コース
Pythonで学ぶMachine Learning面接対策
上級スキルレベル
更新日 2022/09PythonMachine Learning4時間16 ビデオ60 演習4,600 XP12,027達成証明書
数千の企業の学習者に愛されています
2名以上のトレーニングをお考えですか?
DataCamp for Businessを試すコース説明
前提条件
Unsupervised Learning in PythonSupervised Learning with scikit-learn1
Data Pre-processing and Visualization
In the first chapter of this course, you'll perform all the preprocessing steps required to create a predictive machine learning model, including what to do with missing values, outliers, and how to normalize your dataset.
2
Supervised Learning
In the second chapter of this course, you'll practice different several aspects of supervised machine learning techniques, such as selecting the optimal feature subset, regularization to avoid model overfitting, feature engineering, and ensemble models to address the so-called bias-variance trade-off.
3
Unsupervised Learning
In the third chapter of this course, you'll use unsupervised learning to apply feature extraction and visualization techniques for dimensionality reduction and clustering methods to select not only an appropriate clustering algorithm but optimal cluster number for a dataset.
4
Model Selection and Evaluation
In the fourth and final chapter of this course, you'll really step it up and apply bootstrapping and cross-validation to evaluate performance for model generalization, resampling techniques to imbalanced classes, detect and remove multicollinearity, and build an ensemble model.
Pythonで学ぶMachine Learning面接対策
コース完了 19百万人を超える学習者と一緒にPythonで学ぶMachine Learning面接対策を今日から始めましょう!
DataCamp for Mobileでデータスキルを磨きましょう
モバイル コースと毎日の 5 分間のコーディング チャレンジで、外出先でも進歩できます。