Follow us:
Courses / Postgraduate Diplomas / Level 7 Diploma in Data Science
Postgraduate Diplomas

Level 7 Diploma in Data Science

Last Updated

June 24, 2025

0 /0

About Course

At A Glance

Course Title Study Method Awarded By
Level 7 Diploma in Data Science Distance Learning
Course Type Start Date
Postgraduate Diploma Please make an enquiry
Course Credits Course Duration
120 Credits 12 months

Course Description

With the emergence of cloud computing, big data and artificial intelligence, data science has become a key fourth generation profession. The convergence of these technologies has given rise to new and powerful approaches to developing business insights and decision making based on the analysis of vast amounts of data using advanced statistical techniques and complex machine learning algorithms.

Developed at a postgraduate level, Digita’s diploma programme enables you to gain skills in maths, statistics and programming to organise, analyse and visualise data to uncover hidden solutions that challenge traditional business assumptions and produce entirely new operating and strategic models. Once you graduate, you’ll be in a position to take advantage of the rapidly growing opportunities in a wide range of data science and advanced analytics roles throughout all kinds of organization.

Progression

Upon completing this qualification, you will be able to progress directly into:

Qualifi Level 5

Master’s degrees in Data Science and Big Data Analytics.

Distance Learning

Course Content

Exploratory Data Analysis

Most industry analysis starts with exploratory data analysis and a thorough study of this will help you to perform data health checks and provide initial business insights. You will gain a sound understanding of R and Python programming, as well as the fundamentals of statistics. This includes writing R and Python commands for data management, basic statistical analysis, performing descriptive statistics and presenting data using appropriate graphs and diagrams. This unit serves as a foundation for advanced analytics.

Statistical Inference

In this unit you will gain an in-depth understanding of statistical distribution and hypothesis testing. This includes Binomial, Poisson, Normal, Log Normal, Exponential, t, F and Chi Square distributions, as well as parametric and non-parametric tests used in research problems. The unit will help you to formulate research hypotheses, select appropriate tests for them, write R and Python programs to perform hypothesis testing and draw inferences using the outputs generated.

Fundamentals of Predictive Modelling

A good understanding of predictive modelling is an essential part of being an effective data scientist as many business problems are related to successfully predicting future outcomes. This unit provides a strong foundation for predictive modelling and covers the entire modelling process in the context of real life case studies. Many concepts in predictive modelling methods are commonly used in business and therefore these concepts will be discussed in detail.

Advanced Predictive Modelling

In this unit you will learn model development for categorical dependent variables. Binary dependent variables are encountered in many domains such as risk management, marketing and clinical research and detailed model building processes for binary dependent variables are covered. In addition, multinomial models and ordinal scaled variables will also be discussed.

Time Series Analysis

In this unit, time series forecasting methods are introduced and explored. You will analyse and forecast macroeconomic variables such as GDP and inflation, as well as look at complex financial models using ARCH and GARCH, ARIMA, time series regression, exponential smoothing and other models.

Unsupervised Multivariate Methods

Data reduction is a key process in business analytics projects and you will learn to apply data reduction methods such as principal component analysis, factor analysis and multi- dimensional scaling. They will also learn to segment and analyse large data sets using clustering methods, another key analytical technique that brings out rich business insight if carried out skillfully.

Machine Learning

Machine learning algorithms are new generation algorithms and used in conjunction with classical predictive modelling methods. In this unit learners will understand applications of various machine learning techniques including the Naïve Bayes Method, Support Vector Machine Algorithm, Decision Tree, Random Forest, Association Rules and Neural Networks.

Further Topics in Data Science

In this unit, learners are introduced to further key knowledge areas associated with data science. This includes analysis of unstructured data using Text Mining, handling data with SQL and building interactive web apps straight from R using the Shiny package. Learners also explore the Hadoop framework and further concepts in Big Data Analytics and Artificial Intelligence.

Contemporary Themes in Business

This is a business focussed unit that introduces you to key business concepts at a postgraduate level to complement your data science skills and knowledge. It covers topics including leadership skills, entrepreneurship, innovation, ethics and sustainability, globalisation and organisational culture, encourging you to evaluate data science within wider contexts.

Study Method

The Qualifi Level 7 Diploma in Data Science is studied 100% online through Digita. You will be provided access to study materials, dedicated one-on-one tutoring and assignment feedback through qualified tutors.

On successful completion of your studies your certificate and transcript will be processed within 10 working days. Moreover, you will gain advanced entry into Master’s degrees in Data Science and Big Data Analytics.

Course Fee

Please get in touch with us to get the most up-to-date course fee for this programme.

Entry Requirements

Your existing educational qualifications and work experience will be directly taken into account, allowing for module exemptions whenever possible. Please make an enquiry below.

Apply Now

Apply now to embark on your academic journey and unlock endless opportunities! Join our vibrant community of scholars and leaders, and pursue your passion with an internationally recognised British qualification.

Click Apply Now button and share your information so that one of our Academic Advisors will get in touch with you promptly.

Your Instructors

T
tahirbashirkayani@gmail.com
5.00 Rating 63 Courses 0 Students
Free
Free access this course
This course includes:
Skill Level Intermediate
Certificate Yes
Share Course
Page Link
Share On Social Media
Empowering students with flexible learning, expert guidance, and real-world qualifications from school to professional success.
Edexa Academy
Registered Address: 79 Iris House, 2 Cedrus Avenue, Southall, England, UB1 1GA
CRN: 15822463, UKPRN: 10098438, VAT: 470813494.

Get in touch!

The Winning Box 27-37 Station Rd, Hayes UB3 4DX, United Kingdom.
Copyright © 2025 Edexa Academy | Developed By Protigma Technologies. All Rights Reserved