In this tutorial, we build a cost-aware planning agent that deliberately balances output quality against real-world constraints such as token usage, latency, and tool-call budgets. We design the agent to generate multiple candidate actions, estimate their expected costs and benefits, and then select an execution plan that maximizes value while staying within strict budgets. With this, we demonstrate how agentic systems can move beyond “always use the LLM” behavior and instead reason explicitly about trade-offs, efficiency, and resource awareness, which is critical for deploying agents reliably in constrained environments. Check out the FULL CODES here.
import os, time, math, json, random from dataclasses import dataclass, field from typing import List, Dict, Optional, Tuple, Any from getpass import getpass USE_OPENAI = True if USE_OPENAI: if not os.getenv("OPENAI_API_KEY"): os.environ["OPENAI_API_KEY"] = getpass("Enter OPENAI_API_KEY (hidden): ").strip() try: from openai import OpenAI client = OpenAI() except Exception as e: print("OpenAI SDK import failed. Falling back to offline mode.nError:", e) USE_OPENAI = False
We set up the execution environment and securely load the OpenAI API key at runtime without hardcoding it. We also initialize the client so the agent gracefully falls back to offline mode if the API is unavailable. Check out the FULL CODES here.
def approx_tokens(text: str) -> int: return max(1, math.ceil(len(text) / 4)) @dataclass class Budget: max_tokens: int max_latency_ms: int max_tool_calls: int @dataclass class Spend: tokens: int = 0 latency_ms: int = 0 tool_calls: int = 0 def within(self, b: Budget) -> bool: return (self.tokens <= b.max_tokens and self.latency_ms <= b.max_latency_ms and self.tool_calls <= b.max_tool_calls) def add(self, other: "Spend") -> "Spend": return Spend( tokens=self.tokens + other.tokens, latency_ms=self.latency_ms + other.latency_ms, tool_calls=self.tool_calls + other.tool_calls )
We define the core budgeting abstractions that enable the agent to reason explicitly about costs. We model token usage, latency, and tool calls as first-class quantities and provide utility methods to accumulate and validate spend. It gives us a clean foundation for enforcing constraints throughout planning and execution. Check out the FULL CODES here.
@dataclass class StepOption: name: str description: str est_spend: Spend est_value: float executor: str payload: Dict[str, Any] = field(default_factory=dict) @dataclass class PlanCandidate: steps: List[StepOption] spend: Spend value: float rationale: str = "" def llm_text(prompt: str, *, model: str = "gpt-5", effort: str = "low") -> str: if not USE_OPENAI: return "" t0 = time.time() resp = client.responses.create( model=model, reasoning={"effort": effort}, input=prompt, ) _ = (time.time() - t0) return resp.output_text or ""
We introduce the data structures that represent individual action choices and full plan candidates. We also define a lightweight LLM wrapper that standardizes how text is generated and measured. This separation allows the planner to reason about actions abstractly without being tightly coupled to execution details. Check out the FULL CODES here.
