Katonic 4.0 (May 2023)
This release provides New features, new UI and enhancements.
New Features and Enhancements:โ
Enhanced, user-centric Interface: We have improved the user interface to provide a more intuitive and user-friendly experience.
Katonic Studio's emphasis on no-code environment with bespoke components: Our platform now supports a no-code environment, allowing users to create custom applications using pre-built components.
Integration with distributed environments like Dask and Spark: We have integrated with Dask and Spark, enabling distributed computing capabilities for improved performance and scalability.
Custom model deployment feature: Users can now deploy any previously developed model using our custom model deployment feature.
GPU integration for model deployment: We have added support for GPU integration, allowing users to deploy models using GPU acceleration for faster inference.
Git Integration for model deployment: Our platform now integrates with Git, enabling version control and seamless deployment of models from Git repositories.
Revamped automation for monitoring Classification, Regression, Audio, Image, and NLP models: We have enhanced the automation capabilities for monitoring various types of models, providing comprehensive insights into model performance.
Deployment of models and apps with auto-scaling feature: Users can now deploy models and apps with auto-scaling capabilities, optimizing resource allocation based on demand.
Improved model monitoring mechanisms: We have implemented improvements to the model monitoring mechanisms, enabling better tracking and analysis of model performance.
Workspace equipped with GPU integration: The workspace now supports GPU integration, allowing users to perform computationally intensive tasks efficiently.
Responsible AI implementation via Explain IT: We have introduced Explain IT, which promotes responsible AI practices by providing explanations for model decisions.
Successful benchmarking over CPU/GPU on 100GB data using Nvidia RAPID integration: Our platform has undergone successful benchmarking, demonstrating its performance over CPU and GPU using Nvidia RAPID integration.
Resolved Spark integration with Kubernetes pipeline: We have resolved issues related to Spark integration with the Kubernetes pipeline, ensuring smooth collaboration between the two.
Integration with Snowflake: Our platform now integrates with Snowflake, expanding data connectivity and enabling advanced analytics and data science workloads.
Augmented alert system for Node, Pod, and PVC: We have enhanced the alert system to provide real-time notifications for critical events related to Node, Pod, and PVC.
Google Cloud Platform (GCP) integration: Users can now integrate our platform with Google Cloud Platform, leveraging its services and resources for seamless deployments.
Integration with Airbyte Connectors: We have integrated our platform with Airbyte Connectors, simplifying data ingestion and integration from various sources.
Katonic Visualise - integration with customized Superset: We are excited to introduce "Katonic Visualise," our integration with a customized Superset, empowering advanced data visualization capabilities.
Upgraded user interface for File Manager: The user interface of the File Manager has been upgraded, improving usability and efficiency.
Revamped user interface for Model Experiment: We have redesigned the user interface for Model Experiment, providing a more seamless and intuitive experience.
Updated Accelerator with more use-cases: The Accelerator now includes an expanded set of use-cases, offering more options to accelerate workflows.
Kubernetes version upgrades: We have upgraded the Kubernetes version to ensure compatibility and take advantage of new features and improvements.
Platform installation script updated for various platform categories: The platform installation script has been updated for different platform categories, including Enterprise (MLOps), deploy, data scientist, Business IQ, workspace, and custom installations.
Backup automation integrated with platform installation: We have integrated backup automation into the platform installation process, ensuring data safety and reliability.
Integration of GCP: We have added integration with Google Cloud Platform, expanding deployment options and enabling seamless access to GCP services.
Customized GPU and deployment node pools to segregate production deployment: Users can now customize GPU and deployment node pools to segregate production deployments, improving resource management and allocation.
Connector and Superset integration: Our platform now seamlessly integrates with connectors and Superset, expanding data connectivity and advanced visualization capabilities.
Bug Fixesโ
- Bug fixes and enhanced installation: We have addressed reported bugs and made improvements to the installation process, ensuring a smoother experience.