Questions tagged [vectorization]
Vectorization refers to a programming paradigm where functions operate on whole arrays in one go. This affords benefits in terms of function calls, memory access, parallelization and code expressiveness. Some programming languages, such as MATLAB, are optimised to give the best performance when vectorized.
vectorization
6,707
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python: Vectorised Def works only on the first condition. Subsequent loops are unaffected
I have a vectorised def:
def selection_update_weights(df):
# Define the selections for 'Win'
selections_win = ["W & O 2.5 (both untested)", "Win (untested) & O 2.5",...
0
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0
answers
55
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'Remapping' a Python numpy array in a 'vectorized' way?
It has recently become apparent to me that when working with at least marginally large data sets Python does not particularly play well with 'for loops' in terms of speed of operation.
I have a task ...
1
vote
2
answers
27
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Getting interval cuts between two 2D numpy arrays contining a given range
I have been struggling to write a function to cut up intervals in two numpy arrays (a1,a2) that contain intervals in the full range 0, 6000.
intervals from a1 and a2 can not overlap in any way, if a ...
2
votes
1
answer
40
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High Variance In Manual Vectorization Performance
I am trying to manually vectorize the calculation of a dot product of two vectors. Please note that I am doing this as an exercise and I am aware that using a BLAS library would be more suitable. The ...
0
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0
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24
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dask - speed up column filtering
I have a 18 GB .parquet file with a ~300M rows of accounting data (which I cannot share) and split in to 53 row groups. My task is to 'clean' the data by retaining in each cell, only specific words ...
0
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0
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60
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Intel classic compiler reports non-unit strided load in simple assignment
Consider the following loop, where I initialize an (aligned) array of complex numbers and would like to default-initialize them. I want to make use of SIMD for the sake of speedup:
constexpr auto ...
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2
answers
57
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Unexplained behaviour from vectorized partial function using `numpy` and `functools`
I am trying to vectorize a partial function which takes two arguments, both of them lists, then does something to the pairwise elements from the lists (using zip). However, I am finding some ...
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0
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37
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Removing blurred mathematical expressions into a PDF file and make it vectorized when zooming [closed]
I have converted an EPUB file to a PDF. Here the result of zoomed capture. :
zoom of the PDF
As you can see, the maths symbols \sum symbol and delta Kronecker are blurred.
Is there a way to fix this ? ...
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0
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Question answering bot with chatgpt3.5 turrbo, and chroma database
I am very new to gen ai and databses. I am using chatgpt3.5 to answer the question from chromadb. i have 3 apps,each i have uploaded docs in chromadb. after selection of every app, Using semantic ...
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2
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how to operate on double-zeroed-indexed array?
how to operate on double-zeroed-indexed array?
I.e.
sub script ‘VBA code line
Dim s(), r() ‘VBA code line
s=[{1,2;3,4;5,6}] ‘VBA code line
r=sum(application.index(s,0,0), [{7,7;7,7;...
2
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1
answer
63
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How do I replace `map_groups` with Vectorized solution in Polars?
I have a function vol_buckets() that has an internal function _vol_buckets_engine(). I want to find a better way to execute the same logic.
The data that the function uses has multiple symbols in the ...
4
votes
1
answer
67
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Multiply two matrices column-wise to obtain vector
I have two equally-sized matrices A and B, which are actually a collection of independent column vectors. I need to perform a "matrix-multiplication" (* or mtimes) for every column in A with ...
2
votes
1
answer
86
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Efficiently calculate angle between three points over triplets of rows in a numpy array
Suppose we have a numpy array A of size M x N which we interpret as M vectors of dimension N. For three vectors a,b,c we'd like to compute the cosine of the angle they form:
cos(angle(a,b,c)) = np.dot(...
0
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0
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57
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Vectorize correlation function with numpy
I have written a small function that computes the correlation of two signals at a given time t and a given lag dt. This function is then called for many values of t and many values of dt. For example, ...
1
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2
answers
65
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How to speed up word removal in a dataframe of word lists?
I am trying to remove non-dictionary words from a medium-sized (18k rows) pandas dataframe, but my approach is extremely slow. Basically, I have tried doing list comprehension and applying it to the ...
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0
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44
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Speeding up repeated "double-indexed" vector adds
As a followup to a C++ question I had, I'm wondering if there is a systematic way to speed up the following operation, either in C++ or Numpy, as it is repeated many times (for varying x):
def ...
