Course Hive
Search

Welcome

Sign in or create your account

Continue with Google
or
Dynamic Programming and Hashing Full Course 2023 | Data Structures | Coding Interview Problems
Play lesson

Data Structures and Algorithms (DSA): Stacks & Queues | Linked Lists | Sorting | Arrays - Dynamic Programming and Hashing Full Course 2023 | Data Structures | Coding Interview Problems

Master the Art of Data Structures & Algorithms: Crack Coding Interviews with Ease in 2023! Explore Comprehensive Tutorials & Interview Prep on Stacks, Queues, Graphs, and More. Get Ready to Ace FAANG with Expert Guidance from SCALER!

5.0 (2)
17 learners

What you'll learn

Develop proficiency in implementing commonly used data structures such as stacks, queues, and linked lists
Enhance problem-solving skills by applying algorithms to various coding challenges
Understand and optimize time complexity for efficient algorithm performance
Master dynamic programming and graph theory techniques for complex problem-solving

This course includes

  • 389 hours of video
  • Certificate of completion
  • Access on mobile and TV

Summary

Keywords

Full Transcript

In this comprehensive tutorial, we at Scaler will be explaining everything you need to know about Dynamic Programming and Hashing. Ace your next coding interviews with this exclusive data structures tutorial. Learn more about Scaler now: https://bit.ly/3BmoE3L What is Dynamic Programming? Dynamic Programming is an algorithmic technique for solving an optimisation problem by breaking it down into simpler subproblems and utilising the fact that the optimal solution to the overall problem depends upon the optimal solution to its subproblems. So that their results can be reused. Mostly, these algorithms are used for optimisation. Before solving the in-hand sub-problem, a dynamic algorithm will try to examine the results of the previously solved sub-problems. The advantage of dynamic programming is that it can obtain both local and total optimal solutions. Also, practical knowledge can be used to gain the higher efficiency of dynamic programming. However, there is no standard model for dynamic programming, multiple conditions may appear during the solving process. 🔹 What is Hashing algorithm? Hashing algorithm or Hashing as it is commonly called involves mapping a large amount of data item to a hash table using the hashtag function. The efficiency of mapping primarily depends on the hash function that is used. 🔹 Hash Function For hash table based search, choosing a good hash function h(k) is key. h should be able to distribute the elements uniformly across the slots of the hash table. ---------------------------------------- About Scaler -------------------------------------------------- We are a tech-focused upskilling and reskilling platform catering to tech enthusiasts in universities and working professionals. There are more Scaler graduates working at Amazon than all of the IITs combined! Learn more about Scaler: https://bit.ly/3BmoE3L 📌 Follow us on Social and be a part of an amazing tech community📌 👉 Meet like-minded coder folks on Discord - https://discord.com/invite/ejFeksEtTq 👉 Tweets you cannot afford to miss out on - https://twitter.com/scaler_official 👉 Check out student success stories, expert opinions, and live classes on Linkedin - https://www.linkedin.com/school/scalerofficial 👉 Explore value packed reels, carousels and get access to exclusive updates on Instagram - https://www.instagram.com/scaler_official/ 📢 Be a part of our one of a kind telegram community: https://t.me/Scalercommunity 🔔 Hit that bell icon to get notified of all our new videos 🔔 If you liked this video, please don't forget to like and comment. Never miss out on our exclusive videos to help boost your coding career! Subscribe to Scaler now! https://www.youtube.com/Scaler?sub_confirmation=1 #dynamicprogramming #hashing #datastructures

Course Hive

Continue this lesson in the app

Install CourseHive on Android or iOS to keep learning while you move.

Related Courses

FAQs

Course Hive
Download CourseHive
Keep learning anywhere