Thanks Manu, the warmup is important, also the first run it downloads
a bunch of data which will affect the measurement. That's a good idea.

How can I find which commit corresponds to a pip build myself?

Pedro.

On Fri, Jun 28, 2019 at 4:48 PM Manu Seth <[email protected]> wrote:
>
> I ran the same cifar10.py script as Pedro, but for 20 epochs. Considering
> the first 10 epochs for warm-up, I averaged time per epoch for the last 10
> epochs.
>
> With MXNet 1.4.1 average time is 164.23 s
> With MXNet 1.5.0 average time is 174.59 s (~6.3% regression)
>
>
> For a second data point, I ran Gluon speed test benchmark script -
> https://github.com/apache/incubator-mxnet/blob/master/benchmark/python/gluon/benchmark_gluon.py
> using the following command:
> python3 benchmark_gluon.py --model 'resnet152_v2' --batch-size 128
> --num-batches 200 --type 'training'
>
> I got the following speeds:
> With MXNet 1.4.1, average speed is 25.677534 img/s
> With MXNet 1.5.0, average speed is 25.082130 img/s (~2.3% regression)
>
> Note:
> For 1.4.1 version, I used pip install mxnet-mkl==1.4.1
> For 1.5.0 version, I used pip install mxnet-mkl==1.5.0b20190619 which
> corresponds to commit# ccbbf6b4b76ea536a6583c99497c83b65a20817b which is
> behind 1.5.x branch by 4 commits
>
>
> Best,
> Manu
>
>
> On 6/27/19, 10:44 AM, "Pedro Larroy" <[email protected]> wrote:
> >
> >     I will try to run a few benchmarks in a bare metal instance tonight to
> >     remove virtualization variance for the measurements and provide some
> >     numbers.
> >
> >     Please propose a set of models / examples that would be desirable to
> >     run before the release and provide a link to an easy to run script
> >     with instructions so we can validate the release better.
> >
> >     Thank you.
> >
> >     On Thu, Jun 27, 2019 at 10:01 AM Lai Wei <[email protected]> wrote:
> >     >
> >     > Dear @dev,
> >     >
> >     > I m cancelling the vote for cached op fix:
> >     >
> >     > https://github.com/apache/incubator-mxnet/pull/15298
> >     >
> >     > As for the possible cpu training regression, it looks like not a
> > blocker
> >     > for now.
> >     >
> >     > I will start a new rc2 vote, please help to validate.
> >     >
> >     > Thanks!
> >     >
> >     >
> >     > On Thu, Jun 27, 2019 at 10:06 PM Chen, Ciyong <[email protected]>
> > wrote:
> >     >
> >     > > Hi Pedro,
> >     > >
> >     > > I was able to reproduced the similar result (v1.5 is ~%5.6 slower
> > than
> >     > > v1.4, I was using 18 cores for computing) with your script on
> > C5.18xlarge.
> >     > > But need to bind the cores with below command when running the
> > script,
> >     > > (without setting the env variables, I got a close time (<1%) with
> > v1.5 and
> >     > > v1.4)
> >     > >         export
> > KMP_AFFINITY=granularity=fine,noduplicates,compact,1,0
> >     > >         export OMP_NUM_THREADS=18
> >     > >
> >     > > Did you set any env variables during running?
> >     > >
> >     > > The performance result I got as below:
> >     > > 1) 1.4.1.rc0 (1a7199691f5cbc6012bb53eecbf884bed5ae6590)
> >     > > real    12m10.856s
> >     > > user    234m49.576s
> >     > > sys     4m38.044s
> >     > >
> >     > > 2) 1.5.0.rc1 (4d9667121ae6fb643f2a02ab15e25231ed756cde)
> >     > > real    12m52.140s
> >     > > user    246m30.740s
> >     > > sys     5m8.188s
> >     > >
> >     > > As I looked at the profiling data, most of the ops have same perf
> > between
> >     > > v1.4 and v1.5. But some ops like " _backward_BatchNorm" and
> > "Pooling" is
> >     > > ~1.37x slower on v1.5 compared with v1.4.
> >     > > Will do further analysis on these ops.
> >     > >
> >     > > Here's the hardware/OS info from my side:
> >     > > ----------Python Info----------
> >     > > Version      : 3.6.8
> >     > > Compiler     : GCC 7.3.0
> >     > > Build        : ('default', 'Dec 30 2018 01:22:34')
> >     > > Arch         : ('64bit', '')
> >     > > ------------Pip Info-----------
> >     > > Version      : 19.0.3
> >     > > Directory    :
> >     > >
> > /home/ubuntu/anaconda3/envs/perf-mxnet/lib/python3.6/site-packages/pip
> >     > > ----------MXNet Info-----------
> >     > > Version      : 1.5.0
> >     > > Directory    : /home/ubuntu/ws/incubator-mxnet/python/mxnet
> >     > > Hashtag not found. Not installed from pre-built package.
