mirror of
https://github.com/ggerganov/llama.cpp.git
synced 2024-11-14 14:59:52 +00:00
4760e7cc0b
* sync : ggml (backend v2) (wip) * sync : migrate examples and llama.cpp to dynamic graphs (wip) * sync : update tests + fix max op params to 64 ggml-ci * sync : ggml-cuda ggml-ci * llama : fix save/load state context size ggml-ci * sync : try to fix build on tvOS * sync : pass custom graph sizes in training examples * sync : update graph copies to new ggml API * sync : update sync-ggml.sh with new files * scripts : fix header in sync script * train : fix context size calculations * llama : increase inference graph size up to 4096 nodes * train : allocate grads for backward graphs * train : allocate grads for gb_tmp
234 lines
7.7 KiB
C++
234 lines
7.7 KiB
C++
// Various helper functions and utilities for training
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#pragma once
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#include <string>
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#include <random>
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#include <vector>
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#include "ggml.h"
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#include "llama.h"
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#define LLAMA_TRAIN_MAX_NODES 16384
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typedef std::string mt19937_state;
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struct train_state {
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struct ggml_opt_context * opt;
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uint64_t train_its;
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uint64_t train_samples;
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uint64_t train_tokens;
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uint64_t train_epochs;
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size_t shuffle_samples_hash; // fn, sample_count, *zip(sample_begins, sample_sizes)
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mt19937_state shuffle_rng_state_current;
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mt19937_state shuffle_rng_state_next;
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size_t shuffle_sample_count;
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size_t shuffle_next_sample;
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};
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struct train_params_common {
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const char * fn_train_data;
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const char * fn_checkpoint_in;
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const char * fn_checkpoint_out;
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const char * pattern_fn_it;
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const char * fn_latest;
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bool print_usage;
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int save_every;
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uint32_t seed;
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int n_ctx;
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int n_threads;
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int n_batch;
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int n_gradient_accumulation;
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int n_epochs;
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int n_gpu_layers;
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bool custom_n_ctx;
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bool use_flash;
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bool use_checkpointing;
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std::string sample_start;
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bool include_sample_start;
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bool escape;
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bool overlapping_samples;
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bool fill_with_next_samples;
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bool separate_with_eos;
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bool separate_with_bos;
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bool sample_random_offsets;
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bool force_reshuffle;
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int warmup;
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int cos_decay_steps;
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float cos_decay_restart;
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float cos_decay_min;
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bool enable_restart;
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int opt_past;
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float opt_delta;
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int opt_max_no_improvement;
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int adam_n_iter;
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float adam_alpha;
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float adam_min_alpha;
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float adam_decay;
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int adam_decay_min_ndim;
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float adam_beta1;
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float adam_beta2;
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float adam_gclip;
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float adam_eps_f;
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};
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typedef void (*save_train_files_callback)(void * data, struct train_state * train);
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struct train_opt_callback_data {
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struct train_params_common * params;
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struct train_state * train;
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save_train_files_callback save_cb;
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void * save_data;
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struct llama_context * lctx;
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int last_save_iter;
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llama_token * tokens_data;
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size_t tokens_size;
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size_t * samples_begin;
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size_t * samples_size;
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size_t * shuffled_samples_offs;
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size_t * shuffled_samples_begin;
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size_t * shuffled_samples_size;
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size_t samples_count;
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struct ggml_tensor * tokens_input;
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struct ggml_tensor * target_probs;
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int first_iter;
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int first_epoch;
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int iter_at_last_epoch;
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int64_t last_time;
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double millis_per_iter;
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};
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struct train_state * init_train_state();
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void free_train_state(struct train_state * state);
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struct train_params_common get_default_train_params_common();
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void print_common_train_usage(int /*argc*/, char ** argv, const struct train_params_common * params);
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bool consume_common_train_arg(int argc, char ** argv, int * idx, struct train_params_common * params, bool * invalid_param);
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void finish_processing_train_args(struct train_params_common * params);
