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Archive Issue AI

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The Impact Of AI On Back-Office Logistic Operations And Logistic Shared Service Operations: 6 Key Impacts In 2025

Authors: Sandipan Chakraborty

Abstract: Back-office logistics and shared services are being re-architected by AI in 2025. Beyond warehouse robots and route optimizers, the largest productivity lift is happening in the “paperwork and pixels” of logistics: order capture, document processing, freight audit & pay, customer service, and compliance. Drawing on current India-market data and public programs (ULIP, GST e-invoicing, ONDC) and global benchmarks (World Bank LPI), this journal synthesizes six concrete AI impacts that leaders can deploy now: (1) intelligent document processing and touchless workflows; (2) predictive ETA and exception control towers; (3) dynamic rating, tendering, and contract optimization; (4) forecasting for capacity, working capital, and SLA staffing; (5) AI copilots for shared-services agents; and (6) digital compliance across GST/e-invoicing and trade. We quantify the opportunity, map enabling Indian rails/APIs, list risks and controls, and close with a practical upskilling and tools roadmap tailored to India..

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F-HSRP: A Federated, Trust-Aware, And Energy-Efficient Secure Routing Protocol For Scalable And Privacy-Preserving IoT Networks

Authors: Piyali Ghosh , Dr. Dhirendra Kumar Tripathi

Abstract: With the accelerated growth of the Internet of Things (IoT), providing secure, scalable, and privacy-preserving communication has become a serious issue. Current routing protocols such as AODV, DSR, and HSRP are incapable of addressing the complex needs of today's IoT systems, particularly in large-scale, heterogeneous, and energy-constrained systems. This paper introduces the Federated Hybrid Secure Routing Protocol (F-HSRP)—a new paradigm that combines federated learning, trust-based routing, AES-256 encryption, and blockchain-aided route verification to address these issues holistically. F-HSRP utilizes a light-weight Convolutional Neural Network (CNN) at the edge of IoT networks. With federated learning, local anomaly detection models are trained at the nodes, maintaining data privacy and facilitating real-time accurate threat detection. Routing decisions are informed through a composite trust score based on node behavior, residual energy, and anomaly scores. Secure data transfer is enabled by AES-256 encryption and a lightweight Proof-of-Authority (PoA) blockchain process that guarantees tamper-proof route verification without imposing substantial overhead. The protocol is tested with the Bot-IoT dataset and a hybrid simulation platform that integrates NS-3 and TensorFlow Federated. The results indicate F-HSRP outperforms conventional protocols with 96.3% anomaly detection rate, 27% energy efficiency improvement, and better packet delivery and delay metrics. It also successfully fights blackhole, replay, and Sybil attacks. By integrating federated intelligence, cryptographic security, and blockchain consensus, F-HSRP offers a strong, energy-efficient, and privacy-enhanced routing solution for real-time IoT applications in smart cities, industrial control, healthcare monitoring, and military systems.

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