> >     > > ----------System Info----------
> >     > > Platform     : Linux-4.4.0-1085-aws-x86_64-with-debian-stretch-sid
> >     > > system       : Linux
> >     > > node         : ip-172-31-32-129
> >     > > release      : 4.4.0-1085-aws
> >     > > version      : #96-Ubuntu SMP Tue Jun 11 09:08:32 UTC 2019
> >     > > ----------Hardware Info----------
> >     > > machine      : x86_64
> >     > > processor    : x86_64
> >     > > Architecture:          x86_64
> >     > > CPU op-mode(s):        32-bit, 64-bit
> >     > > Byte Order:            Little Endian
> >     > > CPU(s):                72
> >     > > On-line CPU(s) list:   0-71
> >     > > Thread(s) per core:    2
> >     > > Core(s) per socket:    18
> >     > > Socket(s):             2
> >     > > NUMA node(s):          2
> >     > > Vendor ID:             GenuineIntel
> >     > > CPU family:            6
> >     > > Model:                 85
> >     > > Model name:            Intel(R) Xeon(R) Platinum 8124M CPU @
> > 3.00GHz
> >     > > Stepping:              3
> >     > > CPU MHz:               3000.000
> >     > > BogoMIPS:              6000.00
> >     > > Hypervisor vendor:     KVM
> >     > > Virtualization type:   full
> >     > > L1d cache:             32K
> >     > > L1i cache:             32K
> >     > > L2 cache:              1024K
> >     > > L3 cache:              25344K
> >     > > NUMA node0 CPU(s):     0-17,36-53
> >     > > NUMA node1 CPU(s):     18-35,54-71
> >     > > Flags:                 fpu vme de pse tsc msr pae mce cx8 apic sep
> > mtrr
> >     > > pge mca cmov pat pse36 clflush mmx fxsr sse sse2 ss ht syscall nx
> > pdpe1gb
> >     > > rdtscp lm constant_tsc arch_perfmon rep_good nopl xtopology
> > nonstop_tsc
> >     > > aperfmperf tsc_known_freq pni pclmulqdq monitor ssse3 fma cx16
> > pcid sse4_1
> >     > > sse4_2 x2apic movbe popcnt tsc_deadline_timer aes xsave avx f16c
> > rdrand
> >     > > hypervisor lahf_lm abm 3dnowprefetch invpcid_single kaiser fsgsbase
> >     > > tsc_adjust bmi1 hle avx2 smep bmi2 erms invpcid rtm mpx avx512f
> > rdseed adx
> >     > > smap clflushopt clwb avx512cd xsaveopt xsavec xgetbv1 ida arat pku
> >     > > ----------Network Test----------
> >     > >
> >     > >
> >     > > -Ciyong
> >     > >
> >     > >
> >     > > -----Original Message-----
> >     > > From: Zhao, Patric [mailto:[email protected]]
> >     > > Sent: Thursday, June 27, 2019 9:55 AM
> >     > > To: [email protected]
> >     > > Cc: [email protected]
> >     > > Subject: RE: [VOTE] Release Apache MXNet (incubating) version
> > 1.5.0.rc1
> >     > >
> >     > > Could we run more epochs to see the performance difference or
> > profiling
> >     > > the difference between good and bad run?
> >     > >
> >     > > > -----Original Message-----
> >     > > > From: Pedro Larroy [mailto:[email protected]]
> >     > > > Sent: Thursday, June 27, 2019 9:35 AM
> >     > > > To: [email protected]
> >     > > > Cc: [email protected]
> >     > > > Subject: Re: [VOTE] Release Apache MXNet (incubating) version
> >     > > > 1.5.0.rc1
> >     > > >
> >     > > > I run again and the gap is again bigger, I guess we need to
> > average
> >     > > > out the times across several runs:
> >     > > >
> >     > > > piotr@ip-172-31-63-171:0:~/deeplearning-benchmark/dawnbench
> >     > > > (master)+$ time ~/mxnet_1.4/py3_venv/bin/python cifar10.py
> > --epochs 5
> >     > > > && time ~/mxnet_1.5/py3_venv/bin/python cifar10.py --epochs 5
> >     > > > [23:17:09] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > ImageRecordIOParser2:
> >     > > > /home/piotr/deeplearning-benchmark/data/cifar/train.rec, use 4
> > threads
> >     > > > for decoding..
> >     > > > [23:17:09] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > [23:17:09] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> > completed
> >     > > > [23:17:09] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > ImageRecordIOParser2:
> >     > > > /home/piotr/deeplearning-benchmark/data/cifar/test.rec, use 4
> > threads
> >     > > > for decoding..
> >     > > > [23:17:09] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > [23:17:09] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> > completed
> >     > > > lr_schedule: {0: 0.05, 82: 0.005000000000000001, 123: 0.0005,
> > 300:
> >     > > > 0.0001} Epoch 0, Changed learning rate to 0.05 [23:17:09]
> >     > > > ../src/operator/nn/mkldnn/mkldnn_base.cc:74: Allocate
> >     > > > 147456 bytes with malloc directly
> >     > > > [23:17:09] ../src/operator/nn/mkldnn/mkldnn_base.cc:74: Allocate
> >     > > > 589824 bytes with malloc directly
> >     > > > [23:17:09] ../src/operator/nn/mkldnn/mkldnn_base.cc:74: Allocate
> >     > > > 2359296 bytes with malloc directly
> >     > > > [23:17:09] ../src/operator/nn/mkldnn/mkldnn_base.cc:74: Allocate
> >     > > > 9437184 bytes with malloc directly
> >     > > > Epoch 0, Batch 199, Speed=384.149839
> >     > > > Epoch 0, Duration=140.919567
> >     > > > Epoch 0, Training accuracy=0.115169
> >     > > > Epoch 0, Validation accuracy=0.141317
> >     > > > Epoch 1, Batch 199, Speed=433.380512
> >     > > > Epoch 1, Duration=119.553233
> >     > > > Epoch 1, Training accuracy=0.170956
> >     > > > Epoch 1, Validation accuracy=0.216146
> >     > > > Epoch 2, Batch 199, Speed=434.864699
> >     > > > Epoch 2, Duration=123.278490
> >     > > > Epoch 2, Training accuracy=0.209455
> >     > > > Epoch 2, Validation accuracy=0.247296
> >     > > > Epoch 3, Batch 199, Speed=433.401854
> >     > > > Epoch 3, Duration=118.327797
> >     > > > Epoch 3, Training accuracy=0.248701
> >     > > > Epoch 3, Validation accuracy=0.302083
> >     > > > Epoch 4, Batch 199, Speed=419.713707
> >     > > > Epoch 4, Duration=126.468409
> >     > > > Epoch 4, Training accuracy=0.260949
> >     > > > Epoch 4, Validation accuracy=0.269030
> >     > > >
> >     > > > real    10m55.796s
> >     > > > user    399m33.567s
> >     > > > sys     13m55.904s
> >     > > > [23:28:04] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > ImageRecordIOParser2:
> >     > > > /home/piotr/deeplearning-benchmark/data/cifar/train.rec, use 4
> > threads
> >     > > > for decoding..
