CTO / VP Engineering
Technical teamThat speaks my technical language
I need a team that understands the difference between an API wrapper and a real AI product. That integrates with my current stack without having to rewrite everything.
Products with real intelligence
Not demos — products in production that generate revenue.
The Problem
It's not a technology problem. It's an execution problem. Companies invest in proofs of concept that never scale, integrate generic tools that don't understand their business, or try to build internally without the necessary expertise.
Source: Gartner
The eternal PoC. Your team has spent months on a demo that works in a controlled environment. Taking it to production with real data, real volume and real users is another story. The gap between prototype and product is where most AI initiatives die.
The generic tool. You bought an AI SaaS that promised out-of-the-box personalization. Six months later the results are marginal because it doesn't understand your catalog, your customer or your operation. Generic AI produces generic results.
The team you don't have. You want to build AI products but your team has no experience with models, embeddings, RAG or fine-tuning. Hiring that talent takes months. Meanwhile, your competition is already in production.
We don't sell the future. We build products that run today.
Who it's for
CTO / VP Engineering
Technical teamI need a team that understands the difference between an API wrapper and a real AI product. That integrates with my current stack without having to rewrite everything.
CPO / Product Manager
Product-market fitI need to know if this AI feature has product-market fit before investing 6 months in development. And I need someone who understands both the AI and the end user.
CEO / Founder
Impact on metricsI need this AI investment to translate into more conversions, better retention and a more efficient operation. Not into pretty papers about the potential of AI.
We work with B2B, B2C and D2C companies that already have digital operations and want to use AI to create real competitive advantages. We don't sell the future: we build products that run today.
What we build
Autonomous agents and copilots that execute complex tasks across your commercial operation. Not chatbots with canned answers: agents that understand your catalog, your inventory and your business rules.
Semantic search engines and discovery systems that understand user intent, not just keywords. Real personalization based on behavior, context and preferences.
Intelligent features that integrate into your existing product or platform. No need to rewrite your stack: they connect through an API and add a layer of intelligence to what you already have.
Data products that turn your information into business assets. ML pipelines, intelligent dashboards and analytical systems that don't just show what happened, but what to do about it.
How we work
Every AI product we build follows a two-phase model. A model in production without monitoring, without retraining and without continuous optimization is a model that degrades. And a degraded model is worse than no model.
Per-project investment based on scope, model complexity and available data
From discovery to go-live. We design, build and launch your AI product in production with real data.
Custom monthly contract based on services, inference volume and SLA
We keep your AI product at the frontier: monitored, optimized and evolving with every new data point.
Our live demo
Ask AI is the chatbot running on this site. It's not a product we sell: it's a working demonstration of what we build. It uses RAG over our knowledge base, understands conversational context and is connected to our services.
It's the same kind of architecture we implement for clients: language models + proprietary data + business rules + integration with existing systems. The difference is that this one you can try right now.
Tech stack
We work with the leading AI model and infrastructure providers. We're not married to any of them because your use case determines the technology, not the other way around. We evaluate cost, latency, quality and privacy for every project.
The process
Every project follows a structured process that minimizes risk and maximizes speed. We don't start writing code without understanding your business. And we don't deliver without measuring results.
Data audit, AI opportunity mapping and stakeholder interviews. We define where AI creates real value and where it creates noise. Deliverable: AI Opportunity Map.
Product architecture, model selection, UX design for AI interfaces and metric definition. Deliverable: Technical Spec + Product Architecture.
Development in sprints with working demos. Integration with your existing stack. Testing with real data. Each sprint has a measurable deliverable. Deliverable: MVP in production.
Gradual deploy, A/B testing in production, team onboarding and technical documentation. Transition to the Operate phase, with continuous monitoring and optimization.
These timelines are references for a product of medium complexity. A simple copilot can be ready sooner; a more complex product approaches 12 weeks. We define the exact scope in Discovery.
Security & compliance
Certified management system
Every AI product we build operates under our certified information security management system.
Access control to training data and auditing of prompts and responses.
Encryption in transit and at rest, with compliance to applicable data protection regulations.
Your data is never used to train third-party models. Your prompts are not shared. Your information never leaves authorized environments.
Book a 30-minute Discovery session with our technical team. No strings, no generic decks. We talk about your case, your data and your goals. And we tell you honestly whether AI applies or not.
20 years of digital commerce. AI products that run in production, not in slides.