Gitiles
Code Review
Sign In
review.mlplatform.org
/
ml
/
armnn
/
8832522f47b701f5f042069e7bf8deae9b75d449
/
src
/
backends
/
reference
/
workloads
/
BaseIterator.hpp
8832522
IVGCVSW-4517 Implement BFloat16 Encoder and Decoder
by Narumol Prangnawarat
· 4 years, 4 months ago
9add120
IVGCVSW-4386 Add ArmNN reference support for QAsymmS8
by Ryan OShea
· 4 years, 5 months ago
246bd46
Remove inclusion of ArmNN.hpp where it is unnecessary.
by Matthew Bentham
· 4 years, 5 months ago
fd27106
IVGCVSW-4211 Add Signed 8 bit Quantisation support into the Reference backend
by Finn Williams
· 4 years, 7 months ago
e011d20
IVGCVSW-4209 Create a public API for the ArmNN Utils
by Matteo Martincigh
· 4 years, 7 months ago
5edc881
IVGCVSW-3837 Add support for per-axis quantization to reference Convolution2d workload
by Aron Virginas-Tar
· 4 years, 8 months ago
b67f957
IVGCVSW-3836 Add support for Int32 per-axis scales
by Aron Virginas-Tar
· 4 years, 8 months ago
5236e1d
IVGCVSW-3835 Create Encoder and Decoder for QSymm8PerAxis
by Keith Davis
· 4 years, 8 months ago
e69c399
IVGCVSW-3824 Implement Float 16 Encoder and Decoder
by Matthew Jackson
· 4 years, 10 months ago
198ee40
IVGCVSW-3609 Fix decoding and encoding of INT32 tensors
by Aron Virginas-Tar
· 5 years ago
c394a6d
IVGCVSW-3307 Don't assume TensorInfo::Map() can be called before Execute()
by Matthew Bentham
· 5 years ago
43aec58
IVGCVSW-3134 Refactor FullyConnected workloads into single workload
by Francis Murtagh
· 5 years ago
9b39832
IVGCVSW-3025: Refactor reference Convolution2d workload
by Mike Kelly
· 5 years ago
eb2b329
IVGCVSW-2997 Refactor reference LSTM workload
by Nattapat Chaimanowong
· 5 years ago
d4f0fea
IVGCVSW-2947 Remove boost dependency from include/TypesUtils.hpp
by Aron Virginas-Tar
· 5 years ago
f30f7d3
IVGCVSW-2946 RefElementwiseWorkload configures prior to first execute
by Derek Lamberti
· 5 years ago
2999a02
IVGCVSW-2862 Extend the Elementwise Workload to support QSymm16 Data Type
by Sadik Armagan
· 5 years ago
2e6dc3a
IVGCVSW-2861 Refactor the Reference Elementwise workload
by Sadik Armagan
· 5 years ago