ITI5202《Data processing for big data》是 莫纳什大学 的公开课程页面。当前可确认的信息包括 6 学分,难度 难,公开通过率 68%。 页面已整理 13 周教学安排,3 个重点考核,方便你快速判断工作量、考核结构和适配度。 课程简介摘要:This unit focuses on big data processing, including volume, complexity。
Minimum total expected workload to achieve the learning outcomes for this unit is 144 hours per teaching period typically comprising a mixture of scheduled online and face to face learning activities and independent study. Independent study may include associated reading and preparation for scheduled activities. The unit requires on average three/four hours of scheduled activities per week. Scheduled activities may include a combination of teacher directed learning and online engagement.
apply common data analytics and machine learning algorithms in a big data environment;
write and interpret parallel database processing algorithms and methods;
use big data streaming technologies.
identify and explain big data concepts and technologies;
use and evaluate streaming methods in big data processing;
Assessment 1 consists of three quizzes (4%, 3% and 3%), 50 mins each. Quiz 1 covers Module 1&2, quiz 2 covers Module 3&4 and quiz 3 covers Module 5&6.
2:10 hrs closed-book quiz at the end of the term. The assessment will be a combination of multiple choice questions and essay questions, which covers all the six modules
Two-phases Big Data group project with milestones include proposal, final report, and presentation.
