6e0a586f51
Implements all phases of the symbolic pipeline extension: **Phase 1: Symbolic Pipeline Abstraction** - Created glyphos/symbolic_pipeline.py with: - SymbolicStep: tracks individual pipeline steps (name, kind, payload, context) - SymbolicPipelineResult: complete pipeline execution result (steps, output_text, fused_symbol) - run_symbolic_pipeline(prompt, context, glyph_id): high-level pipeline entrypoint - Integrated with glyphos/__init__.py exports **Phase 2: Glyph-Aware Transformations** - Updated glyphos/cognitive_kernel.py: - run_symbolic_prompt() now thin wrapper around pipeline - Maintains backward compatibility - Updated xic_ops.py operations: - op_RUN_PROMPT: uses pipeline in symbolic mode - op_STREAM: uses pipeline with line-by-line output - op_CALL_GLYPH: routes through pipeline with explicit glyph_id parameter - Context propagation: glyph_id automatically injected into LAIN context **Phase 3: XIC Instruction Semantics v1.5** - Created XIC_SEMANTICS_v1_5.md: - Formal specification of all 9 XIC instructions - Complete semantics: preconditions, postconditions, side effects - Symbolic vs compressed behavior for each op - Context model and pipeline semantics - Execution paths (compressed vs symbolic) - Backward compatibility guarantees **Phase 4: Demo Program & Validation** - Created programs/demo_symbolic_pipeline.gx.json - Demonstrates symbolic pipeline with glyph-aware cognition - Uses CALL_GLYPH, RUN_PROMPT, SET_CONTEXT, CHAIN, LOG - All 7 validation tests pass: ✅ Pipeline module imports ✅ Pipeline execution ✅ Glyph-aware transformations ✅ Demo program ✅ CALL_GLYPH result storage ✅ Backward compatibility ✅ run_symbolic_prompt() wrapper **Phase 5: Final Report** - Created XIC_SYMBOLIC_PIPELINE_REPORT.md - Architecture and module hierarchy - Integration points and data flow - Design decisions and rationale - Usage examples Key Features: - Step-level introspection: full SymbolicPipelineResult with step history - Glyph-aware: explicit glyph_id routing through LAIN kernel - Formal semantics: complete specification for tool builders - Backward compatible: all v1 programs work unchanged - No breaking changes: compressed execution path untouched Constraints Met: ✅ No GPU code ✅ No XIC v2 binary container ✅ No .gx format changes ✅ Full backward compatibility
347 lines
10 KiB
Python
347 lines
10 KiB
Python
"""GlyphOS Cognitive Kernel
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Orchestrates LAIN cognition engine with Supercharged Glyph Registry.
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Provides a clean service API for executing GX files and managing glyph-aware analysis.
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"""
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from typing import Optional, Dict, Any, List
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import time
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from pathlib import Path
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from gx_lain.runtime import execute_gx_path, load_gx, normalize_segments, map_lanes, build_envelope, execute_with_lain
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from glyphs.super_registry import load_all_supercharged, super_stats
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from glyphos.events import emit
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class CognitiveKernel:
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"""System service for GlyphOS cognition pipeline.
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Orchestrates:
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- LAIN 8-lane symbolic cognition
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- Supercharged Glyph Registry integration
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- Result caching and introspection
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"""
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def __init__(self, *, auto_load_glyphs: bool = True):
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"""Initialize the Cognitive Kernel.
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Args:
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auto_load_glyphs: If True, load Supercharged Glyphs during warmup.
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Defaults to True.
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"""
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self._auto_load_glyphs = auto_load_glyphs
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self._last_result: Optional[Dict[str, Any]] = None
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self._startup_time: Optional[float] = None
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self._glyph_stats_cache: Optional[Dict[str, Any]] = None
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self._warmed_up = False
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self._last_mode: Optional[str] = None
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def warmup(self) -> None:
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"""Perform one-time initialization.
