Teknium 3b6347af15 feat(kanban): default_assignee fallback + per-profile concurrency cap (#27145, #21582) (#34244)
Two related dispatcher behaviors that have been missing for a while.

## kanban.default_assignee (#27145)

Reporter (@agarzon): dashboard creates a task without an assignee, task
parks in 'ready' forever even though the operator's intent ('default')
is perfectly clear. The dispatcher already had a 'skipped_unassigned'
bucket but no fallback routing — users had to manually type 'default'
in the assignee field every time.

Behavior: when 'kanban.default_assignee' is set in config.yaml, the
dispatcher applies that assignee to any unassigned ready task before
deciding whether to spawn. The row is mutated (assignee column + an
'assigned' event with source='kanban.default_assignee' for the audit
trail). Empty/whitespace config value = no fallback, preserving the
existing skipped_unassigned behavior.

Dry-run mode reports what WOULD happen via the new
'auto_assigned_default' bucket on DispatchResult, but does NOT mutate
the DB — operators using 'hermes kanban dispatch --dry-run' see the
routing decision before committing.

## kanban.max_in_progress_per_profile (#21582)

Reporter (@edwardchenchen, @simlu, 4 reactions): fan-out workloads
saturate one profile's local model / API quota / browser pool while
other profiles sit idle. The existing global 'max_in_progress' caps
total workers but doesn't balance across profiles.

Behavior: when 'kanban.max_in_progress_per_profile' is set to a
positive int, the dispatcher tracks per-assignee running counts (one
query at tick start) and refuses to spawn for any assignee already at
the cap. Tasks blocked this way go to a new
'skipped_per_profile_capped' bucket on DispatchResult as
(task_id, assignee, current_running_count) tuples — NOT an
operator-actionable failure, just 'try again next tick when the
profile has capacity'.

Pre-existing 'running' tasks count against the cap (verified via
regression test). The cap respects dry_run mode by incrementing
its in-memory counter on each would-be spawn so dry_run reports
the same balanced subset that a real tick would.

Invalid cap values (0, negative, non-int, None) are treated as 'no
cap', preserving the existing behavior. Backward-compatible for
installs that don't set the config.

## Surfaces

- 'hermes kanban dispatch' CLI now prints 'Auto-assigned to
  kanban.default_assignee=X: ...' and 'Deferred (X at per-profile cap,
  N running): ...' lines, plus matching JSON keys in --json output.
- Gateway dispatcher logs the configured values at startup
  ('default_assignee=X', 'max_in_progress_per_profile=N').
- 'kanban.max_in_progress_per_profile' added to DEFAULT_CONFIG with
  inline docs.

## Validation

- tests/hermes_cli/test_kanban_default_assignee.py (6 cases): no-cap
  baseline, auto-assign + DB mutation, dry-run reports without
  mutating, whitespace treated as None, explicit assignees untouched,
  DispatchResult field schema.
- tests/hermes_cli/test_kanban_per_profile_cap.py (9 cases including
  4 parametrized): no-cap baseline, balanced 2-profile fan-out,
  pre-existing running counts against cap, invalid cap values
  (0/-1/'abc'/None), capped tasks dispatched on next tick after
  running task completes, DispatchResult field schema.
- Broader kanban suite: 464/464 pass (was 449 baseline; +15 new
  regression tests across both features).

## Credit

#27145 — Jimmy Johansson reported the dispatcher skipped-unassigned
gap; @agarzon scoped the simpler 'honor kanban.default_assignee' fix
that matches the existing config knob.
#21582 — @edwardchenchen filed the per-profile cap ask after hitting
model 429s on fan-out research projects; @simlu confirmed the same
pain on local-model setups.
2026-05-28 19:02:55 -07:00
2026-02-25 11:53:44 -08:00
2026-05-29 02:16:43 +05:30
2026-05-26 20:51:59 -07:00
2026-04-10 00:46:37 -04:00
2026-04-11 15:30:37 -04:00
2026-03-07 13:43:08 -08:00
2026-05-05 22:45:12 -04:00

Hermes Agent

Hermes Agent ☤

Documentation Discord License: MIT Built by Nous Research 中文

The self-improving AI agent built by Nous Research. It's the only agent with a built-in learning loop — it creates skills from experience, improves them during use, nudges itself to persist knowledge, searches its own past conversations, and builds a deepening model of who you are across sessions. Run it on a $5 VPS, a GPU cluster, or serverless infrastructure that costs nearly nothing when idle. It's not tied to your laptop — talk to it from Telegram while it works on a cloud VM.

