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numpy.npv() in Python
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numpy.npv() in Python

Last Updated : 17 May, 2022
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numpy.npv(rate, value) : This financial function helps user to calculate the NPV(Net Present Value) of a cash flow series. 

Parameters : 

rate  : [scalar] Rate of discount  value : [array_like, shape(M,)] value of          cash flows time series. The (fixed) time interval          between cash flow “events” must be the same as that         for given rate is given. By convention, investments         or “deposits” are -ve, income or “withdrawals” are +ve

Return : 

present value as per given parameters.

Equation being solved :  

Code 1 : Working 

Python
## Python program explaining npv() function import numpy as np  #            rate            values      a =  np.npv(0.281,[-100, 19, 49, 58, 200]) print("Net Present Value(npv) : ", a) 

Output : 

Net Present Value(npv) :  46.5579792365

References : https://docs.scipy.org/doc/numpy-1.13.0/reference/generated/numpy.npv.html .


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numpy.npv() in Python

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mohit gupta_omg :)
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Article Tags :
  • Python
  • Python-numpy
  • Python numpy-Financial Functions
Practice Tags :
  • python

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