Return-Path: X-Original-To: archive-asf-public-internal@cust-asf2.ponee.io Delivered-To: archive-asf-public-internal@cust-asf2.ponee.io Received: from cust-asf.ponee.io (cust-asf.ponee.io [163.172.22.183]) by cust-asf2.ponee.io (Postfix) with ESMTP id 6351A200BBB for ; Thu, 10 Nov 2016 18:46:16 +0100 (CET) Received: by cust-asf.ponee.io (Postfix) id 620BD160B01; Thu, 10 Nov 2016 17:46:16 +0000 (UTC) Delivered-To: archive-asf-public@cust-asf.ponee.io Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by cust-asf.ponee.io (Postfix) with SMTP id 4C2CD160AF7 for ; Thu, 10 Nov 2016 18:45:49 +0100 (CET) Received: (qmail 75817 invoked by uid 500); 10 Nov 2016 17:45:46 -0000 Mailing-List: contact user-help@cassandra.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Reply-To: user@cassandra.apache.org Delivered-To: mailing list user@cassandra.apache.org Received: (qmail 75807 invoked by uid 99); 10 Nov 2016 17:45:46 -0000 Received: from pnap-us-west-generic-nat.apache.org (HELO spamd2-us-west.apache.org) (209.188.14.142) by apache.org (qpsmtpd/0.29) with ESMTP; Thu, 10 Nov 2016 17:45:46 +0000 Received: from localhost (localhost [127.0.0.1]) by spamd2-us-west.apache.org (ASF Mail Server at spamd2-us-west.apache.org) with ESMTP id EBD881A01BB for ; Thu, 10 Nov 2016 17:45:45 +0000 (UTC) X-Virus-Scanned: Debian amavisd-new at spamd2-us-west.apache.org X-Spam-Flag: NO X-Spam-Score: 2.39 X-Spam-Level: ** X-Spam-Status: No, score=2.39 tagged_above=-999 required=6.31 tests=[DKIM_SIGNED=0.1, DKIM_VALID=-0.1, DKIM_VALID_AU=-0.1, HTML_MESSAGE=2, RCVD_IN_DNSWL_NONE=-0.0001, RCVD_IN_MSPIKE_H3=-0.01, RCVD_IN_MSPIKE_WL=-0.01, RCVD_IN_SORBS_SPAM=0.5, SPF_PASS=-0.001, T_REMOTE_IMAGE=0.01, URIBL_BLOCKED=0.001] autolearn=disabled Authentication-Results: spamd2-us-west.apache.org (amavisd-new); dkim=pass (1024-bit key) header.d=jaumo.com Received: from mx1-lw-us.apache.org ([10.40.0.8]) by localhost (spamd2-us-west.apache.org [10.40.0.9]) (amavisd-new, port 10024) with ESMTP id CVpbW2wqCGkc for ; Thu, 10 Nov 2016 17:45:40 +0000 (UTC) Received: from mail-yw0-f174.google.com (mail-yw0-f174.google.com [209.85.161.174]) by mx1-lw-us.apache.org (ASF Mail Server at mx1-lw-us.apache.org) with ESMTPS id 893AF5FB58 for ; Thu, 10 Nov 2016 17:45:40 +0000 (UTC) Received: by mail-yw0-f174.google.com with SMTP id r204so252044109ywb.0 for ; Thu, 10 Nov 2016 09:45:40 -0800 (PST) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=jaumo.com; s=google; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=ByT/rHWW6cvEp5Ybc1sCISwmkn7YVVEhe7j8FWxmAYE=; b=B6A6+f7AaA1E6yAsE1JPbjrHV+8NcakTkcppRjReMR4g9wP9FWuQN6f/BrpOSz121I EdblJApr7u2kYZalIHvqgi5uTjvsOPiT7+BcQL2+mNppUDWNLJGLpRzm8QEinX54b+ZW RzucmEPUCijRQF8L+hUfMVUOKbXlBirzhvJEQ= X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:in-reply-to:references:from:date :message-id:subject:to; bh=ByT/rHWW6cvEp5Ybc1sCISwmkn7YVVEhe7j8FWxmAYE=; b=PknCGeuZhWUOCk9ujwhEgeDywy3wOpgQaT2a7NDGz6FG1JLkRVek3NTI9b+NYwiONl WP2yh51ORr+1rz32xhH7HkhNUEgC9VjUfEhv1wk93EqZ/qNrLzlmXidm2X0SKqGH+pnn YB82KRi3fQhkrHQblRNPgNvkqB4FgRVRuPxLN+ZKybdbELOYhYwxifbk7uBL2KWEp6uk MJwENE4Ikb9N4WKD6KRjJN/+yzIq9RW8K+lLdMBhclr2VqJ3LU1myfza3/2JjrNKQZiU BEEe3T79fn6DIITpB1EserJlzp3Cz1/IeovB3xBTf8QkIQD+vUGN+Pm3lxE30sDvSKZ9 lbbg== X-Gm-Message-State: ABUngvcoFTfaWigG2aIhu9yTsy53rMmGFeI8gmB+oFQRDan8NtmPBNPmDTCzS/2UlZZB0oS0tlcJfd/qw5H+OJ1S X-Received: by 10.157.15.5 with SMTP id 5mr2612978ott.13.1478799879610; Thu, 10 Nov 2016 09:44:39 -0800 (PST) MIME-Version: 1.0 Received: by 10.182.39.72 with HTTP; Thu, 10 Nov 2016 