Files
boocode/apps/coder/src/services/behavioral/generation.ts
indifferentketchup 524a0deaa1 feat(coder): add model resolution core + multi-batch matcher
Model resolution (from oh-my-openagent/model-core): 6-step priority
resolution pipeline (UI select -> user config -> category default ->
user fallback -> policy chain -> system default), provider fallback
chains, fuzzy model matching, error classification, provider-specific
model ID transforms. 14 files, zero runtime deps.

Multi-batch matcher (from boocontext-audit): 6 batch types
(Observational, Actionable, PreviouslyApplied, Disambiguation,
ResponseAnalysis, LowCriticality) for behavioral guideline evaluation.
RelationalResolver with iterative convergence (DEPENDS_ON,
PRIORITIZES, ENTAILS, TAG_ALL, TAG_PRIORITIZES). SchematicGenerator
abstract class with retry and execution plans. 4 files.
2026-06-08 00:17:55 +00:00

205 lines
4.9 KiB
TypeScript

/**
* Schematic generator for behavioral guideline batches.
*
* Port of boocontext-audit/src/generation.ts — abstract LLM batch caller
* with temperature retry and structured output per batch type.
*/
import { type GenerationInfo } from './matching.js';
// ─── Output types per batch ───
export interface ObservationalOutput {
checks: {
guideline_id: string;
condition: string;
rationale: string;
applies: boolean;
}[];
}
export interface ActionableOutput {
checks: {
guideline_id: string;
condition: string;
action: string;
rationale: string;
applies: boolean;
}[];
}
export interface PreviouslyAppliedOutput {
checks: {
guideline_id: string;
condition: string;
action_segment: string;
rationale: string;
is_still_applicable: boolean;
}[];
}
export interface DisambiguationOutput {
source_guideline_id: string;
rationale: string;
enriched_action: string;
targets: string[];
}
export interface ResponseAnalysisOutput {
guideline_id: string;
condition: string;
was_followed: boolean;
rationale: string;
}
// ─── Batch output map ───
export interface BatchOutputMap {
observational: ObservationalOutput;
actionable: ActionableOutput;
previously_applied: PreviouslyAppliedOutput;
disambiguation: DisambiguationOutput;
response_analysis: ResponseAnalysisOutput;
}
export type BatchTypeKey = keyof BatchOutputMap;
export type OutputForBatch<T extends BatchTypeKey> = BatchOutputMap[T];
// ─── SchematicGenerator ───
export abstract class SchematicGenerator<TSchema> {
constructor(public modelName: string) {}
abstract generate(
prompt: string,
hints?: Record<string, unknown>,
): Promise<{
content: TSchema;
info: GenerationInfo;
}>;
}
/**
* Default stub implementation that returns empty results.
* Replace with a real LLM caller in production.
*/
export class DefaultSchematicGenerator
implements SchematicGenerator<unknown>
{
constructor(
public modelName: string,
public defaultTemperature = 0.7,
) {}
async generate(
_prompt: string,
hints?: Record<string, unknown>,
): Promise<{ content: unknown; info: GenerationInfo }> {
const temperature = (hints?.temperature as number) ?? this.defaultTemperature;
return {
content: {},
info: {
model: this.modelName,
duration: 0,
tokens: 0,
temperature,
},
};
}
}
// ─── Execution plans ───
export interface BatchExecutionPlan {
batchType: BatchTypeKey;
guidelines: { id: string; condition: string; action?: string | null }[];
priority: number;
independent: boolean;
}
/**
* Create an ordered execution plan from categorized guideline collections.
* Groups are sorted by priority: previously_applied (fastest) first,
* then observational, actionable, disambiguation, low-criticality last.
*/
export function createExecutionPlan(
observational: { id: string; condition: string }[],
actionable: { id: string; condition: string; action: string }[],
previouslyApplied: { id: string; condition: string; action?: string | null }[],
disambiguationGroups: { source: string; targets: string[]; enrichedAction: string }[],
lowCriticality: { id: string; condition: string }[],
): BatchExecutionPlan[] {
const plans: BatchExecutionPlan[] = [];
if (observational.length > 0) {
plans.push({
batchType: 'observational',
guidelines: observational.map((g) => ({ id: g.id, condition: g.condition })),
priority: 1,
independent: true,
});
}
if (actionable.length > 0) {
plans.push({
batchType: 'actionable',
guidelines: actionable.map((g) => ({
id: g.id,
condition: g.condition,
action: g.action,
})),
priority: 2,
independent: true,
});
}
if (previouslyApplied.length > 0) {
plans.push({
batchType: 'previously_applied',
guidelines: previouslyApplied.map((g) => ({
id: g.id,
condition: g.condition,
action: g.action,
})),
priority: 0,
independent: true,
});
}
if (disambiguationGroups.length > 0) {
plans.push({
batchType: 'disambiguation',
guidelines: disambiguationGroups.map((g) => ({
id: g.source,
condition: g.enrichedAction,
})),
priority: 3,
independent: true,
});
}
if (lowCriticality.length > 0) {
plans.push({
batchType: 'observational',
guidelines: lowCriticality.map((g) => ({ id: g.id, condition: g.condition })),
priority: 10,
independent: true,
});
}
return plans.sort((a, b) => a.priority - b.priority);
}
/**
* Compute retry temperatures: base + 0.2 * attempt.
* Provides progressive temperature increases for failed calls.
*/
export function getRetryTemperatures(baseTemp: number, maxAttempts = 3): number[] {
const temps: number[] = [];
for (let i = 0; i < maxAttempts; i++) {
temps.push(baseTemp + i * 0.2);
}
return temps;
}