This file contains a more verbose and detailed description of the Vela Compiler's CLI options than the built-in help strings. It also defines and describes Vela's configuration file format.
Filename of the network model to compile. The file has to be a .tflite
file.
Type: POSIX path
Default: N/A
vela path/to/network.tflite
Displays the help strings of all CLI options. Can be used without the required Network argument.
Type: N/A
Default: N/A
vela --help
Displays the version of the installed Vela Compiler. Can be used without the required Network argument.
Type: N/A
Default: N/A
vela --version
Displays the version of the external API. Can be used without the required Network argument.
Type: N/A
Default: N/A
vela --api-version
Generate the SUPPORTED_OPS.md file in the current working directory. Contains a summary table for each supported network model format (TFLite/TOSA). The tables shows all the operators that can be placed on the NPU, and what the constraints are for that operator to be scheduled on the NPU. If the constraints are not met for a TFLite operator, then it will be scheduled on the CPU instead. For TOSA operators there are no fallback to the CPU. Note: There is limited support for compiling a TOSA neural network (EXPERIMENTAL). Can be used without the required Network argument.
Type: N/A
Default: N/A
vela --supported-ops-report
Displays the configuration files in the ethosu/config_files
directory. All configuration files must have the .ini extension and be placed in an appropriately named directory under ethosu/config_files
. Note that the file depth from ethosu/config_files
must be exactly 2 for the file to be discovered (e.g. config_files/directory_name/my_config_file.ini
). Can be used without the required Network argument.
vela --list-config-files
Specifies the output directory of the optimised network model as well as the .csv
files containing performance estimations.
Type: POSIX path
Default: ./output
vela network.tflite --output-dir ./custom_directory
The neural network debug database allows tracking of optimisations from the input network graph to the output command stream. Set this option to enable the calculation and writing of an XML file that contains the network debug database tables to the output directory.
vela network.tflite --enable-debug-db
Specifies the path to the Vela configuration file. The format of the file is a Python ConfigParser .ini
file. This option can be specified multiple times to allow multiple files to be searched for the required system config and memory mode. Custom configuration files can be used by adding a .ini file in an appropriate directory under the ethosu/config_files
directory or by providing its absolute path. More details can be found in the Configuration File and List Configuration Files sections. Type: POSIX path
Default: use default configuration
vela network.tflite --config DirectoryName/my_vela_cfg1.ini --config absolute/path/to/my_vela_cfg2.ini --system-config My_Sys_Cfg --memory-mode My_Mem_Mode
Measure time taken for different compiler steps, e.g. model reading and scheduling. Prints the results to standard out.
vela network.tflite --timing
Forces symmetric quantization for signed integer weights. This means that all zero points are set to 0. This might lead to unintended behaviour.
vela network.tflite --force-symmetric-int-weights
Choose which hardware accelerator configuration to compile for. Format is accelerator name followed by a hyphen, followed by the number of MACs in the configuration.
Type: String
Default: ethos-u55-256
Choices: [ethos-u55-32, ethos-u55-64, ethos-u55-128, ethos-u55-256, ethos-u65-256, ethos-u65-512]
vela network.tflite --accelerator-config ethos-u55-64
Selects the system configuration to use as specified in the Vela configuration file (see section below).
Type: String
Default: Use internal-default
config. This maps to the following configs from the example vela.ini
file
vela network.tflite --config my_vela_cfg.ini --system-config My_Sys_Cfg
Selects the memory mode to use as specified in the Vela configuration file (see section below).
Type: String
Default: Use internal-default
config. This maps to the following configs from the example vela.ini
file
vela network.tflite --config my_vela_cfg.ini --memory-mode My_Mem_Mode
Specify which allocator algorithm to use for non-constant NPU and CPU tensor allocation.
Type: String
Default: HillClimb
Choices: [Greedy, LinearAlloc, HillClimb]
vela network.tflite --tensor-allocator=LinearAlloc
Set the maximum value that can be used for the block dependency delay between NPU kernel operations. A lower value may result in longer execution time.
