EDA and Classification with Logistic Regression and KNN

Learn to analyze feature distributions and build predictive classification models using medical datasets through clear written explanations and step-by-step code.

⏱ 1 oras 10 min 📚 6 aralin 🎧 Audio version

Tungkol sa kursong ito

Healthcare data holds critical insights, but extracting meaningful patterns requires structured analysis. Understanding how to clean, explore, and model medical datasets is a fundamental skill for aspiring data scientists. In this written guide, you will transition from raw data to predictive insights. You will learn how to perform thorough exploratory data analysis (EDA), understand feature distributions, and apply classification algorithms like Logistic Regression and K-Nearest Neighbors (KNN) to a real-world breast cancer dataset. What you'll learn: - Understand foundational data science concepts and the classification pipeline - Analyze feature distributions and identify patterns using exploratory data analysis - Prepare and preprocess medical datasets for machine learning models - Implement Logistic Regression and K-Nearest Neighbors (KNN) algorithms - Evaluate model performance using key metrics like precision, recall, and F1-score - Compare and select the best classification model for healthcare predictions The course begins with essential terminology and data exploration techniques before guiding you through feature engineering and model implementation using clean, structured Python code snippets. This course is designed for beginners who want to build a strong foundation in classification tasks, with no advanced prerequisites required. Start exploring medical data and building your first classification models today.

Ang makukuha mo

  • 📜 Certificate ng pagtatapos
    Idagdag sa LinkedIn profile mo
  • 🎧 Kasama ang audio version
    Mag-aral kahit saan — hindi kailangan ng screen
  • ♾️ Lifetime access
    Bumalik anumang oras, walang expiry
  • 📱 Telepono o computer
    Gumagana saanman, kahit anong device
  • 💸 30-day refund
    Walang tanong
  • Maikli at focused
    1 oras 10 min ng practical content

Mga Review

Wala pang review — ikaw ang unang magbahagi.

Magsulat ng review

Hihilingin naming mag-sign in ka pagkatapos — ligtas ang draft mo.

Mga madalas itanong

Ano ang kailangan ko para sa kursong ito? +

Telepono o computer na may internet lang. Walang install, walang special hardware.

Paano ako magbabayad? +

Sa pamamagitan ng card via Stripe, o cryptocurrency. Hindi namin iniimbak ang detalye ng card — secure na hinahawakan ng Stripe.

Pwede ba akong mag-refund? +

Oo — full refund sa loob ng 30 araw, walang tanong.

Hanggang kailan ang access ko? +

Habang buhay. Sa pagbili, sa iyo na ang course — balikan mo kahit kailan.

Makakakuha ba ako ng certificate? +

Oo. Pagkatapos, makakatanggap ka ng certificate na maidadagdag sa LinkedIn profile mo.

Para sa mga learner sa
Tech Design Finance Marketing Healthcare Edukasyon Hospitality Manufacturing