AWS Cloud Operations Blog
Category: Amazon Bedrock
Streamlining the Correction of Errors process using Amazon Bedrock
Generative AI can streamline the Correction of Errors process, saving time and resources. By using generative AI to leverage large language models, combined with the Correction of Errors process, businesses can expedite the identification and documentation of the cause of errors, while saving time and resources. Purpose and set-up The purpose of this blog is […]
Scaling AWS Control Tower controls using Amazon Bedrock Agents
AWS Control Tower is the easiest way to set up and govern a security, multi-account AWS environment. A key feature of AWS Control Tower is to deploy and manage controls at scale across an entire AWS Organizations. These controls are categorized based on their behavior and guidance. The behavior of each control is one of […]
Enable cloud operations workflows with generative AI using Agents for Amazon Bedrock and Amazon CloudWatch Logs
Amazon Bedrock is a fully managed service that offers a choice of high-performing foundation models (FMs) from leading AI companies like AI21 Labs, Anthropic, Cohere, Meta, Mistral AI, Stability AI, and Amazon through a single API, along with a broad set of capabilities you need to build generative AI applications with security, privacy, and responsible […]
Getting insights from Amazon Managed Service for Prometheus using natural language powered by Amazon Bedrock
As applications scale, customers need more automated practices to maintain application availability and reduce the time and effort spent detecting, debugging, and resolving operational issues. Organizations allocate money and developer time to deploy and manage various monitoring tools, while also dedicating considerable effort to training teams on their usage. When issues arise, operators navigate through […]
Using Generative AI to Gain Insights into CloudWatch Logs
Have you ever been investigating a problem and opened up a log file and thought “I have no idea what I am looking at. If only I could get a summary of the data.” Observability and log data play an important role in maintaining operational excellence and ensuring the reliability of your applications and services. […]
Improve Amazon Bedrock Observability with Amazon CloudWatch AppSignals
With the pace of innovation with Generative AI applications, there is increasing demand for more granular observability into applications using Large Language Models (LLMs). Specifically, customers want visibility into: Prompt metrics like token usage, costs, and model IDs for individual transactions and operations, apart from service-level aggregations. Output quality factors including potential toxicity, harm, truncation […]
Respond to CloudWatch Alarms with Amazon Bedrock Insights
Overview When operating complex, distributed systems in the cloud, quickly identifying the root cause of issues and resolving incidents can be a daunting task. Troubleshooting often involves sifting through metrics, logs, and traces from multiple AWS services, making it challenging to gain a comprehensive understanding of the problem. So how can you streamline this process […]
Planning Migrations to successfully incorporate Generative AI
The recent rise of generative artificial intelligence (generative AI) solutions presents challenges to migrations that are in flight and to migrations that are just beginning. The business problem is that generative AI complicates cloud migrations by introducing additional risks related to data isolation, data sharing, and service costs. For example, the US Space Force has […]
Modernizing Account Management with Amazon Bedrock and AWS Control Tower
Introduction The integration of Generative AI into cloud governance transforms AWS account management into a more automated and efficient process. Leveraging the generative AI capabilities of Amazon Bedrock alongside tools such as AWS Control Tower and Account Factory for Terraform (AFT), organizations can now expedite the AWS account setup and management process, aligning with best […]
Automate the creation of AWS Support cases using Amazon CloudWatch alarms and Amazon Bedrock
For production applications, the Mean-Time-To-Recovery (MTTR) is critical. In line with this, AWS offers Business, Enterprise On-Ramp and Enterprise support plans where AWS customers can benefit from shorter response time for cases related to production and business critical workloads. However, without having an automated way to notify AWS support, creating a case is a manual […]