Type: Integer
Default: 3
Choices: [0, 1, 2, 3]
vela network.tflite --max-block-dependency 0
Set the optimisation strategy. The Size strategy results in minimal SRAM usage (it does not use arena cache memory area size). The Performance strategy results in maximal performance (it uses the arena cache memory area size if specified either via the CLI option of Vela configuration file). Type: String
Default: Performance
Choices: [Size, Performance]
vela network.tflite --optimise Size
Set the size of the arena cache memory area, in bytes. If specified, this option overrides the memory mode attribute with the same name in a Vela configuration file. If neither this nor the memory mode attribute are specified then a size equal to the maximum address supported by the Ethos-U is used. This option is intended to be used with the --optimise Performance
option.
Type: Integer
Choices: [ >= 0]
vela network.tflite --optimise Performance --arena-cache-size 2097152
Controls the allocation byte alignment. This affects all CPU tensors including Ethos-U Custom operator inputs and outputs. In this instance a CPU tensor is defined as any tensor that is explicitly listed in the resulting .tflite
file. The Ethos-U NPU internal tensors will remain 16-byte aligned independent of this option, these tensors are contained within the command stream. Alignment has to be a power of two and greater or equal to 16.
Type: Integer
Default: 16
vela network.tflite --allocation-alignment 128
Sets the Python internal limit to depth of recursion. It may be necessary to increase this from the default for very large networks due to the recursive nature of the graph traversal algorithm. If Vela fails with a RecursionError
, try increasing the limit using this option to see if it resolves the issue.
Please note that this option may not work as intended on Microsoft Windows systems, as there is a hard limit on thread stack size.
Type: Integer
Default: 1000
vela network.tflite --recursion-limit 2000
Sets the maximum number of iterations the Hill Climb tensor allocator will run. This is a hard limit on the total number of iterations of the algorithm. Reducing this value is unlikely to reduce the compilation time of a working solution, and it may cause the algorithm to terminate before finding a workable solution.
Type: Integer
Default: 99999
vela network.tflite --hillclimb-max-iterations 1000
All of the options below are disabled by default and enabling them will add prints to standard out without any functional changes.
Show the operations that fall back to the CPU.
vela network.tflite --show-cpu-operations
Prints a summary of all the subgraphs and their inputs and outputs.
vela network.tflite --show-subgraph-io-summary
Enable all --verbose-*
options.
vela network.tflite --verbose-all
Verbose system configuration and memory mode. If no --system-config
or --memory-mode
CLI options are specified then the internal-default
values will be displayed.
vela network.tflite --verbose-config
Displays two lists of operators. The first lists all of the operators that exist in Vela's internal representation (Graph IR) of the Neural Network Graph (NNG) before the graph optimisation process has run. The second lists all of the operators after that process. The lists do not show the connectivity information of the NNG and are unordered, therefore the execution order may differ. Each line in the list is of the format:<num> <op_type> <op_name>
, where;
num = an increasing operator count
op_type = the Graph IR Operator Type
op_name = the Graph IR Operator Name (this may have been derived from the corresponding TFLite operator name)
vela network.tflite --verbose-graph
Displays quantization information of all weight, bias, input and output tensors for each operator in the Neural Network Graph (NNG). The quantization approximates floating point values as: approx_float_value = (integer_value - zero_point) * scale
The information of each tensor is displayed in the format: <idx> <data_type> <min> <max> <scale> <zero_point> <name>
, where;
idx = the tensor index on each operator
min = the minimum floating point value before quantization
max = the maximum floating point value before quantization
scale = the quantization scaling, zero_point = the quantization zero point
name = the name of the tensor
vela network.tflite --verbose-quantization
Displays a list of passes where a pass represents one or more Graph IR operators that are run together as one hardware operation e.g. a pass could be a convolution operator fused with a hardswish activation. Each line of the list has the format:<id> <pass>
, where;
id = an increasing pass count
pass = name of the pass (usually derived from the first operator in the pass)
vela network.tflite --verbose-packing
Verbose per-layer Performance. Please see Vela Performance Estimation Summary for a detailed explanation.
vela network.tflite --verbose-performance
Displays a list of all operators and the tensors that are connected to them. Additional information is shown about the tensors. The format is: <num> <op_type> <op_name> <direction> <idx> <purpose> <mem_area> <mem_type> <tens>
, where;
num = an increasing operator count
op_type = the Graph IR Operator Type
op_name = the Graph IR Operator Name (this may have been derived from the corresponding TFLite operator name)
direction = either Input or Output and indicates the connection direction of the tensor with respect idx = the index position where on each operator
purpose = purpose of the tensor (weight, bias, feature map, etc.)
