82ee00f25d
PiperOrigin-RevId: 513364683
279 lines
12 KiB
Markdown
279 lines
12 KiB
Markdown
---
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layout: forward
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target: https://developers.google.com/mediapipe/framework/getting_started/troubleshooting
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title: Troubleshooting
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parent: Getting Started
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nav_order: 10
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---
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# Troubleshooting
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{: .no_toc }
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1. TOC
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{:toc}
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---
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## Missing Python binary path
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The error message:
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```
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ERROR: An error occurred during the fetch of repository 'local_execution_config_python':
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Traceback (most recent call last):
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File "/sandbox_path/external/org_tensorflow/third_party/py/python_configure.bzl", line 208
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get_python_bin(repository_ctx)
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...
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Repository command failed
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```
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usually indicates that Bazel fails to find the local Python binary. To solve
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this issue, please first find where the python binary is and then add
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`--action_env PYTHON_BIN_PATH=<path to python binary>` to the Bazel command. For
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example, you can switch to use the system default python3 binary by the
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following command:
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```
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bazel build -c opt \
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--define MEDIAPIPE_DISABLE_GPU=1 \
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--action_env PYTHON_BIN_PATH=$(which python3) \
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mediapipe/examples/desktop/hello_world
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```
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## Missing necessary Python packages
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The error message:
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```
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ImportError: No module named numpy
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Is numpy installed?
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```
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usually indicates that certain Python packages are not installed. Please run
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`pip install` or `pip3 install` depending on your Python binary version to
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install those packages.
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## Fail to fetch remote dependency repositories
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The error message:
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```
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ERROR: An error occurred during the fetch of repository 'org_tensorflow':
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java.io.IOException: Error downloading [https://mirror.bazel.build/github.com/tensorflow/tensorflow/archive/77e9ffb9b2bfb1a4f7056e62d84039626923e328.tar.gz, https://github.com/tensorflow/tensorflow/archive/77e9ffb9b2bfb1a4f7056e62d84039626923e328.tar.gz] to /sandbox_path/external/org_tensorflow/77e9ffb9b2bfb1a4f7056e62d84039626923e328.tar.gz: Tried to reconnect at offset 9,944,151 but server didn't support it
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or
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WARNING: Download from https://storage.googleapis.com/mirror.tensorflow.org/github.com/bazelbuild/rules_swift/releases/download/0.12.1/rules_swift.0.12.1.tar.gz failed: class java.net.ConnectException Connection timed out (Connection timed out)
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```
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usually indicates that Bazel fails to download necessary dependency repositories
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that MediaPipe needs. MediaPipe has several dependency repositories that are
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hosted by Google sites. In some regions, you may need to set up a network proxy
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or use a VPN to access those resources. You may also need to append
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`--host_jvm_args "-DsocksProxyHost=<ip address> -DsocksProxyPort=<port number>"`
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to the Bazel command. See
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[this GitHub issue](https://github.com/google/mediapipe/issues/581#issuecomment-610356857)
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for more details.
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If you believe that it's not a network issue, another possibility is that some
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resources could be temporarily unavailable, please run `bazel clean --expunge`
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and retry it later. If it's still not working, please file a GitHub issue with
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the detailed error message.
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## Incorrect MediaPipe OpenCV config
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The error message:
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```
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error: undefined reference to 'cv::String::deallocate()'
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error: undefined reference to 'cv::String::allocate(unsigned long)'
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error: undefined reference to 'cv::VideoCapture::VideoCapture(cv::String const&)'
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...
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error: undefined reference to 'cv::putText(cv::InputOutputArray const&, cv::String const&, cv::Point, int, double, cv::Scalar, int, int, bool)'
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```
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usually indicates that OpenCV is not properly configured for MediaPipe. Please
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take a look at the "Install OpenCV and FFmpeg" sections in
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[Installation](./install.md) to see how to modify MediaPipe's WORKSPACE and
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linux_opencv/macos_opencv/windows_opencv.BUILD files for your local opencv
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libraries. [This GitHub issue](https://github.com/google/mediapipe/issues/666)
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may also help.
