Facial Attendance System for Construction Industry

Application Flow

Technology Stack

Problem Statement

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Data inaccuracies: Manual attendance systems are prone to errors and inaccuracies, such as incorrect data entry, missing information, and lost or damaged records.

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Time-consuming processes: Tracking attendance manually can be a time-consuming process, especially if there are a large number of employees working on the site.

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Limited data availability: With manual attendance systems, it can be difficult to get real-time data about employee attendance, making it challenging to address issues or make decisions in a timely manner.

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Lack of centralized system: With manual attendance systems, there is a lack of a centralized system to track employee attendance, making it challenging to manage and analyze data effectively.

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Vulnerability to fraud: Manually tracking attendance makes it easier for workers to create false attendance and reports, which can have a negative impact on the accuracy and reliability of the data

Solution Overview

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Automating the attendance monitoring system is essential for companies and sites where security and contactless collaboration are needed.

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We have worked with the client in developing an AI-powered facial attendance monitoring system to avoid data tampering and eliminate proxies.

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The system captures daily attendance using facial recognition technology and updates the count against the work breakdown structure (WBS).

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In case there is a new workman with the minimum records (trailing mail), the site engineer will enroll the workman with the app.

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Once enrolled, the new worker details are automatically pushed to the screening platform for completing the screening procedure.

Business Impact

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Increased efficiency: By automating the time-keeping process, the system can save time and reduce errors compared to manual systems.

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Improved accuracy: The system can accurately track the attendance of workers, even in challenging conditions like construction sites.

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Enhanced security: The system can help reduce buddy punching and other forms of time fraud.

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Better record-keeping: The solution can store attendance records in a centralized database, making it easier to access and analyze data.

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Cost savings: By reducing the need for manual labor and reducing errors, the system can help save costs in the long run.

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