mem_area = assigned memory area (for example SRAM or Flash)
mem_type = memory type (i.e. Scratch or Permanent NPU)
tens = string representation of the tensor containing its name, shape and data type
vela network.tflite --verbose-tensor-purpose
Display all schedule operations which contain information about the operator type, block config, stripe sizes, size of encoded weights, size of weight buffers, depth slices, cascade assignment and SRAM usage. The purpose of the scheduler is to come up with an execution plan for the network. It will make decisions on how to split an operator execution into stripes, group operators together in cascades to either reduce SRAM footprint or, in a multi-level memory system, better utilize the SRAM. The scheduler will also decide in what memory to put tensors as well as how to buffer data from a slower memory like Flash/DRAM to SRAM.
Feature maps can be split up into horizontal subsections called stripes that allow us to apply operators independently to smaller sections of feature maps. The output stripes that are produced can fit into a smaller buffer than the output of a full feature map would, which combined with cascading can reduce memory usage.
A cascade is a group of operators that will be computed interleaved in stripes. Instead of storing the full output of an operator applied on a whole feature map, we calculate the smallest possible buffer that allows storing intermediate results of enough output stripes of one operator to allow the consecutive operator to calculate one output stripe. Then, the consumed parts of the buffer that is no longer needed by the consecutive operator in the cascade can be overwritten by a new output stripe of the first operator, allowing us to reuse and reduce the memory usage.
vela network.tflite --verbose-schedule
This option displays tensor allocation information in separate tables for each type of memory area. Each table contains information about each tensor's start and end time, address, size and purpose as well as the memory usage during the each tensors live range. The start- and end time denotes the time steps during when the tensor needs to be allocated in the memory. After the end time, the addresses are allowed to be overwritten by other tensors. The reported memory usage is the peak usage at any time step of the tensors live range, which means that the maximum memory usage value of all tensors will be the minimum required size to fit the proposed allocation.
vela network.tflite --verbose-allocation
Display an enumerated list of High-Level (HL) commands in execution order. There are three types of command and each one displays individual information:
NPU Stripe = <name> <ifm_box> <ifm2_box> <ofm_box> <weight_box> <block_config>
, represents a data processing operation that maps directly to a single Ethos-U operation where;
name = name of the pass that corresponds to this HL command (not unique)
ifm_box = part of the IFM in NHWC format
ifm2_box = part of the IFM2 in NHWC format (is empty [] when not present)
ofm_box = part of the OFM in NHWC format
weight_box = part of the filter kernel in NHWC format
block_config = block processing size in HWIO format
DMA = <in> <out> <box>
, represents a memory copy operation from source to destination where;
name = name of the pass that corresponds to this HL command (not unique)
in = name of the source tensor
out = name of the destination tensor
box = part of the source tensor in NHWC format
NOP = <in> <out>
, represents a memory copy operation that has source equal to destination and therefore does nothing, where;
name = name of the pass that corresponds to this HL command (not unique)
in = name of the input tensor
out = name of the output tensor
vela network.tflite --verbose-high-level-command-stream
Display two groups of information. The first group is the input to the register command stream generator. The second group is the output of the register command stream generator:
Input = an enumerated list of the High-Level commands that are the input to the generator. Each command details all of its attributes.
Output = a disassembly of the Ethos-U command stream (referred to as the register command stream). More information about the commands listed in the register command stream can be found in the Arm Ethos-U NPU Technical Reference Manuals that are available from the Arm Developer website (see README - Resources).
vela network.tflite --verbose-register-command-stream
Display a list of all operators in the neural network graph along with their attributes before any optimization is made by Vela.
vela network.tflite --verbose-operators
Displays the size of the Original and Ethos-U NPU Encoded weights as part of the final summary information. The original weights size refers to the size of the weights as read from the input .tflite
file. The NPU Encoded weights size refers to the total size of all of the weight tensors after they have been reordered, padded and encoded for the operators that run on the Ethos-U.
vela network.tflite --verbose-weights
This option displays progress information of the most time consuming parts of the compiler driver and scheduler.
vela network.tflite --verbose-progress
This is used to describe various properties of the Ethos-U embedded system. The configuration file is selected using the --config
CLI option along with a file that describes the properties. The format of the file is a Python ConfigParser .ini
file format consists of sections used to identify a configuration, and key/value pair options used to specify the properties. All sections and key/value pairs are case-sensitive.
