Use Case

AI as a Compass: How a Cantonal Authority Turns Data into Safety

How can traffic accidents be prevented before they happen? This was the question posed by a cantonal traffic authority in Switzerland—taking a bold step into a data-driven era of accident prevention. Today, an intelligent platform is in place that connects existing data sources, analyzes them with AI, and generates predictive recommendations for action. 

In the Middle of a Complex Traffic Network

The authority has set itself an ambitious goal: fewer accidents, less suffering, and reduced economic damage. Its lever of choice: modern technology. As is often the case, it all began with a simple question: Can AI help predict, reduce—or even prevent—accidents? 

The answer is now a platform that translates data, forecasts, and imagery into preventive impact. 

From Idea to Initiative: How a Question Became a Strategic Shift

As the orchestrator of infrastructure, mobility, and safety, the cantonal authority is far more than a mere administrative body. Its requirements for data-driven innovation were accordingly high: transparency, data protection, scalability. At the same time, it lacked the expertise and resources to implement such a transformation on its own. 

So, at the end of 2022, a project was launched with the ambition of delivering more than just a technical solution. The goal: to intelligently connect existing data sources—from weather and accident data to photogrammetry. The result would be a platform capable of generating insights: Where do accidents cluster? Which structural conditions contribute to them? Which countermeasures are most effective?

Data Without Impact: Why Information Alone Isn’t Insight

The authority already had a wealth of information at hand: weather and accident statistics, police reports, images. But they were scattered, siloed, and hard to access. Tools such as IBM SPSS for statistical analysis, Geographic Information Systems (GIS), or Spatial Information Systems (SIS) were available, but there was no way to make practical use of the isolated datasets. 

The central office for accident prevention had neither access to modern forecasting models nor dedicated AI staff. What was missing was not high-quality data—but a unifying operating system to harness it and extract actionable insights. As part of a strategic inquiry into the “feasibility of AI in accident prevention,” the TIMETOACT GROUP came into play. Step by step, this developed into a partnership built on strategy, substance, and scalability. 

From Data Treasure to Decision Platform: Building a System That Works

The transformation began with a structured AI Strategy Workshop. In this early phase, data availability, organizational maturity, and technical infrastructure were assessed—with one clear conclusion: strong data potential, but low internal maturity in terms of AI readiness. 

The outcome was the architecture of a scalable, Azure-based data and AI platform. It integrates Synapse, Machine Learning, OpenAI models, Power BI, and GIS tools—within a managed Azure tenant operated by X-INTEGRATE. At its core lie a Data Lakehouse and a flexible access layer that link structured and unstructured data, making them available for visualization and model operation. 

So far, three use cases have been implemented: 

  • A central accident dashboard analyzing traffic accidents by region, vehicle type, time, and weather conditions. 

  • A computer vision solution analyzing entry and exit angles at roundabouts—with concrete recommendations for structural improvements. 

  • An accident prediction model with 7-, 14-, and 21-day windows that combines weather, traffic flow, and road conditions to forecast potential accident hotspots. 

More Knowledge, Better Planning: What the Platform Delivers Today—and Tomorrow

What once took weeks can now be done in a fraction of the time. For the first time, the authority has a holistic view of traffic activity across the canton. Forecasts are significantly more accurate than previous models, and recommendations are more robust. 

The platform now provides a sound basis for decisions on infrastructure measures, emergency service planning, and strategic investments. It is modular, technology-agnostic, and built for the future. While day-to-day operations are managed by external partners, the authority has begun building its own AI competence structures. 

Conclusion: This Is What Safe, Actionable Public Administration Looks Like

The cantonal traffic authority demonstrates how modern public administration can operate: data-driven and purpose-driven. With a clear focus on safety, prevention, and efficiency, it has built a technical infrastructure that not only protects lives in the long term but also reduces operational workload. By investing in internal competencies and modular platform design, the system is equipped to remain successful well into the future. 

