Making Sense of Forecasting 2.0 and the Role of AI

Maximiliano Bruni Maximiliano Bruni
October 24, 2018 AI & Machine Learning

Ready to learn Artificial Intelligence? Browse courses like  Uncertain Knowledge and Reasoning in Artificial Intelligence developed by industry thought leaders and Experfy in Harvard Innovation Lab.

Listening to current retail technology discussions, it’s safe to say that artificial intelligence is the early favorite for buzzword of the year, with countless taglines promising unprecedented productivity improvements based on AI. Advanced forecasting is often cited as one of the top areas where AI holds great promise – but how do you separate the hype from the reality?

As retailers make big investments in AI technologies that can transform their business, a key focus is increasing supply chain effectiveness and creating more accurate forecasts. However, prior to implementing new solutions, retailers need to have a clear understanding of what advanced forecasting actually entails, how AI will play a role in advanced forecasting, and what their specific forecasting strategy needs really are.

Machine Learning and AI – What Do They Truly Do?

By definition, artificial intelligence means “the capability of a machine to imitate intelligent human behavior.” In retail, a prime example of an AI use case is machine learning, which provides the ability for the machine to utilize a retailer’s data to deliver advanced insights that can continue to evolve based on various variables the retailer is looking to analyze. For example, a retailer can implement a machine learning solution that utilizes cloud computing to expand the number of machines tackling massive computations in areas such as forecasting. Furthermore, in advanced forecasting, the presence of machine learning algorithms can lead to success in managing clean attributes and planning for future demand.

Prior to machine learning, retailers were limited by a lack of hardware and human resources. They simply could not execute the amount of data analysis they needed to effectively create an advanced forecasting environment. However, at the moment, retailers are confused about what AI really is, the capabilities it provides, and concerns that AI will lead to job losses. These fears are unfounded, however; if utilized correctly, AI technologies such as machine learning can serve as advanced assistants to help retail executives realize forecasting insights that were not achievable prior to AI.

Traditional vs. Advanced Forecasting—What is the difference?

Traditional forecasting means retailers analyze their data through a series of Excel spreadsheets to gather historical data on a particular product or SKU and forecast demand based on the history. In this process, retailers also have to manually make decisions on certain categories such as “like items”. For example, in this process, a retailer would ask “since we’ve never had that ‘new shirt’ before, we’ll say it is like this ‘old shirt’.” In this scenario, traditional forecasting takes the sales history for one particular item and utilizes this data to forecast new item demands. The issue here is that retailers are limited to the amount of data they can analyze, leading to a single-sided view of the customer and potentially creating biased forecasting.

On the other hand, advanced forecasting, or “Forecasting 2.0,” provides retailers the ability to combine both historical data and real-time data to quickly understand their history and drive their organization’s future. Advanced forecasting is crucial for retailers who are operating a multi-channel organization as it helps retailers introduce new products into new channels and create an accurate and informed forecasting strategy to anticipate and meet demands across all channels.

For example, by incorporating machine learning algorithms, retailers can gain a 360-degree view of the customer and work to create an environment of insight-based forecasting that brings in and prepares for ‘what-if’ scenarios, such as weather patterns, extreme or complex seasonality or multiple channel exposure, among other factors. Additionally, advanced forecasting can help inform and drive additional merchandising activities such as planning, buying and assortment tasks.

Forecasting 2.0 utilizes attributes of all products, not just ‘new shirt’ and ‘old shirt.’ So instead of having the sales history of an ‘old shirt’ for three years (12 months x 3 years equaling to a total 36 data points), machine learning forecasting can use the entire data set for all items – including all sales history, all attributes, all locations and weather, etc. to create an accurate forecast for one item. Machine learning also removes the need for retailers to pick ‘like items,’ as it decides itself which ‘old Item(s)’ the ‘new shirt’ is closest to. The machine learning algorithms are self-learning, so they improve over time and learn as they take in more data. This results in far greater accuracy and fewer errors – which in turn reduces overstocks, out-of-stocks and markdowns and improves profitability.

Forecasting 2.0 can help take retailers’ capabilities to the next level. However, given the critical importance of forecasting, retailers should have a clear understanding of the underlying technology, ensuring that it truly embraces AI components such as machine learning to help retailers thrive in a complex, multi-channel world.

  • Experfy Insights

    Top articles, research, podcasts, webinars and more delivered to you monthly.

  • Maximiliano Bruni

    Tags
    Artificial Intelligence
    © 2021, Experfy Inc. All rights reserved.
    Leave a Comment
    Next Post
    Big Data and AI Are Making Life Insurance Better For Everyone

    Big Data and AI Are Making Life Insurance Better For Everyone

    Leave a Reply Cancel reply

    Your email address will not be published. Required fields are marked *

    More in AI & Machine Learning
    AI & Machine Learning,Future of Work
    AI’s Role in the Future of Work

    Artificial intelligence is shaping the future of work around the world in virtually every field. The role AI will play in employment in the years ahead is dynamic and collaborative. Rather than eliminating jobs altogether, AI will augment the capabilities and resources of employees and businesses, allowing them to do more with less. In more

    5 MINUTES READ Continue Reading »
    AI & Machine Learning
    How Can AI Help Improve Legal Services Delivery?

    Everybody is discussing Artificial Intelligence (AI) and machine learning, and some legal professionals are already leveraging these technological capabilities.  AI is not the future expectation; it is the present reality.  Aside from law, AI is widely used in various fields such as transportation and manufacturing, education, employment, defense, health care, business intelligence, robotics, and so

    5 MINUTES READ Continue Reading »
    AI & Machine Learning
    5 AI Applications Changing the Energy Industry

    The energy industry faces some significant challenges, but AI applications could help. Increasing demand, population expansion, and climate change necessitate creative solutions that could fundamentally alter how businesses generate and utilize electricity. Industry researchers looking for ways to solve these problems have turned to data and new data-processing technology. Artificial intelligence, in particular — and

    3 MINUTES READ Continue Reading »

    About Us

    Incubated in Harvard Innovation Lab, Experfy specializes in pipelining and deploying the world's best AI and engineering talent at breakneck speed, with exceptional focus on quality and compliance. Enterprises and governments also leverage our award-winning SaaS platform to build their own customized future of work solutions such as talent clouds.

    Join Us At

    Contact Us

    1700 West Park Drive, Suite 190
    Westborough, MA 01581

    Email: [email protected]

    Toll Free: (844) EXPERFY or
    (844) 397-3739

    © 2025, Experfy Inc. All rights reserved.