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| Original file line number | Diff line number | Diff line change |
|---|---|---|
| @@ -0,0 +1,107 @@ | ||
| # dpnp benchmarks | ||
|
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| Benchmarking dpnp using Airspeed Velocity. | ||
| Read more about ASV [here](https://asv.readthedocs.io/en/stable/index.html). | ||
|
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| ## Usage | ||
|
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| Unlike a pure-Python project, dpnp is a SYCL/DPC++ extension that requires the | ||
| Intel oneAPI compiler and a lengthy build, so ASV does not build dpnp itself: | ||
| `build_command` in `asv.conf.json` is empty and the benchmarks are run against | ||
| an **existing environment** that already has dpnp installed. | ||
|
|
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| Create an environment | ||
| [following these instructions](https://intelpython.github.io/dpnp/quick_start_guide.html) | ||
| and install the benchmarking tooling into it. Either install the `benchmark` | ||
| extra from the repo: | ||
|
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||
| ```bash | ||
| pip install ".[benchmark]" | ||
| ``` | ||
|
|
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| or install `asv` directly: | ||
|
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| ```bash | ||
| conda install -c conda-forge asv | ||
| ``` | ||
|
|
||
| Then activate the environment and run the benchmarks against it. The simplest | ||
| way is to point ASV at the currently active environment with `--python=same`: | ||
|
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| ```bash | ||
| conda activate dpnp_env | ||
| asv run --python=same --quick HEAD^! | ||
| ``` | ||
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| Alternatively, point ASV explicitly at an environment's python binary: | ||
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| ```bash | ||
| asv run --environment existing:/full/conda/path/envs/dpnp_env/bin/python | ||
| ``` | ||
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| Compare two commits or check for regressions: | ||
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| ```bash | ||
| asv continuous --python=same HEAD~1 HEAD | ||
| ``` | ||
|
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| For `level_zero` devices, you might see `USM Allocation` errors unless you use | ||
| the `asv run` command with `--launch-method spawn`. | ||
|
|
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| By default, dpnp selects a default SYCL device. Use the `ONEAPI_DEVICE_SELECTOR` | ||
| environment variable to target a specific device, e.g.: | ||
|
|
||
| ```bash | ||
| ONEAPI_DEVICE_SELECTOR=level_zero:gpu asv run \ | ||
| --launch-method spawn \ | ||
| --python=same | ||
| ``` | ||
|
|
||
| ## Benchmarks | ||
|
|
||
| ### `bench_dpbench.py` -- dpBench workloads | ||
|
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||
| `bench_dpbench.py` runs a set of dpnp workloads vendored from | ||
| [dpBench](https://github.com/IntelPython/dpbench). The kernels, their data | ||
| initialization, and the data-size presets are copied from dpBench and live in | ||
| `benchmarks/dpbench/workloads`. Each workload is exposed as its own benchmark | ||
| class (e.g. `BlackScholes.time_black_scholes`) and is parametrized by the | ||
| dpBench data-size preset (`S`, `M16Gb`, `M`, `L`). | ||
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| Currently vendored workloads: | ||
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||
| | Workload | Domain | | ||
| | ------------------- | ------------------ | | ||
| | `black_scholes` | Finance | | ||
| | `l2_norm` | Distance Compute | | ||
| | `pairwise_distance` | Distance Compute | | ||
| | `rambo` | Particle Physics | | ||
| | `gpairs` | Astrophysics | | ||
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||
| Host input data is generated and copied to the device exactly the way dpBench | ||
| does, and each kernel ends with `dpnp.synchronize_array_data`, so a single call | ||
| blocks until the device work has finished. The `time_*` methods invoke the | ||
| workload once and let ASV wall-clock-time it (handling repeats, samples and | ||
| statistics natively) -- the same end-to-end quantity dpBench itself measures, | ||
| and the same plain `time_*` style used by the mkl_fft ASV benchmarks. By | ||
| default only the small `S` preset is exercised; edit `ASV_PRESETS` in a workload | ||
| module to benchmark larger problem sizes (which may require several GiB of | ||
| device memory). | ||
|
|
||
| ### Other benchmark modules | ||
|
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| The remaining `bench_*.py` modules (`bench_linalg.py`, `bench_elementwise.py`, | ||
| `bench_random.py`) are plain ASV benchmarks comparing dpnp against NumPy. | ||
|
|
||
| ## Writing new benchmarks | ||
|
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| Read ASV's guidelines for writing benchmarks | ||
| [here](https://asv.readthedocs.io/en/stable/writing_benchmarks.html). | ||
|
