
The client faced significant challenges with their existing planning tools, including lengthy simulation run times and manual data management processes. Over the past decade, reliance on a proprietary data science team to manage the outdated platform limited innovation and responsiveness.To streamline operations and free up resources for new projects, the client urgently sought to reduce time-to-predict and enhance responsiveness without disrupting ongoing operations.
Achieve Scalability & Replicability
Ensure the solution can scale to accommodate future growth and be easily replicated across different environments or business units.
Future-Readiness
Develop the solution with an eye toward emerging technologies and industry trends, ensuring it remains relevant and adaptable to evolving needs.
Increase Speed of Delivery
Implement processes and technologies to accelerate the delivery of features and updates, enabling faster response to business requirements.
Facilitate Ease of Experimentation for Large User Base
Design the solution to allow for seamless experimentation and testing, particularly for a large user base, enabling rapid iteration and innovation.
Establish Well-Organized, Consistently Written, and Modularized Code
Ensure the codebase is well-structured, consistently written, and modularized, facilitating easier maintenance, updates, and onboarding of new team members.
Enhance Traceability and Model Tracking for Transparency
Implement mechanisms to track changes and updates to models and data, ensuring transparency and accountability in decision-making processes.
Ensure Compliance and Meeting Security Standards
Adhere to industry regulations and security standards, ensuring the solution is compliant and robust against potential security threats.
Reduce Human Effort & Intervention
Automate repetitive tasks and streamline workflows to minimize manual intervention, improving operational efficiency and reducing human error.
Implement Metadata-Driven and Complete Configurability
Utilize metadata-driven approaches and provide comprehensive configurability options, offering greater flexibility and control over the solution’s behaviour and settings.
Altimetrik practitioners meticulously evaluated the client’s existing platform, collaborating closely to engineer a state-of-the-art cloud-native architecture. This innovative architecture, centered around a pluggable core AI engine developed in Python, was precisely tailored to meet the client’s unique requirements and challenges. Leveraging cutting-edge technologies such as AWS SageMaker for scalable ML model building and deployment, Snowflake for robust data warehousing, and advanced AI/ML libraries, the solution adhered to stringent InfoSec standards to ensure optimal performance and security.
A key aspect of Altimetrik’s intervention was the migration of the client’s legacy system from the outdated R programming language to the more modern and versatile Python, resulting in enhanced flexibility and industry compatibility. Additionally, Altimetrik pioneered a novel approach to integrate and streamline MLOps within a CI/CD pipeline, simplifying operations and empowering the client with one-click process triggering and automated failure detection and remediation. The solution’s metadata-driven and configurable nature provided unparalleled flexibility and transparency, effectively addressing legacy system shortcomings, and significantly enhancing overall efficiency and effectiveness.
Altimetrik’s intervention led to a transformative outcome, establishing a distinct separation between data engineering and core data science components. This architectural refinement streamlined operations, empowering the data science team to focus on value-added tasks rather than routine maintenance. Moreover, the implementation of a well-organized, consistently written, and modularized codebase shortened the learning curve for new data scientists, facilitating quicker onboarding and proficiency.
In summary, Altimetrik’s solution not only addressed immediate challenges but also laid a robust foundation for future scalability and innovation.
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.