Related
Problem:
I have a list of tuples, which each tuple represents a column of a 2D-array and each element of the tuple represents the index of that column of the array that is a 1; the other entries that aren't in that tuple, are 0.
I want to create an sparse matrix with this list of tuples in an efficient way (trying to not use for loops).
Example:
# init values
list_tuples = [
(0, 2, 4),
(0, 2, 3),
(1, 3, 4)
]
n = length(list_tuples) + 1
m = 5 # arbritrary, however n >= max([ei for ei in list_tuples]) + 1
# what I need is a function which accepts this tuples and give the shape of the array
# (at least the row size, because the column size can be infered from the list of tuples)
A = some_function(list_tuples, array_shape = (m, n))
Then what I expect to have is an array of the form:
[
[1, 1, 0]
[0, 0, 1]
[1, 1, 0]
[0, 1, 1]
[1, 0, 1]
]
Your values are the indices that are required for the compressed sparse column format. You'll also need the indptr array, which for your data is the cumulative sum of the lengths of the tuples (prepended with 0). The data array would be an array of ones with the same length as the sum of the lengths of the tuples, which you can get from the last element of the cumulative sum. Here's how that looks with your example:
In [45]: from scipy.sparse import csc_matrix
In [46]: list_tuples = [
...: (0, 2, 4),
...: (0, 2, 3),
...: (1, 3, 4)
...: ]
In [47]: indices = sum(list_tuples, ()) # Flatten the tuples into one sequence.
In [48]: indptr = np.cumsum([0] + [len(t) for t in list_tuples])
In [49]: a = csc_matrix((np.ones(indptr[-1], dtype=int), indices, indptr))
In [50]: a
Out[50]:
<5x3 sparse matrix of type '<class 'numpy.int64'>'
with 9 stored elements in Compressed Sparse Column format>
In [51]: a.A
Out[51]:
array([[1, 1, 0],
[0, 0, 1],
[1, 1, 0],
[0, 1, 1],
[1, 0, 1]])
Note that csc_matrix inferred the number of rows from the maximum that it found in the indices. You can use the shape parameter to override that, e.g.
In [52]: b = csc_matrix((np.ones(indptr[-1], dtype=int), indices, indptr), shape=(7, len(list_tuples)))
In [53]: b
Out[53]:
<7x3 sparse matrix of type '<class 'numpy.int64'>'
with 9 stored elements in Compressed Sparse Column format>
In [54]: b.A
Out[54]:
array([[1, 1, 0],
[0, 0, 1],
[1, 1, 0],
[0, 1, 1],
[1, 0, 1],
[0, 0, 0],
[0, 0, 0]])
You can also generate a coo_matrix pretty easily. The flattened list_tuples gives the row indices, and np.repeat can be used to create the column indices:
In [63]: from scipy.sparse import coo_matrix
In [64]: i = sum(list_tuples, ()) # row indices
In [65]: j = np.repeat(range(len(list_tuples)), [len(t) for t in list_tuples])
In [66]: c = coo_matrix((np.ones(len(i), dtype=int), (i, j)))
In [67]: c
Out[67]:
<5x3 sparse matrix of type '<class 'numpy.int64'>'
with 9 stored elements in COOrdinate format>
In [68]: c.A
Out[68]:
array([[1, 1, 0],
[0, 0, 1],
[1, 1, 0],
[0, 1, 1],
[1, 0, 1]])
I have an array X:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
And I wish to find the index of the row of several values in this array:
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
For this example I would like a result like:
[0,3,4]
I have a code doing this, but I think it is overly complicated:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
result = []
for s in searched_values:
idx = np.argwhere([np.all((X-s)==0, axis=1)])[0][1]
result.append(idx)
print(result)
I found this answer for a similar question but it works only for 1d arrays.
Is there a way to do what I want in a simpler way?
Approach #1
One approach would be to use NumPy broadcasting, like so -
np.where((X==searched_values[:,None]).all(-1))[1]
Approach #2
A memory efficient approach would be to convert each row as linear index equivalents and then using np.in1d, like so -
dims = X.max(0)+1
out = np.where(np.in1d(np.ravel_multi_index(X.T,dims),\
np.ravel_multi_index(searched_values.T,dims)))[0]
Approach #3
Another memory efficient approach using np.searchsorted and with that same philosophy of converting to linear index equivalents would be like so -
dims = X.max(0)+1
X1D = np.ravel_multi_index(X.T,dims)
searched_valuesID = np.ravel_multi_index(searched_values.T,dims)
sidx = X1D.argsort()
out = sidx[np.searchsorted(X1D,searched_valuesID,sorter=sidx)]
Please note that this np.searchsorted method assumes there is a match for each row from searched_values in X.
