Agent runtime intelligence layer — optimize cost, latency, quality, budget, compliance, and energy across AI agent workflows.
Project description
Agent Runtime Intelligence Layer
Cost Savings: 69% (MT-Bench), 93% (GSM8K), 52% (MMLU), 80% (TruthfulQA) savings, retaining 96% GPT-5 quality.
Python •
TypeScript •
Google ADK •
n8n •
OpenClaw • 📖 Docs • 💡 Examples
The in-process intelligence layer for AI agents. Optimize cost, latency, quality, budget, compliance, and energy — inside the execution loop, not at the HTTP boundary.
cascadeflow works where external proxies can't: per-step model decisions based on agent state, per-tool-call budget gating, runtime stop/continue/escalate actions, and business KPI injection during agent loops. It accumulates insight from every model call, tool result, and quality score — the agent gets smarter the more it runs. Sub-5ms overhead. Works with LangChain, OpenAI Agents SDK, CrewAI, PydanticAI, Google ADK, n8n, and Vercel AI SDK.
pip install cascadeflow
npm install @cascadeflow/core
Why cascadeflow?
Proxy vs In-Process Harness
| Dimension | External Proxy | cascadeflow Harness |
|---|---|---|
| Scope | HTTP request boundary | Inside agent execution loop |
| Dimensions | Cost only | Cost + quality + latency + budget + compliance + energy |
| Latency overhead | 10-50ms network RTT | <5ms in-process |
| Business logic | None | KPI weights and targets |
| Enforcement | None (observe only) | stop, deny_tool, switch_model |
| Auditability | Request logs | Per-step decision traces |
cascadeflow is a library and agent harness — an intelligent AI model cascading package that dynamically selects the optimal model for each query or tool call through speculative execution. It's based on the research that 40-70% of queries don't require slow, expensive flagship models, and domain-specific smaller models often outperform large general-purpose models on specialized tasks. For the remaining queries that need advanced reasoning, cascadeflow automatically escalates to flagship models if needed.
Use Cases
- Inside-the-Loop Control. Influence decisions at every agent step — model call, tool call, sub-agent handoff — where most cost, delay, and failure actually happen. External proxies only see request boundaries; cascadeflow sees decision boundaries.
- Multi-Dimensional Optimization. Optimize across cost, latency, quality, budget, compliance/risk, and energy simultaneously — relevant to engineering, finance, security, operations, and sustainability stakeholders.
- Business Logic Injection. Embed KPI weights and policy intent directly into agent behavior at runtime. Shift AI control from static prompt design to live business governance.
- Runtime Enforcement. Directly steer outcomes with four actions:
allow,switch_model,deny_tool,stop— based on current context and policy state. Closes the gap between analytics and execution. - Auditability & Transparency. Every runtime decision is traceable and attributable. Supports audit requirements, faster tuning cycles, and trust in regulated or high-stakes workflows.
- Measurable Value. Prove impact with reproducible metrics on realistic agent workflows — better economics and latency while preserving quality thresholds.
- Latency Advantage. Proxy-based optimization adds 40-60ms per call. In a 10-step agent loop, that is 400-600ms of avoidable overhead. cascadeflow runs in-process with sub-5ms overhead — critical for real-time UX, task throughput, and enterprise SLAs.
- Framework & Provider Neutral. Works with LangChain, OpenAI Agents SDK, CrewAI, PydanticAI, Google ADK, Vercel AI SDK, n8n, and custom frameworks. Unified API across OpenAI, Anthropic, Groq, Ollama, vLLM, Together, and more.
- Self-Improving Agent Intelligence. Because cascadeflow runs inside the agent loop, it accumulates deep insight into every model call, tool result, quality score, and routing decision over time. This enables cascadeflow to learn which models perform best for which tasks, adapt routing strategies, and continuously improve cost-quality tradeoffs — without manual tuning. The agent gets smarter the more it runs.
- Edge & Local-Hosted AI. Handle most queries with local models (vLLM, Ollama), automatically escalate complex queries to cloud providers only when needed.
ℹ️ Note: SLMs (under 10B parameters) are sufficiently powerful for 60-70% of agentic AI tasks. Research paper
How cascadeflow Works
cascadeflow uses speculative execution with quality validation:
- Speculatively executes small, fast models first - optimistic execution ($0.15-0.30/1M tokens)
- Validates quality of responses using configurable thresholds (completeness, confidence, correctness)
- Dynamically escalates to larger models only when quality validation fails ($1.25-3.00/1M tokens)
- Learns patterns to optimize future cascading decisions and domain specific routing
Zero configuration. Works with YOUR existing models (>17 providers currently supported).
