Skip to main contentEngineering Courses, Mentoring & Jobs | EveryEng
Optimization Theory and Algorithms banner
Preview this course

Optimization Theory and Algorithms

9 min of video

10 open jobs require Engineering & Design right now IN 10view jobs →

1 enrolled

Optimization Theory and Algorithms banner
Preview this course
Self-paced Advanced

Optimization Theory and Algorithms

3(9)
1 enrolled
84 views
FREE
549 min
Anytime
English
Engineering Academy
Engineering AcademyLearn Without Limits: Free Engineering Courses
  • Lifetime access
  • Certificate of completion
  • Anytime Learning
  • Learn from Industry Expert
Volume pricing for groups of 5+

Why enroll

Participants join this course to learn how real engineering problems are solved in the best possible way, using systematic methods instead of trial and error. It builds a strong foundation in optimization concepts and modern algorithms that are widely used in areas like control systems, power systems, AI, machine learning, and robotics. The course also improves analytical thinking and programming skills, helping learners apply theory confidently in exams, projects, and real-world engineering work.

Is this course for you?

You should take this if

  • You work in Automotive
  • You're a Electrical professional
  • You have 3+ years of hands-on experience in this field
  • You want to build skills in Engineering & Design, Project Management

You should skip if

  • You're new to this field with no prior experience
  • You need a different specialisation outside Electrical
  • You need live interaction with an instructor

Course details

This course helps students understand optimization, which means finding the best possible solution to an engineering problem from many available options. In real life, engineers often need to minimize cost, time, energy, or error, or maximize performance, efficiency, or reliability. This course explains how such problems are solved in a systematic and mathematical way.

The course starts with the basics of optimization, including:

  • Unconstrained optimization, where solutions are found without any restrictions.

  • Constrained optimization, where solutions must satisfy certain limits or conditions (such as physical, safety, or design constraints).

Students will learn why these problems arise in engineering and how to mathematically model them so they can be solved using optimization techniques.The main focus of the course is on modern and practical optimization algorithms that are widely used today in engineering, data science, control systems, machine learning, and operations research. The course explains not just how these algorithms work, but also why they work, so students can clearly understand their logic.To support this, the course provides strong theoretical foundations in an easy-to-understand manner. This helps students connect the math with real-world applications instead of memorizing formulas.

In addition, the course includes illustrative programming assignments, where students implement optimization algorithms using code. These hands-on exercises help students:

  • Visualize how optimization methods converge to a solution

  • Gain confidence in applying theory to practical problems

  • Develop problem-solving and programming skills that are useful in real engineering work

By the end of the course, students will be able to formulate optimization problems, choose suitable algorithms, and implement solutions efficiently.

Source: NPTEL NOC IITM [Youtube Channel]

Course suitable for

Key topics covered

  • Optimization Theory and Algorithms – Introduction

  • Introduction to the course – 1 – Prerequisites, key elements

  • Introduction to the course – 2 – Types of problem

  • Introduction to the course – 3 – An optimization example to live longer

  • Summary of background material – Linear Algebra I

  • Summary of background material – Linear Algebra II

  • Summary of background material – Analysis I

  • Summary of background material – Analysis II

  • Summary of background material – Analysis III

  • Summary of background material – Calculus I

  • Summary of background material – Calculus II

  • Summary of background material – Calculus III

  • Example of Multivariate Differentiation

  • Gradient of Quadratic Form and Product Rule

  • Directional Derivative, Hessian, and Mean Value Theorem

  • Unconstrained Optimization – 1 – Roadmap of the course and Taylor’s Theorem

  • Unconstrained Optimization – 2 – Identifying a Local Minima – 1st and 2nd Order Conditions

  • Unconstrained Optimization – 3 – Proof of 1st Order Condition

  • Unconstrained Optimization – 4 – Overview of Algorithms and Choosing a Descent Direction

  • Unconstrained Optimization – 5 – Properties of Descent Directions: Steepest Descent Direction

  • Unconstrained Optimization – 6 – Properties of Descent Directions: Newton Direction

  • Unconstrained Optimization – 7 – Trust Region Methods

  • A MATLAB Session

  • Introduction to Line Search

  • Wolfe Conditions

  • Strong Wolfe Conditions

  • Backtracking Line Search

  • Line Search – Analysis

  • Line Search – Convergence and Rate – 1

  • Line Search – Convergence and Rate – 2

Course content

The course is readily available, allowing learners to start and complete it at their own pace.

30 lectures9 hr 9 min

Opportunities that await you!

Skills & tools you'll gain

Engineering & DesignProject ManagementResearch & Developmnet

Career opportunities

Where this fits — what comes before, what comes next

Our Alumni Work At

Aristi Projects wood/Bharath Engineering CollegeExpertise MaryMount California UniversityKBR/IRTTGenser Energy Ghana LtdAeroDef Nexus LLPInventor Engineering solutionsC&M Engineering SAEx-Tata Steel , Precision Engineering Division , West Bengal universityAssystem StupEEProCAD tech solutonsATKINSREALISMangalam college of EngineeringSearching for jobGulf Engineering & Consultant Gazprom International LimitedNaAir ProductsJohn R Harris & PartnersSPES Consultancy Tecnimont Spa Abu DhabiNIT SilcharJabalpur Engineering College Wex Technologies Pvt.LtdGARGI MEMORIAL INSTITUTE OF TECHNOLOGYADCETSlimane DridiabdWhatispiping.comHoly Angel UniversityCYIENTSelf EmployedEnergoprojektifluids engineeringairswiftIITBSusoptLIVANCE DISTRIBUTORSDESIGN AID ENGINEERINGURC Construction pvt.ltdCONSERVE SOLUTIONSGismic LLCIIT GuwahatiAditya engineering college Advanced Piping SolutionsIndorama Automotive MNCSPIE Oil and GasCollegiate collegemeChittagong University Of Engineering And technology XYZENGGENIOUS - (SAN Techno Mentors Private Limited)CAE Solutions Pvt.LtdBTPJamia Millia Islamia New delhiJOHN DEEREApplied Technology Solutions

Why people choose EveryEng

Industry-aligned courses, expert training, hands-on learning, recognized certifications, and job opportunities-all in a flexible and supportive environment.

What learners say about this course

Boora Mahesh
Boora Mahesh civil engineer
Mar 14, 2026

drtudfjygfygughihj

Hemanth TK
Hemanth TK
Feb 27, 2026

Fhjfkgc

Bhavani S
Bhavani S Student
Feb 22, 2026

Nice

Jayalaxmi Sudi
Jayalaxmi Sudi
Feb 15, 2026

Good

FREE

Access anytime

Questions and Answers

Empty state icon

No questions yet - Be the first one to ask!