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			694 lines
		
	
	
		
			28 KiB
		
	
	
	
		
			C++
		
	
	
	
	
	
			
		
		
	
	
			694 lines
		
	
	
		
			28 KiB
		
	
	
	
		
			C++
		
	
	
	
	
	
| #include "arg.h"
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| #include "chat.h"
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| #include "common.h"
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| #include "llama.h"
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| #include "log.h"
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| 
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| #include <limits.h>
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| 
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| #include <algorithm>
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| #include <cmath>
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| #include <cstring>
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| #include <limits>
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| #include <random>
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| #include <string>
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| #include <vector>
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| 
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| enum diffusion_algorithm { ORIGIN = 0, ENTROPY_BASED = 1, MARGIN_BASED = 2, RANDOM = 3, CONFIDENCE_BASED = 4 };
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| 
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| // Unified transfer scheduling methods
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| enum transfer_schedule {
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|     TIMESTEP_BASED = 0,  // Dream-style: (1.0 - s/t) * remaining
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|     BLOCK_BASED    = 1,  // LLaDA-style: process in blocks with get_num_transfer_tokens
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| };
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| 
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| typedef bool (*diffusion_step_callback_t)(int32_t             step,
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|                                           int32_t             total_steps,
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|                                           const llama_token * tokens,
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|                                           int32_t             n_tokens,
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|                                           void *              user_data);
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| 
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| struct diffusion_params {
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|     int32_t                   steps                   = 0;
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|     float                     temperature             = 0;
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|     llama_token               mask_token_id           = LLAMA_TOKEN_NULL;
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|     diffusion_step_callback_t step_callback           = nullptr;
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|     void *                    step_callback_user_data = nullptr;
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|     int32_t                   seed                    = 0;
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|     bool                      visual_mode             = false;
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|     bool                      shift_logits            = false;  // Shift logits by -1 after decode
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| 
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|     float   top_p = 0.;
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|     int32_t top_k = 0.;
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| 
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|     diffusion_algorithm algorithm = CONFIDENCE_BASED;
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|     transfer_schedule   schedule  = TIMESTEP_BASED;
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| 
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|     float   cfg_scale        = 0.;     // Config scale for classifier-free guidance
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|     float   eps              = 0.;     // Timestep scheduling
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|     int32_t block_length     = 0;      // Block size (for block scheduling)
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|     float   alg_temp         = 0;      // algorithm temperature (0.0 = deterministic)
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|     bool    add_gumbel_noise = false;  // Add gumbel noise to the logits if temp > 0.0
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| 
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|     int32_t max_length = 0;            // Maximum sequence length
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| };
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| 
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| struct callback_data {
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|     diffusion_params *  diff_params;
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|     const llama_vocab * vocab;
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|     int32_t             n_input;
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| };
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| 
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| static float calculate_confidence(const llama_token_data_array & cur_p,
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|                                   diffusion_algorithm            algorithm,
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|                                   std::mt19937 &                 rng) {
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|     switch (algorithm) {
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|         case CONFIDENCE_BASED:
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|             return cur_p.data[cur_p.selected].p;  // Selected token probability
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| 
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|         case ENTROPY_BASED:
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|             {
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|                 float       entropy = 0.0f;
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|                 const float epsilon = 1e-10f;
