28

It's taking me up to an hour to read a 1-gigabyte NetworkX graph data structure using cPickle (its 1-GB when stored on disk as a binary pickle file).

Note that the file quickly loads into memory. In other words, if I run:

import cPickle as pickle

f = open("bigNetworkXGraph.pickle","rb")
binary_data = f.read() # This part doesn't take long
graph = pickle.loads(binary_data) # This takes ages

How can I speed this last operation up?

Note that I have tried pickling the data both in using both binary protocols (1 and 2), and it doesn't seem to make much difference which protocol I use. Also note that although I am using the "loads" (meaning "load string") function above, it is loading binary data, not ascii-data.

I have 128gb of RAM on the system I'm using, so I'm hoping that somebody will tell me how to increase some read buffer buried in the pickle implementation.

1
  • Do you really mean 128GB of ram? Or 128MB? May 4, 2010 at 15:49

8 Answers 8

13

I had great success in reading a ~750 MB igraph data structure (a binary pickle file) using cPickle itself. This was achieved by simply wrapping up the pickle load call as mentioned here

Example snippet in your case would be something like:

import cPickle as pickle
import gc

f = open("bigNetworkXGraph.pickle", "rb")

# disable garbage collector
gc.disable()

graph = pickle.load(f)

# enable garbage collector again
gc.enable()
f.close()

This definitely isn't the most apt way to do it, however, it reduces the time required drastically.
(For me, it reduced from 843.04s to 41.28s, around 20x)

3
  • why do you need to enable gc again? And would pickle from Python3 with protocol=4 be more efficient?
    – alvas
    Nov 29, 2016 at 1:36
  • 1
    @alvas isn't is a good practice to keep gc enabled by default? Also, I haven't tried protocol=4 from Python3 yet w.r.t the above scenario.
    – Tejas Shah
    Dec 16, 2016 at 13:05
  • @TejasShah did you by chance compare to joblib? I did this with a joblib load and it was the same time with and without toggling the garbage collection.
    – Matthew
    Apr 16, 2019 at 1:00
8

You're probably bound by Python object creation/allocation overhead, not the unpickling itself. If so, there is little you can do to speed this up, except not creating all the objects. Do you need the entire structure at once? If not, you could use lazy population of the data structure (for example: represent parts of the structure by pickled strings, then unpickle them only when they are accessed).

2
  • Alright, I can think of some ways to break up this data to some extent, (putting node attributes in different files), but the edges of the graph object alone take up a lot of memory---and if I have to store these in different files, and re-populate my graph every time I use it, then what's the point of serialization? I might as well just store my graph data in an edge-list.
    – conradlee
    May 4, 2010 at 16:08
  • 3
    I indeed don't think serialization is the best solution for your problem. Pickle was never meant to be scalable for huge data structures. This is more the realm of database-like formats that supporting random-access and on demand loading.
    – laanwj
    May 4, 2010 at 16:38
4

Why don't you try marshaling your data and storing it in RAM using memcached (for example). Yes, it has some limitations but as this points out marshaling is way faster (20 to 30 times) than pickling.

Of course, you should also spend as much time optimizing your data structure in order to minimize the amount and complexity of data you want stored.

2
  • "this" link doesn't exist anymore.
    – Cyzanfar
    Feb 29, 2020 at 19:01
  • Almost 10 years later? No surprise. I guess you'll just have to take my word for it or benchmark it yourself.
    – ktdrv
    Mar 2, 2020 at 18:58
1

This is ridiculous.

I have a huge ~150MB dictionary (collections.Counter actually) that I was reading and writing using cPickle in the binary format.

Writing it took about 3 min.
I stopped reading it in at the 16 min mark, with my RAM completely choked up.

I'm now using marshal, and it takes: write: ~3s
read: ~5s

I poked around a bit, and came across this article.
Guess I've never looked at the pickle source, but it builds an entire VM to reconstruct the dictionary?
There should be a note about performance on very large objects in the documentation IMHO.

1

I'm also trying to speed up the loading/storing of networkx graphs. I'm using the adjacency_graph method to convert the graph to something serialisable, see for instance this code:

from networkx.generators import fast_gnp_random_graph
from networkx.readwrite import json_graph

G = fast_gnp_random_graph(4000, 0.7)

with open('/tmp/graph.pickle', 'wb+') as f:
  data = json_graph.adjacency_data(G)
  pickle.dump(data, f)

with open('/tmp/graph.pickle', 'rb') as f:
  d = pickle.load(f)
  H = json_graph.adjacency_graph(d)

However, this adjacency_graph conversion method is quite slow, so time gained in pickling is probably lost on converting.

So this actually doesn't speed things up, bummer. Running this code gives the following timings:

N=1000

    0.666s ~ generating
    0.790s ~ converting
    0.237s ~ storing
    0.295s ~ loading
    1.152s ~ converting

N=2000

    2.761s ~ generating
    3.282s ~ converting
    1.068s ~ storing
    1.105s ~ loading
    4.941s ~ converting

N=3000

    6.377s ~ generating
    7.644s ~ converting
    2.464s ~ storing
    2.393s ~ loading
    12.219s ~ converting

N=4000

    12.458s ~ generating
    19.025s ~ converting
    8.825s ~ storing
    8.921s ~ loading
    27.601s ~ converting

This exponential growth is probably due to the graph getting exponentially more edges. Here is a test gist, in case you want to try yourself

https://gist.github.com/wires/5918834712a64297d7d1

0

Maybe the best thing you can do is to split the big data into smallest object smaller, let's say, than 50MB, so can be stored in ram, and recombine it.

Afaik there's no way to automatic splitting data via pickle module, so you have to do by yourself.

Anyway, another way (which is quite harder) is to use some NoSQL Database like MongoDB to store your data...

3
  • he has 128GB of RAM, why would he do all the splitting? May 4, 2010 at 15:46
  • No, I mean 128 GB - it's a big machine. I've also got 24 cores to use, so a parallel solution would be nice, although I guess the GIL will not really make this possible.
    – conradlee
    May 4, 2010 at 16:04
  • Wooops! BIG machine :) Sorry for misunderstood! May 5, 2010 at 7:12
0

In general, I've found that if possible, when saving large objects to disk in python, it's much more efficient to use numpy ndarrays or scipy.sparse matrices.

Thus for huge graphs like the one in the example, I could convert the graph to a scipy sparse matrix (networkx has a function that does this, and it's not hard to write one), and then save that sparse matrix in binary format.

-5

why don't you use pickle.load?

f = open('fname', 'rb')
graph = pickle.load(f)
2
  • That probably won't help; the reading part fast enough, and there is enough memory, so unpickling directly from the stream won't gain much.
    – laanwj
    May 4, 2010 at 15:49
  • That's the first thing I tried. I show the more complicated way of loading a pickle file to illustrate that reading the binary data into ram does not seem be be the bottleneck.
    – conradlee
    May 4, 2010 at 16:05

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