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JADBio AutoML Review

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Excellent

Revainrating 5 out of 5  
Rating 
5.0
Analytics, Predictive Analytics

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Description of JADBio AutoML

JADBio makes it easy and affordable for health-data analysts and life-science professionals to use data science to discover knowledge while reducing time and effort by combining a robust end-to-end machine learning platform with a wealth of capabilities, ranging from smart feature selection to the reuse of predictive models. JADBio’s healthcare purpose-built platform provides leading-edge AI tools and automation capabilities, enabling life-science professionals to build and deploy accurate and explainable predictive models with speed and ease, even if they have no data science expertise. The platform supports preprocessing and imputation of missing values; it selects the features and modeling, tunes for hyper-parameters, and effectively tests thousands of algorithmic configurations to identify the best ones to produce the final ML model. The platform estimates its predictive performance and produces a wealth of visualizations and reports. Customers have the ability to select multiple selected feature subsets that lead to equally predictive models, build their own advanced custom models using JADBio’s extensive content library, or take off the shelf models and customize them as their own. All produced models can be downloaded in executable form, applied to an external validation set, or run manually by feeding-in the observed value of the selected features. JADBio’s library contains thousands of algorithms and pre-built models that can predict common healthcare issues, but also novel features like causal discovery or survival prediction and other time-to-event outcomes. The pre-built elements and AutoML capabilities of JADBio provide a low-code option for health-data scientists, bioinformaticians, and organizations without internal data science expertise to analyze their health data easily and affordably. Meanwhile, the JADBio REST API allows for advanced users to leverage JADBio’s capabilities in their own applications or to automate their workflows and processes. By providing an end-to-end platform purpose-built for life-scientists, backed by research and development in Europe’s largest research centers, we allow customers to utilize their ever-growing biomedical data and put them into production within minutes.
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Revainrating 5 out of 5

A must-have for automation guys out here

I've been using jadbioml's AutomaL toolbox since 2014 when my team faced our first big ML challenge - building an automated model builder which can take in huge amount (tens or hundreds) high quality features/lab values as input parameters without knowing how many there are & generate thousands more lab attributes automatically so that we don't have this problem again next year! It is really great workhorse software where you get all needed tools under one hood! Highly recommended if your…

Pros
  • Ease with data integration
  • Intuitive interface for non technical people, even those from industry background.
  • Ability create custom scripts via python scripting language; eases interfacing other platforms sucha s RDBMS databases etc.for easy storage management
  • Easy access by multiple users across different locations around world :).It takes less than 5 minuets just install it locally !:) And start playing
Cons
  • I will keep silent

Revainrating 5 out of 5

Excellent Software for Building & Training AI Models

The ability to do automated model training is very useful as our team has limited expertise in this area; we can now train new classes without having domain experts manually doing so! This also allows us better control over what types are trained during each round. It does require some initial setup/training but that's ok - not much more than other ML platforms out there (e.g., SageMaker). We have been able to build several classification pipelines using various algorithms such as Random Forest