In practice, 60-70% of queries are handled by small, efficient models (8-20x cost difference) without requiring escalation
Result: 40-85% cost reduction, 2-10x faster responses, zero quality loss.
┌─────────────────────────────────────────────────────────────┐
│ cascadeflow Stack │
├─────────────────────────────────────────────────────────────┤
│ │
│ ┌───────────────────────────────────────────────────────┐ │
│ │ Cascade Agent │ │
│ │ │ │
│ │ Orchestrates the entire cascade execution │ │
│ │ • Query routing & model selection │ │
│ │ • Drafter -> Verifier coordination │ │
│ │ • Cost tracking & telemetry │ │
│ └───────────────────────────────────────────────────────┘ │
│ ↓ │
│ ┌───────────────────────────────────────────────────────┐ │
│ │ Domain Pipeline │ │
│ │ │ │
│ │ Automatic domain classification │ │
│ │ • Rule-based detection (CODE, MATH, DATA, etc.) │ │
│ │ • Optional ML semantic classification │ │
│ │ • Domain-optimized pipelines & model selection │ │
│ └───────────────────────────────────────────────────────┘ │
│ ↓ │
│ ┌───────────────────────────────────────────────────────┐ │
│ │ Quality Validation Engine │ │
│ │ │ │
│ │ Multi-dimensional quality checks │ │
│ │ • Length validation (too short/verbose) │ │
│ │ • Confidence scoring (logprobs analysis) │ │
│ │ • Format validation (JSON, structured output) │ │
│ │ • Semantic alignment (intent matching) │ │
│ └───────────────────────────────────────────────────────┘ │
│ ↓ │
│ ┌───────────────────────────────────────────────────────┐ │
│ │ Cascading Engine (<2ms overhead) │ │
│ │ │ │
│ │ Smart model escalation strategy │ │
│ │ • Try cheap models first (speculative execution) │ │
│ │ • Validate quality instantly │ │
│ │ • Escalate only when needed │ │
│ │ • Automatic retry & fallback │ │
│ └───────────────────────────────────────────────────────┘ │
│ ↓ │
│ ┌───────────────────────────────────────────────────────┐ │
│ │ Provider Abstraction Layer │ │
│ │ │ │
│ │ Unified interface for >17 providers │ │
│ │ • OpenAI • Anthropic • Groq • Ollama │ │
│ │ • Together • vLLM • HuggingFace • LiteLLM │ │
│ │ • Vercel AI SDK (17+ additional providers) │ │
│ └───────────────────────────────────────────────────────┘ │
│ │
└─────────────────────────────────────────────────────────────┘
Harness API
Three tiers of integration — zero-change observability to full policy control:
Tier 1: Zero-change observability
import cascadeflow
cascadeflow.init(mode="observe")
# All OpenAI/Anthropic SDK calls are now tracked. No code changes needed.
Tier 2: Scoped runs with budget
with cascadeflow.run(budget=0.50, max_tool_calls=10) as session:
result = await agent.run("Analyze this dataset")
print(session.summary()) # cost, latency, energy, steps, tool calls
print(session.trace()) # full decision audit trail
Tier 3: Decorated agents with policy
@cascadeflow.agent(budget=0.20, compliance="gdpr", kpi_weights={"quality": 0.6, "cost": 0.3, "latency": 0.1})
async def my_agent(query: str):
return await llm.complete(query)
Quick Start
Python
pip install cascadeflow[all]
from cascadeflow import CascadeAgent, ModelConfig
# Define your cascade - try cheap model first, escalate if needed
agent = CascadeAgent(models=[
ModelConfig(name="gpt-4o-mini", provider="openai", cost=0.000375), # Draft model (~$0.375/1M tokens)
ModelConfig(name="gpt-5", provider="openai", cost=0.00562), # Verifier model (~$5.62/1M tokens)
])
# Run query - automatically routes to optimal model
result = await agent.run("What's the capital of France?")
print(f"Answer: {result.content}")
print(f"Model used: {result.model_used}")
print(f"Cost: ${result.total_cost:.6f}")
💡 Optional: Use ML-based Semantic Quality Validation
For advanced use cases, you can add ML-based semantic similarity checking to validate that responses align with queries.
