The Maintenance Supervisors Performance report provides an assessment of the performance of maintenance supervisors within the selected date range and scope. This report focuses on key metrics such as the number of resolved requests, total machine downtime, and average time to resolve a request. It allows stakeholders to evaluate the efficiency and effectiveness of individual supervisors in addressing maintenance issues. The report includes the following components:
Summary Metrics:
Resolved Requests: This metric represents the total number of maintenance requests successfully resolved (Fixed or Replaced) by each supervisor within the specified time range and scope. It provides an overview of their overall workload and productivity.
Total Machine Downtime: This metric quantifies the cumulative downtime experienced by machines under the supervision of each maintenance supervisor during the specified period. It helps assess the impact of their performance on production efficiency.
Average Time to Resolve a Request: This metric calculates the average duration it took for each supervisor to address and resolve maintenance requests. It serves as an indicator of their responsiveness and problem-solving capabilities.
Performance Chart:
The performance chart displays a comparative view of the number of requests and the average time to resolve a request for each maintenance supervisor. This visual representation allows stakeholders to identify supervisors who excel in terms of both quantity and quality of maintenance actions.
Supervisor Performance Table:
The table presents detailed performance data for each maintenance supervisor, It includes the following columns:
Supervisor Name: The name or identifier of the maintenance supervisor.
Request Time: The total number of requests assigned to the supervisor.
Production Section: The specific production section or area associated with the requests.
Machine Code: The identification code of the machine(s) involved in the requests.
Average Responsiveness Time: The average duration it took for the supervisor to scan their card on the device after receiving a request, It measures their timeliness in acknowledging the maintenance needs.
Average Time to Solve: The average duration from card scanning to taking action in the system, indicating the supervisor's efficiency in resolving machine issues.
Request Details:
By selecting a specific supervisor from the dropdown list, users can access the details of the requests associated with that supervisor. This provides a more in-depth view of their performance, including information such as timestamps, machine types, and repair durations.
The Maintenance Supervisors Performance report offers valuable insights into the individual performance of maintenance supervisors, allowing stakeholders to identify top performers and areas for improvement. This data-driven evaluation enhances accountability, fosters healthy competition, and encourages continuous improvement among the maintenance team.
This guide is tailored for Maintenance Managers in the garment manufacturing industry using the Garment IO Platform. It provides detailed instructions on managing maintenance tasks, understanding key concepts, and monitoring maintenance performance. ...
Welcome to the user guide designed specifically for Production Supervisors in the garment manufacturing industry using our Garment IO Platform. This guide provides detailed instructions on how to effectively manage production processes, monitor ...
The Maintenance Report provides a comprehensive overview of all maintenance requests that have been addressed by the maintenance team. This report helps track and analyze the maintenance activities within a specified date range and scope. The report ...
The Inline Quality Supervisor Performance Report is a valuable tool designed to evaluate the performance of supervisors involved in inline quality inspections. This user manual will guide you through the process of using the report page to view and ...
This guide is tailored for Maintenance Engineers in the garment manufacturing industry using the Garment IO Platform. It provides detailed instructions on how to effectively manage maintenance tasks, handle maintenance requests, and monitor the ...