Use any model you want — Nous Portal, OpenRouter (200+ models), NovitaAI (AI-native cloud for Model API, Agent Sandbox, and GPU Cloud), NVIDIA NIM (Nemotron), Xiaomi MiMo, z.ai/GLM, Kimi/Moonshot, MiniMax, Hugging Face, OpenAI, or your own endpoint. Switch with hermes model — no code changes, no lock-in.

A real terminal interfaceFull TUI with multiline editing, slash-command autocomplete, conversation history, interrupt-and-redirect, and streaming tool output.
Lives where you doTelegram, Discord, Slack, WhatsApp, Signal, and CLI — all from a single gateway process. Voice memo transcription, cross-platform conversation continuity.
A closed learning loopAgent-curated memory with periodic nudges. Autonomous skill creation after complex tasks. Skills self-improve during use. FTS5 session search with LLM summarization for cross-session recall. Honcho dialectic user modeling. Compatible with the agentskills.io open standard.
Scheduled automationsBuilt-in cron scheduler with delivery to any platform. Daily reports, nightly backups, weekly audits — all in natural language, running unattended.
Delegates and parallelizesSpawn isolated subagents for parallel workstreams. Write Python scripts that call tools via RPC, collapsing multi-step pipelines into zero-context-cost turns.
Runs anywhere, not just your laptopSix terminal backends — local, Docker, SSH, Singularity, Modal, and Daytona. Daytona and Modal offer serverless persistence — your agent's environment hibernates when idle and wakes on demand, costing nearly nothing between sessions. Run it on a $5 VPS or a GPU cluster.
Research-readyBatch trajectory generation, trajectory compression for training the next generation of tool-calling models.

Quick Install

Linux, macOS, WSL2, Termux

curl -fsSL https://raw.githubusercontent.com/NousResearch/hermes-agent/main/scripts/install.sh | bash

Windows (native, PowerShell) — Early Beta

Heads up: Native Windows support is early beta. It installs and runs, but hasn't been road-tested as broadly as our Linux/macOS/WSL2 paths. Please file issues when you hit rough edges. For the most battle-tested Windows setup today, run the Linux/macOS one-liner above inside WSL2.

Run this in PowerShell:

iex (irm https://raw.githubusercontent.com/NousResearch/hermes-agent/main/scripts/install.ps1)

The installer handles everything: uv, Python 3.11, Node.js, ripgrep, ffmpeg, and a portable Git Bash (MinGit, unpacked to %LOCALAPPDATA%\hermes\git — no admin required, completely isolated from any system Git install). Hermes uses this bundled Git Bash to run shell commands.

If you already have Git installed, the installer detects it and uses that instead. Otherwise a ~45MB MinGit download is all you need — it won't touch or interfere with any system Git.

Android / Termux: The tested manual path is documented in the Termux guide. On Termux, Hermes installs a curated .[termux] extra because the full .[all] extra currently pulls Android-incompatible voice dependencies.

Windows: Native Windows is supported as an early beta — the PowerShell one-liner above installs everything, but expect rough edges and please file issues when you hit them. If you'd rather use WSL2 (our most battle-tested Windows path), the Linux command works there too. Native Windows install lives under %LOCALAPPDATA%\hermes; WSL2 installs under ~/.hermes as on Linux. The only Hermes feature that currently needs WSL2 specifically is the browser-based dashboard chat pane (it uses a POSIX PTY — classic CLI and gateway both run natively).

After installation:

source ~/.bashrc    # reload shell (or: source ~/.zshrc)
hermes              # start chatting!

Getting Started

hermes              # Interactive CLI — start a conversation
hermes model        # Choose your LLM provider and model
hermes tools        # Configure which tools are enabled
hermes config set   # Set individual config values
hermes gateway      # Start the messaging gateway (Telegram, Discord, etc.)
hermes setup        # Run the full setup wizard (configures everything at once)
hermes claw migrate # Migrate from OpenClaw (if coming from OpenClaw)
hermes update       # Update to the latest version
hermes doctor       # Diagnose any issues

📖 Full documentation →


Skip the API-key collection — Nous Portal

Hermes works with whatever provider you want — that's not changing. But if you'd rather not collect five separate API keys for the model, web search, image generation, TTS, and a cloud browser, Nous Portal covers all of them under one subscription:

  • 300+ models — pick any of them with /model <name>
  • Tool Gateway — web search (Firecrawl), image generation (FAL), text-to-speech (OpenAI), cloud browser (Browser Use), all routed through your sub. No extra accounts.

