Length: 2 Days
Print Friendly, PDF & Email

AI for Advanced Natural Language Processing (NLP) Fundamentals Training by Tonex

Certified GenAI and LLM Cybersecurity Professional (CGLCP) for Professionals

This comprehensive training course dives deep into advanced NLP techniques and their real-world applications. Explore cutting-edge technologies, including transformers, conversational AI, and multilingual text analytics. Gain insights into how NLP is transforming industries like legal, financial, and content creation. Delivered by Tonex, this program combines theory with practical applications, equipping participants with the skills to harness the power of NLP.

Learning Objectives:

  • Understand the core concepts of advanced NLP techniques.
  • Learn to design and implement conversational AI systems.
  • Explore the architecture and applications of transformers and LLMs.
  • Analyze and process multilingual text data for insights.
  • Discover use cases of NLP in legal, financial, and content industries.
  • Develop hands-on expertise with NLP tools and platforms.

Audience:

  • AI engineers and data scientists.
  • Software developers and IT professionals.
  • Linguists and content creators seeking to leverage AI.
  • Business leaders in legal, financial, and tech sectors.
  • Researchers and academicians interested in NLP advancements.
  • Professionals aiming to master NLP tools and applications.

Course Modules:

Module 1: Introduction to Advanced NLP

  • Fundamentals of Natural Language Understanding (NLU)
  • Overview of NLP Applications Across Industries
  • Basics of Machine Learning in NLP
  • Challenges and Ethical Considerations in NLP
  • Overview of Current NLP Technologies and Tools
  • Preparing Data for NLP Models

Module 2: Conversational AI and Chatbots

  • Designing Intelligent Chatbots
  • Components of Conversational AI Frameworks
  • Implementing Natural Language Generation (NLG)
  • Dialog Management Systems
  • Contextual Understanding in Chatbots
  • Case Studies in Conversational AI

Module 3: Transformers and Large Language Models

  • Architecture of Transformers
  • Pre-training and Fine-tuning in LLMs
  • Applications of BERT, GPT, and Similar Models
  • Training LLMs for Domain-Specific Use Cases
  • Optimization Techniques for Transformers
  • Ethical Use of Large Language Models

Module 4: Multilingual Text Analytics

  • Text Preprocessing for Multilingual Data
  • Language Detection and Translation Tools
  • Cross-Lingual Models and Their Applications
  • Sentiment Analysis in Multiple Languages
  • Challenges in Multilingual NLP Projects
  • Leveraging LLMs for Multilingual Analytics

Module 5: NLP Applications in Legal and Financial Sectors

  • Automating Legal Document Analysis with NLP
  • Contract Analytics and Risk Identification
  • Fraud Detection Using NLP in Finance
  • Regulatory Compliance Automation
  • Sentiment Analysis in Financial Markets
  • Case Studies of NLP in Legal and Financial Domains

Module 6: NLP in Content Creation and Management

  • Automated Content Generation Techniques
  • Text Summarization for Digital Media
  • SEO Optimization Using NLP Tools
  • Personalization in Content Delivery
  • Speech-to-Text and Text-to-Speech Applications
  • Case Studies in Content Creation with AI

Take your expertise in NLP to the next level. Enroll in Tonex’s AI for Advanced Natural Language Processing (NLP) training today and gain a competitive edge in leveraging AI for innovative solutions. Contact us to get started!

Request More Information

Please enter contact information followed by your questions, comments and/or request(s):
  • Please complete the following form and a Tonex Training Specialist will contact you as soon as is possible.

    * Indicates required fields

  • This field is for validation purposes and should be left unchanged.

Request More Information

  • Please complete the following form and a Tonex Training Specialist will contact you as soon as is possible.

    * Indicates required fields

  • This field is for validation purposes and should be left unchanged.