When you evaluate your regression model, you're predicting a value of submissions for the input date. To predict a wider range, you need to increase the range of dates that you're evaluating the model on. I'd also use `np.polyval`

instead of the list comprehension, just because as it's more compact:

```
# Generate data like the question
observed_dates = pd.date_range("jan 2004", "april 2013", freq="M")
submissions = np.random.normal(5000, 100, len(observed_dates))
submissions += np.arange(len(observed_dates)) * 10
submissions[::12] += 800
# Plot the observed data
plt.plot(observed_dates, submissions, marker="o")
# Fit a model and predict future dates
predict_dates = pd.date_range("jan 2004", "jan 2020", freq="M")
model = np.polyfit(observed_dates.asi8, submissions, 1)
predicted = np.polyval(model, predict_dates.asi8)
# Plot the model
plt.plot(predict_dates, predicted, lw=3)
```