hermes-agent/website/docs/developer-guide/agent-loop.md
Teknium 2d099fed1e
docs: deep audit — registry drift, stale claims, 2-week PR coverage, dashboard screenshot (#40952)
Full-corpus correctness audit of the hand-written docs against the codebase,
plus a 2-week merged-PR coverage sweep and one live dashboard screenshot.

Correctness (verified against COMMAND_REGISTRY / PROVIDER_REGISTRY / TOOLSETS /
tools.registry / DEFAULT_CONFIG / source):
- reference: add /version slash command, context_engine toolset, openai-api +
  novita-ai to --provider; fix tool count 64->71; model_catalog ttl 24->1;
  add profile describe to summary table; add real provider env vars
  (LM_API_KEY/LM_BASE_URL, KIMI_CODING_API_KEY, ALIBABA_CODING_PLAN_*,
  ANTHROPIC_BASE_URL, COPILOT_API_BASE_URL); fix faq "Windows: not natively".
- user-guide: fix broken `hermes -w -q` (->-z) and `hermes logs --tail` (->-f);
  language list 8->16; aux slots 8->11; docker separate-dashboard claim;
  _SECURITY_ARGS -> _BASE_SECURITY_ARGS.
- features: curator prune_builtins truth + missing CLI verbs; codex-runtime aux
  keys (context_compression->compression, vision_detect->vision); kanban
  terminate endpoint + promote/reassign/schedule/diagnostics/edit + per-profile
  cap; mcp mTLS (client_cert/client_key); built-in-plugins nemo_relay +
  teams_pipeline; api-server run approval endpoint; computer-use frontmatter.
- features N-Z + integrations: StepFun step-3-mini->step-3.5-flash; web-search
  backends 4->8; tool-gateway image-model IDs; voice-mode STT/TTS enums; remove
  phantom `rl` toolset; nous-portal status subcommand.
- messaging: WeCom typing/streaming cols; telegram transport default edit->auto;
  sms host default; simplex/ntfy `gateway setup` + pairing approve; line
  smart-chunking; matrix MATRIX_DM_AUTO_THREAD.
- developer-guide: build-a-plugin code examples (register_command signature,
  ContextEngine/ImageGenProvider/MemoryProvider ABCs); model-provider-plugin
  entry-point group hermes.plugins->hermes_agent.plugins; PLUGIN.yaml->plugin.yaml;
  agent-loop stale LOC; web-search-provider phantom crawl().

PR coverage (2-week window, 149 feat PRs):
- desktop.md refreshed for ~15 shipped features (zh-Hans switcher, rebindable
  shortcuts + zoom + Cmd+K, status-bar model picker + YOLO toggle, session-by-id
  + archive, multi-profile concurrent + cross-profile @session, composer history,
  Providers pane, per-profile remote hosts, Grok OAuth, aux-pin warning).
- configuration.md gateway-streaming default corrected to per-platform.
- tool-gateway.md free tool pool entitlement note.

Media:
- New /img/dashboard/admin-config.png — live dashboard Config admin page
  (captured from a clean profile, no secrets/personalization).
2026-06-07 01:39:06 -07:00

