Resolving performance issues faster with AI, ML, and real-time analytics
Becoming more efficient in addressing the time spent on troubleshooting and root cause analysis is more difficult with the emergence of more dynamic complex environments with more volume, variety, and data velocity.
IT Operational challenges:
- IT/network complexity is outpacing human capabilities
- Traditional siloed operations limits organizational intelligence
- Operational issues heighten managing and integrating large, complex data sets
- Legacy can’t keep up with the rapid growth in data volumes and the pace of change
- Operational costs are accelerating
Real Business Value Delivered to Vitria
AIOps Customers
Measurable KPI Improvement with VIA AIOps
End-to-End Service Assurance with VIA AIOps
VIA transforms incident management, application monitoring, application performance management, network monitoring, and network performance management through process automation and augmented intelligence
VIA AIOps Features
Learn more about VIA AIOps key features by clicking the feature icons.
- Scales to billions of analyzed data points
- Supports mission critical applications reliably
- Enables integration with existing service management and monitoring systems
- Built on best of breed open-source tools – HDFS, Kafka, Spark, Druid…
- Graphical lo-code development
- Hundreds of AI Algorithms
- Generative AI
- Knowledge Graph
- Operationalized AI at scale
- Accepts metrics, logs, event and trace data
- Ingests data via native connectors from applications, network and monitoring tools
- Onboards raw data in standard and non-standard formats
- Collects and runs data in cloud-native environments from a wide range of sources
- Ingests never before seen data in less than one hour with VIA’s Streaming Onboarding
- Does not require data to fit a specific data model or data specifications
- Eliminates the development of thousands of lines of code to ingest and parse data sets
- Automates the preparation and capture of MIB data for use in fault and performance management
- Supports historical event, diagnostics, and action data, as well as customer support data
- Ingest and aggregate metrics/events
- Contextualize and correlate
- Reduce noise and detect signals
- Group signals into incidents and prioritize
- Evaluation of severity, impact and causation
- Notify and take AI action
- Creates comprehensive ontology and topology through learned and taught application and service dependencies
- Supervised and unsupervised learning for detection, correlation, and probable cause
- Generative AI for Chatbots, recommended next steps, and explanations
- Agent framework for complex use case implementation
- Full ecosystem observability across infrastructure, application, network, and service
- Service experience impact identification from planned changes
- User-created AIOps actions for automation with human-in-the-loop validation
- Flexible, user-created “Mashboards”