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||
| To add another dpBench workload, copy its `<name>_dpnp.py` kernel and | ||
| `<name>_initialize.py` initializer into a new module under | ||
| `benchmarks/dpbench/workloads`, translate its `bench_info` TOML presets into the | ||
| module's `PRESETS`/`ASV_PRESETS` and argument-metadata constants (see the | ||
| existing workloads for the exact shape), and add the module to `WORKLOADS` in | ||
| `benchmarks/dpbench/workloads/__init__.py`. `bench_dpbench.py` will generate a | ||
| benchmark class for it automatically. | ||
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| Original file line number | Diff line number | Diff line change |
|---|---|---|
| @@ -1,89 +1,26 @@ | ||
| { | ||
| // The version of the config file format. Do not change, unless | ||
| // you know what you are doing. | ||
| "version": 1, | ||
|
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| // The name of the project being benchmarked | ||
| "project": "dpnp", | ||
|
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| // The project's homepage | ||
| "project_url": "", | ||
|
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| // The URL or local path of the source code repository for the | ||
| // project being benchmarked | ||
| "project_url": "https://github.com/IntelPython/dpnp", | ||
| "repo": "..", | ||
|
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||
| // List of branches to benchmark. If not provided, defaults to "master" | ||
| // (for git) or "tip" (for mercurial). | ||
| "show_commit_url": "https://github.com/IntelPython/dpnp/commit/", | ||
| "build_command": [], | ||
| "branches": [ | ||
| "HEAD" | ||
| ], | ||
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| // The DVCS being used. If not set, it will be automatically | ||
| // determined from "repo" by looking at the protocol in the URL | ||
| // (if remote), or by looking for special directories, such as | ||
| // ".git" (if local). | ||
| "dvcs": "git", | ||
|
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| // The tool to use to create environments. May be "conda", | ||
| // "virtualenv" or other value depending on the plugins in use. | ||
| // If missing or the empty string, the tool will be automatically | ||
| // determined by looking for tools on the PATH environment | ||
| // variable. | ||
| "environment_type": "virtualenv", | ||
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||
| // the base URL to show a commit for the project. | ||
| "show_commit_url": "", | ||
|
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| // The Pythons you'd like to test against. If not provided, defaults | ||
| // to the current version of Python used to run `asv`. | ||
| "pythons": [ | ||
| "3.7" | ||
| "environment_type": "conda", | ||
| "conda_channels": [ | ||
| "https://software.repos.intel.com/python/conda/", | ||
| "conda-forge" | ||
| ], | ||
|
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||
| // The matrix of dependencies to test. Each key is the name of a | ||
| // package (in PyPI) and the values are version numbers. An empty | ||
| // list indicates to just test against the default (latest) | ||
| // version. | ||
| "matrix": { | ||
| "Cython": [], | ||
| }, | ||
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| // The directory (relative to the current directory) that benchmarks are | ||
| // stored in. If not provided, defaults to "benchmarks" | ||
| "benchmark_dir": "benchmarks", | ||
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| // The directory (relative to the current directory) to cache the Python | ||
| // environments in. If not provided, defaults to "env" | ||
| "env_dir": "env", | ||
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| // The directory (relative to the current directory) that raw benchmark | ||
| // results are stored in. If not provided, defaults to "results". | ||
| "results_dir": "results", | ||
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| // The directory (relative to the current directory) that the html tree | ||
| // should be written to. If not provided, defaults to "html". | ||
| "html_dir": "html", | ||
|
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| // The number of characters to retain in the commit hashes. | ||
| // "hash_length": 8, | ||
|
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| // `asv` will cache wheels of the recent builds in each | ||
| // environment, making them faster to install next time. This is | ||
| // number of builds to keep, per environment. | ||
| "build_cache_size": 8, | ||
|
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| // The commits after which the regression search in `asv publish` | ||
| // should start looking for regressions. Dictionary whose keys are | ||
| // regexps matching to benchmark names, and values corresponding to | ||
| // the commit (exclusive) after which to start looking for | ||
| // regressions. The default is to start from the first commit | ||
| // with results. If the commit is `null`, regression detection is | ||
| // skipped for the matching benchmark. | ||