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|                 for (size_t i = 0; i < cur_p.size; i++) {
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|                     float prob = cur_p.data[i].p;
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|                     entropy += prob * logf(prob + epsilon);
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|                 }
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|                 return -entropy;  // Higher entropy = lower confidence
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|             }
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| 
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|         case MARGIN_BASED:
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|             return (cur_p.size > 1) ? cur_p.data[0].p - cur_p.data[1].p : cur_p.data[0].p;
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| 
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|         case RANDOM:
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|             {
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|                 std::uniform_real_distribution<float> uniform(0.0f, 1.0f);
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|                 return uniform(rng);  // Random confidence
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|             }
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| 
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|         case ORIGIN:
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|             return cur_p.data[cur_p.selected].p;
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| 
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|         default:
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|             return 0.0f;
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|     }
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| }
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| 
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| // Unified transfer count calculation function
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| static int32_t calculate_transfer_count(int32_t                      step,
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|                                         int32_t                      total_steps,
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|                                         int32_t                      remaining_masked,
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|                                         transfer_schedule            schedule,
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|                                         float                        eps,
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|                                         const std::vector<int32_t> & num_transfer_tokens = {}) {
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|     switch (schedule) {
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|         case TIMESTEP_BASED:
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|             {
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|                 float t          = 1.0f - (float) step / total_steps * (1.0f - eps);
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|                 float s          = 1.0f - (float) (step + 1) / total_steps * (1.0f - eps);
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|                 float p_transfer = (step < total_steps - 1) ? (1.0f - s / t) : 1.0f;
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|                 return (int32_t) (remaining_masked * p_transfer);
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|             }
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| 
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|         case BLOCK_BASED:
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|             if (!num_transfer_tokens.empty() && step < (int32_t) num_transfer_tokens.size()) {
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|                 return num_transfer_tokens[step];
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|             }
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|             return remaining_masked / (total_steps - step);  // Fallback
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| 
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|         default:
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|             return remaining_masked / (total_steps - step);
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|     }
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| }
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| 
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| static bool diffusion_step_callback(int32_t             step,
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|                                     int32_t             total_steps,
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|                                     const llama_token * tokens,
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|                                     int32_t             n_tokens,
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|                                     void *              user_data) {
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|     (void) user_data;
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| 
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|     callback_data * data = static_cast<callback_data *>(user_data);
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| 
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|     auto print_progress_bar = [](int32_t step, int32_t total_steps) {
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|         int progress_percent = (step * 100) / total_steps;
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|         int progress_bars    = (step * 50) / total_steps;
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|         LOG_INF("\rdiffusion step: %d/%d [%s%s] %d%%",
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|                 step,
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|                 total_steps,
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|                 std::string(progress_bars, '=').c_str(),
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|                 std::string(50 - progress_bars, ' ').c_str(),
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|                 progress_percent);
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|     };
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| 
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|     if (data->diff_params->visual_mode) {
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|         // Visual mode: clear