How does np.ravel_multi_index work?
This function gives us the linear index equivalent numbers. It accepts a 2D array of n-dimensional indices, set as columns and the shape of that n-dimensional grid itself onto which those indices are to be mapped and equivalent linear indices are to be computed.
Let's use the inputs we have for the problem at hand. Take the case of input X and note the first row of it. Since, we are trying to convert each row of X into its linear index equivalent and since np.ravel_multi_index assumes each column as one indexing tuple, we need to transpose X before feeding into the function. Since, the number of elements per row in X in this case is 2, the n-dimensional grid to be mapped onto would be 2D. With 3 elements per row in X, it would had been 3D grid for mapping and so on.
To see how this function would compute linear indices, consider the first row of X -
In [77]: X
Out[77]:
array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
We have the shape of the n-dimensional grid as dims -
In [78]: dims
Out[78]: array([10, 7])
Let's create the 2-dimensional grid to see how that mapping works and linear indices get computed with np.ravel_multi_index -
In [79]: out = np.zeros(dims,dtype=int)
In [80]: out
Out[80]:
array([[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0]])
Let's set the first indexing tuple from X, i.e. the first row from X into the grid -
In [81]: out[4,2] = 1
In [82]: out
Out[82]:
array([[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 1, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0]])
Now, to see the linear index equivalent of the element just set, let's flatten and use np.where to detect that 1.
In [83]: np.where(out.ravel())[0]
Out[83]: array([30])
This could also be computed if row-major ordering is taken into account.
Let's use np.ravel_multi_index and verify those linear indices -
In [84]: np.ravel_multi_index(X.T,dims)
Out[84]: array([30, 66, 61, 24, 41])
Thus, we would have linear indices corresponding to each indexing tuple from X, i.e. each row from X.
Choosing dimensions for np.ravel_multi_index to form unique linear indices
Now, the idea behind considering each row of X as indexing tuple of a n-dimensional grid and converting each such tuple to a scalar is to have unique scalars corresponding to unique tuples, i.e. unique rows in X.
Let's take another look at X -
In [77]: X
Out[77]:
array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
Now, as discussed in the previous section, we are considering each row as indexing tuple. Within each such indexing tuple, the first element would represent the first axis of the n-dim grid, second element would be the second axis of the grid and so on until the last element of each row in X. In essence, each column would represent one dimension or axis of the grid. If we are to map all elements from X onto the same n-dim grid, we need to consider the maximum stretch of each axis of such a proposed n-dim grid. Assuming we are dealing with positive numbers in X, such a stretch would be the maximum of each column in X + 1. That + 1 is because Python follows 0-based indexing. So, for example X[1,0] == 9 would map to the 10th row of the proposed grid. Similarly, X[4,1] == 6 would go to the 7th column of that grid.
So, for our sample case, we had -
In [7]: dims = X.max(axis=0) + 1 # Or simply X.max(0) + 1
In [8]: dims
Out[8]: array([10, 7])
Thus, we would need a grid of at least a shape of (10,7) for our sample case. More lengths along the dimensions won't hurt and would give us unique linear indices too.
Concluding remarks : One important thing to be noted here is that if we have negative numbers in X, we need to add proper offsets along each column in X to make those indexing tuples as positive numbers before using np.ravel_multi_index.
Another alternative is to use asvoid (below) to view each row as a single
value of void dtype. This reduces a 2D array to a 1D array, thus allowing you to use np.in1d as usual:
import numpy as np
def asvoid(arr):
"""
Based on http://stackoverflow.com/a/16973510/190597 (Jaime, 2013-06)
View the array as dtype np.void (bytes). The items along the last axis are
viewed as one value. This allows comparisons to be performed which treat
entire rows as one value.
"""
arr = np.ascontiguousarray(arr)
if np.issubdtype(arr.dtype, np.floating):
""" Care needs to be taken here since
np.array([-0.]).view(np.void) != np.array([0.]).view(np.void)
Adding 0. converts -0. to 0.