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## Python pip install failure
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The error message:
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```
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ERROR: Could not find a version that satisfies the requirement mediapipe
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ERROR: No matching distribution found for mediapipe
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```
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after running `pip install mediapipe` usually indicates that there is no qualified MediaPipe Python for your system.
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Please note that MediaPipe Python PyPI officially supports the **64-bit**
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version of Python 3.7 to 3.10 on the following OS:
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- x86_64 Linux
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- x86_64 macOS 10.15+
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- amd64 Windows
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If the OS is currently supported and you still see this error, please make sure
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that both the Python and pip binary are for Python 3.7 to 3.10. Otherwise,
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please consider building the MediaPipe Python package locally by following the
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instructions [here](python.md#building-mediapipe-python-package).
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## Python DLL load failure on Windows
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The error message:
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```
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ImportError: DLL load failed: The specified module could not be found
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```
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usually indicates that the local Windows system is missing Visual C++
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redistributable packages and/or Visual C++ runtime DLLs. This can be solved by
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either installing the official
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[vc_redist.x64.exe](https://support.microsoft.com/en-us/topic/the-latest-supported-visual-c-downloads-2647da03-1eea-4433-9aff-95f26a218cc0)
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or installing the "msvc-runtime" Python package by running
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```bash
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$ python -m pip install msvc-runtime
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```
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Please note that the "msvc-runtime" Python package is not released or maintained
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by Microsoft.
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## Native method not found
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The error message:
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```
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java.lang.UnsatisfiedLinkError: No implementation found for void com.google.wick.Wick.nativeWick
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```
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usually indicates that a needed native library, such as `/libwickjni.so` has not
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been loaded or has not been included in the dependencies of the app or cannot be
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found for some reason. Note that Java requires every native library to be
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explicitly loaded using the function `System.loadLibrary`.
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## No registered calculator found
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The error message:
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```
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No registered object with name: OurNewCalculator; Unable to find Calculator "OurNewCalculator"
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```
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usually indicates that `OurNewCalculator` is referenced by name in a
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[`CalculatorGraphConfig`] but that the library target for OurNewCalculator has
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not been linked to the application binary. When a new calculator is added to a
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calculator graph, that calculator must also be added as a build dependency of
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the applications using the calculator graph.
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This error is caught at runtime because calculator graphs reference their
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calculators by name through the field `CalculatorGraphConfig::Node:calculator`.
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When the library for a calculator is linked into an application binary, the
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calculator is automatically registered by name through the
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[`REGISTER_CALCULATOR`] macro using the [`registration.h`] library. Note that
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[`REGISTER_CALCULATOR`] can register a calculator with a namespace prefix,
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identical to its C++ namespace. In this case, the calculator graph must also use
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the same namespace prefix.
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## Out Of Memory error
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Exhausting memory can be a symptom of too many packets accumulating inside a
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running MediaPipe graph. This can occur for a number of reasons, such as:
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1. Some calculators in the graph simply can't keep pace with the arrival of
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packets from a realtime input stream such as a video camera.
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2. Some calculators are waiting for packets that will never arrive.
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For problem (1), it may be necessary to drop some old packets in older to
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process the more recent packets. For some hints, see:
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[`How to process realtime input streams`].
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For problem (2), it could be that one input stream is lacking packets for some
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reason. A device or a calculator may be misconfigured or may produce packets
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only sporadically. This can cause downstream calculators to wait for many
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packets that will never arrive, which in turn causes packets to accumulate on
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some of their input streams. MediaPipe addresses this sort of problem using
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"timestamp bounds". For some hints see:
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[`How to process realtime input streams`].
