COURSE TITLE
COURSE LEVEL
COURSE CREDITS
STUDY METHOD
START DATE
COURSE DURATION
AWARDED BY
DELIVERED BY
Course Content
Exploratory Data Analysis
The introductory unit to advanced data analytics will teach students statistics fundamentals and profound knowledge of the programming languages Python & R. Industrial data analytics begins at exploratory data analysis. It is at this stage that you run data health checks and gain initial insights. In this module, you will learn to perform primary statistical analysis and visual data presentation by Python and R commands.
Statistical Inference
You will extensively study statistical data distribution, parametric and non-parametric tests, and hypothesis testing. The unit will equip students with the necessary skills to chalk out a research plan including, hypothesis formation, identifying applicable tests, writing codes in both languages for hypothesis testing, and eventually concluding. You will also gain an in-depth understanding of the statistical data distribution and hypothesis testing.
Fundamentals of Predictive Modelling
Students will learn about the modeling process in the context of real-life scenarios. So many challenges faced in business relate to the ability to forecast future developments, putting predictive modeling at the core of what it means to be a data scientist. For this reason, the unit will delve into several concepts in considerable detail.
Advanced Predictive Modelling
Students will learn about category-dependent variable modeling in this unit. Marketing, clinical research, and several other domains often run into binary dependent variables for predictive modeling. Therefore, this unit will help students gain in-depth awareness of binary, ordinal, and multinomial modeling.
Time Series Analysis
Students will learn about the time series predictive methodologies in this section. They will try their hands at time series regression, exponential smoothing, explore predictive modeling for macroeconomic parameters like inflation, and make attempts at intricate mathematical models.
Unsupervised Multivariate Methods
This unit will teach students various data manipulation techniques such as data reduction and segmentation, besides learning analysis of massive data sets using clustering techniques. Using these techniques with the appropriate care tends to yield meaningful, valuable business insights.
Machine Learning
Further Topics in Data Science
Contemporary Themes in Business
- Previous educational and professional credentials can contribute to module exemption. You can enquire below.
Similar Courses
MBA TOP UP ARU – Anglia Ruskin University
4- 9 months | Business Management