geolip-aleph-qwen
The AlephLM generation stake: composing the certified components of the GeoLIP aleph program into a utilizable generation structure on a real pretrained substrate. Successor to geolip-aleph-differentiation (exp011βexp021, now on hold), whose measurement program produced the design rules this repo spends. Experiment numbering restarts at 1.
The architecture (every component certified upstream)
| component | what it is | certified by |
|---|---|---|
| Substrate | Qwen2.5-0.5B, frozen | the strongest prior result in the program is the frozen-trunk retrofit: GPT-2 124M ppl 38.65 β 26.53 through aleph relays, beating param-matched adapters 2/2 seeds (exp013) |
| Aleph relay stack | multi-slot MΜ read after each block, near-zero gated residual (gate init β3.0) | exp013 (gates grow ~3Γ β the trunk opts in; no init stabilization needed), exp020 (no cost in depth) |
| Discrete interface | the sign-code tap: winner half-axis + orientation per slot β the aleph logit as a cacheable, transmissible conditioning surface | sign β₯ soft in 12/12 pretrained-substrate cells (exp013); task parity (exp012) |
| Persistent registry | write-time-frozen aleph key encoder + external KV store β fact memory that later training cannot erase, by construction | exp021: addresses drift with the live trunk (72β91% key scrambling; key-path freezing changes nothing) β the frozen keyer is the requirement the data forced |
| Content pipe | weakβstrong logit distillation for filling students/adapters | exp019: zero-to-negative distillation tax; better than ground truth on structured content 2/2 seeds |
Design rules inherited from the closed line: pure Adam wd=0 on geometric paths; decoders read MΜ never M; slot-parallel reconstructive consumption (the collapse cure); CV is a readout; drift-check before any freeze; β₯2 seeds before any claim; every package ships standalone with a self-asserting results builder.
Experiment line
- exp001_relay β the relay retrofit at 0.5B β : frozen 17.798 β relay 14.09 / matched-MLP 13.93 (β21% ppl at <0.6% trainable, 2 seeds, replication <0.02). The GPT-2 ppl ordering inverts (substrate-scoped) while the gate mechanism replicates (relay gates grow 0.047β0.081, MLP gates shrink) β the gate-vs-ppl dissociation, certified at two substrates.
- exp002_refine β refining the relay β : the aleph-addressed patchwork consumer wins (13.997 mean, 2 seeds, first relay under 14); width/strobe saturated; coverage beats concentration (β0.48); the wide MLP diverges 1/2 seeds vs 0% across all relay variants; ordering budget-stable at 6k steps (2 seeds).
- exp003_instruct β instruct tasks + register differentiation β : hallucination reduction quantified (specialist grounding 0.979/0.958 vs frozen 0.542 β >10Γ fewer failures); register capture found (a single-task specialist answers every register in its own; perfect JSON, 0.0 task-validity); multi-task resolves it (all registers β₯0.875); the register-differentiation hypothesis confirmed on the sign-code surface (~2Γ deep-layer separation vs a wikitext-trained stack, 2 seeds) β the gauge only the aleph relay exposes.
- exp004_composite β composite construction gate β (two acts, both ledgered): combination-scene targets from the fused datasets (qwen-deepfashion-fused, qwen-synth-characters-fused). Act 1: packed-window training teaches the ~3k-token composite register flawlessly (json_error 0.0 vs frozen 0.833) but never teaches stopping (truncated 1.000; still 0.938 with the cap lifted β true rows average 4.3k tokens, so 1024-token windows almost never contain an ending). Act 2: row-aligned SFT fixes it completely β structural_ok 1.000 (16/16), every failure bucket 0.0. Termination is a property of sample semantics, not the adapter stack. Honest caveats: entity over-emission 1.67Γ, grounding-lite 0.062 β construction solved, faithfulness is the next target. Ships the long-sequence memory rider (gradient checkpointing + chunked CE; 66 GB spill β 8.8 GB peak).
- exp005_taskmoe β multi-anchor task-MoE β (with its own capacity control): the routed composite of three frozen register specialists + one trainable anchor serves all registers (0.875/1.0/1.0) under dense signed dispatch β but the control decides attribution: random frozen stacks match (0.979/0.979/1.0), so at register distance the specialists were passengers (the monolith-capacity trainable anchor carries; specialists may mildly interfere). No routing collapse (usage_ppl 3.7β3.9 of 4, 4/4 paths).
- exp006_story β story anchors, 4 request methods β : continuation/instruct/JSON registers all 1.0 (frozen 0.67/0.83/0.83), but the checkable keyword constraint stays at 0.083 β unmoved from frozen: format learning β constraint compliance (teacher forcing makes ignorable instructions unlearned). Strong register separation (0.46 @L8).
- exp007_math β math anchors, 4 ask-methods β : format locks in 4/4 (frozen nl format 0.312), no correctness tax, and held-out f(x) evaluation improves 0.688 β 0.938. With exp006 this yields the predictability principle: the LM loss teaches exactly what target-token predictability demands β answers force using the question; story keywords are ignorable.
- exp008_tokendiff β CIFAR-10 discrete token diffusion through a gated adapter (feasibility gate): the frozen trunk + 5.5M adapter learns a genuine class-conditional discrete denoiser β beats the identity baseline at every corruption level (0.527 vs 0.252 at t=0.75; 0.378 vs 0.002 at pure noise). Greedy iterative decoding mode-collapses to the modal (all-dark) image β the ledgered v1 sampler lesson; stochastic-sampling amendment included.
- exp009_family β THE FAMILY β (the flagship): six anchors β five frozen specialists (3 registers, story, math) + one trainable β under one dense signed dispatch serve 11 sub-competences at ~specialist level through a single routed model. Domain-level dispatch specialization without a selector (story prompts: 0.82 usage on the story anchor) and surgical modular decoupling both directions (story-off kills story, math stays perfect; math-off degrades math, story untouched). With exp005's control: the two-regime dispatch law β anchors specialize-and-carry at domain distance, blend into redundancy at register distance, and the sign-code register probe's separation predicts the regime in advance.
Each experiment lands in expNNN_*/ with code, README, self-asserting
results builder, ledger, and checkpoints, reproducible from inside its
folder.
Relation to prior work
The upstream repo holds the laws this build rests on: the consumption law, the address-bottleneck's scope, the projective-codebook law, the KD regime map, heredity-as-robustness, the memorization/generalization inverse law, and the frozen-keyer requirement β each with ledgers, controls, and replication seeds. This repo is where they compound.
License
MIT. AbstractPhil + Claude Fable 5.
Model tree for AbstractPhil/geolip-aleph-qwen
Base model
Qwen/Qwen2.5-0.5B