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More stable algorithm for variance, standard deviation #456
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__version__ = "0.1.dev657+g619a390.d20250606" | ||
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from functools import partial | ||
from typing import Self | ||
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import numpy as np | ||
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from . import xrdtypes as dtypes | ||
from .xrutils import is_scalar, isnull, notnull | ||
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MULTIARRAY_HANDLED_FUNCTIONS = {} | ||
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class MultiArray: | ||
arrays: tuple[np.ndarray, ...] | ||
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def __init__(self, arrays): | ||
self.arrays = arrays # something else needed here to be more careful about types (not sure what) | ||
# Do we want to co-erce arrays into a tuple and make sure it's immutable? Do we want it to be immutable? | ||
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. this is fine as-is |
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assert np.all([arrays[0].shape == a.shape for a in arrays]), ( | ||
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"Expect all arrays to have the same shape" | ||
) | ||
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def astype(self, dt, **kwargs): | ||
new_arrays = [] # I really don't like doing this as a list | ||
for array in self.arrays: # Do we care about trying to avoid for loops here? three separate lines would be faster, but harder to read | ||
new_arrays.append(array.astype(dt, **kwargs)) | ||
return MultiArray(new_arrays) | ||
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def reshape(self, shape, **kwargs): | ||
return MultiArray([array.reshape(shape, **kwargs) for array in self.arrays]) | ||
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def squeeze(self, axis=None): | ||
return MultiArray([array.squeeze(axis) for array in self.arrays]) | ||
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def __array_function__(self, func, types, args, kwargs): | ||
if func not in MULTIARRAY_HANDLED_FUNCTIONS: | ||
return NotImplemented | ||
# Note: this allows subclasses that don't override | ||
# __array_function__ to handle MyArray objects | ||
# if not all(issubclass(t, MyArray) for t in types): # I can't see this being relevant at all for this code, but maybe it's safer to leave it in? | ||
# return NotImplemented | ||
return MULTIARRAY_HANDLED_FUNCTIONS[func](*args, **kwargs) | ||
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# Shape is needed, seems likely that the other two might be | ||
# Making some strong assumptions here that all the arrays are the same shape, and I don't really like this | ||
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. yeah this data structure isn't useful in general, and is only working around some limitations in the design where we need to pass in multiple intermediates to the combine function. So there will be some ugliness. You have good instincts. |
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@property | ||
def dtype(self) -> np.dtype: | ||
return self.arrays[0].dtype | ||
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@property | ||
def shape(self) -> tuple[int, ...]: | ||
return self.arrays[0].shape | ||
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@property | ||
def ndim(self) -> int: | ||
return self.arrays[0].ndim | ||
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def __getitem__(self, key) -> Self: | ||
return type(self)([array[key] for array in self.arrays]) | ||
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def implements(numpy_function): | ||
"""Register an __array_function__ implementation for MyArray objects.""" | ||
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def decorator(func): | ||
MULTIARRAY_HANDLED_FUNCTIONS[numpy_function] = func | ||
return func | ||
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return decorator | ||
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@implements(np.expand_dims) | ||
def expand_dims_MultiArray(multiarray, axis): | ||
return MultiArray( | ||
[np.expand_dims(a, axis) for a in multiarray.arrays] | ||
) # This is gonna spit out a list and I'm not sure if I'm okay with that? | ||
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@implements(np.concatenate) | ||
def concatenate_MultiArray(multiarrays, axis): | ||
n_arrays = len(multiarrays[0].arrays) | ||
for ma in multiarrays[1:]: | ||
if not ( | ||
len(ma.arrays) == n_arrays | ||
): # I don't know what trying to concatenate MultiArrays with different numbers of arrays would even mean | ||
raise NotImplementedError | ||
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# There's the potential for problematic different shapes coming in here. | ||
