text-generation-inference/backends/trtllm/lib/backend.cpp
Funtowicz Morgan 43df056eee
[TENSORRT-LLM] - Implement new looper thread based backend (#2357)
* (backend) use parking_lot crate for RwLock fairness

# Conflicts:
#	backends/trtllm/src/backend.rs

* (launcher) default new server::run parameters to false for now

* (chore) fmt ... why?

* (ffi) use const for GetSamplingConfig

* (server) expose new SchedulingError

* (trt)

* (build) setup ccache if available

* (ffi) add max_new_tokens parameters

* (backend) cleanup a bit

* (backend) expose PullNewTokens

* (ffi) cleanup again

* (ffi) add missing headers imports

* (ffi) add template specialization to catch and convert to Rust Result<T, tensorrt_llm::common::TllmException>

* (looper) new looper initial implementation

* (ffi) remove narrowing type warning

* (ffi) encode the provided user prompt within each request thread

* (misc) change scope identifiers

* (backend) implement the post_processor background thread

* (misc) missing Result types for Rust

* use blocking_recv in looper to consume awaiting_requests at max before pulling in a single step

* (server) forward auth_token to server::run

* (build) fetchcontent use archives instead of git

* (ffi) fix usage of wrong vector constructor making a capacity fill call

* (ffi) missing namespace for tle::Response

* (ffi) do not use reference capture in lambda as we are not capturing anything

* (backend) refactor & cleanup

* (Dockerfile.trtllm) delete for now

* (misc) simplify [make_]move_iterator by using c++20 type inference

* (misc) no need to move for uint32_t items

* (scheduler) rework submit/pull logic

* (post) impl postprocessing

* (misc) delete backend.rs

* (misc) rerun-if-changed all the cmake modules

* (misc) move to latest trtllm

* (fix): HOPPER_SM_MAJOR is 9 not 8

* (misc: build for sm_{75,80,86,89,90} by default

* (misc): build with trtllm 0.13.0

* (misc): increase verbosity of spdlog

* (fix): do not recreate the stateful hashmap at every it

* (misc): update dependency in trtllm dockerfile

* (misc): update dependency in trtllm dockerfile

* (misc): disable logging in release mode

* (misc): improve trtllm download script robustness

* (fix): ore fixes for Dockerfile

* misc(cuda): require 12.6

* chore(cmake): use correct policy for download_timestamp

* feat(looper): check engine and executorWorker paths exist before creating the backend

* chore(cmake): download timestamp should be before URL

* feat(looper): minor optimizations to avoid growing too much the containers

* chore(trtllm): move dockerfile to right place

* chore(trtllm): disable tokenizer parallelism by default

* chore(trtllm): fmt

* chore(trtllm): post-rebase commit

* chore(trtllm): remove unused method

* feat(trtllm): cache maxNumTokens to avoid calling JSON everytime

* misc(router): remove SchedulingError

* feat(trtllm): do not tokenize twice

* Revert "chore(trtllm): remove unused method"

This reverts commit 31747163

* chore(rebase): fix invalid references

* chore(router): add python dependency

* Lint.

* Fix bad rebase

---------

Co-authored-by: Nicolas Patry <patry.nicolas@protonmail.com>
2024-10-25 07:17:14 +02:00

