From user-return-61891-archive-asf-public=cust-asf.ponee.io@cassandra.apache.org Tue Aug 7 17:26:28 2018 Return-Path: X-Original-To: archive-asf-public@cust-asf.ponee.io Delivered-To: archive-asf-public@cust-asf.ponee.io Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by mx-eu-01.ponee.io (Postfix) with SMTP id 61D29180657 for ; Tue, 7 Aug 2018 17:26:24 +0200 (CEST) Received: (qmail 19829 invoked by uid 500); 7 Aug 2018 15:26:18 -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 19819 invoked by uid 99); 7 Aug 2018 15:26:18 -0000 Received: from pnap-us-west-generic-nat.apache.org (HELO spamd1-us-west.apache.org) (209.188.14.142) by apache.org (qpsmtpd/0.29) with ESMTP; Tue, 07 Aug 2018 15:26:18 +0000 Received: from localhost (localhost [127.0.0.1]) by spamd1-us-west.apache.org (ASF Mail Server at spamd1-us-west.apache.org) with ESMTP id 56C43C6085 for ; Tue, 7 Aug 2018 15:26:18 +0000 (UTC) X-Virus-Scanned: Debian amavisd-new at spamd1-us-west.apache.org X-Spam-Flag: NO X-Spam-Score: 1.888 X-Spam-Level: * X-Spam-Status: No, score=1.888 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_H2=-0.001, SPF_PASS=-0.001, T_DKIMWL_WL_MED=-0.01] autolearn=disabled Authentication-Results: spamd1-us-west.apache.org (amavisd-new); dkim=pass (2048-bit key) header.d=gmail.com Received: from mx1-lw-eu.apache.org ([10.40.0.8]) by localhost (spamd1-us-west.apache.org [10.40.0.7]) (amavisd-new, port 10024) with ESMTP id ngY69KhiKEym for ; Tue, 7 Aug 2018 15:26:16 +0000 (UTC) Received: from mail-io0-f195.google.com (mail-io0-f195.google.com [209.85.223.195]) by mx1-lw-eu.apache.org (ASF Mail Server at mx1-lw-eu.apache.org) with ESMTPS id 2B21A5F4E5 for ; Tue, 7 Aug 2018 15:26:15 +0000 (UTC) Received: by mail-io0-f195.google.com with SMTP id o22-v6so14320157ioh.6 for ; Tue, 07 Aug 2018 08:26:15 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20161025; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=EdsYjucfwzFVmyTkocwMnTu1tTXyHxNkmc/5dLubwxQ=; b=V2MAXBG736ANTfTM1ntiDcNk5WE1sXXg/VkBt4Nd1ooWRhC8Xq7QksrrUgC8OW3Y/e xy2tNiHR4pudcJRbZ8Oi42LCkvl+RAk4LsEo5V9HR5lYZNE1rrYz5oF+6CpOCh3bP7cp XD6UKFsssHrNsGmQS4sWrQNLnvq9M2tNzvZK2hnrpMM1FUWVmof7IPz2yaXWJIAhSybW pjbsKNqXkT5+dYWE/rlSAf8CEb3KdzEibBPhGw2ZJEVswzYZ5YfiNvXW6tkvw7xEiDRn 22IWOA7eqp6Ctaetk38LknSrWBfKwXFNdoipybO/7iouqOxNMZF+7FOxTLzmijRL3xJV uWRg== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20161025; h=x-gm-message-state:mime-version:in-reply-to:references:from:date :message-id:subject:to; bh=EdsYjucfwzFVmyTkocwMnTu1tTXyHxNkmc/5dLubwxQ=; b=G4FupDbSLuOyxwHtTGQy/UJszMN73NFYUfrITJY1rTpKe6rjhHwIi+gUvHpY35IB4T Q177585ASUihnqymSIvnVt/n/ibmRB2VP/PwHao/8YyruKExwPQTdHBr6q2irvP/OIaC 0ZdvOSCwhu67oBk/qvRA/mVBkuW2a+muqHttVm+3WVfhSCmRPpaOcHm22kFxWNGzcRcn 0uG4Yb9Qfe165W42M8RhPFpH09gydRMXideoLqM2W9dkYDdoD0ov3NnHAp7RYrVWyORs 6DgCe4WT6rNe8FA6ogtgCJMTqhni+O+0yLI9iA79BhkXEccUDu6flpscwwvgwE5xbPNO tt3w== X-Gm-Message-State: AOUpUlFMkK/XssU95B9WiJ1XOAgwfjVSAjMwjR54sZaPwlC7LXQVAOic dJkVoWWwDSNhYleOgrv8ZzOIexat5Ph+DvbCzF3eqw== X-Google-Smtp-Source: AAOMgpdncwOGt4OT/k0PgjeE/5B1r6J95Y6aMoSuuSri3IMN1t3JiLPZYm5LxSN5k/w0gPRhCnNfKdo4A77DOPfzA5A= X-Received: by 2002:a6b:5b0b:: with SMTP id v11-v6mr18770129ioh.39.1533655573588; Tue, 07 Aug 2018 08:26:13 -0700 (PDT) MIME-Version: 1.0 Received: by 2002:a4f:5cb:0:0:0:0:0 with HTTP; Tue, 7 Aug 2018 08:25:52 -0700 (PDT) In-Reply-To: References: From: Jeff Jirsa Date: Tue, 7 Aug 2018 08:25:52 -0700 Message-ID: Subject: Re: [EXTERNAL] Re: Cassandra rate