"""
arr += 0.
return arr.view(np.dtype((np.void, arr.dtype.itemsize * arr.shape[-1])))
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
idx = np.flatnonzero(np.in1d(asvoid(X), asvoid(searched_values)))
print(idx)
# [0 3 4]
The numpy_indexed package (disclaimer: I am its author) contains functionality for performing such operations efficiently (also uses searchsorted under the hood). In terms of functionality, it acts as a vectorized equivalent of list.index:
import numpy_indexed as npi
result = npi.indices(X, searched_values)
Note that using the 'missing' kwarg, you have full control over behavior of missing items, and it works for nd-arrays (fi; stacks of images) as well.
Update: using the same shapes as #Rik X=[520000,28,28] and searched_values=[20000,28,28], it runs in 0.8064 secs, using missing=-1 to detect and denote entries not present in X.
Here is a pretty fast solution that scales up well using numpy and hashlib. It can handle large dimensional matrices or images in seconds. I used it on 520000 X (28 X 28) array and 20000 X (28 X 28) in 2 seconds on my CPU
Code:
import numpy as np
import hashlib
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
#hash using sha1 appears to be efficient
xhash=[hashlib.sha1(row).digest() for row in X]
yhash=[hashlib.sha1(row).digest() for row in searched_values]
z=np.in1d(xhash,yhash)
##Use unique to get unique indices to ind1 results
_,unique=np.unique(np.array(xhash)[z],return_index=True)
##Compute unique indices by indexing an array of indices
idx=np.array(range(len(xhash)))
unique_idx=idx[z][unique]
print('unique_idx=',unique_idx)
print('X[unique_idx]=',X[unique_idx])
Output:
unique_idx= [4 3 0]
X[unique_idx]= [[5 6]
[3 3]
[4 2]]
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
S = np.array([[4, 2],
[3, 3],
[5, 6]])
result = [[i for i,row in enumerate(X) if (s==row).all()] for s in S]
or
result = [i for s in S for i,row in enumerate(X) if (s==row).all()]
if you want a flat list (assuming there is exactly one match per searched value).
Another way is to use cdist function from scipy.spatial.distance like this:
np.nonzero(cdist(X, searched_values) == 0)[0]
Basically, we get row numbers of X which have distance zero to a row in searched_values, meaning they are equal. Makes sense if you look on rows as coordinates.
I had similar requirement and following worked for me:
np.argwhere(np.isin(X, searched_values).all(axis=1))
Here's what worked out for me:
def find_points(orig: np.ndarray, search: np.ndarray) -> np.ndarray:
equals = [np.equal(orig, p).all(1) for p in search]
exists = np.max(equals, axis=1)
indices = np.argmax(equals, axis=1)
indices[exists == False] = -1
return indices
test:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6],
[0, 0]])
find_points(X, searched_values)
output:
[0,3,4,-1]
I have an array X:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
And I wish to find the index of the row of several values in this array:
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
For this example I would like a result like:
[0,3,4]
I have a code doing this, but I think it is overly complicated:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
result = []
for s in searched_values:
idx = np.argwhere([np.all((X-s)==0, axis=1)])[0][1]
result.append(idx)
print(result)
I found this answer for a similar question but it works only for 1d arrays.
Is there a way to do what I want in a simpler way?
Approach #1
One approach would be to use NumPy broadcasting, like so -
np.where((X==searched_values[:,None]).all(-1))[1]
Approach #2
A memory efficient approach would be to convert each row as linear index equivalents and then using np.in1d, like so -
dims = X.max(0)+1
out = np.where(np.in1d(np.ravel_multi_index(X.T,dims),\
np.ravel_multi_index(searched_values.T,dims)))[0]
Approach #3
Another memory efficient approach using np.searchsorted and with that same philosophy of converting to linear index equivalents would be like so -
dims = X.max(0)+1
X1D = np.ravel_multi_index(X.T,dims)
searched_valuesID = np.ravel_multi_index(searched_values.T,dims)
sidx = X1D.argsort()
out = sidx[np.searchsorted(X1D,searched_valuesID,sorter=sidx)]
Please note that this np.searchsorted method assumes there is a match for each row from searched_values in X.
How does np.ravel_multi_index work?
This function gives us the linear index equivalent numbers. It accepts a 2D array of n-dimensional indices, set as columns and the shape of that n-dimensional grid itself onto which those indices are to be mapped and equivalent linear indices are to be computed.
