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LSTM forecasting on multivariate time series

Data Science Asked on June 14, 2021

I’m new to RNNs and LSTM and would like some direction with a problem I have. I have a data set containing system metrics (like CPU utilization, disk operations, memory use) of an AWS EC2 instance with a total of 7 columns and around 8000 rows. Each row also has a timestamp with a 5 min interval between each row.

I want to build a LSTM model to forecast the performance for let’s say the next hour based on my data. What would be the best approach for solving a problem like this? I know this can be done in many different ways but I would really appreciate some input how to go about this.

One Answer

LSTM should be a good fit for this problem(as you mentioned in question). It can identify patterns in sequence of data (For example : high memory usage is a leading indicator of higher disk usage [due to higher usage of swap partition]).

This is a tutorial for similar use-case.

Answered by Shamit Verma on June 14, 2021

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