c3a826b65c
PHASE A: Safe predicate evaluator (glyphos/control/predicate.py) - AST-based safe expression evaluation - Supports comparisons, boolean ops, attribute access - Helper function: dominant_contains() - Protected against code injection attacks PHASE B: XICContext queue helpers - enqueue_chain(label) for FIFO chain scheduling - pop_next_chain() to get next scheduled chain - jump_to(label) for immediate destination changes PHASE C: Control flow operations (xic_ops.py) - op_IF: Conditional branching with optional else - op_MATCH: Pattern matching against fused fields - op_LOOP: Iterative execution with guardrails - Added to OP_TABLE for operation dispatch PHASE D: Execution loop enhancement (xic_vm.py) - Chain queue scheduling with label matching - Total steps tracking for guardrail enforcement - max_total_steps limit across all operations - Graceful execution stop on guardrail trigger PHASE E: Comprehensive test suite (tests/test_control_flow.py) - 14 unit tests covering all operations - Predicate evaluator tests - IF/MATCH/LOOP operation tests - Queue helper and guardrail tests - All tests passing (14/14) PHASE F: Example programs - demo_control_flow_if.gx.json: IF branching example - demo_control_flow_loop.gx.json: LOOP iteration example PHASE G: Complete documentation - XIC_V2_CONTROL_FLOW_SUMMARY.md: Technical guide - XIC_V2_QUICK_REFERENCE.md: Developer quick reference - FedMart UI and integration documentation Integration points: - FedMart telemetry captures control flow steps - UI dashboard displays control branching - Symbolic pipeline predicate evaluation - 100% backward compatible with XIC v1.5 Test results: 36/36 passing (14 control flow + 12 FedMart + 10 UI) Status: Production ready
221 lines
5.2 KiB
Markdown
221 lines
5.2 KiB
Markdown
# XIC v2 Control Flow - Quick Reference
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## Operations Summary
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### IF - Conditional Branching
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```
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IF <predicate> <then_label> [<else_label>]
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```
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**What it does**: Evaluates a predicate and branches to different chains
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**When to use**: Decision points based on resonance scores, glyph presence, etc.
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```json
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{"op": "IF", "args": ["fused.global_resonance_score > 0.8", "analysis_deep", "analysis_simple"]}
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```
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### MATCH - Pattern Matching
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```
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MATCH <path> <pattern> <then_label>
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```
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**What it does**: Checks if a pattern matches a fused symbol field
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**When to use**: Looking for specific glyphs in resonance map
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```json
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{"op": "MATCH", "args": ["fused.glyph_ids", "glyph://entropy", "entropy_found"]}
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```
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### LOOP - Iterative Execution
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```
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LOOP <predicate> <body_label> [max_iter]
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```
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**What it does**: Repeatedly runs a chain while predicate is true
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**When to use**: Iterative refinement, convergence detection
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```json
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{"op": "LOOP", "args": ["fused.global_resonance_score > 0.6", "refine_step", 5]}
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```
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---
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## Predicate Syntax
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### Fields
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Access fused symbol fields with dot notation:
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```
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fused.global_resonance_score # float 0.0-1.0
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fused.glyph_ids # list of strings
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fused.glyph_count # integer
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```
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### Operators
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```
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> Greater than
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< Less than
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>= Greater or equal
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<= Less or equal
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== Equal
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!= Not equal
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and Boolean AND
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or Boolean OR
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not Boolean NOT
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```
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### Examples
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```
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fused.global_resonance_score > 0.8
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fused.global_resonance_score > 0.8 and fused.glyph_count > 1
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fused.global_resonance_score <= 0.3 or fused.glyph_count < 2
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not (fused.global_resonance_score < 0.5)
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```
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### Helper Functions
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```
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dominant_contains('glyph://id') # Check if glyph in dominant list
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```
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Example:
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```
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dominant_contains('glyph://entropy')
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dominant_contains('glyph://compression') and fused.global_resonance_score > 0.7
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```
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---
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## Complete Program Example
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```json
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{
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"magic": "GXIC1",
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"version": 1,
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"entrypoint": "main",
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"symbols": {
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"main": 0,
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"loop_body": 7,
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"high_path": 11,
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"low_path": 14,
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"end": 16
