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Deep Learning and NLP: Seq2Seq Model Theory + ChatGPT Prizes

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  • 33,479 Students
  • Updated 3/2025
4.1
(4,911 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
8 Hour(s) 26 Minute(s)
Language
English
Taught by
Hadelin de Ponteves, Kirill Eremenko, SuperDataScience Team, Ligency ​
Rating
4.1
(4,911 Ratings)
7 views

Course Overview

Deep Learning and NLP: Seq2Seq Model Theory + ChatGPT Prizes

Learn the Theory of Deep Natural Language Processing with the Seq2Seq model and enjoy several ChatGPT Prizes at the end!

Learn the theory of Seq2Seq in only 2 hours! A straight to the point course for those of you who don't have a lot of time.

Embark on an academic adventure with our specialized online course, meticulously designed to illuminate the theoretical aspects of Seq2Seq (Sequence to Sequence) models within the realms of Deep Learning and Natural Language Processing (NLP).

What This Course Offers:

  • Exclusive Focus on Seq2Seq Model Theories: Our course curriculum is devoted to exploring the intricacies and theoretical foundations of Seq2Seq models. Delve into the principles and mechanics that make these models a cornerstone in NLP and Deep Learning.

  • In-Depth Conceptual Insights: We take you through a comprehensive journey, dissecting the core concepts, architectures, and training of Seq2Seq models. Our focus is on fostering a deep understanding of these complex theories.

  • Theory-Centric Approach: Emphasizing theoretical knowledge, this course intentionally steers away from practical coding exercises. Instead, we concentrate on building a robust conceptual framework around Seq2Seq models.

  • Ideal for Theoretical Enthusiasts: This course is perfectly suited for students, educators, researchers, and anyone with a keen interest in the theoretical aspects of Deep Learning and NLP, specifically in the context of Seq2Seq models.

Join us to master the theoretical nuances of Seq2Seq models in Deep Learning and NLP. Enroll now for an enlightening journey into the heart of these transformative technologies!

And last but not least you will get a great series of Prizes providing extra case studies in Artificial Intelligence made by ChatGPT.

Can't wait to see you inside the class,

Kirill & Hadelin

Course Content

  • 8 section(s)
  • 62 lecture(s)
  • Section 1 Welcome to the course!
  • Section 2 Deep NLP Intuition
  • Section 3 ---------- PART 0 - BUILDING A CHATBOT WITH SEQ2SEQ ----------
  • Section 4 ---------- PART 1 - DATA PREPROCESSING ----------
  • Section 5 ---------- PART 2 - BUILDING THE SEQ2SEQ MODEL ----------
  • Section 6 ---------- PART 3 - TRAINING THE SEQ2SEQ MODEL ----------
  • Section 7 ---------- PART 4 - TESTING THE SEQ2SEQ MODEL ----------
  • Section 8 Congratulations!! Don't forget your Prize :)

What You’ll Learn

  • Why this is important
  • Types of Natural Language Processing
  • Classical vs. Deep Learning Models
  • End to End Deep Learning Models
  • Seq2Seq Architecture & Training
  • Beam Search Decoding

Reviews

  • R
    Revathi Purushothaman
    5.0

    good

  • M
    Manish Wakade
    3.5

    It was really good.

  • M
    Mohammed Iqram
    1.5

    The course is Outdated but gained few basic knowlege

  • V
    Vitaly Shlimak
    4.0

    Great content, as usual. Unfortunately, code used is outdated- e.g. version of TensorFlow used is below 2.x which is discontinued now and, therefore, some libraries, attributes and functions can't be used. I found it with tf.contrib.layers.embed_sequence(), tf.placeholder_with_default(), tf.InteractiveSession() Would be great if code is updated according to the current versions of the tools. Otherwise, great stuff! Thank you!

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