Related
Suppose test = np.array(5*[np.eye(5), 10*np.eye(5), 15*np.eye(5)]). I have three matrices inside an array with shape (3, 5, 5). In general, how can I reshape test to make the three matrices into one? In that specific example, I would like the shape to be (15, 5). I want a general way of doing it without using some reeally specific as np.reshape(test, (15,5)).
You can use -1 in reshape that implicitly calculates the required dimension shape:
test = test.reshape(-1, test.shape[-1])
I don't understand broadcasting. The documentation explains the rules of broadcasting but doesn't seem to define it in English. My guess is that broadcasting is when NumPy fills a smaller dimensional array with dummy data in order to perform an operation. But this doesn't work:
>>> x = np.array([1,3,5])
>>> y = np.array([2,4])
>>> x+y
*** ValueError: operands could not be broadcast together with shapes (3,) (2,)
The error message hints that I'm on the right track, though. Can someone define broadcasting and then provide some simple examples of when it works and when it doesn't?
The term broadcasting describes how numpy treats arrays with different shapes during arithmetic operations.
It's basically a way numpy can expand the domain of operations over arrays.
The only requirement for broadcasting is a way aligning array dimensions such that either:
Aligned dimensions are equal.
One of the aligned dimensions is 1.
So, for example if:
x = np.ndarray(shape=(4,1,3))
y = np.ndarray(shape=(3,3))
You could not align x and y like so:
4 x 1 x 3
3 x 3
But you could like so:
4 x 1 x 3
3 x 3
How would an operation like this result?
Suppose we have:
x = np.ndarray(shape=(1,3), buffer=np.array([1,2,3]),dtype='int')
array([[1, 2, 3]])
y = np.ndarray(shape=(3,3), buffer=np.array([1,1,1,1,1,1,1,1,1]),dtype='int')
array([[1, 1, 1],
[1, 1, 1],
[1, 1, 1]])
The operation x + y would result in:
array([[2, 3, 4],
[2, 3, 4],
[2, 3, 4]])
I hope you caught the drift. If you did not, you can always check the official documentation here.
Cheers!
1.What is Broadcasting?
Broadcasting is a Tensor operation. Helpful in Neural Network (ML, AI)
2.What is the use of Broadcasting?
Without Broadcasting addition of only identical Dimension(shape) Tensors is supported.
Broadcasting Provide us the Flexibility to add two Tensors of Different Dimension.
for Example: adding a 2D Tensor with a 1D Tensor is not possible without broadcasting see the image explaining Broadcasting pictorially
Run the Python example code understand the concept
x = np.array([1,3,5,6,7,8])
y = np.array([2,4,5])
X=x.reshape(2,3)
x is reshaped to get a 2D Tensor X of shape (2,3), and adding this 2D Tensor X with 1D Tensor y of shape(1,3) to get a 2D Tensor z of shape(2,3)
print("X =",X)
print("\n y =",y)
z=X+y
print("X + y =",z)
You are almost correct about smaller Tensor, no ambiguity, the smaller tensor will be broadcasted to match the shape of the larger tensor.(Small vector is repeated but not filled with Dummy Data or Zeros to Match the Shape of larger).
3. How broadcasting happens?
Broadcasting consists of two steps:
1 Broadcast axes are added to the smaller tensor to match the ndim of
the larger tensor.
2 The smaller tensor is repeated alongside these new axes to match the full shape
of the larger tensor.
4. Why Broadcasting not happening in your code?
your code is working but Broadcasting can not happen here because both Tensors are different in shape but Identical in Dimensional(1D).
Broadcasting occurs when dimensions are nonidentical.
what you need to do is change Dimension of one of the Tensor, you will experience Broadcasting.
5. Going in Depth.
Broadcasting(repetition of smaller Tensor) occurs along broadcast axes but since both the Tensors are 1 Dimensional there is no broadcast Axis.
