48

The following imports NumPy and sets the seed.

import numpy as np
np.random.seed(42)

However, I'm not interested in setting the seed but more in reading it. random.get_state() does not seem to contain the seed. The documentation doesn't show an obvious answer.

How do I retrieve the current seed used by numpy.random, assuming I did not set it manually?

I want to use the current seed to carry over for the next iteration of a process.

  • 1
    Could you explain what you mean by "use the current seed to carry over for the next iteration of a process"? Is there a reason why you can't simply use a combination of np.random.get_state and np.random.set_state, or else pass around an instance of np.random.RandomState to keep track of the internal state of the RNG? – ali_m Aug 23 '15 at 23:17
  • @ali_m If I fixed the seed, I know what seed to use to reproduce the result. However, if I haven't fixed the seed, how can I see what seed is used? – Mast Aug 23 '15 at 23:40
  • 1
    why did the answer to your question say The short answer is that you simply can't (at least not in the general case). however you accepted the answer. Did he manage to answer your question or not? I am confused. – Charlie Parker Jul 2 '16 at 20:38
  • @CharlieParker I accepted the answer lacking a better alternative. If you have an answer which says it can and how to do it, go ahead and post it. Acceptance marks can be moved. – Mast Jul 3 '16 at 9:13
63

The short answer is that you simply can't (at least not in general).

The Mersenne Twister RNG used by numpy has 219937-1 possible internal states, whereas a single 64 bit integer has only 264 possible values. It's therefore impossible to map every RNG state to a unique integer seed.

You can get and set the internal state of the RNG directly using np.random.get_state and np.random.set_state. The output of get_state is a tuple whose second element is a (624,) array of 32 bit integers. This array has more than enough bits to represent every possible internal state of the RNG (2624 * 32 > 219937-1).

The tuple returned by get_state can be used much like a seed in order to create reproducible sequences of random numbers. For example:

import numpy as np

# randomly initialize the RNG from some platform-dependent source of entropy
np.random.seed(None)

# get the initial state of the RNG
st0 = np.random.get_state()

# draw some random numbers
print(np.random.randint(0, 100, 10))
# [ 8 76 76 33 77 26  3  1 68 21]

# set the state back to what it was originally
np.random.set_state(st0)

# draw again
print(np.random.randint(0, 100, 10))
# [ 8 76 76 33 77 26  3  1 68 21]
  • 9
    why are you saying that you can't The short answer is that you simply can't (at least not in the general case). it seems to me that u can from what I read on your answer. I'm confused. – Charlie Parker Jul 2 '16 at 20:37
  • 1
    I understand that the mapping doesn't work. But, if I use the giant tuple returned by numpy I'm all good right? I guess when you said "you can't" I'm not actually sure what you are referring too with respect to the original question and how that mapping thing has anything to do, does that make sense? – Charlie Parker Jul 2 '16 at 21:46
  • 2
    I don't know if anywhere there is a rigorous definition what seed needs to be in any context. If the tuple or any other structure returns you to the same randomness state that you desired, isn't that then a seed? I didn't know seed had to be an integer. But your answer seems to work, or is there a caveat except that integer representation that you mentioned? – Charlie Parker Jul 2 '16 at 22:34
  • 9
    Look, I'm not especially interested in debating the definition of "seed". As long as you're happy to call the output of get_state a "seed" then the code shown in my answer will work for you. I interpreted the OP's question as "what function does the inverse of np.random.seed?", and this is impossible for the reasons I discussed above. – ali_m Jul 2 '16 at 22:48
  • 4
    I wasn't debating, I'm not interesting in debating. I was genuinely trying to make sure I understood your answer and that there wasn't a weird unexpected caveat later. As far as I can tell it works and your answer makes more sense to me, which is all good (hence my upvote ;) ). Thanks :) – Charlie Parker Jul 2 '16 at 22:50
12

This contribution is intended to serve as a clarification to the right answer from ali_m, and as an important correction to the answer from Dong Justin.

These are my findings:

  1. After setting the random seed using np.random.seed(X) you can find it again using np.random.get_state()[1][0].
  2. It will, however, be of little use to you.

