--- sidebar_position: 15 title: "Google Vertex AI" description: "Use Hermes Agent with Gemini on Google Cloud Vertex AI — OAuth2 service account or ADC, GCP billing and quotas, no static API key" --- # Google Vertex AI Hermes Agent supports **Gemini models on Google Cloud Vertex AI** through Vertex's OpenAI-compatible endpoint. Unlike the [Google AI Studio provider](/guides/google-gemini) (which uses a static API key against `generativelanguage.googleapis.com`), Vertex gives you **enterprise-grade rate limits and GCP billing/credits**, and is the right choice when you want Gemini usage to draw on your Google Cloud account rather than an AI Studio key. :::info Vertex authenticates with OAuth2, not an API key Vertex has **no static API key** for the standard endpoint. Every request needs a short-lived **OAuth2 access token** (≈1 hour TTL) minted from either a service-account JSON or Application Default Credentials (ADC). Hermes mints and **auto-refreshes** these tokens for you — you never paste a token by hand. This is why pasting a temporary token into a custom provider's `api_key` field does not work: it expires mid-session. ::: ## Prerequisites - **A Google Cloud project** with the **Vertex AI API enabled** and billing active. - **Credentials**, one of: - a **service-account JSON** key file with the `roles/aiplatform.user` role, or - **Application Default Credentials** via `gcloud auth application-default login` (or the metadata server when running on a GCP VM). - **`google-auth`** — installed automatically the first time you select Vertex (lazy install), or explicitly with `pip install 'hermes-agent[vertex]'`. ## Quick Start ```bash # Option A — service account JSON (recommended for servers / gateways) echo "VERTEX_CREDENTIALS_PATH=/path/to/service-account.json" >> ~/.hermes/.env # Option B — Application Default Credentials (good for local dev) gcloud auth application-default login # Select Vertex as your provider hermes model # → Choose "More providers..." → "Google Vertex AI" # → Enter your GCP project ID (or leave blank to use the one in your credentials) # → Choose a region (default: global) # → Select a Gemini model # Start chatting hermes chat ``` ## Configuration Vertex splits its settings by sensitivity: - The **credential path** is a pointer to a secret and lives in `~/.hermes/.env`. - **Project ID and region** are non-secret routing settings and live in `~/.hermes/config.yaml`. `~/.hermes/.env`: ```bash # One of these (checked in this order); omit both to use ADC: VERTEX_CREDENTIALS_PATH=/path/to/service-account.json GOOGLE_APPLICATION_CREDENTIALS=/path/to/service-account.json ``` `~/.hermes/config.yaml`: ```yaml model: default: google/gemini-3-flash-preview provider: vertex vertex: project_id: my-gcp-project # blank → use the project embedded in the credentials region: global # "global" is required for the Gemini 3.x previews ``` :::tip Environment variables win over config.yaml `VERTEX_PROJECT_ID` and `VERTEX_REGION` override the `vertex.project_id` / `vertex.region` values in `config.yaml`. Use them for per-shell overrides; keep the durable settings in `config.yaml`. ::: ### How authentication works 1. Hermes resolves credentials in this order: `VERTEX_CREDENTIALS_PATH` → `GOOGLE_APPLICATION_CREDENTIALS` → ADC. 2. It mints an OAuth2 access token (`cloud-platform` scope) and caches it, refreshing when the token is within 5 minutes of expiry. 3. The token is handed to a standard OpenAI client pointed at the Vertex endpoint: ```text https://aiplatform.googleapis.com/v1beta1/projects/{project}/locations/{region}/endpoints/openapi ``` Regional locations use a `{region}-aiplatform.googleapis.com` host instead. 4. If a session runs longer than the token lifetime and a request returns `401`, Hermes re-mints the token and retries automatically. On a long-running gateway, if ADC's refresh token has itself expired, Hermes falls back to the service-account JSON when one is configured. ## Available Models Vertex requires the `google/` vendor prefix on model IDs. The `hermes model` picker offers: | Model | ID | |-------|----| | Gemini 3.1 Pro Preview | `google/gemini-3.1-pro-preview` | | Gemini 3 Pro Preview | `google/gemini-3-pro-preview` | | Gemini 3 Flash Preview | `google/gemini-3-flash-preview` | | Gemini 3.1 Flash Lite Preview | `google/gemini-3.1-flash-lite-preview` | | Gemini 2.5 Pro | `google/gemini-2.5-pro` | | Gemini 2.5 Flash | `google/gemini-2.5-flash` | :::note `global` region for Gemini 3.x The Gemini 3.x preview models are served through the `global` endpoint. Regional endpoints (`us-central1`, etc.) may 404 them. Leave `region: global` unless you have a specific reason to pin a region. ::: ## Switching Models Mid-Session ```text /model google/gemini-3-pro-preview /model google/gemini-3-flash-preview ``` `/model` switches among already-configured providers and models; it does not collect new credentials. Configure Vertex with `hermes model` first. ## Reasoning / Thinking Vertex exposes Gemini's thinking budget through the OpenAI-compatible surface. Hermes maps its reasoning-effort setting onto `extra_body.google.thinking_config` automatically, so `reasoning_effort` works the same way it does on other Gemini surfaces. ## Diagnostics ```bash hermes doctor ``` The doctor reports whether Vertex credentials can be resolved (service-account path or ADC) and whether the provider is configured. ## Troubleshooting ### "Vertex AI credentials could not be resolved" Hermes found neither a service-account JSON nor working ADC. Either set `VERTEX_CREDENTIALS_PATH` in `~/.hermes/.env`, or run `gcloud auth application-default login`. If your project isn't embedded in the credentials, set `vertex.project_id` in `config.yaml`. ### `google-auth` not installed Install the extra: `pip install 'hermes-agent[vertex]'`. Hermes also lazy-installs it the first time you select the Vertex provider. ### 404 on Gemini 3.x models You are probably on a regional endpoint. Set `region: global` in the `vertex:` section of `config.yaml` (or unset `VERTEX_REGION`). ### 403 / permission denied The service account (or your ADC identity) needs the `roles/aiplatform.user` role on the project, and the Vertex AI API must be enabled for that project. ## Related - [Google Gemini (AI Studio)](/guides/google-gemini) — static-API-key Gemini without GCP - [AWS Bedrock](/guides/aws-bedrock) — another native cloud-provider integration - [AI Providers](/integrations/providers) - [Configuration](/user-guide/configuration)