SimulationTutorials - Public tutorials around electrophysiological simulations

  •        16

On November 10th 2017, we present a breakout session "Data-Driven Neurophysiology and Neuronal Modelling". It is part of the Society for Neuroscience (SfN) Annual Meeting Preconference Sessions, SHORT COURSE 2: Neuroinformatics in the Age of Big Data: Working With the Right Data and Tools. The content of this tutorial is located here.

https://github.com/BlueBrain/SimulationTutorials

Tags
Implementation
License
Platform

   




Related Projects

gt-nlp-class - Course materials for Georgia Tech CS 4650 and 7650, "Natural Language"

  •    TeX

This course gives an overview of modern data-driven techniques for natural language processing. The course moves from shallow bag-of-words models to richer structural representations of how words interact to create meaning. At each level, we will discuss the salient linguistic phemonena and most successful computational models. Along the way we will cover machine learning techniques which are especially relevant to natural language processing. Readings will be drawn mainly from my notes. Additional readings may be assigned from published papers, blogposts, and tutorials.

urban-data-science - Course materials, Jupyter notebooks, tutorials, guides, and demos for a Python-based urban data science course

  •    Jupyter

This repo is my workspace for developing a cycle of course materials, IPython notebooks, and tutorials towards an academic urban data science course based on Python. Between Fall 2013 and Fall 2016, I was the grad student instructor (3 years) and co-lead instructor (1 year) for CP255, Urban Informatics and Visualization, at UC Berkeley. This course was developed by Paul Waddell and is ongoing at Berkeley with the fantastic contributions of @Arezoo-bz. If you're interested in these topics at all, you owe it to yourself to check out the latest iterations of Paul's excellent pedagogy in his CP255 repo. A couple years ago, I wrote this blog post describing our efforts for the course.

Practical_RL - A course in reinforcement learning in the wild

  •    Jupyter

A course on reinforcement learning in the wild. Taught on-campus at HSE and YSDA and maintained to be friendly to online students (both english and russian). The syllabus is approximate: the lectures may occur in a slightly different order and some topics may end up taking two weeks.

stanford-tensorflow-tutorials - This repository contains code examples for the Stanford's course: TensorFlow for Deep Learning Research

  •    Python

This repository contains code examples for the course CS 20: TensorFlow for Deep Learning Research. It will be updated as the class progresses. Detailed syllabus and lecture notes can be found here. For this course, I use python3.6 and TensorFlow 1.4.1. For setup instruction and the list of dependencies, please see the setup folder of this repository.

datascience-box - Data Science Course in a Box

  •    HTML

This introductory data science course that is our (working) answer to these questions. The courses focuses on data acquisition and wrangling, exploratory data analysis, data visualization, and effective communication and approaching statistics from a model-based, instead of an inference-based, perspective. A heavy emphasis is placed on a consitent syntax (with tools from the tidyverse), reproducibility (with R Markdown) and version control and collaboration (with git/GitHub). We help ease the learning curve by avoiding local installation and supplementing out-of-class learning with interactive tools (like learnr tutorials). By the end of the semester teams of students work on fully reproducible data analysis projects on data they acquired, answering questions they care about. This repository serves as a "data science course in a box" containing all materials required to teach (or learn from) the course described above.


ios-learning-materials - 📚Curated list of articles, web-resources, tutorials and code repositories that may help you dig a little bit deeper into iOS

  •    Swift

Last Update: 10/October/2018. Curated list of articles, web-resources, tutorials, Stack Overflow and Quora Q&A, GitHubcode repositories and useful resources that may help you dig a little bit deeper into iOS. All the resources are split into sub-categories which simlifies navigation and management. Feel free to use and suggest something to learn (iOS related of course 😜).

financial-analysis-python-tutorial - Financial Analysis in Python tutorial

  •    

You can view the video of the talk here. Thomas Wiecki is a Quantitative Researcher at Quantopian Inc -- a Boston based startup providing you with the first browser based algorithmic trading platform -- and a PhD student at Brown University where he studies Computational Cognitive Neuroscience. He specializes in Bayesian Inference, Machine Learning, Scientific Computing in Python, algorithmic trading and Computational Psychiatry.

Intro - Course materials for "Introduction to Data Science with R", a video course by RStudio and O'Reilly Media

  •    R

Course materials for "Introduction to Data Science with R", a video course by RStudio and O'Reilly Media. To purchase the course, or watch sample lessons, visit http://shop.oreilly.com/product/0636920034834.do.

