Qdrant Meets Google Gemini Embedding 2
Neil Kanungo
March 10, 2026

Learn about Deutsche Telekom's requirements for scaling enterprise AI agents, key AI stack considerations, and how the team built a Platform as a Service (PaaS) - LMOS (Language Models Operating System) — a multi-agent PaaS designed for high scalability and modular AI agent deployment.
Manuel Meyer
March 07, 2025

Discover Qdrant Cloud's enterprise features: RBAC, SSO, granular API keys, advanced monitoring/observability.
Daniel Azoulai
March 04, 2025

Metadata plays a critical role in vector search accuracy, yet it’s often overlooked. In this episode of Vector Space Talks, Reece Griffiths, CEO of Deasy Labs, explains why metadata automation is essential for scalable AI systems. He walks us through how Deasy Labs orchestrates metadata extraction, classification, and enrichment to boost retrieval efficiency.
Sabrina Aquino
February 24, 2025

Learn how to build an agentic RAG system to semi-automate email communication with CrewAI, Qdrant, and Obsidian.
Kacper Łukawski
January 24, 2025

David Myriel
January 23, 2025

Learn how Voiceflow builds scalable, customizable, no-code AI agent solutions for enterprises.
Qdrant
December 10, 2024

Build an AI app that uses facial recognition embeddings & vector search to match users with their celebrity look-alikes.
David Myriel
December 03, 2024

ColPali combines text and visual contexts for precise document retrieval, but scaling posed challenges. We achieved 13x faster retrieval using pooling and reranking, reducing vector counts by ~30x while retaining near-original accuracy. Explore the open-source demo to optimize your retrieval workflows!
Evgeniya Sukhodolskaya, Sabrina Aquino
November 27, 2024

Explore best practices for evaluating Retrieval-Augmented Generation (RAG) systems.
David Myriel
November 24, 2024