Let's use the inputs we have for the problem at hand. Take the case of input X and note the first row of it. Since, we are trying to convert each row of X into its linear index equivalent and since np.ravel_multi_index assumes each column as one indexing tuple, we need to transpose X before feeding into the function. Since, the number of elements per row in X in this case is 2, the n-dimensional grid to be mapped onto would be 2D. With 3 elements per row in X, it would had been 3D grid for mapping and so on.
To see how this function would compute linear indices, consider the first row of X -
In [77]: X
Out[77]:
array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
We have the shape of the n-dimensional grid as dims -
In [78]: dims
Out[78]: array([10, 7])
Let's create the 2-dimensional grid to see how that mapping works and linear indices get computed with np.ravel_multi_index -
In [79]: out = np.zeros(dims,dtype=int)
In [80]: out
Out[80]:
array([[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0]])
Let's set the first indexing tuple from X, i.e. the first row from X into the grid -
In [81]: out[4,2] = 1
In [82]: out
Out[82]:
array([[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 1, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0]])
Now, to see the linear index equivalent of the element just set, let's flatten and use np.where to detect that 1.
In [83]: np.where(out.ravel())[0]
Out[83]: array([30])
This could also be computed if row-major ordering is taken into account.
Let's use np.ravel_multi_index and verify those linear indices -
In [84]: np.ravel_multi_index(X.T,dims)
Out[84]: array([30, 66, 61, 24, 41])
Thus, we would have linear indices corresponding to each indexing tuple from X, i.e. each row from X.
Choosing dimensions for np.ravel_multi_index to form unique linear indices
Now, the idea behind considering each row of X as indexing tuple of a n-dimensional grid and converting each such tuple to a scalar is to have unique scalars corresponding to unique tuples, i.e. unique rows in X.
Let's take another look at X -
In [77]: X
Out[77]:
array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
Now, as discussed in the previous section, we are considering each row as indexing tuple. Within each such indexing tuple, the first element would represent the first axis of the n-dim grid, second element would be the second axis of the grid and so on until the last element of each row in X. In essence, each column would represent one dimension or axis of the grid. If we are to map all elements from X onto the same n-dim grid, we need to consider the maximum stretch of each axis of such a proposed n-dim grid. Assuming we are dealing with positive numbers in X, such a stretch would be the maximum of each column in X + 1. That + 1 is because Python follows 0-based indexing. So, for example X[1,0] == 9 would map to the 10th row of the proposed grid. Similarly, X[4,1] == 6 would go to the 7th column of that grid.
So, for our sample case, we had -
In [7]: dims = X.max(axis=0) + 1 # Or simply X.max(0) + 1
In [8]: dims
Out[8]: array([10, 7])
Thus, we would need a grid of at least a shape of (10,7) for our sample case. More lengths along the dimensions won't hurt and would give us unique linear indices too.
Concluding remarks : One important thing to be noted here is that if we have negative numbers in X, we need to add proper offsets along each column in X to make those indexing tuples as positive numbers before using np.ravel_multi_index.
Another alternative is to use asvoid (below) to view each row as a single
value of void dtype. This reduces a 2D array to a 1D array, thus allowing you to use np.in1d as usual:
import numpy as np
def asvoid(arr):
"""
Based on http://stackoverflow.com/a/16973510/190597 (Jaime, 2013-06)
View the array as dtype np.void (bytes). The items along the last axis are
viewed as one value. This allows comparisons to be performed which treat
entire rows as one value.
"""
arr = np.ascontiguousarray(arr)
if np.issubdtype(arr.dtype, np.floating):
""" Care needs to be taken here since
np.array([-0.]).view(np.void) != np.array([0.]).view(np.void)
Adding 0. converts -0. to 0.
"""
arr += 0.
return arr.view(np.dtype((np.void, arr.dtype.itemsize * arr.shape[-1])))
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
idx = np.flatnonzero(np.in1d(asvoid(X), asvoid(searched_values)))
print(idx)
# [0 3 4]
The numpy_indexed package (disclaimer: I am its author) contains functionality for performing such operations efficiently (also uses searchsorted under the hood). In terms of functionality, it acts as a vectorized equivalent of list.index:
import numpy_indexed as npi
result = npi.indices(X, searched_values)
Note that using the 'missing' kwarg, you have full control over behavior of missing items, and it works for nd-arrays (fi; stacks of images) as well.
Update: using the same shapes as #Rik X=[520000,28,28] and searched_values=[20000,28,28], it runs in 0.8064 secs, using missing=-1 to detect and denote entries not present in X.
