Watermark - An IPython magic extension for adding date and time stamps, version numbers, and hardware information to your notebooks
https://github.com/rasbt/watermark
/r/JupyterNotebooks
https://redd.it/47sifn
https://github.com/rasbt/watermark
/r/JupyterNotebooks
https://redd.it/47sifn
GitHub
GitHub - rasbt/watermark: An IPython magic extension for printing date and time stamps, version numbers, and hardware information
An IPython magic extension for printing date and time stamps, version numbers, and hardware information - rasbt/watermark
Where do you find Jypyter plugins?
Is there a central repo to search for plugins? I imagine pip might be a place, but it doesn't seem like all plugins are pip installable.
/r/IPython
https://redd.it/5kf6ve
Is there a central repo to search for plugins? I imagine pip might be a place, but it doesn't seem like all plugins are pip installable.
/r/IPython
https://redd.it/5kf6ve
reddit
Where do you find Jypyter plugins? • /r/IPython
Is there a central repo to search for plugins? I imagine pip might be a place, but it doesn't seem like all plugins are pip installable.
meza: A Python toolkit for processing tabular data
https://github.com/reubano/meza
/r/pystats
https://redd.it/4223qq
https://github.com/reubano/meza
/r/pystats
https://redd.it/4223qq
GitHub
GitHub - reubano/meza: A Python toolkit for processing tabular data
A Python toolkit for processing tabular data. Contribute to reubano/meza development by creating an account on GitHub.
Heavyweight Match: Survival Analysis in R vs Python
https://plot.ly/ipython-notebooks/survival-analysis-r-vs-python/
/r/JupyterNotebooks
https://redd.it/47rrm4
https://plot.ly/ipython-notebooks/survival-analysis-r-vs-python/
/r/JupyterNotebooks
https://redd.it/47rrm4
plot.ly
Survival Analysis with Plotly
An introduction to survival analysis with Plotly graphs using R, Python, and IPython notebooks
[D] Machine Learning - WAYR (What Are You Reading) - Week 16
This is a place to share machine learning research papers, journals, and articles that you're reading this week.
If it relates to what you're researching, by all means elaborate and give us your insight, otherwise it could just be an interesting paper you've read.
Please try to provide some insight from your understanding and please don't post things which are present in wiki.
Preferably you should link the arxiv page (not the PDF, you can easily access the PDF from the summary page but not the other way around) or any other pertinent links.
|Previous weeks|
|--------------|
|[Week 1](https://www.reddit.com/r/MachineLearning/comments/4qyjiq/machine_learning_wayr_what_are_you_reading_week_1/)|
|[Week 2](https://www.reddit.com/r/MachineLearning/comments/4s2xqm/machine_learning_wayr_what_are_you_reading_week_2/)|
|[Week 3](https://www.reddit.com/r/MachineLearning/comments/4t7mqm/machine_learning_wayr_what_are_you_reading_week_3/)|
|[Week 4](https://www.reddit.com/r/MachineLearning/comments/4ub2kw/machine_learning_wayr_what_are_you_reading_week_4/)|
|[Week 5](https://www.reddit.com/r/MachineLearning/comments/4xomf7/machine_learning_wayr_what_are_you_reading_week_5/)|
|[Week 6](https://www.reddit.com/r/MachineLearning/comments/4zcyvk/machine_learning_wayr_what_are_you_reading_week_6/)|
|[Week 7](https://www.reddit.com/r/MachineLearning/comments/52t6mo/machine_learning_wayr_what_are_you_reading_week_7/)|
|[Week 8](https://www.reddit.com/r/MachineLearning/comments/53heol/machine_learning_wayr_what_are_you_reading_week_8/)|
|[Week 9](https://www.reddit.com/r/MachineLearning/comments/54kvsu/machine_learning_wayr_what_are_you_reading_week_9/)|
|[Week 10](https://www.reddit.com/r/MachineLearning/comments/56s2oa/discussion_machine_learning_wayr_what_are_you/)|