151 lines
5.6 KiB
C++

#include <cstdlib>
#include <fstream>
#include <fmt/ranges.h>
#include <spdlog/spdlog.h>
#include <nvml.h>
#include "backend.h"
#include "hardware.h"
void huggingface::tgi::backends::InitializeBackend() {
if (const auto TRTLLM_LOG_LEVEL_CSTR = std::getenv("TRTLLM_LOG_LEVEL")) {
std::string log_level(TRTLLM_LOG_LEVEL_CSTR);
std::transform(log_level.begin(), log_level.end(), log_level.begin(), [](unsigned char c) {
return std::tolower(c);
});
if (log_level == "debug")
spdlog::set_level(spdlog::level::debug);
else
spdlog::set_level(spdlog::level::info);
}
SPDLOG_INFO("Initializing Backend...");
nvmlInit_v2();
initTrtLlmPlugins();
SPDLOG_INFO("Backend Executor Version: {}", tle::version());
const auto numGpus = huggingface::hardware::cuda::GetNumDevices();
if (numGpus.has_value()) {
SPDLOG_INFO("Detected {:d} Nvidia GPU(s)", numGpus.value());
} else {
SPDLOG_WARN("Failed to detected Nvidia GPU(s) on the system");
}
}
[[nodiscard]]
tle::ExecutorConfig huggingface::tgi::backends::GetExecutorConfig(const json &config, const std::string &workerPath) {
tle::ExecutorConfig execConfig(/* maxBeamWidth = */ 1);
// Retrieve the compute capabilities to enable some options at runtime
const auto computeCapabilities = huggingface::hardware::cuda::GetCudaComputeCapabilities();
// Single engine (TP = PP = 1) -> using leader mode (no MPI involved)
if (config["/pretrained_config/mapping/world_size"_json_pointer].get<uint8_t>() == 1) {
SPDLOG_INFO("Detected single engine deployment, using leader mode");
execConfig.setParallelConfig(tle::ParallelConfig(
tle::CommunicationType::kMPI,
tle::CommunicationMode::kLEADER,
std::nullopt,
std::nullopt,
std::nullopt
));
} else { // Multiple engines -> using orchestrator mode (MPI involved)
SPDLOG_INFO("Detected sharded engine deployment, using orchestrator mode");
execConfig.setParallelConfig(tle::ParallelConfig(
tle::CommunicationType::kMPI,
tle::CommunicationMode::kORCHESTRATOR,
std::nullopt,
std::nullopt,
tle::OrchestratorConfig(true, workerPath, nullptr, true)
));
}
// Define some configuration variables
execConfig.setKvCacheConfig(tle::KvCacheConfig(true));
execConfig.setEnableChunkedContext(computeCapabilities.isPostAmpere());
return execConfig;
}
tle::SamplingConfig huggingface::tgi::backends::GetSamplingConfig(
const uint32_t topK,
const float_t topP,
const float_t temperature,
const float_t repetition_penalty,
const float_t frequency_penalty,
const uint64_t seed) noexcept {
return tle::SamplingConfig(
1, // TGI only use a single beam
topK,
topP,
std::nullopt,
std::nullopt,
std::nullopt,
seed,
temperature,
temperature,
std::nullopt,
repetition_penalty,
std::nullopt,
frequency_penalty
);
}
huggingface::tgi::backends::TensorRtLlmBackend::TensorRtLlmBackend(
const std::filesystem::path &enginesFolder,
const std::filesystem::path &executorWorker
) :
config(json::parse(std::ifstream(enginesFolder / "config.json"))),
executor(enginesFolder, tensorrt_llm::executor::ModelType::kDECODER_ONLY,
GetExecutorConfig(config, executorWorker.string())) {
SPDLOG_INFO(FMT_STRING("Engine (version={})"), config["/version"_json_pointer].get_ref<const std::string &>());
// Cache variables
maxNumTokens = config["/build_config/max_num_tokens"_json_pointer].get<uint32_t>();
}
[[nodiscard("Returned number of requests needs to be consumed")]]
size_t huggingface::tgi::backends::TensorRtLlmBackend::NumResponsesReady() const {
const auto numResponses = executor.getNumResponsesReady();
#ifndef NDEBUG
if(numResponses > 0) SPDLOG_INFO(FMT_STRING("Num responses ready: {:d}"), numResponses);
#endif
return numResponses;
}
[[nodiscard("Returned request id needs to be provided back to gather generated tokens")]]
tle::IdType huggingface::tgi::backends::TensorRtLlmBackend::Submit(
const std::vector<tle::TokenIdType> &tokens,
const uint32_t maxNewTokens,
const int32_t topK,
const float_t topP,
const float_t temperature,
const float_t repetition_penalty,
const float_t frequency_penalty,
const uint64_t seed
) {
const auto maxNewTokensChecked = std::min(maxNewTokens, static_cast<uint32_t>(maxNumTokens - tokens.size()));
#ifndef NDEBUG
{
const auto &iterations = executor.getLatestIterationStats();
const auto &lastIteration = iterations.front();
SPDLOG_DEBUG(FMT_EXECUTOR_STATS, fmt::join(tokens, ", "), lastIteration.numActiveRequests);
SPDLOG_DEBUG(FMT_SAMPLING_CONFIG, topK, topP, temperature, repetition_penalty, frequency_penalty, seed);
SPDLOG_DEBUG(FMT_STRING("Asking for max_new_tokens={:d}"), maxNewTokensChecked);
}
#endif
const auto sampling = GetSamplingConfig(topK, topP, temperature, repetition_penalty, frequency_penalty, seed);
const auto maxNewTokensChecked_ = static_cast<tle::SizeType32>(maxNewTokensChecked);
return executor.enqueueRequest(tle::Request{tokens, maxNewTokensChecked_, true, sampling, OUTPUT_CONFIG});
}
std::vector<tle::Response> huggingface::tgi::backends::TensorRtLlmBackend::PullNewTokens() {
return executor.awaitResponses();
}