×
MindLuster Logo
Join Our Telegram Channel Now to Get Any New Free Courses : Click Here

Theory of computation fundamentals for beginners

Track :

Computer Science

Lessons no : 119

For Free Certificate After Complete The Course

To Register in Course you have to watch at least 30 Second of any lesson

Join The Course Go To Community

How to Get The Certificate

  • You must have an account Register
  • Watch All Lessons
  • Watch at least 50% of Lesson Duration
  • you can follow your course progress From Your Profile
  • You can Register With Any Course For Free
  • The Certificate is free !
Lessons | 119
Show More Lessons


We Appreciate Your Feedback

Be the First One Review This Course

Excellent
0 Reviews
Good
0 Reviews
medium
0 Reviews
Acceptable
0 Reviews
Not Good
0 Reviews
0
0 Reviews


Our New Certified Courses Will Reach You in Our Telegram Channel
Join Our Telegram Channels to Get Best Free Courses

Join Now

Related Courses

Theory of computation fundamentals course, in this course we will learn about the Theory of Computation fundamentals, exploring the mathematical and conceptual foundations that underpin computer science. We will begin with computational models such as Turing Machines, Finite Automata, and Pushdown Automata, which help us understand what can be computed and how. We will delve into formal languages, examining Regular Languages, Context-Free Languages, Context-Sensitive Languages, and Recursively Enumerable Languages, and their respective grammars and automata. The course will cover Computational Complexity Theory, focusing on classifying problems based on their difficulty and resources required, exploring complexity classes like P, NP, and NP-Complete, and understanding lower bounds. Decidability will also be a key topic, distinguishing between decidable and undecidable problems. We will learn about reductions and completeness, transforming problems to prove their complexity and understanding NP-Completeness. By the end of this course, students will grasp the essential principles of computation, enabling them to analyze and design efficient algorithms and computational systems. This knowledge is crucial for anyone looking to deepen their understanding of the theoretical aspects of computer science and its practical applications.