AI-powered retail insights for global brands

Technology has transformed how your consumers research, engage and shop for goods and services. You must respond to this dynamic retail landscape and changing expectations by finding faster and smarter ways to predict, shape and meet demand.

Antuit helps you leverage both online and offline data to make more profitable decisions. We unlock value with data for a variety of retailers including general merchandisers and grocery chains, as well as specialty and fashion.

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Turn insights into profits

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Lifecycle
Pricing

Develop a detailed understanding of the shopper to determine the right price to maximize profitability.

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Marketing Mix Optimization

Improve ROI with unprecedented visibility into impact on consumer demand and the most effective combination of your marketing investments.

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Personalization
at Scale

Drive growth and reduce costs by automating and optimizing personalized and incremental messages, offers and content.

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Demand
Forecasting

Deliver better inventory performance with an accurate demand forecast feeding into pre-season and in-season decisions.

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Replenishment
Optimization

Leverage AI-powered, demand-driven replenishment to ensure optimal stock – at the right place and right time to meet service levels.

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Customer 360
Insights

Leverage Big Data and analytically derived insights to understand omni-channel customer engagement, interactions, concerns and loyalty.

How we work with you

We harness the power of advanced analytics across the demand value chain to enable insights-driven retail merchandising, marketing and operations decisions.

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Buttoned-up Analytics

How tailoring a direct-mail strategy could rack up $ millions for a leading clothing retailer

See how Antuit delivered a net benefit of more than $10 million to a leading retailer by using deep learning - artificial intelligence - to create quantitative models that helped predict and segment the consumers least likely to buy and redeploy funds more effectively to high-propensity shoppers.

Read the case study