Natural Language Processing - using Python and AI

Natural Language Processing - using Python and AI

Overview

Learn NLP (Natural Language Processing) from Basic to Advanced in Python.

Duration: 1 Day


What You'll Learn

  1. Hands-On Learning: 80% practical experience and 20% theory to prepare you for independent NLP projects.
  2. Comprehensive Coverage: Basic, Intermediate, and Advanced NLP concepts.
  3. Tools and Libraries: NLTK, regex, Stanford NLP, TextBlob, and data cleaning techniques.
  4. Entity Resolution: Techniques for identifying and merging different representations of the same entity.
  5. Feature Extraction: Converting text into features for analysis.
  6. Word Embedding: Understanding and implementing word embedding techniques.
  7. Word2Vec and GloVe: Mastering these popular word embedding models.
  8. Word Sense Disambiguation: Techniques to determine the meaning of words in context.
  9. Speech Recognition: Basics of converting speech to text.
  10. String Similarity: Methods for comparing the similarity between two strings.
  11. Language Translation: Techniques for automatic translation between languages.
  12. Computational Linguistics: Applying computational techniques to linguistic problems.
  13. Classification Techniques: Using Random Forest, Naive Bayes, and XGBoost for text classification.
  14. Deep Learning Classifications: Implementing classifications with TensorFlow (tf.keras).
  15. Sentiment Analysis: Determining the sentiment of text data.
  16. Clustering: K-means clustering techniques for text data.
  17. Topic Modeling: Identifying topics within a corpus of text.
  18. Model Evaluation: Understanding Bias vs. Variance to evaluate model performance

Learn NLP (Natural Language Processing) from Basic to Advanced in Python.

Duration: 1 Day


What You'll Learn

  1. Hands-On Learning: 80% practical experience and 20% theory to prepare you for independent NLP projects.
  2. Comprehensive Coverage: Basic, Intermediate, and Advanced NLP concepts.
  3. Tools and Libraries: NLTK, regex, Stanford NLP, TextBlob, and data cleaning techniques.
  4. Entity Resolution: Techniques for identifying and merging different representations of the same entity.
  5. Feature Extraction: Converting text into features for analysis.
  6. Word Embedding: Understanding and implementing word embedding techniques.
  7. Word2Vec and GloVe: Mastering these popular word embedding models.
  8. Word Sense Disambiguation: Techniques to determine the meaning of words in context.
  9. Speech Recognition: Basics of converting speech to text.
  10. String Similarity: Methods for comparing the similarity between two strings.
  11. Language Translation: Techniques for automatic translation between languages.
  12. Computational Linguistics: Applying computational techniques to linguistic problems.
  13. Classification Techniques: Using Random Forest, Naive Bayes, and XGBoost for text classification.
  14. Deep Learning Classifications: Implementing classifications with TensorFlow (tf.keras).
  15. Sentiment Analysis: Determining the sentiment of text data.
  16. Clustering: K-means clustering techniques for text data.
  17. Topic Modeling: Identifying topics within a corpus of text.
  18. Model Evaluation: Understanding Bias vs. Variance to evaluate model performance

Included:

  • PCWorkshops's Certification
  • Course notes, exercises and code examples

Good to know

Highlights

  • 5 hours
  • In-person

Refund Policy

No refunds

Location

Regus at Golden Cross House

Duncannon Street

London WC2N 4JF

How would you like to get there?

Map

Agenda

-

Start, Intro's

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Session 1

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Lunch break

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