/lib/python3.6/site-packages/xarray/backends/api.py in to_zarr(dataset, store, mode, synchronizer, group, encoding, compute) 856 # I think zarr stores should always be sync'd immediately 857 # TODO: figure out how to properly handle unlimited_dims --> 858 dataset.dump_to_store(store, sync=True, encoding=encoding, compute=compute) 859 860 if not compute: ~/anaconda/lib/python3.6/site-packages/xarray/core/dataset.py in dump_to_store(self, store, encoder, sync, encoding, unlimited_dims, compute) 1073 1074 store.store(variables, attrs, check_encoding, -> 1075 unlimited_dims=unlimited_dims) 1076 if sync: 1077 store.sync(compute=compute) ~/anaconda/lib/python3.6/site-packages/xarray/backends/zarr.py in store(self, variables, attributes, args, kwargs) 341 def store(self, variables, attributes, args, kwargs): 342 AbstractWritableDataStore.store(self, variables, attributes, --> 343 *args, kwargs) 344 345 def sync(self, compute=True): ~/anaconda/lib/python3.6/site-packages/xarray/backends/common.py in store(self, variables, attributes, check_encoding_set, unlimited_dims) 366 self.set_dimensions(variables, unlimited_dims=unlimited_dims) 367 self.set_variables(variables, check_encoding_set, --> 368 unlimited_dims=unlimited_dims) 369 370 def set_attributes(self, attributes): ~/anaconda/lib/python3.6/site-packages/xarray/backends/common.py in set_variables(self, variables, check_encoding_set, unlimited_dims) 403 check = vn in check_encoding_set 404 target, source = self.prepare_variable( --> 405 name, v, check, unlimited_dims=unlimited_dims) 406 407 self.writer.add(source, target) ~/anaconda/lib/python3.6/site-packages/xarray/backends/zarr.py in prepare_variable(self, name, variable, check_encoding, unlimited_dims) 325 326 encoding = _extract_zarr_variable_encoding( --> 327 variable, raise_on_invalid=check_encoding) 328 329 encoded_attrs = OrderedDict() ~/anaconda/lib/python3.6/site-packages/xarray/backends/zarr.py in _extract_zarr_variable_encoding(variable, raise_on_invalid) 181 182 chunks = _determine_zarr_chunks(encoding.get('chunks'), variable.chunks, --> 183 variable.ndim) 184 encoding['chunks'] = chunks 185 return encoding ~/anaconda/lib/python3.6/site-packages/xarray/backends/zarr.py in _determine_zarr_chunks(enc_chunks, var_chunks, ndim)
87 "Zarr requires uniform chunk sizes excpet for final chunk."
88 " Variable %r has incompatible chunks. Consider "
---> 89 "rechunking using ValueError: Zarr requires uniform chunk sizes excpet for final chunk. Variable ((3, 3, 2), (3, 3, 1), (3, 3, 3, 2)) has incompatible chunks. Consider rechunking using Problem description[this should explain why the current behavior is a problem and why the expected output is a better solution.] Expected OutputIIUC, Zarr allows multiple dims to have uneven chunks, so long as they are all in the last position: ```Python In [9]: import zarr In [10]: z = zarr.zeros((8, 7, 11), chunks=(3, 3, 3), dtype='i4') In [11]: z.chunks Out[11]: (3, 3, 3) ``` Output of
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323017930 | MDExOlB1bGxSZXF1ZXN0MTg3OTc4ODg2 | 2131 | Feature/pickle rasterio | jhamman 2443309 | closed | 0 | 13 | 2018-05-14T23:38:59Z | 2018-06-08T05:00:59Z | 2018-06-07T18:02:56Z | MEMBER | 0 | pydata/xarray/pulls/2131 |
cc @rsignell-usgs |
