Digital Innovation and Transformation
Advanced Artificial Intelligence and Big Data
Overview:
Introduction:
The Advanced Artificial Intelligence and Big Data training program delves into cutting-edge techniques in AI and big data analytics. Participants explore advanced topics like machine learning algorithms and big data processing frameworks. Through theory and hands-on exercises, individuals develop expertise to derive insights and innovate across domains.
Program Objectives:
At the end of this program the participants will be able to:
-
Develop a deeper understanding of what big data means to your organization.
-
Understand how to plan and analyze using logic to design Machine Learning-based applications.
-
Explain how to imitate human in clustering and classification for AI applications.
-
Identify the key products in the big data platforms and describe their functional role.
-
Describe the role of Hadoop and its use in the Big Data platform, along with the concepts of big data.
-
Walk away with more knowledge about the role of the platform and its components, including NoSQL Database, Hadoop Distributed File System, Data Mining, and Big Data Connectors.
Targeted Audience:
-
Database management system.
-
Data structures, Systems architects, and Marketing managers.
-
Chief Information Officer (CIO) / Chief Technology Officer (CTO).
-
Finance, budget planners, decision-makers, and policymakers.
-
Quality, safety, reliability, and security officers.
-
Application-based programming with Python.
-
Object-oriented programming using Java.
-
Project managers and executive managers.
-
Instrumentation, process, systems, electrical, and mechanical engineers.
-
Programming for problem-solving.
Program Outlines:
Unit 1:
An Overview of Artificial Intelligence:
-
Introduction to AI and Success Stories.
-
Human Intelligence vs Artificial Intelligence.
-
History of AI, Intelligent Agents and Their Roles.
-
Limits of Artificial Intelligence.
-
Intelligent Decision Making .
Unit 2:
Intelligent Agents:
-
Introduction to Agents.
-
Different Types of Agents.
-
Knowledge-base and Database.
-
Logic Reasoning.
-
Unification.
-
Deduction Processes.
Unit 3:
Machine Learning:
-
Supervised and Unsupervised Learning.
-
Classification and Clustering.
-
Artificial Neural Networks.
-
Learn by Examples.
-
Object Recognition.
-
Features and Classes.
Unit 4:
Fuzzy Logic:
-
Introduction to Fuzzy Thinking.
-
Fuzziness vs Probability.
-
Fuzzy set and Fuzzy Rules.
-
Importance of Fuzzy logic and A real example of Fuzzy Controllers.
-
Building a Tiny Machine Learning Application.
Unit 5:
Genetic Algorithm:
-
Overview of Genetic Algorithms.
-
The Need for Optimization, Maximization, and Minimization.
-
How GA Work and Evolve.
-
Genetic Algorithm Chromosomes, Genes, Selection, Mutation, and Crossover.
-
Dimension to Use Genetic Algorithm.
-
Real Genetic Algorithm Examples to Optimize Business Processes.
Unit 6:
Big Data at Work:
-
What is Big Data?
-
Business Challenges and Getting Fast Answers to New Questions.
-
Industry Examples.
-
Building Your Big Data Strategy.
Unit 7:
Building a Big Data System:
-
A General Look at Big Data Systems.
-
Big Data Solution.
-
NoSQL Database Hadoop.
-
Distributed File System.
-
In-Database Analytics Platform.
Unit 8:
Building a Big Data System Using NoSQL Database:
-
What is a Key-Value Store?
-
Why Would I Need a NoSQL Database?
-
Using NoSQL Database to Run a Website.
Unit 9:
Using Hadoop and Hive to Store and Transform Data:
-
What is Hadoop?
-
Interacting with HDFS.
-
MapReduce.
-
Using Hive to Transform Data.
Unit 10:
Integrating Hadoop Data into:
-
Big Data Connectors.
-
Data Integrator Working on Hadoop Data and Transforming Data in ODI.
-
Using Advanced Analytics to my Data.
-
Mining Database Data with R Enterprise and Mining Hadoop Data with R Connector for Hadoop Creating.
-
Real-Time Similarity Scores with Data Mining.