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Applied Text Generation Using Gpt And Kerasnlp In Python
https://www.udemy.com/course/text-generation/

Dive into Hands-on TensorFlow and Python Programming with KerasNLP in Google Colab for an Immersive, Practical Learning


Step into the exhilarating realm of text generation with deep learning! Get ready to embark on a captivating journey where you'll unravel the secrets of training models capable of crafting human-like text from simple prompts. Whether you dream of building intelligent chatbots, creating compelling content, or exploring the world of creative writing, this course is your gateway to mastering these cutting-edge domains.

No prior knowledge of deep learning or natural language processing is needed – we'll start from the basics and lead you through the fascinating process of training text generation models using powerful deep learning techniques.

Here's what makes this course shine:

1. Introduction to Text Generation: Immerse yourself in the world of text generation and its real-life applications. You'll discover the immense power and potential that text generation models bring to various industries.

2. Deep Learning Fundamentals: Build a rock-solid foundation in deep learning as we cover essential topics like neural networks, activation functions, loss functions, and optimization algorithms. Don't worry; we'll leverage user-friendly libraries like Keras to make the implementation process a breeze.

3. NLP and Transformers: Unleash the transformative capabilities of Natural Language Processing (NLP) and delve into the revolutionary world of Transformers. Learn how these groundbreaking models have reshaped NLP tasks, including the enchanting art of text generation.

4. Preprocessing and Tokenization: Master the crucial steps of text generation – preprocessing and tokenization. We'll guide you through preparing your text data for training, covering essential techniques like cleaning, tokenization, and vocabulary building.

5. Model Architecture: Get hands-on experience building a mini-Generative Pre-Trained (GPT) model using KerasNLP. Dive into the model's architecture, including embedding layers, Transformer decoders, and the final dense layer.

6. Training and Evaluation: Unravel the training process and learn how to evaluate your text generation model's performance. We'll delve into essential concepts like loss functions, metrics, and hyperparameter tuning to optimize your model's brilliance.

7. Text Generation Techniques: Explore an array of captivating text generation techniques – from the greedy search to beam search, random search to top-k search, and top-p search. Learn the art of choosing the perfect technique for each unique scenario.

8. Real-Life Applications: Discover the immense real-world impact of text generation in applications like chatbots, content generation, language translation, and beyond. Gain insights into practical use cases that redefine industries.

9. Job Opportunities: As you complete this thrilling journey, brace yourself for exciting job opportunities in the realm of Natural Language Processing and AI. Organizations are increasingly seeking professionals with text generation expertise, positioning you for roles as an NLP Engineer, AI Researcher, Data Scientist, or Software Developer.

By the course's end, you'll possess a comprehensive understanding of text generation with deep learning. You'll wield the power to create and train your own text generation models, applying various techniques for astonishing results in real-world applications. Join us on this enthralling learning journey and unlock doors to extraordinary opportunities in the rapidly evolving world of text generation!

Applied Text Generation Using Gpt And Kerasnlp In Python


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