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|         LOG_INF("\033[2J\033[H");  // Clear screen and move cursor to top-left
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| 
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|         print_progress_bar(step, total_steps);
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| 
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|         LOG_INF("\n");
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| 
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|         std::string current_text = " ";
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| 
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|         for (int32_t i = data->n_input; i < n_tokens; i++) {
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|             std::string token_str;
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|             if (tokens[i] != llama_vocab_mask(data->vocab)) {
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|                 char piece[256];
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|                 int  n_chars = llama_token_to_piece(data->vocab, tokens[i], piece, sizeof(piece), 0, false);
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|                 if (n_chars > 0) {
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|                     piece[n_chars] = '\0';
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|                     token_str      = piece;
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|                 }
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|             } else {
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|                 token_str = " ";
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|             }
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| 
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|             current_text += token_str;
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|         }
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| 
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|         LOG_INF("%s\n", current_text.c_str());
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|     } else {
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|         print_progress_bar(step, total_steps);
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|     }
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| 
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|     return true;
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| }
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| 
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| static void add_gumbel_noise(float * logits, int32_t n_vocab, float temperature, std::mt19937 & rng) {
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|     if (temperature == 0.0f) {
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|         return;
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|     }
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| 
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|     std::uniform_real_distribution<double> uniform(0.0, 1.0);
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|     for (int32_t i = 0; i < n_vocab; i++) {
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|         double noise        = uniform(rng);
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|         // Prevent log(0)
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|         noise               = std::max(noise, 1e-20);
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|         double gumbel_noise = std::pow(-std::log(noise), temperature);
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|         logits[i]           = std::exp(logits[i]) / gumbel_noise;
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|     }
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| }
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| 
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| static std::vector<int32_t> get_num_transfer_tokens(int32_t mask_count, int32_t steps) {
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|     std::vector<int32_t> num_transfer_tokens(steps);
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| 
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|     int32_t base      = mask_count / steps;
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|     int32_t remainder = mask_count % steps;
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| 
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|     for (int32_t i = 0; i < steps; i++) {
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|         num_transfer_tokens[i] = base + (i < remainder ? 1 : 0);
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|     }
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| 
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|     return num_transfer_tokens;
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| }
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| 
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| static void diffusion_generate(llama_context *          ctx,
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|                                const llama_token *      input_tokens,
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|                                llama_token *            output_tokens,
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|                                int32_t                  n_input,
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|                                const diffusion_params & params,
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|                                int32_t &                n_generated) {
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|     n_generated = 0;
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|     if (!ctx || !input_tokens || !output_tokens || n_input <= 0 || params.max_length <= n_input) {
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|         return;
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|     }
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| 
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|     const llama_model * model = llama_get_model(ctx);
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| 
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|     // Initialize with input and pad with mask tokens
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|     std::copy(input_tokens, input_tokens + n_input, output_tokens);
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|     std::fill(output_tokens + n_input, output_tokens + params.max_length, params.mask_token_id);
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| 
