LibreChat/api/server/services/Endpoints/google/initialize.js

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const path = require('path');
feat: Google Gemini ❇️ (#1355) * refactor: add gemini-pro to google Models list; use defaultModels for central model listing * refactor(SetKeyDialog): create useMultipleKeys hook to use for Azure, export `isJson` from utils, use EModelEndpoint * refactor(useUserKey): change variable names to make keyName setting more clear * refactor(FileUpload): allow passing container className string * feat(GoogleClient): Gemini support * refactor(GoogleClient): alternate stream speed for Gemini models * feat(Gemini): styling/settings configuration for Gemini * refactor(GoogleClient): substract max response tokens from max context tokens if context is above 32k (I/O max is combined between the two) * refactor(tokens): correct google max token counts and subtract max response tokens when input/output count are combined towards max context count * feat(google/initializeClient): handle both local and user_provided credentials and write tests * fix(GoogleClient): catch if credentials are undefined, handle if serviceKey is string or object correctly, handle no examples passed, throw error if not a Generative Language model and no service account JSON key is provided, throw error if it is a Generative m odel, but not google API key was provided * refactor(loadAsyncEndpoints/google): activate Google endpoint if either the service key JSON file is provided in /api/data, or a GOOGLE_KEY is defined. * docs: updated Google configuration * fix(ci): Mock import of Service Account Key JSON file (auth.json) * Update apis_and_tokens.md * feat: increase max output tokens slider for gemini pro * refactor(GoogleSettings): handle max and default maxOutputTokens on model change * chore: add sensitive redact regex * docs: add warning about data privacy * Update apis_and_tokens.md
2023-12-15 02:18:07 -05:00
const { EModelEndpoint, AuthKeys } = require('librechat-data-provider');
const { getGoogleConfig, isEnabled, loadServiceKey } = require('@librechat/api');
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
const { getUserKey, checkUserKeyExpiry } = require('~/server/services/UserService');
const { GoogleClient } = require('~/app');
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
const initializeClient = async ({ req, res, endpointOption, overrideModel, optionsOnly }) => {
const { GOOGLE_KEY, GOOGLE_REVERSE_PROXY, GOOGLE_AUTH_HEADER, PROXY } = process.env;
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
const isUserProvided = GOOGLE_KEY === 'user_provided';
const { key: expiresAt } = req.body;
let userKey = null;
if (expiresAt && isUserProvided) {
checkUserKeyExpiry(expiresAt, EModelEndpoint.google);
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
userKey = await getUserKey({ userId: req.user.id, name: EModelEndpoint.google });
}
feat: Google Gemini ❇️ (#1355) * refactor: add gemini-pro to google Models list; use defaultModels for central model listing * refactor(SetKeyDialog): create useMultipleKeys hook to use for Azure, export `isJson` from utils, use EModelEndpoint * refactor(useUserKey): change variable names to make keyName setting more clear * refactor(FileUpload): allow passing container className string * feat(GoogleClient): Gemini support * refactor(GoogleClient): alternate stream speed for Gemini models * feat(Gemini): styling/settings configuration for Gemini * refactor(GoogleClient): substract max response tokens from max context tokens if context is above 32k (I/O max is combined between the two) * refactor(tokens): correct google max token counts and subtract max response tokens when input/output count are combined towards max context count * feat(google/initializeClient): handle both local and user_provided credentials and write tests * fix(GoogleClient): catch if credentials are undefined, handle if serviceKey is string or object correctly, handle no examples passed, throw error if not a Generative Language model and no service account JSON key is provided, throw error if it is a Generative m odel, but not google API key was provided * refactor(loadAsyncEndpoints/google): activate Google endpoint if either the service key JSON file is provided in /api/data, or a GOOGLE_KEY is defined. * docs: updated Google configuration * fix(ci): Mock import of Service Account Key JSON file (auth.json) * Update apis_and_tokens.md * feat: increase max output tokens slider for gemini pro * refactor(GoogleSettings): handle max and default maxOutputTokens on model change * chore: add sensitive redact regex * docs: add warning about data privacy * Update apis_and_tokens.md
2023-12-15 02:18:07 -05:00
let serviceKey = {};
/** Check if GOOGLE_KEY is provided at all (including 'user_provided') */
const isGoogleKeyProvided =
(GOOGLE_KEY && GOOGLE_KEY.trim() !== '') || (isUserProvided && userKey != null);
if (!isGoogleKeyProvided) {
/** Only attempt to load service key if GOOGLE_KEY is not provided */
try {
const serviceKeyPath =
process.env.GOOGLE_SERVICE_KEY_FILE_PATH ||
path.join(__dirname, '../../../..', 'data', 'auth.json');
serviceKey = await loadServiceKey(serviceKeyPath);
if (!serviceKey) {
serviceKey = {};
}
} catch (_e) {
// Service key loading failed, but that's okay if not required
serviceKey = {};
}
