Tag: Autonomous

  • How SAP and Oracle Can Use Agentic AI

    How SAP and Oracle Can Use Agentic AI SAP and Oracle, as leading enterprise software providers, are actively integrating Agentic AI capabilities into their platforms to enhance organizational productivity across various business functions. Here’s how they can leverage this transformative technology: SAP’s Use of Agentic AI: SAP is embedding “Business AI” across its portfolio, which… Read more

  • BPM Meets Agentic AI for Organizational Productivity

    BPM Meets Agentic AI for Organizational Productivity The convergence of Business Process Management (BPM) and Agentic AI holds immense potential to revolutionize organizational productivity. While BPM provides the structured framework for how work gets done, Agentic AI introduces intelligent, autonomous entities that can execute tasks, make decisions, and adapt within those processes. This synergy can… Read more

  • Non-Functional Requirements in AI/ML Applications

    Non-Functional Requirements in AI/ML Applications 1. Performance in AI/ML Model Accuracy/Performance Metrics Specify target metrics like precision (minimizing false positives), recall (minimizing false negatives), F1-score (harmonic mean of precision and recall), AUC (Area Under the ROC Curve for binary classification), RMSE (Root Mean Squared Error for regression), and acceptable error rates. Define how these metrics… Read more

  • Understanding Agentic Retrieval-Augmented Generation (RAG)

    Understanding Agentic RAG Agentic Retrieval-Augmented Generation (RAG) goes beyond standard RAG by incorporating more sophisticated agent-like behaviors to enhance the generation process. Think of it as a proactive and strategic assistant for information retrieval and content generation. Key Differences from Standard RAG Decision-Making in Retrieval: Agentic RAG decides *when* and *how* to retrieve information, unlike… Read more

  • Detailed Explanation of Keras Library

    Detailed Explanation of Keras Library Keras: The User-Friendly Neural Network API Keras is a high-level API (Application Programming Interface) written in Python, designed for human beings, not machines. It serves as an interface for artificial neural networks, running on top of lower-level backends such as TensorFlow (primarily in modern usage). Key Features and Philosophy User-Friendliness:… Read more

  • Use cases: Driving Efficiency and Innovation Across Industries with Data Science

    Driving Efficiency and Innovation Across Industries with Data Science Data science is at the forefront of driving efficiency gains and fostering innovation across diverse industries. This article highlights ten compelling use cases that demonstrate this transformative power. 11. Price Optimization Domain: Retail, E-commerce, Hospitality Determining the optimal pricing strategy for products or services to maximize… Read more

  • Use Cases: Enhancing Customer Experience and Business Operations with Data Science

    Enhancing Customer Experience and Business Operations with Data Science Enhancing Customer Experience and Business Operations with Data Science Data science provides powerful tools to understand customers better, personalize their experiences, and optimize core business operations. This article explores ten key use cases in these areas. 1. Customer Churn Prediction Domain: Customer Relationship Management (CRM), Telecommunications,… Read more

  • Detailed Explanation: Training and Inference Times in Machine Learning

    Detailed Explanation: Training and Inference Times in Machine Learning Training Time in Machine Learning: A Detailed Look Definition: Training time is the computational duration required for a machine learning model to learn the underlying patterns and relationships within a training dataset. This process involves iteratively adjusting the model’s internal parameters (weights and biases) to minimize… Read more

  • Reinforcement Learning: A Detailed Explanation

    Reinforcement Learning: A Detailed Explanation Reinforcement Learning (RL) is a subfield of machine learning where an agent learns to make decisions in an environment by performing actions and receiving feedback in the form of rewards or penalties. The goal of the agent is to learn a policy – a mapping from states to actions –… Read more

  • Salesforce Agentic AI: A Comprehensive Overview

    Salesforce Agentic AI: A Comprehensive Overview Salesforce Agentic AI represents a significant evolution in how artificial intelligence is integrated into the Salesforce platform. Moving beyond simple automation and predictive analytics, Agentic AI aims to create intelligent, autonomous agents capable of understanding complex goals, planning multi-step actions, and executing tasks on behalf of users. This detailed… Read more

