Natural Language Processing - using Python and AI
Multiple dates

Natural Language Processing - using Python and AI

By PCWorkshops

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

Location

Regus at Golden Cross House

Duncannon Street London WC2N 4JF United Kingdom

Agenda

11:00 AM - 11:05 AM

Start, Intro's

11:05 AM - 1:00 PM

Session 1

1:00 PM - 1:30 PM

Lunch break

1:30 PM - 3:00 PM

Session 2

3:00 PM - 3:15 PM

Short tea break

3:15 PM - 4:00 PM

Session 3

4:00 PM - 4:05 PM

End

Good to know

Highlights

  • In person

Refund Policy

No refunds

About this event

Science & Tech • Medicine

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

Frequently asked questions

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PCWorkshops

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From £27.80
Multiple dates