AWS Machine Learning Blog
Category: Learning Levels
Accuracy evaluation framework for HAQM Q Business – Part 2
In the first post of this series, we introduced a comprehensive evaluation framework for HAQM Q Business, a fully managed Retrieval Augmented Generation (RAG) solution that uses your company’s proprietary data without the complexity of managing large language models (LLMs). The first post focused on selecting appropriate use cases, preparing data, and implementing metrics to […]
Use HAQM Bedrock Intelligent Prompt Routing for cost and latency benefits
Today, we’re happy to announce the general availability of HAQM Bedrock Intelligent Prompt Routing. In this blog post, we detail various highlights from our internal testing, how you can get started, and point out some caveats and best practices. We encourage you to incorporate HAQM Bedrock Intelligent Prompt Routing into your new and existing generative AI applications.
HAQM Bedrock Prompt Optimization Drives LLM Applications Innovation for Yuewen Group
Today, we are excited to announce the availability of Prompt Optimization on HAQM Bedrock. With this capability, you can now optimize your prompts for several use cases with a single API call or a click of a button on the HAQM Bedrock console. In this blog post, we discuss how Prompt Optimization improves the performance of large language models (LLMs) for intelligent text processing task in Yuewen Group.
Build an automated generative AI solution evaluation pipeline with HAQM Nova
In this post, we explore the importance of evaluating LLMs in the context of generative AI applications, highlighting the challenges posed by issues like hallucinations and biases. We introduced a comprehensive solution using AWS services to automate the evaluation process, allowing for continuous monitoring and assessment of LLM performance. By using tools like the FMeval Library, Ragas, LLMeter, and Step Functions, the solution provides flexibility and scalability, meeting the evolving needs of LLM consumers.
Build a FinOps agent using HAQM Bedrock with multi-agent capability and HAQM Nova as the foundation model
In this post, we use the multi-agent feature of HAQM Bedrock to demonstrate a powerful and innovative approach to AWS cost management. By using the advanced capabilities of HAQM Nova FMs, we’ve developed a solution that showcases how AI-driven agents can revolutionize the way organizations analyze, optimize, and manage their AWS costs.
The future of quality assurance: Shift-left testing with QyrusAI and HAQM Bedrock
In this post, we explore how QyrusAI and HAQM Bedrock are revolutionizing shift-left testing, enabling teams to deliver better software faster. HAQM Bedrock is a fully managed service that allows businesses to build and scale generative AI applications using foundation models (FMs) from leading AI providers. It enables seamless integration with AWS services, offering customization, security, and scalability without managing infrastructure.
Build multi-agent systems with LangGraph and HAQM Bedrock
This post demonstrates how to integrate open-source multi-agent framework, LangGraph, with HAQM Bedrock. It explains how to use LangGraph and HAQM Bedrock to build powerful, interactive multi-agent applications that use graph-based orchestration.
Racing beyond DeepRacer: Debut of the AWS LLM League
The AWS LLM League was designed to lower the barriers to entry in generative AI model customization by providing an experience where participants, regardless of their prior data science experience, could engage in fine-tuning LLMs. Using HAQM SageMaker JumpStart, attendees were guided through the process of customizing LLMs to address real business challenges adaptable to their domain.
Model customization, RAG, or both: A case study with HAQM Nova
The introduction of HAQM Nova models represent a significant advancement in the field of AI, offering new opportunities for large language model (LLM) optimization. In this post, we demonstrate how to effectively perform model customization and RAG with HAQM Nova models as a baseline. We conducted a comprehensive comparison study between model customization and RAG using the latest HAQM Nova models, and share these valuable insights.
Generate user-personalized communication with HAQM Personalize and HAQM Bedrock
In this post, we demonstrate how to use HAQM Personalize and HAQM Bedrock to generate personalized outreach emails for individual users using a video-on-demand use case. This concept can be applied to other domains, such as compelling customer experiences for ecommerce and digital marketing use cases.