Showing results by author "Anand V" in All Categories
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Large language models (LLMs) and generative AI in healthcare.
- By: Anand V
- Original Recording
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Explaining the fundamentals of LLMs, generative AI, and healthcare data before exploring numerous real-world applications including personalized treatment recommendations, predictive diagnostics, and virtual health assistants. It then delves into the practical aspects of implementing these technologies, covering topics like data management, model training, ethical considerations, and case studies. Finally, it explores future trends in AI-powered healthcare and provides hands-on tutorials and exercises for readers to gain practical experience.
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Generative AI in the Telecommunications Industry.
- By: Anand V
- Original Recording
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Explores the potential of generative AI to revolutionize telecom operations, improve customer service, and optimize network performance. It covers a wide range of use cases, including network optimization, customer service enhancement, fraud detection, content generation, and network planning. Additionally, it discusses the ethical considerations and implementation strategies for successfully adopting generative AI in the telecom sector.
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Large Language Models Essentials: Techniques, Tools, and Applications
- By: Anand V
- Original Recording
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Comprehensive guide to large language models (LLMs), artificial intelligence systems designed to understand and manipulate human language. It covers the history and evolution of LLMs, including key concepts like the Transformer architecture and attention mechanisms. The document then explores popular LLM models, such as GPT-3 and BERT, along with their use cases and applications in various industries, including business, finance, marketing, entertainment, and healthcare. The text further details the training process for LLMs, including data collection, preprocessing, and optimization technique
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LLM Basics: A Step-by-Step Guide to Large Language Models
- By: Anand V
- Original Recording
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Comprehensive guide to Large Language Models (LLMs). The document provides a detailed overview of LLMs, including their history, architecture, key examples, training methods, and applications. The guide also explores ethical considerations, practical implementation strategies, and the potential future of LLMs in various domains. The text covers topics such as fine-tuning for specific tasks, integrating LLMs into applications using APIs, and building real-world projects utilizing LLMs.
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Quick Start Guide to LLMs: Hands-On with Large Language Models
- By: Anand V
- Original Recording
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Overview of how to understand, train, and deploy large language models (LLMs), powerful AI systems capable of processing and generating human-like text. The guide begins by defining LLMs and their key concepts, then covers setting up an environment, collecting and preparing training data, selecting appropriate LLM architectures, and training the model itself. Further chapters explore how to fine-tune pre-trained LLMs for specific tasks, deploy these models for real-world applications, and evaluate their performance using various metrics
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Building Large Language Models for Production: Enterprise Generative AI
- By: Anand V
- Original Recording
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provides a comprehensive guide to understanding, building, and deploying large language models (LLMs) in enterprise settings. It covers fundamental concepts in natural language processing (NLP), common LLM architectures like BERT, GPT, and T5, data collection and preparation techniques, model training, and fine-tuning methods. The text further explores crucial production aspects, including infrastructure optimization, security, compliance, and continuous monitoring.
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Building LLM Powered Applications: Practical Strategies for Integrating Enterprise Generative AI
- By: Anand V
- Original Recording
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How to use large language models (LLMs) for enterprise applications. The text covers the basics of LLM technology, setting up an LLM environment, building LLM-powered applications, and integrating LLMs with existing systems. The book also discusses ethical and responsible AI with LLMs, evaluating LLM performance, and case studies of successful LLM implementations in diverse fields like healthcare, finance, and retail. Finally, the excerpt explores emerging trends and technologies in LLM development, including multimodal models, smaller and more efficient models, and adaptive models.
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LLM in Python: Comprehensive Guide to Building and Deploying Large Language Models
- By: Anand V
- Original Recording
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Explaining LLMs, their evolution, and applications in different industries. The book then dives into data preparation and management, including techniques for collecting, cleaning, and storing large datasets. It then guides the reader through building the model, focusing on model architecture design, training techniques, and hyperparameter tuning. After that, the book examines model evaluation and fine-tuning techniques, including common issues and debugging strategies.
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Generative AI with AWS BedRock
- By: Anand V
- Original Recording
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A comprehensive guide for developers who want to build Generative AI applications. The text explains the foundations of Generative AI and introduces AWS Bedrock as a cloud-based platform designed for building these applications. The book outlines how to choose the right Foundational Models, fine-tune them with Low-Rank Adaptation (LoRA) for specific tasks, and write effective prompts to guide the models' output. The book also explores key aspects of building a Generative AI application, such as user interface design, integration with other AWS services, and security considerations.
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Future of LLM - Gemini
- By: Anand V
- Original Recording
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explores the groundbreaking advancements of the Gemini LLM, a state-of-the-art large language model. It details the model's key features, including its mastery of context, multimodal capabilities, and personalization. The text also delves into the historical development of large language models, highlighting the importance of the transformer architecture and pretraining techniques. Additionally, the document discusses the ethical considerations associated with LLMs, like bias and data privacy, as well as the potential impact of Gemini on various industries.
