Skip to main content
Case study – Piazza Copernico
E-learning

Designing Digital Learning Courses with Generative AI

For Piazza Copernico, we developed an LLM-based system that supports instructional designers in creating complex and personalized educational content, while maintaining quality and confidentiality.

Case study – Piazza Copernico
E-learning

Designing Digital Learning Courses with Generative AI

For Piazza Copernico, we developed an LLM-based system that supports instructional designers in creating complex and personalized educational content, while maintaining quality and confidentiality.


Piazza Copernico
E-learning

Designing Digital Learning Courses with Generative AI

For Piazza Copernico, we developed an LLM-based system that supports instructional designers in creating complex and personalized educational content, while maintaining quality and confidentiality.

Problem

01.
  • Long times for analysis and writing
  • Standards and consistency hard to maintain

Creating content for digital learning courses requires complex, consistent, and personalized texts for every learning path. Doing this manually slows down production and makes it difficult to maintain consistent standards across growing volumes, especially when sources are many and fragmented. The need was to speed up without losing control and verifiability.

Solution

02.
  • Source-driven generation (RAG)
  • Verification by querying the sources

GRID+ developed a system based on LLMs with Retrieval-Augmented Generation (RAG) methodology that generates complex, personalized texts for every course starting from defined source materials. The model produces content while also allowing users to query the sources to verify and validate the output, making the workflow more controllable and reliable.

Result

03.
  • Concrete support for analysis and writing
  • More focus on instructional strategy and quality

The solution is operational and currently in testing to measure its impact on the workflow. It supports trainers in the analysis and drafting phases, improving human-machine interaction and reducing repetitive tasks. This frees up time to focus on instructional choices, the structure of learning paths, and the overall quality of the content.

What changed

Before and after introducing
Generative AI

Before

Before

Manual analysis and macro-design, with long times.

Hard to speed up without reducing quality and consistency.

Source verification more scattered during drafting.

After

After

AI support in the analysis and text drafting phases.

Source querying to verify the output.

More time for instructional designers to focus on instructional strategies.

More projects

Discover how we bring generative AI into other work environments — from multimedia content production to editorial process optimization — and how our approach adapts to the specific challenges of every organization.
Clinica Nuova Itor

Speech-to-Text for Clinical Documentation

For Clinica Nuova Itor, we developed a Speech-to-Text tool specialized for the medical context, dedicated to dictating electronic health records, making documentation smoother and more efficient for healthcare staff.
L’identità

AI-Powered Video Content Automation for Journalism

GRID+ developed a generative AI solution for L’Identità that transforms articles into short videos ready for digital channels. Automated, fast, and customizable creation.
Piazza Copernico

Designing Digital Learning Courses with Generative AI

For Piazza Copernico, GRID+ developed a generative AI solution that produces complex, personalized texts for every course, based on LLMs with a RAG approach.
Witapp

AI-Based Automatic Segmentation of Peritoneal Lesions

For Witapp, a highly specialized technology software house, we developed an AI model for the automatic segmentation of peritoneal lesions, supporting faster and more precise diagnostic analysis.
FS Engineering

AI-Based Ground Anomaly Detection

For FS Engineering, an engineering company of the Ferrovie dello Stato Italiane Group, we developed an AI framework capable of identifying anomalies in the ground through the integration of data from various instruments.

Custom solution

Want to bring AI
into your work processes?
Tell us about your process and your goal. We assess the data, integrations, and constraints, and tell you what’s really needed to go into production — without unnecessary complexity.

Do you have a specific need?

Fill out the form and tell us about your project.
We'll propose the solution that best fits your context.
Unable to save your subscription. Please try again.
Thank you for submitting the form.

Do you have a specific need?

Fill out the form and tell us about your project. We'll propose the solution that best fits your context.
GRID+ Copyright © 2026. All Rights Reserved.
VAT No. 17387741006 | The capital has been paid up in full €10,000 | RM – 1715269
GRID+ Copyright © 2026. All Rights Reserved.
VAT No. 17387741006 | The capital has been paid up in full €10,000 | RM – 1715269
P. IVA 17387741006 · The capital has been paid up in full €10,000 | RM – 1715269