The use of this site and the content contained therein is governed by the Terms of Use. When you use this site you acknowledge that you have read the Terms of Use and that you accept and will be bound by the terms hereof and such terms as may be modified from time to time.
All text, graphics, audio, design and other works on the site are the copyrighted works of nasscom unless otherwise indicated. All rights reserved.
Content on the site is for personal use only and may be downloaded provided the material is kept intact and there is no violation of the copyrights, trademarks, and other proprietary rights. Any alteration of the material or use of the material contained in the site for any other purpose is a violation of the copyright of nasscom and / or its affiliates or associates or of its third-party information providers. This material cannot be copied, reproduced, republished, uploaded, posted, transmitted or distributed in any way for non-personal use without obtaining the prior permission from nasscom.
The nasscom Members login is for the reference of only registered nasscom Member Companies.
nasscom reserves the right to modify the terms of use of any service without any liability. nasscom reserves the right to take all measures necessary to prevent access to any service or termination of service if the terms of use are not complied with or are contravened or there is any violation of copyright, trademark or other proprietary right.
From time to time nasscom may supplement these terms of use with additional terms pertaining to specific content (additional terms). Such additional terms are hereby incorporated by reference into these Terms of Use.
Disclaimer
The Company information provided on the nasscom web site is as per data collected by companies. nasscom is not liable on the authenticity of such data.
nasscom has exercised due diligence in checking the correctness and authenticity of the information contained in the site, but nasscom or any of its affiliates or associates or employees shall not be in any way responsible for any loss or damage that may arise to any person from any inadvertent error in the information contained in this site. The information from or through this site is provided "as is" and all warranties express or implied of any kind, regarding any matter pertaining to any service or channel, including without limitation the implied warranties of merchantability, fitness for a particular purpose, and non-infringement are disclaimed. nasscom and its affiliates and associates shall not be liable, at any time, for any failure of performance, error, omission, interruption, deletion, defect, delay in operation or transmission, computer virus, communications line failure, theft or destruction or unauthorised access to, alteration of, or use of information contained on the site. No representations, warranties or guarantees whatsoever are made as to the accuracy, adequacy, reliability, completeness, suitability or applicability of the information to a particular situation.
nasscom or its affiliates or associates or its employees do not provide any judgments or warranty in respect of the authenticity or correctness of the content of other services or sites to which links are provided. A link to another service or site is not an endorsement of any products or services on such site or the site.
The content provided is for information purposes alone and does not substitute for specific advice whether investment, legal, taxation or otherwise. nasscom disclaims all liability for damages caused by use of content on the site.
All responsibility and liability for any damages caused by downloading of any data is disclaimed.
nasscom reserves the right to modify, suspend / cancel, or discontinue any or all sections, or service at any time without notice.
For any grievances under the Information Technology Act 2000, please get in touch with Grievance Officer, Mr. Anirban Mandal at data-query@nasscom.in.
For centuries, the manufacturing sector has played a pivotal role in driving global economic growth. But now, with the emergence of Industry 4.0, this field is undergoing a significant overhaul – and data is at the heart of it all. Mind-bogglingly, the average manufacturing enterprise generates a whopping 1 TB of production data every day. Yet, shockingly, only a mere 1% of that data is ever analyzed and utilized in real-time. To stay ahead of the curve, companies must find an efficient way to manage & analyze their data cohesively and use it to gain valuable, actionable insights for making informed decisions. This is where data fabric comes into play – a revolutionary concept that allows businesses to seamlessly integrate disparate sources of information and derive meaningful value from it. In this blog post, we’ll explore how implementing data fabric can benefit the manufacturing industry, revolutionizing how organizations approach data management. So sit tight as we delve deep into this exciting topic!
What is data fabric? How is it being used in various sectors?
Data fabric is a term used to describe a unified data management system that enables businesses to manage their data across multiple clouds, applications, and systems. It ensures that all the data is consistent, accurate, and accessible in real time. The concept of data fabric is being increasingly adopted by various sectors due to its ability to provide seamless integration of different types of data from disparate sources. By providing a single view of the entire dataset, it becomes easier for organizations to gain insights into their operations and make better decisions based on those insights.
