//This is Concedo's shitty adapter for adding python bindings for llama //Considerations: //Don't want to use pybind11 due to dependencies on MSVCC //ZERO or MINIMAL changes as possible to main.cpp - do not move their function declarations here! //Leave main.cpp UNTOUCHED, We want to be able to update the repo and pull any changes automatically. //No dynamic memory allocation! Setup structs with FIXED (known) shapes and sizes for ALL output fields //Python will ALWAYS provide the memory, we just write to it. #include #include "model_adapter.h" #include "otherarch.h" //for easier compilation //concat source files into one file for compilation purposes #include "llama_v2.cpp" #include "llama.cpp" #include "utils.cpp" #include "gptj_v1.cpp" #include "gptj_v2.cpp" #include "gptj_v3.cpp" #include "gpt2_v1.cpp" #include "gpt2_v2.cpp" #include "gpt2_v3.cpp" #include "rwkv_v2.cpp" #include "rwkv_v3.cpp" #include "neox_v2.cpp" #include "neox_v3.cpp" #include "mpt_v3.cpp" //shared std::string executable_path = ""; std::string lora_filename = ""; std::string lora_base = ""; bool generation_finished; std::vector generated_tokens; //return val: 0=fail, 1=(original ggml, alpaca), 2=(ggmf), 3=(ggjt) static FileFormat file_format = FileFormat::BADFORMAT; static gpt_vocab vocab; static gptj_v1_model gptj_ctx_v1; static gptj_v2_model gptj_ctx_v2; static gptj_model gptj_ctx_v3; static gpt2_v1_model gpt2_ctx_v1; static gpt2_v2_model gpt2_ctx_v2; static gpt2_model gpt2_ctx_v3; static gpt_neox_v2_model neox_ctx_v2; static gpt_neox_model neox_ctx_v3; static mpt_model mpt_ctx_v3; static rwkv_v2_context * rwkv_ctx_v2; static rwkv_context * rwkv_ctx_v3; static llama_v2_context_params llama_ctx_params_v2; static llama_context_params llama_ctx_params; static llama_v2_context * llama_ctx_v2; static llama_context * llama_ctx_v3; static gpt_params params; static int n_past = 0; static int n_threads = 4; static int n_blasthreads = 4; static int n_batch = 8; static bool useSmartContext = false; static bool unbanTokens = false; static int blasbatchsize = 512; static bool debugmode = false; static std::string modelname; static std::vector last_n_tokens; static std::vector current_context_tokens; static size_t mem_per_token = 0; static std::vector logits; static std::vector smartcontext; static std::vector stop_sequence; static std::vector top_picks; static int remaining_tokens = 0; static std::string concat_output = ""; inline bool IsNanCheck(float f) { const unsigned int u = *(unsigned int*)&f; return (u&0x7F800000) == 0x7F800000 && (u&0x7FFFFF); // Both NaN and qNan. } inline bool LogitsDuplicated(std::vector & arr1, std::vector & arr2) { int compareQty = 5; if(arr1.size() < compareQty || arr2.size() < compareQty || arr1.size()!=arr2.size()) { printf("\nError: Logit array sizes are bad!\n"); return false; } for(int i=0;i probs; probs.reserve(candidates->size); top_picks.clear(); for (size_t i = 0; i < candidates->size; ++i) { probs.push_back(candidates->data[i].p); } std::discrete_distribution<> dist(probs.begin(), probs.end()); int idx = dist(rng); if(debugmode) { top_picks.push_back(candidates->data[idx]); for (size_t i = 0; (i < candidates->size && i<4); ++i) { if(i!=idx) { top_picks.push_back(candidates->data[i]); } } } llama_token result = candidates->data[idx].id; return result; } llama_token sample_token_mirostat(int n_vocab, llama_token_data_array * candidates, std::mt19937 & rng, float tau, float eta, int m, float * mu) { float N = float(n_vocab); llama_sample_softmax(nullptr, candidates); // Estimate s_hat using the most probable m tokens float s_hat = 0.0; float sum_ti_bi = 0.0; float sum_ti_sq = 0.0; for (size_t i = 0; i < size_t(m - 1) && i < candidates->size - 1; ++i) { float t_i = logf(float(i + 2) / float(i + 1)); float b_i = logf(candidates->data[i].p / candidates->data[i + 1].p); sum_ti_bi += t_i * b_i; sum_ti_sq += t_i * t_i; } s_hat = sum_ti_bi / sum_ti_sq; // Compute k from the estimated s_hat and target surprise value float epsilon_hat = s_hat - 1; float k = powf((epsilon_hat * powf(2, *mu)) / (1 - powf(N, -epsilon_hat)), 1 / s_hat); // Sample the next word X using top-k sampling llama_sample_top_k(nullptr, candidates, int(k),1); llama_token X = sample_token(candidates, rng); // Compute error as the difference between observed surprise and target surprise value size_t X_idx = std::distance(candidates->data, std::find_if(candidates->data, candidates->data + candidates->size, [&](const llama_token_data & candidate) { return candidate.id == X; })); float observed_surprise = -log2f(candidates->data[X_idx].p); float e = observed_surprise - tau; // Update mu using the learning rate and error *mu = *mu - eta * e; return X; } llama_token sample_token_mirostat_v2(llama_token_data_array * candidates, std::mt19937 & rng, float tau, float eta, float * mu) { llama_sample_softmax(nullptr, candidates); // Truncate the words with surprise values greater than mu candidates->size = std::distance(candidates->data, std::find_if(candidates->data, candidates->data + candidates->size, [&](const llama_token_data & candidate) { return -log2f(candidate.p) > *mu; })); // Normalize the probabilities of the remaining words llama_sample_softmax(nullptr, candidates); // Sample the next word X from the remaining words llama_token X = sample_token(candidates,rng); // Compute error as the difference between observed surprise and target surprise value size_t X_idx = std::distance(candidates->data, std::find_if(candidates->data, candidates->data + candidates->size, [&](const llama_token_data & candidate) { return candidate.id == X; })); float observed_surprise = -log2f(candidates->data[X_idx].p); float e = observed_surprise - tau; // Update mu using the learning rate and error *mu = *mu - eta * e; return X; } // Top-a (remove all tokens that have softmax probability less than top_a*m^2 where m is the maximum softmax probability) // top-a 0 is off (no effect) void sample_top_a(llama_token_data_array * candidates, float a, size_t min_keep) { if (a <= 0.0f || candidates->size<=1) { return; } llama_sample_softmax(nullptr, candidates); // Compute the cumulative probabilities float maxprob = candidates->data[0].p; float threshold = a * maxprob * maxprob; //tokens with probs less than this are removed size_t last_idx = candidates->size; for (size_t i = 0; i < candidates->size; ++i) { // Go until we reach a value under the threshold float checkprob = candidates->data[i].p; if (checkprob < threshold && i >= min_keep) { last_idx = i; break; } } // printf("\n\nCandidates: %d, A:%f, MaxProb: %f, Threshold: %f, LastIdx: %d",candidates->size,a,maxprob,threshold,last_idx); // printf("\nCandidates: %f %f %f %f\n",candidates->data[0].p,candidates->data[1].p,candidates->data[2].p,candidates->data[3].p); // Resize the output vector to keep only the selected tokens candidates->size = last_idx; } int SampleLogits(const float * logits, int n_ctx, int n_vocab, int rep_pen_range, float rep_pen, float top_k, float top_a, float top_p, float typical_p, float tfs, float temp, std::mt19937 & rng, int mirostat, float mirostat_tau, float mirostat_eta) { int id = 0; std::vector candidates; candidates.reserve(n_vocab); for (llama_token token_id = 0; token_id < n_vocab; token_id++) { candidates.emplace_back(llama_token_data{token_id, logits[token_id], 0.0f}); } llama_token_data_array candidates_p = { candidates.data(), candidates.size(), false }; // Apply penalties auto last_n_repeat = std::min(std::min((int)last_n_tokens.size(), rep_pen_range), n_ctx); llama_sample_repetition_penalty(nullptr, &candidates_p, last_n_tokens.data() + last_n_tokens.size() - last_n_repeat, last_n_repeat, rep_pen); // llama_sample_frequency_and_presence_penalties(nullptr, &candidates_p, // last_n_tokens.data() + last_n_tokens.size() - last_n_repeat, // last_n_repeat, alpha_frequency, alpha_presence); if (temp <= 0) { // Greedy sampling id = llama_sample_token_greedy(nullptr, &candidates_p); } else { if (mirostat == 1) { static float mirostat_mu = 2.0f * mirostat_tau; const int mirostat_m = 100; llama_sample_temperature(nullptr, &candidates_p, temp); id = sample_token_mirostat(n_vocab, &candidates_p, rng, mirostat_tau, mirostat_eta, mirostat_m, &mirostat_mu); } else if (mirostat == 2) { static float mirostat_mu = 2.0f * mirostat_tau; llama_sample_temperature(nullptr, &candidates_p, temp); id = sample_token_mirostat_v2(&candidates_p, rng, mirostat_tau, mirostat_eta, &mirostat_mu); } else { // Temperature sampling llama_sample_top_k(nullptr, &candidates_p, top_k,1); sample_top_a(&candidates_p,top_a,1); llama_sample_tail_free(nullptr, &candidates_p, tfs,1); llama_sample_typical(nullptr, &candidates_p, typical_p,1); llama_sample_top_p(nullptr, &candidates_p, top_p,1); llama_sample_temperature(nullptr, &candidates_p, temp); id = sample_token(&candidates_p, rng); } } return id; } static std::string FileFormatTokenizeID(int id, FileFormat file_format) { if (file_format == FileFormat::GGML || file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2) { return std::string(llama_v2_token_to_str(llama_ctx_v2, id)); } else if (file_format == FileFormat::GGJT_3) { return std::string(llama_token_to_str(llama_ctx_v3, id)); } else { return vocab.id_to_token[id]; } } ModelLoadResult gpttype_load_model(const load_model_inputs inputs, FileFormat in_file_format) { ggml_time_init(); file_format = in_file_format; n_threads = params.n_threads = inputs.threads; n_blasthreads = inputs.blasthreads; n_batch = params.n_batch = inputs.batch_size; modelname = params.model = inputs.model_filename; useSmartContext = inputs.use_smartcontext; debugmode = inputs.debugmode; unbanTokens = inputs.unban_tokens; blasbatchsize = inputs.blasbatchsize; params.memory_f16 = inputs.f16_kv; params.n_ctx = inputs.max_context_length; neox_ctx_v2.hparams.n_ctx = gptj_ctx_v1.hparams.n_ctx = gptj_ctx_v2.hparams.n_ctx = gpt2_ctx_v1.hparams.n_ctx = gpt2_ctx_v2.hparams.n_ctx = neox_ctx_v3.hparams.n_ctx = gptj_ctx_v3.hparams.n_ctx = gptj_ctx_v3.hparams.n_ctx = mpt_ctx_v3.hparams.n_ctx = params.n_ctx; printf("System Info: %s\n", llama_print_system_info()); SetQuantsUnshuffled(false); if(file_format == FileFormat::GGML || file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2) { //newer format has bit unshuffling SetQuantsUnshuffled(file_format == FileFormat::GGJT_2); llama_ctx_params_v2 = llama_v2_context_default_params(); llama_ctx_params_v2.n_ctx = inputs.max_context_length; //llama_ctx_params.n_parts = -1; llama_ctx_params_v2.seed = -1; llama_ctx_params_v2.f16_kv = inputs.f16_kv; llama_ctx_params_v2.logits_all = false; llama_ctx_params_v2.use_mmap = inputs.use_mmap; llama_ctx_params_v2.use_mlock = inputs.use_mlock; llama_ctx_params_v2.n_gpu_layers = inputs.gpulayers; llama_ctx_v2 = llama_v2_init_from_file(modelname.c_str(), llama_ctx_params_v2); if (llama_ctx_v2 == NULL) { fprintf(stderr, "%s: error: failed to load model '%s'\n", __func__, modelname.c_str()); return ModelLoadResult::FAIL; } printf("\n---\nWarning: Your model may be an OUTDATED format (ver %d). Please reconvert it for better results!\n---\n", file_format); if (lora_filename != "") { printf("\nAttempting to apply LORA adapter: %s\n", lora_filename.c_str()); const char * lora_base_arg = NULL; if (lora_base != "") { printf("Using LORA base model: %s\n", lora_base.c_str()); lora_base_arg = lora_base.c_str(); } int err = llama_v2_apply_lora_from_file(llama_ctx_v2, lora_filename.c_str(), lora_base_arg, n_threads); if (err != 0) { fprintf(stderr, "%s: error: failed to apply lora adapter\n", __func__); return ModelLoadResult::FAIL; } } //determine mem per token const std::vector tmp = {1, 2, 3, 4}; llama_v2_eval(llama_ctx_v2, tmp.data(), tmp.size(), 0, params.n_threads); return ModelLoadResult::SUCCESS; } else if(file_format == FileFormat::GGJT_3) { llama_ctx_params = llama_context_default_params(); llama_ctx_params.n_ctx = inputs.max_context_length; //llama_ctx_paran_parts = -1; llama_ctx_params.seed = -1; llama_ctx_params.f16_kv = inputs.f16_kv; llama_ctx_params.logits_all = false; llama_ctx_params.use_mmap = inputs.use_mmap; llama_ctx_params.use_mlock = inputs.use_mlock; llama_ctx_params.n_gpu_layers = inputs.gpulayers; llama_ctx_v3 = llama_init_from_file(modelname.c_str(), llama_ctx_params); if (llama_ctx_v3 == NULL) { fprintf(stderr, "%s: error: failed to load model '%s'\n", __func__, modelname.c_str()); return ModelLoadResult::FAIL; } if (lora_filename != "") { printf("\nAttempting to apply LORA adapter: %s\n", lora_filename.c_str()); int err = llama_apply_lora_from_file(llama_ctx_v3, lora_filename.c_str(), NULL, n_threads); if (err != 0) { fprintf(stderr, "%s: error: failed to apply lora adapter\n", __func__); return ModelLoadResult::FAIL; } } //determine mem per token const std::vector tmp = {1, 2, 3, 4}; auto er = llama_eval(llama_ctx_v3, tmp.data(), tmp.size(), 0, params.n_threads); if(er!=0) { printf("\nLLAMA EVAL returned nonzero!\n"); } return ModelLoadResult::SUCCESS; } else if (file_format == FileFormat::RWKV_1 || file_format==FileFormat::RWKV_2) { //start loading the models first bool useWorldTokenizer = false; if (file_format == FileFormat::RWKV_1) { rwkv_ctx_v2 = rwkv_v2_init_from_file(modelname.c_str(), n_threads); } else //rwkv_2 { rwkv_ctx_v3 = rwkv_init_from_file(modelname.c_str(), n_threads); const struct rwkv_file_header & header = rwkv_ctx_v3->instance->model.header; const size_t n_vocab = header.n_vocab; printf("\nDetected Vocab: %d",n_vocab); if(n_vocab>60000) { printf("\nUsing WORLD TOKENIZER"); useWorldTokenizer = true; } } std::string word; if(useWorldTokenizer) { read_rwkv_world_vocab(); } else { read_rwkv_vocab(); } int vocabsiz = rwkv_vocab.size(); for (int i = 0; i < vocabsiz; i++) { uint32_t len; word = rwkv_vocab[i]; vocab.token_to_id[word] = i; vocab.id_to_token[i] = word; } printf("\nRWKV Vocab: %u\n", vocabsiz); logits.resize(vocabsiz); if (file_format == FileFormat::RWKV_1) { n_batch = 1; //setup buffers for rwkv state auto padding = 512u; auto statebufsiz = rwkv_v2_get_state_buffer_element_count(rwkv_ctx_v2) * sizeof(float) + padding; auto logitbufsiz = rwkv_v2_get_logits_buffer_element_count(rwkv_ctx_v2) * sizeof(float) + padding; printf("\nRWKV old Init: State Buffer:%u, Logit Buffer:%u\n", statebufsiz, logitbufsiz); rwkv_ctx_v2->state_out = (float *)malloc(statebufsiz); rwkv_ctx_v2->logits_out = (float *)malloc(logitbufsiz); rwkv_ctx_v2->state_in = nullptr; bool testeval = rwkv_v2_eval(rwkv_ctx_v2, 0, rwkv_ctx_v2->state_in, rwkv_ctx_v2->state_out, rwkv_ctx_v2->logits_out); if (!testeval) { printf("\nError: RWKV old Init Eval Failed!