"Generative AI in Practice: Advanced Insights and Operations" is a comprehensive course designed for individuals seeking to deepen their understanding and operational capabilities in the evolving landscape of large language models (LLMs) and generative artificial intelligence. This course provides a robust foundation in the principles and practices that underpin the development, deployment, and management of advanced AI systems.
Participants will begin their journey by exploring the profound evolution of AI models, transitioning from rule-based approaches to sophisticated generative systems powered by transformers and multimodal architectures. Through an understanding of programming paradigms and machine learning techniques, the course lays the groundwork for utilizing AI as a versatile decision-making tool.
During the course, learners will delve into the architectures and mechanisms of LLMs, such as transformers and self-attention, while navigating the complexities of tokenization, embedding processes, and hyperparameter tuning. Emphasis on responsible AI practices will guide participants through accountable AI implementation, tackling biases, data drifts, and ethical considerations.
Hands-on sessions will explore how to operationalize these models within enterprise environments, leveraging tools like Azure AI Studio for practical experimentation. .
The course will also address advanced strategies such as Retrieval Augmented Generation (RAG), a hybrid architecture that enhances model capabilities by incorporating real-time data retrieval. By understanding RAG and exploring topics like semantic matching and dynamic embeddings, participants will learn to integrate dynamic data into AI systems for improved contextual responses across industries such as finance, healthcare, and customer service.
With a focus on practical applications, this course equips participants with the skills to effectively deploy and manage LLMs, balance performance needs with ethical standards, and ensure scalable, compliant solutions. By the end, learners will be prepared to not only understand but also innovate in the practice of generative AI, driving impactful and responsible AI solutions in diverse real-world scenarios.