BigML Predictive Modeling Service
(Redirected from BigML service)
Jump to navigation
Jump to search
A BigML Predictive Modeling Service is an predictive modeling service provided by BigML Inc..
- Context:
- It can range from being a BigML Decision Tree Service (with a decision tree system) to being a BigML Logistic Regression Service (for logistic regression system).
- Example(s):
- Counter-Example(s):
- See: Thomas Dietterich.
References
- http://bigml.com/gallery/models
- Iris Data/Model: https://bigml.com/dashboard/dataset/59976ad17fa0423bf200c345
2017
- http://linkedin.com/company/bigml-inc
- QUOTE: BigML offers a highly scalable, cloud based machine learning service that is easy to use, seamless to integrate and instantly actionable. Now everyone can implement data-driven decision making in their applications. BigML works with small and big data.
machine learning can be used to analyze and predict:
- customer behavior, to increase customer loyalty
- site visit behavior, to increase site conversion
- diagnostics, to support in health care, hardware maintenance and many other area's
- risk profiles, to process loan applications
- stock levels, to optimize supply of goods
- and many, many other applications, where finding patterns in data creates new insights and using those patterns to predict creates new value.
- Our service is simple to use. You don't have to be a expert to benefit from machine learning technology. Just upload your data and start exploring.
- QUOTE: BigML offers a highly scalable, cloud based machine learning service that is easy to use, seamless to integrate and instantly actionable. Now everyone can implement data-driven decision making in their applications. BigML works with small and big data.
2013
- http://linkedin.com/company/bigml-inc
- QUOTE: BigML offers a highly scalable, cloud based machine learning service that is easy to use, seamless to integrate and instantly actionable. Now everyone can implement data-driven decision making in their applications. BigML works with small and big data.