239 lines
10 KiB
Markdown

---
sidebar_position: 3
title: "Agent Loop Internals"
description: "Detailed walkthrough of AIAgent execution, API modes, tools, callbacks, and fallback behavior"
---
# Agent Loop Internals
The core orchestration engine is `run_agent.py`'s `AIAgent` class — a large file that handles everything from prompt assembly to tool dispatch to provider failover.
## Core Responsibilities
`AIAgent` is responsible for:
- Assembling the effective system prompt and tool schemas via `prompt_builder.py`
- Selecting the correct provider/API mode (chat_completions, codex_responses, anthropic_messages)
- Making interruptible model calls with cancellation support
- Executing tool calls (sequentially or concurrently via thread pool)
- Maintaining conversation history in OpenAI message format
- Handling compression, retries, and fallback model switching
- Tracking iteration budgets across parent and child agents
- Flushing persistent memory before context is lost
## Two Entry Points
```python
# Simple interface — returns final response string
response = agent.chat("Fix the bug in main.py")
# Full interface — returns dict with messages, metadata, usage stats
result = agent.run_conversation(
user_message="Fix the bug in main.py",
system_message=None, # auto-built if omitted
conversation_history=None, # auto-loaded from session if omitted
task_id="task_abc123"
)
```
`chat()` is a thin wrapper around `run_conversation()` that extracts the `final_response` field from the result dict.
## API Modes
Hermes supports three API execution modes, resolved from provider selection, explicit args, and base URL heuristics:
| API mode | Used for | Client type |
|----------|----------|-------------|
| `chat_completions` | OpenAI-compatible endpoints (OpenRouter, custom, most providers) | `openai.OpenAI` |
| `codex_responses` | OpenAI Codex / Responses API | `openai.OpenAI` with Responses format |
| `anthropic_messages` | Native Anthropic Messages API | `anthropic.Anthropic` via adapter |
The mode determines how messages are formatted, how tool calls are structured, how responses are parsed, and how caching/streaming works. All three converge on the same internal message format (OpenAI-style `role`/`content`/`tool_calls` dicts) before and after API calls.
**Mode resolution order:**
1. Explicit `api_mode` constructor arg (highest priority)
2. Provider-specific detection (e.g., `anthropic` provider → `anthropic_messages`)
3. Base URL heuristics (e.g., `api.anthropic.com``anthropic_messages`)
4. Default: `chat_completions`
## Turn Lifecycle
Each iteration of the agent loop follows this sequence:
```text
run_conversation()
1. Generate task_id if not provided
2. Append user message to conversation history
3. Build or reuse cached system prompt (prompt_builder.py)
4. Check if preflight compression is needed (>50% context)
5. Build API messages from conversation history
- chat_completions: OpenAI format as-is
- codex_responses: convert to Responses API input items
- anthropic_messages: convert via anthropic_adapter.py
6. Inject ephemeral prompt layers (budget warnings, context pressure)
7. Apply prompt caching markers if on Anthropic
8. Make interruptible API call (_interruptible_api_call)
9. Parse response:
- If tool_calls: execute them, append results, loop back to step 5
- If text response: persist session, flush memory if needed, return
```
### Message Format
All messages use OpenAI-compatible format internally:
```python
{"role": "system", "content": "..."}
{"role": "user", "content": "..."}
{"role": "assistant", "content": "...", "tool_calls": [...]}
{"role": "tool", "tool_call_id": "...", "content": "..."}
```
Reasoning content (from models that support extended thinking) is stored in `assistant_msg["reasoning"]` and optionally displayed via the `reasoning_callback`.
### Message Alternation Rules
The agent loop enforces strict message role alternation:
- After the system message: `User → Assistant → User → Assistant → ...`
- During tool calling: `Assistant (with tool_calls) → Tool → Tool → ... → Assistant`
- **Never** two assistant messages in a row
- **Never** two user messages in a row
- **Only** `tool` role can have consecutive entries (parallel tool results)
Providers validate these sequences and will reject malformed histories.
## Interruptible API Calls
API requests are wrapped in `_interruptible_api_call()` which runs the actual HTTP call in a background thread while monitoring an interrupt event:
```text
┌────────────────────────────────────────────────────┐
│ Main thread API thread │
│ │
│ wait on: HTTP POST │
│ - response ready ───▶ to provider │
│ - interrupt event │
│ - timeout │
└────────────────────────────────────────────────────┘
```
When interrupted (user sends new message, `/stop` command, or signal):
- The API thread is abandoned (response discarded)
- The agent can process the new input or shut down cleanly
- No partial response is injected into conversation history
