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Distill.pub 30 articles
Distill Hiatus
🔬 Research Distill.pub 12 min read

After five years, Distill will be taking a break.

Weight Banding
🔬 Research Distill.pub 11 min read

Weights in the final layer of common visual models appear as horizontal bands. We investigate how and why.

Branch Specialization
🔬 Research Distill.pub 13 min read

When a neural network layer is divided into multiple branches, neurons self-organize into coherent groupings.

Self-Organising Textures
🔬 Research Distill.pub 30 min read

Neural Cellular Automata learn to generate textures, exhibiting surprising properties.

Visualizing Weights
🔬 Research Distill.pub 15 min read

We present techniques for visualizing, contextualizing, and understanding neural network weights.

Curve Circuits
🔬 Research Distill.pub 3 min read

Reverse engineering the curve detection algorithm from InceptionV1 and reimplementing it from scratch.

High-Low Frequency Detectors
🔬 Research Distill.pub 18 min read

A family of early-vision neurons reacting to directional transitions from high to low spatial frequency.

Understanding RL Vision
🔬 Research Distill.pub 40 min read

With diverse environments, we can analyze, diagnose and edit deep reinforcement learning models using attribution.

Communicating with Interactive Articles
🔬 Research Distill.pub 36 min read

Examining the design of interactive articles by synthesizing theory from disciplines such as education, journalism, and visualization.

Self-classifying MNIST Digits
🔬 Research Distill.pub 27 min read

Training an end-to-end differentiable, self-organising cellular automata for classifying MNIST digits.

Curve Detectors
🔬 Research Distill.pub 36 min read

Part one of a three part deep dive into the curve neuron family.

Thread: Circuits
🔬 Research Distill.pub 5 min read

What can we learn if we invest heavily in reverse engineering a single neural network?

Growing Neural Cellular Automata
🔬 Research Distill.pub 24 min read

Training an end-to-end differentiable, self-organising cellular automata model of morphogenesis, able to both grow and regenerate specific patterns.