top of page
Search

Jetlink presents: Contextualized & Reasoned RAG



At Jetlink, we’ve always focused on redefining the boundaries of artificial intelligence. Now, with Jetlink Genius Plus, we’re taking this vision to new heights. Genius Plus empowers businesses to create smarter, more personal, and genuinely engaging interactions with their users. Our dual-phase RAG system represents a revolution in AI, opening the doors to an entirely new era.


Genius Plus doesn’t just respond to queries; it truly understands your customers, delivering pinpoint, personalized answers that meet their specific needs. Whether they’re asking simple questions or seeking complex insights, Genius Plus ensures that the responses are always accurate and tailored. This innovative approach allows your business to provide hyper-personalized experiences, making every conversation meaningful and efficient.


What sets Genius Plus apart is its dual-phase process. In the first phase, it deeply analyzes the context—whether it's identifying a returning customer or someone discovering your brand for the first time. Then, using advanced data retrieval techniques, it pulls the most relevant information to generate a fully personalized response.


Strategies for Boosting RAG Efficiency with Genius Plus 


With retrieval-augmented generation (RAG) already proven to reduce the risk of large language model (LLM) hallucinations, Jetlink Genius Plus optimizes this technology for a balance of accuracy and efficiency across diverse applications.


Enhancing Long Context Comprehension: Traditional RAG systems often rely on chunking to vectorize unstructured data, yet this approach has its limitations. Chunking can disrupt context flow, impacting embedding quality and creating a risk of losing vital information across chunks. Genius Plus addresses these issues by employing cutting-edge embedding techniques designed for long-context understanding. Models like SRF-Embedding-Mistral and GritLM7B, supporting extended context windows of up to 32,000 tokens, ensure Genius Plus can process and interpret vast unstructured data with ease.


Embedding Strategies for Seamless Context: Genius Plus incorporates the various Embedding strategies to further improve long-context comprehension. Rather than relying on traditional chunking, our novel technique enables embeddings for fine-grained input units, such as sentences, within an intact long context. This architecture captures consecutive sentences as a coherent whole, facilitated by a position-aware function that retrieves comprehensive information seamlessly. As a result, Genius Plus excels in understanding and processing lengthy, complex interactions, making each conversation with your brand more meaningful and intuitive.


Maximizing RAG capabilities involves addressing numerous algorithmic challenges and leveraging sophisticated engineering capabilities and technologies.


At Jetlink, we harness the power of advanced vector databases as a fundamental part of our RAG pipeline, pushing the boundaries of AI-driven interactions. By developing  a mature and sophisticated vector databases we extend our RAG capabilities far beyond answer generation. Jetlink’s RAG pipeline now excels at tasks such as classification, structured data extraction, and even processing complex PDF documents. These enhancements make our RAG systems adaptable across a wide range of applications, ensuring our technology remains versatile, robust, and ready to meet diverse business needs.


Businesses are no longer just answering questions; they’re building deeper connections with their users. Genius Plus strengthens these connections by offering human-like interactions. As we edge closer to Artificial General Intelligence (AGI), Jetlink is making AI smarter and more intuitive, elevating your user experience to new heights.


If you want to stand out in every interaction, it’s time to meet Jetlink Genius Plus. Let your conversations reflect the intelligence and care your brand deserves, making every exchange a moment of brilliance.




תגובות


התגובות הושבתו לפוסט הזה.
bottom of page