Interactive Calculator
Calculate Your Savings
Adjust assumptions to match your organization's workflow. Defaults are anchored in published findings and scenario assumptions.
Defaults are scenario assumptions based on published research.
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Edit if your project has materially different duplicate prevalence.
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Invalidity rate is scenario-driven and should be replaced with your own QA data.
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Baseline from triage studies; set to your recorded average.
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Based on reproducibility literature and case context; your teams likely differ.
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Observed in case-study datasets; adapt for your team and process.
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Calendar-delay input normalized to the 100-report scenario anchor (~84 hrs/month saved at defaults).
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Use your internal loaded-cost target for finance planning.
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Share of valid reports that can enter automated reproduction workflows.
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Assumed automation precision for invalid-report filtering.
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How effective duplicate detection is in your integration.
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How well richer reports reduce clarification cycles in practice.
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Clarification savings are applied to all incoming reports, then normalized to the 100-report modeled scenario so async waiting time stays comparable with duplicate, validity, and reproduction savings.
Total savings
179.96 hrs/month
2,159.5 hrs/year
≈ $161,963/year
Savings by category
Savings share
Duplicate savings
70 hrs/month
Invalid-report savings
2.33 hrs/month
Reproduction savings
23.63 hrs/month
Clarification savings
84 hrs/month
This calculator combines published research findings with adjustable scenario assumptions. Replace defaults with your own operational data for internal planning.