Don't Confuse Tensor Dimension with the shape of tensor,
Tensor Dimensions are not same as Matrices Dimension.
Broadcasting is numpy trying to be smart when you tell it to perform an operation on arrays that aren't the same dimension. For example:
2 + np.array([1,3,5]) == np.array([3, 5, 7])
Here it decided you wanted to apply the operation using the lower dimensional array (0-D) on each item in the higher-dimensional array (1-D).
You can also add a 0-D array (scalar) or 1-D array to a 2-D array. In the first case, you just add the scalar to all items in the 2-D array, as before. In the second case, numpy will add row-wise:
In [34]: np.array([1,2]) + np.array([[3,4],[5,6]])
Out[34]:
array([[4, 6],
[6, 8]])
There are ways to tell numpy to apply the operation along a different axis as well. This can be taken even further with applying an operation between a 3-D array and a 1-D, 2-D, or 0-D array.
>>> x = np.array([1,3,5])
>>> y = np.array([2,4])
>>> x+y
*** ValueError: operands could not be broadcast together with shapes (3,) (2,)
Broadcasting is how numpy do math operations with array of different shapes. Shapes are the format the array has, for example the array you used, x , has 3 elements of 1 dimension; y has 2 elements and 1 dimension.
To perform broadcasting there are 2 rules:
1) Array have the same dimensions(shape) or
2)The dimension that doesn't match equals one.
for example x has shape(2,3) [or 2 lines and 3 columns];
y has shape(2,1) [or 2 lines and 1 column]
Can you add them? x + y?
Answer: Yes, because the mismatched dimension is equal to 1 (the column in y). If y had shape(2,4) broadcasting would not be possible, because the mismatched dimension is not 1.
In the case you posted:
operands could not be broadcast together with shapes (3,) (2,);
it is because 3 and 2 mismatched altough both have 1 line.
I would like to suggest to try the np.broadcast_arrays, run some demos may give intuitive ideas. Official Document is also helpful. From my current understanding, numpy will compare the dimension from tail to head. If one dim is 1, it will broadcast in the dimension, if one array has more axes, such (256*256*3) multiply (1,), you can view (1) as (1,1,1). And broadcast will make (256,256,3).
How do I check if a numpy array has a regular shape.
In the example below x is a *2 by 3* matrix. However y is not regular in the sense that it can't be represented as a proper matrix.
Given that I have a numpy array, is there a method (preferably in-built) that I can use to check that the numpy array is an actual matrix
In [9]: import numpy as np
In [10]: x = np.array([[1,2,3],[4,5,6]])
In [11]: x.shape
Out[11]: (2, 3)
In [12]: y = np.array([[1,2,3],[4,5]])
In [13]: y.shape
Out[13]: (2,)
Both are arrays and those are valid shapes. But, with normal, think you meant that each element has the same shape and length across it. For that, a better way would be to check for the datatype. For the variable length case, it would be object. So, we can check for that condition and call out accordingly. Hence, simply do -
def is_normal_arr(a): # a is input array to be tested
return a.dtype is not np.dtype('object')
I think the .shape method is capable of checking it.
If you input an array which can form a matrix it returns it's actual shape, (2, 3) in your case. If you input an incorrect matrix it returns something like (2,), which says something's wrong with the second dimension, so it can't form a matrix.
Here y is a one-dimensional array and the size of y is 2. y contains 2 list values.
AND x is our actual matrix in a proper format.
check the dimensions by y.ndim AND x.ndim.
I have found myself needing to add features to existing numpy arrays which has led to a question around what the last portion of the following code is actually doing:
np.ones(shape=feature_set.shape)[...,None]
Set-up
As an example, let's say I wish to solve for linear regression parameter estimates by using numpy and solving:
Assume I have a feature set shape (50,1), a target variable of shape (50,), and I wish to use the shape of my target variable to add a column for intercept values.
