hls4ml.model package
Subpackages
- hls4ml.model.flow package
- hls4ml.model.optimizer package
- Subpackages
- hls4ml.model.optimizer.passes package
- Submodules
- hls4ml.model.optimizer.passes.bn_fuse module
- hls4ml.model.optimizer.passes.fuse_biasadd module
- hls4ml.model.optimizer.passes.multi_dense module
- hls4ml.model.optimizer.passes.nop module
- hls4ml.model.optimizer.passes.precision_merge module
- hls4ml.model.optimizer.passes.qkeras module
- hls4ml.model.optimizer.passes.stamp module
- hls4ml.model.optimizer.passes.transpose_opt module
- Module contents
- hls4ml.model.optimizer.passes package
- Submodules
- hls4ml.model.optimizer.optimizer module
- Module contents
- Subpackages
Submodules
hls4ml.model.attributes module
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class
hls4ml.model.attributes.Attribute(name, value_type=<class 'int'>, default=None, configurable=False) Bases:
object-
validate_value(value)
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class
hls4ml.model.attributes.AttributeDict(layer) Bases:
collections.abc.MutableMapping
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class
hls4ml.model.attributes.AttributeMapping(attributes, clazz) Bases:
collections.abc.MutableMapping
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class
hls4ml.model.attributes.ChoiceAttribute(name, choices, default=None, configurable=True) Bases:
hls4ml.model.attributes.Attribute-
validate_value(value)
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class
hls4ml.model.attributes.TypeAttribute(name, default=None, configurable=True)
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class
hls4ml.model.attributes.TypeMapping(attributes)
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class
hls4ml.model.attributes.VariableAttribute(name)
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class
hls4ml.model.attributes.VariableMapping(attributes)
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class
hls4ml.model.attributes.WeightAttribute(name)
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class
hls4ml.model.attributes.WeightMapping(attributes)
hls4ml.model.graph module
hls4ml.model.layers module
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class
hls4ml.model.layers.Activation(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.BatchNormalization(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.BiasAdd(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Merge-
initialize()
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class
hls4ml.model.layers.Concatenate(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Merge-
initialize()
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class
hls4ml.model.layers.Conv1D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Conv2D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Conv2DBatchnorm(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Conv2D-
initialize()
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class
hls4ml.model.layers.Dense(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.DepthwiseConv2D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Conv2D-
initialize()
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class
hls4ml.model.layers.Dot(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Merge-
initialize()
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class
hls4ml.model.layers.Embedding(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.GRU(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.GarNet(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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ref_impl= False
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class
hls4ml.model.layers.GarNetStack(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.GarNet
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class
hls4ml.model.layers.GlobalPooling1D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.GlobalPooling2D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Input(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.LSTM(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Layer(model, name, attributes, inputs, outputs=None) Bases:
object-
add_bias(quantizer=None)
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add_output_variable(shape, dim_names, out_name=None, var_name='layer{index}_out', type_name='layer{index}_t', precision=None)
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add_weights(quantizer=None, compression=False)
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add_weights_variable(name, var_name=None, type_name=None, precision=None, data=None, quantizer=None, compression=False)
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property
class_name
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expected_attributes= [<hls4ml.model.attributes.Attribute object>, <hls4ml.model.attributes.TypeAttribute object>, <hls4ml.model.attributes.TypeAttribute object>]
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get_attr(key, default=None)
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get_input_node(input_name=None)
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get_input_variable(input_name=None)
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get_layer_precision()
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get_numbers_cpp()
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get_output_nodes(output_name=None)
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get_output_variable(output_name=None)
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get_variables()
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get_weights(var_name=None)
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initialize()
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precision_cpp()
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set_attr(key, value)
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class
hls4ml.model.layers.Merge(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.PReLU(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Activation-
initialize()
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class
