AI in music and entertainment industry:

Client Background

Our client is an independent music streaming platform with a loyal niche audience. They offer songs, playlists, podcasts, and live performances across multiple languages. As competition grew, they wanted to expand their user base, improve music discovery, and boost listener engagement. That’s when they partnered with Binstellar for a custom AI solution to better understand users and deliver a more personalized experience.

Challenges Faced

Although client had good music content, they were facing several major challenges:

1. Poor Music Discovery

New users found it hard to discover songs they liked. The app had limited recommendation features and no dynamic playlists.
2. Low Listener Retention
Users often streamed 2-3 songs and left. There was no intelligent system to keep them engaged with similar or trending content.
3. One-size-fits-all Playlist
Everyone saw the same playlists. Regional preferences, mood-based filtering, or listening behavior were not being used to personalize content.
4. Artists Not Getting Visibility
Independent artists weren’t reaching the right audience. Their music would often get buried under more popular tracks.
5. Basic Analytics
The platform had no real insight into what users liked, skipped, or replayed. They had raw data, but couldn’t use it to improve the experience.

How Binstellar Helped

After multiple discussions with the product team, artists, and even a few users, we created a roadmap to add AI and machine learning to their platform in a practical and scalable way.

Phase 1: Understanding User Behavior

We collected and analyzed 12 months of user data — song plays, skips, likes, search history, location, language preference, and listening time.

This helped us understand:

Phase 2: Building the AI Engine

To help our client stand out in a competitive streaming market, Binstellar developed a custom AI system designed to deeply personalize the listening experience and improve user engagement. Here’s how we did it:

Smart Recommendations with Machine Learning

We implemented collaborative filtering and content-based filtering algorithms to build a recommendation engine.

Artist Boost Engine

Based on engagement metrics, AI now helps push upcoming or less-heard artists to relevant listeners. This gives new talent better reach without needing manual promotion.

Regional Language Detection
Tech Stack Highlights
Real-Time Insights Dashboard

We built a visual dashboard for the client team. It shows real-time song performance, listener trends, drop-off points, and artist engagement

Phase 3: Integration and Rollout

We carefully integrated this AI engine into their existing system without disrupting their current users. The process took about 5 weeks.

We also trained their in-house team on how to read the analytics dashboard and fine-tune the AI rules as needed.

Conclusion

This case shows how AI can bring real value in the music and entertainment industry. For TuneSync, it wasn’t about flashy features – it was about making the listening experience smarter, more personal, and fair for artists.
At Binstellar, we focus on practical AI solutions that work behind the scenes to create better user experiences and help businesses grow.
Whether you’re running a music platform, a podcast network, or an artist marketplace — AI can help you understand your audience and serve them better.