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What would be faster ? Query mysql to see if the piece of information i need is there, OR load a python dictionary with all the information then just check if the id is there

If python is faster, then whats the best what to check if the id exists?

Im using python 2.4.3

Im searching for data which is tagged to a square on a board, im searching for x&y. Theres only one entry per square, the information wont change and it needs be recalled several times a second.

Thankyou !


I worked out it was python. I ran the code bellow, and mysql did it in 0.0003 of a second, but python did it in 0.000006 of a second and mysql had far far less to search and the test was run how the code would be running in real life. Which one had less overhead in terns of CPU and RAM i will never know but if speed is anything to go by python did much better.

And thankyou for your answers !

def speedtest():
 global search
 global data
 qb = time.time()
 search.execute("SELECT * FROM `nogo` where `1`='11' AND `2`='13&3'")
 qa = search.fetchall()
 print qa[0]
 qc =  time.time()
 print "mysql"
 print qb
 print qc
 print qc - qb

 data = {}
 for qa in range(15):
  data[qa] = {}
  for qb in range(300):
   data[qa][str(qb)] = 'nogo'
 qw = 5
 qe = '50'
 qb = time.time()
 print data[qw][qe]
 qc =  time.time()
 print "dictionary"
 print qb
 print qc
 print qc - qb
share|improve this question
Note: Python 2.4 is really old (5 years). Among many other drawbacks, this means your version lacks five years worth of optimizations. –  delnan Oct 10 '10 at 15:52

4 Answers 4

up vote 3 down vote accepted

Generally speaking, if you want information from a database, ask the database for what you need. MySQL (and other database engines) are designed to retrieve data as efficiently as possible.

Trying to write your own procedures for retrieving data is trying to outsmart the talented people who have already imbued MySQL with so much data processing power.

This isn't to say it's never appropriate to load data into Python, but you should be sure that a database query isn't the right way to go first.

share|improve this answer
Im not try to outsmart the clever people who make MySQL, i know its been perfected. But im wondering if the time it takes to pass information to mysql and pass it back and by the way mysql works because of what it was built for. Would a dictionary work with less overhead because im not trying to search,compare and index 3,000 records. –  kjones1876 Oct 10 '10 at 15:18
Presumably you're leaning toward a dictionary because you don't need ALL the data in a particular table, and you're thinking that transferring what you need to Python and building a lookup table will be fast. But so would creating an INDEX on just the data you need in MySQL. –  VoteyDisciple Oct 10 '10 at 16:03
Definitely don't transfer data back and forth from MySQL that you don't need. Select only the fields you want matching the criteria you care about. –  VoteyDisciple Oct 10 '10 at 16:03

Python ought to be much faster, but this largely depends on your specific scenario.


You may want to check out Bloom filters as well.

share|improve this answer
has_key is ancient (discouraged since forever in Python 2, removed in Python 3). Use 'foobar' in my_dict! –  delnan Oct 10 '10 at 15:48
Hardly ancient just because it is removed in Python 3. It doesn't give me any DeprecationWarning in 2.6 and the syntax makes the intent much clearer in my opinion. –  Deniz Dogan Oct 11 '10 at 14:33
docs.python.org/library/stdtypes.html#dict.has_key It is definitely deprecated. –  DasIch Oct 11 '10 at 16:47
I know it says so in the docs (for 2.7), but it's hardly ancient. In fact, in the Python 2.4 documentation says "To check whether a single key is in the dictionary, use the has_key() method of the dictionary." –  Deniz Dogan Oct 12 '10 at 13:54

In general I think python is faster but: it depends on 1) how big is the table you want to load (if its too big it will not be efficient with python), and 2) how many function calls you are about to execute (so sometimes it is better to load the table to a dict and execute all your queries within one function).

share|improve this answer

I can't speak for how fast MySQL would be (I lack the knowhow to benchmark it equitably), but Python dict have pretty much optimal performance too and don't require any IO (as opposed to database queries). Assuming (x_pos, y_pos) tuples as keys and a 55 x 55 field (you mentioned 3000 records, 55^2 is roughly 3000).

>>> the_dict = { (x, y) : None for x in range(55) for y in range (55) }
>>> len(the_dict)
>>> import random
>>> xs = [random.randrange(0,110) for _ in range(55)]
>>> ys = [random.randrange(0,110) for _ in range(55)]
>>> import timeit
>>> total_secs = timeit.timeit("for x,y in zip(xs, ys): (x,y) in the_dict",
    setup="from __main__ import xs, ys, the_dict", number=100000)
>>> each_secs = total_secs / 100000
>>> each_secs
>>> each_usecs = 1000000 * each_secs
>>> each_usecs
>>> usecs_per_lookup = each_usecs / (55*55)
>>> usecs_per_lookup

0.004 microseconds(!) per lookup - good luck beating that, DBMS of choice ;) But since you use 2.4, YMMV slightly. Admittedly, tuples of ints hash make very efficient keys (integers (that fit into the hash datatype) hash to themselves, tuples just hash and xor their members). Also, this doesn't say anything about how fast loading the data would be (although you can use the pickle module for efficient serialization). But your question reads like you load the data once and then process it a million times.

share|improve this answer
Dang, (way) too late! –  delnan Oct 10 '10 at 16:32

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