  • Sample Autonomous Threat Identification and Mitigation in AWS (Sample)

    Autonomous Threat Identification and Mitigation in AWS (Sample) This sample outlines a conceptual architecture and key AWS services for building an Autonomous Threat Identification and Mitigation system, focusing on detecting and responding to suspicious network traffic. Conceptual Architecture +—————–+ +—————–+ +———————+ +———————+ +———————+ | Network Traffic | –> | VPC Flow Logs / | –>… Read more

  • Agentic AI in Cybersecurity

    Agentic AI in Cybersecurity Agentic AI represents a significant leap forward in cybersecurity, offering the potential for more autonomous, adaptive, and proactive defense mechanisms. Unlike traditional AI systems that often require human intervention for decision-making and action, agentic AI can independently perceive its environment, reason about complex situations, and act to achieve specific security goals.… Read more

  • Implementing Intelligent Financial Advisor Agentic AI on GCP – Detailed

    Implementing Intelligent Financial Advisor Agentic AI on GCP – Detailed Implementing Intelligent Financial Advisor Agentic AI on GCP – Detailed This document outlines the architecture and implementation steps for building an Intelligent Financial Advisor Agentic AI system on Google Cloud Platform (GCP). The goal is to create an autonomous agent capable of understanding user financial… Read more

  • Implementing Fraud Detection and Prevention Agentic AI on Azure – Detailed

    Implementing Fraud Detection and Prevention Agentic AI on Azure – Detailed Implementing Fraud Detection and Prevention Agentic AI on Azure – Detailed This document provides a comprehensive outline for implementing a Fraud Detection and Prevention Agentic AI system on Microsoft Azure. The objective is to build an intelligent agent capable of autonomously analyzing data, making… Read more

  • Implementing Fraud Detection and Prevention Agentic AI on AWS – Detailed

    Implementing Fraud Detection and Prevention Agentic AI on AWS – Detailed This document provides a comprehensive outline for implementing a Fraud Detection and Prevention Agentic AI system on Amazon Web Services (AWS). The goal is to create an intelligent agent capable of autonomously analyzing data, making decisions about potential fraud, and continuously learning and adapting… Read more

  • AI Agent with Scratchpad Memory on AWS

    AI Agents with Scratchpad Memory on AWS AI agents equipped with “scratchpad” memory, or short-term working memory, significantly enhance their capabilities by allowing them to temporarily store and process information relevant to their current tasks. This enables them to handle complex scenarios, maintain context across interactions, and reason more effectively. This article explores the use… Read more

  • Intelligent Chatbot with RAG using React and Python

    Intelligent Chatbot with RAG using React and Python This guide will walk you through building an intelligent chatbot using React.js for the frontend and Python with Flask for the backend, enhanced with Retrieval-Augmented Generation (RAG). RAG allows the chatbot to ground its responses in external knowledge sources, leading to more accurate and contextually relevant answers.… Read more

  • GraphQL vs RESTful for Agentic AI

    GraphQL vs RESTful for Agentic AI Both RESTful and GraphQL APIs can be used to build agentic AI systems, and the choice between them depends on the specific requirements and characteristics of the AI agent and the systems it interacts with. Here’s a comparison of their suitability: RESTful APIs for Agentic AI: Pros: Simplicity and… Read more

  • Building Agentic AI applications Using n8n

    Building Agentic AI Using n8n n8n, a powerful open-source workflow automation platform, can be effectively leveraged to build various components and orchestrate the functionalities of agentic AI systems in 2025. While n8n itself isn’t a machine learning framework for training AI models, its ability to connect different services, handle data transformations, and manage complex workflows… Read more