dropping over long term test To: cassandra Content-Type: multipart/related; boundary="000000000000ac30870572da039c" --000000000000ac30870572da039c Content-Type: multipart/alternative; boundary="000000000000ac30850572da039b" --000000000000ac30850572da039b Content-Type: text/plain; charset="UTF-8" Content-Transfer-Encoding: quoted-printable What's the test do? Pseudocode + schema? On Tue, Aug 7, 2018 at 8:22 AM, Mihai Stanescu wrote: > Is it possible your client/test is doing something iterative, where the >> longer it runs, the more it reads or writes? > > > It is possible but i don't see this reflected in the graphs as the number > of serviced requests remains the same but the IOPS starts growing after a > big compaction and also when read IOPS start growing i don't see an > increase in the number of serviced requests. On the contrary as the CPU > increases also the number of serviced requests drops. > > I could not find a metric for received requests but since nothing was > dropped i guess this would mean that all are serviced and it does not loo= k > like the client is piling up. > > I think its more like what Rahul Singh said. I think the size based > compaction keeps on making bigger and bigger sstable which is anyway not > needed. I am not sure exactly if there is a limit on how big SStable can > get and when it stops compacting. > > I have switched to Time window compactor and its running much better, i > will leave it to do the 24h test. IMO it would compact 80% of the traffic= , > the rest will expire at the expense of some disk. For the rest TTL is the > say to go which is fine for me. > > I will update the progress here > > > On Tue, Aug 7, 2018 at 5:13 PM, Jeff Jirsa wrote: > >> I'd be surprised if there's a bug with long lived connections, but it's >> possible. >> >> Is it possible your client/test is doing something iterative, where the >> longer it runs, the more it reads or writes? >> >> On Tue, Aug 7, 2018 at 2:32 AM, Mihai Stanescu >> wrote: >> >>> Hi, >>> >>> I collected more metrics see below. >>> >>> It seems the cluster is destabilizing but i cannot clearly see why. >>> >>> One weard bit is that if i restart the client everything is ok again. >>> Could it be that there are some problems with the session which is kept >>> open for too long? or something? The rate of requests hitting the serve= r >>> seems ok and seems the statements are executed ok. >>> >>> >>> There is a decription of the table >>> >>> CREATE TABLE demodb.topic_message ( >>> topic_name text, >>> message_index int, >>> crated_at bigint, >>> message blob, >>> tag text, >>> type text, >>> uuid text, >>> PRIMARY KEY (topic_name, message_index) >>> ) WITH CLUSTERING ORDER BY (message_index ASC) >>> AND bloom_filter_fp_chance =3D 0.01 >>> AND caching =3D {'keys': 'ALL', 'rows_per_partition': 'NONE'} >>> AND comment =3D '' >>> AND compaction =3D {'class': 'org.apache.cassandra.db.compa >>> ction.SizeTieredCompactionStrategy', 'max_threshold': '32', >>> 'min_threshold': '4'} >>> AND compression =3D {'chunk_length_in_kb': '64', 'class': ' >>> org.apache.cassandra.io.compress.LZ4Compressor'} >>> AND crc_check_chance =3D 1.0 >>> AND dclocal_read_repair_chance =3D 0.1 >>> AND default_time_to_live =3D 0 >>> AND gc_grace_seconds =3D 0 >>> AND max_index_interval =3D 2048 >>> AND memtable_flush_period_in_ms =3D 0 >>> AND min_index_interval =3D 128 >>> AND read_repair_chance =3D 0.0 >>> AND speculative_retry =3D '99PERCENTILE'; >>> >>> >>> message_index