Masked array operations¶
Constants¶
ma.MaskType |
alias of bool_ |
Creation¶
From existing data¶
ma.masked_array |
alias of MaskedArray |
ma.array(data[, dtype, copy, order, mask, ...]) |
An array class with possibly masked values. |
ma.copy(self, *args, **params) a.copy(order=) |
Return a copy of the array. |
ma.frombuffer(buffer[, dtype, count, offset]) |
Interpret a buffer as a 1-dimensional array. |
ma.fromfunction(function, shape, **kwargs) |
Construct an array by executing a function over each coordinate. |
ma.MaskedArray.copy([order]) |
Return a copy of the array. |
Ones and zeros¶
ma.empty(shape[, dtype, order]) |
Return a new array of given shape and type, without initializing entries. |
ma.empty_like(a[, dtype, order, subok]) |
Return a new array with the same shape and type as a given array. |
ma.masked_all(shape[, dtype]) |
Empty masked array with all elements masked. |
ma.masked_all_like(arr) |
Empty masked array with the properties of an existing array. |
ma.ones(shape[, dtype, order]) |
Return a new array of given shape and type, filled with ones. |
ma.zeros(shape[, dtype, order]) |
Return a new array of given shape and type, filled with zeros. |
Inspecting the array¶
ma.all(self[, axis, out, keepdims]) |
Returns True if all elements evaluate to True. |
ma.any(self[, axis, out, keepdims]) |
Returns True if any of the elements of a evaluate to True. |
ma.count(self[, axis, keepdims]) |
Count the non-masked elements of the array along the given axis. |
ma.count_masked(arr[, axis]) |
Count the number of masked elements along the given axis. |
ma.getmask(a) |
Return the mask of a masked array, or nomask. |
ma.getmaskarray(arr) |
Return the mask of a masked array, or full boolean array of False. |
ma.getdata(a[, subok]) |
Return the data of a masked array as an ndarray. |
ma.nonzero(self) |
Return the indices of unmasked elements that are not zero. |
ma.shape(obj) |
Return the shape of an array. |
ma.size(obj[, axis]) |
Return the number of elements along a given axis. |
ma.is_masked(x) |
Determine whether input has masked values. |
ma.is_mask(m) |
Return True if m is a valid, standard mask. |
ma.MaskedArray.data |
Return the current data, as a view of the original underlying data. |
ma.MaskedArray.mask |
Mask |
ma.MaskedArray.recordmask |
Return the mask of the records. |
ma.MaskedArray.all([axis, out, keepdims]) |
Returns True if all elements evaluate to True. |
ma.MaskedArray.any([axis, out, keepdims]) |
Returns True if any of the elements of a evaluate to True. |
ma.MaskedArray.count([axis, keepdims]) |
Count the non-masked elements of the array along the given axis. |
ma.MaskedArray.nonzero() |
Return the indices of unmasked elements that are not zero. |
ma.shape(obj) |
Return the shape of an array. |
ma.size(obj[, axis]) |
Return the number of elements along a given axis. |
Manipulating a MaskedArray¶
Changing the shape¶
ma.ravel(self[, order]) |
Returns a 1D version of self, as a view. |
ma.reshape(a, new_shape[, order]) |
Returns an array containing the same data with a new shape. |
ma.resize(x, new_shape) |
Return a new masked array with the specified size and shape. |
ma.MaskedArray.flatten([order]) |
Return a copy of the array collapsed into one dimension. |
ma.MaskedArray.ravel([order]) |
Returns a 1D version of self, as a view. |
ma.MaskedArray.reshape(*s, **kwargs) |
Give a new shape to the array without changing its data. |
ma.MaskedArray.resize(newshape[, refcheck, ...]) |
Modifying axes¶
ma.swapaxes(self, *args, ...) |
Return a view of the array with axis1 and axis2 interchanged. |
ma.transpose(a[, axes]) |
Permute the dimensions of an array. |
ma.MaskedArray.swapaxes(axis1, axis2) |
Return a view of the array with axis1 and axis2 interchanged. |
ma.MaskedArray.transpose(*axes) |
Returns a view of the array with axes transposed. |
Changing the number of dimensions¶
ma.atleast_1d(*arys) |
Convert inputs to arrays with at least one dimension. |
ma.atleast_2d(*arys) |
View inputs as arrays with at least two dimensions. |
ma.atleast_3d(*arys) |
View inputs as arrays with at least three dimensions. |
ma.expand_dims(x, axis) |
Expand the shape of an array. |
ma.squeeze(a[, axis]) |
Remove single-dimensional entries from the shape of an array. |
ma.MaskedArray.squeeze([axis]) |
