100% OFF Applied Large-Scale Convex Optimization: A Complete Course Coupon Code
100% OFF Applied Large-Scale Convex Optimization: A Complete Course Coupon Code
  • Promoted by: Anonymous
  • Platform: Udemy
  • Category: Data Science
  • Language: English
  • Instructor: Learning Grid , Andrew Misseldine
  • Duration: 18 hour(s)
  • Student(s): 617
  • Rate 0 Of 5 From 0 Votes
  • Expires on: 2025/11/15
  • Price: 14.99 0

Understand convex sets, functions, and optimization algorithms with hands-on examples and expert instruction.

Unlock your potential with a Free coupon code for the "Applied Large-Scale Convex Optimization: A Complete Course" course by Learning Grid , Andrew Misseldine on Udemy. This course, boasting a 0.0-star rating from 0 reviews and with 617 enrolled students, provides comprehensive training in Data Science.
Spanning approximately 18 hour(s) , this course is delivered in English and we updated the information on November 12, 2025.

To get your free access, find the coupon code at the end of this article. Happy learning!

Convex optimization is a cornerstone of modern applied mathematics, underpinning a wide range of technologies from machine learning and artificial intelligence to signal processing, control systems, and operations research. This course offers a deep and structured exploration of large-scale convex optimization, tailored for learners who seek both theoretical rigor and practical insight.

Through 55 carefully crafted video lectures, this course guides you from the foundational concepts of convex sets and functions to advanced algorithmic techniques for solving high-dimensional optimization problems. It is designed to be accessible to motivated learners while maintaining the depth expected in graduate-level education. This course:

  1. Offers a structured deep dive into large-scale convex optimization, balancing theory and algorithmic practice.

  2. Introduces core concepts: convex sets, convex functions, and their properties—essential for high-dimensional optimization.

  3. Begins with real-world applications: shortest-path problems, signal/image processing, and support vector machines.

  4. Covers mathematical foundations: inner-product spaces, convex geometry, convexity-preserving operations, differentiability, lower semicontinuity, and closedness.

  5. Focuses on algorithmic techniques: Subgradient method: convergence, boundedness, and implementation; and Forward-backward splitting and accelerated variants for composite problems.

  6. Explores duality theory: Primal-dual relationships; Perturbation and infimal value functions; Fenchel and Lagrange duality frameworks.

  7. Equips learners to analyze, solve, and implement convex optimization methods in practical and research contexts.

By the end of this course, you will:

  • Understand the theoretical underpinnings of convex optimization

  • Be able to formulate and solve large-scale convex problems

  • Implement key algorithms for optimization in practical settings

  • Apply convex optimization to real-world problems in engineering and data science

  • Be prepared for advanced studies or research in optimization and applied mathematics

Why This Course Stands Out

  • University-Level Instruction: Based on a graduate course taught at a leading European engineering faculty, ensuring academic depth and clarity.

  • Balanced Approach: Combines intuitive explanations with formal mathematical rigor, making it suitable for both practitioners and researchers.

  • Algorithmic Focus: Emphasizes practical methods for solving optimization problems, with step-by-step walkthroughs of algorithms and their convergence properties.

  • Real-World Relevance: Demonstrates how convex optimization is used in cutting-edge fields like machine learning, data science, and engineering.