In healthcare, data fabric can integrate patient records from multiple providers or hospitals into one comprehensive record. This makes it easier for doctors and medical professionals to access patient information quickly and accurately. Similarly, in finance, enterprises can use the data fabric technology to aggregate customer transactional histories across multiple channels such as ATM transactions, mobile banking apps or online banking portals, allowing banks or other financial institutes with more detailed analytics of user activities leading towards improved decision-making processes.
The concept of implementing Data Fabric revolves around achieving optimal business efficiency by adopting a centralized approach to manage operational intelligence. This approach not only streamlines processes but also leads to cost savings and heightened productivity. In essence, Data Fabric empowers organizations to harness their data resources effectively, resulting in improved operational outcomes and increased overall performance.
Data Fabric in Manufacturing
In the world of manufacturing, data is king. And with the rise of Industry 4.0, there’s no better time for companies to invest in cutting-edge technology that can help them gain valuable insights from their data. Enter Data Fabric – the game-changing solution that’s revolutionizing the manufacturing sector.
Manufacturers are turning to Data Fabric to streamline their operations and gain real-time insights from their disparate data sources. This innovative technology provides a unified view of enterprise data, enabling manufacturers to make informed decisions quickly and efficiently. The benefits of implementing a robust data fabric solution are endless – from optimizing supply chain logistics to improving overall product quality.
But that’s not all. With real-time access to critical business metrics, data fabric is empowering manufacturers with unprecedented insight into their businesses’ health at all times. This allows them to utilize advance analytics tools to monitor production processes and ensure quick reaction time when needed most – whether that’s identifying bottlenecks and inefficiencies in real-time, predicting equipment failures before they occur, optimizing supply chain logistics, and improving overall product quality. Additionally, as cloud-based deployments are becoming more prevalent in the industry, Data Fabric technology can be leveraged to achieve hybrid-cloud architectures that reduce IT overheads while scaling up infrastructure as per business needs.
Reducing costs is another significant benefit of implementing a data fabric in manufacturing. By analyzing operational data, companies can identify opportunities for cost savings without sacrificing quality or efficiency. This enables them to optimize their processes while ensuring optimal product quality and reducing costs – ultimately leading to greater success.
In a fiercely competitive landscape, implementing Data Fabric into manufacturing environments is a no-brainer for organizations looking to stay ahead. It offers endless possibilities for improved efficiency and productivity, making it a crucial consideration for manufacturers seeking to thrive in the current business climate.
Here are some examples of manufacturing companies that joined the Data Fabric revolution and took their manufacturing operations to the next level!:
Siemens: Siemens is a global manufacturing company that produces a wide range of products, including industrial automation systems, power generators, and medical equipment. Siemens implemented a data fabric to collect data from its manufacturing operations and use it to optimize its production processes. The result – Siemens was able to integrate data from multiple sources, including machines, sensors, and databases, to comprehensively view its operations. By leveraging the data fabric, Siemens identified and addressed inefficiencies in its manufacturing processes, resulting in increased productivity and reduced costs.
BMW: BMW is a leading manufacturer of luxury vehicles, with operations in over 150 countries. BMW implemented a data fabric to collect data from its production facilities, supply chain management systems, and customer feedback channels. The result – BMW successfully analyzed data in real-time, quickly identifying and addressing quality issues. By leveraging the data fabric, BMW improved the quality of its vehicles, resulting in increased customer satisfaction and improved brand reputation.
Ford: Ford is one of the world’s largest automobile manufacturers, producing a wide range of vehicles, including cars, trucks, and SUVs. Ford implemented a data fabric to collect data from its production facilities and supply chain management systems. The result – Ford could optimize its manufacturing processes, reducing downtime and improving productivity. By leveraging the data fabric, Ford improved the efficiency of its production facilities, resulting in reduced costs and increased profitability.
Impressive, isn’t it? With all the benefits that Data Fabric technology can bring, it’s surprising that not all manufacturers have implemented it yet. So, what’s stopping them? Ironically, the answer lies in data itself. Let’s take a closer look at the root cause of this problem and explore potential solutions.
The Biggest Roadblock to Data Fabric – Unstructured Data
In 2012, General Electric discovered that one of its factories had the capacity to produce 5,000 data samples every 33 milliseconds, while a single product line alone could generate up to 4 trillion data points per year – and this was over a decade ago. Today, with the emergence of Industry 4.0, the amount of data being generated is staggering. Unlike traditional factories that only produce physical goods, smart factories create both products and data, which must work in tandem to achieve enhanced productivity and efficiency. For instance, the performance logs of a single works machine can generate approximately 5 gigabytes of data every week, and a typical smart factory can produce as much as 5 petabytes per week – that’s the equivalent of over 300,000 16 GB iPhones!