> >     > > > [23:28:04] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > [23:28:04] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> > completed
> >     > > > [23:28:04] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > ImageRecordIOParser2:
> >     > > > /home/piotr/deeplearning-benchmark/data/cifar/test.rec, use 4
> > threads
> >     > > > for decoding..
> >     > > > [23:28:04] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > [23:28:04] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> > completed
> >     > > > lr_schedule: {0: 0.05, 82: 0.005000000000000001, 123: 0.0005,
> > 300:
> >     > > > 0.0001} Epoch 0, Changed learning rate to 0.05 Epoch 0, Batch
> > 199,
> >     > > > Speed=419.039188 Epoch 0, Duration=143.934903 Epoch 0, Training
> >     > > > accuracy=0.122542 Epoch 0, Validation accuracy=0.164359 Epoch 1,
> > Batch
> >     > > > 199, Speed=445.257048 Epoch 1, Duration=135.248399 Epoch 1,
> > Training
> >     > > > accuracy=0.178828 Epoch 1, Validation accuracy=0.199419 Epoch 2,
> > Batch
> >     > > > 199, Speed=447.115215 Epoch 2, Duration=132.003770 Epoch 2,
> > Training
> >     > > > accuracy=0.217808 Epoch 2, Validation accuracy=0.233073 Epoch 3,
> > Batch
> >     > > > 199, Speed=441.079477 Epoch 3, Duration=126.543316 Epoch 3,
> > Training
> >     > > > accuracy=0.248102 Epoch 3, Validation accuracy=0.293870 Epoch 4,
> > Batch
> >     > > > 199, Speed=449.329787 Epoch 4, Duration=138.398325 Epoch 4,
> > Training
> >     > > > accuracy=0.270021 Epoch 4, Validation accuracy=0.311498
> >     > > >
> >     > > > real    11m45.329s
> >     > > > user    426m13.908s
> >     > > > sys     16m45.093s
> >     > > >
> >     > > > On Wed, Jun 26, 2019 at 4:18 PM Pedro Larroy
> >     > > > <[email protected]> wrote:
> >     > > > >
> >     > > > > The difference looks smaller now, more like your numbers. I
> > wonder
> >     > > > > if something happened during the previous benchmark like a
> > system
> >     > > > > update...
> >     > > > >
> >     > > > >
> >     > > > > piotr@ip-172-31-63-171:0:~/deeplearning-benchmark/dawnbench
> >     > > > (master)+$
> >     > > > > time ~/mxnet_1.4/py3_venv/bin/python cifar10.py --epochs 5 &&
> > time
> >     > > > > ~/mxnet_1.5/py3_venv/bin/python cifar10.py --epochs 5
> > [22:49:41]
> >     > > > > ../src/io/iter_image_recordio_2.cc:172:
> >     > > > > ImageRecordIOParser2:
> >     > > > > /home/piotr/deeplearning-benchmark/data/cifar/train.rec, use 4
> >     > > > > threads for decoding..
> >     > > > > [22:49:41] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > > [22:49:41] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > completed
> >     > > > > [22:49:41] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > > ImageRecordIOParser2:
> >     > > > > /home/piotr/deeplearning-benchmark/data/cifar/test.rec, use 4
> >     > > > > threads for decoding..
> >     > > > > [22:49:41] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > > [22:49:41] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > completed
> >     > > > > lr_schedule: {0: 0.05, 82: 0.005000000000000001, 123: 0.0005,
> > 300:
> >     > > > > 0.0001} Epoch 0, Changed learning rate to 0.05 [22:49:42]
> >     > > > > ../src/operator/nn/mkldnn/mkldnn_base.cc:74: Allocate
> >     > > > > 147456 bytes with malloc directly
> >     > > > > [22:49:42] ../src/operator/nn/mkldnn/mkldnn_base.cc:74:
> > Allocate
> >     > > > > 589824 bytes with malloc directly
> >     > > > > [22:49:42] ../src/operator/nn/mkldnn/mkldnn_base.cc:74:
> > Allocate
> >     > > > > 2359296 bytes with malloc directly
> >     > > > > [22:49:42] ../src/operator/nn/mkldnn/mkldnn_base.cc:74:
> > Allocate
> >     > > > > 9437184 bytes with malloc directly
> >     > > > > Epoch 0, Batch 199, Speed=426.182733 Epoch 0,
> > Duration=134.868458
> >     > > > > Epoch 0, Training accuracy=0.127238 Epoch 0, Validation
> >     > > > > accuracy=0.206388 Epoch 1, Batch 199, Speed=313.127156 Epoch 1,
> >     > > > > Duration=128.041775 Epoch 1, Training accuracy=0.182065 Epoch
> > 1,
> >     > > > > Validation accuracy=0.202524 Epoch 2, Batch 199,
> > Speed=410.931187
> >     > > > > Epoch 2, Duration=124.920588 Epoch 2, Training
> > accuracy=0.202584
> >     > > > > Epoch 2, Validation accuracy=0.245693 Epoch 3, Batch 199,
> >     > > > > Speed=419.119335 Epoch 3, Duration=120.948349 Epoch 3, Training
> >     > > > > accuracy=0.235854 Epoch 3, Validation accuracy=0.291066 Epoch
> > 4,
> >     > > > > Batch 199, Speed=430.473733 Epoch 4, Duration=130.181724 Epoch
> > 4,
> >     > > > > Training accuracy=0.257773 Epoch 4, Validation
> > accuracy=0.304988
> >     > > > >
> >     > > > > real    11m7.356s
> >     > > > > user    406m9.910s
> >     > > > > sys     14m18.349s
> >     > > > > [23:00:49] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > > ImageRecordIOParser2:
> >     > > > > /home/piotr/deeplearning-benchmark/data/cifar/train.rec, use 4
> >     > > > > threads for decoding..
