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expose.cpp
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expose.cpp
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//This is Concedo's shitty adapter for adding python bindings for llama
//Considerations:
//Don't want to use pybind11 due to dependencies on MSVCC
//ZERO or MINIMAL changes as possible to main.cpp - do not move their function declarations here!
//Leave main.cpp UNTOUCHED, We want to be able to update the repo and pull any changes automatically.
//No dynamic memory allocation! Setup structs with FIXED (known) shapes and sizes for ALL output fields
//Python will ALWAYS provide the memory, we just write to it.
#include <cassert>
#include <cstring>
#include <fstream>
#include <regex>
#include <iostream>
#include <iterator>
#include <queue>
#include <string>
#include <math.h>
#include <cstdint>
#include "expose.h"
#include "model_adapter.cpp"
extern "C"
{
std::string platformenv, deviceenv, vulkandeviceenv;
//return val: 0=fail, 1=(original ggml, alpaca), 2=(ggmf), 3=(ggjt)
static FileFormat file_format = FileFormat::BADFORMAT;
static FileFormatExtraMeta file_format_meta;
bool load_model(const load_model_inputs inputs)
{
std::string model = inputs.model_filename;
lora_filename = inputs.lora_filename;
lora_base = inputs.lora_base;
mmproj_filename = inputs.mmproj_filename;
draftmodel_filename = inputs.draftmodel_filename;
int forceversion = inputs.forceversion;
file_format = check_file_format(model.c_str(),&file_format_meta);
if(forceversion!=0)
{
printf("\nWARNING: FILE FORMAT FORCED TO VER %d\nIf incorrect, loading may fail or crash.\n",forceversion);
file_format = (FileFormat)forceversion;
}
//first digit is whether configured, second is platform, third is devices
int cl_parseinfo = inputs.clblast_info;
std::string usingclblast = "GGML_OPENCL_CONFIGURED="+std::to_string(cl_parseinfo>0?1:0);
putenv((char*)usingclblast.c_str());
cl_parseinfo = cl_parseinfo%100; //keep last 2 digits
int platform = cl_parseinfo/10;
int devices = cl_parseinfo%10;
platformenv = "GGML_OPENCL_PLATFORM="+std::to_string(platform);
deviceenv = "GGML_OPENCL_DEVICE="+std::to_string(devices);
putenv((char*)platformenv.c_str());
putenv((char*)deviceenv.c_str());
std::string vulkan_info_raw = inputs.vulkan_info;
std::string vulkan_info_str = "";
for (size_t i = 0; i < vulkan_info_raw.length(); ++i) {
vulkan_info_str += vulkan_info_raw[i];
if (i < vulkan_info_raw.length() - 1) {
vulkan_info_str += ",";
}
}
if(vulkan_info_str!="")
{
vulkandeviceenv = "GGML_VK_VISIBLE_DEVICES="+vulkan_info_str;
putenv((char*)vulkandeviceenv.c_str());
}
executable_path = inputs.executable_path;
if(file_format==FileFormat::GPTJ_1 || file_format==FileFormat::GPTJ_2 || file_format==FileFormat::GPTJ_3 || file_format==FileFormat::GPTJ_4 || file_format==FileFormat::GPTJ_5)
{
printf("\n---\nIdentified as Legacy GPT-J model: (ver %d)\nAttempting to Load...\n---\n", file_format);
ModelLoadResult lr = gpttype_load_model(inputs, file_format, file_format_meta);
if (lr == ModelLoadResult::RETRY_LOAD)
{
if(file_format==FileFormat::GPTJ_1)
{
//if we tried 1 first, then try 3 and lastly 2
//otherwise if we tried 3 first, then try 2
file_format = FileFormat::GPTJ_4;
printf("\n---\nRetrying as Legacy GPT-J model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
if (lr == ModelLoadResult::RETRY_LOAD)
{
file_format = FileFormat::GPTJ_3;