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322445312 | MDU6SXNzdWUzMjI0NDUzMTI= | 2121 | rasterio backend should use DataStorePickleMixin (or something similar) | jhamman 2443309 | closed | 0 | 2 | 2018-05-11T21:51:59Z | 2018-06-07T18:02:56Z | 2018-06-07T18:02:56Z | MEMBER | Code Sample, a copy-pastable example if possible```Python In [1]: import xarray as xr In [2]: ds = xr.open_rasterio('RGB.byte.tif') In [3]: ds Out[3]: <xarray.DataArray (band: 3, y: 718, x: 791)> [1703814 values with dtype=uint8] Coordinates: * band (band) int64 1 2 3 * y (y) float64 2.827e+06 2.826e+06 2.826e+06 2.826e+06 2.826e+06 ... * x (x) float64 1.021e+05 1.024e+05 1.027e+05 1.03e+05 1.033e+05 ... Attributes: transform: (101985.0, 300.0379266750948, 0.0, 2826915.0, 0.0, -300.0417... crs: +init=epsg:32618 res: (300.0379266750948, 300.041782729805) is_tiled: 0 nodatavals: (0.0, 0.0, 0.0) In [4]: import pickle In [5]: pickle.dumps(ds)TypeError Traceback (most recent call last) <ipython-input-5-a165c2473431> in <module>() ----> 1 pickle.dumps(ds) TypeError: can't pickle rasterio._io.RasterReader objects ``` Problem descriptionOriginally reported by @rsignell-usgs in https://github.com/pangeo-data/pangeo/issues/249#issuecomment-388445370, the rasterio backend is not pickle-able. This obviously causes problems when using dask-distributed. We probably need to use Expected Output
returns a pickled dataset. Output of
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324204749 | MDExOlB1bGxSZXF1ZXN0MTg4ODc1NDU3 | 2154 | fix unlimited dims bug | jhamman 2443309 | closed | 0 | 1 | 2018-05-17T22:13:51Z | 2018-05-25T00:32:02Z | 2018-05-18T14:48:11Z | MEMBER | 0 | pydata/xarray/pulls/2154 |
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324544072 | MDExOlB1bGxSZXF1ZXN0MTg5MTI4NzY0 | 2163 | Versioneer | jhamman 2443309 | closed | 0 | 2 | 2018-05-18T20:35:39Z | 2018-05-20T23:14:03Z | 2018-05-20T23:14:03Z | MEMBER | 0 | pydata/xarray/pulls/2163 |
This eliminates the need to edit |
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323732892 | MDExOlB1bGxSZXF1ZXN0MTg4NTE4Nzg2 | 2141 | expose CFTimeIndex to public API | jhamman 2443309 | closed | 0 | 0 | 2018-05-16T18:19:59Z | 2018-05-16T19:48:00Z | 2018-05-16T19:48:00Z | MEMBER | 0 | pydata/xarray/pulls/2141 |
cc @spencerkclark and @shoyer |
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286542795 | MDExOlB1bGxSZXF1ZXN0MTYxNTA4MzMx | 1811 | WIP: Compute==False for to_zarr and to_netcdf | jhamman 2443309 | closed | 0 | 17 | 2018-01-07T05:01:42Z | 2018-05-16T15:06:51Z | 2018-05-16T15:05:03Z | MEMBER | 0 | pydata/xarray/pulls/1811 | review of this can wait until after #1800 is merged.
cc @mrocklin |
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304589831 | MDExOlB1bGxSZXF1ZXN0MTc0NTMxNTcy | 1983 | Parallel open_mfdataset | jhamman 2443309 | closed | 0 | 18 | 2018-03-13T00:44:35Z | 2018-04-20T12:04:31Z | 2018-04-20T12:04:23Z | MEMBER | 0 | pydata/xarray/pulls/1983 |
I'm sharing this in the hopes of getting comments from @mrocklin and @pydata/xarray. What this does:
What it does not do (yet):
Benchmark Example```Python In [1]: import xarray as xr ...: import dask ...: import dask.threaded ...: import dask.multiprocessing ...: from dask.distributed import Client ...: In [2]: c = Client() ...: c ...: Out[2]: <Client: scheduler='tcp://127.0.0.1:59576' processes=4 cores=4> In [4]: %%time ...: with dask.set_options(get=dask.multiprocessing.get): ...: ds = xr.open_mfdataset('../test_files/test_netcdf_*nc', autoclose=True, parallel=True) ...: CPU times: user 4.76 s, sys: 201 ms, total: 4.96 s Wall time: 7.74 s In [5]: %%time ...: with dask.set_options(get=c.get): ...: ds = xr.open_mfdataset('../test_files/test_netcdf_*nc', autoclose=True, parallel=True) ...: ...: CPU times: user 1.88 s, sys: 60.6 ms, total: 1.94 s Wall time: 4.41 s In [6]: %%time ...: with dask.set_options(get=dask.threaded.get): ...: ds = xr.open_mfdataset('../test_files/test_netcdf_*nc') ...: CPU times: user 7.77 s, sys: 247 ms, total: 8.02 s Wall time: 8.17 s In [7]: %%time ...: with dask.set_options(get=dask.threaded.get): ...: ds = xr.open_mfdataset('../test_files/test_netcdf_*nc', autoclose=True) ...: ...: CPU times: user 7.89 s, sys: 202 ms, total: 8.09 s Wall time: 8.21 s In [8]: ds Out[8]: <xarray.Dataset> Dimensions: (lat: 45, lon: 90, time: 1000) Coordinates: * lon (lon) float64 0.0 4.045 8.09 12.13 16.18 20.22 24.27 28.31 ... * lat (lat) float64 -90.0 -85.91 -81.82 -77.73 -73.64 -69.55 -65.45 ... * time (time) datetime64[ns] 1970-01-01 1970-01-02 1970-01-11 ... Data variables: foo (time, lon, lat) float64 dask.array<shape=(1000, 90, 45), chunksize=(1, 90, 45)> bar (time, lon, lat) float64 dask.array<shape=(1000, 90, 45), chunksize=(1, 90, 45)> baz (time, lon, lat) float32 dask.array<shape=(1000, 90, 45), chunksize=(1, 90, 45)> Attributes: history: created for xarray benchmarking ``` |
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304201107 | MDU6SXNzdWUzMDQyMDExMDc= | 1981 | use dask to open datasets in parallel | jhamman 2443309 | closed | 0 | 5 | 2018-03-11T22:33:52Z | 2018-04-20T12:04:23Z | 2018-04-20T12:04:23Z | MEMBER | Code Sample, a copy-pastable example if possible
Problem descriptionWe have many issues describing the less than stelar performance of open_mfdataset (e.g. #511, #893, #1385, #1788, #1823). The problem can be broken into three pieces: 1) open each file, 2) decode/preprocess each datasets, and 3) merge/combine/concat the collection of datasets. We can perform (1) and (2) in parallel (performance improvements to (3) would be a separate task). Lately, I'm finding that for large numbers of files, it can take many seconds to many minutes just to open all the files in a multi-file dataset of mine. I'm proposing that we use something like We could change the line:
I'm curious what others think of this idea and what the potential downfalls may be. |
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283388962 | MDExOlB1bGxSZXF1ZXN0MTU5Mjg2OTk0 | 1793 | fix distributed writes | jhamman 2443309 | closed | 0 | 0.10.3 3008859 | 35 | 2017-12-19T22:24:41Z | 2018-03-13T15:32:54Z | 2018-03-10T15:43:18Z | MEMBER | 0 | pydata/xarray/pulls/1793 |
Right now, I've just modified the dask distributed integration tests so we can all see the failing tests. I'm happy to push this further but I thought I'd see if either @shoyer or @mrocklin have an idea where to start? |
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304097233 | MDExOlB1bGxSZXF1ZXN0MTc0MTg1NDI5 | 1980 | Fix for failing zarr test | jhamman 2443309 | closed | 0 | 2 | 2018-03-10T19:26:37Z | 2018-03-12T05:37:09Z | 2018-03-12T05:37:02Z | MEMBER | 0 | pydata/xarray/pulls/1980 |
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298854863 | MDExOlB1bGxSZXF1ZXN0MTcwMzg1ODI4 | 1933 | Use conda-forge netcdftime wherever netcdf4 was tested | jhamman 2443309 | closed | 0 | 8 | 2018-02-21T06:22:08Z | 2018-03-09T19:22:34Z | 2018-03-09T19:22:20Z | MEMBER | 0 | pydata/xarray/pulls/1933 |
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295621576 | MDU6SXNzdWUyOTU2MjE1NzY= | 1897 | Vectorized indexing with cache=False | jhamman 2443309 | closed | 0 | 5 | 2018-02-08T18:38:18Z | 2018-03-06T22:00:57Z | 2018-03-06T22:00:57Z | MEMBER | Code Sample, a copy-pastable example if possible```python import numpy as np import xarray as xr n_times = 4; n_lats = 10; n_lons = 15 n_points = 4 ds = xr.Dataset({'test_var': (['time', 'latitude', 'longitude'], np.random.random((n_times, n_lats, n_lons)))}) ds.to_netcdf('test.nc') rand_lons = xr.Variable('points', np.random.randint(0, high=n_lons, size=n_points)) rand_lats = xr.Variable('points', np.random.randint(0, high=n_lats, size=n_points)) ds = xr.open_dataset('test.nc', cache=False)