| // | ||
| // "regressions_first_commits": { | ||
| // "some_benchmark": "352cdf", // Consider regressions only after this | ||
| // commit | ||
| // "another_benchmark": null, // Skip regression detection altogether | ||
| // } | ||
| "env_dir": ".asv/env", | ||
| "results_dir": ".asv/results", | ||
| "html_dir": ".asv/html", | ||
| "build_cache_size": 2, | ||
| "default_benchmark_timeout": 500, | ||
| "regressions_thresholds": { | ||
| ".*": 0.2 | ||
| } | ||
| } |
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|---|---|---|
| @@ -0,0 +1,106 @@ | ||
| # ***************************************************************************** | ||
| # Copyright (c) 2020, Intel Corporation | ||
| # All rights reserved. | ||
| # | ||
| # Redistribution and use in source and binary forms, with or without | ||
| # modification, are permitted provided that the following conditions are met: | ||
| # - Redistributions of source code must retain the above copyright notice, | ||
| # this list of conditions and the following disclaimer. | ||
| # - Redistributions in binary form must reproduce the above copyright notice, | ||
| # this list of conditions and the following disclaimer in the documentation | ||
| # and/or other materials provided with the distribution. | ||
| # - Neither the name of the copyright holder nor the names of its contributors | ||
| # may be used to endorse or promote products derived from this software | ||
| # without specific prior written permission. | ||
| # | ||
| # THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" | ||
| # AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE | ||
| # IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE | ||
| # ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE | ||
| # LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR | ||
| # CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF | ||
| # SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS | ||
| # INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN | ||
| # CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) | ||
| # ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF | ||
| # THE POSSIBILITY OF SUCH DAMAGE. | ||
| # ***************************************************************************** | ||
|
|
||
| """ASV benchmarks for dpnp workloads vendored from dpBench. | ||
|
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||
| The workloads (kernels + data initialization) and their data-size presets are | ||
| copied from dpBench (https://github.com/IntelPython/dpbench); see | ||
| ``benchmarks/benchmarks/dpbench``. | ||
|
|
||
| Each vendored kernel ends with ``dpnp.synchronize_array_data`` on its output, | ||
| so a single call blocks until the device work has finished. The ``time_*`` | ||
| methods below simply invoke the workload once and let ASV wall-clock-time it | ||
| (handling repeats, samples and statistics natively) -- the same end-to-end | ||
| quantity dpBench itself measures, and the same plain ``time_*`` style used by | ||
| the mkl_fft ASV benchmarks. | ||
|
|
||
| A separate benchmark class is generated for each workload -- e.g. | ||
| ``BlackScholes.time_black_scholes`` -- and parametrized by the data-size preset. | ||
| """ | ||
|
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| import dpctl | ||
|
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| from . import benchmark_utils as bench_utils | ||
| from .dpbench import _dpbench_runner as runner | ||
| from .dpbench.workloads import WORKLOADS | ||
|
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| # Default-device queue, used only to query device capabilities (e.g. fp64 | ||
| # support) so unsupported-precision workloads can be skipped. This is the | ||
| # device dpnp allocates on by default. | ||
| DEVICE_QUEUE = dpctl.SyclQueue() | ||
|
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| def _camel_case(name): | ||
| """``black_scholes`` -> ``BlackScholes``, ``l2_norm`` -> ``L2Norm``.""" | ||
| return "".join(part.capitalize() for part in name.split("_")) | ||
|
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||
|
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| def _make_benchmark_class(workload): | ||
| """Build an ASV benchmark class for a single dpBench workload.""" | ||
|
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| class WorkloadBenchmark: | ||
| # The per-benchmark timeout is governed by ``default_benchmark_timeout`` | ||
| # in ``asv.conf.json``; larger presets on a busy device can take a | ||
| # while. | ||
|
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| params = list(workload.ASV_PRESETS) | ||
| param_names = ["preset"] | ||
|
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| def setup(self, preset): | ||
| # Skip on devices that do not support the workload's precision | ||
| # (e.g. no fp64), mirroring the dpctl ASV benchmarks. | ||
| float_dtype = runner.build_types_dict(workload.PRECISION)["float"] | ||
| bench_utils.skip_unsupported_dtype(DEVICE_QUEUE, float_dtype) | ||
|
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| self._runner = runner.WorkloadRunner(workload, preset) | ||
