HOME > Development > Coding Interview Companion for AI and Deep Learning_1

Coding Interview Companion for AI and Deep Learning_1

  • Development
  • May 13, 2025
SynopsisCoding Interview Companion for AI and Deep Learning, availabl...
Coding Interview Companion for AI and Deep Learning_1  No.1

Coding Interview Companion for AI and Deep Learning, available at $34.99, has an average rating of 3.5, with 66 lectures, based on 1 reviews, and has 21 subscribers.

You will learn about Coding interview for Deep Learning and Machine Learning This course is ideal for individuals who are Developers looking for job in Deep Learning and Machine Learning or University pass outs curious about Artificial Intelligence or Professionals willing to understand inner core of AI journey or Students who wants to explore and learn AI or Professors who would like to teach new ideas and core AI It is particularly useful for Developers looking for job in Deep Learning and Machine Learning or University pass outs curious about Artificial Intelligence or Professionals willing to understand inner core of AI journey or Students who wants to explore and learn AI or Professors who would like to teach new ideas and core AI.

Enroll now: Coding Interview Companion for AI and Deep Learning

Summary

Title: Coding Interview Companion for AI and Deep Learning

Price: $34.99

Average Rating: 3.5

Number of Lectures: 66

Number of Published Lectures: 51

Number of Curriculum Items: 66

Number of Published Curriculum Objects: 51

Original Price: $44.99

Quality Status: approved

Status: Live

What You Will Learn

  • Coding interview for Deep Learning and Machine Learning
  • Who Should Attend

  • Developers looking for job in Deep Learning and Machine Learning
  • University pass outs curious about Artificial Intelligence
  • Professionals willing to understand inner core of AI journey
  • Students who wants to explore and learn AI
  • Professors who would like to teach new ideas and core AI
  • Target Audiences

  • Developers looking for job in Deep Learning and Machine Learning
  • University pass outs curious about Artificial Intelligence
  • Professionals willing to understand inner core of AI journey
  • Students who wants to explore and learn AI
  • Professors who would like to teach new ideas and core AI
  • Artificial Intelligence, Deep Learning, Machine learning and Data Science are buzz words that you would hear quite often these days. These area provide good number of job opportunities and it very much essential that you understand the fundamentals concepts of these when facing an interview. This course aims to feed you with confidence to face a coding interview on Machine Learning and Deep Learning. We shall walk over 50+ interview questions with hands-on code and prepare you for the same. All of the code is written in Python and will focus to explain the concepts from scratch.

    >Do you know, About half a million job openings are available across the globe. Data Science and ML engineer are the job roles with most openings

    > Harvard Business Review has stated that “Data Science” as most attractive job of the 21st century.

    >last but not the least The Salary bar in this domain is also quite high than regular IT professionals.

    In-fact, The demand for these niche skills are 10 times more than the number of graduates passing out of the college. Given so much of background on need to adopt this skill, would you not take a shot at it ..?

    I would recommend that, Whichever is your career path just club it up with AI and then accelerate . So why wait? Lets get Started.

    Course Curriculum

    Chapter 1: Welcome

    Lecture 1: Introduction

    Lecture 2: Evolution of AI

    Lecture 3: Course Overview

    Lecture 4: Prerequisites

    Lecture 5: Tools for Coding

    Chapter 2: Setting the stage

    Lecture 1: Why AI ..?

    Lecture 2: Statistics – Code Walkthrough

    Lecture 3: Supervised Learning

    Lecture 4: Machine Learning Types – Question Drive

    Lecture 5: Supervised Algorithm (I) by Math – Proof of Concept

    Lecture 6: Proximity – Code Walkthrough

    Lecture 7: Supervised Algorithm (II) from Scratch – Code Walkthrough

    Lecture 8: Data Structures & Algorithms – Code Walkthrough

    Lecture 9: Data Structures & Algorithms : Driver – Code Walkthrough

    Chapter 3: Image Processing and Convolutional Neural Networks

    Lecture 1: Neural Networks – Visual Walkover

    Lecture 2: Computing Polar Angle – Code Walkthrough

    Lecture 3: Processing Orientation – Code Walkthrough

    Lecture 4: Find Boundary – Question Drive

    Lecture 5: Convex Hull Algorithm – Code Walkthrough

    Lecture 6: Pixels & Image Processing – Code Walkthrough

    Chapter 4: Natural Language Processing

    Lecture 1: Natural Language Processing – Question Drive

    Lecture 2: Natural Language Processing (II) – Question Drive

    Lecture 3: NLP Warmup Exercise (I) – Code Walkthrough

    Lecture 4: NLP Warmup Exercise (II) – Code Walkthrough

    Lecture 5: NLP Words Computations – Code Walkthrough

    Lecture 6: NLP Sentence Manipulations (I) – Code Walkthrough

    Lecture 7: NLP Sentence Manipulations (II)- Coding Hands-on

    Lecture 8: NLP Sentence Manipulations (III) – Code Walkthrough

    Lecture 9: NLP Sentence Manipulations (IV) – Code Walkthrough

    Lecture 10: NLP Regular Expressions (I) – Code Walkthrough

    Lecture 11: NLP Regular Expressions (II) – Code Walkthrough

    Lecture 12: NLP Regular Expressions (III) – Code Walkthrough

    Lecture 13: NLP Paragraph Manipulation (I) – Code Walkthrough

    Lecture 14: NLP Paragraph Manipulation (II) – Code Walkthrough

    Lecture 15: NLP Text Pre-processing (i) – Code Walkthrough

    Lecture 16: NLP Text Pre-processing (II) – Code Walkthrough

    Lecture 17: NLP Text Pre-processing (III) – Code Walkthrough

    Lecture 18: NLP Text Pre-processing (IV) – Code Walkthrough

    Lecture 19: NLP Text Pre-processing (V) – Code Walkthrough

    Lecture 20: NLP Text Pre-processing (VI) – Code Walkthrough

    Lecture 21: NLP Text Pre-processing (VII) – Code Walkthrough

    Lecture 22: NLP Text Pre-processing (VIII) – Code Walkthrough

    Lecture 23: NLP Text Pre-processing (IX) – Code Walkthrough

    Lecture 24: NLP Build Spell Checker – Code Walkthrough

    Lecture 25: NLP Text Manipulation Algorithm (I) – Code Walkthrough

    Lecture 26: NLP Genome Computations – Code Walkthrough

    Lecture 27: NLP Text Manipulation Algorithm (II) – Code Walkthrough

    Lecture 28: NLP Vectorization : Math – Question Drive

    Lecture 29: NLP Bag of Words – Code Walkthrough

    Lecture 30: NLP Stop Words Removal – Question Drive

    Chapter 5: Conclusion

    Lecture 1: Thank you & Next steps

    Instructors

  • Coding Interview Companion for AI and Deep Learning_1  No.2
    Vidya Ranganathan
    Architect| Author | Inventor
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 0 votes
  • 3 stars: 1 votes
  • 4 stars: 0 votes
  • 5 stars: 0 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!