Streaming AI Responses in Laravel with Server-Sent Events
In the first post of this series we built a working AI chatbot in Laravel. It had one problem every user notices immediately: you send a message, then stare at a spinner for five seconds while the whole response generates. LLMs produce text token by token. If you wait for the full completion before

In the first post of this series we built a working AI chatbot in Laravel. It had one problem every user notices immediately: you send a message, then stare at a spinner for five seconds while the whole response generates. LLMs produce text token by token. If you wait for the full completion before showing anything, you're throwing away the single biggest UX win available: streaming. The same answer that takes 5 seconds to finish starts appearing in ~300ms when streamed. Nothing about the model got faster β but to the user, it feels 10x faster. In this post we'll upgrade the chatbot to stream responses with Server-Sent Events (SSE) β no WebSockets, no Pusher, no extra infrastructure. Just Laravel. WebSockets are bidirectional and need a long-running server (Reverb, Soketi) or a paid service. For chat completions you only need one direction: server β browser, for the lifetime of one request. That's exactly what SSE is for, and since Laravel 11 it's built into the framework as response()->eventStream(). Rule of thumb: presence, typing indicators, multiplayer β WebSockets. Streaming one AI answer β SSE. We keep the ChatService from part 1 and add a streaming method. The openai-php client exposes createStreamed(), which returns an iterator of deltas: <?php namespace App\Services; use Generator; use OpenAI\Laravel\Facades\OpenAI; class ChatService { // ... SYSTEM_PROMPT and reply() from part 1 ... /** * @param array<int, array{role: string, content: string}> $history */ public function streamReply(array $history, string $userMessage): Generator { $stream = OpenAI::chat()->createStreamed([ 'model' => 'gpt-4o-mini', 'messages' => [ ['role' => 'system', 'content' => self::SYSTEM_PROMPT], ...$history, ['role' => 'user', 'content' => $userMessage], ], 'max_tokens' => 500, ]); foreach ($stream as $response) { $delta = $response->choices[0]->delta->content; if ($delta !== null) { yield $delta; } } } } A Generator is the right return type here: the controller can forward chunks as they arrive without ever holding the full response in memory. Laravel 11.19+ ships response()->eventStream(), which handles the SSE formatting (event: / data: lines) for you: <?php namespace App\Http\Controllers; use App\Services\ChatService; use Illuminate\Http\Request; class ChatStreamController extends Controller { public function __invoke(Request $request, ChatService $chat) { $validated = $request->validate([ 'message' => ['required', 'string', 'max:2000'], ]); $history = $request->session()->get('chat_history', []); // CRITICAL: release the session lock. A streaming response is a // long-lived request β with the default file/database session // driver it would block every other request from this user // (including page loads!) until the stream finishes. $request->session()->save(); return response()->eventStream(function () use ($request, $chat, $history, $validated) { $full = ''; foreach ($chat->streamReply($history, $validated['message']) as $chunk) { $full .= $chunk; yield $chunk; } // persist history once the stream completes $history[] = ['role' => 'user', 'content' => $validated['message']]; $history[] = ['role' => 'assistant', 'content' => $full]; $request->session()->put('chat_history', array_slice($history, -20)); $request->session()->save(); }, headers: [ 'X-Accel-Buffering' => 'no', // tell nginx not to buffer the stream ]); } } Route it with the same throttling as part 1: Route::post('/chat/stream', ChatStreamController::class) ->middleware(['auth', 'throttle:20,1']); The native EventSource API only supports GET requests, and we need to POST a message body β so we read the stream with fetch instead: <script> async function streamChat(message, botEl) { const res = await fetch('/chat/stream', { method: 'POST', headers: { 'Content-Type': 'application/json', 'X-CSRF-TOKEN': document.querySelector('meta[name="csrf-token"]').content, }, body: JSON.stringify({ message }), }); const reader = res.body.getReader(); const decoder = new TextDecoder(); let buffer = ''; while (true) { const { done, value } = await reader.read(); if (done) break; buffer += decoder.decode(value, { stream: true }); // SSE messages are separated by a blank line const events = buffer.split('\n\n'); buffer = events.pop(); // keep the incomplete tail for (const evt of events) { const data = evt.split('\n') .filter(l => l.startsWith('data: ')) .map(l => l.slice(6)) .join('\n'); if (data && data !== '</stream>') { botEl.textContent += data; } } } } </script> </stream> is Laravel's default end-of-stream marker β filter it out (or customize it with the endStreamWith argument). That's it. Send a message and watch the answer type itself out. This is the part most tutorials skip. Streaming works instantly on php artisan serve, then mysteriously arrives all-at-once on your server. The culprit is always buffering somewhere between PHP and the browser: nginx buffers proxied responses by default. The X-Accel-Buffering: no header above disables it per-response; alternatively set proxy_buffering off; for the route. PHP-FPM + output buffering: check output_buffering in php.ini. Laravel's eventStream flushes after every yield, but an outer buffer can still swallow it. Cloudflare / load balancers: most respect SSE content types, but verify with curl -N against production before blaming your code. Debug tip: curl -N -X POST https://yourapp.test/chat/stream ... shows you exactly what arrives and when, with no browser magic in between. Release the session lock before streaming (done above) β this is the #1 "my app hangs" bug with SSE in Laravel. X-Accel-Buffering: no header for nginx (done above). Timeouts: a stream can outlive max_execution_time and your web server's send timeout. Set both above your worst-case generation time (60s is a sane ceiling with max_tokens: 500). Mid-stream errors: wrap the generator loop in try/catch and yield a friendly "Something went wrong" chunk β a dead stream with no message looks frozen to users. Rate limit the endpoint (done above) β streaming doesn't change the fact that every request costs money. Don't stream everything: for background jobs or short answers, the buffered endpoint from part 1 is simpler. Keep both. Our bot streams beautifully, but it still only knows what's in its system prompt. Next up: RAG in Laravel β embeddings and pgvector, where we'll give it your actual documentation to answer from. Follow me to catch it. I'm Aditya Kumar (adityakdevin) β Tech Lead & full-stack developer building AI-powered web products with Laravel, Vue, and LLM APIs. Find me at adityadev.in.
Key Takeaways
- β’In the first post of this series we built a working AI chatbot in Laravel
- β’This story was reported by Dev.to, covering developments in the dev space.
- β’AI advancements continue to reshape industries β read the full article on Dev.to for complete coverage.
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