Duration
3 Days
18 CPD hours
This course is intended for
This in an intermediate and beyond-level course is geared for experienced Python developers looking to delve into the exciting field of Natural Language Processing. It is ideally suited for roles such as data analysts, data scientists, machine learning engineers, or anyone working with text data and seeking to extract valuable insights from it. If you're in a role where you're tasked with analyzing customer sentiment, building chatbots, or dealing with large volumes of text data, this course will provide you with practical, hands on skills that you can apply right away.
Overview
This course combines engaging instructor-led presentations and useful demonstrations with valuable hands-on labs and engaging group activities. Throughout the course you'll:
Master the fundamentals of Natural Language Processing (NLP) and understand how it can help in making sense of text data for valuable insights.
Develop the ability to transform raw text into a structured format that machines can understand and analyze.
Discover how to collect data from the web and navigate through semi-structured data, opening up a wealth of data sources for your projects.
Learn how to implement sentiment analysis and topic modeling to extract meaning from text data and identify trends.
Gain proficiency in applying machine learning and deep learning techniques to text data for tasks such as classification and prediction.
Learn to analyze text sentiment, train emotion detectors, and interpret the results, providing a way to gauge public opinion or understand customer feedback.
The Hands-on Natural Language Processing (NLP) Boot Camp is an immersive, three-day course that serves as your guide to building machines that can read and interpret human language. NLP is a unique interdisciplinary field, blending computational linguistics with artificial intelligence to help machines understand, interpret, and generate human language. In an increasingly data-driven world, NLP skills provide a competitive edge, enabling the development of sophisticated projects such as voice assistants, text analyzers, chatbots, and so much more. Our comprehensive curriculum covers a broad spectrum of NLP topics. Beginning with an introduction to NLP and feature extraction, the course moves to the hands-on development of text classifiers, exploration of web scraping and APIs, before delving into topic modeling, vector representations, text manipulation, and sentiment analysis. Half of your time is dedicated to hands-on labs, where you'll experience the practical application of your knowledge, from creating pipelines and text classifiers to web scraping and analyzing sentiment. These labs serve as a microcosm of real-world scenarios, equipping you with the skills to efficiently process and analyze text data. Time permitting, you?ll also explore modern tools like Python libraries, the OpenAI GPT-3 API, and TensorFlow, using them in a series of engaging exercises. By the end of the course, you'll have a well-rounded understanding of NLP, and will leave equipped with the practical skills and insights that you can immediately put to use, helping your organization gain valuable insights from text data, streamline business processes, and improve user interactions with automated text-based systems. You?ll be able to process and analyze text data effectively, implement advanced text representations, apply machine learning algorithms for text data, and build simple chatbots.
Launch into the Universe of Natural Language Processing
The journey begins: Unravel the layers of NLP
Navigating through the history of NLP
Merging paths: Text Analytics and NLP
Decoding language: Word Sense Disambiguation and Sentence Boundary Detection
First steps towards an NLP Project
Unleashing the Power of Feature Extraction
Dive into the vast ocean of Data Types
Purification process: Cleaning Text Data
Excavating knowledge: Extracting features from Texts
Drawing connections: Finding Text Similarity through Feature Extraction
Engineer Your Text Classifier
The new era of Machine Learning and Supervised Learning
Architecting a Text Classifier
Constructing efficient workflows: Building Pipelines for NLP Projects
Ensuring continuity: Saving and Loading Models
Master the Art of Web Scraping and API Usage
Stepping into the digital world: Introduction to Web Scraping and APIs
The great heist: Collecting Data by Scraping Web Pages
Navigating through the maze of Semi-Structured Data
Unearth Hidden Themes with Topic Modeling
Embark on the path of Topic Discovery
Decoding algorithms: Understanding Topic-Modeling Algorithms
Dialing the right numbers: Key Input Parameters for LSA Topic Modeling
Tackling complexity with Hierarchical Dirichlet Process (HDP)
Delving Deep into Vector Representations
The Geometry of Language: Introduction to Vectors in NLP
Text Manipulation: Generation and Summarization
Playing the creator: Generating Text with Markov Chains
Distilling knowledge: Understanding Text Summarization and Key Input Parameters for TextRank
Peering into the future: Recent Developments in Text Generation and Summarization
Solving real-world problems: Addressing Challenges in Extractive Summarization
Riding the Wave of Sentiment Analysis
Unveiling emotions: Introduction to Sentiment Analysis Tools
Demystifying the Textblob library
Preparing the canvas: Understanding Data for Sentiment Analysis
Training your own emotion detectors: Building Sentiment Models
Optional: Capstone Project
Apply the skills learned throughout the course.
Define the problem and gather the data.
Conduct exploratory data analysis for text data.
Carry out preprocessing and feature extraction.
Select and train a model. ? Evaluate the model and interpret the results.
Bonus Chapter: Generative AI and NLP
Introduction to Generative AI and its role in NLP.
Overview of Generative Pretrained Transformer (GPT) models.
Using GPT models for text generation and completion.
Applying GPT models for improving autocomplete features.
Use cases of GPT in question answering systems and chatbots.
Bonus Chapter: Advanced Applications of NLP with GPT
Fine-tuning GPT models for specific NLP tasks.
Using GPT for sentiment analysis and text classification.
Role of GPT in Named Entity Recognition (NER).
Application of GPT in developing advanced chatbots.
Ethics and limitations of GPT and generative AI technologies.