Logging and debugging, accelerated by AI.

LogRack is an AI-assisted logging and debugging platform. Centralize logs, correlate events across services, and resolve incidents faster with intelligent analysis.

Built for production.

Everything you need to manage logs at scale. Nothing you don't.

Multi-tenant ingestion

Ingest logs from any source with tenant-scoped API keys. Structured JSON, automatic indexing, zero configuration.

Full-text search

Query logs by level, stream, time range, and free-text. Cursor-based pagination for datasets of any size.

Real-time tail

Stream logs as they arrive. Filter by level and stream in real-time. No polling, no refresh.

Stream management

Organize logs into named streams. Per-stream retention policies. Route and filter at the source.

Alerting

Define alert rules on log patterns, levels, and counts. Get notified when something breaks.

Retention control

Set tenant-wide defaults or per-stream overrides. Manual cleanup when you need it. Your data, your rules.

What LogRack Does

A unified platform for log aggregation, cross-service correlation, and AI-powered incident analysis.

Centralized Log Search

Aggregate logs from every service into a single searchable interface. Filter by severity, service, time range, and custom attributes without switching tools.

Cross-Service Correlation

Trace events across service boundaries. Correlate distributed logs by request ID, user session, or custom identifiers to reconstruct full execution paths.

AI-Powered Analysis

Use AI to summarize incidents, detect recurring patterns, and accelerate root-cause analysis. Reduce mean-time-to-resolution with intelligent, context-aware diagnostics.

How It Works

Three stages from raw logs to actionable insight.

Ingest

Ship logs via structured SDKs or standard protocols. LogRack normalizes and indexes data in real time with no schema configuration required.

Correlate

Automatic event correlation across services using trace context, request identifiers, and temporal proximity. See connected events without manual stitching.

Analyze

AI surfaces anomalies, summarizes incident timelines, and suggests root causes. Engineers spend less time reading logs and more time resolving issues.

Use Cases

Built for teams operating production systems at scale.

Incident Response

When production breaks, LogRack surfaces the relevant logs, correlates affected services, and generates an AI summary of what happened and why.

Debugging Distributed Systems

Trace requests across microservices, queues, and async workers. See the full lifecycle of a request without manually grepping across dozens of log streams.

Proactive Monitoring

Detect error rate spikes, unusual patterns, and degraded performance before they become incidents. AI-assisted pattern detection flags issues early.

Post-Mortem Analysis

Reconstruct incident timelines with correlated logs, AI-generated summaries, and exportable reports. Build institutional knowledge from every outage.

Built for production.

Everything you need to manage logs at scale. Nothing you don't.