Practical_DL - DL course co-developed by YSDA, Skoltech and HSE

  •    Jupyter

This repo supplements Deep Learning course taught at YSDA and Skoltech @spring'18. For previous iteration visit the fall17 branch. Lecture and seminar materials for each week are in ./week* folders. Homeworks are in ./homework* folders.

python-jumpstart-course-demos - Contains all the "handout" materials for my Python Jumpstart by Building 10 Apps course

  •    Python

This repository contains all the "handout" materials for my Python Jumpstart by Building 10 Apps course. This includes try it yourself and finished versions of the 10 apps. Register for the course and get started mastering Python today.

intro-to-vue - Workshop Materials for my Introduction to Vue.js Workshop

  •    Vue

This repo houses the materials and resources for the Introduction to Vue.js. Most of the materials for the course are outlined below, but there are also directories housed here of very basic examples of some of the techniques we will cover so that students don't have to spend a lot of time researching in order to get started. It is recommended that students use CodePen to create work for the duration of the course, as we'll use preprocessors like SCSS as well as Babel for ES6, and resources like Vue.js, both prod and dev versions, codepen makes it easy to do so without time devoted to setup. If you like, you can also scroll to the CodePen collection section and fork one of the existing pens in those collections, they are comprehensive. There are more true-to-life build process examples, in the VueCLI, Nuxt, and Vuex Resource Sections. It's encouraged to watch the lecture to learn how to set up the builds yourself, though. For sections covering Nuxt, we will be using the directories listed in the Nuxt section below as well as their directories, prefixed with nuxt- here.

courses - Course materials for the Data Science Specialization: https://www

  •    HTML

Materials are under development and subject to change. These course materials are available under the Creative Commons Attribution NonCommercial ShareAlike (CC-NC-SA) license (http://www.tldrlegal.com/l/CC-NC-SA).

awesome-neuroscience - A curated list of awesome neuroscience libraries, software and any content related to the domain

  •    

Curated list of awesome neuroscience libraries, software and any content related to the domain. Neuroscience is the study of how the nervous system develops, its structure, and what it does. Neuroscientists focus on the brain and its impact on behavior and cognitive functions. Traditionally, neuroscience has been seen as a branch of biology, but it has grown to encompass a wide range of interdisciplinary fields that work together toward elucidating brain function at multiple levels of investigation.

CADL - Course materials/Homework materials for the FREE MOOC course on "Creative Applications of Deep Learning w/ Tensorflow" #CADL

  •    Jupyter

This repository contains lecture transcripts and homework assignments as Jupyter Notebooks for the first of three Kadenze Academy courses on Creative Applications of Deep Learning w/ Tensorflow. It also contains a python package containing all the code developed during all three courses. The first course makes heavy usage of Jupyter Notebook. This will be necessary for submitting the homeworks and interacting with the guided session notebooks I will provide for each assignment. Follow along this guide and we'll see how to obtain all of the necessary libraries that we'll be using. By the end of this, you'll have installed Jupyter Notebook, NumPy, SciPy, and Matplotlib. While many of these libraries aren't necessary for performing the Deep Learning which we'll get to in later lectures, they are incredibly useful for manipulating data on your computer, preparing data for learning, and exploring results.

ud811 - Course materials for Udacity's Intro to Progressive Web Apps course at https://www

  •    Javascript

These are the course materials for UD811. Unfortunately the Firebase Open Data Set APIs have recently been shut down. They still return data from March 31st, but are no longer updating.

Tutorials - The REST With Spring Course

  •    Java

This project is a collection of small and focused tutorials - each covering a single and well defined area of development in the Java ecosystem. A strong focus of these is, of course, the Spring Framework - Spring, Spring Boot and Spring Security. In additional to Spring, the following technologies are in focus: core Java, Jackson, HttpClient, Guava.

Neurospaces

  •    C

Neurospaces is a development center for tools in computational neuroscience. See http://www.neurospaces.org/

nupic - Numenta Platform for Intelligent Computing is an implementation of Hierarchical Temporal Memory (HTM), a theory of intelligence based strictly on the neuroscience of the neocortex

  •    Python

The Numenta Platform for Intelligent Computing (NuPIC) is a machine intelligence platform that implements the HTM learning algorithms. HTM is a detailed computational theory of the neocortex. At the core of HTM are time-based continuous learning algorithms that store and recall spatial and temporal patterns. NuPIC is suited to a variety of problems, particularly anomaly detection and prediction of streaming data sources. For more information, see numenta.org or the NuPIC Forum. For usage guides, quick starts, and API documentation, see http://nupic.docs.numenta.org/.

h2o-tutorials - Tutorials and training material for the H2O Machine Learning Platform

  •    Jupyter

This document contains tutorials and training materials for H2O-3. If you find any problems with the tutorial code, please open an issue in this repository. For general H2O questions, please post those to Stack Overflow using the "h2o" tag or join the H2O Stream Google Group for questions that don't fit into the Stack Overflow format.

stanford-cs240h - Course materials for Stanford CS240h, "Functional Systems in Haskell"

  •    Haskell

These are the course materials for the Stanford Computer Science class CS240h, Functional Systems in Haskell, which we are teaching for the first time during the Fall term of 2011.