11-21-2024, 11:26 AM
Master Vehicle Route Planning Problems In Python
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.71 GB | Duration: 8h 43m
Learn to Solve TSP and CVRP problems with 2-opt, 3-opt, Large Neighbourhood Search, Tabu Search and Simulated Annealing.
[b]What you'll learn[/b]
Understand VRP Theory: Learn the theory behind TSP and CVRP and how these problems are tackled in optimization.
Implement Algorithms from Scratch: Code k-opt, Large Neighbourhood Search, Tabu Search, and Simulated Annealing algorithms using basic Python libraries.
Hands-On Practice: Apply algorithms to standard TSP and CVRP problem instances with practical coding exercises.
Visualize Solutions Dynamically: Create animations and visualizations to understand and present solutions step-by-step.
Follow Numerical Examples: Step-by-step numerical examples guide you through the theory and implementation of each algorithm.
Compare Algorithm Performance: Evaluate and compare the results of different optimization algorithms to infer their efficiency and applicability.
Customize and Expand Algorithms: Learn how to adapt and expand these algorithms for other VRP variants and real-world scenarios.
Explore Heuristic Improvements: Implement different algorithm structures and ideas to improve the efficiency of heuristics and metaheuristics.
[b]Requirements[/b]
Basic Python Knowledge (Preferred): Familiarity with Python syntax and basic programming concepts is recommended.
No Prior Experience with VRP Needed: All algorithms and concepts will be explained from scratch, so no prior knowledge of vehicle routing is required.
[b]Description[/b]
Unlock the power of optimization by mastering Vehicle Routing Problems (VRP) with Python! In this course, you will learn to solve the Traveling Salesman Problem (TSP) and Capacitated Vehicle Routing Problem (CVRP) using a range of powerful algorithms-k-opt, Large Neighborhood Search, Tabu Search, and Simulated Annealing.Designed for researchers, data scientists, and professionals in logistics and scheduling, this course provides both the theoretical foundations and hands-on coding exercises. You will implement each algorithm from scratch using basic Python libraries, enabling a deep understanding of the concepts without relying on external packages.We'll walk through real-world problem instances, offering step-by-step explanations of both theory and code. You'll also create dynamic visualizations of algorithmic solutions, helping you visualize how these algorithms work in practice. Beyond coding and theory, this course emphasizes practical application. You'll learn how to compare algorithm performance, draw meaningful conclusions, and understand when to apply each method based on the problem's unique requirements. With guided numerical examples and problem-solving strategies, you'll gain the confidence to tackle various VRP variants and optimize real-world logistics challenges. Whether you're working in research or industry, this course will provide you with a strong foundation to innovate and improve routing solutions efficiently.Whether you're looking to enhance your skills in optimization, develop solutions for industry challenges, or expand your knowledge of heuristic and metaheuristic algorithms, this course equips you with all the tools you need to excel.By the end, you'll not only understand how to solve VRPs but also how to customize and expand these algorithms for more complex, real-world problems. Join us and take your optimization skills to the next level!
Overview
Section 1: Introduction
Lecture 1 TSP vd VRP
Lecture 2 VRP variants and Shortest Path Problems
Lecture 3 TSP and VRP data for the course: Know the data
Lecture 4 Take the first look at the data
Lecture 5 Function for Reading all the Data
Lecture 6 Visualize TSP Data
Lecture 7 Visualize CVRP Data
Section 2: K-opt Algorithms for TSP and CVRP
Lecture 8 Heuristics vs Metaheuristics
Lecture 9 2-opt Algorithms Theory
Lecture 10 3-opt Algorithm Theory
Lecture 11 Initialize a Random Tour for TSP
Lecture 12 2-opt for TSP: Part 1
Lecture 13 2-opt for TSP: Part 2
Lecture 14 2-opt Results for TSP
Lecture 15 Visualize 2-opt Results for TSP
Lecture 16 Tricks for 3-opt Algorithms for TSP: Part1
Lecture 17 Tricks for 3 Opt Algorithms for TSP: Part 2
Lecture 18 Design 3-opt Function
Lecture 19 3-opt Results for TSP
Lecture 20 2-opt Roadmap for CVRP
Lecture 21 Initial Solution Design for CVRPs
Lecture 22 2-opt Algorithm Design for CVRP
Lecture 23 2-opt Results Function Design for CVRP
Lecture 24 2-opt Results for CVRP
Lecture 25 3-opt Algorithm for CVRP and Results
Section 3: Large Neighbourhood Search for TSP and CVRP
Lecture 26 Large Neighbourhood Search Theory
Lecture 27 Nearest Neighbour Greedy Search Initialization for TSP
Lecture 28 Destroy and Repair Function Design
Lecture 29 Large Neighbourhood Search Function Design
Lecture 30 LNS Results for TSP
Lecture 31 Destroy Function for CVRP
Lecture 32 Repair Function for CVRP
Lecture 33 LNS Function for CVRP
Lecture 34 Animation of CVRP Results for LNS
Section 4: Tabu Search Algorithms
Lecture 35 Tabu Search Theory
Lecture 36 Swap Algorithm Design
Lecture 37 Tabu Search Function Design for TSP
Lecture 38 TSP Results for Tabu Search
Lecture 39 Initialization of Local Search Swap Algorithm for CVRP
Lecture 40 Tabu Search Function for CVRP
Lecture 41 CVRP Results for Tabu Search
Section 5: Simulated Annealing for TSP and CVRP
Lecture 42 Simulated Annealing Theory
Lecture 43 SA Function Design
Lecture 44 TSP Results for SA
Lecture 45 CVRP Results for SA
Section 6: Resources
Lecture 46 Books
Lecture 47 Papers
Lecture 48 Courses
Researchers in Optimization Problems: Ideal for those working on or studying optimization algorithms and techniques.,Data Scientists: Especially those focusing on solving complex logistics, routing, and scheduling problems.,Planners and Schedulers: Professionals in companies managing delivery routes, production schedules, or other resource allocation tasks.,Students and Enthusiasts: Anyone interested in learning how to solve Vehicle Routing Problems (VRP) using Python from scratch.,Developers Seeking Heuristic Insights: Programmers looking to improve their skills in heuristics and metaheuristics for optimization.