def generate_step_options(task: str) -> List[StepOption]: base = [ StepOption( name="Clarify deliverables (local)", description="Extract deliverable checklist + acceptance criteria from the task.", est_spend=Spend(tokens=60, latency_ms=20, tool_calls=0), est_value=6.0, executor="local", ), StepOption( name="Outline plan (LLM)", description="Create a structured outline with sections, constraints, and assumptions.", est_spend=Spend(tokens=600, latency_ms=1200, tool_calls=1), est_value=10.0, executor="llm", payload={"prompt_kind":"outline"} ), StepOption( name="Outline plan (local)", description="Create a rough outline using templates (no LLM).", est_spend=Spend(tokens=120, latency_ms=40, tool_calls=0), est_value=5.5, executor="local", ), StepOption( name="Risk register (LLM)", description="Generate risks, mitigations, owners, and severity.", est_spend=Spend(tokens=700, latency_ms=1400, tool_calls=1), est_value=9.0, executor="llm", payload={"prompt_kind":"risks"} ), StepOption( name="Risk register (local)", description="Generate a standard risk register from a reusable template.", est_spend=Spend(tokens=160, latency_ms=60, tool_calls=0), est_value=5.0, executor="local", ), StepOption( name="Timeline (LLM)", description="Draft a realistic milestone timeline with dependencies.", est_spend=Spend(tokens=650, latency_ms=1300, tool_calls=1), est_value=8.5, executor="llm", payload={"prompt_kind":"timeline"} ), StepOption( name="Timeline (local)", description="Draft a simple timeline from a generic milestone template.", est_spend=Spend(tokens=150, latency_ms=60, tool_calls=0), est_value=4.8, executor="local", ), StepOption( name="Quality pass (LLM)", description="Rewrite for clarity, consistency, and formatting.", est_spend=Spend(tokens=900, latency_ms=1600, tool_calls=1), est_value=8.0, executor="llm", payload={"prompt_kind":"polish"} ), StepOption( name="Quality pass (local)", description="Light formatting + consistency checks without LLM.", est_spend=Spend(tokens=120, latency_ms=50, tool_calls=0), est_value=3.5, executor="local", ), ] if USE_OPENAI: meta_prompt = f""" You are a planning assistant. For the task below, propose 3-5 OPTIONAL extra steps that improve quality, like checks, validations, or stakeholder tailoring. Keep each step short. TASK: {task} Return JSON list with fields: name, description, est_value(1-10). """ txt = llm_text(meta_prompt, model="gpt-5", effort="low") try: items = json.loads(txt.strip()) for it in items[:5]: base.append( StepOption( name=str(it.get("name","Extra step (local)"))[:60], description=str(it.get("description",""))[:200], est_spend=Spend(tokens=120, latency_ms=60, tool_calls=0), est_value=float(it.get("est_value", 5.0)), executor="local", ) ) except Exception: pass return base
We focus on generating a diverse set of candidate steps, including both LLM-based and local alternatives with different cost–quality trade-offs. We optionally use the model itself to suggest additional low-cost improvements while still controlling their impact on the budget. By doing so, we enrich the action space without losing efficiency. Check out the FULL CODES here.
def plan_under_budget( options: List[StepOption], budget: Budget, *, max_steps: int = 6, beam_width: int = 12, diversity_penalty: float = 0.2 ) -> PlanCandidate: def redundancy_cost(chosen: List[StepOption], new: StepOption) -> float: key_new = new.name.split("(")[0].strip().lower() overlap = 0 for s in chosen: key_s = s.name.split("(")[0].strip().lower() if key_s == key_new: overlap += 1 return overlap * diversity_penalty beams: List[PlanCandidate] = [PlanCandidate(steps=[], spend=Spend(), value=0.0, rationale="")] for _ in range(max_steps): expanded: List[PlanCandidate] = [] for cand in beams: for opt in options: if opt in cand.steps: continue new_spend = cand.spend.add(opt.est_spend) if not new_spend.within(budget): continue new_value = cand.value + opt.est_value - redundancy_cost(cand.steps, opt) expanded.append( PlanCandidate( steps=cand.steps + [opt], spend=new_spend, value=new_value, rationale=cand.rationale ) ) if not expanded: break expanded.sort(key=lambda c: c.value, reverse=True) beams = expanded[:beam_width] best = max(beams, key=lambda c: c.value) return best
We implement the budget-constrained planning logic that searches for the highest-value combination of steps under strict limits. We apply a beam-style search with redundancy penalties to avoid wasteful action overlap. This is where the agent truly becomes cost-aware by optimizing value subject to constraints. Check out the FULL CODES here.
