- Dec 25, 2025
- 340
- 0
- 16
Free Download Time Series Analysis & Forecasting Fundamentals
Published 1/2026
Created by Advancedor Academy
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Intermediate | Genre: eLearning | Language: English | Duration: 29 Lectures ( 7h 50m ) | Size: 3.83 GB
Master ARIMA, GARCH, and LSTMs. Build production-ready forecasting pipelines with Python for Finance and Data Science.
What you'll learn
Master the foundations of time series analysis, including trend, seasonality, and stationarity tests like ADF and KPSS.
Build and optimize classical forecasting models such as ARIMA, SARIMA, and Exponential Smoothing (Holt-Winters) using Python.
Analyze financial volatility using advanced ARCH and GARCH models to measure and forecast market risk.
Implement cutting-edge Deep Learning architectures, including LSTMs, GRUs, and Transformers, for complex temporal data.
Perform spectral analysis to identify hidden periodic patterns using Fourier Transforms and Periodograms.
Design a production-ready forecasting pipeline featuring automated retraining, drift detection, and model ensembling.
Requirements
Basic knowledge of the Python programming language (pandas and numpy).
Familiarity with fundamental statistical concepts (mean, variance, and standard deviation).
A computer with Python installed (Jupyter Notebook or Google Colab is recommended for the hands-on exercises).
Description
Unlock the power of temporal data with this comprehensive guide to Time Series Analysis. This course bridges the gap between traditional statistical econometrics and modern machine learning, taking you from a fundamental understanding of stationarity to deploying complex deep learning architectures in production.You will start by mastering the "Foundations," where we explore trend, seasonality, and essential stationarity tests like ADF and KPSS. From there, we dive into "Classical Models," including ARIMA and Seasonal ARIMA, supported by hands-on Python implementations. For those interested in Finance, our dedicated section on GARCH modeling provides the tools to forecast market volatility and manage risk effectively.As we move into modern techniques, you will learn to build advanced features and implement Deep Learning models such as LSTMs and GRUs. We even cover cutting-edge architectures like the Temporal Fusion Transformer and PatchTST. Finally, you will learn the "Engineering" side of forecasting: building robust pipelines with automated retraining, monitoring for model drift, and creating powerful ensembles that outperform individual models. Whether you are a data scientist, a quant, or an engineer, this course provides the end-to-end expertise needed to handle time-indexed data at scale. This curriculum ensures you can transition your models from a local notebook to a real-world, scalable environment with confidence.
Who this course is for
Data Scientists and Analysts looking to deepen their expertise in temporal data and advanced forecasting.
Financial Professionals and Quant Researchers who want to model market volatility and asset prices.
Machine Learning Engineers aiming to apply Deep Learning techniques to sequential time series problems.
Students and Academics seeking a rigorous mathematical and practical foundation in time series econometrics.
Homepage
Code:
You don't have permission to view the code content. Log in or register now.
No Password - Links are InterchangeableDDownload
You must be registered for see links
You must be registered for see links
You must be registered for see links
You must be registered for see links
Rapidgator
You must be registered for see links
You must be registered for see links
You must be registered for see links
You must be registered for see links
AlfaFile
You must be registered for see links
You must be registered for see links
You must be registered for see links
You must be registered for see links
FreeDL Download Speed Premiums Free User
You must be registered for see links
You must be registered for see links
You must be registered for see links
You must be registered for see links