is an incrementing sequence per topic_name. >>> >>> >>> I wonder if you are building up tombstones with the deletes >>> >>> >>> There should be just one tombstone per entry give our model. The access >>> pattern is also kind of time localized because the operations to >>> read/delete are done on recent inserted rows. >>> >>> Actually you can see that the red line actually drops when the read IOP= S >>> start. >>> >>> >>> >>> >>> >>> >>> >>> >>> Any warnings in your system.log for reading through too many tombstones= ? >>> >>> >>> Nope >>> >>> One thing to notice is that after we restarted the client the cluster >>> recovered. >>> >>> >>> Regards, >>> Mihai >>> >>> >>> On Fri, Aug 3, 2018 at 10:35 PM, Durity, Sean R < >>> SEAN_R_DURITY@homedepot.com> wrote: >>> >>>> I wonder if you are building up tombstones with the deletes. Can you >>>> share your data model? Are the deleted rows using the same partition k= ey as >>>> new rows? Any warnings in your system.log for reading through too many >>>> tombstones? >>>> >>>> >>>> >>>> >>>> >>>> Sean Durity >>>> >>>> >>>> >>>> *From:* Mihai Stanescu >>>> *Sent:* Friday, August 03, 2018 12:03 PM >>>> *To:* user@cassandra.apache.org >>>> *Subject:* [EXTERNAL] Re: Cassandra rate dropping over long term test >>>> >>>> >>>> >>>> I looked at the compaction history on the affected node when it was >>>> affected and it was not affected. >>>> >>>> >>>> >>>> The number of compactions is fairly similar and the amount of work als= o. >>>> >>>> >>>> >>>> *Not affected time* >>>> >>>> [root@cassandra7 ~]# nodetool compactionhistory | grep 02T22 >>>> >>>> fda43ca0-9696-11e8-8efb-25b020ed0402 demodb topic_message >>>> 2018-08-02T22:59:47.946 433124864 339496194 {1:3200576, 2:2025936, >>>> 3:262919} >>>> >>>> 8a83e2c0-9696-11e8-8efb-25b020ed0402 demodb topic_message >>>> 2018-08-02T22:56:34.796 133610579 109321990 {1:1574352, 2:434814} >>>> >>>> >>>> 01811e20-9696-11e8-8efb-25b020ed0402 demodb topic_message >>>> 2018-08-02T22:52:44.930 132847372 108175388 {1:1577164, 2:432508} >>>> >>>> >>>> >>>> *Experiencing more ioread* >>>> >>>> [root@cassandra7 ~]# nodetool compactionhistory | grep 03T12 >>>> >>>> 389aa220-970c-11e8-8efb-25b020ed0402 demodb topic_message >>>> 2018-08-03T12:58:57.986 470326446 349948622 {1:2590960, 2:2600102, >>>> 3:298369} >>>> >>>> 81fe6f10-970b-11e8-8efb-25b020ed0402 demodb topic_message >>>> 2018-08-03T12:53:51.617 143850880 115555226 {1:1686260, 2:453627} >>>> >>>> >>>> ce418e30-970a-11e8-8efb-25b020ed0402 demodb topic_message >>>> 2018-08-03T12:48:50.067 147035600 119201638 {1:1742318, 2:452226} >>>> >>>> >>>> >>>> During a read operation the row can mostly be in one sstable since was >>>> only inserted and then read so its strange. >>>> >>>> >>>> >>>> We have a partition key and then a clustering key. >>>> >>>> >>>> >>>> Rows that are written should be in kernel buffers and the rows which >>>> are lost to delete are never read again either so the kernel should ha= ve >>>> only the most recent data. >>>> >>>> >>>> >>>> I remain puzzled >>>> >>>> >>>> >>>> >>>> >>>> >>>> >>>> On Fri, Aug 3, 2018 at 3:58 PM, Jeff Jirsa wrote: >>>> >>>> Probably Compaction >>>> >>>> Cassandra data files are immutable >>>> >>>> The write path first appends to a commitlog, then puts data into the >>>> memtable. When the memtable hits a threshold, it=E2=80=99s flushed to = data files on >>>> disk (let=E2=80=99s call the first one =E2=80=9C1=E2=80=9D, second =E2= =80=9C2=E2=80=9D and