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To: user@cassandra.apache.org Content-Type: multipart/related; boundary=94eb2c084b704129540540f63af2 archived-at: Thu, 10 Nov 2016 18:07:10 -0000 --94eb2c084b704129540540f63af2 Content-Type: multipart/alternative; boundary=94eb2c084b704129500540f63af1 --94eb2c084b704129500540f63af1 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable It can be a tad confusing... The background metric corresponds to a digest mismatch that occurred after a completed read, outside of the client read. Will happen if number of nodes queried in the requested consistency level was not all of replicas, so it was kicked off after the read (this is based on the read repair chance, and is the "attempted" metric). Blocking metric corresponds to the number of times there was a digest mismatch within the requested consistency level and a full data read was started within the client read. The two combined shows you have a lot of read repairs happening, possibly due to just latency in the initial mutations (not really a problem). If thats the case and you have faith in your repairs offline you could just set read repairs chance to 0 to reduce load in resending mutations that will become consistent eventually anyway. Chris On Thu, Nov 10, 2016 at 11:52 AM, Shalom Sagges wrote: > Thanks a lot for helping on this one. > Just one more question... I'm not familiar with the above read repair > metrics. > Can you please explain what caught your eye there? > > > Shalom Sagges > DBA > T: +972-74-700-4035 > > We Create Meaningful Connections > > > > > On Thu, Nov 10, 2016 at 7:47 PM, Benjamin Roth > wrote: > >> ... sorry for the short reply. To be a bit more detailed: >> >> 1. You can lower the read repair probability on that table to avoid the >> writes. But be aware that then inconsistency also wont be repaired on re= ads. >> 2. Maybe you should run a repair on that table to get it in sync and >> reduce the impact of read repairs. By the way, you should run repairs on= a >> regular basis anyway but this is a different topic, very extensive and >> documented on many different places. >> >> 2016-11-10 17:44 GMT+00:00 Benjamin Roth : >> >>> There you go :) >>> >>> 2016-11-10 17:24 GMT+00:00 Shalom Sagges : >>> >>>> That's a possibility I didn't think of... >>>> >>>> This is what I see from org.apache.cassandra.metr >>>> ics:type=3DReadRepair,name=3DRepairedBackground >>>> [image: Inline image 1] >>>> >>>> >>>> and from org.apache.cassandra.metrics:type=3DReadRepair,name=3DRepai >>>> redBlocking: >>>> [image: Inline image 2] >>>> >>>> >>>> Shalom Sagges >>>> DBA >>>> T: +972-74-700-4035 >>>> >>>> We >>>> Create Meaningful Connections >>>> >>>> >>>> >>>> >>>> On Thu, Nov 10, 2016 at 7:16 PM, Shalom Sagges >>>> wrote: >>>> >>>>> Yes, it's occurring on the table that receives the count(*) query. >>>>> >>>>> >>>>> Shalom Sagges >>>>> DBA >>>>> T: +972-74-700-4035 >>>>> >>>>> >>>>> We Create Meaningful >>>>> Connections >>>>> >>>>> >>>>> >>>>> >>>>> On Thu, Nov 10, 2016 at 5:05 PM, Alexander Dejanovski < >>>>> alex@thelastpickle.com> wrote: >>>>> >>>>>> So the huge write count is occurring on the table that receives the >>>>>> count(*) query or another table ? >>>>>> >>>>>> On Thu, Nov 10, 2016 at 4:02 PM Shalom Sagges >>>>>> wrote: >>>>>> >>>>>>> Tracing is off and so is TracingProbability. >>>>>>> Just to elaborate, the huge write count occurs only a single column >>>>>>> family which is not one of the system_traces keyspace. >>>>>>> >>>>>>> I also want to thank you guys for your persistent help regardless i= f >>>>>>> the root cause will be found or not.. You're the best!! >>>>>>> >>>>>>> >>>>>>> Shalom Sagges >>>>>>> DBA >>>>>>> T: +972-74-700-4035 <+972%2074-700-4035> >>>>>>> >>>>>>> >>>>>>> We Create Meaningful >>>>>>> Connections >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 4:41 PM, Alexander Dejanovski < >>>>>>> alex@thelastpickle.com> wrote: >>>>>>> >>>>>>> Shalom, >>>>>>> >>>>>>> you may have a high trace probability which could explain what >>>>>>> you're observing : https://docs.datastax.com/en >>>>>>> /cassandra/2.0/cassandra/tools/toolsSetTraceProbability.html >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 3:37 PM Chris Lohfink >>>>>>> wrote: >>>>>>> >>>>>>> count(*) actually pages through all the data. So a select count(*) = without >>>>>>> a limit would be expected to cause a lot of load on the system. The= hit is >>>>>>> more than just IO load and CPU, it also creates a lot of garbage th= at can >>>>>>> cause pauses slowing down the entire JVM. Some details here: >>>>>>> http://www.datastax.com/dev/blog/counting-keys-in-cassandra >>>>>>> >>>>>>> >>>>>>> You may want to consider maintaining the count yourself, using >>>>>>> Spark, or if you just want a ball park number you can grab it from = JMX. >>>>>>> >>>>>>> > Cassandra writes (mutations) are INSERTs, UPDATEs or DELETEs, it >>>>>>> actually has nothing to do with flushes. A flush is the operation o= f moving >>>>>>> data from memory (memtable) to disk (SSTable). >>>>>>> >>>>>>> FWIW in 2.0 thats not completely accurate. Before 2.1 the process o= f >>>>>>> memtable flushing acquired a switchlock on that blocks mutations du= ring the >>>>>>> flush (the "pending task" metric is the measure of how many mutatio= ns are >>>>>>> blocked by this lock). >>>>>>> >>>>>>> Chris >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 8:10 AM, Shalom Sagges < >>>>>>> shaloms@liveperson.com> wrote: >>>>>>> >>>>>>> Hi Alexander, >>>>>>> >>>>>>> I'm referring to Writes Count generated from JMX: >>>>>>> [image: Inline image 1] >>>>>>> >>>>>>> The higher curve shows the total write count per second for all >>>>>>> nodes in the cluster and the lower curve is the average write count= per >>>>>>> second per node. >>>>>>> The drop in the end is the result of shutting down one application >>>>>>> node that performed this kind of query (we still haven't removed th= e query >>>>>>> itself in this cluster). >>>>>>> >>>>>>> >>>>>>> On a different cluster, where we already removed the "select >>>>>>> count(*)" query completely, we can see that the issue was resolved = (also >>>>>>> verified this with running nodetool cfstats a few times and checked= the >>>>>>> write count difference): >>>>>>> [image: Inline image 2] >>>>>>> >>>>>>> >>>>>>> Naturally I asked how can a select query affect the write count of = a >>>>>>> node but weird as it seems, the issue was resolved once the query w= as >>>>>>> removed from the code. >>>>>>> >>>>>>> Another side note.. One of our developers that wrote the query in >>>>>>> the code, thought it would be nice to limit the query results to >>>>>>> 560,000,000. Perhaps the ridiculously high limit might have caused = this? >>>>>>> >>>>>>> Thanks! >>>>>>> >>>>>>> >>>>>>> >>>>>>> Shalom Sagges >>>>>>> DBA >>>>>>> T: +972-74-700-4035 >>>>>>> >>>>>>> >>>>>>> We Create Meaningful >>>>>>> Connections >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 3:21 PM, Alexander Dejanovski < >>>>>>> alex@thelastpickle.com> wrote: >>>>>>> >>>>>>> Hi Shalom, >>>>>>> >>>>>>> Cassandra writes (mutations) are INSERTs, UPDATEs or DELETEs, it >>>>>>> actually has nothing to do with flushes. A flush is the operation o= f moving >>>>>>> data from memory (memtable) to disk (SSTable). >>>>>>> >>>>>>> The Cassandra write path and read path are two different things and= , >>>>>>> as far as I know, I see no way for a select