Skills / VMware AIops
VMware AIops
VMware vCenter/ESXi AI-powered monitoring and operations. Two skills: vmware-monitor (read-only, safe) and vmware-aiops (full operations) | Claude Code Skill
Installation
Kompatibilitaet
Beschreibung
VMware AIops
Author: Wei Zhou, VMware by Broadcom — [email protected] This is a community-driven project by a VMware engineer, not an official VMware product. For official VMware developer tools see developer.broadcom.com.
English | 中文
AI-powered VMware vCenter/ESXi VM lifecycle and deployment tool — 31 tools across 6 categories.
Companion skills handle everything else:
| Skill | Scope | Install | |-------|-------|---------| | vmware-monitor | Read-only: inventory, health, alarms, events, metrics |
uv tool install vmware-monitor| | vmware-storage | Datastores, iSCSI, vSAN management |uv tool install vmware-storage| | vmware-vks | Tanzu Namespaces, TKC cluster lifecycle |uv tool install vmware-vks|Need read-only monitoring only? Use VMware-Monitor — zero destructive code in the codebase.
Quick Install (Recommended)
Works with Claude Code, Cursor, Codex, Gemini CLI, Trae, and 30+ AI agents:
# Via Skills.sh
npx skills add zw008/VMware-AIops
# Via ClawHub
clawhub install vmware-aiops
PyPI Install (No GitHub Access Required)
# Install via uv (recommended)
uv tool install vmware-aiops
# Or via pip
pip install vmware-aiops
# China mainland mirror (faster)
pip install vmware-aiops -i https://pypi.tuna.tsinghua.edu.cn/simple
Claude Code Plugin Install
# Add marketplace
/plugin marketplace add zw008/VMware-AIops
# Install plugin
/plugin install vmware-ops
# Use the skill
/vmware-ops:vmware-aiops
Capabilities Overview
What This Skill Does
| Category | Tools | Count | |----------|-------|:-----:| | VM Lifecycle | power on/off, TTL auto-delete, clean slate | 6 | | Deployment | OVA, template, linked clone, batch clone/deploy | 8 | | Guest Ops | exec commands, upload/download files, provision | 5 | | Plan/Apply | multi-step planning with rollback | 4 | | Cluster | create, delete, HA/DRS config, add/remove hosts | 6 | | Datastore | browse files, scan for images | 2 |
CLI vs MCP: Which Mode to Use
| Scenario | Recommended | Why | |----------|:-----------:|-----| | Local/small models (Ollama, Qwen <32B) | CLI | ~2K tokens context vs ~10K for MCP; small models struggle with many tool schemas | | Token-sensitive workflows | CLI | SKILL.md + Bash tool = minimal overhead | | Cloud models (Claude, GPT-4o) | Either | Both work; MCP gives structured JSON I/O | | Automated pipelines / Agent chaining | MCP | Type-safe parameters, structured output, no shell parsing | | Monitoring / storage / K8s | Companion skills | See vmware-monitor, vmware-storage, vmware-vks |
Rule of thumb: Use CLI for cost efficiency and small models. Use MCP for structured automation with large models.
Architecture
User (Natural Language)
↓
AI CLI Tool (Claude Code / Gemini / Codex / Aider / Continue / Trae / Kimi)
↓ reads SKILL.md / AGENTS.md / rules
↓
vmware-aiops CLI
↓ pyVmomi (vSphere SOAP API)
↓
vCenter Server ──→ ESXi Cluster ──→ VM
or
ESXi Standalone Host ──→ VM
Version Compatibility
| vSphere Version | Support | Notes |
|----------------|---------|-------|
| 8.0 / 8.0U1-U3 | ✅ Full | CreateSnapshot_Task deprecated → use CreateSnapshotEx_Task |
| 7.0 / 7.0U1-U3 | ✅ Full | All APIs supported |
| 6.7 | ✅ Compatible | Backward-compatible, tested |
| 6.5 | ✅ Compatible | Backward-compatible, tested |
pyVmomi auto-negotiates the API version during SOAP handshake — no manual configuration needed. The same codebase manages both 7.0 and 8.0 environments seamlessly.
