Time Series Analysis, Forecasting, and Machine Learning in Python

Master statistical and machine learning models in Python to analyze temporal data, forecast future trends, and build predictive pipelines for finance, sales, and operations.

4.8 (3,137) ⏱ 44分 📚 11レッスン

このコースについて

Understanding temporal data is critical for making informed business decisions, predicting market trends, and optimizing operations. This comprehensive text-based course guides you step-by-step through the process of analyzing and forecasting time series data using Python. You will progress from understanding foundational statistical concepts to implementing advanced machine learning and deep learning models. By working through clear explanations, conceptual breakdowns, and practical written code exercises, you will gain the skills needed to build robust forecasting pipelines for real-world applications like sales, finance, and demand planning. What you'll learn: - Understand foundational time series concepts including stationarity, seasonality, autocorrelation, and trend decomposition. - Apply classic statistical forecasting models such as ARIMA, SARIMA, and Exponential Smoothing to temporal datasets. - Build machine learning pipelines for forecasting using Support Vector Regression, Random Forests, and modern gradient boosting. - Implement deep learning architectures including Recurrent Neural Networks (RNNs) and Long Short-Term Memory (LSTM) networks for complex sequence prediction. - Utilize modern forecasting libraries like Prophet and cloud-based APIs like AWS Forecast to streamline production workflows. - Evaluate model performance using robust validation techniques like walk-forward validation and specialized time series metrics. The course starts with essential statistical definitions and data preparation techniques using Python's modern data science ecosystem. From there, you will explore classical statistical modeling, transition to machine learning approaches, and conclude with deep learning architectures and cloud-scale forecasting tools. This course is designed for beginner data scientists, analysts, and developers who want to specialize in temporal data. No prior experience with time series modeling is required, though a basic familiarity with Python programming is helpful. Start mastering time series analysis and unlock the predictive power of your historical data today.

得られるもの

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  • ♾️ 無期限アクセス
    いつでも再開可能、有効期限なし
  • 📱 スマホでもPCでも
    どこでもどんな端末でも
  • 💸 30日返金保証
    理由を聞きません
  • 短く要点だけ
    44分の実践的な内容

レビュー (3)

Bente Nielsen DK 認証済み受講者
★ 3 · 2026-02-03T05:39:53+00:00

期待以上だった!構成は論理的で、実世界のシナリオが学習内容の定着に本当に役立った。素晴らしい価値だ。

Võ Thị Giang VN
★ 3 · 2025-11-13T18:54:53+00:00

It's a decent introduction. Could use a few more real-world examples to solidify the concepts, though.

سلمان بن أحمد BH 認証済み受講者
★ 5 · 2025-09-26T11:12:53+00:00

Fantastic value here. The examples used were super helpful for understanding the core ideas. Definitely worth the time.

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