I have a series of multdimensionnal time series as follow:

```
Input Xi i=1..N samples
```

```
Xi=[y1,..yk..., yT] K=1..T , yk is a vector, T= 50 (sequence length)
with yk= [yk1, ... ykm] m=3
```

with ykj : Float

Using LSTM Tensor Flow,would like to predict the next step (T+1), given the training of samples like :

```
Xi=[y1,...., yT]`
```

The current code gives input form for m=1 (unidimensionnal Y),

```
input_data = tf.placeholder(tf.float32, [batchSize, numSteps, numInputs])
targets = tf.placeholder(tf.float32, [batchSize, numSteps, numInputs])
```

Wondering if there is a way to input data if m=2, 3 in the LSTM tensor flow ?

If not, is there a workaround to input multdimensionnal time series ?

References are here (this does not reply to the question of multi dimension):