Taming the Unstructured: How Unified Data Management Can Help You Make Sense of Dark Data
As mentioned above, the main hurdle when dealing with unstructured data is the difficulty in analyzing and extracting valuable insights from it. However, an effective solution to this challenge is to implement unified data management.
Unified Data Management Platform (UDMP) is a technology solution that integrates multiple data management functionalities, such as data integration, data warehousing, data governance, data quality, and data security, into a single platform. This approach helps to minimize the sprawl of dark or unused data in various silos across the organization and protects sensitive data at risk.
By consolidating all relevant information in a centralized location such as a “Data Fabric,” manufacturers can obtain more profound insights into their operations, secure their data and optimize their storage infrastructure spread across multiple datasets stored in multiple locations. The use of unified data management tools to optimize the value of Data Fabric technology results in better decision-making and decluttering of datasets, leading to significant cost savings for manufacturing organizations.
To implement a data fabric successfully in the manufacturing sector, companies need to focus on three techniques that can help manage unstructured data effectively. These techniques are metadata analytics, and context analytics.
Metadata is information about the data that helps describe its content and structure. By using metadata, manufacturers can organize their unstructured data more efficiently. Metadata tags can include details such as date of creation, author name, or origin location, making it easier for businesses to find relevant information quickly, archive and tier their data based on usage (hot vs cold). Additionally, by categorizing, tagging and eliminating redundant, obsolete and trivial data (ROT), metadata analytics help enterprises reduce their data sprawls.
Content analytics is another technique that helps analyze unstructured data by identifying patterns within text documents or other types of digital media like images and videos. This process involves extracting insights from large volumes of text-based content by categorizing it into different topics based on keywords or phrases used in those documents. Content analysis is best used for identifying sensitive data and taking the required steps to remediate it – quarantine, access control and audit.
On the other hand, context analytics focuses on understanding how different pieces of unstructured data relate and how they fit into broader business goals. It considers factors such as user behavior patterns when accessing certain types of files, which enables businesses to make better decisions based on a holistic view rather than just individual pieces of information. With this, businesses can gain valuable insights from their structured and unstructured datasets while reducing costs for storing large amounts of dark (uncategorized)data.
Click here to read more about 5 ways how Unified Data Management Platform aids Data Fabric Implementation
That the contents of third-party articles/blogs published here on the website, and the interpretation of all information in the article/blogs such as data, maps, numbers, opinions etc. displayed in the article/blogs and views or the opinions expressed within the content are solely of the author's; and do not reflect the opinions and beliefs of NASSCOM or its affiliates in any manner. NASSCOM does not take any liability w.r.t. content in any manner and will not be liable in any manner whatsoever for any kind of liability arising out of any act, error or omission. The contents of third-party article/blogs published, are provided solely as convenience; and the presence of these articles/blogs should not, under any circumstances, be considered as an endorsement of the contents by NASSCOM in any manner; and if you chose to access these articles/blogs , you do so at your own risk.
Today data protection and privacy compliance have become critical concerns for businesses across all sectors. The proliferation of online transactions, digital marketing, and data-driven decision-making has led to an unprecedented accumulation of…
Artificial Intelligence (AI) agents are at the forefront of modern technology, powering applications that simplify tasks, enhance decision-making, and drive efficiency. So, what precisely are AI agents, and how do they operate? From virtual…
The integration of artificial intelligence (AI) agents into various industries has ushered in a new era of efficiency, innovation, and capability. These systems, designed to operate autonomously, are now pivotal in domains ranging from healthcare to…
Authored by: Ankur Mehta, Delivery Manager - Xoriant
In today’s fiercely competitive markets, where economic volatility has become a constant, the traditional finance function within organizations is due for a strategic transformation. Like other…
Customer service remains a key driver to any organization irrespective of its size or type. Consumers in the current world seek ease, efficiency, and personal treatment by businesses. Alright, let me introduce you to the new heroes of Customer…
If you are looking at burgeoning technologies or searching for a data science course, learning generative AI models like the ChatGPT is crucial. Self-organized generative AI systems emerged in recent years, as the basis for interacting with…