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common.h
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// Copyright 2020-2023, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
//
// Redistribution and use in source and binary forms, with or without
// modification, are permitted provided that the following conditions
// are met:
// * Redistributions of source code must retain the above copyright
// notice, this list of conditions and the following disclaimer.
// * Redistributions in binary form must reproduce the above copyright
// notice, this list of conditions and the following disclaimer in the
// documentation and/or other materials provided with the distribution.
// * Neither the name of NVIDIA CORPORATION nor the names of its
// contributors may be used to endorse or promote products derived
// from this software without specific prior written permission.
//
// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS ``AS IS'' AND ANY
// EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
// IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR
// PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR
// CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL,
// EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO,
// PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR
// PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY
// OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
// (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
// OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
#pragma once
#include <algorithm>
#include <chrono>
#include <condition_variable>
#include <cstring>
#include <functional>
#include <iostream>
#include <list>
#include <memory>
#include <mutex>
#include <string>
#include <thread>
#include <unordered_map>
#include <vector>
#ifdef TRITON_INFERENCE_SERVER_CLIENT_CLASS
namespace triton { namespace perfanalyzer { namespace clientbackend {
namespace tritoncapi {
class TritonLoader;
}}}} // namespace triton::perfanalyzer::clientbackend::tritoncapi
#endif
namespace triton { namespace client {
constexpr char kInferHeaderContentLengthHTTPHeader[] =
"Inference-Header-Content-Length";
constexpr int MAX_GRPC_MESSAGE_SIZE = INT32_MAX;
class InferResult;
class InferRequest;
class RequestTimers;
//==============================================================================
/// Error status reported by client API.
///
class Error {
public:
/// Create an error with the specified message.
/// \param msg The message for the error
explicit Error(const std::string& msg = "");
/// Accessor for the message of this error.
/// \return The message for the error. Empty if no error.
const std::string& Message() const { return msg_; }
/// Does this error indicate OK status?
/// \return True if this error indicates "ok"/"success", false if
/// error indicates a failure.
bool IsOk() const { return msg_.empty(); }
/// Convenience "success" value. Can be used as Error::Success to
/// indicate no error.
static const Error Success;
private:
friend std::ostream& operator<<(std::ostream&, const Error&);
std::string msg_;
};
//==============================================================================
/// Cumulative inference statistics.
///
/// \note
/// For GRPC protocol, 'cumulative_send_time_ns' represents the
/// time for marshaling infer request.
/// 'cumulative_receive_time_ns' represents the time for
/// unmarshaling infer response.
struct InferStat {
/// Total number of requests completed.
size_t completed_request_count;
/// Time from the request start until the response is completely
/// received.
uint64_t cumulative_total_request_time_ns;
/// Time from the request start until the last byte is sent.
uint64_t cumulative_send_time_ns;
/// Time from receiving first byte of the response until the
/// response is completely received.
uint64_t cumulative_receive_time_ns;
/// Create a new InferStat object with zero-ed statistics.
InferStat()
: completed_request_count(0), cumulative_total_request_time_ns(0),
cumulative_send_time_ns(0), cumulative_receive_time_ns(0)
{
}
};
//==============================================================================
/// The base class for InferenceServerClients
///
class InferenceServerClient {
public:
using OnCompleteFn = std::function<void(InferResult*)>;
using OnMultiCompleteFn = std::function<void(std::vector<InferResult*>)>;
explicit InferenceServerClient(bool verbose)
: verbose_(verbose), exiting_(false)
{
}
virtual ~InferenceServerClient() = default;
/// Obtain the cumulative inference statistics of the client.
/// \param Returns the InferStat object holding current statistics.
/// \return Error object indicating success or failure.
Error ClientInferStat(InferStat* infer_stat) const;
protected:
// Update the infer stat with the given timer
Error UpdateInferStat(const RequestTimers& timer);
// Enables verbose operation in the client.
bool verbose_;
// worker thread that will perform the asynchronous transfer
std::thread worker_;
// Avoid race condition between main thread and worker thread
std::mutex mutex_;
// Condition variable used for waiting on asynchronous request
std::condition_variable cv_;
// signal for worker thread to stop
bool exiting_;
// The inference statistic of the current client
InferStat infer_stat_;
};
struct RequestParameter {
std::string name;
std::string value;
std::string type;
};
//==============================================================================
/// Structure to hold options for Inference Request.
///
struct InferOptions {
explicit InferOptions(const std::string& model_name)
: model_name_(model_name), model_version_(""), request_id_(""),
sequence_id_(0), sequence_id_str_(""), sequence_start_(false),
sequence_end_(false), priority_(0), server_timeout_(0),
client_timeout_(0), triton_enable_empty_final_response_(false)
{
}
/// The name of the model to run inference.
std::string model_name_;
/// The version of the model to use while running inference. The default
/// value is an empty string which means the server will select the
/// version of the model based on its internal policy.
std::string model_version_;
/// An identifier for the request. If specified will be returned
/// in the response. Default value is an empty string which means no
/// request_id will be used.
std::string request_id_;
/// The unique identifier for the sequence being represented by the
/// object. Default value is 0 which means that the request does not
/// belong to a sequence. If this value is non-zero, then sequence_id_str_
/// MUST be set to "".
uint64_t sequence_id_;
/// The unique identifier for the sequence being represented by the
/// object. Default value is "" which means that the request does not
/// belong to a sequence. If this value is non-empty, then sequence_id_
/// MUST be set to 0.
std::string sequence_id_str_;
/// Indicates whether the request being added marks the start of the
/// sequence. Default value is False. This argument is ignored if
/// 'sequence_id' is 0.
bool sequence_start_;
/// Indicates whether the request being added marks the end of the
/// sequence. Default value is False. This argument is ignored if
/// 'sequence_id' is 0.
bool sequence_end_;
/// Indicates the priority of the request. Priority value zero
/// indicates that the default priority level should be used
/// (i.e. same behavior as not specifying the priority parameter).
/// Lower value priorities indicate higher priority levels. Thus
/// the highest priority level is indicated by setting the parameter
/// to 1, the next highest is 2, etc. If not provided, the server
/// will handle the request using default setting for the model.
uint64_t priority_;
/// The timeout value for the request, in microseconds. If the request
/// cannot be completed within the time by the server. The server can take a
/// model-specific action such as terminating the request. If not
/// provided, the server will handle the request using default setting
/// for the model. This option is only respected by the model that is
/// configured with dynamic batching. See here for more details:
/// https://github.com/triton-inference-server/server/blob/main/docs/user_guide/model_configuration.md#dynamic-batcher
uint64_t server_timeout_;
// The maximum end-to-end time, in microseconds, the request is allowed
// to take. The client will abort request when the specified time elapses.
// The request will return error with message "Deadline Exceeded".
// The default value is 0 which means client will wait for the
// response from the server. This option is not supported for streaming
// requests. Instead see 'stream_timeout' argument in
// InferenceServerGrpcClient::StartStream().
// NOTE: the HTTP client library only offers millisecond precision, so a
// timeout < 1000 microseconds will be rounded down to 0 milliseconds and have
// no effect.
uint64_t client_timeout_;
/// Whether to tell Triton to enable an empty final response.
bool triton_enable_empty_final_response_;
/// Additional parameters to pass to the model
std::unordered_map<std::string, RequestParameter> request_parameters;
};
//==============================================================================
/// An interface for InferInput object to describe the model input for
/// inference.
///
class InferInput {
public:
/// Create a InferInput instance that describes a model input.
/// \param infer_input Returns a new InferInput object.
/// \param name The name of input whose data will be described by this object.
/// \param dims The shape of the input.
/// \param datatype The datatype of the input.
/// \return Error object indicating success or failure.
static Error Create(
InferInput** infer_input, const std::string& name,
const std::vector<int64_t>& dims, const std::string& datatype);
/// Gets name of the associated input tensor.
/// \return The name of the tensor.
const std::string& Name() const { return name_; }
/// Gets datatype of the associated input tensor.
/// \return The datatype of the tensor.
const std::string& Datatype() const { return datatype_; }
/// Gets the shape of the input tensor.
/// \return The shape of the tensor.
const std::vector<int64_t>& Shape() const { return shape_; }
/// Set the shape of input associated with this object.
/// \param dims the vector of dims representing the new shape
/// of input.
/// \return Error object indicating success or failure of the
/// request.
Error SetShape(const std::vector<int64_t>& dims);
/// Prepare this input to receive new tensor values. Forget any
/// existing values that were set by previous calls to SetSharedMemory()
/// or AppendRaw().
/// \return Error object indicating success or failure.
