example
Links to this note
- open documents
- linear models
- Connect emacs TRAMP to gcp container using gcloud compute config-ssh
- Data analysis using regression and multilevel hierarchical models by Andrew Gelman and Jennifer Hill in 2006
- Bayesian data analysis by Andrew Gelman, Aki Vehtari, et al in 2014
- service mesh
- kubernetes on gke with terraform
- jupyter hub
- interacting particle systems
- An approximation to an efficient fundamental physics curriculum
- A Visual Introduction to Differential Forms and Calculus on Manifolds by Fortney in 2018
- The Origin and Nature of Life on Earth The emergence of the fourth geosphere by Eric Smith and Harold Morowitz in 2016
- The information geometry of 2-field functional integrals by Eric Smith in 2019
- Probabilistic Modeling and Statistical Inference by Michael Betancourt in 2019
- Biology of information lectures at College de France
- Bayesian probabilistic inference for stochastic processes
- Physics from Symmetry by Jakob Schwichtenberg in 2015
- probabilistic inference
- How can one setup an inexpensive gke kubernetes cluster with no load balancer using terraform running jupyter hub with instances a containerized jupyter notebook with multiple kernels on Arch Linux?
- genotype-tissue expression GTEx
- suppressed correlative
- pyprob
- pyro
- phase transition
- kubernetes
- frame bundle
- cancer evolution
- The geometry of physics by Theodore Frankel in 2012
- The Knowledge Economy by Roberto Mangabeira Unger in 2019
- Symmetry analysis of differential equations by Gerd Baumann in 2000
- Stan
- Statistical Physics of Complex Systems by Eric Bertin in 2016
- Self-organization in nonequilibrium systems from dissipative structures to order through fluctuations by Nicolis and Prigogine in 1977
- SageManifolds
- Regression and Other Stories by Andrew Gelman, Jennifer Hill, and Aki Vehtari in 2020
- Quantum Field Theory for the Gifted Amateur by Lancaster and Blundell in 2014
- Pattern recognition and machine learning by Chris Bishop in 2006
- Optimal Renormalization Group Transformation from Information Theory by Lenggenhager, Ringel, Huber, and Koch-Janusz in 2018
- Notions of intrinsic motivation by Martin Biehl in 2017
- Multiscale Structure in Eco-Evolutionary Dynamics by Blake Stacey in 2015
- Model reduction methods for classical stochastic systems with fast-switching environments reduced master equations, stochastic differential equations, and applications by Hufton, Lin, and Galla in 2018
- Large deviations and dynamical phase transitions in stochastic chemical networks by Lazarescu and Esposito in 2019
- Lectures on Geometrical Anatomy of Theoretical Physics by Frederic Schuller in 2015
- Introductory Lectures on Stochastic Population Systems by Donald Dawson in 2017
- Introduction to dynamical large deviations of Markov processes by Hugo Touchette in 2018
- Information Theory for Fields by Torsten Enslin in 2019
- Intrinsic and extrinsic thermodynamics for stochastic population processes with multi-level large-deviation structure by Eric Smith in 2020
- In what sense can gene-regulatory networks be thought of as performing inference upon the dynamics of the environments within which they are embedded?
- How to construct and debug a dockerfile
- Higher prequantum geometry by Urs Schreiber in 2017
- Gilles Deleuze An Introduction by Todd May in 2015
- GpABC a Julia package for approximate bayesian computation with Gaussian process emulation by Evgeny Tankhilevich, Michael P. H. Stumpf et al in 2020
- Geometry, Topology, and Physics by Mikio Nakahara in 2003
- Gauge Theories in Particle Physics A Practical Introduction, Volume 2 Non-Abelian Gauge Theories QCD and The Electroweak Theory by Aitchison and Hey in 2013
- Gauge Theories in Particle Physics A Practical Introduction, Volume 1 From Relativistic Quantum Mechanics to QED by Aitchison and Hey in 2013
- Evergreen notes by Andy Matuschak
- Effective fluctuation and response theory by Polettini and Esposito in 2018
- A tutorial on the free-energy framework for modeling perception and learning by Rafal Bogacz in 2017
- A high-bias, low-variance introduction to Machine Learning for physicists by Pankaj Mehta, Charles Fisher, David Schwab, et al in 2018
- A brief history of Western Philosophy by Anthony Kenny in 2019
- A Class of Models with the Potential to Represent Fundamental Physics by Stephen Wolfram in 2020