Common Workflows
Deploy a Lab Environment
- Browse datastore for OVA images →
vmware-aiops datastore browse <ds> --pattern "*.ova" - Deploy VM from OVA →
vmware-aiops deploy ova ./image.ova --name lab-vm --datastore ds1 - Install software inside VM →
vmware-aiops vm guest-exec lab-vm --cmd /bin/bash --args "-c 'apt-get install -y nginx'" --user root - Create baseline snapshot →
vmware-aiops vm snapshot-create lab-vm --name baseline - Set TTL for auto-cleanup →
vmware-aiops vm set-ttl lab-vm --minutes 480
Batch Clone for Testing
- Create plan:
vm_create_planwith multiple clone + reconfigure steps - Review plan with user (shows affected VMs, irreversible warnings)
- Apply:
vm_apply_planexecutes sequentially, stops on failure - If failed:
vm_rollback_planreverses executed steps - Set TTL on all clones for auto-cleanup
Migrate VM to Another Host
- Check VM info via
vmware-monitor→ verify power state and current host - Migrate:
vmware-aiops vm migrate my-vm --to-host esxi-02 - Verify migration completed
VM Lifecycle
| Operation | Command | Confirmation | vCenter | ESXi |
|-----------|---------|:------------:|:-------:|:----:|
| Power On | vm power-on <name> | — | ✅ | ✅ |
| Graceful Shutdown | vm power-off <name> | Double | ✅ | ✅ |
| Force Power Off | vm power-off <name> --force | Double | ✅ | ✅ |
| Reset | vm reset <name> | — | ✅ | ✅ |
| Suspend | vm suspend <name> | — | ✅ | ✅ |
| Create VM | vm create <name> --cpu --memory --disk | — | ✅ | ✅ |
| Delete VM | vm delete <name> | Double | ✅ | ✅ |
| Reconfigure | vm reconfigure <name> --cpu --memory | Double | ✅ | ✅ |
| Create Snapshot | vm snapshot-create <name> --name <snap> | — | ✅ | ✅ |
| List Snapshots | vm snapshot-list <name> | — | ✅ | ✅ |
| Revert Snapshot | vm snapshot-revert <name> --name <snap> | — | ✅ | ✅ |
| Delete Snapshot | vm snapshot-delete <name> --name <snap> | — | ✅ | ✅ |
| Clone VM | vm clone <name> --new-name <new> | — | ✅ | ✅ |
| vMotion | vm migrate <name> --to-host <host> | — | ✅ | ❌ |
| Set TTL | vm set-ttl <name> --minutes <n> | — | ✅ | ✅ |
| Cancel TTL | vm cancel-ttl <name> | — | ✅ | ✅ |
| List TTLs | vm list-ttl | — | ✅ | ✅ |
| Clean Slate | vm clean-slate <name> [--snapshot baseline] | Double | ✅ | ✅ |
| Guest Exec | vm guest-exec <name> --cmd /bin/bash --args "..." | — | ✅ | ✅ |
| Guest Exec (with output) | vm guest-exec-output <name> --cmd "df -h" | — | ✅ | ✅ |
| Guest Upload | vm guest-upload <name> --local f.sh --guest /tmp/f.sh | — | ✅ | ✅ |
| Guest Download | vm guest-download <name> --guest /var/log/syslog --local ./syslog | — | ✅ | ✅ |
Guest Operations require VMware Tools running inside the guest OS.
guest-exec-outputauto-detects Linux/Windows shell and captures stdout/stderr.
Plan → Apply (Multi-step Operations)
For complex operations involving 2+ steps or 2+ VMs, use the plan/apply workflow instead of executing individually:
| Step | What Happens |
|------|-------------|
| 1. Create Plan | AI calls vm_create_plan — validates actions, checks targets in vSphere, generates plan with rollback info |
| 2. Review | AI shows plan to user: steps, affected VMs, irreversible warnings |
| 3. Apply | vm_apply_plan executes sequentially; stops on failure |
| 4. Rollback (if failed) | Asks user whether to rollback, then vm_rollback_plan reverses executed steps (irreversible steps skipped) |
Plans stored in ~/.vmware-aiops/plans/, auto-deleted on success, auto-cleaned after 24h.