Step 1: Install the optional ML package:
pip install cascadeflow[semantic] # Adds semantic similarity via FastEmbed (~80MB model)
Step 2: Use semantic quality validation:
from cascadeflow.quality.semantic import SemanticQualityChecker
# Initialize semantic checker (downloads model on first use)
checker = SemanticQualityChecker(
similarity_threshold=0.5, # Minimum similarity score (0-1)
toxicity_threshold=0.7 # Maximum toxicity score (0-1)
)
# Validate query-response alignment
query = "Explain Python decorators"
response = "Decorators are a way to modify functions using @syntax..."
result = checker.validate(query, response, check_toxicity=True)
print(f"Similarity: {result.similarity:.2%}")
print(f"Passed: {result.passed}")
print(f"Toxic: {result.is_toxic}")
What you get:
- 🎯 Semantic similarity scoring (query ↔ response alignment)
- 🛡️ Optional toxicity detection
- 🔄 Automatic model download and caching
- 🚀 Fast inference (~100ms per check)
Full example: See semantic_quality_domain_detection.py
⚠️ GPT-5 Note: GPT-5 streaming requires organization verification. Non-streaming works for all users. Verify here if needed (~15 min). Basic cascadeflow examples work without - GPT-5 is only called when needed (typically 20-30% of requests).
📖 Learn more: Python Documentation | Quickstart Guide | Providers Guide
TypeScript
npm install @cascadeflow/core
import { CascadeAgent, ModelConfig } from '@cascadeflow/core';
// Same API as Python!
const agent = new CascadeAgent({
models: [
{ name: 'gpt-4o-mini', provider: 'openai', cost: 0.000375 },
{ name: 'gpt-4o', provider: 'openai', cost: 0.00625 },
],
});
const result = await agent.run('What is TypeScript?');
console.log(`Model: ${result.modelUsed}`);
console.log(`Cost: $${result.totalCost}`);
console.log(`Saved: ${result.savingsPercentage}%`);
💡 Optional: ML-based Semantic Quality Validation
For advanced quality validation, enable ML-based semantic similarity checking to ensure responses align with queries.
Step 1: Install the optional ML packages:
npm install @cascadeflow/ml @huggingface/transformers
Step 2: Enable semantic validation in your cascade:
import { CascadeAgent, SemanticQualityChecker } from '@cascadeflow/core';
const agent = new CascadeAgent({
models: [
{ name: 'gpt-4o-mini', provider: 'openai', cost: 0.000375 },
{ name: 'gpt-4o', provider: 'openai', cost: 0.00625 },
],
quality: {
threshold: 0.40, // Traditional confidence threshold
requireMinimumTokens: 5, // Minimum response length
useSemanticValidation: true, // Enable ML validation
semanticThreshold: 0.5, // 50% minimum similarity
},
});
// Responses now validated for semantic alignment
const result = await agent.run('Explain TypeScript generics');
Step 3: Or use semantic validation directly:
import { SemanticQualityChecker } from '@cascadeflow/core';
const checker = new SemanticQualityChecker();
if (await checker.isAvailable()) {
const result = await checker.checkSimilarity(
'What is TypeScript?',
'TypeScript is a typed superset of JavaScript.'
);
console.log(`Similarity: ${(result.similarity * 100).toFixed(1)}%`);
console.log(`Passed: ${result.passed}`);
}
What you get:
- 🎯 Query-response semantic alignment detection
- 🚫 Off-topic response filtering
- 📦 BGE-small-en-v1.5 embeddings (~40MB, auto-downloads)
- ⚡ Fast CPU inference (~50-100ms with caching)
- 🔄 Request-scoped caching (50% latency reduction)
- 🌐 Works in Node.js, Browser, and Edge Functions
Example: semantic-quality.ts
📖 Learn more: TypeScript Documentation | Quickstart Guide | Node.js Examples
🔄 Migration Example
Migrate in 5min from direct Provider implementation to cost savings and full cost control and transparency.
Before (Standard Approach)
Cost: $0.000113, Latency: 850ms
# Using expensive model for everything
result = openai.chat.completions.create(
model="gpt-4o",
messages=[{"role": "user", "content": "What's 2+2?"}]
)
After (With cascadeflow)
Cost: $0.000007, Latency: 234ms
agent = CascadeAgent(models=[
ModelConfig(name="gpt-4o-mini", provider="openai", cost=0.000375),
ModelConfig(name="gpt-4o", provider="openai", cost=0.00625),
])
result = await agent.run("What's 2+2?")
