An example of how to use CreateML and Xcode 10 to train a CoreML model that is used by the Natural Language framework to classify the programming language of source code.
let code = """
struct Plane: Codable {
var manufacturer: String
var model: String
var seats: Int
}
"""
let url = Bundle.main.url(forResource: "Classifier",
withExtension: "mlmodelc")!
let model = try! NLModel(contentsOf: url)
model.predictedLabel(for: code) // Swift
- macOS Mojave Beta
- Xcode 10 Beta
These are available for Apple Developer account members to download at https://developer.apple.com/download/
This project includes a pre-trained programming language classifier model.
To see it in action, open Classifier Demo.playground
,
run the playground with the Assistant editor showing the Live View,
and then drag and drop a source code file.
The model will predict the language of the file based on its contents.
- Clone and setup the repository by running the following commands:
$ git clone https://github.com/flight-school/Programming-Language-Classifier.git`
$ cd Programming-Language-Classifier
$ git submodule update --init
- Open
Trainer.swift
in an editor and fill in the placeholder values fordestinationPath
andcorpusPath
:
$ open ./Trainer.swift
- Run
Trainer.swift
and wait for the model to be trained (on a 2017 MacBook Pro, this took a few minutes):
$ swift ./Trainer.swift
- Compile the generated
.mlmodel
bundle using the following command:
$ xcrun coremlc compile path/to/ProgrammingLanguageClassifier.mlmodel .
- Move the compiled
.mlmodelc
bundle into the Resources directory ofClassifier Demo.playground
, replacing any existing resource.
MIT
See code-corpora for licensing information of the included projects.
Flight School is a new book series for Swift developers. Each month, we'll explore an essential part of iOS, macOS, and Swift development through concise, focused books.
If you'd like to get in touch, feel free to message us on Twitter (@flightdotschool) or email us at mailto:[email protected].