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.
The retail industry continues to be under tremendous pressure from online competitors and an ever-changing and more demanding consumer base. Retail leaders and early adopters are already applying AI to build and grow customer relationships, improve operational efficiency, and reduce fraud, resulting in increased revenue, reduced cost, and mitigated risk. But the rapid pace of change means retailers must continue to invest in AI or risk being left behind.
Key use cases include customer retention, inventory stockout, fraud detection, and marketing optimization. Deploying AI at scale is a key enabler of the benefits of digital transformation. However, in our experience, many companies have not yet figured out how to fully capture the promise of AI and struggle with implementing the technology in a manner that generates immediate and significant impact.
In the following section, we suggest several steps retailers can take to scale AI successfully.
Set the strategy first :
It is essential to start with a plan, including deciding which business domain to start with, selecting the right people to drive things forward, and choosing the data and technology that will underpin success. Different domains along the value chain can improve the company’s bottom line or customer or employee experiences.
Start with the domain that has the most significant potential impact. One retailer determined that it had nine main business domains that could benefit from digitalization: revenue management, e-commerce, customer experience, store format, store footprint, sales force, operations, logistics, and talent.
There are two main criteria for picking the best domain from this comprehensive list – the quality and composition of the team and the reusability of data and technology. In the first case, it is essential to have an internal business champion responsible for the entire value chain. Senior business executives can then act as ‘product owners’ (people responsible for solution delivery), translators (who bridge the analytics and business realms), and ‘change leads’ (responsible for change management efforts). In addition, a team of AI practitioners, such as data science and engineering experts, designers, business analysts, and a scrum master (all of whom may also be drawn from a central team in the organization) is required. From an implementation point of view, a cross-functional team with representation from the sales force, marketing, and category managers should be responsible for day-to-day activities.
For the data and technology aspect, companies usually have components that different domains can use. Mapping the data and technology and planning on how to reuse aspects where they overlap can dramatically reduce development time and cost; data and technology act as enablers, not obstacles, of progress. It is unnecessary to have the perfect data and technical backbone in place before testing and implementing use cases. On the contrary, starting with the business use case – or the problem you want to solve or improvement you want to make – and working backwards will hone your understanding of the data and digital tools that are required and avoid costly and time-consuming mistakes.
Reimagine business as usual :
Getting the most from AI requires reinventing business models, roles and responsibilities, and operational processes and using new ways of thinking and working. The ultimate goal is to make AI part of business as usual. It is not enough just to try an enhance an existing process using AI. Companies need to rethink the entire process to maximize the benefit of new analytical techniques.
A good example is how retailers allow their store managers to manage assortment dynamically. Today, retailers operate national and international chains with demographically diverse customers, and constantly changing channel affinities. This means it is essential to know what customers want, what kind of products to put in the store, and how to allocate shelf space across massive-scale SKUs.
The legacy approach was plagued by store manager guesswork as they tried to estimate customer preferences, with inaccurate forecasting leading to stockouts of popular products and requiring the use of open-to-buy (OTB) dollars to replenish stock. Over-ordering was also commonplace, increasing waste. At the same time, they also struggled to test new products as there was no space on the shelves, or they could not predict customer preferences.
In one company, store managers identified and understood the issues with the existing processes before mapping out what an ideal alternative might look like. They identified problems to solve and improvements they wanted to see. The company then built an AI prototype dashboard by compiling data from point-of-sale (POS) systems, loyalty programs, and syndicated data sources to indicate which SKUs drove each category. Managers were given the opportunity and power to rapidly choose assortments that more precisely aligned with customer needs, as well as access to intuitive dashboards that visualize how many and which products should be offered in each category. They can view information showing how adding or removing an SKU would change category sales. Integrated feedback loops enable AI systems to refine, update, and make product recommendations based on what works, rather than relying on intuition or personal experience.
Adapt to an agile way of working :
In most cases, significant organizational change is needed to adapt to the interdisciplinary collaboration and the agile working methods required to scale AI successfully. Leaders like the CEO and domain managers need to act as role models, reaching across organizational boundaries to make the new behaviour sustainable. Moving to a sound agile operating model requires leadership to transform from ‘masterminds’ who delegate tasks and instructions in a top-down manner to ‘catalysts and collaborators who meet with the team daily and ensure the delivery of impact.
