Jason Antic пре 6 година
родитељ
комит
a43b11d019
1 измењених фајлова са 5 додато и 4 уклоњено
  1. 5 4
      README.md

+ 5 - 4
README.md

@@ -88,11 +88,12 @@ Oh and I swear I'll document the code properly...eventually.  Admittedly I'm *on
 ### Getting Started Yourself
 This project is built around the wonderful Fast.AI library.  Unfortunately, it's the -old- version and I have yet to upgrade it to the new version.  (That's definitely on the agenda.)  So prereqs, in summary:
 * ***Old* Fast.AI library** **UDATED 11/7/2018** Easiest thing to do in my mind is just to take the fastai/fastai folder and drop it in the root of this project, right next to fasterai's folder. Just today, I found this thread on installing fast.ai 0.7-  This is probably your best resource on this subject!  https://forums.fast.ai/t/fastai-v0-7-install-issues-thread/24652 .  Do this first- this will take you most of the way, including dependencies.
-* **Pytorch 0.4.1** (needs spectral_norm, so  latest stable release is needed).
-* **Jupyter Lab**
-* **Tensorboard** (i.e. install Tensorflow) and **TensorboardX** (https://github.com/lanpa/tensorboardX).  I guess you don't *have* to but man, life is so much better with it.  And I've conveniently provided hooks/callbacks to automatically write all kinds of stuff to tensorboard for you already!  The notebooks have examples of these being instantiated (or commented out since I didn't really need the ones doing histograms of the model weights).  Noteably, progress images will be written to Tensorboard every 200 iterations by default, so you get a constant and convenient look at what the model is doing. 
-* **ImageNet** – It proved to be a great dataset for training.  
+* **Pytorch 0.4.1** (needs spectral_norm, so  latest stable release is needed). https://pytorch.org/get-started/locally/
+* **Jupyter Lab** [conda install -c conda-forge jupyterlab]
+* **Tensorboard** (i.e. install Tensorflow) and **TensorboardX** (https://github.com/lanpa/tensorboardX).  I guess you don't *have* to but man, life is so much better with it.  And I've conveniently provided hooks/callbacks to automatically write all kinds of stuff to tensorboard for you already!  The notebooks have examples of these being instantiated (or commented out since I didn't really need the ones doing histograms of the model weights).  Noteably, progress images will be written to Tensorboard every 200 iterations by default, so you get a constant and convenient look at what the model is doing.  [conda install -c anaconda tensorflow-gpu] 
+* **ImageNet** – Only if training of course. It proved to be a great dataset.  http://www.image-net.org/download-images
 * **BEEFY Graphics card**.  I'd really like to have more memory than the 11 GB in my GeForce 1080TI (11GB).  You'll have a tough time with less.  The Unet and Critic are ridiculously large but honestly I just kept getting better results the bigger I made them.  
+* **Linux** (I'm using Ubuntu 16.04) is assumed, but nothing from the above precludes Windows 10 support as far as I know.  I just haven't tested it and am not going to make it a priority for now.
 
 **For those wanting to start transforming their own images right away:** To start right away with your own images without training the model yourself, download the weights here:  https://www.dropbox.com/s/7r2wu0af6okv280/colorize_gen_192.h5 (right click and download from this link). Then open the ColorizationVisualization.ipynb in Jupyter Lab.  Make sure that there's this sort of line in the notebook referencing the weights: