This document explains the concept, process, and best practices of rolling updates in Kubernetes, ensuring zero downtime and safe application upgrades.
This document explains Kubernetes autoscaling, including HPA, VPA, and CA their mechanisms, configuration, and best practices for optimizing resource usage and cost. It covers how each autoscaler works and when to use them.
This document provides an overview of various container orchestration tools their features, and use cases. It covers popular tools like Kubernetes, Docker Swarm, and Apache Mesos, highlighting their strengths and ideal scenarios for deployment.
This document explains ReplicaSet in Kubernetes, its role in maintaining desired pod states, scaling, redundancy, and best practices for deployment management. It covers how ReplicaSets work, their benefits, and practical usage examples.
This document provides a step-by-step guide for setting up a local Kubernetes lab using MicroK8s on Ubuntu 24.04. It includes instructions for installing necessary components, enabling add-ons like DNS and Helm, deploying sample applications, and accessing the Kubernetes Dashboard. It also outlines file organization and usage of kubectl.
This document outlines the essential prerequisites and foundational concepts needed before learning Kubernetes, including containerization, cloud basics YAML, networking, and terminal proficiency.
This document explains kubectl, the Kubernetes command-line tool, its command structure, types of commands, and best practices for managing cluster resources.
This document provides an overview of the Kubernetes architecture, including its components and how they interact to manage containerized applications.
This document explains Kubernetes services, their types, and related objects like Ingress, DaemonSet, StatefulSet, and Job, focusing on their roles in application networking and management.
This document explains Kubernetes objects, their properties, types, and relationships, including how they are defined, managed, and grouped using labels and namespaces.
Overview of Kubernetes, its core concepts, capabilities, and ecosystem. Explains what Kubernetes is and is not, its role in container orchestration and how it automates deployment, scaling, and management of containerized applications.
Comprehensive overview of generative AI tools for code generation, including capabilities, strengths, limitations, and key platforms such as ChatGPT Gemini, Copilot, Polycoder, Watson Code Assistant, Amazon CodeWhisperer, Tab9 and Repl.it. Covers productivity, best practices, and ethical considerations.
Overview of generative AI tools for audio and video, including speech generation, music creation, audio enhancement, and video synthesis. Covers key platforms, capabilities, and real-world applications in creative and professional domains.
This document covers the wide-ranging applications of Generative AI across various domains such as content creation, drug discovery, engineering finance and healthcare.
This document traces the evolution of Generative AI, from early rule-based systems in the 1950s to the latest advancements in Large Language Models (LLMs), highlighting key milestones like GANs and Transformers.
This document provides an overview of leading tools and platforms for text generation, including LLMs like GPT and PaLM, as well as open-source and commercial solutions for creative, conversational, and code-related tasks.
This document introduces the fundamentals of Generative AI, outlining its core concepts, applications, and significance in modern technology. Key topics include foundational principles, real-world use cases, and the impact of generative models across industries.
This document provides an overview of leading tools and technologies for image generation using generative AI, including DALL-E, Stable Diffusion, StyleGAN Craiyon, Freepik, Picsart, Fotor, Deep Art Effects, DeepArt.io, Midjourney Microsoft Bing Image Creator, and Adobe Firefly.
This document explores the diverse capabilities of Generative AI, including text, image, audio, video, code, data generation, and virtual world creation with real-world applications and examples. It also covers the latest advancements in multimodal AI, AI agents, and the impact of generative AI on various industries.
This document summarizes key ethical considerations, responsible use governance, and best practices for AI, including privacy, bias, transparency and the approaches of leading organizations.
This document details practical steps for implementing AI ethics, including guidelines, design thinking, guardrails, data diversity, and tools for bias mitigation and privacy in AI systems.
This document explores the principles, risks, and best practices of AI governance, including data quality, bias, privacy, transparency, and the importance of oversight for responsible AI deployment.
This document reviews the ethical AI approaches of IBM, Microsoft, and Google highlighting their principles, toolkits, and governance models for responsible and trustworthy AI development.
This document explains hallucination in large language models, its types causes, and practical strategies to minimize fabricated or inaccurate outputs in AI-generated content.
This document examines copyright, privacy, accuracy, hallucination, and ethical challenges in generative AI, offering practical strategies for responsible use and compliance with legal and social standards.
This document explores the ethical principles, challenges, and responsibilities in AI development, including privacy, bias, transparency accountability, and equitable access, with real-world case studies and practical strategies for responsible AI use.
This document summarizes key concepts from the module, including AI agents robotics, cobots, RPA, generative AI, business adoption, AI tools, and career opportunities, providing a comprehensive overview of modern AI applications.
This document explores the strengths and limitations of human and AI decision-making, using fraud detection as a case study, and examines how augmented intelligence can combine the best of both.
This document explores the evolving landscape of AI careers, highlighting technical and non-technical roles, required skills, and strategies for transitioning into the AI field across diverse industries.