System · Services Active
[ SERVICES ]

Enterprise AI Services That Go Beyond Tools

We design and build AI systems that integrate with your infrastructure, data, and operations. From architecture strategy to production deployment, Invisigent delivers AI systems built on LangGraph, Pinecone, FastAPI, and your existing stack — not a proprietary platform you'll be locked into forever.

Not Tools. Systems.

Most AI vendors sell tools, dashboards, or wrappers.

Invisigent builds infrastructure — the systems that connect models, data, and workflows into something your organization can actually run.

No fragile demos.
No vendor lock-in.
No disconnected automation.

Only systems designed for production.

Built on: LangGraph · LangSmith · OpenAI API · Cohere · Pinecone · n8n · FastAPI · Node.js · MongoDB · Docker

[ CORE SERVICES ]

Seven Ways We Help

Each engagement starts with a specific problem.
Here is what we do about it.

[ AI STRATEGY CONSULTING ]
When you need it

You don't know where AI fits in your business or what to build first.

What we do

We design your AI roadmap, infrastructure strategy, and architecture direction aligned with your actual business constraints — not a generic AI adoption template. We identify where multi-agent systems make sense vs. where a simpler pipeline will outperform them.

Outcome

A clear, executable architecture plan — documented, prioritized, and ready to build.

[ AGENTIC ORCHESTRATION ]
When you need it

You want AI systems that automate real workflows, not just generate outputs.

What we do

We build multi-agent systems using LangGraph with LangSmith observability throughout. Supervisor agents, specialist subagents, shared memory layers, tool-calling pipelines — the full orchestration stack, designed for production reliability and full decision traceability. Built with LangGraph state machines, full LangSmith observability, and defined failure recovery — not just connected API calls.

Outcome

End-to-end automation where AI systems run workflows autonomously — not just assist them. Every decision logged and replayable.

[ RAG KNOWLEDGE SYSTEMS ]
When you need it

Your AI needs access to internal data, documents, or knowledge bases.

What we do

We design retrieval pipelines using Pinecone vector stores, Cohere re-ranking, and chunking strategies tuned for your document types — PDFs, databases, internal wikis, or structured data. Built with sub-3-second retrieval targets and hybrid search for accuracy at scale. Pinecone vector retrieval with hybrid search, reranking layers, and retrieval trace logging — not a chatbot wrapper over your documents.

Outcome

Context-aware AI responses grounded in your internal data — accurate, fast, and hallucination-resistant.

[ AI PERFORMANCE OPTIMIZATION ]
When you need it

Your AI system is slow, expensive, or unreliable in production.

What we do

We audit your current AI system architecture, identify the bottlenecks — inference latency, over-retrieval, redundant API calls, cold-start delays — and redesign the pipeline for production-grade speed and cost efficiency. We also design caching layers that reduce repeat inference costs significantly.

Outcome

AI systems that perform under real production load — faster responses, lower operating costs, and infrastructure that scales without degrading.

[ AI-NATIVE PRODUCT DEVELOPMENT ]
When you need it

You want to build an AI-first product, copilot, or intelligent platform.

What we do

We design and develop AI-first products using FastAPI or Node.js/Express backends, MongoDB for operational data, and Docker for portable deployment. AI is embedded into the product's core logic — not bolted on as a feature after the product was already built without it.

Outcome

AI-powered products with embedded intelligence, automated internal workflows, and production-grade infrastructure built for scale.

[ COMPLIANCE-READY AI SYSTEMS ]
When you need it

You are deploying AI in regulated or enterprise environments where governance matters.

What we do

We build AI systems with governance designed into the architecture from day one — not retrofitted at deployment. This means: data residency controls at the vector store layer, RBAC from the first sprint, audit logs that satisfy enterprise security review, and system design aligned with EU AI Act risk classification requirements before a line of code is written. RBAC at the orchestration layer, append-only audit logs, data residency controls, and GDPR/DPDP/EU AI Act alignment documented in writing before deployment.

Outcome

AI systems that pass your compliance team's review — aligned with EU AI Act, GDPR, India's DPDP Act, ISO 42001, and SOC2. Regulated industry ready.

[ ADVISORY ]
When you need it

You need senior-level technical guidance before committing to a direction, vendor, or build.

What we do

We act as your technical partner — architecture reviews, build-vs-buy decisions, system design, and scaling strategy for AI infrastructure.

Outcome

Decisions made with confidence. Architecture chosen for the right reasons. No expensive rebuilds six months later.

[ HOW WE ENGAGE ]

How We Work With You

Every engagement starts with understanding your environment. From there, we work in one of three ways depending on where you are.

01

Strategy Engagement

Short-term advisory to define your AI architecture, roadmap, and infrastructure strategy. Typically 2–4 weeks. Ends with a clear, actionable plan your team can execute.

1 / 3

[ COMPLIANCE ]

Compliance Designed In, Not Bolted On

Every Invisigent engagement includes compliance architecture from the first sprint. No separate compliance add-on. No retrofitting controls after your security team flags a problem at deployment.

GDPREuropean Union

Data residency controls, right-to-erasure architecture, and processing lawfulness design for EU deployments.

DPDP ActIndia

Consent management architecture and data fiduciary obligations aligned with India's Digital Personal Data Protection Act 2023.

EU AI ActEuropean Union

Risk classification assessment and prohibited/high-risk AI system design review for EU-regulated deployments.

ISO 42001Global

AI Management System documentation, policy frameworks, and operational controls aligned with international AI governance standards.

SOC2United States

Security, availability, and confidentiality controls designed into system architecture from the first sprint.

[ FAQ ]

Common Questions

We design systems aligned with GDPR, India's DPDP Act, EU AI Act risk classification requirements, ISO 42001, and SOC2. Compliance architecture is included in every system build — not offered as a separate add-on.

Deployment is not the end of the engagement. Every system we deliver includes operational runbooks, LangSmith monitoring configuration, and a defined performance baseline. For organizations on ongoing partnership engagements, we provide monthly performance reviews, model updates, and architecture evolution as usage scales.

[ LET'S BUILD ]

Ready to Build AI Systems
That Actually Work?

If you are moving beyond AI experiments and want production-ready systems that integrate with how your organization actually operates — let's talk about what you are building.

Start the Conversation
EU AI Act · ISO 42001 · GDPR · DPDP Act
Invisigent
Enterprise AI infrastructure services. LangGraph agent orchestration consulting. Pinecone RAG knowledge retrieval systems. AI automation with n8n and FastAPI. LangSmith AI observability. Multi-agent AI systems. AI performance optimization. Compliance-ready AI infrastructure. GDPR AI systems. EU AI Act risk classification. DPDP Act India AI compliance. ISO 42001 AI management. SOC2 AI architecture. AI strategy consulting. Production AI deployment. Model-agnostic AI systems. No vendor lock-in AI infrastructure. Enterprise AI consulting India United States Europe.