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kubeshark/README.md
Alon Girmonsky 3f8a067f9b Update README: Network Observability for SREs & AI Agents (#1861)
* Update README hero: Network Observability for SREs & AI Agents

Rewrite hero section to focus on cluster-wide network data
consolidation and dual access model (AI agents via MCP,
human operators via dashboard).

* Add MCP demo GIF to README hero section

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Claude Code + Kubeshark workflow.

* Reorder README sections and add MCP demo GIF

- Hero description + stream.png first
- Get Started section
- AI-Powered Network Analysis with MCP demo GIF
- L7 API Dissection
- L4/L7 Workload Map
- Traffic Retention
- Features, Install, Contributing, License

* Reference MCP demo GIF by commit SHA for preview

* Update MCP demo GIF reference to assets master
2026-03-09 08:29:52 -07:00

6.2 KiB

Kubeshark

Release Docker pulls Discord Slack

Network Observability for SREs & AI Agents

Live Demo · Docs


Kubeshark captures cluster-wide network traffic at the speed and scale of Kubernetes, continuously, at the kernel level using eBPF. It consolidates a highly fragmented picture — dozens of nodes, thousands of workloads, millions of connections — into a single, queryable view with full Kubernetes and API context.

Network data is available to AI agents via MCP and to human operators via a dashboard.

What's captured, cluster-wide:

  • L4 Packets & TCP Metrics — retransmissions, RTT, window saturation, connection lifecycle, packet loss across every node-to-node path (TCP insights →)
  • L7 API Calls — real-time request/response matching with full payload parsing: HTTP, gRPC, GraphQL, Redis, Kafka, DNS (API dissection →)
  • Decrypted TLS — eBPF-based TLS decryption without key management
  • Kubernetes Context — every packet and API call resolved to pod, service, namespace, and node
  • PCAP Retention — point-in-time raw packet snapshots, exportable for Wireshark (Snapshots →)

Kubeshark


Get Started

helm repo add kubeshark https://helm.kubeshark.com
helm install kubeshark kubeshark/kubeshark

Dashboard opens automatically. You're capturing traffic.

Connect an AI agent via MCP:

brew install kubeshark
claude mcp add kubeshark -- kubeshark mcp

MCP setup guide →


AI-Powered Network Analysis

Kubeshark exposes all cluster-wide network data via MCP (Model Context Protocol). AI agents can query L4 metrics, investigate L7 API calls, analyze traffic patterns, and run root cause analysis — through natural language. Use cases include incident response, root cause analysis, troubleshooting, debugging, and reliability workflows.

"Why did checkout fail at 2:15 PM?" "Which services have error rates above 1%?" "Show TCP retransmission rates across all node-to-node paths" "Trace request abc123 through all services"

Works with Claude Code, Cursor, and any MCP-compatible AI.

MCP Demo

MCP setup guide →


L7 API Dissection

Cluster-wide request/response matching with full payloads, parsed according to protocol specifications. HTTP, gRPC, Redis, Kafka, DNS, and more. Every API call resolved to source and destination pod, service, namespace, and node. No code instrumentation required.

API context

Learn more →

L4/L7 Workload Map

Cluster-wide view of service communication: dependencies, traffic flow, and anomalies across all nodes and namespaces.

Service Map

Learn more →

Traffic Retention

Continuous raw packet capture with point-in-time snapshots. Export PCAP files for offline analysis with Wireshark or other tools.

Traffic Retention

Snapshots guide →


Features

Feature Description
Raw Capture Continuous cluster-wide packet capture with minimal overhead
Traffic Snapshots Point-in-time snapshots, export as PCAP for Wireshark
L7 API Dissection Request/response matching with full payloads and protocol parsing
Protocol Support HTTP, gRPC, GraphQL, Redis, Kafka, DNS, and more
TLS Decryption eBPF-based decryption without key management
AI-Powered Analysis Query cluster-wide network data with Claude, Cursor, or any MCP-compatible AI
Display Filters Wireshark-inspired display filters for precise traffic analysis
100% On-Premises Air-gapped support, no external dependencies

Install

Method Command
Helm helm repo add kubeshark https://helm.kubeshark.com && helm install kubeshark kubeshark/kubeshark
Homebrew brew install kubeshark && kubeshark tap
Binary Download

Installation guide →


Contributing

We welcome contributions. See CONTRIBUTING.md.

License

Apache-2.0