Natural Language Processing

This workshop covers NLP techniques, including text generation, sentiment analysis, and transformer models using Python.

introduction

Natural Language Processing

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For who?

We recommend this course if you:

This course is for:

  • Data Scientists and Machine Learning Engineers seeking to specialize in Natural Language Processing (NLP).
  • AI Practitioners who want to enhance their skills in text generation, sentiment analysis, and chatbots.
  • Software Developers interested in integrating NLP models like transformers and large language models into applications.
  • Researchers exploring deep learning models for NLP and the latest advancements in language processing.
  • Students pursuing careers in AI or data science, looking to understand and implement NLP techniques.
  • Tech Enthusiasts wanting to explore how NLP powers AI applications like virtual assistants and language translation.

Participants will learn hands-on techniques for data preparation, vectorization, and using advanced NLP models.

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features

Advantages and features of the course:

Workshop Overview

This workshop provides an introduction to Natural Language Processing (NLP), which is the technology that enables machines to understand, interpret, and generate human language. NLP is used in various AI applications such as virtual assistants, chatbots, sentiment analysis, language translation, and text summarization. Participants will learn fundamental NLP techniques, explore deep learning models for text processing, and gain hands-on experience using industry-standard libraries and frameworks like spaCy, Hugging Face, and Transformers. This workshop is designed for data scientists, machine learning engineers, AI practitioners, and software developers specializing in NLP. While attendees should have a basic understanding of Python and machine learning, no prior NLP experience is required.

Learning Outcomes

  • Understand the data preparation process.
  • Learn how to vectorize data.
  • Explore the evolution of NLP models.
  • Create word embedding and text generation models.
  • Conduct sentiment analysis and topic classification.
  • Gain knowledge of probabilistic Markov Models.
  • Understand multinomial and Gaussian generative models.
  • Learn the process of translating and summarizing text.
  • Understand the Transformer architecture behind ChatGPT.
  • Using interactive LLM models.

Duration 5 days

Day 1:

- Text Preparation.

- Word Vectorization: BoW - TF – IDF.

Day 2:

- Word2Vec and Glove  

Day 3:

- Topic modeling, and text generating with RNN and LSTM.

Day 4:

- Multi Head Attention and Transformers.

Day 5:

- LLMs and Chatbots

What will it be about?

- Tokenizing sentences and Stop Word

- Stemming and Lemmatizing words

- Parts of Speech / Name Entity   Recognition

- Bag of Words and TF-IDF

- Word - Term matrix

- Multinomial Naive Bayes model

- Latent Dirichlet Allocation (LDA) model

- word2vec: CBOW and SKIPGRAM methods

- Lama and other Large Language Models

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