Artificial Intelligence

Vikesh Pandey

Author: Vikesh Pandey

Introducing SageMaker Core: A new object-oriented Python SDK for Amazon SageMaker

Introducing SageMaker Core: A new object-oriented Python SDK for Amazon SageMaker

In this post, we show how the SageMaker Core SDK simplifies the developer experience while providing API for seamlessly executing various steps in a general ML lifecycle. We also discuss the main benefits of using this SDK along with sharing relevant resources to learn more about this SDK.

Amazon SageMaker simplifies the Amazon SageMaker Studio setup for individual users

Today, we are excited to announce the simplified Quick setup experience in Amazon SageMaker. With this new capability, individual users can launch Amazon SageMaker Studio with default presets in minutes. SageMaker Studio is an integrated development environment (IDE) for machine learning (ML). ML practitioners can perform all ML development steps—from preparing their data to building, […]

Use generative AI foundation models in VPC mode with no internet connectivity using Amazon SageMaker JumpStart

With recent advancements in generative AI, there are lot of discussions happening on how to use generative AI across different industries to solve specific business problems. Generative AI is a type of AI that can create new content and ideas, including conversations, stories, images, videos, and music. It is all backed by very large models […]

Access private repos using the @remote decorator for Amazon SageMaker training workloads

As more and more customers are looking to put machine learning (ML) workloads in production, there is a large push in organizations to shorten the development lifecycle of ML code. Many organizations prefer writing their ML code in a production-ready style in the form of Python methods and classes as opposed to an exploratory style […]

Anomaly detection with Amazon SageMaker Edge Manager using AWS IoT Greengrass V2

Deploying and managing machine learning (ML) models at the edge requires a different set of tools and skillsets as compared to the cloud. This is primarily due to the hardware, software, and networking restrictions at the edge sites. This makes deploying and managing these models more complex. An increasing number of applications, such as industrial […]

Build, train, and deploy Amazon Lookout for Equipment models using the Python Toolbox

Predictive maintenance can be an effective way to prevent industrial machinery failures and expensive downtime by proactively monitoring the condition of your equipment, so you can be alerted to any anomalies before equipment failures occur. Installing sensors and the necessary infrastructure for data connectivity, storage, analytics, and alerting are the foundational elements for enabling predictive […]

Deploy multiple serving containers on a single instance using Amazon SageMaker multi-container endpoints

Amazon SageMaker is a fully managed service that enables developers and data scientists to quickly and easily build, train, and deploy machine learning (ML) models built on different frameworks. SageMaker real-time inference endpoints are fully managed and can serve predictions in real time with low latency. This post introduces SageMaker support for direct multi-container endpoints. […]

Human-in-the-loop review of model explanations with Amazon SageMaker Clarify and Amazon A2I

Domain experts are increasingly using machine learning (ML) to make faster decisions that lead to better customer outcomes across industries including healthcare, financial services, and many more. ML can provide higher accuracy at lower cost, whereas expert oversight can ensure validation and continuous improvement of sensitive applications like disease diagnosis, credit risk management, and fraud […]