VM Deployment & Provisioning
| Operation | Command | Speed | vCenter | ESXi |
|-----------|---------|:-----:|:-------:|:----:|
| Deploy from OVA | deploy ova <path> --name <vm> | Minutes | ✅ | ✅ |
| Deploy from Template | deploy template <tmpl> --name <vm> | Minutes | ✅ | ✅ |
| Linked Clone | deploy linked-clone --source <vm> --snapshot <snap> --name <new> | Seconds | ✅ | ✅ |
| Attach ISO | deploy iso <vm> --iso "[ds] path/to.iso" | Instant | ✅ | ✅ |
| Convert to Template | deploy mark-template <vm> | Instant | ✅ | ✅ |
| Batch Clone | deploy batch-clone --source <vm> --count <n> | Minutes | ✅ | ✅ |
| Batch Deploy (YAML) | deploy batch spec.yaml | Auto | ✅ | ✅ |
Cluster Management
| Operation | Command | Confirmation | vCenter | ESXi |
|-----------|---------|:------------:|:-------:|:----:|
| Cluster Info | cluster info <name> | — | ✅ | ❌ |
| Create Cluster | cluster create <name> [--ha] [--drs] | — | ✅ | ❌ |
| Delete Cluster | cluster delete <name> | Double | ✅ | ❌ |
| Add Host | cluster add-host <cluster> --host <host> | Double | ✅ | ❌ |
| Remove Host | cluster remove-host <cluster> --host <host> | Double | ✅ | ❌ |
| Configure HA/DRS | cluster configure <name> [--ha/--no-ha] [--drs/--no-drs] | Double | ✅ | ❌ |
Datastore Browser
| Feature | vCenter | ESXi | Details | |---------|:-------:|:----:|---------| | Browse Files | ✅ | ✅ | List files/folders in any datastore path | | Scan Images | ✅ | ✅ | Discover ISO, OVA, OVF, VMDK across all datastores |
Scheduled Scanning & Notifications
| Feature | Details |
|---------|---------|
| Daemon | APScheduler-based, configurable interval (default 15 min) |
| Multi-target Scan | Sequentially scan all configured vCenter/ESXi targets |
| Scan Content | Alarms + Events + Host logs (hostd, vmkernel, vpxd) |
| Log Analysis | Regex pattern matching: error, fail, critical, panic, timeout, corrupt |
| Structured Log | JSONL output to ~/.vmware-aiops/scan.log |
| Webhook | Slack, Discord, or any HTTP endpoint |
| Daemon Management | daemon start/stop/status, PID file, graceful shutdown |
Safety Features
| Feature | Details |
|---------|---------|
| Dry-Run Mode | --dry-run on any destructive command prints exact API calls without executing |
| Plan → Confirm → Execute → Log | Structured workflow: show current state, confirm changes, execute, audit log |
| Double Confirmation | All destructive ops (power-off, delete, reconfigure, snapshot-revert/delete, clone, migrate) require 2 sequential confirmations — no bypass flags |
| Rejection Logging | Declined confirmations are recorded in the audit trail |
| Audit Trail | All operations logged to ~/.vmware-aiops/audit.log (JSONL) with before/after state |
| Input Validation | VM name, CPU (1-128), memory (128-1048576 MB), disk (1-65536 GB) validated |
| Password Protection | .env file loading with permission check; never in shell history |
| SSL Self-signed Support | disableSslCertValidation — only for ESXi with self-signed certs in isolated labs; production should use CA-signed certificates |
| Prompt Injection Protection | vSphere event messages and host logs are truncated, stripped of control characters, and wrapped in boundary markers before output |
| Webhook Data Scope | Sends notifications to user-configured URLs only — no third-party services by default |
| Task Waiting | All async operations wait for completion and report result |
| State Validation | Pre-operation checks (VM exists, power state correct) |
vCenter vs ESXi Comparison
| Capability | vCenter | ESXi Standalone | |------------|:-------:|:----:| | vMotion migration | ✅ | ❌ | | Cross-host clone | ✅ | ❌ | | Cluster management | ✅ | ❌ | | All VM lifecycle ops | ✅ | ✅ | | OVA/Template/Linked Clone deploy | ✅ | ✅ | | Datastore browsing & image scan | ✅ | ✅ | | Snapshots | ✅ | ✅ | | Guest operations | ✅ | ✅ |
Inventory, alarms, events, sensors, host services, and scanning are now in vmware-monitor.
Troubleshooting
"VM not found" error
VM names are case-sensitive in vSphere. Use exact name from vmware-monitor inventory vms.
Guest exec returns empty output
Use vm_guest_exec_output instead of vm_guest_exec — it auto-captures stdout/stderr. Basic vm_guest_exec only returns exit code.
Deploy OVA times out
Large OVA files (>10GB) may exceed the default 120s timeout. The upload happens via HTTP NFC lease — ensure network between the machine running vmware-aiops and ESXi is stable.
Plan apply fails mid-way
Run vmware-aiops plan list to see failed plan status. Ask user if they want to rollback with vm_rollback_plan. Irreversible steps (delete_vm) are skipped during rollback.