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|     std::mt19937 rng(params.seed);
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| 
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|     llama_set_causal_attn(ctx, false);
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| 
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|     int32_t n_vocab = llama_vocab_n_tokens(llama_model_get_vocab(model));
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| 
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|     std::vector<llama_token_data> candidates(n_vocab);
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|     std::vector<llama_token_data> conf_candidates;
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|     conf_candidates.reserve(params.max_length);
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|     std::vector<int32_t> mask_positions;
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|     mask_positions.reserve(params.max_length);
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| 
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|     // Setup sampler chain
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|     struct llama_sampler * sampler = llama_sampler_chain_init(llama_sampler_chain_default_params());
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|     if (params.top_k > 0) {
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|         llama_sampler_chain_add(sampler, llama_sampler_init_top_k(params.top_k));
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|     }
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|     if (params.top_p < 1.0f) {
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|         llama_sampler_chain_add(sampler, llama_sampler_init_top_p(params.top_p, 1));
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|     }
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|     if (params.temperature > 0.0f) {
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|         llama_sampler_chain_add(sampler, llama_sampler_init_temp(params.temperature));
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|     }
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|     llama_sampler_chain_add(sampler, llama_sampler_init_dist(params.seed));
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| 
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|     struct llama_sampler * dist_sampler = llama_sampler_init_dist(params.seed);
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| 
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|     llama_batch batch = llama_batch_init(params.max_length, 0, 1);
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|     batch.n_tokens    = params.max_length;
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| 
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|     // Pre-allocate buffers for CFG if needed
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|     int32_t                  logits_size = n_vocab * params.max_length;
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|     std::vector<float>       cond_logits_buffer;
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|     std::vector<llama_token> un_x_buffer;
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|     if (params.cfg_scale > 0.0f) {
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|         cond_logits_buffer.resize(logits_size);
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|         un_x_buffer.resize(params.max_length);
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|     }
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| 
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|     // For block-based processing
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|     std::vector<int32_t> num_transfer_tokens;
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|     int32_t              num_blocks      = 1;
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|     int32_t              steps_per_block = params.steps;
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| 
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|     if (params.schedule == BLOCK_BASED) {
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|         GGML_ASSERT(params.max_length % params.block_length == 0);
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|         num_blocks = params.max_length / params.block_length;
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|         GGML_ASSERT(params.steps % num_blocks == 0);
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|         steps_per_block = params.steps / num_blocks;
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|     }
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| 
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|     std::vector<float> confidence(params.max_length);
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| 
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|     int64_t total_sampling_time = 0;
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|     int64_t total_time          = 0;
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|     int64_t time_start          = ggml_time_us();
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| 
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|     for (int block_num = 0; block_num < num_blocks; block_num++) {
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|         int32_t block_start = (params.schedule == BLOCK_BASED) ? n_input + block_num * params.block_length : 0;
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|         int32_t block_end   = (params.schedule == BLOCK_BASED) ?
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|                                   std::min(n_input + (block_num + 1) * params.block_length, params.max_length) :
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|                                   params.max_length;
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| 
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|         // Count masked tokens in current block for block-based processing
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|         if (params.schedule == BLOCK_BASED) {
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|             int32_t block_mask_count = 0;
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|             for (int i = block_start; i < block_end; i++) {
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|                 if (output_tokens[i] == params.mask_token_id) {
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|                     block_mask_count++;
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|                 }
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|             }
