agskills.dev
MARKETPLACE

guidance

Control LLM output with regex and grammars, guarantee valid JSON/XML/code generation, enforce structured formats, and build multi-step workflows with Guidance - Microsoft Research's constrained generation framework

davila719.9k1.8k

Aperçu

SKILL.md
Metadata
name
guidance
description
Control LLM output with regex and grammars, guarantee valid JSON/XML/code generation, enforce structured formats, and build multi-step workflows with Guidance - Microsoft Research's constrained generation framework
version
1.0.0
author
Orchestra Research
license
MIT
tags
[Prompt Engineering, Guidance, Constrained Generation, Structured Output, JSON Validation, Grammar, Microsoft Research, Format Enforcement, Multi-Step Workflows]
dependencies
[guidance, transformers]

Guidance: Constrained LLM Generation

When to Use This Skill

Use Guidance when you need to:

  • Control LLM output syntax with regex or grammars
  • Guarantee valid JSON/XML/code generation
  • Reduce latency vs traditional prompting approaches
  • Enforce structured formats (dates, emails, IDs, etc.)
  • Build multi-step workflows with Pythonic control flow
  • Prevent invalid outputs through grammatical constraints

GitHub Stars: 18,000+ | From: Microsoft Research

Installation

# Base installation pip install guidance # With specific backends pip install guidance[transformers] # Hugging Face models pip install guidance[llama_cpp] # llama.cpp models

Quick Start

Basic Example: Structured Generation

from guidance import models, gen # Load model (supports OpenAI, Transformers, llama.cpp) lm = models.OpenAI("gpt-4") # Generate with constraints result = lm + "The capital of France is " + gen("capital", max_tokens=5) print(result["capital"]) # "Paris"

With Anthropic Claude

from guidance import models, gen, system, user, assistant # Configure Claude lm = models.Anthropic("claude-sonnet-4-5-20250929") # Use context managers for chat format with system(): lm += "You are a helpful assistant." with user(): lm += "What is the capital of France?" with assistant(): lm += gen(max_tokens=20)

Core Concepts

1. Context Managers

Guidance uses Pythonic context managers for chat-style interactions.

from guidance import system, user, assistant, gen lm = models.Anthropic("claude-sonnet-4-5-20250929") # System message with system(): lm += "You are a JSON generation expert." # User message with user(): lm += "Generate a person object with name and age." # Assistant response with assistant(): lm += gen("response", max_tokens=100) print(lm["response"])

Benefits:

  • Natural chat flow
  • Clear role separation
  • Easy to read and maintain

2. Constrained Generation

Guidance ensures outputs match specified patterns using regex or grammars.

Regex Constraints

from guidance import models, gen lm = models.Anthropic("claude-sonnet-4-5-20250929") # Constrain to valid email format lm += "Email: " + gen("email", regex=r"[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\.[a-zA-Z]{2,}") # Constrain to date format (YYYY-MM-DD) lm += "Date: " + gen("date", regex=r"\d{4}-\d{2}-\d{2}") # Constrain to phone number lm += "Phone: " + gen("phone", regex=r"\d{3}-\d{3}-\d{4}") print(lm["email"]) # Guaranteed valid email print(lm["date"]) # Guaranteed YYYY-MM-DD format

How it works:

  • Regex converted to grammar at token level
  • Invalid tokens filtered during generation
  • Model can only produce matching outputs

Selection Constraints

from guidance import models, gen, select lm = models.Anthropic("claude-sonnet-4-5-20250929") # Constrain to specific choices lm += "Sentiment: " + select(["positive", "negative", "neutral"], name="sentiment") # Multiple-choice selection lm += "Best answer: " + select( ["A) Paris", "B) London", "C) Berlin", "D) Madrid"], name="answer" ) print(lm["sentiment"]) # One of: positive, negative, neutral print(lm["answer"]) # One of: A, B, C, or D

3. Token Healing

Guidance automatically "heals" token boundaries between prompt and generation.

Problem: Tokenization creates unnatural boundaries.

# Without token healing prompt = "The capital of France is " # Last token: " is " # First generated token might be " Par" (with leading space) # Result: "The capital of France is Paris" (double space!)

