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How Q4 Inc. used Amazon Bedrock, RAG, and SQLDatabaseChain to address numerical and structured dataset challenges building their Q&A chatbot

Flipboard

The following are some of the experiments that were conducted by the team, along with the challenges identified and lessons learned: Pre-training – Q4 understood the complexity and challenges that come with pre-training an LLM using its own dataset. The context is finally used to augment the input prompt for a summarization step.

Chatbots 168
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Training Sessions Coming to ODSC APAC 2023

ODSC - Open Data Science

Troubleshooting Search and Retrieval with LLMs Xander Song | Machine Learning Engineer and Developer Advocate | Arize AI Some of the major challenges in deploying LLM applications are the accuracy of results and hallucinations.

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Exploring data using AI chat at Domo with Amazon Bedrock

AWS Machine Learning Blog

This enables Domo to optimize model performance through prompt engineering, preprocessing, and postprocessing, and provide contextual information and examples to the AI system. The tools provide the agent with access to data and functionality beyond what is available in the underlying LLM.