Campus Ideaz

Share your Ideas here. Be as descriptive as possible. Ask for feedback. If you find any interesting Idea, you can comment and encourage the person in taking it forward.

digitalwellbeing (1)

These days, smartphones have become very necessary, but they also bombard us with endless notifications. Food delivery ads, random sales offers, game promotions, all compete for our attention. This barrage of alerts makes it easy to miss critical notifications like OTPs, warnings, delivery updates or important texts and mails. This results in one always being distracted and stressed.

One of the current solutions is “Do Not Disturb” mode. It applies restrictions on notifications and calls and users can also enable app-by-app notification controls. But this only partly address the issue as its too manual and time-consuming resulting in users being too intimidated to even start keeping settings. None of these methods understand context or prioritize anything automatically. This is the gap in the current market.

The solution is to build a Smart Notification Filter powered by AI. The filter would categorize incoming notifications into three lists: Urgent (e.g., OTPs, reminders, calls), Useful (delivery updates, calendar events), and Promotional (ads, sales, spam). The system will learn from user behaviour like what they click, what they clear, and at what times they interact with them. For example, if I always ignore food coupons but instantly open my college mails, the filter will adjust and push college mails to the top while hiding promotional spam.

Beneficiaries:

  • Users get peace of mind, less distractions, and less risk of missing urgent notifications.
  • Companies/OS makers (like Apple, Google, or smartphone brands) benefit by offering a premium feature, improving user experience thereby increasing customer loyalty.
  • Society benefits indirectly through healthier and more focused habits.

This problem matters to me because I experience it everyday, receiving hundreds of notifications and sometimes even missing important academic related mails due to it.

Technical Details: The system can use Natural Language Processing (NLP) to analyze notification text, sender identity, and past user actions. It is lightweight on-device machine learning models and it ensures privacy while still learning user preferences. Notifications can then be displayed in a priority inbox style, with urgent ones highlighted and promotional ones batched for later review.

Read more…