Section 1 : Welcome
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Lecture 1 | Introduction and Outline | 00:05:12 Duration |
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Lecture 2 | Warmup (Optional) | 00:04:23 Duration |
Section 2 : Getting Set Up
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Lecture 1 | Where to Get the Code | 00:07:48 Duration |
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Lecture 2 | How to use Github & Extra Coding Tips (Optional) | 00:08:45 Duration |
Section 3 : Time Series Basics
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Lecture 1 | Time Series Basics Section Introduction | 00:04:08 Duration |
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Lecture 2 | What is a Time Series | 00:04:42 Duration |
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Lecture 3 | Modeling vs | 00:02:20 Duration |
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Lecture 4 | Why Do We Care About Shapes | |
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Lecture 5 | Types of Tasks | 00:06:23 Duration |
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Lecture 6 | Power, Log, and Box-Cox Transformations | 00:05:54 Duration |
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Lecture 7 | Power, Log, and Box-Cox Transformations in Code | 00:05:54 Duration |
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Lecture 8 | Forecasting Metrics | 00:11:12 Duration |
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Lecture 9 | Financial Time Series Primer | 00:10:51 Duration |
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Lecture 10 | Price Simulations in Code | 00:02:55 Duration |
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Lecture 11 | Random Walks and the Random Walk Hypothesis | 00:14:25 Duration |
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Lecture 12 | The Naive Forecast and the Importance of Baselines | 00:06:35 Duration |
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Lecture 13 | Naive Forecast and Forecasting Metrics in Code | 00:07:04 Duration |
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Lecture 14 | Time Series Basics Section Summary | 00:03:04 Duration |
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Lecture 15 | INTRODUCTION TO BRAINMEASURES PROCTOR SYSTEM |
Section 4 : Exponential Smoothing and ETS Methods
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Lecture 1 | Exponential Smoothing Section Introduction | 00:02:51 Duration |
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Lecture 2 | Exponential Smoothing Intuition for Beginners | 00:05:27 Duration |
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Lecture 3 | SMA Theory | 00:03:26 Duration |
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Lecture 4 | SMA Code | 00:08:30 Duration |
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Lecture 5 | EWMA Theory | 00:10:57 Duration |
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Lecture 6 | EWMA Code | 00:07:28 Duration |
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Lecture 7 | SES Theory | 00:10:03 Duration |
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Lecture 8 | SES Code | 00:11:44 Duration |
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Lecture 9 | Holt's Linear Trend Model (Theory) | 00:07:44 Duration |
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Lecture 10 | Holt's Linear Trend Model (Code) | 00:03:02 Duration |
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Lecture 11 | Holt-Winters (Theory) | 00:11:09 Duration |
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Lecture 12 | Holt-Winters (Code) | 00:07:42 Duration |
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Lecture 13 | Walk-Forward Validation | 00:08:56 Duration |
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Lecture 14 | Walk-Forward Validation in Code | 00:08:19 Duration |
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Lecture 15 | Application Sales Data | 00:04:50 Duration |
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Lecture 16 | Application Stock Predictions | 00:05:27 Duration |
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Lecture 17 | SMA Application COVID-19 Counting | 00:02:55 Duration |
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Lecture 18 | SMA Application Algorithmic Trading | 00:01:58 Duration |
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Lecture 19 | Exponential Smoothing Section Summary | 00:03:49 Duration |
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Lecture 20 | (Optional) More About State-Space Models | 00:11:11 Duration |
Section 5 : ARIMA
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Lecture 1 | ARIMA Section Introduction | 00:05:08 Duration |
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Lecture 2 | Autoregressive Models - AR(p) | 00:12:40 Duration |
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Lecture 3 | Moving Average Models - MA(q) | 00:03:20 Duration |
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Lecture 4 | ARIMA | 00:10:34 Duration |
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Lecture 5 | ARIMA in Code | 00:19:04 Duration |
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Lecture 6 | Stationarity | 00:12:51 Duration |
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Lecture 7 | Stationarity in Code | 00:09:39 Duration |
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Lecture 8 | ACF (Autocorrelation Function) | 00:10:00 Duration |
