Files
vibn-frontend/app/api/projects/[projectId]/analyze-chats/route.ts
Mark Henderson ab100f2e76 feat: implement 4 project type flows with unique AI experiences
- New multi-step CreateProjectFlow replaces 2-step modal with TypeSelector
  and 4 setup components (Fresh Idea, Chat Import, Code Import, Migrate)
- overview/page.tsx routes to unique main component per creationMode
- FreshIdeaMain: wraps AtlasChat with post-discovery decision banner
  (Generate PRD vs Plan MVP Test)
- ChatImportMain: 3-stage flow (intake → extracting → review) with
  editable insight buckets (decisions, ideas, questions, architecture, users)
- CodeImportMain: 4-stage flow (input → cloning → mapping → surfaces)
  with architecture map and surface selection
- MigrateMain: 5-stage flow with audit, review, planning, and migration
  plan doc with checkbox-tracked tasks and non-destructive warning banner
- New API routes: analyze-chats, analyze-repo, analysis-status,
  generate-migration-plan (all using Gemini)
- ProjectShell: accepts creationMode prop, filters/renames tabs per type
  (code-import hides PRD, migration hides PRD/Grow/Insights, renames Atlas tab)
- Right panel adapts content based on creationMode

Made-with: Cursor
2026-03-06 12:48:28 -08:00

127 lines
4.1 KiB
TypeScript

import { NextResponse } from 'next/server';
import { getServerSession } from 'next-auth';
import { authOptions } from '@/lib/auth/authOptions';
import { query } from '@/lib/db-postgres';
export const maxDuration = 60;
const GEMINI_API_KEY = process.env.GOOGLE_API_KEY || '';
const GEMINI_MODEL = process.env.GEMINI_MODEL || 'gemini-2.0-flash-exp';
const GEMINI_BASE_URL = 'https://generativelanguage.googleapis.com/v1beta/models';
async function callGemini(prompt: string): Promise<string> {
const res = await fetch(`${GEMINI_BASE_URL}/${GEMINI_MODEL}:generateContent?key=${GEMINI_API_KEY}`, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify({
contents: [{ parts: [{ text: prompt }] }],
generationConfig: { temperature: 0.2, maxOutputTokens: 4096 },
}),
});
const data = await res.json();
const text = data?.candidates?.[0]?.content?.parts?.[0]?.text ?? '';
return text;
}
function parseJsonBlock(raw: string): unknown {
const trimmed = raw.trim();
const cleaned = trimmed.startsWith('```')
? trimmed.replace(/^```(?:json)?/i, '').replace(/```$/, '').trim()
: trimmed;
return JSON.parse(cleaned);
}
export async function POST(
req: Request,
{ params }: { params: Promise<{ projectId: string }> }
) {
try {
const { projectId } = await params;
const session = await getServerSession(authOptions);
if (!session?.user?.email) {
return NextResponse.json({ error: 'Unauthorized' }, { status: 401 });
}
const body = await req.json() as { chatText?: string };
const chatText = body.chatText?.trim() || '';
if (!chatText) {
return NextResponse.json({ error: 'chatText is required' }, { status: 400 });
}
// Verify project ownership
const rows = await query<{ data: Record<string, unknown> }>(
`SELECT p.data FROM fs_projects p
JOIN fs_users u ON u.id = p.user_id
WHERE p.id = $1::text AND u.data->>'email' = $2::text LIMIT 1`,
[projectId, session.user.email]
);
if (rows.length === 0) {
return NextResponse.json({ error: 'Project not found' }, { status: 404 });
}
const extractionPrompt = `You are a product analyst. A founder has pasted AI chat conversation history below.
Extract and categorise the following from those conversations. Return ONLY valid JSON — no markdown, no explanation.
JSON schema:
{
"decisions": ["string — concrete decisions already made"],
"ideas": ["string — product ideas and features mentioned"],
"openQuestions": ["string — unresolved questions that still need answers"],
"architecture": ["string — technical architecture notes, stack choices, infra decisions"],
"targetUsers": ["string — user segments, personas, or target audiences mentioned"]
}
Each array can be empty if nothing was found for that category. Extract real content — be specific and concise. Max 10 items per bucket.
--- CHAT HISTORY START ---
${chatText.slice(0, 12000)}
--- CHAT HISTORY END ---
Return only the JSON object:`;
const raw = await callGemini(extractionPrompt);
let analysisResult: {
decisions: string[];
ideas: string[];
openQuestions: string[];
architecture: string[];
targetUsers: string[];
};
try {
analysisResult = parseJsonBlock(raw) as typeof analysisResult;
} catch {
// Fallback: return empty buckets with a note
analysisResult = {
decisions: [],
ideas: [],
openQuestions: ["Could not parse extracted insights — try pasting more structured conversation"],
architecture: [],
targetUsers: [],
};
}
// Save analysis result to project data
const current = rows[0].data ?? {};
const updated = {
...current,
analysisResult,
creationStage: 'review',
updatedAt: new Date().toISOString(),
};
await query(
`UPDATE fs_projects SET data = $2::jsonb WHERE id = $1::text`,
[projectId, JSON.stringify(updated)]
);
return NextResponse.json({ analysisResult });
} catch (err) {
console.error('[analyze-chats]', err);
return NextResponse.json({ error: 'Internal error' }, { status: 500 });
}
}