🔥 Saved: $0.000106 (94% reduction), 3.6x faster
📊 Learn more: Cost Tracking Guide | Production Best Practices | Performance Optimization
Drop-In Gateway (Existing Apps)
If you already have an app using the OpenAI or Anthropic APIs and want the fastest integration, run the gateway and point your existing client at it:
python -m cascadeflow.server --mode auto --port 8084
n8n Integration
Use cascadeflow in n8n workflows for no-code AI automation with automatic cost optimization!
Installation
- Open n8n
- Go to Settings → Community Nodes
- Search for:
@cascadeflow/n8n-nodes-cascadeflow - Click Install
Two Nodes
| Node | Type | Use case |
|---|---|---|
| CascadeFlow (Model) | Language Model sub-node | Drop-in for any Chain/LLM node |
| CascadeFlow Agent | Standalone agent (main in/out) |
Tool calling, memory, multi-step reasoning |
Quick Start (Model):
- Add two AI Chat Model nodes (cheap drafter + powerful verifier)
- Add CascadeFlow (Model) and connect both models
- Connect to Basic LLM Chain or Chain node
- Check Logs tab on the Chain node to see cascade decisions
Quick Start (Agent):
- Add a Chat Trigger node
- Add CascadeFlow Agent and connect it to the trigger
- Connect Drafter, Verifier, optional Memory and Tools
- Check the Agent Output tab for cascade metadata and trace
Result: 40-85% cost savings in your n8n workflows!
Features:
- Works with any AI Chat Model node (OpenAI, Anthropic, Ollama, Azure, etc.)
- Mix providers (e.g., Ollama drafter + GPT-4o verifier)
- Agent node: tool calling, memory, per-tool routing, tool call validation
- 16-domain cascading for specialized model routing
- Real-time flow visualization in Logs/Output tabs
🔌 Learn more: n8n Integration Guide | n8n Package

LangChain Integration
Use cascadeflow with LangChain for intelligent model cascading with full LCEL, streaming, and tools support!
Installation
TypeScript
npm install @cascadeflow/langchain @langchain/core @langchain/openai
Python
pip install cascadeflow langchain-openai
Quick Start
TypeScript - Drop-in replacement for any LangChain chat model
import { ChatOpenAI } from '@langchain/openai';
import { ChatAnthropic } from '@langchain/anthropic';
import { withCascade } from '@cascadeflow/langchain';
const cascade = withCascade({
drafter: new ChatOpenAI({ model: 'gpt-4o-mini' }), // $0.15/$0.60 per 1M tokens
verifier: new ChatAnthropic({ model: 'claude-sonnet-4-5' }), // $3/$15 per 1M tokens
qualityThreshold: 0.8, // 80% queries use drafter
});
// Use like any LangChain chat model
const result = await cascade.invoke('Explain quantum computing');
// Optional: Enable LangSmith tracing (see https://smith.langchain.com)
// Set LANGSMITH_API_KEY, LANGSMITH_PROJECT, LANGSMITH_TRACING=true
// Or with LCEL chains
const chain = prompt.pipe(cascade).pipe(new StringOutputParser());
Python - Drop-in replacement for any LangChain chat model
from langchain_openai import ChatOpenAI
from langchain_anthropic import ChatAnthropic
from cascadeflow.integrations.langchain import CascadeFlow
cascade = CascadeFlow(
drafter=ChatOpenAI(model="gpt-4o-mini"), # $0.15/$0.60 per 1M tokens
verifier=ChatAnthropic(model="claude-sonnet-4-5"), # $3/$15 per 1M tokens
quality_threshold=0.8, # 80% queries use drafter
)
# Use like any LangChain chat model
result = await cascade.ainvoke("Explain quantum computing")
# Optional: Enable LangSmith tracing (see https://smith.langchain.com)
# Set LANGSMITH_API_KEY, LANGSMITH_PROJECT, LANGSMITH_TRACING=true
# Or with LCEL chains
chain = prompt | cascade | StrOutputParser()
💡 Optional: Cost Tracking with Callbacks (Python)
Track costs, tokens, and cascade decisions with LangChain-compatible callbacks:
from cascadeflow.integrations.langchain.langchain_callbacks import get_cascade_callback
# Track costs similar to get_openai_callback()
with get_cascade_callback() as cb:
response = await cascade.ainvoke("What is Python?")
