Jethro's Braindump
Ising Models
Sentences should branch to the right
Bin Picking
Zettelkasten
Documentation Generators
The Intelligent Investor
C++ Language
Policy Gradients
Distributed Reinforcement Learning
Theory Of Computation
Compilers
Machine Learning
Artificial Intelligence
What I'm Doing Now
zhu_unsupervised_2018: Unsupervised Event-based Learning of Optical Flow, Depth, and Egomotion
Robot Grasping
Prediction is the Essence of Intelligence
Self-supervised Learning
zhu_ev-flownet_2018: EV-FlowNet: self-supervised optical flow estimation for event-based cameras
LeCun's Cake Analogy
Human Behaviour As Optimal Control
RSS 2020, Early Career Award Keynote + Q&A: Luca Carlone - YouTube
RSS 2020, Early Career Award Keynote + Q&A: Jeannette Bohg - YouTube
Robotics
State Estimation
Cryptography
PARA Method
Information-Theoretic Reinforcement Learning
Getting Things Done (GTD)
Quantitative Reasoning
Neural Ordinary Differential Equations (Review)
Probabilistic Graph Models
Q-Learning
BitTorrent
Uncertainty in Robotics
Generalized Value Functions
Portfolio Composition
Pdf Tools
Robotics Algorithms
Statistical Distributions
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Hopfield Network
LaTeX
Neuroscience and Reinforcement Learning
Robot Kinematics
Fitness
Learning How To Learn
Game Design
Spike Train Mutual Information
Programming Methodology
Writing Articles
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How To Write a Technical Paper
Evolving Spiking Neural Networks
Sam Greydanus
The art of storytelling | Pixar in a Box | Partner content | Khan Academy
Map Matching
Self-attention
Copy Editing
Markov Logic Networks
Sleep
Wisdom
Information Filter
Site Reliability
Reinforcement Learning ⭐
Simultaneous Localization and Mapping (SLAM)
Leaky Integrate-And-Fire
Web Development
Asian Cinema
Occupancy Grid Mapping
Concept Grounding
Kalman Filter
How To Read A Book
Neuroscience Experimental Evidence
Linux
Spark
Singapore Society
Hierarchical Models
Spiking Neural Networks
Emacs Should Be Emacs Lisp - Tom Tromey
Velocity Motion Model
Probability Theory
Talks: Emacs Lisp Development Tips with John Wiegley
Branch Prediction
Control As Inference
Cuckoo Filters
Writing
VFS for Git
Alexander Rush
Finance
What happens when we type a simple command on shell?
Likelihood Principle
Matplotlib
Building a PC
Synaptic Current Model
Code Litmus Tests
Riken AIP Workshop 2019
Running
Consciousness
Documentation
Convolutional Neural Networks
Experimental Data Science
Entropy
Linear Algebra
Computer Vision
Learning How To Do Hard Things
The Svelte Compiler Handbook | Tan Li Hau
Arguments Against Bayesian Inference
Zeigarnik Effect
SSNLP Conference Notes
IS1103: Computing and Society
Systems Programming
Awk
Model-Based Reinforcement Learning
Progressive Summarization
CSS
Fast Neural Network Training
Google Cloud Platform
Large Batch Training
Machine Learning Algorithms
Git Scalar
Travel
Feedback Alignment and Random Error Backpropagation
Quantization
Security
Natural Language Processing
Statistical Methods for Finance
Transfer Learning
Data Structures and Algorithms
LARS Optimizer
Ask HN: Resources to grok Emacs and use it well? | Hacker News
Rademacher Complexity
Stochastic Processes
Haskell
Negotiation
Anti-fragile Ideas
Robot Operating System (ROS)
Celeste Kidd
VisGel
Blockchain
Credit Assignment in Spiking Neural Networks
Jensen's Inequality
Machine Teaching
Variational Autoencoders
Web Framework
Feynman Technique
If You're Not Writing a Programming Language, Don't Use A Programming Language - Leslie Lamport
Temporal Difference Learning
Conditional Random Fields
Real Estate Investment Trusts