|[Week 11](https://www.reddit.com/r/MachineLearning/comments/57xw56/discussion_machine_learning_wayr_what_are_you/)|
|[Week 12](https://www.reddit.com/r/MachineLearning/comments/5acb1t/d_machine_learning_wayr_what_are_you_reading_week/)|
|[Week 13](https://www.reddit.com/r/MachineLearning/comments/5cwfb6/d_machine_learning_wayr_what_are_you_reading_week/)|
|[Week 14](https://www.reddit.com/r/MachineLearning/comments/5fc5mh/d_machine_learning_wayr_what_are_you_reading_week/)|
|[Week 15](https://www.reddit.com/r/MachineLearning/comments/5hy4ur/d_machine_learning_wayr_what_are_you_reading_week/)|
Most upvoted papers last week :
[Learning to learn by gradient descent by gradient descent](https://arxiv.org/abs/1606.04474)
[Natural Language Understanding with Distributed Representation](https://github.com/nyu-dl/NLP_DL_Lecture_Note)
[Geometric deep learning: going beyond Euclidean data](https://arxiv.org/abs/1611.08097)
Besides that, there are no rules, have fun and Merry Christmas to everyone!
/r/MachineLearning
https://redd.it/5kd6vd
This is a place to share machine learning research papers, journals, and articles that you're reading this week.
If it relates to what you're researching, by all means elaborate and give us your insight, otherwise it could just be an interesting paper you've read.
Please try to provide some insight from your understanding and please don't post things which are present in wiki.
Preferably you should link the arxiv page (not the PDF, you can easily access the PDF from the summary page but not the other way around) or any other pertinent links.
|Previous weeks|
|--------------|
|[Week 1](https://www.reddit.com/r/MachineLearning/comments/4qyjiq/machine_learning_wayr_what_are_you_reading_week_1/)|
|[Week 2](https://www.reddit.com/r/MachineLearning/comments/4s2xqm/machine_learning_wayr_what_are_you_reading_week_2/)|
|[Week 3](https://www.reddit.com/r/MachineLearning/comments/4t7mqm/machine_learning_wayr_what_are_you_reading_week_3/)|
|[Week 4](https://www.reddit.com/r/MachineLearning/comments/4ub2kw/machine_learning_wayr_what_are_you_reading_week_4/)|
|[Week 5](https://www.reddit.com/r/MachineLearning/comments/4xomf7/machine_learning_wayr_what_are_you_reading_week_5/)|
|[Week 6](https://www.reddit.com/r/MachineLearning/comments/4zcyvk/machine_learning_wayr_what_are_you_reading_week_6/)|
|[Week 7](https://www.reddit.com/r/MachineLearning/comments/52t6mo/machine_learning_wayr_what_are_you_reading_week_7/)|
|[Week 8](https://www.reddit.com/r/MachineLearning/comments/53heol/machine_learning_wayr_what_are_you_reading_week_8/)|
|[Week 9](https://www.reddit.com/r/MachineLearning/comments/54kvsu/machine_learning_wayr_what_are_you_reading_week_9/)|
|[Week 10](https://www.reddit.com/r/MachineLearning/comments/56s2oa/discussion_machine_learning_wayr_what_are_you/)|
|[Week 11](https://www.reddit.com/r/MachineLearning/comments/57xw56/discussion_machine_learning_wayr_what_are_you/)|
|[Week 12](https://www.reddit.com/r/MachineLearning/comments/5acb1t/d_machine_learning_wayr_what_are_you_reading_week/)|
|[Week 13](https://www.reddit.com/r/MachineLearning/comments/5cwfb6/d_machine_learning_wayr_what_are_you_reading_week/)|
|[Week 14](https://www.reddit.com/r/MachineLearning/comments/5fc5mh/d_machine_learning_wayr_what_are_you_reading_week/)|
|[Week 15](https://www.reddit.com/r/MachineLearning/comments/5hy4ur/d_machine_learning_wayr_what_are_you_reading_week/)|
Most upvoted papers last week :
[Learning to learn by gradient descent by gradient descent](https://arxiv.org/abs/1606.04474)
[Natural Language Understanding with Distributed Representation](https://github.com/nyu-dl/NLP_DL_Lecture_Note)
[Geometric deep learning: going beyond Euclidean data](https://arxiv.org/abs/1611.08097)
Besides that, there are no rules, have fun and Merry Christmas to everyone!