so on) >>>> >>>> Over time we build up multiple data files on disk - when Cassandra >>>> reads, it will merge data in those files to give you the result you ex= pect, >>>> choosing the latest value for each column >>>> >>>> But it=E2=80=99s usually wasteful to lots of files around, and that me= rging is >>>> expensive, so compaction combines those data files behind the scenes i= n a >>>> background thread. >>>> >>>> By default they=E2=80=99re combined when 4 or more files are approxima= tely the >>>> same size, so if your write rate is such that you fill and flush the >>>> memtable every 5 minutes, compaction will likely happen at least every= 20 >>>> minutes (sometimes more). This is called size tiered compaction; there= are >>>> 4 strategies but size tiered is default and easiest to understand. >>>> >>>> You=E2=80=99re seeing mostly writes because the reads are likely in pa= ge cache >>>> (the kernel doesn=E2=80=99t need to go to disk to read the files, it= =E2=80=99s got them in >>>> memory for serving normal reads). >>>> >>>> -- >>>> Jeff Jirsa >>>> >>>> >>>> > On Aug 3, 2018, at 12:30 AM, Mihai Stanescu >>>> wrote: >>>> > >>>> > Hi all, >>>> > >>>> > I am perftesting cassandra over a longrun in a cluster of 8 nodes an= d >>>> i noticed the rate of service drops. >>>> > Most of the nodes have the CPU between 40-65% however one of the >>>> nodes has a higher CPU and also started performing a lot of read IOPS = as >>>> seen in the image. (green is read IOPS) >>>> > >>>> > My test has a mixed rw scenario. >>>> > 1. insert row >>>> > 2. after 60 seconds read row >>>> > 3. delete row. >>>> > >>>> > The rate of inserts is bigger than the rate of deletes so some delet= e >>>> will not happen. >>>> > >>>> > I have checked the client it it does not accumulate RAM, GC is a >>>> straight line so o don't understand whats going on. >>>> > >>>> > Any hints? >>>> > >>>> > Regards, >>>> > MIhai >>>> > >>>> > >>>> > >>>> > >>>> >>>> --------------------------------------------------------------------- >>>> To unsubscribe, e-mail: user-unsubscribe@cassandra.apache.org >>>> For additional commands, e-mail: user-help@cassandra.apache.org >>>> >>>> >>>> >>>> ------------------------------ >>>> >>>> The information in this Internet Email is confidential and may be >>>> legally privileged. It is intended solely for the addressee. Access to= this >>>> Email by anyone else is unauthorized. If you are not the intended >>>> recipient, any disclosure, copying, distribution or any action taken o= r >>>> omitted to be taken in reliance on it, is prohibited and may be unlawf= ul. >>>> When addressed to our clients any opinions or advice contained in this >>>> Email are subject to the terms and conditions expressed in any applica= ble >>>> governing The Home Depot terms of business or client engagement letter= . The >>>> Home Depot disclaims all responsibility and liability for the accuracy= and >>>> content of this attachment and for any damages or losses arising from = any >>>> inaccuracies, errors, viruses, e.g., worms, trojan horses, etc., or ot= her >>>> items of a destructive nature, which may be contained in this attachme= nt >>>> and shall not be liable for direct, indirect, consequential or special >>>> damages in connection with this e-mail message or its attachment. >>>> >>> >>> >> > --000000000000ac30850572da039b Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: quoted-printable
What's the test do? Pseudocode + schema?=C2=A0

