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I need to store a list of 1 million key-value pairs in python. The key would be a string/integer while the value would be a list of float values. For example:

{"key":36520193,"value":[[36520193,16.946938],[26384600,14.44005],[27261307,12.467529],[16456022,11.316026],[26045102,8.891106],[148432817,8.043456],[36670593,7.111857],[43959215,7.0957513],[50403486,6.95],[18248919,6.8106747],[27563337,6.629243],[18913178,6.573106],[42229958,5.3193846],[17075840,5.266625],[17466726,5.2223654],[47792759,4.9141016],[83647115,4.6122775],[56806472,4.568034],[16752451,4.39949],[69586805,4.3642135],[23207742,3.9822476],[33517555,3.95],[30016733,3.8994896],[38392637,3.8642135],[16165792,3.6820507],[14895431,3.5713203],[48865906,3.45],[20878230,3.45],[17651847,3.3642135],[24484188,3.1820507],[74869104,3.1820507],[15176334,3.1571069],[50255841,3.1571069],[103712319,3.1571069],[20706319,2.9571068],[33542647,2.95],[17636133,2.95],[66690914,2.95],[19812372,2.95],[21178962,2.95],[37705610,2.8642135],[20812260,2.8642135],[25887809,2.8642135],[18815472,2.8642135],[17405810,2.8642135],[46598192,2.8642135],[20592734,2.6642137],[44971871,2.5],[27610701,2.45],[92788698,2.45],[52164826,2.45],[17425930,2.2],[60194002,2.1642137],[122136476,2.0660255],[205325522,2.0],[117521212,1.9820508],[33953887,1.9820508],[22704346,1.9571068],[26176058,1.9071068],[39512661,1.9071068],[43141485,1.8660254],[16401281,1.7],[31495921,1.7],[14599628,1.7],[74596964,1.5],[55821372,1.5],[109073560,1.4142135],[91897348,1.4142135],[25756071,1.25],[25683960,1.25],[17303288,1.25],[42065448,1.25],[72148532,1.2],[19192100,1.2],[85941613,1.2],[77325396,1.2],[18266218,1.2],[114005403,1.2],[16346823,1.2],[43441850,1.2],[60660643,1.2],[41463847,1.2],[33804454,1.2],[20757729,1.2],[18271440,1.2],[51507708,1.2],[104856807,1.2],[24485743,1.2],[16075381,1.2],[68991517,1.2],[96193545,1.2],[63675003,1.2],[70735999,1.2],[25708416,1.2],[80593161,1.2],[42982108,1.2],[120368215,1.2],[24379982,1.2],[14235673,1.2],[20172395,1.2],[161441314,1.2],[37996201,1.2],[35638883,1.2],[46164502,1.2],[74047763,1.2],[19681494,1.2],[95938476,1.2],[20443787,1.2],[87258609,1.2],[34784832,1.2],[30346151,1.2],[40885516,1.2],[197129344,1.2],[14266331,1.2],[15112466,1.2],[26867986,1.2],[82726479,1.2],[23825810,1.2],[14662121,1.2],[32707312,1.2],[17477917,1.2],[123462351,1.2],[5745462,1.2],[16544178,1.2],[23284384,1.2],[45526985,1.2],[23109303,1.2],[26046257,1.2],[53654203,1.2],[133026438,1.2],[25139051,1.2],[65077694,1.2],[17469289,1.2],[15130494,1.2],[148525895,1.2],[15176360,1.2],[44853617,1.2],[9115332,1.2],[16878570,1.2],[132421452,1.2],[6273762,1.2],[124360757,1.2],[21643452,1.2],[9890492,1.2],[16305494,1.2],[18484474,1.2],[22643607,1.2],[60753586,1.2],[9200012,1.2],[30042254,1.2],[8374622,1.2],[15894834,1.2],[18438022,1.2],[78038442,1.2],[22097386,1.2],[21018755,1.2],[20845703,1.2],[164462136,1.2],[19649167,1.2],[24746288,1.2],[27690898,1.2],[42822760,1.2],[160935289,1.2],[178814456,1.2],[53574205,1.2],[41473578,1.2],[82176632,1.2],[82918057,1.2],[102257360,1.2],[17504315,1.2],[18363508,1.2],[50735431,1.2],[80647070,1.2],[40879040,1.2],[17790497,1.2],[191364080,1.2],[14429823,1.2],[22078893,1.2],[121338184,1.2],[113341318,1.2],[48900101,1.2],[38547066,1.2],[