| self._runner.setup() | ||
|
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| def time_workload(self, preset): | ||
| self._runner.run() | ||
|
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| # Name things so ASV displays e.g. ``BlackScholes.time_black_scholes``. | ||
| WorkloadBenchmark.__name__ = _camel_case(workload.NAME) | ||
| WorkloadBenchmark.__qualname__ = WorkloadBenchmark.__name__ | ||
|
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| time_method = WorkloadBenchmark.time_workload | ||
| time_method.__name__ = f"time_{workload.NAME}" | ||
| setattr(WorkloadBenchmark, time_method.__name__, time_method) | ||
| del WorkloadBenchmark.time_workload | ||
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| return WorkloadBenchmark | ||
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| def _generate_benchmark_classes(): | ||
| """Create and register a benchmark class for every vendored workload.""" | ||
| for workload in WORKLOADS: | ||
| cls = _make_benchmark_class(workload) | ||
| # Register the class at module scope so ASV can discover it. | ||
| globals()[cls.__name__] = cls | ||
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| _generate_benchmark_classes() |
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| Original file line number | Diff line number | Diff line change |
|---|---|---|
| @@ -0,0 +1,44 @@ | ||
| # ***************************************************************************** | ||
| # Copyright (c) 2020, Intel Corporation | ||
| # All rights reserved. | ||
| # | ||
| # Redistribution and use in source and binary forms, with or without | ||
| # modification, are permitted provided that the following conditions are met: | ||
| # - Redistributions of source code must retain the above copyright notice, | ||
| # this list of conditions and the following disclaimer. | ||
| # - Redistributions in binary form must reproduce the above copyright notice, | ||
| # this list of conditions and the following disclaimer in the documentation | ||
| # and/or other materials provided with the distribution. | ||
| # - Neither the name of the copyright holder nor the names of its contributors | ||
| # may be used to endorse or promote products derived from this software | ||
| # without specific prior written permission. | ||
| # | ||
| # THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" | ||
| # AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE | ||
| # IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE | ||
| # ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE | ||
| # LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR | ||
| # CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF | ||
| # SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS | ||
| # INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN | ||
| # CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) | ||
| # ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF | ||
| # THE POSSIBILITY OF SUCH DAMAGE. | ||
| # ***************************************************************************** | ||
|
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| from asv_runner.benchmarks.mark import SkipNotImplemented | ||
|
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| import dpnp | ||
|
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|
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| def skip_unsupported_dtype(q, dtype): | ||
| """Skip the benchmark if the device does not support the given dtype.""" | ||
| dtype = dpnp.dtype(dtype) | ||
| device = q.sycl_device | ||
| if ( | ||
| dtype in (dpnp.float64, dpnp.complex128) and not device.has_aspect_fp64 | ||
| ) or (dtype == dpnp.float16 and not device.has_aspect_fp16): | ||
| raise SkipNotImplemented( | ||
| f"Skipping benchmark for {dtype.name} on this device" | ||
| + " as it is not supported." | ||
| ) |
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@@ -52,10 +52,16 @@ | |||||||||
| "int64", | ||||||||||
| "float64", | ||||||||||
| "complex64", | ||||||||||
| "longfloat", | ||||||||||
| # numpy.longfloat is an alias of numpy.longdouble that was removed in | ||||||||||
| # NumPy 2.0; use numpy.longdouble, which exists on both 1.x and 2.x. | ||||||||||
| "longdouble", | ||||||||||
| "complex128", | ||||||||||
|
Comment on lines
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Contributor
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. dpnp does not support these data types:
Suggested change
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| ] | ||||||||||
| if "complex256" in numpy.typeDict: | ||||||||||
| # numpy.typeDict was removed in NumPy 2.0 in favor of numpy.sctypeDict. | ||||||||||
| _numpy_type_dict = getattr(numpy, "typeDict", None) | ||||||||||
| if _numpy_type_dict is None: | ||||||||||
| _numpy_type_dict = numpy.sctypeDict | ||||||||||
| if "complex256" in _numpy_type_dict: | ||||||||||
| TYPES1.append("complex256") | ||||||||||
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Isn't the below
pip install ".[benchmark]"command will trigger full dpnp rebuild?