AWS Partner Network (APN) Blog
Category: Intermediate (200)
Trellix uses AWS GenAI for Cybersecurity Integration
This blog highlights the approach Trellix took to accelerate the development and testing of product integrations and automated rules development. Using agentic AI methodology, Trellix is able to save over 40 hours of development time per integration resulting in a 90% reduction time to market. Trellix used Amazon Bedrock, LangChain, and Anthropic Claude in this effort.
Privacy-Preserving for Federated Learning with TII PetalGuard on AWS
Technology Innovation Institute (TII), an AWS Partner in the Middle East, advances privacy-preserving AI with their enhanced Federated Learning solution, PetalGuard. The solution enables organizations to collaborate on AI model development while maintaining strict data privacy and regulatory compliance. Learn how PetalGuard this development exemplifies TII’s position as a leading technology innovator in the Middle East and demonstrates the value of our strategic collaboration in delivering cutting-edge solutions for privacy-preserving AI development.
Appian AI Copilot Transforms Low-Code Development with Amazon Bedrock
Explore how Appian’s AI Copilot, powered by Amazon Bedrock is built directly into the Appian platform to assist both business users and developers in common tasks. For business users, AI CoPilot enables conversational data interaction through Records Chat feature, to help find patterns and trends from real-time data, and provides quick access to business specific documents through the Enterprise Copilot. Whereas, for developers, AI Copilot accelerates application development by assisting in requirements gathering to data modeling, UX design and object generation, while also automating test case creation and generating realistic sample data for testing.
Maximize Real World Data Value with Panalgo on AWS
Life sciences organizations invest significantly in real-world data (RWD), yet face persistent challenges in turning these investments into actionable insights. Panalgo’s IHD Cloud platform on AWS addresses these challenges by deploying advanced analytics capabilities directly within customers’ secure environments. Through this approach, organizations have reduced analysis time from months to days while maintaining strict data security and regulatory compliance standards.
Lowering customer acquisition cost with Moneythor on AWS
Learn how Moneythor’s solution on AWS lowers customer acquisition cost and increases customer engagement through personalization and gamification in financial services by leveraging Amazon EKS, Amazon RDS and Amazon Bedrock.
Build real-time data lakes with Snowflake and Amazon S3 Tables
Learn how to build scalable, real-time data lakes by combining Amazon S3 Tables with Snowflake integration. This solution enables efficient streaming data ingestion and analysis while automatically managing table optimization and maintenance. Discover how manufacturing companies can leverage this architecture to transform IoT sensor data into actionable insights, combining operational analytics with predictive maintenance capabilities. The integration between S3 Tables and Snowflake, along with SageMaker Lakehouse’s Iceberg REST endpoint, creates a robust foundation for streaming analytics that can handle high-volume data streams while maintaining performance and security.
Building the future of Customer Engagement with MoEngage and AWS
In today’s rapidly changing digital landscape, brands face challenges in delivering consistent personalized customer engagement across multiple communication channels. Discover how the integration between MoEngage’s platform, a leader in marketing analytics and journey orchestration with AWS Communication Developer Services (CDS) enables brands to create seamless and consistent customer experiences through personalized messaging.
Running GenAI Inference with AWS Graviton and Arcee AI Models
The growing demand for generative AI (GenAI) applications has led to a corresponding demand for compute resources that can run these workloads efficiently. In this post we share a step-by-step guide for optimizing GenAI inference workloads using AWS Graviton-based instances. We walk you through downloading Arcee AI SLMs, applying quantization techniques, and deploying models for efficient inference on AWS Graviton instances.
Streamline Unified Data Governance with AWS Lake Formation and Dremio
Data governance becomes increasingly important for Customers building large data lakes on Amazon Web Services (AWS) to democratize their access to data. AWS Lake Formation provides fine-grained data access permissions for AWS services like Amazon Redshift, Amazon Athena, and Amazon EMR. Dremio supports AWS Lake Formation data governance framework to create a consistent governance model for enterprise customers.
How to strengthen Cloud Security with Pulumi ESC and AWS Secrets Manager
Modern organizations face challenges managing secrets across multiple environments, leading to security risks and operational complexities due to secrets sprawl across various storage locations and systems. Pulumi ESC provides a comprehensive solution by acting as a secure broker between applications and secrets providers, offering centralized control, robust Role-Based Access Control (RBAC), and seamless integration with cloud services like AWS Secrets Manager and Systems Manager Parameter Store, ultimately helping organizations enhance security while maintaining developer productivity.