# Probably warrants some defensive programming, but I'm not sure what to check for while still being generic | ||
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# I don't like using append and lists here, but I can't work out how to do it better | ||
new_arrays = [] | ||
for i in range(multiarrays[0].ndim): | ||
new_arrays.append(np.concatenate([ma.arrays[i] for ma in multiarrays], axis)) | ||
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out = MultiArray(new_arrays) | ||
return out | ||
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@implements(np.transpose) | ||
def transpose_MultiArray(multiarray, axes): | ||
return MultiArray( | ||
[np.transpose(a, axes) for a in multiarray.arrays] | ||
) # This is gonna spit out a list and I'm not sure if I'm okay with that? | ||
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def _prepare_for_flox(group_idx, array): | ||
""" | ||
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@@ -343,12 +343,106 @@ def _mean_finalize(sum_, count): | |
) | ||
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def var_chunk(group_idx, array, *, engine: str, axis=-1, size=None, fill_value=None, dtype=None): | ||
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 moved this here, so that we can generalize to "all" engines. it has some ugliness (notice that it now takes the |
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from .aggregate_flox import MultiArray | ||
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# Calculate length and sum - important for the adjustment terms to sum squared deviations | ||
array_lens = generic_aggregate( | ||
group_idx, | ||
array, | ||
func="nanlen", | ||
engine=engine, | ||
axis=axis, | ||
size=size, | ||
fill_value=fill_value, | ||
dtype=dtype, | ||
) | ||
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array_sums = generic_aggregate( | ||
group_idx, | ||
array, | ||
func="nansum", | ||
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. This will need to be "sum" for "var". 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. My first thought is to pass through some kind of "are NaNs okay" boolean variable through to var_chunk and var_combine. Is this what xarray's 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. yes the way I do this in flox is create a |
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engine=engine, | ||
axis=axis, | ||
size=size, | ||
fill_value=fill_value, | ||
dtype=dtype, | ||
) | ||
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# Calculate sum squared deviations - the main part of variance sum | ||
array_means = ( | ||
array_sums / array_lens | ||
) # Does this risk being run eagerly because it's not wrapped in anything? | ||
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sum_squared_deviations = generic_aggregate( | ||
group_idx, | ||
(array - array_means[..., group_idx]) ** 2, | ||
func="nansum", | ||
engine=engine, | ||
axis=axis, | ||
size=size, | ||
fill_value=fill_value, | ||
dtype=dtype, | ||
) | ||
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return MultiArray((sum_squared_deviations, array_sums, array_lens)) | ||
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def _var_combine(array, axis, keepdims=True): | ||
def clip_last(array): | ||
"""Return array except the last element along axis | ||
Purely included to tidy up the adj_terms line | ||
""" | ||
not_last = [slice(None, None) for i in range(array.ndim)] | ||
not_last[axis[0]] = slice(None, -1) | ||
return array[*not_last] | ||
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def clip_first(array): | ||
"""Return array except the first element along axis | ||
Purely included to tidy up the adj_terms line | ||
""" | ||
not_first = [slice(None, None) for i in range(array.ndim)] | ||
not_first[axis[0]] = slice(1, None) | ||
return array[*not_first] | ||
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assert len(axis) == 1, "Assuming that the combine function is only in one direction at once" | ||
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# Does this double our memory footprint or are they just views? | ||
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# If there's a huge memory impact, probably better to copy paste array.arrays[1] | ||
# in and accept the hit to readability | ||
sum_deviations = array.arrays[0] | ||
sum_X = array.arrays[1] | ||
sum_len = array.arrays[2] | ||
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# Calculate parts needed for cascading combination | ||
cumsum_X = np.cumsum(sum_X, axis=axis[0]) # Don't need to be able to merge the last element | ||
cumsum_len = np.cumsum(sum_len, axis=axis[0]) | ||
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# Adjustment terms to tweak the sum of squared deviations because not every chunk has the same mean | ||
adj_terms = ( | ||
clip_last(cumsum_len) * clip_first(sum_X) - clip_first(sum_len) * clip_last(cumsum_X) | ||
) ** 2 / (clip_last(cumsum_len) * clip_first(sum_len) * (clip_last(cumsum_len) + clip_first(sum_len))) | ||