09:44:38 -0800 (PST) In-Reply-To: References: <1584d792349.bbce433b227136.5302462866590843742@winguzone.com> <1584e020769.bab55862240936.4924255819734305562@winguzone.com> From: Benjamin Roth Date: Thu, 10 Nov 2016 18:44:38 +0100 Message-ID: Subject: Re: Can a Select Count(*) Affect Writes in Cassandra? To: user@cassandra.apache.org Content-Type: multipart/related; boundary=94eb2c03287684da400540f5eda3 archived-at: Thu, 10 Nov 2016 17:46:16 -0000 --94eb2c03287684da400540f5eda3 Content-Type: multipart/alternative; boundary=94eb2c03287684da3d0540f5eda2 --94eb2c03287684da3d0540f5eda2 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable 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.metrics:type=3DReadRepair,na= me=3D > RepairedBackground > [image: Inline image 1] > > > and from org.apache.cassandra.metrics:type=3DReadRepair,name=3D > RepairedBlocking: > [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 if >>>> 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(*) wit= hout >>>> a limit would be expected to cause a lot of load on the system. The hi= t is >>>> more than just IO load and CPU, it also creates a lot of garbage that = 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 of m= oving >>>> data from memory (memtable) 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 durin= g the >>>> flush (the "pending task" metric is the measure of how many mutations = are >>>> blocked by this lock). >>>> >>>> Chris >>>> >>>> On Thu, Nov 10, 2016 at 8:10 AM, Shalom Sagges >>>> 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 seco= nd >>>> per node. >>>> The drop in the end is the result of shutting down one application nod= e >>>> that performed this kind of query (we still haven't removed the 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 verifie= d >>>> this with running nodetool cfstats a few times and checked the write c= ount >>>> 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 was >>>> 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 560,000,0= 00. >>>> 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 of m= oving >>>> data from memory (memtable) to disk (SSTable). >>>> >>>> The Cassandra write path and read path are two different things and, a= s >>>> far as I know, I see no way for a select count(*) to increase your wri= te >>>> count (if you are indeed talking about actual Cassandra writes, and no= t I/O >>>> operations). >>>> >>>> Cheers, >>>> >>>> On Thu, Nov 10, 2016 at 1:21 PM Shalom Sagges >>>> 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 >>> > wrote: >>>> >>>> As I said I'm not sure about it, but it will be interesting to check >>>> 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 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. >>>> >>>> >>>> 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 should >>>> 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 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. >>>> >>>> >>>> >>>> >>>> >>>> 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. >>>> >>>> -- >>>> ----------------- >>>> 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. >>>> >>>> >>>> -- >>>> ----------------- >>>> 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. >>>> >>> -- >>> ----------------- >>> 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 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. > --=20 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 --94eb2c03287684da3d0540f5eda2 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
There you go :)