feat: Google Gemini ❇️ (#1355) * refactor: add gemini-pro to google Models list; use defaultModels for central model listing * refactor(SetKeyDialog): create useMultipleKeys hook to use for Azure, export `isJson` from utils, use EModelEndpoint * refactor(useUserKey): change variable names to make keyName setting more clear * refactor(FileUpload): allow passing container className string * feat(GoogleClient): Gemini support * refactor(GoogleClient): alternate stream speed for Gemini models * feat(Gemini): styling/settings configuration for Gemini * refactor(GoogleClient): substract max response tokens from max context tokens if context is above 32k (I/O max is combined between the two) * refactor(tokens): correct google max token counts and subtract max response tokens when input/output count are combined towards max context count * feat(google/initializeClient): handle both local and user_provided credentials and write tests * fix(GoogleClient): catch if credentials are undefined, handle if serviceKey is string or object correctly, handle no examples passed, throw error if not a Generative Language model and no service account JSON key is provided, throw error if it is a Generative m odel, but not google API key was provided * refactor(loadAsyncEndpoints/google): activate Google endpoint if either the service key JSON file is provided in /api/data, or a GOOGLE_KEY is defined. * docs: updated Google configuration * fix(ci): Mock import of Service Account Key JSON file (auth.json) * Update apis_and_tokens.md * feat: increase max output tokens slider for gemini pro * refactor(GoogleSettings): handle max and default maxOutputTokens on model change * chore: add sensitive redact regex * docs: add warning about data privacy * Update apis_and_tokens.md
2023-12-15 02:18:07 -05:00
}
const credentials = isUserProvided
? userKey
: {
[AuthKeys.GOOGLE_SERVICE_KEY]: serviceKey,
[AuthKeys.GOOGLE_API_KEY]: GOOGLE_KEY,
};
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
let clientOptions = {};
/** @type {undefined | TBaseEndpoint} */
const allConfig = req.app.locals.all;
/** @type {undefined | TBaseEndpoint} */
const googleConfig = req.app.locals[EModelEndpoint.google];
if (googleConfig) {
clientOptions.streamRate = googleConfig.streamRate;
clientOptions.titleModel = googleConfig.titleModel;
}
if (allConfig) {
clientOptions.streamRate = allConfig.streamRate;
}
clientOptions = {
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
req,
res,
reverseProxyUrl: GOOGLE_REVERSE_PROXY ?? null,
authHeader: isEnabled(GOOGLE_AUTH_HEADER) ?? null,
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
proxy: PROXY ?? null,
...clientOptions,
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
...endpointOption,
};
if (optionsOnly) {
clientOptions = Object.assign(
{
🧠 fix: Agent Title Config & Resource Handling (#8028) * 🔧 fix: enhance client options handling in AgentClient and set default recursion limit - Updated the recursion limit to default to 25 if not specified in agentsEConfig. - Enhanced client options in AgentClient to include model parameters such as apiKey and anthropicApiUrl from agentModelParams. - Updated requestOptions in the anthropic endpoint to use reverseProxyUrl as anthropicApiUrl. * Enhance LLM configuration tests with edge case handling * chore add return type annotation for getCustomEndpointConfig function * fix: update modelOptions handling to use optional chaining and default to empty object in multiple endpoint initializations * chore: update @librechat/agents to version 2.4.42 * refactor: streamline agent endpoint configuration and enhance client options handling for title generations - Introduced a new `getProviderConfig` function to centralize provider configuration logic. - Updated `AgentClient` to utilize the new provider configuration, improving clarity and maintainability. - Removed redundant code related to endpoint initialization and model parameter handling. - Enhanced error logging for missing endpoint configurations. * fix: add abort handling for image generation and editing in OpenAIImageTools * ci: enhance getLLMConfig tests to verify fetchOptions and dispatcher properties * fix: use optional chaining for endpointOption properties in getOptions * fix: increase title generation timeout from 25s to 45s, pass `endpointOption` to `getOptions` * fix: update file filtering logic in getToolFilesByIds to ensure text field is properly checked * fix: add error handling for empty OCR results in uploadMistralOCR and uploadAzureMistralOCR * fix: enhance error handling in file upload to include 'No OCR result' message * chore: update error messages in uploadMistralOCR and uploadAzureMistralOCR * fix: enhance filtering logic in getToolFilesByIds to include context checks for OCR resources to only include files directly attached to agent --------- Co-authored-by: Matt Burnett <matt.burnett@shopify.com>
2025-06-23 19:44:24 -04:00
modelOptions: endpointOption?.model_parameters ?? {},
},
clientOptions,
);
if (overrideModel) {
clientOptions.modelOptions.model = overrideModel;
}
