
Dati sintetici: l'infrastruttura per lo Spazio Europeo dei Dati Sanitari
Perché i dati sintetici rappresentano una chiave tecnologica per abilitare l'uso secondario dei dati clinici nella sanità italiana e accelerare la ricerca medica già oggi.
Unlocking safer, faster, and more ethical innovation in healthcare
At Aindo, we develop tools that help researchers, hospitals, and healthcare innovators work with data that is safe, shareable, and scientifically robust. This blog is the first in our Synthetic Data in Healthcare series, where we explore how synthetic data is transforming the field.
Artificial Intelligence is rapidly transforming healthcare – from diagnostic imaging to patient triage, drug discovery to personalized medicine. But AI is only as good as the data it learns from. And in healthcare, access to rich, diverse, and compliant data is one of the biggest roadblocks to innovation.
Training reliable AI systems requires large volumes of high-quality data that represent real-world variability across:
Yet in practice, healthcare data is often:
This makes it difficult for researchers and innovators to access the data they need, when they need it. Industry research suggests that data-intensive projects in healthcare take an average of nine months to complete,1 with patient recruitment alone accounting for up to 30% of clinical trial costs.2 The result is slow progress, high costs, and models that may not generalize well across diverse patient populations.
Synthetic data changes this.
Generated by advanced generative AI models, synthetic data replicates the statistical properties of real data without exposing individual patients. When validated for quality and privacy, it becomes a powerful enabler for AI development: safe to use, fast to access, and free to share across teams and borders.
With synthetic data, healthcare innovators can:
Synthetic data makes it possible for healthcare AI to advance without compromise: protecting individuals while unlocking insights at scale.
For patients, this means quicker development of diagnostic tools, safer treatment recommendations, and more inclusive AI systems that perform well across diverse populations. For innovators, it means reduced delays, lower costs, and a more direct path from research to real-world impact.
In our next blog in the Synthetic Data in Healthcare series, we will explore how synthetic data powers Real-World Evidence (RWE), helping researchers generate credible insights when traditional data is scarce or inaccessible.
In the meantime, you can dive deeper by checking out our white paper on synthetic data in clinical research.
Curious how synthetic data could accelerate your next AI project? Let’s talk about your use case today.

Perché i dati sintetici rappresentano una chiave tecnologica per abilitare l'uso secondario dei dati clinici nella sanità italiana e accelerare la ricerca medica già oggi.

Come i dati sintetici stanno diventando la base per la generazione di evidenze cliniche e lo sviluppo di intelligenze artificiali specializzate.

Il dato sintetico non è solo uno strumento per la privacy. È il fondamento di una nuova infrastruttura del dato in sanità, capace di renderlo utilizzabile su scala.
What we look for
Beyond your technical background, we look for:
What we offer
💡 Growth & Impact: join a fast-growing company where you’ll lead strategic projects, shape solutions and see the tangible impact of your work
🌴 Flexibility & Wellbeing: hybrid or fully remote work, ticket restaurant and health insurance
🤝 Collaborative Culture: work in autonomous teams with highly talented colleagues, in a supportive, innovative and ethical environment
How to apply
To apply, please send your CV and a motivation letter to [email protected], with the subject “Spontaneous Application - [Your Area of Expertise]”.
Aindo is an Equal Opportunity-Affirmative Action Employer – Minority / Female / Disability / Veteran / Gender Identity / Sexual Orientation / Age.