20484157,1.2],[16228699,1.2],[21179292,1.2],[15317594,1.2],[55777010,1.2],[15318882,1.2],[182109160,1.2],[45238537,1.2],[19701986,1.2],[32484918,1.2],[18244358,1.2],[18479513,1.2],[19081775,1.2],[21117305,1.2],[19325724,1.2],[136844568,1.2],[32398651,1.2],[20482993,1.2],[14063937,1.2],[91324381,1.2],[20528275,1.2],[14803917,1.2],[16208245,1.2],[17419051,1.2],[31187903,1.2],[54043787,1.2],[167737676,1.2],[24431712,1.2],[24707301,1.2],[24420092,1.2],[15469536,1.2],[26322385,1.2],[77330594,1.2],[82925252,1.2],[28185335,1.0],[24510384,1.0],[24407244,1.0],[41229669,1.0],[16305330,1.0],[26246555,1.0],[28183026,1.0],[49880016,1.0],[104621640,1.0],[36880083,1.0],[19705747,1.0],[22830942,1.0],[21440766,1.0],[54639609,1.0],[49077908,1.0],[29588859,1.0],[23523447,1.0],[20803216,1.0],[20221159,1.0],[1416611,1.0],[3744541,1.0],[21271656,1.0],[68956490,1.0],[96851347,1.0],[39479083,1.0],[27778893,1.0],[18785448,1.0],[39010580,1.0],[65796371,1.0],[124631720,1.0],[27039286,1.0],[18208354,1.0],[51080209,1.0],[37388787,1.0],[18462037,1.0],[31335156,1.0],[21346320,1.0],[23911410,1.0],[73134924,1.0],[807095,1.0],[44465330,1.0],[16732482,1.0],[37344334,1.0],[734753,1.0],[23006794,1.0],[33549858,1.0],[102693093,1.0],[51219631,1.0],[20695699,1.0],[4081171,1.0],[27268078,1.0],[80116664,1.0],[32959253,1.0],[85772748,1.0],[27109019,1.0],[28706024,1.0],[59701568,1.0],[23559586,1.0],[15693493,1.0],[56908710,1.0],[6541402,1.0],[15855538,1.0],[126169000,1.0],[24044209,1.0],[80700514,1.0],[21500333,1.0],[18431316,1.0],[44496963,1.0],[68475722,1.0],[15202472,1.0],[19329393,1.0],[39706174,1.0],[22464533,1.0],[81945172,1.0],[22101236,1.0],[19140282,1.0],[31206614,1.0],[15429857,1.0],[27711339,1.0],[14939981,1.0],[62591681,1.0],[52551600,1.0],[40359919,1.0],[27828234,1.0],[21414413,1.0],[156132825,1.0],[21586867,1.0],[23456995,1.0],[25434201,1.0],[30107143,1.0],[34441838,1.0],[37908934,1.0],[47010618,1.0],[139903189,1.0],[17833574,1.0],[758608,1.0],[15823236,1.0],[37006875,1.0],[10302152,1.0],[40416155,1.0],[21813730,1.0],[18785600,1.0],[30715906,1.0],[428333,1.0],[22059385,1.0],[15155074,1.0],[11061902,1.0],[1177521,1.0],[20449160,1.0],[197117628,1.0],[42423692,1.0],[24963961,1.0],[19637934,1.0],[35960001,1.0],[43269420,1.0],[43283406,1.0],[20269113,1.0],[59409413,1.0],[25548759,1.0],[23779324,1.0],[21449197,1.0],[14327149,1.0],[15429316,1.0],[16159485,1.0],[18785846,1.0],[67651295,1.0],[28389815,1.0],[19780922,1.0],[23841181,1.0],[78391198,1.0],[60765383,1.0],[37689397,1.0],[6447142,1.0],[31332871,1.0],[30364057,1.0],[14120151,1.0],[16303064,1.0],[23023236,1.0],[103610974,1.0],[108382988,1.0],[19791811,1.0],[17121755,1.0],[46346811,1.0],[45618045,1.0],[25587721,1.0],[25362775,1.0],[20710218,1.0],[20223138,1.0],[21035409,1.0],[101894425,1.0],[38314814,1.0],[24582667,1.0],[21181713,1.0],[15901190,1.0],[18197299,1.0],[38802447,1.0],[19668592,1.0],[14515734,1.0],[16870853,1.0],[16488614,1.0],[95955871,1.0],[14780915,1.0],[21188490,1.0],[24243022,1.0],[27150723,1.0],[29425265,1.0],[36370563,1.0],[36528126,1.0],[43789332,1.0],[82773533,1.0],[19726043,1.0],[20888549,1.0],[30271564,1.0],[14874125,1.0],[121436823,1.0],[56405314,1.0],[46954727,1.0],[25675498,1.0],[12803352,1.0],[23888081,1.0],[18498684,1.0],[38536306,1.0],[22851295,1.0],[20140595,1.0],[22311506,1.