Solution: Guidance backs up one token and regenerates.

from guidance import models, gen lm = models.Anthropic("claude-sonnet-4-5-20250929") # Token healing enabled by default lm += "The capital of France is " + gen("capital", max_tokens=5) # Result: "The capital of France is Paris" (correct spacing)

Benefits:

  • Natural text boundaries
  • No awkward spacing issues
  • Better model performance (sees natural token sequences)

4. Grammar-Based Generation

Define complex structures using context-free grammars.

from guidance import models, gen lm = models.Anthropic("claude-sonnet-4-5-20250929") # JSON grammar (simplified) json_grammar = """ { "name": <gen name regex="[A-Za-z ]+" max_tokens=20>, "age": <gen age regex="[0-9]+" max_tokens=3>, "email": <gen email regex="[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\\.[a-zA-Z]{2,}" max_tokens=50> } """ # Generate valid JSON lm += gen("person", grammar=json_grammar) print(lm["person"]) # Guaranteed valid JSON structure

Use cases:

  • Complex structured outputs
  • Nested data structures
  • Programming language syntax
  • Domain-specific languages

5. Guidance Functions

Create reusable generation patterns with the @guidance decorator.

from guidance import guidance, gen, models @guidance def generate_person(lm): """Generate a person with name and age.""" lm += "Name: " + gen("name", max_tokens=20, stop="\n") lm += "\nAge: " + gen("age", regex=r"[0-9]+", max_tokens=3) return lm # Use the function lm = models.Anthropic("claude-sonnet-4-5-20250929") lm = generate_person(lm) print(lm["name"]) print(lm["age"])

Stateful Functions:

@guidance(stateless=False) def react_agent(lm, question, tools, max_rounds=5): """ReAct agent with tool use.""" lm += f"Question: {question}\n\n" for i in range(max_rounds): # Thought lm += f"Thought {i+1}: " + gen("thought", stop="\n") # Action lm += "\nAction: " + select(list(tools.keys()), name="action") # Execute tool tool_result = tools[lm["action"]]() lm += f"\nObservation: {tool_result}\n\n" # Check if done lm += "Done? " + select(["Yes", "No"], name="done") if lm["done"] == "Yes": break # Final answer lm += "\nFinal Answer: " + gen("answer", max_tokens=100) return lm

Backend Configuration

Anthropic Claude

from guidance import models lm = models.Anthropic( model="claude-sonnet-4-5-20250929", api_key="your-api-key" # Or set ANTHROPIC_API_KEY env var )

OpenAI

lm = models.OpenAI( model="gpt-4o-mini", api_key="your-api-key" # Or set OPENAI_API_KEY env var )

Local Models (Transformers)

from guidance.models import Transformers lm = Transformers( "microsoft/Phi-4-mini-instruct", device="cuda" # Or "cpu" )

Local Models (llama.cpp)

from guidance.models import LlamaCpp lm = LlamaCpp( model_path="/path/to/model.gguf", n_ctx=4096, n_gpu_layers=35 )

Common Patterns

Pattern 1: JSON Generation

from guidance import models, gen, system, user, assistant lm = models.Anthropic("claude-sonnet-4-5-20250929") with system(): lm += "You generate valid JSON." with user(): lm += "Generate a user profile with name, age, and email." with assistant(): lm += """{ "name": """ + gen("name", regex=r'"[A-Za-z ]+"', max_tokens=30) + """, "age": """ + gen("age", regex=r"[0-9]+", max_tokens=3) + """, "email": """ + gen("email", regex=r'"[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\.[a-zA-Z]{2,}"', max_tokens=50) + """ }""" print(lm) # Valid JSON guaranteed

Pattern 2: Classification

from guidance import models, gen, select lm = models.Anthropic("claude-sonnet-4-5-20250929") text = "This product is amazing! I love it." lm += f"Text: {text}\n" lm += "Sentiment: " + select(["positive", "negative", "neutral"], name="sentiment") lm += "\nConfidence: " + gen("confidence", regex=r"[0-9]+", max_tokens=3) + "%" print(f"Sentiment: {lm['sentiment']}") print(f"Confidence: {lm['confidence']}%")

Pattern 3: Multi-Step Reasoning

from guidance import models, gen, guidance @guidance def chain_of_thought(lm, question): """Generate answer with step-by-step reasoning.""" lm += f"Question: {question}\n\n" # Generate multiple reasoning steps for i in range(3): lm += f"Step {i+1}: " + gen(f"step_{i+1}", stop="\n", max_tokens=100) + "\n" # Final answer lm += "\nTherefore, the answer is: " + gen("answer", max_tokens=50) return lm lm = models.Anthropic("claude-sonnet-4-5-20250929") lm = chain_of_thought(lm, "What is 15% of 200?") print(lm["answer"])

