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Transform your business processes with custom AI solutions

Transform your business processes with custom AI solutions

AI and data only create value when they address concrete business challenges. That’s why we design custom AI solutions, integrated into your tools and processes, to automate, improve reliability and enhance operational performance — without unnecessary complexity or fleeting trends.

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Use-case driven AI expertise

We work on concrete data and AI projects, designed to meet specific business needs. Our approach prioritises utility, understanding of existing processes and integration of solutions that are genuinely usable in your environment.

Data science & Machine Learning

Data science & Machine Learning

Design of statistical and machine learning models to automate or enhance business decisions, through reliable, interpretable models adapted to operational constraints.

Generative AI & LLM

Generative AI & LLM

Implementation of solutions based on language models for content analysis, search, summarisation, translation or assistance, with fine-tuned adaptation to business use cases.

Intelligent search

Intelligent search

Development of intelligent search and similarity engines combining data, machine learning and generative AI to identify, compare or qualify content at scale.

Hybrid AI architectures

Hybrid AI architectures

Design of architectures combining classical models, generative AI and specialised agents, using each technology where it delivers real value, without over-automation.

/ A pragmatic and iterative approach

We favour a progressive approach, centred on business understanding, rapid validation and controlled industrialisation, to secure results and solution adoption.

1

Business scoping

Immersion in your processes, identification of business challenges, key criteria and technical constraints to establish a clear, shared framework.

Business challenges Constraints
2

Prototyping

Building first prototypes and targeted tests to validate hypotheses, compare approaches and adjust technical choices.

Prototype Tests
3

Iterations

Progressive improvement of models and rules based on feedback, with regular demonstrations and business validations.

Iterations Validation
4

Industrialisation

Development of orchestration, automation of processing and performance hardening for reliable, repeatable use.

Industrialisation Automation
5

Deployment

Production deployment and integration into your tools and processes, with performance monitoring and adjustments as needed.

Go-live Monitoring

/ AI ecosystem

We select technologies and models based on your use cases, constraints and stability requirements. Our approach favours complementarity of tools and adaptation to your existing environment, without dependency on a single solution.

OpenAI Claude Gemini Mistral Hugging Face LangChain LangGraph LlamaIndex n8n Python
Icon AI architectures designed for stability, integration and business value.

/ They leverage their data with Castelis

Discover how our clients have turned their data into levers of performance and operational decision-making.

SNCF | Optimising the fine recovery rate

SNCF | Optimising the fine recovery rate

Machine learning applied to fine recovery to optimise targeting and reduce processing costs.

225 000
Fines processed per month
121
Offender profiles identified
2019
Deployment year
View case study
Solocal | Feeding a data hub from external IS

Solocal | Feeding a data hub from external IS

Multi-IS data centralisation middleware to accelerate client onboarding on the Bridge platform.

+7 000
Points of sale synchronised
10
Connectors and brands in service
2017
First connector go-live
View case study
Groupe Qualiconsult | Accelerating payment allocation

Groupe Qualiconsult | Accelerating payment allocation

AI and OCR tool to automate accounting reconciliations and reduce payment allocation lead times.

80%
Automated reconciliations
-50%
Workload reduction
9
Years of collaboration
View case study

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Frequently asked questions — Custom AI

No, and that’s precisely why our approach starts with the business. We assess the real relevance of AI based on your processes, data and objectives. In some cases, simpler approaches can be more effective and more sustainable.

No. We combine data, classical machine learning and generative AI depending on the needs. Each technology is used where it delivers measurable value, without over-automation or unnecessary dependency.

Yes. Our solutions are designed to integrate with your existing tools and applications to ensure adoption and operational use, without disruption for teams.

Through an iterative approach, regular business validations and robust architectures. We prioritise model stability, processing traceability and performance monitoring over time.

Yes. Solutions are designed to evolve progressively, based on new requirements, new data or changes in your usage, without disrupting what is already in place.

CONTACT

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