Kei Tachikawa's repositories

bluemoon-devops

Don't ask about name, github suggested it.

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EmacsRice

A simple rice, Mostly towards python, C/C++ and golang.

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color

Color package for Go (golang)

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pics

Posters, drawings...

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emacs-application-framework

Emacs application framework

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rangoli-emacs-simple

This is a personal fork of rangoli project that I am trying to maintain, Idk elisp but I think i will be alright.

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Linux-Quotes

Shitty linux quotes adapted from existing ones

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skin.omni

Skin for Kodi

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AI-Expert-Roadmap

Roadmap to becoming an Artificial Intelligence Expert in 2020

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AnimeXStream

An Android app to watch anime on your phone without ads.

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ComptonWithCapitalC

My custom hacky compton that works kinda :P

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CompressPDF

Fast in-browser PDF compressor

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crumbs

Turn asterisk-indented text lines into mind maps

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tint2-executors

Collection of executors for Tint2 panel

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puppetvagrant

This is a box config I use for puppetlearningvm, simple and cool.

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plugin.openings.moe

A simple kodi Addon for openings.moe streaming, since it is not a live stream url the addon currently fetches 15 random OP/EDs and allows user to play it.

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cgo

A terminal based gopher client

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battmon

Simple and Lightweight battery monitor in C++

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Coursera-Introduction-to-Big-Data-by-University-of-California-San-Diego

<h1>hare krishna</h1> Here’s an overview of our goals for you in the course. After completing this course you should be able to: - Describe the Big Data landscape including examples of real world big data problems including the three key sources of Big Data: people, organizations, and sensors. - Explain the V’s of Big Data (volume, velocity, variety, veracity, valence, and value) and why each impacts data collection, monitoring, storage, analysis and reporting. - Get value out of Big Data by using a 5-step process to structure your analysis. - Identify what are and what are not big data problems and be able to recast big data problems as data science questions. - Provide an explanation of the architectural components and programming models used for scalable big data analysis. - Summarize the features and value of core Hadoop stack components including the YARN resource and job management system, the HDFS file system and the MapReduce programming model. - Install and run a program using Hadoop! Throughout the course, we offer you various ways to engage and test your proficiency with these goals. Required quizzes seek to give you the opportunity to retrieve core definitions, terms, and key take-away points. We know from research that the first step in gaining proficiency with something involves repeated practice to solidify long-term memory. But, we also offer a number of optional discussion prompts where we encourage you to think about the concepts covered as they might impact your life or business. We encourage you to both contribute to these discussions and to read and respond to the posts of others. This opportunity to consider the application of new concepts to problems in your own life really helps deepen your understanding and ability to utilize the new knowledge you have learned. Finally, we know this is an introductory course, but we offer you one problem solving opportunity to give you practice in applying the Map Reduce process. Map Reduce is a core programming model for Big Data analysis and there’s no better way to make sure you really understand it than by trying it out for yourself! We hope that you will find this course both accessible, but also capable of helping you deepen your thinking about the core concepts of Big Data. Remember, this is just the start to our specialization -- but it’s also a great time to take a step back and think about why the challenges of Big Data now exist and how you might see them impacting your world -- or the world in the future!

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Notes

previous notes folder was eww :( SO a new one

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DOOM

DOOM Open Source Release

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wifi_for_4.15

A backup of repo for my personal use. DONOT Use it

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lua-htmlparser

An HTML parser for lua.

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awesome-learning-resources

🔥Awesome list of resources on Web Development.

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doko-desuka.github.io

Alternative way to install the repository, using a link.

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Devops

This is a repo that contains the git related work. I am relearning git.

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forestFire-detection

cupcarbon project

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ForestFireDetection

Cupcarbon project to detect forest fires

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R-project

This is a simple R program for the salary prediction using R. It is based on https://susanli2016.github.io/Census-Income/

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