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|             num_transfer_tokens = get_num_transfer_tokens(block_mask_count, steps_per_block);
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|         }
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| 
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|         for (int32_t step = 0; step < steps_per_block; step++) {
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|             int32_t global_step = block_num * steps_per_block + step;
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| 
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|             if (params.step_callback) {
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|                 if (!params.step_callback(
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|                         global_step, params.steps, output_tokens, params.max_length, params.step_callback_user_data)) {
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|                     break;
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|                 }
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|             }
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| 
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|             // Setup batch
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|             for (int32_t i = 0; i < params.max_length; i++) {
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|                 batch.token[i]     = output_tokens[i];
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|                 batch.pos[i]       = i;
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|                 batch.n_seq_id[i]  = 1;
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|                 batch.seq_id[i][0] = 0;
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|                 batch.logits[i]    = 1;
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|             }
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| 
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|             float * logits = nullptr;
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| 
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|             if (params.cfg_scale > 0.0f) {
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|                 int ret = llama_decode(ctx, batch);
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|                 if (ret != 0) {
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|                     LOG_ERR("Failed to generate conditional");
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|                     break;
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|                 }
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|                 float * cond_logits_ptr = llama_get_logits(ctx);
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|                 std::memcpy(cond_logits_buffer.data(), cond_logits_ptr, logits_size * sizeof(float));
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| 
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|                 // Unconditional generation (mask input)
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|                 std::copy(output_tokens, output_tokens + params.max_length, un_x_buffer.begin());
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|                 for (int32_t i = 0; i < n_input; i++) {
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|                     un_x_buffer[i] = params.mask_token_id;
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|                 }
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| 
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|                 for (int32_t i = 0; i < params.max_length; i++) {
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|                     batch.token[i] = un_x_buffer[i];
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|                 }
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|                 ret = llama_decode(ctx, batch);
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|                 if (ret != 0) {
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|                     LOG_ERR("Failed to generate unconditional");
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|                     break;
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|                 }
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|                 float * uncond_logits = llama_get_logits(ctx);
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| 
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|                 // Apply CFG
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|                 for (int32_t i = 0; i < logits_size; i++) {
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|                     cond_logits_buffer[i] =
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|                         uncond_logits[i] + (params.cfg_scale + 1.0f) * (cond_logits_buffer[i] - uncond_logits[i]);
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|                 }
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|                 logits = cond_logits_buffer.data();
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|             } else {
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|                 int ret = llama_decode(ctx, batch);
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|                 if (ret != 0) {
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|                     LOG_ERR("%s: failed to decode at step %d, ret = %d\n", __func__, global_step, ret);
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|                     break;
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|                 }
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|                 logits = llama_get_logits(ctx);
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|             }
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| 
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|             if (!logits) {
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|                 LOG_ERR("%s: failed to get logits at step %d\n", __func__, global_step);
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|                 break;
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|             }
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| 
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|             auto get_logits_for_pos = [&](int32_t pos) -> const float * {
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|                 if (params.shift_logits) {
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|                     return pos == 0 ? logits : logits + (pos - 1) * n_vocab;
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|                 }
