Jun 11, 2020
Dipping toes into biochemistry, energy metabolism and running some biohacking lite experiments.
Apr 25, 2019
A Recipe for Training Neural Networks
A collection of practical advice for the process of achieving strong results with neural networks.
Jan 20, 2018
(started posting on Medium instead)
Yes I'm still around but, I've started posting on Medium instead of here.
Sep 7, 2016
A Survival Guide to a PhD
A collection of tips/tricks for navigating the PhD experience.
May 31, 2016
Deep Reinforcement Learning: Pong from Pixels
I'll discuss the core ideas, pros and cons of policy gradients, a standard approach to the rapidly growing and exciting area of deep reinforcement learning. As a running example we'll learn to play ATARI 2600 Pong from raw pixels.
Nov 14, 2015
Short Story on AI: A Cognitive Discontinuity.
The first part of a short story collection that has been on my mind for a long while. Exciting! :)
Oct 25, 2015
What a Deep Neural Network thinks about your #selfie
We will look at Convolutional Neural Networks, with a fun example of training them to classify #selfies as good/bad based on a scraped dataset of 2 million selfies.
May 21, 2015
The Unreasonable Effectiveness of Recurrent Neural Networks
We'll train and sample from character-level RNN language models that learn to write poetry, latex math and code. We'll also analyze the models and get hints of future research directions.
Mar 30, 2015
Breaking Linear Classifiers on ImageNet
There have been a few recent papers that fool ConvNets by taking a correctly classified image and perturbing it in an imperceptible way to produce an image that is misclassified. In this post I show that ConvNets are an overkill: Simple linear classifiers are in fact susceptible to the same fooling strategy.
Sep 2, 2014
What I learned from competing against a ConvNet on ImageNet
The latest state of the art Image Classification networks have only 6.7% Hit@5 error on ILSVRC 2014 classification task. How do humans compare?
Aug 3, 2014
Describing a new pet project that tracks active windows and keystroke frequencies over the duration of a day (on Ubuntu/OSX) and creates pretty HTML visualizations of the data. This allows me to gain nice insights into my productivity. Code on Github.
Jul 3, 2014
Feature Learning Escapades
Some reflections on the last two years of my research: The Quest for Unsupervised Feature Learning algorithms for visual data. Where it was, where it is, and where it's going. Maybe.
Jul 2, 2014
Jul 1, 2014
Switching Blog from Wordpress to Jekyll
I can't believe I lasted this long on Wordpress. I am switching permanently to Jekyll for hosting my blog, and so should you :) Details inside.
Apr 26, 2014
Interview with Data Science Weekly on Neural Nets and ConvNetJS
I gave a (long) interview about my background and perspectives on neural nets.
Nov 27, 2013
Quantifying Hacker News with 50 days of data
I scraped Hacker News Front Page and New Page every minute for 50 days and analyzed the results. How do stories rise and fall on Hacker News? What makes a successful post? Find out in this post :)
Nov 23, 2013
Chrome Extension Programming: Illustrating a Basic Survival Skill with a Twitter Case Study
Oct 22, 2012
The state of Computer Vision and AI: we are really, really far away.
A depressing look at the state of Computer Vision Research and AI in general. For those who like to think that AI is anywhere close.
Apr 27, 2011
Lessons learned from manually classifying CIFAR-10
CIFAR-10 is a popular dataset small dataset for testing out Computer Vision Deep Learning learning methods. We're seeing a lot of improvements. But what is the human baseline?