2016-11-10 17:24 GMT+00:00 Shalom Sagges <shalom= s@liveperson.com>:
That's a possibility I didn't think of...

Thi= s is what I see from=C2=A0org.apache.cassandra.metrics:type=3DReadRepa= ir,name=3DRepairedBackground
3D"Inline

and from=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 Tr= acingProbability.=C2=A0
Just to elaborate= , the huge write count occurs only a single 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: <= span style=3D"font-weight:normal" class=3D"m_-6297064246504203206m_90223865= 83283552874m_-5975609827013504671gmail_msg">+972-74-700-4035
We Create Meaningful Connections
=
=C2=A0

O= n Thu, Nov 10, 2016 at 4:41 PM, Alexander Dejanovski <alex@thelastpickle.com> wrote:
Shalom,=C2=A0<= /div>

you may have a high trace probabili= ty which could explain what you're observing :=C2=A0https://docs.datastax.com/en/cassan= dra/2.0/cassandra/tools/toolsSetTraceProbability.html

On Thu, Nov 10, 2016 at 3:3= 7 PM Chris Lohfink <clohfink85@gmail.com> wrote:

coun= t(*)=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 sys= tem. The hit is more than just IO load and CPU, it also creates a lot of ga= rbage that can cause pauses slowing down the entire JVM. Some details here:= =C2=A0http://www.datastax.com/dev/blog/counting-keys-in-cassandr= a

You may want to consider maintaining the cou= nt yourself, using Spark, or if you just want a ball park number you can gr= ab it from JMX.

>=C2=A0Cassandra writes (mutation= s) are INSERTs, UPDATEs or DELETEs, it actually has nothing to do with flus= hes. A flush is the operation of moving data from memory (memtable) to disk= (SSTable).

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

<= /div>
<= p style=3D"margin:0px 0px 1em;padding:0px;border:0px;font-size:15px;clear:b= oth;color:rgb(36,39,41);font-family:arial,'helvetica neue',helvetic= a,sans-serif;font-variant-ligatures:normal" class=3D"m_-6297064246504203206= m_9022386583283552874m_-5975609827013504671m_3151074433149625100m_911657647= 7255822402gmail_msg m_-6297064246504203206m_9022386583283552874m_-597560982= 7013504671gmail_msg">Chris


On Thu, Nov 10, 2016 at 8:10 AM, Shalom Sagges <shaloms@liveperson.com> wrote:
Hi Alexander,=C2=A0

= I'm referring to Writes Count generated from JMX:
3D"Inline
=

The higher curve shows the total write count per = second for all nodes in the cluster and the lower curve is the average writ= e count per second per node.=C2=A0
The drop in the end is the result of shutting down on= e application node that performed this kind of query (we still haven't = removed the query itself in this cluster).=C2=A0


On a different cluster, wh= ere we already removed the "select count(*)" query completely, we= can see that the issue was resolved (also verified this with running nodet= ool cfstats a few times and checked the write count difference):
3D"Inline


Naturally I asked how can a select query affect the wri= te count of a node but weird as it seems, the issue was resolved once the q= uery was 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 ridicu= lously high limit might have caused this?=C2=A0

Thanks!
<= br class=3D"m_-6297064246504203206m_9022386583283552874m_-59756098270135046= 71m_3151074433149625100m_9116576477255822402gmail_msg m_-629706424650420320= 6m_9022386583283552874m_-5975609827013504671gmail_msg">

=C2=A0
Shalom Sagges
DBA
T: += 972-74-700-4035
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 DELETEs, it actually h= as nothing to do with flushes. A flush is the operation of moving data from= memory (memtable) to disk (SSTable).

