Reputation: 7613
I try to pass 2 loss functions to a model as Keras allows that.
loss: String (name of objective function) or objective function or Loss instance. See losses. If the model has multiple outputs, you can use a different loss on each output by passing a dictionary or a list of losses. The loss value that will be minimized by the model will then be the sum of all individual losses.
The two loss functions:
def l_2nd(beta):
def loss_2nd(y_true, y_pred):
...
return K.mean(t)
return loss_2nd
and
def l_1st(alpha):
def loss_1st(y_true, y_pred):
...
return alpha * 2 * tf.linalg.trace(tf.matmul(tf.matmul(Y, L, transpose_a=True), Y)) / batch_size
return loss_1st
Then I build the model:
l2 = K.eval(l_2nd(self.beta))
l1 = K.eval(l_1st(self.alpha))
self.model.compile(opt, [l2, l1])
When I train, it produces the error:
1.15.0-rc3 WARNING:tensorflow:From /usr/local/lib/python3.6/dist-packages/tensorflow_core/python/ops/resource_variable_ops.py:1630:
calling BaseResourceVariable.__init__ (from
tensorflow.python.ops.resource_variable_ops) with constraint is
deprecated and will be removed in a future version. Instructions for
updating: If using Keras pass *_constraint arguments to layers.
---------------------------------------------------------------------------
NotImplementedError Traceback (most recent call
last) <ipython-input-20-298384dd95ab> in <module>()
47 create_using=nx.DiGraph(), nodetype=None, data=[('weight', int)])
48
---> 49 model = SDNE(G, hidden_size=[256, 128],)
50 model.train(batch_size=100, epochs=40, verbose=2)
51 embeddings = model.get_embeddings()
10 frames <ipython-input-19-df29e9865105> in __init__(self, graph,
hidden_size, alpha, beta, nu1, nu2)
72 self.A, self.L = self._create_A_L(
73 self.graph, self.node2idx) # Adj Matrix,L Matrix
---> 74 self.reset_model()
75 self.inputs = [self.A, self.L]
76 self._embeddings = {}
<ipython-input-19-df29e9865105> in reset_model(self, opt)
---> 84 self.model.compile(opt, loss=[l2, l1])
85 self.get_embeddings()
86
/usr/local/lib/python3.6/dist-packages/tensorflow_core/python/training/tracking/base.py
in _method_wrapper(self, *args, **kwargs)
455 self._self_setattr_tracking = False # pylint: disable=protected-access
456 try:
--> 457 result = method(self, *args, **kwargs)
458 finally:
459 self._self_setattr_tracking = previous_value # pylint: disable=protected-access
NotImplementedError: Cannot convert a symbolic Tensor (2nd_target:0)
to a numpy array.
Please help, thanks!
Upvotes: 82
Views: 215280
Reputation: 111
simply change the tensorflow or tensorflow-gpu to older versions: $ pip install tensorflow-gpu==2.5.0
Upvotes: 0
Reputation: 178
Recently encountered similar problem. After numerous reinstall with no fruits, I used google Colab to run my code. Then I proceed to get the versioning from Colab using
import numpy as np
import tensorflow as tf
import pandas as pd
from platform import python_version
# this prints the library version
print(tf.__version__)
print(np.__version__)
print(pd.__version__)
# this prints the python version
print(python_version())
Then in anaconda, I type
conda create -n newenv pandas=1.3.5 python=3.8.10 tensorflow=2.9.2 numpy=1.21.6
to create an environment similar/identical to the colab one.
Upvotes: 1
Reputation: 1210
Simple thing is update tensorflow, and it works!
pip install -U tensorflow
Upvotes: 0
Reputation: 11
I had the same problem and resolved it.
To find the root cause, I created a new anaconda environment with python 3.8 and conda installed tensorflow (installs 2.4)
When I ran the keras LSTM code, it bugged out on
rnnmodel.add(LSTM(128, dropout=0.2, recurrent_dropout=0.2))
Fixed it by installing the latest tensorflow 2.8
pip uninstall tensorflow
pip install tensorflow
Upvotes: 1
Reputation: 605
I ran into this issue while converting darknet weights to a TensorFlow model. I got rid of this issue when I created a new environment with Tensorflow v2.3 ( earlier it was Tensorflow v2.2) and NumPy comes preinstalled with it.
So maybe updating your TF version might solve this problem.
Upvotes: 0
Reputation: 11209
As others have indicated this is due to an incompatibility between specific tensorflow versions and specific numpy versions.
