By Jill Romford on Tuesday, 31 October 2023
Category: Sales

Influential Factors in Sales Forecasting and Utilized Tools

You might think that sales forecasting is a simple enough exercise – after all, sales managers only need to look at historic sales figures, analyze them and extrapolate the findings while applying any external factors such as inflation and interest rates. 

It would make sense that such a process should give a fairly accurate forecast of forthcoming sales over the next two or three financial quarters of the year.

Most people might say that one wouldn't have to be a financial genius to work out the relevant factors that should be considered when sales forecasting

But when you dig deeper into the details, the inter-relationship between many factors becomes quite complex.

In no particular order, these elements might be: 

There is the concept of Sensitivity Analysis, (SA) is a quantitative technique used to assess how variables in one or more input parameters can impact the output of a forecasting model. 

SA is a priceless tool for understanding the reliability and accuracy of predictions, especially in complicated situations as above. 

SA can be applied in various industrial and service sectors, from insurance risk management to engineering and manufacturing.

Using AI and computing to pull the threads together.

Using online market analysis tools such as Forrester Research, Google Trends and 'Exploding Topics' is all helpful when it comes to sales forecasting. But when you have the statistics in front of you, their complex interrelationships need to be analyzed by AI or some sort of proprietary software to make sense of how they all affect each other.

Many AI-assisted sales forecasting tools are available tacked on to various business software platforms like Salesforce or Customer Relationship Management (CRM) platforms. More importantly, it's also possible to use Configure Price Quote (CPQ) software to make predictions about future sales.

CPQ software exists to help companies make accurate quotes by considering all the interrelationships between concomitant factors, thereby offering a price that will be acceptable to the customer, while providing sufficient profit margin to make the whole exercise worthwhile.

For example, a manufacturer of UPVC windows for new buildings might offer several different designs of sash windows or 'tilt and turn' units. 

If the cost of steel cable increases due to external factors beyond the manufacturer's control, a CPQ software package can and will adjust the final price of the sash windows (which use the cable to hold any counterbalance weights) by the increased percentage cost of the cable; it 'knows' exactly how many centimeters of cable are required for each window model.

Furthermore, the CPQ package will also advise if a change of specification is inappropriate or problematic. Imagine if the steel cable used on a product is 4mm thick, but the window manufacturer decides to use 3mm cable to mitigate the increase in cable cost.

A CPQ package might be pre- programmed with the tensile strength of 4mm cable. 

It notes that the proposed 3mm alternative is simply not strong enough to hold the 10 kg counterweights, and that the cable would probably snap after only a few hundred operations.

A CRM or spreadsheet package could easily help upscale sales forecasting capacity by predicting the changed profit margin of using cheaper cable, but only a CPQ platform could proactively advise against the specification change. 

CPQ software uses rule-based architecture so that any change in specification of a component is checked against all other related factors used in the same product.

The paralysis of analysis

Having read the above, don't sweat the small stuff too much! Remember that sales forecasts are never concrete and rarely 100% accurate. 

As fresh information comes to light, sales managers must be prepared to adjust their forecasts, but using a CPQ style AI-assisted software platform will allow quick and easy re-calculations, even if several interrelated changes are made at once.

Just like the window manufacturer mentioned above found out, these things are rarely straightforward – you might even say that they are definitely not simply 'open and shut'. 

Accordingly, it's important to remember that one's goal as a sales forecaster might be high accuracy as opposed to absolute perfection. It's not the 100% on-target figure that's important, more one's ability to be flexible. 

Such an outlook will prove sales forecasting to be one of the most practical tools in the day to day running of any business. 

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