Tag Archives: agentic ai

Build AI Chatbots for SAAS Using LLMs, RAG, Multi-Agent Frameworks

ai powered chatbots for SAAS using LLM, RAG and Multi-agent frameworks

Software-as-a-Service (SaaS) providers have long relied on traditional chatbot solutions like AWS Lex and Google Dialogflow to automate customer interactions. These platforms required extensive configuration of intents, utterances, and dialog flows, which made building and maintaining chatbots complex and time-consuming. The need for manual intent classification and rule-based conversation logic often resulted in rigid and limited chatbot experiences, unable to handle dynamic user queries effectively. With the advent of generative AI, SaaS providers are increasingly adopting Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), and multi-agent frameworks such as LangChain, LangGraph, and LangSmith to create more scalable and intelligent AI-driven chatbots. This blog explores how SaaS providers can leverage these technologies …

Continue reading

Posted in agentic ai, Large Language Models. Tagged with , .

Creating a RAG Application Using LangGraph: Example Code

building rag application using Langgraph

Retrieval-Augmented Generation (RAG) is an innovative generative AI method that combines retrieval-based search with large language models (LLMs) to enhance response accuracy and contextual relevance. Unlike traditional retrieval systems that return existing documents or generative models that rely solely on pre-trained knowledge, RAG technique dynamically integrates context as retrieved information related to query with LLM outputs. LangGraph, an advanced extension of LangChain, provides a structured workflow for developing RAG applications. This guide will walk through the process of building a RAG system using LangGraph with example implementations. Setting Up the Environment To get started, we need to install the necessary dependencies. The following commands will ensure that all required LangChain …

Continue reading

Posted in agentic ai, LangChain, Large Language Models, RAG. Tagged with , , , .

What are AI Agents? How do they work?

how does AI agent work

Artificial Intelligence (AI) agents have started becoming an integral part of our lives. Imagine asking your virtual assistant whether you need an umbrella tomorrow, or having it remind you of an important meeting—these agents now help us with weather forecasts, managing daily tasks, and much more. But what exactly are these AI agents, and how do they work? In this blog post, we’ll break down the inner workings of AI agents using an easy-to-understand framework. Let’s explore the key components of an AI agent and how they collaborate to enable seamless interactions, such as providing weather updates or managing tasks efficiently. What are AI Agents? AI agents are artificial entities …

Continue reading

Posted in agentic ai. Tagged with .

Agentic AI Design Patterns Examples

agentic ai design patterns examples

In the ever-evolving landscape of agentic AI workflows and applications, understanding and leveraging design patterns is crucial for building effective and innovative solutions. Agentic AI design patterns provide structured approaches to solving complex problems. They enhance the capabilities of AI agents by enabling reasoning, planning, collaboration, and tool integration. For instance, you can think of these patterns as a blueprint for constructing a well-oiled team of specialists in a workplace—each with unique roles and tools, working in harmony to tackle a project efficiently and innovatively. Imagine a team of engineers collaborating on designing a new car, where one member focuses on aerodynamics, another on engine performance, and a third on …

Continue reading

Posted in agentic ai, Large Language Models. Tagged with , .

List of Agentic AI Resources, Papers, Courses

list of agentic ai resources and papers

In this blog, I aim to provide a comprehensive list of valuable resources for learning Agentic AI, which refers to developing intelligent systems capable of perception, autonomous decision-making, reasoning, and interaction in dynamic environments. These resources include tutorials, research papers, online courses, and practical tools to help you deepen your understanding of this emerging field. This blog will continue to be updated with relevant and popular papers periodically, based on emerging trends and the significance of newly published works in the field. Additionally, feel free to suggest any papers that you would like to see included in this list. This curated list highlights some of the most impactful and insightful …

Continue reading

Posted in agentic ai, Large Language Models. Tagged with , .