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ข้อมูลเชิงลึก - Artificial Intelligence Technology - # Advancements in Retrieval Augmented Generation (RAG) for Generative AI

Contextual.ai's Innovative Approach to Retrieval Augmented Generation (RAG) and the Future of Generative AI


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Contextual.ai has proposed a new approach called "RAG 2.0" that aims to make the current standard of Retrieval Augmented Generation (RAG) obsolete, as per the initial creators of RAG.
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The content discusses the challenges faced by standalone Large Language Models (LLMs) like ChatGPT, which have a knowledge cutoff due to their one-off pre-training process. This means that LLMs have only "seen" data up to a certain point in time, limiting their ability to stay up-to-date with the latest information.

Contextual.ai has proposed a new approach called "RAG 2.0" to address this issue. RAG is one of the most popular ways of implementing Generative AI models, and Contextual.ai's creators claim that their innovation can make the current standard of RAG obsolete.

The author questions whether RAG is reaching the end of its lifespan and if these new innovations are simply "beating a dead horse". The content suggests that Contextual.ai's approach, which is grounded in data, could be a significant improvement over the status quo of production-grade Generative AI.

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by Ignacio De G... ที่ pub.towardsai.net 04-10-2024

https://pub.towardsai.net/rag-2-0-finally-getting-rag-right-f74d0194a720
RAG 2.0, Finally Getting RAG Right!

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What specific limitations of the current RAG approach does Contextual.ai's "RAG 2.0" aim to address?

Contextual.ai's "RAG 2.0" aims to address specific limitations of the current RAG approach by introducing Contextual Language Models (CLMs) that go beyond the standard Retrieval Augmented Generation (RAG) model. One key limitation of the current RAG approach is the knowledge cutoff in standalone Large Language Models (LLMs) like ChatGPT, where pre-training is a one-time exercise. This means that LLMs have a finite amount of data they have "seen" until a certain point in time. "RAG 2.0" seeks to overcome this limitation by providing a more dynamic and continuous learning approach, allowing the model to adapt and learn from new data continuously.

What are the potential drawbacks or challenges that Contextual.ai's innovation might face in replacing the existing RAG standard?

While Contextual.ai's innovation with "RAG 2.0" brings promising advancements to the field of Generative AI, there are potential drawbacks and challenges it might face in replacing the existing RAG standard. One challenge could be the resistance to change from established practices and models within the AI community. Additionally, implementing a new approach like "RAG 2.0" may require significant resources, time, and expertise to transition from the current RAG model to the new CLMs effectively. There could also be concerns about the scalability and efficiency of the new approach compared to the existing RAG standard.

How could the advancements in Contextual.ai's approach impact the broader landscape of Generative AI and its applications beyond just the RAG model?

The advancements in Contextual.ai's approach with "RAG 2.0" have the potential to significantly impact the broader landscape of Generative AI and its applications beyond just the RAG model. By introducing Contextual Language Models (CLMs) that enable continuous learning and adaptation to new data, the innovation could lead to more robust and versatile AI models. This could enhance the capabilities of Generative AI in various fields such as natural language processing, content generation, and conversational agents. The advancements could also pave the way for more efficient and effective AI applications that can better understand and generate human-like text, leading to improved user experiences and outcomes in diverse industries.
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