> >     > > > > [23:00:49] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > > [23:00:49] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > completed
> >     > > > > [23:00:49] ../src/io/iter_image_recordio_2.cc:172:
> >     > > > > ImageRecordIOParser2:
> >     > > > > /home/piotr/deeplearning-benchmark/data/cifar/test.rec, use 4
> >     > > > > threads for decoding..
> >     > > > > [23:00:49] ../src/io/iter_image_recordio_2.cc:230: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > > [23:00:49] ../src/io/iter_image_recordio_2.cc:248: Load mean
> > image
> >     > > > > from /home/piotr/deeplearning-benchmark/data/cifar/mean.bin
> >     > > > completed
> >     > > > > lr_schedule: {0: 0.05, 82: 0.005000000000000001, 123: 0.0005,
> > 300:
> >     > > > > 0.0001} Epoch 0, Changed learning rate to 0.05 Epoch 0, Batch
> > 199,
> >     > > > > Speed=348.618154 Epoch 0, Duration=146.469352 Epoch 0, Training
> >     > > > > accuracy=0.124121 Epoch 0, Validation accuracy=0.167227 Epoch
> > 1,
> >     > > > > Batch 199, Speed=452.790825 Epoch 1, Duration=130.199421 Epoch
> > 1,
> >     > > > > Training
> >     > > > > accuracy=0.183863 Epoch 1, Validation accuracy=0.237079 Epoch
> > 2,
> >     > > > > Batch 199, Speed=451.406559 Epoch 2, Duration=126.320823 Epoch
> > 2,
> >     > > > > Training
> >     > > > > accuracy=0.214844 Epoch 2, Validation accuracy=0.244692 Epoch
> > 3,
> >     > > > > Batch 199, Speed=403.161873 Epoch 3, Duration=125.331660 Epoch
> > 3,
> >     > > > > Training
> >     > > > > accuracy=0.243506 Epoch 3, Validation accuracy=0.301182 Epoch
> > 4,
> >     > > > > Batch 199, Speed=450.826598 Epoch 4, Duration=126.426253 Epoch
> > 4,
> >     > > > > Training
> >     > > > > accuracy=0.266424 Epoch 4, Validation accuracy=0.311899
> >     > > > >
> >     > > > > real    11m21.930s
> >     > > > > user    415m3.855s
> >     > > > > sys     13m53.975s
> >     > > > >
> >     > > > > On Wed, Jun 26, 2019 at 3:50 PM Pedro Larroy
> >     > > > > <[email protected]> wrote:
> >     > > > > >
> >     > > > > > Hi Ciyong, thanks for trying to reproduce:
> >     > > > > >
> >     > > > > > I used this one:
> >     > > > > > https://github.com/awslabs/deeplearning-
> >     > > > benchmark/blob/master/dawnbe
> >     > > > > > nch/cifar10.py
> >     > > > > >
> >     > > > > > Could you provide hardware and OS details?
> >     > > > > >
> >     > > > > > I will rerun and repost numbers in a few minutes.
> >     > > > > >
> >     > > > > > Pedro.
> >     > > > > >
> >     > > > > > On Wed, Jun 26, 2019 at 4:18 AM Chen, Ciyong
> >     > > > > > <[email protected]>
> >     > > > wrote:
> >     > > > > > >
> >     > > > > > > Hi Pedro,
> >     > > > > > >
> >     > > > > > > I'm looking at this case, and using the script of
> >     > > > > > >
> > "incubator-mxnet/example/image-classification/train_cifar10.py"
> >     > > > > > > to get
> >     > > > the timing data, but seems there's not much difference between
> > mxnet
> >     > > > 1.4.1.rc0 and 1.5.0.rc1 on C5.18xlarge.
> >     > > > > > >
> >     > > > > > > Not sure if there's any difference in the python script,
> > can you
> >     > > > > > > point me
> >     > > > the link to get your script (cifar10.py)?
> >     > > > > > > Or you can also have a try with MXNet's script
> >     > > > > > > (train_cifar10.py) and see
> >     > > > the performance.
> >     > > > > > >
> >     > > > > > > Here's the command I used to collect the time:
> >     > > > > > >         python train_cifar10.py --num-epoch=5
> >     > > > > > >
> >     > > > > > > 1) 1.5.0.rc1 (4d9667121ae6fb643f2a02ab15e25231ed756cde)
> >     > > > > > >         real    9m4.880s
> >     > > > > > >         user    333m13.340s
> >     > > > > > >         sys     14m36.100s
> >     > > > > > >
> >     > > > > > > 2) 1.4.1.rc0 (1a7199691f5cbc6012bb53eecbf884bed5ae6590)
> >     > > > > > >         real    9m2.155s
> >     > > > > > >         user    329m37.092s
> >     > > > > > >         sys     16m8.668s
> >     > > > > > >
> >     > > > > > > -Ciyong
> >     > > > > > >
> >     > > > > > >
> >     > > > > > > -----Original Message-----
> >     > > > > > > From: Pedro Larroy [mailto:[email protected]]
> >     > > > > > > Sent: Wednesday, June 26, 2019 6:28 AM
> >     > > > > > > To: [email protected]
> >     > > > > > > Cc: [email protected]
> >     > > > > > > Subject: Re: [VOTE] Release Apache MXNet (incubating)