\n"); } memcpy(logits.data(), rwkv_ctx_v2->logits_out, sizeof(float) * vocabsiz); if (rwkv_ctx_v2 == NULL) { return ModelLoadResult::FAIL; } return ModelLoadResult::SUCCESS; } else { n_batch = 1; //do not use sequence mode to speedup until it is fixed //setup buffers for rwkv state auto padding = 512u; auto statebufsiz = rwkv_get_state_buffer_element_count(rwkv_ctx_v3) * sizeof(float) + padding; auto logitbufsiz = rwkv_get_logits_buffer_element_count(rwkv_ctx_v3) * sizeof(float) + padding; printf("\nRWKV Init: State Buffer:%u, Logit Buffer:%u\n", statebufsiz, logitbufsiz); rwkv_ctx_v3->state_out = (float *)malloc(statebufsiz); rwkv_ctx_v3->logits_out = (float *)malloc(logitbufsiz); rwkv_ctx_v3->state_in = nullptr; bool testeval = rwkv_eval(rwkv_ctx_v3, 0, rwkv_ctx_v3->state_in, rwkv_ctx_v3->state_out, rwkv_ctx_v3->logits_out); if (!testeval) { printf("\nError: RWKV Init Eval Failed!\n"); } memcpy(logits.data(), rwkv_ctx_v3->logits_out, sizeof(float) * vocabsiz); if (rwkv_ctx_v3 == NULL) { return ModelLoadResult::FAIL; } return ModelLoadResult::SUCCESS; } } else if (file_format == FileFormat::GPT2_1) { ModelLoadResult res = legacy_gpt2_model_load(params.model, gpt2_ctx_v1, vocab, file_format); if(res==ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return res; } else if(res==ModelLoadResult::RETRY_LOAD) { printf("\nTensor Transposition Detected! Retrying GPT-2 model loading..."); return res; } // determine the required inference memory per token: legacy_gpt2_eval(gpt2_ctx_v1, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token, file_format); return ModelLoadResult::SUCCESS; } else if (file_format == FileFormat::GPT2_2 || file_format==FileFormat::GPT2_3 || file_format==FileFormat::GPT2_4) { if(file_format==FileFormat::GPT2_4) { ModelLoadResult res = gpt2_model_load(params.model, gpt2_ctx_v3, vocab, file_format, inputs.gpulayers); if(res==ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return res; } else if(res==ModelLoadResult::RETRY_LOAD) { printf("\nTensor Transposition Detected! Retrying GPT-2 model loading..."); return res; } // determine the required inference memory per token: gpt2_eval(gpt2_ctx_v3, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token, file_format); return ModelLoadResult::SUCCESS; } else { //newer format has bit unshuffling SetQuantsUnshuffled(file_format == FileFormat::GPT2_3); ModelLoadResult res = gpt2_v2_model_load(params.model, gpt2_ctx_v2, vocab, file_format, inputs.gpulayers); if(res==ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return res; } else if(res==ModelLoadResult::RETRY_LOAD) { printf("\nTensor Transposition Detected! Retrying GPT-2 model loading..."); return res; } // determine the required inference memory per token: gpt2_v2_eval(gpt2_ctx_v2, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token, file_format); return ModelLoadResult::SUCCESS; } } else if (file_format == FileFormat::GPTJ_1 || file_format == FileFormat::GPTJ_2) { ModelLoadResult res = legacy_gptj_model_load(params.model, gptj_ctx_v1, vocab, file_format); if(res==ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return res; } else if(res==ModelLoadResult::RETRY_LOAD) { printf("\nTensor Transposition Detected! Retrying GPT-J model loading..."); return res; } // determine the required inference memory per token: legacy_gptj_eval(gptj_ctx_v1, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token, file_format); //if the logits are NAN or duplicated, it means the model is incompatible if(logits.size()>0 && IsNanCheck(logits[0])) { printf("\nBad Logits detected! Retrying GPT-J model loading..."); ggml_v1_free(gptj_ctx_v1.ctx); return ModelLoadResult::RETRY_LOAD; } return ModelLoadResult::SUCCESS; } else if(file_format == FileFormat::GPTJ_3 || file_format == FileFormat::GPTJ_4 || file_format == FileFormat::GPTJ_5) { if(file_format == FileFormat::GPTJ_5) { ModelLoadResult loadresult = gptj_model_load(params.model, gptj_ctx_v3, vocab, inputs.gpulayers); if (loadresult == ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return loadresult; } else if (loadresult == ModelLoadResult::RETRY_LOAD) { printf("\nTensor Transposition Detected! Retrying GPT-J model