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struct random_normal_distribution;
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struct random_uniform_distribution;
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struct random_normal_distribution * init_random_normal_distribution (int seed, float mean, float std, float min, float max);
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struct random_uniform_distribution * init_random_uniform_distribution(int seed, float min, float max);
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void free_random_normal_distribution (struct random_normal_distribution * rnd);
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void free_random_uniform_distribution(struct random_uniform_distribution * rnd);
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struct ggml_tensor * randomize_tensor_normal (struct ggml_tensor * tensor, struct random_normal_distribution * rnd);
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struct ggml_tensor * randomize_tensor_uniform(struct ggml_tensor * tensor, struct random_uniform_distribution * rnd);
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// generate random float in interval [0,1)
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float frand();
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float frand_normal (struct random_normal_distribution * rnd);
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float frand_uniform(struct random_uniform_distribution * rnd);
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int clamp (const int v, const int min, const int max);
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float fclamp(const float v, const float min, const float max);
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void assert_shape_1d(struct ggml_tensor * tensor, int64_t ne0);
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void assert_shape_2d(struct ggml_tensor * tensor, int64_t ne0, int64_t ne1);
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void assert_shape_3d(struct ggml_tensor * tensor, int64_t ne0, int64_t ne1, int64_t ne2);
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void assert_shape_4d(struct ggml_tensor * tensor, int64_t ne0, int64_t ne1, int64_t ne2, int64_t ne3);
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size_t tokenize_file(
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struct llama_context * lctx,
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const char * filename,
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const std::string & sample_start,
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bool include_sample_start,
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bool overlapping_samples,
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unsigned context_length,
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std::vector<llama_token> & out_tokens,
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std::vector<size_t> & out_samples_begin,
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std::vector<size_t> & out_samples_size);
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int64_t get_example_targets_batch(
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struct llama_context * lctx,
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struct ggml_tensor * tokens_input,
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struct ggml_tensor * target_probs,
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int64_t example_id,
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const size_t * samples_offs,
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const size_t * samples_begin,
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const size_t * samples_size,
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size_t samples_count,
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const llama_token * train_data,
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size_t n_train_data,
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bool separate_with_eos,
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bool separate_with_bos,
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bool fill_with_next_samples,
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bool sample_random_offsets);
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void mt19937_set_state(std::mt19937& rng, const mt19937_state& rng_state);
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mt19937_state mt19937_get_state(const std::mt19937& rng);
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mt19937_state mt19937_seed_to_state(unsigned seed);
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mt19937_state shuffle_samples(
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const mt19937_state & rng_state,
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size_t * shuffled_offs,
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size_t * shuffled_begins,
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size_t * shuffled_sizes,
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const size_t * begins,
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const size_t * sizes,
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size_t count);
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size_t hash_combine(size_t h1, size_t h2);
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size_t compute_samples_hash(
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const char* fn,
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const size_t* samples_begin,
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const size_t* samples_size,
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size_t sample_count);
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std::string replace_str(const char * s, const char * needle, const char * replacement);
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void print_duration(double milliseconds);
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float cosine_decay(
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int64_t step,
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int64_t decay_steps,
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float minimum);
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float cosine_decay_restart(
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int64_t step,
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int64_t decay_steps,
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float minimum,
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float restart_step_mult);
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float learning_schedule(
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int64_t step,
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int64_t warmup_steps,
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int64_t decay_steps,
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float learning_rate,
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float overall_minimum,
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float cos_decay_minimum,
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float cos_decay_restart_step_mult,
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bool enable_restart);
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void copy_tensor_by_name(struct ggml_tensor * dst, struct ggml_context * ctx, const char * name);
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void load_opt_context_gguf(struct gguf_context * fctx, struct ggml_context * f_ggml_ctx, struct ggml_opt_context * opt);
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void save_opt_context_gguf(struct gguf_context * fctx, struct ggml_opt_context * opt);
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bool load_train_state_gguf(struct gguf_context * fctx, struct ggml_context * f_ggml_ctx, struct train_state * train);
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void save_train_state_gguf(struct gguf_context * fctx, struct train_state * train);
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std::string get_train_filename(const char * filename, const char * pattern_it, const char * latest, int64_t iteration);
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void train_opt_callback(void * vdata, int accum_step, float * sched, bool * cancel);
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