Contact Us

Boosting Efficiency & Modernizing Platforms for Better Predictive Finance

Solution

End-to-end Modernization Roadmap

Altimetrik’s team of practitioners evaluated the existing platform, and in collaboration with the client, co-created a state-of-the-art cloud native architecture with a pluggable core AI engine in Python. The team identified the need for a purpose-built cloud-based architecture with powerful tools and technologies, such as AWS-SageMaker to build and deploy ML models at scale, Snowflake for data warehousing, AI/ ML libraries – guided by advanced data platform architecture principles, and InfoSec prescriptions to deliver the required performance.

This also included transforming the client’s legacy system from R, an aging statistical programming language in which the prediction model was originally written, to the more contemporary and generic Python.

A novel approach was employed to completely integrate and streamline MLOps with CI/CD pipeline to address one of the biggest pain points, i.e., operational complexity and overheads with the legacy AI/ML platform. The client can now trigger processes with a single click to fetch data, process it, and deliver results.

Failures in processes are flagged to the user for remediation. The system incorporates sophisticated resource monitoring with the ability to recover from interrupted or broken processes. The system is metadata-driven and configurable for increased flexibility – unlike the legacy system that lacked consistency and transparency.

The new application and cloud platform combination have been made adaptable and maintainable through well-documented modularization and certified quality standards.

Outcome

Clear separation of data engineering pieces and core data science components for a highly cohesive and de-coupled architecture rendered significant operational ease that enabled the data science team to focus on delivering value-adds instead of regular operations, tracking and maintenance. The new system also shortened the learning curve for new data scientists through well-organized, consistently written, and modularized code.

Resources are now optimally utilized through the combination of system & application-level parallelization along with sophisticated resource monitoring mechanisms.

Altimetrik helped the client achieve:

  • Faster forecasts for the CFO, adding to organizational agility
  • 80% reduction in resources in managing the platform
  • Minimized cost of transformation by using an offshore team with less than 10% dependency on the onshore team
  • Automation reduced human intervention to less than 5%
    Leave a Reply

    Your email address will not be published. Required fields are marked *

    Our expertise
    Before we proceed..

    Altimetrik is committed to protecting your personal information. To apply for a position, you will need to provide your email address and create a login. Your information will be used in accordance with applicable data privacy laws, our Privacy Policy, and our Privacy Notice.

    Explore More