The Challenge
Organizations investing in LangGraph face a critical gap between what's theoretically possible and what actually ships to production. Most implementations stall at the proof-of-concept stage because teams underestimate the engineering complexity of moving from demo to deployed system.
At Mintodes, we've closed this gap repeatedly. Our approach combines deep technical expertise in LangGraph, reasoning, agents with a delivery model that produces working systems — not slide decks.
Our Approach
We start with architecture, not code. Every engagement begins with a focused discovery sprint where we map your specific requirements to proven patterns from our production deployments. This isn't generic consulting — it's pattern matching from real systems we've built and shipped.
By week two, you see working infrastructure. By week six, you have a production-ready system with monitoring, error handling, and the operational runbooks your team needs to maintain it independently.
Why Mintodes
We've shipped 7+ production SaaS products across EdTech, InsurTech, FinTech, logistics, and recruiting. Every technology we recommend is one we've used in production. Every architecture decision is informed by real operational experience — not blog posts.
Related Solutions
n8n Enterprise Implementation
Production-grade n8n deployments with custom nodes, error handling, and enterprise-scale workflow orchestration. We've a...
Next.js AI-Native Dashboard Development
Dashboards that don't just display data — they predict, recommend, and act. Server-side AI inference meets real-time cli...
Real-Time AI Memory with Supabase & Postgres
Give your AI agents persistent memory with vector embeddings stored in Supabase. Sub-millisecond retrieval, real-time su...