The traditional technology/IT delivery model, with heavy upfront planning and little flexibility, should install agile feedback loops that enable a test-and-learn approach, with constant reiterations refining output. Organizations can then transition from a focus on scheduling and protocols to one that concentrates on producing better products and business models. As a result, businesses need interdisciplinary teams that own a specific product or customer journey and take full responsibility for building the right pathways.4
Leverage Machine Learning Operations to industrialize AI capabilities :
Once we have the AI prototype and process in place and pilots have proven impact, the next important step is industrialising the AI capability. To build, deploy, and manage analytics/AI applications with speed and efficiency at scale, a rapidly expanding stack of technologies and services is required. This enables teams to move from a manual and development-focused approach to one that’s more automated, modular, and fit to address the entire AI lifecycle.
This best-in-class working framework, often called MLOps (Machine Learning Operations), enables organizations to take advantage of these advances and create a standard, company-wide AI ‘factory’ capable of achieving scale. It ensures your AI modelling and implementation withstands the test of time and that the performance of your AI solutions does not degrade to the point of inutility. MLOps is relatively new and still evolving and encompasses the entire AI lifecycle – data management, model development and deployment, and live model operations.
Building an MLOps capability will materially shift how data scientists, engineers, and technologists work as they move from bespoke builds to a more industrialized production approach. The business impact of MLOps is not just about productivity and speed but also improving reliability and reducing risk while refining talent acquisition and retention.
Scale to other business domains :
Once the business sees proof of impact and the organization becomes familiar with the new agile way of working, the company is ready to scale AI to other domains. Ideally, these are domains in which either data or assets can be reused, such as expanding a supply chain across multiple business units, or similar customer journey mapping can be applied to another business area. An excellent example of the latter is typical customer value management levers like next-product-to-buy or churn forecasting.
Successful implementation typically also means fostering a team of ‘advanced analytics’ practitioners, which comes with its own potential pitfalls. Depending on the starting point, it can be hard to hire and develop the right talent and capabilities internally. We suggest that analytics translators, or the people who determine corporate problems that can be solved through analytics solutions and work to implement them, be hired or fostered internally. Analytical modelling for initial use cases can be outsourced to specialized vendors to speed up delivery and impact. In parallel, companies can hire their own analytics talent and build an internal team in tandem with implementing more use cases, gradually scaling existing models and developing new AI applications. This tends to work better than a “big bang” approach of acquiring a boutique AI firm, where valuations tend to be outsized, and integration issues are myriad
Tap into the Power of AI in Your Retail Business Today
AI is revolutionizing how retailers operate—and for the better. With AI, you put your store in a better position to make smarter decisions, boost sales, and ultimately enhance customer retention. So, now couldn’t be a better time to begin implementing AI in your daily functions.
Consider the above-mentioned steps as you explore how to incorporate this technology into your retail establishment. With the right AI tools, you can be well on your way to achieving a whole new level of business growth in the months and years ahead.
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.
Founder & CEO of Katonic.ai. Pioneering no-code Generative AI and MLOps solutions. Named one of Australia's Top 100 Innovators by "The Australian." Forbes Tech Council member, LinkedIn Top Voice 2024 , Advisor to National AI Centre. Previously led blockchain and digital initiatives at global tech firms. Katonic.ai: Backed by top investors, featured in Everest Group's MLOps PEAK Matrix® 2022. Passionate about making AI accessible to all businesses. Let's connect and shape the future of tech! #AIInnovation #TechLeadership #AustralianTech
Technology has revolutionized the way brands communicate with their audiences. With the rise of social media, mobile devices and AI specifically now have access to a broader audience than ever before. This phenomenon has led to a shift in how brands…
In today's fast-paced business environment, organizations need to be able to adapt and evolve quickly to stay competitive. One key aspect of this is understanding the organization's digital capabilities and identifying areas for improvement. A…
“Programmatic innovation in essence cultivates the ability for organizations to learn continuously from doing deliberately”
Success for any company whether a large incumbent or an upstart disruptor is defined by its ability to continuously exploit…
Culture plays a pivotal role in fueling success within an organization. It encompasses the shared values, beliefs, behaviors, and practices that shape the collective identity and working environment of a company. Here are several reasons why culture…
Mechanical energy is associated with physical science. Mechanical energy includes both kinetic and potential energy. At one point of time, either potential energy or kinetic energy remains in operation.
Contents hide
1 Mechanical energy-…
AI is rapidly becoming a pervasive force in our lives, and as such, has become increasingly important for digital ethics. AI can be used to make decisions and predictions faster and more accurately than humans, but it also introduces potential…