On Tue, Aug 7, 2018= at 8:22 AM, Mihai Stanescu <mihai.stanescu@gmail.com> wrote:
Is it possible your client/test is doing something iterative, whe= re the longer it runs, the more it reads or writes?=C2=A0

It is possible but i don't see this reflec= ted in the graphs as the number of serviced requests remains the same but t= he IOPS starts growing after a big compaction and also when read IOPS start= growing i don't see an increase in the number of serviced requests. On= the contrary as the CPU increases also the number of serviced requests dro= ps.=C2=A0

I could not find a metric for received r= equests but since nothing was dropped i guess this would mean that all are = serviced and it does not look like the client is piling up.=C2=A0

I think its more like what Rahul Singh said. I think the si= ze based compaction keeps =C2=A0on making bigger and bigger sstable which i= s anyway not needed. I am not sure exactly if there is a limit on how big S= Stable can get and when it stops compacting.=C2=A0

I have switched to Time window compactor and its running much better, i wi= ll leave it to do the 24h test. IMO it would compact 80% of the traffic, th= e rest will expire at the expense of some disk. For the rest TTL is the say= to go which is fine for me.=C2=A0

I will update t= he progress here


On Tue, A= ug 7, 2018 at 5:13 PM, Jeff Jirsa <jjirsa@gmail.com> wrote:
I'd be surprised if t= here's a bug with long lived connections, but it's possible.
Is it possible your client/test is doing something iterative, = where the longer it runs, the more it reads or writes?=C2=A0

On Tue, Aug= 7, 2018 at 2:32 AM, Mihai Stanescu <mihai.stanescu@gmail.com&g= t; wrote:
Hi,
I collected more metrics see below.

It seems the cluster is destabilizing but i cannot clearly =C2=A0see why.=

One weard bit is that if i restart the client eve= rything is ok again. Could it be that there are some problems with the sess= ion which is kept open for too long? or something? The rate of requests hit= ting the server seems ok and seems the statements are executed ok.=C2=A0