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Loads:
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- Supercharged Glyphs (if auto_load_glyphs)
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- Registry statistics
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Records:
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- Kernel startup time
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Emits:
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- kernel.warmup.completed event
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"""
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if self._warmed_up:
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return
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self._startup_time = time.time()
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if self._auto_load_glyphs:
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load_all_supercharged()
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# Cache registry stats
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self._glyph_stats_cache = super_stats()
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self._warmed_up = True
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# Emit warmup completed event
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emit("kernel.warmup.completed", {
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"glyph_stats": self._glyph_stats_cache,
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"startup_time": self._startup_time,
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})
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def execute_gx(
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self,
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gx_path: str,
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*,
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mode: str = "analyze",
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context: Optional[Dict[str, Any]] = None
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) -> Dict[str, Any]:
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"""Execute a .gx file through the full cognition pipeline.
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Args:
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gx_path: Path to .gx file
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mode: Cognitive mode (e.g., "analyze", "debug")
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context: Optional execution context dict
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Returns:
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ExecutionResult dict with:
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- fused_symbol: Combined 8-lane analysis
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- output_text: Rendered analysis
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- cognition_trace: Step-by-step processing
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- diagnostics: Performance metrics + glyph resonance
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Emits:
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- cognition.started event
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- cognition.completed event
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- glyph.resonance.updated event (if glyph resonance present)
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"""
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if not self._warmed_up:
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self.warmup()
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# Emit cognition started event
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emit("cognition.started", {
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"gx_path": gx_path,
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"mode": mode,
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"context": context,
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})
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# Build context with mode
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exec_context = context or {}
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exec_context["cognitive_mode"] = mode
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# Execute through LAIN pipeline
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result = execute_gx_path(gx_path, context=exec_context)
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# Cache result
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self._last_result = result
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self._last_mode = mode
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# Extract event payload from result
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fused_symbol = result.get("fused_symbol", {})
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diagnostics = result.get("diagnostics", {})
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# Emit cognition completed event
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emit("cognition.completed", {
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"gx_path": gx_path,
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"mode": mode,
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"elapsed": diagnostics.get("elapsed"),
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"glyph_resonance": diagnostics.get("glyph_resonance"),
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"summary": fused_symbol.get("summary"),
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})
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# Emit glyph resonance event if present
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glyph_resonance = diagnostics.get("glyph_resonance")
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if glyph_resonance and glyph_resonance.get("glyph_found"):
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emit("glyph.resonance.updated", {
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"glyph_id": glyph_resonance.get("glyph_id"),
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"glyph_score": glyph_resonance.get("glyph_score"),
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"glyph_resonance": glyph_resonance,
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})
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return result
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def execute_symbolic(
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self,
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manifest: Dict[str, Any],
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segments: List[Dict[str, Any]],
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payload: bytes,
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*,
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mode: str = "analyze",
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context: Optional[Dict[str, Any]] = None
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) -> Dict[str, Any]:
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"""Execute cognition on in-memory GX components (no filesystem).
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Args:
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manifest: GX manifest dict
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segments: GX segments list
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payload: Compressed GX payload bytes
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mode: Cognitive mode
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context: Optional execution context
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Returns:
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ExecutionResult dict
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"""
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if not self._warmed_up:
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self.warmup()
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# Build context with mode
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exec_context = context or {}
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exec_context["cognitive_mode"] = mode
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# Normalize segments
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normalized_segs = normalize_segments(manifest, segments, payload)
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# Map to lanes (0-7)
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lane_assignments = map_lanes(normalized_segs)
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# Build envelope
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envelope = build_envelope(manifest, lane_assignments, payload, context=exec_context)
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# Execute through LAIN with glyph bridge
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result = execute_with_lain(envelope)
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# Cache result
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self._last_result = result
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self._last_mode = mode
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return result
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def get_glyph_stats(self) -> Dict[str, Any]:
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"""Get Supercharged Glyph Registry statistics.
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Returns:
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Dict with:
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- total_glyphs: 600
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- categories: List of category names
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- fields_present: All fields in registry
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- sample_ids: First 5 glyph IDs
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- loaded: Whether registry is loaded
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- load_path: Path to data file
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- kernel_startup_time: Kernel warmup timestamp
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"""
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if not self._warmed_up:
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self.warmup()
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stats = self._glyph_stats_cache or super_stats()
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# Add kernel metadata
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stats["kernel_startup_time"] = self._startup_time
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return stats
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def get_last_result(self) -> Optional[Dict[str, Any]]:
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"""Return the last ExecutionResult, if any.