count(*) to increase yo= ur write >>>>>>> count (if you are indeed talking about actual Cassandra writes, and= not I/O >>>>>>> operations). >>>>>>> >>>>>>> Cheers, >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 1:21 PM Shalom Sagges < >>>>>>> shaloms@liveperson.com> wrote: >>>>>>> >>>>>>> Yes, I know it's obsolete, but unfortunately this takes time. >>>>>>> We're in the process of upgrading to 2.2.8 and 3.0.9 in our >>>>>>> clusters. >>>>>>> >>>>>>> Thanks! >>>>>>> >>>>>>> >>>>>>> >>>>>>> Shalom Sagges >>>>>>> DBA >>>>>>> T: +972-74-700-4035 <+972%2074-700-4035> >>>>>>> >>>>>>> >>>>>>> We Create Meaningful >>>>>>> Connections >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 1:31 PM, Vladimir Yudovin < >>>>>>> vladyu@winguzone.com> wrote: >>>>>>> >>>>>>> As I said I'm not sure about it, but it will be interesting to chec= k >>>>>>> memory heap state with any JMX tool, e.g. https://github.com/patric >>>>>>> -r/jvmtop >>>>>>> >>>>>>> By a way, why Cassandra 2.0.14? It's quit old and unsupported >>>>>>> version. Even in 2.0 branch there is 2.0.17 available. >>>>>>> >>>>>>> Best regards, Vladimir Yudovin, >>>>>>> >>>>>>> *Winguzone - Hosted Cloud >>>>>>> CassandraLaunch your cluster in minutes.* >>>>>>> >>>>>>> >>>>>>> ---- On Thu, 10 Nov 2016 05:47:37 -0500*Shalom Sagges >>>>>>> >* wrote ---- >>>>>>> >>>>>>> Thanks for the quick reply Vladimir. >>>>>>> Is it really possible that ~12,500 writes per second (per node in a >>>>>>> 12 nodes DC) are caused by memory flushes? >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> Shalom Sagges >>>>>>> DBA >>>>>>> T: +972-74-700-4035 >>>>>>> >>>>>>> >>>>>>> >>>>>>> We Create Meaningful Connections >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> On Thu, Nov 10, 2016 at 11:02 AM, Vladimir Yudovin < >>>>>>> vladyu@winguzone.com> wrote: >>>>>>> >>>>>>> >>>>>>> >>>>>>> This message may contain confidential and/or privileged information= . >>>>>>> If you are not the addressee or authorized to receive this on behal= f >>>>>>> of the addressee you must not use, copy, disclose or take action ba= sed on >>>>>>> this message or any information herein. >>>>>>> If you have received this message in error, please advise the sende= r >>>>>>> immediately by reply email and delete this message. Thank you. >>>>>>> >>>>>>> >>>>>>> Hi Shalom, >>>>>>> >>>>>>> so not sure, but probably excessive memory consumption by this >>>>>>> SELECT causes C* to flush tables to free memory. >>>>>>> >>>>>>> Best regards, Vladimir Yudovin, >>>>>>> >>>>>>> *Winguzone - Hosted Cloud >>>>>>> CassandraLaunch your cluster in minutes.* >>>>>>> >>>>>>> >>>>>>> ---- On Thu, 10 Nov 2016 03:36:59 -0500*Shalom Sagges >>>>>>> >* wrote ---- >>>>>>> >>>>>>> Hi There! >>>>>>> >>>>>>> I'm using C* 2.0.14. >>>>>>> I experienced a scenario where a "select count(*)" that ran every >>>>>>> minute on a table with practically no results limit (yes, this shou= ld >>>>>>> definitely be avoided), caused a huge increase in Cassandra writes = to >>>>>>> around 150 thousand writes per second for that particular table. >>>>>>> >>>>>>> Can anyone explain this behavior? Why would a Select query >>>>>>> significantly increase write count in Cassandra? >>>>>>> >>>>>>> Thanks! >>>>>>> >>>>>>> >>>>>>> Shalom Sagges >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> We Create Meaningful Connections >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> This message may contain confidential and/or privileged information= . >>>>>>> If you are not the addressee or authorized to receive this on behal= f >>>>>>> of the addressee you must not use, copy, disclose or take action ba= sed on >>>>>>> this message or any information herein. >>>>>>> If you have received