Workforce Scheduling in Logistics Hubs Dataset
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https://zenodo.org/doi/10.5281/zenodo.17273095
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This Workforce Scheduling and Operational Efficiency Dataset captures real-time, high-frequency operational data collected from a logistics hub over a 7-year period spanning from January 1, 2018, to December 31, 2024. The dataset includes hourly records for a diverse set of workforce, environmental, and operational features, reflecting actual dynamics observed in large-scale logistics operations.
The dataset is structured to support analysis of workforce management, shift optimization, employee fatigue assessment, overtime trends, and task sufficiency. It provides a detailed view of how human factors, environmental conditions, and task complexity interact in high-demand logistics environments.
Feature Overview
A. Temporal and Identification
DateTime: Timestamp of observation at hourly intervals.
Employee_ID: Unique identifier for individual workforce members.
B. Shift and Job-Related Attributes
Shift_Timing: Operational shift per hour (Morning, Evening, Night).
Role_Position: Assigned job function (Loader, Supervisor, Driver).
Skill_Level: Skill classification of the employee (Beginner, Intermediate, Advanced).
Shift_Preference: Preferred working time of the employee.
C. Experience and Workforce Behavior
Work_Experience_Years: Years of experience in logistics or similar roles.
Availability_Hours: Number of hours the worker is available for scheduling.
Previous_Shift_Fatigue: Fatigue index based on preceding work hours.
Training_Hours_Completed: Cumulative training hours completed by each employee.
Absenteeism_Rate: Relative absenteeism level based on historical behavior.
D. Operational Load and Environment
Daily_Shipment_Volume: Shipment volume handled per shift.
Shipment_Type: Classification of the shipment (Fragile, Perishable, Standard).
Demand_Fluctuations: Measure of variation in demand at the hour level.
Hub_Size: Relative size and capacity of the logistics hub.
Temperature and Humidity: Environmental readings at the logistics location.
E. Scheduling Constraints
Required_Labor_Units: Hourly workforce requirement estimate.
Historical_Delay_Data: Frequency of past delays associated with tasks.
Max_Shift_Duration: Maximum allowable work hours per shift.
Min_Rest_Period: Minimum rest period required between consecutive shifts.
Overtime_Limits: Permissible overtime hours per worker.
Shift_Overlap: Measure of overlap between shift transitions.
F. Performance and Feedback Metrics
On_Time_Completion_Rate: Task completion punctuality.
Worker_Efficiency_Score: Productivity score based on output vs. time.
Schedule_Adherence: Alignment with pre-assigned shift schedules.
Employee_Satisfaction_Rating: Score derived from HR or operational evaluations.
Target Labels for Prediction Tasks
The dataset includes multi-label classification targets to enable the development of supervised models:
Optimal_Shift_Assignment: Binary outcome (Assigned / Not Assigned) for schedule feasibility.
Overtime_Prediction: Indicator for whether overtime was required (Yes / No).
Employee_Fatigue_Risk: Categorical fatigue risk (High, Medium, Low).
Shift_Coverage_Sufficiency: Binary label indicating if staffing was sufficient (Sufficient / Insufficient).
Highlights
Time Span: 7 years (2018–2024), hourly resolution.
Multi-Domain Variables: Covers human, environmental, operational, and scheduling data.
Multi-Label Supervision: Enables simultaneous prediction of multiple labor-related outcomes.
Real-Time Nature: Suitable for online analytics, edge computing, and federated learning scenarios.
Use Cases: Workforce optimization, logistics planning, fatigue risk monitoring, shift planning, ML benchmarking.
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Zenodo创建时间:
2025-10-05



