hermes-agent/website/docs/developer-guide/provider-runtime.md
Teknium febc4cfec0
remove Vercel AI Gateway and Vercel Sandbox (#33067)
* remove Vercel AI Gateway provider and Vercel Sandbox terminal backend

Both Vercel-hosted integrations are removed end-to-end. Users on the AI
Gateway should switch to OpenRouter or one of the other aggregators
(Nous Portal, Kilo Code). Users on the Vercel Sandbox backend should
switch to Docker, Modal, Daytona, or SSH.

What's removed:
- `plugins/model-providers/ai-gateway/` provider plugin
- `hermes_cli/vercel_auth.py` Vercel-Sandbox auth helper
- `tools/environments/vercel_sandbox.py` terminal backend
- `ai-gateway` provider wiring across auth, doctor, setup, models,
  config, status, providers, main, web_server, model_normalize, dump
- `vercel_sandbox` backend wiring across terminal_tool, file_tools,
  code_execution_tool, file_operations, approval, skills_tool,
  environments/local, credential_files, lazy_deps, prompt_builder,
  cli, gateway/run
- `AI_GATEWAY_BASE_URL` constant, `_AI_GATEWAY_HEADERS` auxiliary-client
  header set, run_agent base-URL header/reasoning special-cases
- `[vercel]` pyproject extra and `vercel`/`vercel-workers` from uv.lock
- env vars: `AI_GATEWAY_API_KEY`, `AI_GATEWAY_BASE_URL`, `VERCEL_TOKEN`,
  `VERCEL_PROJECT_ID`, `VERCEL_TEAM_ID`, `VERCEL_OIDC_TOKEN`,
  `TERMINAL_VERCEL_RUNTIME`
- Tests: deletes test_ai_gateway_models.py and
  test_vercel_sandbox_environment.py; scrubs references across 23
  surviving test files (no entire tests deleted unless they were
  dedicated to AI Gateway / Sandbox)
- Docs: provider tables, env-var reference, setup guides, security
  notes, tool config, terminal-backend tables — English plus zh-Hans
  i18n parity
- `hermes-agent` skill: provider table entry and remote-backend list

What stays (intentional):
- `popular-web-designs/templates/vercel.md` — CSS design reference,
  unrelated to Vercel-the-AI-product
- `x-vercel-id` in `stream_diag.py` headers — generic Vercel CDN
  response header, useful diag signal on any Vercel-hosted endpoint
- `vercel-labs/agent-browser` URL in browser config — lightpanda
  browser project, different OSS effort
- `userStories.json` historical contributor entry mentioning Vercel
  Sandbox — archive, not active docs

Validation:
- 1153 tests in the 22 targeted files pass (`scripts/run_tests.sh`)
- Full repo `py_compile` clean
- Live import of every touched module + invariant check (no
  `ai-gateway` in `PROVIDER_REGISTRY`, no `_AI_GATEWAY_HEADERS`, no
  `vercel_sandbox` in `_REMOTE_TERMINAL_BACKENDS`)

* test: convert profile-count check from change-detector to invariant

The hardcoded "== 34" assertion broke when ai-gateway was removed.
Per AGENTS.md change-detector-test guidance, assert the relationship
(registry count >= number of plugin dirs) instead of a literal count.
Counts shift when providers are added/removed; that's expected.
2026-05-27 00:43:32 -07:00

8.4 KiB

sidebar_position title description
4 Provider Runtime Resolution How Hermes resolves providers, credentials, API modes, and auxiliary models at runtime

Provider Runtime Resolution

Hermes has a shared provider runtime resolver used across:

  • CLI
  • gateway
  • cron jobs
  • ACP
  • auxiliary model calls

Primary implementation:

  • hermes_cli/runtime_provider.py — credential resolution, _resolve_custom_runtime()
  • hermes_cli/auth.py — provider registry, resolve_provider()
  • hermes_cli/model_switch.py — shared /model switch pipeline (CLI + gateway)
  • agent/auxiliary_client.py — auxiliary model routing
  • providers/ — ABC + registry entry points (ProviderProfile, register_provider, get_provider_profile, list_providers)
  • plugins/model-providers/<name>/ — per-provider plugins (bundled) that declare api_mode, base_url, env_vars, fallback_models and register themselves into the registry on first access. User plugins at $HERMES_HOME/plugins/model-providers/<name>/ override bundled ones of the same name.

get_provider_profile() in providers/ returns a ProviderProfile for a given provider id. runtime_provider.py calls this at resolution time to get the canonical base_url, env_vars priority list, api_mode, and fallback_models without needing to duplicate that data in multiple files. Adding a new plugin under plugins/model-providers/<your-provider>/ (or $HERMES_HOME/plugins/model-providers/<your-provider>/) that calls register_provider() is enough for runtime_provider.py to pick it up — no branch needed in the resolver itself.

If you are trying to add a new first-class inference provider, read Adding Providers and the Model Provider Plugin guide alongside this page.

Resolution precedence

At a high level, provider resolution uses:

  1. explicit CLI/runtime request
  2. config.yaml model/provider config
  3. environment variables
  4. provider-specific defaults or auto resolution

That ordering matters because Hermes treats the saved model/provider choice as the source of truth for normal runs. This prevents a stale shell export from silently overriding the endpoint a user last selected in hermes model.