0],[31121729,1.0],[53717630,1.0],[100101137,1.0],[24753205,1.0],[24523660,1.0],[19544133,1.0],[20823773,1.0],[22677790,1.0],[15227791,1.0],[57525419,1.0],[28562317,1.0],[9629222,1.0],[24047612,1.0],[30508215,1.0],[59084417,1.0],[71088774,1.0],[142157505,1.0],[15284851,1.0],[17164788,1.0],[17885166,1.0],[18420140,1.0],[19695929,1.0],[20572844,1.0],[23479429,1.0],[26642006,1.0],[43469093,1.0],[50835878,1.0],[172049453,1.0],[20604508,1.0],[21681591,1.0],[20052907,1.0],[21271938,1.0],[17842661,1.0],[6365162,1.0],[18130749,1.0],[19249062,1.0],[24193336,1.0],[25913173,1.0],[28647246,1.0],[26072121,1.0],[14522546,1.0],[16409683,1.0],[18785475,1.0],[28969818,1.0],[52757166,1.0],[7120172,1.0],[112237392,1.0],[116779546,1.0],[57107167,1.0],[26347170,1.0],[26565946,1.0],[44409004,1.0],[21105244,1.0],[14230524,1.0],[44711134,1.0],[101753075,1.0],[783214,1.0],[22885110,1.0],[39367703,1.0],[23042739,1.0],[682903,1.0],[38082423,1.0],[16194263,1.0],[2425151,1.0],[52544275,1.0],[21380763,1.0],[18948541,1.0],[34954261,1.0],[34848331,1.0],[29245563,1.0],[19499974,1.0],[16089776,1.0],[77040291,1.0],[18197476,1.0],[1704551,1.0],[15002838,1.0],[17428652,1.0],[20702626,1.0],[29049111,1.0],[34004383,1.0],[34900333,1.0],[48156959,1.0],[50906836,1.0],[15742480,1.0],[41073372,1.0],[37338814,1.0],[1344951,1.0],[8320242,1.0],[14719153,1.0],[20822636,1.0],[168841922,1.0],[19877186,1.0],[14681605,1.0],[15033883,1.0],[23121582,1.0],[23670204,1.0],[41466869,1.0],[18753325,1.0],[21358050,1.0],[78132538,1.0],[132386271,1.0],[86194654,1.0],[17225211,1.0],[107179714,1.0],[18785430,1.0],[19408059,1.0],[19671129,1.0],[24347716,1.0],[24444592,1.0],[25873045,1.0],[7871252,1.0],[14138300,1.0],[16873300,1.0],[14546496,1.0],[165964253,1.0],[15529287,1.0],[95956928,1.0],[19404587,1.0],[21506437,1.0],[22832029,1.0],[19542638,1.0],[30827536,1.0],[5748622,1.0],[22757990,1.0],[41259253,1.0],[23738945,1.0],[19030602,1.0],[21410102,1.0],[28206360,1.0],[136411179,1.0],[17499805,1.0],[26107245,1.0],[127311408,1.0],[77023233,1.0],[20448733,1.0],[20683840,1.0],[22482597,1.0],[15485441,1.0],[28220280,1.0],[55351351,1.0],[70942325,1.0],[9763482,1.0],[15732001,1.0],[27750488,1.0],[18286352,1.0],[122216533,1.0],[19562228,1.0],[5380672,1.0],[22293700,1.0],[59974874,1.0],[44455025,1.0],[90420314,1.0],[22657153,1.0],[16660662,1.0],[14583400,1.0],[16689545,1.0],[94242867,1.0],[44527648,1.0],[40366319,1.0],[33616007,1.0],[23438958,1.0],[15317676,1.0],[14075928,1.0],[1978331,1.0],[33347901,1.0],[16570090,1.0],[32347966,1.0],[26671992,1.0],[101907019,1.0],[24986014,1.0],[23235056,1.0],[40001164,1.0],[21891032,1.0],[18139329,1.0],[9648652,1.0],[16105942,1.0],[3004231,1.0],[20762929,1.0],[28061932,1.0],[39513172,1.0],[15012305,1.0],[18349404,1.0],[22196210,1.0],[110509537,1.0],[20318494,1.0],[21816984,1.0],[22456686,1.0],[62290422,1.0],[93472506,0.8660254],[52305889,0.70710677],[67337055,0.70710677],[122768292,0.5],[35060854,0.5],[43289205,0.5],[87271142,0.5],[28096898,0.5],[79297090,0.5],[24016107,0.5],[48736472,0.5],[109982897,0.5],[98367357,0.5],[21816847,0.5],[73129588,0.5],[23807734,0.5],[76724998,0.5],[63153228,0.5],[21628966,0.5],[14465428,0.5],[42609851,0.5],[30213342,0.5],[17021966,0.5],[96616361,0.5],[97546740,0.5],[67613930,0.5],[21234391,0.5],[87245558,0.5],[36841912,0.5]]}

