Client
Rate limiting is built in: configure token buckets, sliding windows, or adaptive limits that respond to backpressure.
Batching is automatic—control it via `batch(100)` or `batch({ size: 50, timeoutMs: 1000 })` to trade latency for throughput.
const result = await stream.request('POST', '/transform', data: payload , timeout: 5000 );
Rate limiting is built in: configure token buckets, sliding windows, or adaptive limits that respond to backpressure.
Client
Metrics are published to standard formats (Prometheus, CloudWatch, DataDog) with zero configuration.
await stream.ack(event.id); const pipeline = stream.filter(e => e.amount > 100).map(e => ( ...e, fee: e.amount * 0.03 )).on('error', (err) => logger.error(err));
Rate limiting is built in: configure token buckets, sliding windows, or adaptive limits that respond to backpressure.