Error Reset();
/// Append tensor values for this input from a byte vector. The vector
/// is not copied and so it must not be modified or destroyed
/// until this input is no longer needed (that is until the Infer()
/// call(s) that use the input have completed). Multiple calls can
/// be made to this API to keep adding tensor data for this input.
/// The data will be delivered in the order it was added.
/// \param input The vector holding tensor values.
/// \return Error object indicating success or failure.
Error AppendRaw(const std::vector<uint8_t>& input);
/// Append tensor values for this input from a byte array. The array
/// is not copied and so it must not be modified or destroyed
/// until this input is no longer needed (that is until the Infer()
/// call(s) that use the input have completed). Multiple calls can
/// be made to this API to keep adding tensor data for this input.
/// The data will be delivered in the order it was added.
/// \param input The pointer to the array holding the tensor value.
/// \param input_byte_size The size of the array in bytes.
/// \return Error object indicating success or failure.
Error AppendRaw(const uint8_t* input, size_t input_byte_size);
/// Set tensor values for this input by reference into a shared memory
/// region. The values are not copied and so the shared memory region and
/// its contents must not be modified or destroyed until this input is no
/// longer needed (that is until the Infer() call(s) that use the input have
/// completed. This function must be called a single time for an input that
/// is using shared memory. The entire tensor data required by this input
/// must be contiguous in a single shared memory region.
/// \param name The user-given name for the registered shared memory region
/// where the tensor values for this input is stored.
/// \param byte_size The size, in bytes of the input tensor data. Must
/// match the size expected for the input shape.
/// \param offset The offset into the shared memory region upto the start
/// of the input tensor values. The default value is 0.
/// \return Error object indicating success or failure
Error SetSharedMemory(
const std::string& name, size_t byte_size, size_t offset = 0);
/// \return true if this input is being provided in shared memory.
bool IsSharedMemory() const { return (io_type_ == SHARED_MEMORY); }
/// Get information about the shared memory being used for this
/// input.
/// \param name Returns the name of the shared memory region.
/// \param byte_size Returns the size, in bytes, of the shared
/// memory region.
/// \param offset Returns the offset within the shared memory
/// region.
/// \return Error object indicating success or failure.
Error SharedMemoryInfo(
std::string* name, size_t* byte_size, size_t* offset) const;
/// Append tensor values for this input from a vector or
/// strings. This method can only be used for tensors with BYTES
/// data-type. The strings are assigned in row-major order to the
/// elements of the tensor. The strings are copied and so the
/// 'input' does not need to be preserved as with AppendRaw(). Multiple
/// calls can be made to this API to keep adding tensor data for
/// this input. The data will be delivered in the order it was added.
/// \param input The vector holding tensor string values.
/// \return Error object indicating success or failure.
Error AppendFromString(const std::vector<std::string>& input);
/// Get access to the buffer holding raw input. Note the buffer is owned by
/// InferInput instance. Users can copy out the data if required to extend
/// the lifetime.
/// \param buf Returns the pointer to the start of the buffer.
/// \param byte_size Returns the size of buffer in bytes.
/// \return Error object indicating success or failure of the
/// request.
Error RawData(const uint8_t** buf, size_t* byte_size);
/// Gets the size of data added into this input in bytes.
/// \param byte_size The size of data added in bytes.
/// \return Error object indicating success or failure.
Error ByteSize(size_t* byte_size) const;
/// \return true if this input should be sent in binary format.
bool BinaryData() const { return binary_data_; }
/// \return Error object indicating success or failure.
Error SetBinaryData(const bool binary_data);
private:
#ifdef TRITON_INFERENCE_SERVER_CLIENT_CLASS
friend class TRITON_INFERENCE_SERVER_CLIENT_CLASS;
#endif
friend class HttpInferRequest;
InferInput(
const std::string& name, const std::vector<int64_t>& dims,
const std::string& datatype);
Error PrepareForRequest();
Error GetNext(
uint8_t* buf, size_t size, size_t* input_bytes, bool* end_of_input);
Error GetNext(const uint8_t** buf, size_t* input_bytes, bool* end_of_input);
std::string name_;
std::vector<int64_t> shape_;
std::string datatype_;
size_t byte_size_;
size_t bufs_idx_, buf_pos_;
std::vector<const uint8_t*> bufs_;
std::vector<size_t> buf_byte_sizes_;
// Used only for STRING type tensors set with SetFromString(). Hold
// the "raw" serialization of the string values for each index
// that are then referenced by 'bufs_'. A std::list is used to avoid
// reallocs that could invalidate the pointer references into the
// std::string objects.
std::list<std::string> str_bufs_;
// Used only if working with Shared Memory
enum IOType { NONE, RAW, SHARED_MEMORY };
IOType io_type_;
std::string shm_name_;
size_t shm_offset_;
bool binary_data_{true};
};
//==============================================================================
/// An InferRequestedOutput object is used to describe the requested model
/// output for inference.
