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Yellow taxi Demand prediction Newyork city
Data Preparation:Smoothing time-series data.
Data Preparation:Smoothing time-series data.
Instructor:
Applied AI Course
Duration:
5 mins
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Data Preparation:Time binning
Data Preparation:Smoothing time-series data part2
Taxi demand prediction in New York City
1.1
Business/Real world problem Overview
9 min
1.2
Objectives and Constraints
11 min
1.3
Mapping to ML problem :Data
8 min
1.4
Mapping to ML problem :dask dataframes
11 min
1.5
Mapping to ML problem :Fields/Features.
6 min
1.6
Mapping to ML problem :Time series forecasting/Regression
8 min
1.7
Mapping to ML problem :Performance metrics
6 min
1.8
Data Cleaning :Latitude and Longitude data
4 min
1.9
Data Cleaning :Trip Duration.
7 min
1.10
Data Cleaning :Speed.
5 min
1.11
Data Cleaning :Distance.
2 min
1.12
Data Cleaning :Fare
6 min
1.13
Data Cleaning :Remove all outliers/erroneous points
3 min
1.14
Data Preparation:Clustering/Segmentation
19 min
1.15
Data Preparation:Time binning
5 min
1.16
Data Preparation:Smoothing time-series data.
5 min
1.17
Data Preparation:Smoothing time-series data part2
2 min
1.18
Data Preparation: Time series and Fourier transforms.
13 min
Base line models
2.1
Ratios and previous-time-bin values
9 min
2.2
Simple moving average
8 min
2.3
Weighted Moving average.
5 min
2.4
Exponential weighted moving average
6 min
2.5
Results.
4 min
Regression models:
3.1
Train-Test split & Features
3 min
3.2
Linear regression.
3 min
3.3
Random Forest regression.
4 min
3.4
Xgboost Regression
2 min
3.5
Model comparison.
6 min
3.6
Assignment.
6 min
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