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|                 return logits + (pos) *n_vocab;
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|             };
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| 
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|             int64_t time_start_sampling = ggml_time_us();
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| 
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|             mask_positions.clear();
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|             for (int32_t i = 0; i < params.max_length; i++) {
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|                 if (output_tokens[i] == params.mask_token_id) {
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|                     // For block-based, only consider current block
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|                     if (params.schedule != BLOCK_BASED || (i >= block_start && i < block_end)) {
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|                         mask_positions.push_back(i);
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|                     }
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|                 }
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|             }
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| 
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|             if (mask_positions.empty()) {
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|                 break;
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|             }
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| 
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|             if (params.add_gumbel_noise && params.temperature > 0.0f) {
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|                 add_gumbel_noise(logits, n_vocab, params.temperature, rng);
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|             }
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| 
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|             if (params.algorithm == ORIGIN) {
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|                 int32_t transfer_count = calculate_transfer_count(
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|                     step, steps_per_block, mask_positions.size(), params.schedule, params.eps, num_transfer_tokens);
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|                 float p_transfer = (float) transfer_count / mask_positions.size();
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| 
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|                 for (int32_t pos : mask_positions) {
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|                     if (std::uniform_real_distribution<float>(0.0f, 1.0f)(rng) < p_transfer) {
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|                         const float * pos_logits = get_logits_for_pos(pos);
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|                         for (int32_t token_id = 0; token_id < n_vocab; token_id++) {
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|                             candidates[token_id].id    = token_id;
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|                             candidates[token_id].logit = pos_logits[token_id];
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|                             candidates[token_id].p     = 0.0f;
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|                         }
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| 
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|                         llama_token_data_array cur_p = {
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|                             candidates.data(),
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|                             (size_t) n_vocab,
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|                             -1,
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|                             false,
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|                         };
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| 
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|                         llama_sampler_apply(sampler, &cur_p);
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|                         output_tokens[pos] = cur_p.data[cur_p.selected].id;
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|                     }
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|                 }
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|             } else {
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|                 std::vector<std::pair<float, int32_t>> confidences;
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|                 std::vector<llama_token>               sampled_tokens(mask_positions.size());
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| 
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|                 for (size_t i = 0; i < mask_positions.size(); i++) {
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|                     int32_t       pos        = mask_positions[i];
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|                     const float * pos_logits = get_logits_for_pos(pos);
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| 
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|                     for (int32_t token_id = 0; token_id < n_vocab; token_id++) {
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|                         candidates[token_id].logit = pos_logits[token_id];
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|                         candidates[token_id].p     = 0.0f;
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|                         candidates[token_id].id    = token_id;
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|                     }
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| 
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|                     llama_token_data_array cur_p = {
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|                         candidates.data(),
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|                         candidates.size(),
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|                         -1,
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|                         false,
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|                     };
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| 
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|                     llama_sampler_apply(sampler, &cur_p);