///
class InferRequestedOutput {
public:
/// Create a InferRequestedOutput instance that describes a model output being
/// requested.
/// \param infer_output Returns a new InferOutputGrpc object.
/// \param name The name of output being requested.
/// \param class_count The number of classifications to be requested. The
/// default value is 0 which means the classification results are not
/// requested.
/// \return Error object indicating success or failure.
static Error Create(
InferRequestedOutput** infer_output, const std::string& name,
const size_t class_count = 0, const std::string& datatype = "");
/// Gets name of the associated output tensor.
/// \return The name of the tensor.
const std::string& Name() const { return name_; }
/// Get the number of classifications requested for this output, or
/// 0 if the output is not being returned as classifications.
size_t ClassificationCount() const { return class_count_; }
/// Set the output tensor data to be written to specified shared
/// memory region.
/// \param region_name The name of the shared memory region.
/// \param byte_size The size of data in bytes.
/// \param offset The offset in shared memory region. Default value is 0.
/// \return Error object indicating success or failure of the
/// request.
Error SetSharedMemory(
const std::string& region_name, const size_t byte_size,
const size_t offset = 0);
/// Clears the shared memory option set by the last call to
/// InferRequestedOutput::SetSharedMemory(). After call to this
/// function requested output will no longer be returned in a
/// shared memory region.
/// \return Error object indicating success or failure of the
/// request.
Error UnsetSharedMemory();
/// \return true if this output is being returned in shared memory.
bool IsSharedMemory() const { return (io_type_ == SHARED_MEMORY); }
/// Get information about the shared memory being used for this
/// output.
/// \param name Returns the name of the shared memory region.
/// \param byte_size Returns the size, in bytes, of the shared
/// memory region.
/// \param offset Returns the offset within the shared memory
/// region.
/// \return Error object indicating success or failure.
Error SharedMemoryInfo(
std::string* name, size_t* byte_size, size_t* offset) const;
/// \return true if this output should be received in binary format.
bool BinaryData() const { return binary_data_; }
/// \return Error object indicating success or failure.
Error SetBinaryData(const bool binary_data);
private:
#ifdef TRITON_INFERENCE_SERVER_CLIENT_CLASS
friend class TRITON_INFERENCE_SERVER_CLIENT_CLASS;
#endif
explicit InferRequestedOutput(
const std::string& name, const std::string& datatype,
const size_t class_count = 0);
std::string name_;
std::string datatype_;
size_t class_count_;
// Used only if working with Shared Memory
enum IOType { NONE, RAW, SHARED_MEMORY };
IOType io_type_;
std::string shm_name_;
size_t shm_byte_size_;
size_t shm_offset_;
bool binary_data_{true};
};
//==============================================================================
/// An interface for InferResult object to interpret the response to an
/// inference request.
///
class InferResult {
public:
virtual ~InferResult() = default;
/// Get the name of the model which generated this response.
/// \param name Returns the name of the model.
/// \return Error object indicating success or failure.
virtual Error ModelName(std::string* name) const = 0;
/// Get the version of the model which generated this response.
/// \param version Returns the version of the model.
/// \return Error object indicating success or failure.
virtual Error ModelVersion(std::string* version) const = 0;
/// Get the id of the request which generated this response.
/// \param version Returns the version of the model.
/// \return Error object indicating success or failure.
virtual Error Id(std::string* id) const = 0;
/// Get the shape of output result returned in the response.
/// \param output_name The name of the output to get shape.
/// \param shape Returns the shape of result for specified output name.
/// \return Error object indicating success or failure.
virtual Error Shape(
const std::string& output_name, std::vector<int64_t>* shape) const = 0;
/// Get the datatype of output result returned in the response.
/// \param output_name The name of the output to get datatype.
/// \param shape Returns the datatype of result for specified output name.
/// \return Error object indicating success or failure.
virtual Error Datatype(
const std::string& output_name, std::string* datatype) const = 0;
/// Get access to the buffer holding raw results of specified output
/// returned by the server. Note the buffer is owned by InferResult
/// instance. Users can copy out the data if required to extend the
/// lifetime.
