Develop AI-powered applications using Genkit in Go. Use when the user asks to build AI features, agents, flows, or tools in Go using Genkit, or when working with Genkit Go code involving generation, prompts, streaming, tool calling, or model providers.
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Genkit Go is an AI SDK for Go that provides generation, structured output, streaming, tool calling, prompts, and flows with a unified interface across model providers.
package main
import (
"context"
"fmt"
"log"
"net/http"
"github.com/genkit-ai/genkit/go/ai"
"github.com/genkit-ai/genkit/go/genkit"
"github.com/genkit-ai/genkit/go/plugins/googlegenai"
"github.com/genkit-ai/genkit/go/plugins/server"
)
func main() {
ctx := context.Background()
g := genkit.Init(ctx, genkit.WithPlugins(&googlegenai.GoogleAI{}))
genkit.DefineFlow(g, "jokeFlow", func(ctx context.Context, topic string) (string, error) {
return genkit.GenerateText(ctx, g,
ai.WithModelName("googleai/gemini-flash-latest"),
ai.WithPrompt("Tell me a joke about %s", topic),
)
})
mux := http.NewServeMux()
for _, f := range genkit.ListFlows(g) {
mux.HandleFunc("POST /"+f.Name(), genkit.Handler(f))
}
log.Fatal(server.Start(ctx, "127.0.0.1:8080", mux))
}Load the appropriate reference based on what you need:
| Feature | Reference | When to load |
|---|---|---|
| Initialization | references/getting-started.md | Setting up genkit.Init, plugins, the *Genkit instance pattern |
| Generation | references/generation.md | Generate, GenerateText, GenerateData, streaming, output formats |
| Prompts | references/prompts.md | DefinePrompt, DefineDataPrompt, .prompt files, schemas |
| Tools | references/tools.md | DefineTool, tool interrupts, RestartWith/RespondWith |
| Middleware | references/middleware.md | ai.Middleware, ai.WithUse, Hooks (Generate/Model/Tool), built-ins (Retry, Fallback, ToolApproval, Filesystem, Skills) |
| Flows & HTTP | references/flows-and-http.md | DefineFlow, DefineStreamingFlow, genkit.Handler, HTTP serving |
| Model Providers | references/providers.md | Google AI, Vertex AI, Anthropic, OpenAI-compatible, Ollama setup |
Check if installed: genkit --version
Installation:
curl -sL cli.genkit.dev | bashKey commands:
# Start app with Developer UI (tracing, flow testing) at http://localhost:4000
genkit start -- go run .
genkit start -o -- go run . # also opens browser
# Run a flow directly from the CLI
genkit flow:run myFlow '{"data": "input"}'
genkit flow:run myFlow '{"data": "input"}' --stream # with streaming
genkit flow:run myFlow '{"data": "input"}' --wait # wait for completion
# Look up Genkit documentation
genkit docs:search "streaming" go
genkit docs:list go
genkit docs:read go/flows.mdSee references/getting-started.md for full CLI and Developer UI details.
g explicitly. The *Genkit instance returned by genkit.Init is the central registry. Pass it to all Genkit functions rather than storing it as a global. This is a core pattern throughout the SDK.genkit.Handler, and the ability to test from the Developer UI and CLI. Any generation call worth keeping should live in a flow.jsonschema:"description=..." struct tags on output types. The model uses these descriptions to understand what each field should contain. Without them, structured output quality drops significantly..prompt files for complex prompts. They separate prompt content from Go code, support Handlebars templating, and can be iterated on without recompilation. Code-defined prompts are better for simple, single-line cases.Retry, Fallback, ToolApproval, Filesystem, and Skills cover the common cross-cutting needs and compose with each other via ai.WithUse. See references/middleware.md. When you do write custom middleware, allocate per-call state in closures captured by New, and guard anything that WrapTool mutates because tools may run concurrently.c3bb9d5
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