loading..."); return loadresult; } // determine the required inference memory per token: gptj_eval(gptj_ctx_v3, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token); //if the logits are NAN or duplicated, it means the model is incompatible std::vector oldlogits(logits); //this is another hack because they change the library - we run the eval through the model //twice and compare logits. if they give the same logits for different inputs, model is broken gptj_eval(gptj_ctx_v3, params.n_threads, 0, {4, 5, 6, 7}, logits, mem_per_token); if(logits.size()>0 && (IsNanCheck(logits[0]) || LogitsDuplicated(oldlogits,logits))) { printf("\nBad Logits detected! Retrying GPT-J model loading..."); ggml_free(gptj_ctx_v3.ctx); return ModelLoadResult::RETRY_LOAD; } return ModelLoadResult::SUCCESS; } else { //newer format has bit unshuffling SetQuantsUnshuffled(file_format == FileFormat::GPTJ_4); ModelLoadResult loadresult = gptj_v2_model_load(params.model, gptj_ctx_v2, vocab, inputs.gpulayers); if (loadresult == ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return loadresult; } else if (loadresult == ModelLoadResult::RETRY_LOAD) { printf("\nTensor Transposition Detected! Retrying GPT-J model loading..."); return loadresult; } // determine the required inference memory per token: gptj_v2_eval(gptj_ctx_v2, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token); //if the logits are NAN or duplicated, it means the model is incompatible std::vector oldlogits(logits); //this is another hack because they change the library - we run the eval through the model //twice and compare logits. if they give the same logits for different inputs, model is broken gptj_v2_eval(gptj_ctx_v2, params.n_threads, 0, {4, 5, 6, 7}, logits, mem_per_token); if(logits.size()>0 && (IsNanCheck(logits[0]) || LogitsDuplicated(oldlogits,logits))) { printf("\nBad Logits detected! Retrying GPT-J model loading..."); ggml_v2_free(gptj_ctx_v2.ctx); return ModelLoadResult::RETRY_LOAD; } return ModelLoadResult::SUCCESS; } } else if(file_format==FileFormat::NEOX_1 || file_format==FileFormat::NEOX_2 || file_format==FileFormat::NEOX_3 || file_format==FileFormat::NEOX_4 || file_format==FileFormat::NEOX_5|| file_format==FileFormat::NEOX_6|| file_format==FileFormat::NEOX_7) { if(file_format==FileFormat::NEOX_6|| file_format==FileFormat::NEOX_7) { ModelLoadResult res = gpt_neox_model_load(params.model, neox_ctx_v3, vocab, file_format); if(res==ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return res; } else if(res==ModelLoadResult::RETRY_LOAD) { printf("\nIncorrect Tensor Size Detected! Retrying GPT-NeoX model loading..."); return res; } // determine the required inference memory per token: gpt_neox_eval(neox_ctx_v3, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token); return ModelLoadResult::SUCCESS; } else { //newer format has bit unshuffling SetQuantsUnshuffled(file_format==FileFormat::NEOX_4 || file_format==FileFormat::NEOX_5); ModelLoadResult res = gpt_neox_v2_model_load(params.model, neox_ctx_v2, vocab, file_format); if(res==ModelLoadResult::FAIL) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return res; } else if(res==ModelLoadResult::RETRY_LOAD) { printf("\nIncorrect Tensor Size Detected! Retrying GPT-NeoX model loading..."); return res; } // determine the required inference memory per token: gpt_neox_v2_eval(neox_ctx_v2, params.n_threads, 0, { 0, 1, 2, 3 }, logits, mem_per_token); if(logits.size()>0 && file_format==FileFormat::NEOX_2 && !IsNanCheck(logits[0])) { //run the black magic eval to determine if it's redpajama. VERY UGLY HACK! std::vector test_embd = ::gpt_tokenize(vocab, "1 2 3 4 5 6 7"); auto orig_par_res = neox_ctx_v2.hparams.par_res; neox_ctx_v2.hparams.par_res = 0; //test with residual false gpt_neox_v2_eval(neox_ctx_v2, params.n_threads, 0, test_embd, logits, mem_per_token); neox_ctx_v2.hparams.par_res = orig_par_res; int topid = std::max_element(logits.begin(),logits.end())-logits.begin(); std::string predicted = vocab.id_to_token[topid].c_str(); auto findresult = predicted.find("8"); if(findresult != std::string::npos && findresult<2) { printf("\n---\nOld RedPajama NeoX Detected! Switching to new format! (use_parallel_residual=False)\n"); ggml_v2_free(neox_ctx_v2.ctx); return ModelLoadResult::RETRY_LOAD; } } return ModelLoadResult::SUCCESS; } } else if(file_format==FileFormat::MPT_1) { bool res = mpt_model_load(params.model, mpt_ctx_v3, vocab); if(res==false) { fprintf(stderr, "%s: failed to load model from '%s'\n", __func__, params.model.c_str()); return ModelLoadResult::FAIL; } // determine the required inference memory per token: mpt_eval(mpt_ctx_v3, params.n_threads, 0, { 0, 1, 2, 3 }, logits, false, mem_per_token); return ModelLoadResult::SUCCESS; } else { printf("\nUnknown Model, cannot load.