armnn 20.08-10build1 source package in Ubuntu

Changelog

armnn (20.08-10build1) jammy; urgency=medium

  * No-change rebuild with Python 3.10 as default version

 -- Graham Inggs <email address hidden>  Fri, 14 Jan 2022 14:01:02 +0000

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Uploaded by:
Graham Inggs
Uploaded to:
Jammy
Original maintainer:
Francis Murtagh
Architectures:
amd64 arm64 armhf i386 mipsel mips64el ppc64el
Section:
misc
Urgency:
Medium Urgency

See full publishing history Publishing

Series Pocket Published Component Section
Jammy release universe misc

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File Size SHA-256 Checksum
armnn_20.08.orig.tar.xz 4.3 MiB e834f4ed5ed138ea6c66ea37ec11208af9803271656be16abd426f74287d1189
armnn_20.08-10build1.debian.tar.xz 18.9 KiB 9d0c42deda9f23089c5f4d9581b57469c33d0a3d4d2efa8f84b7a95c11541f80
armnn_20.08-10build1.dsc 3.1 KiB caa10c1c0ec6ad40ca70466cfdc8c0b7f5f60a737d869847fef39f8d734a60fa

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Binary packages built by this source

libarmnn-cpuacc-backend22: No summary available for libarmnn-cpuacc-backend22 in ubuntu kinetic.

No description available for libarmnn-cpuacc-backend22 in ubuntu kinetic.

libarmnn-cpuacc-backend22-dbgsym: debug symbols for libarmnn-cpuacc-backend22
libarmnn-cpuref-backend22: No summary available for libarmnn-cpuref-backend22 in ubuntu kinetic.

No description available for libarmnn-cpuref-backend22 in ubuntu kinetic.

libarmnn-cpuref-backend22-dbgsym: debug symbols for libarmnn-cpuref-backend22
libarmnn-dev: Arm NN is an inference engine for CPUs, GPUs and NPUs

 Arm NN is a set of tools that enables machine learning workloads on
 any hardware. It provides a bridge between existing neural network
 frameworks and whatever hardware is available and supported. On arm
 architectures (arm64 and armhf) it utilizes the Arm Compute Library
 to target Cortex-A CPUs, Mali GPUs and Ethos NPUs as efficiently as
 possible. On other architectures/hardware it falls back to unoptimised
 functions.
 .
 This release supports Caffe, TensorFlow, TensorFlow Lite, and ONNX.
 Arm NN takes networks from these frameworks, translates them
 to the internal Arm NN format and then through the Arm Compute Library,
 deploys them efficiently on Cortex-A CPUs, and, if present, Mali GPUs.
 .
 This is the development package containing header files.

libarmnn-gpuacc-backend22: No summary available for libarmnn-gpuacc-backend22 in ubuntu kinetic.

No description available for libarmnn-gpuacc-backend22 in ubuntu kinetic.

libarmnn-gpuacc-backend22-dbgsym: debug symbols for libarmnn-gpuacc-backend22
libarmnn22: No summary available for libarmnn22 in ubuntu kinetic.

No description available for libarmnn22 in ubuntu kinetic.

libarmnn22-dbgsym: No summary available for libarmnn22-dbgsym in ubuntu kinetic.

No description available for libarmnn22-dbgsym in ubuntu kinetic.

libarmnnaclcommon22: No summary available for libarmnnaclcommon22 in ubuntu kinetic.

No description available for libarmnnaclcommon22 in ubuntu kinetic.

libarmnnaclcommon22-dbgsym: debug symbols for libarmnnaclcommon22
libarmnntfliteparser-dev: Arm NN is an inference engine for CPUs, GPUs and NPUs

 Arm NN is a set of tools that enables machine learning workloads on
 any hardware. It provides a bridge between existing neural network
 frameworks and whatever hardware is available and supported. On arm
 architectures (arm64 and armhf) it utilizes the Arm Compute Library
 to target Cortex-A CPUs, Mali GPUs and Ethos NPUs as efficiently as
 possible. On other architectures/hardware it falls back to unoptimised
 functions.
 .
 This release supports Caffe, TensorFlow, TensorFlow Lite, and ONNX.
 Arm NN takes networks from these frameworks, translates them
 to the internal Arm NN format and then through the Arm Compute Library,
 deploys them efficiently on Cortex-A CPUs, and, if present, Mali GPUs.
 .
 This is the development package containing header files.

libarmnntfliteparser22: Arm NN is an inference engine for CPUs, GPUs and NPUs

 Arm NN is a set of tools that enables machine learning workloads on
 any hardware. It provides a bridge between existing neural network
 frameworks and whatever hardware is available and supported. On arm
 architectures (arm64 and armhf) it utilizes the Arm Compute Library
 to target Cortex-A CPUs, Mali GPUs and Ethos NPUs as efficiently as
 possible. On other architectures/hardware it falls back to unoptimised
 functions.
 .
 This release supports Caffe, TensorFlow, TensorFlow Lite, and ONNX.
 Arm NN takes networks from these frameworks, translates them
 to the internal Arm NN format and then through the Arm Compute Library,
 deploys them efficiently on Cortex-A CPUs, and, if present, Mali GPUs.
 .
 This is the shared library package.

libarmnntfliteparser22-dbgsym: debug symbols for libarmnntfliteparser22
python3-pyarmnn: No summary available for python3-pyarmnn in ubuntu kinetic.

No description available for python3-pyarmnn in ubuntu kinetic.

python3-pyarmnn-dbgsym: debug symbols for python3-pyarmnn