Remove single-dimensional entries from the shape of a. |
ma.column_stack(tup) |
Stack 1-D arrays as columns into a 2-D array. |
ma.concatenate(arrays[, axis]) |
Concatenate a sequence of arrays along the given axis. |
ma.dstack(tup) |
Stack arrays in sequence depth wise (along third axis). |
ma.hstack(tup) |
Stack arrays in sequence horizontally (column wise). |
ma.hsplit(ary, indices_or_sections) |
Split an array into multiple sub-arrays horizontally (column-wise). |
ma.mr_ |
Translate slice objects to concatenation along the first axis. |
ma.row_stack(tup) |
Stack arrays in sequence vertically (row wise). |
ma.vstack(tup) |
Stack arrays in sequence vertically (row wise). |
Joining arrays¶
ma.column_stack(tup) |
Stack 1-D arrays as columns into a 2-D array. |
ma.concatenate(arrays[, axis]) |
Concatenate a sequence of arrays along the given axis. |
ma.append(a, b[, axis]) |
Append values to the end of an array. |
ma.dstack(tup) |
Stack arrays in sequence depth wise (along third axis). |
ma.hstack(tup) |
Stack arrays in sequence horizontally (column wise). |
ma.vstack(tup) |
Stack arrays in sequence vertically (row wise). |
Operations on masks¶
Creating a mask¶
ma.make_mask(m[, copy, shrink, dtype]) |
Create a boolean mask from an array. |
ma.make_mask_none(newshape[, dtype]) |
Return a boolean mask of the given shape, filled with False. |
ma.mask_or(m1, m2[, copy, shrink]) |
Combine two masks with the logical_or operator. |
ma.make_mask_descr(ndtype) |
Construct a dtype description list from a given dtype. |
Accessing a mask¶
ma.getmask(a) |
Return the mask of a masked array, or nomask. |
ma.getmaskarray(arr) |
Return the mask of a masked array, or full boolean array of False. |
ma.masked_array.mask |
Mask |
Finding masked data¶
ma.flatnotmasked_contiguous(a) |
Find contiguous unmasked data in a masked array along the given axis. |
ma.flatnotmasked_edges(a) |
Find the indices of the first and last unmasked values. |
ma.notmasked_contiguous(a[, axis]) |
Find contiguous unmasked data in a masked array along the given axis. |
ma.notmasked_edges(a[, axis]) |
Find the indices of the first and last unmasked values along an axis. |
ma.clump_masked(a) |
Returns a list of slices corresponding to the masked clumps of a 1-D array. |
ma.clump_unmasked(a) |
Return list of slices corresponding to the unmasked clumps of a 1-D array. |
Modifying a mask¶
ma.mask_cols(a[, axis]) |
Mask columns of a 2D array that contain masked values. |
ma.mask_or(m1, m2[, copy, shrink]) |
Combine two masks with the logical_or operator. |
ma.mask_rowcols(a[, axis]) |
Mask rows and/or columns of a 2D array that contain masked values. |
ma.mask_rows(a[, axis]) |
Mask rows of a 2D array that contain masked values. |
ma.harden_mask(self) |
Force the mask to hard. |
ma.soften_mask(self) |
Force the mask to soft. |
ma.MaskedArray.harden_mask() |
Force the mask to hard. |
ma.MaskedArray.soften_mask() |
Force the mask to soft. |
ma.MaskedArray.shrink_mask() |
Reduce a mask to nomask when possible. |
ma.MaskedArray.unshare_mask() |
Copy the mask and set the sharedmask flag to False. |
Conversion operations¶
> to a masked array¶
ma.asarray(a[, dtype, order]) |
Convert the input to a masked array of the given data-type. |
ma.asanyarray(a[, dtype]) |
Convert the input to a masked array, conserving subclasses. |
ma.fix_invalid(a[, mask, copy, fill_value]) |
Return input with invalid data masked and replaced by a fill value. |
ma.masked_equal(x, value[, copy]) |
Mask an array where equal to a given value. |
ma.masked_greater(x, value[, copy]) |
Mask an array where greater than a given value. |
ma.masked_greater_equal(x, value[, copy]) |
Mask an array where greater than or equal to a given value. |
ma.masked_inside(x, v1, v2[, copy]) |
Mask an array inside a given interval. |
ma.masked_invalid(a[, copy]) |
Mask an array where invalid values occur (NaNs or infs). |
ma.masked_less(x, value[, copy]) |
Mask an array where less than a given value. |
ma.masked_less_equal(x, value[, copy]) |
Mask an array where less than or equal to a given value. |
ma.masked_not_equal(x, value[, copy]) |
Mask an array where not equal to a given value. |
ma.masked_object(x, value[, copy, shrink]) |
Mask the array x where the data are exactly equal to value. |
ma.masked_outside(x, v1, v2[, copy]) |