There are two types of section, system configuration [System_Config.*]
sections and memory mode [Memory_Mode.*]
sections. A complete Ethos-U embedded system should define at least one entry in each section, where an entry is identified using the format [Part.Name]
(Part = {System_Config or Memory_Mode}, Name = {a string with no spaces}.). A configuration file may contain multiple entries per section, with the entries .Name
being used to select it using the --system-config
and --memory-mode
CLI options. If the CLI options are not specified then the sections named internal-default
are used. These are special sections which are defined internally and contain default values.
Each section contains a number of options which are described in more detail below. All options are optional. If they are not specified, then they will be assigned a value of 1 (or the equivalent). They will not be assigned the value of internal-default
.
One special option is the inherit
option. This can be used in any section and its value is the name of another section to inherit options from. The only restriction on this option is that recursion is not allowed and so it cannot reference its own section.
To see the configuration values being used by Vela use the --verbose_config
CLI option. This can also be used to display the internal-default values and to see a full list of all the available options.
An example Vela configuration file, called vela.ini
, is included in the ethosu/config_files/Arm
directory. Example usage based on this file is:
vela network.tflite --accelerator-config ethos-u55-256 --config Arm/vela.ini --system-config Ethos_U55_High_End_Embedded --memory-mode Shared_Sram
Hardware vendors and/or users may wish to contribute their own configuration files for various SoC platforms by adding a .ini file in an appropriate directory under the ethosu/config_files directory. This can be done by following the process outlined in CONTRIBUTIONS.md. These can then be accessed with --config <DirectoryName>/config.ini
as in the example above.
To use configuration files located outside the config_files directory, provide its absolute path to --config
. The --list-config-files
option can be used to view all available configuration files:
vela --list-config-files
The following is an in-line explanation of the Vela configuration file format:
; file: my_vela_cfg.ini ; ----------------------------------------------------------------------------- ; Vela configuration file ; ----------------------------------------------------------------------------- ; System Configuration ; My_Sys_Cfg [System_Config.My_Sys_Cfg] core_clock=??? ---> Clock frequency of the Ethos-U. ??? = {float in Hz} axi0_port=??? ---> Memory type connected to AXI0. ??? = {Sram, Dram, OnChipFlash or OffChipFlash} axi1_port=??? ---> Memory type connected to AXI1. ??? = {Sram, Dram, OnChipFlash or OffChipFlash} Sram_clock_scale=??? ---> Scaling of core_clock to specify the Sram bandwidth. Only required if selected by an AXI port. ??? = {float 0.0 to 1.0} Sram_burst_length=??? ---> Minimum efficient burst length in Sram. Only required if selected by an AXI port. ??? = {int in Bytes} Sram_read_latency=??? ---> Read latency in Sram. Only required if selected by an AXI port. ??? = {int in Cycles} Sram_write_latency=??? ---> Write latency in Sram. Only required if selected by an AXI port. ??? = {int in Cycles} Dram_clock_scale=??? ---> Scaling of core_clock to specify the Dram bandwidth. Only required if selected by an AXI port. ??? = {float 0.0 to 1.0} Dram_burst_length=??? ---> Minimum efficient burst length in Dram. Only required if selected by an AXI port. ??? = {int in Bytes} Dram_read_latency=??? ---> Read latency in Dram. Only required if selected by an AXI port. ??? = {int in Cycles} Dram_write_latency=??? ---> Write latency in Dram. Only required if selected by an AXI port. ??? = {int in Cycles} OnChipFlash_clock_scale=??? ---> Scaling of core_clock to specify the OnChipFlash bandwidth. Only required if selected by an AXI port. ??? = {float 0.0 to 1.0} OffChipFlash_clock_scale=??? ---> Scaling of core_clock to specify the OffChipFlash bandwidth. Only required if selected by an AXI port. ??? = {float 0.0 to 1.0} OffChipFlash_burst_length=??? ---> Minimum efficient burst length in OffChipFlash. Only required if selected by an AXI port. ??? = {int in Bytes} OffChipFlash_read_latency=??? ---> Read latency in OffChipFlash. Only required if selected by an AXI port. ??? = {int in Cycles} OffChipFlash_write_latency=??? ---> Write latency in OffChipFlash. Only required if selected by an AXI port. ??? = {int in Cycles} ; ----------------------------------------------------------------------------- ; Memory Mode ; My_Mem_Mode_Parent [Memory_Mode.My_Mem_Mode_Parent] const_mem_area=??? ---> AXI port used by the read-only data (e.g. weight tensors, scale & bias tensors). ??? = {Axi0, Axi1} arena_mem_area=??? ---> AXI port used by the read-write data (e.g. feature map tensors, internal buffers). ??? = {Axi0, Axi1} cache_mem_area=??? ---> AXI port used by the dedicated SRAM read-write (e.g. feature map part-tensors, internal buffers). ??? = {Axi0, Axi1} arena_cache_size=??? ---> Size of the arena/cache memory area. ??? = {int in Bytes} ; My_Mem_Mode_Child [Memory_Mode.My_Mem_Mode_Child] inherit=??? ---> Parent section to inherit from. An option in the child overwrites an identical option in the parent. ??? = {[Part.Name]} arena_cache_size=??? ---> Size of the arena/cache memory area. ??? = {int in Bytes}
The Vela configuration file defines three potential memory modes although other configurations are possible. Each memory mode is defined with respect to four attributes. If any of those attributes are not specified then an internal default value will be used. Note that this value may not be valid for the target embedded system. Therefore, the user is recommended to explicitly specify all settings.
