ベンチャ`悶Y垢型3
ノイズが謹く音tな牽uの住宥i嵳ビッグデ`タを隠贋するためのテラバイトトのデ`タウェアハウスのO
JApan Road Transportation and Information Center (JARTIC) has set up a nationwide sensor network to monitor traffic congestion. This network generates traffic congestion data at 5-minute intervals (in some cases at 1-minute intervals). The generated data represents noisy and irregular spatiotemporal big data. We have purchased traffic congestion data for the entire Fukushima prefecture for the time duration April-2019 to March-2020. Analyzing the data of this time is important because it covers the key events constituting of Typhoon Hagibis and Covid emergence. In this course, the students will focus on developing Big Data Warehouse for storing and processing the huge real-world traffic congestion data.
シラバス

2022定10埖

10埖11晩
娩I坪否 Fukushima system understanding and collecting the data in Excel sheets.

We got to know how the data is collected in real world. And how sensors helps us in collecting the data. The collection of data done in real world is really interesting.

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10埖17晩
娩I坪否Understanding the data in Excel sheets and designing ER schema accordingly.

Learnt how to use and control the data using technology. And also learnt different skills like Excel, Database design (ER schema).

10埖24晩
娩I坪否Creating Postgresql tables for ER schema designed and inserting the data into tables.

Excited to express how large amounts of data can be fitted into tables using postgresql. It really wonders us.

2022定11埖

11埖2晩
娩I坪否Any pending works of previous month and creation of csv file(dataframe) -specified format: traffic congestion length in a given location at a particular time.

Had a good experience on working with traffic congestion data. Able to understand how data is created and analysis is done.

11埖7晩
娩I坪否Checking whether there are any missing pixels in the created data frame and performing imputation on the data if missing pixels are present. Evaluating error for different imputation methods.

Nice Experience on learning imputation topic with many techniques.

2022定12埖

12埖12晩
娩I坪否 Complete Linear Regression Techniques. Start learning Time Series Forecasting models. Apply them to the given traffic congestion Dataset

Learnt Forecasting methods.

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12埖19晩
娩I坪否 Learn Walk Forward Validation Technique. Apply walk forward validation technique and evaluate results.

Applied Time Series Forecasting to the real-world data. Nice Experience.

2023定1埖

1埖16晩
娩I坪否Wrapping up timeseries forecasting and Studying about LSTM.

Learnt LSTM.

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1埖23晩
娩I坪否 Applying LSTM to predict the congestion

Applied LSTM.

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1埖30晩
娩I坪否Tried to reduce the error rate using different parameters and normalizing the data.

Able to predict congestion values with less error rate.