interested in learning more about the subject. Many people at the companies behind the most useful ML Ops tools know that the overall experience is highly important, especially for users who are relatively new to managing their ML models this way.
Galileo stands out for being feature-rich but easy to use. For example, it automatically screens data for gaps and errors that could otherwise slow down machine learning projects. People can also use a centralized dashboard to track all data and model-related changes. From there, it’s easy to share reports with team members, keeping everyone on the same page.
Galileo also gives people the intelligence and insights they need to understand how well a machine-learning model will likely work. They can get those details before putting it into production, allowing people to correct mistakes and save time in the process. When solving problems in training data becomes more efficient, the respective model should perform better, too. Galileo helps that happen.
Before trying one of these tools, think about the existing weaknesses in your machine-learning process and what goals you want to set. From there, you’ll be in a good position to explore how the applications here and others could aid in continually improving your processes and results.