Major changes across 20 documentation pages: Staleness fixes: - Fix FAQ: wrong import path (hermes.agent → run_agent) - Fix FAQ: stale Gemini 2.0 model → Gemini 3 Flash - Fix integrations/index: missing MiniMax TTS provider - Fix integrations/index: web_crawl is not a registered tool - Fix sessions: add all 19 session sources (was only 5) - Fix cron: add all 18 delivery targets (was only telegram/discord) - Fix webhooks: add all delivery targets - Fix overview: add missing MCP, memory providers, credential pools - Fix all line-number references → use function name searches instead - Update file size estimates (run_agent ~9200, gateway ~7200, cli ~8500) Expanded thin pages (< 150 lines → substantial depth): - honcho.md: 43 → 108 lines — added feature comparison, tools, config, CLI - overview.md: 49 → 55 lines — added MCP, memory providers, credential pools - toolsets-reference.md: 57 → 175 lines — added explanations, config examples, custom toolsets, wildcards, platform differences table - optional-skills-catalog.md: 74 → 153 lines — added 25+ missing skills across communication, devops, mlops (18!), productivity, research categories - integrations/index.md: 82 → 115 lines — added messaging, HA, plugins sections - cron-internals.md: 90 → 195 lines — added job JSON example, lifecycle states, tick cycle, delivery targets, script-backed jobs, CLI interface - gateway-internals.md: 111 → 250 lines — added architecture diagram, message flow, two-level guard, platform adapters, token locks, process management - agent-loop.md: 112 → 235 lines — added entry points, API mode resolution, turn lifecycle detail, message alternation rules, tool execution flow, callback table, budget tracking, compression details - architecture.md: 152 → 295 lines — added system overview diagram, data flow diagrams, design principles table, dependency chain Other depth additions: - context-references.md: added platform availability, compression interaction, common patterns sections - slash-commands.md: added quick commands config example, alias resolution - image-generation.md: added platform delivery table - tools-reference.md: added tool counts, MCP tools note - index.md: updated platform count (5 → 14+), tool count (40+ → 47)
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Trajectory Format
Hermes Agent saves conversation trajectories in ShareGPT-compatible JSONL format for use as training data, debugging artifacts, and reinforcement learning datasets.
Source files: agent/trajectory.py, run_agent.py (search for _save_trajectory), batch_runner.py
File Naming Convention
Trajectories are written to files in the current working directory:
| File | When |
|---|---|
trajectory_samples.jsonl |
Conversations that completed successfully (completed=True) |
failed_trajectories.jsonl |
Conversations that failed or were interrupted (completed=False) |
The batch runner (batch_runner.py) writes to a custom output file per batch
(e.g., batch_001_output.jsonl) with additional metadata fields.
You can override the filename via the filename parameter in save_trajectory().
JSONL Entry Format
Each line in the file is a self-contained JSON object. There are two variants:
CLI/Interactive Format (from _save_trajectory)
{
"conversations": [ ... ],
"timestamp": "2026-03-30T14:22:31.456789",
"model": "anthropic/claude-sonnet-4.6",
"completed": true
}
Batch Runner Format (from batch_runner.py)
{
"prompt_index": 42,
"conversations": [ ... ],
"metadata": { "prompt_source": "gsm8k", "difficulty": "hard" },
"completed": true,
"partial": false,
"api_calls": 7,
"toolsets_used": ["code_tools", "file_tools"],
"tool_stats": {
"terminal": {"count": 3, "success": 3, "failure": 0},
"read_file": {"count": 2, "success": 2, "failure": 0},
"write_file": {"count": 0, "success": 0, "failure": 0}
},
"tool_error_counts": {
"terminal": 0,
"read_file": 0,
"write_file": 0
}
}
The tool_stats and tool_error_counts dictionaries are normalized to include
ALL possible tools (from model_tools.TOOL_TO_TOOLSET_MAP) with zero defaults,
ensuring consistent schema across entries for HuggingFace dataset loading.
Conversations Array (ShareGPT Format)
The conversations array uses ShareGPT role conventions:
| API Role | ShareGPT from |
|---|---|
| system | "system" |
| user | "human" |
| assistant | "gpt" |
| tool | "tool" |
Complete Example
{
"conversations": [
{
"from": "system",
"value": "You are a function calling AI model. You are provided with function signatures within <tools> </tools> XML tags. You may call one or more functions to assist with the user query. If available tools are not relevant in assisting with user query, just respond in natural conversational language. Don't make assumptions about what values to plug into functions. After calling & executing the functions, you will be provided with function results within <tool_response> </tool_response> XML tags. Here are the available tools:\n<tools>\n[{\"name\": \"terminal\", \"description\": \"Execute shell commands\", \"parameters\": {\"type\": \"object\", \"properties\": {\"command\": {\"type\": \"string\"}}}, \"required\": null}]\n</tools>\nFor each function call return a JSON object, with the following pydantic model json schema for each:\n{'title': 'FunctionCall', 'type': 'object', 'properties': {'name': {'title': 'Name', 'type': 'string'}, 'arguments': {'title': 'Arguments', 'type': 'object'}}, 'required': ['name', 'arguments']}\nEach function call should be enclosed within <tool_call> </tool_call> XML tags.\nExample:\n<tool_call>\n{'name': <function-name>,'arguments': <args-dict>}\n</tool_call>"
},
{
"from": "human",
"value": "What Python version is installed?"