The Ca= ssandra 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 your write count (if y= ou 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.=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
Shalom Sagg= es
DBA
T: +972-74-700-4035=
We Create Meaningful Connections
=C2=A0

On Thu,= Nov 10, 2016 at 1:31 PM, Vladimir Yudovin <vladyu@wing= uzone.com> wrote:
As I said I'm not sure = about it, but it will be interesting to check memory heap state with any JM= X tool, e.g.=C2=A0https://github.com/patric-r/jvmtop

By a way, why Cassandra 2.0.1= 4? 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 Cassandra
Launch your c= luster in minutes.


---- On T= hu, 10 Nov 2016 05:47:37 -0500Shalom Sagges <shaloms@liveperson.com<= /a>> wrote ----

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


<= /div>


=

Shalom = Sagges
DBA
T: +972-74-700-4035



= We Create Meaningful Connections




This message may contain confid= ential and/or privileged information.=C2=A0
If you are not the addressee or auth= orized to receive this on behalf of the addressee you must not use, copy, d= isclose or take action based on this message or any information herein.=C2= =A0
I= f you have received this message in error, please advise the sender immedia= tely by reply email and delete this message. Thank you.
<= /div>

Hi Shalom,

so not sure, bu= t probably excessive memory consumption by this SELECT causes C* to flush t= ables to free memory.=C2=A0

Best regards, Vladimir Yudovin,
Winguzone - Hosted Cloud Cassandra
La= unch your cluster in minutes.


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

Hi There!

I'm using C* 2.0.= 14.=C2=A0
I experienced a scenario where a &q= uot;select count(*)" that ran every minute on a table=C2=A0with practi= cally no results limit (yes, this should definitely be avoided), caused a h= uge increase in Cassandra writes to around 150 thousand writes per second f= or that particular table.

<= div class=3D"m_-6297064246504203206m_9022386583283552874m_-5975609827013504= 671m_3151074433149625100m_9116576477255822402m_-8856172165498330911m_814340= 5318576664737m_7330346565000948174gmail_msg m_-6297064246504203206m_9022386= 583283552874m_-5975609827013504671m_3151074433149625100m_911657647725582240= 2gmail_msg m_-6297064246504203206m_9022386583283552874m_-597560982701350467= 1gmail_msg">Can anyone explain this behavior? Why would a Select query sign= ificantly increase write count in Cassandra?
=
Thanks!

=

= Shalom Sagges




We Create Meaningful Connections
=


<= /div>

This message may contain confidential and/or privileged= information.=C2=A0
If you are not the addressee or authorized to receive this o= n behalf of the addressee you must not use, copy, disclose or take action b= ased on this message or any information herein.=C2=A0
If you have received this = message in error, please advise the sender immediately by reply email and d= elete this message. Thank you.
<= /div>




This message may contain confidential= and/or privileged information.=C2=A0
If you are not the addressee or authorized to receive this o= n behalf of the addressee you must not use, copy, disclose or take action b= ased on this message or any information herein.=C2=A0
If you have received this message in error, pl= ease advise the sender immediately by reply email and delete this message. = Thank you.
--
-----------------
Alexan= der Dejanovski
France
@alexanderdeja

Consultant
Apache C= assandra Consulting

=

This message may contain= confidential and/or privileged information.=C2=A0
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--
-----------------
Alexander Dejanovski
= France
@alexanderdeja

Consultant
Apache Cassandra = Consulting


This message may contain confiden= tial and/or privileged information.=C2=A0
If you are not the addressee or authorized to receive = this on behalf of the addressee you must not use, copy, disclose or take ac= tion based on this message or any information herein.=C2=A0
If you have received this message in= error, please advise the sender immediately by reply email and delete this= message. Thank you.
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This message may contain confidential and/or privileg= ed information.=C2=A0
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 this message or any inform= ation herein.=C2=A0
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
<= br>Jaumo GmbH =C2=B7 www= .jaumo.com
Wehrstra=C3=9Fe 46 =C2=B7 73035 G=C3=B6ppingen =C2=B7 Ger= many
Phone +49 7161 304880-6 =C2=B7 Fax +49 7161 304880-1
AG Ulm =C2= =B7 HRB 731058 =C2=B7 Managing Director: Jens Kammerer
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