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Commit 41cb1c32 authored by Lev Proleev's avatar Lev Proleev Committed by android-build-merger
Browse files

Merge "Fix LSTM documentation" into qt-dev am: 881e261f

am: 9201bd34

Change-Id: Ie838e84c562e584fb5588ebc96cb259b439c2c54
parents 3f7e2c4e 9201bd34
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Original line number Diff line number Diff line
@@ -401,7 +401,7 @@ f7d7cb747dc01a9fdb2d39a80003b4d8df9be733d65f5842198802eb6209db69 android.hardwar
65a021fa89085b62fc96b2b6d3bef2f9103cf4d63379c68bc154fd9eef672852 android.hardware.health@1.0::types
b7ecf29927055ec422ec44bf776223f07d79ad9f92ccf9becf167e62c2607e7a android.hardware.keymaster@4.0::IKeymasterDevice
574e8f1499436fb4075894dcae0b36682427956ecb114f17f1fe22d116a83c6b android.hardware.neuralnetworks@1.0::IPreparedModel
e75759b40a1c5f97b463b30aab91954012c9ea9e454dde308db853a56796e5a6 android.hardware.neuralnetworks@1.0::types
1e3576c07006d82ba5bc6ddbf87c101414d361c41afe7a82713750844c488725 android.hardware.neuralnetworks@1.0::types
eb754b58c93e5591613208b4c972811288b0fa16a82430d602f107c91a908b22 android.hardware.neuralnetworks@1.1::types
1d4a5776614c08b5d794a5ec5ab04697260cbd4b3441d5935cd53ee71d19da02 android.hardware.radio@1.0::IRadioResponse
ed9da80ec0c96991fd03f0a46107815d0e50f764656e49dba4980fa5c31d5bc3 android.hardware.radio@1.0::types
@@ -515,7 +515,7 @@ b83317b66721241887d2770b5ae95fd5af1e77c5daa7530ecb08fae8892f2b43 android.hardwar
92714960d1a53fc2ec557302b41c7cc93d2636d8364a44bd0f85be0c92927ff8 android.hardware.neuralnetworks@1.2::IExecutionCallback
36e1064c869965dee533c537cefbe87e54db8bd8cd45be7e0e93e00e8a43863a android.hardware.neuralnetworks@1.2::IPreparedModel
e1c734d1545e1a4ae749ff1dd9704a8e594c59aea7c8363159dc258e93e0df3b android.hardware.neuralnetworks@1.2::IPreparedModelCallback
e3b6176e3bf235c4e0e4e451b0166e396c7ee176cfe167c9147c3d46d7b34f0c android.hardware.neuralnetworks@1.2::types
d18bba0b6c8d2d1da3cfb52b14f556d2e04eb91551d97ee60a3524cf993a3e0e android.hardware.neuralnetworks@1.2::types
cf7a4ba516a638f9b82a249c91fb603042c2d9ca43fd5aad9cf6c0401ed2a5d7 android.hardware.nfc@1.2::INfc
abf98c2ae08bf765db54edc8068e36d52eb558cff6706b6fd7c18c65a1f3fc18 android.hardware.nfc@1.2::types
4cb252dc6372a874aef666b92a6e9529915aa187521a700f0789065c3c702ead android.hardware.power.stats@1.0::IPowerStats
+13 −12
Original line number Diff line number Diff line
@@ -858,20 +858,21 @@ enum OperationType : int32_t {
     *   elements of the input matrices.
     *
     * The operation has the following independently optional inputs:
     * * The cell-to-input weights (\f$W_{ci}\f$), cell-to-forget weights
     *   (\f$W_{cf}\f$) and cell-to-output weights (\f$W_{co}\f$) either all
     *   have values or neither of them have values (i.e., all set to null). If
     *   they have values, the peephole optimization is used.
     * * The input-to-input weights (\f$W_{xi}\f$), recurrent-to-input weights
     *   (\f$W_{hi}\f$), cell-to-input (\f$W_{ci}\f$) weights, and input gate
     *   bias (\f$b_i\f$) either all have values, or none of them have values
     *   (i.e., all set to null). If they have no values, coupling of input and
     *   forget gates (CIFG) is used, in which case the input gate (\f$i_t\f$)
     *   is calculated using the following equation instead.
     *   (\f$W_{hi}\f$) and input gate bias (\f$b_i\f$) either all have values,
     *   or none of them have values. If they have no values, coupling of input
     *   and forget gates (CIFG) is used, in which case the input gate