this message in error, please advise the sende= r >>>>>>> immediately by reply email and delete this message. Thank you. >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> >>>>>>> This message may contain confidential and/or privileged information= . >>>>>>> If you are not the addressee or authorized to receive this on behal= f >>>>>>> of the addressee you must not use, copy, disclose or take action ba= sed on >>>>>>> this message or any information herein. >>>>>>> If you have received this message in error, please advise the sende= r >>>>>>> immediately by reply email and delete this message. Thank you. >>>>>>> >>>>>>> -- >>>>>>> ----------------- >>>>>>> Alexander Dejanovski >>>>>>> France >>>>>>> @alexanderdeja >>>>>>> >>>>>>> Consultant >>>>>>> Apache Cassandra Consulting >>>>>>> http://www.thelastpickle.com >>>>>>> >>>>>>> >>>>>>> >>>>>>> This message may contain confidential and/or privileged information= . >>>>>>> If you are not the addressee or authorized to receive this on behal= f >>>>>>> of the addressee you must not use, copy, disclose or take action ba= sed on >>>>>>> this message or any information herein. >>>>>>> If you have received this message in error, please advise the sende= r >>>>>>> immediately by reply email and delete this message. Thank you. >>>>>>> >>>>>>> >>>>>>> -- >>>>>>> ----------------- >>>>>>> Alexander Dejanovski >>>>>>> France >>>>>>> @alexanderdeja >>>>>>> >>>>>>> Consultant >>>>>>> Apache Cassandra Consulting >>>>>>> http://www.thelastpickle.com >>>>>>> >>>>>>> >>>>>>> >>>>>>> This message may contain confidential and/or privileged information= . >>>>>>> If you are not the addressee or authorized to receive this on behal= f >>>>>>> of the addressee you must not use, copy, disclose or take action ba= sed on >>>>>>> this message or any information herein. >>>>>>> If you have received this message in error, please advise the sende= r >>>>>>> immediately by reply email and delete this message. Thank you. >>>>>>> >>>>>> -- >>>>>> ----------------- >>>>>> Alexander Dejanovski >>>>>> France >>>>>> @alexanderdeja >>>>>> >>>>>> Consultant >>>>>> Apache Cassandra Consulting >>>>>> http://www.thelastpickle.com >>>>>> >>>>> >>>>> >>>> >>>> This message may contain confidential and/or privileged information. >>>> If you are not the addressee or authorized to receive this on behalf o= f >>>> the addressee you must not use, copy, disclose or take action based on= this >>>> message or any information herein. >>>> If you have received this message in error, please advise the sender >>>> immediately by reply email and delete this message. Thank you. >>>> >>> >>> >>> >>> -- >>> Benjamin Roth >>> Prokurist >>> >>> Jaumo GmbH =C2=B7 www.jaumo.com >>> Wehrstra=C3=9Fe 46 =C2=B7 73035 G=C3=B6ppingen =C2=B7 Germany >>> Phone +49 7161 304880-6 =C2=B7 Fax +49 7161 304880-1 >>> AG Ulm =C2=B7 HRB 731058 =C2=B7 Managing Director: Jens Kammerer >>> >> >> >> >> -- >> Benjamin Roth >> Prokurist >> >> Jaumo GmbH =C2=B7 www.jaumo.com >> Wehrstra=C3=9Fe 46 =C2=B7 73035 G=C3=B6ppingen =C2=B7 Germany >> Phone +49 7161 304880-6 =C2=B7 Fax +49 7161 304880-1 >> AG Ulm =C2=B7 HRB 731058 =C2=B7 Managing Director: Jens Kammerer >> > > > This message may contain confidential and/or privileged information. > If you are not the addressee or authorized to receive this on behalf of > the addressee you must not use, copy, disclose or take action based on th= is > message or any information herein. > If you have received this message in error, please advise the sender > immediately by reply email and delete this message. Thank you. > --94eb2c084b704129500540f63af1 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
It can be a tad confusing...=C2=A0