There is a decription of the table

CREATE TABLE demodb.topic_message (
= =C2=A0 =C2=A0 topic_name text,
=C2=A0 =C2=A0 message_index int,
=C2=A0 =C2=A0 crated_at bigint,
=C2=A0 =C2=A0 message bl= ob,
=C2=A0 =C2=A0 tag text,
=C2=A0 =C2=A0 type text,
=C2=A0 =C2=A0 uuid text,
=C2=A0 =C2=A0 PRIMARY KEY (topic= _name, message_index)
) WITH CLUSTERING ORDER BY (message_index A= SC)
=C2=A0 =C2=A0 AND bloom_filter_fp_chance =3D 0.01
= =C2=A0 =C2=A0 AND caching =3D {'keys': 'ALL', 'rows_per= _partition': 'NONE'}
=C2=A0 =C2=A0 AND comment =3D &#= 39;'
=C2=A0 =C2=A0 AND compaction =3D {'class': '= org.apache.cassandra.db.compaction.SizeTieredCompactionStrategy&#= 39;, 'max_threshold': '32', 'min_threshold': '4= '}
=C2=A0 =C2=A0 AND compression =3D {'chunk_length_in_kb= ': '64', 'class': 'org.apache.cassandra.io.compress.LZ4C= ompressor'}
=C2=A0 =C2=A0 AND crc_check_chance =3D 1.0
<= div>=C2=A0 =C2=A0 AND dclocal_read_repair_chance =3D 0.1
=C2=A0 = =C2=A0 AND default_time_to_live =3D 0
=C2=A0 =C2=A0 AND gc_grace_= seconds =3D 0
=C2=A0 =C2=A0 AND max_index_interval =3D 2048
=
=C2=A0 =C2=A0 AND memtable_flush_period_in_ms =3D 0
=C2=A0 = =C2=A0 AND min_index_interval =3D 128
=C2=A0 =C2=A0 AND read_repa= ir_chance =3D 0.0
=C2=A0 =C2=A0 AND speculative_retry =3D '99= PERCENTILE';


message_inde= x is an incrementing sequence per topic_name.=C2=A0


I wonder if you are building up tombstones with the deletes

There should be just one tombstone per= entry give our model. The access pattern is also kind of time localized be= cause the operations to read/delete are done on recent inserted rows.
=

Actually you can see that the red line actually drops w= hen the read IOPS start.







Any = warnings in your system.log for reading through too many tombstones?=

Nope

One t= hing to notice is that after we restarted the client the cluster recovered.=


Regards,
Mihai


On Fri, Aug 3, 2018 at= 10:35 PM, Durity, Sean R <SEAN_R_DURITY@homedepot.com> wrote:

I wonder if you are building up tombs= tones with the deletes. Can you share your data model? Are the deleted rows= using the same partition key as new rows? Any warnings in your system.log for reading through too many tombstones?

=C2=A0

=C2=A0

Sean Durity

=C2=A0

From: Mihai Stanescu <mihai.stanescu@gmail.com= >
Sent: Friday, August 03, 2018 12:03 PM
To: u= ser@cassandra.apache.org
Subject: [EXTERNAL] Re: Cassandra rate dropping over long term test<= u>

=C2=A0

I looked at the compaction history on the affected n= ode when it was affected and it was not affected.=C2=A0

=C2=A0

The number of compactions is fairly similar and the = amount of work also.

=C2=A0

Not affected time

[root@cassandra7 ~]# nodetool compactionhistory | gr= ep 02T22

fda43ca0-9696-11e8-8efb-25b020ed0402 demodb =C2= =A0 =C2=A0 =C2=A0 =C2=A0topic_message =C2=A0 =C2=A0 2018-08-02T22:59:47.946= 433124864 =C2=A0339496194 =C2=A0{1:3200576, 2:2025936, 3:262919} =C2=A0 = =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2= =A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 = =C2=A0 =C2=A0 =C2=A0 =C2=A0=C2=A0

8a83e2c0-9696-11e8-8efb-25b020ed0402 demodb =C2= =A0 =C2=A0 =C2=A0 =C2=A0topic_message =C2=A0 =C2=A0 2018-08-02T22:56:34.796= 133610579 =C2=A0109321990 =C2=A0{1:1574352, 2:434814} =C2=A0 =C2=A0 =C2=A0= =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2= =A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 = =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0

01811e20-9696-11e8-8efb-25b020ed0402 demodb =C2= =A0 =C2=A0 =C2=A0 =C2=A0topic_message =C2=A0 =C2=A0 2018-08-02T22:52:44.930= 132847372 =C2=A0108175388 =C2=A0{1:1577164, 2:432508} =C2=A0=

