IntelligenceIntégrée
Nous intégrons l'IA dans votre entreprise.
What does Maak.Digital build?
Maak.Digital is an AI integration agency for companies that need to replace manual workflows with production AI systems. The studio builds AI agents, workflow automations, sales and QA analysis systems, document-generation pipelines, and prompt-library tooling for teams in the USA, Canada, the UK, and the EU. Each engagement turns a repeatable business process into a documented AI workflow with clear inputs, outputs, ownership, and review rules.
The work is practical. Each project starts with a business bottleneck. The output is a working system, not a slide deck. Typical deliverables include connected workflows, dashboards, prompts, evaluation rules, and documentation that internal teams can operate after launch.
Which AI services are available?
| Service | Built for | Output |
|---|---|---|
| AI workflow automation | Teams with repetitive manual processes | Production workflows, dashboards, and business-system integrations |
| AI sales coaching | Sales teams with high call volume | Call transcription, script scoring, QA coverage, and manager reports |
| Document generation automation | Engineering, construction, B2B operations, and proposal teams | Drafting, validation, formatting, and PDF/DOCX generation |
| AI prompt systems | Creative, marketing, and content teams | Reusable prompt libraries and media-generation workflows |
Which workflows are a good fit for AI automation?
| Signal | Evidence | Next step |
|---|---|---|
| High-fit process | Repeats every week, uses structured inputs, and has a measurable output. | Map the workflow and automate the smallest reliable path first. |
| Medium-fit process | Needs human judgment but has repeatable review criteria. | Add AI drafting, scoring, or summarization with human approval. |
| Low-fit process | Rare, ambiguous, or high-liability work with no clear acceptance rules. | Document the process before adding automation. |
What proof is available before a call?
| Proof type | Example | Source |
|---|---|---|
| Case-study metrics | 100% QA coverage, 90% feedback-latency reduction, 30% script-adherence lift. | Published case pages |
| Prompt-library records | Reusable prompt text, model, difficulty, tags, update date, and usage guidance. | Prompt detail pages |
| Structured page context | Service scope, case metrics, FAQ answers, external references, and Organization schema. | SSR HTML and JSON-LD |
How does an AI integration project move from idea to launch?
- -Map the operational bottleneck and define a measurable success target.
- -List every input, system, permission, approval, and output in the workflow.
- -Build the smallest reliable AI-assisted path before adding extra automation.
- -Connect the workflow to real tools such as CRMs, telephony, storage, or document systems.
- -Add review rules, dashboards, and documentation so the team can operate the system.
Which AI sources and platforms shape implementation decisions?
Implementations are selected by fit, reliability, cost, privacy boundaries, and support for real workflows. Maak.Digital monitors major AI platform capabilities and uses external documentation when evaluating production architectures. The final stack may combine model APIs, retrieval, scoring rules, internal databases, CRM data, and human review. The important decision is not which model is fashionable. It is which workflow can be measured, maintained, and trusted by the team using it.
Common questions
What should a buyer know before scoping an AI workflow?
What does Maak.Digital build?
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What does Maak.Digital build?
Maak.Digital builds production AI workflows for teams that need fewer manual handoffs. Work includes AI agents, workflow automation, sales and QA analysis, document generation, and prompt-library systems. The goal is not to add a chatbot on top of a broken process. The goal is to turn a repeatable workflow into something measurable, documented, and usable by the team after launch.
How does Maak.Digital choose an AI architecture?
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How does Maak.Digital choose an AI architecture?
The team starts from the operational bottleneck, maps the inputs and outputs, and then selects the simplest reliable stack. The result can be a dashboard, a backend workflow, a prompt system, or a model-assisted internal tool.
Which teams use these systems?
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Which teams use these systems?
The strongest fit is for sales, operations, marketing, construction, education, and B2B service teams. These teams usually have repeatable tasks, measurable outcomes, and existing software that can be connected to AI workflows.
When should a company automate with AI?
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When should a company automate with AI?
A company should automate when a manual process repeats every week, depends on structured data, and can be checked with clear business rules. Good candidates include call review, proposal drafting, content planning, and supplier research.
What evidence does Maak.Digital publish?
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What evidence does Maak.Digital publish?
The case-study library publishes implementation patterns, client-type context, and measurable results. Examples include 100% QA coverage, 90% feedback-latency reduction, and 30% script-adherence improvement in the sales coaching case.
Technical notes
What context is kept for discovery and retrieval?
What structured context is available for AI and search crawlers?
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What structured context is available for AI and search crawlers?
The homepage exposes service scope, target workflows, case-study metrics, visible update dates, outbound references, FAQPage JSON-LD, Organization schema, WebSite schema, Service schema, and a working SearchAction for the prompt library.
Which signals make the page easier to quote accurately?
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Which signals make the page easier to quote accurately?
The page uses answer-first sections, compact comparison tables, measurable case examples, stable internal links, and server-rendered text. These signals help both human buyers and retrieval systems understand what Maak.Digital actually builds.
Noyé dans le
Bruit Analogique.
Les flux manuels tuent l'échelle en silence. Si votre équipe redimensionne des images ou copie des données en 2026, vous opérez sur du matériel obsolète.
Vélocité
Algorithmique.
Nous architecturons des essaims d'IA sur mesure. Un agent écrit, un conçoit, un analyse. Orchestration parfaite. Vos frais chutent, votre production explose.
Métriques d'Impact
Optimisation des ventes et du service client
Respect du script et rapidité du feedback
Technologie de la construction (ConTech)
Réduction des coûts d'approvisionnement et rapidité d'estimation
Technologie de l'éducation (EdTech) et linguistique
Efficacité de la production de contenu et cohérence de la marque