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title: “C3 AI Reliability Changelog” description: “Version history and changes for the C3 AI Reliability application”
Version 8.8 (March 2025)
New Features
Improvements
Bug Fixes
API Changes
Version 8.7 (November 2024)
New Features
Improvements
Bug Fixes
Version 8.6 (July 2024)
New Features
Improvements
Bug Fixes
Changelog
This content is currently WIP. Diagrams, content, and structure are subject to change.
title: “C3 AI Reliability Changelog” description: “Version history and changes for the C3 AI Reliability application”
This document provides a history of significant changes to the C3 AI Reliability application.
Version 8.8 (March 2025)
New Features
GenAI Integration
: Added natural language processing capabilities for maintenance reports and recommendations
Advanced Time-to-Event Predictions
: Improved algorithms for more accurate failure predictions
Enhanced Visualization Tools
: New dashboards and interactive visualizations for better insights
Multi-sensor Anomaly Detection
: Detect anomalies across multiple sensors simultaneously
Automated Sensor Health Monitoring
: Proactive detection of sensor malfunctions
Improvements
Risk Alert Calculations
: Enhanced algorithms for more accurate risk assessment
Failure Mode Recommendations
: Improved recommendation engine with contextual suggestions
UI Performance
: Optimized dashboard loading and rendering
Data Processing Pipeline
: 40% improvement in data processing efficiency
ML Model Management
: Simplified interface for managing and deploying ML models
Bug Fixes
Fixed issue with alert notifications not being sent in certain scenarios
Resolved data synchronization problems in high-latency environments
Fixed calculation errors in certain edge case scenarios
Addressed UI rendering issues on mobile devices
Corrected time zone handling for global deployments
API Changes
Added new endpoints for GenAI integration
Deprecated legacy alert API endpoints (will be removed in version 9.0)
Enhanced authentication mechanisms for API access
Added rate limiting to prevent API abuse
Improved error handling and response formats
Version 8.7 (November 2024)
New Features
Improved User Interface
: Enhanced dashboards and visualization tools
Advanced Reporting
: Comprehensive exportable reports
Alert Muting
: Ability to mute specific types of alerts
Flagged Anomalous Periods
: Better identification of anomalous time periods
User Recommendations
: Personalized recommendations based on user behavior
Improvements
Risk Alert Calculations
: Refined algorithms for better accuracy
Sensor Data Processing
: Improved handling of noisy sensor data
Performance Optimization
: Faster loading times and response rates
Data Integration
: Enhanced capabilities for integrating with external data sources
Documentation
: Expanded user guides and API documentation
Bug Fixes
Fixed issues with data import from certain file formats
Resolved UI rendering problems on specific browsers
Addressed calculation errors in risk assessment
Fixed notification delivery issues
Corrected timezone handling for scheduled reports
Version 8.6 (July 2024)
New Features
Basic Risk Alert Calculations
: Initial implementation of risk assessment algorithms
Simple Anomaly Detection
: Detection of basic anomalies in sensor data
Standard User Interface
: Initial dashboards and visualization tools
Basic Reporting
: Simple reporting capabilities
Fundamental ML Models
: Initial implementation of machine learning models
Improvements
Data Model
: Enhanced data model for reliability applications
Performance
: Optimized database queries and data retrieval
User Experience
: Improved navigation and workflow
Integration
: Better integration with external systems
Documentation
: Initial comprehensive documentation
Bug Fixes
Addressed issues with data import and export
Fixed calculation errors in basic metrics
Resolved UI rendering issues
Corrected authentication and authorization problems
Fixed scheduling issues for automated tasks
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