LogicMonitor announced that the company is bridging the AIOps gap with the
launch of Dexda, an AI
solution for Hybrid Observability.
Using
machine learning and Natural Language Processing (NLP) to automate insights and
deliver a contextualized experience, LogicMonitor's Dexda empowers ITOps teams
to effortlessly identify problems, determine the root cause of those problems
faster than ever before, and prevent events from exploding into
business-critical incidents.
"Being on the
bleeding edge of technology requires shifting the organizational mindset from
reactive responses to proactive insights, getting comfortable with humans
leveraging machines for greater agility and innovation," said Christina
Kosmowski, CEO, LogicMonitor. "Our users crave superior anomaly detection,
predictive analytics, and intelligent alerting - where we are best in class.
Dexda is the latest step in the evolution of our AIOps technologies. Now, we
are advancing Generative AI for solving customer challenges, making
LogicMonitor even more user-friendly as a co-pilot."
LogicMonitor's Powerful AI Capabilities
Without
the superior real-time data access LogicMonitor provides, the journey from
hybrid observability to AIOps can't happen. Based on LogicMonitor's Future Further research report, 50% of IT leaders doubt the readiness of
their IT infrastructure for AI. With Dexda, LogicMonitor offers:
- Robust AI
capabilities through the application of sophisticated algorithms on
historical and real-time data to provide purpose-built, layered
intelligence for faster resolutions. LogicMonitor first introduced AI into
its platform with its LM Intelligence feature within the LM Envision platform.
- Using AI machine
learning, LM Intelligence acts as an "early warning system" for IT and
Cloud operations by providing dynamic thresholding, anomaly detection,
forecasting and more, empowering teams to reach a significantly lower mean
time to resolution (MTTR) and reduce risks to the business.
With
the right insights, ‘man and machine' can learn to work together to orchestrate
a comprehensive, context-rich view of a business' infrastructure. This
context-rich view combined with automation results in thriving AIOps and
ultimately a transformed company culture.
Dexda Facilitates the AIOps Leap
Dexda
ingests events from LM Envision to transform them into contextualized insights.
The advanced machine learning techniques automatically correlate data to
identify and alert based on time, resources, and pattern disruption. Dexda
users can resolve critical issues faster than their competitors with these
capabilities:
- Reduced Alert
Noise - Advanced
machine learning techniques, contextual enrichment capabilities, and
deduplication efforts filter through thousands of daily events to produce
succinct alerts for the most critical incidents, and drive down MTTR
- ServiceNow Ready - Includes a seamless
bi-directional integration with ServiceNow Incident module to fit
correlated insights into standard IT workflows. ServiceNow CMDB data
automatically enriches Dexda alerts to drive additional context for alert
correlations
- Adaptive
correlation -
Avoid delays in escalating insights to ServiceNow by automatically
re-clustering alerts into new insights when a more optimal clustering
option is found
- Extensible
correlation -
Customizable user-defined correlation models target both the alert and
enriched CMDB data, based on what makes sense for the business
- MSP Ready - Now supports multi-tenancy with
correlations scoped to each tenant
Dream Destination: Intelligence at the Edge
"While
some organizations have been using AI-powered capabilities in IT operations for
several years, increasingly sophisticated applications of AI are emerging that
have the potential for notable impact when it comes to solving problems in
complex technology environments," said Nancy Gohring, research director for
IDC's Enterprise System Management, Observability and AIOps program. "Some of
the capabilities that are key to enabling much faster time to resolution
include intelligent data correlation, context awareness and smart adoption of
automation techniques."