Post
46
✅ New Article: *Post-Transformer Decision Cores* (v0.1)
Title:
🚀 Post-Transformer Decision Cores: Goal-Native Engines Beyond LLMs
🔗 https://huggingface.co/blog/kanaria007/post-tranformer-decision-cores
---
Summary:
Transformers are powerful—but in SI-Core they’re *not the essence of intelligence*. A *Decision Core* is anything that satisfies the *Jump contracts* (OBS/ETH/MEM/ID/EVAL + RML), and those contracts don’t require next-token prediction.
This article sketches what “post-Transformer” looks like in practice: *goal-native, structure-aware controllers* that may use LLMs as tools—but don’t depend on them as the runtime brain.
> Don’t relax the contracts.
> Replace the engine behind them.
---
Why It Matters:
• Makes LLMs *optional*: shift them to “genesis / exploration / explanation,” while routine high-stakes Jumps run on structured cores
• Improves boring-but-critical properties: *determinism (CAS), fewer inconsistencies (SCI), fewer ETH violations (EAI), better rollback (RBL/RIR)*
• Enables gradual adoption via *pluggable Jump engines* and domain-by-domain “primary vs fallback” switching
---
What’s Inside:
• The architectural inversion: *World → OBS → SIM/SIS → Jump (Decision Core) → RML → Effects* (LLM is just one engine)
• Three compatible post-Transformer directions:
1. *World-model + search controllers* (MPC/MCTS/anytime search with explicit GCS + ETH constraints)
2. *Genius-distilled specialized controllers* (distill structure from GeniusTraces; LLM becomes a “genesis tool”)
3. *SIL-compiled Decision Programs* (typed Jump entrypoints, compiler-checked invariants, DPIR/GSPU targeting)
• A realistic migration path: LLM-wrapped → Genius library → shadow dual-run → flip primary by domain → SIL-compiled cores
• How this connects to “reproducing genius”: GRP provides trace selection/format; this article provides the engine architectures
---
📖 Structured Intelligence Engineering Series
Title:
🚀 Post-Transformer Decision Cores: Goal-Native Engines Beyond LLMs
🔗 https://huggingface.co/blog/kanaria007/post-tranformer-decision-cores
---
Summary:
Transformers are powerful—but in SI-Core they’re *not the essence of intelligence*. A *Decision Core* is anything that satisfies the *Jump contracts* (OBS/ETH/MEM/ID/EVAL + RML), and those contracts don’t require next-token prediction.
This article sketches what “post-Transformer” looks like in practice: *goal-native, structure-aware controllers* that may use LLMs as tools—but don’t depend on them as the runtime brain.
> Don’t relax the contracts.
> Replace the engine behind them.
---
Why It Matters:
• Makes LLMs *optional*: shift them to “genesis / exploration / explanation,” while routine high-stakes Jumps run on structured cores
• Improves boring-but-critical properties: *determinism (CAS), fewer inconsistencies (SCI), fewer ETH violations (EAI), better rollback (RBL/RIR)*
• Enables gradual adoption via *pluggable Jump engines* and domain-by-domain “primary vs fallback” switching
---
What’s Inside:
• The architectural inversion: *World → OBS → SIM/SIS → Jump (Decision Core) → RML → Effects* (LLM is just one engine)
• Three compatible post-Transformer directions:
1. *World-model + search controllers* (MPC/MCTS/anytime search with explicit GCS + ETH constraints)
2. *Genius-distilled specialized controllers* (distill structure from GeniusTraces; LLM becomes a “genesis tool”)
3. *SIL-compiled Decision Programs* (typed Jump entrypoints, compiler-checked invariants, DPIR/GSPU targeting)
• A realistic migration path: LLM-wrapped → Genius library → shadow dual-run → flip primary by domain → SIL-compiled cores
• How this connects to “reproducing genius”: GRP provides trace selection/format; this article provides the engine architectures
---
📖 Structured Intelligence Engineering Series