The output from the following code sections will show you why both statements are correct.


Statement 1 - you can find the random seed using np.random.get_state()[1][0].

If you set the random seed using np.random.seed(123), you can retrieve the random state as a tuple using state = np.random.get_state(). Below is a closer look at state (I'm using the Variable explorer in Spyder). I'm using a screenshot since using print(state) will flood your console because of the size of the array in the second element of the tuple.

enter image description here

You can easily see 123 as the first number in the array contained in the second element. And using seed = np.random.get_state()[1][0] will give you 123. Perfect? Not quite, because:

Statement 2 - It will, however, be of little use to you:

It may not seem so at first though, because you could use np.random.seed(123), retrieve the same number with seed = np.random.get_state()[1][0], reset the seed with np.random.seed(444), and then (seemingly) set it back to the 123 scenario with np.random.seed(seed). But then you'd already know what your random seed was before, so you wouldn't need to do it that way. The next code section will also show that you can not take the first number of any random state using np.random.get_state()[1][0] and expect to recreate that exact scenario. Note that you'll most likely have to shut down and restart your kernel completely (or call np.random.seed(None)) in order to be able to see this.

The following snippet uses np.random.randint() to generate 5 random integers between -10 and 10, as well as storing some info about the process:

Snippet 1

# 1. Imports
import pandas as pd
import numpy as np

# 2. set random seed
#seedSet = None
seedSet = 123
np.random.seed(seedSet)

# 3. describe random state
state = np.random.get_state()
state5 = np.random.get_state()[1][:5]
seedState = np.random.get_state()[1][0]

# 4. generate random numbers
random = np.random.randint(-10, 10, size = 5)

# 5. organize and present findings
df = pd.DataFrame.from_dict({'seedSet':seedSet, 'seedState':seedState, 'state':state, 'random':random})
print(df)

Notice that the column named seedState is the same as the first number under state. I could have printed it as a stand-alone number, but I wanted to keep it all in the same place. Also notice that, seedSet = 123, and np.random.seed(seedSet) so far have been commented out. And because no random seed has been set, your numbers will differ from mine. But that is not what is important here, but rather the internal consisteny of your results:

Output 1:

   random seedSet   seedState       state
0       2    None  1558056443  1558056443
1      -1    None  1558056443  1808451632
2       4    None  1558056443   730968006
3      -4    None  1558056443  3568749506
4      -6    None  1558056443  3809593045

In this particular case seed = np.random.get_state()[1][0] equals 1558056443. And following the logic from Dong Justins answer (as well as my own answer prior to this edit), you could set the random seed with np.random.seed(1558056443) and obtain the same random state. The next snippet will show that you can not:

Snippet 2

# 1. Imports
import pandas as pd
import numpy as np

# 2. set random seed
#seedSet = None
seedSet = 1558056443
np.random.seed(seedSet)

# 3. describe random state
#state = np.random.get_state()
state = np.random.get_state()[1][:5]
seedState = np.random.get_state()[1][0]

# 4. generate random numbers
random = np.random.randint(-10, 10, size = 5)

# 5. organize and present findings
df = pd.DataFrame.from_dict({'seedSet':seedSet, 'seedState':seedState, 'state':state, 'random':random})
print(df)

Output 2:

   random     seedSet   seedState       state
0       8  1558056443  1558056443  1558056443
1       3  1558056443  1558056443  1391218083
2       7  1558056443  1558056443  2754892524
3      -8  1558056443  1558056443  1971852777
4       4  1558056443  1558056443  2881604748

See the difference? np.random.get_state()[1][0] is identical for Output 1 and Output 2, but the rest of the output is not (most importantly the random numbers are not the same). So, as ali_m already has clearly stated:

It's therefore impossible to map every RNG state to a unique integer seed.

1

Check the first element of the array returned by np.random.get_state(), it seems exactly the random seed to me.

  • Yes, while it's not explicit, that's most probably how the answer already provided manages to work as it does. – Mast Mar 1 '18 at 19:12

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