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Amlan-109
feat: Initial commit of LocalAI Amlan Edition with premium branding and personalization
750bbe6
| // llama.cpp gRPC C++ backend server | |
| // | |
| // Ettore Di Giacinto <mudler@localai.io> and llama.cpp authors | |
| // | |
| // This is a gRPC server for llama.cpp compatible with the LocalAI proto | |
| // Note: this is a re-adaptation of the original llama.cpp example/server.cpp for HTTP (https://github.com/ggerganov/llama.cpp/tree/master/examples/server), | |
| // but modified to work with gRPC | |
| // | |
| // LocalAI | |
| using grpc::Server; | |
| using grpc::ServerBuilder; | |
| using grpc::ServerContext; | |
| using grpc::Status; | |
| // END LocalAI | |
| ///////////////////////////////// | |
| //////////////////////////////// | |
| //////// LOCALAI code starts below here | |
| ///////////////////////////////// | |
| //////////////////////////////// | |
| bool loaded_model; // TODO: add a mutex for this, but happens only once loading the model | |
| static std::function<void(int)> shutdown_handler; | |
| static std::atomic_flag is_terminating = ATOMIC_FLAG_INIT; | |
| static inline void signal_handler(int signal) { | |
| if (is_terminating.test_and_set()) { | |
| // in case it hangs, we can force terminate the server by hitting Ctrl+C twice | |
| // this is for better developer experience, we can remove when the server is stable enough | |
| fprintf(stderr, "Received second interrupt, terminating immediately.\n"); | |
| exit(1); | |
| } | |
| shutdown_handler(signal); | |
| } | |
| // Forward declarations | |
| static void start_llama_server(server_context& ctx_server); | |
| static json parse_options(bool streaming, const backend::PredictOptions* predict, const common_params& params_base, llama_context* ctx); | |
| static ggml_type kv_cache_type_from_str(const std::string & s); | |
| static std::string get_all_kv_cache_types(); | |
| static void add_rpc_devices(std::string servers); | |
| static void params_parse(server_context& ctx_server, const backend::ModelOptions* request, common_params & params); | |
| static void start_llama_server(server_context& ctx_server) { | |
| LOG_INF("%s: starting llama server\n", __func__); | |
| LOG_INF("%s: waiting for model to be loaded\n", __func__); | |
| // Wait for model to be loaded first | |
| while (!loaded_model) { | |
| std::this_thread::sleep_for(std::chrono::milliseconds(100)); | |
| } | |
| LOG_INF("%s: model loaded\n", __func__); | |
| // print sample chat example to make it clear which template is used | |
| // LOG_INF("%s: chat template, chat_template: %s, example_format: '%s'\n", __func__, | |
| // common_chat_templates_source(ctx_server.impl->chat_params.tmpls.get()), | |
| // common_chat_format_example(ctx_server.impl->chat_params.tmpls.get(), ctx_server.impl->params_base.use_jinja).c_str(), ctx_server.impl->params_base.default_template_kwargs); | |
| // Keep the chat templates initialized in load_model() so they can be used when UseTokenizerTemplate is enabled | |
| // Templates will only be used conditionally in Predict/PredictStream when UseTokenizerTemplate is true and Messages are provided | |
| shutdown_handler = [&](int) { | |
| // this will unblock start_loop() | |
| ctx_server.terminate(); | |
| }; | |
| // TODO: refactor in common/console | |
| struct sigaction sigint_action; | |
| sigint_action.sa_handler = signal_handler; | |
| sigemptyset (&sigint_action.sa_mask); | |
| sigint_action.sa_flags = 0; | |
| sigaction(SIGINT, &sigint_action, NULL); | |
| sigaction(SIGTERM, &sigint_action, NULL); | |
| auto console_ctrl_handler = +[](DWORD ctrl_type) -> BOOL { | |
| return (ctrl_type == CTRL_C_EVENT) ? (signal_handler(SIGINT), true) : false; | |
| }; | |
| SetConsoleCtrlHandler(reinterpret_cast<PHANDLER_ROUTINE>(console_ctrl_handler), true); | |
| // this call blocks the main thread until ctx_server.terminate() is called | |
| ctx_server.start_loop(); | |
| } | |
| json parse_options(bool streaming, const backend::PredictOptions* predict, const common_params& params_base, llama_context* ctx) | |
| { | |
| // Create now a json data from the prediction options instead | |
| // | |
| json data; | |
| data["stream"] = streaming; | |
| data["cache_prompt"] = predict->promptcacheall(); | |
| data["n_predict"] = predict->tokens() == 0 ? -1 : predict->tokens(); | |
| data["top_k"] = predict->topk(); | |
| data["top_p"] = predict->topp(); | |
| data["typical_p"] = predict->typicalp(); | |
| data["temperature"] = predict->temperature(); | |
| data["repeat_last_n"] = predict->repeat(); | |
| data["repeat_penalty"] = predict->penalty(); | |
| data["frequency_penalty"] = predict->frequencypenalty(); | |
| data["presence_penalty"] = predict->presencepenalty(); | |
| data["mirostat"] = predict->mirostat(); | |
| data["mirostat_tau"] = predict->mirostattau(); | |
| data["mirostat_eta"] = predict->mirostateta(); | |
| data["n_keep"] = predict->nkeep(); | |
| data["seed"] = predict->seed(); | |
| std::string grammar_str = predict->grammar(); | |
| if (!grammar_str.empty()) { | |
| data["grammar"] = grammar_str; | |
| SRV_INF("Using grammar: %s\n", grammar_str.c_str()); | |
| } | |
| // Only set prompt if UseTokenizerTemplate is false or if no Messages are provided | |
| // When UseTokenizerTemplate is true and Messages are provided, prompt will be set via chat templates in Predict/PredictStream | |
| if (!predict->usetokenizertemplate() || predict->messages_size() == 0) { | |
| data["prompt"] = predict->prompt(); | |
| } | |
| // Extract tools and tool_choice from proto and add to data JSON | |
| SRV_INF("[TOOLS DEBUG] parse_options: Checking for tools in proto, tools().empty()=%d, tools().size()=%zu\n", | |
| predict->tools().empty() ? 1 : 0, predict->tools().size()); | |
| if (!predict->tools().empty()) { | |
| SRV_INF("[TOOLS DEBUG] parse_options: Tools string from proto (first 500 chars): %s\n", | |
| predict->tools().substr(0, std::min<size_t>(500, predict->tools().size())).c_str()); | |
| try { | |
| // Parse tools JSON string and add to data | |
| json tools_json = json::parse(predict->tools()); | |
| data["tools"] = tools_json; | |
| SRV_INF("Extracted tools from proto: %s\n", predict->tools().c_str()); | |
| // Debug: Log tools count and names | |
| if (tools_json.is_array()) { | |
| SRV_INF("[TOOLS DEBUG] parse_options: Successfully parsed %zu tools from Go layer\n", tools_json.size()); | |
| for (size_t i = 0; i < tools_json.size(); i++) { | |
| if (tools_json[i].contains("function") && tools_json[i]["function"].contains("name")) { | |
| SRV_INF("[TOOLS DEBUG] parse_options: Tool %zu: %s\n", i, tools_json[i]["function"]["name"].get<std::string>().c_str()); | |
| } else if (tools_json[i].contains("name")) { | |
| SRV_INF("[TOOLS DEBUG] parse_options: Tool %zu: %s\n", i, tools_json[i]["name"].get<std::string>().c_str()); | |
| } | |
| } | |
| } else { | |
| SRV_WRN("[TOOLS DEBUG] parse_options: Parsed tools JSON is not an array: %s\n", tools_json.dump().c_str()); | |
| } | |
| } catch (const json::parse_error& e) { | |
| SRV_WRN("Failed to parse tools JSON from proto: %s\n", e.what()); | |
| SRV_WRN("[TOOLS DEBUG] parse_options: Tools string that failed to parse: %s\n", predict->tools().c_str()); | |
| } | |
| } else { | |
| SRV_INF("%s", "[TOOLS DEBUG] parse_options: No tools received from Go layer (predict->tools() is empty)\n"); | |
| } | |
| // Debug: Verify tools are in data after extraction | |
| if (data.contains("tools")) { | |
| SRV_INF("[TOOLS DEBUG] parse_options: Tools successfully added to data, count: %zu\n", | |
| data["tools"].is_array() ? data["tools"].size() : 0); | |
| } else { | |
| SRV_INF("%s", "[TOOLS DEBUG] parse_options: WARNING - Tools NOT in data after extraction!\n"); | |
| } | |
| if (!predict->toolchoice().empty()) { | |
| try { | |
| // Parse tool_choice JSON string | |
| json tool_choice_json = json::parse(predict->toolchoice()); | |
| // tool_choice can be a string ("auto", "none", "required") or an object | |
| // Store it as-is (string or object) so we can convert object to "required" later when adding to body_json | |
| if (tool_choice_json.is_string()) { | |
| data["tool_choice"] = tool_choice_json.get<std::string>(); | |
| SRV_DBG("[TOOLS DEBUG] Received tool_choice from Go layer: %s\n", tool_choice_json.get<std::string>().c_str()); | |
| } else { | |
| // Store object as-is so we can detect it later and convert to "required" | |
| data["tool_choice"] = tool_choice_json; | |
| SRV_DBG("[TOOLS DEBUG] Received tool_choice object from Go layer: %s\n", tool_choice_json.dump().c_str()); | |
| } | |
| SRV_INF("Extracted tool_choice from proto: %s\n", predict->toolchoice().c_str()); | |
| } catch (const json::parse_error& e) { | |
| // If parsing fails, treat as string | |
| data["tool_choice"] = predict->toolchoice(); | |
| SRV_INF("Extracted tool_choice as string: %s\n", predict->toolchoice().c_str()); | |
| } | |
| } | |
| // Extract logprobs and top_logprobs from proto and add to JSON data | |
| // Following server.cpp pattern: logprobs maps to n_probs when provided | |
| if (predict->logprobs() > 0) { | |
| data["logprobs"] = predict->logprobs(); | |
| // Map logprobs to n_probs (following server.cpp line 369 pattern) | |
| // n_probs will be set by params_from_json_cmpl if logprobs is provided | |
| data["n_probs"] = predict->logprobs(); | |
| SRV_INF("Using logprobs: %d\n", predict->logprobs()); | |
| } | |
| if (predict->toplogprobs() > 0) { | |
| data["top_logprobs"] = predict->toplogprobs(); | |
| SRV_INF("Using top_logprobs: %d\n", predict->toplogprobs()); | |
| } | |
| // Extract logit_bias from proto and add to JSON data | |
| if (!predict->logitbias().empty()) { | |
| try { | |
| // Parse logit_bias JSON string from proto | |
| json logit_bias_json = json::parse(predict->logitbias()); | |
| // Add to data - llama.cpp server expects it as an object (map) | |
| data["logit_bias"] = logit_bias_json; | |
| SRV_INF("Using logit_bias: %s\n", predict->logitbias().c_str()); | |
| } catch (const json::parse_error& e) { | |
| SRV_ERR("Failed to parse logit_bias JSON from proto: %s\n", e.what()); | |
| } | |
| } | |
| data["ignore_eos"] = predict->ignoreeos(); | |
| data["embeddings"] = predict->embeddings(); | |
| // Add the correlationid to json data | |
| data["correlation_id"] = predict->correlationid(); | |
| // for each image in the request, add the image data | |
| // | |
| for (int i = 0; i < predict->images_size(); i++) { | |
| data["image_data"].push_back(json | |
| { | |
| {"id", i}, | |
| {"data", predict->images(i)}, | |
| }); | |
| } | |
| // for each audio in the request, add the audio data | |
| for (int i = 0; i < predict->audios_size(); i++) { | |
| data["audio_data"].push_back(json | |
| { | |
| {"id", i}, | |
| {"data", predict->audios(i)}, | |
| }); | |
| } | |
| data["stop"] = predict->stopprompts(); | |
| // data["n_probs"] = predict->nprobs(); | |
| //TODO: images, | |
| // Serialize grammar triggers from server context to JSON array | |
| if (!params_base.sampling.grammar_triggers.empty()) { | |
| json grammar_triggers = json::array(); | |
| for (const auto& trigger : params_base.sampling.grammar_triggers) { | |
| json trigger_json; | |
| trigger_json["value"] = trigger.value; | |
| // Always serialize as WORD type since upstream converts WORD to TOKEN internally | |
| trigger_json["type"] = static_cast<int>(COMMON_GRAMMAR_TRIGGER_TYPE_WORD); | |
| grammar_triggers.push_back(trigger_json); | |
| } | |
| data["grammar_triggers"] = grammar_triggers; | |
| } | |
| // Serialize preserved tokens from server context to JSON array | |
| if (!params_base.sampling.preserved_tokens.empty()) { | |
| json preserved_tokens = json::array(); | |
| for (const auto& token : params_base.sampling.preserved_tokens) { | |
| preserved_tokens.push_back(common_token_to_piece(ctx, token)); | |
| } | |
| data["preserved_tokens"] = preserved_tokens; | |
| } | |
| return data; | |
| } | |
| const std::vector<ggml_type> kv_cache_types = { | |
| GGML_TYPE_F32, | |
| GGML_TYPE_F16, | |
| GGML_TYPE_BF16, | |
| GGML_TYPE_Q8_0, | |
| GGML_TYPE_Q4_0, | |
| GGML_TYPE_Q4_1, | |
| GGML_TYPE_IQ4_NL, | |
| GGML_TYPE_Q5_0, | |
| GGML_TYPE_Q5_1, | |
| }; | |
| static ggml_type kv_cache_type_from_str(const std::string & s) { | |
| for (const auto & type : kv_cache_types) { | |
| if (ggml_type_name(type) == s) { | |
| return type; | |
| } | |
| } | |
| throw std::runtime_error("Unsupported cache type: " + s); | |
| } | |
| static std::string get_all_kv_cache_types() { | |
| std::ostringstream msg; | |
| for (const auto & type : kv_cache_types) { | |
| msg << ggml_type_name(type) << (&type == &kv_cache_types.back() ? "" : ", "); | |
| } | |
| return msg.str(); | |
| } | |
| // Adds an RPC server | |
| // Description here: https://github.com/ggml-org/llama.cpp/blob/master/tools/rpc/README.md | |
| static void add_rpc_devices(std::string servers) { | |
| auto rpc_servers = string_split<std::string>(servers, ','); | |
| // Trim whitespace to allow more flexible configurations, such as having entries on separate lines. | |
| for (std::string & server : rpc_servers) | |
| { | |
| server.erase(0, server.find_first_not_of(" \t\n\r")); | |
| server.erase(server.find_last_not_of(" \t\n\r") + 1); | |
| } | |
| if (rpc_servers.empty()) { | |
| throw std::invalid_argument("no RPC servers specified"); | |
| } | |
| ggml_backend_reg_t rpc_reg = ggml_backend_reg_by_name("RPC"); | |
| if (!rpc_reg) { | |
| throw std::invalid_argument("failed to find RPC backend"); | |
| } | |
| typedef ggml_backend_reg_t (*ggml_backend_rpc_add_server_t)(const char * endpoint); | |
| ggml_backend_rpc_add_server_t ggml_backend_rpc_add_server_fn = (ggml_backend_rpc_add_server_t) ggml_backend_reg_get_proc_address(rpc_reg, "ggml_backend_rpc_add_server"); | |
