SSD
tensorflow
config_error
ai_generated
partial
ValueError: Could not find signature def corresponding to requested signature key 'serving_default'
ID: tensorflow/savedmodel-signature-def-not-found
80%Fix Rate
86%Confidence
1Evidence
2023-07-18First Seen
Version Compatibility
| Version | Status | Introduced | Deprecated | Notes |
|---|---|---|---|---|
| tensorflow 2.11 | active | — | — | — |
| tensorflow 2.12 | active | — | — | — |
| tensorflow 2.13 | active | — | — | — |
| tensorflow 2.14 | active | — | — | — |
Root Cause
SavedModel was exported without a default serving signature or with a different signature name, causing model loading to fail when expecting 'serving_default'.
generic中文
SavedModel 导出时没有默认服务签名或使用了不同的签名名称,导致加载模型时因期望 'serving_default' 而失败。
Official Documentation
https://www.tensorflow.org/guide/saved_model#specifying_signatures_during_exportWorkarounds
-
90% success List available signatures in the SavedModel: import tensorflow as tf; loaded = tf.saved_model.load('model_dir'); print(list(loaded.signatures.keys())). Then use the correct key: model = tf.saved_model.load('model_dir', tags='serve', signature='your_correct_key')
List available signatures in the SavedModel: import tensorflow as tf; loaded = tf.saved_model.load('model_dir'); print(list(loaded.signatures.keys())). Then use the correct key: model = tf.saved_model.load('model_dir', tags='serve', signature='your_correct_key') -
85% success Re-export the model with an explicit serving signature: @tf.function(input_signature=[tf.TensorSpec(shape=[None, 224, 224, 3], dtype=tf.float32)]); def serving_fn(input): return self.call(input); tf.saved_model.save(model, 'model_dir', signatures={'serving_default': serving_fn})
Re-export the model with an explicit serving signature: @tf.function(input_signature=[tf.TensorSpec(shape=[None, 224, 224, 3], dtype=tf.float32)]); def serving_fn(input): return self.call(input); tf.saved_model.save(model, 'model_dir', signatures={'serving_default': serving_fn})
中文步骤
List available signatures in the SavedModel: import tensorflow as tf; loaded = tf.saved_model.load('model_dir'); print(list(loaded.signatures.keys())). Then use the correct key: model = tf.saved_model.load('model_dir', tags='serve', signature='your_correct_key')Re-export the model with an explicit serving signature: @tf.function(input_signature=[tf.TensorSpec(shape=[None, 224, 224, 3], dtype=tf.float32)]); def serving_fn(input): return self.call(input); tf.saved_model.save(model, 'model_dir', signatures={'serving_default': serving_fn})
Dead Ends
Common approaches that don't work:
-
Re-exporting the model with tf.saved_model.save without specifying signatures
60% fail
If the model's call method is not defined, default signature may still be missing; need to explicitly provide signatures.
-
Renaming the signature key in the loader to match a non-existent key
90% fail
The key must match an actual signature in the SavedModel; guessing keys rarely works.