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Using C-Site Traffic Intelligence to Optimize Retail Workforce Scheduling

December 8, 2025
6 min to read

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Retail tech developments show a clear trend: aligning staffing with actual customer arrival times is crucial. Xenia's recent $12 million Series A funding and forecasts of AI's deeper role in store operations underscore this. Meanwhile, new redevelopment projects with major trip generators like Whole Foods are changing local traffic patterns, making past labor plans obsolete.

C-Site transforms AI ambitions into actionable scheduling insights with empirical traffic intelligence. It precisely measures traffic, allowing managers to time staffing down to minutes, avoiding overstaffed lulls or understaffed rushes.

Current Scheduling Challenges

  • 60% of convenience store managers still use paper or spreadsheets for scheduling despite the challenge of balancing employee preferences and business demands.
  • 87% of managers report increased holiday season stress, with staff shortages a top issue.
  • Customer demand at roadside stores follows distinct intraday, intraweek, and seasonal cycles, correlating strongly with traffic volume and driver behavior.

How C-Site Enhances Scheduling

C-Site offers near 100% coverage of road networks with high spatial and temporal resolution, capturing traffic volumes and speeds in fine detail. This allows differentiation between local and transit traffic and informs staffing approaches accordingly. Seasonal and site-specific traffic variations translate directly to staffing needs.

Implementing C-Site Insights

  1. Build hourly demand profiles to identify peak windows and short micro-peaks.
  2. Translate demand spikes into labor needs by applying service time assumptions per department.
  3. Differentiated staffing by traffic type: fast-service roles for transit-heavy sites and upsell-focused staffing for local-heavy locations.
  4. Seasonal and monthly adjustments based on C-Site’s trend data to optimize overtime, fairness, and coverage.

Complementing Emerging Retail Technologies

AI tools for tasking and compliance, computer vision, edge computing, and retail media programs achieve greater ROI when labor hours are aligned with empirically derived demand peaks from C-Site data.

Adapting to New Project Visitation Rhythms

Developers of grocery-anchored mixed-use projects can use C-Site to move beyond generic staffing assumptions, tailoring rosters to actual anchor mixes and access patterns.

Expected Benefits

  • Reduced overtime by covering short demand surges with staggered staff start times.
  • More cost-effective and fair scheduling aligned with precise customer traffic patterns.
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retail tech, workforce scheduling, traffic intelligence, C-Site, AI in retail, staffing optimization, customer demand patterns