1 min readfrom Machine Learning

I’m building a free bilingual machine-learning notebook course — looking for feedback on structure and coverage [R]

Hi everyone,

I’m building an open-source machine-learning tutorial repository in Jupyter Notebook format:

https://github.com/mohammadijoo/Machine_Learning_Tutorials

The course is bilingual: English and Persian/Farsi versions are organized in parallel. The goal is to make a practical, notebook-first ML curriculum that students can run locally and study step by step.

Current focus areas include:

  • ML foundations and workflow
  • data cleaning, preprocessing, feature engineering
  • regression and classification
  • tree models and ensembles
  • clustering and dimensionality reduction
  • evaluation, cross-validation, calibration
  • time series, anomaly detection, responsible ML, and MLOps concepts
  • datasets and exercises for hands-on practice

I would appreciate feedback on:

  • whether the chapter order makes sense for beginners
  • what important classical ML topics are missing
  • whether bilingual notebooks are useful for non-native English learners
  • how to make the notebooks more practical without turning them into only “copy/paste code”

I’m sharing this as a free educational resource and would value constructive criticism.

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