| if (!ggml_backend_rpc_add_server_fn) { | |
| throw std::invalid_argument("failed to find RPC add server function"); | |
| } | |
| for (const auto & server : rpc_servers) { | |
| ggml_backend_reg_t reg = ggml_backend_rpc_add_server_fn(server.c_str()); | |
| ggml_backend_register(reg); | |
| } | |
| } | |
| static void params_parse(server_context& /*ctx_server*/, const backend::ModelOptions* request, | |
| common_params & params) { | |
| // this is comparable to: https://github.com/ggerganov/llama.cpp/blob/d9b33fe95bd257b36c84ee5769cc048230067d6f/examples/server/server.cpp#L1809 | |
| params.model.path = request->modelfile(); | |
| if (!request->mmproj().empty()) { | |
| params.mmproj.path = request->mmproj(); | |
| } | |
| // params.model_alias ?? | |
| params.model_alias = request->modelfile(); | |
| if (!request->cachetypekey().empty()) { | |
| params.cache_type_k = kv_cache_type_from_str(request->cachetypekey()); | |
| } | |
| if (!request->cachetypevalue().empty()) { | |
| params.cache_type_v = kv_cache_type_from_str(request->cachetypevalue()); | |
| } | |
| params.n_ctx = request->contextsize(); | |
| //params.memory_f16 = request->f16memory(); | |
| params.cpuparams.n_threads = request->threads(); | |
| params.n_gpu_layers = request->ngpulayers(); | |
| params.n_batch = request->nbatch(); | |
| //params.verbosity = INT_MAX; | |
| // Enable all debug logs by setting verbosity threshold to maximum | |
| //common_log_set_verbosity_thold(INT_MAX); | |
| params.n_ubatch = request->nbatch(); // fixes issue with reranking models being limited to 512 tokens (the default n_ubatch size); allows for setting the maximum input amount of tokens thereby avoiding this error "input is too large to process. increase the physical batch size" | |
| // Initialize ctx_shift to false by default (can be overridden by options) | |
| params.ctx_shift = false; | |
| // Initialize cache_ram_mib to -1 by default (no limit, can be overridden by options) | |
| params.cache_ram_mib = -1; | |
| // Initialize n_parallel to 1 by default (can be overridden by options) | |
| params.n_parallel = 1; | |
| // Initialize grpc_servers to empty (can be overridden by options) | |
| std::string grpc_servers_option = ""; | |
| // Initialize fit_params options (can be overridden by options) | |
| // fit_params: whether to auto-adjust params to fit device memory (default: true as in llama.cpp) | |
| params.fit_params = true; | |
| // fit_params_target: target margin per device in bytes (default: 1GB per device) | |
| // Initialize as vector with default value for all devices | |
| params.fit_params_target = std::vector<size_t>(llama_max_devices(), 1024 * 1024 * 1024); | |
| // fit_params_min_ctx: minimum context size for fit (default: 4096) | |
| params.fit_params_min_ctx = 4096; | |
| // Initialize additional server options (can be overridden by options) | |
| // n_cache_reuse: min chunk size for KV cache reuse via shifting (default: 0 = disabled) | |
| params.n_cache_reuse = 0; | |
| // slot_prompt_similarity: threshold for slot prompt matching (default: 0.1) | |
| params.slot_prompt_similarity = 0.1f; | |
| // swa_full: use full-size SWA cache (default: false) | |
| params.swa_full = false; | |
| // cont_batching: continuous batching (default: true, auto-enabled when n_parallel > 1) | |
| params.cont_batching = true; | |
| // check_tensors: validate tensor data (default: false) | |
| params.check_tensors = false; | |
| // warmup: enable warmup run (default: true) | |
| params.warmup = true; | |
| // no_op_offload: disable host tensor op offload (default: false) | |
| params.no_op_offload = false; | |
| // kv_unified: enable unified KV cache (default: false) | |
| params.kv_unified = false; | |
| // n_ctx_checkpoints: max context checkpoints per slot (default: 8) | |
| params.n_ctx_checkpoints = 8; | |
| // decode options. Options are in form optname:optvale, or if booleans only optname. | |
| for (int i = 0; i < request->options_size(); i++) { | |
| std::string opt = request->options(i); | |
| std::vector<char> opt_buf(opt.begin(), opt.end()); | |
| opt_buf.push_back('\0'); | |
| char *optname = strtok(opt_buf.data(), ":"); | |
| char *optval = strtok(NULL, ":"); | |
| std::string optval_str = (optval == NULL) ? "true" : optval; | |
| if (!strcmp(optname, "context_shift")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.ctx_shift = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.ctx_shift = false; | |
| } | |
| } else if (!strcmp(optname, "use_jinja") || !strcmp(optname, "jinja")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.use_jinja = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.use_jinja = false; | |
| } | |
| } else if (!strcmp(optname, "cache_ram")) { | |
| if (optval != NULL) { | |
| try { | |
| params.cache_ram_mib = std::stoi(optval_str); | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (-1) | |
| } | |
| } | |
| } else if (!strcmp(optname, "parallel") || !strcmp(optname, "n_parallel")) { | |
| if (optval != NULL) { | |
| try { | |
| params.n_parallel = std::stoi(optval_str); | |
| if (params.n_parallel > 1) { | |
| params.cont_batching = true; | |
| } | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (1) | |
| } | |
| } | |
| } else if (!strcmp(optname, "grpc_servers") || !strcmp(optname, "rpc_servers")) { | |
| if (optval != NULL) { | |
| grpc_servers_option = optval_str; | |
| } | |
| } else if (!strcmp(optname, "fit_params") || !strcmp(optname, "fit")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.fit_params = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.fit_params = false; | |
| } | |
| } else if (!strcmp(optname, "fit_params_target") || !strcmp(optname, "fit_target")) { | |
| if (optval != NULL) { | |
| try { | |
| // Value is in MiB, can be comma-separated list for multiple devices | |
| // Single value is broadcast across all devices | |
| std::string arg_next = optval_str; | |
| const std::regex regex{ R"([,/]+)" }; | |
| std::sregex_token_iterator it{ arg_next.begin(), arg_next.end(), regex, -1 }; | |
| std::vector<std::string> split_arg{ it, {} }; | |
| if (split_arg.size() >= llama_max_devices()) { | |
| // Too many values provided | |
| continue; | |
| } | |
| if (split_arg.size() == 1) { | |
| // Single value: broadcast to all devices | |
| size_t value_mib = std::stoul(split_arg[0]); | |
| std::fill(params.fit_params_target.begin(), params.fit_params_target.end(), value_mib * 1024 * 1024); | |
| } else { | |
| // Multiple values: set per device | |
| for (size_t i = 0; i < split_arg.size() && i < params.fit_params_target.size(); i++) { | |
| params.fit_params_target[i] = std::stoul(split_arg[i]) * 1024 * 1024; | |
| } | |
| } | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (1GB per device) | |
| } | |
| } | |
| } else if (!strcmp(optname, "fit_params_min_ctx") || !strcmp(optname, "fit_ctx")) { | |
| if (optval != NULL) { | |
| try { | |
| params.fit_params_min_ctx = std::stoi(optval_str); | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (4096) | |
| } | |
| } | |
| } else if (!strcmp(optname, "n_cache_reuse") || !strcmp(optname, "cache_reuse")) { | |
| if (optval != NULL) { | |
| try { | |
| params.n_cache_reuse = std::stoi(optval_str); | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (0) | |
| } | |
| } | |
| } else if (!strcmp(optname, "slot_prompt_similarity") || !strcmp(optname, "sps")) { | |
| if (optval != NULL) { | |
| try { | |
| params.slot_prompt_similarity = std::stof(optval_str); | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (0.1) | |
| } | |
| } | |
| } else if (!strcmp(optname, "swa_full")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.swa_full = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.swa_full = false; | |
| } | |
| } else if (!strcmp(optname, "cont_batching") || !strcmp(optname, "continuous_batching")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.cont_batching = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.cont_batching = false; | |
| } | |
| } else if (!strcmp(optname, "check_tensors")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.check_tensors = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.check_tensors = false; | |
| } | |
| } else if (!strcmp(optname, "warmup")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.warmup = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.warmup = false; | |
| } | |
| } else if (!strcmp(optname, "no_op_offload")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.no_op_offload = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.no_op_offload = false; | |
| } | |
| } else if (!strcmp(optname, "kv_unified") || !strcmp(optname, "unified_kv")) { | |
| if (optval_str == "true" || optval_str == "1" || optval_str == "yes" || optval_str == "on" || optval_str == "enabled") { | |
| params.kv_unified = true; | |
| } else if (optval_str == "false" || optval_str == "0" || optval_str == "no" || optval_str == "off" || optval_str == "disabled") { | |
| params.kv_unified = false; | |
| } | |
| } else if (!strcmp(optname, "n_ctx_checkpoints") || !strcmp(optname, "ctx_checkpoints")) { | |
| if (optval != NULL) { | |
| try { | |
| params.n_ctx_checkpoints = std::stoi(optval_str); | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (8) | |
| } | |
| } | |
| } | |
| } | |
| // Set params.n_parallel from environment variable if not set via options (fallback) | |
| if (params.n_parallel == 1) { | |
| const char *env_parallel = std::getenv("LLAMACPP_PARALLEL"); | |
| if (env_parallel != NULL) { | |
| try { | |
| params.n_parallel = std::stoi(env_parallel); | |
| if (params.n_parallel > 1) { | |
| params.cont_batching = true; | |
| } | |
| } catch (const std::exception& e) { | |
| // If conversion fails, keep default value (1) | |
| } | |
| } | |
| } | |
| // Add RPC devices from option or environment variable (fallback) | |
| if (!grpc_servers_option.empty()) { | |
| add_rpc_devices(grpc_servers_option); | |
| } else { | |
| const char *llama_grpc_servers = std::getenv("LLAMACPP_GRPC_SERVERS"); | |
| if (llama_grpc_servers != NULL) { | |
| add_rpc_devices(std::string(llama_grpc_servers)); | |
| } | |
| } | |
| // Add kv_overrides | |
| if (request->overrides_size() > 0) { | |
| for (int i = 0; i < request->overrides_size(); i++) { | |
| string_parse_kv_override(request->overrides(i).c_str(), params.kv_overrides); | |
| } | |
| } | |
| if (!params.kv_overrides.empty()) { | |
| params.kv_overrides.emplace_back(); | |
| params.kv_overrides.back().key[0] = 0; | |
| } | |
| // TODO: Add yarn | |
| if (!request->tensorsplit().empty()) { | |
| std::string arg_next = request->tensorsplit(); | |
| // split string by , and / | |
| const std::regex regex{ R"([,/]+)" }; | |
| std::sregex_token_iterator it{ arg_next.begin(), arg_next.end(), regex, -1 }; | |
| std::vector<std::string> split_arg{ it, {} }; | |
| GGML_ASSERT(split_arg.size() <= llama_max_devices()); | |
| for (size_t i_device = 0; i_device < llama_max_devices(); ++i_device) { | |
| if (i_device < split_arg.size()) { | |
| params.tensor_split[i_device] = std::stof(split_arg[i_device]); | |
| } | |
| else { | |
| params.tensor_split[i_device] = 0.0f; | |
| } | |
| } | |
| } | |
| if (!request->maingpu().empty()) { | |
| params.main_gpu = std::stoi(request->maingpu()); | |
| } | |
| if (!request->loraadapter().empty() && !request->lorabase().empty()) { | |
| float scale_factor = 1.0f; | |
| if (request->lorascale() != 0.0f) { | |
| scale_factor = request->lorascale(); | |
| } | |
| // get the directory of modelfile | |
| std::string model_dir = params.model.path.substr(0, params.model.path.find_last_of("/\\")); | |
| common_adapter_lora_info lora_info; | |
| lora_info.path = model_dir + "/" + request->loraadapter(); | |
| lora_info.scale = scale_factor; | |
| lora_info.task_name = ""; | |
| lora_info.prompt_prefix = ""; | |
| lora_info.ptr = nullptr; | |
| params.lora_adapters.push_back(std::move(lora_info)); | |
| } | |
| params.use_mlock = request->mlock(); | |
| params.use_mmap = request->mmap(); | |
| if (request->flashattention() == "on" || request->flashattention() == "enabled") { | |
| params.flash_attn_type = LLAMA_FLASH_ATTN_TYPE_ENABLED; | |
| } else if (request->flashattention() == "off" || request->flashattention() == "disabled") { | |
| params.flash_attn_type = LLAMA_FLASH_ATTN_TYPE_DISABLED; | |
| } else if (request->flashattention() == "auto") { | |
| params.flash_attn_type = LLAMA_FLASH_ATTN_TYPE_AUTO; | |
| } | |
| params.no_kv_offload = request->nokvoffload(); | |
| params.embedding = request->embeddings() || request->reranking(); | |
| if (request->reranking()) { | |
| params.pooling_type = LLAMA_POOLING_TYPE_RANK; | |
| } | |
| if (request->ropescaling() == "none") { params.rope_scaling_type = LLAMA_ROPE_SCALING_TYPE_NONE; } | |
| else if (request->ropescaling() == "yarn") { params.rope_scaling_type = LLAMA_ROPE_SCALING_TYPE_YARN; } | |
| else if (request->ropescaling() == "linear") { params.rope_scaling_type = LLAMA_ROPE_SCALING_TYPE_LINEAR; } | |
| if ( request->yarnextfactor() != 0.0f ) { | |
| params.yarn_ext_factor = request->yarnextfactor(); | |
| } | |
| if ( request->yarnattnfactor() != 0.0f ) { | |
| params.yarn_attn_factor = request->yarnattnfactor(); | |
| } | |
| if ( request->yarnbetafast() != 0.0f ) { | |
| params.yarn_beta_fast = request->yarnbetafast(); | |
| } | |
| if ( request->yarnbetaslow() != 0.0f ) { | |
| params.yarn_beta_slow = request->yarnbetaslow(); | |
| } | |
| if ( request->ropefreqbase() != 0.0f ) { | |
| params.rope_freq_base = request->ropefreqbase(); | |
| } | |
| if ( request->ropefreqscale() != 0.0f ) { | |
| params.rope_freq_scale = request->ropefreqscale(); | |
| } | |
| if (request->grammartriggers_size() > 0) { | |
| //params.sampling.grammar_lazy = true; | |
| // Store grammar trigger words for processing after model is loaded | |
