I tried to install Ray, but it gave an error:

TypeError: Descriptors cannot not be created directly.
If this call came from a _pb2.py file, your generated code is out of date and must be regenerated with protoc >= 3.19.0.
If you cannot immediately regenerate your protos, some other possible workarounds are:
 1. Downgrade the protobuf package to 3.20.x or lower.
 2. Set PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION=python (but this will use pure-Python parsing and will be much slower).

I tried to solve the problem and downgraded protobuf:

Name: protobuf
Version: 3.20.0
Summary: Protocol Buffers
Home-page: https://developers.google.com/protocol-buffers/
License: BSD-3-Clause
Location: d:\opencv\lib\site-packages
Required-by: ray, tensorboard, tensorflow

But still the problem persists in Ray, TensorFlow, and Keras. My application isn't working any more. How can I fix it?

  • maybe try lower version of protobuf - ie. 3.19, 3.18
    – furas
    Commented May 31, 2022 at 4:13
  • 5
    I down grade protobuf from 4.21.1 to 3.20.1. github.com/protocolbuffers/protobuf/issues/10051
    – YugoAmaryl
    Commented May 31, 2022 at 13:07
  • 1
    For future readers, I downgraded to 3.20.0 which solved my problem, 3.21.1 wasn't working for me (I got the same error).
    – null
    Commented Aug 3, 2023 at 14:01

17 Answers 17


Sometimes the protobuf package might be installed without your involvement. For this, you have two solutions to apply. Try one of the below solutions and it should work.

Solution 1:

You can downgrade the protobuf plugin,

pip install protobuf==3.20.*

Or you can add it to the requirements.txt file as the last package. Because this will override the previously installed protobuf package.


Solution 2:

You can set the following environment variable.


according to the error description, this might impact your program performance.

but this will use pure-Python parsing and will be much slower


  • 4
    After following the solution 01 and solution 02, both result in my program running ~5 times slower. I also tried to rebuild the environment and it still runs as slow. Mi guess is that something is forcing PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION=python even when using solution 01, but I have no way to check it. Is it happening to anybody else? How could I go back to the original state?
    – Guillem
    Commented Jun 14, 2022 at 15:52
  • 1
    You're correct @Guillem , Solution 02 might impact your program performance and they've mentioned it in the error description as well. But the Solution 01 should work Commented Jun 15, 2022 at 10:28
  • The thing is that Solution 01 is also impacting performance. I even tried to reinstall conda but the code won't run as fast as before.
    – Guillem
    Commented Jun 15, 2022 at 11:46
  • 1
    And what happens when the older version is no longer supported??
    – jtlz2
    Commented May 2, 2023 at 10:20
  • 1
    I had this problem with aws sagemaker and solution 1 worked for me. Commented Aug 6, 2023 at 21:01

Solution 1: Downgrade Protobuf

This library has recently released a new version, which causes an error. Use this command in the terminal to downgrade, which should resolve the problem:

pip install --upgrade "protobuf<=3.20.1"

Or force a reinstallation of an older version:

pip install 'protobuf<=3.20.1' --force-reinstall

Solution 2: Update TensorFlow to the latest version

TensorFlow 2.9.1 was released on 23 May 2022. It can be updated like so:

pip install tensorflow==2.9.1

Always use the latest version of TensorFlow.


In my case I did not have protobuf explicitly in my requirements.txt file, but I did have a related dependency which was apparently problematic:

googleapis-common-protos==1.6.0 # Depends on protobuf

Removing this allowed the subsequent pip install -e . (assuming setup.py is present) to go with whatever google-api-core==1.13.0 had for dependencies. That resulted in the installation of googleapis-common-protos==1.56.2 and resolved the error.


Even I came across the same error.

I solved it by installing protobuf:

pip install protobuf==3.20.

Screen Snippet


The command

pip install protobuf==3.20.3 --upgrade

Worked for me. All other versions mentioned in the answers did not solve the problem.


The following worked for me in TensorFlow 2.8:

pip install protobuf==3.20.*

Alternatively, I was able to upgrade to wandb==0.12.17, and everything seems to be working.

