@itsclelia: Had a lot of fun talking about retrieval in the agent of agents at the Vector Space meetup in Berlin on Thursday! Toget…
Summary
Clelia enjoyed speaking about retrieval in agent systems at the Vector Space meetup in Berlin, organized by Qdrant, with deepset, cognee, and n8n.
Similar Articles
@itsclelia: Had a blast yesterday attending at @techeurope_'s Applied AI Conference in Berlin! I had a talk about building document…
Attended the Applied AI Conference in Berlin and gave a talk on building document agents, including a detailed walkthrough of LobsterX, a document-processing agent built with LlamaIndex that uses structured outputs and event-driven workflows.
@tavilyai: Berlin was geht ab, Tavily ist jetzt in town! We're here with @GradiumAI showing off our new voice integration and host…
Tavily, Gradium, Nebius, and Cursor are hosting a full-day hackathon in Berlin on May 29th focused on building autonomous AI agents that can transact and execute. The event includes tech talks, building sessions, and prizes.
@arizeai: Our own Laurie Voss, head of Developer Relations, will be speaking at QDrant's Vector Space Day conference! Most teams …
Laurie Voss of Arize will speak at QDrant's Vector Space Day conference on June 11 in San Francisco, covering retrieval metrics, golden datasets, LLM-as-judge, and continuous evals for CI pipelines.
@helloiamleonie: Took some inspiration from @vboykis and converted my first ever talk into a blog post. I talk about the role of agentic…
The article by Leonie Monigatti discusses the role of agentic search in context engineering for AI agents, tracing the evolution from fixed RAG pipelines to agentic RAG and context curation. It provides intuition on the strengths and weaknesses of various search tools used in agentic systems.
@techwith_ram: Watching this talk about Agentic Search for Context Engineering by @helloiamleonie Watched half of this talk. Really we…
A workshop/tutorial on agentic search techniques for context engineering, teaching how AI agents decide what context to retrieve from files, databases, memory, and the web using langchain and Elasticsearch.