Files
Mathias Bergqvist ce45592730
All checks were successful
cd / Build and deploy (push) Successful in 6s
CI / Lint / Test / Vet (push) Successful in 10s
CI / Mirror to GitHub (push) Successful in 3s
refactor: replace orchestrator/verifier chain with direct LiteLLM calls
Drop the three-layer Claude subprocess orchestration (local model →
Claude verifier → cloud escalation). Skills now call LiteLLM directly
and return plain text to Claude Code, which decides what to do with it.

- Delete executor, orchestrator, verifier, result, attempts packages
- Simplify LiteLLMExecutor: Run(Request)→Result becomes Complete(model,sys,user)→(string,int64,error)
- Replace ExecutorFn with CompleteFunc in all 6 skill configs
- Rewrite all skill handlers to call Complete and return {"text","model","duration_ms"}
- Simplify config/models: remove Verifier/LlamaSwapURL, add ModelFor
- Bump version to v0.5.0

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-22 16:19:09 +02:00

53 lines
1.5 KiB
Go

// internal/skills/trainer/skill.go
package trainer
import (
"context"
"encoding/json"
"github.com/mathiasbq/supervisor/internal/registry"
)
// CompleteFunc is the function used to call a local model.
type CompleteFunc func(ctx context.Context, model, system, user string) (string, int64, error)
// Config holds dependencies for the trainer skill.
type Config struct {
ReaderPrompt string
WriterPrompt string
DefaultModel string
CompleteFunc CompleteFunc
SessionsDir string
BrainDir string // root of brain/ directory
}
// Skill implements the trainer MCP tool.
type Skill struct{ cfg Config }
// New creates a new trainer Skill.
func New(cfg Config) *Skill { return &Skill{cfg: cfg} }
// Name returns the skill identifier.
func (s *Skill) Name() string { return "trainer" }
// Tools returns the MCP tool definitions for this skill.
func (s *Skill) Tools() []registry.ToolDef {
schema := func(required []string, props map[string]any) json.RawMessage {
b, _ := json.Marshal(map[string]any{"type": "object", "required": required, "properties": props})
return b
}
return []registry.ToolDef{
{
Name: "trainer",
Description: "Consult a local model to identify learning moments from a session log and suggest knowledge to preserve in the brain.",
InputSchema: schema(
[]string{"session_id"},
map[string]any{
"session_id": map[string]any{"type": "string"},
"model": map[string]any{"type": "string"},
},
),
},
}
}