Here is a pretty fast solution that scales up well using numpy and hashlib. It can handle large dimensional matrices or images in seconds. I used it on 520000 X (28 X 28) array and 20000 X (28 X 28) in 2 seconds on my CPU
Code:
import numpy as np
import hashlib
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
#hash using sha1 appears to be efficient
xhash=[hashlib.sha1(row).digest() for row in X]
yhash=[hashlib.sha1(row).digest() for row in searched_values]
z=np.in1d(xhash,yhash)
##Use unique to get unique indices to ind1 results
_,unique=np.unique(np.array(xhash)[z],return_index=True)
##Compute unique indices by indexing an array of indices
idx=np.array(range(len(xhash)))
unique_idx=idx[z][unique]
print('unique_idx=',unique_idx)
print('X[unique_idx]=',X[unique_idx])
Output:
unique_idx= [4 3 0]
X[unique_idx]= [[5 6]
[3 3]
[4 2]]
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
S = np.array([[4, 2],
[3, 3],
[5, 6]])
result = [[i for i,row in enumerate(X) if (s==row).all()] for s in S]
or
result = [i for s in S for i,row in enumerate(X) if (s==row).all()]
if you want a flat list (assuming there is exactly one match per searched value).
Another way is to use cdist function from scipy.spatial.distance like this:
np.nonzero(cdist(X, searched_values) == 0)[0]
Basically, we get row numbers of X which have distance zero to a row in searched_values, meaning they are equal. Makes sense if you look on rows as coordinates.
I had similar requirement and following worked for me:
np.argwhere(np.isin(X, searched_values).all(axis=1))
Here's what worked out for me:
def find_points(orig: np.ndarray, search: np.ndarray) -> np.ndarray:
equals = [np.equal(orig, p).all(1) for p in search]
exists = np.max(equals, axis=1)
indices = np.argmax(equals, axis=1)
indices[exists == False] = -1
return indices
test:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6],
[0, 0]])
find_points(X, searched_values)
output:
[0,3,4,-1]
I have an array X:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
And I wish to find the index of the row of several values in this array:
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
For this example I would like a result like:
[0,3,4]
I have a code doing this, but I think it is overly complicated:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
result = []
for s in searched_values:
idx = np.argwhere([np.all((X-s)==0, axis=1)])[0][1]
result.append(idx)
print(result)
I found this answer for a similar question but it works only for 1d arrays.
Is there a way to do what I want in a simpler way?
Approach #1
One approach would be to use NumPy broadcasting, like so -
np.where((X==searched_values[:,None]).all(-1))[1]
Approach #2
A memory efficient approach would be to convert each row as linear index equivalents and then using np.in1d, like so -
dims = X.max(0)+1
out = np.where(np.in1d(np.ravel_multi_index(X.T,dims),\
np.ravel_multi_index(searched_values.T,dims)))[0]
Approach #3
Another memory efficient approach using np.searchsorted and with that same philosophy of converting to linear index equivalents would be like so -
dims = X.max(0)+1
X1D = np.ravel_multi_index(X.T,dims)
searched_valuesID = np.ravel_multi_index(searched_values.T,dims)
sidx = X1D.argsort()
out = sidx[np.searchsorted(X1D,searched_valuesID,sorter=sidx)]
Please note that this np.searchsorted method assumes there is a match for each row from searched_values in X.
How does np.ravel_multi_index work?
This function gives us the linear index equivalent numbers. It accepts a 2D array of n-dimensional indices, set as columns and the shape of that n-dimensional grid itself onto which those indices are to be mapped and equivalent linear indices are to be computed.
Let's use the inputs we have for the problem at hand. Take the case of input X and note the first row of it. Since, we are trying to convert each row of X into its linear index equivalent and since np.ravel_multi_index assumes each column as one indexing tuple, we need to transpose X before feeding into the function. Since, the number of elements per row in X in this case is 2, the n-dimensional grid to be mapped onto would be 2D. With 3 elements per row in X, it would had been 3D grid for mapping and so on.
To see how this function would compute linear indices, consider the first row of X -
In [77]: X
Out[77]:
array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
We have the shape of the n-dimensional grid as dims -
In [78]: dims
Out[78]: array([10, 7])
Let's create the 2-dimensional grid to see how that mapping works and linear indices get computed with np.ravel_multi_index -
In [79]: out = np.zeros(dims,dtype=int)
In [80]: out
Out[80]:
array([[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0]])
Let's set the first indexing tuple from X, i.e. the first row from X into the grid -
In [81]: out[4,2] = 1
In [82]: out
Out[82]:
array([[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 1, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 0, 0]])
Now, to see the linear index equivalent of the element just set, let's flatten and use np.where to detect that 1.
