---
title: "Demand Planning 101"
description: "Learn how inventory forecasting can help you balance the cost of maintaining inventory and potentially running out of product."
language: en
canonical: https://www.flex.thisisbrew.com/flexu/demand-planning-101/
lifecycle: live
---

# Demand Planning 101

## 1. What Is Demand Planning? (1:52)

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PRESENTER: Demand planning is the process of using available information and expertise to predict demand for a company's products and/or services. It is a complex and vital function, as it touches several departments within a company and enables alignment amongst them to accomplish business goals.

The goal and challenge of demand planning is to predict the expected demand as accurately as possible, and then plan the supply with the right levels of inventory to meet the actual demand. This involves balancing the real cost of maintaining inventory with the potential cost of running out of the product. Let's explore the three types of demand planning--

operational planning, tactical planning, and strategic planning.

Operational planning deals with short-term actions, like transportation planning, production planning.

These plan changes can usually be implemented over the course of a few hours or days.

Tactical planning is more medium-term, and incorporates budgeting, near-term capacity planning, inventory planning, and manpower planning. These plans are in play for a few weeks, months, or even a couple of quarters.

Strategic planning is long-term, over a year or longer time horizon, and focuses on areas like long-range capacity planning, organizational-level headcount and facility planning, major supply chain design and network decisions, as well as big investment decisions.

## 2. What is Forecasting? (2:56)

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JEET SHAH: Forecasting is the process of making predictions of the future based on historical and current data and analysis of trends. At a high level, there are two approaches to forecasting--

quantitative and qualitative. One of the most frequently used quantitative methods is time series analysis.

In practice for most products, you may have a forecast model that can be broken down into four types of components. First, the level of component, which is the average value in the series. Second is the trend, which is the increasing or decreasing value in the series.

Third is the seasonal component, which shows a variation in the time series that represents intra-year fluctuations that are more or less repeatable year after year. And finally, you have the random or residual component, which represents all the other variations, which are not systematic in nature.

There are two other terms in forecasting that are relevant to note. The forecast horizon and forecast accuracy.

The forecast horizon is the period over which you forecast.

You can set this to be as far out in the future as you like.

However, it is important to note that the accuracy of the forecast typically decreases dramatically the further out you go. In forecast, accuracy is a measure of how close the predicted value is to the actual.

So how can we improve forecasts?

Well, we can aggregate demand by SKUs, by time, and by location.

These types of aggregation help reduce the coefficient of variation, and effectively help improve your forecast.

Another option is to forecast with a shorter time horizon. You should revise your forecast periodically or you can use ranges when you're forecasting out over a long horizon.

So how do we assess the quality of a forecast? Primarily, look at two variables--

accuracy and bias. Accuracy shows how close the forecast is to the actual observation, and bias is the persistent tendency to either over- or under-predict.

Now let's touch briefly on qualitative methods of forecasting. These are typically used when there is little or no historical data to analyze, and relies heavily on intuition or expert judgment. They're relevant when forecasting demand for a completely new product, or when there is a big change expected, like a new government regulation.

## 3. Why Is Demand Planning Important? (1:17)

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SPEAKER: Demand planning is essential for the following reasons.

First, preventing stock outs, which are when a company's product is out of stock or out of service, which contributes to lost revenue.

Second, improving customer satisfaction. And third, reducing overall costs.

Underestimating demand can result in lost sales, lower revenue and profits, and decreased customer satisfaction, where they may turn to other alternatives or substitutes if you cannot meet the demand. On the other hand, overestimating demand can result in excess inventory, underutilized capacity, higher costs, and potentially large financial losses in the case the excess inventory cannot be sold at a later date.

This problem is exacerbated in the case of perishable goods with a limited shelf life. And also to a somewhat lesser degree, with product categories where the product changes frequently, like technology products, where the demand for the newer product displaces demand for the predecessors.

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*This is a markdown version of [https://www.flex.thisisbrew.com/flexu/demand-planning-101/](https://www.flex.thisisbrew.com/flexu/demand-planning-101/) for AI/LLM consumption.*
