No, this is very time consuming!
I need to write the best code, to get the top speed, tunning configuration files, chose the best driver, etc. I'm thinking in Hadhoop and Postgresql. In most of the projects we need an ACID and a NoSQL. Because Storm is so fast i can't send the data in the last Bolt over Internet. I'm choosing a "queue" to stop the latency in Storm.

On 11-05-2016 23:08, steve tueno wrote:
Thanks.
Hve you try your benchmark with Hbase?

Cordialement,
TUENO FOTSO STEVE JEFFREY
Élève Ingénieur
5GI ENSP
+237 676 57 17 28
https://play.google.com/store/apps/details?id=com.polytech.remotecomputer
https://play.google.com/store/apps/details?id=com.polytech.internetaccesschecker
_http://www.traveler.cm/ <http://remotecomputer.traveler.cm/>_
http://remotecomputer.traveler.cm/
https://play.google.com/store/apps/details?id=com.polytech.androidsmssender
https://github.com/stuenofotso/notre-jargon
https://play.google.com/store/apps/details?id=com.polytech.welovecameroon
https://play.google.com/store/apps/details?id=com.polytech.welovefrance

2016-05-11 22:46 GMT+01:00 cogumelosmaravilha <[email protected] <mailto:[email protected]>>:

    Hi all,
    I made some database benchmarks that i want to share. Source code
    and drivers are in Python. Kernel 4.4.10-low-latency. Hardware
    Core-i7 3.6 32GB Ram.
    mock data, record;
    571fa68da32119f501015f5f 947a20A0A9c5d28550110E05
    e71bB0597363389420459F41 2016-05-11 11:48:55.948 57 118 01

    Network/Wifi:

    Records : 100.001

    ### Mysql Save ###
    2016-05-11 16:55:56.342
    2016-05-11 17:00:34.401                # 2nd place
    time: 278.059647

    ### Kafka Save ###
    2016-05-11 14:25:13.800
    2016-05-11 14:26:22.036                # 1st place
    time: 68.23572

    ### Mongo Insert Save ###
    2016-05-11 14:26:22.036
    2016-05-11 14:36:07.753               # 4
    time: 585.71745

    ### Mongo Upsert Save ###
    2016-05-11 14:36:07.754
    2016-05-11 14:46:16.527              # 5
    time: 608.77346

    ### Cassandra Save ###
    2016-05-11 14:46:16.527
    2016-05-11 14:55:18.675              #3rd place
    time: 542.148405

    Local:

    Records : 100001

    ### Mysql Save ###
    2016-05-11 17:07:00.712
    2016-05-11 17:07:16.970            # 1st place
    time: 16.259082

    ### Kafka Save ###
    2016-05-11 17:12:03.966
    2016-05-11 17:12:59.638          # 5
    time: 55.672385

    ### Mongo Insert Save ###
    2016-05-11 17:12:59.638
    2016-05-11 17:13:33.667          # 2nd place
    time: 34.028495

    ### Mongo Upsert Save ###
    2016-05-11 17:13:33.667
    2016-05-11 17:14:20.513         # 4
    time: 46.846054

    ### Cassandra Save ###
    2016-05-11 17:14:20.513
    2016-05-11 17:15:03.807        # 3rd place
    time: 43.293934



Reply via email to