# Questions tagged [numpy-broadcasting]

The term broadcasting describes how NumPy treats arrays with different shapes during arithmetic operations. Subject to certain constraints, the smaller array is “broadcast” across the larger array so that they have compatible shapes.

**1**

**1**answer

### Converting nested for loops into vectorised form for evaluting a function in using numpy

**0**

**0**answers

### Numpy, for each element of one array, find its closest point in another array [duplicate]

**1**

**1**answer

### numpy broadcasting boolean indexes

**1**

**1**answer

### Python: Sum of all permutations of outer products of numpy arrays of arrays

**0**

**2**answers

### optimizing numpy vectorization on calculating distances and np.sum

**0**

**1**answer

### Numpy: Find minimum of an expression over several parameters

**0**

**2**answers

### Algorithm in Python equivalent to Q to manually generate identity matrix

**0**

**1**answer

### Numpy/Keras: ValueError: could not broadcast input array from shape (7,5) into shape (7)

**0**

**2**answers

### python - broadcasting between arrays with the same 'outer' size

**1**

**0**answers

### Getting error code when subtracting arrays/matrices with numpy in python 3.7.0

**-1**

**0**answers

### masking a numpy 3D array by indexing OR make 3D new numpy array by using index

**-1**

**1**answer

### Is there a difference between adding a scalar to a vector inside a for loop and outside it, using numpy?

**0**

**3**answers

### ValueError: Dimensions must be equal, but are 4096 and 9 for 'mul'. Why no broadcasting here?

**1**

**1**answer

### Setting dataframe by using both iloc and a boolean mask (mask at multiple different index (row) values in the dataframe)

**0**

**0**answers

### ValueError: operands could not be broadcast together with shapes (5197,) (5197,21)

**1**

**0**answers

### integral over a cone

**0**

**1**answer

### Using 2d numpy mask np.where to address a 3d numpy array (pythonic??)

**5**

**3**answers

### Python: Element-wise broadcasting for comparing two numpy arrays?

**3**

**1**answer

### Numpy: Finding minimum and maximum values from associations through binning

**1**

**2**answers

### Numpy : Grouping/ binning values based on associations

**0**

**1**answer

### Why can't I reshape numpy string arrays and ctype arrays?

**0**

**1**answer

### Numpy broadcasting bitwise union upon no bitwise intersection

**0**

**3**answers

### Array index inside vectorization

**0**

**0**answers

### Get different result from broadcasting when changing dimension

**0**

**0**answers

### Entry Point Not found (numpy python)

**4**

**2**answers

### np.dot 3x3 with N 1x3 arrays

**0**

**0**answers

### mapping code to switch position pandas vectorization

**0**

**1**answer

### Vectorisation of numpy.linalg.lstsq

**0**

**2**answers

### Numpy: Can you use broadcasting to replace values by row?

**0**

**1**answer

### Unable to divide a matrix and vector in keras

**0**

**2**answers

### ValueError: operands could not be broadcast together with shapes (2501,201) (2501,)

**1**

**1**answer

### How does pytorch broadcasting work?

**0**

**1**answer

### broadcasting arrays in numpy

**-2**

**1**answer

### Remove NaN from 2D numpy array

**0**

**0**answers

### Multiply arrays along a given axis [duplicate]

**0**

**2**answers

### Element-wise minimum of two numpy arrays indexed by another array

**2**

**1**answer

### NumPy indexing: broadcasting with Boolean arrays

**0**

**1**answer

### Is NumPy broadcasting associative?

**2**

**2**answers

### numpy indexing using 'None' for pairwise operations

**1**

**1**answer

### Broadcast operation on array of smaller size

**0**

**1**answer

### numpy.where() returns inconsisten dimensions

**1**

**0**answers

### Taking specific 2d array from 3d in numpy

**1**

**1**answer

### Why the following operands could not be broadcasted together?

**2**

**2**answers

### cosine similarity between a vector and pandas column(a linear vector)

**9**

**2**answers

### broadcast views irregularly numpy

**0**

**1**answer

### Use selected Pandas columns with a function to create a matrix

**1**

**1**answer

### Broadcasting Multiple Arrays

**1**

**2**answers

### idiom for getting contiguous copies

**1**

**1**answer

### TypeError: unsupported operand type(s) for /: 'float' and 'csr_matrix'

**1**

**1**answer