Loreley A.I.
Your A.I., on your hardware, with your data.
A proof of Concept
How it started ?The idea of a fully on-premises A.I. for the hospitality industry grew naturally while observing the issues generated by cloud-based A.I. solutions:
- Users' data being sent to US and China
- Network latency from remote location
- No fine control over model behaviour
- Closed source models deactivation
- Prices surges
The first A.I. meta-model was developed and presented in two weeks – with voice support already built-in – running on a 2’500.00 CHF personal computer.
A first Customer
Who trusted the project ?The technology was first pitched in June 2025 to Explora Journeys (MSC Group) as a fully local, safe and multi-cultural onboard A.I. solution for their fleet of Luxury cruises Ship.
Over the course a few months, the meta-model evolved to a point it was integrated into all core aspects of the Ships, and capable to process up to 250 requests in real-time (< 3 seconds latency) with a hardware of 75’000.00 CHF
In April 2026, Tanaquil – the meta-model name in Explora Journeys – became operational on Explora I.
A new Product
Where is the project used ?Tanaquil is now being deployed on the whole fleet of Explora Journeys – 4 Ships – and continue its development as a “virtual concierge”, always available to help the Ship’s Guests and Hosts:
- Full support more than 14 languages – written and spoken
- More than 40 languages in a short term
- Abilities to book restaurants, SPA treatments and other services
- Aware of the Ship information (position, weather, security information etc.)
- Gently promoting Explora Journeys in-cruises offers (excursions, products, restaurants, future cruises, etc.)
A bright Future
What are the next perspectives ?It is time to go one step further and evolve Tanaquil into an even more efficient solution.
A new project, named Loreley, is benefiting from all the invitation brought by Tanaquil – plus a new unique technological core, allowing for vision, natural conversation, 3D avatars rendering via an artificial nervous system.
Why use our A.I. ?
Meta-model | Infrastructure | Framework | Integrated
Meta-model
Continuously up-to-dateLoreley A.I. is an aggregate of multiple A.I. models – not only LLM, but a mix a various specialized systems.
We add and update models as needed in a matter of days, to ensure we fit your needs and resources limitation.
From the developer's perspective, Loreley A.I. remains a standard LLM, with standard APIs – one can use the same tools, documentation and knowledge accumulated with other technologies.
Infrastructure
No cloud & no third-partyLoreley A.I. is meant to run on-premises, i.e. on your own hardware. This guarantee total control and sovereignty over your data – nothing never leave your environment.
We design, build and operate intensive computational clusters – CPU, GPU, FPGA – fit to run and train A.I. models.
Loreley A.I. infrastructure is scalable – adding a compute node takes a few minutes after physical installation.
Although we are local-first, we do support running Loreley in a Cloud infrastructure if required – this however remove the data locality guarantee.
Framework
What makes Loreley A.I. different at the core ?We developed a complete framework to make Loreley adaptable and efficient in your ecosystem; We introduce two innovative technologies:
- An events hub, connecting A.I. models and tools to numerous data sources and orchestrating information flow
- A domain-specific language for designing Loreley A.I. nervous system connections
We do also keep an upstream compatibility with existent state of the art technologies and practices – MCP, A2A, agentic workflows, RAG, fine tunning, memorization, etc.
Integrated
How Loreley integrates your organization ?We proceed with rationalism and prioritize truth – here’s our roadmap:
- Use cases definition: what are you trying to achieve ? What are your problems ? How can A.I. helps ? Is another solution more fit ?
- Available resources: What are your actual needs & capabilities ? Can you host a compute system ?
- Proposal: Milestones to achieve a successful project – and how it will evolve over time.
Why on-premises ?
Closed loop
Isolated infrastructure with complete control over data input and output.- Integrated with Loreley platforms
- Identity
- Authentication
- Authorization
- Logging
- Metrics
- Reporting
- Alerting
- Etc.
- Inference pipeline – Respond to/in text, audio and picture
- RAG pipeline – Consume from any data sources
Edge environments
Runs next to your data & activities.- Remote location – Cruises ships, oil rig, industrial zone, etc.
- Secure sites – Data and processes remains local, within a completely isolated environment
- Zero network latency – Surveillance systems, trading, etc.
Compatibility
No cost associated with token usage.- API – Fully compliant with OpenAI’s API means drop-in replacement for cloud-based services
- Integration – Fully compliant with MCP and support for MCP gateway
- GUI – End-user interfaces with speech and complex data support
Data sovereignty
Conversation, documents, code, PII, … remains local..- Personal information – PII (users’ data customers’ information, etc.) remains local
- Intellectual property – Your code, documents and sensitive data are processed locally
Your Title Goes Here
Unlimited tokensNo cost associated with token usage.
- Code & complex tasks – Long-running and token-consuming tasks at 0 cost
- 100% exploitability – Inference account for only ~70% of time; the remaining 30% are used for reporting, fine-tunning, training, etc.
Open models
Leverage the best opensource models – integrate and fine-tune at will.- Common use cases
- Speech to text
- Translation
- Guard rails
- Text generation
- Audio synthesis
- Sentiment analysis
- Technical
- Code generation
- Conversation control
- Network analysis
- Security
- Humans behaviour
- Systems behaviour