e-Learning

Learn at your own pace with anytime, anywhere training.

Classroom Schedule

Location Delivered By Language Date Action
No schedule date's available now.

Schedule

Location Delivered By Delivery Mode Language Date Action
0 GKT WBT English 4-Mar-2024 Contact For Pricing Contact For Pricing
0 GKT WBT English 11-Mar-2024 Contact For Pricing Contact For Pricing
0 GKT WBT English 18-Mar-2024 Contact For Pricing Contact For Pricing
0 GKT WBT English 25-Mar-2024 Contact For Pricing Contact For Pricing

Request Private Training

Tell us a little about yourself:

Course Description

 

This program equips you with the skills to understand and apply text and embeddings with vertex AI and dive into real-world case studies that showcase with practical knowledge.

Objectives

 

Elevate your tech and AI career with our cutting-edge Text Embedding: everything you need to know Boot Camp program. Discover the limitless potential of Text embedding. This program equips you with the skills  to  understand and apply text and embeddings with and dive into real-world case studies that showcase with practical knowledge.

 

Audience

 

Looking to take your career in AI and technology to new heights? Our Text Embedding: everything you need to know program is designed to empower professionals of all backgrounds, whether you're a seasoned AI researcher, software engineer, data scientist, or tech professional involved in natural language processing projects with basic Python knowledge who wants to learn about text embeddings and how to apply them to common NLP tasks

Prerequisites

 

Anyone can attend the course.

Content

 

Module 1: What is Artificial Intelligence

 

  • a.Brief history of AI
  • b.Importance and applications of AI  
  • c.Building blocks of AI
  • d.Type of AI  

 

AI in Real-world Applications

  • a.Healthcare applications
  • b.Finance and trading
  • c.Autonomous vehicles
  • d.Natural resource management

 

AI Tools and Technologies

  • a.AI programming languages (e.g., Python)
  • b.AI libraries and frameworks (e.g., TensorFlow, PyTorch)
  • c.AI development environments

 

Module 2: Introduction to Text Embeddings

 

  • a.Definition and Overview
  • b.What are text embeddings?
  • c.Importance in natural language processing (NLP).
  • d.History and Evolution
  • e.Early methods of text representation.
  • f.Transition to embeddings.

 

Module 3: Fundamental Concepts

 

  • a.Vector Space Models
  • b.Concept of word representation in vector space.
  • c.Dimensionality and Sparsity
  • d.Challenges of high-dimensional spaces.
  • e.Context and Meaning
  • f.How embeddings capture semantic meaning.

 

Module 4: Types of Text Embedding Techniques

 

  • a.Count-Based Methods
  • b.Bag of Words (BoW), TF-IDF.
  • c.Prediction-Based Methods
  • d.Word2Vec, GloVe.
  • e.Contextual Embeddings
  • f.ELMo, BERT, GPT.                                          

 

Module 5: Deep insights about Word2Vec and GloVe

 

  • a.Architecture: CBOW and Skip-gram.
  • b.Training process and optimization.
  • c.GloVe Theory and implementation.
  • d.Comparison of GloVe with Word2Vec.

 

Module 6: Contextual Embeddings and Transformers

 

  • a.Challenges in representing larger text units.
  • b.Bi-directionality and context-specific embeddings.
  • c.Transformers Architecture
  • d.Attention mechanism and its impact.

 

Module 7: Real World Applications and Case Studies

 

  • a.Real-World Applications
  • b.Examples in search engines, recommendation systems, sentiment analysis.
  • c.Case Studies
  • d.Specific cases where text embeddings significantly improved performance.

 

Module 8: Future Directions and Ethical Considerations

 

  • a.Advancements in Text Embeddings
  • b.Potential future developments.
  • c.Ethical and Bias Considerations
  • d.Addressing bias in embeddings and responsible AI.

 

Module 9: Various Advanced Embeddings Methods- Part 1

 

  • a.Word Embeddings
  • b.Contextual Embeddings
  • c.Sentence Embeddings
  • d.Document Embeddings:
  • e.Multilingual Embeddings                                                       

 

Module 10: Various Advanced Embeddings Methods- Part 2

 

  • a.Evaluation of Embeddings
  • b.Visual-Text Embeddings
  • c.Multimodal Embeddings
  • d.Cross-Domain Embeddings
  • e.Custom Embedding Models
  • Efficient Embedding Techniques

 

Top Job Roles of Text Embed Engineer

 

  • a.Conversational AI Developer
  • b.NLP Engineer
  • c.AI Solution Architect
  • d.AI Research Scientist
  • e.Text Embed Engineer