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Lecture 9 | PACF (Partial Autocorrelation Funtion) | 00:06:44 Duration |
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Lecture 10 | ACF and PACF in Code (pt 1) | 00:08:16 Duration |
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Lecture 11 | ACF and PACF in Code (pt 2) | |
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Lecture 12 | Auto ARIMA and SARIMAX | 00:09:31 Duration |
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Lecture 13 | Model Selection, AIC and BIC | |
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Lecture 14 | Auto ARIMA in Code | |
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Lecture 15 | Auto ARIMA in Code (Stocks) | 00:15:34 Duration |
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Lecture 16 | ACF and PACF for Stock Returns | 00:06:50 Duration |
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Lecture 17 | Auto ARIMA in Code (Sales Data) | 00:09:34 Duration |
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Lecture 18 | How to Forecast with ARIMA | 00:09:03 Duration |
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Lecture 19 | Forecasting Out-Of-Sample | 00:01:15 Duration |
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Lecture 20 | ARIMA Section Summary | 00:03:21 Duration |
Section 6 : Vector Autoregression (VAR, VMA, VARMA)
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Lecture 1 | Vector Autoregression Section Introduction | 00:02:20 Duration |
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Lecture 2 | VAR and VARMA Theory | 00:13:00 Duration |
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Lecture 3 | VARMA Code (pt 1) | 00:07:25 Duration |
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Lecture 4 | VARMA Code (pt 2) | 00:06:36 Duration |
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Lecture 5 | VARMA Code (pt 3) | 00:06:14 Duration |
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Lecture 6 | VARMA Econometrics Code (pt 1) | 00:07:40 Duration |
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Lecture 7 | VARMA Econometrics Code (pt 2) | 00:09:07 Duration |
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Lecture 8 | Granger Causality | 00:04:17 Duration |
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Lecture 9 | Granger Causality Code | 00:03:09 Duration |
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Lecture 10 | Converting Between Models (Optional) | 00:11:34 Duration |
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Lecture 11 | Vector Autoregression Section Summary | 00:03:28 Duration |
Section 7 : Machine Learning Methods
Section 8 : Deep Learning Artificial Neural Networks (ANN)
Section 9 : Deep Learning Convolutional Neural Networks (CNN)
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Lecture 1 | CNN Section Introduction | 00:02:57 Duration |
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Lecture 2 | What is Convolution | 00:16:27 Duration |
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Lecture 3 | What is Convolution (Pattern-Matching) | 00:05:45 Duration |
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Lecture 4 | What is Convolution (Weight Sharing) | 00:06:44 Duration |
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Lecture 5 | Convolution on Color Images | 00:15:47 Duration |
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Lecture 6 | Convolution for Time Series and ARIMA | 00:04:49 Duration |
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Lecture 7 | CNN Architecture | 00:23:11 Duration |
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Lecture 8 | CNN Code Preparation | 00:06:05 Duration |
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Lecture 9 | CNN for Time Series Forecasting in Code | 00:06:34 Duration |
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Lecture 10 | CNN for Human Activity Recognition | 00:06:11 Duration |
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Lecture 11 | CNN Section Summary | 00:03:04 Duration |
Section 10 : Deep Learning Recurrent Neural Networks (RNN)
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Lecture 1 | RNN Section Introduction | 00:04:35 Duration |
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Lecture 2 | Simple RNN Elman Unit (pt 1) | 00:09:09 Duration |
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Lecture 3 | Simple RNN Elman Unit (pt 2) | 00:09:31 Duration |
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Lecture 4 | Aside State Space Models vs | 00:03:20 Duration |
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Lecture 5 | RNN Code Preparation | 00:08:27 Duration |
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Lecture 6 | RNNs Understanding by Implementing (Paying Attention to Shapes) | 00:08:15 Duration |
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Lecture 7 | GRU and LSTM (pt 1) | 00:17:22 Duration |
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Lecture 8 | GRU and LSTM (pt 2) | 00:11:25 Duration |
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Lecture 9 | LSTMs for Time Series Forecasting in Code | 00:09:11 Duration |
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Lecture 10 | LSTMs for Time Series Classification in Code | 00:05:53 Duration |
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Lecture 11 | The Unreasonable Ineffectiveness of Recurrent Neural Networks | 00:03:07 Duration |
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Lecture 12 | RNN Section Summary |
