Trusted by founders and growing teams

AI & Machine Learning Development

Custom AI workflows, local models, automation pipelines & multilingual intelligence — built for real business use.

We develop practical, production-ready AI systems that automate operations, enhance decision-making, and support data-driven decision-making and operational improvements. From on-server ML models and GPU inference to LLM-powered assistants, AI dashboards, and multi-step automation agents, we deliver intelligent tools designed for use in regulated and privacy-sensitive environments worldwide. Our approach focuses on GDPR-compliant AI, robust engineering, and seamless integration with your existing systems — with a focus on reliability and suitability for real-world production environments.

Why Companies Choose Our AI Systems

AI systems designed to align with GDPR/DSGVO requirements from the outset
Local and on-premise AI model deployment (private servers, Hetzner, AWS Frankfurt)
Experience with regulated industries: finance, enterprise SaaS, healthcare, logistics
English multilingual AI content systems
No black-box systems — transparent architecture & maintainable pipelines
Ability to combine AI + backend + DevOps + data engineering in one team
End-to-end delivery: from idea → model → API → dashboard → production

What We Deliver

AI Dashboards & Intelligent Interfaces

  • Real-time content generation
  • Semantic search & vector embeddings (local or cloud)
  • Image recognition & object classification
  • Video analysis & frame-level processing
  • Automatic data enrichment and labeling workflows
  • Custom AI-driven analytics and reporting dashboards

Custom AI Workflows

  • Automated content creation and multilingual localization
  • Marketing automation (email, social media, meta-tag generation)
  • Predictive analytics models to support sales, demand, and churn analysis
  • AI-assisted internal processes (approvals, routing, scoring)
  • Multi-step agents for enterprise operations
  • Retrieval-augmented pipelines (RAG) with private knowledge bases

Local ML Models (On-Server Inference — GDPR-Friendly)

  • TensorFlow / PyTorch / Keras deployment
  • Private, on-premise AI systems (without reliance on external third-party data processing)
  • Image, video, OCR, NLP, embeddings & classification models
  • GPU-optimized pipelines
  • Integration with existing backend and microservices

AI Products & Assistants

  • LLM-powered customer support bots
  • AI "wizards" for guided user flows
  • Multilingual chatbots (EN/DE/RU/ID)
  • Telegram/WhatsApp bots with AI logic
  • AI tools for hospitality, finance, real estate, and logistics
  • Domain-specific AI agents with task-specific context handling and state management

Data Processing & Pipelines

  • ETL pipelines for text, images, video, structured data
  • Feature extraction & dataset preparation
  • Data cleaning, transformation & deduplication
  • High-volume storage optimization
  • Automated labeling and training loops

Integrations

  • OpenAI API, Google Gemini, local LLMs
  • Supabase, PostgreSQL, ClickHouse
  • CRM, ERP, CMS platforms
  • Webhooks, microservices, API gateways
  • Marketing tools & analytics platforms

When You Need AI Development

Choose this service when you want:

AI automation instead of repetitive daily tasks
A model designed to align with GDPR requirements that runs locally on your servers
An intelligent backend workflow or product feature
Predictive analytics models to support business operations analysis
An AI-powered customer or internal interface
A scalable ML pipeline that integrates with your architecture
A real AI MVP — fast, but without shortcuts
A full custom AI product instead of generic SaaS limitations

Tools & Technologies

Models & Frameworks

TensorFlow, Keras, PyTorch, scikit-learn, OpenAI API, Llama-based LLMs

Infrastructure

On-server inference (CPU/GPU), Docker, Kubernetes, GPU nodes

Data

PostgreSQL, ClickHouse, Supabase, Redis

Automation

Make.com, n8n, custom pipelines, event-driven agents

Dashboards

Next.js, React, Tailwind, Chart.js, D3.js, custom admin UIs

APIs & Integrations

Telegram API, WhatsApp API, REST, GraphQL, webhooks, SDKs

Industries We Support

Fintech & banking
Real estate & PropTech
Hospitality & travel
Logistics & mobility
Enterprise SaaS
Media & content platforms
Healthcare & regulated industries
FAQ

FAQ

Yes — we deploy models locally on your servers to support privacy-focused and GDPR-aligned deployments.

Yes: architecture → model → backend → dashboard → deployment.

Absolutely. CRM, ERP, dashboards, microservices, websites, internal tools.

Yes — for text, images, audio, structured data.

Just a use case. We validate feasibility and propose a technical roadmap.

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AI and machine learning development for companies operating production AI systems. We support organizations with AI workflows, model deployment, and AI systems based on the specific technical and regulatory context of each project. All services are delivered individually and depend on system requirements and constraints.

AI systems involve probabilistic outputs. Results, accuracy, and compliance depend on configuration, data quality, and operational context.