Our Services

MLOps & DataOps

As part of our MLOps & DataOps service, we develop and deploy automated pipelines for data processing, model training and model deployment. We set up tools for proactive monitoring of data jobs, ML models, analysing data drifts, and analysing predictive accuracy.

Application Support

Application Support

Application support teams not only keep your company’s apps working their best but also play a pivotal role in keeping the internal and external users happy with their experience of using the apps. Software applications are never free of bugs or technical glitches. When end-users encounter any bugs or issues, application support team are the first line of support to assist end-users in completing their tasks.

Our Application support service covers the practices and disciplines of supporting the Data Management Systems, Analytics Platforms, Reporting Applications, and ML Models in Production environment which are currently being used by the end users. We’ll act as an extension of your IT team, providing Application Support as-a-managed-service that’s tailored to your business needs.

  • Incident management and response
  • Assisting end-users in using the application and answering their queries
  • Monitoring and alerting for problems and performance issues
  • Deploying centralized logging
  • Troubleshooting for deployment, capacity, connectivity, resources, and function
  • Management of applications & platform configurations
  • Coordination of changes and service requests
  • Feedback to development teams for application bugs and glitches
  • Application documentation
Operations Support

Operations Support

DataOps practice improves communication, integration, and automation of data flows between data managers and consumers across the company. We can optimize the DataOps, so your business can deliver relevant and high-quality data to internal stakeholders and customers.

MLOps practice enables continuous deployment and maintenance of ML models in production reliably. MLOps methodology includes a process for streamlining model training, packaging, validation, deployment, and monitoring. This way you can run ML projects consistently from end-to-end.

  • Deployment pipelines are automated
  • Data pipelines are neatly integrated for filtering, masking and cleansing
  • Data is prepared periodically for a new training round
  • Manage configurations, resources, and provisioning for training and production deployment
  • Setting up tracking and versioning for experiments and model training runs
  • Setting up the deployment and monitoring pipelines for the models that do get to production