mirror of
https://github.com/nomic-ai/gpt4all.git
synced 2024-10-01 01:06:10 -04:00
0455b80b7f
Key changes: * python: optionally return token count in Embed4All.embed * python and docs: models2.json -> models3.json * Embed4All: require explicit prefix for unknown models * llamamodel: fix shouldAddBOS for Bert and Nomic Bert Signed-off-by: Jared Van Bortel <jared@nomic.ai>
298 lines
11 KiB
C++
298 lines
11 KiB
C++
#include "llmodel.h"
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#include <cassert>
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#include <iostream>
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#include <regex>
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#include <string>
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#include <unordered_set>
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// TODO(cebtenzzre): replace this with llama_kv_cache_seq_shift for llamamodel (GPT-J needs this as-is)
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void LLModel::recalculateContext(PromptContext &promptCtx, std::function<bool(bool)> recalculate) {
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int n_keep = shouldAddBOS();
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const int32_t n_discard = (promptCtx.n_ctx - n_keep) * promptCtx.contextErase;
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// Erase the first percentage of context from the tokens
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std::cerr << implementation().modelType() << ": reached the end of the context window so resizing\n";
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promptCtx.tokens.erase(promptCtx.tokens.begin() + n_keep, promptCtx.tokens.begin() + n_keep + n_discard);
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size_t i = n_keep;
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promptCtx.n_past = n_keep;
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while (i < promptCtx.tokens.size()) {
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size_t batch_end = std::min(i + promptCtx.n_batch, promptCtx.tokens.size());
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std::vector<int32_t> batch(promptCtx.tokens.begin() + i, promptCtx.tokens.begin() + batch_end);
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assert(promptCtx.n_past + int32_t(batch.size()) <= promptCtx.n_ctx);
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if (!evalTokens(promptCtx, batch)) {
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std::cerr << "LLModel ERROR: Failed to process prompt\n";
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goto stop_generating;
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}
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promptCtx.n_past += batch.size();
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if (!recalculate(true))
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goto stop_generating;
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i = batch_end;
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}
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assert(promptCtx.n_past == int32_t(promptCtx.tokens.size()));
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stop_generating:
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recalculate(false);
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}
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static bool parsePromptTemplate(const std::string &tmpl, std::vector<std::smatch> &placeholders, std::string &err) {
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static const std::regex placeholderRegex(R"(%[1-2](?![0-9]))");
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auto it = std::sregex_iterator(tmpl.begin(), tmpl.end(), placeholderRegex);
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placeholders.clear();
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placeholders.insert(placeholders.end(), it, std::sregex_iterator());
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if (placeholders.size() > 2) {
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err = "ERROR: expected at most two placeholders, got " + std::to_string(placeholders.size());
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return false;
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}
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if (placeholders.size() >= 1 && placeholders[0].str() != "%1") {
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err = "ERROR: first placeholder must be %1, got " + placeholders[0].str();
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return false;
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}
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if (placeholders.size() >= 2 && placeholders[1].str() != "%2") {
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err = "ERROR: second placeholder must be %2, got " + placeholders[1].str();
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return false;
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}
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return true;
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}
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void LLModel::prompt(const std::string &prompt,
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const std::string &promptTemplate,
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std::function<bool(int32_t)> promptCallback,
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std::function<bool(int32_t, const std::string&)> responseCallback,
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std::function<bool(bool)> recalculateCallback,
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PromptContext &promptCtx,
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bool special,
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std::string *fakeReply)
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{
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if (!isModelLoaded()) {
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std::cerr << implementation().modelType() << " ERROR: prompt won't work with an unloaded model!\n";
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return;
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}
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if (!supportsCompletion()) {
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std::string errorMessage = "ERROR: this model does not support text completion or chat!";
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responseCallback(-1, errorMessage);
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std::cerr << implementation().modelType() << " " << errorMessage << "\n";
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return;
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}
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// parse the prompt template
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std::vector<std::smatch> placeholders;
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{
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std::string err;
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if (!parsePromptTemplate(promptTemplate, placeholders, err)) {
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responseCallback(-1, err);
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std::cerr << err << "\n";
