Learning & AI

The lifecycle of a Machine Learning project is maximized and managed by the cloud service. You go through several steps, such as defining the issue, exploring the data through cleaning, normalizing, training, and validating the model, confirming that the model accurately prediction, deploying the model, and then monitoring and managing the lifecycle.

It is an iterative process, so this tool is excellent in both the short and long terms. This has benefited a wide range of multi-billion dollar companies from various industries.

Pay As You Go

The projects specified when it comes to AI/ML typically work with a lot of data. Particularly when using deep learning, storage and a powerful GPU are needed. By enabling us to use the infrastructure as needed and only pay for what we use, cloud computing mitigates this issue and has the potential to save both short-term and long-term costs.

Algorithmic Requests

It takes current knowledge and skills to know which algorithm to use and run. Customers can use the cheat sheet provided by our Cloud partners to get started on a project while later choosing the algorithm that best suits it. This feature expedites the decision-making process and keeps customers from missing out on undiscovered models.

Low-Code & No-Code

There are options in Cloud for modeling: The first involves using notebooks, which calls for knowledge of programming languages like Python. The second makes the tool more accessible for teams who might want to provide more insights to domain experts or analysts, by providing a drag-and-drop feature from the lifecycle into the provided canvas.

Easy Integration

The final step in machine learning is lifecycle management and monitoring. By connecting statuses to a workspace for log analytics and using cloud services to store code in repositories and run pipelines, our providers already have tools for monitoring that make the tool more effective.

Get in touch!

We help companies across industries innovate and thrive.