[align=center]
Python For Data Science & Machine Learning Foundations
Published 6/2026
Created by General Gichohi Kihara
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Expert | Genre: eLearning | Language: English | Duration: 32 Lectures ( 6h 33m ) | Size: 2.8 GB
Master NumPy, Pandas, Matplotlib, Scikit-Learn & PyTorch with real African datasets - before your first ML model.
What you'll learn
⚡ Write clean Python for data science: comprehensions, OOP, file I/O, and *args/**kwargs
⚡ Use NumPy arrays, broadcasting, and vectorisation instead of slow Python loops
⚡ Wrangle messy real-world data using Pandas groupby, merge, and feature engineering
⚡ Produce publication-quality EDA charts with Matplotlib and Seaborn
⚡ Build production-ready Scikit-Learn pipelines that prevent data leakage[/center]
⚡ Write a PyTorch training loop from scratch: tensors, autograd, nn.Module, DataLoader
⚡ Apply hypothesis testing and distributions to make better modelling decisions
⚡ Set up a full Colab + Google drive environment for any data science project
Requirements
❗ Basic Python knowledge - you should know what a function, loop, and list is
❗ No prior data science or ML experience needed
❗ A Google account (all work is done in free Google Colab - no local setup required)
❗ Willingness to run real code on real datasets every lesson
Description
Most students fail their first ML course not because the algorithms are hard - but because they can't read the data, clean it, or understand what the model is operating on.
This course fixes that. You'll build the exact Python foundation that every professional data scientist uses before touching a single algorithm: NumPy arrays, Pandas wrangling, Matplotlib visualisations, Scikit-Learn pipelines, PyTorch training loops, and statistical thinking.
Every lesson uses real datasets so the skills feel immediately practical, not textbook-abstract.
Every dataset in this course comes from real-world problems - agriculture, finance, and public health - so you're never practising on made-up numbers. You'll know how to handle the kind of messy, incomplete, real data that actually shows up on the job.
By the end of this course you will be able to: load any real-world dataset, clean and wrangle it with Pandas, visualise it for EDA, build a full Scikit-Learn preprocessing pipeline, write a PyTorch training loop from scratch, and apply the right statistical test to support your modelling decisions.
This is not a detour from machine learning. This is the ML infrastructure. Students who complete this course go on to finish ML courses - students who skip it simply do not.
Each module comes with a downloadable cheatsheet and a hands-on Colab notebook with exercises and solutions - so you are not just watching videos, you are building a personal reference library you will use for years. Everything runs in free Google Colab. No paid software, no complex local setup, no excuses.
Who this course is for
⭐ Python developers who want to transition into data science or ML
⭐ Students who have tried an ML course and felt lost when the data got messy
⭐ Self-taught programmers building a formal data science foundation
⭐ Anyone working with agricultural, financial, or survey data
⭐ Engineers enrolling in the companion ML & Deep Learning course
Homepage
https://anonymz.com/? https://www.udemy.com/course/python-for-data-science-machine-learning-foundations
https://rapidgator.net/file/70acc5d719a6a53eda5581440329c756/Python_for_Data_Science_&_Machine_Learning_Foundations.part3.rar.html
https://rapidgator.net/file/3741083f109 … 2.rar.html
https://rapidgator.net/file/6200298845c … 1.rar.htmlhttps://nitroflare.com/view/2FF2930F35A962A/Python_for_Data_Science_&_Machine_Learning_Foundations.part3.rar
https://nitroflare.com/view/1FDC969C9793146/Python_for_Data_Science_&_Machine_Learning_Foundations.part2.rar
https://nitroflare.com/view/DE298ECFD3898FB/Python_for_Data_Science_&_Machine_Learning_Foundations.part1.rar
