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 16AE0200D30 for ; Mon, 30 Oct 2017 10:03:05 +0100 (CET) Received: by cust-asf.ponee.io (Postfix) id 15002160BE4; Mon, 30 Oct 2017 09:03:05 +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 750D71609EF for ; Mon, 30 Oct 2017 10:03:02 +0100 (CET) Received: (qmail 43220 invoked by uid 500); 30 Oct 2017 09:03:01 -0000 Mailing-List: contact user-help@flink.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Delivered-To: mailing list user@flink.apache.org Received: (qmail 43210 invoked by uid 99); 30 Oct 2017 09:03:01 -0000 Received: from pnap-us-west-generic-nat.apache.org (HELO spamd3-us-west.apache.org) (209.188.14.142) by apache.org (qpsmtpd/0.29) with ESMTP; Mon, 30 Oct 2017 09:03:01 +0000 Received: from localhost (localhost [127.0.0.1]) by spamd3-us-west.apache.org (ASF Mail Server at spamd3-us-west.apache.org) with ESMTP id 3326E180235 for ; Mon, 30 Oct 2017 09:03:00 +0000 (UTC) X-Virus-Scanned: Debian amavisd-new at spamd3-us-west.apache.org X-Spam-Flag: NO X-Spam-Score: 5.189 X-Spam-Level: ***** X-Spam-Status: No, score=5.189 tagged_above=-999 required=6.31 tests=[DKIM_SIGNED=0.1, DKIM_VALID=-0.1, DKIM_VALID_AU=-0.1, FREEMAIL_REPLY=1, HTML_IMAGE_RATIO_04=0.61, HTML_MESSAGE=2, KAM_LINEPADDING=1.2, 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] autolearn=disabled Authentication-Results: spamd3-us-west.apache.org (amavisd-new); dkim=pass (2048-bit key) header.d=gmail.com Received: from mx1-lw-us.apache.org ([10.40.0.8]) by localhost (spamd3-us-west.apache.org [10.40.0.10]) (amavisd-new, port 10024) with ESMTP id 41HD7m4uvJiv for ; Mon, 30 Oct 2017 09:02:54 +0000 (UTC) Received: from mail-lf0-f47.google.com (mail-lf0-f47.google.com [209.85.215.47]) by mx1-lw-us.apache.org (ASF Mail Server at mx1-lw-us.apache.org) with ESMTPS id AEE295FB32 for ; Mon, 30 Oct 2017 09:02:53 +0000 (UTC) Received: by mail-lf0-f47.google.com with SMTP id a2so14010718lfh.11 for ; Mon, 30 Oct 2017 02:02:53 -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 :cc; bh=0SCPzjs1//X9Nfip4lf38rBujcXPD0Lo/Ejmbvq3QA8=; b=mtP2EJ6pVrIlLV18nSMZo1+B7x5ak8Ghj8RdVhYu4DxLbcY7xpKUKc/lQkCzbS4OSe wlr1mMPta4vNoHFN0KzSup8l24j/JYRvc9H1QEM50H7JQwX74M1mZRbkJrGzDC1WayEj Xnk1iKL5H6LAjQLeWkHpsO2ykDisa1nHFitfF/duGZBsNqyaYzeG2VFruEN3jNtMxJGg GBnc1PoJdUsmvKudmAK4fvzfGs6/fLlwAAqglOgWnR30Uku/qMmhYPpYOPL7on2+zJ2V FlKUG2drKVHV8WyHyIjAIbkiyPhw7cV3qbrjA+FmtLrgoVbmCOjG8Ayc3PZTmKX0wX7v hW2A== 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:cc; bh=0SCPzjs1//X9Nfip4lf38rBujcXPD0Lo/Ejmbvq3QA8=; b=lbhKH+oihNkH+PKAZL1w8haxpJsPTmA97sh/7NG2p3TTdkhTCC6iuw01SAd7ewlNMC gYm+4jFq//fUm4A2DF2hXLayEI/5IxZTpawCLWeEFcNcujC0YnK+38uUNApZQqyXAXv8 B+SoLQzBJSXeU/BdDOTs1xt5kQPmJifaMdUvBD1lPVHkkEYdI2ysTLL4mqIQ8vLbL3UD b8/HFFBHG9d6ivECOoiJPFI62tVRhVWl5D/4AERs8EWHrOyqrXF7tzBQSQr6jCyc+Zu0 YWuez3Plc8h0LebFrAwxu/XgezNH/aUAPwr5rVi2Y9YdLR7nJI5W+9jXKg+PkNXxef0y 2vYw== X-Gm-Message-State: AMCzsaXiQe8lNzpG30c/7igNSEwel9xI3bAv6e2qb6jpyFozYNuJ93N9 gh+s4rqyzNgiqFpZRP9wsw769RVnJvNwoBTuLxo= X-Google-Smtp-Source: ABhQp+RwCYZHbN7/Ya+hsIZXBrEH/FYtXC9u7vTCtGbHUWwkF/r0Jh5mQ1rR3SnWwV9Q1b19hamcjey+RYs76E99zR4= X-Received: by 10.25.56.82 with SMTP id d18mr2522699lfj.56.1509354172344; Mon, 30 Oct 2017 02:02:52 -0700 (PDT) MIME-Version: 1.0 Received: by 10.25.26.134 with HTTP; Mon, 30 Oct 2017 02:02:21 -0700 (PDT) In-Reply-To: <981577EAC00F8245AB0ABE8CAA3EBC4812EA97D4@exlnmb46.eur.nsroot.net> References: <981577EAC00F8245AB0ABE8CAA3EBC4812EA6F7C@exlnmb46.eur.nsroot.net> <981577EAC00F8245AB0ABE8CAA3EBC4812EA97D4@exlnmb46.eur.nsroot.net> From: Biplob Biswas Date: Mon, 30 Oct 2017 10:02:21 +0100 Message-ID: Subject: Re: state size effects latency To: "Sofer, Tovi" Cc: Narendra Joshi , user Content-Type: multipart/related; boundary="f403045e8f6c488e62055cbfe78d" archived-at: Mon, 30 Oct 2017 09:03:05 -0000 --f403045e8f6c488e62055cbfe78d Content-Type: multipart/alternative; boundary="f403045e8f6c488e60055cbfe78c" --f403045e8f6c488e60055cbfe78c