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rank_worker.cpp
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449 lines (385 loc) · 15.8 KB
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#include "rank_worker.hpp"
#include "../models/model_factory.hpp"
#include "infinicore/ops.hpp"
#include <iostream>
#include <spdlog/spdlog.h>
#include <stdexcept>
namespace infinilm::engine {
/**
* @deprecated This function is deprecated and will be REMOVED in the next major release (v0.2.0).
*
* ⚠️ DEVELOPMENT POLICY:
* - NO new development or feature additions permitted on this interface
* - Only critical bug fixes (security/stability) allowed until removal
* - All new code MUST migrate to the polymorphic overload below
*
* Replacement: Use the polymorphic overload of this same function name with updated signature
* Reason: Legacy signature lacks support for dynamic quantization modes.
* Removal target: v0.2.0 (Q2 2026)
*/
RankWorker::RankWorker(const InfinilmModel::Config &model_config,
const distributed::RankInfo &rank_info,
const cache::CacheConfig *cache_config,
RankBarrier *barrier,
bool enable_graph_compiling,
backends::AttentionBackend attention_backend)
: legacy_model_config_(model_config),
rank_info_(rank_info),
attention_backend_(attention_backend),
enable_graph_compiling_(enable_graph_compiling),
job_cmd_(Command::INIT),
has_job_(false),
job_done_(false),
should_exit_(false),
init_done_(false),
rng_(std::random_device{}()),
barrier_(barrier) {
if (cache_config != nullptr) {
pending_cache_config_ = cache_config->unique_copy();
}
// start the thread
thread_ = std::thread(&RankWorker::thread_loop, this);
// Wait until the worker thread finishes initialization (model created)
std::unique_lock<std::mutex> lk(mutex_);
cv_.wait(lk, [&] { return init_done_; });
}
RankWorker::RankWorker(
std::shared_ptr<infinilm::config::ModelConfig> model_config,
const distributed::RankInfo &rank_info,
const cache::CacheConfig *cache_config,
RankBarrier *barrier,
bool enable_graph_compiling,
backends::AttentionBackend attention_backend)
: model_config_(model_config),
rank_info_(rank_info),
attention_backend_(attention_backend),
enable_graph_compiling_(enable_graph_compiling),
job_cmd_(Command::INIT),
has_job_(false),
job_done_(false),
should_exit_(false),
init_done_(false),
rng_(std::random_device{}()),
barrier_(barrier) {
if (cache_config != nullptr) {
pending_cache_config_ = cache_config->unique_copy();
}
// start the thread
thread_ = std::thread(&RankWorker::thread_loop, this);
// Wait until the worker thread finishes initialization (model created)
std::unique_lock<std::mutex> lk(mutex_);
cv_.wait(lk, [&] { return init_done_; });
}
std::string RankWorker::info() const {
std::stringstream ss;
ss << "RankWorker{";
// Rank related
ss << rank_info_.to_string() << " ";
// Flags
ss << "| init_done: " << (init_done_ ? "true" : "false") << " ";
ss << "| should_exit: " << (should_exit_ ? "true" : "false") << " ";
ss << "| has_job: " << (has_job_ ? "true" : "false") << " ";
ss << "| job_done: " << (job_done_ ? "true" : "false") << " ";
ss << "}";
return ss.str();
}
//------------------------------------------------------
// load_param -- synchronous (blocks until worker finishes loading)
//------------------------------------------------------
void RankWorker::load_param(const std::string &name,
const infinicore::Tensor ¶m) {
{
std::lock_guard<std::mutex> lock(mutex_);
// If the worker is stopping, don't submit new jobs.