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The MediaPipe setting [`CalculatorGraphConfig::max_queue_size`] limits the
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number of packets enqueued on any input stream by throttling inputs to the
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graph. For realtime input streams, the number of packets queued at an input
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stream should almost always be zero or one. If this is not the case, you may see
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the following warning message:
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```
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Resolved a deadlock by increasing max_queue_size of input stream
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```
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Also, the setting [`CalculatorGraphConfig::report_deadlock`] can be set to cause
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graph run to fail and surface the deadlock as an error, such that max_queue_size
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to acts as a memory usage limit.
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## Graph hangs
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Many applications will call [`CalculatorGraph::CloseAllPacketSources`] and
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[`CalculatorGraph::WaitUntilDone`] to finish or suspend execution of a MediaPipe
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graph. The objective here is to allow any pending calculators or packets to
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complete processing, and then to shutdown the graph. If all goes well, every
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stream in the graph will reach [`Timestamp::Done`], and every calculator will
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reach [`CalculatorBase::Close`], and then [`CalculatorGraph::WaitUntilDone`]
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will complete successfully.
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If some calculators or streams cannot reach state [`Timestamp::Done`] or
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[`CalculatorBase::Close`], then the method [`CalculatorGraph::Cancel`] can be
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called to terminate the graph run without waiting for all pending calculators
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and packets to complete.
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## Output timing is uneven
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Some realtime MediaPipe graphs produce a series of video frames for viewing as a
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video effect or as a video diagnostic. Sometimes, a MediaPipe graph will produce
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these frames in clusters, for example when several output frames are
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extrapolated from the same cluster of input frames. If the outputs are presented
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as they are produced, some output frames are immediately replaced by later
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frames in the same cluster, which makes the results hard to see and evaluate
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visually. In cases like this, the output visualization can be improved by
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presenting the frames at even intervals in real time.
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MediaPipe addresses this use case by mapping timestamps to points in real time.
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Each timestamp indicates a time in microseconds, and a calculator such as
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`LiveClockSyncCalculator` can delay the output of packets to match their
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timestamps. This sort of calculator adjusts the timing of outputs such that:
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1. The time between outputs corresponds to the time between timestamps as
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closely as possible.
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2. Outputs are produced with the smallest delay possible.
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## CalculatorGraph lags behind inputs
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For many realtime MediaPipe graphs, low latency is an objective. MediaPipe
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supports "pipelined" style parallel processing in order to begin processing of
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each packet as early as possible. Normally the lowest possible latency is the
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total time required by each calculator along a "critical path" of successive
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calculators. The latency of the a MediaPipe graph could be worse than the ideal
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due to delays introduced to display frames a even intervals as described in
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[Output timing is uneven](#output-timing-is-uneven).
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If some of the calculators in the graph cannot keep pace with the realtime input
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streams, then latency will continue to increase, and it becomes necessary to
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drop some input packets. The recommended technique is to use the MediaPipe
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calculators designed specifically for this purpose such as
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[`FlowLimiterCalculator`] as described in
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[`How to process realtime input streams`].
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[`CalculatorGraphConfig`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator.proto
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[`CalculatorGraphConfig::max_queue_size`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator.proto
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[`CalculatorGraphConfig::report_deadlock`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator.proto
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[`REGISTER_CALCULATOR`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator_registry.h
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[`registration.h`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/deps/registration.h
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[`CalculatorGraph::CloseAllPacketSources`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator_graph.h
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[`CalculatorGraph::Cancel`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator_graph.h
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[`CalculatorGraph::WaitUntilDone`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator_graph.h
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[`Timestamp::Done`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/timestamp.h
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[`CalculatorBase::Close`]: https://github.com/google/mediapipe/tree/master/mediapipe/framework/calculator_base.h
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[`FlowLimiterCalculator`]: https://github.com/google/mediapipe/tree/master/mediapipe/calculators/core/flow_limiter_calculator.cc
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[`How to process realtime input streams`]: faq.md#how-to-process-realtime-input-streams
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