About Participate Hackathons Main Stage 2025

DigiEduHack 2025

Rethinking education in the age of digital skills.

Get ready: the 6th edition of DigiEduHack will take place 7-16 Nov 2025

Seize the opportunity, let's support people-driven digital transformation in education together!

Aindrea AI Coaching

A solution proposed for the challenge EduDataHack: Innovating Learning Through Data

Solution details

Aindrea is an AI-powered digital coaching platform designed to enhance both teaching and learning experiences. It provides:
Educators with reflective guidance to plan lessons, manage classrooms, and strengthen empathy and communication. 
Students with personalized coaching to develop self-awareness, visualize goals, and build resilience.
Key elements:Human-like conversational AI built on Microsoft Azure Cognitive Services. Emotionally intelligent feedback system that adapts to tone and context. Secure, private dashboards for reflection and progress tracking.
Implementation milestones:
1. DigiEduHack Hackathon 12 Nov 2025: Prototype MVP (secure sign-in, coaching sessions, reflection dashboard). Aindrea — AI Coach (https://www.aindrea.coach)
2. Q2 2026: Pilot with partner universities.
3. Q4 2026: Enterprise licensing for educational institutions.
4️. 2027+: Expansion into continuous professional development and lifelong learning. 
Resources required: Azure cloud infrastructure, AI training data, educational partnerships, and coaching framework experts. 
Foreseen barriers: Data privacy compliance (GDPR/HIPAA) and institutional onboarding time.
Success metrics:Teacher engagement improvement and student self-assessment progress. Institutional adoption rate. Retention and satisfaction scores.

Tweet / Slogan

Aindrea brings coaching to education. An AI-driven coach that helps teachers plan with purpose and students learn with vision, offering personalized, confidential, and emotionally intelligent guidance 24/7. Fully functional AI-powered MVP - https://www.aindrea.coach

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