Skip to content

Instantly share code, notes, and snippets.

@shaowei-su
shaowei-su / install_anaconda.md
Created September 17, 2019 05:29 — forked from kauffmanes/install_anaconda.md
Install Anaconda on Windows Subsystem for Linux (WSL)

Note: $ denotes the start of a command. Don't actually type this.

Steps to Install Anaconda on Windows Ubuntu Terminal

  1. Install WSL (Ubuntu for Windows - can be found in Windows Store). I recommend the latest version (I'm using 18.04) because there are some bugs they worked out during 14/16 (microsoft/WSL#785)
  2. Go to https://repo.continuum.io/archive to find the list of Anaconda releases
  3. Select the release you want. I have a 64-bit computer, so I chose the latest release ending in x86_65.sh. If I had a 32-bit computer, I'd select the x86.sh version. If you accidentally try to install the wrong one, you'll get a warning in the terminal. I chose Anaconda3-5.2.0-Linux-x86_64.sh.
  4. From the terminal run wget https://repo.continuum.io/archive/[YOUR VERSION]. Example: $ wget https://repo.continuum.io/archive/Anaconda3-5.2.0-Linux-x86_64.sh
  5. Run the installation script: $ bash Anaconda[YOUR VERSION].sh ($ bash Anaconda3-5.2.0-Linux-x86_64.sh)
  6. Read the license
@shaowei-su
shaowei-su / flake8-error-codes.md
Created November 6, 2019 00:38
Medusa: Flake8 (and plugins) error codes reference

Error codes reference

pycodestyle

Indentation
  • E101: indentation contains mixed spaces and tabs
  • E111: indentation is not a multiple of four
  • E112: expected an indented block
  • E113: unexpected indentation
  • E114: indentation is not a multiple of four (comment)
  • E115: expected an indented block (comment)
@shaowei-su
shaowei-su / benchmark.md
Created September 15, 2021 23:57 — forked from kemingy/benchmark.md
Tensorflow Serving, TensorRT Inference Server (Triton), Multi Model Server (MXNet)

Environments

  • CPU: Intel(R) Xeon(R) Gold 6130 CPU @ 2.10GHz
  • GPU: NVIDIA V100
  • Memory: 251GiB
  • OS: Ubuntu 16.04.6 LTS (Xenial Xerus)

Docker Images:

  • tensorflow/tensorflow:latest-gpu
  • tensorflow/serving:latest-gpu