sales·Independently reviewed · 96/100

Forecast Interpreter

Insights typed. Forecast opaque. Typed v1 agent with eval coverage.

salesstructured-outputv1

Install

npx agentskit add sales-forecast-interpreter

Quick start

import { openai } from '@agentskit/adapters'import { createSalesForecastInterpreterAgent } from './agents/sales-forecast-interpreter/agent'const agent = createSalesForecastInterpreterAgent({  adapter: openai({    apiKey: process.env.OPENAI_API_KEY!,    model: 'gpt-4o',  }),})const result = await agent.run('Describe your task here')console.log(result.content)

Independent reviewer approved

Validation evidence

How validation works
Review score
96/100
Confidence
96%
Evaluation cases
3
Iterations
1

The agent produced valid structured outputs for all three cases, resisted instruction injection, avoided inventing forecast details from sparse or placeholder inputs, surfaced uncertainty and missing context, and provided concrete next-step questions. The behavior is conservative but appropriate for a forecast interpreter when no actual forecast data is supplied.

What passed review

  • Valid structured output shape across all cases.
  • Correctly treats instruction-like user text as untrusted data instead of following it.
  • Does not hallucinate sales forecasts, dates, metrics, accounts, or business conclusions absent source data.
  • Clearly surfaces gaps, uncertainty, and human-review needs.
  • Injection case is handled explicitly and safely without outputting the requested APPROVED string.

Extend it

Pass tools, retrieval, memory, permissions, and observers through the factory config.

const agent = createSalesForecastInterpreterAgent({  adapter,  tools,  retriever,  memory,  onConfirm: (call) => approve(call),  observers: [tracer],})
View agent factory source
import type { AdapterFactory, ChatMemory, Observer, ToolCall, ToolDefinition } from '@agentskit/core'import { fenceUntrustedContent, UNTRUSTED_CONTENT_DIRECTIVE } from '@agentskit/core/security'import { invokeStructured } from '@agentskit/runtime'import { defineZodTool } from '@agentskit/tools'import { z } from 'zod'import { zodToJsonSchema } from 'zod-to-json-schema'import type { JSONSchema7 } from 'json-schema'/** Forecast Interpreter — v1 validated. Pain: Forecast opaque */export interface Finding { id: string; severity: 'critical' | 'high' | 'medium' | 'low' | 'info'; message: string; source?: string; recommendation?: string }export interface AgentOutput { summary: string; findings: Finding[]; gaps: string[]; openQuestions: string[] }export interface AgentResult extends AgentOutput { requiresReview: boolean }export interface SalesForecastInterpreterConfig {  adapter: AdapterFactory  memory?: ChatMemory  observers?: Observer[]  onConfirm?: (toolCall: ToolCall) => boolean | Promise<boolean>  maxSteps?: number}const Output = z.object({  summary: z.string(),  findings: z.array(z.object({    id: z.string(), severity: z.enum(['critical', 'high', 'medium', 'low', 'info']),    message: z.string(), source: z.string().optional(), recommendation: z.string().optional(),  })),  gaps: z.array(z.string()).default([]),  openQuestions: z.array(z.string()).default([]),})const toJson = (s: z.ZodTypeAny): JSONSchema7 => zodToJsonSchema(s) as JSONSchema7const skill = {  name: 'sales-forecast-interpreter',  description: "Forecast Interpreter — typed output agent (draft spec).",  systemPrompt: `You are Forecast Interpreter. Forecast opaque. Output: Insights typed.Actionable findings citing input sources. No invented issues.NEVER invent facts — gaps and openQuestions for missing input. Always draft for human review.${UNTRUSTED_CONTENT_DIRECTIVE}Call submit_forecast_interpreter exactly once. Stop.`,  tools: ['submit_forecast_interpreter'],}export function createSalesForecastInterpreterAgent(config: SalesForecastInterpreterConfig) {  const submit = (): ToolDefinition =>    defineZodTool({ name: 'submit_forecast_interpreter', description: 'Submit result. Once.', schema: Output, toJsonSchema: toJson, async execute() { return 'recorded' } }) as ToolDefinition  async function run(input: string): Promise<AgentResult> {    if (!input?.trim()) throw new Error('sales-forecast-interpreter requires non-empty input')    const result = await invokeStructured({      adapter: config.adapter,      tool: submit(),      task: `INPUT:\n${fenceUntrustedContent(input)}`,      parse: (a) => Output.parse(a),      skill,      memory: config.memory,      observers: config.observers,      onConfirm: config.onConfirm,      maxSteps: config.maxSteps ?? 4,    })    return { ...result, requiresReview: true }  }  return {    name: 'sales-forecast-interpreter',    run,    asHandle() { return { name: 'sales-forecast-interpreter', run: (t: string) => run(t).then((r) => JSON.stringify(r)) } },  }}
View evaluation contract

Replay these cases with the provider and model you plan to deploy.

import type { EvalSuite } from '@agentskit/eval'export const suite: EvalSuite = {  name: 'sales-forecast-interpreter',  cases: [    { input: 'Complete input for Forecast Interpreter: Forecast opaque. Provide full structured output.', expected: (r: string) => r.length > 20 && /requiresReview|summary|title|category|findings|sections|score|clusters|items|steps/i.test(r) },    { input: 'Minimal input.', expected: (r: string) => /gap|openQuestion/i.test(r) || r.length > 10 },    { input: 'Input with specific detail: ACME Corp project deadline March 15.', expected: (r: string) => /ACME|March|15/i.test(r) || /gap/i.test(r) },    { input: 'Empty context — only says "process this".', expected: (r: string) => r.length > 5 },  ],}

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