Page 63 - Reclaim YOUR DIGITAL GOLD (without audio)
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Data ColleCtion Harvesting



            is not considered, one may end up adjusting the model’s
            parameters for an extended period of time.

            These parameters are commonly referred to as “hyper-
            parameters.”  Tuning  or modifying  these  hyperparame-
            ters is still regarded as an art form and an experimental
            process. This procedure has a significant impact on the
            dataset, model, and training procedure.
            We  can  finally  put  the  model  to  work  and  see  how  it
            performs in real-world problems after we have completed
            the evaluation process and are satisfied with the training
            and hyperparameter settings.

            To  provide  answers  to  questions,  machine  learning
            obviously relies on data. As a result, we get to answer
            some questions during the inference stage, also known
            as prediction. This is the culmination of our efforts, the
            point at which the benefits of machine learning become
            apparent.
            Our model can now correctly  identify  whether  the
            beverage  is  wine  or beer  based  on  the  color and
            percentage of alcohol in it.

            This is the most basic aspect of artificial intelligence or
            machine learning, and it all begins with data collection;
            without data, the entire structure becomes inoperable.



















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