@@ -26,7 +26,7 @@ offline.
2626A tool that adapts models trained by above algorithms to be inferred by fixed point arithmetic.
2727 - ** SeeDot** : Floating-point to fixed-point quantization tool.
2828
29- Applications demonstrating usecases of these algorithms.
29+ Applications demonstrating usecases of these algorithms, such as [ GesturePod ] ( /docs/publications ) .
3030
3131### Organization
3232 - The ` tf ` directory contains the ` edgeml_tf ` package which specifies these architectures in TensorFlow,
@@ -41,16 +41,18 @@ Please see install/run instructions in the README pages within these directories
4141
4242### Details and project pages
4343For details, please see our
44- [ project page] ( https://microsoft.github.io/EdgeML/ ) and
45- [ Microsoft Research page] ( https://www.microsoft.com/en-us/research/project/resource-efficient-ml-for-the-edge-and-endpoint-iot-devices/ ) .
46- our ICML'17 publications on [ Bonsai] ( docs/publications/Bonsai.pdf ) and
47- [ ProtoNN] ( docs/publications/ProtoNN.pdf ) algorithms,
48- NeurIPS'18 publications on [ EMI-RNN] ( docs/publications/emi-rnn-nips18.pdf ) and
49- [ FastGRNN] ( docs/publications/FastGRNN.pdf ) ,
50- and PLDI'19 publication on [ SeeDot] ( docs/publications/SeeDot.pdf ) .
51-
52-
53- Checkout the [ ELL] ( https://github.com/Microsoft/ELL ) project which can
44+ [ project page] ( https://microsoft.github.io/EdgeML/ ) ,
45+ [ Microsoft Research page] ( https://www.microsoft.com/en-us/research/project/resource-efficient-ml-for-the-edge-and-endpoint-iot-devices/ ) ,
46+ the ICML'17 publications on [ Bonsai] ( /docs/publications/Bonsai.pdf ) and
47+ [ ProtoNN] ( /docs/publications/ProtoNN.pdf ) algorithms,
48+ the NeurIPS'18 publications on [ EMI-RNN] ( /docs/publications/emi-rnn-nips18.pdf ) and
49+ [ FastGRNN] ( /docs/publications/FastGRNN.pdf ) ,
50+ the PLDI'19 publication on [ SeeDot compiler] ( /docs/publications/SeeDot.pdf ) ,
51+ the UIST'19 publication on [ Gesturepod] ( /docs/publications/ICane-UIST19.pdf ) ,
52+ and the NeurIPS'19 publication on [ S-RNN] ( /docs/publications/SRNN.pdf ) .
53+
54+
55+ Also checkout the [ ELL] ( https://github.com/Microsoft/ELL ) project which can
5456provide optimized binaries for some of the ONNX models trained by this library.
5557
5658### Contributors:
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