AppSignal announced the expansion of its application performance monitoring (APM) product suite to make OpenTelemetry (OTel) fully accessible for small and midsize businesses (SMBs).
AppSignal now offers native support for OpenTelemetry, enabling monitoring capabilities for Go, Java, and PHP applications alongside existing Ruby, Elixir, and Node.js support.
With simple pricing and support for Go, Java, and PHP applications, AppSignal transforms its customers’ OTel data into actionable insights in less than five minutes so they can effectively monitor applications, boost performance and explore trends with zero custom integration work. AppSignal’s latest OTel integration provides simple instrumentation, error tracking, and performance monitoring for these languages through a single, unified platform. Development and engineering teams can leverage the industry-standard OTel protocol to collect telemetry data while AppSignal transforms it into actionable insights with pre-built visualization dashboards, intelligent alerting, and the simplicity SMBs need, without vendor lock-in.
AppSignal now delivers:
- Native OpenTelemetry protocol (OTLP) support for traces, metrics, and logs.
- Automatic instrumentation and instant support for Go (Gin, Echo), Java (Spring Boot), and PHP (Laravel, Symfony).
- Zero-configuration OTel collector integration and unified monitoring across all languages - Ruby, Elixir, Node.js, Go, Java, and PHP.
- Language-specific dashboards optimized for each runtime's unique metrics.
- Seamless migration paths from proprietary AppSignal agents to OTel instrumentation.
- Smart sampling that captures 100 percent of errors and triggers anomaly detection while managing data volume.
- Zero vendor lock-in so OTel instrumentation works with any compatible platform
“Current OpenTelemetry tools typically overwhelm developers by dumping raw metrics, logs, and traces with little context. We took a different approach by adopting OTel rather than building proprietary language integrations,” noted Wes Oudshoorn, chief product officer, AppSignal. “AppSignal translates OTel data into clear insights, showing developers exactly what is broken or slow without requiring them to piece it together themselves. Now offering first-class support for PHP, Java, and Go through our OTel implementation, AppSignal also accepts any OTel data, enabling full-stack observability for virtually any setup. To simplify onboarding, we provide a hosted collector, so developers do not need to run their own. We are excited to welcome new programming communities to AppSignal and deliver the experience they expect from a modern observability platform.”
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