> > version
> >     > > > > > > 1.5.0.rc1
> >     > > > > > >
> >     > > > > > > Hi these were my build flags and system info:
> >     > > > > > >
> >     > > > > > >
> >     > > > > > > --- # CMake configuration
> >     > > > > > > USE_CUDA: "OFF" # Build with CUDA support
> >     > > > > > > USE_OLDCMAKECUDA: "OFF" # Build with old cmake cuda
> >     > > > > > > USE_NCCL: "OFF" # Use NVidia NCCL with CUDA
> >     > > > > > > USE_OPENCV: "ON" # Build with OpenCV support
> >     > > > > > > USE_OPENMP: "ON" # Build with Openmp support
> >     > > > > > > USE_CUDNN: "ON" # Build with cudnn support) # one could set
> >     > > > > > > CUDNN_ROOT for search path
> >     > > > > > > USE_SSE: "ON" # Build with x86 SSE instruction support IF
> > NOT
> >     > > > > > > ARM
> >     > > > > > > USE_F16C: "ON" # Build with x86 F16C instruction support) #
> >     > > > autodetects support if "ON"
> >     > > > > > > USE_LAPACK: "ON" # Build with lapack support
> >     > > > > > > USE_MKL_IF_AVAILABLE: "ON" # Use MKL if found
> >     > > > > > > USE_MKLML_MKL: "ON" # Use MKLDNN variant of MKL (if MKL
> > found)
> >     > > > > > > IF USE_MKL_IF_AVAILABLE AND (NOT APPLE)
> >     > > > > > > USE_MKLDNN: "ON" # Use MKLDNN variant of MKL (if MKL
> > found) IF
> >     > > > > > > USE_MKL_IF_AVAILABLE AND (NOT APPLE)
> >     > > > > > > USE_OPERATOR_TUNING: "ON" # Enable auto-tuning of
> > operators IF
> >     > > > NOT
> >     > > > > > > MSVC
> >     > > > > > > USE_GPERFTOOLS: "ON" # Build with GPerfTools support (if
> > found)
> >     > > > > > > USE_JEMALLOC: "ON" # Build with Jemalloc support
> >     > > > > > > USE_PROFILER: "ON" # Build with Profiler support
> >     > > > > > > USE_DIST_KVSTORE: "OFF" # Build with DIST_KVSTORE support
> >     > > > > > > USE_PLUGINS_WARPCTC: "OFF" # Use WARPCTC Plugins
> >     > > > > > > USE_PLUGIN_CAFFE: "OFF" # Use Caffe Plugin
> >     > > > > > > USE_CPP_PACKAGE: "OFF" # Build C++ Package
> >     > > > > > > USE_MXNET_LIB_NAMING: "ON" # Use MXNet library naming
> >     > > > conventions.
> >     > > > > > > USE_GPROF: "OFF" # Compile with gprof (profiling) flag
> >     > > > > > > USE_CXX14_IF_AVAILABLE: "OFF" # Build with C++14 if the
> > compiler
> >     > > > > > > supports it
> >     > > > > > > USE_VTUNE: "OFF" # Enable use of Intel Amplifier XE
> > (VTune)) #
> >     > > > > > > one could set VTUNE_ROOT for search path
> >     > > > > > > ENABLE_CUDA_RTC: "ON" # Build with CUDA runtime compilation
> >     > > > > > > support
> >     > > > > > > BUILD_CPP_EXAMPLES: "ON" # Build cpp examples
> >     > > > > > > INSTALL_EXAMPLES: "OFF" # Install the example source files.
> >     > > > > > > USE_SIGNAL_HANDLER: "ON" # Print stack traces on segfaults.
> >     > > > > > > USE_TENSORRT: "OFF" # Enable infeference optimization with
> >     > > TensorRT.
> >     > > > > > > USE_ASAN: "OFF" # Enable Clang/GCC ASAN sanitizers.
> >     > > > > > > ENABLE_TESTCOVERAGE: "OFF" # Enable compilation with test
> >     > > > > > > coverage metric output
> >     > > > > > > CMAKE_BUILD_TYPE: "Release"
> >     > > > > > > CMAKE_CUDA_COMPILER_LAUNCHER: "ccache"
> >     > > > > > > CMAKE_C_COMPILER_LAUNCHER: "ccache"
> >     > > > > > > CMAKE_CXX_COMPILER_LAUNCHER: "ccache"
> >     > > > > > >
> >     > > > > > > commit 4d9667121ae6fb643f2a02ab15e25231ed756cde (HEAD, tag:
> >     > > > > > > 1.5.0.rc1,
> >     > > > > > > upstream/v1.5.x)
> >     > > > > > > commit 1a7199691f5cbc6012bb53eecbf884bed5ae6590 (HEAD, tag:
> >     > > > > > > 1.4.1.rc0,
> >     > > > > > > upstream/v1.4.x)
> >     > > > > > >
> >     > > > > > > curl http://169.254.169.254/latest/meta-data/instance-type
> >     > > > > > > c5d.18xlarge
> >     > > > > > >
> >     > > > > > >
> >     > > > > > > Version      : 3.6.7
> >     > > > > > > Compiler     : GCC 8.2.0
> >     > > > > > > Build        : ('default', 'Oct 22 2018 11:32:17')
> >     > > > > > > Arch         : ('64bit', 'ELF')
> >     > > > > > > ------------Pip Info-----------
> >     > > > > > > Version      : 19.1.1
> >     > > > > > > Directory    :
> > /home/piotr/mxnet_1.5/py3_venv/lib/python3.6/site-
> >     > > > packages/pip
> >     > > > > > > ----------MXNet Info-----------
> >     > > > > > > Version      : 1.5.0
> >     > > > > > > Directory    : /home/piotr/mxnet_1.5/python/mxnet
> >     > > > > > > Hashtag not found. Not installed from pre-built package.