🧠 feat: Thinking Budget, Include Thoughts, and Dynamic Thinking for Gemini 2.5 (#8055) * feat: support thinking budget parameter for Gemini 2.5 series (#6949, #7542) https://ai.google.dev/gemini-api/docs/thinking#set-budget * refactor: update thinking budget minimum value to -1 for dynamic thinking - see: https://ai.google.dev/gemini-api/docs/thinking#set-budget * chore: bump @librechat/agents to v2.4.43 * refactor: rename LLMConfigOptions to OpenAIConfigOptions for clarity and consistency - Updated type definitions and references in initialize.ts, llm.ts, and openai.ts to reflect the new naming convention. - Ensured that the OpenAI configuration options are consistently used across the relevant files. * refactor: port Google LLM methods to TypeScript Package * chore: update @librechat/agents version to 2.4.43 in package-lock.json and package.json * refactor: update thinking budget description for clarity and adjust placeholder in parameter settings * refactor: enhance googleSettings default value for thinking budget to support dynamic adjustment * chore: update @librechat/agents to v2.4.44 for Vertex Dynamic Thinking workaround * refactor: rename google config function, update `createRun` types, use `reasoning` as `reasoningKey` for Google * refactor: simplify placeholder handling in DynamicInput component * refactor: enhance thinking budget description for clarity and allow automatic decision by setting to "-1" * refactor: update text styling in OptionHover component for improved readability * chore: update @librechat/agents dependency to v2.4.46 in package.json and package-lock.json * chore: update @librechat/api version to 1.2.5 in package.json and package-lock.json * refactor: enhance `clientOptions` handling by filtering `omitTitleOptions`, add `json` field for Google models --------- Co-authored-by: ciffelia <15273128+ciffelia@users.noreply.github.com>
2025-06-25 15:14:33 -04:00
return getGoogleConfig(credentials, clientOptions);
}
const client = new GoogleClient(credentials, clientOptions);
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
return {
client,
feat: Google Gemini ❇️ (#1355) * refactor: add gemini-pro to google Models list; use defaultModels for central model listing * refactor(SetKeyDialog): create useMultipleKeys hook to use for Azure, export `isJson` from utils, use EModelEndpoint * refactor(useUserKey): change variable names to make keyName setting more clear * refactor(FileUpload): allow passing container className string * feat(GoogleClient): Gemini support * refactor(GoogleClient): alternate stream speed for Gemini models * feat(Gemini): styling/settings configuration for Gemini * refactor(GoogleClient): substract max response tokens from max context tokens if context is above 32k (I/O max is combined between the two) * refactor(tokens): correct google max token counts and subtract max response tokens when input/output count are combined towards max context count * feat(google/initializeClient): handle both local and user_provided credentials and write tests * fix(GoogleClient): catch if credentials are undefined, handle if serviceKey is string or object correctly, handle no examples passed, throw error if not a Generative Language model and no service account JSON key is provided, throw error if it is a Generative m odel, but not google API key was provided * refactor(loadAsyncEndpoints/google): activate Google endpoint if either the service key JSON file is provided in /api/data, or a GOOGLE_KEY is defined. * docs: updated Google configuration * fix(ci): Mock import of Service Account Key JSON file (auth.json) * Update apis_and_tokens.md * feat: increase max output tokens slider for gemini pro * refactor(GoogleSettings): handle max and default maxOutputTokens on model change * chore: add sensitive redact regex * docs: add warning about data privacy * Update apis_and_tokens.md
2023-12-15 02:18:07 -05:00
credentials,
feat(Google): Support all Text/Chat Models, Response streaming, `PaLM` -> `Google` 🤖 (#1316) * feat: update PaLM icons * feat: add additional google models * POC: formatting inputs for Vertex AI streaming * refactor: move endpoints services outside of /routes dir to /services/Endpoints * refactor: shorten schemas import * refactor: rename PALM to GOOGLE * feat: make Google editable endpoint * feat: reusable Ask and Edit controllers based off Anthropic * chore: organize imports/logic * fix(parseConvo): include examples in googleSchema * fix: google only allows odd number of messages to be sent * fix: pass proxy to AnthropicClient * refactor: change `google` altName to `Google` * refactor: update getModelMaxTokens and related functions to handle maxTokensMap with nested endpoint model key/values * refactor: google Icon and response sender changes (Codey and Google logo instead of PaLM in all cases) * feat: google support for maxTokensMap * feat: google updated endpoints with Ask/Edit controllers, buildOptions, and initializeClient * feat(GoogleClient): now builds prompt for text models and supports real streaming from Vertex AI through langchain * chore(GoogleClient): remove comments, left before for reference in git history * docs: update google instructions (WIP) * docs(apis_and_tokens.md): add images to google instructions * docs: remove typo apis_and_tokens.md * Update apis_and_tokens.md * feat(Google): use default settings map, fully support context for both text and chat models, fully support examples for chat models * chore: update more PaLM references to Google * chore: move playwright out of workflows to avoid failing tests
2023-12-10 14:54:13 -05:00
};
};
module.exports = initializeClient;