# Linked Questions

**0**

votes

**3**answers

3k views

### Is it possible to create a 1million x 1 million matrix using numpy? [duplicate]

Possible Duplicate:
Python Numpy Very Large Matrices
I tried numpy.zeros((100k x 100k)) and it returned "array is too big".
Response to comments:
1) I could create 10k x 10k matrix but not ...

**3**

votes

**1**answer

298 views

### matrix operations with gigantic matrices in python [duplicate]

Does anybody know how to work with gigantic matrices in python? I have to work with adjacency matrices of shape (10^6,10^6) and perform operations including addition, scaling and dot product. Using ...

**0**

votes

**2**answers

198 views

### Which python data type should I use to create a huge 2d array (7Mx7M) with fast random access? [duplicate]

Which python data type should I use to create a huge 2d array (7Mx7M) with fast random access? I want to write each element once and read many times.
Thanks

**7**

votes

**4**answers

7k views

### Is there support for sparse matrices in Python?

Is there support for sparse matrices in python?
Possibly in numpy or in scipy?

**6**

votes

**2**answers

5k views

### Building a huge numpy array using pytables

How can I create a huge numpy array using pytables. I tried this but gives me the "ValueError: array is too big." error:
import numpy as np
import tables as tb
ndim = 60000
h5file = ...

**10**

votes

**3**answers

2k views

### Techniques for working with large Numpy arrays?

There are times when you have to perform many intermediate operations on one, or more, large Numpy arrays. This can quickly result in MemoryErrors. In my research so far, U have found that Pickling ...

**2**

votes

**3**answers

1k views

### The most efficient way to store large symmetric sparse matrices in python

I was working on drafting/testing a technique I devised for solving differential equations for speed and efficiency.
It would require a storing, manipulating, resizing, and (at some point) probably ...

**0**

votes

**2**answers

2k views

### Numpy memory error creating huge matrix

I am using numpy and trying to create a huge matrix.
While doing this, I receive a memory error
Because the matrix is not important, I will just show the way how to easily reproduce the error.
a = ...

**5**

votes

**4**answers

646 views

### Python - get column iterator from a file (without reading the whole file)

My main goal is to calculate median(by columns) from a HUGE matrix of floats. Example:
a = numpy.array(([1,1,3,2,7],[4,5,8,2,3],[1,6,9,3,2]))
numpy.median(a, axis=0)
Out[38]: array([ 1., 5., 8., ...

**1**

vote

**1**answer

2k views

### Write data to GeoTiff using GDAL without creating data array?

Is it possible to write data line by line using gdal's WriteArray, rather than creating and feeding it an entire array?
I've run into a MemoryError when creating an numpy array of size (50539,98357). ...

**1**

vote

**1**answer

2k views

### Python numpy : “Array is too big”

import numpy
from scipy.spatial.distance import pdist
X = numpy.zeros(50000,25)
C = pdist(X, 'euclidian')
I want to find:
And then numpy gives error : Array is too big.
I think problem is about ...

**3**

votes

**5**answers

380 views

### How to create a Numpy array from a large list of list- python

I have a list of list with 1,200 rows and 500,000 columns. How do I convert it into a numpy array?
I've read the solutions on Bypass "Array is too big" python error but they are not ...

**3**

votes

**2**answers

455 views

### Linear regression in NumPy with very large matrices - how to save memory?

So I have these ginormous matrices X and Y. X and Y both have 100 million rows, and X has 10 columns. I'm trying to implement linear regression with these matrices, and I need the quantity ...

**6**

votes

**2**answers

500 views

### Large matrix multiplication in Python - what is the best option?

I have two boolean sparse square matrices of c. 80,000 x 80,000 generated from 12BM of data (and am likely to have orders of magnitude larger matrices when I use GBs of data).
I want to multiply them ...