Re: :How to speed up of Map/Reduce job?
Most of the Hadoop uses includes processing of large data. But in real time applications , the data provided by user will be relatively small ,in which its not advised to use Hadoop On Tue, Feb 1, 2011 at 10:01 PM, Black, Michael (IS) wrote: > Try this rather small C++ program...it will more than likley be a LOT > faster than anything you could do in hadoop. Hadoop is not the hammer for > every nail. Too many people think that any "cluster" solution will > automagically scale their problem...tain't true. > > I'd appreciate hearing your results with this. > > #include > #include > #include > > using namespace std; > > int main(int argc, char *argv[]) > { >if (argc < 2) { >cerr << "Usage: " << argv[0] << " [filename]" << endl; >return -1; >} >ifstream in(argv[1]); >if (!in) { >perror(argv[1]); >return -1; >} >string str; >in >> str; >int n=0; >while(!in.eof()) { >++n; >//cout << str << endl; >in >> str; >} >in.close(); >cout << n << " words" << endl; >return 0; > } > > Michael D. Black > Senior Scientist > NG Information Systems > Advanced Analytics Directorate > > > > > From: Igor Bubkin [igb...@gmail.com] > Sent: Tuesday, February 01, 2011 2:19 AM > To: common-iss...@hadoop.apache.org > Cc: common-user@hadoop.apache.org > Subject: EXTERNAL:How to speed up of Map/Reduce job? > > Hello everybody > > I have a problem. I installed Hadoop on 2-nodes cluster and run Wordcount > example. It takes about 20 sec for processing of 1,5MB text file. We want > to > use Map/Reduce in real time (interactive: by user's requests). User can't > wait for his request 20 sec. This is too long. Is it possible to reduce > time > of Map/Reduce job? Or may be I misunderstand something? > > BR, > Igor Babkin, Mifors.com
RE::How to speed up of Map/Reduce job?
Try this rather small C++ program...it will more than likley be a LOT faster than anything you could do in hadoop. Hadoop is not the hammer for every nail. Too many people think that any "cluster" solution will automagically scale their problem...tain't true. I'd appreciate hearing your results with this. #include #include #include using namespace std; int main(int argc, char *argv[]) { if (argc < 2) { cerr << "Usage: " << argv[0] << " [filename]" << endl; return -1; } ifstream in(argv[1]); if (!in) { perror(argv[1]); return -1; } string str; in >> str; int n=0; while(!in.eof()) { ++n; //cout << str << endl; in >> str; } in.close(); cout << n << " words" << endl; return 0; } Michael D. Black Senior Scientist NG Information Systems Advanced Analytics Directorate From: Igor Bubkin [igb...@gmail.com] Sent: Tuesday, February 01, 2011 2:19 AM To: common-iss...@hadoop.apache.org Cc: common-user@hadoop.apache.org Subject: EXTERNAL:How to speed up of Map/Reduce job? Hello everybody I have a problem. I installed Hadoop on 2-nodes cluster and run Wordcount example. It takes about 20 sec for processing of 1,5MB text file. We want to use Map/Reduce in real time (interactive: by user's requests). User can't wait for his request 20 sec. This is too long. Is it possible to reduce time of Map/Reduce job? Or may be I misunderstand something? BR, Igor Babkin, Mifors.com
Re: How to speed up of Map/Reduce job?
On 01/02/11 08:19, Igor Bubkin wrote: Hello everybody I have a problem. I installed Hadoop on 2-nodes cluster and run Wordcount example. It takes about 20 sec for processing of 1,5MB text file. We want to use Map/Reduce in real time (interactive: by user's requests). User can't wait for his request 20 sec. This is too long. Is it possible to reduce time of Map/Reduce job? Or may be I misunderstand something? 1. I'd expect a minimum 30s query time due to the way work gets queued and dispatched, JVM startup costs etc. There is no way to eliminate this in Hadoop's current architecture. 2. 1.5M is a very small file size; I'm currently recommending a block size of 512M in new clusters for various reasons. This size of data is just too small to bother with distribution. Load it up into memory; analyse it locally. Things like Apache CouchDB also support MapReduce. Hadoop is not designed for clusters of less than about 10 machines (not enough redundancy of storage), or for small datasets. If your problems aren't big enough, use different tools, because Hadoop contains design decisions and overheads that only make sense once your data is measured in GB and your filesystem in tens to thousands of Terabytes.
RE: How to speed up of Map/Reduce job?
Hi Igor, I am not sure if Hadoop is designed for realtime requests. I have a feeling that you are trying to use Hadoop in a way that it isnot designed for. From my experience, Hadoop cluster will be much slower than "local" hadoop mode when processing smaller dataset, because there is always extra overhead of task and job management in cluster mode. Praveen From: ext Igor Bubkin [igb...@gmail.com] Sent: Tuesday, February 01, 2011 3:19 AM To: common-iss...@hadoop.apache.org Cc: common-user@hadoop.apache.org Subject: How to speed up of Map/Reduce job? Hello everybody I have a problem. I installed Hadoop on 2-nodes cluster and run Wordcount example. It takes about 20 sec for processing of 1,5MB text file. We want to use Map/Reduce in real time (interactive: by user's requests). User can't wait for his request 20 sec. This is too long. Is it possible to reduce time of Map/Reduce job? Or may be I misunderstand something? BR, Igor Babkin, Mifors.com
Re: How to speed up of Map/Reduce job?
The Hadoop is designed for no-real time application. But You can change the parameter to reduce the job execution time. I search an article in Google. Hope You can find some useful information on that. http://www.slideshare.net/ImpetusInfo/ppt-on-advanced-hadoop-tuning-n-optimisation On Tue, Feb 1, 2011 at 4:19 PM, Igor Bubkin wrote: > Hello everybody > > I have a problem. I installed Hadoop on 2-nodes cluster and run Wordcount > example. It takes about 20 sec for processing of 1,5MB text file. We want > to > use Map/Reduce in real time (interactive: by user's requests). User can't > wait for his request 20 sec. This is too long. Is it possible to reduce > time > of Map/Reduce job? Or may be I misunderstand something? > > BR, > Igor Babkin, Mifors.com > -- -李平