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1
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78
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A faster way to build a cumulative tally of DateTime values using Pandas?
I have a python pandas dataframe with DateTime values of multiple events Starting & Finishing.I want to build a tally of all the times a certain datetime (down to the nearest minute) is between ...
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2
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56
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How to sum elements based on their index range in numpy?
Imagine I have this data:
start
end
value
0
5
100
2
4
200
1
2
600
start and end represent a range where this value is. I need to sum all the values based on their ranges.
Here is the idea:
100 ...
6
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1
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248
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Can std::replace implementation make redundant writes to the passed array?
std::replace implementation can be optimized using vectorization (by specializing the library implementation or by the compiler).
The vectorized implementation would compare and replace several ...
1
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1
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59
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Optimizing the rational quadratic kernel function
Given the following functions, what are some optimizations that can be done to speed up computations?
Yes, I tried using ChatGPT and Bard, the reason I'm mentioning this is that there's a "caveat&...
2
votes
1
answer
47
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Linear regression function vectorization
I want to write a script for running regression models across a whole data.table, where my function fits the model and extracts information for later analysis. I have a very large number of models to ...
4
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4
answers
148
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How to create new column that cumulatively sums to cumulative sum of existing column?
Using tidyverse functions, I'm looking to create a new column of data that sums up to the cumulative sum in the first column, but uses increments no greater than incr.
That could start with df
incr &...
0
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0
answers
61
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How to remove nested for loops while filling a matrix
I am trying to fill a larger matrix (A) by using the entries of a smaller matrix (B), the relevant python code is
dim = N_Om * 2 * a
A = np.zeros(dim * dim, dtype="complex").reshape(dim, ...
0
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2
answers
54
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Vectorized function in dplyr::mutate and logical operators
I am trying to vectorize a function for the use in dplyr::mutate. For the life of me, I can't get it working. This is what I have been doing:
str_to_seq <- Vectorize(function(x) {
# This ...
0
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2
answers
66
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How to Optimize Nested Loops for Tensor Operations in NumPy/TensorFlow?
I am working on a machine learning problem involving a Monte Carlo simulation for a classification task. My current implementation involves generating synthetic class labels based on multinomial ...
0
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1
answer
45
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Pyspark very slow in loop with updating same dataframe again and again
I want to implement a logic in databricks pyspark where I want to update next days value based on the updated value of last 14 days. I am using loops to do it. Below is the code but it is very slow ...
0
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1
answer
105
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Numpy loop performance optimization Python
I struggled with this function to reduce a list .
Now it turns out to be shitty slow. Well I needed 3 loops ….
Its ok with this short c-list, but is useless with a bigger list.
How can I improve this ?...
0
votes
1
answer
62
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How to vectorize this 2 loops in Pytorch (Difficult)
How to vectorize this:
vocab_size = 20
batch_size = 2
input_len = 5
output_len = 10
input_ids = torch.randint(0, vocab_size, (batch_size, input_len))
output_ids = torch.randint(0, vocab_size, (...
0
votes
1
answer
66
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Turning a non-vectorized code into a vectorized one
I have already discovered that this function is my bottleneck and that I need to make it more efficient.
So, to speed it up, I thought about using numpy vector operations, but I haven't been able to ...
2
votes
1
answer
39
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Vectorization with lists (as tibble columns) in R?
I am dealing with time series data for different individuals in a wide format. The number of time points differ between individuals. Now, the thing is that I need the last element for each individual.
...
0
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1
answer
37
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Is there a way to vectorize these bootstrappign loops in R?
I'm new to R. I'm used to VB where loops are used heavily, but I know R is much more efficient if I can vectorize the data. I don't know if it's possible to vectorize what I've constructed here.
The ...
-1
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1
answer
168
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For loop is slowing down performance. Any alternatives?
I am trying to improve the performance of the function below
import numpy as np
import time
r_0 = 0.1
drt_measurement = 9.999999999999991269e+04 3.305791191233514031e-02
9.083278409243831993e+04 ...
1
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2
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59
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How to calculate a Kernel/Matrix efficiently
import numpy as np
solution_point_count = 150
impedance_datapoint_count = 134
impedance_frequency = np.logspace(np.log10(100000), np.log10(0.0199), impedance_datapoint_count)
...
5
votes
3
answers
100
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Vectorize a folding process in a dataframe
Suppose we have a sample dataframe like the one below:
df = pd.DataFrame({'A': [np.nan, 0.5, 0.5, 0.5, 0.5],
'B': [np.nan, 3, 4, 1, 2],
'C': [10, np.nan, np.nan,...