print(f"Total cost: ${cb.total_cost:.6f}")
print(f"Drafter cost: ${cb.drafter_cost:.6f}")
print(f"Verifier cost: ${cb.verifier_cost:.6f}")
print(f"Total tokens: {cb.total_tokens}")
print(f"Successful requests: {cb.successful_requests}")
Features:
- 🎯 Compatible with
get_openai_callback()pattern - 💰 Separate drafter/verifier cost tracking
- 📊 Token usage (including streaming)
- 🔄 Works with LangSmith tracing
- ⚡ Near-zero overhead
Full example: See langchain_cost_tracking.py
💡 Optional: Model Discovery & Analysis Helpers (TypeScript)
For discovering optimal cascade pairs from your existing LangChain models, use the built-in discovery helpers:
import {
discoverCascadePairs,
findBestCascadePair,
analyzeModel,
validateCascadePair
} from '@cascadeflow/langchain';
// Your existing LangChain models (configured with YOUR API keys)
const myModels = [
new ChatOpenAI({ model: 'gpt-3.5-turbo' }),
new ChatOpenAI({ model: 'gpt-4o-mini' }),
new ChatOpenAI({ model: 'gpt-4o' }),
new ChatAnthropic({ model: 'claude-3-haiku' }),
// ... any LangChain chat models
];
// Quick: Find best cascade pair
const best = findBestCascadePair(myModels);
console.log(`Best pair: ${best.analysis.drafterModel} → ${best.analysis.verifierModel}`);
console.log(`Estimated savings: ${best.estimatedSavings}%`);
// Use it immediately
const cascade = withCascade({
drafter: best.drafter,
verifier: best.verifier,
});
// Advanced: Discover all valid pairs
const pairs = discoverCascadePairs(myModels, {
minSavings: 50, // Only pairs with ≥50% savings
requireSameProvider: false, // Allow cross-provider cascades
});
// Validate specific pair
const validation = validateCascadePair(drafter, verifier);
console.log(`Valid: ${validation.valid}`);
console.log(`Warnings: ${validation.warnings}`);
What you get:
- 🔍 Automatic discovery of optimal cascade pairs from YOUR models
- 💰 Estimated cost savings calculations
- ⚠️ Validation warnings for misconfigured pairs
- 📊 Model tier analysis (drafter vs verifier candidates)
Full example: See model-discovery.ts
Features:
- ✅ Full LCEL support (pipes, sequences, batch)
- ✅ Streaming with pre-routing
- ✅ Tool calling and structured output
- ✅ LangSmith cost tracking metadata
- ✅ Cost tracking callbacks (Python)
- ✅ Works with all LangChain features
🦜 Learn more: LangChain Integration Guide | TypeScript Package | Python Examples
Resources
Examples
Python Examples:
Basic Examples - Get started quickly
| Example | Description | Link |
|---|---|---|
| Basic Usage | Simple cascade setup with OpenAI models | View |
| Preset Usage | Use built-in presets for quick setup | View |
| Tool Execution | Function calling and tool usage | View |
| Streaming Text | Stream responses from cascade agents | View |
| Cost Tracking | Track and analyze costs across queries | View |
| Agentic Multi-Agent | Multi-turn tool loops & agent-as-a-tool delegation | View |
| Multi-Step Cascade | Multi-step agent loops with tool calls | View |
Harness & Enforcement - Budget, compliance, and agent governance
| Example | Description | Link |
|---|---|---|
| Budget Enforcement | Budget caps with stop actions in enforce mode | View |
| User Budget Tracking | Per-user budget enforcement and tracking | View |
| Guardrails | Safety and content guardrails | View |
| Rate Limiting | Rate limiting for cascades | View |
| User Profile Usage | User-specific routing and configurations | View |
| Stripe Integration | Billing integration with budget enforcement | View |
Framework Integrations - Harness with LangChain, OpenAI Agents, CrewAI, PydanticAI, Google ADK
| Example | Description | Link |
|---|---|---|
| LangChain Harness | cascadeflow harness with LangChain callback handler | View |
| OpenAI Agents Harness | cascadeflow harness with OpenAI Agents SDK | View |
| CrewAI Harness | cascadeflow harness with CrewAI hooks | View |
| PydanticAI Harness | cascadeflow cascade Model with PydanticAI agents | View |
| Google ADK Harness | cascadeflow harness with Google ADK plugin | View |
| LangChain Basic | Simple LangChain cascade setup | View |
