Files
Momento/memento-note/lib/ai/providers/anthropic.ts
Antigravity 97b08e5d0b feat: icon-only toolbar, versioning fixes, history modal, PanelRight repositioning
- Toolbar: remove text labels from all icon buttons (AI, Save, Preview, Convert)
  all buttons now icon-only with title tooltip for accessibility
- Toolbar: reposition PanelRight (info panel toggle) to far right after three-dot menu
- Versioning: decouple getNoteHistory/restoreNoteVersion from global userAISettings.noteHistory
  now checks note.historyEnabled directly — unblocks manual per-note history
- Versioning: add 'Sauvegarder cette version' button in Versions tab of info panel
  calls commitNoteHistory with visual feedback (spinner → success state)
- note-document-info-panel: import commitNoteHistory, add isSavingVersion state
- notes.ts: fix double guard that silently blocked all history operations
2026-05-09 07:28:03 +00:00

123 lines
4.0 KiB
TypeScript

import { createAnthropic } from '@ai-sdk/anthropic';
import { generateObject, generateText as aiGenerateText, stepCountIs } from 'ai';
import { z } from 'zod';
import { AIProvider, TagSuggestion, TitleSuggestion, ToolUseOptions, ToolCallResult } from '../types';
export class AnthropicProvider implements AIProvider {
private model: any;
/**
* @param baseURL Optional Messages API root (no trailing slash). The SDK calls `{baseURL}/messages`.
* MiniMax: `https://api.minimax.io/anthropic` (China: `https://api.minimaxi.com/anthropic`).
*/
constructor(apiKey: string, modelName: string = 'claude-sonnet-4-20250514', baseURL?: string) {
const trimmedBase = baseURL?.trim().replace(/\/+$/, '');
const anthropicClient = createAnthropic(trimmedBase ? { apiKey, baseURL: trimmedBase } : { apiKey });
this.model = anthropicClient.chat(modelName);
}
async generateTags(content: string): Promise<TagSuggestion[]> {
try {
const { object } = await generateObject({
model: this.model,
schema: z.object({
tags: z.array(z.object({
tag: z.string().describe('Short tag name in lowercase'),
confidence: z.number().min(0).max(1).describe('Confidence level between 0 and 1'),
})),
}),
prompt: `Analyze the following note and suggest 1 to 5 relevant tags.
Note content: "${content}"`,
});
return object.tags;
} catch (e) {
console.error('Error generating tags (Anthropic):', e);
return [];
}
}
async getEmbeddings(_text: string): Promise<number[]> {
throw new Error(
'Anthropic does not expose embedding models in Memento. Choose another provider for embeddings (e.g. Ollama or OpenAI).'
);
}
async generateTitles(prompt: string): Promise<TitleSuggestion[]> {
try {
const { object } = await generateObject({
model: this.model,
schema: z.object({
titles: z.array(z.object({
title: z.string().describe('Suggested title'),
confidence: z.number().min(0).max(1).describe('Confidence level between 0 and 1'),
})),
}),
prompt,
});
return object.titles;
} catch (e) {
console.error('Error generating titles (Anthropic):', e);
return [];
}
}
async generateText(prompt: string): Promise<string> {
try {
const { text } = await aiGenerateText({
model: this.model,
prompt,
});
return text.trim();
} catch (e) {
console.error('Error generating text (Anthropic):', e);
throw e;
}
}
async chat(messages: any[], systemPrompt?: string): Promise<any> {
try {
const { text } = await aiGenerateText({
model: this.model,
system: systemPrompt,
messages,
});
return { text: text.trim() };
} catch (e) {
console.error('Error in chat (Anthropic):', e);
throw e;
}
}
async generateWithTools(options: ToolUseOptions): Promise<ToolCallResult> {
const { tools, maxSteps = 10, systemPrompt, messages, prompt } = options;
const opts: Record<string, any> = {
model: this.model,
tools,
stopWhen: stepCountIs(maxSteps),
};
if (systemPrompt) opts.system = systemPrompt;
if (messages) opts.messages = messages;
else if (prompt) opts.prompt = prompt;
const result = await aiGenerateText(opts as any);
return {
toolCalls: result.toolCalls?.map((tc: any) => ({ toolName: tc.toolName, input: tc.input })) || [],
toolResults: result.toolResults?.map((tr: any) => ({ toolName: tr.toolName, input: tr.input, output: tr.output })) || [],
text: result.text,
steps: result.steps?.map((step: any) => ({
text: step.text,
toolCalls: step.toolCalls?.map((tc: any) => ({ toolName: tc.toolName, input: tc.input })) || [],
toolResults: step.toolResults?.map((tr: any) => ({ toolName: tr.toolName, input: tr.input, output: tr.output })) || [],
})) || [],
};
}
getModel() {
return this.model;
}
}