Machine Learning Platform MLJAR Uses AI for Prototyping
Alyson Wyers — June 26, 2017 — Tech
This machine learning platform is described as being human-first with a browser user interface. Based in Poland, new venture MLJAR offers a prototyping and development service that uses pattern recognition algorithms.
The startup has a variety of potential applications, including credit scoring, predicting employee attrition, high energy physics analysis and stock prediction. Users can build predictive models by uploading data, training and tuning artificial intelligence algorithms and sharing their best prediction models and results with others using the machine learning platform. MLJAR has a variety of features, such as a built-in hyper-parameters search, easily deployable cloud or local models, full reproducibility, one interface for multiple AI algorithms and the ability to train models in parallel.
The startup has a variety of potential applications, including credit scoring, predicting employee attrition, high energy physics analysis and stock prediction. Users can build predictive models by uploading data, training and tuning artificial intelligence algorithms and sharing their best prediction models and results with others using the machine learning platform. MLJAR has a variety of features, such as a built-in hyper-parameters search, easily deployable cloud or local models, full reproducibility, one interface for multiple AI algorithms and the ability to train models in parallel.
Trend Themes
1. Predictive Model-building Platforms - MLJAR's machine learning platform revolutionizes prototyping and development by making it human-first and offering a browser user interface.
2. Pattern Recognition Algorithms - MLJAR utilizes cutting-edge pattern recognition algorithms to provide accurate predictions in various applications such as credit scoring and employee attrition.
3. Collaborative Machine Learning - MLJAR's machine learning platform enables users to share their best prediction models and results, fostering collaboration and innovation in predictive model-building.
Industry Implications
1. Finance and Banking - The financial industry can benefit from MLJAR's predictive model-building platform for credit scoring and stock prediction, improving risk assessment and investment strategies.
2. Human Resources - With MLJAR's prediction models, HR professionals can accurately forecast employee attrition, enabling proactive measures to retain talent and boost workforce efficiency.
3. Data Science and Research - MLJAR's pattern recognition algorithms and collaborative platform provide a powerful tool for data scientists and researchers in fields like high energy physics analysis.
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