Content-Type: text/plain; charset="UTF-8" Content-Transfer-Encoding: quoted-printable Hi Tovi, This might seem a really naive question (and its neither a solution or answer to your question ) but I am trying to understand how latency is viewed. You said you achieved less than 5 ms latency and say for the 99th percentile you achieved 0.3 and 9 ms respectively, what kind of latency is this? specific operator latency? because the end to end latency is around 50ms and 370 ms. Was just curious how latency is seen from a different perspective, would really help me in my understanding. Thanks a lot, Biplob Thanks & Regards Biplob Biswas On Mon, Oct 30, 2017 at 8:53 AM, Sofer, Tovi wrote: > Thank you Joshi. > > We are using currently FsStateBackend since in version 1.3 it supports > async snapshots, and no RocksDB. > > > > Does anyone else has feedback on this issues? > > > > *From:* Narendra Joshi [mailto:narendraj9@gmail.com] > *Sent:* =D7=99=D7=95=D7=9D =D7=90 29 =D7=90=D7=95=D7=A7=D7=98=D7=95=D7=91= =D7=A8 2017 12:13 > *To:* Sofer, Tovi [ICG-IT] > *Cc:* user > *Subject:* Re: state size effects latency > > > > We have also faced similar issues. The only thing that happens in sync > when using async snaphots is getting a persistent point in time picture > which in case of rocksdb backend is making symlinks. That would linearly > increase with number of files to symlink but this should be negligible. W= e > could not find a satisfying reason for increase in latency with state siz= e. > > Best, > Narendra > > Narendra Joshi > > On 29 Oct 2017 15:04, "Sofer, Tovi" wrote: > > Hi all, > > > > In our application we have a requirement to very low latency, preferably > less than 5ms. > > We were able to achieve this so far, but when we start increasing the > state size, we see distinctive decrease in latency. > > We have added MinPauseBetweenCheckpoints, and are using async snapshots. > > =C2=B7 Why does state size has such distinctive effect on latency= ? How > can this effect be minimized? > > =C2=B7 Can the state snapshot be done using separates threads and > resources in order to less effect on stream data handling? > > > > > > Details: > > > > Application configuration: > > env.enableCheckpointing(1000); > > env.getCheckpointConfig().*setMinPauseBetweenCheckpoints*(1000); > > env.setStateBackend(new FsStateBackend(checkpointDirURI, true)); // use > async snapshots > > env.setParallelism (16) ; //running on machine with 40 cores > > > > Results: > > > > A. *When state size is ~20MB got latency of 0.3 ms latency for 99=E2= =80=99th > percentile* > > > > *Latency info: *(in nanos) > > 2017-10-26 07:26:55,030 INFO com.citi.artemis.flink.reporters.Log4JRepor= ter > - [Flink-MetricRegistry-1] localhost.taskmanager. > 6afd21aeb9b9bef41a4912b023469497.Flink Streaming > Job.AverageE2ELatencyChecker.0.LatencyHistogram: count:10000 min:31919 > max:13481166 mean:89492.0644 stddev:265876.0259763816 p50:68140.5 > p75:82152.5 p95:146654.0499999999 p98:204671.74 p99:308958.73999999993 > p999:3844154.002999794 > > *State\checkpoint info:* > > > > [image: cid:image001.png@01D350DC.40449520] > > > > > > > > *B.** When state size is ~200MB latency was significantly decreased > to 9 ms latency for 99=E2=80=99th percentile* > > *Latency info: * > > 2017-10-26 07:17:35,289 INFO com.citi.artemis.flink.reporters.Log4JRepor= ter > - [Flink-MetricRegistry-1] localhost.taskmanager. > 05431e7ecab1888b2792265cdc0ddf84.Flink Streaming > Job.AverageE2ELatencyChecker.0.LatencyHistogram: count:10000 min:30186 > max:46236470 mean:322105.7072 stddev:2060373.4782505725 p50:68979.5 > p75:85780.25 p95:219882.69999999914 p98:2360171.4399999934 > p99:9251766.559999945 p999:3.956163987499886E7 > > *State\checkpoint info:* > > > > > > [image: cid:image002.png@01D350DC.40449520] > > > > Thanks and regrdas, > > Tovi > > > > --f403045e8f6c488e60055cbfe78c Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: quoted-printable
Hi Tovi,