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return aggregate_flox.MultiArray( | ||
( | ||
np.sum(sum_deviations, axis=axis, keepdims=keepdims) | ||
+ np.sum(adj_terms, axis=axis, keepdims=keepdims), # sum of squared deviations | ||
np.sum(sum_X, axis=axis, keepdims=keepdims), # sum of array items | ||
np.sum(sum_len, axis=axis, keepdims=keepdims), # sum of array lengths | ||
) | ||
) # I'm not even pretending calling this class from there is a good idea, I think it wants to be somewhere else though | ||
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# TODO: fix this for complex numbers | ||
def _var_finalize(sumsq, sum_, count, ddof=0): | ||
with np.errstate(invalid="ignore", divide="ignore"): | ||
result = (sumsq - (sum_**2 / count)) / (count - ddof) | ||
result[count <= ddof] = np.nan | ||
return result | ||
# def _var_finalize(sumsq, sum_, count, ddof=0): | ||
# with np.errstate(invalid="ignore", divide="ignore"): | ||
# result = (sumsq - (sum_**2 / count)) / (count - ddof) | ||
# result[count <= ddof] = np.nan | ||
# return result | ||
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def _var_finalize(multiarray, ddof=0): | ||
return multiarray.arrays[0] / (multiarray.arrays[2] - ddof) # Is this how ddof works again??? | ||
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def _std_finalize(sumsq, sum_, count, ddof=0): | ||
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dtypes=(None, None, np.intp), | ||
final_dtype=np.floating, | ||
) | ||
# nanvar = Aggregation( | ||
# "nanvar", | ||
# chunk=("nansum_of_squares", "nansum", "nanlen"), | ||
# combine=("sum", "sum", "sum"), | ||
# finalize=_var_finalize, | ||
# fill_value=0, | ||
# final_fill_value=np.nan, | ||
# dtypes=(None, None, np.intp), | ||
# final_dtype=np.floating, | ||
# ) | ||
nanvar = Aggregation( | ||
"nanvar", | ||
chunk=("nansum_of_squares", "nansum", "nanlen"), | ||
combine=("sum", "sum", "sum"), | ||
chunk=var_chunk, | ||
numpy="nanvar", | ||
combine=(_var_combine,), | ||
finalize=_var_finalize, | ||
fill_value=0, | ||
final_fill_value=np.nan, | ||
dtypes=(None, None, np.intp), | ||
dtypes=(None,), | ||
final_dtype=np.floating, | ||
) | ||
std = Aggregation( | ||
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@@ -46,6 +46,7 @@ | |
_initialize_aggregation, | ||
generic_aggregate, | ||
quantile_new_dims_func, | ||
var_chunk, | ||
) | ||
from .cache import memoize | ||
from .lib import ArrayLayer, dask_array_type, sparse_array_type | ||
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# optimize that out. | ||
previous_reduction: T_Func = "" | ||
for reduction, fv, kw, dt in zip(funcs, fill_values, kwargss, dtypes): | ||
if empty: | ||
# UGLY! but this is because the `var` breaks our design assumptions | ||
if empty and reduction is not var_chunk: | ||
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. this code path is an "optimization" for chunks that don't contain any valid groups. so The next issue will be that fill_value is a scalar like
The other place this will matter is in This bit is hairy, and ill-defined. Let me know if you want me to work through it. 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 partway through implementing something to work here.
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. Thinking some more, I may have misinterpreted what fill_value is used for. When is it needed for intermediates? |
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result = np.full(shape=final_array_shape, fill_value=fv, like=array) | ||
elif is_nanlen(reduction) and is_nanlen(previous_reduction): | ||
result = results["intermediates"][-1] | ||
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kw_func = dict(size=size, dtype=dt, fill_value=fv) | ||
kw_func.update(kw) | ||
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# UGLY! but this is because the `var` breaks our design assumptions | ||
if reduction is var_chunk: | ||
kw_func.update(engine=engine) | ||
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if callable(reduction): | ||
# passing a custom reduction for npg to apply per-group is really slow! | ||
# So this `reduction` has to do the groupby-aggregation | ||
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@@ -235,7 +235,7 @@ def gen_array_by(size, func): | |
@pytest.mark.parametrize("size", [(1, 12), (12,), (12, 9)]) | ||
@pytest.mark.parametrize("nby", [1, 2, 3]) | ||
@pytest.mark.parametrize("add_nan_by", [True, False]) | ||
@pytest.mark.parametrize("func", ALL_FUNCS) | ||
@pytest.mark.parametrize("func", ["nanvar"]) | ||
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. we will revert before merging, but this is the test we need to make work first. It runs a number of complex cases. |
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def test_groupby_reduce_all(to_sparse, nby, size, chunks, func, add_nan_by, engine): | ||
if ("arg" in func and engine in ["flox", "numbagg"]) or (func in BLOCKWISE_FUNCS and chunks != -1): | ||
pytest.skip() | ||
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