Section 11 : VIP GARCH
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Lecture 1 | GARCH Section Introduction | 00:03:45 Duration |
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Lecture 2 | ARCH Theory (pt 1) | 00:04:46 Duration |
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Lecture 3 | ARCH Theory (pt 2) | 00:07:26 Duration |
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Lecture 4 | ARCH Theory (pt 3) | 00:05:04 Duration |
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Lecture 5 | GARCH Theory | 00:07:30 Duration |
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Lecture 6 | GARCH Code Preparation (pt 1) | 00:07:43 Duration |
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Lecture 7 | GARCH Code Preparation (pt 2) | 00:07:46 Duration |
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Lecture 8 | GARCH Code (pt 1) | 00:05:56 Duration |
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Lecture 9 | GARCH Code (pt 2) | 00:08:19 Duration |
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Lecture 10 | GARCH Code (pt 3) | 00:07:00 Duration |
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Lecture 11 | GARCH Code (pt 4) | 00:05:41 Duration |
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Lecture 12 | GARCH Code (pt 5) | 00:04:09 Duration |
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Lecture 13 | A Deep Learning Approach to GARCH | 00:11:16 Duration |
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Lecture 14 | GARCH Section Summary | 00:06:25 Duration |
Section 12 : VIP AWS Forecast
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Lecture 1 | AWS Forecast Section Introduction | 00:07:51 Duration |
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Lecture 2 | Data Model | 00:09:06 Duration |
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Lecture 3 | Creating an IAM Role | 00:03:57 Duration |
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Lecture 4 | Code pt 1 (Getting and Transforming the Data) | 00:09:47 Duration |
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Lecture 5 | Code pt 2 (Uploading the data to S3) | 00:12:40 Duration |
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Lecture 6 | Code pt 3 (Building your Model) | 00:06:41 Duration |
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Lecture 7 | Code pt 4 (Generating and Evaluating the Forecast) | 00:06:39 Duration |
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Lecture 8 | AWS Forecast Exercise | 00:02:44 Duration |
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Lecture 9 | AWS Forecast Section Summary | 00:04:45 Duration |
Section 13 : VIP Facebook Prophet
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Lecture 1 | Prophet Section Introduction | 00:03:01 Duration |
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Lecture 2 | How does Prophet work | 00:08:15 Duration |
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Lecture 3 | Prophet Code Preparation | 00:12:31 Duration |
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Lecture 4 | Prophet in Code Data Preparation | 00:08:50 Duration |
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Lecture 5 | Prophet in Code Fit, Forecast, Plot | 00:08:19 Duration |
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Lecture 6 | Prophet in Code Holidays and Exogenous Regressors | 00:10:09 Duration |
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Lecture 7 | Prophet in Code Cross-Validation | 00:05:56 Duration |
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Lecture 8 | Prophet in Code Changepoint Detection | 00:04:04 Duration |
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Lecture 9 | Prophet Multiplicative Seasonality, Outliers, Non-Daily Data | 00:10:05 Duration |
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Lecture 10 | (The Dangers of) Prophet for Stock Price Prediction | 00:13:00 Duration |
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Lecture 11 | Prophet Section Summary | 00:03:17 Duration |
Section 14 : Setting Up Your Environment FAQ
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Lecture 1 | Anaconda Environment Setup | 00:20:13 Duration |
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Lecture 2 | How to install Numpy, Scipy, Matplotlib, Pandas, IPython, Theano, and TensorFlow | 00:17:11 Duration |
Section 15 : Extra Help With Python Coding for Beginners FAQ
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Lecture 1 | How to Code by Yourself (part 1) | 00:15:50 Duration |
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Lecture 2 | How to Code by Yourself (part 2) | 00:09:22 Duration |
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Lecture 3 | Proof that using Jupyter Notebook is the same as not using it | 00:12:24 Duration |
Section 16 : Effective Learning Strategies for Machine Learning FAQ
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Lecture 1 | How to Succeed in this Course (Long Version) | 00:10:17 Duration |
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Lecture 2 | Is this for Beginners or Experts Academic or Practical Fast or slow-paced | 00:21:57 Duration |
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Lecture 3 | About Certification | |
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Lecture 4 | About Proctor Testing |
Section 17 : Appendix FAQ Finale
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Lecture 1 | What is the Appendix | 00:02:41 Duration |