One command from a fresh install:

hermes setup --portal

That logs you in via OAuth, sets Nous as your provider, and turns on the Tool Gateway. Check what's wired up any time with hermes portal status. Full details on the Tool Gateway docs page.

You can still bring your own keys per-tool whenever you want — the gateway is per-backend, not all-or-nothing.


CLI vs Messaging Quick Reference

Hermes has two entry points: start the terminal UI with hermes, or run the gateway and talk to it from Telegram, Discord, Slack, WhatsApp, Signal, or Email. Once you're in a conversation, many slash commands are shared across both interfaces.

Action CLI Messaging platforms
Start chatting hermes Run hermes gateway setup + hermes gateway start, then send the bot a message
Start fresh conversation /new or /reset /new or /reset
Change model /model [provider:model] /model [provider:model]
Set a personality /personality [name] /personality [name]
Retry or undo the last turn /retry, /undo /retry, /undo
Compress context / check usage /compress, /usage, /insights [--days N] /compress, /usage, /insights [days]
Browse skills /skills or /<skill-name> /<skill-name>
Interrupt current work Ctrl+C or send a new message /stop or send a new message
Platform-specific status /platforms /status, /sethome

For the full command lists, see the CLI guide and the Messaging Gateway guide.


Documentation

All documentation lives at hermes-agent.nousresearch.com/docs:

Section What's Covered
Quickstart Install → setup → first conversation in 2 minutes
CLI Usage Commands, keybindings, personalities, sessions
Configuration Config file, providers, models, all options
Messaging Gateway Telegram, Discord, Slack, WhatsApp, Signal, Home Assistant
Security Command approval, DM pairing, container isolation
Tools & Toolsets 40+ tools, toolset system, terminal backends
Skills System Procedural memory, Skills Hub, creating skills
Memory Persistent memory, user profiles, best practices
MCP Integration Connect any MCP server for extended capabilities
Cron Scheduling Scheduled tasks with platform delivery
Context Files Project context that shapes every conversation
Architecture Project structure, agent loop, key classes
Contributing Development setup, PR process, code style
CLI Reference All commands and flags
Environment Variables Complete env var reference

Migrating from OpenClaw

If you're coming from OpenClaw, Hermes can automatically import your settings, memories, skills, and API keys.

During first-time setup: The setup wizard (hermes setup) automatically detects ~/.openclaw and offers to migrate before configuration begins.

Anytime after install:

hermes claw migrate              # Interactive migration (full preset)
hermes claw migrate --dry-run    # Preview what would be migrated
hermes claw migrate --preset user-data   # Migrate without secrets
hermes claw migrate --overwrite  # Overwrite existing conflicts

What gets imported:

  • SOUL.md — persona file
  • Memories — MEMORY.md and USER.md entries
  • Skills — user-created skills → ~/.hermes/skills/openclaw-imports/
  • Command allowlist — approval patterns
  • Messaging settings — platform configs, allowed users, working directory
  • API keys — allowlisted secrets (Telegram, OpenRouter, OpenAI, Anthropic, ElevenLabs)
  • TTS assets — workspace audio files
  • Workspace instructions — AGENTS.md (with --workspace-target)

See hermes claw migrate --help for all options, or use the openclaw-migration skill for an interactive agent-guided migration with dry-run previews.


Contributing

We welcome contributions! See the Contributing Guide for development setup, code style, and PR process.

Quick start for contributors — clone and go with setup-hermes.sh:

git clone https://github.com/NousResearch/hermes-agent.git
cd hermes-agent
./setup-hermes.sh     # installs uv, creates venv, installs .[all], symlinks ~/.local/bin/hermes
./hermes              # auto-detects the venv, no need to `source` first

Manual path (equivalent to the above):

curl -LsSf https://astral.sh/uv/install.sh | sh
uv venv .venv --python 3.11
source .venv/bin/activate
uv pip install -e ".[all,dev]"
scripts/run_tests.sh

Community

  • 💬 Discord
  • 📚 Skills Hub
  • 🐛 Issues
  • 🔌 computer-use-linux — Linux desktop-control MCP server for Hermes and other MCP hosts, with AT-SPI accessibility trees, Wayland/X11 input, screenshots, and compositor window targeting.
  • 🔌 HermesClaw — Community WeChat bridge: Run Hermes Agent and OpenClaw on the same WeChat account.

License

MIT — see LICENSE.

Built by Nous Research.

Description
hermes-agent fork with local patches
Readme MIT 3.2 GiB
Languages
Python 89.2%
TypeScript 8.2%
TeX 1%
Shell 0.5%
PowerShell 0.3%
Other 0.6%