Business intelligence and data analytics: Generate insights

Business intelligence and data analytics: Generate insights

课程
en
英语
14 时
此内容评级为 5/5
来源
  • 来自www.coursera.org
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  • 6 序列
  • 等级 介绍

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课程详情

教学大纲

WEEK 1 - Basics of insight generation
Organisations and governments everywhere want to exploit data to predict behaviors and extract valuable real-world insights. Billions of devices and social media conversations are fueling the rate at which humanity is producing data. Therefore, we need more skills to understand data and make our systems, policies and governance models more efficient. In this week, we will highlight the potential of generating insights with the help of data in allowing individuals, businesses, and governments to make effective decisions.

WEEK 2 - Basic statistics: Foundations of quantitative insights
In week 2, we’ll focus on basic statistics. It’s one of the most important components of Data Analytics and it’s crucial to have a clear understanding of all the related concepts to be successful in the data industry. Statistics provide us with a set of tools that offer ways to convert quantitative data and qualitative data into information that we can use to generate insights.

WEEK 3 - The normal distribution and histograms
Businesses must constantly strive to offer “better” products and services than their competitors. One of the oldest and time-proven techniques by which we can visualise and think about quality in a methodological way is via normal distributions or bell curves. So in week 3, we’ll start by learning about histograms and the normal curve and then have a look at empirical rule which gives us a quick rough estimate about the spread of the given data. Finally, we’ll learn about the measures that quantify the interrelationships between two data variables. Correlation and covariance are two important measures that quantify the relationship between variables and we’ll study both.

WEEK 4 - Data visualisation
Visualisation is a key technique which can provide answers hidden in data. In this week, you will explore various data visualisations available and how to use them for analysis. These techniques will empower you to create compelling stories and dashboards from your data that the non-analyst community can also understand easily. As a person working in the data industry, you don’t just need to deal with data and solve data-driven problems but the incumbent also needs to convince company executives and government officials of the right decisions to make. These executives/officials may not be well versed in data science, so the incumbent must but be able to present and visualise the data’s story in a way they will understand. And this module will help you achieve that.

WEEK 5 - Advanced charts and dashboards
This week we learn how to create bar and bullet charts, and dashboards. Data visualization helps to tell stories by curating data into a form easier to understand. A good visualisation tells a story, by removing the noise from data and highlighting the useful information.

WEEK 6 - Demand forecasting
This week we’ll look at how, by using predictive modelling, we can generate actionable insights that when implemented will provide businesses with a predictable future outcome. Predictive modeling is a group of methods and algorithms that you can employ to forecast an outcome. Utilising basic predictive modelling techniques, we will also explore consumer demand forecasting.

先决条件

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讲师

David Pitt
Professor
Actuarial Studies and Business Analytics
 

Smit Rathore
Mr

编辑

Macquarie is a hub of inspired and unconstrained thinking. Macquarie was founded with a unique purpose: to bring minds together unhindered by tradition. Created to challenge the education establishment, Macquarie has a rich track record of innovation. Macquarie actively shapes the complex issues that define the future of humanity.

平台

Coursera是一家数字公司,提供由位于加利福尼亚州山景城的计算机教师Andrew Ng和达芙妮科勒斯坦福大学创建的大型开放式在线课程。

Coursera与顶尖大学和组织合作,在线提供一些课程,并提供许多科目的课程,包括:物理,工程,人文,医学,生物学,社会科学,数学,商业,计算机科学,数字营销,数据科学 和其他科目。

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