Connection refused / SSL error
- Verify target is reachable:
vmware-aiops doctor - For self-signed certs: set
disableSslCertValidation: truein config.yaml (lab environments only)
Supported AI Platforms
| Platform | Status | Config File | AI Model |
|----------|--------|-------------|----------|
| Claude Code | ✅ Native Skill | skills/vmware-aiops/SKILL.md | Anthropic Claude |
| Gemini CLI | ✅ Extension | gemini-extension/GEMINI.md | Google Gemini |
| OpenAI Codex CLI | ✅ Skill + AGENTS.md | codex-skill/AGENTS.md | OpenAI GPT |
| Aider | ✅ Conventions | codex-skill/AGENTS.md | Any (cloud + local) |
| Continue CLI | ✅ Rules | codex-skill/AGENTS.md | Any (cloud + local) |
| Trae IDE | ✅ Rules | trae-rules/project_rules.md | Claude/DeepSeek/GPT-4o/Doubao |
| Kimi Code CLI | ✅ Skill | kimi-skill/SKILL.md | Moonshot Kimi |
| MCP Server | ✅ MCP Protocol | mcp_server/ | Any MCP client |
| Python CLI | ✅ Standalone | N/A | N/A |
Platform Comparison
| Feature | Claude Code | Gemini CLI | Codex CLI | Aider | Continue | Trae IDE | Kimi CLI | |---------|-------------|------------|-----------|-------|----------|----------|----------| | Cloud AI | Anthropic | Google | OpenAI | Any | Any | Multi | Moonshot | | Local models | — | — | — | Ollama | Ollama | — | — | | Skill system | SKILL.md | Extension | SKILL.md | — | Rules | Rules | SKILL.md | | MCP support | Native | Native | Via Skills | Third-party | Native | — | — | | Free tier | — | 60 req/min | — | Self-hosted | Self-hosted | — | — |
MCP Server Integrations
The vmware-aiops MCP server works with any MCP-compatible agent or tool. Ready-to-use configuration templates are in examples/mcp-configs/.
| Agent / Tool | Local Model Support | Config Template | Integration Guide |
|-------------|:-------------------:|-----------------|-------------------|
| Goose | ✅ Ollama, LM Studio | goose.json | Guide |
| LocalCowork | ✅ Fully offline | localcowork.json | Guide |
| mcp-agent | ✅ Ollama, vLLM | mcp-agent.yaml | Guide |
| VS Code Copilot | — | vscode-copilot.json | Guide |
| Cursor | — | cursor.json | Guide |
| Continue | ✅ Ollama | continue.yaml | Guide |
| Claude Code | — | claude-code.json | — |
Fully local operation (no cloud API required):
# Aider + Ollama + vmware-aiops (via AGENTS.md)
aider --conventions codex-skill/AGENTS.md --model ollama/qwen2.5-coder:32b
# Any MCP agent + local model + vmware-aiops MCP server
# See examples/mcp-configs/ for your agent's config format
Installation
Step 0: Prerequisites
# Python 3.10+ required
python3 --version
# Node.js 18+ required for Gemini CLI and Codex CLI
node --version
Step 1: Clone & Install Python Backend
All platforms share the same Python backend.
git clone https://github.com/zw008/VMware-AIops.git
cd VMware-AIops
python3 -m venv .venv
source .venv/bin/activate
pip install -e .
Step 2: Configure
mkdir -p ~/.vmware-aiops
cp config.example.yaml ~/.vmware-aiops/config.yaml
# Edit config.yaml with your vCenter/ESXi targets
Set passwords via .env file (recommended):
# Use the template
cp .env.example ~/.vmware-aiops/.env
# Edit and fill in your passwords, then lock permissions
chmod 600 ~/.vmware-aiops/.env
Security note: Prefer
.envfile over command-lineexportto avoid passwords appearing in shell history. The.envfile should havechmod 600(owner-only read/write).