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Amazon BedRock with Generative AI
- By: Anand V
- Original Recording
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The document "Amazon Bedrock and Generative AI.pdf" is a comprehensive guide to understanding and using Amazon Bedrock, a service designed to simplify the development and deployment of generative AI models. It covers the fundamentals of generative AI, explains how to use Bedrock to build, train, and evaluate models, and delves into advanced topics like scalable deployment, ethical considerations, and cost management. The document also includes hands-on projects and case studies to illustrate practical applications of generative AI across different industries.
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Generative AI and C++: A Hands-On Guide with Tutorials and Step-by-Step Manual
- By: Anand V
- Original Recording
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Generative artificial intelligence (AI), focusing on its implementation using the C++ programming language. The text covers fundamental concepts, techniques, and practical applications of generative models, such as Variational Autoencoders (VAEs) and Generative Adversarial Networks (GANs). The sources also explain how to build neural networks, train deep learning models, and perform tasks related to natural language processing (NLP), such as text preprocessing and word embeddings.
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Generative AI Math: Applications and Practical Insights
- By: Anand V
- Original Recording
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a comprehensive overview of the mathematical foundations and applications of generative artificial intelligence (AI). It covers fundamental mathematical concepts like probability and statistics, linear algebra, and calculus, illustrating their relevance in the development and optimization of AI models. The document further explores various types of generative models, including Variational Autoencoders (VAEs), Generative Adversarial Networks (GANs)
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Navigating AI Risk Management: A Guide to ISO/IEC 23894:2023 Standards
- By: Anand V
- Original Recording
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The ISO/IEC 23894:2023 standard is a guide for organizations to manage the risks associated with artificial intelligence systems. The standard provides a framework for identifying, assessing, and mitigating risks throughout the AI system lifecycle. It covers a wide range of topics, including data quality, algorithmic transparency, bias mitigation, ethical oversight, adversarial resilience, and governance
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Generative AI and Web 3: A Practical Guide
- By: Anand V
- Original Recording
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Outlines fundamental concepts of both technologies, explains how they complement each other, and presents real-world use cases in diverse domains. The guide covers deep learning fundamentals, generative adversarial networks, variational autoencoders, and transformers, while also examining blockchain technology, cryptocurrencies, decentralized finance, and non-fungible tokens. It further details practical applications in areas like AI-powered smart contracts, decentralized data storage, AI-generated NFTs, and decentralized AI marketplaces.
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Mastering Generative AI in the Software Development Life Cycle
- By: Anand V
- Original Recording
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Defining generative AI and explaining its various applications, including text generation, image synthesis, music creation, and code generation. The book then outlines the SDLC phases, including planning, requirements gathering, design, implementation, testing, deployment, and maintenance, and explores how generative AI can be utilized within each phase to improve efficiency, accuracy, and quality. The author also discusses ethical, legal, and future considerations for integrating AI into software development, offering industry case studies and practical examples to illustrate its real-world
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Generative AI Law: Navigating Legal Frontiers in Artificial Intelligence
- By: Anand V
- Original Recording
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Explores the legal landscape surrounding the rapid development and implementation of generative AI technologies. It examines the foundational technologies powering generative AI, including machine learning, deep learning, Generative Adversarial Networks (GANs), and Variational Autoencoders (VAEs). The document then dives into the legal frameworks surrounding intellectual property, data protection, and liability as they pertain to AI, outlining issues surrounding copyright, data ownership, and legal responsibility for harmful AI outputs.
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Generative AI in Drug Safety and Pharmacovigilance: A Comprehensive Guide
- By: Anand V
- Original Recording
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A comprehensive guide to understanding and implementing generative AI in the field of drug safety. The document explains the fundamentals of generative AI and its application in pharmacovigilance, including its potential for improving adverse event detection, risk prediction, data augmentation, and signal detection. It also examines the ethical, legal, and regulatory considerations surrounding AI in this domain
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EU AI Act Explained
- By: Anand V
- Original Recording
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European Union’s (EU) regulation of artificial intelligence (AI). The document explores the rise of AI, outlining its potential benefits and challenges. It then delves into the specific details of the EU AI Act, its goals, and its risk-based approach for classifying AI systems. The Act categorizes AI systems into four risk levels, ranging from unacceptable to minimal, and establishes distinct compliance requirements for each category.
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LLM Prompt Engineering for Developers
- By: Anand V
- Original Recording
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Covers fundamental concepts like understanding LLM architecture and the importance of prompt clarity and specificity, and dives into advanced techniques such as contextual prompting, multi-turn interactions, and fine-tuning. The guide also addresses the crucial topic of ethics in LLM development, including mitigating bias and ensuring fairness, and presents practical applications and real-world case studies of LLM implementation. Lastly, the guide discusses emerging trends in LLM development and provides resources for further learning.
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