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Sharing of application cases of Golang technology in machine learning

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Release: 2024-05-08 17:18:01
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Golang technology is widely used in the field of machine learning. This article focuses on three typical cases: TensorFlow Go: for efficient deep learning application development. Kubeflow: a machine learning platform that simplifies model deployment and management. MLflow: A model tracking, management and deployment platform that provides a consistent interface.

Sharing of application cases of Golang technology in machine learning

Application case sharing of Golang technology in machine learning

Foreword

Golang, also known as Go, is an open source programming language known for its efficiency, concurrency, and portability. In recent years, it has become an increasingly popular choice in the field of machine learning. This article will share several practical application cases of Golang technology in machine learning.

1. TensorFlow Go

TensorFlow Go is the Go language implementation of the TensorFlow machine learning library developed by Google. It allows developers to write efficient deep learning applications using Go.

Practical Case: Image Classification

import (
    "fmt"
    "os"

    "github.com/tensorflow/tensorflow/go"
    "github.com/tensorflow/tensorflow/go/op"
)

func main() {
    model, err := tensorflow.LoadSavedModel("path/to/model", []string{"serve"}, []string{"predict"})
    if err != nil {
        fmt.Println(err)
        return
    }

    jpegBytes, err := os.ReadFile("path/to/image.jpg")
    if err != nil {
        fmt.Println(err)
        return
    }

    predictions, err := model.Predict(map[string]tensorflow.Output{
        "images": tensorflow.Placeholder(tensorflow.MakeShape([]int64{1, 224, 224, 3}), tensorflow.String),
    }, map[string]tensorflow.Tensor{
        "images": tensorflow.NewTensor(jpegBytes),
    })
    if err != nil {
        fmt.Println(err)
        return
    }

    fmt.Println(predictions["probabilities"].Value())
}
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2. Kubeflow

Kubeflow is an open source machine learning platform built on On top of Kubernetes. It provides a set of components that simplify the deployment, management, and service of machine learning models.

Practical Case: Model Training Pipeline

import (
    "context"
    "fmt"

    "github.com/kubeflow/pipelines/api/v2beta1/go/client"
    "github.com/kubeflow/pipelines/api/v2beta1/go/pipelinespec"
)

func main() {
    pipelineSpec := &pipelinespec.PipelineSpec{
        Components: []*pipelinespec.Component{
            {
                Executor: &pipelinespec.Component_ContainerExecutor{
                    ContainerExecutor: &pipelinespec.ContainerExecutor{
                        Image: "my-custom-image",
                    },
                },
            },
        },
        Dag: &pipelinespec.PipelineSpec_Dag{
            Dag: &pipelinespec.Dag{
                Tasks: map[string]*pipelinespec.PipelineTask{
                    "train": {
                        ComponentRef: &pipelinespec.ComponentRef{
                            Name: "my-custom-component",
                        },
                    },
                },
            },
        },
    }

    // 创建 Kubeflow 客户端
    ctx := context.Background()
    client, err := client.NewClient(client.Options{
        Endpoint: "host:port",
    })
    if err != nil {
        fmt.Println(err)
        return
    }

    // 创建并运行管道
    pipeline, err := client.PipelinesClient.CreatePipeline(ctx, &pipelinespec.CreatePipelineRequest{
        PipelineSpec: pipelineSpec,
    })
    if err != nil {
        fmt.Println(err)
        return
    }

    fmt.Println("Pipeline ID:", pipeline.GetId())
}
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3. MLflow

MLflow is an open source platform for tracking , manage and deploy machine learning models. It provides a consistent interface across different environments (on-premises, cloud).

Practical case: model registration

import (
    "context"
    "fmt"
    "io"

    "github.com/mlflow/mlflow-go/pkg/client"
    "github.com/mlflow/mlflow-go/pkg/models"
)

func main() {
    // 创建 MLflow 客户端
    ctx := context.Background()
    client, err := client.NewClient(client.Options{
        Endpoint: "host:port",
    })
    if err != nil {
        fmt.Println(err)
        return
    }

    // 注册模型
    model := &models.Model{
        Name: "my-model",
        MlflowModel: &models.MlflowModel{
            ArtifactPath: "path/to/model",
        },
    }
    response, err := client.RegisterModel(ctx, model)
    if err != nil {
        fmt.Println(err)
        return
    }

    // 下载模型作为流
    resp, err := client.DownloadModelVersion(ctx, response.GetMlflowModel().GetVersion(), "model.zip")
    if err != nil {
        fmt.Println(err)
        return
    }
    defer resp.Body.Close()

    // 将模型保存到本地文件
    fw, err := os.Create("model.zip")
    if err != nil {
        fmt.Println(err)
        return
    }
    defer fw.Close()

    if _, err = io.Copy(fw, resp.Body); err != nil {
        fmt.Println(err)
    }
}
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