10 Things You Didn't Know You Could Do With OmniML
10 Things You Didn't Know You Could Do With OmniML
OmniML, an artificial intelligence and machine learning platform for business, announced that it has raised $ 10 million in seed financing.
What is OmniML and what does it do?
OmniML is a plugin that helps you to interact with the MATLAB program. It can do many things, such as opening a file, creating an object, or closing an object. You can also use it to help debug your code and find errors.
What are the benefits of using OmniML?
- Reuse datasets
- View events simultaneously
- Create multiple models without the need to switch between programs
- Import third party libraries and other data formats into ML projects
- Visualize data in numerous ways
How much does it cost to use the program?
OmniML is an open-source, free program that can be installed on any computer. There are also servers available for a monthly fee.
Who can benefit from using this software and when should you use it?
OmniML is a software that helps you do complicated math on your phone. It supports every type of equation and can be used for both business and casual use. OmniML is great for more than just math problems though. OmniML can also help you to figure out the surface area of various objects or convert measurements between units like centimeters, inches, yards, and feet. The best part about using this software is that it can solve equations anywhere!
What are some of the other ways that you can use OmniML for your business?
OmniML's interface is intuitive and easy to use. There are three different ways that you can use the software:
Conclusion
When you have a project that needs to be completed, it's always good to have a few tools in your toolbox. OmniML can provide the means to quickly and easily create efficient and accurate models for machine learning without requiring you to learn a new programming language. It also helps that this is an open-source platform, so no monetary licenses are necessary. As your data and model volume grows, so does the need for more advanced features such as distributed training. However, if your dataset is too small, there are other options for you such as Portable Transfer Learning and pre-trained networks among others.