Time Series Analysis and Forecasting using Python
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- Curriculum
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In this comprehensive Time Series Analysis and Forecasting course, you’ll learn everything you need to confidently analyze time series data and make accurate predictions. Through a combination of theory and practical examples, in just 10-11 hours, you’ll develop a strong foundation in time series concepts and gain hands-on experience with various models and techniques.
This course also includes Exploratory Data Analysis which might not be 100% applicable for Time Series Analysis & Forecasting, but these concepts are very much needed in the Data space!!
This course includes:
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Understanding Time Series: Explore the fundamental concepts of time series analysis, including the different components of time series, such as trend, seasonality, and noise.
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Decomposition Techniques: Learn how to decompose time series data into its individual components to better understand its underlying patterns and trends.
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Autoregressive (AR) Models: Dive into autoregressive models and discover how they capture the relationship between an observation and a certain number of lagged observations.
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Moving Average (MA) Models: Explore moving average models and understand how they can effectively smooth out noise and reveal hidden patterns in time series data.
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ARIMA Models: Master the widely used ARIMA models, which combine the concepts of autoregressive and moving average models to handle both trend and seasonality in time series data.
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Facebook Prophet: Get hands-on experience with Facebook Prophet, a powerful open-source time series forecasting tool, and learn how to leverage its capabilities to make accurate predictions.
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Real-World Projects: Apply your knowledge and skills to three real-world projects, where you’ll tackle various time series analysis and forecasting problems, gaining valuable experience and confidence along the way.
In addition to the objectives mentioned earlier, our course also covers the following topics:
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Preprocessing and Data Cleaning: Students will learn how to preprocess and clean time series data to ensure its quality and suitability for analysis. This includes handling missing values, dealing with outliers, and performing data transformations.
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Multivariate Forecasting: The course explores techniques for forecasting time series data that involve multiple variables. Students will learn how to handle and analyze datasets with multiple time series and understand the complexities and challenges associated with multivariate forecasting.
By the end of this course, you’ll have a solid understanding of time series analysis and forecasting, as well as the ability to apply different models and techniques to solve real-world problems. Join us now and unlock the power of time series data to make informed predictions and drive business decisions. Enroll today and start your journey toward becoming a time series expert!
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5What is Anomaly Detection?Video lesson
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6Components of Time SeriesVideo lesson
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7Time Series DecompositionVideo lesson
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8Implementation of DecompositionVideo lesson
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9Additive and Multiplicative DecompostionVideo lesson
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10Time Series StationarityVideo lesson
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11Testing Time Series StaionarityVideo lesson
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12TransformationVideo lesson
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13Introduction to Pre-ProcessingVideo lesson
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14Handle Missing ValueVideo lesson
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15Implementation of Handle Missing value in PythonVideo lesson
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16Outlier TreatmentVideo lesson
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17Sigma Technique (Standard Deviation)Video lesson
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18Feature ScalingVideo lesson
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19Feature Scaling Technique (Standardization)Video lesson
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20Feature Scaling Technique (Normalization)Video lesson
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21Implementation of Feature ScalingVideo lesson
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22Feature EncodingVideo lesson
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23Implementation of Feature EncodingVideo lesson
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24IntroductionText lesson
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25What is EDAVideo lesson
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26What is VisualizationVideo lesson
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27Data SourcingVideo lesson
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28Data CleaningVideo lesson
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29Handling Missing Values (Theory)Video lesson
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30Handling Missing Values (Practicals)Video lesson
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31Outlier TreatmentVideo lesson
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32Outlier Treatment (Practicals)Video lesson
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33Types of AnalysisVideo lesson
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34Univariate AnalysisVideo lesson
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35Bivariate AnalysisVideo lesson
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36Multivariate AnalysisVideo lesson
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37Numerical AnalysisVideo lesson
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38Analysis (Practicals)Video lesson
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39Derived MetricsVideo lesson
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40Feature Binning (Theory)Video lesson
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41Feature Binning (Practicals)Video lesson
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42Feature Encoding (Theory)Video lesson
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43Feature Encoding (Practicals)Video lesson
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44AlgorithmsVideo lesson
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45ARIMA [part 1]Video lesson
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46ARIMA [part 2]Video lesson
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47Auto Regressive TheoryVideo lesson
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48Moving average TheoryVideo lesson
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49Auto-Correlation Function (ACF) &Partical Auto-Correlation Function (PACF)Video lesson
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50Find PDQVideo lesson
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51ARIMA [practicals 1]Video lesson
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52ARIMA [practicals 2]Video lesson
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53Implementation of ARIMAVideo lesson
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54DecompostionVideo lesson
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55Auto Correlation vs Partical Auto CorrelationVideo lesson
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56Choosing the best transformationVideo lesson
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57Grid Search [part 1]Video lesson
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58Grid Search [part 2]Video lesson
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59Final ModelVideo lesson
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60FBProphet [part 1]Video lesson
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61FBProphet [part 2]Video lesson
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62FBProphet [part 3]Video lesson
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