The following is my specific environment and the list of packages I have installed:
conda version 4.11.0
Commands to setup working environment:
conda activate base
conda create -y --name myenv python=3.9
conda activate myenv
conda install -y tensorflow=2.4
conda install -y numpy=1.19.2
conda install -y keras
System Information
System: Kernel: 5.4.0-100-generic x86_64 bits: 64 compiler: gcc v: 9.3.0
Desktop: Cinnamon 5.2.7 wm: muffin dm: LightDM Distro: Linux Mint 20.3 Una
base: Ubuntu 20.04 focal
Machine: Type: Laptop System: LENOVO product: 20308 v: Lenovo Ideapad Flex 14 serial: <filter>
Chassis: type: 10 v: Lenovo Ideapad Flex 14 serial: <filter>
Mobo: LENOVO model: Strawberry 4A v: 31900059Std serial: <filter> UEFI: LENOVO
v: 8ACN30WW date: 12/06/2013
CPU: Topology: Dual Core model: Intel Core i5-4200U bits: 64 type: MT MCP arch: Haswell
rev: 1 L2 cache: 3072 KiB
flags: avx avx2 lm nx pae sse sse2 sse3 sse4_1 sse4_2 ssse3 vmx bogomips: 18357
Speed: 798 MHz min/max: 800/2600 MHz Core speeds (MHz): 1: 798 2: 798 3: 798 4: 799
Graphics: Device-1: Intel Haswell-ULT Integrated Graphics vendor: Lenovo driver: i915 v: kernel
bus ID: 00:02.0 chip ID: 8086:0a16
Display: x11 server: X.Org 1.20.13 driver: modesetting unloaded: fbdev,vesa
resolution: 1366x768~60Hz
OpenGL: renderer: Mesa DRI Intel HD Graphics 4400 (HSW GT2) v: 4.5 Mesa 21.2.6
compat-v: 3.0 direct render: Yes
Upvotes: 3
Reputation: 6086
For me, the issue occurred when upgrading from numpy 1.19
to 1.20
and using ray
's RLlib, which uses tensorflow 2.2
internally.
Simply downgrading with
pip install numpy==1.19.5
solved the problem; the error did not occur anymore.
Update (comment by @codeananda): You can also update to a newer TensorFlow (2.6+) version now that resolves the problem (pip install -U tensorflow
).
Upvotes: 189
Reputation: 141
I tried to add a SimpleRNN layer to my model and I received a similar error (NotImplementedError: Cannot convert a symbolic Tensor (SimpleRNN-1/strided_slice:0) to a numpy array) with Python 3.9.5.
When I created another environment with Python 3.8.10 and all the other modules I needed, the issue was solved.
Upvotes: 2
Reputation: 111
I faced the same error. When I tried passing my input layer to the Data augmentation Sequential layer. The error and my code is as shown below.
Error:
NotImplementedError: Cannot convert a symbolic Tensor (data_augmentation/random_rotation_5/rotation_matrix/strided_slice:0) to a numpy array. This error may indicate that you're trying to pass a Tensor to a NumPy call, which is not supported.
My code that generated the error:
#Create data augmentation layer using the Sequential model using horizontal flipping, rotations and zoom etc.
data_augmentation = Sequential([
preprocessing.RandomFlip("horizontal"),
preprocessing.RandomRotation(0.2),
preprocessing.RandomZoom(0.2),
preprocessing.RandomHeight(0.2),
preprocessing.RandomWidth(0.2)
# preprocessing.Rescale()
], name="data_augmentation")
# Setting up the input_shape and base model, and freezing the underlying base model layers.
input_shape = (224,224,3)
base_model = tf.keras.applications.EfficientNetB0(include_top=False)
base_model.trainable=False
#Create the input layers
inputs = tf.keras.Input(shape=input_shape, name="input_layer")
#Add in data augmentation Sequential model as a layer
x = data_augmentation(inputs) #This is the line of code that generated the error.
My solution to the generated Error:
Solution 1:
I was running on a lower version of Tensorflow version 2.4.0. So i uninstalled it and reinstalled it to get a higher version 2.6.0. The newer tensor flow version automatically uninstalls and reinstall numpy version (1.19.5) (if numpy is already installed in your local machine). This will automatically solve the bug. Enter the below commands in the terminal of your current conda environment:
pip uninstall tensorflow
pip install tensorflow
Solution 2:
Its the simplest of all the suggested solutions I guess. Run your code in Google colab instead of your local machine. Colab will always have the latest packages preinstalled.
Upvotes: 4
Reputation: 1
Upvotes: -1
Reputation: 7613
I found the solution to this problem:
It was because I mixed symbolic tensor with a non-symbolic type, such as a numpy. For example. It is NOT recommended to have something like this:
def my_mse_loss_b(b):
def mseb(y_true, y_pred):
...
a = np.ones_like(y_true) #numpy array here is not recommended
return K.mean(K.square(y_pred - y_true)) + a
return mseb
Instead, you should convert all to symbolic tensors like this:
def my_mse_loss_b(b):
def mseb(y_true, y_pred):
...
a = K.ones_like(y_true) #use Keras instead so they are all symbolic
return K.mean(K.square(y_pred - y_true)) + a
return mseb
Hope this help!
Upvotes: 45