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I am waiting for another developer to finish a piece of code that will return an np array of shape (100,2000) with values of either -1,0, or 1.

In the meantime, I want to randomly create a array of the same characteristics so I can get a head-start on my development and testing. The thing is that I want this randomly created array to be the same each time, so that I'm not testing against an array that keeps changing its value each time I re-run my process.

I can create my array like this, but is there a way to create it so that it's the same each time. I can pickle the object and unpickle it, but wondering if there's another way.

r=np.random.randint(3, size=(100,2000))-1

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2 Answers

up vote 28 down vote accepted

Simply seed the random number generator with a fixed value, e.g.

numpy.random.seed(42)

This way, you'll always get the same random number sequence.

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13  
Or, if you have access to a time machine, you can go back to the same moment over and over again. –  nightcracker Apr 29 '11 at 19:15
11  
Someone snuck in the numpy.random.seed() function when I wasn't paying attention. :-) I intentionally left it out of the original module. I recommend that people use their own instances of RandomState and passing those objects around. –  Robert Kern Apr 29 '11 at 21:01
1  
Robert is a major contributor to numpy. I think we should give his opinion some weight. –  deprecated May 1 '11 at 0:27
6  
@deprecated: I'm thankful for Robert's work, but his work isn't a substitute for giving a rationale for the recommendation. Furthermore, if the use of numpy.random.seed() is discouraged, this should be mentioned in the documentation. Apparently, other contributors to NumPy don't share Robert's opinion. No offense intended at all, I'm just curious. –  Sven Marnach May 1 '11 at 11:11
1  
This is the same as using random.seed vs. using a random.Random object in the Python standard library. If you use random.seed or numpy.random.seed, you are seeding all random instances, both in your code and in any code that you are calling or any code that is run in the same session as yours. If those things depend on those things being actually random, then you start to run into problems. If you deploy code that sets the random seed, you can introduce a security vulnerability. –  asmeurer Mar 24 at 18:33
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Create your own instance of numpy.random.RandomState() with your chosen seed. Do not use numpy.random.seed() except to work around inflexible libraries that do not let you pass around your own RandomState instance.

[~]
|1> from numpy.random import RandomState

[~]
|2> prng = RandomState(1234567890)

[~]
|3> prng.randint(-1, 2, size=10)
array([ 1,  1, -1,  0,  0, -1,  1,  0, -1, -1])

[~]
|4> prng2 = RandomState(1234567890)

[~]
|5> prng2.randint(-1, 2, size=10)
array([ 1,  1, -1,  0,  0, -1,  1,  0, -1, -1])
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4  
Do you have any rationale for your recommendation? What's wrong with numpy.random.seed()? I know it's not thread-safe, but it's really convenient if you don't need thread-safety. –  Sven Marnach Apr 30 '11 at 19:54
15  
It's mostly to form good habits. You may not need independent streams now, but Sven-6-months-from-now might. If you write your libraries to use the methods directly from numpy.random, you cannot make independent streams later. It's also easier to write libraries with the intention of having controlled PRNG streams. There are always multiple ways to enter your library, and each of them should have a way to control the seed. Passing around PRNG objects is a cleaner way of doing that than relying on numpy.random.seed(). Unfortunately, this comment box is too short to contain more examples.:-) –  Robert Kern May 2 '11 at 19:03
    
Thanks for the reply. You are raising good points, and thinking about it a bit, I agree that this is cleaner. I still think for the OP's testing purposes numpy.random.seed() should be fine, but I'll edit numpy.random.seed() out of my own library code :) –  Sven Marnach May 2 '11 at 21:28
3  
Another way of describing Robert's rationale: using numpy.random.seed uses a global variable to keep the PRNG state, and the same standard reasons that global variables are bad apply here. –  Robie Basak Mar 1 '12 at 11:19
5  
If you want the PRNGs to be independent, do not seed them with anything. Just use numpy.random.RandomState() with no arguments. This will seed the state with unique values drawn from your operating system facilities for such things (/dev/urandom on UNIX machines and the Windows equivalent there). If numpy.random.RandomState(1234567890) is not working for you, please show exactly what you typed and exactly the error message that you got. –  Robert Kern Mar 3 '12 at 12:57
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