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What is a good sales target for a sales person in SaaS in India?

Unfortunately there is no fixed answer. Problem with SaaS is that there are too many moving variables. LTV,Churn,ARR,ARPU etc. So its really hard to come up with one fixed number. So based on our experience and our product the following is a number we have come up with to set targets for our sales organization.

0.8x(x is the sales person's salary)

So, a sales person should pull in 0.8x worth of MRR every month. Or 9.6x worth of annual contract values every month. This is the number from which they start getting incentives.

So for example a sales rep getting around 18 lakhs salary should pull in around Rs.1,20,000 MRR every month. If he pulls in 30,000 MRR(0.2X) he will be just covering his base salary. If he pulls in 75,000(0.5X) he will be covering the organization costs. And only if he pulls in anything above that will the company move towards profitability. And only when the company is profitable will the sales get an incentive.

Obviously there are a lot of assumptions made to arrive at this number. We are assuming the LTV to be around a year and churn is also very low. You can find a spreadsheet with some numbers here. You can modify the variables to fit for your organization.

Just open SaaS Sales Targets and play around with the values to see the numbers. You can also download it and modify it as you see fit.

Since we started a sales organization a couple of years ago we have been experimenting with different variables and this is a good rule of thumb to follow for setting sales targets. Please comment on what your experience has been. Is our model too tough on sales guys or too easy. Hopefully we can all come out with a comprehensive model for sales in SaaS in India.

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