Our AI-powered spreadsheet makes it easy for anyone to run more realistic sales forecasts.
More accuracy. Less effort.
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Forecast sales and expenses based on historical performance, marketing spend, web traffic, footfall, conversion rates, national holidays, seasonality trends, and other market indices.
All with a few clicks in a spreadsheet.
With a few clicks in a spreadsheet, you can:
✓Run cash flow forecasts with time series financial data
✓Tweak future variables to test assumptions
✓ Visualise best and worst-case scenarios
✓Compare forecasts with actual performance
Machine learning models can handle a lot more data than humans can. Our models are designed to incorporate past performance and seasonality trends, plus any external market indicators inputted for more accurate, granular forecasts.
Instantly update variables and run new automated forecasts when the unexpected happens. Run a quick scenario before you reallocate resources to visualise the impact. All it takes is a few clicks in a spreadsheet. No code needed.
Tweak variables and assumptions to reflect on-the-ground insights from the sales team. Compare machine-generated predictions to human expert opinion to uncover biases and improve accuracy.
Normally, it takes me 2 to 3 days to report all the sales and marketing data for the month. This tool makes it super easy to test the outcome of different budget allocations and make my case to win budget. And it makes the whole process way faster — like 75% faster.
giniPredict’s customised machine learning model works with any quantitative time series data. Designed for real world data problems, it is robust to missing data, shifting trends and extreme outliers. It learns from your unique dataset and improves in accuracy every time.
By clicking submit, you consent to allow gini to store and process the personal information submitted above to provide you the content requested.