Files
vibn-frontend/lib/ai/gemini-chat.ts
Mark Henderson e08405ffbf Fix thought_signature: it's a sibling of functionCall, not nested inside it
The Gemini REST API returns thoughtSignature as a sibling part field:
  { "functionCall": {...}, "thoughtSignature": "..." }
not inside functionCall. We were reading part.functionCall.thought_signature
(always undefined) and writing fc.thought_signature inside the functionCall
object (also wrong). Now correctly reads part.thoughtSignature and writes
part.thoughtSignature when building history.

Made-with: Cursor
2026-04-27 17:28:49 -07:00

223 lines
6.7 KiB
TypeScript

/**
* Gemini 3.1 Pro chat client with tool-calling support.
*
* Architecture:
* - Tool-calling rounds use generateContent (non-streaming) so we always
* get the complete response including thought_signature. Thinking models
* (2.5+, 3.x) require this field to be echoed back in functionResponse
* and it is not reliably present in individual SSE chunks.
* - Final text-only response uses streamGenerateContent for good UX.
*/
const GEMINI_API_KEY = process.env.GOOGLE_API_KEY || '';
const GEMINI_MODEL = process.env.VIBN_CHAT_MODEL || 'gemini-3.1-pro-preview';
const GEMINI_BASE_URL = 'https://generativelanguage.googleapis.com/v1beta';
export interface ChatMessage {
role: 'user' | 'assistant' | 'tool';
content: string;
toolCalls?: ToolCall[];
toolCallId?: string;
toolName?: string;
thoughtSignature?: string;
}
export interface ToolCall {
id: string;
name: string;
args: Record<string, unknown>;
/** Must be echoed back in functionResponse for Gemini thinking models */
thoughtSignature?: string;
}
export interface ToolDefinition {
name: string;
description: string;
parameters: Record<string, unknown>;
}
export interface ChatChunk {
type: 'text' | 'tool_call' | 'done' | 'error';
text?: string;
toolCall?: ToolCall;
error?: string;
}
/** Convert our ChatMessage[] to Gemini's contents[] format */
function toGeminiContents(messages: ChatMessage[]) {
const contents: any[] = [];
for (const msg of messages) {
if (msg.role === 'user') {
contents.push({ role: 'user', parts: [{ text: msg.content }] });
} else if (msg.role === 'assistant') {
const parts: any[] = [];
if (msg.content) parts.push({ text: msg.content });
if (msg.toolCalls?.length) {
for (const tc of msg.toolCalls) {
// thoughtSignature is a SIBLING of functionCall in the part object,
// not nested inside it. See: ai.google.dev/gemini-api/docs/thought-signatures
const part: any = { functionCall: { name: tc.name, args: tc.args, id: tc.id } };
if (tc.thoughtSignature) part.thoughtSignature = tc.thoughtSignature;
parts.push(part);
}
}
if (parts.length) contents.push({ role: 'model', parts });
} else if (msg.role === 'tool') {
const part = {
functionResponse: {
name: msg.toolName || 'unknown',
id: msg.toolCallId,
response: { content: msg.content },
},
};
const last = contents[contents.length - 1];
if (last?.role === 'user') {
last.parts.push(part);
} else {
contents.push({ role: 'user', parts: [part] });
}
}
}
return contents;
}
function toGeminiFunctions(tools: ToolDefinition[]) {
if (!tools.length) return undefined;
return [{
functionDeclarations: tools.map((t) => ({
name: t.name,
description: t.description,
parameters: t.parameters,
})),
}];
}
function buildBody(opts: {
systemPrompt: string;
messages: ChatMessage[];
tools?: ToolDefinition[];
temperature?: number;
}) {
const body: any = {
contents: toGeminiContents(opts.messages),
systemInstruction: { parts: [{ text: opts.systemPrompt }] },
generationConfig: { temperature: opts.temperature ?? 0.7, maxOutputTokens: 8192 },
};
const fns = toGeminiFunctions(opts.tools ?? []);
if (fns) body.tools = fns;
return body;
}
/**
* Non-streaming call — used for tool-calling rounds.
* Returns complete response with thought_signature guaranteed.
*/
export async function callGeminiChat(opts: {
systemPrompt: string;
messages: ChatMessage[];
tools?: ToolDefinition[];
temperature?: number;
}): Promise<{ text: string; toolCalls: ToolCall[]; error?: string }> {
const url = `${GEMINI_BASE_URL}/models/${GEMINI_MODEL}:generateContent?key=${GEMINI_API_KEY}`;
let res: Response;
try {
res = await fetch(url, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify(buildBody(opts)),
});
} catch (e) {
return { text: '', toolCalls: [], error: `Network error: ${e instanceof Error ? e.message : String(e)}` };
}
const data = await res.json().catch(() => ({}));
if (!res.ok) {
const msg = data?.error?.message || JSON.stringify(data).slice(0, 200);
return { text: '', toolCalls: [], error: `Gemini API error ${res.status}: ${msg}` };
}
const parts: any[] = data?.candidates?.[0]?.content?.parts ?? [];
let text = '';
const toolCalls: ToolCall[] = [];
for (const part of parts) {
if (part.text) text += part.text;
if (part.functionCall) {
toolCalls.push({
id: part.functionCall.id || `tc-${Date.now()}-${Math.random().toString(36).slice(2)}`,
name: part.functionCall.name,
args: part.functionCall.args ?? {},
// thoughtSignature is a SIBLING of functionCall in the part, not inside it
thoughtSignature: part.thoughtSignature,
});
}
}
return { text, toolCalls };
}
/**
* Streaming call — used for the final text-only response.
* Yields ChatChunk objects.
*/
export async function* streamGeminiChat(opts: {
systemPrompt: string;
messages: ChatMessage[];
tools?: ToolDefinition[];
temperature?: number;
}): AsyncGenerator<ChatChunk> {
const url = `${GEMINI_BASE_URL}/models/${GEMINI_MODEL}:streamGenerateContent?key=${GEMINI_API_KEY}&alt=sse`;
let res: Response;
try {
res = await fetch(url, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify(buildBody(opts)),
});
} catch (e) {
yield { type: 'error', error: `Network error: ${e instanceof Error ? e.message : String(e)}` };
return;
}
if (!res.ok) {
const errText = await res.text().catch(() => '');
yield { type: 'error', error: `Gemini API error ${res.status}: ${errText.slice(0, 300)}` };
return;
}
const reader = res.body?.getReader();
if (!reader) { yield { type: 'error', error: 'No response body' }; return; }
const decoder = new TextDecoder();
let buffer = '';
try {
while (true) {
const { done, value } = await reader.read();
if (done) break;
buffer += decoder.decode(value, { stream: true });
const lines = buffer.split('\n');
buffer = lines.pop() ?? '';
for (const line of lines) {
if (!line.startsWith('data: ')) continue;
const data = line.slice(6).trim();
if (!data || data === '[DONE]') continue;
let chunk: any;
try { chunk = JSON.parse(data); } catch { continue; }
const parts = chunk?.candidates?.[0]?.content?.parts ?? [];
for (const part of parts) {
if (part.text) yield { type: 'text', text: part.text };
}
}
}
} finally {
reader.releaseLock();
}
yield { type: 'done' };
}