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return;
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}
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}
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auto old_n_past = promptCtx.n_past; // prepare to fake n_past for tokenize
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// tokenize the user prompt
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std::vector<Token> embd_inp;
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if (placeholders.empty()) {
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// this is unusual, but well-defined
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std::cerr << __func__ << ": prompt template has no placeholder\n";
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embd_inp = tokenize(promptCtx, promptTemplate, true);
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} else {
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// template: beginning of user prompt
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const auto &phUser = placeholders[0];
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std::string userPrefix(phUser.prefix());
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if (!userPrefix.empty()) {
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embd_inp = tokenize(promptCtx, userPrefix, true);
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promptCtx.n_past += embd_inp.size();
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}
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// user input (shouldn't have special token processing)
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auto tokens = tokenize(promptCtx, prompt, special);
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embd_inp.insert(embd_inp.end(), tokens.begin(), tokens.end());
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promptCtx.n_past += tokens.size();
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// template: end of user prompt + start of assistant prompt
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size_t start = phUser.position() + phUser.length();
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size_t end = placeholders.size() >= 2 ? placeholders[1].position() : promptTemplate.length();
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auto userToAsst = promptTemplate.substr(start, end - start);
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if (!userToAsst.empty()) {
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tokens = tokenize(promptCtx, userToAsst, true);
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embd_inp.insert(embd_inp.end(), tokens.begin(), tokens.end());
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promptCtx.n_past += tokens.size();
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}
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}
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promptCtx.n_past = old_n_past; // restore n_past so decodePrompt can increment it
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// decode the user prompt
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decodePrompt(promptCallback, responseCallback, recalculateCallback, promptCtx, embd_inp);
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// decode the assistant's reply, either generated or spoofed
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if (fakeReply == nullptr) {
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generateResponse(responseCallback, recalculateCallback, promptCtx);
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} else {
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embd_inp = tokenize(promptCtx, *fakeReply, false);
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decodePrompt(promptCallback, responseCallback, recalculateCallback, promptCtx, embd_inp);
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}
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// decode the rest of the prompt template
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// template: end of assistant prompt
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std::string asstSuffix;
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if (placeholders.size() >= 2) {
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size_t start = placeholders[1].position() + placeholders[1].length();
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asstSuffix = promptTemplate.substr(start);
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} else {
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asstSuffix = "\n\n"; // default to a blank link, good for e.g. Alpaca
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}
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if (!asstSuffix.empty()) {
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embd_inp = tokenize(promptCtx, asstSuffix, true);
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decodePrompt(promptCallback, responseCallback, recalculateCallback, promptCtx, embd_inp);
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}
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}
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void LLModel::decodePrompt(std::function<bool(int32_t)> promptCallback,
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std::function<bool(int32_t, const std::string&)> responseCallback,
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std::function<bool(bool)> recalculateCallback,
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PromptContext &promptCtx,
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std::vector<Token> embd_inp) {
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// save the context size
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promptCtx.n_ctx = contextLength();
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if ((int) embd_inp.size() > promptCtx.n_ctx - 4) {
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responseCallback(-1, "ERROR: The prompt size exceeds the context window size and cannot be processed.");
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std::cerr << implementation().modelType() << " ERROR: The prompt is " << embd_inp.size() <<
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" tokens and the context window is " << promptCtx.n_ctx << "!\n";
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return;
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}
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promptCtx.n_predict = std::min(promptCtx.n_predict, promptCtx.n_ctx - (int) embd_inp.size());
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promptCtx.n_past = std::min(promptCtx.n_past, promptCtx.n_ctx);
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promptCtx.n_batch = std::min(promptCtx.n_batch, LLMODEL_MAX_PROMPT_BATCH);
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// process the prompt in batches
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size_t i = 0;
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while (i < embd_inp.size()) {
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size_t batch_end = std::min(i + promptCtx.n_batch, embd_inp.size());
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std::vector<Token> batch(embd_inp.begin() + i, embd_inp.begin() + batch_end);
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// Check if the context has run out...