printf("\n---\nRetrying as Legacy GPT-J model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
//lastly try format 2
if (lr == ModelLoadResult::RETRY_LOAD)
{
file_format = FileFormat::GPTJ_2;
printf("\n---\nRetrying as Legacy GPT-J model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
}
if (lr == ModelLoadResult::FAIL || lr == ModelLoadResult::RETRY_LOAD)
{
return false;
}
else
{
return true;
}
}
else if(file_format==FileFormat::GPT2_1||file_format==FileFormat::GPT2_2||file_format==FileFormat::GPT2_3||file_format==FileFormat::GPT2_4)
{
printf("\n---\nIdentified as Legacy GPT-2 model: (ver %d)\nAttempting to Load...\n---\n", file_format);
ModelLoadResult lr = gpttype_load_model(inputs, file_format, file_format_meta);
if (lr == ModelLoadResult::RETRY_LOAD)
{
file_format = FileFormat::GPT2_3;
printf("\n---\nRetrying as Legacy GPT-2 model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
if (lr == ModelLoadResult::RETRY_LOAD)
{
file_format = FileFormat::GPT2_2;
printf("\n---\nRetrying as Legacy GPT-2 model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
if (lr == ModelLoadResult::FAIL || lr == ModelLoadResult::RETRY_LOAD)
{
return false;
}
else
{
return true;
}
}
else if(file_format==FileFormat::NEOX_1 || file_format==FileFormat::NEOX_2 || file_format==FileFormat::NEOX_3 || file_format==FileFormat::NEOX_4 || file_format==FileFormat::NEOX_5 || file_format==FileFormat::NEOX_6 || file_format==FileFormat::NEOX_7)
{
printf("\n---\nIdentified as Legacy GPT-NEO-X model: (ver %d)\nAttempting to Load...\n---\n", file_format);
ModelLoadResult lr = gpttype_load_model(inputs, file_format, file_format_meta);
if (lr == ModelLoadResult::RETRY_LOAD)
{
if(file_format==FileFormat::NEOX_2)
{
file_format = FileFormat::NEOX_3;
printf("\n---\nRetrying as Legacy GPT-NEO-X model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
else
{
file_format = FileFormat::NEOX_5;
printf("\n---\nRetrying as Legacy GPT-NEO-X model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
}
if (lr == ModelLoadResult::RETRY_LOAD)
{
file_format = FileFormat::NEOX_1;
printf("\n---\nRetrying as Legacy GPT-NEO-X model: (ver %d)\nAttempting to Load...\n---\n", file_format);
lr = gpttype_load_model(inputs, file_format, file_format_meta);
}
if (lr == ModelLoadResult::FAIL || lr == ModelLoadResult::RETRY_LOAD)
{
return false;
}
else
{
return true;
}
}
else
{
if(file_format==FileFormat::MPT_1)
{
printf("\n---\nIdentified as Legacy MPT model: (ver %d)\nAttempting to Load...\n---\n", file_format);
}
else if(file_format==FileFormat::RWKV_1 || file_format==FileFormat::RWKV_2)
{
printf("\n---\nIdentified as Legacy RWKV model: (ver %d)\nAttempting to Load...\n---\n", file_format);
}
else if(file_format==FileFormat::GGUF_GENERIC)
{
printf("\n---\nIdentified as GGUF model: (ver %d)\nAttempting to Load...\n---\n", file_format);
}
else if(file_format==FileFormat::GGML || file_format==FileFormat::GGHF || file_format==FileFormat::GGJT || file_format==FileFormat::GGJT_2 || file_format==FileFormat::GGJT_3)
{
printf("\n---\nIdentified as Legacy GGML model: (ver %d)\n======\nGGML Models are Outdated: You are STRONGLY ENCOURAGED to obtain a newer GGUF model!\n======\nAttempting to Load...\n---\n", file_format);
}
else
{
printf("\n---\nUnidentified Model Encountered: (ver %d)\n---\n", file_format);
}
ModelLoadResult lr = gpttype_load_model(inputs, file_format, file_format_meta);