| for (int i = 0; i < request->grammartriggers_size(); i++) { | |
| const auto & word = request->grammartriggers(i).word(); | |
| common_grammar_trigger trigger; | |
| trigger.type = COMMON_GRAMMAR_TRIGGER_TYPE_WORD; | |
| trigger.value = word; | |
| params.sampling.grammar_triggers.push_back(std::move(trigger)); | |
| } | |
| } | |
| } | |
| // GRPC Server start | |
| class BackendServiceImpl final : public backend::Backend::Service { | |
| private: | |
| server_context& ctx_server; | |
| common_params params_base; // Store copy of params_base, set after model load | |
| public: | |
| BackendServiceImpl(server_context& ctx) : ctx_server(ctx) {} | |
| grpc::Status Health(ServerContext* /*context*/, const backend::HealthMessage* /*request*/, backend::Reply* reply) override { | |
| // Implement Health RPC | |
| reply->set_message("OK"); | |
| return Status::OK; | |
| } | |
| grpc::Status LoadModel(ServerContext* /*context*/, const backend::ModelOptions* request, backend::Result* result) override { | |
| // Implement LoadModel RPC | |
| common_params params; | |
| params_parse(ctx_server, request, params); | |
| common_init(); | |
| // Ensure debug logs are enabled after common_init() sets up logging | |
| common_log_set_verbosity_thold(params.verbosity); | |
| llama_backend_init(); | |
| llama_numa_init(params.numa); | |
| LOG_INF("system info: n_threads = %d, n_threads_batch = %d, total_threads = %d\n", params.cpuparams.n_threads, params.cpuparams_batch.n_threads, std::thread::hardware_concurrency()); | |
| LOG_INF("\n"); | |
| LOG_INF("%s\n", common_params_get_system_info(params).c_str()); | |
| LOG_INF("\n"); | |
| // Capture error messages during model loading | |
| struct error_capture { | |
| std::string captured_error; | |
| std::mutex error_mutex; | |
| ggml_log_callback original_callback; | |
| void* original_user_data; | |
| } error_capture_data; | |
| // Get original log callback | |
| llama_log_get(&error_capture_data.original_callback, &error_capture_data.original_user_data); | |
| // Set custom callback to capture errors | |
| llama_log_set([](ggml_log_level level, const char * text, void * user_data) { | |
| auto* capture = static_cast<error_capture*>(user_data); | |
| // Capture error messages | |
| if (level == GGML_LOG_LEVEL_ERROR) { | |
| std::lock_guard<std::mutex> lock(capture->error_mutex); | |
| // Append error message, removing trailing newlines | |
| std::string msg(text); | |
| while (!msg.empty() && (msg.back() == '\n' || msg.back() == '\r')) { | |
| msg.pop_back(); | |
| } | |
| if (!msg.empty()) { | |
| if (!capture->captured_error.empty()) { | |
| capture->captured_error.append("; "); | |
| } | |
| capture->captured_error.append(msg); | |
| } | |
| } | |
| // Also call original callback to preserve logging | |
| if (capture->original_callback) { | |
| capture->original_callback(level, text, capture->original_user_data); | |
| } | |
| }, &error_capture_data); | |
| // load the model | |
| bool load_success = ctx_server.load_model(params); | |
| // Restore original log callback | |
| llama_log_set(error_capture_data.original_callback, error_capture_data.original_user_data); | |
| if (!load_success) { | |
| std::string error_msg = "Failed to load model: " + params.model.path; | |
| if (!params.mmproj.path.empty()) { | |
| error_msg += " (with mmproj: " + params.mmproj.path + ")"; | |
| } | |
| if (params.speculative.has_dft() && !params.speculative.mparams_dft.path.empty()) { | |
| error_msg += " (with draft model: " + params.speculative.mparams_dft.path + ")"; | |
| } | |
| // Add captured error details if available | |
| { | |
| std::lock_guard<std::mutex> lock(error_capture_data.error_mutex); | |
| if (!error_capture_data.captured_error.empty()) { | |
| error_msg += ". Error: " + error_capture_data.captured_error; | |
| } else { | |
| error_msg += ". Model file may not exist or be invalid."; | |
| } | |
| } | |
| result->set_message(error_msg); | |
| result->set_success(false); | |
| return grpc::Status(grpc::StatusCode::INTERNAL, error_msg); | |
| } | |
| // Process grammar triggers now that vocab is available | |
| if (!params.sampling.grammar_triggers.empty()) { | |
| std::vector<common_grammar_trigger> processed_triggers; | |
| for (const auto& trigger : params.sampling.grammar_triggers) { | |
| if (trigger.type == COMMON_GRAMMAR_TRIGGER_TYPE_WORD) { | |
| auto ids = common_tokenize(ctx_server.impl->vocab, trigger.value, /* add_special= */ false, /* parse_special= */ true); | |
| if (ids.size() == 1) { | |
| auto token = ids[0]; | |
| // Add the token to preserved_tokens if not already present | |
| if (params.sampling.preserved_tokens.find(token) == params.sampling.preserved_tokens.end()) { | |
| params.sampling.preserved_tokens.insert(token); | |
| LOG_INF("Added grammar trigger token to preserved tokens: %d (`%s`)\n", token, trigger.value.c_str()); | |
| } | |
| LOG_INF("Grammar trigger token: %d (`%s`)\n", token, trigger.value.c_str()); | |
| common_grammar_trigger processed_trigger; | |
| processed_trigger.type = COMMON_GRAMMAR_TRIGGER_TYPE_TOKEN; | |
| processed_trigger.value = trigger.value; | |
| processed_trigger.token = token; | |
| processed_triggers.push_back(std::move(processed_trigger)); | |
| } else { | |
| LOG_INF("Grammar trigger word: `%s`\n", trigger.value.c_str()); | |
| processed_triggers.push_back(trigger); | |
| } | |
| } else { | |
| processed_triggers.push_back(trigger); | |
| } | |
| } | |
| // Update the grammar triggers in params | |
| params.sampling.grammar_triggers = std::move(processed_triggers); | |
| } | |
| //ctx_server.init(); | |
| result->set_message("Loading succeeded"); | |
| result->set_success(true); | |
| loaded_model = true; | |
| // Store copy of params_base for use in parse_options and other methods | |
| params_base = params; | |
| return Status::OK; | |
| } | |
| // Helper function to extract logprobs from JSON response | |
| static json extract_logprobs_from_json(const json& res_json) { | |
| json logprobs_json = json::object(); | |
| // Check for OAI-compatible format: choices[0].logprobs | |
| if (res_json.contains("choices") && res_json["choices"].is_array() && | |
| res_json["choices"].size() > 0 && res_json["choices"][0].contains("logprobs")) { | |
| logprobs_json = res_json["choices"][0]["logprobs"]; | |
| } | |
| // Check for non-OAI format: completion_probabilities | |
| else if (res_json.contains("completion_probabilities")) { | |
| // Convert completion_probabilities to OAI format | |
| logprobs_json["content"] = res_json["completion_probabilities"]; | |
| } | |
| // Check for direct logprobs field | |
| else if (res_json.contains("logprobs")) { | |
| logprobs_json = res_json["logprobs"]; | |
| } | |
| return logprobs_json; | |
| } | |
| grpc::Status PredictStream(grpc::ServerContext* context, const backend::PredictOptions* request, grpc::ServerWriter<backend::Reply>* writer) override { | |
| if (params_base.model.path.empty()) { | |
| return grpc::Status(grpc::StatusCode::FAILED_PRECONDITION, "Model not loaded"); | |
| } | |
| json data = parse_options(true, request, params_base, ctx_server.get_llama_context()); | |
| //Raise error if embeddings is set to true | |
| if (params_base.embedding) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, "Embedding is not supported in streaming mode"); | |
| } | |
| auto completion_id = gen_chatcmplid(); | |
| // get response reader - it contains references to the queues and will stay valid | |
| auto rd = ctx_server.get_response_reader(); | |
| try { | |
| std::vector<server_task> tasks; | |
| std::string prompt_str; | |
| std::vector<raw_buffer> files; // Declare files early so it's accessible in both branches | |
| // Handle chat templates when UseTokenizerTemplate is enabled and Messages are provided | |
| if (request->usetokenizertemplate() && request->messages_size() > 0 && ctx_server.impl->chat_params.tmpls != nullptr) { | |
| // Convert proto Messages to JSON format compatible with oaicompat_chat_params_parse | |
| json body_json; | |
| json messages_json = json::array(); | |
| // Find the last user message index to attach images/audio to | |
| int last_user_msg_idx = -1; | |
| for (int i = request->messages_size() - 1; i >= 0; i--) { | |
| if (request->messages(i).role() == "user") { | |
| last_user_msg_idx = i; | |
| break; | |
| } | |
| } | |
| for (int i = 0; i < request->messages_size(); i++) { | |
| const auto& msg = request->messages(i); | |
| json msg_json; | |
| msg_json["role"] = msg.role(); | |
| bool is_last_user_msg = (i == last_user_msg_idx); | |
| bool has_images_or_audio = (request->images_size() > 0 || request->audios_size() > 0); | |
| // Handle content - can be string, null, or array | |
| // For multimodal content, we'll embed images/audio from separate fields | |
| if (!msg.content().empty()) { | |
| // Try to parse content as JSON to see if it's already an array | |
| json content_val; | |
| try { | |
| content_val = json::parse(msg.content()); | |
| // Handle null values - convert to empty string to avoid template errors | |
| if (content_val.is_null()) { | |
| content_val = ""; | |
| } | |
| } catch (const json::parse_error&) { | |
| // Not JSON, treat as plain string | |
| content_val = msg.content(); | |
| } | |
| // If content is an object (e.g., from tool call failures), convert to string | |
| if (content_val.is_object()) { | |
| content_val = content_val.dump(); | |
| } | |
| // If content is a string and this is the last user message with images/audio, combine them | |
| if (content_val.is_string() && is_last_user_msg && has_images_or_audio) { | |
| json content_array = json::array(); | |
| // Add text first | |
| content_array.push_back({{"type", "text"}, {"text", content_val.get<std::string>()}}); | |
| // Add images | |
| if (request->images_size() > 0) { | |
| for (int j = 0; j < request->images_size(); j++) { | |
| json image_chunk; | |
| image_chunk["type"] = "image_url"; | |
| json image_url; | |
| image_url["url"] = "data:image/jpeg;base64," + request->images(j); | |
| image_chunk["image_url"] = image_url; | |
| content_array.push_back(image_chunk); | |
| } | |
| } | |
| // Add audios | |
| if (request->audios_size() > 0) { | |
| for (int j = 0; j < request->audios_size(); j++) { | |
| json audio_chunk; | |
| audio_chunk["type"] = "input_audio"; | |
| json input_audio; | |
| input_audio["data"] = request->audios(j); | |
| input_audio["format"] = "wav"; // default, could be made configurable | |
| audio_chunk["input_audio"] = input_audio; | |
| content_array.push_back(audio_chunk); | |
| } | |
| } | |
| msg_json["content"] = content_array; | |
| } else { | |
| // Use content as-is (already array or not last user message) | |
| // Ensure null values are converted to empty string | |
| if (content_val.is_null()) { | |
| msg_json["content"] = ""; | |
| } else { | |
| msg_json["content"] = content_val; | |
| } | |
| } | |
| } else if (is_last_user_msg && has_images_or_audio) { | |
| // If no content but this is the last user message with images/audio, create content array | |
| json content_array = json::array(); | |
| if (request->images_size() > 0) { | |
| for (int j = 0; j < request->images_size(); j++) { | |
| json image_chunk; | |
| image_chunk["type"] = "image_url"; | |
| json image_url; | |
| image_url["url"] = "data:image/jpeg;base64," + request->images(j); | |
| image_chunk["image_url"] = image_url; | |
| content_array.push_back(image_chunk); | |
| } | |
| } | |
| if (request->audios_size() > 0) { | |
| for (int j = 0; j < request->audios_size(); j++) { | |
| json audio_chunk; | |
| audio_chunk["type"] = "input_audio"; | |
| json input_audio; | |
| input_audio["data"] = request->audios(j); | |
| input_audio["format"] = "wav"; // default, could be made configurable | |
| audio_chunk["input_audio"] = input_audio; | |
| content_array.push_back(audio_chunk); | |
| } | |
| } | |
| msg_json["content"] = content_array; | |
| } else if (msg.role() == "tool") { | |
| // Tool role messages must have content field set, even if empty | |
| // Jinja templates expect content to be a string, not null or object | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d is tool role, content_empty=%d\n", i, msg.content().empty() ? 1 : 0); | |
| if (msg.content().empty()) { | |
| msg_json["content"] = ""; | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): empty content, set to empty string\n", i); | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): content exists: %s\n", | |
| i, msg.content().substr(0, std::min<size_t>(200, msg.content().size())).c_str()); | |
| // Content exists, parse and ensure it's a string | |
| json content_val; | |
| try { | |
| content_val = json::parse(msg.content()); | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): parsed JSON, type=%s\n", | |
| i, content_val.is_null() ? "null" : | |
| content_val.is_object() ? "object" : | |
| content_val.is_string() ? "string" : | |
| content_val.is_array() ? "array" : "other"); | |
| // Handle null values - Jinja templates expect content to be a string, not null | |
| if (content_val.is_null()) { | |
| msg_json["content"] = ""; | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): null content, converted to empty string\n", i); | |
| } else if (content_val.is_object()) { | |
| // If content is an object (e.g., from tool call failures/errors), convert to string | |
| msg_json["content"] = content_val.dump(); | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): object content, converted to string: %s\n", | |
| i, content_val.dump().substr(0, std::min<size_t>(200, content_val.dump().size())).c_str()); | |
| } else if (content_val.is_string()) { | |
| msg_json["content"] = content_val.get<std::string>(); | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): string content, using as-is\n", i); | |
