Dynatrace Davis
Integrations
- OpenTelemetry
- Kubernetes
- AWS
- Azure
- GCP
- ServiceNow
- Jira
- Ansible
Pricing Details
- Billed via Dynatrace Platform Subscription (DPS) units.
- Consumption is calculated based on Grail data ingestion volume and Davis AI analytic frequency.
Features
- Grail Data Lakehouse Architecture
- Smartscape Topology RCA
- Predictive Capacity Forecasting
- Davis CoPilot (GenAI)
- Agentic Self-Healing Orchestration
- Schema-on-Read Analytics
Description
Dynatrace 2026: Davis Hypermodal AI & Smartscape Topology Review
As of 2026, the Dynatrace Davis architecture has transitioned into a hypermodal framework, unifying causal AI for deterministic troubleshooting, predictive AI for forecasting, and generative AI for natural language orchestration 📑. The engine operates natively atop the Grail Data Lakehouse, which provides a schema-on-read capability that eliminates the need for manual data indexing or pre-defined management of high-cardinality metrics 📑.
Causal AI & Smartscape Dependency Logic
The technical core of Davis is its ability to traverse the Smartscape topology, a real-time vertical and horizontal map of the entire environment. This enables the engine to distinguish between causal triggers and downstream symptoms 🧠.
- Dependency Precision: Unlike probabilistic models, Davis uses the actual process-to-process communication paths captured by OneAgent to validate fault propagation 📑.
- Operational Scenario (Causal RCA): Input: Anomaly detection triggers on service latency + CPU spike on a host + Smartscape topology update → Process: Davis traverses the graph, identifying a recent automated canary deployment as the root node while marking 50 secondary alerts as mere symptoms → Output: A single 'Problem' ticket identifying the specific container image version and deployment ID causing the regression 📑.
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Grail Data Lakehouse & Hypermodal Reasoning
The Grail architecture facilitates the hypermodal transition by providing a unified storage layer for traces, logs, and metrics without data silos. This allow Davis to perform 'cross-context' reasoning across massive datasets at scale 📑.
- Predictive Capacity Management: Davis analyzes seasonal trends and resource consumption rates to forecast potential outages 📑.
- Operational Scenario (Predictive Scaling): Input: 30 days of disk usage metrics + application growth rate + upcoming seasonal event metadata → Process: Predictive AI calculates the exhaustion point (T-minus 48 hours) while the Orchestration layer checks available cloud quotas → Output: Automated expansion of the storage volume or a proactive alert to the SRE lead with a suggested quota increase 📑.
- Davis CoPilot: Acts as the generative interface for the Grail backend, translating natural language into specialized DQL (Dynatrace Query Language) for rapid forensic investigation 📑.
Evaluation Guidance for Platform Architects & SRE Leads
Architects should evaluate the data ingestion costs associated with Grail's high-fidelity storage compared to traditional tiered sampling methods. SRE teams should validate the reliability of the Agentic Orchestrator's self-healing runbooks in non-production environments to establish trust in the hypermodal logic ⌛. Confirm that the 'Davis CoPilot' privacy layer meets internal data masking requirements for log visibility 🌑.
Release History
Year-end update: Release of the Agentic Orchestrator. Davis now autonomously manages multi-cloud deployments and self-healing at scale.
Introduction of Hypermodal AI. Combines Causal, Predictive, and Generative AI for end-to-end SDLC automation.
Davis integrated with Application Security. Proactively blocks zero-day exploits by analyzing anomalous execution patterns in real-time.
Full rollout of Cloud Automation. Davis now triggers automated runbooks to fix identified infrastructure issues without human intervention.
Launched Davis CoPilot. Integration of generative AI for natural language queries and automated dashboard creation.
Introduced Predictive AI features. Davis can now forecast resource exhaustion and traffic spikes, suggesting auto-scaling adjustments.
Initial release of Davis as a core Causal AI engine. Focused on precise root cause analysis (RCA) within Smartscape topology.
Tool Pros and Cons
Pros
- Automated root cause analysis
- Predictive insights
- Faster downtime reduction
- Intelligent anomaly detection
- Improved app performance
Cons
- Dynatrace deployment needed
- Potential cost
- Data-dependent AI accuracy