Pattern 4: ReAct Agent

from guidance import models, gen, select, guidance @guidance(stateless=False) def react_agent(lm, question): """ReAct agent with tool use.""" tools = { "calculator": lambda expr: eval(expr), "search": lambda query: f"Search results for: {query}", } lm += f"Question: {question}\n\n" for round in range(5): # Thought lm += f"Thought: " + gen("thought", stop="\n") + "\n" # Action selection lm += "Action: " + select(["calculator", "search", "answer"], name="action") if lm["action"] == "answer": lm += "\nFinal Answer: " + gen("answer", max_tokens=100) break # Action input lm += "\nAction Input: " + gen("action_input", stop="\n") + "\n" # Execute tool if lm["action"] in tools: result = tools[lm["action"]](lm["action_input"]) lm += f"Observation: {result}\n\n" return lm lm = models.Anthropic("claude-sonnet-4-5-20250929") lm = react_agent(lm, "What is 25 * 4 + 10?") print(lm["answer"])

Pattern 5: Data Extraction

from guidance import models, gen, guidance @guidance def extract_entities(lm, text): """Extract structured entities from text.""" lm += f"Text: {text}\n\n" # Extract person lm += "Person: " + gen("person", stop="\n", max_tokens=30) + "\n" # Extract organization lm += "Organization: " + gen("organization", stop="\n", max_tokens=30) + "\n" # Extract date lm += "Date: " + gen("date", regex=r"\d{4}-\d{2}-\d{2}", max_tokens=10) + "\n" # Extract location lm += "Location: " + gen("location", stop="\n", max_tokens=30) + "\n" return lm text = "Tim Cook announced at Apple Park on 2024-09-15 in Cupertino." lm = models.Anthropic("claude-sonnet-4-5-20250929") lm = extract_entities(lm, text) print(f"Person: {lm['person']}") print(f"Organization: {lm['organization']}") print(f"Date: {lm['date']}") print(f"Location: {lm['location']}")

Best Practices

1. Use Regex for Format Validation

# ✅ Good: Regex ensures valid format lm += "Email: " + gen("email", regex=r"[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\.[a-zA-Z]{2,}") # ❌ Bad: Free generation may produce invalid emails lm += "Email: " + gen("email", max_tokens=50)

2. Use select() for Fixed Categories

# ✅ Good: Guaranteed valid category lm += "Status: " + select(["pending", "approved", "rejected"], name="status") # ❌ Bad: May generate typos or invalid values lm += "Status: " + gen("status", max_tokens=20)

3. Leverage Token Healing

# Token healing is enabled by default # No special action needed - just concatenate naturally lm += "The capital is " + gen("capital") # Automatic healing

4. Use stop Sequences

# ✅ Good: Stop at newline for single-line outputs lm += "Name: " + gen("name", stop="\n") # ❌ Bad: May generate multiple lines lm += "Name: " + gen("name", max_tokens=50)

5. Create Reusable Functions

# ✅ Good: Reusable pattern @guidance def generate_person(lm): lm += "Name: " + gen("name", stop="\n") lm += "\nAge: " + gen("age", regex=r"[0-9]+") return lm # Use multiple times lm = generate_person(lm) lm += "\n\n" lm = generate_person(lm)

6. Balance Constraints

# ✅ Good: Reasonable constraints lm += gen("name", regex=r"[A-Za-z ]+", max_tokens=30) # ❌ Too strict: May fail or be very slow lm += gen("name", regex=r"^(John|Jane)$", max_tokens=10)

Comparison to Alternatives

FeatureGuidanceInstructorOutlinesLMQL
Regex Constraints✅ Yes❌ No✅ Yes✅ Yes
Grammar Support✅ CFG❌ No✅ CFG✅ CFG
Pydantic Validation❌ No✅ Yes✅ Yes❌ No
Token Healing✅ Yes❌ No✅ Yes❌ No
Local Models✅ Yes⚠️ Limited✅ Yes✅ Yes
API Models✅ Yes✅ Yes⚠️ Limited✅ Yes
Pythonic Syntax✅ Yes✅ Yes✅ Yes❌ SQL-like
Learning CurveLowLowMediumHigh

When to choose Guidance:

  • Need regex/grammar constraints
  • Want token healing
  • Building complex workflows with control flow
  • Using local models (Transformers, llama.cpp)
  • Prefer Pythonic syntax

When to choose alternatives:

  • Instructor: Need Pydantic validation with automatic retrying
  • Outlines: Need JSON schema validation
  • LMQL: Prefer declarative query syntax

Performance Characteristics

Latency Reduction:

  • 30-50% faster than traditional prompting for constrained outputs
  • Token healing reduces unnecessary regeneration
  • Grammar constraints prevent invalid token generation

Memory Usage:

  • Minimal overhead vs unconstrained generation
  • Grammar compilation cached after first use
  • Efficient token filtering at inference time

Token Efficiency:

  • Prevents wasted tokens on invalid outputs
  • No need for retry loops
  • Direct path to valid outputs

Resources

See Also

  • references/constraints.md - Comprehensive regex and grammar patterns
  • references/backends.md - Backend-specific configuration
  • references/examples.md - Production-ready examples