Error detection and correction

Error-correcting codes with feedback

In mathematics, computer science, telecommunication, information theory, and searching theory, error-correcting codes with feedback refers to error correcting codes designed to work in the presence of feedback from the receiver to the sender. (Wikipedia).

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Learning Python Error Handling with TRY

More videos like this online at http://www.theurbanpenguin.com The final part of the project is to add error handling into the python script. We will look at possible errors opening the text file and provide appropriate feedback to guide the users. Error handling in Python is handled with

From playlist Python

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Hamming Code For Error Detection And Correction | Hamming Code Error Correction | Simplilearn

In this video on "Hamming Code for Error Detection," we will look into the introductory knowledge related to the network technique of hamming code. This network will allow us to detect and correct errors on the receiver side. Explained in the stepwise format for proper clarification. Topi

From playlist Networking

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What Are Error Intervals? GCSE Maths Revision

What are error Intervals and how do we find them - that's the mission in this episode of GCSE Maths minis! Error Intervals appear on both foundation and higher tier GCSE maths and IGCSE maths exam papers, so this is excellent revision for everyone! DOWNLOAD THE QUESTIONS HERE: https://d

From playlist Error Intervals & Bounds GCSE Maths Revision

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Truncation with Error Intervals | Number | Grade 5 Crossover Playlist | GCSE Maths Tutor

A video revising the techniques and strategies for writing error intervals with truncation (Higher and Foundation). Error Intervals With Roynding - https://youtu.be/xcOJxkxqNbU This video is part of the Number module in GCSE maths, see my other videos below to continue with the series.

From playlist GCSE Maths Videos

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Hamming Code - Errors

How to detect and correct an error using the Hamming Code. Hamming codes are a type of linear code, see link for intro to linear code: https://www.youtube.com/watch?v=oYONDEX2sh8 Questions? Feel free to post them in the comments and I'll do my best to answer!

From playlist Cryptography and Coding Theory

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Why we can't take "dt" to 0 in a computer: Sources of error in numerical differentiation

We have seen that the error of numerical differentiation typically scales with the time step dt. So why can't we just reduce the time step arbitrarily small to control the error? This video describes how numbers are stored in a computer and how small roundoff errors are amplified by very

From playlist Engineering Math: Differential Equations and Dynamical Systems

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How to pick a machine learning model 3: Choosing a loss function

Part of the End-to-End Machine Learning School course library at http://e2eml.school See these concepts used in an End to End Machine Learning project: https://end-to-end-machine-learning.teachable.com/p/polynomial-regression-optimization/ Watch the rest of the How to Choose a Model serie

From playlist E2EML 171. How to Choose Model

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The Optimal Error Resilience of Interactive Communication over the Binary Alphabet - Rachel Zhang

Computer Science/Discrete Mathematics Seminar I Topic: The Optimal Error Resilience of Interactive Communication over the Binary Alphabet Speaker: Rachel Zhang Affiliation: Massachusetts Institute of Technology Date: October 17, 2022 In interactive coding, Alice and Bob wish to compute s

From playlist Mathematics

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PROG2006: Haskell and Go - Applicative Validation vs. Imperative code

PROG2006 Advance programming: Basics of Error handling Review and peer-review A bit about error handling in general Haskell vs Go: Applicative Validation vs. Imperative code Code: https://github.com/gtl-hig/prog2006

From playlist PROG2006 - Programming

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Creating a self-correcting Desmos Card Sort

How might you gamify the #Desmos Card Sort activity? Use the Computation Layer!

From playlist Desmos tips and tricks

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MATLAB Grader Overview

Create autograded MATLAB® assignments using MATLAB Grader. Build MATLAB coding problems and store them in collections. Host courses for students on MATLAB Grader, or include MATLAB based assignments in your Learning Management System based course. Additional Resources: - MATLAB Grader: ht

From playlist Teaching with MATLAB and Simulink

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Apache Custom Error Messages

More videos like this online at http://www.theurbanpenguin.com Create your own custom page not found pages on the apache httpd web server. Using a simple httpd.conf for clarity we show how easy it is to use the ErrorDocument directive to display custom error messages to your users

From playlist Learning Apache HTTP Server

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Facebook's BIG Software Failure

The Facebook crash was a big software failure, and headline news, but what caused it? On Monday Facebook, Instagram and WhatsApp all went down. The Facebook outage affected people all around the world. This was widely reported as a configuration mistake, and it was, but it was also a more

From playlist Case Studies

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Stop writing Rust

A lightning talk explaining my observations of how in other languages it's easy to START projects, but in rust, it's easy to FINISH them. If you would like to support what I do, I have set up a patreon here: https://www.patreon.com/noboilerplate Thank you! Start your Rust journey here: h

From playlist Rust Talks

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RubyConf 2019 - Sorbet: A type checker for Ruby 3... by Jake Zimmerman & Dmitry Petrashko

RubyConf 2019 - Sorbet: A type checker for Ruby 3 you can use today! by Jake Zimmerman & Dmitry Petrashko In June we open-sourced Sorbet, a fast, powerful type checker designed for Ruby. In the 6 months since, tons of things have improved! We’ve built quality editor tools like jump-to-def

From playlist RubyConf 2019

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RubyConf 2021 - How GitHub uses linters by Joel Hawksley

The GitHub code base is growing at over 25% every year through contributions from over 1000 engineers, clocking in at 1.7+ million lines of Ruby. In this talk, we'll share how we use linters to keep our codebase healthy by ensuring best practices are applied consistently, feedback loops ar

From playlist RubyConf 2021

Related pages

Elwyn Berlekamp | Coding theory | Mathematics | Search algorithm | Alfréd Rényi | Claude Shannon | Adaptive algorithm | Information theory