Files
hermes-agent/website/docs/guides/build-a-hermes-plugin.md
Teknium ee3f3e756d docs: fix stale and incorrect documentation across 18 files
Cross-referenced all 84 docs pages against the actual codebase and
corrected every discrepancy found.

Reference docs:
- faq.md: Fix non-existent commands (/stats→/usage, /context→/usage,
  hermes models→hermes model, hermes config get→hermes config show,
  hermes gateway logs→cat gateway.log, async→sync chat() call)
- cli-commands.md: Fix --provider choices list (remove providers not
  in argparse), add undocumented -s/--skills flag
- slash-commands.md: Add missing /queue and /resume commands, fix
  /approve args_hint to show [session|always]
- tools-reference.md: Remove duplicate vision and web toolset sections
- environment-variables.md: Fix HERMES_INFERENCE_PROVIDER list (add
  copilot-acp, remove alibaba to match actual argparse choices)

Configuration & user guide:
- configuration.md: Fix approval_mode→approvals.mode (manual not ask),
  checkpoints.enabled default true not false, human_delay defaults
  (500/2000→800/2500), remove non-existent delegation.max_iterations
  and delegation.default_toolsets, fix website_blocklist nesting
  under security:, add .hermes.md and CLAUDE.md to context files
  table with priority system explanation
- security.md: Fix website_blocklist nesting under security:
- context-files.md: Add .hermes.md/HERMES.md and CLAUDE.md support,
  document priority-based first-match-wins loading behavior
- cli.md: Fix personalities config nesting (top-level, not under agent:)
- delegation.md: Fix model override docs (config-level, not per-call
  tool parameter)
- rl-training.md: Fix log directory (tinker-atropos/logs/→
  ~/.hermes/logs/rl_training/)
- tts.md: Fix Discord delivery format (voice bubble with fallback,
  not just file attachment)
- git-worktrees.md: Remove outdated v0.2.0 version reference

Developer guide:
- prompt-assembly.md: Add .hermes.md, CLAUDE.md, document priority
  system for context files
- agent-loop.md: Fix callback list (remove non-existent
  message_callback, add stream_delta_callback, tool_gen_callback,
  status_callback)

Messaging & guides:
- webhooks.md: Fix command (hermes setup gateway→hermes gateway setup)
- tips.md: Fix session idle timeout (120min→24h), config file
  (gateway.json→config.yaml)
- build-a-hermes-plugin.md: Fix plugin.yaml provides: format
  (provides_tools/provides_hooks as lists), note register_command()
  as not yet implemented
2026-03-24 07:53:07 -07:00

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Build a Hermes Plugin

This guide walks through building a complete Hermes plugin from scratch. By the end you'll have a working plugin with multiple tools, lifecycle hooks, shipped data files, and a bundled skill — everything the plugin system supports.

What you're building

A calculator plugin with two tools:

  • calculate — evaluate math expressions (2**16, sqrt(144), pi * 5**2)
  • unit_convert — convert between units (100 F → 37.78 C, 5 km → 3.11 mi)

Plus a hook that logs every tool call, and a bundled skill file.

Step 1: Create the plugin directory

mkdir -p ~/.hermes/plugins/calculator
cd ~/.hermes/plugins/calculator

Step 2: Write the manifest

Create plugin.yaml:

name: calculator
version: 1.0.0
description: Math calculator — evaluate expressions and convert units
provides_tools:
  - calculate
  - unit_convert
provides_hooks:
  - post_tool_call

This tells Hermes: "I'm a plugin called calculator, I provide tools and hooks." The provides_tools and provides_hooks fields are lists of what the plugin registers.

Optional fields you could add:

author: Your Name
requires_env:          # gate loading on env vars
  - SOME_API_KEY       # plugin disabled if missing

Step 3: Write the tool schemas

Create schemas.py — this is what the LLM reads to decide when to call your tools:

"""Tool schemas — what the LLM sees."""

CALCULATE = {
    "name": "calculate",
    "description": (
        "Evaluate a mathematical expression and return the result. "
        "Supports arithmetic (+, -, *, /, **), functions (sqrt, sin, cos, "
        "log, abs, round, floor, ceil), and constants (pi, e). "
        "Use this for any math the user asks about."
    ),
    "parameters": {
        "type": "object",
        "properties": {
            "expression": {
                "type": "string",
                "description": "Math expression to evaluate (e.g., '2**10', 'sqrt(144)')",
            },
        },
        "required": ["expression"],
    },
}

UNIT_CONVERT = {
    "name": "unit_convert",
    "description": (
        "Convert a value between units. Supports length (m, km, mi, ft, in), "
        "weight (kg, lb, oz, g), temperature (C, F, K), data (B, KB, MB, GB, TB), "
        "and time (s, min, hr, day)."
    ),
    "parameters": {
        "type": "object",
        "properties": {
            "value": {
                "type": "number",
                "description": "The numeric value to convert",
            },
            "from_unit": {
                "type": "string",
                "description": "Source unit (e.g., 'km', 'lb', 'F', 'GB')",
            },
            "to_unit": {
                "type": "string",
                "description": "Target unit (e.g., 'mi', 'kg', 'C', 'MB')",
            },
        },
        "required": ["value", "from_unit", "to_unit"],
    },
}

Why schemas matter: The description field is how the LLM decides when to use your tool. Be specific about what it does and when to use it. The parameters define what arguments the LLM passes.