Password environment variable naming convention:
VMWARE_{TARGET_NAME_UPPER}_PASSWORD
# Replace hyphens with underscores, UPPERCASE
# Example: target "home-esxi" → VMWARE_HOME_ESXI_PASSWORD
# Example: target "prod-vcenter" → VMWARE_PROD_VCENTER_PASSWORD
Security Best Practices
- NEVER hardcode passwords in scripts or config files
- NEVER pass passwords as command-line arguments (visible in
ps) - ALWAYS use
~/.vmware-aiops/.envwithchmod 600 - ALWAYS configure connections via
config.yaml— credentials are loaded from.envautomatically - Config File Contents:
config.yamlstores target hostnames, ports, and a reference to the.envfile. It does not contain passwords or tokens. All secrets are stored exclusively in.env - TLS: Enabled by default. Disable only for ESXi hosts with self-signed certificates in isolated lab environments
- Webhook: Disabled by default. When enabled, sends monitoring summaries to your own configured URL only — payloads contain no credentials, IPs, or PII, only aggregated alert metadata. No data sent to third-party services
- Least Privilege: Use a dedicated vCenter service account with minimal permissions. For monitoring-only use cases, prefer the read-only VMware-Monitor
- Prompt Injection Protection: All vSphere-sourced content is truncated, stripped of control characters, and wrapped in boundary markers before output
- Code Review: We recommend reviewing the source code and commit history before deploying in production
- Production Safety: For production environments, use the read-only VMware-Monitor instead. AI agents can misinterpret context and execute unintended destructive operations — real-world incidents have shown that AI-driven infrastructure tools without proper isolation can delete production databases and entire environments. VMware-Monitor eliminates this risk at the code level: no destructive functions exist in its codebase
Step 3: Connect Your AI Tool
Choose one (or more) of the following:
Option A: Claude Code (Marketplace)
Method 1: Marketplace (recommended)
In Claude Code, run:
/plugin marketplace add zw008/VMware-AIops
/plugin install vmware-ops
Then use:
/vmware-ops:vmware-aiops
> Show me all VMs on esxi-lab.example.com
Method 2: Local install
# Clone and symlink
git clone https://github.com/zw008/VMware-AIops.git
ln -sf $(pwd)/VMware-AIops ~/.claude/plugins/marketplaces/vmware-aiops
# Register marketplace
python3 -c "
import json, pathlib
f = pathlib.Path.home() / '.claude/plugins/known_marketplaces.json'
d = json.loads(f.read_text()) if f.exists() else {}
d['vmware-aiops'] = {
'source': {'source': 'github', 'repo': 'zw008/VMware-AIops'},
'installLocation': str(pathlib.Path.home() / '.claude/plugins/marketplaces/vmware-aiops')
}
f.write_text(json.dumps(d, indent=2))
"
# Enable plugin
python3 -c "
import json, pathlib
f = pathlib.Path.home() / '.claude/settings.json'
d = json.loads(f.read_text()) if f.exists() else {}
d.setdefault('enabledPlugins', {})['vmware-ops@vmware-aiops'] = True
f.write_text(json.dumps(d, indent=2))
"
Restart Claude Code, then:
/vmware-ops:vmware-aiops
Submit to Official Marketplace
This plugin can also be submitted to the Anthropic official plugin directory for public discovery.
Option B: Gemini CLI
# Install Gemini CLI
npm install -g @google/gemini-cli
# Install the extension from the cloned repo
gemini extensions install ./gemini-extension
# Or install directly from GitHub
# gemini extensions install https://github.com/zw008/VMware-AIops
Then start Gemini CLI:
gemini
> Show me all VMs on my ESXi host
Option C: OpenAI Codex CLI
# Install Codex CLI
npm i -g @openai/codex
# Or on macOS:
# brew install --cask codex
# Copy skill to Codex skills directory
mkdir -p ~/.codex/skills/vmware-aiops
cp codex-skill/SKILL.md ~/.codex/skills/vmware-aiops/SKILL.md
# Copy AGENTS.md to project root
cp codex-skill/AGENTS.md ./AGENTS.md
Then start Codex CLI:
codex --enable skills
> List all VMs on my ESXi
Option D: Aider (supports local models)
# Install Aider
pip install aider-chat
# Install Ollama for local models (optional)
# macOS:
brew install ollama
ollama pull qwen2.5-coder:32b
# Run with cloud API
aider --conventions codex-skill/AGENTS.md
# Or with local model via Ollama
aider --conventions codex-skill/AGENTS.md \
--model ollama/qwen2.5-coder:32b
Option E: Continue CLI (supports local models)
# Install Continue CLI
npm i -g @continuedev/cli
# Copy rules file
mkdir -p .continue/rules
cp codex-skill/AGENTS.md .continue/rules/vmware-aiops.md
Configure ~/.continue/config.yaml for local model:
models:
- name: local-coder
provider: ollama
model: qwen2.5-coder:32b
Then:
cn
> Check ESXi health and alarms
Option F: Trae IDE
Copy the rules file to your project's .trae/rules/ directory:
mkdir -p .trae/rules
cp trae-rules/project_rules.md .trae/rules/project_rules.md
Trae IDE's Builder Mode reads .trae/rules/ Markdown files at startup.
Note: You can also install Claude Code extension in Trae IDE and use
.claude/skills/format directly.
Option G: Kimi Code CLI
# Copy skill file to Kimi skills directory
mkdir -p ~/.kimi/skills/vmware-aiops
cp kimi-skill/SKILL.md ~/.kimi/skills/vmware-aiops/SKILL.md
Option H: MCP Server (Smithery / Glama / Claude Desktop)
The MCP server exposes VMware operations as tools via the Model Context Protocol. Works with any MCP-compatible client (Claude Desktop, Cursor, etc.).
