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Momento/memento-note/lib/ai/providers/deepseek.ts
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2026-06-14 14:06:05 +00:00

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TypeScript

import { createOpenAI } from '@ai-sdk/openai';
import { generateText as aiGenerateText, embed, stepCountIs } from 'ai';
import { AIProvider, TagSuggestion, TitleSuggestion, ToolUseOptions, ToolCallResult } from '../types';
import { cleanAIJsonResponse, cleanAITextResponse } from '../utils/clean-ai-response';
export class DeepSeekProvider implements AIProvider {
private model: any;
private embeddingModel: any;
constructor(apiKey: string, modelName: string = 'deepseek-chat', embeddingModelName: string = 'deepseek-embedding') {
// Create OpenAI-compatible client for DeepSeek
// Disable extended thinking to ensure reliable tool/function calling
const deepseek = createOpenAI({
baseURL: 'https://api.deepseek.com/v1',
apiKey: apiKey,
headers: { 'X-No-Train': '1' },
fetch: async (url, options) => {
if (options?.body) {
try {
const body = JSON.parse(options.body as string)
// Disable thinking mode — tool calling is unreliable with it enabled
body.thinking = { type: 'disabled' }
return fetch(url, { ...options, body: JSON.stringify(body) })
} catch { /* ignore parse errors */ }
}
return fetch(url, options)
},
});
this.model = deepseek.chat(modelName);
this.embeddingModel = deepseek.embedding(embeddingModelName);
}
async generateTags(content: string, language?: string): Promise<TagSuggestion[]> {
try {
// DeepSeek doesn't support response_format: json_schema — use generateText + manual parse
const { text } = await aiGenerateText({
model: this.model,
prompt: `Analyze the following note and suggest 1 to 5 relevant tags as a JSON array.
Return ONLY a JSON array like: [{"tag":"example","confidence":0.9}]
Note content: "${content.substring(0, 1500)}"`,
});
const clean = cleanAIJsonResponse(text)
const parsed = JSON.parse(clean);
const arr = Array.isArray(parsed) ? parsed : (parsed.tags || []);
return arr.map((t: any) => ({
tag: t.tag || t.label || t.name || '',
confidence: t.confidence || t.score || 0.7,
}));
} catch (e) {
console.error('Error generating tags (DeepSeek):', e);
return [];
}
}
async getEmbeddings(text: string): Promise<number[]> {
try {
const { embedding } = await embed({
model: this.embeddingModel,
value: text,
});
return embedding;
} catch (e) {
console.error('Error generating embeddings (DeepSeek):', e);
throw e;
}
}
async generateTitles(prompt: string): Promise<TitleSuggestion[]> {
try {
// Utiliser generateText + parse manuel (generateObject échoue avec les modèles reasoning)
const { text } = await aiGenerateText({
model: this.model,
prompt: prompt,
});
const cleaned = cleanAIJsonResponse(text)
const parsed = JSON.parse(cleaned)
const titles = Array.isArray(parsed) ? parsed : (parsed.titles || parsed.suggestions || [])
return titles.map((t: any) => ({
title: typeof t === 'string' ? t : t.title || t.name || '',
confidence: typeof t === 'number' ? t : (t.confidence || t.score || 0.5),
}))
} catch (e) {
console.error('Error generating titles (DeepSeek):', e);
return [];
}
}
async generateText(prompt: string): Promise<string> {
try {
const { text } = await aiGenerateText({
model: this.model,
prompt: prompt,
});
return cleanAITextResponse(text).trim();
} catch (e) {
console.error('Error generating text (DeepSeek):', e);
throw e;
}
}
async chat(messages: any[], systemPrompt?: string): Promise<any> {
try {
const { text } = await aiGenerateText({
model: this.model,
system: systemPrompt,
messages: messages,
});
return { text: text.trim() };
} catch (e) {
console.error('Error in chat (DeepSeek):', e);
throw e;
}
}
async generateWithTools(options: ToolUseOptions): Promise<ToolCallResult> {
const { tools, maxSteps = 10, systemPrompt, messages, prompt } = options
const buildOpts = (steps: number): Record<string, any> => {
const opts: Record<string, any> = { model: this.model, tools, stopWhen: stepCountIs(steps) }
if (systemPrompt) opts.system = systemPrompt
if (messages) opts.messages = messages
else if (prompt) opts.prompt = prompt
return opts
}
const toResult = (r: any): ToolCallResult => ({
toolCalls: r.toolCalls?.map((tc: any) => ({ toolName: tc.toolName, input: tc.input })) || [],
toolResults: r.toolResults?.map((tr: any) => ({ toolName: tr.toolName, input: tr.input, output: tr.output })) || [],
text: r.text,
steps: r.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 })) || [],
})) || [],
})
try {
const result = await aiGenerateText(buildOpts(maxSteps) as any)
return toResult(result)
} catch (err: any) {
// DeepSeek reasoning/thinking models require reasoning_content to be passed back
// between multi-step calls, which the AI SDK doesn't handle automatically.
// Retry with a single step so the model calls the tool directly without multi-turn.
const msg: string = err?.message || String(err)
if (msg.includes('reasoning_content') || msg.includes('thinking mode')) {
console.warn('[DeepSeek] Reasoning model detected — retrying with maxSteps=1')
const result = await aiGenerateText(buildOpts(1) as any)
return toResult(result)
}
throw err
}
}
getModel() {
return this.model;
}
}