List of Sagify Integrations
This is a list of platforms and tools that integrate with Sagify. This list is updated as of May 2026.
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Amazon Web Services (AWS) is a global leader in cloud computing, providing the broadest and deepest set of cloud capabilities on the market. From compute and storage to advanced analytics, AI, and agentic automation, AWS enables organizations to build, scale, and transform their businesses. Enterprises rely on AWS for secure, compliant infrastructure while startups leverage it to launch quickly and innovate without heavy upfront costs. The platform’s extensive service catalog includes solutions for machine learning (Amazon SageMaker), serverless computing (AWS Lambda), global content delivery (Amazon CloudFront), and managed databases (Amazon DynamoDB). With the launch of Amazon Q Developer and AWS Transform, AWS is also pioneering the next wave of agentic AI and modernization technologies. Its infrastructure spans 120 availability zones in 38 regions, with expansion plans into Saudi Arabia, Chile, and Europe’s Sovereign Cloud, guaranteeing unmatched global reach. Customers benefit from real-time scalability, security trusted by the world’s largest enterprises, and automation that streamlines complex operations. AWS is also home to the largest global partner network, marketplace, and developer community, making adoption easier and more collaborative. Training, certifications, and digital courses further support workforce upskilling in cloud and AI. Backed by years of operational expertise and constant innovation, AWS continues to redefine how the world builds and runs technology in the cloud era.
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Aporia
Aporia
Empower your machine learning models with seamless monitoring solutions.Create customized monitoring solutions for your machine learning models with our intuitive monitor builder, which alerts you to potential issues like concept drift, decreases in model performance, biases, and more. Aporia seamlessly integrates with any machine learning setup, be it a FastAPI server on Kubernetes, an open-source solution like MLFlow, or cloud services such as AWS Sagemaker. You can dive into specific data segments to closely evaluate model performance, enabling you to detect unexpected biases, signs of underperformance, changing features, and data integrity problems. When your machine learning models encounter difficulties in production, it's essential to have the right tools to quickly diagnose the root causes. Beyond monitoring, our investigation toolbox provides an in-depth analysis of model performance, data segments, statistical information, and distribution trends, ensuring you have a comprehensive grasp of how your models operate. This thorough methodology enhances your monitoring capabilities and equips you to sustain the reliability and precision of your machine learning solutions over time, ultimately leading to better decision-making and improved outcomes for your projects.
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