/// \param output_name The name of the output to get result data.
/// \param buf Returns the pointer to the start of the buffer.
/// \param byte_size Returns the size of buffer in bytes.
/// \return Error object indicating success or failure of the
/// request.
virtual Error RawData(
const std::string& output_name, const uint8_t** buf,
size_t* byte_size) const = 0;
/// Get final response bool for this response.
/// \return Error object indicating the success or failure.
virtual Error IsFinalResponse(bool* is_final_response) const = 0;
/// Get null response bool for this response.
/// \return Error object indicating the success or failure.
virtual Error IsNullResponse(bool* is_null_response) const = 0;
/// Get the result data as a vector of strings. The vector will
/// receive a copy of result data. An error will be generated if
/// the datatype of output is not 'BYTES'.
/// \param output_name The name of the output to get result data.
/// \param string_result Returns the result data represented as
/// a vector of strings. The strings are stored in the
/// row-major order.
/// \return Error object indicating success or failure of the
/// request.
virtual Error StringData(
const std::string& output_name,
std::vector<std::string>* string_result) const = 0;
/// Returns the complete response as a user friendly string.
/// \return The string describing the complete response.
virtual std::string DebugString() const = 0;
/// Returns the status of the request.
/// \return Error object indicating the success or failure of the
/// request.
virtual Error RequestStatus() const = 0;
};
//==============================================================================
/// Records timestamps for different stages of request handling.
///
class RequestTimers {
public:
/// Timestamp kinds.
enum class Kind {
/// The start of request handling.
REQUEST_START,
/// The end of request handling.
REQUEST_END,
/// The start of sending request bytes to the server (i.e. first
/// byte).
SEND_START,
/// The end of sending request bytes to the server (i.e. last
/// byte).
SEND_END,
/// The start of receiving response bytes from the server
/// (i.e. first byte).
RECV_START,
/// The end of receiving response bytes from the server (i.e. last
/// byte).
RECV_END,
COUNT__
};
/// Construct a timer with zero-ed timestamps.
RequestTimers() : timestamps_((size_t)Kind::COUNT__) { Reset(); }
/// Reset all timestamp values to zero. Must be called before
/// re-using the timer.
void Reset()
{
memset(×tamps_[0], 0, sizeof(uint64_t) * timestamps_.size());
}
/// Get the timestamp, in nanoseconds, for a kind.
/// \param kind The timestamp kind.
/// \return The timestamp in nanoseconds.
uint64_t Timestamp(Kind kind) const { return timestamps_[(size_t)kind]; }
/// Set a timestamp to the current time, in nanoseconds.
/// \param kind The timestamp kind.
/// \return The timestamp in nanoseconds.
uint64_t CaptureTimestamp(Kind kind)
{
uint64_t& ts = timestamps_[(size_t)kind];
ts = std::chrono::duration_cast<std::chrono::nanoseconds>(
std::chrono::high_resolution_clock::now().time_since_epoch())
.count();
return ts;
}
/// Return the duration between start time point and end timepoint
/// in nanosecond.
/// \param start The start time point.
/// \param end The end time point.
/// \return Duration in nanosecond, or
/// std::numeric_limits<uint64_t>::max to indicate that duration
/// could not be calculated.
uint64_t Duration(Kind start, Kind end) const
{
const uint64_t stime = timestamps_[(size_t)start];
const uint64_t etime = timestamps_[(size_t)end];
// If the start or end timestamp is 0 then can't calculate the
// duration, so return max to indicate error.
if ((stime == 0) || (etime == 0)) {
return (std::numeric_limits<uint64_t>::max)();
}
return (stime > etime) ? (std::numeric_limits<uint64_t>::max)()
: etime - stime;
}
private:
std::vector<uint64_t> timestamps_;
};
//==============================================================================
/// The base class to describe an inflight inference request.
///
class InferRequest {
public:
InferRequest(
InferenceServerClient::OnCompleteFn callback = nullptr,
const bool verbose = false)
: callback_(callback), verbose_(verbose)
{
}
virtual ~InferRequest() = default;
RequestTimers& Timer() { return timer_; }
protected:
InferenceServerClient::OnCompleteFn callback_;
const bool verbose_;
private:
// The timers for infer request.
RequestTimers timer_;
};
}} // namespace triton::client