Gemini
Configure Google Gemini as an LLM provider in agentgateway.
Before you begin
Set up an agentgateway proxy.
Set up access to Gemini
-
Save your Gemini API key as an environment variable. To retrieve your API key, log in to the Google AI Studio and select API Keys.
export GOOGLE_KEY=<your-api-key> -
Create a secret to authenticate to Google.
kubectl apply -f - <<EOF apiVersion: v1 kind: Secret metadata: name: google-secret namespace: type: Opaque stringData: Authorization: $GOOGLE_KEY EOF
-
Create a resource to define the Gemini destination.
kubectl apply -f- <<EOF apiVersion: gateway.kgateway.dev/v1alpha1 kind: metadata: labels: app: agentgateway name: google namespace: spec: ai: llm: gemini: apiVersion: v1beta authToken: kind: SecretRef secretRef: name: google-secret model: gemini-2.5-flash-lite type: AI EOFReview the following table to understand this configuration.
Setting Description geminiThe Gemini AI provider. apiVersionThe API version of Gemini that is compatible with the model that you plan to use. In this example, you must use v1betabecause thegemini-2.5-flash-litemodel is not compatible with thev1API version. For more information, see the Google AI docs.authTokenThe authentication token to use to authenticate to the LLM provider. The example refers to the secret that you created in the previous step. modelThe model to use to generate responses. In this example, you use the gemini-2.5-flash-litemodel. For more models, see the Google AI docs. -
Create an HTTPRoute resource to route requests to the Gemini . Note that kgateway automatically rewrites the endpoint that you set up (such as
/gemini) to the appropriate chat completion endpoint of the LLM provider for you, based on the LLM provider that you set up in the resource.kubectl apply -f- <<EOF apiVersion: gateway.networking.k8s.io/v1 kind: HTTPRoute metadata: name: google namespace: spec: parentRefs: - name: agentgateway-proxy rules: - matches: - path: type: PathPrefix value: /gemini backendRefs: - name: google group: gateway.kgateway.dev kind: EOF
-
Send a request to the LLM provider API. Verify that the request succeeds and that you get back a response from the chat completion API.
curl -vik "$INGRESS_GW_ADDRESS/gemini" -H content-type:application/json -d '{ "model": "", "messages": [ {"role": "user", "content": "Explain how AI works in simple terms."} ] }'curl -vik "localhost:8080/gemini" -H content-type:application/json -d '{ "model": "", "messages": [ {"role": "user", "content": "Explain how AI works in simple terms."} ] }'Example output:
{"id":"aGLEaMjbLp6p_uMPopeAoAc", "choices": [{"index":0,"message":{ "content":"Imagine teaching a dog a trick. You show it what to do, reward it when it's right, and correct it when it's wrong. Eventually, the dog learns.\n\nAI is similar. We \"teach\" computers by showing them lots of examples. For example, to recognize cats in pictures, we show it thousands of pictures of cats, labeling each one \"cat.\" The AI learns patterns in these pictures – things like pointy ears, whiskers, and furry bodies – and eventually, it can identify a cat in a new picture it's never seen before.\n\nThis learning process uses math and algorithms (like a secret code of instructions) to find patterns and make predictions. Some AI is more like a dog learning tricks (learning from examples), and some is more like following a very detailed recipe (following pre-programmed rules).\n\nSo, in short: AI is about teaching computers to learn from data and make decisions or predictions, just like we teach dogs tricks.\n", "role":"assistant" }, "finish_reason":"stop" }], "created":1757700714, "model":"gemini-1.5-flash-latest", "object":"chat.completion", "usage":{ "prompt_tokens":8, "completion_tokens":205, "total_tokens":213 } }
Next steps
- Explore other guides for LLM consumption, such as function calling, model failover, and prompt guards.