Data & AI Observatory — Switzerland 2025

Observatory · Switzerland · 2025 Edition

Data & Artificial
Intelligence

Measuring the acceleration — from experimentation to responsible industrialisation. A synthesis of the key AI transformation trends among Swiss organisations.

Oracle Colombus Consulting HEG Genève

At-scale deployments

52%

↑ +31 pts vs 2024

Leaders with “good to very good” AI knowledge

62%

↑ +25 pts vs 2024

Low or intermediate maturity

70%

↓ −21 pts vs 2024

AI integrated into strategic plan

35%

↑ +2 pts vs 2024

Data quality “good to excellent”

62%

↑ +14 pts vs 2024

ROI measurement “basic or non-existent”

58%

↓ −16 pts vs 2024

AI understanding among executives

Good to very good
62% ← 37%
Basic knowledge
27% ← 50%

Phase of AI initiatives

At-scale deployments
52% ← 21%
Pilots / POC
39% ← 67%

What has truly changed in a year

Between 2024 and 2025, three structural dynamics are reshaping the AI landscape in Switzerland.

Accelerated industrialisation

At-scale deployments reach 52%, while proof-of-concepts fall to 39% (−28 pts). AI strategies are finally leaving the lab to take root in operational realities.

Expanded governance

An AI project is now assessed as much on its profitability as on its ethical or energy footprint. 58% still rate ROI measurement as basic or non-existent — down from 74% in 2024, a notable improvement.

Human capability in transition

The share of executives with “good to very good” AI knowledge jumps from 37% to 62%. Yet 7 in 10 organisations still identify culture and organisation as the primary barrier.

“A data-driven culture boosts AI expertise: each step forward in data maturity nearly doubles the likelihood of reaching a high level of AI expertise.”

What is still holding back progress

Despite the acceleration, four structural obstacles persist and shape the success of the transformation.

1

Culture and organisation (70%)

Among non-AI users, organisational obstacles are a greater barrier (65%) than technical limitations (30%). Change management must be the top priority.

2

Value measurement still insufficient

58% of organisations have a “basic or non-existent” AI ROI measurement. Projects track activity metrics (number of models deployed) rather than real business impact.

3

Sustainability & sovereignty under-addressed

72% acknowledge that sustainability requirements are not properly addressed — up 5 pts vs 2024. “Green AI” is gaining traction but still lacks a standardised methodological framework.

4

Strategic knowing-doing gap

74% believe AI can solve their main challenges, but only 35% integrate it into their strategic plan — a 39-point gap revealing a persistent organisational wall.

From excitement to operational adoption

In one year, generative AI has crossed a decisive threshold, moving from pilot to large-scale production.

Deployed “at scale”

52%

↑ from 21% in 2024

See a deep transformation of their role

35%

↑ from 19% in 2024

Customer / marketing / after-sales use cases

42%

↓ from 51% — spreading to back-office functions

AI in every function

A selection of the key use cases identified in 2024 and 2025, by discipline.

DomainRepresentative use cases
FinanceData volume synthesis, anomaly and fraud detection, supplier categorisation, dynamic discounts, spend classification.
HRSkills frameworks, personalised training paths, recruitment automation. New 2025: job offer writing and distribution via generative AI.
OperationsQuality control via image analysis, failure and delay prediction, resource planning, supply/demand forecasting.
CIO / ITCode generation assistance, IT request classification, process documentation, helpdesk workload management.
Customer relationsAutomated digital assistants, 360° customer view, Next Best Action/Offer, meeting summaries, opportunity prediction. New 2025: AI agents on customer service (e.g. Wiley).
LegalCase law research, contract synthesis, litigation success estimation, global regulation monitoring.
LogisticsNew 2025: real-time defect detection on parts (Innodura), transport optimisation via AI models (CMA CGM).
MediaNew 2025: copyright protection and archive monetisation (Le Monde, AFP × Mistral AI; Time, Fortune × Perplexity AI).

Three decisive levers for 2025–2026

Organisations that will scale sustainably share a common blueprint built around these three pillars.

01

Explicit strategic vision

Link every AI use case to growth, profitability and ESG objectives. A single executive sponsor (CEO/CFO) + P&L mandate for the CDAO — not mere compliance.

02

Consolidated organisation

Interoperable platforms, robust MLOps practices, governance shared across business, IT and compliance. Monthly value committees crossing operational KPIs with business metrics.

03

Systematic AI acculturation

“AI Champions” embedded in every department. Over 60% of budgets dedicated to prompt training, process redesign and internal communication.

“The race is no longer to the proof of concept; it is to responsible industrialisation. Those who succeed will bring together strategic vision, operational excellence and societal awareness to turn AI potential into lasting competitive advantage.”

Categories: 2025 edition