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Emmersive Learning
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Learn Fullstack Development | Coding.

Youtube : https://www.youtube.com/@EmmersiveLearning/?sub_confirmation=1

Contact Admin : @MehammedTeshome
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Learn Coding at @EmmersiveLearning

YouTube : https://www.youtube.com/@EmmersiveLearning/

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coding tip: talk to other programmers

Share Ideas.
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Hello,

Night Owls....

any one here ?
Hello, fellow coders and developers!

May your week be filled with productive coding sessions and bug-free deployments 😊

@EmmersiveLearning
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Which one do you use 🤔
This is The Conversation that make Elon buy twitter 😊

Never Underestimate the power of talking with your commenters.😊

it may open another fortune.
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Forwarded from Muhammed Teshome
Do you need this books ?

You will love it.

Here is their PDF version. 👇

https://news.1rj.ru/str/MuhaTeshome
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Here are the known algorithm design techniques :

1. Divide and Conquer:
- Break a problem into smaller subproblems.
- Solve them independently.
- Combine the solutions.

2. Greedy:
- Make locally optimal choices.
- Aim for a global optimum.

3. Dynamic Programming:
- Break complex problems into simpler subproblems.
- Store solutions for efficiency.

4. Backtracking:
- Enumerate all possible candidates.
- Check if they satisfy the problem's statement.

These strategies are fundamental in computer science for solving complex problems efficiently.

@EmmersiveLearning
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which habit do you have ?
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what ?
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Different types of algorithms :

1. Brute Force Algorithm:
- Tries all possible solutions.
- Simple but can be inefficient.

2. Recursive Algorithm:
- Breaks problems into smaller subproblems.
- Often used in divide-and-conquer approaches.

3. Dynamic Programming Algorithm:
- Optimizes solutions by reusing results.
- Common for optimization problems.

4. Divide And Conquer Algorithm:
- Divides problems, solves, and combines results.
- Efficient for sorting and searching.

5. Greedy Algorithm:
- Makes locally optimal choices.
- Used in minimum spanning trees, Huffman coding.

6. Backtracking Algorithm:
- Explores all options systematically.
- Useful for problems with constraints.

7. Randomized Algorithm:
- Introduces randomness for efficiency.
- Examples: Monte Carlo simulations, randomized quicksort.

@EmmersiveLearning
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