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AI-native Kubernetes Operational Workspace

Project description

๐Ÿš€ Kubsome

AI-native Kubernetes Operational Workspace

Faster debugging. Safer operations. Less cognitive load.

Install

From PyPI (recommended)

pip install kubsome
kubsome init              # Generate default config
kubsome                   # Start

With optional features:

pip install "kubsome[tui]"   # + Full-screen TUI
pip install "kubsome[all]"   # Everything

From source

git clone https://github.com/aloketewary/kubsome.git && cd kubsome && ./install.sh

Docker

docker run -p 8000:8000 -v ~/.kube:/root/.kube ghcr.io/aloketewary/kubsome:latest

Helm

helm install kubsome deploy/helm/kubsome/ -n kubsome --create-namespace

Quick Start

kubsome                          # Interactive CLI
kubsome serve                    # API + Web UI (auto-opens browser)
kubsome tui                      # Full-screen terminal dashboard
kubsome --exec "pods"            # Single command (CI/CD)

Commands (100+)

Type help inside Kubsome for the full list. Highlights:

# Observe
overview                         # Cluster dashboard + anomaly alerts
pods                             # Pod list with health
pods watch                       # Live monitoring
top pods                         # CPU/memory usage
uptime                           # Cluster availability
scorecard                        # A-F health grade

# Operate
logs payment                     # Fuzzy-match pod logs
correlate-logs pod-a pod-b       # Multi-pod log timeline
rollout billing-api              # Rollout status
restart gateway                  # Rolling restart
scale payment 5                  # Scale replicas
rollback-preview billing         # Diff before rollback

# Diagnose
inspect customer                 # Deep pod inspection
diagnose payment                 # Root cause analysis + playbook
dep-health payment-api           # Dependency health map
trace payment-api                # Resource relationship map
fix payment-api                  # Auto-remediate (non-prod)

# AI (natural language)
why is payment-api failing       # Root cause explanation
how many customer pods running   # Pod count
is it safe to restart billing    # Risk analysis
summarize cluster health         # Health summary
what changed recently            # Activity analysis

# kubectl (fuzzy)
describe pod customer            # Fuzzy โ†’ full inspect view
get pods                         # Pretty table
kubectl describe customer        # Auto-resolves pod name
delete pod billing               # Fuzzy match + confirm

# Cost & Security
cost-estimate                    # $/month per deployment
security                         # Misconfiguration scan
optimize                         # Resource right-sizing

# Monitoring
watch-alert payment crash        # Background monitor
watch-status                     # Active watches
diff-timeline                    # What changed in 24h
pin "health" "scorecard"         # Save query for dashboard
pins                             # List saved queries

# Incident Mode
incident start API outage        # Start tracking
note found OOM in payment        # Add observation
incident share                   # Share to Slack/Teams
incident stop                    # Close & export report

# Growth (v1.12)
doctor                           # Pre-flight diagnostics
policy                           # Check cluster guardrails
cost-trend                       # Cost forecast + savings
stats                            # Usage analytics
schedule add daily "0 8 * * *" scorecard,export
plugin install <name>            # Install from registry
logs pod --regex "OOM" --since 1h

Features

  • NLP Intent Engine โ€” structured intent classification + entity extraction
  • Fuzzy matching โ€” type partial names, Kubsome finds the resource
  • Smart suggestions โ€” typo correction ("Did you mean: pods")
  • Natural language โ€” "show me logs for payment" just works
  • AI disambiguation โ€” asks which pod when multiple match
  • Auto-remediation โ€” safe auto-fix with production guard
  • Cluster scorecard โ€” A-F grade across 4 dimensions
  • Cost estimation โ€” $/month per deployment
  • Dependency health โ€” find root cause via service graph
  • Watch & alert โ€” background monitoring with notifications
  • 26 runbooks โ€” step-by-step remediation guides
  • Command chaining โ€” pods && events && alerts
  • Aliases โ€” p=pods, o=overview, d=diagnose, l=logs
  • Bookmarks โ€” save and recall frequent commands
  • Workflows โ€” chain commands into reusable sequences
  • Watch mode โ€” watch <any-command> for live refresh
  • Multi-pod log correlation โ€” merged timeline from multiple pods
  • YAML diff โ€” side-by-side revision comparison
  • Multi-cluster compare โ€” drift detection between environments
  • Export โ€” Markdown/JSON reports for sharing
  • Audit log โ€” tracks all destructive operations
  • Plugin system โ€” extend with custom commands
  • Plugin marketplace โ€” install from registry (plugin install <name>)
  • Policy engine โ€” define guardrails in .kubsome/policies.yaml
  • Scheduled workflows โ€” cron-like recurring commands
  • Cost forecasting โ€” projected spend based on usage trend
  • Incident sharing โ€” export to Slack/Teams/PagerDuty/OpsGenie
  • Team runbooks โ€” Git-synced .kubsome/runbooks/ directory
  • AI follow-ups โ€” contextual next-question suggestions
  • Log regex search โ€” logs <pod> --regex "pattern" --since 1h
  • 7-day metrics history โ€” usage trends for right-sizing
  • 171 tests โ€” comprehensive test coverage

Requirements

  • Python 3.9+
  • kubectl configured with cluster access
  • metrics-server (for top commands)

Configuration

Settings in ~/.kubsome/config.yaml:

refresh_interval: 2
notifications: true
theme: dark                      # dark, light, minimal, hacker
aliases:
  p: pods
  o: overview
  d: diagnose
llm:
  provider: local                # or: ollama

Architecture

User Input
   โ†“
Command Resolver (exact match)
   โ†“ (not found)
Rule-Based NLP (regex patterns)
   โ†“ (not found)
Intent Engine (fuzzy classification + entity extraction)
   โ†“ (not found)
Suggestion Fallback ("Did you mean: pods")
main.py              โ†’ Entry point (CLI, serve, tui, exec)
core/nlp/            โ†’ Intent engine (intents, matcher, actions)
core/ai/             โ†’ 8 intelligence modules + 26 playbooks
core/collectors/     โ†’ 30+ data collectors
core/renderers/      โ†’ 21 presentation renderers
core/diagnostics/    โ†’ Root cause engine
core/remediation.py  โ†’ Auto-fix with safety guards
core/watch_alert.py  โ†’ Background condition monitoring
core/cache.py        โ†’ TTL cache for kubectl calls
core/scheduler.py    โ†’ Cron-like recurring commands
core/policy.py       โ†’ Cluster guardrail enforcement
core/telemetry.py    โ†’ Local usage analytics
api/                 โ†’ FastAPI REST + WebSocket backend (126 routes)
ui/                  โ†’ Angular 20 + PrimeNG web dashboard (38 pages)
deploy/helm/         โ†’ Helm chart for in-cluster deployment
deploy/krew/         โ†’ kubectl plugin for krew
tests/               โ†’ 171 tests

Web UI

Access at http://localhost:8000/app after kubsome serve.

Pages: Dashboard, Monitor, Pods, Events, Metrics, Deployments, Logs, Jobs, RBAC, Network, Resources, Scorecard, Cost, Runbooks, Compare, AI Assistant, Terminal, Settings, Audit, Policy, Health, Schedules.

See docs/web-ui.md for detailed page descriptions.

Documentation

License

MIT

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