# Run via uvx (recommended — works with uv tool install)
uvx --from vmware-aiops vmware-aiops-mcp
# With a custom config path
VMWARE_AIOPS_CONFIG=/path/to/config.yaml uvx --from vmware-aiops vmware-aiops-mcp
Claude Desktop config (claude_desktop_config.json):
{
"mcpServers": {
"vmware-aiops": {
"command": "uvx",
"args": ["--from", "vmware-aiops", "vmware-aiops-mcp"],
"env": {
"VMWARE_AIOPS_CONFIG": "/path/to/config.yaml"
}
}
}
}
Install via Smithery:
npx -y @smithery/cli install @zw008/VMware-AIops --client claude
Option I: Standalone CLI (no AI)
# Already installed in Step 1
source .venv/bin/activate
vmware-aiops vm power-on my-vm --target home-esxi
vmware-aiops deploy ova ./ubuntu.ova --name my-vm --target home-esxi
vmware-aiops datastore browse datastore1 --target home-esxi
Update / Upgrade
Already installed? Re-run the install command for your channel to get the latest version:
| Install Channel | Update Command |
|----------------|----------------|
| ClawHub | clawhub install vmware-aiops |
| Skills.sh | npx skills add zw008/VMware-AIops |
| Claude Code Plugin | /plugin marketplace add zw008/VMware-AIops |
| Git clone | cd VMware-AIops && git pull origin main && uv pip install -e . |
| uv | uv tool install vmware-aiops --force |
Check your current version: vmware-aiops --version
Chinese Cloud Models
For users in China who prefer domestic cloud APIs or have limited access to overseas services.
DeepSeek
Cost-effective, strong coding capability.
# Set DeepSeek API key (get from https://platform.deepseek.com)
export DEEPSEEK_API_KEY="your-key"
# Run with Aider
aider --conventions codex-skill/AGENTS.md \
--model deepseek/deepseek-coder
Persistent config ~/.aider.conf.yml:
model: deepseek/deepseek-coder
conventions: codex-skill/AGENTS.md
Qwen (Alibaba Cloud)
Alibaba Cloud's coding model, free tier available.
# Set DashScope API key (get from https://dashscope.console.aliyun.com)
export DASHSCOPE_API_KEY="your-key"
aider --conventions codex-skill/AGENTS.md \
--model qwen/qwen-coder-plus
Or via OpenAI-compatible endpoint:
export OPENAI_API_BASE="https://dashscope.aliyuncs.com/compatible-mode/v1"
export OPENAI_API_KEY="your-dashscope-key"
aider --conventions codex-skill/AGENTS.md \
--model qwen-coder-plus-latest
Doubao (ByteDance)
export OPENAI_API_BASE="https://ark.cn-beijing.volces.com/api/v3"
export OPENAI_API_KEY="your-ark-key"
aider --conventions codex-skill/AGENTS.md \
--model your-doubao-endpoint-id
With Continue CLI
Configure ~/.continue/config.yaml:
# DeepSeek
models:
- name: deepseek-coder
provider: openai-compatible
apiBase: https://api.deepseek.com/v1
apiKey: your-deepseek-key
model: deepseek-coder
# Qwen
models:
- name: qwen-coder
provider: openai-compatible
apiBase: https://dashscope.aliyuncs.com/compatible-mode/v1
apiKey: your-dashscope-key
model: qwen-coder-plus-latest
Local Models (Aider + Ollama)
For fully offline operation — no cloud API, no internet, full privacy.
Aider + Ollama + local Qwen/DeepSeek is ideal for air-gapped environments.
Step 1: Install Ollama
# macOS
brew install ollama
# Linux — download from https://ollama.com/download and install manually
# See https://github.com/ollama/ollama for platform-specific instructions
Step 2: Pull a model
| Model | Command | Size | Note |
|-------|---------|------|------|
| Qwen 2.5 Coder 32B | ollama pull qwen2.5-coder:32b | ~20GB | Best local coding model |
| Qwen 2.5 Coder 7B | ollama pull qwen2.5-coder:7b | ~4.5GB | Low-memory option |
| DeepSeek Coder V2 | ollama pull deepseek-coder-v2 | ~8.9GB | Strong reasoning |
| CodeLlama 34B | ollama pull codellama:34b | ~19GB | Meta coding model |
Hardware: 32B → ~20GB VRAM (or 32GB RAM for CPU). 7B → 8GB RAM.
