Difference between revisions of "Using the DevBox"

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  python -c "import tensorflow as tf; tf.enable_eager_execution(); print(tf.reduce_sum(tf.random_normal([1000, 1000])))"
 
  python -c "import tensorflow as tf; tf.enable_eager_execution(); print(tf.reduce_sum(tf.random_normal([1000, 1000])))"
  
==Sample CNN Projects==
+
===Sample CNN Projects===
  
 
There are some nice Tensorflow CNN tutorials online:
 
There are some nice Tensorflow CNN tutorials online:
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The code for MNIST.py is in E:\projects\tensorflow.
 
The code for MNIST.py is in E:\projects\tensorflow.
 +
 +
==DIGITS==
 +
 +
As root run:
 +
docker run --runtime=nvidia --name digits -d -p 5000:5000 nvidia/digits
 +
 +
Then browse to http://192.168.2.202:5000

Revision as of 20:46, 15 May 2019

Accessing the DevBox

Connect to the DevBox by SSH over the internal network. It is on:

  • 192.168.2.202
  • Username: researcher
  • Password hint: littleamount

It has a /bulk samba share that can be mounted from the RDP. Follow the instructions on Help:Access RDP Server.

Specification

Top1000.jpg

Our DIGITS DevBox, affectionately named after Lois McMaster Bujold's fifth God, has a XEON e5-2620v3 processor, 256GB of DDR4 RAM, two GPUs - one Titan RTX and one Titan Xp - with room for two more, a 500GB SSD hard drive (mounting /), and an 8TB RAID5 array bcached with a 512GB m.2 drive (mounting the /bulk share, which is available over samba). It runs Ubuntu 18.04, CUDA 10.0, cuDNN 7.6.1, Anaconda3-2019.03, python 3.7, tensorflow 1.13, digits 6, and other useful machine learning tools/libraries.

Working in Tensorflow

After you've connected to the box as researcher, you should be in /home/researcher. If not, cd there. Then load the virtual environment:

source ./venv/bin/activate

Test tensorflow:

python -c "import tensorflow as tf; tf.enable_eager_execution(); print(tf.reduce_sum(tf.random_normal([1000, 1000])))"

Sample CNN Projects

There are some nice Tensorflow CNN tutorials online:

Some of which use standard datasets:

The code for MNIST.py is in E:\projects\tensorflow.

DIGITS

As root run:

docker run --runtime=nvidia --name digits -d -p 5000:5000 nvidia/digits

Then browse to http://192.168.2.202:5000