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I've got fairly high loaded project, running on MySQL with around 10M records, getting capped with approx 500 requests per second. The data is pretty unique, and cache hit rate is around 3% only. Every row got about 10 fields, 2 of which indexed. 99% of my queries use the two index fields for requests.

I decided to try a NoSQL, and MongoDB was no brainer. Moving data was pretty easy, with simple custom made script. Database schema remained exactly the same, I replicated the same two indexes fields, which were still accountable for 90% of requests. Then I decided to give it a try and was quite shocked: MongoDB was very, VERY slow answering to the queries. Response rate varied from 5 to 10 requests per second, comparing to 500 with mysql.

Any ideas why is this happening? Is it normal? Should I expect MongoDb to outperform Mysql in this particular case(10M records, lots of unique requests with low cache hit rate)? I'm feeling like I'm missing a point.

UPDATE with some specs

Server I was testing with is quad core xeon with 4GB ram

MySQL Table is(field names renamed):

  CREATE TABLE `table` (
  `recordid` int(10) unsigned NOT NULL AUTO_INCREMENT,
  `var1` varchar(200) DEFAULT NULL,
  `var2` char(32) DEFAULT NULL,
  `var3` bigint(20) unsigned DEFAULT NULL,
  `var4` smallint(5) unsigned DEFAULT NULL,
  `var5` datetime DEFAULT NULL,
  `var6` int(10) unsigned NOT NULL,
  `var7` int(10) unsigned NOT NULL,
  `var8` tinyint(1) DEFAULT NULL,
  PRIMARY KEY (`recordid`),
  UNIQUE KEY `recordid_UNIQUE` (`recordid`),
  KEY `keyvar7` (`var7`),
  KEY `keyvar6` (`var6`)

Typical query is: SELECT var2, var4, var5, var6 from table where var7=xxx and var6=yyy

I hand verified that MongoDB properly replicated the same indexes, by comparing queries using indexed and non-indexed fields.

UPDATE2 MongoDB .getIndexes() reply

  > db.table.getIndexes();
[
    {
        "v" : 1,
        "key" : {
            "_id" : 1
        },
        "ns" : "table.table",
        "name" : "_id_"
    },
    {
        "v" : 1,
        "key" : {
            "var6" : 1
        },
        "ns" : "table.table",
        "name" : "var6_1"
    },
    {
        "v" : 1,
        "key" : {
            "var7" : 1
        },
        "ns" : "table.table",
        "name" : "var7_1"
    }
]
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Could you post example document from your test, whether 99% of queries use two fields or one of two fields, and how much RAM you have on the system (and other OS specs of it might be interesting, such as disk information). Also if you run a query that's typical of your app in mongo shell you can add .explain() to the end to see query plan, that might help. –  Asya Kamsky Jun 13 '12 at 20:56
    
How much RAM on each server, and how does that compare to the size of your table? –  Leopd Jun 13 '12 at 21:02
    
i would be interested to hear about whether you're using indexes any differently. are you looking up docs in mongo using the _id? that would seem to be 1-to-1 with the recordid_UNIQUE index above –  buley Jun 13 '12 at 21:20
    
I just ran this test on my laptop. I got query rate of about 4500-5000/second. Without knowing how your set-up is different (document structure?) it's hard to know why the results are so different. –  Asya Kamsky Jun 14 '12 at 3:00
    
Did you generate 10M records and performed unique requests each query? If I repeat the same query every reuqest, results got cached and query rate also goes sky high. But this is not the case with my real load, as I stated in my post, cache hit rate is around 3% only. –  bbbonthemoon Jun 14 '12 at 7:59
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4 Answers

MongoDB is not a magic query accelerator. Your site won't sustain 10x load just because you switch to mongo.

Judging from your numbers, I suspect that there was resource saturation taking place. MySQL can certainly do a lot more than 500 QPS.

Do you know what was your bottleneck? I'd wager that you have much less RAM than needed, data has to be fetched from disk and disk gets saturated. At this point, no DB tech will help you, unless you get more iron (or delete some data).

As for the poorer performance of mongo, it's hard to tell without the specifics.

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well, my main concern is that Mongo is so much slower. I updated my post with more data. –  bbbonthemoon Jun 13 '12 at 21:41
    
Post data size and index size. In Mongo you can get that from db.collection.stats(). Not sure how to get that in MySQL. By my calculations, it's around 2.5G (minimum) of data alone (not to count field names which also take space in MongoDB). –  Sergio Tulentsev Jun 13 '12 at 21:50
    
storageSize: 2.4GB, totalIndexSize: 0.75GB –  bbbonthemoon Jun 13 '12 at 22:07
    
What about fileSize? –  Sergio Tulentsev Jun 13 '12 at 22:21
    
there is no fileSize available in stats() return, I guess you refer to storageSize. btw, I rerun the test on 8GB RAM server, and it improved MongoDB performance to 300 QPS. Still below MySQL on 4gb ram server. It looks like MongoDB needs to load the whole database into RAM to give some reasonable performance. –  bbbonthemoon Jun 14 '12 at 7:56
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If you are querying on two elements like in your example SELECT var2, var4, var5, var6 from table where var7=xxx and var6=yyy, use a compound index on var7 and var6.

If you have a fixed structure and use the same schema as in a relational database, I'd doubt that you will be able to gain much. But you might be able to make it worse ;-)

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1  
MongoDB will only use one index per query, so a compound index should greatly improve the performance: Indexing Advice and FAQ. There is also an explain command to look at the query plan for a find(). –  Stennie Jun 14 '12 at 10:46
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Well considering that many huge web project are stick with the mysql like Facebook and so on. SO you shouldn't do that as long as the new DB has been tested regarding to your needs. What i soggiest you to do is get the latest backup of your DB and move back to mysql and then adapt the memcached system to your DB, it does handle the big amount of traffic.

But of course you have not specified the type of your project whether its a Web or some application. MongoDB much slower then mysql.
Give us move details and we would be able to help your and give some more info.

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  • do you have all indexes set up correctly? including compound indexes?
  • and are the collections actually being indexed?

    e.g. Collectionname.indexes ; Collectionname.create_indexes

  • can you shard your data or use multiple slaves to spread the load?

  • how much RAM do you have in the system?
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