fix: chat "this note" context searches all notes + Ollama model selector missing search

- When chat scope is "this note" (noteContext present), skip RAG/semantic
  search entirely. Previously the AI received all user notes as context
  even when scoped to a single note, causing irrelevant responses.
- Replace 3 native <select> elements for Ollama models with searchable
  Combobox component (tags, embeddings, chat providers).

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
This commit is contained in:
2026-04-30 19:04:34 +02:00
parent 43f73a2ec7
commit cd6819b905
2 changed files with 80 additions and 92 deletions

View File

@@ -446,27 +446,21 @@ export function AdminSettingsForm({ config }: { config: Record<string, string> }
</div> </div>
</div> </div>
<div className="space-y-2"> <div className="space-y-2">
<Label htmlFor="AI_MODEL_TAGS_OLLAMA">{t('admin.ai.model')}</Label> <Label>{t('admin.ai.model')}</Label>
<select <input type="hidden" name="AI_MODEL_TAGS_OLLAMA" value={selectedTagsModel} />
id="AI_MODEL_TAGS_OLLAMA" <Combobox
name="AI_MODEL_TAGS_OLLAMA" options={ollamaTagsModels.length > 0
? ollamaTagsModels.map((m) => ({ value: m, label: m }))
: selectedTagsModel
? [{ value: selectedTagsModel, label: `${selectedTagsModel} (${t('admin.ai.saved')})` }]
: []
}
value={selectedTagsModel} value={selectedTagsModel}
onChange={(e) => setSelectedTagsModel(e.target.value)} onChange={setSelectedTagsModel}
className="flex h-10 w-full rounded-md border border-input bg-background px-3 py-2 text-sm ring-offset-background focus-visible:outline-none focus-visible:ring-2 focus-visible:ring-ring focus-visible:ring-offset-2" placeholder={selectedTagsModel || t('admin.ai.clickToLoadModels')}
> searchPlaceholder={t('admin.ai.searchModel')}
{ollamaTagsModels.length > 0 ? ( emptyMessage={t('admin.ai.noModels')}
<> />
{!ollamaTagsModels.includes(selectedTagsModel) && selectedTagsModel && (
<option value={selectedTagsModel}>{selectedTagsModel} ({t('admin.ai.configured')})</option>
)}
{ollamaTagsModels.map((model) => (
<option key={model} value={model}>{model}</option>
))}
</>
) : (
<option value={selectedTagsModel || 'granite4:latest'}>{selectedTagsModel || 'granite4:latest'} {t('admin.ai.saved')}</option>
)}
</select>
<p className="text-xs text-muted-foreground"> <p className="text-xs text-muted-foreground">
{isLoadingTagsModels ? t('admin.ai.fetchingModels') : t('admin.ai.selectOllamaModel')} {isLoadingTagsModels ? t('admin.ai.fetchingModels') : t('admin.ai.selectOllamaModel')}
</p> </p>
@@ -620,27 +614,21 @@ export function AdminSettingsForm({ config }: { config: Record<string, string> }
</div> </div>
</div> </div>
<div className="space-y-2"> <div className="space-y-2">
<Label htmlFor="AI_MODEL_EMBEDDING_OLLAMA">{t('admin.ai.model')}</Label> <Label>{t('admin.ai.model')}</Label>
<select <input type="hidden" name="AI_MODEL_EMBEDDING_OLLAMA" value={selectedEmbeddingModel} />
id="AI_MODEL_EMBEDDING_OLLAMA" <Combobox
name="AI_MODEL_EMBEDDING_OLLAMA" options={ollamaEmbeddingsModels.length > 0
? ollamaEmbeddingsModels.map((m) => ({ value: m, label: m }))
: selectedEmbeddingModel
? [{ value: selectedEmbeddingModel, label: `${selectedEmbeddingModel} (${t('admin.ai.saved')})` }]
: []
}
value={selectedEmbeddingModel} value={selectedEmbeddingModel}
onChange={(e) => setSelectedEmbeddingModel(e.target.value)} onChange={setSelectedEmbeddingModel}
className="flex h-10 w-full rounded-md border border-input bg-background px-3 py-2 text-sm ring-offset-background focus-visible:outline-none focus-visible:ring-2 focus-visible:ring-ring focus-visible:ring-offset-2" placeholder={selectedEmbeddingModel || t('admin.ai.clickToLoadModels')}
> searchPlaceholder={t('admin.ai.searchModel')}
{ollamaEmbeddingsModels.length > 0 ? ( emptyMessage={t('admin.ai.noModels')}
<> />
{!ollamaEmbeddingsModels.includes(selectedEmbeddingModel) && selectedEmbeddingModel && (
<option value={selectedEmbeddingModel}>{selectedEmbeddingModel} ({t('admin.ai.configured')})</option>
)}
{ollamaEmbeddingsModels.map((model) => (
<option key={model} value={model}>{model}</option>
))}
</>
) : (
<option value={selectedEmbeddingModel || 'embeddinggemma:latest'}>{selectedEmbeddingModel || 'embeddinggemma:latest'} {t('admin.ai.saved')}</option>
)}
</select>
<p className="text-xs text-muted-foreground"> <p className="text-xs text-muted-foreground">
{isLoadingEmbeddingsModels ? t('admin.ai.fetchingModels') : t('admin.ai.selectEmbeddingModel')} {isLoadingEmbeddingsModels ? t('admin.ai.fetchingModels') : t('admin.ai.selectEmbeddingModel')}
</p> </p>
@@ -790,27 +778,21 @@ export function AdminSettingsForm({ config }: { config: Record<string, string> }
</div> </div>
</div> </div>
<div className="space-y-2"> <div className="space-y-2">
<Label htmlFor="AI_MODEL_CHAT_OLLAMA">{t('admin.ai.model')}</Label> <Label>{t('admin.ai.model')}</Label>
<select <input type="hidden" name="AI_MODEL_CHAT_OLLAMA" value={selectedChatModel} />
id="AI_MODEL_CHAT_OLLAMA" <Combobox
name="AI_MODEL_CHAT_OLLAMA" options={ollamaChatModels.length > 0
? ollamaChatModels.map((m) => ({ value: m, label: m }))
: selectedChatModel
? [{ value: selectedChatModel, label: `${selectedChatModel} (${t('admin.ai.saved')})` }]
: []
}
value={selectedChatModel} value={selectedChatModel}
onChange={(e) => setSelectedChatModel(e.target.value)} onChange={setSelectedChatModel}
className="flex h-10 w-full rounded-md border border-input bg-background px-3 py-2 text-sm ring-offset-background focus-visible:outline-none focus-visible:ring-2 focus-visible:ring-ring focus-visible:ring-offset-2" placeholder={selectedChatModel || t('admin.ai.clickToLoadModels')}
> searchPlaceholder={t('admin.ai.searchModel')}
{ollamaChatModels.length > 0 ? ( emptyMessage={t('admin.ai.noModels')}
<> />
{!ollamaChatModels.includes(selectedChatModel) && selectedChatModel && (
<option value={selectedChatModel}>{selectedChatModel} ({t('admin.ai.configured')})</option>
)}
{ollamaChatModels.map((model) => (
<option key={model} value={model}>{model}</option>
))}
</>
) : (
<option value={selectedChatModel || 'granite4:latest'}>{selectedChatModel || 'granite4:latest'} {t('admin.ai.saved')}</option>
)}
</select>
<p className="text-xs text-muted-foreground"> <p className="text-xs text-muted-foreground">
{isLoadingChatModels ? t('admin.ai.fetchingModels') : t('admin.ai.selectOllamaModel')} {isLoadingChatModels ? t('admin.ai.fetchingModels') : t('admin.ai.selectOllamaModel')}
</p> </p>