Step 3: Run with Aider
pip install aider-chat
ollama serve
# Aider + local Qwen (recommended)
aider --conventions codex-skill/AGENTS.md \
--model ollama/qwen2.5-coder:32b
# Aider + local DeepSeek
aider --conventions codex-skill/AGENTS.md \
--model ollama/deepseek-coder-v2
# Low-memory option
aider --conventions codex-skill/AGENTS.md \
--model ollama/qwen2.5-coder:7b
Persistent config ~/.aider.conf.yml:
model: ollama/qwen2.5-coder:32b
conventions: codex-skill/AGENTS.md
Local Architecture
User → Aider CLI → Ollama (localhost:11434) → Qwen / DeepSeek local model
│ ↓
│ reads AGENTS.md instructions
│ ↓
└──────────────────────────────→ vmware-aiops CLI ──→ ESXi / vCenter
Tip: Local models are fully offline — perfect for air-gapped environments or strict data compliance.
CLI Reference
# Diagnostics
vmware-aiops doctor # Check environment, config, connectivity
vmware-aiops doctor --skip-auth # Skip vSphere auth check (faster)
# MCP Config Generator
vmware-aiops mcp-config generate --agent goose # Generate config for Goose
vmware-aiops mcp-config generate --agent claude-code # Generate config for Claude Code
vmware-aiops mcp-config list # List all supported agents
# VM operations
vmware-aiops vm power-on my-vm # Power on
vmware-aiops vm power-off my-vm # Graceful shutdown (2x confirm)
vmware-aiops vm power-off my-vm --force # Force power off (2x confirm)
vmware-aiops vm create my-new-vm --cpu 4 --memory 8192 --disk 100 # Create VM
vmware-aiops vm delete my-vm --confirm # Delete VM (2x confirm)
vmware-aiops vm reconfigure my-vm --cpu 4 --memory 8192 # Reconfigure (2x confirm)
vmware-aiops vm snapshot-create my-vm --name "before-upgrade" # Create snapshot
vmware-aiops vm snapshot-list my-vm # List snapshots
vmware-aiops vm snapshot-revert my-vm --name "before-upgrade" # Revert snapshot
vmware-aiops vm snapshot-delete my-vm --name "before-upgrade" # Delete snapshot
vmware-aiops vm clone my-vm --new-name my-vm-clone # Clone VM
vmware-aiops vm migrate my-vm --to-host esxi-02 # vMotion
vmware-aiops vm set-ttl my-vm --minutes 60 # Auto-delete in 60 min
vmware-aiops vm cancel-ttl my-vm # Cancel TTL
vmware-aiops vm list-ttl # Show all TTLs
vmware-aiops vm clean-slate my-vm --snapshot baseline # Revert to baseline (2x confirm)
# Guest Operations (requires VMware Tools in guest)
vmware-aiops vm guest-exec my-vm --cmd /bin/bash --args "-c 'whoami'" --user root
vmware-aiops vm guest-upload my-vm --local ./script.sh --guest /tmp/script.sh --user root
vmware-aiops vm guest-download my-vm --guest /var/log/syslog --local ./syslog.txt --user root
# Plan → Apply (multi-step operations)
vmware-aiops plan list # List pending/failed plans
# Deploy
vmware-aiops deploy ova ./ubuntu.ova --name my-vm --datastore ds1 # Deploy from OVA
vmware-aiops deploy template golden-ubuntu --name new-vm # Deploy from template
vmware-aiops deploy linked-clone --source base-vm --snapshot clean --name test-vm # Linked clone (seconds)
vmware-aiops deploy iso my-vm --iso "[datastore1] iso/ubuntu-22.04.iso" # Attach ISO
vmware-aiops deploy mark-template golden-vm # Convert VM to template
vmware-aiops deploy batch-clone --source base-vm --count 5 --prefix lab # Batch clone
vmware-aiops deploy batch deploy.yaml # Batch deploy from YAML spec
# Cluster
vmware-aiops cluster info my-cluster # Cluster details (HA/DRS status)
vmware-aiops cluster create my-cluster --ha --drs # Create cluster with HA+DRS
vmware-aiops cluster delete my-cluster # Delete cluster (2x confirm)
vmware-aiops cluster add-host my-cluster --host esxi-03 # Add host to cluster (2x confirm)
vmware-aiops cluster remove-host my-cluster --host esxi-03 # Remove host (2x confirm)
vmware-aiops cluster configure my-cluster --ha --drs # Configure HA/DRS (2x confirm)
# Datastore (browse and scan only — iSCSI/vSAN moved to vmware-storage)
vmware-aiops datastore browse datastore1 --path "iso/" # Browse datastore
vmware-aiops datastore scan-images --target home-esxi # Scan all datastores for images
# Scan
vmware-aiops scan now # One-time scan
# Daemon
vmware-aiops daemon start # Start scanner
vmware-aiops daemon status # Check status
vmware-aiops daemon stop # Stop daemon
# Companion skills for other operations:
# vmware-monitor: inventory, alarms, events, sensors
# vmware-storage: datastores, iSCSI, vSAN
# vmware-vks: Tanzu/TKC cluster lifecycle
Configuration
See config.example.yaml for all options.