Mask an array outside a given interval. |
ma.masked_values(x, value[, rtol, atol, ...]) |
Mask using floating point equality. |
ma.masked_where(condition, a[, copy]) |
Mask an array where a condition is met. |
> to a ndarray¶
ma.compress_cols(a) |
Suppress whole columns of a 2-D array that contain masked values. |
ma.compress_rowcols(x[, axis]) |
Suppress the rows and/or columns of a 2-D array that contain masked values. |
ma.compress_rows(a) |
Suppress whole rows of a 2-D array that contain masked values. |
ma.compressed(x) |
Return all the non-masked data as a 1-D array. |
ma.filled(a[, fill_value]) |
Return input as an array with masked data replaced by a fill value. |
ma.MaskedArray.compressed() |
Return all the non-masked data as a 1-D array. |
ma.MaskedArray.filled([fill_value]) |
Return a copy of self, with masked values filled with a given value. |
> to another object¶
ma.MaskedArray.tofile(fid[, sep, format]) |
Save a masked array to a file in binary format. |
ma.MaskedArray.tolist([fill_value]) |
Return the data portion of the masked array as a hierarchical Python list. |
ma.MaskedArray.torecords() |
Transforms a masked array into a flexible-type array. |
ma.MaskedArray.tobytes([fill_value, order]) |
Return the array data as a string containing the raw bytes in the array. |
Pickling and unpickling¶
ma.dump(a, F) |
Pickle a masked array to a file. |
ma.dumps(a) |
Return a string corresponding to the pickling of a masked array. |
ma.load(F) |
Wrapper around cPickle.load which accepts either a file-like object or a filename. |
ma.loads(strg) |
Load a pickle from the current string. |
Filling a masked array¶
ma.common_fill_value(a, b) |
Return the common filling value of two masked arrays, if any. |
ma.default_fill_value(obj) |
Return the default fill value for the argument object. |
ma.maximum_fill_value(obj) |
Return the minimum value that can be represented by the dtype of an object. |
ma.maximum_fill_value(obj) |
Return the minimum value that can be represented by the dtype of an object. |
ma.set_fill_value(a, fill_value) |
Set the filling value of a, if a is a masked array. |
ma.MaskedArray.get_fill_value() |
Return the filling value of the masked array. |
ma.MaskedArray.set_fill_value([value]) |
Set the filling value of the masked array. |
ma.MaskedArray.fill_value |
Filling value. |
Masked arrays arithmetics¶
Arithmetics¶
ma.anom(self[, axis, dtype]) |
Compute the anomalies (deviations from the arithmetic mean) along the given axis. |
ma.anomalies(self[, axis, dtype]) |
Compute the anomalies (deviations from the arithmetic mean) along the given axis. |
ma.average(a[, axis, weights, returned]) |
Return the weighted average of array over the given axis. |
ma.conjugate(x, /[, out, where, casting, ...]) |
Return the complex conjugate, element-wise. |
ma.corrcoef(x[, y, rowvar, bias, ...]) |
Return Pearson product-moment correlation coefficients. |
ma.cov(x[, y, rowvar, bias, allow_masked, ddof]) |
Estimate the covariance matrix. |
ma.cumsum(self[, axis, dtype, out]) |
Return the cumulative sum of the array elements over the given axis. |
ma.cumprod(self[, axis, dtype, out]) |
Return the cumulative product of the array elements over the given axis. |
ma.mean(self[, axis, dtype, out, keepdims]) |
Returns the average of the array elements along given axis. |
ma.median(a[, axis, out, overwrite_input, ...]) |
Compute the median along the specified axis. |
ma.power(a, b[, third]) |
Returns element-wise base array raised to power from second array. |
ma.prod(self[, axis, dtype, out, keepdims]) |
Return the product of the array elements over the given axis. |
ma.std(self[, axis, dtype, out, ddof, keepdims]) |
Returns the standard deviation of the array elements along given axis. |
ma.sum(self[, axis, dtype, out, keepdims]) |
Return the sum of the array elements over the given axis. |
ma.var(self[, axis, dtype, out, ddof, keepdims]) |
Compute the variance along the specified axis. |
ma.MaskedArray.anom([axis, dtype]) |
Compute the anomalies (deviations from the arithmetic mean) along the given axis. |
ma.MaskedArray.cumprod([axis, dtype, out]) |
Return the cumulative product of the array elements over the given axis. |
ma.MaskedArray.cumsum([axis, dtype, out]) |
Return the cumulative sum of the array elements over the given axis. |
