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NLP in Python: Probability Models, Statistics, Text Analysis

Posted By: lucky_aut
NLP in Python: Probability Models, Statistics, Text Analysis

NLP in Python: Probability Models, Statistics, Text Analysis
Published 2/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.24 GB | Duration: 6h 24m

Master Language Models, Hidden Markov Models, Bayesian Methods & Sentiment Analysis for Real-World Applications

What you'll learn
Design and deploy a complete sentiment analysis pipeline for analyzing customer reviews, combining rule-based and machine learning approaches
Master text preprocessing techniques and feature extraction methods including TF-IDF, Word Embeddings, and implement custom text classification systems
Develop production-ready Named Entity Recognition systems using probabilistic approaches and integrate them with modern NLP libraries like spaCy
Create and train sophisticated language models using Bayesian methods, including Naive Bayes classifiers and Bayesian Networks for text analysis
Build a comprehensive e-commerce review analysis system that combines sentiment analysis, entity recognition, and topic modeling in a real-world application
Build and implement probability-based Natural Language Processing models from scratch using Python, including N-grams, Hidden Markov Models, and PCFGs

Requirements
Basic Python programming experience - familiarity with functions, loops, and data structures. No advanced Python knowledge required.
Understanding of basic probability and statistics concepts (mean, variance, distributions). High school level math is sufficient.
A computer with Python 3.7+ installed. All required libraries will be covered in the setup section of the course.
Basic understanding of data structures and algorithms. If you can work with lists and dictionaries in Python, you're ready.
No prior Natural Language Processing or Machine Learning experience needed - we'll build from the ground up.
Complete beginners welcome! Each concept is explained step-by-step with practical examples and guided projects. These requirements: Set realistic expectations Keep the barrier to entry low Specify exact technical needs Encourage beginners to join Highlight the course's supportive approach Would you like me to adjust any of these requirements to better match your target audience? CopyRetryClaude can make mistakes. Please double-check responses.

Description
Unlock the power of Natural Language Processing (NLP) with this comprehensive, hands-on course that focuses on probability-based approaches using Python. Whether you're a data scientist, software engineer, or ML enthusiast, this course will transform you from a beginner to a confident NLP practitioner through practical, real-world projects and exercises.Starting with fundamental text processing techniques, you'll progressively master advanced concepts like Hidden Markov Models, Probabilistic Context-Free Grammars, and Bayesian Methods. Unlike other courses that only scratch the surface, we dive deep into the probabilistic foundations that power modern NLP applications while keeping the content accessible and practical.What sets this course apart is its project-based approach. You'll build:A complete text preprocessing pipelineCustom language models using N-gramsPart-of-speech taggers with Hidden Markov ModelsSentiment analysis systems for e-commerce reviewsNamed Entity Recognition models using probabilistic approachesThrough carefully designed mini-projects in each section and a comprehensive capstone project, you'll gain hands-on experience with essential NLP libraries and frameworks. You'll learn to implement various probability models, from basic Naive Bayes classifiers to advanced topic modeling with Latent Dirichlet Allocation.By the end of this course, you'll have a robust portfolio of NLP projects and the confidence to tackle real-world text analysis challenges. You'll understand not just how to use popular NLP tools, but also the probabilistic principles behind them, giving you the foundation to adapt to new developments in this rapidly evolving field.Whether you're looking to enhance your career prospects in data science, improve your organization's text analysis capabilities, or simply understand the mathematics behind modern NLP systems, this course provides the perfect balance of theory and practical implementation

Who this course is for
Data Scientists and Analysts who want to add text processing and natural language analysis to their skillset, especially those working with customer feedback or document analysis
Software Developers looking to transition into Natural Language Processing, particularly those interested in building text analysis features into their applications
Machine Learning Engineers seeking to specialize in probability-based language models and text classification systems for production environments
Students and Academics in Computer Science, Linguistics, or Data Science who want hands-on experience with practical NLP implementations and real-world projects
Business Intelligence Professionals who need to extract meaningful insights from text data, such as customer reviews, social media posts, or business documents
Industry Professionals from any field who work with text data and want to automate text analysis tasks, even with limited prior programming experience