AI on your company’s real data: where to start
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Read articleWhat customer or lead scoring is, how it helps prioritise commercial and risk efforts, and what data and caveats it requires.

Not all customers or leads are worth the same, nor pose the same risk. Treating them all alike wastes resources on some and neglects others. Scoring lets you rank them with data-based criteria, instead of intuition, to concentrate efforts where they pay off most.
Customer scoring is the assignment of a score estimating the value, conversion probability or risk of a customer or lead, from their data and historical patterns. It turns a hunch into a quantified, comparable estimate.
A scoring model learns from historical data which characteristics are associated with a good customer, a conversion or a default, and applies that to new ones. Quality depends directly on the quality and representativeness of the data: with biased data, the scoring inherits and amplifies the bias.
Scoring affecting people must be used carefully: transparency about its use, avoiding discriminatory bias, and respecting the GDPR, which grants rights regarding automated decisions. A well-governed scoring is powerful; an opaque or biased one is a legal and reputational risk. Explainability — justifying why someone has a given score — matters increasingly.
A well-governed scoring is a powerful tool; an opaque or biased one is a serious risk.
Scoring assigns customers or leads a score by value or risk, prioritising commercial and credit effort with criteria instead of intuition. Built from historical data, its quality depends on the data’s. And it demands caveats: transparency, no bias and GDPR compliance, since an opaque scoring is a real risk.
To prioritise efforts: identify leads most likely to close, assess default risk or detect the most valuable customers.
With models that learn from historical data which characteristics are associated with a good customer, conversion or default, and apply them to new ones.
It must be transparent, avoid discriminatory bias and respect the GDPR, which grants rights regarding automated decisions.
Commercial (prioritise leads), risk (default probability), value (best customers) and retention (who to nurture).
Because the model learns from history: if it is biased, the scoring inherits and amplifies that bias, risking unfair decisions.
Being able to justify why someone has a given score — increasingly important for trust and for regulation on automated decisions.
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