【问题标题】:Simple way to evaluate input with a TensorFlow model?使用 TensorFlow 模型评估输入的简单方法?
【发布时间】:2020-09-01 22:00:17
【问题描述】:

在这里,我使用生成的数据训练了一个增强的决策树,并保存为est

from sklearn.datasets import make_blobs
import pandas as pd
import tensorflow as tf

#creates an input function for a tf model
def make_input_fn(X, Y, n_epochs=None, shuffle=True, verbose=False):
    batch_len = len(Y)
    def input_fn():
        dataset = tf.data.Dataset.from_tensor_slices((dict(X), Y))
        if shuffle:
            dataset = dataset.shuffle(batch_len)
        # For training, cycle thru dataset as many times as need (n_epochs=None).
        dataset = dataset.repeat(n_epochs)
        #dividing data into batches
        dataset = dataset.batch(batch_len)
        return dataset
    return input_fn

#making data
trainX, trainY = make_blobs(n_samples=10, centers=2, n_features=3, random_state=0)

#xVals
trainX = pd.DataFrame(trainX)
trainX.columns = ['feature{}'.format(num) for num in trainX.columns]

#yVals
trainY = pd.DataFrame(trainY)
trainY.columns = ['flag']

# Defining input function
train_input_fn = make_input_fn(trainX, trainY)

#defining tf feature columns
feature_columns=[]
for feature_name in list(trainX.columns):
    feature_columns.append(tf.feature_column.numeric_column(feature_name,dtype=tf.float32))
    
#creating the estimator
n_batches = 1
est = tf.estimator.BoostedTreesClassifier(feature_columns, n_batches_per_layer=n_batches)

est.train(train_input_fn, max_steps=10)

我想使用该模型根据一行训练数据进行预测以进行测试;像这样:res = est.predict(trainX.loc[0]),但是,我很难弄清楚如何去做。

【问题讨论】:

    标签: python python-3.x tensorflow tensorflow2.0


    【解决方案1】:

    您必须像训练时一样创建输入函数。
    代码:

    def my_input_fn(features, batch_size=256):
        """An input function for prediction."""
        # Convert the inputs to a Dataset without labels.
        return tf.data.Dataset.from_tensor_slices(dict(features)).batch(batch_size)
    
    testX = pd.DataFrame(trainX.loc[0]).T
    
    predictions = est.predict(
        input_fn=lambda: my_input_fn(testX))
    

    预测将为您提供一个生成器对象。您必须对其进行迭代才能获得预测

    for pred_dict in predictions:
        class_id = pred_dict['class_ids'][0]
        probability = pred_dict['probabilities'][class_id]
        print(class_id, probability)
    

    class_id 为预测 ID。

    注意 pred_dict 还包含其他信息。

    这是pred_dict中包含的信息:

    {'all_class_ids': array([0, 1]),
     'all_classes': array([b'0', b'1'], dtype=object),
     'class_ids': array([0], dtype=int64),
     'classes': array([b'0'], dtype=object),
     'logistic': array([0.17926924], dtype=float32),
     'logits': array([-1.5213063], dtype=float32),
     'probabilities': array([0.82073075, 0.17926925], dtype=float32)}
    

    【讨论】:

      猜你喜欢
      • 1970-01-01
      • 1970-01-01
      • 1970-01-01
      • 2020-06-03
      • 1970-01-01
      • 1970-01-01
      • 2019-03-03
      • 1970-01-01
      • 1970-01-01
      相关资源
      最近更新 更多