| } else { | |
| // For arrays or other types, convert to string | |
| msg_json["content"] = content_val.dump(); | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): %s content, converted to string\n", | |
| i, content_val.is_array() ? "array" : "other type"); | |
| } | |
| } catch (const json::parse_error&) { | |
| // Not JSON, treat as plain string | |
| msg_json["content"] = msg.content(); | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (tool): not JSON, using as string\n", i); | |
| } | |
| } | |
| } else { | |
| // Ensure all messages have content set (fallback for any unhandled cases) | |
| // Jinja templates expect content to be present, default to empty string if not set | |
| if (!msg_json.contains("content")) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d (role=%s): no content field, adding empty string\n", | |
| i, msg.role().c_str()); | |
| msg_json["content"] = ""; | |
| } | |
| } | |
| // Add optional fields for OpenAI-compatible message format | |
| if (!msg.name().empty()) { | |
| msg_json["name"] = msg.name(); | |
| } | |
| if (!msg.tool_call_id().empty()) { | |
| msg_json["tool_call_id"] = msg.tool_call_id(); | |
| } | |
| if (!msg.reasoning_content().empty()) { | |
| msg_json["reasoning_content"] = msg.reasoning_content(); | |
| } | |
| if (!msg.tool_calls().empty()) { | |
| // Parse tool_calls JSON string and add to message | |
| try { | |
| json tool_calls = json::parse(msg.tool_calls()); | |
| msg_json["tool_calls"] = tool_calls; | |
| SRV_INF("[TOOL CALLS DEBUG] PredictStream: Message %d has tool_calls: %s\n", i, tool_calls.dump().c_str()); | |
| // IMPORTANT: If message has tool_calls but content is empty or not set, | |
| // set content to space " " instead of empty string "", because llama.cpp's | |
| // common_chat_msgs_to_json_oaicompat converts empty strings to null (line 312), | |
| // which causes template errors when accessing message.content[:tool_start_length] | |
| if (!msg_json.contains("content") || (msg_json.contains("content") && msg_json["content"].is_string() && msg_json["content"].get<std::string>().empty())) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d has tool_calls but empty content, setting to space\n", i); | |
| msg_json["content"] = " "; | |
| } | |
| // Log each tool call with name and arguments | |
| if (tool_calls.is_array()) { | |
| for (size_t tc_idx = 0; tc_idx < tool_calls.size(); tc_idx++) { | |
| const auto& tc = tool_calls[tc_idx]; | |
| std::string tool_name = "unknown"; | |
| std::string tool_args = "{}"; | |
| if (tc.contains("function")) { | |
| const auto& func = tc["function"]; | |
| if (func.contains("name")) { | |
| tool_name = func["name"].get<std::string>(); | |
| } | |
| if (func.contains("arguments")) { | |
| tool_args = func["arguments"].is_string() ? | |
| func["arguments"].get<std::string>() : | |
| func["arguments"].dump(); | |
| } | |
| } else if (tc.contains("name")) { | |
| tool_name = tc["name"].get<std::string>(); | |
| if (tc.contains("arguments")) { | |
| tool_args = tc["arguments"].is_string() ? | |
| tc["arguments"].get<std::string>() : | |
| tc["arguments"].dump(); | |
| } | |
| } | |
| SRV_INF("[TOOL CALLS DEBUG] PredictStream: Message %d, tool_call %zu: name=%s, arguments=%s\n", | |
| i, tc_idx, tool_name.c_str(), tool_args.c_str()); | |
| } | |
| } | |
| } catch (const json::parse_error& e) { | |
| SRV_WRN("Failed to parse tool_calls JSON: %s\n", e.what()); | |
| } | |
| } | |
| // Debug: Log final content state before adding to array | |
| if (msg_json.contains("content")) { | |
| if (msg_json["content"].is_null()) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d FINAL STATE: content is NULL - THIS WILL CAUSE ERROR!\n", i); | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d FINAL STATE: content type=%s, has_value=%d\n", | |
| i, msg_json["content"].is_string() ? "string" : | |
| msg_json["content"].is_array() ? "array" : | |
| msg_json["content"].is_object() ? "object" : "other", | |
| msg_json["content"].is_null() ? 0 : 1); | |
| } | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Message %d FINAL STATE: NO CONTENT FIELD - THIS WILL CAUSE ERROR!\n", i); | |
| } | |
| messages_json.push_back(msg_json); | |
| } | |
| // Final safety check: Ensure no message has null content (Jinja templates require strings) | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Running final safety check on %zu messages\n", messages_json.size()); | |
| for (size_t idx = 0; idx < messages_json.size(); idx++) { | |
| auto& msg = messages_json[idx]; | |
| if (msg.contains("content") && msg["content"].is_null()) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Safety check found message %zu with NULL content, converting to empty string\n", idx); | |
| msg["content"] = ""; | |
| } else if (!msg.contains("content")) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Safety check found message %zu without content field, adding empty string\n", idx); | |
| msg["content"] = ""; | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Safety check message %zu: content OK, type=%s\n", | |
| idx, msg["content"].is_string() ? "string" : | |
| msg["content"].is_array() ? "array" : | |
| msg["content"].is_object() ? "object" : "other"); | |
| } | |
| } | |
| // Debug: Count tool messages | |
| int tool_msg_count = 0; | |
| for (const auto& msg : messages_json) { | |
| if (msg.contains("role") && msg["role"] == "tool") { | |
| tool_msg_count++; | |
| } | |
| } | |
| SRV_DBG("[TOOLS DEBUG] PredictStream: Built %d tool messages out of %zu total messages\n", tool_msg_count, messages_json.size()); | |
| // Debug: Print full conversation (messages) | |
| SRV_DBG("[CONVERSATION DEBUG] PredictStream: Full messages array:\n%s\n", messages_json.dump(2).c_str()); | |
| body_json["messages"] = messages_json; | |
| body_json["stream"] = true; // PredictStream is always streaming | |
| // Check if grammar is provided from Go layer (NoGrammar=false) | |
| // If grammar is provided, we must use it and NOT let template generate grammar from tools | |
| // oaicompat_chat_params_parse throws an error if both grammar and tools are provided | |
| bool has_grammar_from_go = data.contains("grammar") && | |
| data["grammar"].is_string() && | |
| !data["grammar"].get<std::string>().empty(); | |
| SRV_INF("[TOOLS DEBUG] PredictStream: has_grammar_from_go=%d, data.contains(\"tools\")=%d, data.contains(\"grammar\")=%d\n", | |
| has_grammar_from_go ? 1 : 0, | |
| data.contains("tools") ? 1 : 0, | |
| data.contains("grammar") ? 1 : 0); | |
| if (data.contains("grammar")) { | |
| SRV_INF("[TOOLS DEBUG] PredictStream: grammar type=%s, empty=%d\n", | |
| data["grammar"].is_string() ? "string" : "other", | |
| data["grammar"].is_string() && data["grammar"].get<std::string>().empty() ? 1 : 0); | |
| } | |
| // Copy other relevant fields from data that oaicompat_chat_params_parse expects | |
| // Tools and tool_choice are only passed when NoGrammar is true (grammar not provided) | |
| // When grammar is provided from Go layer, we use it instead of template-generated grammar | |
| if (!has_grammar_from_go) { | |
| // NoGrammar=true: pass tools and let template generate grammar | |
| if (data.contains("tools")) { | |
| body_json["tools"] = data["tools"]; | |
| std::string tools_str = data["tools"].dump(); | |
| SRV_INF("Using tools from data (NoGrammar=true): %s\n", tools_str.c_str()); | |
| // Debug: Log tools count and details before template processing | |
| if (data["tools"].is_array()) { | |
| SRV_INF("[TOOLS DEBUG] PredictStream: Passing %zu tools to oaicompat_chat_params_parse\n", data["tools"].size()); | |
| for (size_t t_idx = 0; t_idx < data["tools"].size(); t_idx++) { | |
| const auto& tool = data["tools"][t_idx]; | |
| std::string tool_name = "unknown"; | |
| std::string tool_desc = ""; | |
| if (tool.contains("function")) { | |
| const auto& func = tool["function"]; | |
| if (func.contains("name")) { | |
| tool_name = func["name"].get<std::string>(); | |
| } | |
| if (func.contains("description")) { | |
| tool_desc = func["description"].is_string() ? | |
| func["description"].get<std::string>() : ""; | |
| } | |
| } else if (tool.contains("name")) { | |
| tool_name = tool["name"].get<std::string>(); | |
| if (tool.contains("description")) { | |
| tool_desc = tool["description"].is_string() ? | |
| tool["description"].get<std::string>() : ""; | |
| } | |
| } | |
| SRV_INF("[TOOLS DEBUG] PredictStream: Tool %zu: name=%s, description=%s\n", | |
| t_idx, tool_name.c_str(), tool_desc.substr(0, 100).c_str()); | |
| } | |
| } | |
| } else { | |
| SRV_WRN("%s", "No tools found in data - tool calls will not work without tools field\n"); | |
| SRV_DBG("[TOOLS DEBUG] PredictStream: No tools in data, tool_choice=%s\n", data.contains("tool_choice") ? data["tool_choice"].dump().c_str() : "not set"); | |
| } | |
| if (data.contains("tool_choice")) { | |
| // tool_choice can be a string or object, but oaicompat_chat_params_parse expects a string | |
| // Convert object tool_choice to "required" (since a specific function is requested) | |
| if (data["tool_choice"].is_string()) { | |
| body_json["tool_choice"] = data["tool_choice"].get<std::string>(); | |
| } else if (data["tool_choice"].is_object()) { | |
| // Object tool_choice means a specific function is requested, use "required" | |
| body_json["tool_choice"] = "required"; | |
| std::string tool_choice_obj_str = data["tool_choice"].dump(); | |
| SRV_INF("Converted object tool_choice to 'required': %s\n", tool_choice_obj_str.c_str()); | |
| } else { | |
| // Fallback: convert to string | |
| body_json["tool_choice"] = data["tool_choice"].dump(); | |
| } | |
| std::string tool_choice_str = body_json["tool_choice"].get<std::string>(); | |
| SRV_INF("Using tool_choice: %s\n", tool_choice_str.c_str()); | |
| } else { | |
| // Default to "auto" if not specified | |
| body_json["tool_choice"] = "auto"; | |
| } | |
| } else { | |
| // Grammar is provided from Go layer (NoGrammar=false) - use it, don't pass tools | |
| SRV_INF("%s", "Grammar provided from Go layer - using it instead of template-generated grammar\n"); | |
| // Grammar will be copied from data after parsing (it's already in data) | |
| } | |
| if (data.contains("json_schema")) { | |
| body_json["json_schema"] = data["json_schema"]; | |
| } | |
| // If grammar is provided from Go layer, copy it to body_json so it's preserved | |
| // (though oaicompat_chat_params_parse may not use it if tools are present) | |
| if (has_grammar_from_go) { | |
| body_json["grammar"] = data["grammar"]; | |
| } | |
| if (data.contains("response_format")) { | |
| body_json["response_format"] = data["response_format"]; | |
| } | |
| if (data.contains("chat_template_kwargs")) { | |
| body_json["chat_template_kwargs"] = data["chat_template_kwargs"]; | |
| } | |
| // Pass parallel_tool_calls if present (used by oaicompat_chat_params_parse) | |
| if (data.contains("parallel_tool_calls")) { | |
| body_json["parallel_tool_calls"] = data["parallel_tool_calls"]; | |
| } | |
| // Pass add_generation_prompt if present (used by oaicompat_chat_params_parse) | |
| if (data.contains("add_generation_prompt")) { | |
| body_json["add_generation_prompt"] = data["add_generation_prompt"]; | |
| } | |
| // Debug: Print full body_json before template processing (includes messages, tools, tool_choice, etc.) | |
| SRV_DBG("[CONVERSATION DEBUG] PredictStream: Full body_json before oaicompat_chat_params_parse:\n%s\n", body_json.dump(2).c_str()); | |
| // Use the same approach as server.cpp: call oaicompat_chat_params_parse | |
| // This handles all template application, grammar merging, etc. automatically | |
| // Files extracted from multimodal content in messages will be added to the files vector | |
| // chat_params already contains tmpls, allow_image, and allow_audio set during model loading | |
| // Debug: Log tools before template processing | |
| if (body_json.contains("tools")) { | |
| SRV_DBG("[TOOLS DEBUG] PredictStream: Before oaicompat_chat_params_parse - tools count: %zu\n", | |
| body_json["tools"].is_array() ? body_json["tools"].size() : 0); | |
| } | |
| // Debug: Verify messages content before template processing | |
| // Also ensure ALL messages have content set to string (not null) - templates expect strings | |
| if (body_json.contains("messages") && body_json["messages"].is_array()) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: Before oaicompat_chat_params_parse - checking %zu messages\n", body_json["messages"].size()); | |
| for (size_t idx = 0; idx < body_json["messages"].size(); idx++) { | |
| auto& msg = body_json["messages"][idx]; | |
| std::string role_str = msg.contains("role") ? msg["role"].get<std::string>() : "unknown"; | |
| if (msg.contains("content")) { | |
| if (msg["content"].is_null()) { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: BEFORE TEMPLATE - Message %zu (role=%s) has NULL content - FIXING!\n", idx, role_str.c_str()); | |
| msg["content"] = ""; // Fix null content | |
| } else if (role_str == "tool" && msg["content"].is_array()) { | |
| // Tool messages must have string content, not array | |
| // oaicompat_chat_params_parse expects tool messages to have string content | |
| SRV_INF("[CONTENT DEBUG] PredictStream: BEFORE TEMPLATE - Message %zu (role=tool) has array content, converting to string\n", idx); | |
| msg["content"] = msg["content"].dump(); | |
| } else if (!msg["content"].is_string() && !msg["content"].is_array()) { | |
| // If content is object or other non-string type, convert to string for templates | |
| SRV_INF("[CONTENT DEBUG] PredictStream: BEFORE TEMPLATE - Message %zu (role=%s) content is not string/array, converting\n", idx, role_str.c_str()); | |
| if (msg["content"].is_object()) { | |
| msg["content"] = msg["content"].dump(); | |
| } else { | |
| msg["content"] = ""; | |
| } | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: BEFORE TEMPLATE - Message %zu (role=%s): content type=%s\n", | |
| idx, role_str.c_str(), | |
| msg["content"].is_string() ? "string" : | |
| msg["content"].is_array() ? "array" : | |
| msg["content"].is_object() ? "object" : "other"); | |
| } | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] PredictStream: BEFORE TEMPLATE - Message %zu (role=%s) MISSING content field - ADDING!\n", idx, role_str.c_str()); | |
| msg["content"] = ""; // Add missing content | |
| } | |
| } | |
| } | |
| json parsed_data = oaicompat_chat_params_parse(body_json, ctx_server.impl->chat_params, files); | |
| // Debug: Log tools after template processing | |
| if (parsed_data.contains("tools")) { | |
| SRV_DBG("[TOOLS DEBUG] PredictStream: After oaicompat_chat_params_parse - tools count: %zu\n", | |
| parsed_data["tools"].is_array() ? parsed_data["tools"].size() : 0); | |
| } else { | |
| SRV_DBG("%s", "[TOOLS DEBUG] PredictStream: After oaicompat_chat_params_parse - no tools in parsed_data\n"); | |
| } | |
| // Extract the prompt from parsed data | |
| prompt_str = parsed_data.at("prompt").get<std::string>(); | |
| // Preserve grammar from Go layer if it was provided (NoGrammar=false) | |
| // Otherwise, use grammar from parsed_data (template-generated when NoGrammar=true) | |
| json preserved_grammar; | |
| if (has_grammar_from_go && data.contains("grammar")) { | |
| preserved_grammar = data["grammar"]; | |
| } | |
| // Merge all fields from parsed_data into data (grammar, grammar_triggers, preserved_tokens, parse_tool_calls, etc.) | |
| // This ensures all template-generated fields are included | |
| // parse_tool_calls is set by oaicompat_chat_params_parse when tools are present | |
| for (const auto& item : parsed_data.items()) { | |
| if (item.key() != "prompt") { // Don't overwrite prompt_str, we already extracted it | |
| // If grammar was provided from Go layer, preserve it instead of template-generated grammar | |
| if (item.key() == "grammar" && has_grammar_from_go && !preserved_grammar.is_null()) { | |
| data["grammar"] = preserved_grammar; | |
| } else { | |
| data[item.key()] = item.value(); | |
| } | |
| } | |
| } | |
| // Debug: Log parse_tool_calls if present (set by oaicompat_chat_params_parse when tools are present) | |
| if (data.contains("parse_tool_calls")) { | |
| SRV_DBG("[TOOLS DEBUG] PredictStream: parse_tool_calls=%s\n", data["parse_tool_calls"].get<bool>() ? "true" : "false"); | |
| } | |
| } else { | |
| // Use prompt directly from data | |
| if (data.contains("prompt") && data["prompt"].is_string()) { | |
| prompt_str = data["prompt"].get<std::string>(); | |
| } else { | |
| prompt_str = request->prompt(); | |
| } | |
| } | |
| const auto type = SERVER_TASK_TYPE_COMPLETION; | |
| // TODO: this log can become very long, put it behind a flag or think about a more compact format | |
| //SRV_DBG("Prompt: %s\n", prompt.is_string() ? prompt.get<std::string>().c_str() : prompt.dump(2).c_str()); | |
| // If not using chat templates, extract files from image_data/audio_data fields | |
| // (If using chat templates, files were already extracted by oaicompat_chat_params_parse) | |
| if (!request->usetokenizertemplate() || request->messages_size() == 0 || ctx_server.impl->chat_params.tmpls == nullptr) { | |
| const auto &images_data = data.find("image_data"); | |
| if (images_data != data.end() && images_data->is_array()) | |
| { | |
| for (const auto &img : *images_data) | |
| { | |
| auto decoded_data = base64_decode(img["data"].get<std::string>()); | |
| files.push_back(decoded_data); | |
| } | |
| } | |
| const auto &audio_data = data.find("audio_data"); | |
| if (audio_data != data.end() && audio_data->is_array()) | |
| { | |
| for (const auto &audio : *audio_data) | |
| { | |
| auto decoded_data = base64_decode(audio["data"].get<std::string>()); | |
| files.push_back(decoded_data); | |
| } | |
| } | |
| } | |
| const bool has_mtmd = ctx_server.impl->mctx != nullptr; | |
| // process prompt | |
| std::vector<server_tokens> inputs; | |
| if (has_mtmd) { | |
| // multimodal | |
| inputs.push_back(process_mtmd_prompt(ctx_server.impl->mctx, prompt_str, files)); | |
| } else { | |
| // Everything else, including multimodal completions. | |
| inputs = tokenize_input_prompts(ctx_server.impl->vocab, ctx_server.impl->mctx, prompt_str, true, true); | |
| } | |
| tasks.reserve(inputs.size()); | |
| for (size_t i = 0; i < inputs.size(); i++) { | |
| server_task task = server_task(type); | |
| task.id = rd.queue_tasks.get_new_id(); | |
| task.index = i; | |
| task.tokens = std::move(inputs[i]); | |
| task.params = server_task::params_from_json_cmpl( | |
| ctx_server.impl->vocab, | |
| params_base, | |
| ctx_server.get_meta().slot_n_ctx, | |
| data); | |
| task.id_slot = json_value(data, "id_slot", -1); | |
| // OAI-compat | |
| task.params.res_type = TASK_RESPONSE_TYPE_NONE; | |
| task.params.oaicompat_cmpl_id = completion_id; | |
| // oaicompat_model is already populated by params_from_json_cmpl | |
| tasks.push_back(std::move(task)); | |
| } | |
| rd.post_tasks(std::move(tasks)); | |
| } catch (const std::exception & e) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, e.what()); | |
| } | |
| // Get first result for error checking (following server.cpp pattern) | |
| server_task_result_ptr first_result = rd.next([&context]() { return context->IsCancelled(); }); | |
| if (first_result == nullptr) { | |
| // connection is closed | |
| return grpc::Status(grpc::StatusCode::CANCELLED, "Request cancelled by client"); | |
| } else if (first_result->is_error()) { | |
| json error_json = first_result->to_json(); | |
| backend::Reply reply; | |
| reply.set_message(error_json.value("message", "")); | |
| writer->Write(reply); | |
| return grpc::Status(grpc::StatusCode::INTERNAL, error_json.value("message", "Error occurred")); | |
| } | |
| // Process first result | |
| json first_res_json = first_result->to_json(); | |
| if (first_res_json.is_array()) { | |
| for (const auto & res : first_res_json) { | |
| std::string completion_text = res.value("content", ""); | |
| backend::Reply reply; | |
| reply.set_message(completion_text); | |
| int32_t tokens_predicted = res.value("tokens_predicted", 0); | |
| reply.set_tokens(tokens_predicted); | |
| int32_t tokens_evaluated = res.value("tokens_evaluated", 0); | |
| reply.set_prompt_tokens(tokens_evaluated); | |
| if (res.contains("timings")) { | |
| double timing_prompt_processing = res.at("timings").value("prompt_ms", 0.0); | |
| reply.set_timing_prompt_processing(timing_prompt_processing); | |
| double timing_token_generation = res.at("timings").value("predicted_ms", 0.0); | |
| reply.set_timing_token_generation(timing_token_generation); | |
| } | |
| // Extract and set logprobs if present | |
| json logprobs_json = extract_logprobs_from_json(res); | |
| if (!logprobs_json.empty() && !logprobs_json.is_null()) { | |
| std::string logprobs_str = logprobs_json.dump(); | |
| reply.set_logprobs(logprobs_str); | |
| } | |
| writer->Write(reply); | |
| } | |
| } else { | |
| std::string completion_text = first_res_json.value("content", ""); | |
| backend::Reply reply; | |
| reply.set_message(completion_text); | |
| int32_t tokens_predicted = first_res_json.value("tokens_predicted", 0); | |
| reply.set_tokens(tokens_predicted); | |
| int32_t tokens_evaluated = first_res_json.value("tokens_evaluated", 0); | |
| reply.set_prompt_tokens(tokens_evaluated); | |
| if (first_res_json.contains("timings")) { | |
| double timing_prompt_processing = first_res_json.at("timings").value("prompt_ms", 0.0); | |
| reply.set_timing_prompt_processing(timing_prompt_processing); | |
| double timing_token_generation = first_res_json.at("timings").value("predicted_ms", 0.0); | |
| reply.set_timing_token_generation(timing_token_generation); | |
| } | |
| // Extract and set logprobs if present | |
| json logprobs_json = extract_logprobs_from_json(first_res_json); | |
| if (!logprobs_json.empty() && !logprobs_json.is_null()) { | |
| std::string logprobs_str = logprobs_json.dump(); | |
| reply.set_logprobs(logprobs_str); | |
| } | |
| writer->Write(reply); | |
| } | |
| // Process subsequent results | |
| while (rd.has_next()) { | |
| // Check if context is cancelled before processing result | |
| if (context->IsCancelled()) { | |
| break; | |
| } | |
| auto result = rd.next([&context]() { return context->IsCancelled(); }); | |
| if (result == nullptr) { | |
| // connection is closed | |
| break; | |
| } | |
| json res_json = result->to_json(); | |
| if (res_json.is_array()) { | |
| for (const auto & res : res_json) { | |
| std::string completion_text = res.value("content", ""); | |
| backend::Reply reply; | |
| reply.set_message(completion_text); | |
| int32_t tokens_predicted = res.value("tokens_predicted", 0); | |
| reply.set_tokens(tokens_predicted); | |
| int32_t tokens_evaluated = res.value("tokens_evaluated", 0); | |
| reply.set_prompt_tokens(tokens_evaluated); | |
| if (res.contains("timings")) { | |
| double timing_prompt_processing = res.at("timings").value("prompt_ms", 0.0); | |
| reply.set_timing_prompt_processing(timing_prompt_processing); | |
| double timing_token_generation = res.at("timings").value("predicted_ms", 0.0); | |
| reply.set_timing_token_generation(timing_token_generation); | |
| } | |
| // Extract and set logprobs if present | |
| json logprobs_json = extract_logprobs_from_json(res); | |
| if (!logprobs_json.empty() && !logprobs_json.is_null()) { | |
| std::string logprobs_str = logprobs_json.dump(); | |
| reply.set_logprobs(logprobs_str); | |
| } | |
| writer->Write(reply); | |
| } | |
| } else { | |
| std::string completion_text = res_json.value("content", ""); | |
| backend::Reply reply; | |
| reply.set_message(completion_text); | |
| int32_t tokens_predicted = res_json.value("tokens_predicted", 0); | |
| reply.set_tokens(tokens_predicted); | |
| int32_t tokens_evaluated = res_json.value("tokens_evaluated", 0); | |
| reply.set_prompt_tokens(tokens_evaluated); | |
| if (res_json.contains("timings")) { | |
| double timing_prompt_processing = res_json.at("timings").value("prompt_ms", 0.0); | |
| reply.set_timing_prompt_processing(timing_prompt_processing); | |
| double timing_token_generation = res_json.at("timings").value("predicted_ms", 0.0); | |
| reply.set_timing_token_generation(timing_token_generation); | |
| } | |
| // Extract and set logprobs if present | |
| json logprobs_json = extract_logprobs_from_json(res_json); | |
| if (!logprobs_json.empty() && !logprobs_json.is_null()) { | |
| std::string logprobs_str = logprobs_json.dump(); | |
| reply.set_logprobs(logprobs_str); | |
| } | |
| writer->Write(reply); | |
| } | |
| } | |
| // Check if context was cancelled during processing | |
| if (context->IsCancelled()) { | |
| return grpc::Status(grpc::StatusCode::CANCELLED, "Request cancelled by client"); | |
| } | |
| return grpc::Status::OK; | |
| } | |
| grpc::Status Predict(ServerContext* context, const backend::PredictOptions* request, backend::Reply* reply) override { | |
| if (params_base.model.path.empty()) { | |
| return grpc::Status(grpc::StatusCode::FAILED_PRECONDITION, "Model not loaded"); | |
| } | |
| json data = parse_options(true, request, params_base, ctx_server.get_llama_context()); | |
| data["stream"] = false; | |
| //Raise error if embeddings is set to true | |
| if (params_base.embedding) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, "Embedding is not supported in Predict mode"); | |
| } | |
| std::cout << "[PREDICT] Received result: " << data.dump(2) << std::endl; | |
| auto completion_id = gen_chatcmplid(); | |
| auto rd = ctx_server.get_response_reader(); | |
| try { | |
| std::vector<server_task> tasks; | |
| std::string prompt_str; | |
| std::vector<raw_buffer> files; // Declare files early so it's accessible in both branches | |
| // Handle chat templates when UseTokenizerTemplate is enabled and Messages are provided | |
| if (request->usetokenizertemplate() && request->messages_size() > 0 && ctx_server.impl->chat_params.tmpls != nullptr) { | |
| // Convert proto Messages to JSON format compatible with oaicompat_chat_params_parse | |
| json body_json; | |
| json messages_json = json::array(); | |
| // Find the last user message index to attach images/audio to | |
| int last_user_msg_idx = -1; | |
| for (int i = request->messages_size() - 1; i >= 0; i--) { | |
| if (request->messages(i).role() == "user") { | |
| last_user_msg_idx = i; | |
| break; | |
| } | |
| } | |
| SRV_INF("[CONTENT DEBUG] Predict: Processing %d messages\n", request->messages_size()); | |
| for (int i = 0; i < request->messages_size(); i++) { | |
| const auto& msg = request->messages(i); | |
| json msg_json; | |
| msg_json["role"] = msg.role(); | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d: role=%s, content_empty=%d, content_length=%zu\n", | |
| i, msg.role().c_str(), msg.content().empty() ? 1 : 0, msg.content().size()); | |
| if (!msg.content().empty()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d content (first 200 chars): %s\n", | |
| i, msg.content().substr(0, std::min<size_t>(200, msg.content().size())).c_str()); | |
| } | |
| bool is_last_user_msg = (i == last_user_msg_idx); | |
| bool has_images_or_audio = (request->images_size() > 0 || request->audios_size() > 0); | |
| // Handle content - can be string, null, or array | |
| // For multimodal content, we'll embed images/audio from separate fields | |
| if (!msg.content().empty()) { | |
| // Try to parse content as JSON to see if it's already an array | |
| json content_val; | |
| try { | |
| content_val = json::parse(msg.content()); | |
| // Handle null values - convert to empty string to avoid template errors | |