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Returns:
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Full ExecutionResult dict or None
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"""
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return self._last_result
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def get_last_trace(self) -> Optional[List[Dict[str, Any]]]:
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"""Return cognition_trace from last ExecutionResult, if present.
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Returns:
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List of trace steps or None
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"""
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if self._last_result is None:
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return None
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return self._last_result.get("cognition_trace")
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def get_last_fused_symbol(self) -> Optional[Dict[str, Any]]:
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"""Return fused_symbol from last ExecutionResult, if present.
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Returns:
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Fused symbol dict or None
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"""
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if self._last_result is None:
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return None
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return self._last_result.get("fused_symbol")
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def get_last_resonance(self) -> Optional[Dict[str, Any]]:
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"""Return resonance metrics from last ExecutionResult, if present.
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Returns:
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Dict with:
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- resonance: Overall resonance metrics (if present)
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- glyph_resonance: Glyph-specific metrics (if glyph was used)
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Or None if no result
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"""
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if self._last_result is None:
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return None
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diagnostics = self._last_result.get("diagnostics", {})
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return {
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"resonance": diagnostics.get("resonance"),
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"glyph_resonance": diagnostics.get("glyph_resonance"),
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"elapsed": diagnostics.get("elapsed"),
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}
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def run_symbolic_prompt(prompt: str, context: dict | None = None) -> str:
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"""Thin wrapper around the symbolic pipeline for backward compatibility.
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Routes through run_symbolic_pipeline() and returns output_text.
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Args:
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prompt: User or system prompt text
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context: Optional symbolic/cognitive context dict
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Returns:
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String result from the 8-lane cognition pipeline
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"""
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from .symbolic_pipeline import run_symbolic_pipeline
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result = run_symbolic_pipeline(prompt=prompt, context=context)
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return result.output_text
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# Global singleton kernel instance
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_GLOBAL_KERNEL: Optional[CognitiveKernel] = None
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def get_kernel() -> CognitiveKernel:
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"""Get or create the singleton CognitiveKernel instance.
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On first call:
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- Creates a new CognitiveKernel
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- Calls warmup() to initialize glyphs
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Returns:
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Singleton CognitiveKernel instance
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"""
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global _GLOBAL_KERNEL
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if _GLOBAL_KERNEL is None:
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_GLOBAL_KERNEL = CognitiveKernel(auto_load_glyphs=True)
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_GLOBAL_KERNEL.warmup()
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return _GLOBAL_KERNEL
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def run_gx(
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gx_path: str,
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*,
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mode: str = "analyze",
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context: Optional[Dict[str, Any]] = None
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) -> Dict[str, Any]:
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"""Convenience function: execute .gx through the global kernel.
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Equivalent to: get_kernel().execute_gx(gx_path, mode=mode, context=context)
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Args:
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gx_path: Path to .gx file
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mode: Cognitive mode
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context: Optional execution context
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Returns:
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ExecutionResult dict
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"""
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kernel = get_kernel()
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return kernel.execute_gx(gx_path, mode=mode, context=context)
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def kernel_status() -> Dict[str, Any]:
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"""Get status of the global CognitiveKernel.
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Returns:
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Dict with:
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- glyph_stats: Registry metadata (total_glyphs, categories, etc.)
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- last_run_present: Whether a result has been cached
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- last_mode: Mode of last execution (or None)
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- last_elapsed: Elapsed time from last run (or None)
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- startup_time: Kernel warmup timestamp
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- is_warmed_up: Whether kernel has been initialized
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"""
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kernel = get_kernel()
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glyph_stats = kernel.get_glyph_stats()
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last_result = kernel.get_last_result()
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last_resonance = kernel.get_last_resonance()
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return {
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"glyph_stats": glyph_stats,
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"last_run_present": last_result is not None,
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"last_mode": kernel._last_mode,
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"last_elapsed": last_resonance.get("elapsed") if last_resonance else None,
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"startup_time": kernel._startup_time,
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"is_warmed_up": kernel._warmed_up,
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}
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