> >     > > > > > > ----------System Info----------
> >     > > > > > > Platform     :
> >     > > Linux-4.15.0-1035-aws-x86_64-with-Ubuntu-18.04-bionic
> >     > > > > > > system       : Linux
> >     > > > > > > node         : ip-172-31-63-171
> >     > > > > > > release      : 4.15.0-1035-aws
> >     > > > > > > version      : #37-Ubuntu SMP Mon Mar 18 16:15:14 UTC 2019
> >     > > > > > > ----------Hardware Info----------
> >     > > > > > > machine      : x86_64
> >     > > > > > > processor    : x86_64
> >     > > > > > > Architecture:        x86_64
> >     > > > > > > CPU op-mode(s):      32-bit, 64-bit
> >     > > > > > > Byte Order:          Little Endian
> >     > > > > > > CPU(s):              72
> >     > > > > > > On-line CPU(s) list: 0-71
> >     > > > > > > Thread(s) per core:  2
> >     > > > > > > Core(s) per socket:  18
> >     > > > > > > Socket(s):           2
> >     > > > > > > NUMA node(s):        2
> >     > > > > > > Vendor ID:           GenuineIntel
> >     > > > > > > CPU family:          6
> >     > > > > > > Model:               85
> >     > > > > > > Model name:          Intel(R) Xeon(R) Platinum 8124M CPU @
> > 3.00GHz
> >     > > > > > > Stepping:            4
> >     > > > > > > CPU MHz:             1326.446
> >     > > > > > > BogoMIPS:            6000.00
> >     > > > > > > Hypervisor vendor:   KVM
> >     > > > > > > Virtualization type: full
> >     > > > > > > L1d cache:           32K
> >     > > > > > > L1i cache:           32K
> >     > > > > > > L2 cache:            1024K
> >     > > > > > > L3 cache:            25344K
> >     > > > > > > NUMA node0 CPU(s):   0-17,36-53
> >     > > > > > > NUMA node1 CPU(s):   18-35,54-71
> >     > > > > > > Flags:               fpu vme de pse tsc msr pae mce cx8
> > apic sep
> >     > > mtrr
> >     > > > > > > pge mca cmov pat pse36 clflush mmx fxsr sse sse2 ss ht
> > syscall
> >     > > > > > > nx pdpe1gb rdtscp lm constant_tsc arch_perfmon rep_good
> > nopl
> >     > > > > > > xtopology nonstop_tsc cpuid aperfmperf pni pclmulqdq
> > monitor
> >     > > > > > > ssse3 fma cx16 pcid
> >     > > > > > > sse4_1 sse4_2 x2apic movbe popcnt tsc_deadline_timer aes
> > xsave
> >     > > > > > > avx f16c rdrand hypervisor lahf_lm abm 3dnowprefetch
> >     > > > > > > invpcid_single pti fsgsbase tsc_adjust bmi1 hle avx2 smep
> > bmi2
> >     > > > > > > erms invpcid rtm mpx avx512f avx512dq rdseed adx smap
> > clflushopt
> >     > > > > > > clwb avx512cd avx512bw avx512vl xsaveopt xsavec xgetbv1
> > xsaves
> >     > > > > > > ida arat pku ospke ----------Network Test----------
> >     > > > > > >
> >     > > > > > > ----------Python Info----------
> >     > > > > > > Version      : 3.6.7
> >     > > > > > > Compiler     : GCC 8.2.0
> >     > > > > > > Build        : ('default', 'Oct 22 2018 11:32:17')
> >     > > > > > > Arch         : ('64bit', 'ELF')
> >     > > > > > > ------------Pip Info-----------
> >     > > > > > > Version      : 19.1.1
> >     > > > > > > Directory    :
> > /home/piotr/mxnet_1.4/py3_venv/lib/python3.6/site-
> >     > > > packages/pip
> >     > > > > > > ----------MXNet Info-----------
> >     > > > > > > Version      : 1.4.1
> >     > > > > > > Directory    : /home/piotr/mxnet_1.4/python/mxnet
> >     > > > > > > Hashtag not found. Not installed from pre-built package.
> >     > > > > > > ----------System Info----------
> >     > > > > > > Platform     :
> >     > > Linux-4.15.0-1035-aws-x86_64-with-Ubuntu-18.04-bionic
> >     > > > > > > system       : Linux
> >     > > > > > > node         : ip-172-31-63-171
> >     > > > > > > release      : 4.15.0-1035-aws
> >     > > > > > > version      : #37-Ubuntu SMP Mon Mar 18 16:15:14 UTC 2019
> >     > > > > > > ----------Hardware Info----------
> >     > > > > > > machine      : x86_64
> >     > > > > > > processor    : x86_64
> >     > > > > > > Architecture:        x86_64
> >     > > > > > > CPU op-mode(s):      32-bit, 64-bit
> >     > > > > > > Byte Order:          Little Endian
> >     > > > > > > CPU(s):              72
> >     > > > > > > On-line CPU(s) list: 0-71
> >     > > > > > > Thread(s) per core:  2
> >     > > > > > > Core(s) per socket:  18
> >     > > > > > > Socket(s):           2
> >     > > > > > > NUMA node(s):        2
> >     > > > > > > Vendor ID:           GenuineIntel
> >     > > > > > > CPU family:          6
> >     > > > > > > Model:               85
> >     > > > > > > Model name:          Intel(R) Xeon(R) Platinum 8124M CPU @
> > 3.00GHz
> >     > > > > > > Stepping:            4
> >     > > > > > > CPU MHz:             1223.344
> >     > > > > > > BogoMIPS:            6000.00
> >     > > > > > > Hypervisor vendor:   KVM
> >     > > > > > > Virtualization type: full
> >     > > > > > > L1d cache:           32K
> >     > > > > > > L1i cache:           32K
> >     > > > > > > L2 cache:            1024K
> >     > > > > > > L3 cache:            25344K
> >     > > > > > > NUMA node0 CPU(s):   0-17,36-53
> >     > > > > > > NUMA node1 CPU(s):   18-35,54-71
> >     > > > > > > Flags:               fpu vme de pse tsc msr pae mce cx8
> > apic sep
> >     > > mtrr
> >     > > > > > > pge mca cmov pat pse36 clflush mmx fxsr sse sse2 ss ht
> > syscall
> >     > > > > > > nx pdpe1gb rdtscp lm constant_tsc arch_perfmon rep_good
> > nopl
> >     > > > > > > xtopology nonstop_tsc cpuid aperfmperf pni pclmulqdq
> > monitor
> >     > > > > > > ssse3 fma cx16 pcid
> >     > > > > > > sse4_1 sse4_2 x2apic movbe popcnt tsc_deadline_timer aes
