User Embeddings: Personal Navigation for LLMs

Real-time personalization without user data

Welcome to our guide on User Embeddings, a powerful tool that can revolutionize how you personalize user experiences. In this document, we'll explore the concept of embeddings, delve into what User Embeddings are, and provide insights into how this hyper-dimensional approach works. By the end, you'll grasp how User Embeddings can empower your business to deliver tailored recommendations and content to your users.

What Can You Do With User Embeddings?

FirstBatch turns any UX into individually crafted, personalized ones without user data. This is possible through the power of embeddings and vector databases.

Transform your user experience into a navigable journey by leveraging user interactions. Each action a user completes contributes to shaping their unique experience.

Personalized Discovery Without Login

Offer users not only similar but also adjacent items in a personalized manner without even a login requirement. This approach allows users to discover new and relevant content on their own terms, enhancing their exploration and satisfaction.

Unique Journeys

Enable users to access the right content from the very beginning by tailoring their experience based on their starting point.

User Targeting Centric Advertised Content

Shift away from conventional targeting techniques and embrace a user-centric approach to deliver promoted items or ads in a captivating format. This approach allows users to actively influence the curation of promoted content, ensuring it aligns seamlessly with their preferences and resulting in a highly interactive and enjoyable experience.

User-Intent AI Agents

Empower your AI agents with real-time insights into user intentions derived from their interactions. This infusion of user intent brings intimacy to AI-driven experiences, making users feel more connected and understood.

Personalized RAG

Leverage user interactions to determine precisely what information your LLMs need, enhancing RAG capabilities with speed, intelligence, and action-oriented results.

Real-Time Personalization

Deliver an experience similar to TikTok with real-time personalization that instantaneously adapts to users' interactions, ensuring that their journey reflects their preferences and engagement in the most dynamic and engaging manner possible.

Tailor search results uniquely to each user by broadening the scope of semantic search to incorporate user interactions beyond just their search queries.

What Are Embeddings?

Embeddings are mathematical representations of items or entities that encode their key attributes. Think of them as unique coordinates in a high-dimensional vector space. The beauty of embeddings lies in their ability to position similar entities close to each other in this space and dissimilar ones farther apart. This concept enables us to perform vector similarity searches, leading to more effective recommendations and personalization.

For instance, in an embedding space, "t-shirt" and "dress" would be neighbors, while "t-shirt" and "car" would be distant points.

What Are User Embeddings?

User Embeddings take your users on a journey into this hyper-space, where their preferences, interests, and behaviors become navigational coordinates. Users with items similar to their preferences cluster together in this multidimensional landscape, enabling us to guide their journey through personalized content. User Embeddings are dynamic, evolving as users interact with your platform, ensuring that recommendations adapt to their ever-changing tastes.

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