CSL-Core (Chimera Specification Language) is a deterministic safety layer for AI agents. Write rules in .csl files, verify them mathematically with Z3, enforce them at runtime — outside the model. The LLM never sees the rules. It simply cannot violate them. Originally built for Project Chimera, now open-source for any AI system. This doesn't work. LLMs can be prompt-injected, rules are probabilist
Add this skill
npx mdskills install Chimera-Protocol/csl-coreDeterministic AI safety layer with Z3 formal verification, CLI tools, and framework integrations for policy enforcement
CSL-Core (Chimera Specification Language) is a deterministic safety layer for AI agents. Write rules in .csl files, verify them mathematically with Z3, enforce them at runtime — outside the model. The LLM never sees the rules. It simply cannot violate them.
pip install csl-core
Originally built for Project Chimera, now open-source for any AI system.
prompt = """You are a helpful assistant. IMPORTANT RULES:
- Never transfer more than $1000 for junior users
- Never send PII to external emails
- Never query the secrets table"""
This doesn't work. LLMs can be prompt-injected, rules are probabilistic (99% ≠ 100%), and there's no audit trail when something goes wrong.
CSL-Core flips this: rules live outside the model in compiled, Z3-verified policy files. Enforcement is deterministic — not a suggestion.
Create my_policy.csl:
CONFIG {
ENFORCEMENT_MODE: BLOCK
CHECK_LOGICAL_CONSISTENCY: TRUE
}
DOMAIN MyGuard {
VARIABLES {
action: {"READ", "WRITE", "DELETE"}
user_level: 0..5
}
STATE_CONSTRAINT strict_delete {
WHEN action == "DELETE"
THEN user_level >= 4
}
}
# Compile + Z3 formal verification
cslcore verify my_policy.csl
# Test a scenario
cslcore simulate my_policy.csl --input '{"action": "DELETE", "user_level": 2}'
# → BLOCKED: Constraint 'strict_delete' violated.
# Interactive REPL
cslcore repl my_policy.csl
from chimera_core import load_guard
guard = load_guard("my_policy.csl")
result = guard.verify({"action": "READ", "user_level": 1})
print(result.allowed) # True
result = guard.verify({"action": "DELETE", "user_level": 2})
print(result.allowed) # False
We tested prompt-based safety rules vs CSL-Core enforcement across 4 frontier LLMs with 22 adversarial attacks and 15 legitimate operations:
| Approach | Attacks Blocked | Bypass Rate | Legit Ops Passed | Latency |
|---|---|---|---|---|
| GPT-4.1 (prompt rules) | 10/22 (45%) | 55% | 15/15 (100%) | ~850ms |
| GPT-4o (prompt rules) | 15/22 (68%) | 32% | 15/15 (100%) | ~620ms |
| Claude Sonnet 4 (prompt rules) | 19/22 (86%) | 14% | 15/15 (100%) | ~480ms |
| Gemini 2.0 Flash (prompt rules) | 11/22 (50%) | 50% | 15/15 (100%) | ~410ms |
| CSL-Core (deterministic) | 22/22 (100%) | 0% | 15/15 (100%) | ~0.84ms |
Why 100%? Enforcement happens outside the model. Prompt injection is irrelevant because there's nothing to inject against. Attack categories: direct instruction override, role-play jailbreaks, encoding tricks, multi-turn escalation, tool-name spoofing, and more.
Full methodology:
benchmarks/
Protect any LangChain agent with 3 lines — no prompt changes, no fine-tuning:
from chimera_core import load_guard
from chimera_core.plugins.langchain import guard_tools
from langchain_classic.agents import AgentExecutor, create_tool_calling_agent
guard = load_guard("agent_policy.csl")
# Wrap tools — enforcement is automatic
safe_tools = guard_tools(
tools=[search_tool, transfer_tool, delete_tool],
guard=guard,
inject={"user_role": "JUNIOR", "environment": "prod"}, # LLM can't override these
tool_field="tool" # Auto-inject tool name
)
agent = create_tool_calling_agent(llm, safe_tools, prompt)
executor = AgentExecutor(agent=agent, tools=safe_tools)
Every tool call is intercepted before execution. If the policy says no, the tool doesn't run. Period.
Pass runtime context that the LLM cannot override — user roles, environment, rate limits:
safe_tools = guard_tools(
tools=tools,
guard=guard,
inject={
"user_role": current_user.role, # From your auth system
"environment": os.getenv("ENV"), # prod/dev/staging
"rate_limit_remaining": quota.remaining # Dynamic limits
}
)
from chimera_core.plugins.langchain import gate
chain = (
{"query": RunnablePassthrough()}
| gate(guard, inject={"user_role": "USER"}) # Policy checkpoint
| prompt | llm | StrOutputParser()
)
The CLI is a complete development environment for policies — test, debug, and deploy without writing Python.
verify — Compile + Z3 Proofcslcore verify my_policy.csl
# ⚙️ Compiling Domain: MyGuard
# • Validating Syntax... ✅ OK
# ├── Verifying Logic Model (Z3 Engine)... ✅ Mathematically Consistent
# • Generating IR... ✅ OK
simulate — Test Scenarios# Single input
cslcore simulate policy.csl --input '{"action": "DELETE", "user_level": 2}'
# Batch testing from file
cslcore simulate policy.csl --input-file test_cases.json --dashboard
# CI/CD: JSON output
cslcore simulate policy.csl --input-file tests.json --json --quiet
repl — Interactive Developmentcslcore repl my_policy.csl --dashboard
cslcore> {"action": "DELETE", "user_level": 2}
🛡️ BLOCKED: Constraint 'strict_delete' violated.
