awesome-repositories.com
Blog
awesome-repositories.com

Entdecke die besten Open-Source-Repositories mit KI-gestützter Suche.

EntdeckenKuratierte SuchenOpen-Source-AlternativenSelf-hosted SoftwareBlogSitemap
ProjektÜber unsRanking-MethodikPresseMCP-Server
RechtlichesDatenschutzAGB
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·
deepflowio avatar

deepflowio/deepflow

0
View on GitHub↗
4,121 Stars·465 Forks·Go·Apache-2.0·6 Aufrufedeepflow.io↗

Deepflow

DeepFlow ist eine eBPF-Observability-Plattform, die eine Suite für kontinuierliches Profiling, Distributed Tracing, Service-Dependency-Mapping und einheitliche Telemetrie-Speicherung bietet. Es fungiert als Monitoring-System, das Metriken, Traces und Profile sammelt, ohne manuelle Anwendungs-Instrumentierung oder Änderungen am Quellcode zu erfordern.

Die Plattform zeichnet sich durch protokollbewusstes Packet-Parsing zur Rekonstruktion von Request-Ketten und automatisiertes Service-Dependency-Mapping zur Visualisierung von Interaktionen zwischen Anwendungen und Infrastruktur aus. Sie nutzt einen Telemetrie-Datenspeicher, der für High-Cardinality-Signale optimiert ist, wodurch Benutzer einheitliche Daten via SQL- und PromQL-Schnittstellen abfragen können.

Das System deckt ein breites Spektrum an Observability-Domänen ab, einschließlich Application-Performance-Profiling mit On-CPU- und Off-CPU-Flame-Graphs, Netzwerk-Performance-Erfassung und Cloud-Infrastruktur-Monitoring. Es integriert Kernel-Level-Telemetrie-Erfassung, um Systemmetriken und Anwendungs-Layer-Metadaten über Services und Threads hinweg zu sammeln.

Features

  • eBPF-Based Collection - Implements an observability platform that uses eBPF for automatic kernel-level telemetry collection without application instrumentation.
  • Unified Observability Data Models - Unifies metrics, logs, and traces into a single data model queryable via SQL and PromQL.
  • Continuous Profilers - Continuously samples on-CPU and off-CPU call stacks to generate flame graphs for production performance analysis.
  • eBPF-Based Application Profilers - Continuously samples stack traces via eBPF to identify on-CPU and off-CPU performance bottlenecks in compiled-language applications.
  • eBPF Tooling - Leverages eBPF tooling to gather system and network performance metrics without modifying application source code.
  • Observability Platforms - Provides a full observability platform using eBPF to collect metrics, logs, and traces without manual instrumentation.
  • Network Protocol Parsing - Parses binary network protocol streams to extract application-layer metadata and reconstruct distributed request chains.
  • Architecture Dependency Mapping - Provides automated visualization of connections and relationships between infrastructure components via network flow data.
  • Distributed Request Tracking - Tracks the full lifecycle of requests across gateways, databases, and network interfaces to remove observability blind spots.
  • Application Layer Protocol Dissectors - Reconstructs and decodes application-layer protocols from network traffic using eBPF to extract deep performance insights.
  • Distributed Tracing - Maps request chains across services and threads using eBPF and protocol extraction to identify bottlenecks.
  • Application Performance Profiling - Collects CPU and memory flame graphs in production to identify processing bottlenecks with minimal overhead.
  • eBPF Profilers - Leverages eBPF for continuous kernel-level analysis and performance profiling of production processes with minimal overhead.
  • Service Dependency Mapping - Automatically discovers and visualizes communication paths and interactions between application services and infrastructure.
  • Telemetry Data Stores - Implements a unified backend for storing and querying industry-standard observability data using SQL and PromQL.
  • High-Cardinality Metric Metadata - Applies encoding techniques to high-cardinality metric metadata to maintain query performance and reduce storage costs.
  • High-Cardinality Optimizations - Reduces storage overhead for high-cardinality telemetry data by compressing and indexing common resource tags.
  • Data Storage Optimizers - Optimizes the formatting of metadata tags to minimize storage overhead and support large telemetry datasets.
  • Unified Telemetry Backends - Stores diverse telemetry signals in a single repository queryable via both SQL and PromQL interfaces.
  • Observability Signal Unifications - Standardizes tags across metrics, logs, and traces to ensure consistent visibility across monitoring stacks.
  • Topology Visualizations - Maps service interactions and infrastructure components through automated discovery to visualize and resolve performance bottlenecks.
  • Cloud Resource Metadata Detection - Automatically discovers and attaches cloud infrastructure attributes to telemetry to provide operational context.
  • Cloud Resource Monitoring - Provides comprehensive monitoring of cloud infrastructure by enriching telemetry with resource metadata.
  • Flame Graphs - Generates call stack flame graphs for CPU, GPU, and memory usage to locate bottlenecks across business and kernel functions.
  • Observability and Profiling - Cloud-native observability for distributed applications.