Old (not working):

  - pip:
      - wandb==0.10.21

New (working):

  - pip:
      - wandb==0.12.17

Descriptors cannot not be created directly:

  1. We need to downgrade the protobuf package from 4.21.2 to 3.20.1.
  2. Go to setting → ProjectPython Interpreter → install protobuf 3.20.1 (specify version)

I found the same problem, but I followed the instructions on this web page:

Python Packaging User Guide (on GitHub)


Requirements / prerequisites:

  1. sphinx 4.3.1

  2. sphinx-autobuild 0.7.1

  3. sphinx-inline-tabs 2021.4.11b9

  4. python-docs-theme 2021.5

  5. sphinx-copybutton 0.4.0

  6. Output of python -V:

    Python 3.8.10

  7. Output of protoc.exe --version:

    libprotoc 3.21.0-rc2


  1. pip install git+https://github.com/pypa/pypa-docs-theme.git#egg=pypa-docs-theme

  2. Compile libraries

  3. Copy the compiled library from F:\temp\Python\protoc\packaging.python.org\protobuf\Debug to F:\temp\Python\protoc\packaging.python.org\protobuf\src


installing library code to build\bdist.win-amd64\egg
running install_lib
running build_py
creating build\lib.win-amd64-3.8
creating build\lib.win-amd64-3.8\google
copying google\__init__.py -> build\lib.win-amd64-3.8\google
creating build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\any_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\api_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\descriptor.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\descriptor_database.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\descriptor_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\descriptor_pool.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\duration_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\empty_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\field_mask_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\json_format.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\message.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\message_factory.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\proto_builder.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\reflection.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\service.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\service_reflection.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\source_context_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\struct_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\symbol_database.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\text_encoding.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\text_format.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\timestamp_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\type_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\unknown_fields.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\wrappers_pb2.py -> build\lib.win-amd64-3.8\google\protobuf
copying google\protobuf\__init__.py -> build\lib.win-amd64-3.8\google\protobuf

testTimestampSerializeAndParse (google.protobuf.internal.well_known_types_test.TimeUtilTest) ... ok
testTimezoneAwareDatetimeConversionLA (google.protobuf.internal.well_known_types_test.TimeUtilTest)
testTimezoneAwareDatetimeConversionLA([1969, 12, 31, 18], datetime.timezone(datetime.timedelta(days=-1, seconds=57600), 'US/Pacific')) ... ok
testTimezoneAwareDatetimeConversionLondon (google.protobuf.internal.well_known_types_test.TimeUtilTest)
testTimezoneAwareDatetimeConversionLondon([1970, 1, 1, 2], datetime.timezone.utc) ... ok
testTimezoneAwareDatetimeConversionTokyo (google.protobuf.internal.well_known_types_test.TimeUtilTest)
testTimezoneAwareDatetimeConversionTokyo([1970, 1, 1, 11], datetime.timezone(datetime.timedelta(seconds=32400), 'Japan')) ... ok
testTimezoneNaiveDatetimeConversion (google.protobuf.internal.well_known_types_test.TimeUtilTest) ... ok
testByteSizeFunctions (google.protobuf.internal.wire_format_test.WireFormatTest) ... ok
testPackTag (google.protobuf.internal.wire_format_test.WireFormatTest) ... ok
testUnpackTag (google.protobuf.internal.wire_format_test.WireFormatTest) ... ok
testZigZagDecode (google.protobuf.internal.wire_format_test.WireFormatTest) ... ok
testZigZagEncode (google.protobuf.internal.wire_format_test.WireFormatTest) ... ok

I had the same issue after upgrading Google Cloud logging.

I solved it upgrading google-cloud-audit-log:

pip install google-cloud-audit-log==0.2.4

Working versions:

pip freeze | grep google


I am using TensorFlow 1.15.5 and Python 3.7.9.

These particular versions helped for me:

wandb 0.12.17
protobuf 3.15.0

You can use:

pip install wandb==0.12.17

pip uninstall protobuf

pip install protobuf==3.15.0
  • Thanks for sharing your case, it really helped (^_^). Commented Mar 28 at 0:00

I had a similar issue. In my case, I simply verified my Python interpreter to be sure Protocol Buffers (3.20.3) is installed into the interpreter, which was not the case, although it was installed on the virtual environment created for the project.


I was able to solve a similar problem by uninstalling Protocol Buffers using pip and then installing an older version (3.20.1) of the package using Conda.

pip uninstall protobuf
conda install 'protobuf=3.20.1'

I had the same problem with streamlit.

OLD-> streamlit==1.19.0

I updated the version of streamlit using pip install streamlit --upgrade and it worked.

New -> streamlit==1.23.1


I had a very simple solution to this exact problem when downgrading Protocol Buffers didn’t work (and I didn’t want to risk reducing program performance). I encountered this problem when running a notebook in Visual Studio Code.

My solution was to open Visual Studio Code as an administrator via CMD.


What did it for me was updating TensorFlow from version 2.5.0 to 2.12.


I recently saw this same error in my code. In my case there was also a stack trace that implicated pychromecast. So, for me, the fix was just an update of the pychromecast package. It is just a reminder that the fix may not necessarily be a downgrade of some package.

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