=C2=A0

Experiencing more ioread

[root@cassandra7 ~]# nodetool compactionhistory | gr= ep 03T12

389aa220-970c-11e8-8efb-25b020ed0402 demodb =C2= =A0 =C2=A0 =C2=A0 =C2=A0topic_message =C2=A0 =C2=A0 2018-08-03T12:58:57.986= 470326446 =C2=A0349948622 =C2=A0{1:2590960, 2:2600102, 3:298369} =C2=A0 = =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2= =A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 = =C2=A0 =C2=A0 =C2=A0 =C2=A0=C2=A0

81fe6f10-970b-11e8-8efb-25b020ed0402 demodb =C2= =A0 =C2=A0 =C2=A0 =C2=A0topic_message =C2=A0 =C2=A0 2018-08-03T12:53:51.617= 143850880 =C2=A0115555226 =C2=A0{1:1686260, 2:453627} =C2=A0 =C2=A0 =C2=A0= =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2= =A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 = =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0 =C2=A0

ce418e30-970a-11e8-8efb-25b020ed0402 demodb =C2= =A0 =C2=A0 =C2=A0 =C2=A0topic_message =C2=A0 =C2=A0 2018-08-03T12:48:50.067= 147035600 =C2=A0119201638 =C2=A0{1:1742318, 2:452226} =C2=A0 =C2=A0=

=C2=A0

During a read operation the row can mostly be in one= sstable since was only inserted and then read so its strange.

=C2=A0

We have a partition key and then a clustering key.= =C2=A0

=C2=A0

Rows that are written should be in kernel buffers an= d the rows which are lost to delete are never read again either so the kern= el should have only the most recent data.=C2=A0

=C2=A0

I remain puzzled

=C2=A0

=C2=A0

=C2=A0

On Fri, Aug 3, 2018 at 3:58 PM, Jeff Jirsa <jjirsa@gmail.com> w= rote:

Probably Compaction
Cassandra data files are immutable

The write path first appends to a commitlog, then puts data into the memtab= le. When the memtable hits a threshold, it=E2=80=99s flushed to data files = on disk (let=E2=80=99s call the first one =E2=80=9C1=E2=80=9D, second =E2= =80=9C2=E2=80=9D and so on)

Over time we build up multiple data files on disk - when Cassandra reads, i= t will merge data in those files to give you the result you expect, choosin= g the latest value for each column

But it=E2=80=99s usually wasteful to lots of files around, and that merging= is expensive, so compaction combines those data files behind the scenes in= a background thread.

By default they=E2=80=99re combined when 4 or more files are approximately = the same size, so if your write rate is such that you fill and flush the me= mtable every 5 minutes, compaction will likely happen at least every 20 min= utes (sometimes more). This is called size tiered compaction; there are 4 strategies but size tiered is default and e= asiest to understand.

You=E2=80=99re seeing mostly writes because the reads are likely in page ca= che (the kernel doesn=E2=80=99t need to go to disk to read the files, it=E2= =80=99s got them in memory for serving normal reads).

--
Jeff Jirsa


> On Aug 3, 2018, at 12:30 AM, Mihai Stanescu <mihai.stanescu@gmail.com> wr= ote:
>
> Hi all,
>
> I am perftesting cassandra over a longrun in a cluster of 8 nodes and = i noticed the rate of service drops.
> Most of the nodes have the CPU between 40-65% however one of the nodes= has a higher CPU and also started performing a lot of read IOPS as seen in= the image. (green is read IOPS)
>
> My test has a mixed rw scenario.
> 1. insert row
> 2. after 60 seconds read row
> 3. delete row.
>
> The rate of inserts is bigger than the rate of deletes so some delete = will not happen.
>
> I have checked the client it it does not accumulate RAM, GC is a strai= ght line so o don't understand whats going on.
>
> Any hints?
>
> Regards,
> MIhai
>
> <image.png>
>
>

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