def run_local_step(task: str, step: StepOption, working: Dict[str, Any]) -> str: name = step.name.lower() if "clarify deliverables" in name: return ( "Deliverables checklist:n" "- Executive summaryn- Scope & assumptionsn- Workplan + milestonesn" "- Risk register (risk, impact, likelihood, mitigation, owner)n" "- Next steps + data neededn" ) if "outline plan" in name: return ( "Outline:n1) Context & objectiven2) Scopen3) Approachn4) Timelinen5) Risksn6) Next stepsn" ) if "risk register" in name: return ( "Risk register (template):n" "1) Data access delays | High | Mitigation: agree data list + ownersn" "2) Stakeholder alignment | Med | Mitigation: weekly reviewn" "3) Tooling constraints | Med | Mitigation: phased rolloutn" ) if "timeline" in name: return ( "Timeline (template):n" "Week 1: discovery + requirementsnWeek 2: prototype + feedbackn" "Week 3: pilot + metricsnWeek 4: rollout + handovern" ) if "quality pass" in name: draft = working.get("draft", "") return "Light quality pass done (headings normalized, bullets aligned).n" + draft return f"Completed: {step.name}n" def run_llm_step(task: str, step: StepOption, working: Dict[str, Any]) -> str: kind = step.payload.get("prompt_kind", "generic") context = working.get("draft", "") prompts = { "outline": f"Create a crisp, structured outline for the task below.nTASK:n{task}nReturn a numbered outline.", "risks": f"Create a risk register for the task below. Include: Risk | Impact | Likelihood | Mitigation | Owner.nTASK:n{task}", "timeline": f"Create a realistic milestone timeline with dependencies for the task below.nTASK:n{task}", "polish": f"Rewrite and polish the following draft for clarity and consistency.nDRAFT:n{context}", "generic": f"Help with this step: {step.description}nTASK:n{task}nCURRENT:n{context}", } return llm_text(prompts.get(kind, prompts["generic"]), model="gpt-5", effort="low") def execute_plan(task: str, plan: PlanCandidate) -> Tuple[str, Spend]: working = {"draft": ""} actual = Spend() for i, step in enumerate(plan.steps, 1): t0 = time.time() if step.executor == "llm" and USE_OPENAI: out = run_llm_step(task, step, working) tool_calls = 1 else: out = run_local_step(task, step, working) tool_calls = 0 dt_ms = int((time.time() - t0) * 1000) tok = approx_tokens(out) actual = actual.add(Spend(tokens=tok, latency_ms=dt_ms, tool_calls=tool_calls)) working["draft"] += f"nn### Step {i}: {step.name}n{out}n" return working["draft"].strip(), actual TASK = "Draft a 1-page project proposal for a logistics dashboard + fleet optimization pilot, including scope, timeline, and risks." BUDGET = Budget( max_tokens=2200, max_latency_ms=3500, max_tool_calls=2 ) options = generate_step_options(TASK) best_plan = plan_under_budget(options, BUDGET, max_steps=6, beam_width=14) print("=== SELECTED PLAN (budget-aware) ===") for s in best_plan.steps: print(f"- {s.name} | est_spend={s.est_spend} | est_value={s.est_value}") print("nEstimated spend:", best_plan.spend) print("Budget:", BUDGET) print("n=== EXECUTING PLAN ===") draft, actual = execute_plan(TASK, best_plan) print("n=== OUTPUT DRAFT ===n") print(draft[:6000]) print("n=== ACTUAL SPEND (approx) ===") print(actual) print("nWithin budget?", actual.within(BUDGET))
We execute the selected plan and track actual resource usage step by step. We dynamically choose between local and LLM execution paths and aggregate the final output into a coherent draft. By comparing estimated and actual spend, we demonstrate how planning assumptions can be validated and refined in practice.
In conclusion, we demonstrated how a cost-aware planning agent can reason about its resource consumption and adapt its behavior in real time. We executed only the steps that fit within predefined budgets and tracked actual spend to validate the planning assumptions, closing the loop between estimation and execution. Also, we highlighted how agentic AI systems can become more practical, controllable, and scalable by treating cost, latency, and tool usage as first-class decision variables rather than afterthoughts.
Check out the FULL CODES here. Also, feel free to follow us on Twitter and don’t forget to join our 100k+ ML SubReddit and Subscribe to our Newsletter. Wait! are you on telegram? now you can join us on telegram as well.