Star-Verlauf

Star-Verlauf für deepflowio/deepflowStar-Verlauf für deepflowio/deepflow

KI-Suche

Entdecke weitere awesome Repositories

Beschreibe in einfachen Worten, was du brauchst — die KI bewertet tausende kuratierte Open-Source-Projekte nach Relevanz.

Start searching with AI

Open-Source-Alternativen zu Deepflow

Ähnliche Open-Source-Projekte, sortiert nach der Anzahl der gemeinsamen Funktionen mit Deepflow.
  • pixie-io/pixieAvatar von pixie-io

    pixie-io/pixie

    6,467Auf GitHub ansehen↗

    Pixie is an open-source observability platform for Kubernetes that uses eBPF to automatically capture telemetry data from clusters without requiring any manual instrumentation or code changes. It functions as an eBPF telemetry collector, a continuous application profiler, a network traffic analyzer, and a scriptable telemetry query engine, all within a single Kubernetes-native tool. The platform distinguishes itself through several integrated capabilities. It continuously samples stack traces from compiled-language code to identify CPU performance bottlenecks, visualizing the results as inter

    C++
    Auf GitHub ansehen↗6,467
  • uptrace/uptraceAvatar von uptrace

    uptrace/uptrace

    4,098Auf GitHub ansehen↗

    Uptrace is an OpenTelemetry-based observability platform designed to collect, store, and analyze distributed traces, metrics, and logs. It functions as a centralized logging backend, a distributed tracing system, and a metrics engine to monitor application performance and system health. The platform is distinguished by AI-powered operational capabilities, allowing users to query telemetry data and manage monitoring dashboards using natural language. It specifically includes specialized monitoring for generative AI pipelines, tracking token usage and response quality for LLM interactions and r

    Goapmapplication-monitoringclickhouse
    Auf GitHub ansehen↗4,098
  • coroot/corootAvatar von coroot

    coroot/coroot

    7,400Auf GitHub ansehen↗

    Coroot is an observability platform and Kubernetes performance monitor that utilizes eBPF to automatically collect metrics, logs, and traces without requiring manual code instrumentation. It functions as an OpenTelemetry trace analyzer and an LLM observability gateway, exposing system health data to large language models through the Model Context Protocol. The platform differentiates itself by combining automated root cause analysis and AI-driven diagnostics to investigate performance regressions. It also includes a cloud cost monitoring tool that attributes infrastructure spending to specifi

    Goaialertingapm
    Auf GitHub ansehen↗7,400
  • grafana/pyroscopeAvatar von grafana

    grafana/pyroscope

    11,503Auf GitHub ansehen↗

    Pyroscope is a continuous profiling platform designed to collect, store, and visualize application performance data. It functions as an application performance management suite that tracks historical resource usage to identify bottlenecks and detect performance regressions over time. The platform distinguishes itself through its use of kernel-level instrumentation and dynamic runtime hooks, which allow for performance monitoring without requiring manual code modifications or application restarts. It employs a sidecar agent architecture to offload telemetry processing, utilizing delta-encoded

    Gocontinuous-profilingdeveloper-toolsdevops
    Auf GitHub ansehen↗11,503
Alle 30 Alternativen zu Deepflow anzeigen→

Häufig gestellte Fragen

Was macht deepflowio/deepflow?

DeepFlow ist eine eBPF-Observability-Plattform, die eine Suite für kontinuierliches Profiling, Distributed Tracing, Service-Dependency-Mapping und einheitliche Telemetrie-Speicherung bietet. Es fungiert als Monitoring-System, das Metriken, Traces und Profile sammelt, ohne manuelle Anwendungs-Instrumentierung oder Änderungen am Quellcode zu erfordern.

Was sind die Hauptfunktionen von deepflowio/deepflow?

Die Hauptfunktionen von deepflowio/deepflow sind: eBPF-Based Collection, Unified Observability Data Models, Continuous Profilers, eBPF-Based Application Profilers, eBPF Tooling, Observability Platforms, Network Protocol Parsing, Architecture Dependency Mapping.

Welche Open-Source-Alternativen gibt es zu deepflowio/deepflow?

Open-Source-Alternativen zu deepflowio/deepflow sind unter anderem: pixie-io/pixie — Pixie is an open-source observability platform for Kubernetes that uses eBPF to automatically capture telemetry data… uptrace/uptrace — Uptrace is an OpenTelemetry-based observability platform designed to collect, store, and analyze distributed traces,… coroot/coroot — Coroot is an observability platform and Kubernetes performance monitor that utilizes eBPF to automatically collect… grafana/pyroscope — Pyroscope is a continuous profiling platform designed to collect, store, and visualize application performance data.… apache/skywalking — SkyWalking is an application performance monitoring system and observability platform designed to collect and analyze… naver/pinpoint — Pinpoint is a distributed application performance monitoring and tracing system. It functions as an application…