[ AI INFRASTRUCTURE ]

Maestro

Multi-Agent Orchestration Platform

A vendor-neutral runtime for composing multi-step AI workflows. Visual designer, pluggable integrations, real-time monitoring.

Maestro

Domain

AI INFRASTRUCTURE

Status

Internal accelerator, deployable in client engagements

Use when

Clients want to compose multi-step AI workflows without committing to a single vendor's agent runtime.

Reference

Available for new engagements

01

The problem

The agent runtime market in 2026 is a moving target. Every vendor has a story; few have a portable workflow surface. Customers building multi-step agentic processes find themselves either coupled to a single runtime or stuck wiring their own orchestration layer from scratch.

02

The approach

MADs is a runtime-neutral orchestration platform. Workflows are designed visually and stored as portable graphs. Each step in the graph can be a built-in agent, an external LLM call (OpenAI, Anthropic, Vertex AI), a custom HTTP or gRPC endpoint, a message-queue dispatcher, or a webhook trigger. The orchestrator coordinates execution and emits real-time monitoring data to the dashboard.

03

The architecture

A Flask backend exposes the workflow API and runtime. A React 18 frontend hosts the visual workflow designer and the live monitoring dashboard. The agent registry holds built-in agents (Echo, Research, Data Analysis, Content Generation, Workflow Automation) plus pluggable adapters for external services. Integration support spans OpenAI GPT-4 and 3.5, Anthropic Claude (REST), Google Vertex AI (Cloud SDK), custom HTTP/gRPC endpoints, Redis/RabbitMQ/Kafka message queues, and webhook triggers. Workflows persist as JSON graphs that can be exported, versioned, and replayed.

04

The outcome

Customers compose multi-step workflows without committing to a single agent runtime. The same workflow definition can route LLM calls to different vendors per step, depending on cost, latency, or capability. When the runtime market shifts (and it will), the workflow does not have to.

[ ATI SHAPE ]

Predictive intelligence

ML modules attach to workflow steps via tool calls; predictive components stay first-class

Agentic execution

Multi-agent runtime with workflow orchestration, agent registry, and built-in coordination

Secure data

Integration layer respects the client data perimeter; runtime can run inside the customer cloud

Actionable outcomes

Workflow execution against client systems via HTTP, gRPC, queues, and webhooks

[ TECH STACK ]

Flask Python 3.11 React 18 Vendor-neutral LLM adapters Redis RabbitMQ Kafka Webhooks

[ IMPACT ]

Vendor-neutral

No agent runtime lock-in

Visual

Drag-and-drop workflow designer

Real-time

Live monitoring of every workflow step

Pluggable

OpenAI, Anthropic, Vertex AI, custom HTTP/gRPC

[ NEXT STEP ]

See Maestro in your data.

[ READY FOR YOUR STORY? ]

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