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How to run a forecast review

Running a forecast review helps revenue leaders evaluate whether the current pipeline is sufficient to meet revenue targets and whether any deals may impact forecast accuracy. Forecast reviews typically involve analyzing pipeline composition, deal progression, engagement activity, and operational signals that may influence whether opportunities close as expected. The Alysio platform helps teams run forecast reviews by aggregating pipeline data from connected CRM systems, analyzing deal progression and engagement patterns, and surfacing signals that may indicate forecast risk. This guide explains how revenue teams can use Alysio to conduct an effective forecast review.

Understanding Forecast Reviews

A forecast review is a structured evaluation of the current pipeline to determine whether projected revenue outcomes are realistic. Forecast reviews typically focus on questions such as: Which deals are most likely to close this quarter?
Which opportunities may slip beyond their expected close date?
Where is forecast risk concentrated within the pipeline?
Do we have sufficient pipeline coverage to meet targets?
These questions help revenue leaders understand whether the pipeline supports the current forecast.

Step 1: Ask a Forecast Review Question

Forecast reviews often begin with a query submitted through the Alysio conversational interface. Examples of forecast review queries include: What deals are driving our forecast this quarter?
Which deals are most likely to slip?
Where is forecast risk concentrated?
Do we have enough pipeline coverage to hit our target?
When a question is submitted, the platform retrieves pipeline data from connected systems.

Step 2: Retrieve Pipeline and Forecast Data

The platform retrieves relevant opportunity and forecast information from connected CRM systems. Examples of retrieved data include: Opportunity stage and forecast category
Opportunity close dates
Opportunity owners and associated accounts
Pipeline coverage relative to targets
Stage progression history
This information forms the foundation of the forecast analysis.

Step 3: Evaluate Pipeline Coverage

Pipeline coverage analysis evaluates whether the total pipeline value supports the expected revenue targets. Coverage is typically evaluated by comparing: Total pipeline value
Forecasted revenue targets
Stage distribution across the pipeline
If coverage is too low, the forecast may depend heavily on a small number of deals.

Step 4: Analyze Deal Progression

Deal progression analysis evaluates how opportunities are moving through the pipeline. The platform evaluates: Stage movement across the pipeline
Average deal velocity compared to historical patterns
Opportunities remaining stagnant in late stages
Deals that remain stalled or move slower than expected may affect forecast outcomes.

Step 5: Review Engagement Signals

Forecast outcomes are often influenced by engagement activity between the sales team and the customer. The platform evaluates engagement signals such as: Recent meetings with key stakeholders
Communication frequency with the account
Participation from executive decision makers
Recent activity across communication channels
Declining engagement may indicate that a deal is losing momentum.

Step 6: Detect Forecast Risk Signals

After analyzing pipeline composition, deal progression, and engagement activity, the platform identifies signals that may indicate forecast risk. Examples of forecast risk signals include: Late-stage deals with declining engagement
Large forecast commitments concentrated in a small number of opportunities
Deals approaching close dates with limited recent activity
Unusual delays in stage progression
These signals help identify which deals may impact forecast reliability.

Step 7: Review Forecast Insights

Once the analysis is complete, the platform generates a structured forecast summary. This summary may include: Deals that are most likely to close
Opportunities at risk of slipping
Accounts requiring additional engagement
Forecast concentration risks
These insights allow revenue leaders to evaluate whether the forecast is supported by the current pipeline.

Step 8: Coordinate Forecast Actions

After reviewing forecast insights, revenue teams can take action to address potential risks. Examples of actions include: Prioritizing engagement with late-stage opportunities
Escalating deals that require leadership support
Reallocating resources across accounts
Adjusting forecast projections based on pipeline conditions
AI Revenue Agents can also assist by generating alerts, summaries, or recommended follow-up actions.

Example Forecast Review

A sales leader asks Alysio: “Do we have enough pipeline to hit our quarterly target?” The platform retrieves opportunity data from the CRM system and evaluates pipeline coverage relative to forecast targets. It then analyzes stage progression and engagement activity across late-stage opportunities. The Signals Engine detects several deals with declining engagement and limited stage movement. Alysio generates a forecast review summary highlighting those deals and explaining the signals associated with each opportunity. The leader can use this summary to guide the forecast discussion with the revenue team.

Best Practices for Forecast Reviews

Revenue teams can improve forecast reviews by following several best practices. Review pipeline coverage relative to revenue targets Analyze deal progression across late-stage opportunities Monitor engagement activity with key stakeholders Use revenue signals to detect forecast risk early These practices help teams maintain more reliable forecasts.

Summary

Running a forecast review helps revenue leaders evaluate whether the current pipeline supports projected revenue outcomes. By analyzing pipeline composition, deal progression, engagement signals, and operational risk indicators, the Alysio platform allows teams to identify forecast risks early and take action to maintain forecast accuracy.