Cloud Computing Applications, Part 2: Big Data and Applications in the Cloud

Cloud Computing Applications, Part 2: Big Data and Applications in the Cloud

Curso
en
Inglês
Legendas disponíveis
12 h
Este conteúdo é classificado como 3.7407 de 5
Fonte
  • De www.coursera.org
CONDIÇÕES
  • Individualizado
  • Acesso livre
  • Certificado pago
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Detalhes do curso

Programa de Estudos

WEEK 1 : Course Orientation
You will become familiar with the course, your classmates, and our learning environment. The orientation will also help you obtain the technical skills required for the course. 
In Module 1, we introduce you to the world of Big Data applications. We start by introducing you to Apache Spark, a common framework used for many different tasks throughout the course. We then introduce some Big Data distro packages, the HDFS file system, and finally the idea of batch-based Big Data processing using the MapReduce programming paradigm. 

WEEK 2 : Large Scale Data Storage
In this module, you will learn about large scale data storage technologies and frameworks. We start by exploring the challenges of storing large data in distributed systems. We then discuss in-memory key/value storage systems, NoSQL distributed databases, and distributed publish/subscribe queues. 

WEEK 3 : Streaming Systems
This module introduces you to real-time streaming systems, also known as Fast Data. We talk about Apache Storm in length, Apache Spark Streaming, and Lambda and Kappa architectures. Finally, we contrast all these technologies as a streaming ecosystem.  

WEEK 4 : Graph Processing and Machine Learning
In this module, we discuss the applications of Big Data. In particular, we focus on two topics: graph processing, where massive graphs (such as the web graph) are processed for information, and machine learning, where massive amounts of data are used to train models such as clustering algorithms and frequent pattern mining. We also introduce you to deep learning, where large data sets are used to train neural networks with effective results.  

Prerequisites : This course is intended for practitioners. We introduce a wide range of Big Data technologies and frameworks that are very commonly used across computer industry. We assume you are familiar with some programming language (such as Python or Java), and are now interested to take your knowledge to the next step by leveraging "frameworks" that do much of the heavy lifting involved in distributed Big Data systems. Most of the code snippets introduced in the lectures can be read as pseudocode.

Pré-requisito

Nenhum.

Instrutores

Reza Farivar
Data Engineering Manager at Capital One, Adjunct Research Assistant Professor of Computer Science
Department of Computer Science

Roy H. Campbell
Professor of Computer Science
Department of Computer Science

Editor

A Universidade de Illinois em Urbana-Champaign foi fundada em 1867 (UIUC). O campus principal da Universidade de Illinois está situado nas cidades gémeas de Champaign e Urbana, duzentos quilómetros a sul de Chicago. 

Esta grande universidade está classificada entre as mais prestigiadas do mundo por várias medições, como a do Center for World University Rankings, que a coloca em 22º lugar a nível mundial para o período 2020-21.

Plataforma

A Coursera é uma empresa digital que oferece um curso on-line massivo e aberto, fundado pelos professores de computação Andrew Ng e Daphne Koller Stanford University, localizado em Mountain View, Califórnia.

O Coursera trabalha com as melhores universidades e organizações para disponibilizar alguns dos seus cursos on-line e oferece cursos em várias disciplinas, incluindo: física, engenharia, humanidades, medicina, biologia, ciências sociais, matemática, negócios, ciência da computação, marketing digital, ciência de dados. e outros assuntos.Cours

Este conteúdo é classificado como 3.7407 de 5
(nenhuma revisão)
Este conteúdo é classificado como 3.7407 de 5
(nenhuma revisão)
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