Virtana Patents Full-Stack Cloud Optimization for AI Environments
Model-driven resource mapping, SLO-aware tuning, and real-time cost tracking across AI and hybrid environments
The new patent describes a practical control loop for continuously monitoring cloud applications, building a full-stack application model, mapping performance needs to underlying resources, detecting issues as they emerge, and automatically adjusting the stack to meet service-level objectives (SLOs) while computing per-operation cost in real time.
Why this patent matters for customers:
- SLO adherence with fewer firefights: Proactive detection and targeted adjustments reduce variance and long-tail latency.
- Right-sizing without guesswork: Matches standard and AI-workload needs to resources in real time, eliminating over-provisioning and waste.
- Cost-to-serve transparency: Real-time per-operation cost analysis enables accurate showback/chargeback and better architectural choices across traditional and modern AI environments.
- Faster triage and safer changes: A model-driven approach isolates the tuning layer, reducing the risks posed by broad, manual interventions.
- AI, hybrid, and multi-cloud fit: Works across on-premises and cloud environments for consistent performance and cost governance.
Modern AI services, including LLM inference and fine-tuning jobs, RAG pipelines, vector databases, and GPU-accelerated microservices, introduce volatile loads and complex dependencies. This patent extends Virtana's optimization loop to AI workloads by linking model/service performance to the exact infrastructure required (compute, storage, network, GPUs) and then tuning the right layer at the right time. The same closed-loop records cost as resources are consumed, giving platform teams clear cost-to-serve for AI operations alongside traditional services, so teams can:
- Align LLM latency targets (p95/p99) and vector DB throughput to GPU/CPU, memory, and storage choices.
- Tune RAG and inference pipelines without broad, risky changes—adjusting the narrow layer that drives the bottleneck.
- Identify per-operation AI cost (e.g., per prompt, per embedding, per inference) for comparing models, routes, and deployment options on both performance and spend.
"With a full-stack model and SLO-driven control loop, our platform can adjust the right layer at the right time and capture the cost impact as it happens," said
The invention formalizes a full-stack optimization method that:
- Builds a live application model spanning services, dependencies, and infrastructure.
- Maps performance requirements to resources (compute, storage, network, GPUs, etc.) using that model.
- Detects performance problems early via continuous telemetry and policy thresholds.
- Dynamically adjusts specific layers (application, platform, or infrastructure) to maintain SLOs.
- Calculates real-time aggregate cost for a specified operation as resources are consumed.
"Cloud applications are dynamic systems, and AI makes them even more dynamic. This patent codifies a disciplined way for organizations to be performant and cost-aware by connecting what the app or AI workload needs to what the infrastructure delivers in real time," said
The patented capability underpins optimization workflows in the Virtana Platform and is available as part of ongoing product updates. This patent complements another patent Virtana was recently awarded for priority-aware scheduling and backpressure mechanism that dynamically reorders and resubmits analytic tasks based on real-time resource availability [Virtana Patents Orchestration System for Dynamically Managing AI Analytics Workloads].
The Virtana Platform unifies metrics, logs, traces, events, configurations, and topology into a live dependency model to correlate model performance, user impact, and infrastructure health in real time. Teams monitoring LLM inference, RAG pipelines, vector databases, and GPU utilization alongside traditional services can act with SLO-aware analytics, event intelligence, and cost and capacity governance. Organizations using Virtana Platform reduce MTTR, stabilize SLOs, eliminate tool sprawl, and improve ROI by right-sizing resources instead of overprovisioning. With AI Factory Observability (AIFO), Virtana provides continuous visibility from data ingest to inference, linking performance signals to financial impact so leaders can scale AI reliably and cost-effectively.
About Virtana
Virtana delivers the deepest and broadest observability platform for hybrid and multi-cloud, with full-stack AI observability that spans applications, services, data pipelines, GPUs, CPUs, networks, and storage. Virtana's AI-powered platform provides unmatched visibility across end-to-end IT services and AI workloads – correlating health, performance, cost, and user impact in real time. With high-fidelity data and advanced Event Intelligence, Virtana delivers insights no other provider can match. Trusted by Global 2000 enterprises and public sector organizations, Virtana enables IT operations and DevOps teams to reduce risk, strengthen resilience, improve efficiency, and modernize with confidence across multi-cloud, on-premises, and edge environments. Learn more at virtana.com.
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SOURCE Virtana
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