It would look something like this:
# Create random target & feature set
y_train = np.random.randint(0,100, size = (50,))
feature_set = np.random.randint(0,100,size=(50,1))
# Build a set of 1s after shape of target variable
int_train = np.ones(shape=y_train.shape)[...,None]
# Able to then add int_train to feature set
X = np.concatenate((int_train, feature_set),1)
What I Think I Know
I see the difference in output when I include [...,None] vs when I leave it off. Here it is:
The second version returns an error around input arrays needing the same number of dimensions, and eventually I stumbled on the solution to use [...,None].
Main Question
While I see the output of [...,None] gives me what I want, I am struggling to find any information on what it is actually supposed to do. Can anybody walk me through what this code actually means, what the None argument is doing, etc?
Thank you!
The slice of [..., None] consists of two "shortcuts":
The ellipsis literal component:
The dots (...) represent as many colons as needed to produce a complete indexing tuple. For example, if x is a rank 5 array (i.e., it has 5 axes), then
x[1,2,...] is equivalent to x[1,2,:,:,:],
x[...,3] to x[:,:,:,:,3] and
x[4,...,5,:] to x[4,:,:,5,:].
(Source)
The None component:
numpy.newaxis
The newaxis object can be used in all slicing operations to create an axis of length one. newaxis is an alias for ‘None’, and ‘None’ can be used in place of this with the same result.
(Source)
So, arr[..., None] takes an array of dimension N and "adds" a dimension "at the end" for a resulting array of dimension N+1.
Example:
import numpy as np
x = np.array([[1,2,3],[4,5,6]])
print(x.shape) # (2, 3)
y = x[...,None]
print(y.shape) # (2, 3, 1)
z = x[:,:,np.newaxis]
print(z.shape) # (2, 3, 1)
a = np.expand_dims(x, axis=-1)
print(a.shape) # (2, 3, 1)
print((y == z).all()) # True
print((y == a).all()) # True
Consider this code:
np.ones(shape=(2,3))[...,None].shape
As you see the 'None' phrase change the (2,3) matrix to a (2,3,1) tensor. As a matter of fact it put the matrix in the LAST index of the tensor.
If you use
np.ones(shape=(2,3))[None, ...].shape
it put the matrix in the FIRST index of the tensor
I don't understand broadcasting. The documentation explains the rules of broadcasting but doesn't seem to define it in English. My guess is that broadcasting is when NumPy fills a smaller dimensional array with dummy data in order to perform an operation. But this doesn't work:
>>> x = np.array([1,3,5])
>>> y = np.array([2,4])
>>> x+y
*** ValueError: operands could not be broadcast together with shapes (3,) (2,)
The error message hints that I'm on the right track, though. Can someone define broadcasting and then provide some simple examples of when it works and when it doesn't?
The term broadcasting describes how numpy treats arrays with different shapes during arithmetic operations.
It's basically a way numpy can expand the domain of operations over arrays.
The only requirement for broadcasting is a way aligning array dimensions such that either:
Aligned dimensions are equal.
One of the aligned dimensions is 1.
So, for example if:
x = np.ndarray(shape=(4,1,3))
y = np.ndarray(shape=(3,3))
You could not align x and y like so:
4 x 1 x 3
3 x 3
But you could like so:
4 x 1 x 3
3 x 3
How would an operation like this result?
Suppose we have:
x = np.ndarray(shape=(1,3), buffer=np.array([1,2,3]),dtype='int')
array([[1, 2, 3]])
y = np.ndarray(shape=(3,3), buffer=np.array([1,1,1,1,1,1,1,1,1]),dtype='int')
array([[1, 1, 1],
[1, 1, 1],
[1, 1, 1]])
The operation x + y would result in:
array([[2, 3, 4],
[2, 3, 4],
[2, 3, 4]])
I hope you caught the drift. If you did not, you can always check the official documentation here.
Cheers!
1.What is Broadcasting?