Smoothed Spiking Neural Networks
John Schulman
Kl Divergence
Surrogate Gradient Learning In Spiking Neural Networks
Writing Books
Exploration In Reinforcement Learning
Trigger List
Dev Ops
The Bias-Complexity Tradeoff
Gibbs Sampling
Nix/NixOS
Rover
Bayes Filter
Multi-modal Alignment
Cognitive Hierarchy Model
NeurIPS
Bayesian Inference
Tom Tromey
Art
Grid & Monte Carlo Localization
Particle Filter
Spiking Neurons (Literature Review)
Version Control
Meta Learning
Shell
Coding Interview Preparation
SNN Software
Autoencoder
Git
Presentations
Petri Purho
Statistical Learning
Hadoop
Histogram Filter
Support Vector Machines
The C Language
Metropolis-Hastings Method
Spaced Repetition
Coding Interview Cheatsheet
Expectation Maximization and Mixture Models
Empirical Risk Minimization
Leslie Lamport
Inverse Reinforcement Learning
Range Finder Model
Spiking Datasets
Bayesian Deep Learning
Change of Variables Theorem
Programming Languages
Statistical Testing
Variational Inference
Elisp: Buffer-passing Style
Papers
Richard Hamming
Common Statistical Tests Are Linear Models
Michael Nielsen
Sufficient Statistics
Latent Dirichlet Allocation
The most successful malleable system in history | Malleable Systems Collective
Evolving Connectionist Systems
Multi-modal Machine Learning
Monte Carlo Methods
Richard Feynman
RSS Feeds
I-Diagrams
Investing In ETFs
Deep Boltzmann Machines
Deep Learning
Options Framework
Gaussian Processes
Gpipe
Bayesian Statistics
Computer Organization
Monte Carlo Tree Search
Principles of Effective Research | Michael Nielsen
React
Improving Grammatical Error Correction via Pre-Training a Copy-Augmented Architecture with Unlabeled Data
The opt-out illusion - Technology - TLS
The Paths Perspective on Value Learning
How to brainstorm great business ideas
The Annotated Transformer
How to Make Yourself Into a Learning Machine - Superorganizers
Introduction to D3 / MIT Visualization Group / Observable
When Bloom filters don't bloom
Ask HN: How do I learn C properly? | Hacker News
Why Svelte is our choice for a large web project in 2020
You and Your Research - Richard Hamming
Definition of Deep Learning
Post YC Depression
Operating Systems
GCC
Java
Optimal Control and Planning
Deep Learning With Bayesian Principles - Emtiyaz Khan
Markovian Assumption
Robot Motion
Experience Replay
Numpy
Two Levels Of Inference
Gaussian Filter
Nolla Games
Robotics Probabilistic Generative Laws
Are We Really Making Much Progress? A Worrying Analysis of Recent Neural Recommendation Approaches
Sonke Ahrens
Storytelling
Game API Design
XGBoost
Attention (ML)
Books
Work Clean
Critical Thinking
Reference Prior
Markov Decision Process
Motion Model With Maps
Generalization In Reinforcement Learning
The Art Of Unix Programming
Computer Networking
Find (CLI Tool)
Event Representations
Python Default Parameter Values
Reichenbach's principle
chen20_simpl_framew_contr_learn_visual_repres: A simple framework for contrastive learning of visual representations
Cognitive Task Analysis
Making Sense of Vision and Touch: Multimodal Representations for Contact-Rich Tasks | SAIL Blog
Energy-based Models
Python Packaging
What to write down when you’re reading to learn – Aceso Under Glass
Copying Better: How To Acquire The Tacit Knowledge of Experts
Recognition-primed Decision-making Model
Voxel Grid
Cedric Chin
Iterative Closed Point
lagorce_hots_2017: HOTS: A Hierarchy of Event-Based Time-Surfaces for Pattern Recognition
China Economics
Visual Basic
Contrastive Methods
hjelm_learning_2019: Learning deep representations by mutual information estimation and maximization