if (should_exit_) {
throw std::runtime_error("RankWorker is closing; cannot load_param");
}
pending_param_name_ = name;
pending_param_ = param;
job_cmd_ = Command::LOAD;
has_job_ = true;
job_done_ = false;
}
cv_.notify_all();
// Wait for job completion
std::unique_lock<std::mutex> lk(mutex_);
cv_.wait(lk, [&] { return job_done_ || should_exit_; });
if (should_exit_) {
throw std::runtime_error("RankWorker stopped while loading parameter");
}
}
//------------------------------------------------------
// state_dict --
//------------------------------------------------------
std::unordered_map<std::string, infinicore::nn::Parameter> RankWorker::state_dict() {
std::unique_lock<std::mutex> lk(mutex_);
cv_.wait(lk, [&] { return init_done_ || should_exit_; });
if (!model_) {
throw std::runtime_error("state_dict called before model initialization");
}
return model_->state_dict();
}
//------------------------------------------------------
// run -- asynchronous
//------------------------------------------------------
void RankWorker::run(const Input &args) {
std::lock_guard<std::mutex> lock(mutex_);
if (should_exit_) {
throw std::runtime_error("RankWorker is closing; cannot run");
}
pending_args_ = args;
job_cmd_ = Command::RUN;
has_job_ = true;
job_done_ = false;
cv_.notify_all();
}
//------------------------------------------------------
// compile -- asynchronous
//------------------------------------------------------
void RankWorker::compile() {
std::lock_guard<std::mutex> lock(mutex_);
if (should_exit_) {
throw std::runtime_error("RankWorker is closing; cannot run");
}
job_cmd_ = Command::COMPILE;
has_job_ = true;
job_done_ = false;
cv_.notify_all();
}
//------------------------------------------------------
// wait -- asynchronous
//------------------------------------------------------
void RankWorker::wait() {
std::unique_lock<std::mutex> lk(mutex_);
cv_.wait(lk, [&] { return job_done_ || should_exit_; });
if (should_exit_) {
throw std::runtime_error("RankWorker stopped during run");
}
}
void RankWorker::reset_cache(cache::CacheConfig *new_config) {
std::lock_guard<std::mutex> lock(mutex_);
if (should_exit_) {
throw std::runtime_error("RankWorker is closing; cannot reset_cache");
}
// Store both the position and the new config
pending_cache_config_ = new_config->unique_copy();
job_cmd_ = Command::RESET_CACHE;
has_job_ = true;
job_done_ = false;
cv_.notify_all();
}
//------------------------------------------------------
// close -- request shutdown and join thread
//------------------------------------------------------
void RankWorker::close() {
{
std::lock_guard<std::mutex> lock(mutex_);
should_exit_ = true;
has_job_ = false; // don't keep old jobs pending
job_cmd_ = Command::STOP;
}
cv_.notify_all();
if (thread_.joinable()) {
thread_.join();
}
}
//------------------------------------------------------
// get_output (thread safe)
//------------------------------------------------------
RankWorker::Output RankWorker::get_output() {
std::lock_guard<std::mutex> lock(mutex_);
return output_;
}
//------------------------------------------------------
// thread_loop
//------------------------------------------------------
void RankWorker::thread_loop() {
try {
{
std::lock_guard<std::mutex> lk(mutex_);
// Initialize device & model outside of holding the main mutex to avoid blocking callers.
infinicore::context::setDevice(rank_info_.device);
// Create model using factory (may be expensive)
if (model_config_ == nullptr) {
model_ = InfinilmModelFactory::createModel(
legacy_model_config_,
rank_info_,
pending_cache_config_ != nullptr ? pending_cache_config_.get() : nullptr,
attention_backend_);
} else {
model_ = InfinilmModelFactory::createModel(
model_config_,
rank_info_,
pending_cache_config_ != nullptr ? pending_cache_config_.get() : nullptr,
attention_backend_);
}
if (!model_) {
throw std::runtime_error("Failed to create model");
}
if (enable_graph_compiling_) {
compiler_ = std::make_unique<GeneralCompiler>(model_, barrier_);
}
init_done_ = true;
}
cv_.notify_all();
// Main loop: wait for jobs or exit
while (true) {
Command local_cmd = Command::INIT;
std::string local_param_name;
infinicore::Tensor local_param;
Input local_args;
std::unique_ptr<cache::CacheConfig> local_cache_config;
// Wait for a job or exit