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|                     llama_token sampled_token = cur_p.data[cur_p.selected].id;
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| 
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|                     float conf = calculate_confidence(cur_p, params.algorithm, rng);
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| 
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|                     sampled_tokens[i] = sampled_token;
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|                     confidences.emplace_back(conf, i);
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|                 }
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| 
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|                 int32_t transfer_count = calculate_transfer_count(
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|                     step, steps_per_block, mask_positions.size(), params.schedule, params.eps, num_transfer_tokens);
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| 
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|                 if (transfer_count > 0) {
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|                     if (params.alg_temp == 0.0f) {
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|                         std::partial_sort(confidences.begin(),
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|                                           confidences.begin() + std::min(transfer_count, (int32_t) confidences.size()),
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|                                           confidences.end(),
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|                                           [](const std::pair<float, int32_t> & a, const std::pair<float, int32_t> & b) {
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|                                               if (a.first != b.first) {
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|                                                   return a.first > b.first;
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|                                               }
 | |
|                                               return a.second < b.second;
 | |
|                                           });
 | |
| 
 | |
|                         for (int32_t i = 0; i < std::min(transfer_count, (int32_t) confidences.size()); i++) {
 | |
|                             int32_t mask_idx   = confidences[i].second;
 | |
|                             int32_t pos        = mask_positions[mask_idx];
 | |
|                             output_tokens[pos] = sampled_tokens[mask_idx];
 | |
|                         }
 | |
|                     } else {
 | |
|                         conf_candidates.clear();
 | |
|                         for (size_t i = 0; i < confidences.size(); i++) {
 | |
|                             float conf_logit = confidences[i].first / params.alg_temp;
 | |
|                             conf_candidates.emplace_back(llama_token_data{ (int32_t) i, conf_logit, 0.0f });
 | |
|                         }
 | |
| 
 | |
|                         llama_token_data_array conf_array = {
 | |
|                             conf_candidates.data(),
 | |
|                             conf_candidates.size(),
 | |
|                             -1,
 | |
|                             false,
 | |
|                         };
 | |
| 
 | |
|                         for (int32_t i = 0; i < std::min(transfer_count, (int32_t) confidences.size()); i++) {
 | |
|                             llama_sampler_apply(dist_sampler, &conf_array);
 | |
|                             int32_t selected_idx = conf_array.selected;
 | |
|                             int32_t mask_idx     = selected_idx;
 | |
|                             int32_t pos          = mask_positions[mask_idx];
 | |
|                             output_tokens[pos]   = sampled_tokens[mask_idx];
 | |
| 
 | |
|                             conf_candidates[selected_idx].p = 0.0f;
 | |
|                             conf_array.selected             = -1;
 | |
|                         }
 | |
|                     }
 | |
|                 }
 | |
|             }
 | |
| 
 | |
|             int64_t time_end_sampling = ggml_time_us();
 | |
|             total_sampling_time += time_end_sampling - time_start_sampling;
 | |
|         }
 | |
|     }
 | |
| 
 | |
|     int64_t time_end = ggml_time_us();
 | |
|     total_time += time_end - time_start;
 | |
| 
 | |
|     LOG_INF("\ntotal time: %0.2fms, time per step: %0.2fms, sampling time per step: %0.2fms\n",
 | |
|             total_time / 1000.0,
 | |
|             total_time / 1000.0 / params.steps,
 | |
|             total_sampling_time / 1000.0 / params.steps);
 | |
| 
 | |
|     llama_batch_free(batch);
 | |
|     llama_sampler_free(sampler);
 | |
|     llama_sampler_free(dist_sampler);
 | |
| 
 | |
|     n_generated = params.max_length;
 | |
| }
 | |
| 
 | |
| static std::string format_input_text(const std::string & prompt, const std::string & system_prompt, bool use_chat_template, llama_model * model) {
 | |
|     if (!use_chat_template) {
 | |
|         return prompt;
 | |
|     }
 | |
| 
 | |
|     auto chat_templates = common_chat_templates_init(model, "");
 | |
|     common_chat_templates_inputs inputs;
 | |
|     common_chat_msg system_msg;
 | |
| 
 | |
|     if (!system_prompt.empty()) {
 | |
|         system_msg.role = "system";
 | |
|         system_msg.content = system_prompt;
 | |
|         inputs.messages.push_back(system_msg);
 | |
|     }
 | |
| 
 | |
|     common_chat_msg user_msg;
 | |
|     user_msg.role = "user";
 | |
|     user_msg.content = prompt;
 | |
| 
 | |
|     inputs.messages.push_back(user_msg);
 | |
|     inputs.add_generation_prompt = true;
 | |
| 
 | |
|     auto result = common_chat_templates_apply(chat_templates.get(), inputs);
 | |
| 
 | |
|     return result.prompt;
 | |
| }
 | |
| 
 | |
| int main(int argc, char ** argv) {
 | |
|     ggml_time_init();
 | |
| 
 | |
|     common_params params;
 | |
| 
 | |
|     if (!common_params_parse(argc, argv, params, LLAMA_EXAMPLE_DIFFUSION)) {
 | |
|         return 1;
 | |
|     }
 | |
| 
 | |
|     common_init();
 | |
|     llama_backend_init();
 | |
| 
 | |
|     llama_model_params model_params = llama_model_default_params();
 | |
|     model_params.n_gpu_layers       = params.n_gpu_layers;
 | |
|     model_params.devices            = params.devices.data();
 | |
|     model_params.use_mmap           = params.use_mmap;
 | |
|     model_params.use_mlock          = params.use_mlock;
 | |
|     model_params.check_tensors      = params.check_tensors;
 | |
| 
 | |
|     llama_model * model = llama_model_load_from_file(params.model.path.c_str(), model_params);
 | |
|     if (!model) {
