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This course covers basic to advanced generative AI techniques like prompt engineering, retrieval-augmented generation (RAG), and vector databases, preparing you to design and deploy cutting-edge GenAI applications. Learn to use tools such as Python, PyTorch, LangChain, OpenAI, and others while mastering LLM APIs, application architecture, and production-ready deployments.
A large language model (LLM) is a type of machine learning model designed to understand and generate human language using neural networks with millions of parameters, trained on vast text corpora through self-supervised learning. LLMs power applications like chatbots, translation, summarization, and coding. Advanced models like GPTs are enhanced through fine-tuning and prompt engineering.
Learning Large Language Models (LLMs) empowers you with the skills to build AI-powered solutions that understand and generate human language. As enterprises rapidly adopt these models for automation, content creation, and decision-making, professionals with LLM expertise are in high demand. Mastering LLMs and prompt engineering opens doors to roles like AI prompt engineer, GenAI engineer, and LLM engineer in today’s evolving tech landscape.
Large Language Models (LLMs) include well-known examples like GPT-4 by OpenAI, Gemini by Google, Claude by Anthropic, LLaMA by Meta, and Mistral. These models process vast amounts of text to perform tasks such as writing, summarizing, translating, and engaging in conversations. Each model has unique strengths, making them valuable across various industries and applications.
Large Language Models (LLMs) are a type of generative AI specialized in understanding and producing human language. Generative AI is a broader category that includes models for text, images, audio, and more. While all LLMs are generative AI, not all generative AI models are LLMs. LLMs focus on language tasks, whereas generative AI can create diverse types of content across multiple formats.
Yes, learning Prompt Engineering with LLM is highly worth it. Demand for prompt engineers is rapidly rising across industries, with roles offering strong salaries and career growth as businesses adopt AI-driven solutions using LLMs. This skillset is essential for creating effective, reliable AI outputs and opens doors to diverse, future-ready job opportunities.
In order to complete this course successfully, participants need to have a basic understanding of Python programming language, machine learning, deep learning, natural language processing, generative AI, and prompt engineering concepts. However, learners will be provided with self-learning refresher material on generative AI and prompt before beginning with this live classes.
Becoming an LLM Engineer is a highly rewarding career choice due to the rapidly growing demand, the potential to shape the future of AI, and the opportunity to work on cutting-edge technologies. The field offers a blend of technical and creative challenges, making it intellectually stimulating and engaging.
Participants will learn how to create and optimize prompts for various NLP tasks using techniques like zero-shot, one-shot, and few-shot prompting. They will develop skills in prompt testing, debugging, and evaluating model responses to improve prompt effectiveness through practical hands-on exercises.
The Prompt Engineering with LLM Course is ideal for AI enthusiasts, developers, and professionals interested in natural language processing, AI product development, or automation who want to improve their skills in crafting effective prompts to enhance AI-driven applications.
Definitely, LLMs are emerging as a powerful force in AI development, driving innovation in communication, content generation, and workflow automation, despite ongoing refinements and limitations.
Yes, becoming a Generative AI Engineer is an excellent career choice. The generative AI market is projected to exceed $1 trillion by 2034, growing at over 44% CAGR. This rapid growth drives strong demand and competitive salaries across industries. With skills in LLMs and prompt engineering, you can lead innovation and develop impactful AI-driven solutions.
Practicals for this Prompt engineering course will be implemented using Python, VS Code, and Jupyter Notebook. A step-by-step guide for installation will be provided in the Learning Management System (LMS). Edureka's Support Team will be available 24/7 to assist you in case you have any questions or face any technical issues during the practicals.
Prompt engineering involves optimizing artificial intelligence engineering for multiple purposes. It includes refining large language models (LLMs) using specific prompts and recommended outputs. Additionally, it focuses on enhancing input to different generative AI services to make text or images. With advancements in generative AI tools, prompt engineering becomes crucial for generating diverse content, such as robotic process automation bots, 3D assets, scripts, robot instructions, and various digital artifacts.
The system requirements for this Prompt Engineering with LLM Course include:
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