| LangChain LCEL Pipeline | LCEL chains with cascade routing | View |
| LangGraph Multi-Agent | LangGraph multi-agent orchestration | View |
Advanced Examples - Production, providers & customization
| Example | Description | Link |
|---|---|---|
| Production Patterns | Best practices for production deployments | View |
| Multi-Provider | Mix multiple AI providers in one cascade | View |
| Reasoning Models | Use reasoning models (o1/o3, Claude Sonnet 4, DeepSeek-R1) | View |
| Streaming Tools | Stream tool calls and responses | View |
| Batch Processing | Process multiple queries efficiently | View |
| FastAPI Integration | Integrate cascades with FastAPI | View |
| Edge Device | Run cascades on edge devices with local models | View |
| vLLM Example | Use vLLM for local model deployment | View |
| Multi-Instance Ollama | Run draft/verifier on separate Ollama instances | View |
| Custom Cascade | Build custom cascade strategies | View |
| Custom Validation | Implement custom quality validators | View |
| Semantic Quality Detection | ML-based domain and quality detection | View |
| Cost Forecasting | Forecast costs and detect anomalies | View |
TypeScript Examples:
Basic Examples - Get started quickly
| Example | Description | Link |
|---|---|---|
| Basic Usage | Simple cascade setup (Node.js) | View |
| Tool Calling | Function calling with tools (Node.js) | View |
| Multi-Provider | Mix providers in TypeScript (Node.js) | View |
| Reasoning Models | Use reasoning models (o1/o3, Claude Sonnet 4, DeepSeek-R1) | View |
| Cost Tracking | Track and analyze costs across queries | View |
| Semantic Quality | ML-based semantic validation with embeddings | View |
| Streaming | Stream responses in TypeScript | View |
| Tool Execution | Tool execution engine and result handling | View |
| Streaming Tools | Stream tool calls with event detection | View |
| Agentic Multi-Agent | Multi-turn tool loops & multi-agent orchestration | View |
Advanced Examples - Production, edge & LangChain
| Example | Description | Link |
|---|---|---|
| Production Patterns | Production best practices (Node.js) | View |
| Multi-Instance Ollama | Run draft/verifier on separate Ollama instances | View |
| Multi-Instance vLLM | Run draft/verifier on separate vLLM instances | View |
| Browser/Edge | Vercel Edge runtime example | View |
| LangChain Basic | Simple LangChain cascade setup | View |
| LangChain Cross-Provider | Haiku → GPT-5 with PreRouter | View |
| LangChain LangSmith | Cost tracking with LangSmith | View |
| LangChain Cost Tracking | Compare cascadeflow vs LangSmith cost tracking | View |
| LangGraph Multi-Agent | LangGraph multi-agent orchestration | View |
| LangChain Tool Risk Gating | Tool routing based on risk and complexity | View |
📂 View All Python Examples → | View All TypeScript Examples →
Documentation
Getting Started - Core concepts and basics
| Guide | Description | Link |
|---|---|---|
| Quickstart | Get started with cascadeflow in 5 minutes | Read |
| Providers Guide | Configure and use different AI providers | Read |
| Presets Guide | Using and creating custom presets | Read |
| Streaming Guide | Stream responses from cascade agents | Read |
| Tools Guide | Function calling and tool usage | Read |
| Cost Tracking | Track and analyze API costs | Read |
| Agentic Patterns | Tool loops, multi-agent, agent-as-a-tool delegation | Read |
| Agent Harness | Budget, compliance, KPI, and energy controls | Read |
| Rollout Guide | Plan your production rollout | Read |
Advanced Topics - Production, customization & integrations
| Guide | Description | Link |
|---|---|---|
| Production Guide | Best practices for production deployments | Read |
| Enterprise Networking | Proxy, TLS, and network configuration | Read |
| Customization | Custom cascade strategies and validators | Read |
| Observability | Telemetry, logging, and privacy controls | Read |
| LangChain Integration | Use cascadeflow with LangChain | Read |
| OpenAI Agents SDK | Use cascadeflow with OpenAI Agents | Read |
| CrewAI Integration | Use cascadeflow with CrewAI | Read |