{
std::unique_lock<std::mutex> lk(mutex_);
cv_.wait(lk, [&] { return has_job_ || should_exit_; });
if (should_exit_) {
break;
}
// capture job data and clear has_job_
local_cmd = job_cmd_;
if (local_cmd == Command::LOAD) {
local_param_name = pending_param_name_;
local_param = pending_param_;
} else if (local_cmd == Command::RUN) {
local_args = pending_args_;
} else if (local_cmd == Command::RESET_CACHE) {
if (pending_cache_config_ != nullptr) {
local_cache_config = pending_cache_config_->unique_copy();
}
}
// mark job as being processed
has_job_ = false;
job_done_ = false;
} // unlock mutex while executing the job
// Execute job outside the lock
if (local_cmd == Command::LOAD) {
try {
model_->load_parameter(local_param_name, local_param);
} catch (const std::exception &e) {
{
std::lock_guard<std::mutex> lk(mutex_);
should_exit_ = true;
job_done_ = true;
}
cv_.notify_all();
spdlog::error("[{}] exception during load_parameter_: {}\n", info(), e.what());
break;
}
// signal completion
{
std::lock_guard<std::mutex> lk(mutex_);
job_done_ = true;
}
cv_.notify_all();
} else if (local_cmd == Command::RUN) {
try {
{
std::lock_guard<std::mutex> lk(mutex_);
infinicore::Tensor logits;
// Try to get compiled graph
if (compiler_ != nullptr) {
auto [graph, output] = compiler_->get_compiled(local_args.to_model_input(infinicore::Device::cpu()));
if (graph != nullptr && output != nullptr) {
graph->run();
logits = output->logits;
}
}
// Fall back to eager mode
if (!logits) {
auto model_args = local_args.to_model_input(rank_info_.device);
logits = model_->forward(model_args).logits;
}
// Random sampling (rank 0 only)
if (rank_info_.tp_rank == 0) {
auto temperature{local_args.temperature};
auto top_p{local_args.top_p};
auto top_k{local_args.top_k};
const auto &logits_shape{logits->shape()};
const auto &vocab_size{logits_shape[2]};
const auto &total_len{logits_shape[1]};
const auto &batch_size{logits_shape[0]};
auto n_req = local_args.input_offsets.value()->size(0) - 1;
int32_t *input_offsets = (int32_t *)local_args.input_offsets.value()->data();
auto output_ids{infinicore::Tensor::empty({n_req}, infinicore::DataType::I64, rank_info_.device)};
for (auto i{decltype(n_req)(0)}; i < n_req; ++i) {
auto score{logits->view({batch_size * total_len, vocab_size})->narrow({{0, size_t(input_offsets[i + 1] - 1), 1}})->view({vocab_size})};
auto out{output_ids->narrow({{0, i, 1}})->view({})};
float random_val = std::uniform_real_distribution<float>(0, 1)(rng_);
infinicore::op::random_sample_(
out, score, random_val, top_p, top_k, temperature);
}
output_ids = output_ids->to(infinicore::Device::cpu());
infinicore::context::syncStream();
auto out{Output{output_ids}};
output_ = std::move(out);
}
job_done_ = true;
}
cv_.notify_all();
} catch (const std::exception &e) {
{
std::lock_guard<std::mutex> lk(mutex_);
should_exit_ = true;
job_done_ = true;
}
cv_.notify_all();
spdlog::error("[{}] exception during forward: {}\n", info(), e.what());
break;
}
} else if (local_cmd == Command::RESET_CACHE) {
try {
model_->reset_cache(local_cache_config != nullptr ? local_cache_config.get() : nullptr);
{
std::lock_guard<std::mutex> lk(mutex_);
job_done_ = true;
}
cv_.notify_all();
} catch (const std::exception &e) {
{
std::lock_guard<std::mutex> lk(mutex_);
should_exit_ = true;
job_done_ = true;
}
cv_.notify_all();
spdlog::error("[{}] exception during reset_cache: {}\n", info(), e.what());
break;
}
} else if (local_cmd == Command::COMPILE) {
try {
if (compiler_ != nullptr) {
compiler_->compile();
}
{
std::lock_guard<std::mutex> lk(mutex_);
job_done_ = true;
}
cv_.notify_all();
} catch (const std::exception &e) {
{
std::lock_guard<std::mutex> lk(mutex_);
should_exit_ = true;
job_done_ = true;
}
cv_.notify_all();
spdlog::error("[{}] exception during compile: {}\n", info(), e.what());
break;
}
} else {
// Shouldn't reach here (no-op)
}
} // while
// Some clean up should be done before exiting the thread
compiler_.reset();
} catch (const std::exception &e) {
// Top-level exception: ensure any waiters are woken and the thread exits cleanly.
{
std::lock_guard<std::mutex> lk(mutex_);
should_exit_ = true;
job_done_ = true;
}
cv_.notify_all();
spdlog::error("[{}] fatal exception in thread_loop: {} \n", info(), e.what());
}
}
} // namespace infinilm::engine