Navigation and Content
You are in  Germany
or Select a different country
The Logistics Trend Radar 7.0 - Insights. Shaping Tomorrow

Trends Filter

Use the toggles below to filter visible trends.

Focus Areas
Trend Clusters
Sectors
Reset Filters Apply & Close
Trend Header Image

Trend Name

Social & Business Trend
Impact:
Adoption:

Read Full Article

Trend Overview

Show more

Advanced Analytics

Source: Gartner (2012): 2012 Gartner Magic Quadrant Report

Relevance to the Future of Logistics

Forecasting

Forecasting in logistics and supply chain management is essential for operational efficiency, customer satisfaction, sustainability, and strategic planning. Advanced analytics, including the latest AI-driven techniques, greatly enhance forecasting capabilities.

For financial forecasting and predicting consumer behavior, advanced analytics enable businesses to anticipate market demands, adjust pricing dynamically, efficiently plan resourcing, and optimize inventory levels. With a trade barometer, for example, which uses artificial intelligence and big data to analyze import and export data, companies can get early indications of future trade and economic performance – a predictive capability enabling informed decisions about inventory management, production planning, and resource allocation, directly influencing operations and the bottom line. Predictive models can forecast consumer demand spikes on particular days or weeks, enabling retailers to stock up on trending products. And recent advances in AI, such as machine learning models that can analyze complex datasets and identify patterns beyond human capacity, have significantly enhanced forecast accuracy and timeliness. Tech providers like IBM and its watsonx platform further refine demand forecasting, enabling models to be trained, tuned, and distributed with generative AI and machine learning capabilities.

Forecasting also helps build supply chain resilience. By predicting weather patterns and climate change impacts, businesses can mitigate risks related to natural disasters. They can adjust logistics strategies, reroute shipments, and secure alternative suppliers in advance. Moreover, AI-enhanced analytics extend to geopolitical and social factors, such as anticipating strikes or political instability that could disrupt supply chains. Predictive models might analyze social media sentiment and political news to forecast disruptions, enabling proactive measures. Companies like Everstream, for instance, use AI-driven analytics to monitor scores of data sources globally, providing clients with real-time insights into potential disruptions and alternative routing options to ensure continuity.

Low-Code / No-Code

The surge in low-code/no-code platforms represented a significant tech shift, enabling users across various sectors, including logistics and supply chain management, to engage in advanced analytics without extensive coding knowledge. Platforms like Microsoft Power BI and Google Data Studio democratized data analysis, allowing logistics professionals to visualize and monitor key metrics such as inventory levels, shipment tracking, and supplier performance through user-friendly interfaces. These tools facilitate rapid, informed decision-making critical to managing complex logistics operations efficiently.

Many startups are at the forefront of integrating low-code/no-code technologies into their logistics solutions. Locus, a logistics API-based platform company based in India, is an example of such innovation, offering advanced supply chain optimization and analytics solutions that utilize AI and machine learning to automate decision-making in logistics operations. Its platform enables businesses to plan deliveries more efficiently, predict transportation volumes, and optimize routes without requiring users to have any coding expertise. By integrating these advanced analytics capabilities, Locus helps logistics companies in Asia and beyond reduce costs, improve delivery times, and enhance customer satisfaction through data-driven strategies, showcasing the potential of low-code/no-code platforms to transform logistics and supply chain management on a global scale.

Data Mesh

Data mesh represents a novel architectural paradigm designed to address the complexities and scalability challenges of managing data in large, distributed organizations, including those in logistics and supply chains. At its core, data mesh shifts the perspective from centralized data management to a decentralized approach, where data is treated as a product, with domain-specific teams responsible for its quality, governance, and accessibility. This methodology encourages a more collaborative and efficient data ecosystem, enabling various departments — such as procurement, warehousing, and distribution — to manage and share their data autonomously yet cohesively. For supply chain managers, this means having direct access to high-quality, actionable data across different touchpoints of the supply chain, facilitating better decision-making and operational efficiency.

The adoption of a data mesh architecture solves several pressing issues in logistics, including data silos, inconsistent data quality, and the cumbersome process of integrating data from diverse sources for analytics. By promoting a self-serve data infrastructure, it enables non-technical users to easily access and analyze data relevant to their specific domain, thus democratizing data analytics across the organization.

International startups like Paris-based Dataiku, as well as Ververica, headquartered in Berlin, are at the forefront of offering data mesh services that are reshaping how logistics and supply chains manage data. Dataiku provides a platform that supports the democratization of data access and analytics, facilitating the creation of self-serve data products that can empower domain experts within logistics to analyze effectively data relevant to their areas. Meanwhile, Ververica offers real-time data processing and analytics capabilities, which may be essential for implementing a data mesh in dynamic logistics environments. Its technologies enable logistics companies to build and manage data pipelines that process data in real time, allowing for immediate insights and responses to supply chain challenges. By incorporating these innovative solutions, logistics and supply chain organizations can harness advanced analytics for more informed decision-making, significantly enhancing operational efficiency and resilience.

Challenges

Challenge 1

Ensuring data privacy and security becomes increasingly complex with advanced analytics, as data from various sources must be protected against breaches and unauthorized access.

Challenge 2

Implementing advanced analytics requires a well-built data governance framework in an organization to ensure data quality and compliance across all departments and functions.

Challenge 3

The integration of advanced analytics into an existing IT infrastructure can present significant technical challenges, requiring careful planning and possibly substantial investment in technology upgrades.

Challenge 4

Navigating the fast-evolving landscape of advanced analytics tools and technologies can be challenging, making it difficult for organizations to choose the most appropriate and future-proof solutions.

Ensuring data privacy and security becomes increasingly complex with advanced analytics, as data from various sources must be protected against breaches and unauthorized access.
Implementing advanced analytics requires a well-built data governance framework in an organization to ensure data quality and compliance across all departments and functions.
The integration of advanced analytics into an existing IT infrastructure can present significant technical challenges, requiring careful planning and possibly substantial investment in technology upgrades.
Navigating the fast-evolving landscape of advanced analytics tools and technologies can be challenging, making it difficult for organizations to choose the most appropriate and future-proof solutions.

Outlook

The trajectory of the Advanced Analytics trend in logistics is continued innovation and expansion, driven by development of sophisticated analytical techniques and the proliferation of data across the global supply chain ecosystem. As organizations embrace data mesh architectures, low-code/no-code platforms, and advanced forecasting models, we anticipate a deeper integration of AI and machine learning technologies, further enhancing the precision and efficiency of logistical operations. This evolving landscape not only promises to refine the capabilities of supply chain managers in making data-driven decisions but also sets the stage to explore new frontiers in predictive analytics, potentially revolutionizing how logistics and supply chains operate in an increasingly complex and dynamic global market.

This trend should be ACTIVELY monitored,with implementations available for many use cases today.

Need support prioritizing high impact trends for your business?

Request a complimentary Trend Radar Mapping session at your regional DHL Innovation Center and prepare for the future today.

Request a Session

Stay Connected

Sign up for the DHL Innovation Insights newsletter for more trends direct to your inbox.

Yes, sign me up!