> > xsave
> >     > > > > > > avx f16c rdrand hypervisor lahf_lm abm 3dnowprefetch
> >     > > > > > > invpcid_single pti fsgsbase tsc_adjust bmi1 hle avx2 smep
> > bmi2
> >     > > > > > > erms invpcid rtm mpx avx512f avx512dq rdseed adx smap
> > clflushopt
> >     > > > > > > clwb avx512cd avx512bw avx512vl xsaveopt xsavec xgetbv1
> > xsaves
> >     > > > > > > ida arat pku ospke ----------Network Test----------
> >     > > > > > >
> >     > > > > > > On Tue, Jun 25, 2019 at 2:35 PM Pedro Larroy
> >     > > > <[email protected]> wrote:
> >     > > > > > > >
> >     > > > > > > > I did a training of cifar10 in CPU and seems there's some
> >     > > > > > > > regressions in the range of 7% increase of training time
> > against
> >     > > 1.4.1:
> >     > > > > > > >
> >     > > > > > > > (py3_venv)
> >     > > > > > > > piotr@ip-172-31-63-171
> > :0:~/deeplearning-benchmark/dawnbench
> >     > > > > > > > (master)+$ time python cifar10.py --epochs 5
> >     > > > > > > > real    11m30.388s
> >     > > > > > > > user    417m7.766s
> >     > > > > > > > sys     16m57.315s
> >     > > > > > > >
> >     > > > > > > > VS 1.4.1:
> >     > > > > > > > real    10m41.994s
> >     > > > > > > > user    392m40.646s
> >     > > > > > > > sys     12m30.601s
> >     > > > > > > >
> >     > > > > > > >
> >     > > > > > > > On Thu, Jun 20, 2019 at 10:15 PM Lai Wei <
> > [email protected]>
> >     > > > wrote:
> >     > > > > > > > >
> >     > > > > > > > > Hi Anirudh,
> >     > > > > > > > >
> >     > > > > > > > > Thanks for jumping into this quickly, I followed up on
> > the
> >     > > issue.
> >     > > > > > > > >
> >     > > > > > > > > I was meant for sockeye developer/maintainers to help
> > setup
> >     > > > > > > > > nightly tests and raise issues early.
> >     > > > > > > > >
> >     > > > > > > > > Thanks!
> >     > > > > > > > >
> >     > > > > > > > > On Fri, Jun 21, 2019 at 10:10 AM Haibin Lin
> >     > > > > > > > > <[email protected]>
> >     > > > > > > > > wrote:
> >     > > > > > > > >
> >     > > > > > > > > > In GluonNLP we are testing with MXNET nightly build
> > for
> >     > > > > > > > > > each PR, and we did find some MXNet related issue
> > caught by
> >     > > the CI.
> >     > > > > > > > > > I recommend other toolkits also add integration
> > tests with
> >     > > > > > > > > > MXNet
> >     > > > nightly.
> >     > > > > > > > > > It helps identify issues early.
> >     > > > > > > > > >
> >     > > > > > > > > > Best,
> >     > > > > > > > > > Haibin
> >     > > > > > > > > >
> >     > > > > > > > > > On Thu, Jun 20, 2019 at 18:52 Zhao, Patric
> >     > > > > > > > > > <[email protected]>
> >     > > > wrote:
> >     > > > > > > > > >
> >     > > > > > > > > > > Thanks to raise the issue and we will take a look
> > ASAP.
> >     > > > > > > > > > >
> >     > > > > > > > > > > The downstream cases is not in the MXNet CI so
> > it's hard
> >     > > > > > > > > > > to catch the potential bugs or performance
> > degradation
> >     > > > > > > > > > > for
> >     > > > MXNet developers.
> >     > > > > > > > > > >
> >     > > > > > > > > > > In the future, I suggest adding the major
> > downstream
> >     > > > > > > > > > > test cases, like
> >     > > > > > > > > > from
> >     > > > > > > > > > > sockeye, GluonNLP, GLuonCV, DGL, Gluon-TS, into the
> >     > > > > > > > > > > nightly
> >     > > > test.
> >     > > > > > > > > > > If it's still too heavy,  maybe testing it weekly
> > or
> >     > > > > > > > > > > monthly :)
> >     > > > > > > > > > >
> >     > > > > > > > > > > Thanks,
> >     > > > > > > > > > >
> >     > > > > > > > > > > --Patric
> >     > > > > > > > > > >
> >     > > > > > > > > > > > -----Original Message-----
> >     > > > > > > > > > > > From: Anirudh Subramanian
> >     > > > > > > > > > > > [mailto:[email protected]]
> >     > > > > > > > > > > > Sent: Friday, June 21, 2019 9:31 AM
> >     > > > > > > > > > > > To: [email protected]
> >     > > > > > > > > > > > Cc: [email protected]
> >     > > > > > > > > > > > Subject: Re: [VOTE] Release Apache MXNet
> > (incubating)
> >     > > > > > > > > > > > version
> >     > > > > > > > > > > > 1.5.0.rc1
> >     > > > > > > > > > > >
> >     > > > > > > > > > > > Hi Lai,
> >     > > > > > > > > > > >
> >     > > > > > > > > > > > I have opened an issue:
> >     > > > > > > > > > > >
> > https://github.com/apache/incubator-mxnet/issues/15297
> >     > > > > > > > > > > > I came to know about this issue only today and I
> > have
> >     > > > > > > > > > > > not been
> >     > > > > > > > > > monitoring
> >     > > > > > > > > > > > sockeye.
> >     > > > > > > > > > > > I jumped onto this issue to make sure it wasn't
> > caused
> >     > > > > > > > > > > > by the dlpack
> >     > > > > > > > > > > changes.
> >     > > > > > > > > > > > Also, I don't  think sockeye CI checks against
> > master,
> >     > > > > > > > > > > > it is using
> >     > > > > > > > > > 1.4.1.
> >     > > > > > > > > > > >
> >     > > > > > > > > > > > Anirudh
> >     > > > > > > > > > > >
> >     > > > > > > > > > > >
> >     > > > > > > > > > > > On Thu, Jun 20, 2019 at 6:17 PM Lai Wei
> >     > > > > > > > > > > > <[email protected]>
> >     > > > wrote:
> >     > > > > > > > > > > >
> >     > > > > > > > > > > > > Hi,
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > Could you share which test failed and what’s
> > the
> >     > > > > > > > > > > > > crash? How to reproduce it?