View File

@@ -99,40 +99,46 @@ export async function POST(req: Request) {
// This ensures the AI always has access to the notebook content, // This ensures the AI always has access to the notebook content,
// even for vague queries like "what's in this notebook?" // even for vague queries like "what's in this notebook?"
let notebookContext = '' let notebookContext = ''
if (notebookId) { let searchNotes = ''
const notebookNotes = await prisma.note.findMany({
where: { // When scope is "this note" (noteContext present), skip RAG retrieval entirely
notebookId, // The note content is already injected as copilotContext below
userId, if (!noteContext) {
trashedAt: null, if (notebookId) {
}, const notebookNotes = await prisma.note.findMany({
orderBy: { updatedAt: 'desc' }, where: {
take: 20, notebookId,
select: { id: true, title: true, content: true, updatedAt: true }, userId,
}) trashedAt: null,
if (notebookNotes.length > 0) { },
notebookContext = notebookNotes orderBy: { updatedAt: 'desc' },
.map(n => `NOTE [${n.title || untitledText}] (updated ${n.updatedAt.toLocaleDateString()}):\n${(n.content || '').substring(0, 1500)}`) take: 20,
.join('\n\n---\n\n') select: { id: true, title: true, content: true, updatedAt: true },
})
if (notebookNotes.length > 0) {
notebookContext = notebookNotes
.map(n => `NOTE [${n.title || untitledText}] (updated ${n.updatedAt.toLocaleDateString()}):\n${(n.content || '').substring(0, 1500)}`)
.join('\n\n---\n\n')
}
} }
}
// Also run semantic search for the specific query // Also run semantic search for the specific query
let searchResults: any[] = [] let searchResults: any[] = []
try { try {
searchResults = await semanticSearchService.search(currentMessage, { searchResults = await semanticSearchService.search(currentMessage, {
notebookId, notebookId,
limit: notebookId ? 10 : 5, limit: notebookId ? 10 : 5,
threshold: notebookId ? 0.3 : 0.5, threshold: notebookId ? 0.3 : 0.5,
defaultTitle: untitledText, defaultTitle: untitledText,
}) })
} catch { } catch {
// Search failure should not block chat // Search failure should not block chat
} }
const searchNotes = searchResults searchNotes = searchResults
.map((r) => `NOTE [${r.title || untitledText}]: ${r.content}`) .map((r) => `NOTE [${r.title || untitledText}]: ${r.content}`)
.join('\n\n---\n\n') .join('\n\n---\n\n')
}
// Combine: full notebook context + semantic search results (deduplicated) // Combine: full notebook context + semantic search results (deduplicated)
const contextNotes = [notebookContext, searchNotes].filter(Boolean).join('\n\n---\n\n') const contextNotes = [notebookContext, searchNotes].filter(Boolean).join('\n\n---\n\n')
@@ -354,7 +360,7 @@ ${noteContext.content || '(empty)'}
${imageContextParts.length > 0 ? `\nImages: ${imageContextParts.length} image(s) attached. When the user asks about images, describe what you see in them.` : ''} ${imageContextParts.length > 0 ? `\nImages: ${imageContextParts.length} image(s) attached. When the user asks about images, describe what you see in them.` : ''}
The user wants you to write in a **${noteContext.tone || 'professional'}** tone. The user wants you to write in a **${noteContext.tone || 'professional'}** tone.
Keep your suggestions tailored to this note and tone. You can suggest rewrites, answer questions about the note, or draft new sections.` IMPORTANT: Focus ONLY on this note. Do NOT reference other notes or external information unless the user explicitly asks. Your job is to help with this specific note — suggest rewrites, answer questions about it, or draft new sections.`
} }
const systemPrompt = `${prompts.system} const systemPrompt = `${prompts.system}