## Tool Execution
### Sequential vs Concurrent
When the model returns tool calls:
- **Single tool call** → executed directly in the main thread
- **Multiple tool calls** → executed concurrently via `ThreadPoolExecutor`
- Exception: tools marked as interactive (e.g., `clarify`) force sequential execution
- Results are reinserted in the original tool call order regardless of completion order
### Execution Flow
```text
for each tool_call in response.tool_calls:
1. Resolve handler from tools/registry.py
2. Fire pre_tool_call plugin hook
3. Check if dangerous command (tools/approval.py)
- If dangerous: invoke approval_callback, wait for user
4. Execute handler with args + task_id
5. Fire post_tool_call plugin hook
6. Append {"role": "tool", "content": result} to history
```
### Agent-Level Tools
Some tools are intercepted by `run_agent.py` *before* reaching `handle_function_call()`:
| Tool | Why intercepted |
|------|--------------------|
| `todo` | Reads/writes agent-local task state |
| `memory` | Writes to persistent memory files with character limits |
| `session_search` | Queries session history via the agent's session DB |
| `delegate_task` | Spawns subagent(s) with isolated context |
These tools modify agent state directly and return synthetic tool results without going through the registry.
## Callback Surfaces
`AIAgent` supports platform-specific callbacks that enable real-time progress in the CLI, gateway, and ACP integrations:
| Callback | When fired | Used by |
|----------|-----------|---------|
| `tool_progress_callback` | Before/after each tool execution | CLI spinner, gateway progress messages |
| `thinking_callback` | When model starts/stops thinking | CLI "thinking..." indicator |
| `reasoning_callback` | When model returns reasoning content | CLI reasoning display, gateway reasoning blocks |
| `clarify_callback` | When `clarify` tool is called | CLI input prompt, gateway interactive message |
| `step_callback` | After each complete agent turn | Gateway step tracking, ACP progress |
| `stream_delta_callback` | Each streaming token (when enabled) | CLI streaming display |
| `tool_gen_callback` | When tool call is parsed from stream | CLI tool preview in spinner |
| `status_callback` | State changes (thinking, executing, etc.) | ACP status updates |
## Budget and Fallback Behavior
### Iteration Budget
The agent tracks iterations via `IterationBudget`:
- Default: 90 iterations (configurable via `agent.max_turns`)
- Each agent gets its own budget. Subagents get independent budgets capped at `delegation.max_iterations` (default 50) — total iterations across parent + subagents can exceed the parent's cap
- At 100%, the agent stops and returns a summary of work done
### Fallback Model
When the primary model fails (429 rate limit, 5xx server error, 401/403 auth error):
1. Check `fallback_providers` list in config
2. Try each fallback in order
3. On success, continue the conversation with the new provider
4. On 401/403, attempt credential refresh before failing over
The fallback system also covers auxiliary tasks independently — vision, compression, and web extraction each have their own fallback chain configurable via the `auxiliary.*` config section.
## Compression and Persistence
### When Compression Triggers
- **Preflight** (before API call): If conversation exceeds 50% of model's context window
- **Gateway auto-compression**: If conversation exceeds 85% (more aggressive, runs between turns)
### What Happens During Compression
1. Memory is flushed to disk first (preventing data loss)
2. Middle conversation turns are summarized into a compact summary
3. The last N messages are preserved intact (`compression.protect_last_n`, default: 20)
4. Tool call/result message pairs are kept together (never split)
5. A new session lineage ID is generated (compression creates a "child" session)
### Session Persistence
After each turn:
- Messages are saved to the session store (SQLite via `hermes_state.py`)
- Memory changes are flushed to `MEMORY.md` / `USER.md`
- The session can be resumed later via `/resume` or `hermes chat --resume`
## Key Source Files
| File | Purpose |
|------|---------|
| `run_agent.py` | AIAgent class — the complete agent loop |
| `agent/prompt_builder.py` | System prompt assembly from memory, skills, context files, personality |
| `agent/context_engine.py` | ContextEngine ABC — pluggable context management |
| `agent/context_compressor.py` | Default engine — lossy summarization algorithm |
| `agent/prompt_caching.py` | Anthropic prompt caching markers and cache metrics |
| `agent/auxiliary_client.py` | Auxiliary LLM client for side tasks (vision, summarization) |
| `model_tools.py` | Tool schema collection, `handle_function_call()` dispatch |
## Related Docs
- [Provider Runtime Resolution](./provider-runtime.md)
- [Prompt Assembly](./prompt-assembly.md)
- [Context Compression & Prompt Caching](./context-compression-and-caching.md)
- [Tools Runtime](./tools-runtime.md)
- [Architecture Overview](./architecture.md)