| Section | Key | Default | Description |
|---------|-----|---------|-------------|
| targets | name | — | Friendly name |
| targets | host | — | vCenter/ESXi hostname or IP |
| targets | type | vcenter | vcenter or esxi |
| targets | port | 443 | Connection port |
| targets | verify_ssl | false | SSL certificate verification |
| scanner | interval_minutes | 15 | Scan frequency |
| scanner | severity_threshold | warning | Min severity: critical/warning/info |
| scanner | lookback_hours | 1 | How far back to scan |
| scanner | log_types | [vpxd, hostd, vmkernel] | Log sources |
| notify | log_file | ~/.vmware-aiops/scan.log | JSONL log output |
| notify | webhook_url | — | Webhook endpoint (Slack, Discord, etc.) |
Project Structure
VMware-AIops/
├── .claude-plugin/ # Claude Code marketplace manifest
│ └── marketplace.json
├── plugins/ # Claude Code plugin
│ └── vmware-ops/
│ ├── .claude-plugin/
│ │ └── plugin.json
│ └── skills/
│ └── vmware-aiops/
│ └── SKILL.md # Full operations skill
├── skills/ # Skills index (npx skills add)
│ └── vmware-aiops/
│ ├── SKILL.md # Slimmed-down skill (progressive disclosure)
│ └── references/ # Detailed docs loaded on-demand
│ ├── capabilities.md # Full capabilities tables
│ ├── cli-reference.md # Complete CLI reference
│ └── setup-guide.md # Install, security, AI platforms
├── vmware_aiops/ # Python backend
│ ├── config.py # YAML + .env config
│ ├── connection.py # Multi-target pyVmomi
│ ├── cli.py # Typer CLI (double confirm)
│ ├── ops/ # Operations
│ │ ├── inventory.py # VMs, hosts, datastores, clusters
│ │ ├── health.py # Alarms, events, sensors
│ │ ├── vm_lifecycle.py # VM CRUD, snapshots, clone, migrate
│ │ ├── vm_deploy.py # OVA, template, linked clone, batch deploy
│ │ └── datastore_browser.py # Datastore browsing, image discovery
│ ├── scanner/ # Log scanning daemon
│ └── notify/ # Notifications (JSONL + webhook)
├── gemini-extension/ # Gemini CLI extension
│ ├── gemini-extension.json
│ └── GEMINI.md
├── codex-skill/ # Codex + Aider + Continue
│ ├── SKILL.md
│ └── AGENTS.md
├── trae-rules/ # Trae IDE rules
│ └── project_rules.md
├── kimi-skill/ # Kimi Code CLI skill
│ └── SKILL.md
├── mcp_server/ # MCP server wrapper
│ ├── server.py # FastMCP server with tools
│ └── __main__.py
├── smithery.yaml # Smithery marketplace config
├── RELEASE_NOTES.md
├── config.example.yaml
└── pyproject.toml
API Coverage
Built on pyVmomi (vSphere Web Services API / SOAP).
| API Object | Usage |
|------------|-------|
| vim.VirtualMachine | VM lifecycle, snapshots, clone, migrate |
| vim.HostSystem | ESXi host info, sensors, services |
| vim.Datastore | Storage capacity, type, accessibility |
| vim.host.DatastoreBrowser | File browsing, image discovery (ISO/OVA/VMDK) |
| vim.OvfManager | OVA import and deployment |
| vim.ClusterComputeResource | Cluster, DRS, HA |
| vim.Network | Network listing |
| vim.alarm.AlarmManager | Active alarm monitoring |
| vim.event.EventManager | Event/log queries |
Related Projects
| Skill | Scope | Tools | Install |
|-------|-------|:-----:|---------|
| vmware-monitor | Read-only monitoring, alarms, events | 8 | uv tool install vmware-monitor |
| vmware-aiops | VM lifecycle, deployment, guest ops, cluster, datastore browse | 31 | uv tool install vmware-aiops |
| vmware-storage | Datastores, iSCSI, vSAN | 11 | uv tool install vmware-storage |
| vmware-vks | Tanzu Namespaces, TKC cluster lifecycle | 20 | uv tool install vmware-vks |
Troubleshooting & Contributing
If you encounter any errors or issues, please send the error message, logs, or screenshots to [email protected]. Contributions are welcome — feel free to join us in maintaining and improving this project!
License
MIT
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