Advertisement

Scikit-learn in Python: 100+ Data Science Exercises ($64.99 to FREE)

 (Read 50 times)

Udemy

  • Guest
Scikit-learn in Python: 100+ Data Science Exercises

The "Scikit-learn in Python: 100+ Data Science Exercises" course is a comprehensive, hands-on guide to one of the most essential libraries for machine learning in Python, Scikit-learn. This course employs a practical, exercise-driven approach that helps learners understand and apply various machine learning algorithms and techniques.

The course is organized into different sections, each devoted to a specific aspect of the Scikit-learn library. It covers everything from data preprocessing, including feature extraction and selection, to various machine learning models such as linear regression, decision trees, support vector machines, and ensemble methods, to model evaluation and hyperparameter tuning.

Each section is packed with carefully designed exercises that reinforce each concept and give you the chance to apply what you've learned. You will solve real-world problems that mirror the challenges faced by data scientists in the field. Detailed solutions accompany each exercise, enabling you to compare your work and gain a better understanding of how to best use Scikit-learn for machine learning tasks.

The "Scikit-learn in Python: 100+ Data Science Exercises" course is perfect for anyone interested in expanding their data science toolkit. Whether you're a beginner looking to dive into machine learning, or a seasoned data scientist wanting to refine your skills, this course offers an enriching learning experience.



Scikit-learn - Unleash the Power of Machine Learning!

Scikit-learn is a versatile machine learning library in Python that provides a wide range of algorithms and tools for building and implementing machine learning models. It is widely used by data scientists, researchers, and developers to solve complex problems through classification, regression, clustering, and more. With Scikit-learn, you can efficiently preprocess data, select appropriate features, train and evaluate models, and perform model selection and hyperparameter tuning. It offers a consistent API, making it easy to experiment with different algorithms and techniques. Scikit-learn also provides useful utilities for data preprocessing, model evaluation, and model persistence. Its user-friendly interface and extensive documentation make it a go-to choice for machine learning practitioners looking to leverage the power of Python for their projects.



Topics you will find in this course:

-preparing data to machine learning models

-working with missing values, SimpleImputer class

-classification, regression, clustering

-discretization

-feature extraction

-PolynomialFeatures class

-LabelEncoder class

-OneHotEncoder class

-StandardScaler class

-dummy encoding

-splitting data into train and test set

-LogisticRegression class

-confusion matrix

-classification report

-LinearRegression class

-MAE - Mean Absolute Error

-MSE - Mean Squared Error

-sigmoid() function

-entorpy

-accuracy score

-DecisionTreeClassifier class

-GridSearchCV class

-RandomForestClassifier class

-CountVectorizer class

-TfidfVectorizer class

-KMeans class

-AgglomerativeClustering class

-HierarchicalClustering class

-DBSCAN class

-dimensionality reduction, PCA analysis

-Association Rules

-LocalOutlierFactor class

-IsolationForest class

-KNeighborsClassifier class

-MultinomialNB class

-GradientBoostingRegressor class



Quote
Bots scrape the links and claim udemy coupon codes automatically. So, you need to be logged in to claim this course for free..

Login or post a reply to unlock.
登录或发表回复即可解锁
Inicia sesión o publica una respuesta para desbloquear
Entre ou poste uma resposta para desbloquear
Connectez-vous ou postez une réponse pour déverrouiller
अनलक करने के लिए साइन इन करें या पोस्ट करें।
تسجيل الدخول أو الرد على فتح

Login.


Please note: As an affiliate partner with Udemy, this post includes affiliate links. Purchasing any course through these links may earn me a commission, but please buy only if it aligns with your goals. Thanks for your support!