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Open-source machine learning solution for enterprises that helps businesses by managing digital advertising, claims management, fraud detection, advanced analytics, and more.
Organizations that need to label datasets at scale because creating labels on large datasets are often slow and expensive.
The major benefit of the product in the AutoMl. It's really useful when you are trying to optimize the parameters.
Lack of management and no accountability. It's hectic and unorganized to the point where you'll have no idea what you're doing, and what you should be doing.
It is really fast and run on really low memory like 2 GB. I have learn lotta new information about ML and deep learning thanks to H2O's help buttons.
Programmatically using the software is difficult because the documentation is lacking and it is hard to find the documentation that they do have.
Most of the ML algorithms are supported and available to use. It's easy to launch H2O from R and it noticeably increases the speed of algorithms and reduces time.
Notebook has its own shortcomings, which some operations seem less convenient. For instance, if the error output is too lengthy, I have to scroll all the way up to get where I need edit the code.
Notebook's nature of keeping things in one place. Some nice build-in features to interact with different data resources.
There is no feature engineering. Depending on your data size, H2O.AI can take up lots of memory.
The team is really good and that made the experience good. They were quick to make changes which were required to improve the product.
In the initial days, the product was slow had bunch of problems.
The keypoint tool is very much interesting and its very easy to use. We can easily pan across the frame and zoon function is a great one.
There is a little bit lag between submitting and loading of frames.
The features that stood for me about this software was it's ease of use and the way it seamlessly connected to my data sources.
Not too many things to dislike, it's just the speed that needs to be smoothened.
This is good product and easy to use and features can be customised.
The tool could be more fluent and have lesser lag at a few places.
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