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Fix keep_size for arviz structures. #4006
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Codecov Report
@@ Coverage Diff @@
## master #4006 +/- ##
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+ Coverage 86.62% 86.65% +0.03%
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Files 88 88
Lines 14062 14090 +28
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+ Hits 12181 12210 +29
+ Misses 1881 1880 -1
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I can confirm that this PR leads to a more reasonable output shape in my driver code. For the purposes of code review, the linter changes in posterior_predictive.py lead to a pretty massive diff. I wonder if it might make sense to do linting as a separate PR to ensure high visibility of math changes. |
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Generally looks good, but I have to admin that I probably missed half of the changes because of black formatting 🙄.
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actually I wanted to request changes - see the thread on instantiate_steppers
I'm not sure that's feasible, since the CI checks for conformance with black formatting. I think the problem is that somehow this file slipped in without being black formatted to begin with. Another time I would probably make the black formatting a separate commit but I didn't expect such a major upset. Also, even if it's a separate commit, people mostly just compare the end state of a MR, so that's probably extra work to no effect. I wish I had a better answer for you. |
I'm going to rebase and rewrite history to try to separate out the reformatting, please wait for more updates. |
Previously posterior predictive sampling functions did not properly handle the `keep_size` keyword argument when getting an xarray Dataset as parameter. Also extended these functions to accept InferenceData object as input.
@kyleabeauchamp @michaelosthege I have just (force) pushed a drastic restructuring that splits the MR into code changes and reformatting. We should make sure it passes tests again -- in case I messed something up in the rebase. Now you should be able to quickly review the code changes and separately evaluate the reformatting -- if you even care about the latter. I appreciate your patience. |
@rpgoldman much nicer to read! I didn't find a problem. Your changes are also covered by the tests - except for raising the error raised by passing the wrong argument type. |
Do you mean https://github.com/pymc-devs/pymc3/blob/de2d6149453251b9b2496627c8fadffe59a83873/pymc3/distributions/posterior_predictive.py#L210 ? Should I supply a test with an argument of inappropriate type here? If not, please LMK what error you had in mind. Thanks! |
I think this LGTM as well (good tests, improved typing, fixing target issue), but I'll defer to others for approval as I'm not very familiar with this part of the codebase. |
Make errors consistent across sample_posterior_predictive and fast_sample_posterior_predictive, and add 2 tests.
@michaelosthege Added the two tests. If this passes, and is satisfactory, please merge. Thanks! |
Entry into release notes is missing.. I'm in a hurry and can't find the button to edit it online.. |
Fixed. |
* Update GP NBs to use standard notebook style (pymc-devs#3978) * update gp-latent nb to use arviz * rerun, run black * rerun after fixes from comments * rerun black * rewrite radon notebook using ArviZ and xarray (pymc-devs#3963) * rewrite radon notebook using ArviZ and xarray Roughly half notebook has been updated * add comments on xarray usage * rewrite 2n half of notebook * minor fix * rerun notebook and minor changes * rerun notebook on pymc3.9.2 and ArviZ 0.9.0 * remove unused import * add change to release notes * SMC: refactor, speed-up and run multiple chains in parallel for diagnostics (pymc-devs#3981) * first attempt to vectorize smc kernel * add ess, remove multiprocessing * run multiple chains * remove unused imports * add more info to report * minor fix * test log * fix type_num error * remove unused imports update BF notebook * update notebook with diagnostics * update notebooks * update notebook * update notebook * Honor discard_tuned_samples during KeyboardInterrupt (pymc-devs#3785) * Honor discard_tuned_samples during KeyboardInterrupt * Do not compute convergence checks without samples * Add