You recently completed an image recognition project at your company that was focused on identifying different types of cars. You have now been assigned a new image recognition project that is focused on identifying different types of animals. You know you can shortcut model development by using a specific technique.
What is this technique called?
You’re testing your model and it is overly sensitive to the fluctuations of data and having trouble generalizing. What type of problem is this?
Major factors for the project you are currently working on are around the training time, cost, and complexity of training your models. Which algorithm is not the best choice given these constraints?
A team is retraining a model and creating a new version of that model. What’s the most important thing for the team to have in place before doing this?
Your team is testing the NLP model they just created to make sure it’s performing as expected. Some of your team members want to move this model to production and move to the next iteration.
What’s wrong with this workflow?
You’re working with an inexperienced team and this is all their first AI project. You’re trying to work on a supervised learning binary classification problem to determine if emails are spam or not.
What is the best approach for this project?
You are being tasked to manage an AI project at your company and you need to identify which project to start with. What’s the best way to approach this?
A project manager meets with a customer for initial discussions about an upcoming project. At the end of the meeting, the customer asks the project manager for a rough estimate of the project duration. Based on her experience with three similar projects, the project manager provides an estimate of 8–10 months.
What’s wrong with this timeframe?