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > I was able to install sockeye and run all
> > tests passed.
> >     > > > > > > > > > > > > Using python setup.py test
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > I have tested both nightly pip package and
> > 1.5.0.rc1
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > It would be great to create an issue with
> >     > > > > > > > > > > > > reproducible steps and move the discussion
> > there.
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > Also I see sockeye nightly build[1] has been
> > failing
> >     > > > > > > > > > > > > for some time,
> >     > > > > > > > > > if
> >     > > > > > > > > > > > > it’s due to MXNet change, please raise this
> > early so
> >     > > > > > > > > > > > > we can track and solve it in time rather than
> > block
> >     > > > > > > > > > > > > the release
> >     > > > during vote time.
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > [1] https://travis-ci.org/awslabs/sockeye
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > On Fri, Jun 21, 2019 at 7:01 AM Anirudh
> > Subramanian
> >     > > > > > > > > > > > > <[email protected]
> >     > > > > > > > > > > > > >
> >     > > > > > > > > > > > > wrote:
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > > I was able to reproduce a crash with the
> > commit
> >     > > > > > > > > > > > > > 09202f7f261954383aa387144524d38f83f18d06 but
> > not
> >     > > > > > > > > > > > > > with the commit
> >     > > > a862270beb2d796c1ba311183f7f4a766a18ad6c.
> >     > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > Anirudh
> >     > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > On Thu, Jun 20, 2019 at 3:53 PM Lai Wei
> >     > > > > > > > > > > > > > <[email protected]>
> >     > > > > > > > > > wrote:
> >     > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > Hi Przemyslaw,
> >     > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > Is there an issue with more details to
> > track the
> >     > > problem?
> >     > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > On Fri, Jun 21, 2019 at 6:04 AM Przemysław
> >     > > > > > > > > > > > > > > Trędak <[email protected]>
> >     > > > > > > > > > > > > > > wrote:
> >     > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > -1
> >     > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > There is a crash in sockeye unit test
> > (python
> >     > > > > > > > > > > > > > > > setup.py
> >     > > > > > > > > > > > > > > > test) observed starting with nightly 1.5
> > build
> >     > > > > > > > > > > > > > > > from
> >     > > > > > > > > > > > > > > > 6/13 and still occuring in
> >     > > > > > > > > > > > > > 1.5rc1. I
> >     > > > > > > > > > > > > > > > don't yet have the exact commit that is
> >     > > > > > > > > > > > > > > > responsible for it, but it is either
> >     > > > > > > > > > > > > > > > a862270beb2d796c1ba311183f7f4a766a18ad6c
> >     > > > > > > > > > > > > > > > (dlpack
> >     > > > > > > > > > > > > > > > related) or
> >     > > > > > > > > > > > > > > > 09202f7f261954383aa387144524d38f83f18d06
> >     > > > > > > > > > > > > > > > (cached op
> >     > > > > > > > > > > > optimization).
> >     > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > On 2019/06/20 06:36:22, Lai Wei
> >     > > > > > > > > > > > > > > > <[email protected]>
> >     > > > wrote:
> >     > > > > > > > > > > > > > > > > Dear MXNet community,
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > This is the 3-day vote to release
> > Apache
> >     > > > > > > > > > > > > > > > > MXNet
> >     > > > > > > > > > > > > > > > > (incubating) version
> >     > > > > > > > > > > > > > > > 1.5.0.
> >     > > > > > > > > > > > > > > > > Voting on dev@ will start June 19,
> >     > > > > > > > > > > > > > > > > 23:59:59(PST) and close
> >     > > > > > > > > > on
> >     > > > > > > > > > > > > June
> >     > > > > > > > > > > > > > > 22,
> >     > > > > > > > > > > > > > > > > 23:59:59.
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > 1) Link to release notes:
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > >
> >     > > > > > > > > >
> > https://cwiki.apache.org/confluence/display/MXNET/1.5.0+Re
> >     > > > > > > > > > le
> >     > > > > > > > > > ase+No
> >     > > > > > > > > > te
> >     > > > > > > > > > > > > > s
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > 2) Link to release candidate:
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > >
> > https://github.com/apache/incubator-mxnet/releases/tag/1.5
> >     > > > > > > > > > .0
> >     > > > > > > > > > .r
> >     > > > > > > > > > > > > > > > > c1
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > 3) Link to source and signatures on
> > apache
> >     > > dist server:
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > >
> > https://dist.apache.org/repos/dist/dev/incubator/mxnet/1.5
> >     > > > > > > > > > .0
> >     > > > > > > > > > .r
> >     > > > > > > > > > > > > > > > > c1/
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > Please remember to TEST first before
> > voting
> >     > > > accordingly:
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > +1 = approve
> >     > > > > > > > > > > > > > > > > +0 = no opinion
> >     > > > > > > > > > > > > > > > > -1 = disapprove (provide reason)
> >     > > > > > > > > > > > > > > > > --
> >     > > > > > > > > > > > > > > > > Best Regards
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > > > Lai
> >     > > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > --
> >     > > > > > > > > > > > > > > Best Regards
> >     > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > > > Lai
> >     > > > > > > > > > > > > > >
> >     > > > > > > > > > > > > >
> >     > > > > > > > > > > > > --
> >     > > > > > > > > > > > > Best Regards
> >     > > > > > > > > > > > >
> >     > > > > > > > > > > > > Lai
> >     > > > > > > > > > > > >
> >     > > > > > > > > > >
> >     > > > > > > > > >
> >     > > > > > > > > --
> >     > > > > > > > > Best Regards
> >     > > > > > > > >
> >     > > > > > > > > Lai
> >     > >
> >     > --
> >     > Best Regards
> >     >
> >     > Lai
> >
> >
> >
> >

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