I would be performing lookups on this data structure. What would be the most appropriate data structure to achieve my purpose? I have heard recommendations about Redis. Would it be worth looking into it rather than the traditional python data structure? If not, please suggest other mechanisms.

Edit

The 'value' field is a list of lists. Most cases, the list may be upto 1000 lists consisting of a size-2 list.

share|improve this question
2  
1M pairs is a decent amount, as long as your posting list (ie. the floats) is reasonably small. Have you tried to compute how much memory you would require to store it in memory as a regular dict? –  Savino Sguera Jan 19 '12 at 9:07
3  
"performing lookups" is vague. In what context? Have you tried just using a dict? What requirements do you have that aren't satisfied? If you haven't tried, what's preventing you from trying? –  Karl Knechtel Jan 19 '12 at 9:07
    
@savinos No, I haven't really calculated but the used memory does increase exponentially. Would Redis be the best solution? I want an efficient lookup data structure. –  Dexter Jan 19 '12 at 9:08
3  
Why not just lose the 'key' and 'value' and store the entry as {36520193: [[36520193.....} in a standard dictionary? –  Bogdan Jan 19 '12 at 9:10
2  
I see no problem with a dict with 1M keys. –  Bogdan Jan 19 '12 at 9:12

3 Answers 3

up vote 6 down vote accepted

Redis would be appropriate if...

  • You want to share the queue between multiple processes or instances of your app.
  • You want the data to be persistent, so if your app goes down it can pick up where it left off.
  • You want a super fast, easy solution.
  • Memory usage is a concern.

I'm not sure on the last one, but I'm guessing using dict or some other collection type in Python is likely to have a higher memory footprint than storing all your key/values in a single Redis hash.

update

I tested the memory usage by storing the example array 1 million times both in memory and in redis. Storing all the values in a Redis hash requires serializing the array. I chose json serialization, but this could have easily been a more efficient binary format, which redis supports.

  • 1 million copies of the array provided in a Ruby Hash (should be comparable to Python's dict) indexed using an integer key similar to the one shown. Memory usage increased by ~350mb (similar to the python results by @gnibbler).
  • 1 million copies of the array, serialized to a JSON string in a redis hash indexed using the same numbers. Memory usage increased by ~250mb.