4
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1
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178
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Why can't clang vectorise this loop over a std::span, writing results to a std::array?
Why won't clang 17.0.1 vectorise the loop in the following function:
void adapt(std::span<const F, N + 1> signal)
{
F true_val = signal.back();
F y = dot_prod<F, N>(&signal[0], ...
1
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1
answer
45
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Vectorized sum of varying length vectors
I'm trying to simulate y observations from the following equation :
for all possible values of X and random values for the parameter Beta and the vector of parameters Delta.
Using R and packages from ...
1
vote
0
answers
20
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Scatter matrix multiplication using torch and torch geometric
I would like to perform the following operation without use a for loop, I would like to parallelize or vectorize it because I'm running in a GPU.
import torch
node_predictions = torch.randn(size = (...
0
votes
1
answer
116
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How do I optimally fill multiple arrays with SIMDs vectors?
Basically, I have an array of vectors I want to "split" into multiple arrays with vectors' values, but I'm struggling to find an optimal way to do this since this is for a performance ...
0
votes
1
answer
71
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Removing overlapping events from data table with intervals
Given a large (> 100MB) data frame of events with location and timestamps, how can I remove events synchronously occurring in all locations (i.e. putative noise) in R, MATLAB or Python (with ...
0
votes
0
answers
22
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vectorized batched cross correlation in pytorch
so I have a tensor (a signal) f with shape (B,T,1) and another signal g with the same shape.
I want to perform “pairwise” cross-correlation between samples with the same batch index. Namely, if I were ...
0
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1
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50
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Vectorized way to copy elements from pandas Series to python built-in array
Is there a vectorized way to copy elements from a pandas Series to a python built-in array? For example:
from array import array
import pandas as pd
s = pd.Series(range(0, 10, 2)); s += 0.1
a = array('...
1
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1
answer
52
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Matlab: Speeding up large array operations - vectorization?
I am looking to significantly speed up the below code that involves operations on large arrays (specifically - the array called "proj"). The calculation of "proj" itself is fast ...
0
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1
answer
30
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Python multiprocessing/Pathos Process pickling error - Numpy vectorised function
I'm trying to parallelise my program by running the main bulk of the code in different processes and drawing the results together periodically. The format of my code is similar to the following ...
1
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1
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33
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JAX `vjp` fails for vmapped function with `custom_vjp`
Below is an example where a function with a custom-defined vector-Jacobian product (custom_vjp) is vmapped. For a simple function like this, invoking vjp fails:
@partial(custom_vjp, nondiff_argnums=(0,...
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3
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69
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Is it possible to vectorise an operation on an array that depends on the position or index of each element?
Let us suppose that I want to perform this operation on a vector:
TEST.1 <- runif(10000, min = 0, max = 10000) # Whatever, doesn't mind
TEST.2 <- array(0, dim = 10000) # To save the results
...
1
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2
answers
109
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Vectorize nestled loops for pairwise distance calculation
How to make the script below more efficient? This is a follow-up to my previous post Python nested loop issue
It currently takes the best part of two hours to process input tables consisting in about ...
0
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1
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59
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vectorize numpy array multiplication
a = np.array([[20, 12, 6],
[12, 24, 18],
[ 0, 14, 30]])
b = np.array([1,0.5])
c = np.array([b ** i for i in range(0, 3)][::-1])
array([[1. , 0.25],
[1. , 0.5 ],
...
2
votes
2
answers
78
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How to compute the Euclidean distance between two complex matrix by vectorization?
X=[x_1,x_2,...,x_N] is a [S,N] complex matrix.
For example, S=3 and x_1=[1+2j,2+3j,3+4j]'.
D is the distance matrix of X, which means D(i,j) is the Euclidean distance between x_i and x_j.
my code:
D = ...
2
votes
1
answer
48
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Vectorizing power of `jax.grad`
I'm trying to vectorize the following "power-of-grad" function so that it accepts multiple orders: (see here)
def grad_pow(f, order, argnum):
for i in jnp.arange(order):
f = ...
2
votes
1
answer
38
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How to simplify my double loops by matlab vectorization?
My code is :
N = 500; %
D_1=ones(N,N);%
D_2=ones(N,N);% For simplicity.
B=zeros(N,N);
for i = 1:N
for j = i+1:N
basis_vector = zeros(N, 1);
basis_vector(i) = 1;
...