},
{
"from": "gpt",
"value": "<think>\nThe user wants to know the Python version. I should run python3 --version.\n</think>\n<tool_call>\n{\"name\": \"terminal\", \"arguments\": {\"command\": \"python3 --version\"}}\n</tool_call>"
},
{
"from": "tool",
"value": "<tool_response>\n{\"tool_call_id\": \"call_abc123\", \"name\": \"terminal\", \"content\": \"Python 3.11.6\"}\n</tool_response>"
},
{
"from": "gpt",
"value": "<think>\nGot the version. I can now answer the user.\n</think>\nPython 3.11.6 is installed on this system."
}
],
"timestamp": "2026-03-30T14:22:31.456789",
"model": "anthropic/claude-sonnet-4.6",
"completed": true
}
Normalization Rules
Reasoning Content Markup
The trajectory converter normalizes ALL reasoning into <think> tags, regardless
of how the model originally produced it:
-
Native thinking tokens (
msg["reasoning"]field from providers like Anthropic, OpenAI o-series): Wrapped as<think>\n{reasoning}\n</think>\nand prepended before the content. -
REASONING_SCRATCHPAD XML (when native thinking is disabled and the model reasons via system-prompt-instructed XML):
<REASONING_SCRATCHPAD>tags are converted to<think>viaconvert_scratchpad_to_think(). -
Empty think blocks: Every
gptturn is guaranteed to have a<think>block. If no reasoning was produced, an empty block is inserted:<think>\n</think>\n— this ensures consistent format for training data.
Tool Call Normalization
Tool calls from the API format (with tool_call_id, function name, arguments as
JSON string) are converted to XML-wrapped JSON:
<tool_call>
{"name": "terminal", "arguments": {"command": "ls -la"}}
</tool_call>
- Arguments are parsed from JSON strings back to objects (not double-encoded)
- If JSON parsing fails (shouldn't happen — validated during conversation),
an empty
{}is used with a warning logged - Multiple tool calls in one assistant turn produce multiple
<tool_call>blocks in a singlegptmessage
Tool Response Normalization
All tool results following an assistant message are grouped into a single tool
turn with XML-wrapped JSON responses:
<tool_response>
{"tool_call_id": "call_abc123", "name": "terminal", "content": "output here"}
</tool_response>
- If tool content looks like JSON (starts with
{or[), it's parsed so the content field contains a JSON object/array rather than a string - Multiple tool results are joined with newlines in one message
- The tool name is matched by position against the parent assistant's
tool_callsarray
System Message
The system message is generated at save time (not taken from the conversation). It follows the Hermes function-calling prompt template with:
- Preamble explaining the function-calling protocol
<tools>XML block containing the JSON tool definitions- Schema reference for
FunctionCallobjects <tool_call>example
Tool definitions include name, description, parameters, and required
(set to null to match the canonical format).
Loading Trajectories
Trajectories are standard JSONL — load with any JSON-lines reader:
import json
def load_trajectories(path: str):
"""Load trajectory entries from a JSONL file."""
entries = []
with open(path, "r", encoding="utf-8") as f:
for line in f:
line = line.strip()
if line:
entries.append(json.loads(line))
return entries
# Filter to successful completions only
successful = [e for e in load_trajectories("trajectory_samples.jsonl")
if e.get("completed")]
# Extract just the conversations for training
training_data = [e["conversations"] for e in successful]
Loading for HuggingFace Datasets
from datasets import load_dataset
ds = load_dataset("json", data_files="trajectory_samples.jsonl")
The normalized tool_stats schema ensures all entries have the same columns,
preventing Arrow schema mismatch errors during dataset loading.
Controlling Trajectory Saving
In the CLI, trajectory saving is controlled by:
# config.yaml
agent:
save_trajectories: true # default: false
Or via the --save-trajectories flag. When the agent initializes with
save_trajectories=True, the _save_trajectory() method is called at the end
of each conversation turn.
The batch runner always saves trajectories (that's its primary purpose).
Samples with zero reasoning across all turns are automatically discarded by the batch runner to avoid polluting training data with non-reasoning examples.