if(file_format==FileFormat::GGML || file_format==FileFormat::GGHF || file_format==FileFormat::GGJT || file_format==FileFormat::GGJT_2 || file_format==FileFormat::GGJT_3)
{
//warn a second time
printf("\n======\nGGML Models are Outdated: You are STRONGLY ENCOURAGED to obtain a newer GGUF model!\n======\n");
}
if (lr == ModelLoadResult::FAIL || lr == ModelLoadResult::RETRY_LOAD)
{
return false;
}
else
{
return true;
}
}
}
generation_outputs generate(const generation_inputs inputs)
{
return gpttype_generate(inputs);
}
bool sd_load_model(const sd_load_model_inputs inputs)
{
return sdtype_load_model(inputs);
}
sd_generation_outputs sd_generate(const sd_generation_inputs inputs)
{
return sdtype_generate(inputs);
}
bool whisper_load_model(const whisper_load_model_inputs inputs)
{
return whispertype_load_model(inputs);
}
whisper_generation_outputs whisper_generate(const whisper_generation_inputs inputs)
{
return whispertype_generate(inputs);
}
const char * new_token(int idx) {
if (generated_tokens.size() <= idx || idx < 0) return nullptr;
return generated_tokens[idx].c_str();
}
int get_stream_count() {
return generated_tokens.size();
}
bool has_finished() {
return generation_finished;
}
float get_last_eval_time() {
return last_eval_time;
}
float get_last_process_time() {
return last_process_time;
}
int get_last_token_count() {
return last_token_count;
}
int get_last_seed()
{
return last_seed;
}
int get_total_gens() {
return total_gens;
}
int get_total_img_gens()
{
return total_img_gens;
}
int get_last_stop_reason() {
return (int)last_stop_reason;
}
static std::string chat_template = "";
const char* get_chat_template() {
chat_template = gpttype_get_chat_template();
return chat_template.c_str();
}
const char* get_pending_output() {
return gpttype_get_pending_output().c_str();
}
bool abort_generate() {
return gpttype_generate_abort();
}
static std::vector<int> toks; //just share a static object for token counting
token_count_outputs token_count(const char * input, bool addbos)
{
std::string inputstr = input;
token_count_outputs output;
toks = gpttype_get_token_arr(inputstr,addbos);
output.count = toks.size();
output.ids = toks.data(); //this may be slightly unsafe
return output;
}
static std::string detokenized_str = ""; //just share a static object for detokenizing
const char * detokenize(const token_count_outputs input)
{
std::vector<int> input_arr;
for(int i=0;i<input.count;++i)
{
input_arr.push_back(input.ids[i]);
}
detokenized_str = gpttype_detokenize(input_arr,false);
return detokenized_str.c_str();
}
static std::vector<TopPicksData> last_logprob_toppicks;
static std::vector<logprob_item> last_logprob_items;
last_logprobs_outputs last_logprobs()
{
last_logprobs_outputs output;
last_logprob_items.clear();
last_logprob_toppicks.clear();
last_logprob_toppicks = gpttype_get_top_picks_data(); //copy top picks
for(int i=0;i<last_logprob_toppicks.size();++i)
{
logprob_item itm;
itm.option_count = last_logprob_toppicks[i].tokenid.size();
itm.selected_token = last_logprob_toppicks[i].selected_token.c_str();
itm.selected_logprob = last_logprob_toppicks[i].selected_logprob;
itm.logprobs = last_logprob_toppicks[i].logprobs.data();
for(int j=0;j<itm.option_count && j<logprobs_max;++j)
{
itm.tokens[j] = last_logprob_toppicks[i].tokens[j].c_str();
}
last_logprob_items.push_back(itm);
}
output.count = last_logprob_items.size();
output.logprob_items = last_logprob_items.data();
return output;
}
}