\n"); return ModelLoadResult::FAIL; } } bool gpttype_generate_abort() { remaining_tokens = 0; return true; } const std::string & gpttype_get_pending_output() { return concat_output; } generation_outputs gpttype_generate(const generation_inputs inputs, generation_outputs &output) { stop_sequence.clear(); for(int x=0;x embd_inp; if (file_format == FileFormat::GGML || file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2 || file_format == FileFormat::GGJT_3) { params.prompt.insert(0, 1, ' '); if(file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2 ) { embd_inp = ::llama_v2_tokenize(llama_ctx_v2, params.prompt, true); } else if (file_format == FileFormat::GGML) { embd_inp = ::legacy_llama_v2_tokenize(llama_ctx_v2, params.prompt, true); } else { embd_inp = ::llama_tokenize(llama_ctx_v3, params.prompt, true); } } else { // tokenize the prompt embd_inp = ::gpt_tokenize(vocab, params.prompt); } //truncate to front of the prompt if its too long int32_t nctx = params.n_ctx; if (embd_inp.size() + params.n_predict > nctx) { int offset = embd_inp.size() - nctx + params.n_predict; embd_inp = std::vector(embd_inp.begin() + offset, embd_inp.end()); } //determine how much npast we have to rewind from the current state std::vector embd; int last_n_size = params.repeat_last_n; last_n_tokens.resize(last_n_size); std::fill(last_n_tokens.begin(), last_n_tokens.end(), 0); n_past = 0; if (file_format == FileFormat::RWKV_1 || file_format==FileFormat::RWKV_2) { ContextFastForward(current_context_tokens, embd_inp, n_past, last_n_tokens, nctx, smartcontext, false, true); } else { ContextFastForward(current_context_tokens, embd_inp, n_past, last_n_tokens, nctx, smartcontext, useSmartContext, false); } //if using BLAS and prompt is big enough, switch to single thread and use a huge batch bool approved_format = !(file_format == FileFormat::BADFORMAT || file_format == FileFormat::GPT2_1 || file_format == FileFormat::GPTJ_1 || file_format == FileFormat::GPTJ_2 || file_format == FileFormat::RWKV_1 || file_format==FileFormat::RWKV_2); bool blasmode = (approved_format && embd_inp.size() >= 32 && ggml_cpu_has_blas() && blasbatchsize!=-1); // bool blasmode = false; int original_batch = params.n_batch; int original_threads = params.n_threads; if (blasmode) { //for non llama, limit to 256 int bbs = blasbatchsize; if (file_format != FileFormat::GGML && file_format != FileFormat::GGHF && file_format != FileFormat::GGJT && file_format != FileFormat::GGJT_2 && file_format != FileFormat::GGJT_3) { bbs = (blasbatchsize > 256 ? 256 : blasbatchsize); } params.n_batch = bbs; //received reports of 1024 and above crashing on some models if(!ggml_cpu_has_gpublas()) { params.n_threads = 1; //do not limit here anymore. } else { params.n_threads = n_blasthreads; } } current_context_tokens.resize(n_past); remaining_tokens = params.n_predict; int stopper_unused_tokens = 0; int input_consumed = 0; std::mt19937 rng(params.seed); concat_output = ""; bool startedsampling = false; timer_start(); double time1 = 0, time2 = 0; int32_t n_vocab = 0; if (file_format == FileFormat::GGML || file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2) { n_vocab = llama_v2_n_vocab(llama_ctx_v2); } else if(file_format == FileFormat::GGJT_3) { n_vocab = llama_n_vocab(llama_ctx_v3); } else if (file_format == FileFormat::GPTJ_1 || file_format == FileFormat::GPTJ_2) { n_vocab = gptj_ctx_v1.hparams.n_vocab; } else if(file_format == FileFormat::GPTJ_3 || file_format==FileFormat::GPTJ_4) { n_vocab = gptj_ctx_v2.hparams.n_vocab; } else if(file_format==FileFormat::GPTJ_5) { n_vocab = gptj_ctx_v3.hparams.n_vocab; } else if(file_format == FileFormat::GPT2_1) { n_vocab = gpt2_ctx_v1.hparams.n_vocab; } else if(file_format == FileFormat::GPT2_2 || file_format==FileFormat::GPT2_3) { n_vocab = gpt2_ctx_v2.hparams.n_vocab; } else if(file_format==FileFormat::GPT2_4) { n_vocab = gpt2_ctx_v3.hparams.n_vocab; } else if(file_format == FileFormat::NEOX_1 || file_format == FileFormat::NEOX_2 || file_format == FileFormat::NEOX_3 || file_format==FileFormat::NEOX_4 || file_format==FileFormat::NEOX_5) { n_vocab = neox_ctx_v2.hparams.n_vocab; } else if( file_format==FileFormat::NEOX_6|| file_format==FileFormat::NEOX_7) { n_vocab = neox_ctx_v3.hparams.n_vocab; } else if( file_format==FileFormat::MPT_1) { n_vocab = mpt_ctx_v3.hparams.n_vocab; } else if(file_format == FileFormat::RWKV_1 || file_format==FileFormat::RWKV_2) { n_vocab = vocab.id_to_token.size(); //handled seperately if(n_past==0) { if(file_format == FileFormat::RWKV_1) { rwkv_ctx_v2->state_in = nullptr; } else { rwkv_ctx_v3->state_in = nullptr; } } else { if (file_format == FileFormat::RWKV_1) { rwkv_ctx_v2->state_in = rwkv_ctx_v2->state_out; } else { rwkv_ctx_v3->state_in = rwkv_ctx_v3->state_out; } //if it's empty, push in the final previous token if(embd_inp.size()==0 && current_context_tokens.size()>0) { embd_inp.push_back(current_context_tokens[current_context_tokens.size()-1]); current_context_tokens.pop_back(); } } } else { printf("Bad format!"); } printf("\n"); if (debugmode) { std::string outstr = ""; printf("\n[Debug: Dump Input Tokens, format: %d]\n", file_format); std::string tmp = ""; for (auto id : embd_inp) { tmp += "'" + FileFormatTokenizeID(id, file_format) + " (" + std::to_string(id) + ")', "; } ::utreplace(tmp, "\n", "\\n"); outstr += tmp; outstr += "\n\n[Debug: Context Size = " + std::to_string(current_context_tokens.size()) + "]\n"; tmp = ""; for (auto id : current_context_tokens) { tmp += "'" + FileFormatTokenizeID(id, file_format) + " (" + std::to_string(id) + ")', "; } ::utreplace(tmp, "\n", "\\n"); outstr += tmp; printf("%s\n\n", outstr.c_str()); } while (remaining_tokens > 0) { gpt_vocab::id id = 0; // predict unsigned int embdsize = embd.size(); //print progress if (!startedsampling) { printf("\rProcessing Prompt%s (%d / %d tokens)", (blasmode ? " [BLAS]" : ""), input_consumed, embd_inp.size()); } fflush(stdout); if (embdsize > 0) { bool evalres = false; if (file_format == FileFormat::GGML || file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2) { evalres = (llama_v2_eval(llama_ctx_v2, embd.data(), embdsize, n_past, params.n_threads)==0); } else if(file_format == FileFormat::GGJT_3) { evalres = (llama_eval(llama_ctx_v3, embd.data(), embdsize, n_past, params.n_threads)==0); } else if(file_format==FileFormat::RWKV_1 || file_format==FileFormat::RWKV_2) { if (file_format == FileFormat::RWKV_1) { evalres = rwkv_v2_eval(rwkv_ctx_v2, embd[0], rwkv_ctx_v2->state_in, rwkv_ctx_v2->state_out, rwkv_ctx_v2->logits_out); memcpy(logits.data(), rwkv_ctx_v2->logits_out, sizeof(float) * rwkv_vocab.size()); rwkv_ctx_v2->state_in = rwkv_ctx_v2->state_out; } else { if(embd.size()>1) { evalres = rwkv_eval_sequence(rwkv_ctx_v3, (uint32_t*)embd.data(), embd.size(), rwkv_ctx_v3->state_in, rwkv_ctx_v3->state_out, rwkv_ctx_v3->logits_out); } else { evalres = rwkv_eval(rwkv_ctx_v3, embd[0], rwkv_ctx_v3->state_in, rwkv_ctx_v3->state_out, rwkv_ctx_v3->logits_out); } memcpy(logits.data(), rwkv_ctx_v3->logits_out, sizeof(float) * rwkv_vocab.size()); rwkv_ctx_v3->state_in = rwkv_ctx_v3->state_out; } } else if(file_format==FileFormat::GPT2_1) { evalres = legacy_gpt2_eval(gpt2_ctx_v1, params.n_threads, n_past, embd, logits, mem_per_token, file_format); } else if(file_format==FileFormat::GPT2_2 || file_format==FileFormat::GPT2_3) { evalres = gpt2_v2_eval(gpt2_ctx_v2, params.n_threads, n_past, embd, logits, mem_per_token, file_format); } else if(file_format==FileFormat::GPT2_4) { evalres = gpt2_eval(gpt2_ctx_v3, params.n_threads, n_past, embd, logits, mem_per_token, file_format); } else if(file_format==FileFormat::NEOX_1 || file_format == FileFormat::NEOX_2 || file_format == FileFormat::NEOX_3 || file_format==FileFormat::NEOX_4 || file_format==FileFormat::NEOX_5) { evalres = gpt_neox_v2_eval(neox_ctx_v2, params.n_threads, n_past, embd, logits, mem_per_token); } else if(file_format==FileFormat::NEOX_6|| file_format==FileFormat::NEOX_7) { evalres = gpt_neox_eval(neox_ctx_v3, params.n_threads, n_past, embd, logits, mem_per_token); } else if(file_format==FileFormat::GPTJ_1 || file_format==FileFormat::GPTJ_2) { evalres = legacy_gptj_eval(gptj_ctx_v1, params.n_threads, n_past, embd, logits, mem_per_token, file_format); } else if(file_format==FileFormat::GPTJ_3 || file_format==FileFormat::GPTJ_4) { evalres = gptj_v2_eval(gptj_ctx_v2, params.n_threads, n_past, embd, logits, mem_per_token); } else if(file_format==FileFormat::GPTJ_5) { evalres = gptj_eval(gptj_ctx_v3, params.n_threads, n_past, embd, logits, mem_per_token); } else if(file_format==FileFormat::MPT_1) { evalres = mpt_eval(mpt_ctx_v3, params.n_threads, n_past, embd, logits, false, mem_per_token); } else { printf("\nCannot find eval function\n"); } if (!evalres) { fprintf(stderr, "Failed to predict\n"); snprintf(output.text, sizeof(output.text), "%s", ""); output.status = 0; generation_finished = true; return output; } } n_past += embd.size(); embd.clear(); if ((int)embd_inp.size() <= input_consumed) { // out of user input, sample next token const float top_k = params.top_k; const float top_p = params.top_p; const float temp = params.temp; const float top_a = inputs.top_a; const float repeat_penalty = params.repeat_penalty; const float typical_p = params.typical_p; const