jing_self-supervised_2019: Self-supervised Visual Feature Learning with Deep Neural Networks: A Survey
Optical Flow Estimation
Structural Causal Model
NixOS - NixOS manual
Principle Component Analyses
Probabilistic Filters
Model Predictive Control
Motion Compensation
Self-Supervised Representation Learning
alonso_current_2019: Current Research Trends in Robot Grasping and Bin Picking
RSS 2020 Workshops: Visuotactile Sensors for Robust Manipulation - From Perception to Control
Event-based Vision
Interactive Closest Point
K-means
Mutual Information
Online Learning
Python Import Resolution
chen_big_2020: Big Self-Supervised Models are Strong Semi-Supervised Learners
Time Surface
DBSCAN
DVS Cameras
Singapore Dollar Nominal Effective Exchange Rate
Byron Boots - Perspectives on Machine Learning and Robotics
Causality, part 1 - Bernhard Schölkopf - MLSS 2020, Tübingen - YouTube
Slice Sampling
Collaborative Editing
Courtland Allen
Occam's Razor
Bloom Filter
System Design
Three-pass Technique
Red-Black Tree
Robot Localization
Scala
Canonical Correlation Analysis
Fisher information
LU Decomposition
Business
Likelihood Field Model
Partially Observable Markov Decision Processes (POMDPs)
Datacouncil.ai Conference Notes
Gibbs' Inequality
Playing Atari with Deep RL
A Distributional Code for Value in Dopamine-based Reinforcement Learning
Multi-modal Fusion
Non-informative Priors
Non-parametric Filters
Org-Mode
Studying
Statistics
Markov Localization
Model Compression
PDF Nup
Docker 101
Optimization
CMake
Designing Data-Intensive Applications
Differentiable plasticity: training plastic neural networks with backpropagation
ARM Assembly Programming
Config Management
Google Cartographer
Exponential Family
Lsof
Unsupervised Learning
Article: An Opinionated Guide to ML Research
John Wiegley
Markov Chains
Co-learning
Data Visualization
Emacs
Note-taking
Odometry Motion Model
Imagineering in a Box | Storytelling | Arts and humanities | Khan Academy
Importance Sampling
Interval Estimation in Bayesian Statistics
Emacs Lisp
How To Know - Celeste Kidd
HTTP
Nat Eliason
PAC Learning
Research
Actor-Critic
Conor White-Sullivan
Conversation
Deep Reinforcement Learning
Svelte
Swift
Are We Smart Enough to Know How Smart Animals Are?
Benjamin Graham
t-distribution
EKF Localization
Imitation Learning
Multi-variable Calculus
Data Science
Web Performance
Databases
Information Bottleneck in Deep Neural Networks
Single Layer XOR
Emtiyaz Khan
Hacking
GDC Vault - Exploring the Tech and Design of 'Noita'
Hindsight Experience Replay
Laplace's Method
Yann LeCun
How To Take Smart Notes
Podcasts
The Art Of Doing Science And Engineering
Productivity
Roam Research
Cross-modal Hashing
Google DNS
PDF Cropping
Google - Site Reliability Engineering
Hidden Markov Model
OCaml
Zero shot Learning
Exchangeability
Learning
Multi-modal Autoencoders
And the Bit Goes Down: Revisiting the Quantization of Neural Networks
JavaScript
Machine Learning Papers
Unix
Jeffreys Prior
Neural Network Optimizer
VC-Dimension
Investment
Multiple Learning Kernel
Writing with Zettekasten
Deep Learning Tools
Multi-modal Translation
Point Estimation in Bayesian Statistics
Deep Reinforcement Learning That Matters
Dynamic Time Warping
Multi-modal Representation
A critique of pure learning and what artificial neural networks can learn from animal brains
Temp Coding with Alpha Synaptic Function
Regression
Rejection Sampling
Information Theory
Neuroscience ⭐
Reading
Restricted Boltzmann machines
Topic Modeling
Extended Kalman Filter
Free-Energy Reinforcement Learning
Privacy
Martin Kleppmann
Random Variables
Vocabulary
Generative Models
Python
Recommender Systems
Spike Train Metrics