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},
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"instructions": [
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{"op": "SET_MODE", "args": ["symbolic"]},
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{"op": "SET_CONTEXT", "args": ["domain", "analysis"]},
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{"op": "PUSH_GLYPH_CONTEXT", "args": ["glyph://a"]},
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{"op": "PUSH_GLYPH_CONTEXT", "args": ["glyph://b"]},
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{"op": "LOOP", "args": ["fused.global_resonance_score > 0.5", "loop_body", 3]},
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{"op": "CHAIN", "args": ["loop_body"]},
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{"op": "RUN_PROMPT", "args": ["Refine the analysis"]},
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{"op": "IF", "args": ["fused.global_resonance_score > 0.8", "high_path", "low_path"]},
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{"op": "CHAIN", "args": ["high_path"]},
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{"op": "LOG", "args": ["High resonance detected"]},
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{"op": "RUN_PROMPT", "args": ["Detailed analysis"]},
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{"op": "CHAIN", "args": ["end"]},
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{"op": "CHAIN", "args": ["low_path"]},
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{"op": "LOG", "args": ["Lower resonance - trying different approach"]},
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{"op": "RUN_PROMPT", "args": ["Alternative analysis"]},
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{"op": "CHAIN", "args": ["end"]},
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{"op": "CHAIN", "args": ["end"]},
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{"op": "LOG", "args": ["Control flow complete"]}
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]
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}
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```
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---
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## Parameters
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Set limits with `SET_PARAM`:
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```json
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{"op": "SET_PARAM", "args": ["max_loop_iterations", 5]}
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{"op": "SET_PARAM", "args": ["max_total_steps", 100]}
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```
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**Default Values:**
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- `max_loop_iterations`: 50
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- `max_total_steps`: 1000
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---
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## Testing Your Control Flow
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```python
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from xic_loader import XICProgram
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from xic_vm import run_xic_program
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# Load your program
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prog = XICProgram.from_json_file("your_program.gx.json")
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# Execute
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ctx = run_xic_program(prog)
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# Check results
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print(ctx._state.get("control_steps")) # Control decisions made
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print(ctx._state.get("guardrails")) # Guardrails triggered
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print(ctx._state.get("symbolic_steps")) # All execution steps
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```
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---
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## Troubleshooting
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### "Chain 'xyz' not found"
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- Make sure you have a `CHAIN` instruction with the label name
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- Check spelling exactly matches
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### "Predicate evaluation error"
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- Check syntax: `fused.field_name` (not `fused['field_name']`)
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- Verify field exists in fused symbol
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- Test with simpler predicate first
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### "Guardrail triggered"
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- Loop exceeded max iterations: increase `max_loop_iterations`
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- Total steps exceeded: increase `max_total_steps`
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- Check predicate doesn't always evaluate true
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### Control flow not executing
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- Verify `CHAIN` labels match between ops and chain names
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- Check execution with `ctx._state["symbolic_steps"]`
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- Enable `LOG` ops to trace execution path
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---
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## Performance Tips
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1. **Keep predicates simple** - Complex boolean logic slows evaluation
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2. **Set reasonable loop limits** - High max_loop_iterations can timeout
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3. **Use MATCH for frequent checks** - Simpler than IF with complex predicates
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4. **Monitor total_steps** - Long programs may hit max_total_steps
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---
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## Integration with FedMart
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Control flow steps automatically:
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- Appear in telemetry events
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- Display in dashboard timeline
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- Contribute to symbolic steps tracking
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- Trigger guardrail alerts when limits hit
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---
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## Next Steps
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1. Review example programs:
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- `programs/demo_control_flow_if.gx.json`
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- `programs/demo_control_flow_loop.gx.json`
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2. Check test suite:
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- `tests/test_control_flow.py`
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3. Read full documentation:
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- `XIC_V2_CONTROL_FLOW_SUMMARY.md`
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---
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**XIC v2 Control Flow - Ready to Use** ✅
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