

As cloud environments and AI adoption accelerate, enterprise digital ecosystems are becoming more complex than ever. Executives are under pressure to harness AI not just for innovation — but for operational reliability at scale.
Yet many organizations are discovering a critical reality: agentic AI alone isn’t enough.
While 65% of enterprises are investing in AI-driven monitoring and automation, what leaders truly need is trusted, AI-powered observability — the foundation required to move from human-driven operations to human-supervised autonomous systems.
At the center of this transformation is Dynatrace Intelligence — an agentic operations system designed to deliver reliable, real-time autonomous action across complex digital environments.
Table of Contents
ToggleExecutive Takeaways
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Dynatrace is architected for real-time autonomous operations while integrating seamlessly into broader AI ecosystems.
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A pioneer in large-scale AI-powered root cause analysis, Dynatrace now evolves from automation to true autonomous action: auto-prevention, auto-remediation, and auto-optimization.
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Dynatrace balances deterministic AI, contextual analytics, and stochastic AI to produce precise answers and reliable actions.
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Dynatrace Intelligence orchestrates built-in and external agents across ecosystems.
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Real-time production feedback loops enable AI engineering, AI operations, and agentic SRE at enterprise scale.
Reducing AI Hallucinations in Agentic Systems
One of the greatest concerns among CTOs building agentic frameworks is hallucination risk in generative AI.
In autonomous systems, hallucinations are not minor errors — they can trigger:
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Service outages
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Security incidents
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Financial exposure
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Cascading operational failures
In agentic workflows, inaccuracies can accumulate across multiple decision steps, amplifying risk.
The Dynatrace Approach: Deterministic First
Dynatrace minimizes hallucination risk by prioritizing deterministic AI — ensuring answers are grounded in real-time production data rather than probabilistic guesses.
The platform continuously observes and enriches context through:
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Real-time dependency graphs
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Production telemetry
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High-performance analytics
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Business and infrastructure context
This approach ensures AI acts on verified facts — not assumptions.
Solving the Data Scale Challenge
Large language models cannot directly process petabytes of heterogeneous observability data. Context windows are finite, and performance degrades when overloaded.
Simply “dumping” massive datasets into AI prompts reduces quality.
The solution? Rapid distillation.
This is where Dynatrace Grail becomes critical.
Real-Time Analytics at Exabyte Scale
Grail unifies observability, security, and business data within a single AI-optimized data lakehouse.
Key capabilities include:
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Exabyte-scale processing
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Metrics, logs, traces, user behavior, and security event ingestion
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Schema-on-read architecture (no indexing overhead)
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Zero-latency, always-hydrated storage
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Any-question, any-time analytics
By distilling vast telemetry into high-quality contextual insights, Grail feeds agents with precise and actionable intelligence.
Instant Visibility Through Dependency Mapping
Complementing Grail is Dynatrace Smartscape, a continuously updated real-time dependency graph.
Smartscape maps:
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Services
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Infrastructure
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Business processes
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Teams
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Ownership structures
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Risk relationships
The newest generation supports custom entities and metadata — allowing teams to instantly understand impact and ownership for rapid remediation.
Together, Grail and Smartscape ensure that AI operates on contextual truth, not fragmented data.
Inside Dynatrace Intelligence
Dynatrace Intelligence acts as the unified intelligence layer within the Dynatrace platform.
It fuses deterministic AI with agentic AI to create a reliable operational core where:
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Humans define goals
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AI executes with guardrails
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Policies ensure compliance
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Context ensures precision
Foundational Deterministic Agents
At its core are foundational agents:
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Root Cause Agent – Powered by deterministic causal AI, delivering precise answers faster than LLM-only methods.
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Analytics Agent – Distills Grail’s data into contextual intelligence.
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Forecasting Agent – Expands predictive insights across environments.
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Operator Agent – Orchestrates and coordinates multi-agent workflows.
These foundational agents power every other domain-specific agent.
Domain-Specific Agentic Capabilities
Built on this foundation are ready-made agents tailored for:
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Development teams
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SRE teams
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Security teams
These agents can:
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Detect anomalies
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Predict incidents
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Identify root causes
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Conduct supplementary investigations
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Generate and execute corrective action plans
This enables:
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Auto-prevention
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Auto-remediation
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Auto-optimization
Real-World Examples
For developers:
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Detects rising mobile app crashes
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Analyzes impacted code paths
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Generates fix recommendations in seconds
For security teams:
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Continuously monitors threats
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Identifies related vulnerabilities
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Enables proactive mitigation before exploitation
Assist Agents simplify platform adoption, while Agentic Workflows allow customers to build custom agents tailored to their needs.
Ecosystem Integration
Dynatrace Intelligence orchestrates bi-directional integration across the broader agentic ecosystem, including:
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Amazon Web Services
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GitHub
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ServiceNow
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Microsoft Azure
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Atlassian
It can:
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Submit tickets
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Trigger coding agents
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Assess deployment risk
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Adjust infrastructure
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Provide incident intelligence
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Deliver business impact analysis
This coordination transforms observability into action.
The Journey to Fully Autonomous Operations
Organizations progress through three maturity stages.
1. Automated
Pre-defined workflows execute automatically based on AI-generated insights.
Key questions:
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Can it be automated?
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Can it be observed?
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Can behavior be understood in real time?
Automation requires observability and testability.
2. Supervised Autonomous
AI generates execution-ready plans with reasoning — humans approve and supervise.
Core principles:
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Reliability – Deterministic AI anchors decisions.
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Transparency – Humans define goals and guardrails.
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Feedback Loops – Real-time validation ensures continuous refinement.
Organizations typically adopt a crawl–walk–run approach, beginning with repetitive, well-bounded tasks.
3. Fully Autonomous
In this future state, Dynatrace Intelligence independently fulfills business objectives, requesting human input only when required.
Even in this stage:
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AI continuously observes itself
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Compliance is maintained
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Humans refine goals and strategies
The result:
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Higher resilience
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Lower operational cost
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Improved customer experience
A New Standard for AI-Powered Observability
The fusion of deterministic AI and agentic AI sets Dynatrace apart.
It is AI that:
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Observes production systems
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Observes other AI systems
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Acts on real-time facts
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Reduces hallucinations
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Enables resilient autonomous operations
Dynatrace Intelligence is not just automating workflows — it is redefining how enterprises design, operate, and optimize digital ecosystems.
From human-driven operations to trusted autonomous systems — this is the next evolution of enterprise AI.
If you’d like, I can also convert this into:
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A C-suite executive summary (1-page brief)
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A thought-leadership LinkedIn article
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A product launch press release version
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Or a shorter website landing page format

