Home » Translytics Blog » Future trends in supply chain analytics and their potential impact on the industry
Jul 6, 2023:

Supply chain analytics is the application of advanced data analysis techniques to supply chain management, aimed at improving decision-making, operational efficiency, and overall performance. With the rapid growth of big data and technological advances, supply chain analytics is evolving rapidly, with new trends and innovations emerging all the time. In this blog, we will discuss some of the current and future trends in supply chain analytics and their potential impact on the industry.

Current trends

1. Real-time tracking

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Real-time tracking is becoming increasingly important in supply chain analytics. Companies are using GPS tracking devices, sensors, and other technology to track the location of goods in real time.

This allows companies to make better decisions about inventory management, route optimization, and delivery schedules.

To quote UPS is using real-time tracking and predictive analytics to optimize delivery routes and reduce fuel costs. UPS uses data from GPS devices, sensors, and other sources to identify the most efficient routes for deliveries.

2. Predictive analytics

Predictive analytics uses historical data and machine learning algorithms to forecast future trends and events. In supply chain management, predictive analytics can be used to anticipate demand, identify potential disruptions, and optimize inventory levels.

It is the use of predictive analytics in the food and beverage industry. By analyzing historical sales data and seasonal patterns, companies can predict demand for different products and adjust their supply chain accordingly. This helps to reduce waste and improve inventory management.

3. Artificial intelligence (AI) and machine learning (ML)

AI and ML are increasingly being used in supply chain analytics to automate tasks, optimize operations, and improve decision-making. AI and ML algorithms can analyze large volumes of data and identify patterns and insights that humans may not be able to spot.

Logistics companies use AI and ML to optimize their delivery routes and reduce transportation costs. By analyzing factors such as traffic, weather, and customer preferences, these algorithms can recommend the most efficient routes for each delivery.

4. Blockchain technology

Blockchain technology provides a secure and transparent way to record transactions and track assets in a supply chain. By creating a tamper-proof ledger of transactions, blockchain technology can improve transparency, traceability, and accountability in the supply chain.

One use case of blockchain technology in the supply chain is in the pharmaceutical industry. By using blockchain to track the movement of drugs from manufacturer to patient, companies can prevent counterfeit drugs from entering the supply chain and ensure that patients receive genuine medication.

Future trends

1. Internet of Things (IoT)

The IoT refers to the network of physical devices, vehicles, and other objects that are embedded with sensors, software, and connectivity. In the supply chain, IoT devices can be used to monitor and track goods, assets, and equipment in real time.

use of IoT sensors in the automotive industry. By installing sensors in vehicles and components, manufacturers can monitor the performance and health of their products in real time, enabling predictive maintenance and reducing downtime.

2. Augmented reality (AR) and virtual reality (VR)

AR and VR technologies can be used to enhance supply chain visibility and improve decision-making. AR and VR tools can provide a virtual view of the supply chain, allowing managers to visualize complex data and identify potential bottlenecks and inefficiencies.

One use case of AR and VR in the supply chain is in warehouse management. By using AR and VR tools, warehouse managers can visualize inventory levels, optimize storage space, and identify potential safety hazards.

3. Cloud computing

Cloud computing refers to the delivery of computing services, including storage, processing, and analytics, over the internet. In the supply chain, cloud computing can provide a scalable and flexible platform for managing data and applications.

One example of this is the use of cloud computing in the retail industry. By storing sales data and customer information in the cloud, retailers can analyse trends and insights in real-time, enabling faster decision-making and more personalized customer experiences.

Supply chain analytics is essential for managing complex supply chains in today’s globalized economy. With the emergence of new technologies and innovations, supply chain analytics is evolving rapidly, providing new opportunities for improving performance and efficiency. By leveraging these trends and technologies, companies can optimize their supply chain operations, reduce costs, and improve customer satisfaction.