Here is a sample picture of the data I have 3000 samples (ID Column) and 88 features ( total columns). In that number of feature columns, I have 20 columns called X's etc. For each one of them, I have 3 columns Xlag1, Xlag2, Xlag3 etc. as lag columns. T

Points of note -> It is a pandas dataframe -> The series are of varying sequence length so converting to lag windows helps even out sequence length -> All the required historical data is in one data row

Now I want to feed it into an LSTM network -

How to convert that into a shape of 3D array to feed as input to LSTM model in tensorflow?

We are trying reshape ( 1 * 4 * number of features ). But do not know if that is the right way to go

I have read many articles. But I am a little confused.

`[batch_size, time_steps, number_of_features]`

. If you use Tensorflow, you can use Tensorflow Data API using tf.reshape to reshape and feed the data directly into the model. Numpy also has the same titled function. – ARAT Mar 25 at 15:01