Questions tagged [numba]

Numba is an open source NumPy-aware optimizing compiler for Python.

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6 views

Numba automatically simplify and skip codes?

I installed the latest Python, Numba and CUDA CDK version 10 where I found the following result to be really interesting: Code I: from timeit import default_timer as timer from numba ...
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0answers
8 views

@vectorize works for 'cpu' and 'parallel', but not for 'cuda'

I'm using Numba module for Python, namely, the @vectorize decorator. The signature is the following: @vectorize(['float64(int64,float64,float64,int64,int64,float64)'], target='cuda', nopython=True) ...
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1answer
37 views

Numba : difference between first time execution and following executions

I just started to use numba to improve performance of my programs. I have reduce the case that I will present import numba as nb import numpy as np from time import time def dt_max(U,f, eps=1e-5): ...
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18 views

What's the difference between Numba and NumbaPro?

I watched a video about numba package which I found to be very powerful. However, there seemed to be two versions: Numba and NumbarPro. Can someone explain a little what's the difference between ...
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1answer
26 views

Indexing empty array, Numba vs. Numpy

I was experimenting with the behavior of Numba vs Numpy for array indexing, and I came across something which I do not quite understand; so I hoped someone can point me in the right direction for what ...
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1answer
27 views

Best possible bit array for Numba

I need to create a bit array in Python. So far, I've discovered that one can generate very memory-efficient arrays using the bitarray module. However, my final intention is to use @vectorize ...
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0answers
20 views

Can I select specific columns from array inside cuda.jit code in Python, something like: np.delete(array, np.s_[list[i]], 1)

I found the numpy.delete(array, np.s_[list[i]], 1).remove method, but say I want to remove columns in GPU code using cuda in Python, how do I do this?
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1answer
47 views

Why does Numba pycc compilation abort?

First some context: I am trying to integrate a coupled ODE using scipy.integrate.odeint very often with different initial conditions x_ and parameters r_and d_. I am trying to make the integration ...
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1answer
26 views

Turn off list reflection in Numba

I'm trying to accelerate my code using Numba. One of the arguments I'm passing into the function is a mutable list of lists. When I try changing one of the sublists, I get this error: Failed in ...
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0answers
31 views

How to get correct global variable with jupyter's timeit?

One first cell I have this: from numba import cuda @cuda.jit def thread_counter_safe(global_counter): cuda.atomic.add(global_counter, 0, 1) # Safely add 1 to offset 0 in global_counter array On ...
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0answers
27 views

How to store structured data from Numba prange

I have a function like this: @jit(nopython=True, nogil=True, parallel=True) def parallelLoop(): X = [None] * 10 for i in prange(10): X[i] = foo() where foo() returns a variable ...
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1answer
31 views

Using numba functions in map_blocks

I have successfully used map_blocks a few times on dask arrays. I'm now trying to deploy a numba function to act on each block, and to act and change one of the inputs. The numba function takes in 2 ...
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36 views

Numba: sharing a numpy array among processes

I have a numpy array X. I want to share it among processes. In each process I call a function foo(), which reads X. I want foo() to be jitted, eg.: X = np.zeros(1000) @jit(nopython=True) ...
2
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1answer
39 views

What the best way to get structured array / dataframe like structures in Numba?

I have a numpy array that I reference by column, e.g., df['x'], df['y']. What is the best way to give this to Numba so I can run the function in nopython mode? Or what is the best way to deal with ...
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1answer
149 views

Why is Cython so much slower than Numba when iterating over NumPy arrays?

When iterating over NumPy arrays, Numba seems dramatically faster than Cython. What Cython optimizations am I possibly missing? Here is a simple example: Pure Python code: import numpy as np def f(...
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1answer
31 views

Why does numba's parallel=True make this computation 3 times slower?

When doing this: import numpy as np from numba import jit @jit def doit(A, Q, n): for i in range(len(Q)): Q[i] = np.sum(A[i:i+n] <= A[i+n]) A = np.random.random(1000*1000) n = 5000 Q ...
2
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1answer
72 views

Why is this Cython implementation of this simple appending function slower than Numba?

