FIT1043《Introduction to data science》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 简易,公开通过率 78%。 页面已整理 13 周教学安排,4 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 looks at processes and case studies to understand the many f。
Minimum total expected workload to achieve the learning outcomes for this unit is 144 hours per semester 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 teaching activities.
From Semester 2 2025 onwards: Detail the phases of the data science lifecycle and differentiate the roles involved in a data science project. Semester 1: Explain the role of data in different styles of business;
From Semester 2 2025 onwards: Utilise basic data analysis models to extract insights and critique their effectiveness. Semester 1: Identify tasks for data curation and management in an organisation;
Semester 2 2025 onwards: Examine data science projects by identifying and discussing inherent ethical, privacy, and data management issues, including their broader impacts. Semester 1: Classify the kinds of data analysis and statistical methods available for a data science project
From Semester 2 2025 onwards: Implement strategies for acquiring, cleaning, and organising data prior to analysis. Semester 1: Demonstrate the size and scope of data storage and data processing, and classify the basic technologies in use;
Semester 2 2025 onwards: Apply commonly used data science software and programming languages to interpret results across a diverse range of scenarios. Semester 1: Locate suitable resources, software and tools for a data science project.
From Semester 2 2025 onwards: Understand fundamental properties of Big Data and their influence on storage and processing and evaluate the strengths and weaknesses of Big Data tools for specific contexts. Semester 1: Classify participants in a data science project: such as statistician, archivist, analyst, and systems architect;
