Udemy - Modern NLP for AI Engineers and Data Scientists

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Udemy - Modern NLP for AI Engineers and Data Scientists (Size: 2.7 GB)
  Bonus Resources.txt 102.4 B
  Get Bonus Downloads Here.url 204.8 B
  ~Get Your Files Here !
  1 - NLP Foundations Revisited Engineer View
  1. 1 1 What Makes NLP Different from Other ML Domains.mp4 80.7 MB
  10 - NLP Pipelines System Design
  11 - Beyond LLMs Hybrid NLP Systems
  12 - Ethics, Bias Responsible NLP
  2 - Text Preprocessing Linguistic Pipelines
  3 - SECTION 3 Feature Engineering for Classical NLP
  10. 3 2 TF-IDF Statistical Weighting.mp4 82 MB
  11. 3 3 Feature Selection for Text.mp4 79.4 MB
  12. 3 4 Classical NLP Models.mp4 67.9 MB
  13. Hands on Lab Model Evaluation.html 11.6 KB
  4 - Word Representations Distributional Semantics
  14. 4 1 Distributional Hypothesis.mp4 69.8 MB
  15. 4 2 Static Word Embeddings.mp4 52 MB
  16. 4 3 Embedding Geometry.mp4 70.3 MB
  17. 4 4 Limitations of Static Embeddings.mp4 69.4 MB
  18. Hands on Lab Visualization Exercise.html 11.7 KB
  5 - Sequence Modeling for NLP
  19. 5 1 Sequence Learning Fundamentals.mp4 59.6 MB
  20. 5 2 Recurrent Neural Networks.mp4 62.9 MB
  21. 5 3 LSTM GRU for NLP.mp4 71.1 MB
  22. 5 4 Bidirectional Models.mp4 60.6 MB
  23. Hands on Lab.html 11.2 KB
  6 - Attention Transformer Fundamentals Pre-LLM
  24. 6 1 Attention Mechanism.mp4 64.9 MB
  25. 6 2 Transformer Architecture.mp4 75.3 MB
  26. 6 3 Why Transformers Replaced RNNs.mp4 66.2 MB
  27. 6 4 Transformer Use Without LLMs.mp4 66.3 MB
  28. Hands-On Lab Architecture Reasoning Exercise.html 14.2 KB
  7 - Contextual Embeddings Representation Learning
  29. 7 1 Contextual Embeddings.mp4 71.2 MB
  30. 7 2 Encoder-Only Models.mp4 52.5 MB
  31. 7 3 Sentence Document Embeddings.mp4 58.9 MB
  32. 7 4 Embedding Evaluation.mp4 74.6 MB
  33. Applied Embedding Lab Evaluation Task.html 13.3 KB
  8 - NLP Tasks in Practice
  34. 8 1 Text Classification.mp4 59.6 MB
  35. 8 2 Named Entity Recognition NER.mp4 63.8 MB
  36. 8 3 Text Similarity Semantic Search.mp4 62.8 MB
  37. 8 4 Topic Modeling.mp4 68 MB
  38. End-to-End Hands-On Mini Projects.html 12.6 KB
  9 - Information Retrieval Search Systems
  39. 9 1 Classical IR.mp4 64.7 MB
  40. 9 2 Vector Search Semantic Retrieval.mp4 49.4 MB
  41. 9 3 Hybrid Search Systems.mp4 54.8 MB
  42. System-Level Hands-On Lab.html 13.8 KB
  9. 3 1 Bag-of-Words N-grams.mp4 78.6 MB
  4. 2 1 Text Cleaning in Production.mp4 54 MB
  5. 2 2 Tokenization Strategies.mp4 64.7 MB
  6. 2 3 Stemming vs Lemmatization.mp4 59.5 MB
  7. 2 4 Sentence Segmentation Parsing Basics.mp4 65.3 MB
  8. Hands on Lab.html 14.5 KB
  51. 12 1 Bias in Text Data.mp4 56.6 MB
  52. 12 2 Fairness Explainability.mp4 59.2 MB
  53. 12 3 Privacy-Aware NLP.mp4 63.7 MB
  54. Scenario-Based Audit Policy Exercises.html 14.4 KB
  47. 11 1 When NOT to Use LLMs.mp4 44.9 MB
  48. 11 2 LLM Classical NLP.mp4 53.2 MB
  49. 11 3 Failure Modes in LLM-Centric NLP.mp4 52 MB
  50. Case-Study Design Decision Exercises.html 13.6 KB
  43. 10 1 End-to-End NLP Pipelines.mp4 52.2 MB
  44. 10 2 NLP in Microservices.mp4 42.9 MB
  45. 10 3 Evaluation Monitoring.mp4 55.5 MB
  46. System Design Architecture Exercises.html 13.4 KB
  2. 1 2 Text as Data.mp4 73.8 MB
  3. 1 3 NLP Problem Taxonomy.mp4 68.9 MB

Description


Modern NLP for AI Engineers & Data Scientists

https://WebToolTip.com

Published 1/2026
Created by Data Science Academy, School of AI
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Beginner | Genre: eLearning | Language: English | Duration: 54 Lectures ( 4h 49m ) | Size: 2.8 GB

Learn classical NLP, embeddings, transformers, and evaluation techniques beyond large language models

What you'll learn
✓ Design robust NLP pipelines from raw text to model input
✓ Apply text preprocessing, tokenization, parsing, and normalization correctly in production settings
✓ Build and evaluate classical NLP systems using Bag-of-Words, TF-IDF, and statistical features
✓ Understand and implement word embeddings, sentence embeddings, and document embeddings
✓ Use transformers for understanding tasks, not just text generation
✓ Choose the right encoder-only, sequence, or attention-based model for a given problem
✓ Evaluate embeddings using intrinsic and extrinsic metrics, while accounting for bias and representation risks
✓ Think like an AI Engineer, not just a model user

Requirements
● Basic Python programming
● Fundamental understanding of machine learning concepts
● Curiosity to understand how AI systems actually work
● No prior NLP experience is required—everything is built step by step

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