     *   (\f$i_t\f$) is calculated using the following equation instead.
     *   \f{eqnarray*}{
     *   i_t = 1 - f_t
     *   \f}
     * * The cell-to-forget weights (\f$W_{cf}\f$) and cell-to-output weights
     *   (\f$W_{co}\f$) either both have values or neither of them have values.
     *   If they have values, the peephole optimization is used. Additionally,
     *   if CIFG is not used, cell-to-input weights (\f$W_{ci}\f$) is also
     *   required to have values for peephole optimization.
     *   In case peephole optimization is used and CIFG is not used
     *   cell-to-input (\f$W_{ci}\f$) weights must be present. Otherwise, the
     *   cell-to-input weights must have no value.
     * * The projection weights (\f$W_{proj}\f$) is required only for the
     *   recurrent projection layer, and should otherwise have no value.
     * * The projection bias (\f$b_{proj}\f$) may (but not required to) have a
@@ -984,8 +985,8 @@ enum OperationType : int32_t {
     * Outputs:
     * * 0: The scratch buffer.
     *      A 2-D tensor of {@link OperandType::TENSOR_FLOAT32}, of shape
     *      [batch_size, num_units * 4] with CIFG, or
     *      [batch_size, num_units * 3] without CIFG.
     *      [batch_size, num_units * 3] with CIFG, or
     *      [batch_size, num_units * 4] without CIFG.
     * * 1: The output state (out) (\f$h_t\f$).
     *      A 2-D tensor of {@link OperandType::TENSOR_FLOAT32}, of shape
     *      [batch_size, output_size].
+11 −10
Original line number Diff line number Diff line
@@ -1177,20 +1177,21 @@ enum OperationType : int32_t {
     * https://arxiv.org/pdf/1607.06450.pdf
     *
     * The operation has the following independently optional inputs:
     * * The cell-to-input weights (\f$W_{ci}\f$), cell-to-forget weights
     *   (\f$W_{cf}\f$) and cell-to-output weights (\f$W_{co}\f$) either all
     *   have values or neither of them have values (i.e., all set to null). If
     *   they have values, the peephole optimization is used.
     * * The input-to-input weights (\f$W_{xi}\f$), recurrent-to-input weights
     *   (\f$W_{hi}\f$), cell-to-input (\f$W_{ci}\f$) weights, and input gate
     *   bias (\f$b_i\f$) either all have values, or none of them have values
     *   (i.e., all set to null). If they have no values, coupling of input and
     *   forget gates (CIFG) is used, in which case the input gate (\f$i_t\f$)
     *   is calculated using the following equation instead.
     *   (\f$W_{hi}\f$) and input gate bias (\f$b_i\f$) either all have values,
     *   or none of them have values. If they have no values, coupling of input
     *   and forget gates (CIFG) is used, in which case the input gate
     *   (\f$i_t\f$) is calculated using the following equation instead.
     *   \f{eqnarray*}{
     *   i_t = 1 - f_t
     *   \f}
     * * The cell-to-forget weights (\f$W_{cf}\f$) and cell-to-output weights
     *   (\f$W_{co}\f$) either both have values or neither of them have values.
     *   If they have values, the peephole optimization is used. Additionally,
     *   if CIFG is not used, cell-to-input weights (\f$W_{ci}\f$) is also
     *   required to have values for peephole optimization.
     *   In case peephole optimization is used and CIFG is not used
     *   cell-to-input (\f$W_{ci}\f$) weights must be present. Otherwise, the
     *   cell-to-input weights must have no value.
     * * The projection weights (\f$W_{proj}\f$) is required only for the
     *   recurrent projection layer, and should otherwise have no value.
     * * The projection bias (\f$b_{proj}\f$) may (but not required to) have a