Sorry for cross posting.The following question is also posted on Elastic Search's google group.
In short I am trying to find out why I am not able to get optimal performance while doing searches on a ES index which contains about 1.5 millon records.
Currently I am able to get about 500-1000 searches in 2 seconds. I would think that this should be orders of magnitudes faster. Also currently I am not using thrift.
Here is how I am checking the performance.
Using 0.19.1 version of pyes (tried both stable and dev version from github) Using 0.13.8 version of requests
conn = ES(['localhost:9201'],timeout=20,bulk_size=1000) loop_start = time.clock() q1 = TermQuery("tax_name","cellvibrio") for x in xrange(1000000): if x % 1000 == 0 and x > 0: loop_check_point = time.clock() print 'took %s secs to search %d records' % (loop_check_point-loop_start,x) results = conn.search(query=q1) if results: for r in results: pass # print len(results) else: pass
Appreciate any help that you can give to help me scaleup the searches.