Step 4: Write the tool handlers

Create tools.py — this is the code that actually executes when the LLM calls your tools:

"""Tool handlers — the code that runs when the LLM calls each tool."""

import json
import math

# Safe globals for expression evaluation — no file/network access
_SAFE_MATH = {
    "abs": abs, "round": round, "min": min, "max": max,
    "pow": pow, "sqrt": math.sqrt, "sin": math.sin, "cos": math.cos,
    "tan": math.tan, "log": math.log, "log2": math.log2, "log10": math.log10,
    "floor": math.floor, "ceil": math.ceil,
    "pi": math.pi, "e": math.e,
    "factorial": math.factorial,
}


def calculate(args: dict, **kwargs) -> str:
    """Evaluate a math expression safely.

    Rules for handlers:
    1. Receive args (dict) — the parameters the LLM passed
    2. Do the work
    3. Return a JSON string — ALWAYS, even on error
    4. Accept **kwargs for forward compatibility
    """
    expression = args.get("expression", "").strip()
    if not expression:
        return json.dumps({"error": "No expression provided"})

    try:
        result = eval(expression, {"__builtins__": {}}, _SAFE_MATH)
        return json.dumps({"expression": expression, "result": result})
    except ZeroDivisionError:
        return json.dumps({"expression": expression, "error": "Division by zero"})
    except Exception as e:
        return json.dumps({"expression": expression, "error": f"Invalid: {e}"})


# Conversion tables — values are in base units
_LENGTH = {"m": 1, "km": 1000, "mi": 1609.34, "ft": 0.3048, "in": 0.0254, "cm": 0.01}
_WEIGHT = {"kg": 1, "g": 0.001, "lb": 0.453592, "oz": 0.0283495}
_DATA = {"B": 1, "KB": 1024, "MB": 1024**2, "GB": 1024**3, "TB": 1024**4}
_TIME = {"s": 1, "ms": 0.001, "min": 60, "hr": 3600, "day": 86400}


def _convert_temp(value, from_u, to_u):
    # Normalize to Celsius
    c = {"F": (value - 32) * 5/9, "K": value - 273.15}.get(from_u, value)
    # Convert to target
    return {"F": c * 9/5 + 32, "K": c + 273.15}.get(to_u, c)


def unit_convert(args: dict, **kwargs) -> str:
    """Convert between units."""
    value = args.get("value")
    from_unit = args.get("from_unit", "").strip()
    to_unit = args.get("to_unit", "").strip()

    if value is None or not from_unit or not to_unit:
        return json.dumps({"error": "Need value, from_unit, and to_unit"})

    try:
        # Temperature
        if from_unit.upper() in {"C","F","K"} and to_unit.upper() in {"C","F","K"}:
            result = _convert_temp(float(value), from_unit.upper(), to_unit.upper())
            return json.dumps({"input": f"{value} {from_unit}", "result": round(result, 4),
                             "output": f"{round(result, 4)} {to_unit}"})

        # Ratio-based conversions
        for table in (_LENGTH, _WEIGHT, _DATA, _TIME):
            lc = {k.lower(): v for k, v in table.items()}
            if from_unit.lower() in lc and to_unit.lower() in lc:
                result = float(value) * lc[from_unit.lower()] / lc[to_unit.lower()]
                return json.dumps({"input": f"{value} {from_unit}",
                                 "result": round(result, 6),
                                 "output": f"{round(result, 6)} {to_unit}"})

        return json.dumps({"error": f"Cannot convert {from_unit}{to_unit}"})
    except Exception as e:
        return json.dumps({"error": f"Conversion failed: {e}"})

Key rules for handlers:

  1. Signature: def my_handler(args: dict, **kwargs) -> str
  2. Return: Always a JSON string. Success and errors alike.
  3. Never raise: Catch all exceptions, return error JSON instead.
  4. Accept **kwargs: Hermes may pass additional context in the future.

Step 5: Write the registration

Create __init__.py — this wires schemas to handlers:

"""Calculator plugin — registration."""

import logging

from . import schemas, tools

logger = logging.getLogger(__name__)

# Track tool usage via hooks
_call_log = []

def _on_post_tool_call(tool_name, args, result, task_id, **kwargs):
    """Hook: runs after every tool call (not just ours)."""
    _call_log.append({"tool": tool_name, "session": task_id})
    if len(_call_log) > 100:
        _call_log.pop(0)
    logger.debug("Tool called: %s (session %s)", tool_name, task_id)


def register(ctx):
    """Wire schemas to handlers and register hooks."""
    ctx.register_tool(name="calculate",    toolset="calculator",
                      schema=schemas.CALCULATE,    handler=tools.calculate)
    ctx.register_tool(name="unit_convert", toolset="calculator",
                      schema=schemas.UNIT_CONVERT, handler=tools.unit_convert)

    # This hook fires for ALL tool calls, not just ours
    ctx.register_hook("post_tool_call", _on_post_tool_call)

What register() does:

  • Called exactly once at startup
  • ctx.register_tool() puts your tool in the registry — the model sees it immediately
  • ctx.register_hook() subscribes to lifecycle events
  • ctx.register_command()planned but not yet implemented
  • If this function crashes, the plugin is disabled but Hermes continues fine

Step 6: Test it

Start Hermes:

hermes

You should see calculator: calculate, unit_convert in the banner's tool list.

