Nevertheless, it is widely accepted that AI technologies will be the most disruptive over the next decade. Interest in AI is reflected in our Global CEO Survey which found 85% of CEOs agreeing that AI will significantly change the way they do business in the next five years, even if AI’s penetration in companies is not yet impressive (Exhibit 1).
Exhibit 1: Corporate AI initiatives worldwide
The increasing importance of AI is due to several factors, including data proliferation and continuous technological improvements (processing power and storage), leading to the democratisation of AI and massive investments in these tools and technologies.
In PwC’s broad definition, AI is a collective term for computer systems that can sense their environment, think, learn and take action in response to what they are sensing and their objectives. Forms of AI in use today include predictive models, autonomous vehicles, cognitive computing, chatbots and smart robots, among others.
1. Automated intelligence Automation of manual/cognitive and routine/non-routine tasks |
3. Assisted intelligence Helping people perform tasks faster and better |
2. Augmented intelligence Helping people make better decisions |
4. Autonomous intelligence Automation of decision-making processes with no human intervention2 |
Business areas most affected
The biggest potential impact is on supply-chain management / manufacturing and marketing & sales. Roughly 2/3 of the entire AI opportunity.
Investments
Europe is lagging behind in terms of investments in AI ($3 to $4 billion) compared to the US ($15 to $23 billion) and Asia ($8 to $12 billion) (2016)
Rational pricing relies on data. Given the ever-increasing amounts of data available, conventional engineering solutions will soon no longer be up to the job. AI technologies allow organisations to use data to adapt to new situations and solve problems more effectively.
Machine learning (ML) - an AI application - in particular has the potential to benefit almost every industry, as it offers the ability to extract certain knowledge and patterns from series of observations. ML is based on the idea that we can build machines that can process data and learn on their own, with no need for constant human supervision.
Almost all companies struggle to determine the fair price for a product or service, how customers will react to different prices and how to extract the maximum value for each customer segment in a market. This is where ML comes into play. It gives companies the opportunity to optimise prices, their pricing strategy and managers’ effectiveness.
Setting prices accurately is difficult mainly because of the complexity and proliferation of the available internal and external data that needs to be analysed. ML can accurately analyse large amounts of data in a short timeframe and derive business-guiding insights from it. It can help companies maximise profits via value-based pricing and optimal price tiering. It also allows decision makers to understand customers’ willingness to pay for a product and their reactions to different pricing strategies.
ML helps firms build a more rational global pricing strategy by gathering data from multiple sources: historical transactions, win/loss analysis, the competitions’ price levels and contextual data (e.g., what does the customer say about our product on social media, overall market trends, etc.). By looking at such prescriptive and predictive data, leaders can take better and faster decisions.
How can a firm define an efficient promotion strategy? What discount should it give to customers to improve profitability? What is the return on investment (ROI) of historical promotions? With AI, companies can optimise promotions using accurate analysis and predictions.
Though very costly, promotions represent a crucial means of increasing brand awareness and sales. Sales promotions ROI measures the impact of promotions on sales. However, ROI is a complex exercise, as you must isolate the impact of promotions based on the several factors that simultaneously influence sales (see Exhibit 2).
Exhibit 2: The effect on sales of a trade promotion is seen across the product portfolio and throughout time
ML can identify a sales increase/decrease by, for example, measuring the impact of both cannibalisation (through category-SKU regression) and the discount. This way, AI helps leaders calculate both a promotion’s - either real or potential - ROI and penetration.
AI can also help in building a promotion strategy. By analysing data (customer activity, information, subscriptions, competitors, purchase and transaction history, etc.), AI algorithms can perform accurate marketing segmentation and target customers to build loyalty or identify churn behaviours. AI enables companies to deliver more targeted, profitable (fixing the ideal discount rate) and sales-driven promotions.
Extracting more revenue from their existing client base is the number one lever companies should look at to grow their top line. By analysing different data sources, AI algorithms make intelligent and personalised suggestions to sales reps during the sales process on what additional (cross selling) or more profitable (upselling) products and/or services a client could be interested in.
By being able to process data from across business units, channels and geographies, algorithms can make more accurate recommendations than any human could.
Despite its significant advantages, AI should not be seen as the golden bullet that will easily solve all the pricing problems a company’s facing. Putting AI’s technological capabilities aside (platform to run ML, predictive models, etc.), embedding AI in a company leads to three major challenges related to strategy and organisation, data and people.
The most challenging problem is organisational. Though we are convinced that this new technology will become an essential support for business decisions, humans will still structure the way it is integrated and make final judgments.
In that sense, for AI to deliver its full potential in the field of pricing, it is essential that a company has:
In our experience, only the best in class are able to use data to steer strategic and commercial decisions. This is mainly due to lack of accessibility and faith in data quality.
To implement AI for pricing, a number of issues need to be addressed:
All too often, we see clients embarking on AI projects only to end up with a very complex AI algorithm that is of no real use to their business.
Best practice is to create three-levels of AI-savvy employees who understand AI:
AI, and particularly ML, will change the game for pricing. By analysing different data sources, ML helps company leaders more effectively and efficiently set their products’ price and create and effective pricing strategy, calculate sales promotions ROI and make more accurate customer segmentation. It also allows for more intelligent and personalised suggestions as to which additional (cross selling) or more profitable (upselling) products and/or services a client could be interested in.
But AI’s just the tip of the iceberg. Most effort should be put into extracting, cleaning, normalising and organising data. Remember, embedding AI in an organisation takes time and effort. You need first to make sure that the foundations of your business - your pricing strategy and implementation plan, data, workforce, etc. - are solid so you can introduce AI constructively, beyond the hype.
Authors of this article
Stijn Cottenie
Manager, Management Consulting - Customer
Louis de Liedekerke
Consultant, Management Consulting - Customer
Sources
1. https://www.pwc.com/gx/en/ceo-survey/2019/report/pwc-22nd-annual-global-ceo-survey.pdf
2. http://usblogs.pwc.com/emerging-technology/briefing-ai/
3. https://www.pwc.com/gx/en/issues/analytics/assets/pwc-ai-analysis-sizing-the-prize-report.pdf
4. https://www.pwc.com/us/en/services/consulting/analytics/artificial-intelligence/what-is-responsible-ai.html
5. https://www.pwc.com/us/en/services/consulting/library/artificial-intelligence-predictions-2019.html#section2