The background metric corresponds to a digest mismatch that occurred= after a completed read, outside of the client read.=C2=A0Will happen if nu= mber of nodes queried in the requested consistency level was not all of rep= licas, so it was kicked off after the read (this is based on the read repai= r chance, and is the "attempted" metric).

Blo= cking metric corresponds to the number of times there was a digest mismatch= within the requested consistency level and a full data read was started wi= thin the client read.

The two combined shows you hav= e a lot of read repairs happening, possibly due to just latency in the init= ial mutations (not really a problem). If thats the case and you have faith = in your repairs offline you could just set read repairs chance to 0 to redu= ce load in resending mutations that will become consistent eventually anywa= y.

Chris
On Thu, Nov 10, 2016 at 11:52 AM, Shalom Sagges= <shaloms@liveperson.com> wrote:
Thanks a lot for helping on this one.=C2=A0<= div>Just one more question... I'm not familiar with the above read repa= ir metrics.=C2=A0
Can you please explain what caught your eye the= re?

=C2=A0
Shalom Sagges
DBA
T: +972-74-700-4035
We Cr= eate Meaningful Connections
=C2=A0

On Thu, Nov 10, 2016 at 7:47 PM, Benjamin Ro= th <benjamin.roth@jaumo.com> wrote:
... sorry for the short reply. To be a bi= t more detailed:

1. You can lower the read repair probab= ility on that table to avoid the writes. But be aware that then inconsisten= cy also wont be repaired on reads.
2. Maybe you should run a repa= ir on that table to get it in sync and reduce the impact of read repairs. B= y the way, you should run repairs on a regular basis anyway but this is a d= ifferent topic, very extensive and documented on many different places.

2016-11-1= 0 17:44 GMT+00:00 Benjamin Roth <benjamin.roth@jaumo.com>:
There you go :)

2016-11-10 17:2= 4 GMT+00:00 Shalom Sagges <shaloms@liveperson.com>:
=
That's a possibility I = didn't think of...

This is what I see from=C2=A0org.apache= .cassandra.metrics:type=3DReadRepair,name=3DRepairedBackground
3D"Inline


and fr= om=C2=A0org.apache.cassandra.metrics:type=3DReadRepair,name=3DRepairedBlocking:
3D"Inline=

=C2=A0
Shalom Sagges
DBA
T: +972-74-700-4035
We Cr= eate Meaningful Connections
=C2=A0

On Thu, Nov 10, 2016 at 7:16 PM, Shalom Sagg= es <shaloms@liveperson.com> wrote:
Yes, it's occurring on the table that = receives the count(*) query.

=C2=A0
Shalom Sagges
DBA
T: +972-74-700-4035
We Cr= eate Meaningful Connections
=C2=A0

On Thu, Nov 10, 2016 at 5:05 PM, Alexander D= ejanovski <alex@thelastpickle.com> wrote:
So the huge write count is occurring = on the table that receives the count(*) query or another table ?

<= div class=3D"gmail_quote">
On Thu, Nov 10, 2016 at 4:02 PM = Shalom Sagges <shaloms@liveperson.com> wrote:
Tracing is off and so is TracingProbability.=C2= =A0
Just to elaborate, the huge write count occurs only a singl= e column family which is not one of the system_traces keyspace.=C2=A0
=

I also want to thank you guys for your persistent help reg= ardless if the root cause will be found or not.. You're the best!!

=C2= =A0
Shalom Sagges
DBA
T: +972-74-700-4035
We Cre= ate Meaningful Connections
=C2=A0

On Thu, Nov 10, 2016 at 4:41 PM, A= lexander Dejanovski <alex@thelastpickle.com> wrote:
Shalom,=C2=A0

you ma= y have a high trace probability which could explain what you're observi= ng :=C2=A0https://docs.datastax.= com/en/cassandra/2.0/cassandra/tools/toolsSetTraceProbability.htm= l

On Thu, Nov= 10, 2016 at 3:37 PM Chris Lohfink <clohfink85@gmail.com> wrote:

count(*)=C2=A0actually pages through all the data. So a=C2=A0select count(*)=C2=A0without a limit would = be expected to cause a lot of load on the system. The hit is more than just= IO load and CPU, it also creates a lot of garbage that can cause pauses sl= owing down the entire JVM. Some details here:=C2=A0http://www.datastax.com/dev/blog/countin= g-keys-in-cassandra

You may want to consider maintaining the co= unt yourself, using Spark, or if you just want a ball park number you can g= rab it from JMX.

&g= t;=C2=A0Cassandra writes= (mutations) are INSERTs, UPDATEs or DELETEs, it actually has nothing to do= with flushes. A flush is the operation of moving data from memory (memtabl= e) to disk (SSTable).

FWIW in 2.0 thats not completely accurate. Before 2.1 the process= of memtable flushing acquired a switchlock on that blocks mutations during= the flush (the "pending task" metric is the measure of how many = mutations are blocked by this lock).

Chris



=C2=A0
Shalom Sagges
DBA
T: +972-74-700-40= 35
=
We Create Meaningful = Connections
=C2=A0

On Thu, Nov 10, 2016 = at 3:21 PM, Alexander Dejanovski <alex@thelastpickle.com> wrote:
Hi Shalom,

Cassandra writes (mutations) are INSERTs, UPDATEs or D= ELETEs, it actually has nothing to do with flushes. A flush is the operatio= n of moving data from memory (memtable) to disk (SSTable).

