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Someone might have already solved this problem. I have a need for a Python based UDP interface which returns results from a DB query. The DB is limited to providing only 500 queries per 8 hour period. Here is my logic it seems to sort of work.

But I really have a moving windows of 8 hours which means I can soon query the DB within a few seconds. I am right at the limit basically. Anyone has a clever reuseable code I can use for this?

#!/usr/bin/env python
import SocketServer
import sys,os,httplib,urllib,multiprocessing,time
import syslog
import sqlite3 as lite
syslog.openlog(sys.argv[0],syslog.LOG_PID,syslog.LOG_USER)
count_d=0
stime=int(time.time())

def oprocess(vars):
    global count_d,stime
    dtime=int(time.time())-stime
    score="Unknown"
    if count_d > 500:
        if dtime < 28800:
            syslog.syslog("Exceeded q limit "+str(dtime)+","+str(count))
            return "Unknown"
        else: # Reset the clock
            stime=time.time()
            count_d=0
    data=dbh.do("SELECT...") # Some DB query
    if data != None:
        count_d=count_d+1
        return data

Thanks Vijay

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1  
Why do you need to do the counting? Doesn't whatever imposes the limit do the counting? Just catch the exception of the failed query. –  jordanm May 21 '13 at 19:37

2 Answers 2

You can keep a global list of successful query times in qlist, and then inside oprocess():

def oprocess(vars):
    global qlist
    now = int(time.time())
    #remove queries older than 8 hours
    while qlist:
        if now - qlist[0] > 28800:
            del qlist[0]
        else:
            break 
    if len(qlist) < 500:
        #you are good to go
        #submit your query, then append the time to qlist
        data=dbh.do("SELECT...") # Some DB query
        qlist.append(int(time.time()))
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This solution is similar to Fraggy's solution and will work - only little concern I have is keeping a large qlist/queries in memory. All I kind of care about is the counter/8 hr in a way. I thought about having just one counter and a start_time variable as global variables. Check if counter is < limit and difftime (now-start_time) is < 28800. If not, don't query the DB. If okay, add counter and query DB. When difftime > 28800 reset start_time to current time and counter to 0. Makes sense? –  user1933323 May 21 '13 at 20:33
    
500 ints does not consume a lot of memory. You are just saving the timestamps, not the queries themselves. –  Markku K. May 21 '13 at 21:09

keep all timestamps in a list and filter then on every query. Or rely on the upstream to block you and handle the exception

import time

queries = []
INTERVAL = 8*24*60
MAX_QUERIES = 500


def do_query():
    global queries
    now = time.time()
    # filter query timestamps
    queries = filter(lambda x: now-x < INTERVAL, queries)
    if len(queries) < MAX_QUERIES:
        # do query
        queries.append(now)
    else:
        raise Exception("too man queries")
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