In [83]: np.where(out.ravel())[0]
Out[83]: array([30])
This could also be computed if row-major ordering is taken into account.
Let's use np.ravel_multi_index and verify those linear indices -
In [84]: np.ravel_multi_index(X.T,dims)
Out[84]: array([30, 66, 61, 24, 41])
Thus, we would have linear indices corresponding to each indexing tuple from X, i.e. each row from X.
Choosing dimensions for np.ravel_multi_index to form unique linear indices
Now, the idea behind considering each row of X as indexing tuple of a n-dimensional grid and converting each such tuple to a scalar is to have unique scalars corresponding to unique tuples, i.e. unique rows in X.
Let's take another look at X -
In [77]: X
Out[77]:
array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
Now, as discussed in the previous section, we are considering each row as indexing tuple. Within each such indexing tuple, the first element would represent the first axis of the n-dim grid, second element would be the second axis of the grid and so on until the last element of each row in X. In essence, each column would represent one dimension or axis of the grid. If we are to map all elements from X onto the same n-dim grid, we need to consider the maximum stretch of each axis of such a proposed n-dim grid. Assuming we are dealing with positive numbers in X, such a stretch would be the maximum of each column in X + 1. That + 1 is because Python follows 0-based indexing. So, for example X[1,0] == 9 would map to the 10th row of the proposed grid. Similarly, X[4,1] == 6 would go to the 7th column of that grid.
So, for our sample case, we had -
In [7]: dims = X.max(axis=0) + 1 # Or simply X.max(0) + 1
In [8]: dims
Out[8]: array([10, 7])
Thus, we would need a grid of at least a shape of (10,7) for our sample case. More lengths along the dimensions won't hurt and would give us unique linear indices too.
Concluding remarks : One important thing to be noted here is that if we have negative numbers in X, we need to add proper offsets along each column in X to make those indexing tuples as positive numbers before using np.ravel_multi_index.
Another alternative is to use asvoid (below) to view each row as a single
value of void dtype. This reduces a 2D array to a 1D array, thus allowing you to use np.in1d as usual:
import numpy as np
def asvoid(arr):
"""
Based on http://stackoverflow.com/a/16973510/190597 (Jaime, 2013-06)
View the array as dtype np.void (bytes). The items along the last axis are
viewed as one value. This allows comparisons to be performed which treat
entire rows as one value.
"""
arr = np.ascontiguousarray(arr)
if np.issubdtype(arr.dtype, np.floating):
""" Care needs to be taken here since
np.array([-0.]).view(np.void) != np.array([0.]).view(np.void)
Adding 0. converts -0. to 0.
"""
arr += 0.
return arr.view(np.dtype((np.void, arr.dtype.itemsize * arr.shape[-1])))
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
idx = np.flatnonzero(np.in1d(asvoid(X), asvoid(searched_values)))
print(idx)
# [0 3 4]
The numpy_indexed package (disclaimer: I am its author) contains functionality for performing such operations efficiently (also uses searchsorted under the hood). In terms of functionality, it acts as a vectorized equivalent of list.index:
import numpy_indexed as npi
result = npi.indices(X, searched_values)
Note that using the 'missing' kwarg, you have full control over behavior of missing items, and it works for nd-arrays (fi; stacks of images) as well.
Update: using the same shapes as #Rik X=[520000,28,28] and searched_values=[20000,28,28], it runs in 0.8064 secs, using missing=-1 to detect and denote entries not present in X.
Here is a pretty fast solution that scales up well using numpy and hashlib. It can handle large dimensional matrices or images in seconds. I used it on 520000 X (28 X 28) array and 20000 X (28 X 28) in 2 seconds on my CPU
Code:
import numpy as np
import hashlib
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6]])
#hash using sha1 appears to be efficient
xhash=[hashlib.sha1(row).digest() for row in X]
yhash=[hashlib.sha1(row).digest() for row in searched_values]
z=np.in1d(xhash,yhash)
##Use unique to get unique indices to ind1 results
_,unique=np.unique(np.array(xhash)[z],return_index=True)
##Compute unique indices by indexing an array of indices
idx=np.array(range(len(xhash)))
unique_idx=idx[z][unique]
print('unique_idx=',unique_idx)
print('X[unique_idx]=',X[unique_idx])
Output:
unique_idx= [4 3 0]
X[unique_idx]= [[5 6]
[3 3]
[4 2]]
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
S = np.array([[4, 2],
[3, 3],
[5, 6]])
result = [[i for i,row in enumerate(X) if (s==row).all()] for s in S]
or
result = [i for s in S for i,row in enumerate(X) if (s==row).all()]
if you want a flat list (assuming there is exactly one match per searched value).