/r/MachineLearning
https://redd.it/5kd6vd
Reddit
From the MachineLearning community on Reddit
Explore this post and more from the MachineLearning community
mitmproxy (HTTPS Debugger) 1.0 released, now Python 3 only and with a web interface
https://corte.si/posts/code/mitmproxy/announce_1_0/index.html
/r/Python
https://redd.it/5kev64
https://corte.si/posts/code/mitmproxy/announce_1_0/index.html
/r/Python
https://redd.it/5kev64
reddit
mitmproxy (HTTPS Debugger) 1.0 released, now Python 3... • /r/Python
113 points and 8 comments so far on reddit
Django vS other Dev frameworks
Hi can someone explain to me in laymens terms the perks of developing applications quickly within the django framework as opposed to writing logic by hand with JS and using that to interact with my html/css? I am currently working with python for my applications due to it's ease of transferring ideas to code. However I am still unsure about how to make the GUI/front-end is that all still done with standard HTML/css and django/python is back-end/database interaction ? Would love to get a discussion going, hope everyones having a good boxing day.
/r/djangolearning
https://redd.it/5ke7cg
Hi can someone explain to me in laymens terms the perks of developing applications quickly within the django framework as opposed to writing logic by hand with JS and using that to interact with my html/css? I am currently working with python for my applications due to it's ease of transferring ideas to code. However I am still unsure about how to make the GUI/front-end is that all still done with standard HTML/css and django/python is back-end/database interaction ? Would love to get a discussion going, hope everyones having a good boxing day.
/r/djangolearning
https://redd.it/5ke7cg
reddit
Django vS other Dev frameworks • /r/djangolearning
Hi can someone explain to me in laymens terms the perks of developing applications quickly within the django framework as opposed to writing logic...
PrettyPandas - Add report style summaries and units to Pandas DataFrames
http://prettypandas.readthedocs.org/en/latest/
/r/pystats
https://redd.it/41rko0
http://prettypandas.readthedocs.org/en/latest/
/r/pystats
https://redd.it/41rko0
Making Python Really Fast
https://medium.com/@paulcolomiets/making-python-really-fast-6407679c9a3d#.reh5m7pzp
/r/Python
https://redd.it/5kf0qp
https://medium.com/@paulcolomiets/making-python-really-fast-6407679c9a3d#.reh5m7pzp
/r/Python
https://redd.it/5kf0qp
Medium
Making Python Really Fast
This is a follow-up for my previous articles about moving pythonic asynchronous IO into a separate GIL-less thread. This time, I have some…
adjustText - Automatically adjust text position on matplotlib graphs to minimize overlaps
https://github.com/Phlya/adjustText
/r/pystats
https://redd.it/40t417
https://github.com/Phlya/adjustText
/r/pystats
https://redd.it/40t417
GitHub
GitHub - Phlya/adjustText: A small library for automatical adjustment of text position in matplotlib plots to minimize overlaps.
A small library for automatical adjustment of text position in matplotlib plots to minimize overlaps. - Phlya/adjustText
alot of .PY scripts I found. Dont know what they do but thought somebody here would like to look over them.
http://cage.owltux.com/?dir=script/script%20python
/r/Python
https://redd.it/5ki1ze
http://cage.owltux.com/?dir=script/script%20python
/r/Python
https://redd.it/5ki1ze
Pythonistas: do you ever find the need to use Perl?
Similar question: if you learned Perl first and Python later, do you ever use Perl?