Providers

Current provider families include (see plugins/model-providers/ for the complete bundled set):

  • OpenRouter
  • Nous Portal
  • OpenAI Codex
  • Copilot / Copilot ACP
  • Anthropic (native)
  • Google / Gemini (gemini, google-gemini-cli)
  • Alibaba / DashScope (alibaba, alibaba-coding-plan)
  • DeepSeek
  • Z.AI
  • Kimi / Moonshot (kimi-coding, kimi-coding-cn)
  • MiniMax (minimax, minimax-cn, minimax-oauth)
  • Kilo Code
  • Hugging Face
  • OpenCode Zen / OpenCode Go
  • AWS Bedrock
  • Azure Foundry
  • NVIDIA NIM
  • xAI (Grok)
  • Arcee
  • GMI Cloud
  • StepFun
  • Qwen OAuth
  • Xiaomi
  • Ollama Cloud
  • LM Studio
  • Tencent TokenHub
  • Custom (provider: custom) — first-class provider for any OpenAI-compatible endpoint
  • Named custom providers (custom_providers list in config.yaml)

Output of runtime resolution

The runtime resolver returns data such as:

  • provider
  • api_mode
  • base_url
  • api_key
  • source
  • provider-specific metadata like expiry/refresh info

Why this matters

This resolver is the main reason Hermes can share auth/runtime logic between:

  • hermes chat
  • gateway message handling
  • cron jobs running in fresh sessions
  • ACP editor sessions
  • auxiliary model tasks

OpenRouter and custom OpenAI-compatible base URLs

Hermes contains logic to avoid leaking the wrong API key to a custom endpoint when multiple provider keys exist (e.g. OPENROUTER_API_KEY and OPENAI_API_KEY).

Each provider's API key is scoped to its own base URL:

  • OPENROUTER_API_KEY is only sent to openrouter.ai endpoints
  • OPENAI_API_KEY is used for custom endpoints and as a fallback

Hermes also distinguishes between:

  • a real custom endpoint selected by the user
  • the OpenRouter fallback path used when no custom endpoint is configured

That distinction is especially important for:

  • local model servers
  • non-OpenRouter OpenAI-compatible APIs
  • switching providers without re-running setup
  • config-saved custom endpoints that should keep working even when OPENAI_BASE_URL is not exported in the current shell

Native Anthropic path

Anthropic is not just "via OpenRouter" anymore.

When provider resolution selects anthropic, Hermes uses:

  • api_mode = anthropic_messages
  • the native Anthropic Messages API
  • agent/anthropic_adapter.py for translation

Credential resolution for native Anthropic now prefers refreshable Claude Code credentials over copied env tokens when both are present. In practice that means:

  • Claude Code credential files are treated as the preferred source when they include refreshable auth
  • manual ANTHROPIC_TOKEN / CLAUDE_CODE_OAUTH_TOKEN values still work as explicit overrides
  • Hermes preflights Anthropic credential refresh before native Messages API calls
  • Hermes still retries once on a 401 after rebuilding the Anthropic client, as a fallback path

OpenAI Codex path

Codex uses a separate Responses API path:

  • api_mode = codex_responses
  • dedicated credential resolution and auth store support

Auxiliary model routing

Auxiliary tasks such as:

  • vision
  • web extraction summarization
  • context compression summaries
  • skills hub operations
  • MCP helper operations
  • memory flushes

can use their own provider/model routing rather than the main conversational model.

When an auxiliary task is configured with provider main, Hermes resolves that through the same shared runtime path as normal chat. In practice that means:

  • env-driven custom endpoints still work
  • custom endpoints saved via hermes model / config.yaml also work
  • auxiliary routing can tell the difference between a real saved custom endpoint and the OpenRouter fallback

Fallback models

Hermes supports a configured fallback provider chain — a list of (provider, model) entries tried in order when the primary model encounters errors. The legacy single-pair fallback_model dict is still accepted for back-compat (and migrated on first write).

How it works internally

  1. Storage: AIAgent.__init__ stores the fallback_model dict and sets _fallback_activated = False.

  2. Trigger points: _try_activate_fallback() is called from three places in the main retry loop in run_agent.py:

    • After max retries on invalid API responses (None choices, missing content)
    • On non-retryable client errors (HTTP 401, 403, 404)
    • After max retries on transient errors (HTTP 429, 500, 502, 503)
  3. Activation flow (_try_activate_fallback):

    • Returns False immediately if already activated or not configured
    • Calls resolve_provider_client() from auxiliary_client.py to build a new client with proper auth
    • Determines api_mode: codex_responses for openai-codex, anthropic_messages for anthropic, chat_completions for everything else
    • Swaps in-place: self.model, self.provider, self.base_url, self.api_mode, self.client, self._client_kwargs
    • For anthropic fallback: builds a native Anthropic client instead of OpenAI-compatible
    • Re-evaluates prompt caching (enabled for Claude models on OpenRouter)
    • Sets _fallback_activated = True — prevents firing again
    • Resets retry count to 0 and continues the loop
  4. Config flow:

    • CLI: cli.py reads CLI_CONFIG["fallback_model"] → passes to AIAgent(fallback_model=...)
    • Gateway: gateway/run.py._load_fallback_model() reads config.yaml → passes to AIAgent
    • Validation: both provider and model keys must be non-empty, or fallback is disabled

What does NOT support fallback

  • Subagent delegation (tools/delegate_tool.py): subagents inherit the parent's provider but not the fallback config
  • Auxiliary tasks: use their own independent provider auto-detection chain (see Auxiliary model routing above)

Cron jobs do support fallback: run_job() reads fallback_providers (or legacy fallback_model) from config.yaml and passes it to AIAgent(fallback_model=...), matching the gateway's _load_fallback_model() pattern. See Cron Internals.

Test coverage

See tests/test_fallback_model.py for comprehensive tests covering all supported providers, one-shot semantics, and edge cases.