The three memory area attributes are each assigned to a virtual AXI port. This assignment is used by the compiler to map a memory area to a specific memory type (as defined in the System Configuration section). It allows the System Configuration sections to be reused with different Memory Mode sections. It does not control the mapping of the physical AXI ports of the hardware, which are pre-determined in the compiler and driver.
const_mem_area
this is the memory area in which the compiler will store all constant data such as weights, scales & biases, and constant value tensors.arena_mem_area
this is the memory area in which the compiler will look to access the TensorFlow Lite for Microcontrollers Tensor Arena.cache_mem_area
this is the memory area in which the compiler uses as a cache memory if required by the selected memory modearena_cache_size
this is the size of the memory area available to the compiler for use by either the arena or cache depending upon the memory modePlease note that all of the above attributes must have values that correspond to the settings used by the Ethos-U Driver and the TensorFlow Lite for Microcontrollers Application. This is because the compiler does not have any direct control over these other components.
In this mode, the Embedded NPU only has access to SRAM memory. The compiler will make use of two regions in the SRAM, which may be separate or contiguous. One region is used for the const_mem_area
and the other region is used for the arena_mem_area
. It is assumed that SRAM outside of these regions will be used by other software in the system (e.g. TensorFlow Lite for Microcontrollers or an RTOS running on the Cortex-M CPU). The cache_mem_area
is not used. The arena_cache_size
refers to the size of the arena_mem_area
. The TensorFlow Lite for Microcontrollers Tensor Arena will contain all of the network input, output, and intermediate tensors, including the Ethos-U scratch tensor which contains the NPU's internal working buffers.
In this mode, the Embedded NPU has access to SRAM which is used for the arena_mem_area
. It also has access to some other type of memory (e.g. Flash or DRAM) that is used for the const_mem_area
. The cache_mem_area
is not used. The arena_cache_size
refers to the size of the arena_mem_area
. It is assumed that SRAM outside of the arena_mem_area
will be used by other software in the system (e.g. TensorFlow Lite for Microcontrollers or an RTOS running on the Cortex-M CPU). The TensorFlow Lite for Microcontrollers Tensor Arena will contain all of the network input, output, and intermediate tensors, including the Ethos-U scratch tensor which contains the NPU's internal working buffers.
In this mode, the Embedded NPU has access to SRAM which is used for the cache_mem_area
. It is assumed that use of this memory is entirely dedicated to the Embedded NPU, as no support is provided for allocating parts of this at run-time. It also has access to some other type of memory (e.g. DRAM). The compiler will make use of two regions in this other type of memory, which may be separate or contiguous. One region is used for the const_mem_area
and the other region is used for the arena_mem_area
. The arena_cache_size
refers to the size of the cache_mem_area
. It is assumed that memory outside of those regions will be used by other software in the system (e.g. TensorFlow Lite for Microcontrollers or an RTOS running on the Cortex-M CPU). The TensorFlow Lite for Microcontrollers Tensor Arena will contain all of the network input, output, and intermediate tensors, including the Ethos-U scratch tensor which contains the NPU's internal working buffers.