The Cassandra write path and read path are two dif= ferent things and, as far as I know, I see no way for a select count(*) to = increase your write count (if you are indeed talking about actual Cassandra= writes, and not I/O operations).
<= br class=3D"m_5940245793604129463m_-537442309066200175m_-709922635978090247= 6m_-6297064246504203206m_9022386583283552874m_-5975609827013504671m_3151074= 433149625100m_9116576477255822402gmail_msg m_5940245793604129463m_-53744230= 9066200175m_-7099226359780902476m_-6297064246504203206m_9022386583283552874= m_-5975609827013504671gmail_msg">
C= heers,

On Thu, Nov 10, 2016 = at 1:21 PM Shalom Sagges <shaloms@liveperson.com> = wrote:
Yes, I= know it's obsolete, but unfortunately this takes time.=C2=A0
We&#= 39;re in the process of upgrading to 2.2.8 and 3.0.9 in our clusters.=C2=A0=

Thanks!


=C2=A0
Sh= alom Sagges
DBA
T: +972-74-7= 00-4035
We Create Meaningful Connections
=C2=A0

On Thu, Nov 10, 2016 at 1:31 PM= , Vladimir Yudovin <vladyu@winguzone.com&g= t; wrote:
As I said I= 9;m not sure about it, but it will be interesting to check memory heap stat= e with any JMX tool, e.g.=C2=A0http= s://github.com/patric-r/jvmtop

By a way, why Cassandra 2.0.14= ? It's quit old and unsupported version. Even in 2.0 branch there is 2.= 0.17 available.

Best regards= , Vladimir Yudovin,
<= /div>
Winguzone - Hosted Cloud Cassandra
Launch your cluster in minutes.


---- = On Thu, 10 Nov 2016 05:47:37 -0500Shalom Sagges <shaloms@li= veperson.com> wrote ----

Thanks for the = quick reply Vladimir.=C2=A0
Is it re= ally possible that ~12,500 writes per second (per node in a 12 nodes DC) ar= e caused by memory flushes?




<= td valign=3D"top" colspan=3D"2" style=3D"padding-top:19.0px" class=3D"m_594= 0245793604129463m_-537442309066200175m_-7099226359780902476m_-6297064246504= 203206m_9022386583283552874m_-5975609827013504671m_3151074433149625100m_911= 6576477255822402m_-8856172165498330911m_8143405318576664737m_73303465650009= 48174gmail_msg m_5940245793604129463m_-537442309066200175m_-709922635978090= 2476m_-6297064246504203206m_9022386583283552874m_-5975609827013504671m_3151= 074433149625100m_9116576477255822402gmail_msg m_5940245793604129463m_-53744= 2309066200175m_-7099226359780902476m_-6297064246504203206m_9022386583283552= 874m_-5975609827013504671gmail_msg">Shalom Sagges

DBA
=
T: +972-74-700-403= 5



We Create Meaningful Connections



=
On Thu, Nov 10, 2016 at 11:02 AM, Vladimir Yudovin <vladyu@winguzone.com> wrote:



This me= ssage may contain confidential and/or privileged information.=C2=A0<= br class=3D"m_5940245793604129463m_-537442309066200175m_-709922635978090247= 6m_-6297064246504203206m_9022386583283552874m_-5975609827013504671m_3151074= 433149625100m_9116576477255822402m_-8856172165498330911m_814340531857666473= 7m_7330346565000948174gmail_msg m_5940245793604129463m_-537442309066200175m= _-7099226359780902476m_-6297064246504203206m_9022386583283552874m_-59756098= 27013504671m_3151074433149625100m_9116576477255822402gmail_msg m_5940245793= 604129463m_-537442309066200175m_-7099226359780902476m_-6297064246504203206m= _9022386583283552874m_-5975609827013504671gmail_msg">
If you are not the addressee or authorized to r= eceive this on behalf of the addressee you must not use, copy, disclose or = take action based on this message or any information herein.=C2=A0
If you have received this message in error, plea= se advise the sender immediately by reply email and delete this message. Th= ank you.
=

Hi Shalom,

so not sur= e, but probably excessive memory consumption by this SELECT causes C* to fl= ush tables to free memory.=C2=A0
Best regards, Vladimir Yudovin,
Winguzone - Hosted Cloud Cassandra
Launch your cluster in min= utes.


