I have gone through the same issue that you face today. In order to detect the trend, I couldn't find a specific function to handle the situation.

I found a really helpful function ie, **numpy.polyfit()**

```
numpy.polyfit(x, y, deg, rcond=None, full=False, w=None, cov=False)
```

[Check this Official Documentation]

You Can use the function like this

```
def trenddetector(list_of_index,array_of_data, order=1):
result = np.polyfit(list_of_index, list(data), order)
slope = result[-2]
return float(slope)
```

this function returns a float value that indicates the trend of your data and also you can anlayse it by something like this

for example,

if the slope is a +ve value --> increasing trend

if the slope is a -ve value --> decreasing trend

if the slope is a zero value --> No trend

play with this function and find out the correct threshold as per your problem and give it as a condition.

**Example Code for your Solution**

```
import numpy as np
def trendline(index,data, order=1):
coeffs = np.polyfit(index, list(data), order)
slope = coeffs[-2]
return float(slope)
index=[1,2,3,4]
List=[1043,6582,5452,7571]
resultent=trendline(index,List)
print(resultent)
```

**RESULT**

1845.3999999999999

As per this output, The result is much greater than zero so it shows your data is increasing steadily.