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Methodology — Composer 2.5 Replication Framework Research

This document records how the research synthesis in this repo was produced, so the methodology is reproducible and the cross-family verification claim is auditable.

Research dispatch

On 2026-05-25, five parallel research subagents were dispatched via the delegate_task parallel-research pattern, one per topic. Each was given:

  • A specific research scope (one of: Composer 2.5 internals; DiLoCo family; Monarch / TorchForge / OpenEnv; VeRL / TRL; trace-replay distillation novelty assessment).
  • An explicit instruction to write findings to a known path (~/wiki/research/post-training-framework/0X-<topic>.md).
  • ~2000–2500 word target depth.
  • Web-research toolset (Tavily, Exa, AWS docs, MCP doc readers).

Each subagent ran independently — no cross-agent communication, no shared intermediate state. They were given a uniform research scope but routed to five different LLM families for cross-family signal:

File Author model Rationale
research/01-composer-2.5.md google/gemini-3.1-pro-preview Long-context grounded research is Gemini's strong suit
research/02-diloco-family.md deepseek/deepseek-v4-pro Strong on distributed-systems and pretraining literature
research/03-monarch-torchforge-openenv.md openai/gpt-5 Best at reading framework / SDK source code
research/04-verl-trl.md anthropic/claude-sonnet-4.6 Best at algorithmic precision (loss math, importance sampling)
research/05-trace-replay-distillation.md moonshotai/kimi-k2-thinking Strong at novelty assessment and prior-art discovery

All routes were verified post-hoc via the per-task model field returned in the delegated agent's session metadata — i.e. the synthesis is not based on a single model's biases.

Synthesis

The master synthesis (framework/composer-replication-framework.md) was produced by reading all five reports in full and reconciling:

  • Convergent claims (≥2 independent reports agree) → promoted to framework-level decisions in the TL;DR table.
  • Divergent claims (reports recommend different stacks for the same layer) → noted explicitly with "use X today, switch to Y when Z" rationale rather than picking one arbitrarily.
  • Single-source claims (only one report makes the claim) → kept but flagged as "single-source — may be model bias" where consequential.

Convergent findings (verified across reports):

  • GRPO+DAPO is the consensus algorithm. Reports 04 (TRL/VeRL deep-dive), 02 (PRIME-RL section), and 03 (Forge algorithm catalog) all converge on GRPO with DAPO patches as the production default for long-horizon agentic RL.
  • PRIME-RL is the most production-ready decentralized substrate. Reports 02 and 04 independently cite INTELLECT-2 (32B QwQ trained globally distributed) as the only production-scale decentralized RL run to date.
  • OpenEnv is the env-format winner. Reports 03 (Meta's stack), 04 (TRL's Oct 2025 OpenEnv integration), and 05 (env-substrate analysis) all converge on OpenEnv + verifiers as the emerging standard.
  • Trace-replay multi-teacher is genuinely under-explored. Report 05's primary finding, corroborated by the fact that none of the other 4 reports (which surveyed the algorithm and framework literature widely) mention per-step multi-teacher distillation as an existing technique.

Sources

The synthesis cites primary sources inline. Major primary sources include:

The five research notes link to many more secondary sources (blog posts, twitter threads, individual repo READMEs). Those are auxiliary context, not primary evidence.

Limitations

  • No primary-source access to Cursor's training pipeline. Composer 2.5's exact recipe is reconstructed from public statements; details like the text-hint generator architecture remain unverifiable. The biggest known gap is flagged in framework/composer-replication-framework.md § "Open questions."
  • Pre-spike speculation. The TL;DR table's stack picks are literature-backed but not yet empirically validated on this codebase. The v0.0 spike will produce the first empirical result.
  • Single-snapshot research. All five reports were produced on 2026-05-25. The field moves fast — TorchForge may un-pause, OpenEnv may fork, PRIME-RL may consolidate. Re-run the dispatch every 6 months.

Reproducibility

If you want to reproduce this research dispatch (or extend it with new topics), the pattern is:

  1. Use the delegate_task parallel-research pattern (or any equivalent: one subagent per topic, all running in parallel, all writing to known paths).
  2. Route different topics to different model families explicitly — this is the cross-family signal, and it requires a multi-model gateway like OpenRouter or your local equivalent.
  3. Give each subagent a web-research toolset (Tavily, Exa, AWS docs, etc.) and ~10 min wall-clock budget.
  4. After all reports return, verify each one's served model matches the intended route (per the route-fidelity discipline).
  5. Read all reports in full (do not skim) and reconcile in a master synthesis doc that explicitly flags convergent vs single-source claims.

This pattern generalizes beyond this project; it's the same approach used for any meaty literature-review task where a single model's perspective is suspect.