ma.MaskedArray.mean([axis, dtype, out, keepdims]) |
Returns the average of the array elements along given axis. |
ma.MaskedArray.prod([axis, dtype, out, keepdims]) |
Return the product of the array elements over the given axis. |
ma.MaskedArray.std([axis, dtype, out, ddof, ...]) |
Returns the standard deviation of the array elements along given axis. |
ma.MaskedArray.sum([axis, dtype, out, keepdims]) |
Return the sum of the array elements over the given axis. |
ma.MaskedArray.var([axis, dtype, out, ddof, ...]) |
Compute the variance along the specified axis. |
Minimum/maximum¶
ma.argmax(self[, axis, fill_value, out]) |
Returns array of indices of the maximum values along the given axis. |
ma.argmin(self[, axis, fill_value, out]) |
Return array of indices to the minimum values along the given axis. |
ma.max(obj[, axis, out, fill_value, keepdims]) |
Return the maximum along a given axis. |
ma.min(obj[, axis, out, fill_value, keepdims]) |
Return the minimum along a given axis. |
ma.ptp(obj[, axis, out, fill_value]) |
Return (maximum - minimum) along the given dimension (i.e. |
ma.MaskedArray.argmax([axis, fill_value, out]) |
Returns array of indices of the maximum values along the given axis. |
ma.MaskedArray.argmin([axis, fill_value, out]) |
Return array of indices to the minimum values along the given axis. |
ma.MaskedArray.max([axis, out, fill_value, ...]) |
Return the maximum along a given axis. |
ma.MaskedArray.min([axis, out, fill_value, ...]) |
Return the minimum along a given axis. |
ma.MaskedArray.ptp([axis, out, fill_value]) |
Return (maximum - minimum) along the given dimension (i.e. |
Sorting¶
ma.argsort(a[, axis, kind, order, endwith, ...]) |
Return an ndarray of indices that sort the array along the specified axis. |
ma.sort(a[, axis, kind, order, endwith, ...]) |
Sort the array, in-place |
ma.MaskedArray.argsort([axis, kind, order, ...]) |
Return an ndarray of indices that sort the array along the specified axis. |
ma.MaskedArray.sort([axis, kind, order, ...]) |
Sort the array, in-place |
Algebra¶
ma.diag(v[, k]) |
Extract a diagonal or construct a diagonal array. |
ma.dot(a, b[, strict, out]) |
Return the dot product of two arrays. |
ma.identity(n[, dtype]) |
Return the identity array. |
ma.inner(a, b) |
Inner product of two arrays. |
ma.innerproduct(a, b) |
Inner product of two arrays. |
ma.outer(a, b) |
Compute the outer product of two vectors. |
ma.outerproduct(a, b) |
Compute the outer product of two vectors. |
ma.trace(self[, offset, axis1, axis2, ...]) |
Return the sum along diagonals of the array. |
ma.transpose(a[, axes]) |
Permute the dimensions of an array. |
ma.MaskedArray.trace([offset, axis1, axis2, ...]) |
Return the sum along diagonals of the array. |
ma.MaskedArray.transpose(*axes) |
Returns a view of the array with axes transposed. |
Polynomial fit¶
ma.vander(x[, n]) |
Generate a Vandermonde matrix. |
ma.polyfit(x, y, deg[, rcond, full, w, cov]) |
Least squares polynomial fit. |
Clipping and rounding¶
ma.around |
Round an array to the given number of decimals. |
ma.clip(a, a_min, a_max[, out]) |
Clip (limit) the values in an array. |
ma.round(a[, decimals, out]) |
Return a copy of a, rounded to ‘decimals’ places. |
ma.MaskedArray.clip([min, max, out]) |
Return an array whose values are limited to [min, max]. |
ma.MaskedArray.round([decimals, out]) |
Return each element rounded to the given number of decimals. |
Miscellanea¶
ma.allequal(a, b[, fill_value]) |
Return True if all entries of a and b are equal, using fill_value as a truth value where either or both are masked. |
ma.allclose(a, b[, masked_equal, rtol, atol]) |
Returns True if two arrays are element-wise equal within a tolerance. |
ma.apply_along_axis(func1d, axis, arr, ...) |
Apply a function to 1-D slices along the given axis. |
ma.arange([start,] stop[, step,][, dtype]) |
Return evenly spaced values within a given interval. |
ma.choose(indices, choices[, out, mode]) |
Use an index array to construct a new array from a set of choices. |
ma.ediff1d(arr[, to_end, to_begin]) |
Compute the differences between consecutive elements of an array. |
ma.indices(dimensions[, dtype]) |
Return an array representing the indices of a grid. |
ma.where(condition[, x, y]) |
Return a masked array with elements from x or y, depending on condition. |