| if (content_val.is_null()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d parsed JSON is null, converting to empty string\n", i); | |
| content_val = ""; | |
| } | |
| } catch (const json::parse_error&) { | |
| // Not JSON, treat as plain string | |
| content_val = msg.content(); | |
| } | |
| // If content is an object (e.g., from tool call failures), convert to string | |
| if (content_val.is_object()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d content is object, converting to string\n", i); | |
| content_val = content_val.dump(); | |
| } | |
| // If content is a string and this is the last user message with images/audio, combine them | |
| if (content_val.is_string() && is_last_user_msg && has_images_or_audio) { | |
| json content_array = json::array(); | |
| // Add text first | |
| content_array.push_back({{"type", "text"}, {"text", content_val.get<std::string>()}}); | |
| // Add images | |
| if (request->images_size() > 0) { | |
| for (int j = 0; j < request->images_size(); j++) { | |
| json image_chunk; | |
| image_chunk["type"] = "image_url"; | |
| json image_url; | |
| image_url["url"] = "data:image/jpeg;base64," + request->images(j); | |
| image_chunk["image_url"] = image_url; | |
| content_array.push_back(image_chunk); | |
| } | |
| } | |
| // Add audios | |
| if (request->audios_size() > 0) { | |
| for (int j = 0; j < request->audios_size(); j++) { | |
| json audio_chunk; | |
| audio_chunk["type"] = "input_audio"; | |
| json input_audio; | |
| input_audio["data"] = request->audios(j); | |
| input_audio["format"] = "wav"; // default, could be made configurable | |
| audio_chunk["input_audio"] = input_audio; | |
| content_array.push_back(audio_chunk); | |
| } | |
| } | |
| msg_json["content"] = content_array; | |
| } else { | |
| // Use content as-is (already array or not last user message) | |
| // Ensure null values are converted to empty string | |
| if (content_val.is_null()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d content_val was null, setting to empty string\n", i); | |
| msg_json["content"] = ""; | |
| } else { | |
| msg_json["content"] = content_val; | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d content set, type=%s\n", | |
| i, content_val.is_string() ? "string" : | |
| content_val.is_array() ? "array" : | |
| content_val.is_object() ? "object" : "other"); | |
| } | |
| } | |
| } else if (is_last_user_msg && has_images_or_audio) { | |
| // If no content but this is the last user message with images/audio, create content array | |
| json content_array = json::array(); | |
| if (request->images_size() > 0) { | |
| for (int j = 0; j < request->images_size(); j++) { | |
| json image_chunk; | |
| image_chunk["type"] = "image_url"; | |
| json image_url; | |
| image_url["url"] = "data:image/jpeg;base64," + request->images(j); | |
| image_chunk["image_url"] = image_url; | |
| content_array.push_back(image_chunk); | |
| } | |
| } | |
| if (request->audios_size() > 0) { | |
| for (int j = 0; j < request->audios_size(); j++) { | |
| json audio_chunk; | |
| audio_chunk["type"] = "input_audio"; | |
| json input_audio; | |
| input_audio["data"] = request->audios(j); | |
| input_audio["format"] = "wav"; // default, could be made configurable | |
| audio_chunk["input_audio"] = input_audio; | |
| content_array.push_back(audio_chunk); | |
| } | |
| } | |
| msg_json["content"] = content_array; | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d created content array with media\n", i); | |
| } else if (!msg.tool_calls().empty()) { | |
| // Tool call messages may have null content, but templates expect string | |
| // IMPORTANT: Set to space " " instead of empty string "", because llama.cpp's | |
| // common_chat_msgs_to_json_oaicompat converts empty strings to null (line 312), | |
| // which causes template errors when accessing message.content[:tool_start_length] | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d has tool_calls, setting content to space (not empty string)\n", i); | |
| msg_json["content"] = " "; | |
| } else if (msg.role() == "tool") { | |
| // Tool role messages must have content field set, even if empty | |
| // Jinja templates expect content to be a string, not null or object | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d is tool role, content_empty=%d\n", i, msg.content().empty() ? 1 : 0); | |
| if (msg.content().empty()) { | |
| msg_json["content"] = ""; | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): empty content, set to empty string\n", i); | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): content exists: %s\n", | |
| i, msg.content().substr(0, std::min<size_t>(200, msg.content().size())).c_str()); | |
| // Content exists, parse and ensure it's a string | |
| json content_val; | |
| try { | |
| content_val = json::parse(msg.content()); | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): parsed JSON, type=%s\n", | |
| i, content_val.is_null() ? "null" : | |
| content_val.is_object() ? "object" : | |
| content_val.is_string() ? "string" : | |
| content_val.is_array() ? "array" : "other"); | |
| // Handle null values - Jinja templates expect content to be a string, not null | |
| if (content_val.is_null()) { | |
| msg_json["content"] = ""; | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): null content, converted to empty string\n", i); | |
| } else if (content_val.is_object()) { | |
| // If content is an object (e.g., from tool call failures/errors), convert to string | |
| msg_json["content"] = content_val.dump(); | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): object content, converted to string: %s\n", | |
| i, content_val.dump().substr(0, std::min<size_t>(200, content_val.dump().size())).c_str()); | |
| } else if (content_val.is_string()) { | |
| msg_json["content"] = content_val.get<std::string>(); | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): string content, using as-is\n", i); | |
| } else { | |
| // For arrays or other types, convert to string | |
| msg_json["content"] = content_val.dump(); | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): %s content, converted to string\n", | |
| i, content_val.is_array() ? "array" : "other type"); | |
| } | |
| } catch (const json::parse_error&) { | |
| // Not JSON, treat as plain string | |
| msg_json["content"] = msg.content(); | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (tool): not JSON, using as string\n", i); | |
| } | |
| } | |
| } else { | |
| // Ensure all messages have content set (fallback for any unhandled cases) | |
| // Jinja templates expect content to be present, default to empty string if not set | |
| if (!msg_json.contains("content")) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d (role=%s): no content field, adding empty string\n", | |
| i, msg.role().c_str()); | |
| msg_json["content"] = ""; | |
| } | |
| } | |
| // Add optional fields for OpenAI-compatible message format | |
| if (!msg.name().empty()) { | |
| msg_json["name"] = msg.name(); | |
| } | |
| if (!msg.tool_call_id().empty()) { | |
| msg_json["tool_call_id"] = msg.tool_call_id(); | |
| } | |
| if (!msg.reasoning_content().empty()) { | |
| msg_json["reasoning_content"] = msg.reasoning_content(); | |
| } | |
| if (!msg.tool_calls().empty()) { | |
| // Parse tool_calls JSON string and add to message | |
| try { | |
| json tool_calls = json::parse(msg.tool_calls()); | |
| msg_json["tool_calls"] = tool_calls; | |
| SRV_INF("[TOOL CALLS DEBUG] Predict: Message %d has tool_calls: %s\n", i, tool_calls.dump().c_str()); | |
| // IMPORTANT: If message has tool_calls but content is empty or not set, | |
| // set content to space " " instead of empty string "", because llama.cpp's | |
| // common_chat_msgs_to_json_oaicompat converts empty strings to null (line 312), | |
| // which causes template errors when accessing message.content[:tool_start_length] | |
| if (!msg_json.contains("content") || (msg_json.contains("content") && msg_json["content"].is_string() && msg_json["content"].get<std::string>().empty())) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d has tool_calls but empty content, setting to space\n", i); | |
| msg_json["content"] = " "; | |
| } | |
| // Log each tool call with name and arguments | |
| if (tool_calls.is_array()) { | |
| for (size_t tc_idx = 0; tc_idx < tool_calls.size(); tc_idx++) { | |
| const auto& tc = tool_calls[tc_idx]; | |
| std::string tool_name = "unknown"; | |
| std::string tool_args = "{}"; | |
| if (tc.contains("function")) { | |
| const auto& func = tc["function"]; | |
| if (func.contains("name")) { | |
| tool_name = func["name"].get<std::string>(); | |
| } | |
| if (func.contains("arguments")) { | |
| tool_args = func["arguments"].is_string() ? | |
| func["arguments"].get<std::string>() : | |
| func["arguments"].dump(); | |
| } | |
| } else if (tc.contains("name")) { | |
| tool_name = tc["name"].get<std::string>(); | |
| if (tc.contains("arguments")) { | |
| tool_args = tc["arguments"].is_string() ? | |
| tc["arguments"].get<std::string>() : | |
| tc["arguments"].dump(); | |
| } | |
| } | |
| SRV_INF("[TOOL CALLS DEBUG] Predict: Message %d, tool_call %zu: name=%s, arguments=%s\n", | |
| i, tc_idx, tool_name.c_str(), tool_args.c_str()); | |
| } | |
| } | |
| } catch (const json::parse_error& e) { | |
| SRV_WRN("Failed to parse tool_calls JSON: %s\n", e.what()); | |
| } | |
| } | |
| // Debug: Log final content state before adding to array | |
| if (msg_json.contains("content")) { | |
| if (msg_json["content"].is_null()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d FINAL STATE: content is NULL - THIS WILL CAUSE ERROR!\n", i); | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d FINAL STATE: content type=%s, has_value=%d\n", | |
| i, msg_json["content"].is_string() ? "string" : | |
| msg_json["content"].is_array() ? "array" : | |
| msg_json["content"].is_object() ? "object" : "other", | |
| msg_json["content"].is_null() ? 0 : 1); | |
| } | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] Predict: Message %d FINAL STATE: NO CONTENT FIELD - THIS WILL CAUSE ERROR!\n", i); | |
| } | |
| messages_json.push_back(msg_json); | |
| } | |
| // Final safety check: Ensure no message has null content (Jinja templates require strings) | |
| SRV_INF("[CONTENT DEBUG] Predict: Running final safety check on %zu messages\n", messages_json.size()); | |
| for (size_t idx = 0; idx < messages_json.size(); idx++) { | |
| auto& msg = messages_json[idx]; | |
| std::string role_str = msg.contains("role") ? msg["role"].get<std::string>() : "unknown"; | |
| if (msg.contains("content") && msg["content"].is_null()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Safety check found message %zu (role=%s) with NULL content, converting to empty string\n", idx, role_str.c_str()); | |
| msg["content"] = ""; | |
| } else if (!msg.contains("content")) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Safety check found message %zu (role=%s) without content field, adding empty string\n", idx, role_str.c_str()); | |
| msg["content"] = ""; | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] Predict: Safety check message %zu (role=%s): content OK, type=%s\n", | |
| idx, role_str.c_str(), | |
| msg["content"].is_string() ? "string" : | |
| msg["content"].is_array() ? "array" : | |
| msg["content"].is_object() ? "object" : "other"); | |
| } | |
| } | |
| // Debug: Count tool messages | |
| int tool_msg_count = 0; | |
| for (const auto& msg : messages_json) { | |
| if (msg.contains("role") && msg["role"] == "tool") { | |
| tool_msg_count++; | |
| } | |
| } | |
| SRV_DBG("[TOOLS DEBUG] Predict: Built %d tool messages out of %zu total messages\n", tool_msg_count, messages_json.size()); | |
| // Debug: Print full conversation (messages) | |
| SRV_DBG("[CONVERSATION DEBUG] Predict: Full messages array:\n%s\n", messages_json.dump(2).c_str()); | |
| body_json["messages"] = messages_json; | |
| body_json["stream"] = false; | |
| // Check if grammar is provided from Go layer (NoGrammar=false) | |
| // If grammar is provided, we must use it and NOT let template generate grammar from tools | |
| // oaicompat_chat_params_parse throws an error if both grammar and tools are provided | |
| bool has_grammar_from_go = data.contains("grammar") && | |
| data["grammar"].is_string() && | |
| !data["grammar"].get<std::string>().empty(); | |
| SRV_INF("[TOOLS DEBUG] Predict: has_grammar_from_go=%d, data.contains(\"tools\")=%d, data.contains(\"grammar\")=%d\n", | |
| has_grammar_from_go ? 1 : 0, | |
| data.contains("tools") ? 1 : 0, | |
| data.contains("grammar") ? 1 : 0); | |
| if (data.contains("grammar")) { | |
| SRV_INF("[TOOLS DEBUG] Predict: grammar type=%s, empty=%d\n", | |
| data["grammar"].is_string() ? "string" : "other", | |
| data["grammar"].is_string() && data["grammar"].get<std::string>().empty() ? 1 : 0); | |
| } | |
| // Copy other relevant fields from data that oaicompat_chat_params_parse expects | |
| // Tools and tool_choice are only passed when NoGrammar is true (grammar not provided) | |
| // When grammar is provided from Go layer, we use it instead of template-generated grammar | |
| if (!has_grammar_from_go) { | |
| // NoGrammar=true: pass tools and let template generate grammar | |
| if (data.contains("tools")) { | |
| body_json["tools"] = data["tools"]; | |
| std::string tools_str = data["tools"].dump(); | |
| SRV_INF("Using tools from data (NoGrammar=true): %s\n", tools_str.c_str()); | |
| // Debug: Log tools count and details before template processing | |
| if (data["tools"].is_array()) { | |
| SRV_INF("[TOOLS DEBUG] Predict: Passing %zu tools to oaicompat_chat_params_parse\n", data["tools"].size()); | |
| for (size_t t_idx = 0; t_idx < data["tools"].size(); t_idx++) { | |
| const auto& tool = data["tools"][t_idx]; | |
| std::string tool_name = "unknown"; | |
| std::string tool_desc = ""; | |
| if (tool.contains("function")) { | |
