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CROs: The Science Behind Building a Predictive Revenue Model

CROs: The Science Behind Building a Predictive Revenue Model

Update: 2025-09-17
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Episode #217:

Aviv Canaani, Chief Revenue Officer at Datarails, breaks down how to engineer a predictable revenue model by treating go-to-market like a factory. He explains the handoffs between marketing, SDRs, AEs, and solution consultants, and why brand trust and creative risk-taking accelerate demand, conversion, and forecasting accuracy.

“We generate all the demand and all the leads through marketing. I can actually tell you how much budget we're using in marketing, how many meetings we will be able to generate and become opportunities, and how many will become closed won.” – Aviv Canaani

Aviv Canaani highlights a practical model for predictable growth, from budget-to-pipeline math to calendar-level AE focus. He details how brand trust fuels inbound demand, why specialized roles improve velocity, and how paid and organic channels work together to forecast meetings, opportunities, and revenue with confidence.

Follow Aviv Canaani on LinkedIn

Follow host Steve MacDonald on LinkedIn

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CROs: The Science Behind Building a Predictive Revenue Model

CROs: The Science Behind Building a Predictive Revenue Model