Broadcasting is a Tensor operation. Helpful in Neural Network (ML, AI)
2.What is the use of Broadcasting?
Without Broadcasting addition of only identical Dimension(shape) Tensors is supported.
Broadcasting Provide us the Flexibility to add two Tensors of Different Dimension.
for Example: adding a 2D Tensor with a 1D Tensor is not possible without broadcasting see the image explaining Broadcasting pictorially
Run the Python example code understand the concept
x = np.array([1,3,5,6,7,8])
y = np.array([2,4,5])
X=x.reshape(2,3)
x is reshaped to get a 2D Tensor X of shape (2,3), and adding this 2D Tensor X with 1D Tensor y of shape(1,3) to get a 2D Tensor z of shape(2,3)
print("X =",X)
print("\n y =",y)
z=X+y
print("X + y =",z)
You are almost correct about smaller Tensor, no ambiguity, the smaller tensor will be broadcasted to match the shape of the larger tensor.(Small vector is repeated but not filled with Dummy Data or Zeros to Match the Shape of larger).
3. How broadcasting happens?
Broadcasting consists of two steps:
1 Broadcast axes are added to the smaller tensor to match the ndim of
the larger tensor.
2 The smaller tensor is repeated alongside these new axes to match the full shape
of the larger tensor.
4. Why Broadcasting not happening in your code?
your code is working but Broadcasting can not happen here because both Tensors are different in shape but Identical in Dimensional(1D).
Broadcasting occurs when dimensions are nonidentical.
what you need to do is change Dimension of one of the Tensor, you will experience Broadcasting.
5. Going in Depth.
Broadcasting(repetition of smaller Tensor) occurs along broadcast axes but since both the Tensors are 1 Dimensional there is no broadcast Axis.
Don't Confuse Tensor Dimension with the shape of tensor,
Tensor Dimensions are not same as Matrices Dimension.
Broadcasting is numpy trying to be smart when you tell it to perform an operation on arrays that aren't the same dimension. For example:
2 + np.array([1,3,5]) == np.array([3, 5, 7])
Here it decided you wanted to apply the operation using the lower dimensional array (0-D) on each item in the higher-dimensional array (1-D).
You can also add a 0-D array (scalar) or 1-D array to a 2-D array. In the first case, you just add the scalar to all items in the 2-D array, as before. In the second case, numpy will add row-wise:
In [34]: np.array([1,2]) + np.array([[3,4],[5,6]])
Out[34]:
array([[4, 6],
[6, 8]])
There are ways to tell numpy to apply the operation along a different axis as well. This can be taken even further with applying an operation between a 3-D array and a 1-D, 2-D, or 0-D array.
>>> x = np.array([1,3,5])
>>> y = np.array([2,4])
>>> x+y
*** ValueError: operands could not be broadcast together with shapes (3,) (2,)
Broadcasting is how numpy do math operations with array of different shapes. Shapes are the format the array has, for example the array you used, x , has 3 elements of 1 dimension; y has 2 elements and 1 dimension.
To perform broadcasting there are 2 rules:
1) Array have the same dimensions(shape) or
2)The dimension that doesn't match equals one.
for example x has shape(2,3) [or 2 lines and 3 columns];
y has shape(2,1) [or 2 lines and 1 column]
Can you add them? x + y?
Answer: Yes, because the mismatched dimension is equal to 1 (the column in y). If y had shape(2,4) broadcasting would not be possible, because the mismatched dimension is not 1.
In the case you posted:
operands could not be broadcast together with shapes (3,) (2,);
it is because 3 and 2 mismatched altough both have 1 line.
I would like to suggest to try the np.broadcast_arrays, run some demos may give intuitive ideas. Official Document is also helpful. From my current understanding, numpy will compare the dimension from tail to head. If one dim is 1, it will broadcast in the dimension, if one array has more axes, such (256*256*3) multiply (1,), you can view (1) as (1,1,1). And broadcast will make (256,256,3).