---- On Thu, 10 Nov 2016 03:36:59 = -0500Shalom Sagges <= ;shaloms@liveperson.com> wrot= e ----

Hi There!
<= br class=3D"m_5940245793604129463m_-537442309066200175m_-709922635978090247= 6m_-6297064246504203206m_9022386583283552874m_-5975609827013504671m_3151074= 433149625100m_9116576477255822402m_-8856172165498330911m_814340531857666473= 7m_7330346565000948174gmail_msg m_5940245793604129463m_-537442309066200175m= _-7099226359780902476m_-6297064246504203206m_9022386583283552874m_-59756098= 27013504671m_3151074433149625100m_9116576477255822402gmail_msg m_5940245793= 604129463m_-537442309066200175m_-7099226359780902476m_-6297064246504203206m= _9022386583283552874m_-5975609827013504671gmail_msg">
I'm using C* 2.0.14.=C2=A0
I experienced a scenario where a "select count(*)" = that ran every minute on a table=C2=A0with practically no results limit (ye= s, this should definitely be avoided), caused a huge increase in Cassandra = writes to around 150 thousand writes per second for that particular table.<= br class=3D"m_5940245793604129463m_-537442309066200175m_-709922635978090247= 6m_-6297064246504203206m_9022386583283552874m_-5975609827013504671m_3151074= 433149625100m_9116576477255822402m_-8856172165498330911m_814340531857666473= 7m_7330346565000948174gmail_msg m_5940245793604129463m_-537442309066200175m= _-7099226359780902476m_-6297064246504203206m_9022386583283552874m_-59756098= 27013504671m_3151074433149625100m_9116576477255822402gmail_msg m_5940245793= 604129463m_-537442309066200175m_-7099226359780902476m_-6297064246504203206m= _9022386583283552874m_-5975609827013504671gmail_msg">

Can anyone explain this behavior? Why would a Select query significantl= y increase write count in Cassandra?

Thanks!


Shalom Sagges

=



= We Create= Meaningful Connections


=


This message may contain confidential and= /or privileged information.=C2=A0
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France
<= div style=3D"font-family:"helvetica neue",helvetica,arial,sans-se= rif;line-height:19.5px" class=3D"m_5940245793604129463m_-537442309066200175= m_-7099226359780902476m_-6297064246504203206m_9022386583283552874m_-5975609= 827013504671m_3151074433149625100m_9116576477255822402gmail_msg m_594024579= 3604129463m_-537442309066200175m_-7099226359780902476m_-6297064246504203206= m_9022386583283552874m_-5975609827013504671gmail_msg">@alexanderdeja
<= div style=3D"font-family:"helvetica neue",helvetica,arial,sans-se= rif;line-height:19.5px" class=3D"m_5940245793604129463m_-537442309066200175= m_-7099226359780902476m_-6297064246504203206m_9022386583283552874m_-5975609= 827013504671m_3151074433149625100m_9116576477255822402gmail_msg m_594024579= 3604129463m_-537442309066200175m_-7099226359780902476m_-6297064246504203206= m_9022386583283552874m_-5975609827013504671gmail_msg">
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Apach= e Cassandra Consulting


This message may contain confidential and/or privileged information.= =C2=A0
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<= div style=3D"font-family:"helvetica neue",helvetica,arial,sans-se= rif;line-height:19.5px" class=3D"m_5940245793604129463m_-537442309066200175= m_-7099226359780902476m_-6297064246504203206m_9022386583283552874m_-5975609= 827013504671gmail_msg">Alexander Dejanovski
Fr= ance
@alexanderdeja

Consultant
Apache Cassandra Consulting


This message may contain confidential and/or privileged= information.=C2=A0
If you are not the addr= essee or authorized to receive this on behalf of the addressee you must not= use, copy, disclose or take action based on this message or any informatio= n herein.=C2=A0
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-----------------
Alexander Dejanov= ski
France
@ale= xanderdeja

Consultant
Apache Cassandra Consulting
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AG Ulm =C2=B7 HRB 731058 =C2=B7 Managing Director: Jens Kamme= rer


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