
Analyzr
Analyzr simplifies predictive analytics and machine learning for B2B sales and marketing.
predictive analyticsmachine learningB2B sales
Introduction
Analyzr is a platform that simplifies predictive analytics and machine learning for midmarket and enterprise customers in the B2B sales and marketing field. It enables users to make data-driven decisions by providing tailored predictive modeling and transparent models.
Key Features
Simple and quick machine learning model building with a no-code user interface.
Data encryption and local user data control for enhanced security.
Cloud-based scalability with a managed Kubernetes cluster.
Fully managed platform with guaranteed uptime and dedicated service desk.
Outputs that feed back into native systems for end user accessibility.
Frequently Asked Questions
What is Analyzr?
How to use Analyzr?
What industries can benefit from using Analyzr?
Can Analyzr handle large-scale data?
How secure is Analyzr?
Does Analyzr provide support and maintenance?
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Use Cases
- Clustering: Uncover potential growth opportunities or identify at-risk groups by clustering prospects and customers based on shared traits.
- Propensity Scoring: Improve accuracy in targeting and conversion rates by predicting propensity to buy or churn.
- Regression: Generate reliable forecasts to optimize business outcomes and make proactive decisions.
- A/B Testing: Assess the effectiveness of marketing campaigns and programs by comparing control and test groups.
How to Use
1. Select Data Sources: Aggregate data from first- and third-party sources to serve as the foundation for the model build. 2. Pick Variables & Algorithm: Choose variables to feed the model and select the algorithm that best fits the data set. 3. Train Model: Let Analyzr encode the data and compute results. Review model outcomes and refine variables or algorithms if needed. 4. Get Insights: Utilize actionable insights and model outputs to take your business to the next level.