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if (promptCtx.n_past + int32_t(batch.size()) > promptCtx.n_ctx) {
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recalculateContext(promptCtx, recalculateCallback);
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assert(promptCtx.n_past + int32_t(batch.size()) <= promptCtx.n_ctx);
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}
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if (!evalTokens(promptCtx, batch)) {
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std::cerr << implementation().modelType() << " ERROR: Failed to process prompt\n";
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return;
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}
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size_t tokens = batch_end - i;
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for (size_t t = 0; t < tokens; ++t) {
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if (int32_t(promptCtx.tokens.size()) == promptCtx.n_ctx)
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promptCtx.tokens.erase(promptCtx.tokens.begin());
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promptCtx.tokens.push_back(batch.at(t));
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promptCtx.n_past += 1;
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if (!promptCallback(batch.at(t)))
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return;
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}
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i = batch_end;
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}
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}
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void LLModel::generateResponse(std::function<bool(int32_t, const std::string&)> responseCallback,
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std::function<bool(bool)> recalculateCallback,
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PromptContext &promptCtx) {
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std::string cachedResponse;
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std::vector<Token> cachedTokens;
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std::unordered_set<std::string> reversePrompts
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= { "### Instruction", "### Prompt", "### Response", "### Human", "### Assistant", "### Context" };
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// predict next tokens
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for (int i = 0; i < promptCtx.n_predict; i++) {
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// sample next token
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auto id = sampleToken(promptCtx);
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// Check if the context has run out...
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if (promptCtx.n_past + 1 > promptCtx.n_ctx) {
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recalculateContext(promptCtx, recalculateCallback);
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assert(promptCtx.n_past + 1 <= promptCtx.n_ctx);
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}
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if (!evalTokens(promptCtx, { id })) {
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std::cerr << implementation().modelType() << " ERROR: Failed to predict next token\n";
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return;
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}
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// display text
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for (const auto token : endTokens()) {
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if (id == token) return;
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}
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const std::string str = tokenToString(id);
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// Check if the provided str is part of our reverse prompts
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bool foundPartialReversePrompt = false;
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const std::string completed = cachedResponse + std::string(str);
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if (reversePrompts.find(completed) != reversePrompts.end())
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return;
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// Check if it partially matches our reverse prompts and if so, cache
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for (const auto& s : reversePrompts) {
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if (s.compare(0, completed.size(), completed) == 0) {
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foundPartialReversePrompt = true;
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cachedResponse = completed;
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break;
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}
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}
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// Regardless the token gets added to our cache
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cachedTokens.push_back(id);
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// Continue if we have found a partial match
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if (foundPartialReversePrompt)
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continue;
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// Empty the cache
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for (auto t : cachedTokens) {
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if (int32_t(promptCtx.tokens.size()) == promptCtx.n_ctx)
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promptCtx.tokens.erase(promptCtx.tokens.begin());
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promptCtx.tokens.push_back(t);
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promptCtx.n_past += 1;
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//TODO: Conversion to std::string can be avoided here...
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if (!responseCallback(t, std::string(tokenToString(t))))
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return;
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}
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cachedTokens.clear();
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}
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}
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void LLModel::embed(
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const std::vector<std::string> &texts, float *embeddings, std::optional<std::string> prefix, int dimensionality,
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size_t *tokenCount, bool doMean, bool atlas
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) {
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(void)texts;
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(void)embeddings;
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(void)prefix;
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(void)dimensionality;
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(void)tokenCount;
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(void)doMean;
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(void)atlas;
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throw std::logic_error(std::string(implementation().modelType()) + " does not support embeddings");
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}
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void LLModel::embed(
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const std::vector<std::string> &texts, float *embeddings, bool isRetrieval, int dimensionality, size_t *tokenCount,
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bool doMean, bool atlas
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) {
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(void)texts;
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(void)embeddings;
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(void)isRetrieval;
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(void)dimensionality;
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(void)tokenCount;
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(void)doMean;
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(void)atlas;
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throw std::logic_error(std::string(implementation().modelType()) + " does not support embeddings");
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}
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