These questions came up in this thread at /r/perl:
https://www.reddit.com/r/perl/comments/5jvsr6/how_does_one_convince_pythonistas_that_perl_is/?
/r/Python
https://redd.it/5ki1tc
Similar question: if you learned Perl first and Python later, do you ever use Perl?
These questions came up in this thread at /r/perl:
https://www.reddit.com/r/perl/comments/5jvsr6/how_does_one_convince_pythonistas_that_perl_is/?
/r/Python
https://redd.it/5ki1tc
reddit
How does one convince Pythonistas that Perl is... • /r/perl
This is possibly a tired discussion, but I really don't quite know how to convince Python users that Perl is actually a useful/handy language to...
(Cross-post from /r/python) neat-python v0.6 release: evolution of arbitrary neural networks
https://pypi.python.org/pypi/neat-python/0.6
/r/pystats
https://redd.it/40csw6
https://pypi.python.org/pypi/neat-python/0.6
/r/pystats
https://redd.it/40csw6
pypi.python.org
neat-python 0.6 : Python Package Index
A NEAT (NeuroEvolution of Augmenting Topologies) implementation
I accidentally uploaded my secret key onto a public github repo for a trivial practice app--am I under any serious threat for anything?
It was a side project I did for practice, but would like to keep it on github to keep record of my progress.
What sort of risk am I taking in making my secret key available?
side question: when uploading a django app onto GH, what sort of security measures should I take from now on? What belongs in the .gitignores of django apps?
/r/django
https://redd.it/5kix2v
It was a side project I did for practice, but would like to keep it on github to keep record of my progress.
What sort of risk am I taking in making my secret key available?
side question: when uploading a django app onto GH, what sort of security measures should I take from now on? What belongs in the .gitignores of django apps?
/r/django
https://redd.it/5kix2v
reddit
I accidentally uploaded my secret key onto a public... • /r/django
It was a side project I did for practice, but would like to keep it on github to keep record of my progress. What sort of risk am I taking in...
[D] How to train generative adversarial networks
We have had a few posts here before, and the [notes of the talk at NIPS](https://github.com/soumith/ganhacks) are useful, and there are some other great "how to" [resources](https://github.com/shekkizh/neuralnetworks.thought-experiments/blob/master/Generative%20Models/GAN/Readme.md). There is also the [Torch blogpost on the topic](http://torch.ch/blog/2015/11/13/gan.html).
I have generated images that look good. I have toyed with tons of GAN variants.
But I still feel like I have no idea how to train a GAN in any sort of rigorous manner. To me it seems like the most important factor in generating visually understandable images is some strange and exploratory architecture balancing act, which appears completely arbitrary. I train one GAN to equilibrium and end up with trash images, but change a tiny thing in the architecture and reach a very similar equilibrium (ie the G and D training curves look the same) but have nice images.
This suggests to me that what we are actually doing is (over)fitting models based on human visual interpretation, not model metrics. This is very "human in the loop" and not theoretically satisfying. And more frustratingly, it is not discussed even in the few articles and blogposts on GAN hacks and methods. I wasn't at NIPS so I don't know if the workshop covered more than the git.
Mode collapse and "stability" don't seem to explain my experiences. It kind of feels more like model hacking. I know my colleagues feel similar frustrations, like we are all just randomly wandering around image space until we stumble upon a training method that lands us close to the image manifold and then it magically starts working.
I really want to be told I am just missing something that should be obvious.
So, is there any rigorous way to train a GAN? Where I can look at my curves and my gradients and my activations and just *know* I will end up with quality images?
/r/MachineLearning
https://redd.it/5kj566
We have had a few posts here before, and the [notes of the talk at NIPS](https://github.com/soumith/ganhacks) are useful, and there are some other great "how to" [resources](https://github.com/shekkizh/neuralnetworks.thought-experiments/blob/master/Generative%20Models/GAN/Readme.md). There is also the [Torch blogpost on the topic](http://torch.ch/blog/2015/11/13/gan.html).
