Frequently Asked Questions

Choose your audience to jump directly to the most relevant answers.

For Scientific Researchers of Corporates & Academia

1. What does “AI-guided analytics” mean in practice?

It means structured, automated workflows that guide researchers through data preparation, analysis, and evaluation. Our system suggests appropriate analytical procedures, automates execution, and ensures traceable results without requiring coding or advanced data science expertise.

2. I’m not a data scientist. How does aixelerate help me?

We remove technical bottlenecks by handling data ingestion, cleaning, harmonization, and analysis within a no-code environment. Researchers can independently explore and analyze structured datasets while focusing on scientific interpretation rather than programming or infrastructure.

3. What types of data and analyses do you support?

We work with structured research datasets, including clinical, laboratory, omics, longitudinal, and multi-center data. Our workflows support descriptive and exploratory analysis, hypothesis testing, regression models, survival analysis, longitudinal modeling, subgroup analysis, correlation analysis, and evaluation of established machine learning models.

4. How do you ensure scientific rigor and transparency?

All preprocessing and analytical steps are scripted, version-controlled, and automatically documented. Workflows are human-validated, traceable, and designed to produce explainable, publication-ready outputs. No black-box results.

5. What makes your AI secure and trusted?

Our AI operates within secure, controlled environments where data remains under the user’s governance and ownership at all times. It does not extract, reuse, or expose proprietary data beyond the authorized research context. All analytical processes run within contained workflows, ensuring that sensitive information is never shared externally or used to train external systems.

In addition, every preprocessing and analytical step is reproducible, version-controlled, and human-validated. This combination of data containment, traceability, and methodological rigor makes our AI suitable for scientific, regulatory (EMA, FDA…), and EU-funded research environments.

6. Why not rely solely on generic AI consultancies or internal teams?

Generic AI providers often lack research-grade rigor and compliance awareness. Internal teams are frequently constrained by time and technical capacity. We combine life-science-specific analytical standards, secure infrastructure, and scalable automation accelerating delivery while maintaining scientific quality.

7. What tangible value do researchers gain?

Clean and harmonized datasets, faster time-to-insight, stronger analytical consistency, interpretable AI outputs, and structured documentation ready for dissemination or audit. We eliminate manual inefficiencies and standardize analytical reliability across projects.

European Research Projects

1. Why involve aixelerate in an EU-funded research project?

European projects often involve multi-center data, heterogeneous standards, and strict reporting obligations. We ensure structured data harmonization, reproducible preprocessing, and controlled analytical execution from the outset strengthening proposal robustness and long-term implementation.

2. How do you add value to Horizon Europe projects?

We support automated data ingestion and harmonization, analysis workflows, application and evaluation of validated machine learning models, and structured reporting aligned with EU deliverables. Our contribution enhances methodological consistency and reduces implementation risk.

3. Can you contribute to specific work packages?

Yes. We contribute to or lead work packages related to data management, analytics implementation, model evaluation, interoperability, reproducibility, and technical reporting. We help translate scientific objectives into structured, operational data workflows.

4. Do you support Data Management Plans (DMPs)?

Yes. Our workflows are designed in alignment with FAIR principles, traceability requirements, secure infrastructure standards, and GDPR awareness. We operationalize DMP commitments into practical, enforceable processes.

5. How do you ensure compliance and auditability?

All preprocessing and analytical steps are scripted, version-controlled, and automatically documented. Our pipelines are traceable and auditable, ensuring suitability for scientific review, regulatory scrutiny, and EU reporting requirements.

6. How do you improve project impact?

By standardizing analytical quality across partners, reducing inconsistencies, and ensuring reproducible evidence generation. Structured workflows minimize methodological variability and increase reliability of project outcomes.

7. What makes aixelerate a strong consortium partner?

We combine secure infrastructure, AI-guided automation, analytical and scientific rigor, and compliance-aware implementation in a single integrated framework. We do not operate as a generic analytics vendor. We embed structured, research-grade workflows into the core of the project.