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btw literally everybody is reporting that Agentic RAG is beating “trad RAG” by leaps and bounds its probably the #1 most cited result in RAG after “have you tried BM25” from Merrill Lutsky on the Raza Habib pod

30,551 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Rahul Dave
Rahul Dave1 год назад

@corbtt @MerrillLutsky @RazRazcle Add one more reporter. Financial documents.

Фото профиля swyx 🔜 @aiDotEngineer (Jun 3-5)
swyx 🔜 @aiDotEngineer (Jun 3-5)1 год назад

@corbtt @MerrillLutsky @RazRazcle wdym

Фото профиля Rainmaker
Rainmaker2 лет назад

Here I share an XGBoost model that delivers a 25% CAGR with minimal drawdown on Visa stock. In this free Substack post I share code and commentary for a powerful Machine Learning strategy that delivers powerful returns.

Фото профиля Janaka Abeywardhana
Janaka Abeywardhana1 год назад

@MerrillLutsky @RazRazcle Hold that orig tweet implies agentic RAG does use semantic search???

Фото профиля Jo Kristian Bergum
Jo Kristian Bergum1 год назад

@MerrillLutsky @RazRazcle I had a meeting this week with founders of an AI support bot that said the same thing

Фото профиля Sherwood 💬
Sherwood 💬1 год назад

@MerrillLutsky @RazRazcle A wild @MerrillLutsky appears

Фото профиля Ak
Ak1 год назад

@MerrillLutsky @RazRazcle Building a hosted version of this at !

Фото профиля sorta_sota
sorta_sota1 год назад

@MerrillLutsky @RazRazcle how can I get snipd to export like that

Фото профиля Raza Habib
Raza Habib1 год назад

@MerrillLutsky The first team I saw do this was actually @bloopdotai almost 2 years ago now

Фото профиля swyx 🔜 @aiDotEngineer (Jun 3-5)
swyx 🔜 @aiDotEngineer (Jun 3-5)1 год назад

@MerrillLutsky @bloopdotai i wonder if theres a canonical paper bc mine is the jerry liu talk

Фото профиля Christian Nonis
Christian Nonis1 год назад

@MerrillLutsky @RazRazcle I am team graph rag

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124,314 просмотров • 11 месяцев назад