Another way is to use cdist function from scipy.spatial.distance like this:
np.nonzero(cdist(X, searched_values) == 0)[0]
Basically, we get row numbers of X which have distance zero to a row in searched_values, meaning they are equal. Makes sense if you look on rows as coordinates.
I had similar requirement and following worked for me:
np.argwhere(np.isin(X, searched_values).all(axis=1))
Here's what worked out for me:
def find_points(orig: np.ndarray, search: np.ndarray) -> np.ndarray:
equals = [np.equal(orig, p).all(1) for p in search]
exists = np.max(equals, axis=1)
indices = np.argmax(equals, axis=1)
indices[exists == False] = -1
return indices
test:
X = np.array([[4, 2],
[9, 3],
[8, 5],
[3, 3],
[5, 6]])
searched_values = np.array([[4, 2],
[3, 3],
[5, 6],
[0, 0]])
find_points(X, searched_values)
output:
[0,3,4,-1]
I have 3 sparse matrices:
In [39]:
mat1
Out[39]:
(1, 878049)
<1x878049 sparse matrix of type '<type 'numpy.int64'>'
with 878048 stored elements in Compressed Sparse Row format>
In [37]:
mat2
Out[37]:
(1, 878049)
<1x878049 sparse matrix of type '<type 'numpy.int64'>'
with 744315 stored elements in Compressed Sparse Row format>
In [35]:
mat3
Out[35]:
(1, 878049)
<1x878049 sparse matrix of type '<type 'numpy.int64'>'
with 788618 stored elements in Compressed Sparse Row format>
From the documentation, I read that it is possible to hstack, vstack, and concatenate them such type of matrices. So I tried to hstack them:
import numpy as np
matrix1 = np.hstack([[address_feature, dayweek_feature]]).T
matrix2 = np.vstack([[matrix1, pddis_feature]]).T
X = matrix2
However, the dimensions do not match:
In [41]:
X_combined_features.shape
Out[41]:
(2, 1)
Note that I am stacking such matrices since I would like to use them with a scikit-learn classification algorithm. Therefore, How should I hstack a number of different sparse matrices?.
Use the sparse versions of vstack. As general rule you need to use sparse functions and methods, not the numpy ones with similar name. sparse matrices are not subclasses of numpy ndarray.
But, your 3 three matrices do not look sparse. They are 1x878049. One has 878048 nonzero elements - that means just one 0 element.
So you could just as well turned them into dense arrays (with .toarray() or .A) and use np.hstack or np.vstack.
np.hstack([address_feature.A, dayweek_feature.A])
And don't use the double brackets. All concatenate functions take a simple list or tuple of the arrays. And that list can have more than 2 arrays
In [296]: A=sparse.csr_matrix([0,1,2,0,0,1])
In [297]: B=sparse.csr_matrix([0,0,0,1,0,1])
In [298]: C=sparse.csr_matrix([1,0,0,0,1,0])
In [299]: sparse.vstack([A,B,C])
Out[299]:
<3x6 sparse matrix of type '<class 'numpy.int32'>'
with 7 stored elements in Compressed Sparse Row format>
In [300]: sparse.vstack([A,B,C]).A
Out[300]:
array([[0, 1, 2, 0, 0, 1],
[0, 0, 0, 1, 0, 1],
[1, 0, 0, 0, 1, 0]], dtype=int32)
In [301]: sparse.hstack([A,B,C]).A
Out[301]: array([[0, 1, 2, 0, 0, 1, 0, 0, 0, 1, 0, 1, 1, 0, 0, 0, 1, 0]], dtype=int32)
In [302]: np.vstack([A.A,B.A,C.A])
Out[302]:
array([[0, 1, 2, 0, 0, 1],
[0, 0, 0, 1, 0, 1],
[1, 0, 0, 0, 1, 0]], dtype=int32)