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What Is Big Data?

Big data refers to extremely large data sets that may be structured, unstructured, or semi-structured, and that are too complex and large to be processed using traditional data processing tools and techniques. These data sets may come from a variety of sources, such as social media, sensors, mobile devices, and transactional systems, and may be generated at high volumes and velocities.

Big data has the potential to provide valuable insights and inform decision-making in a wide range of industries and applications, including healthcare, finance, marketing, and supply chain management, among others. However, analyzing and processing big data requires specialized tools and technologies, as well as skilled personnel with expertise in data management and analytics.

Advantages and Disadvantages of Big Data and SCM

There are a number of potential advantages to using big data in supply chain management (SCM), including:

  • Improved decision-making: Big data can provide valuable insights and inform decision-making in the supply chain. By analyzing large amounts of data from a variety of sources, organizations can identify trends, patterns, and relationships that can help them make better decisions about how to optimize their operations.
  • Enhanced visibility and traceability: Provides greater visibility and traceability throughout the supply chain, helping organizations to track and monitor the movement of goods and resources in real-time. This can improve decision-making, reduce errors, and enhance the overall efficiency of the supply chain.
  • Increased efficiency: Big data can help supply chain organizations improve their efficiency by providing real-time data and enabling automation and remote control of devices and systems. This can help organizations reduce waste, streamline processes, and optimize their operations.
  • Improved customer service: Helps supply chain organizations improve their customer service by providing real-time data and enabling automation and remote control of devices and systems. This can help organizations respond more quickly to customer needs and requirements.

There are also some potential drawbacks to using big data in supply chain management, including:

  • Complexity: Managing and analyzing big data can be complex and require specialized tools and expertise. This may require significant investment in training and resources.
  • Security and privacy concerns: Big data involves the collection and analysis of large amounts of data, which can raise security and privacy concerns. Organizations using big data in their supply chain must ensure that appropriate measures are in place to protect the security and privacy of their data.
  • Dependency on technology: Big data relies on technology and connectivity, which can be vulnerable to outages or disruptions. Organizations using big data in their supply chain must consider the risks associated with this dependency.
  • Quality of data: The quality of the data being analyzed can also be a concern, as errors or biases in the data can lead to incorrect conclusions and decisions. Organizations must ensure that the data they are using is accurate and reliable.

Cost Savings: Big Data and SCM

There are a number of ways in which big data can help organizations in the supply chain industry save costs. Some examples include:

  • Improved efficiency: Big data can help supply chain organizations improve their efficiency by providing real-time data and enabling automation and remote control of devices and systems. This can help organizations reduce waste, streamline processes, and optimize their operations, leading to cost savings.
  • Reduced errors: Big data can help reduce the risk of errors in supply chain operations, which can save on costs associated with correcting mistakes or recovering from errors.
  • Improved asset utilization: Big data can provide real-time data on the performance and utilization of assets, such as vehicles, machinery, and equipment. This can help organizations optimize the use of their assets and reduce costs associated with underutilization or overuse.
  • Improved forecasting: Big data can also help organizations improve their forecasting accuracy, which can help them optimize their production and inventory management, leading to cost savings.

Overall, the cost savings of big data in the supply chain industry will depend on the specific needs and operations of the organization, as well as the extent to which they are able to effectively utilize the technology to streamline and optimize their processes.

This video will help you understand what is big data.  Big data deals with large data sets that are too large or complex to be dealt with by traditional data processing software.  “Without big data analytics, companies are blind and deaf, wandering out onto the web like deer on a freeway.” ~Geoffrey Moore.  Big data provides ways to accurately predict the future, and allows a person to find the needle in the haystack.

Big Data Explained at Five Levels of Difficulty.

From simplest to most complex:

  1. Big data refers to very large datasets that are too large or complex to be processed and analyzed using traditional data processing tools.
  2. Big data often comes from multiple sources, such as social media, sensors, and web logs, and it can be structured (e.g. in a database) or unstructured (e.g. text documents).
  3. To make sense of big data, it is often necessary to use specialized tools and techniques such as distributed processing, machine learning, and data visualization.
  4. The analysis of big data can lead to insights and better decision-making in various fields, such as marketing, finance, and healthcare.
  5. Big data can also raise ethical concerns, such as privacy and the potential for bias in algorithms. It is important to consider these issues when working with big data.

Hadoop In 5 Minutes.

Hadoop is an open-source software framework for storing and processing large amounts of data, particularly data that is too large or complex to be processed using traditional data processing tools and techniques. It is designed to scale up from single servers to thousands of machines, and to handle a wide range of data types and formats, including structured and unstructured data.

Hadoop is built on the MapReduce programming model, which allows developers to write programs that can process large amounts of data in parallel across a distributed network of computers. This makes it possible to perform complex data analyses on very large datasets in a relatively short amount of time.

Hadoop is often used in conjunction with other big data technologies, such as Apache Spark and Apache Flink, to perform data processing and analysis tasks at scale. It is widely used in a variety of industries, including finance, healthcare, retail, and government, to help organizations gain insights from their data and make better informed decisions.

Analytics Quotes

  • “You can have data without information, but you cannot have information without data.” ~Daniel Keys Moran
  • “The heart of science is measurement.” ~Erik Brynjolfsson
  • “I have been struck again and again by how important measurement is to improving the human condition.” ~Bill Gates
  • “Information is the oil of the 21st century, and analytics is the combustion engine.” ~Peter Sondergaard
  • “That’s the problem with so many organizations around entrepreneurship. They’re driven by metrics that don’t matter.” ~Brad Feld
  • “We can’t really predict what might happen next because superintelligent A.I. may not just think faster than humans, but in ways that are completely different. It may have motivations — feelings, even — that we cannot fathom. It could rapidly solve the problems of aging, of human conflict, of space travel. We might see a dawning utopia. Or we might see the end of the universe.” ~Rick Paulas
  • “If you can’t explain it simply, you don’t understand it well enough.” ~Albert Einstein
  • “Data is not information, information is not knowledge, knowledge is not understanding, understanding is not wisdom.” ~Clifford Stoll
  • “It’s not about market share. If you have a successful company, you will get your market share. But to get a successful company, what do you have to have? The same metrics of success that your customer does.” ~Gordon Bethune
  • “I predict that, because of artificial intelligence and its ability to automate certain tasks that in the past were impossible to automate, not only will we have a much wealthier civilization, but the quality of work will go up very significantly and a higher fraction of people will have callings and careers relative to today.” ~Jeff Bezos, Amazon CEO.
  • “By the time we get to the 2040s, we’ll be able to multiply human intelligence a billionfold. That will be a profound change that’s singular in nature. Computers are going to keep getting smaller and smaller. Ultimately, they will go inside our bodies and brains and make us healthier, make us smarter.” ~Ray Kurzweil

Analytics and Automation

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