| PydanticAI Integration | Cascade Model for PydanticAI agents | Read |
| Google ADK | Use cascadeflow with Google ADK | Read |
| n8n Integration | Use cascadeflow in n8n workflows | Read |
| Vercel AI SDK | Middleware for Vercel AI SDK | Read |
Features
| Feature | Benefit |
|---|---|
| 🎯 Speculative Cascading | Tries cheap models first, escalates intelligently |
| 💰 40-85% Cost Savings | Research-backed, proven in production |
| ⚡ 2-10x Faster | Small models respond in <50ms vs 500-2000ms |
| ⚡ Low Latency | Sub-2ms framework overhead, negligible performance impact |
| 🔄 Mix Any Providers | OpenAI, Anthropic, Groq, Ollama, vLLM, Together + LiteLLM (optional) + LangChain integration |
| 👤 User Profile System | Per-user budgets, tier-aware routing, enforcement callbacks |
| ✅ Quality Validation | Automatic checks + semantic similarity (optional ML, ~80MB, CPU) |
| 🎨 Cascading Policies | Domain-specific pipelines, multi-step validation strategies |
| 🧠 Domain Understanding | 15 domains auto-detected (code, medical, legal, finance, math, etc.), routes to specialists |
| 🤖 Drafter/Validator Pattern | 20-60% savings for agent/tool systems |
| 🔧 Tool Calling Support | Universal format, works across all providers |
| 📊 Cost Tracking | Built-in analytics + OpenTelemetry export (vendor-neutral) |
| 🚀 3-Line Integration | Zero architecture changes needed |
| 🔁 Agent Loops | Multi-turn tool execution with automatic tool call, result, re-prompt cycles |
| 📋 Message & Tool Call Lists | Full conversation history with tool_calls and tool_call_id preservation across turns |
| 🪝 Hooks & Callbacks | Telemetry callbacks, cost events, and streaming hooks for observability |
| 🏭 Production Ready | Streaming, batch processing, tool handling, reasoning model support, caching, error recovery, anomaly detection |
| 💳 Budget Enforcement | Per-run and per-user budget caps with automatic stop actions when limits are exceeded |
| 🔒 Compliance Gating | GDPR, HIPAA, PCI, and strict model allowlists — block non-compliant models before execution |
| 📊 KPI-Weighted Routing | Inject business priorities (quality, cost, latency, energy) as weights into every model decision |
| 🌱 Energy Tracking | Deterministic compute-intensity coefficients for carbon-aware AI operations |
| 🔍 Decision Traces | Full per-step audit trail: action, reason, model, cost, budget state, enforcement status |
| ⚙️ Harness Modes | off / observe / enforce — roll out safely with observe, then switch to enforce when ready |
License
MIT © see LICENSE file.
Free for commercial use. Attribution appreciated but not required.
Contributing
We ❤️ contributions!
📝 Contributing Guide - Python & TypeScript development setup
Recently Shipped
- ✅ Agent Loops & Multi-Agent - Multi-turn tool execution, agent-as-a-tool delegation, LangGraph orchestration
- ✅ Tool Execution Engine - Automatic tool call routing, parallel execution, risk gating
- ✅ Hooks & Callbacks - Telemetry callbacks, cost events, streaming hooks for observability
- ✅ Vercel AI SDK Integration - 17+ additional providers with automatic provider detection
- ✅ OpenClaw Provider - Custom provider for OpenClaw deployments
- ✅ Gateway Server - Drop-in OpenAI/Anthropic-compatible proxy endpoint
- ✅ User Tier Management - Cost controls and limits per user tier with advanced routing
- ✅ Semantic Quality Validators - Lightweight local quality scoring via FastEmbed
- ✅ Code Complexity Detection - Dynamic cascading based on task complexity analysis
- ✅ Domain Aware Cascading - ML-based semantic domain detection with per-domain routing
Support
- 📖 GitHub Discussions - Searchable Q&A
- 🐛 GitHub Issues - Bug reports & feature requests
- 📧 Email Support - Direct support
Citation
If you use cascadeflow in your research or project, please cite:
@software{cascadeflow2025,
author = {Lemony Inc., Sascha Buehrle and Contributors},
title = {cascadeflow: Agent runtime intelligence layer for AI agent workflows},
year = {2025},
publisher = {GitHub},
url = {https://github.com/lemony-ai/cascadeflow}
}
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