time values as sampler stats for NUTS (pymc-devs#3986) * Add time values as sampler stats for NUTS * Use float time counters for nuts stats * Add timing sampler stats to release notes * Improve doc of time related sampler stats Co-authored-by: Alexandre ANDORRA <[email protected]> Co-authored-by: Alexandre ANDORRA <[email protected]> * Drop support for py3.6 (pymc-devs#3992) * Drop support for py3.6 * Update RELEASE-NOTES.md Co-authored-by: Colin <[email protected]> Co-authored-by: Colin <[email protected]> * Fix Mixture distribution mode computation and logp dimensions Closes pymc-devs#3994. * Add more info to divergence warnings (pymc-devs#3990) * Add more info to divergence warnings * Add dataclasses as requirement for py3.6 * Fix tests for extra divergence info * Remove py3.6 requirements * follow-up of py36 drop (pymc-devs#3998) * Revert "Drop support for py3.6 (pymc-devs#3992)" This reverts commit 1bf867e. * Update README.rst * Update setup.py * Update requirements.txt * Update requirements.txt Co-authored-by: Adrian Seyboldt <[email protected]> * Show pickling issues in notebook on windows (pymc-devs#3991) * Merge close remote connection * Manually pickle step method in multiprocess sampling * Fix tests for extra divergence info * Add test for remote process crash * Better formatting in test_parallel_sampling Co-authored-by: Junpeng Lao <[email protected]> * Use mp_ctx forkserver on MacOS * Add test for pickle with dill Co-authored-by: Junpeng Lao <[email protected]> * Fix keep_size for arviz structures. (pymc-devs#4006) * Fix posterior pred. sampling keep_size w/ arviz input. Previously posterior predictive sampling functions did not properly handle the `keep_size` keyword argument when getting an xarray Dataset as parameter. Also extended these functions to accept InferenceData object as input. * Reformatting. * Check type errors. Make errors consistent across sample_posterior_predictive and fast_sample_posterior_predictive, and add 2 tests. * Add changelog entry. Co-authored-by: Robert P. Goldman <[email protected]> * SMC-ABC add distance, refactor and update notebook (pymc-devs#3996) * update notebook * move dist functions out of simulator class * fix docstring * add warning and test for automatic selection of sort sum_stat when using wassertein and energy distances * update release notes * fix typo * add sim_data test * update and add tests * update and add tests * add docs for interpretation of length scales in periodic kernel (pymc-devs#3989) * fix the expression of periodic kernel * revert change and add doc * FIXUP: add suggested doc string * FIXUP: revertchanges in .gitignore * Fix Matplotlib type error for tests (pymc-devs#4023) * Fix for issue 4022. Check for support for `warn` argument in `matplotlib.use()` call. Drop it if it causes an error. * Alternative fix. * Switch from pm.DensityDist to pm.Potential to describe the likelihood in MLDA notebooks and script examples. This is done because of the bug described in arviz-devs/arviz#1279. The commit also changes a few parameters in the MLDA .py example to match the ones in the equivalent notebook. * Remove Dirichlet distribution type restrictions (pymc-devs#4000) * Remove Dirichlet distribution type restrictions Closes pymc-devs#3999. * Add missing Dirichlet shape parameters to tests * Remove Dirichlet positive concentration parameter constructor tests This test can't be performed in the constructor if we're allowing Theano-type distribution parameters. * Add a hack to statically infer Dirichlet argument shapes Co-authored-by: Brandon T. Willard <[email protected]> Co-authored-by: Bill Engels <[email protected]> Co-authored-by: Oriol Abril-Pla <[email protected]> Co-authored-by: Osvaldo Martin <[email protected]> Co-authored-by: Adrian Seyboldt <[email protected]> Co-authored-by: Alexandre ANDORRA <[email protected]> Co-authored-by: Colin <[email protected]> Co-authored-by: Brandon T. Willard <[email protected]> Co-authored-by: Junpeng Lao <[email protected]> Co-authored-by: rpgoldman <[email protected]> Co-authored-by: Robert P. Goldman <[email protected]> Co-authored-by: Tirth Patel <[email protected]> Co-authored-by: Brandon T. Willard <[email protected]>
The
keep_size
kwarg forsample_posterior_predictive
andfast_sample_posterior_predictive
didn't handlearviz.InferenceData
orxarray.Dataset
arguments correctly when thekeep_size
option is chosen.Addresses !4004