Built a Scalable Data Platform on Azure & Databricks- DS4Earth feedback and suggestions! #14589
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Hi, thanks for sharing DS4Earth—this is a really interesting and well-thought-out platform. I went through the overview and architecture, and here are some detailed thoughts that might help strengthen it further: 👍 What stands out
Flood prediction for a specific region This helps readers quickly understand practical value.
“Model accuracy improved by 20% (7% to 95%)” is a bit confusing and may raise questions. It would help to: Specify the metric (accuracy, F1-score, RMSE, etc.)
You could strengthen it by briefly mentioning: Streaming vs batch processing (e.g., real-time ingestion approach) Even a short paragraph here would add a lot of technical credibility.
Consider adding: Sample API endpoint (e.g., /climate-risk?lat=...)
200K+ data points/day You could make this even stronger by adding: Prediction lead time improvement
There are a few repetitions (e.g., “AI-powered climate intelligence”) |
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Built a Scalable Data Platform on Azure & Databricks- DS4Earth
I’ve developed a cloud-native data platform focused on performance, scalability, and cost optimization.
Tech Stack:
API
Databricks-Medallion Arch (PySpark)
Delta Lake
Databricks Notebook and Pipeline
Tableau
Key Features:
Optimized data pipelines (30% faster)
Scalable architecture design
End-to-end analytics workflow
Repo: https://github.com/errajeshcs-pixel/DS4Earth
Would love feedback and suggestions!
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