Try these prompts:

What's 2 to the power of 16?
Convert 100 fahrenheit to celsius
What's the square root of 2 times pi?
How many gigabytes is 1.5 terabytes?

Check plugin status:

/plugins

Output:

Plugins (1):
  ✓ calculator v1.0.0 (2 tools, 1 hooks)

Your plugin's final structure

~/.hermes/plugins/calculator/
├── plugin.yaml      # "I'm calculator, I provide tools and hooks"
├── __init__.py      # Wiring: schemas → handlers, register hooks
├── schemas.py       # What the LLM reads (descriptions + parameter specs)
└── tools.py         # What runs (calculate, unit_convert functions)

Four files, clear separation:

  • Manifest declares what the plugin is
  • Schemas describe tools for the LLM
  • Handlers implement the actual logic
  • Registration connects everything

What else can plugins do?

Ship data files

Put any files in your plugin directory and read them at import time:

# In tools.py or __init__.py
from pathlib import Path

_PLUGIN_DIR = Path(__file__).parent
_DATA_FILE = _PLUGIN_DIR / "data" / "languages.yaml"

with open(_DATA_FILE) as f:
    _DATA = yaml.safe_load(f)

Bundle a skill

Include a skill.md file and install it during registration:

import shutil
from pathlib import Path

def _install_skill():
    """Copy our skill to ~/.hermes/skills/ on first load."""
    try:
        from hermes_cli.config import get_hermes_home
        dest = get_hermes_home() / "skills" / "my-plugin" / "SKILL.md"
    except Exception:
        dest = Path.home() / ".hermes" / "skills" / "my-plugin" / "SKILL.md"

    if dest.exists():
        return  # don't overwrite user edits

    source = Path(__file__).parent / "skill.md"
    if source.exists():
        dest.parent.mkdir(parents=True, exist_ok=True)
        shutil.copy2(source, dest)

def register(ctx):
    ctx.register_tool(...)
    _install_skill()

Gate on environment variables

If your plugin needs an API key:

# plugin.yaml
requires_env:
  - WEATHER_API_KEY

If WEATHER_API_KEY isn't set, the plugin is disabled with a clear message. No crash, no error in the agent — just "Plugin weather disabled (missing: WEATHER_API_KEY)".

Conditional tool availability

For tools that depend on optional libraries:

ctx.register_tool(
    name="my_tool",
    schema={...},
    handler=my_handler,
    check_fn=lambda: _has_optional_lib(),  # False = tool hidden from model
)

Register multiple hooks

def register(ctx):
    ctx.register_hook("pre_tool_call", before_any_tool)
    ctx.register_hook("post_tool_call", after_any_tool)
    ctx.register_hook("on_session_start", on_new_session)
    ctx.register_hook("on_session_end", on_session_end)

Available hooks:

Hook When Arguments
pre_tool_call Before any tool runs tool_name, args, task_id
post_tool_call After any tool returns tool_name, args, result, task_id
pre_llm_call Before LLM API call messages, model
post_llm_call After LLM response messages, response, model
on_session_start Session begins session_id, platform
on_session_end Session ends session_id, platform

Hooks are observers — they can't modify arguments or return values. If a hook crashes, it's logged and skipped; other hooks and the tool continue normally.

Distribute via pip

For sharing plugins publicly, add an entry point to your Python package:

# pyproject.toml
[project.entry-points."hermes_agent.plugins"]
my-plugin = "my_plugin_package"
pip install hermes-plugin-calculator
# Plugin auto-discovered on next hermes startup

Common mistakes

Handler doesn't return JSON string:

# Wrong — returns a dict
def handler(args, **kwargs):
    return {"result": 42}

# Right — returns a JSON string
def handler(args, **kwargs):
    return json.dumps({"result": 42})

Missing **kwargs in handler signature:

# Wrong — will break if Hermes passes extra context
def handler(args):
    ...

# Right
def handler(args, **kwargs):
    ...

Handler raises exceptions:

# Wrong — exception propagates, tool call fails
def handler(args, **kwargs):
    result = 1 / int(args["value"])  # ZeroDivisionError!
    return json.dumps({"result": result})

# Right — catch and return error JSON
def handler(args, **kwargs):
    try:
        result = 1 / int(args.get("value", 0))
        return json.dumps({"result": result})
    except Exception as e:
        return json.dumps({"error": str(e)})

Schema description too vague:

# Bad — model doesn't know when to use it
"description": "Does stuff"

# Good — model knows exactly when and how
"description": "Evaluate a mathematical expression. Use for arithmetic, trig, logarithms. Supports: +, -, *, /, **, sqrt, sin, cos, log, pi, e."