AI models are trained using data. The more data you provide, the more efficient and accurate they become.
AI models rely on data and features. For the training to be effective, it must include key features of the data. For example, if you're training an AI to recognize houses, the features might include dimensions like the size of windows and doors.
Training and testing are critical steps. Models are trained by letting them analyze data, and afterward, they are tested on new, unseen data to evaluate how well they make predictions.
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Similar ideas to The Workings of AI Models
To develop and manage a production-ready model, you must work through the following stages:
Train an ML model on your data:
Train model
Tune hyper...
Transfer learning consists of taking features learned on one problem, and leveraging them on a new, similar problem. For instance, features from a model that has learned to identify racoons may be useful to kick-start a model meant to identify tanukis.
Organizations must recognize the drawbacks that some algorithms bring into the screening and hiring process as a result of the way they are trained, which can have a direct impact on outcomes such as diversity and inclusion.
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