points = ds['test_var'][:, rand_lats, rand_lons]
NotImplementedError Traceback (most recent call last) <ipython-input-7-f16e4cae9456> in <module>() 12 13 ds = xr.open_dataset('test.nc', cache=False) ---> 14 points = ds['test_var'][:, rand_lats, rand_lons] ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/dataarray.py in getitem(self, key) 478 else: 479 # xarray-style array indexing --> 480 return self.isel(**self._item_key_to_dict(key)) 481 482 def setitem(self, key, value): ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/dataarray.py in isel(self, drop, indexers) 759 DataArray.sel 760 """ --> 761 ds = self._to_temp_dataset().isel(drop=drop, indexers) 762 return self._from_temp_dataset(ds) 763 ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/dataset.py in isel(self, drop, indexers) 1390 for name, var in iteritems(self._variables): 1391 var_indexers = {k: v for k, v in indexers_list if k in var.dims} -> 1392 new_var = var.isel(var_indexers) 1393 if not (drop and name in var_indexers): 1394 variables[name] = new_var ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/variable.py in isel(self, **indexers) 851 if dim in indexers: 852 key[i] = indexers[dim] --> 853 return self[tuple(key)] 854 855 def squeeze(self, dim=None): ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/variable.py in getitem(self, key) 620 """ 621 dims, indexer, new_order = self._broadcast_indexes(key) --> 622 data = as_indexable(self._data)[indexer] 623 if new_order: 624 data = np.moveaxis(data, range(len(new_order)), new_order) ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/indexing.py in getitem(self, key) 554 555 def getitem(self, key): --> 556 return type(self)(_wrap_numpy_scalars(self.array[key])) 557 558 def setitem(self, key, value): ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/indexing.py in getitem(self, indexer) 521 522 def getitem(self, indexer): --> 523 return type(self)(self.array, self._updated_key(indexer)) 524 525 def setitem(self, key, value): ~/anaconda/envs/pangeo/lib/python3.6/site-packages/xarray/core/indexing.py in _updated_key(self, new_key) 491 'Vectorized indexing for {} is not implemented. Load your ' 492 'data first with .load() or .compute(), or disable caching by ' --> 493 'setting cache=False in open_dataset.'.format(type(self))) 494 495 iter_new_key = iter(expanded_indexer(new_key.tuple, self.ndim)) NotImplementedError: Vectorized indexing for <class 'xarray.core.indexing.LazilyIndexedArray'> is not implemented. Load your data first with .load() or .compute(), or disable caching by setting cache=False in open_dataset. ``` Problem descriptionRaising a Expected OutputIdeally, we can get the same behavior as: ```python ds = xr.open_dataset('test2.nc', cache=False).load() points = ds['test_var'][:, rand_lats, rand_lons] <xarray.DataArray 'test_var' (time: 4, points: 4)> array([[0.939469, 0.406885, 0.939469, 0.759075], [0.470116, 0.585546, 0.470116, 0.37833 ], [0.274321, 0.648218, 0.274321, 0.383391], [0.754121, 0.078878, 0.754121, 0.903788]]) Dimensions without coordinates: time, points ``` without needing to use Output of
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287852184 | MDU6SXNzdWUyODc4NTIxODQ= | 1821 | v0.10.1 Release | jhamman 2443309 | closed | 0 | 0.10.3 3008859 | 11 | 2018-01-11T16:56:08Z | 2018-02-26T23:20:45Z | 2018-02-26T01:48:32Z | MEMBER | We're close to a minor/bug-fix release (0.10.1). What do we need to get done before that can happen?