This might seem a really naive= question (and its neither a solution or answer to your question ) but I am= trying to understand how latency is viewed. You said you achieved less tha= n 5 ms latency and say for the 99th percentile you achieved 0.3 and 9 ms re= spectively, what kind of latency is this? specific operator latency? becaus= e the end to end latency is around 50ms and 370 ms.=C2=A0

Was just curious how latency is seen from a different perspective, = would really help me in my understanding.

Thanks a= lot,
Biplob

=
Thanks & Regards
Biplob Biswas

On Mon, Oct 30, 2017 at 8:53 AM, Sofer, Tovi= <tovi.sofer@citi.com> wrote:

Thank you Joshi.=

We are using currently FsStateBackend= since in version 1.3 it supports async snapshots, and no RocksDB.

=C2=A0

Does anyone else has feedback on this= issues?

=C2=A0

From: Narendra Joshi [mailto:narendraj9@gmail.com= ]
Sent:
=D7=99=D7=95=D7=9D=C2=A0=D7=90 29 =D7=90=D7=95=D7=A7=D7=98=D7=95=D7=91=D7= =A8 2017 12:13
To: Sofer, Tovi [ICG-IT] <ts72414@imceu.eu.ssmb.com>
Cc: user <user@flink.apache.org>
Subject: Re: state size effects latency

=C2=A0

We have also faced similar issues. The only thing that happens in sync w= hen using async snaphots is getting a persistent point in time picture whic= h in case of rocksdb backend is making symlinks. That would linearly increa= se with number of files to symlink but this should be negligible. We could not find a satisfying reason for i= ncrease in latency with state size.

Best,
Narendra

Narendra Joshi

On 29 Oct 2017 15:04, "Sofer, Tovi" <tovi.sofer@citi.com<= /a>> wrote:

Hi all,

=C2=A0

In our application we have a requirement to very low= latency, preferably less than 5ms.

We were able to achieve this so far, but when we sta= rt increasing the state size, we see distinctive decrease in latency.

We have added MinPauseBetweenCheckpoints, and are us= ing async snapshots.

=C2=B7=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 Why does state size has such distinctive effect on latency? How can = this effect be minimized?

=C2=B7=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 Can the state snapshot be done using separates threads and resources= in order to less effect on stream data handling?

=C2=A0

=C2=A0

Details:

=C2=A0

Application configuration:

env.enableCheckpointing(1000);

env.getCheckpointConfig().setMinPauseBetween= Checkpoints(1000);

env.setStateBackend(new FsStateBackend(checkpointDirURI, true)); // us= e async snapshots

env.setParallelism (16) ; //running on machine with = 40 cores

=C2=A0

Results:

=C2=A0

A.=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 When state size is ~20MB got latenc= y of 0.3 ms latency for 99=E2=80=99th percentile

=C2=A0

Latency info: (in nanos)

2017-10-26 07:26:55,03= 0 INFO=C2=A0 com.citi.artemis.flink.reporters.Log4JReporter - [Flink-M= etricRegistry-1] localhost.taskmanager.6afd21aeb9b9bef41a4912b0234694<= wbr>97.Flink Streaming Job.AverageE2ELatencyChecker.0.LatencyHistogram: count:1000= 0 min:31919 max:13481166 mean:89492.0644 stddev:265876.0259763816 p50:68140= .5 p75:82152.5 p95:146654.0499999999 p98:204671.74 p99:308958.73999999993 p= 999:3844154.002999794

State\checkpoint in= fo:

=C2=A0

3D"cid:image001.png@01D350DC.40449520"

=C2=A0

=C2=A0

=C2=A0

B.=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 When state size is ~200MB latency was = significantly decreased to 9 ms latency for 99=E2=80=99th percentile=

Latency info:

2017-10-26 07:17:35,28= 9 INFO=C2=A0 com.citi.artemis.flink.reporters.Log4JReporter - [Flink-M= etricRegistry-1] localhost.taskmanager.05431e7ecab1888b2792265cdc0ddf<= wbr>84.Flink Streaming Job.AverageE2ELatencyChecker.0.LatencyHistogram: count:1000= 0 min:30186 max:46236470 mean:322105.7072 stddev:2060373.4782505725 p50:689= 79.5 p75:85780.25 p95:219882.69999999914 p98:2360171.4399999934 p99:9251766= .559999945 p999:3.956163987499886E7

State\checkpoint in= fo:

=C2=A0

=C2=A0

3D"cid:image002.png@01D350DC.40449520"

=C2=A0

Thanks and regrdas,

Tovi

=C2=A0


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