 | |
|         LOG_ERR("error: failed to load model '%s'\n", params.model.path.c_str());
 | |
|         return 1;
 | |
|     }
 | |
| 
 | |
|     if (!llama_model_is_diffusion(model)) {
 | |
|         LOG_ERR("error: unsupported model for diffusion");
 | |
|         llama_model_free(model);
 | |
|         return 1;
 | |
|     }
 | |
| 
 | |
|     llama_context_params ctx_params = llama_context_default_params();
 | |
|     ctx_params.n_ctx                = params.n_ctx;
 | |
|     ctx_params.n_batch              = params.n_batch;
 | |
|     ctx_params.n_ubatch             = params.n_ubatch;
 | |
|     ctx_params.flash_attn_type      = params.flash_attn_type;
 | |
|     ctx_params.no_perf              = params.no_perf;
 | |
|     ctx_params.type_k               = params.cache_type_k;
 | |
|     ctx_params.type_v               = params.cache_type_v;
 | |
| 
 | |
|     llama_context * ctx = llama_init_from_model(model, ctx_params);
 | |
|     if (!ctx) {
 | |
|         LOG_ERR("error: failed to create context\n");
 | |
|         llama_model_free(model);
 | |
|         return 1;
 | |
|     }
 | |
| 
 | |
|     llama_set_n_threads(ctx, params.cpuparams.n_threads, params.cpuparams_batch.n_threads);
 | |
| 
 | |
|     const llama_vocab * vocab            = llama_model_get_vocab(model);
 | |
| 
 | |
|     std::string         formatted_prompt = format_input_text(params.prompt, params.system_prompt, params.enable_chat_template, model);
 | |
| 
 | |
|     std::vector<llama_token> input_tokens = common_tokenize(vocab,
 | |
|                                                             formatted_prompt,
 | |
|                                                             /*add special tokens*/ true,
 | |
|                                                             /*parse special*/ true);
 | |
| 
 | |
|     int n_input = input_tokens.size();
 | |
| 
 | |
|     if (n_input >= params.n_ctx) {
 | |
|         LOG_ERR("error: input too long (%d tokens), max context is %d\n", n_input, params.n_ctx);
 | |
|         llama_free(ctx);
 | |
|         llama_model_free(model);
 | |
|         return 1;
 | |
|     }
 | |
| 
 | |
|     llama_token mask_token_id = llama_vocab_mask(vocab);
 | |
| 
 | |
|     GGML_ASSERT(mask_token_id != LLAMA_TOKEN_NULL);
 | |
| 
 | |
|     bool visual_mode = params.diffusion.visual_mode;
 | |
| 
 | |
|     int32_t                  n_generated = 0;
 | |
|     std::vector<llama_token> output_tokens(params.n_ubatch);
 | |
| 
 | |
|     struct diffusion_params diff_params;
 | |
| 
 | |
|     char shift_logits_str[8];
 | |
|     if (llama_model_meta_val_str(model, "diffusion.shift_logits", shift_logits_str, sizeof(shift_logits_str)) >= 0) {
 | |
|         diff_params.shift_logits = (strcmp(shift_logits_str, "true") == 0);
 | |
|     } else {
 | |
|         diff_params.shift_logits = true;
 | |
|     }
 | |
| 
 | |
|     //Use either eps or block length, but not both
 | |
|     GGML_ASSERT((params.diffusion.eps == 0) ^ (params.diffusion.block_length == 0));
 | |
| 
 | |
|     if (params.diffusion.eps) {
 | |
|         diff_params.schedule = TIMESTEP_BASED;
 | |
|         diff_params.eps      = params.diffusion.eps;
 | |
|     } else if (params.diffusion.block_length) {
 | |
|         diff_params.schedule     = BLOCK_BASED;
 | |
|         diff_params.block_length = params.diffusion.block_length;
 | |
|     }
 | |
| 
 | |
|     diff_params.mask_token_id    = mask_token_id;
 | |
|     diff_params.seed             = params.sampling.seed;
 | |
|     diff_params.temperature      = params.sampling.temp;
 | |
|     diff_params.steps            = params.diffusion.steps;
 | |
|     diff_params.algorithm        = static_cast<diffusion_algorithm>(params.diffusion.algorithm);
 | |
|     diff_params.max_length       = params.n_ubatch;
 | |
|     diff_params.top_p            = params.sampling.top_p;
 | |
|     diff_params.top_k            = params.sampling.top_k;
 | |
|     diff_params.visual_mode      = params.diffusion.visual_mode;
 | |
|     diff_params.add_gumbel_noise = params.diffusion.add_gumbel_noise;
 | |
| 
 | |
|     diff_params.step_callback           = diffusion_step_callback;
 | |
|     callback_data cb_data               = { &diff_params, vocab, n_input };
 | |
|     diff_params.step_callback_user_data = &cb_data;
 | |
| 
 | |
|     const char * alg_names[]   = { "ORIGIN", "ENTROPY_BASED", "MARGIN_BASED", "RANDOM", "CONFIDENCE_BASED" };
 | |
|     const char * sched_names[] = { "TIMESTEP_BASED", "BLOCK_BASED" };
 | |
|     const char * alg_name =
 | |
|         (diff_params.algorithm >= 0 && diff_params.algorithm <= 4) ? alg_names[diff_params.algorithm] : "UNKNOWN";
 | |
|     const char * sched_name =
 | |
|         (diff_params.schedule >= 0 && diff_params.schedule <= 1) ? sched_names[diff_params.schedule] : "UNKNOWN";
 | |
| 
 | |
|     LOG_INF("diffusion_params: - %-25s llama_token      = %d\n", "mask_token_id", mask_token_id);
 | |
|     LOG_INF("diffusion_params: - %-25s u32              = %d\n", "steps", diff_params.steps);
 | |
|     LOG_INF("diffusion_params: - %-25s u32              = %d\n", "max_length", diff_params.max_length);
 | |
|     LOG_INF("diffusion_params: - %-25s enum             = %d (%s)\n", "algorithm", diff_params.algorithm, alg_name);
 | |
|     LOG_INF("diffusion_params: - %-25s enum             = %d (%s)\n", "schedule", diff_params.schedule, sched_name);
 | |
|     LOG_INF("diffusion_params: - %-25s f32              = %.3f\n", "temperature", diff_params.temperature);
 | |
|     if (diff_params.schedule == TIMESTEP_BASED) {
 | |
|         LOG_INF("diffusion_params: - %-25s f32              = %.6f\n", "eps", diff_params.eps);
 | |
|         LOG_INF("diffusion_params: - %-25s f32              = %.3f\n", "alg_temp", diff_params.alg_temp);
 | |
|     }
 | |
|     if (diff_params.schedule == BLOCK_BASED) {
 | |
|         LOG_INF("diffusion_params: - %-25s u32              = %d\n", "block_length", diff_params.block_length);
 | |
|         LOG_INF("diffusion_params: - %-25s f32              = %.3f\n", "cfg_scale", diff_params.cfg_scale);
 | |
|     }
 | |
| 
 | |
|     diffusion_generate(ctx, input_tokens.data(), output_tokens.data(), n_input, diff_params, n_generated);
 | |
| 
 | |
|     if (n_generated > 0) {
 | |
|         if (visual_mode) {
 | |
|             //clear screen and move cursor to top-left
 | |
|             LOG_INF("\033[2J\033[H");
 | |
|         }
 | |
| 
 | |
|         output_tokens.erase(output_tokens.begin(), output_tokens.begin() + n_input);
 | |
|         std::string output_data = common_detokenize(vocab, output_tokens, false);
 | |
|         LOG_INF("\n%s\n", output_data.c_str());
 | |
|     } else {
 | |
|         LOG_INF("Error: diffusion generation failed\n");
 | |
|     }
 | |
| 
 | |
|     llama_free(ctx);
 | |
|     llama_model_free(model);
 | |
|     llama_backend_free();
 | |
| 
 | |
|     return 0;
 | |
| }
 | 