Help wanted / bugs that no-one is working on: - [ ] #1792 Comparison to masked numpy arrays - [ ] #1764 groupby_bins fails for empty bins What else? |
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300039859 | MDExOlB1bGxSZXF1ZXN0MTcxMjM4Mzk3 | 1939 | Fix/dask isnull | jhamman 2443309 | closed | 0 | 0 | 2018-02-25T16:32:47Z | 2018-02-25T20:52:17Z | 2018-02-25T20:52:16Z | MEMBER | 0 | pydata/xarray/pulls/1939 |
Thanks @fujiisoup for the report. |
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293047671 | MDExOlB1bGxSZXF1ZXN0MTY2MTc3ODM5 | 1872 | added contributing guide | jhamman 2443309 | closed | 0 | 5 | 2018-01-31T06:41:35Z | 2018-02-23T06:16:00Z | 2018-02-05T21:00:02Z | MEMBER | 0 | pydata/xarray/pulls/1872 |
This is something we've talked about for a while and I'm capitalizing on a moment of inspiration. Full disclosure, I've taken most of this from Pandas and edited it just where it makes sense for Xarray. If others would like specific changes to this, please comment only on |
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297935814 | MDExOlB1bGxSZXF1ZXN0MTY5NzM3ODg0 | 1920 | Add netcdftime as an optional dependency. | jhamman 2443309 | closed | 0 | 1 | 2018-02-16T22:12:01Z | 2018-02-22T03:23:25Z | 2018-02-19T21:25:57Z | MEMBER | 0 | pydata/xarray/pulls/1920 |
I've added a temporary travis build with the master branch of This is helping us move towards https://github.com/Unidata/netcdf4-python/issues/601 and #1252 cc @jswhit and @spencerkclark |
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296847687 | MDExOlB1bGxSZXF1ZXN0MTY4OTI3NDcz | 1907 | drop zarr variable name from the dask chunk name | jhamman 2443309 | closed | 0 | 1 | 2018-02-13T18:55:33Z | 2018-02-17T04:40:18Z | 2018-02-17T04:40:15Z | MEMBER | 0 | pydata/xarray/pulls/1907 |
cc @mrocklin |
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296867544 | MDExOlB1bGxSZXF1ZXN0MTY4OTQyNTg4 | 1908 | Build documentation on TravisCI | jhamman 2443309 | closed | 0 | 8 | 2018-02-13T20:04:07Z | 2018-02-15T23:20:34Z | 2018-02-15T23:20:31Z | MEMBER | 0 | pydata/xarray/pulls/1908 |
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113497063 | MDU6SXNzdWUxMTM0OTcwNjM= | 640 | Use pytest to simplify unit tests | jhamman 2443309 | closed | 0 | 2 | 2015-10-27T03:06:48Z | 2018-02-05T21:00:02Z | 2018-02-05T21:00:02Z | MEMBER | xray's unit testing system uses Python's standard |
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293027121 | MDExOlB1bGxSZXF1ZXN0MTY2MTYzMjQ5 | 1871 | add warning stating that xarray will drop python 2 support at the end of 2018 | jhamman 2443309 | closed | 0 | 1 | 2018-01-31T04:25:14Z | 2018-02-01T06:04:12Z | 2018-02-01T06:04:08Z | MEMBER | 0 | pydata/xarray/pulls/1871 |
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288466108 | MDU6SXNzdWUyODg0NjYxMDg= | 1830 | Drop support for Python 2 | jhamman 2443309 | closed | 0 | 7 | 2018-01-15T02:44:15Z | 2018-02-01T06:04:08Z | 2018-02-01T06:04:08Z | MEMBER | When do we want to drop Python 2 support for Xarray. For reference, Pandas has a stated drop date for Python 2 of the end of 2018 (this year) and Numpy is slightly later and includes an incremental depreciation, final on Jan. 1, 2020. We may also consider signing this pledge to help make it clear when/why we're dropping Python 2 support: http://www.python3statement.org/ xref: https://github.com/pandas-dev/pandas/issues/18894, https://github.com/numpy/numpy/pull/10006, https://github.com/python3statement/python3statement.github.io/issues/11 |
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292640727 | MDExOlB1bGxSZXF1ZXN0MTY1ODc3NDI1 | 1868 | add h5py to show_versions() | jhamman 2443309 | closed | 0 | 0 | 2018-01-30T03:25:13Z | 2018-01-30T15:33:14Z | 2018-01-30T06:21:15Z | MEMBER | 0 | pydata/xarray/pulls/1868 |
