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Introducing Zunō.predict

A robust ML platform that analyzes structured data, enabling predictive analytics and clustering with minimal human intervention. It compresses data-to-insights-actions timelines, providing efficient machine learning capabilities. Businesses benefit from rapid insights, accelerating from months to days, and unlocking valuable information for informed decision-making.

Why Zunō .predict?

Many businesses face significant challenges in realizing complete value from machine learning. Cycle time is a blocking factor, as data science and machine learning are inherently experimental and iterative.

Integration complexity is another major hurdle, as many platforms are built with a data scientist in mind rather than for integration with business workflows.

Additionally, dynamic environments and continuous learning is difficult to manage, as most ML solutions either end up being static in nature or dependent on human intervention.

Practical approach to Machine Learning

Zunō.predict was built ground-up to address these very real challenges. With proprietary algorithms such as SignalFactory and SignalFilter, Zunō.predict automates feature engineering and works very well in dynamic environments.

Rethinking every part of the model-building lifecycle

Proprietary algorithms – SignalFactory and SignalFilter – that are automating feature engineering and functioning very well in dynamic environments.
Iterative workflow – a very intuitive workflow which is allowing users to inject feedback into the machine, hence, collapsing cycle times.
Automation constructs – pre-built recipes and macros, so that repetitive work can be automated with a single-click.

API-first design –
specifically to address integration complexity.

Automate the full model-building lifecycle

Data preparation: Zuno.Predict’s extensive EDA capabilities help you understand the data – warts and all – very quickly. You also getting recommendations on how to clean your data – all of which you can experiment with, and save for later use.
Feature Engineering: Zuno.Predict uses our proprietary SignalFactory and SignalFilter suite of algorithms to automatically build, test and validate a vast number of hypotheses for any problem, thereby completely automating feature engineering and discovery.
Models: Zuno.Predict automatically selects most appropriate algorithms from a curated set based on the problem that’s being solved and the data.
Integration: The platform is completely HTTP/JSON API-based, which makes integrations into any workflow a breeze.

Addresses the Complete Machine Learning lifecycle

The platform automates the full model-building lifecycle, including data preparation, feature engineering, and action-engine for predictions and recommendations, as well as self-learning capabilities to keep updating the predictive models.

Applying Zunō.predict in the real world

Zunō.predict is currently being used to solve a wide variety of problems across a wide variety of industries. From predicting estimated time of pickup and delivery for a logistics provider to helping debt collectors prioritize borrowers who are likely to repay, Zunō.predict is a versatile solution that can be customized to meet your unique needs.

What makes it tick?

Under the hood, Zunō.predict’s core is the SignalFactory and SignalFilter suite of proprietary algorithms. SignalFactory builds potentially thousands of signals hidden in the data using algorithms, representing the complete universe of potential hypotheses in the data. SignalFilter then filters the most powerful signals to build a model. This approach ensures that complex non-linear interactions between signals are also picked up. A power user can still build more complex models by ignoring certain signals or by considering only a subset of the data.

Deploying Zunō.predict

Zunō.predict is completely containerized and can be deployed anywhere. Use it on Cognida’s cloud, in an on-premise VM, or in your Kubernetes Cluster.

Harness the power of Data Science and Machine Learning

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