hls4ml.model.layers.ParametrizedActivation(model, name, attributes, inputs, outputs=None)
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class
hls4ml.model.layers.Pooling1D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Pooling2D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Reshape(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Resize(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.SeparableConv1D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.SeparableConv2D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.SimpleRNN(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.Softmax(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Activation-
initialize()
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class
hls4ml.model.layers.TernaryTanh(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Activation-
initialize()
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class
hls4ml.model.layers.Transpose(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.ZeroPadding1D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.ZeroPadding2D(model, name, attributes, inputs, outputs=None) Bases:
hls4ml.model.layers.Layer-
initialize()
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class
hls4ml.model.layers.classproperty(func) Bases:
object
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hls4ml.model.layers.register_layer(name, clazz)
hls4ml.model.profiling module
hls4ml.model.types module
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class
hls4ml.model.types.CompressedType(name, precision, index_precision, **kwargs) Bases:
hls4ml.model.types.NamedType
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class
hls4ml.model.types.CompressedWeightVariable(var_name, type_name, precision, data, reuse_factor, quantizer=None, **kwargs) Bases:
hls4ml.model.types.WeightVariable-
next()
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class
hls4ml.model.types.ExponentPrecisionType(width=16, signed=True) Bases:
hls4ml.model.types.IntegerPrecisionTypeConvenience class to differentiate ‘regular’ integers from those which represent exponents, for QKeras po2 quantizers, for example.
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class
hls4ml.model.types.ExponentType(name, precision, **kwargs) Bases:
hls4ml.model.types.NamedType
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class
hls4ml.model.types.ExponentWeightVariable(var_name, type_name, precision, data, quantizer=None, **kwargs) Bases:
hls4ml.model.types.WeightVariable-
next()
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class
hls4ml.model.types.FixedPrecisionType(width=16, integer=6, signed=True, rounding_mode=None, saturation_mode=None, saturation_bits=None) Bases:
hls4ml.model.types.PrecisionType-
property
rounding_mode
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property
saturation_mode
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property
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class
hls4ml.model.types.InplaceVariable(shape, dim_names, proxy) Bases:
hls4ml.model.types.Variable-
definition_cpp(name_suffix='', as_reference=False)
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get_shape()
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size_cpp()
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class
hls4ml.model.types.IntegerPrecisionType(width=16, signed=True)
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class
hls4ml.model.types.NamedType(name, precision, **kwargs) Bases:
object
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class
hls4ml.model.types.PackedType(name, precision, n_elem, n_pack, **kwargs) Bases:
hls4ml.model.types.NamedType
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class
hls4ml.model.types.PrecisionType(width, signed) Bases:
object
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class
hls4ml.model.types.Quantizer(bits, hls_type) Bases:
object
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class
hls4ml.model.types.RoundingMode Bases:
enum.EnumAn enumeration.
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RND= 3
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RND_CONV= 7
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RND_INF= 5
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RND_MIN_INF= 6
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RND_ZERO= 4
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TRN= 1
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TRN_ZERO= 2
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classmethod
from_string(mode)
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class
hls4ml.model.types.SaturationMode Bases:
enum.EnumAn enumeration.
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SAT= 2
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SAT_SYM= 4
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SAT_ZERO= 3
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WRAP= 1
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classmethod
from_string(mode)
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class
hls4ml.model.types.TensorVariable(shape, dim_names, var_name='layer{index}', type_name='layer{index}_t', precision=None, **kwargs) Bases:
hls4ml.model.types.Variable-
get_shape()
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size()
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size_cpp()
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class
hls4ml.model.types.Variable(var_name, atype, **kwargs) Bases:
object
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class
hls4ml.model.types.WeightVariable(var_name, type_name, precision, data, quantizer=None, **kwargs) Bases:
hls4ml.model.types.Variable-
next()
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update_precision(new_precision)
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class
hls4ml.model.types.XnorPrecisionType Bases:
hls4ml.model.types.IntegerPrecisionTypeConvenience class to differentiate ‘regular’ integers from BNN Xnor ones
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hls4ml.model.types.find_minimum_width(data, signed=True) Helper function to find the minimum integer width to express all entries in the data array without saturation / overflow