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284607311 | MDExOlB1bGxSZXF1ZXN0MTYwMTY1NjI3 | 1800 | WIP: Performance improvements for zarr backend | jhamman 2443309 | closed | 0 | 0.10.3 3008859 | 6 | 2017-12-26T20:37:45Z | 2018-01-24T14:56:57Z | 2018-01-24T14:55:52Z | MEMBER | 0 | pydata/xarray/pulls/1800 |
This is building on top of #1799. Based on the suggestion from @alimanfoo in https://github.com/pangeo-data/pangeo/issues/48#issuecomment-353807691, I have reworked the handling of attributes in the zarr backend. There is more to do here, particularly in the cc @rabernat, @mrocklin and @alimanfoo |
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287186057 | MDU6SXNzdWUyODcxODYwNTc= | 1813 | Test Failure: test_datetime_line_plot | jhamman 2443309 | closed | 0 | 3 | 2018-01-09T18:29:35Z | 2018-01-10T07:13:53Z | 2018-01-10T07:13:53Z | MEMBER | We're getting a single test failure in the plot tests on master (link to travis failure. I haven't been able to reproduce this locally yet so I'm just going to post here to see if anyone has any ideas. Code Sample```python ___ TestDatetimePlot.test_datetime_line_plot _____ self = <xarray.tests.test_plot.TestDatetimePlot testMethod=test_datetime_line_plot> def test_datetime_line_plot(self): # test if line plot raises no Exception
xarray/plot/plot.py:328: in line return line(self._da, args, *kwargs) xarray/plot/plot.py:223: in line _ensure_plottable(x) args = (<xarray.DataArray 'time' (time: 12)> array([datetime.datetime(2017, 1, 1, 0, 0), datetime.datetime(2017, 2, 1,... 12, 1, 0, 0)], dtype=object) Coordinates: * time (time) object 2017-01-01 2017-02-01 2017-03-01 2017-04-01 ...,) numpy_types = [<class 'numpy.floating'>, <class 'numpy.integer'>, <class 'numpy.timedelta64'>, <class 'numpy.datetime64'>] other_types = [<class 'datetime.datetime'>] x = <xarray.DataArray 'time' (time: 12)> array([datetime.datetime(2017, 1, 1, 0, 0), datetime.datetime(2017, 2, 1, ...7, 12, 1, 0, 0)], dtype=object) Coordinates: * time (time) object 2017-01-01 2017-02-01 2017-03-01 2017-04-01 ... def _ensure_plottable(*args): """ Raise exception if there is anything in args that can't be plotted on an axis. """ numpy_types = [np.floating, np.integer, np.timedelta64, np.datetime64] other_types = [datetime]
Expected OutputThis test was previously passing Output of
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287199483 | MDExOlB1bGxSZXF1ZXN0MTYxOTUzNTAy | 1814 | Fix/plot error and warning | jhamman 2443309 | closed | 0 | 0 | 2018-01-09T19:16:31Z | 2018-01-10T07:13:53Z | 2018-01-10T07:13:53Z | MEMBER | 0 | pydata/xarray/pulls/1814 |
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267028954 | MDExOlB1bGxSZXF1ZXN0MTQ3Njk1MzEx | 1640 | WIP: Feature/interpolate | jhamman 2443309 | closed | 0 | 8 | 2017-10-20T00:26:25Z | 2017-12-30T06:58:52Z | 2017-12-30T06:21:42Z | MEMBER | 0 | pydata/xarray/pulls/1640 |
Rough draft of interpolate method for filling of arbitrary nans. cc @darothen |
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265056503 | MDU6SXNzdWUyNjUwNTY1MDM= | 1631 | Resample / upsample behavior diverges from pandas | jhamman 2443309 | closed | 0 | 5 | 2017-10-12T19:22:44Z | 2017-12-30T06:21:42Z | 2017-12-30T06:21:42Z | MEMBER | I've found a few issues where xarray's new resample / upsample functionality is diverging from Pandas. I think they are mostly surrounding how NaNs are treated. Thoughts from @shoyer, @darothen and others. Gist with all the juicy details: https://gist.github.com/jhamman/354f0e5ff32a39550ffd25800e7214fc#file-xarray_resample-ipynb xref: #1608, #1272 |
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283985001 | MDExOlB1bGxSZXF1ZXN0MTU5NzM1NzI3 | 1799 | move backend append logic to the prepare_variable methods | jhamman 2443309 | closed | 0 | 2 | 2017-12-21T19:44:54Z | 2017-12-28T05:40:21Z | 2017-12-28T05:40:17Z | MEMBER | 0 | pydata/xarray/pulls/1799 |
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