Course Description

A Diploma in Predictive Data Analytics

CCT College Dublin



With the large quantity of data being collected from web sites or the catalogue of previous orders made by clients, data mining provides unique insights into the data which may have previously not been seen. Although possible to draw conclusions from small samples of data, the larger the collection becomes and the more variables that are introduced the process of deducing a simple insight becomes an impossible task. Data mining provides the ability to work with any data set size and draw new unseen perspectives on the data.

This course is designed to provide the learner with the skills needed to collect data from any data source and extract useful insights which have previous been unseen, providing a unique view on the problems faced during the business decision making process.

In this programme, the learner will become familiar with a suite of different leading tools available to gather information from different sources and apply commonly used algorithms to deduce answers to common business questions from data. Data mining aids the decision-making process by informing the key stake holders by relying on the most reliable source, the data available. This approach helps the decision-making process by making informed decisions before key changes or alterations are made to any business process.

This course is aimed at learners with no previous experience with data mining or data analysis and wish to begin the process of understanding how data is aggregated, cleaned and utilised for data mining processes. This is achieved using a wide collection of proprietary and open source data mining tools explored during the course.

Programme Aims and Objectives

This module aims to introduce the learner to the area of data mining and analytics by providing real world examples of business questions that can be encountered during day to day life, and how they can be solved using freely available data mining software packages.

On completion of this course, the learner will have acquired the skills to:

  • Assess the needs of a customer and how they can be met with one or more developed data mining solutions
  • Assess and aggregate available data sources to utilise during a data mining process
  • Utilise industry standard methodologies for data mining, ensuring a robust process is created
  • Develop a data mining process to identify anomalies, clean and extract quality data to run the identified algorithms on
  • Run leading data mining software packages on available data to identify patterns and predict outcomes
  • Document and visualise the findings to inform the business decision making processes

Programme Content

The programme is delivered through tutor led classes, concentrating on labs and hands on skills providing the learner first-hand experience with each of the approaches and technologies described during the classes. Topics Covered during the programme include:

Introduction

  • Integrating Data Sources into your Data Mining Process
  • How Data Mining can be Applied to Business Scenarios
  • Business Problem Identification

Data Sources and Aggregation

  • Data Pre-processing & Quality Assessment
  • Noise Filtering and Data Cleansing
  • Feature Selection
  • Data Types and Variations
  • Data Exploration
  • Outlier Detection

Methodology and Process Creation

  • Introduction to Data Mining Life Cycle
  • Data Mining Methodologies (CRISP-DM)
  • Process Modelling

Algorithms and Implementations

  • Machine Learning – Supervised and Unsupervised
  • Decision Trees
  • Cluster Analysis
  • Sentiment Analysis
  • Association Rule Mining

Text Analysis

  • Term Weighting
  • POS Tagging
  • N-Gram Creation
  • Text Mining

Data Visualisation

  • Visualisation Libraries and Plugins
  • Link Based Data Visualisation
  • Quantitative Data Visualisation
  • Qualitative Data Visualisation

Validation

  • Result Verification
  • Cross Validation

Business Intelligence

  • Enterprise Reporting
  • Data Sources
  • Key Performance Indicators
  • Automated Reporting Approaches and Implementations

Assessment

Continuous Assessment will be utilised to assess student progression on this programme ensuring a high level of proficiency is achieved. All assessments for this programme are directly mapped to each of the practical tasks which will be explored during lectures and lab time.

Career Progression Opportunities and Further Study Options

This programme provides a strong foundation in Data Mining and Data Analytics. It is envisioned that graduates will be able to fulfil a wide range of entry-level roles within data mining industries, and/or engage in further study in a wide range of areas within Computing and Information Technology and specifically Programming, at Irish NQF Levels 6, 7 and Level 8, to further develop their careers.

 


Course Code PTL-604
College Name CCT College Dublin
Course Category Business, Data Analytics
Course Type Classroom Based
Course Qualification Diploma
Course Location Dublin, UK
Location Postcode Dublin 2
Course Start Date 20th September 2021
Course Fee €995 (Special reduced fee during Covid-19, normally €1195)
Course Duration 11 weeks, with intakes offered in Spring and Autumn
Course Times 6.30-9.30, one evening per week
Career Path This programme provides a strong foundation in Data Mining and Data Analytics. It is envisioned that graduates will be able to fulfil a wide range of entry-level roles within data mining industries, and/or engage in further study.
For information about CCT College Dublin, please visit our college page on www.nightcourses.co.uk by clicking here.

Course Provider

CCT College Dublin



+ 353 1 6333446
30-34 Westmoreland Street, Dublin, Ireland

Make Enquiry

Please insert your contact details and any additional information you require and we will forward your request to CCT College Dublin.
Captcha code        I confirm I have read the Privacy Policy, Terms and Conditions & Cookie Information and agree to join the Nightcourses.com community.
 

Map

CCT College Dublin
30-34 Westmoreland Street
Dublin
Dublin
Visit Website