Mastering Time Series Analysis And Forecasting With Python
Published 7/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.28 GB | Duration: 2h 46m
Published 7/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.28 GB | Duration: 2h 46m
Comprehensive guide to time series analysis and forecasting techniques with Python, covering ARIMA, SARIMA, Prophet
What you'll learn
Understand the fundamentals of time series analysis, including trends, seasonality, and noise.
Implement various time series forecasting methods such as ARIMA, SARIMA, and Prophet using Python.
Evaluate and tune time series models to improve accuracy and performance.
Apply time series analysis techniques to real-world datasets and interpret the results for actionable insights.
Students and researchers interested in applying time series techniques to their projects.
Data analysts and scientists looking to enhance their time series analysis skills.
Professionals working in fields like finance, economics, and operations who deal with time-series data.
Anyone curious about understanding and predicting patterns in time-dependent data.
Requirements
Basic knowledge of Python programming. Familiarity with libraries such as pandas and matplotlib is beneficial.
A computer with internet access to follow along with coding exercises and access datasets.
Basic understanding of statistical concepts such as mean, variance, and correlation.
Willingness to learn and apply analytical thinking to solve time series problems.
A curious mind and willingness to learn!
Familiarity with statistical concepts (mean, median, standard deviation).
Basic understanding of Python programming.
Description
Unlock the power of time series analysis and forecasting with Python! This course is designed to provide a thorough understanding of the key concepts, techniques, and tools needed to analyze and predict time series data effectively. Whether you're a data scientist, analyst, student, or professional, this course will equip you with the skills to tackle time series problems in various domains.What You'll Learn:Understand the fundamentals of time series analysis, including trends, seasonality, and noise.Implement and apply popular time series forecasting methods such as ARIMA, SARIMA, and Prophet using Python.Evaluate and tune time series models to improve their accuracy and performance.Work with real-world datasets to gain hands-on experience and extract actionable insights.Course Highlights:Detailed Explanations: Comprehensive coverage of essential concepts and techniques in time series analysis.Hands-On Projects: Practical exercises and projects to apply what you've learned.Expert Guidance: Learn from an experienced data scientist with a proven track record in the field.Community Support: Join a community of learners to discuss and share insights.Requirements:Basic knowledge of Python programming.Familiarity with libraries such as pandas and matplotlib is beneficial.A computer with internet access to follow along with coding exercises and access datasets.Basic understanding of statistical concepts such as mean, variance, and correlation.Willingness to learn and apply analytical thinking to solve time series problems.Who Should Enroll:Aspiring data scientists and analysts looking to specialize in time series analysis and forecasting.Professionals in finance, marketing, operations, and other fields where time series data is commonly used for decision-making.Students and researchers in academia who need to analyze time series data for their studies or projects.Anyone interested in gaining practical skills in time series analysis to enhance their data science toolkit.Join us on this exciting journey and master the art of time series analysis and forecasting with Python. Enroll today and start transforming data into meaningful insights!
Overview
Section 1: Foundations of Time Series Analysis
Lecture 1 Introduction to Time Series Data
Lecture 2 Understanding Time Series Components
Lecture 3 Stationarity and Its Importance
Section 2: Time Series Modeling with ARIMA
Lecture 4 ARIMA Model Fundamentals
Lecture 5 Building and Evaluating ARIMA Models
Lecture 6 Seasonal Time Series and Decomposition
Section 3: Statistical Concepts for Time Series
Lecture 7 Probability Distributions in Time Series
Lecture 8 Descriptive Statistics and Exploratory Data Analysis
Lecture 9 Hypothesis Testing and Confidence Intervals
Section 4: Forecasting with Time Series Models
Lecture 10 Forecasting with ARIMA Models
Lecture 11 Model Selection and Evaluation
Lecture 12 Practical Forecasting and Model Improvement
Section 5: Advanced Time Series Topics and Applications
Lecture 13 Data Visualization for Time Series
Lecture 14 Time Series in Python: Practical Implementation
Lecture 15 Real-world Case Studies and Applications
Aspiring data scientists and analysts looking to specialize in time series analysis and forecasting.,Professionals in finance, marketing, operations, and other fields where time series data is commonly used for decision-making.,Students and researchers in academia who need to analyze time series data for their studies or projects.,Anyone interested in gaining practical skills in time series analysis to enhance their data science toolkit.