How Xcelore Built a Scalable & Secure AI Agent for Pythag with AWS

Table of Contents
Pythag with AWS

Introduction

PythagTech, a US-based innovator in cultivated meat production, set out to accelerate its AI-driven R&D engine. To achieve this, they needed an AI agent capable of processing sensitive biotech data, scaling with research demands, and ensuring compliance in a regulated industry.

That’s where Xcelore stepped in. As specialists in AI agent development, we partnered with AWS to build a cloud-native solution that could support Pythag’s mission—bringing cultivated meat innovation to market faster and more efficiently.

The Challenge

Pythag operates at the intersection of biotechnology and AI, where speed, accuracy, and collaboration are essential. However, they faced several roadblocks that limited research productivity:

  • Inefficient data analysis slowed down decision-making, causing delays in concluding experiments.
  • Lack of collaboration tools made it difficult for researchers to share insights and coordinate effectively, thereby reducing overall productivity.
  • Delayed access to critical insights prevented rapid responses to emerging research findings and market opportunities.
  • Slow development cycles impacted competitiveness and limited their ability to innovate quickly.

Traditional infrastructure would not meet these demands. Xcelore needed a cloud foundation that offered agility, automation, and enterprise-grade security—AWS was the clear choice.

The Xcelore Approach, Selectively AWS

To address Pythag’s challenges, Xcelore built a cloud-native AI agent that integrated seamlessly into their biotech workflows. We chose the AWS Ohio region to ensure low latency for US operations and compliance with local regulations.

By combining AWS’s managed services with our AI expertise, we created an infrastructure that was:

  • Flexible with Fargate for containerized workloads and Amplify for front-end applications.
  • Responsive through event-driven automation using Lambda, SNS, and SES.
  • Secure & Compliant with VPC isolation, KMS encryption, CloudTrail auditing, and Secret Manager.
  • Collaborative & Scalable via S3 storage, CloudFront delivery, and RDS (PostgreSQL) for reliable data handling.
  • Agile with CI/CD pipelines (CodePipeline, CodeDeploy, CodeBuild), enabling rapid updates without downtime.

This architecture allowed Pythag’s researchers to analyze data faster, collaborate more effectively, and shorten development cycles—all while maintaining strict data security.

Business Outcomes & Impact

Through AWS, Xcelore delivered an AI agent that transformed how Pythag approaches cultivated meat research:

  • 40% reduction in data analysis time, leading to researchers spending significantly less time manually searching and processing data.
  • Facilitated by centralized knowledge access and shared insights, a 30% increase in cross-team collaboration.
  • With 50% faster access to critical insights, decision-making in the cultivated meat development pipeline accelerated.
  • Automation drastically cuts down the time needed to compile comprehensive reports, resulting in a 70% improvement in report generation efficiency.

Conclusion

By combining Xcelore’s AI expertise with the robust AWS cloud ecosystem, Pythag now leverages an AI agent that is future-ready—scalable, secure, and built to support breakthrough innovation in cultivated meat production. 

Xcelore built the intelligence, while AWS made it scalable, and Pythag reaped the innovation.

Share this blog

Tags

What do you think?

Contact Us Today for
Inquiries & Assistance

We are happy to answer your queries, propose solution to your technology requirements & help your organization navigate its next.

Your benefits:
What happens next?
1
We’ll promptly review your inquiry and respond
2
Our team will guide you through solutions
3

We will share you the proposal & kick off post your approval

Schedule a Free Consultation

Related articles

Representational image of CICD pipeline
Uncategorized

What is CI/CD Pipeline? and How it works?

In the ever-evolving landscape of software development, the implementation of Continuous Integration (CI) and Continuous Deployment (CD) which is part of DevOps has become pivotal in reshaping the traditional paradigms

Read More »
Uncategorized

Quantization in LLM

With the growing demand for LLMs and AI ML services, research efforts have focused on finding ways to make these models more efficient and accessible for industries across all domains.

Read More »