Both were very fast, with the Redis being slightly faster when I measured 10,000 random lookups vs random lookups against the native collection. I know it's not Python, but this should be at least illustrative.

Also, to answer the OPs other concern, Redis has no trouble handing very large string values. It's max string size is currently 512mb

share|improve this answer
    
Thanks, I am just worried about the size of the 'value' field. In some cases the value field may contain a list of 1000 2-value lists. –  Dexter Jan 19 '12 at 9:18
1  
@mcenley For a compact representation of an array of floats, look into array, or into NumPy if you need to do some heavy computations on the array. –  Janne Karila Jan 19 '12 at 9:25
    
@JanneKarila Just in case, I don't think the 'value' field is an array of floats. –  Dexter Jan 19 '12 at 9:32
    
Carl, Thanks. I presume you are telling me that a Python dictionary is as good as an array. Did you get a lower memory size due to the same key-value pair being added multiple times? Apologies, but I'm just thinking loud here. –  Dexter Jan 19 '12 at 11:01
    
@mcenley I was storing Ruby Arrays within a Ruby Hash, which should be similar to a Python dict containing tuples with your values. The array value stored didn't vary, but the key did. I used the same keys and values for redis. I don't think the repeating values saved any memory. Redis wouldn't have compressed the 1mil key hash like it does with small hashes. –  Carl Zulauf Jan 19 '12 at 11:15

Really shouldn't be a problem

>>> d=dict((str(n), range(20)) for n in range(1000000))

took ~350MB to create. Your keys/values may be much larger of course

share|improve this answer
1  
my value 'field' may be as long as a list of 1000 2-float value lists. [[36520193,16.946938], ..... 1000 such lists] –  Dexter Jan 19 '12 at 9:20
    
If memory is more of an issue than acces time you could use numpy objects to store the arrays in files. You could just use numpy.save / numpy.load on the arrays which for a 1000*2 should be very fast and use the dictionary keys as the file names. –  Bogdan Jan 19 '12 at 9:28
    
You may even find a middle ground where you keep like the last x accesed list in memory and the rest in files. –  Bogdan Jan 19 '12 at 9:29
    
@Bogdan The whole point of using a dictionary was to avoid a disk read and a web api call. While the solution is plausible, I am looking for something better if exists. –  Dexter Jan 19 '12 at 9:31
1  
Well you would need to hold up 1.000.000 * 1.000 * 2 * 4 bytes even in a flatten list with all your elements. That's 8gb right there, with some form of lookup that has to increase. I don't really know any good options for that. I'll still favourite this tread because I'm curious what your solution will be. –  Bogdan Jan 19 '12 at 9:36

I looked at storage in NumPy and also in redis.

First, NumPy:

>>> import numpy as NP
>>> K = NP.random.randint(1000, 9999, 1e6)
>>> V = 5 * NP.random.rand(2e6).reshape(-1, 2)

>>> kv = K.nbytes + V.nbytes
>>> '{:15,d}'.format(kv)
>>> '      2,400,000'     # 2.4 MB 

Now redis:

I represented the values as strings, which should be very efficient in redis.

>>> from redis import Redis   # using the python client for redis

>>> # w/ a server already running:
>>> r0 = Redis(db=0)

>>> for i in range(K.shape[0]) :
        v = ' '.join(NP.array(V[i], dtype=str).tolist())
        r0.set(K[i], v)

>>> # save db to disk asynchronously, then shut down the server
>>> r0.shutdown()

The redis database (.rdb file) is 2.9 MB

Of course, this is not an "apples-to-apples" comparison because i chose what i believed to be the most natural model to represent the OP's data in each library--i.e., redis (strings) than for NumPy (2-element NumPy array).

share|improve this answer
    
So, what do you recommend? Python dict, NumPy or Redis? –  Dexter Jan 19 '12 at 11:16
1  
well, i often use both for the same project--redis provides durable persistence across sessions (it's possible to persist a pure NumPy array by serializing it, but the file, '*.npy' is massive; and NumPy provides excellent compact structures and an excellent API for computation. You can obviously do that, or chose one, in which case the choice probably distills to how much durability you need (if hi, go w/ redis). –  doug Jan 19 '12 at 11:26

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