I have 2 versions of a function that appends a row to a 2d array; one in Cython and another in Numba. The performance of the Cython version is a lot slower than the Numba version. I would like to ...
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0answers
41 views

Object creation in Cython is 2 orders of magnitude slower than Numba?

I have equivalent functions in Numba and Cython, and the Cython version seems to be a LOT slower. The functions create lots of objects... Extension classes for Cython, and jitclasses for Numba. I ...
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0answers
56 views

Google collab While using cuda OSError: library nvvm not found

In my collab while I was calculating the running time of my code. I got the error OSError: library nvvm not found. How do I solve this in my collab. !export NUMBAPRO_NVVM=/opt/cudatoolkit-6.0/nvvm/...
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0answers
10 views

Computing mean First Passage Time using GPU

Computing first passage time may be abstracted out as the following code: def Next(x): # function details return y x=0 steps=0 while x<target: x=Next(x) steps+=1 print steps There ...
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1answer
33 views

Shortening Execution Time for a CCH graph

I'm trying to reduce the time it takes to graph the following function: def cch(tau): return np.sum(abs(-1*np.diff(cartprod)-tau)<0.001) where "cartprod" is short for: cartprod = np.asarray(...
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0answers
31 views

Numba Cuda python program to access the GPU

I am trying to run my program on GPU using CUDA of numba..I am working on image processing I have no clue when to use @jit @vectorize @cuda.jit my code: import numpy as np import cv2 ...
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1answer
40 views

Error Passing Multiple Inputs to a Class while using Numba

I am trying to use Numba Decorator with my class. However, I am receiving the the following error. I checked the input dimension and it looks correct but still getting the same error. Any idea on how ...
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2answers
107 views

How to use multi-threading to speed up nested for loop calculation?

I'm trying to perform numerical integration on a large array and the computation takes a very long time. I tried to speed up my code by using numba and the jit decorator, but numpy.trapz isn't ...
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0answers
50 views

Speed up np.trapz calculation with Numba

I have these large numpy arrays, which I'm using np.trapz to numerically integrate over. Currently, my code takes an extremely long time to compute and I was hoping to use numba to speed up the ...
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1answer
67 views

Numba @jit fails to speed up the performance of this function. Anyway to fix that?

I am quite new to the numba package in python. I am not sure if I am using the numba.jit correctly, but the code just runs too slow with 23.7s per loops over the line: Z1 = mmd(X,Y,20) What is the ...
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0answers
45 views

how to resolve GPU compute capability error in numba(cuda) library

I am starting using Numba(Cuda) packages for huge matrix(and vector) multiplications in my python codes. I have faced this error: numba.cuda.cudadrv.error.NvvmSupportError: GPU compute capability 2....
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1answer
37 views

Programmatic nested numba.cuda function calls

Numba & CUDA noob here. I'd like to be able to have one numba.cuda function programmatically call another one from the device, without having to pass any data back to the host. For example, given ...
2
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0answers
64 views

Perfomance of cython vs numba

Hey I am currently working in a Python's module for thermodynamic fluid phase equilibria. For this I need to program activity coefficient models, as NRTL, that involves several summations. In order ...
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1answer
65 views

How does Pandas compute exponential moving averages under the hood?

I am trying to compare pandas EMA performance to numba performance. Generally, I don't write functions if they are already in-built with pandas, as pandas will always be faster than my slow hand-...
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3answers
44 views

Negative dynamic index in Numba

Numba seems to object to negative dynamic indices in tuples. @jit def test_fn(): tup = (3,2,4,6,2) total = 0 for idx in range(5): total += tup[-idx] return total Gives ...
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0answers
27 views

Faster python treesearch implementation

I have a treesearch implementation in Python that is just way to slow for my use. How can I run this faster? I've read there is numba but I can't get my head around how it would works and what it can ...
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1answer
56 views

parallelize genetic algorithm with numba (cuda)

I am making a genetic algorithm on neural nets playing snake for educational purposes I want to be able to run my python code on my gpu (cuda enabled) in order to save some time and accelerate the ...
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0answers
117 views

