Core Concepts
All You Need to Know
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All You Need to Know
Last updated
Was this helpful?
You do not need to be an expert in AI research to develop or deploy ML models. NatML focuses on making ML deployment as painless as possible for web developers. We have a separate project which focuses on making the model development process accessible and seamless ().
Across both aspects, it is crucial to understand a few core concepts, and how they interact with one another. These concepts are:
Models
Model data
Features
Predictors
An ML model is a 'black box' which receives one or more features and outputs one or more features. For example, a vision classifier receives an image feature and produces a probability distribution feature, telling you how likely the image is one label or another.
NatML supports the and model formats. NatML is designed to be able to run models either in the Hub cloud or on-device using predictors (more on this below). In both cases, you will create a model from model data:
INCOMPLETE.
A feature is any data that can be produced or consumed by an MLModel
. For example, you will use a lot of image features when working with vision models. NatML has built-in support for common features that might be used with ML models:
Every MLFeature
has a corresponding MLFeatureType
. This type describes the feature and data that is contained within it. Similarly, every MLModel
has a set of input and output feature types, describing what data the model can consume and produce, respectively.
Predictors are lightweight primitives that use one or more models to make predictions on features. They are self-contained units that know how to transform inputs into a format that a model expects. But more importantly, they are able to transform outputs of a model into a usable format. For example, we can create a classification predictor that works with image classifier models:
Whereas a standard classification model outputs a probability distribution, the classification predictor can transform this raw output into a form which is much more usable by developers. It simply returns a class label (string
) along with a classification score (float
):
You can create predictors for your own models and share them on !