Use Case

Use Case: Müller-BBM - faster Expertise with AI

Semantic search across documents & sites enables Müller-BBM to find data in seconds – use knowledge, don’t hunt for it.

Use Case

Use Case: SAFe Assistant at AgileTech

AI-powered dashboard with IBM watsonx: flow metrics & recommendations in real time – reporting automated, teams unleashed.

Use Case

Use Case: Negotiate efficiently with the Negotiation Bot

Save up to 15% on small orders, streamline processes & gain time – with automated negotiations around the clock.

Use Case

Use Case: Scalable AI Strategy shortens time-to-market

Become visible with data strategy, Azure platform & customer-segmented campaigns – five times faster than before.

Use Case

Use Case: Finanz Informatik Prepared Its Platform for AI Era

From unstable & costly legacy to scalable infrastructure with OpenShift, Spark & GPU power – secure, compliant & high-performing.

Use Case

Use Case: Boost efficiency by up to-80 percent with GenAI

Automate document inspections, ensure compliance, scale fast – quality up, turnaround time way down.

Referenz 10/29/21

Standardized data management creates basis for reporting

TIMETOACT implements a higher-level data model in a data warehouse for TRUMPF Photonic Components and provides the necessary data integration connection with Talend.

Felss Logo
Referenz

Quality scoring with predictive analytics models

Felss Systems GmbH relies on a specially developed predictive analytics method from X-INTEGRATE. With predictive scoring and automation, the efficiency is significantly increased.

Referenz 8/4/25

Flexibility in the data evaluation of a theme park

With the support of TIMETOACT, an theme park in Germany has been using TM1 for many years in different areas of the company to carry out reporting, analysis and planning processes easily and flexibly.

Referenz 12/27/23

Managing sensitive data through digital personnel files

TIMETOACT enables the digital management of personnel documents for Pfalzwerke. Managing and editing sensitive personnel data is now secure and requires less effort.

Referenz 6/15/23

Semper uses TIMETOACT Vacation Manager as SaaS

Maximum convenience in vacation management: educational institution benefits from user-friendliness of M365-compatible TIMETOACT solution.

Blog 9/17/21

How to gather data from Miro

Learn how to gather data from Miro boards with this step-by-step guide. Streamline your data collection for deeper insights.

Technologie

Microsoft Azure Synapse Analytics

With Synapse, Microsoft has provided a platform for all aspects of analytics in the Azure Cloud. Within the platform, Synapse includes services for data integration, data storage of any size and big data analytics. Together with existing architecture templates, a solution for every analytical use case is created in a short time.

Branche 9/5/25

Digital Pole Position for Transport and Logistics

We create transparency, automate processes and ensure compliance – for IT that puts your logistics in the lead.

Blog 3/22/23

Introduction to Functional Programming in F# – Part 8

Discover Units of Measure and Type Providers in F#. Enhance data management and type safety in your applications with these powerful tools.

Blog 12/19/22

Creating a Cross-Domain Capable ML Pipeline

As classifying images into categories is a ubiquitous task occurring in various domains, a need for a machine learning pipeline which can accommodate for new categories is easy to justify. In particular, common general requirements are to filter out low-quality (blurred, low contrast etc.) images, and to speed up the learning of new categories if image quality is sufficient. In this blog post we compare several image classification models from the transfer learning perspective.

Referenz

Smarter mobility with the portal switchh

Subway, S-Bahn, bus, car, ferry or bicycle: The pilot project "switchh" of HOCHBAHN in cooperation with Europcar and Car2Go makes Hamburg mobile.

Service

Analytics, BI & Planning

Powerful and flexible solutions to help you make better decisions, meet customer needs & identify opportunities with Analytics, BI & Planning

Referenz

Automated Planning of Transport Routes

Efficient transport route planning through automation and seamless integration.

Headerbild zu Smart Insurance Workflows
Service

Smart Insurance Workflows

Using a design thinking approach, we orient workflows to the customer experience and design customer-centric end-to-end processes.