Past edition

NOI Hackathon Summer Edition

Aug 2nd-3rd, 2024

Projects

Prizes

  • Win an Amazon Gift Card

    Win an Amazon Gift Card

    Won by Tenda

    Offered by #SmartEnergyCluster

    Read more

    You and your team will receive a 500 € Amazon gift card (total mount for the team)

    Show criteria

    The first option is simpler, which means that we’ll expect a much-elaborated solution. The second option is more challenging and carries higher added value, which means that even experiments and not perfect solutions could be considered.

    The two options for the challenge:

    1. Starting from timeseries data made available from projects or other sources related to buildings (energy-IEQ), make (a software pipeline for) open datasets available
    2. Make a software pipeline that can generate a dataset (starting from Google Maps / Street View etc... and other datasets) in which buildings in a district/city are automatically described and classified by number of windows, presence of balconies, height, type etc...
  • Win an Amazon Gift card

    Win an Amazon Gift card

    Won by TracerTag

    Offered by Gruppo FOS

    Read more

    You and your team will receive a 500 € Amazon Gift Card (total amount for the team)

    Show criteria

    Your project has  to allow to automatically detect and outline all objects that respect some given parameters (e.g. colour, shape) within an image, it then has return the list of objects detected inside the image as a list of JSON objects, as well as display the detected outline on top of the input image.

  • Win a monni card and a KONVERTO drinking bottle

    Win a monni card and a KONVERTO drinking bottle

    Won by Supa-Charging

    Offered by KONVERTO AG

    Read more

    You and your team will receive a 500 € monni card (total amount for the team) and each team member gets a KONVERTO drinking bottle.

    Show criteria

    Optimal EV Charging Planner

    I know that in 30 minutes I’ll be in BZ. I want to charge my car at the nearest available compatible charging station to my destination. I have an appointment at the physio therapist that takes one hour. When I come back to my car, I want it to be fully charged. This means the app should not only send me to the nearest charger to my destination but should also take into consideration the charging speed (kW) of the charger and my current battery level. If my appointment takes 3h, a slower charger may be enough and more cost efficient. If the appointment takes only 15 minutes, a faster charger would be required to fully charge the car. This obviously depends on the cars battery level when I arrive at the charger. So, this should be considered. Additionally, I’d like to have the possibility to specify the percentage my car should have when I come back. If my appointment takes 15 minutes, but I’d just like to charge from 60% to 70%, a slower charger could be sufficient and cost less per kWh.

    App:
    Input:

    • App where you input your destination and how long you plan to stay in that area.
    • Additionally, I’d like to have the possibility to optionally enter the battery level that my car should have when I come back from my appointment.

    Output:

    • The charger nearest to my destination available with the right charging speed to charge my car in the time I’m at my appointment.

    The data required should be available on Open Data Hub.

  • Win an Amazon Gift Card

    Win an Amazon Gift Card

    Won by ChargeBot

    Offered by WaveLAB

    Read more

    Your team will receive a 500 € Amazon card and will be selected to collaborate with WaveLAB.

    Show criteria

    The proposal must demonstrate an innovative use of GenAI that adds significant value to WaveLAB stations, improving user interaction and satisfaction. 
    It should be technically feasible and integrable with the existing infrastracture.

Jury

Mentors

Team

Partners & Supporters

Co-organised by

  • NOI Techpark
  • Stiftung Südtiroler Sparkasse

Co-funded by the European Union

  • IMPACT FESR 1048

We are proud to be supported by these remarkable companies

  • #SmartEnergyCluster

complemented by the invaluable contributions of our challenge providers

  • Gruppo FOS
  • KONVERTO AG
  • WaveLAB