float tfs_z = params.tfs_z; if (!startedsampling) { startedsampling = true; params.n_batch = original_batch; params.n_threads = original_threads; time1 = timer_check(); timer_start(); printf("\n"); } unsigned int eosID = 0; float * logitsPtr; if(file_format == FileFormat::GGML || file_format == FileFormat::GGHF || file_format == FileFormat::GGJT || file_format == FileFormat::GGJT_2 || file_format == FileFormat::GGJT_3) { if(file_format == FileFormat::GGJT_3) { logitsPtr = llama_get_logits(llama_ctx_v3); } else { logitsPtr = llama_v2_get_logits(llama_ctx_v2); } eosID = llama_token_eos(); if (!unbanTokens) { // set the logit of the eos token (2) to zero to avoid sampling it logitsPtr[eosID] = 0; } } else { logitsPtr = logits.data(); if (!unbanTokens) { //gpt2 uses negative logits, so we cant zero it // set the logit of the eos token to minimum to avoid sampling it if (file_format == FileFormat::GPT2_1 || file_format == FileFormat::GPT2_2 || file_format == FileFormat::GPT2_3 || file_format == FileFormat::GPT2_4 || file_format == FileFormat::GPTJ_1 || file_format == FileFormat::GPTJ_2 || file_format == FileFormat::GPTJ_3 || file_format == FileFormat::GPTJ_4 || file_format == FileFormat::GPTJ_5) { eosID = 50256; if(logits.size() > eosID) { int topid = std::min_element(logits.begin(),logits.end())-logits.begin(); logits[eosID] = (logits[topid] < 0 ? logits[topid] : 0); } else { //special case, starcoder models use ID 0 for EOS if (file_format == FileFormat::GPT2_3 || file_format == FileFormat::GPT2_4) { eosID = 0; int topid = std::min_element(logits.begin(), logits.end()) - logits.begin(); logits[eosID] = (logits[topid] < 0 ? logits[topid] : 0); } } } // set the logit of the eos token (0) to minimum to avoid sampling it if (file_format == FileFormat::RWKV_1 || file_format == FileFormat::RWKV_2 || file_format == FileFormat::NEOX_1 || file_format == FileFormat::NEOX_2 || file_format == FileFormat::NEOX_3 || file_format == FileFormat::NEOX_4 || file_format == FileFormat::NEOX_5 || file_format == FileFormat::NEOX_6 || file_format == FileFormat::NEOX_7 || file_format == FileFormat::MPT_1) { eosID = 0; int topid = std::min_element(logits.begin(),logits.end())-logits.begin(); logits[eosID] = (logits[topid] < 0 ? logits[topid] : 0); } } } id = SampleLogits(logitsPtr, nctx, n_vocab, last_n_size, repeat_penalty, top_k, top_a, top_p, typical_p, tfs_z, temp, rng, params.mirostat,params.mirostat_tau,params.mirostat_eta); last_n_tokens.erase(last_n_tokens.begin()); last_n_tokens.push_back(id); current_context_tokens.push_back(id); // add it to the context embd.push_back(id); // decrement remaining sampling budget --remaining_tokens; for (auto id : embd) { std::string tokenizedstr = FileFormatTokenizeID(id, file_format); if(stream_sse) { generated_tokens.push_back(tokenizedstr); } concat_output += tokenizedstr; } if (startedsampling) { printf("\rGenerating (%d / %d tokens)", (params.n_predict - remaining_tokens), params.n_predict); } if(debugmode && top_picks.size()>0) { printf(" ["); bool firstloop = true; for (auto & pick : top_picks) { if (!firstloop) { printf(" "); } firstloop = false; std::string tokenizedstr = FileFormatTokenizeID(pick.id, file_format); ::utreplace(tokenizedstr, "\n", "\\n"); printf("(%s %.2f%%)", tokenizedstr.c_str(), pick.p*100); } printf("]\n"); } if(unbanTokens && id==eosID) { printf("\n(EOS token triggered!)"); remaining_tokens = 0; } for (const auto &matched : stop_sequence) { if (concat_output.find(matched) != std::string::npos) { stopper_unused_tokens = remaining_tokens; remaining_tokens = 0; printf("\n(Stop sequence triggered: <%s>)", matched.c_str()); break; } } fflush(stdout); } else { // some user input remains from prompt or interaction, forward it to processing while ((int)embd_inp.size() > input_consumed) { embd.push_back(embd_inp[input_consumed]); last_n_tokens.erase(last_n_tokens.begin()); last_n_tokens.push_back(embd_inp[input_consumed]); current_context_tokens.push_back(embd_inp[input_consumed]); ++input_consumed; if ((int)embd.size() >= params.n_batch) { break; } } } } time2 = timer_check(); float pt1 = (time1*1000.0/(embd_inp.size()==0?1:embd_inp.size())); int realnpredict = params.n_predict-stopper_unused_tokens; float pt2 = (time2*1000.0/(realnpredict==0?1:realnpredict)); float tokens_per_second = (realnpredict == 0 ? 0 : realnpredict / (time1 + time2)); printf("\nTime Taken - Processing:%.1fs (%.0fms/T), Generation:%.1fs (%.0fms/T), Total:%.1fs (%.1fT/s)", time1, pt1, time2, pt2, (time1 + time2), tokens_per_second); fflush(stdout); output.status = 1; generation_finished = true; snprintf(output.text, sizeof(output.text), "%s", concat_output.c_str()); return output; }