| const auto& func = tool["function"]; | |
| if (func.contains("name")) { | |
| tool_name = func["name"].get<std::string>(); | |
| } | |
| if (func.contains("description")) { | |
| tool_desc = func["description"].is_string() ? | |
| func["description"].get<std::string>() : ""; | |
| } | |
| } else if (tool.contains("name")) { | |
| tool_name = tool["name"].get<std::string>(); | |
| if (tool.contains("description")) { | |
| tool_desc = tool["description"].is_string() ? | |
| tool["description"].get<std::string>() : ""; | |
| } | |
| } | |
| SRV_INF("[TOOLS DEBUG] Predict: Tool %zu: name=%s, description=%s\n", | |
| t_idx, tool_name.c_str(), tool_desc.substr(0, 100).c_str()); | |
| } | |
| } | |
| } else { | |
| SRV_WRN("%s", "No tools found in data - tool calls will not work without tools field\n"); | |
| SRV_DBG("[TOOLS DEBUG] Predict: No tools in data, tool_choice=%s\n", data.contains("tool_choice") ? data["tool_choice"].dump().c_str() : "not set"); | |
| } | |
| if (data.contains("tool_choice")) { | |
| // tool_choice can be a string or object, but oaicompat_chat_params_parse expects a string | |
| // Convert object tool_choice to "required" (since a specific function is requested) | |
| if (data["tool_choice"].is_string()) { | |
| body_json["tool_choice"] = data["tool_choice"].get<std::string>(); | |
| } else if (data["tool_choice"].is_object()) { | |
| // Object tool_choice means a specific function is requested, use "required" | |
| body_json["tool_choice"] = "required"; | |
| std::string tool_choice_obj_str = data["tool_choice"].dump(); | |
| SRV_INF("Converted object tool_choice to 'required': %s\n", tool_choice_obj_str.c_str()); | |
| } else { | |
| // Fallback: convert to string | |
| body_json["tool_choice"] = data["tool_choice"].dump(); | |
| } | |
| std::string tool_choice_str = body_json["tool_choice"].get<std::string>(); | |
| SRV_INF("Using tool_choice: %s\n", tool_choice_str.c_str()); | |
| } else { | |
| // Default to "auto" if not specified | |
| body_json["tool_choice"] = "auto"; | |
| } | |
| } else { | |
| // Grammar is provided from Go layer (NoGrammar=false) - use it, don't pass tools | |
| SRV_INF("%s", "Grammar provided from Go layer - using it instead of template-generated grammar\n"); | |
| // Grammar will be copied from data after parsing (it's already in data) | |
| } | |
| if (data.contains("json_schema")) { | |
| body_json["json_schema"] = data["json_schema"]; | |
| } | |
| // If grammar is provided from Go layer, copy it to body_json so it's preserved | |
| // (though oaicompat_chat_params_parse may not use it if tools are present) | |
| if (has_grammar_from_go) { | |
| body_json["grammar"] = data["grammar"]; | |
| } | |
| if (data.contains("response_format")) { | |
| body_json["response_format"] = data["response_format"]; | |
| } | |
| if (data.contains("chat_template_kwargs")) { | |
| body_json["chat_template_kwargs"] = data["chat_template_kwargs"]; | |
| } | |
| // Pass parallel_tool_calls if present (used by oaicompat_chat_params_parse) | |
| if (data.contains("parallel_tool_calls")) { | |
| body_json["parallel_tool_calls"] = data["parallel_tool_calls"]; | |
| } | |
| // Pass add_generation_prompt if present (used by oaicompat_chat_params_parse) | |
| if (data.contains("add_generation_prompt")) { | |
| body_json["add_generation_prompt"] = data["add_generation_prompt"]; | |
| } | |
| // Debug: Print full body_json before template processing (includes messages, tools, tool_choice, etc.) | |
| SRV_DBG("[CONVERSATION DEBUG] Predict: Full body_json before oaicompat_chat_params_parse:\n%s\n", body_json.dump(2).c_str()); | |
| // Use the same approach as server.cpp: call oaicompat_chat_params_parse | |
| // This handles all template application, grammar merging, etc. automatically | |
| // Files extracted from multimodal content in messages will be added to the files vector | |
| // chat_params already contains tmpls, allow_image, and allow_audio set during model loading | |
| // Debug: Log tools before template processing | |
| if (body_json.contains("tools")) { | |
| SRV_DBG("[TOOLS DEBUG] Predict: Before oaicompat_chat_params_parse - tools count: %zu\n", | |
| body_json["tools"].is_array() ? body_json["tools"].size() : 0); | |
| } | |
| // Debug: Verify messages content before template processing | |
| // Also ensure ALL messages have content set to string (not null) - templates expect strings | |
| if (body_json.contains("messages") && body_json["messages"].is_array()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: Before oaicompat_chat_params_parse - checking %zu messages\n", body_json["messages"].size()); | |
| for (size_t idx = 0; idx < body_json["messages"].size(); idx++) { | |
| auto& msg = body_json["messages"][idx]; | |
| std::string role_str = msg.contains("role") ? msg["role"].get<std::string>() : "unknown"; | |
| if (msg.contains("content")) { | |
| if (msg["content"].is_null()) { | |
| SRV_INF("[CONTENT DEBUG] Predict: BEFORE TEMPLATE - Message %zu (role=%s) has NULL content - FIXING!\n", idx, role_str.c_str()); | |
| msg["content"] = ""; // Fix null content | |
| } else if (role_str == "tool" && msg["content"].is_array()) { | |
| // Tool messages must have string content, not array | |
| // oaicompat_chat_params_parse expects tool messages to have string content | |
| SRV_INF("[CONTENT DEBUG] Predict: BEFORE TEMPLATE - Message %zu (role=tool) has array content, converting to string\n", idx); | |
| msg["content"] = msg["content"].dump(); | |
| } else if (!msg["content"].is_string() && !msg["content"].is_array()) { | |
| // If content is object or other non-string type, convert to string for templates | |
| SRV_INF("[CONTENT DEBUG] Predict: BEFORE TEMPLATE - Message %zu (role=%s) content is not string/array, converting\n", idx, role_str.c_str()); | |
| if (msg["content"].is_object()) { | |
| msg["content"] = msg["content"].dump(); | |
| } else { | |
| msg["content"] = ""; | |
| } | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] Predict: BEFORE TEMPLATE - Message %zu (role=%s): content type=%s\n", | |
| idx, role_str.c_str(), | |
| msg["content"].is_string() ? "string" : | |
| msg["content"].is_array() ? "array" : | |
| msg["content"].is_object() ? "object" : "other"); | |
| } | |
| } else { | |
| SRV_INF("[CONTENT DEBUG] Predict: BEFORE TEMPLATE - Message %zu (role=%s) MISSING content field - ADDING!\n", idx, role_str.c_str()); | |
| msg["content"] = ""; // Add missing content | |
| } | |
| } | |
| } | |
| json parsed_data = oaicompat_chat_params_parse(body_json, ctx_server.impl->chat_params, files); | |
| // Debug: Log tools after template processing | |
| if (parsed_data.contains("tools")) { | |
| SRV_DBG("[TOOLS DEBUG] Predict: After oaicompat_chat_params_parse - tools count: %zu\n", | |
| parsed_data["tools"].is_array() ? parsed_data["tools"].size() : 0); | |
| } else { | |
| SRV_DBG("%s", "[TOOLS DEBUG] Predict: After oaicompat_chat_params_parse - no tools in parsed_data\n"); | |
| } | |
| // Extract the prompt from parsed data | |
| prompt_str = parsed_data.at("prompt").get<std::string>(); | |
| // Preserve grammar from Go layer if it was provided (NoGrammar=false) | |
| // Otherwise, use grammar from parsed_data (template-generated when NoGrammar=true) | |
| json preserved_grammar; | |
| if (has_grammar_from_go && data.contains("grammar")) { | |
| preserved_grammar = data["grammar"]; | |
| } | |
| // Merge all fields from parsed_data into data (grammar, grammar_triggers, preserved_tokens, parse_tool_calls, etc.) | |
| // This ensures all template-generated fields are included | |
| // parse_tool_calls is set by oaicompat_chat_params_parse when tools are present | |
| for (const auto& item : parsed_data.items()) { | |
| if (item.key() != "prompt") { // Don't overwrite prompt_str, we already extracted it | |
| // If grammar was provided from Go layer, preserve it instead of template-generated grammar | |
| if (item.key() == "grammar" && has_grammar_from_go && !preserved_grammar.is_null()) { | |
| data["grammar"] = preserved_grammar; | |
| } else { | |
| data[item.key()] = item.value(); | |
| } | |
| } | |
| } | |
| // Debug: Log parse_tool_calls if present (set by oaicompat_chat_params_parse when tools are present) | |
| if (data.contains("parse_tool_calls")) { | |
| SRV_DBG("[TOOLS DEBUG] Predict: parse_tool_calls=%s\n", data["parse_tool_calls"].get<bool>() ? "true" : "false"); | |
| } | |
| } else { | |
| // Use prompt directly from data | |
| if (data.contains("prompt") && data["prompt"].is_string()) { | |
| prompt_str = data["prompt"].get<std::string>(); | |
| } else { | |
| prompt_str = request->prompt(); | |
| } | |
| } | |
| const auto type = SERVER_TASK_TYPE_COMPLETION; | |
| // TODO: this log can become very long, put it behind a flag or think about a more compact format | |
| //SRV_DBG("Prompt: %s\n", prompt.is_string() ? prompt.get<std::string>().c_str() : prompt.dump(2).c_str()); | |
| // If not using chat templates, extract files from image_data/audio_data fields | |
| // (If using chat templates, files were already extracted by oaicompat_chat_params_parse) | |
| if (!request->usetokenizertemplate() || request->messages_size() == 0 || ctx_server.impl->chat_params.tmpls == nullptr) { | |
| const auto &images_data = data.find("image_data"); | |
| if (images_data != data.end() && images_data->is_array()) | |
| { | |
| std::cout << "[PREDICT] Processing " << images_data->size() << " images" << std::endl; | |
| for (const auto &img : *images_data) | |
| { | |
| std::cout << "[PREDICT] Processing image" << std::endl; | |
| auto decoded_data = base64_decode(img["data"].get<std::string>()); | |
| files.push_back(decoded_data); | |
| } | |
| } | |
| const auto &audio_data = data.find("audio_data"); | |
| if (audio_data != data.end() && audio_data->is_array()) | |
| { | |
| for (const auto &audio : *audio_data) | |
| { | |
| auto decoded_data = base64_decode(audio["data"].get<std::string>()); | |
| files.push_back(decoded_data); | |
| } | |
| } | |
| } | |
| // process files | |
| const bool has_mtmd = ctx_server.impl->mctx != nullptr; | |
| // process prompt | |
| std::vector<server_tokens> inputs; | |
| if (has_mtmd) { | |
| // multimodal | |
| inputs.push_back(process_mtmd_prompt(ctx_server.impl->mctx, prompt_str, files)); | |
| } else { | |
| // Everything else, including multimodal completions. | |
| inputs = tokenize_input_prompts(ctx_server.impl->vocab, ctx_server.impl->mctx, prompt_str, true, true); | |
| } | |
| tasks.reserve(inputs.size()); | |
| for (size_t i = 0; i < inputs.size(); i++) { | |
| server_task task = server_task(type); | |
| task.id = rd.queue_tasks.get_new_id(); | |
| task.index = i; | |
| task.tokens = std::move(inputs[i]); | |
| task.params = server_task::params_from_json_cmpl( | |
| ctx_server.impl->vocab, | |
| params_base, | |
| ctx_server.get_meta().slot_n_ctx, | |
| data); | |
| task.id_slot = json_value(data, "id_slot", -1); | |
| // OAI-compat | |
| task.params.res_type = TASK_RESPONSE_TYPE_NONE; | |
| task.params.oaicompat_cmpl_id = completion_id; | |
| // oaicompat_model is already populated by params_from_json_cmpl | |
| tasks.push_back(std::move(task)); | |
| } | |
| rd.post_tasks(std::move(tasks)); | |
| } catch (const std::exception & e) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, e.what()); | |
| } | |
| std::cout << "[DEBUG] Waiting for results..." << std::endl; | |
| // Wait for all results | |
| auto all_results = rd.wait_for_all([&context]() { return context->IsCancelled(); }); | |
| if (all_results.is_terminated) { | |
| return grpc::Status(grpc::StatusCode::CANCELLED, "Request cancelled by client"); | |
| } else if (all_results.error) { | |
| std::cout << "[DEBUG] Error in results: " << all_results.error->to_json().value("message", "") << std::endl; | |
| reply->set_message(all_results.error->to_json().value("message", "")); | |
| return grpc::Status(grpc::StatusCode::INTERNAL, all_results.error->to_json().value("message", "Error occurred")); | |
| } else { | |
| std::cout << "[DEBUG] Received " << all_results.results.size() << " results" << std::endl; | |
| if (all_results.results.size() == 1) { | |
| // single result | |
| GGML_ASSERT(dynamic_cast<server_task_result_cmpl_final*>(all_results.results[0].get()) != nullptr); | |
| json result_json = all_results.results[0]->to_json(); | |
| reply->set_message(result_json.value("content", "")); | |
| int32_t tokens_predicted = result_json.value("tokens_predicted", 0); | |
| reply->set_tokens(tokens_predicted); | |
| int32_t tokens_evaluated = result_json.value("tokens_evaluated", 0); | |
| reply->set_prompt_tokens(tokens_evaluated); | |
| if (result_json.contains("timings")) { | |
| double timing_prompt_processing = result_json.at("timings").value("prompt_ms", 0.0); | |
| reply->set_timing_prompt_processing(timing_prompt_processing); | |
| double timing_token_generation = result_json.at("timings").value("predicted_ms", 0.0); | |
| reply->set_timing_token_generation(timing_token_generation); | |
| } | |
| // Extract and set logprobs if present | |
| json logprobs_json = extract_logprobs_from_json(result_json); | |
| if (!logprobs_json.empty() && !logprobs_json.is_null()) { | |
| std::string logprobs_str = logprobs_json.dump(); | |
| reply->set_logprobs(logprobs_str); | |
| } | |
| } else { | |
| // multiple results (multitask) | |
| json arr = json::array(); | |
| json logprobs_arr = json::array(); | |
| bool has_logprobs = false; | |
| for (auto & res : all_results.results) { | |
| GGML_ASSERT(dynamic_cast<server_task_result_cmpl_final*>(res.get()) != nullptr); | |
| json res_json = res->to_json(); | |
| arr.push_back(res_json.value("content", "")); | |
| // Extract logprobs for each result | |
| json logprobs_json = extract_logprobs_from_json(res_json); | |
| if (!logprobs_json.empty() && !logprobs_json.is_null()) { | |