I have generated images that look good. I have toyed with tons of GAN variants.
But I still feel like I have no idea how to train a GAN in any sort of rigorous manner. To me it seems like the most important factor in generating visually understandable images is some strange and exploratory architecture balancing act, which appears completely arbitrary. I train one GAN to equilibrium and end up with trash images, but change a tiny thing in the architecture and reach a very similar equilibrium (ie the G and D training curves look the same) but have nice images.
This suggests to me that what we are actually doing is (over)fitting models based on human visual interpretation, not model metrics. This is very "human in the loop" and not theoretically satisfying. And more frustratingly, it is not discussed even in the few articles and blogposts on GAN hacks and methods. I wasn't at NIPS so I don't know if the workshop covered more than the git.
Mode collapse and "stability" don't seem to explain my experiences. It kind of feels more like model hacking. I know my colleagues feel similar frustrations, like we are all just randomly wandering around image space until we stumble upon a training method that lands us close to the image manifold and then it magically starts working.
I really want to be told I am just missing something that should be obvious.
So, is there any rigorous way to train a GAN? Where I can look at my curves and my gradients and my activations and just *know* I will end up with quality images?
/r/MachineLearning
https://redd.it/5kj566
GitHub
GitHub - soumith/ganhacks: starter from "How to Train a GAN?" at NIPS2016
starter from "How to Train a GAN?" at NIPS2016. Contribute to soumith/ganhacks development by creating an account on GitHub.
What's everyone working on this week?
Tell /r/python what you're working on this week! You can be bragging, grousing, sharing your passion, or explaining your pain. Talk about your current project or your pet project; whatever you want to share.
/r/Python
https://redd.it/5kjv9n
Tell /r/python what you're working on this week! You can be bragging, grousing, sharing your passion, or explaining your pain. Talk about your current project or your pet project; whatever you want to share.
/r/Python
https://redd.it/5kjv9n
reddit
What's everyone working on this week? • /r/Python
Tell /r/python what you're working on this week! You can be bragging, grousing, sharing your passion, or explaining your pain. Talk about your...
Running django models on a server
I've currently built a data collector script that requests data from an API and stores it in a mongo database. Eventually I want to display this data via a django app however first i'd like to host the script on a server where it can collect data without my computer being on.
Later I will connect my django app to the db that is hosted on the server. However for now I want to know the best way to host my data collector and db.
Would you guys recommend apache ?
NB I'm new to hosting scripts on servers/ django, so any noobie notes would be great
EDIT: Can i run it directly through django with it's own server ?
/r/django
https://redd.it/5kf504
I've currently built a data collector script that requests data from an API and stores it in a mongo database. Eventually I want to display this data via a django app however first i'd like to host the script on a server where it can collect data without my computer being on.
Later I will connect my django app to the db that is hosted on the server. However for now I want to know the best way to host my data collector and db.
Would you guys recommend apache ?
NB I'm new to hosting scripts on servers/ django, so any noobie notes would be great
EDIT: Can i run it directly through django with it's own server ?
/r/django
https://redd.it/5kf504
reddit
Running django models on a server • /r/django
I've currently built a data collector script that requests data from an API and stores it in a mongo database. Eventually I want to display this...
[P] TensorFlow implementation of Value Iteration Networks (winner of Best Paper Award at NIPS 2016)
https://github.com/TheAbhiKumar/tensorflow-value-iteration-networks
/r/MachineLearning
https://redd.it/5kh1fo
https://github.com/TheAbhiKumar/tensorflow-value-iteration-networks
/r/MachineLearning
https://redd.it/5kh1fo
GitHub
GitHub - TheAbhiKumar/tensorflow-value-iteration-networks: TensorFlow implementation of the Value Iteration Networks (NIPS '16)…
TensorFlow implementation of the Value Iteration Networks (NIPS '16) paper - GitHub - TheAbhiKumar/tensorflow-value-iteration-networks: TensorFlow implementation of the Value Iteration Netw...