Takipçi sayacı
Görüntülenme sayacı
Most of my early data science learning didn’t come from courses.
It came from building small projects and noticing what actually changes model behavior.

🎬 Netflix Show Clustering
This was my first unsupervised learning project.

Most of the effort went into cleaning the dataset and encoding features like genre and ratings.

Also learned that clustering algorithms break easily if features aren’t scaled properly

🧠 Diabetes Prediction with Model Comparison
This was one of the first projects where I compared multiple models on the same dataset.

The interesting part wasn’t the model, it was the preprocessing.
Also realized accuracy doesn’t say much unless you look at the confusion matrix and other metrics.

🎧 Spotify Song Popularity Predictor
This project was my first time working with API data instead of a static dataset.

Collecting and preparing the data took more effort than training the model.
Explaining predictions with SHAP made the model easier to understand.

📉 Customer Churn Predictor
This one felt closest to a real business problem.
The biggest realization was that accuracy can be misleading when churn cases are rare.

You start thinking more about recall, precision, and the cost of missing a churn prediction.
Turning the model into a small interactive app made the project feel much more practical.

These kinds of projects teach you more than just running models.
They change how you think about data.

💾 Save this if you’re looking for beginner data science project ideas.
💬 Comment **PROJECTS** if you want project links with full explanation.
🔁 Follow for more practical AI & data learning notes.

Most of my early data science learning didn’t come from courses. It came from building small projects and noticing what actually changes model behavior. 🎬 Netflix Show Clustering This was my first unsupervised learning project. Most of the effort went into cleaning the dataset and encoding features like genre and ratings. Also learned that clustering algorithms break easily if features aren’t scaled properly 🧠 Diabetes Prediction with Model Comparison This was one of the first projects where I compared multiple models on the same dataset. The interesting part wasn’t the model, it was the preprocessing. Also realized accuracy doesn’t say much unless you look at the confusion matrix and other metrics. 🎧 Spotify Song Popularity Predictor This project was my first time working with API data instead of a static dataset. Collecting and preparing the data took more effort than training the model. Explaining predictions with SHAP made the model easier to understand. 📉 Customer Churn Predictor This one felt closest to a real business problem. The biggest realization was that accuracy can be misleading when churn cases are rare. You start thinking more about recall, precision, and the cost of missing a churn prediction. Turning the model into a small interactive app made the project feel much more practical. These kinds of projects teach you more than just running models. They change how you think about data. 💾 Save this if you’re looking for beginner data science project ideas. 💬 Comment **PROJECTS** if you want project links with full explanation. 🔁 Follow for more practical AI & data learning notes.

Feature Post
2,916

Likes

The görüntülenme count is showing 0 because the owner may have restricted visibility or made counts private.

Grafik

Performance

Posted Mar 14, 2026

2,916

Current Likes

Since Page Load

+0

Per Minute

+0

Per Hour

16.88%

Engagement Rate

69.68%

Comment Rate

Performance monitor

Next Likes Milestone

2,000

91.60%

2,916
3,000

0

Days

0

Hours

0

Minutes

0

Seconds
Loading ad...

Gönderi detayları

ReelVideo

Caption

Most of my early data science learning didn’t come from courses. It came from building small projects and noticing what actually changes model behavior. 🎬 Netflix Show Clustering This was my first unsupervised learning project. Most of the effort went into cleaning the dataset and encoding features like genre and ratings. Also learned that clustering algorithms break easily if features aren’t scaled properly 🧠 Diabetes Prediction with Model Comparison This was one of the first projects where I compared multiple models on the same dataset. The interesting part wasn’t the model, it was the preprocessing. Also realized accuracy doesn’t say much unless you look at the confusion matrix and other metrics. 🎧 Spotify Song Popularity Predictor This project was my first time working with API data instead of a static dataset. Collecting and preparing the data took more effort than training the model. Explaining predictions with SHAP made the model easier to understand. 📉 Customer Churn Predictor This one felt closest to a real business problem. The biggest realization was that accuracy can be misleading when churn cases are rare. You start thinking more about recall, precision, and the cost of missing a churn prediction. Turning the model into a small interactive app made the project feel much more practical. These kinds of projects teach you more than just running models. They change how you think about data. 💾 Save this if you’re looking for beginner data science project ideas. 💬 Comment **PROJECTS** if you want project links with full explanation. 🔁 Follow for more practical AI & data learning notes.

Posted

March 14, 2026, 12:15 AM

Dimensions

720 × 1280

Post ID

3852278028488127204

@techwithprateek gönderileri

Loading ad...

Başka gönderi takip et

Paste an Instagram post or reel URL to view its live counters

Feature this post in the Sponsored section

Reach 100,000+ daily Instagram enthusiasts with your post displayed to real users browsing our site every day.

Get Featured

How to Track a Post or Reel

1

Open Instagram

Open the Instagram app or website and navigate to the post or reel you want to track.

2

Copy the Link

Tap the share button (paper plane icon) or the three dots (...) menu and select "Copy link".

3

Paste Here

Paste the copied URL into the search box above and click "Go". That's it!

4

Watch Live

See views, likes, comments, and shares update in real-time every 5 seconds.

Frequently Asked Questions

© 2016-2026 Instastatistics LLC

Public statistical data shown on this website is sourced from third-party services and public endpoints. Instagram does not control, approve, or endorse how this data is presented on Instastatistics.

The name "Instagram" is used for contextual and descriptive purposes only. Instastatistics is not affiliated with, endorsed by, or sponsored by Instagram or Meta Platforms, Inc.

Quick Links

Terms of ServicePrivacy Policy