October 15, 2024

How Supply Chain Big Data & Analytics Can Improve Your Business

How Supply Chain Big Data & Analytics Can Improve Your Business

Big data and analytics have become increasingly important in supply chains, especially as businesses turn to artificial intelligence (AI) and machine learning to improve processes and operations. As these solutions become more viable for real-world use, supply chain stakeholders find themselves with a growing need for accurate data. Organizations that can harness that data will find themselves better positioned to reap benefits from advances in supply chain and logistics technologies.

What is Big Data?

Big data is a term used to describe huge, extremely complex data gathered over time, which means the pool of data is always growing. Big data is often defined by the Four Vs: Variety, Velocity, Veracity, and Volume.

  • Variety – Supply chain big data may come from a diverse range of sources, including IoT sensors, partners, warehouse automation, historical information, and much more. The level of structure in the data is also a spectrum, ranging from large, unstructured data dumps to organized data deliveries.
  • Velocity – The speed at which data gets collected and delivered will vary from source to source. For instance, data from warehouse automation technologies may flow in continuously. In contrast, information about cargo from a datalogger may only come in when the logger reaches key checkpoints along its journey.
  • Veracity – Data is only as good as its accuracy. It’s difficult for an organization to base processes and decisions around incomplete or inaccurate data. If a carrier doesn’t report a slew of late deliveries, for example, future decisions based on that data may inadvertently lead to more late shipments or upset customers.
  • Volume – There’s no exact threshold for what qualifies as big data, but to put it simply, it needs to be a lot of data. A retailer with several hundred stores likely generates big data, while a local mom-and-pop corner store does not.

The Challenges of Supply Chain Big Data

Big data is extremely useful when analyzed and put to use, but that process can be overwhelming for organizations without the right software or partnerships in place. Some of the major challenges with supply chain big data include:

  • Accuracy – Data gets gathered from a variety of sources, the quality of which may vary. If the data isn’t scrubbed properly, it may result in inaccurate information that leads to bad or costly decisions.
  • Security – Collecting vast amounts of information about customers and supply chain movements can increase the risk of data breaches or cyberattacks.
  • Scalability – As a company grows, so does the amount of data it collects. The more data collected, the harder it can be to analyze and use effectively.
  • Cost – Using big data effectively often involves a large upfront investment in technology infrastructure.
  • Delays – It can be difficult to make real-time decisions based on big data since the pool of data itself is in constant flux.

What is Big Data’s Role in the Supply Chain?

Big data forms the basis for most supply chain analytics solutions, or what might sometimes be called big data analytics. Big data analytics technologies examine big data to uncover patterns, correlations, trends, and other valuable insights. Doing this requires special technologies, as the datasets are often too vast and complex for traditional data processing tools to handle.

Businesses have already used technologies like AI, machine learning, and statistical algorithms to derive actionable insights from big data for many years. Phoenix Logistics, for example, is already utilizing AI to customize solutions that enhance efficiencies for customers. Big data analysis has led to notable improvements across the supply chain, touching areas such as demand forecasting, decision-making, process optimization, trend analysis, and much more.

Still, in 2024, companies only manage to use 57% of the big data they collect. But, the rise of generative AI solutions (a type of AI known for its ability to analyze massive amounts of data very quickly) has generated renewed excitement in big data as industries hope for new technology solutions that enable them to leverage and engage with their full dataset.

About Phoenix Logistics

Strategic Real Estate. Applied Technology. Tailored Service. Creativity. Flexibility. These fundamentals reflect everything we do at Phoenix Logistics. We provide specialized support in locating and attaining the correct logistics solutions for every client we serve. Most logistic competitors work to win 3PL contracts, and then attempt to secure the real estate to support it. As an affiliate of giant industrial real estate firm Phoenix Investors, we can quickly secure real estate solutions across its portfolio or leverage its market and financial strength to quickly source and acquire real estate to meet our client’s need.

Mr. Frank P. Crivello began his real estate career in 1982, focusing his investments in multifamily, office, industrial, and shopping center developments across the United States. From 1994 to 2008, Mr. Crivello assisted Phoenix Investors in its execution of its then business model of acquiring net lease commercial real estate across the United States. Since 2009, Mr. Crivello has assisted Phoenix Investors in the shift of its core focus to the acquisition of industrial real estate throughout the country.

Given his extensive experience in all aspects of commercial real estate, Mr. Crivello provides strategic and operational input to Phoenix Investors and its affiliated companies.

Mr. Crivello received a B.A., Magna Cum Laude, from Brown University and the London School of Economics, while completing a double major in Economics and Political Science; he is a member of Phi Beta Kappa. Outside of his business interests, Mr. Crivello invests his time, energy, and financial support across a wide net of charitable projects and organizations.

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