There are no reviews yet. Be the first to send feedback to the community and the maintainers!
deeplearning-units
🧠🧑🏻💻 Repository for the Deep Learning course labs/practica (UniTS, Spring 2024)probml-units
🎲🧑🏻🏫 Repository for the Probabilistic Machine Learning labs/practica (@ UniTS, Spring 2023)ebtorch
🤓🔥 Collection of PyTorch additions, extensions, utilities, uses and abusesfoveatorch
👀🔥 Differentiable foveated vision for Deep Learning methodswsl2-linux-kernel-clearsky
[AUTO-RELEASE] Sources of latest WSL2 Linux kernel from Microsoft, with graysky2's patchsetpersaturam
Because using gists is good... until they become too many to manage!FLASIO
Ready-to-install, official FL Studio ASIO driver without FL Studio itself!aistack
An automatically-bootstrapped AI research environment with (huge, maybe too much) batteries includedxmonolisa
MonoLisa NerdFonts Complete patching machinery (adaptation of https://github.com/adam7/delugia-code)HinTorch
A critical, 🔥PyTorch-flavoured attempt at reproducing the results of 📃"Learning representations by back-propagating errors" (Nature, 1986) by Rumelhart, Hinton and Williams.clearer-manjaro-kernel
Manjaro Linux kernel + some Clear Linux patches + parts of XanMod patchset + BitMap Queue Scheduler + some additional patches/tweaks | Now tracking Linux 5.5carso-msc-thesis
LaTeX source and related material for my M.Sc. thesis in Deep LearningRADLER
[Partial] RADLER: (adversarially) Robust Adversarial Distributional LEaRnerstatmeth-hw01
Statistical Methods for Data Science @ UniTS (Spring '20) - Homework 01 - Group "B"clearer-manjaro-kernel-acpi-call
acpi-call extramodules for clearer-manjaro-kernel | Now tracking Linux 5.5graalvm-ee-archlinux
GraalVM Enterprise Edition PKGBUILDsthesis-bsc-physics
LaTeX & friends for my B.Sc. (Physics) thesis about a novel approach toward Deep Learning adversarial robustnessBSTDplate
High performance, super-opinionated, BST as a STD (Tem)plate, in modern C++.clearer-manjaro-kernel-nvidia
Nvidia extramodules for clearer-manjaro-kernel | Now tracking Linux 5.5pyromaniac
🔥 Collection of PyTorch uses and abusesalgodes
Algorithmic Design homework, code (in C) and other goodies. (UniTS, Spring 2020)fhpc_assignments_2019-2020
Assignments and related code for the FHPC classes by UniTS/SISSA/ICTP (a.a. 2019/2020)RDDL
Rapid Deployment Deep Learningthe-last-suppR
Statistical Methods for Data Science @ UniTS (Spring '20) - Homework 05 - Group "E"distnbody-hm
MPI/OpenMP-parallel gravitational collisional N-body simulator via modern C++ and hypermodularitydotnet-archlinux-done-right
Collection of tweaked and updated PKGBUILDs to install a full .NET Core/Mono development environmenttreeleaves-as-tree-leaves
Using (mostly) trees to classify (mostly) tree leaves. Just trees of a different kind. In R.neural-toys
Old stuff related to (part of) coursework on Neural Networks and Machine Learningemaballarin.github.io-comments
utteranc.es-powered comment system for ballarin.cc / emaballarin.github.ioDifFULl
Fully Differentiable Unsupervised Learning (coursework... and beyond!)upgit_store
Storage repository for publicly-accessible images uploaded with https://github.com/pluveto/upgitAoC-2021
Advent of Code 2021 (no guarantees, attempt of) as a data scientist should: i.e. never looping over dataxcartographcf
CartographCF NerdFonts Complete patching machinery (adaptation of https://github.com/adam7/delugia-code)financial-wholenamycs
Whole-system multidimensional financial time series prediction and simulation from timestamped prices only (attempt of)pip_install_if_missing
📦 Easily install Python packages if they are missing. Thought for Colab-like disposable environments.MagiskBetterDNS
Use a hybrid Cloudflare (default) / Google (fallback) DNS system-wide on a Magisk-rooted Android devicecathode
Putting [A]NODEs ([Augmented] Neural ODEs) to work, for Time Series prediction and simulationfastwonn
🏁🥈Fast, GPU-friendly, differentiable computation of Intrinsic Dimension via Maximum Likelihood, the TwoNN algorithm, and everything in between!nmc-numpyro
🎲🔥 Unofficial implementation of Newtonian Monte Carlo MCMC sampling algorithm (after Arora et al., 2020) in JAX/NumPyro, with full NumPyro-API compatibilityLove Open Source and this site? Check out how you can help us