
Machine Learning
How to Empower Your Company with the Right Machine Learning Approach
The more teams across your organization leverage machine learning, the more impact you can make on the business. But how do you build trust and adoption in machine learning when many business units do not understand (or trust) its impact in meeting their goals?
With Acquia, we make machine learning easy and accessible for non-technical marketers and customer-facing teams, while empowering analysts and data scientists like you to more efficiently build your own models, build more impactful models, and see the fruits of your labors in deeper analytical insights, more impactful campaigns fueled by machine learning, and by giving the company the power to do more with less.
Key Benefits
Efficiency
Even the smallest marketing teams are able to more easily deliver more targeted 1:1 personalization with machine learning, and faster, compared to manual and more legacy methods.
Accuracy
Machines can calculate billions of predictions per day better than humans can. This is why ML-driven analytics and segmentation gives brands highly accurate insights, up-to-date, without bias.
ROI
Campaigns powered by machine learning segmentation and insights deliver better results. Higher ROI, higher CTR, higher LTV. Machine learning personalizes experiences in ways that really make an impact.
Key Use Cases
Predictions
Predict which customers will behave in certain ways, and target campaigns accordingly. Likely to buy, likely to churn, likely to engage on email. Leverage ML to drive the right experience.
Clusters
Let ML search within the data to discover segments. Excavate new marketing opportunities, important customer segments, and retention risks. Don’t guess based on human intuition alone.
Recommendations
Let ML recommend to marketers new segmentation and personalization opportunities, so that marketers can reach the right audience in a timely manner. Let ML recommend to customers what the right product, action, or journey step is without marketers needing to manually ideate this every step of the way.
Machine Learning and Predictive Models |
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ML predictions
Built-in likelihood models, including likely to buy, likely to churn, likely to pay full price, and likely to engage on email
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ML clusters
Built-in clusters, including category clusters, product clusters, and behavioral clusters -- all with fuzzy clustering
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ML recommendations
Built-in recommendations, including customer-to-product recommendations, and recommendations for marketers about next best channel, optimal send time, etc.
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Custom ML models
Leverage Acquia's ML framework to build your own ML models and easily feed them into the CDP for analysis and campaign activation
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ML workbench
Leverage ML Studio to give your data science team the power to easily build your own ML models
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Frequency of model refresh
Models are refreshed at least daily
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Actionability of ML
ML models are easily leveraged by all campaigns and for analytics
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Customer lifetime value models
Advanced modeling is included in the CDP to predict customer LTV and churn propensity
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ML expertise & resources
16+ years of ML expertise helps clients easily leverage machine learning and serve as resources to build custom models
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ML analytics
ML Center provides hundreds of OOTB analytical insights for machine learning that is enabled for your company
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