Corrigendum: Selection of Service Provider for Artificial Intelligence Based Mobile... Tender

DAKSHINANCHAL VIDYUT VITRAN NIGAM LTD (DVVNL) has floated a tender for Corrigendum: Selection of Service Provider for Artificial Intelligence Based Mobile Driven Facial Recognition Attendance System for Substations and Establishment Across 21 Districts Under. The project location is Agra, Uttar Pradesh, India. The reference number is DVVNL-MM/3666-2025 and it is closing on 24 Jan 2025. Suppliers can request Register free of cost to get the complete Tender details and download the document.

Expired Tender

Procurement Summary

State : Uttar Pradesh

Summary : Corrigendum: Selection of Service Provider for Artificial Intelligence Based Mobile Driven Facial Recognition Attendance System for Substations and Establishment Across 21 Districts Under

Deadline : 24 Jan 2025

Other Information

Notice Type : Tender

TOT Ref.No.: 113389720

Document Ref. No. : DVVNL-MM/3666-2025

Financier : Self Financed

Purchaser Ownership : Public

Document Fees : ₹ 5900

Tender Value : ₹ 7080000

EMD : ₹ 71000

Purchaser's Detail

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Tender Details

Selection of Service Provider for Artificial intelligence based Mobile Driven Facial Recognition Attendance System for Substations and Establishment across 21 Districts under
Category: Miscellaneous Services
Organisation Chain: Dakshinanchal Vidyut Vitran Nigam Ltd.
Tender Category: Services
Product Category: Miscellaneous Services
Sub Category: NA
Form Of Contract: Multi-stage
Contract Type: Tender
Bid Validity(Days): 180
Period Of Work(Days): 365
Document Download / Sale Start Date: 14-Jan-2025 10:30 AM
Document Download / Sale End Date: 24-Jan-2025 01:00 PM
Bid Submission End Date: 24-Jan-2025 01:00 PM
Bid Opening Date: 25-Jan-2025 04:00 PM
EMD Amount in ₹: 71, 000
Tender Value in ₹: 70, 80, 000
Tender Fee in ₹: 5, 900

Documents

 Tender Notice

Tendernotice_1.pdf

work_item_documents.zip


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