  • Leveraging Data Lakehouse for Agentic AI

    Leveraging Data Lakehouse for Agentic AI In 2025, the data lakehouse architecture is proving to be a powerful foundation for developing and deploying sophisticated agentic AI systems. Agentic AI, characterized by its autonomy, proactivity, reasoning capabilities, and ability to interact with the environment, requires a robust and versatile data infrastructure. The data lakehouse, which combines… Read more

  • Today’s Top Tech Buzzwords

    Hottest Buzzwords in Today’s Tech Industry (April 2025) The tech landscape is constantly evolving, and with it comes a fresh wave of buzzwords. As of April 2025, these are some of the most prominent terms you’ll hear across the industry: Top Trending Buzzwords: Agentic AI: Referring to autonomous AI agents capable of planning and executing… Read more

  • Leveraging Kafka for Agentic AI Systems

    Apache Kafka, a distributed streaming platform, offers significant advantages for building and deploying agentic AI systems. Its core strength lies in its ability to handle high-throughput, real-time data streams reliably, making it an excellent choice for managing the dynamic interactions and data flow inherent in intelligent agents. Key Use Cases of Kafka in Agentic AI:… Read more

  • Model Context Protocol (MCP) for Agentic AI

    The Model Context Protocol (MCP), primarily developed by Anthropic, is an open protocol designed to standardize how applications provide context (data and tools) to large language models (LLMs), which often serve as the foundation for agentic AI systems. It aims to create a universal and efficient way for AI models to interact with various external… Read more

  • Building Agentic AI Applications on Microsoft Azure

    Microsoft Azure offers a rich set of services and tools for building agentic AI applications – intelligent systems capable of autonomous action, planning, memory, and interaction with their environment. This detailed guide outlines key Azure services, their functionalities, and relevant links to help you get started, formatted for your WordPress site. Core Foundation Models Agent… Read more

  • Building Agentic AI Applications on Google Cloud Platform (GCP)

    Google Cloud Platform (GCP) offers a rapidly evolving suite of tools and services for building agentic AI applications – intelligent systems capable of autonomous action, planning, memory, and interaction with their environment. Here’s a detailed overview of key GCP services and concepts, along with relevant links, formatted for your WordPress site. Core Foundation Models Agent… Read more

  • Autonomous Content Creation for Social Media Marketing using Agentic AI

    Here we implement agentic AI use case focusing on a creative and dynamic domain: Autonomous Content Creation for Social Media Marketing. Use Case: A marketing agency wants to automate the process of creating engaging content for various social media platforms for their clients. Instead of relying solely on human content creators, an agentic AI can… Read more

  • Autonomous Scientific Research Assistant using Agentic AI

    Let’s explore another agentic AI use case, this time focusing on a different domain: Autonomous Scientific Research Assistant. Use Case: A research laboratory wants to accelerate the pace of scientific discovery by automating certain aspects of the research process. Instead of researchers spending significant time on literature reviews, hypothesis generation, experimental design, and data analysis,… Read more

  • Agentic AI for Autonomous Bank Statement Analysis and Anomaly Detection

    Let’s implement a sample use case: An Agentic AI for Autonomous Bank Statement Analysis and Anomaly Detection. Use Case: A financial institution wants to automate the process of analyzing customer bank statements to identify potential fraudulent activities, unusual spending patterns, or financial distress indicators. Instead of relying solely on rule-based systems or manual review, an… Read more

  • Agentic AI Tools

    Agentic AI refers to a type of artificial intelligence system that can operate autonomously to achieve specific goals. Unlike traditional AI, which typically follows pre-programmed instructions, agentic AI can perceive its environment, reason about complex situations, make decisions, and take actions with limited or no direct human intervention. These systems often leverage large language models… Read more

  • The Monolith to Microservices Journey: A Phased Approach to Architectural Evolution

    The transition from a monolithic application architecture to a microservices architecture is a significant undertaking, often driven by the desire for increased agility, scalability, resilience, and maintainability. A monolith, with its tightly coupled components, can become a bottleneck to innovation and growth. Microservices, on the other hand, offer a decentralized approach where independent services communicate… Read more