| has_logprobs = true; | |
| logprobs_arr.push_back(logprobs_json); | |
| } else { | |
| logprobs_arr.push_back(json::object()); | |
| } | |
| } | |
| reply->set_message(arr); | |
| // Set logprobs if any result has them | |
| if (has_logprobs) { | |
| std::string logprobs_str = logprobs_arr.dump(); | |
| reply->set_logprobs(logprobs_str); | |
| } | |
| } | |
| } | |
| std::cout << "[DEBUG] Predict request completed successfully" << std::endl; | |
| // Check if context was cancelled during processing | |
| if (context->IsCancelled()) { | |
| return grpc::Status(grpc::StatusCode::CANCELLED, "Request cancelled by client"); | |
| } | |
| return grpc::Status::OK; | |
| } | |
| grpc::Status Embedding(ServerContext* context, const backend::PredictOptions* request, backend::EmbeddingResult* embeddingResult) override { | |
| if (params_base.model.path.empty()) { | |
| return grpc::Status(grpc::StatusCode::FAILED_PRECONDITION, "Model not loaded"); | |
| } | |
| json body = parse_options(false, request, params_base, ctx_server.get_llama_context()); | |
| body["stream"] = false; | |
| /* | |
| if (llama_pooling_type(ctx_server.ctx) == LLAMA_POOLING_TYPE_NONE) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, "Pooling type 'none' is not OAI compatible. Please use a different pooling type"); | |
| } | |
| */ | |
| // for the shape of input/content, see tokenize_input_prompts() | |
| json prompt = body.at("embeddings"); | |
| auto tokenized_prompts = tokenize_input_prompts(ctx_server.impl->vocab, ctx_server.impl->mctx, prompt, true, true); | |
| for (const auto & tokens : tokenized_prompts) { | |
| // this check is necessary for models that do not add BOS token to the input | |
| if (tokens.empty()) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, "Input content cannot be empty"); | |
| } | |
| } | |
| int embd_normalize = 2; // default to Euclidean/L2 norm | |
| // create and queue the task | |
| auto rd = ctx_server.get_response_reader(); | |
| { | |
| std::vector<server_task> tasks; | |
| for (size_t i = 0; i < tokenized_prompts.size(); i++) { | |
| server_task task = server_task(SERVER_TASK_TYPE_EMBEDDING); | |
| task.id = rd.queue_tasks.get_new_id(); | |
| task.index = i; | |
| task.tokens = std::move(tokenized_prompts[i]); | |
| task.params.res_type = TASK_RESPONSE_TYPE_NONE; | |
| task.params.embd_normalize = embd_normalize; | |
| tasks.push_back(std::move(task)); | |
| } | |
| rd.post_tasks(std::move(tasks)); | |
| } | |
| // Wait for all results | |
| auto all_results = rd.wait_for_all([&context]() { return context->IsCancelled(); }); | |
| if (all_results.is_terminated) { | |
| return grpc::Status(grpc::StatusCode::CANCELLED, "Request cancelled by client"); | |
| } else if (all_results.error) { | |
| return grpc::Status(grpc::StatusCode::INTERNAL, all_results.error->to_json().value("message", "Error in receiving results")); | |
| } | |
| // Collect responses | |
| json responses = json::array(); | |
| for (auto & res : all_results.results) { | |
| GGML_ASSERT(dynamic_cast<server_task_result_embd*>(res.get()) != nullptr); | |
| responses.push_back(res->to_json()); | |
| } | |
| std::cout << "[DEBUG] Responses size: " << responses.size() << std::endl; | |
| // Process the responses and extract embeddings | |
| for (const auto & response_elem : responses) { | |
| // Check if the response has an "embedding" field | |
| if (response_elem.contains("embedding")) { | |
| json embedding_data = json_value(response_elem, "embedding", json::array()); | |
| if (embedding_data.is_array() && !embedding_data.empty()) { | |
| for (const auto & embedding_vector : embedding_data) { | |
| if (embedding_vector.is_array()) { | |
| for (const auto & embedding_value : embedding_vector) { | |
| embeddingResult->add_embeddings(embedding_value.get<float>()); | |
| } | |
| } | |
| } | |
| } | |
| } else { | |
| // Check if the response itself contains the embedding data directly | |
| if (response_elem.is_array()) { | |
| for (const auto & embedding_value : response_elem) { | |
| embeddingResult->add_embeddings(embedding_value.get<float>()); | |
| } | |
| } | |
| } | |
| } | |
| return grpc::Status::OK; | |
| } | |
| grpc::Status Rerank(ServerContext* context, const backend::RerankRequest* request, backend::RerankResult* rerankResult) override { | |
| if (!params_base.embedding || params_base.pooling_type != LLAMA_POOLING_TYPE_RANK) { | |
| return grpc::Status(grpc::StatusCode::UNIMPLEMENTED, "This server does not support reranking. Start it with `--reranking` and without `--embedding`"); | |
| } | |
| // Validate request | |
| if (request->query().empty()) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, "\"query\" must be provided"); | |
| } | |
| if (request->documents_size() == 0) { | |
| return grpc::Status(grpc::StatusCode::INVALID_ARGUMENT, "\"documents\" must be a non-empty string array"); | |
| } | |
| // Create and queue the task | |
| auto rd = ctx_server.get_response_reader(); | |
| { | |
| std::vector<server_task> tasks; | |
| std::vector<std::string> documents; | |
| for (int i = 0; i < request->documents_size(); i++) { | |
| documents.push_back(request->documents(i)); | |
| } | |
| tasks.reserve(documents.size()); | |
| for (size_t i = 0; i < documents.size(); i++) { | |
| auto tmp = format_prompt_rerank(ctx_server.impl->model, ctx_server.impl->vocab, ctx_server.impl->mctx, request->query(), documents[i]); | |
| server_task task = server_task(SERVER_TASK_TYPE_RERANK); | |
| task.id = rd.queue_tasks.get_new_id(); | |
| task.index = i; | |
| task.tokens = std::move(tmp); | |
| tasks.push_back(std::move(task)); | |
| } | |
| rd.post_tasks(std::move(tasks)); | |
| } | |
| // Wait for all results | |
| auto all_results = rd.wait_for_all([&context]() { return context->IsCancelled(); }); | |
| if (all_results.is_terminated) { | |
| return grpc::Status(grpc::StatusCode::CANCELLED, "Request cancelled by client"); | |
| } else if (all_results.error) { | |
| return grpc::Status(grpc::StatusCode::INTERNAL, all_results.error->to_json().value("message", "Error in receiving results")); | |
| } | |
| // Collect responses | |
| json responses = json::array(); | |
| for (auto & res : all_results.results) { | |
| GGML_ASSERT(dynamic_cast<server_task_result_rerank*>(res.get()) != nullptr); | |
| responses.push_back(res->to_json()); | |
| } | |
| // Sort responses by score in descending order | |
| std::sort(responses.begin(), responses.end(), [](const json& a, const json& b) { | |
| return a.value("score", 0.0f) > b.value("score", 0.0f); | |
| }); | |
| // Crop results by request.top_n if specified | |
| int top_n = request->top_n(); | |
| if (top_n > 0 && top_n < static_cast<int>(responses.size())) { | |
| responses = json(responses.begin(), responses.begin() + top_n); | |
| } | |
| // Set usage information | |
| backend::Usage* usage = rerankResult->mutable_usage(); | |
| int total_tokens = 0; | |
| int prompt_tokens = 0; | |
| // Create document results | |
| for (const auto& response : responses) { | |
| backend::DocumentResult* doc_result = rerankResult->add_results(); | |
| doc_result->set_index(response.value("index", 0)); | |
| doc_result->set_text(request->documents(response.value("index", 0))); | |
| doc_result->set_relevance_score(response.value("score", 0.0f)); | |
| // Add tokens evaluated for this document | |
| int tokens_evaluated = response.value("tokens_evaluated", 0); | |
| total_tokens += tokens_evaluated; | |
| prompt_tokens += tokens_evaluated; | |
| } | |
| // Set the total tokens in usage | |
| usage->set_total_tokens(total_tokens); | |
| usage->set_prompt_tokens(prompt_tokens); | |
| return grpc::Status::OK; | |
| } | |
| grpc::Status TokenizeString(ServerContext* /*context*/, const backend::PredictOptions* request, backend::TokenizationResponse* response) override { | |
| if (params_base.model.path.empty()) { | |
| return grpc::Status(grpc::StatusCode::FAILED_PRECONDITION, "Model not loaded"); | |
| } | |
| json body = parse_options(false, request, params_base, ctx_server.get_llama_context()); | |
| body["stream"] = false; | |
| json tokens_response = json::array(); | |
| if (body.count("prompt") != 0) { | |
| const bool add_special = json_value(body, "add_special", false); | |
| llama_tokens tokens = tokenize_mixed(ctx_server.impl->vocab, body.at("content"), add_special, true); | |
| for (const auto& token : tokens) { | |
| std::string piece = common_token_to_piece(ctx_server.get_llama_context(), token); | |
| response->add_tokens(token); | |
| } | |
| } | |
| return grpc::Status::OK; | |
| } | |
| grpc::Status GetMetrics(ServerContext* /*context*/, const backend::MetricsRequest* /*request*/, backend::MetricsResponse* response) override { | |
| // request slots data using task queue | |
| auto rd = ctx_server.get_response_reader(); | |
| int task_id = rd.queue_tasks.get_new_id(); | |
| { | |
| server_task task(SERVER_TASK_TYPE_METRICS); | |
| task.id = task_id; | |
| rd.queue_results.add_waiting_task_id(task_id); | |
| rd.queue_tasks.post(std::move(task), true); // high-priority task | |
| } | |
| // get the result | |
| server_task_result_ptr result = rd.queue_results.recv(task_id); | |
| rd.queue_results.remove_waiting_task_id(task_id); | |
| if (result->is_error()) { | |
| // Handle case when no active slot exists | |
| response->set_slot_id(0); | |
| response->set_prompt_json_for_slot(""); | |
| response->set_tokens_per_second(0); | |
| response->set_tokens_generated(0); | |
| response->set_prompt_tokens_processed(0); | |
| return grpc::Status(grpc::StatusCode::INTERNAL, "Error in receiving results"); | |
| } | |
| // TODO: get rid of this dynamic_cast | |
| auto res_metrics = dynamic_cast<server_task_result_metrics*>(result.get()); | |
| GGML_ASSERT(res_metrics != nullptr); | |
| // Populate the response with metrics | |
| response->set_slot_id(0); | |
| response->set_prompt_json_for_slot(""); | |
| response->set_tokens_per_second(res_metrics->n_prompt_tokens_processed ? 1.e3 / res_metrics->t_prompt_processing * res_metrics->n_prompt_tokens_processed : 0.); | |
| response->set_tokens_generated(res_metrics->n_tokens_predicted_total); | |
| response->set_prompt_tokens_processed(res_metrics->n_prompt_tokens_processed_total); | |
| return grpc::Status::OK; | |
| } | |
| grpc::Status ModelMetadata(ServerContext* /*context*/, const backend::ModelOptions* /*request*/, backend::ModelMetadataResponse* response) override { | |
| // Check if model is loaded | |
| if (params_base.model.path.empty()) { | |
| return grpc::Status(grpc::StatusCode::FAILED_PRECONDITION, "Model not loaded"); | |
| } | |
| // Check if chat templates are initialized | |
| if (ctx_server.impl->chat_params.tmpls == nullptr) { | |
| // If templates are not initialized, we can't detect thinking support | |
| // Return false as default | |
| response->set_supports_thinking(false); | |
| response->set_rendered_template(""); | |
| return grpc::Status::OK; | |
| } | |
| // Detect thinking support using llama.cpp's function | |
| bool supports_thinking = common_chat_templates_support_enable_thinking(ctx_server.impl->chat_params.tmpls.get()); | |
| response->set_supports_thinking(supports_thinking); | |
| // Render the template with enable_thinking=true so Go code can detect thinking tokens | |
| // This allows reusing existing detection functions in Go | |
| std::string rendered_template = ""; | |
| if (params_base.use_jinja) { | |
| // Render the template with enable_thinking=true to see what the actual prompt looks like | |
| common_chat_templates_inputs dummy_inputs; | |
| common_chat_msg msg; | |
| msg.role = "user"; | |
| msg.content = "test"; | |
| dummy_inputs.messages = {msg}; | |
| dummy_inputs.enable_thinking = true; | |
| dummy_inputs.use_jinja = params_base.use_jinja; | |
| const auto rendered = common_chat_templates_apply(ctx_server.impl->chat_params.tmpls.get(), dummy_inputs); | |
| rendered_template = rendered.prompt; | |
| } | |
| response->set_rendered_template(rendered_template); | |
| return grpc::Status::OK; | |
| } | |
| }; | |
| int main(int argc, char** argv) { | |
| std::string server_address("localhost:50051"); | |
| // Define long and short options | |
| struct option long_options[] = { | |
| {"addr", required_argument, nullptr, 'a'}, | |
| {nullptr, 0, nullptr, 0} | |
| }; | |
| // Parse command-line arguments | |
| int option; | |
| int option_index = 0; | |
| while ((option = getopt_long(argc, argv, "a:", long_options, &option_index)) != -1) { | |
| switch (option) { | |
| case 'a': | |
| server_address = optarg; | |
| break; | |
| default: | |
| std::cerr << "Usage: " << argv[0] << " [--addr=<address>] or [-a <address>]" << std::endl; | |
| return 1; | |
| } | |
| } | |
| server_context ctx_server; | |
| BackendServiceImpl service(ctx_server); | |
| ServerBuilder builder; | |
| builder.AddListeningPort(server_address, grpc::InsecureServerCredentials()); | |
| builder.RegisterService(&service); | |
| builder.SetMaxMessageSize(50 * 1024 * 1024); // 50MB | |
| builder.SetMaxSendMessageSize(50 * 1024 * 1024); // 50MB | |
| builder.SetMaxReceiveMessageSize(50 * 1024 * 1024); // 50MB | |
| std::unique_ptr<Server> server(builder.BuildAndStart()); | |
| // run the HTTP server in a thread - see comment below | |
| std::thread t([&]() | |
| { | |
| std::cout << "Server listening on " << server_address << std::endl; | |
| server->Wait(); | |
| return 0; | |
| }); | |
| // clean up function, to be called before exit | |
| auto clean_up = [&server, &ctx_server]() { | |
| SRV_INF("%s: cleaning up before exit...\n", __func__); | |
| server->Shutdown(); | |
| ctx_server.terminate(); | |
| llama_backend_free(); | |
| }; | |
| //); | |
| start_llama_server(ctx_server); | |
| std::cout << "stopping" << std::endl; | |
| clean_up(); | |
| t.join(); | |
| return 0; | |
| } | |