


Qdrant AI Builders: Show & Tell @ AWS Loft
βπ Join us for an exclusive evening of innovation, networking, and cutting-edge demos at the AWS Loft! π
βQdrant, a vector database for AI and semantic search, is bringing together the brightest minds in vector search, AI, and MLOps for a Show & Tell event designed to inspire and educate. Whether you're an AI engineer, data scientist, researcher, or builder, this is your chance to see real-world applications of vector search in action and connect with a vibrant community of industry experts.
βπ₯ Expect a curated selection of live demos from companies and individuals who are using Qdrant to build next-generation search, recommendation systems, and AI applications.
βπ₯ Network with engineers, founders, and investors passionate about the future of AI and machine learning.
βπ₯ Learn how Qdrant powers Agentic Frameworks, Retrieval-Augmented Generation (RAG), multimodal search, and beyond!
βWhat to Expect
βπΉ 5:00 PM β Doors Open & Networking π€
βπΉ 5:20 PM β Welcome & Introduction to Qdrant π€
πΉ 5:40 PM β AWS Presentation π§βπ»
βπΉ 6:00 PM β Lightning Demos β¨
βπΉ 8:00 PM Networking
βπΉ 9:00 PM β Event Ends πͺ
βApply to Demo!
βAre you building something exciting with Qdrant? Do you have an innovative application of vector search, AI-powered retrieval, or semantic search?
βπ©βπ» Weβre looking for 8-10 incredible demos to feature at this event. Submit your application by TBD to be considered.
βCriteria:
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Must be an AI/ML application involving search, retrieval, recommendations, discovery, etc.
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Must be able to attend the event to present.
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Preference for innovative use cases & real-world applications!
βWhy Attend?
βπ See cutting-edge AI & search technology in action
π Meet top engineers, researchers, and founders in the AI space
π‘ Discover new use cases for Qdrant & vector search
π Connect with the SF AI/ML community in a high-energy, interactive setting
βThis exclusive, invite-only event is the perfect opportunity to engage with the AI/ML community, exchange insights, and push the boundaries of what's possible with vector search.