I am (sort of a beginner starting out) experimenting with Keras on a time series data application where I created a regression model and then saved it to run on a different Python script.

The time series data that I am dealing with is hourly data, and I am using a saved model in Keras to predict a value for each of hour in the data set. (`data`

= CSV file is read into pandas) With a years worth of time series data there is 8760 (hours in a year) predictions and finally I am attempting to sum the values of the predictions at the end.

In the code below I am not showing how the model architecture gets recreated (keras requirement for a saved model) and the code works its just extremely slow. This method seems fine for under a 200 predictions but for a 8760 the code seems to bog down way too much to ever finish.

I don't have any experience with databases but would this be a better method versus storing 8760 keras predictions in a Python list? Thanks for any tips I am still riding the learning curve..

```
#set initial loop params & empty list to store modeled data
row_num = 0
total_estKwh = []
for i, row in data.iterrows():
params = row.values
if (params.ndim == 1):
params = np.array([params])
estimatedKwh = load_trained_model(weights_path).predict(params)
print('Analyzing row number:', row_num)
total_estKwh.append(estimatedKwh)
row_num += 1
df = pd.DataFrame.from_records(total_estKwh)
total = df.sum()
totalStd = np.std(df.values)
totalMean = df.mean()
```