Numba: can't locate cuda libraries

I'm trying to take advantage of cuda with my gtx 1080 on windows, I installed cuda toolkit 10 from nvidia website and set up the environment variables using this tutorial on medium: tutorial However' ...
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1answer
33 views

How to invoke apply on multiple columns (including the result column) without looping

For example, I have two columns A and B (as in pandas dataframe): A B 0 1 1 1 1 0 2 0 1 3 0 0 How do I calculate a column C based on A, B, and C_prev_row (its own calculated value from ...
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0answers
25 views

GPU parallelization of code that uses numpy functions

I'm trying to parallelize a Python function I wrote to run on multiple GPU cores simultaneously, but it seems like current methods for doing so, such as vectorize and guvectorize from numba, don't ...
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0answers
29 views

numba prange is giving the wrong result

While trying to use numba to speed up some code, I noticed that parallel execution is giving different (and wrong) results compared to serial. Consider this example: import numba @numba.jit(nopython=...
2
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1answer
73 views

Creating a list of empty lists in numba

Why does foo function bellow work and bar one does not? What am I missing here? @numba.njit def foo(x): ...
2
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1answer
58 views

Numba functions and pickle

I'm having a problem using joblib to execute a recursive numba function in parallel. When using numba's jit on a recursive function and then trying to use joblib on that function, I get an error (...
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1answer
56 views

Iterating over a tuple at jit-compile time in numba

Is there a way in a numba jitted function to evaluate every function in a tuple (or list) of functions, at compile time? Please note that this question is about how to use a Python loop to construct ...
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0answers
46 views

how to use numba cfunc handle scipy.integrate.dblquad

I have read How to pass additional parameters to numba cfunc passed as LowLevelCallable to scipy.integrate.quad To be honest, I feel mess in my mind yet. now I want to wrap the dblquad function ...
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0answers
56 views

Vectorization of Pandas multi-line Expression

I have a 50,000 x 50 dataframe (df1) on which I run a multi-line expression and append the result into a new column. The expression looks up a value in another dataframe (4000 x 12 in size; df2) and ...
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0answers
20 views

How to run python3 crawler code on NVIDA GPU?

My question is a little theoretical. By my researching about PyCUDA and Numba GPU libraries on internet and stack overflow, PyCUDA is more faster than Numba. So I decided that I use PyCUDA on my ...
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1answer
72 views

use multithreading in numba

I have a function that performs a point in polygon test. It takes two 2D numpy array as input (a series of points, and a polygon). The function returns a boolean as output (True if the point lies ...
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0answers
30 views

Numba alternative with class, yield support and z3py

Does an alternative exist to numba that support: - classes - yield statements, and - z3. Identical support is not needed but similar optimisation will be useful.
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1answer
48 views

Is it possible that numba jit slows down my gcd execution?

I'm trying to compute a large amount of GCD(x,y) as part of Euler 625 and since this takes a lot of time, I tried adding @numba jit to speed it up. I checked similar question like this, this and this ...
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0answers
59 views

Python & Numba: Accessing structured numpy array elements as fast as possible

I have a large structured numpy array with the following datatype: > my_array.dtype = dtype([('field1', '<i4', (32,)), ('field2', '<i4', (425,)), ('field3', '<i4', (8021,))]) ...
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0answers
35 views

TypeError: 'float' object is not subscriptable during scipy minimize

I'm trying to estimate a maximum likelihood model in python. I set up both the likelihood function and the analytic jacobian. When I run scipy minimize, I get a bizarre error (displayed below). This ...
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1answer
73 views

How to convert the python function “any()” to CUDA python compatible code(running on GPU)?

I am wondering how to implement the numpy function any() on GPU (using Numba python). The any() function takes an array and returns True if at least one of the elements of the input evaluates to True. ...
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1answer
82 views

How can i parallelize my for loop code in numba or in some other library of python?

I have code like: import pandas as pd import multiprocessing as mp a = {'a' : [1,2,3,1,2,3], 'b' : [5,6,7,4,6,5], 'c' : ['dog', 'cat', 'tree','slow','fast','hurry']} df = pd.DataFrame(a) def ...