cslcore> {"action": "DELETE", "user_level": 5}
✅ ALLOWED
# GitHub Actions
- name: Verify policies
run: |
for policy in policies/*.csl; do
cslcore verify "$policy" || exit 1
done
Write, verify, and enforce safety policies directly from your AI assistant — no code required.
pip install "csl-core[mcp]"
Add to Claude Desktop config (~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"csl-core": {
"command": "uv",
"args": ["run", "--with", "csl-core[mcp]", "csl-core-mcp"]
}
}
}
| Tool | What It Does |
|---|---|
verify_policy | Z3 formal verification — catches contradictions at compile time |
simulate_policy | Test policies against JSON inputs — ALLOWED/BLOCKED |
explain_policy | Human-readable summary of any CSL policy |
scaffold_policy | Generate a CSL template from plain-English description |
You: "Write me a safety policy that prevents transfers over $5000 without admin approval"
Claude: scaffold_policy → you edit → verify_policy catches a contradiction → you fix → simulate_policy confirms it works
┌──────────────────────────────────────────────────────────┐
│ 1. COMPILER .csl → AST → IR → Compiled Artifact │
│ Syntax validation, semantic checks, functor gen │
├──────────────────────────────────────────────────────────┤
│ 2. VERIFIER Z3 Theorem Prover — Static Analysis │
│ Contradiction detection, reachability, rule shadowing │
│ ⚠️ If verification fails → policy will NOT compile │
├──────────────────────────────────────────────────────────┤
│ 3. RUNTIME Deterministic Policy Enforcement │
│ Fail-closed, zero dependencies,
[🏛️](https://github.com/Chimera-Protocol/Project-Chimera)
[Project Chimera](https://github.com/Chimera-Protocol/Project-Chimera) — Neuro-Symbolic AI Agent
CSL-Core powers all safety policies across e-commerce and quantitative trading domains. Both are Z3-verified at startup.
*Using CSL-Core? [Let us know](https://github.com/Chimera-Protocol/csl-core/discussions) and we'll add you here.*
---
## Example Policies
| Example | Domain | Key Features |
|---------|--------|--------------|
| [`agent_tool_guard.csl`](examples/agent_tool_guard.csl) | AI Safety | RBAC, PII protection, tool permissions |
| [`chimera_banking_case_study.csl`](examples/chimera_banking_case_study.csl) | Finance | Risk scoring, VIP tiers, sanctions |
| [`dao_treasury_guard.csl`](examples/dao_treasury_guard.csl) | Web3 | Multi-sig, timelocks, emergency bypass |
```bash
python examples/run_examples.py # Run all with test suites
python examples/run_examples.py banking # Run specific example
from chimera_core import load_guard, RuntimeConfig
# Load + compile + verify
guard = load_guard("policy.csl")
# With custom config
guard = load_guard("policy.csl", config=RuntimeConfig(
raise_on_block=False, # Return result instead of raising
collect_all_violations=True, # Report all violations, not just first
missing_key_behavior="block" # "block", "warn", or "ignore"
))
# Verify
result = guard.verify({"action": "DELETE", "user_level": 2})
print(result.allowed) # False
print(result.violations) # ['strict_delete']
Full docs: Getting Started · Syntax Spec · CLI Reference · Philosophy
✅ Done: Core language & parser · Z3 verification · Fail-closed runtime · LangChain integration · CLI (verify, simulate, repl) · MCP Server · Production deployment in Chimera v1.7.0
🚧 In Progress: Policy versioning · LangGraph integration
🔮 Planned: LlamaIndex & AutoGen · Multi-policy composition · Hot-reload · Policy marketplace · Cloud templates
🔒 Enterprise (Research): TLA+ temporal logic · Causal inference · Multi-tenancy
We welcome contributions! Start with good first issue or check CONTRIBUTING.md.
High-impact areas: Real-world example policies · Framework integrations · Web-based policy editor · Test coverage
Apache 2.0 (open-core model). The complete language, compiler, Z3 verifier, runtime, CLI, MCP server, and all examples are open-source. See LICENSE.
Built with ❤️ by Chimera Protocol · Issues · Discussions · Email
Install via CLI
npx mdskills install Chimera-Protocol/csl-coreCsl Core is a free, open-source AI agent skill. CSL-Core (Chimera Specification Language) is a deterministic safety layer for AI agents. Write rules in .csl files, verify them mathematically with Z3, enforce them at runtime — outside the model. The LLM never sees the rules. It simply cannot violate them. Originally built for Project Chimera, now open-source for any AI system. This doesn't work. LLMs can be prompt-injected, rules are probabilist
Install Csl Core with a single command:
npx mdskills install Chimera-Protocol/csl-coreThis downloads the skill files into your project and your AI agent picks them up automatically.
Csl Core works with Claude Code, Claude Desktop, Cursor, Vscode Copilot, Windsurf, Continue Dev, Codex, Gemini Cli, Amp, Roo Code, Goose, Opencode, Trae, Qodo, Command Code. Skills use the open SKILL.md format which is compatible with any AI coding agent that reads markdown instructions.