MIRA-Text-Group1

A student scorer from MIRA (Mid-training Rubric Anchoring for Source-Aware Data Selection), fine-tuned to score Chinese HTML web-design documents along a group-specific set of anchor rubric dimensions.

📄 Paper: MIRA: Mid-training Rubric Anchoring for Source-Aware Data Selection (EMNLP 2026) 💻 Code: https://github.com/Multilingual-Multimodal-NLP/mira


TL;DR

MIRA is a source-aware data selection framework for heterogeneous mid-training corpora. Instead of applying a single global quality rubric, MIRA (1) clusters sources into capability-coherent groups, (2) lets a frontier teacher (Kimi-K2.6) freely propose rubric dimensions and anchors them per group, (3) distills the anchored teacher into a lightweight per-group student scorer, and (4) applies reliability-aware aggregation with per-source retention thresholds.

This repository is one of those student scorers — variant 1 in the Text family, specialized for Chinese HTML web-design documents. Given an in-distribution record, it produces a numerical score and a short rationale for every anchor dimension in this group's rubric.


Model summary

Architecture Mixture-of-Experts decoder (35B total / ≈3B active params)
Base model Qwen3.5-35B-A3B-Base
Fine-tuning Full-parameter SFT on Kimi-K2.6 anchored teacher labels
Domain Chinese-dominant flat-text documents describing front-end / HTML implementations — the html_cpt source (score_data_5B + PT_DATA_TRAIN, median ~8.5K chars per doc).
Anchor rubric 15 group-specific dimensions (group_B_dim_anchors.jsonl in the project repo)
Source count 1 text source
Output Structured (score, rationale) per anchor dimension
Precision BF16
License Apache-2.0 (inherits from Qwen3)

Sources covered

This scorer is calibrated for the following mid-training sources in the Text / Chinese HTML web-design group:

Source Description
html_cpt Chinese HTML design / CPT documents (~8.5K chars median)

The full source-grouping report (KMeans k=4 / 5 clusters, intra-group cosine similarities) is in the project repo.


Anchor dimensions (15 slots)

The scoring rubric for this group, discovered via Kimi-K2.6 free-form judging and clustered into 15 anchor dimensions (KMeans k=15 over the group's dim-score embeddings). Dimensions below are sorted by cluster size — larger clusters dominate the corpus and carry more signal. Anchor names are read verbatim from this group's group_B_dim_anchors.jsonl; some names recur across slots because semantically related but distinct rubric facets were clustered separately by the teacher.

Slot Dimension Cluster size
A1 Chinese Description Quality 16,842
A2 Feature Completeness 14,072
A3 Frontend Technical Appropriateness 13,949
A4 JavaScript Interactivity Quality 11,308
A5 Semantic HTML Structure 10,790
A6 Code Readability & Organization 8,645
A7 Accessibility (a11y) Compliance 8,303
A8 Visual Design & Polish 8,142
A9 Practical Real-world Utility 7,758
A10 Performance Awareness 6,812
A11 Technical Correctness 6,298
A12 Security & Safety 6,245
A13 Responsive Design Implementation 6,184
A14 Responsive Design Execution 3,647
A15 Accessibility Compliance 560

The scorer outputs one [Ai] <dimension>: <score>/10 — <rationale> line per slot, plus overall, training_recommendation, domain_tag, and brief.


Where this model fits in the MIRA pipeline

┌──────────────────┐  ┌──────────────────┐  ┌──────────────────┐  ┌──────────────────┐
│ 1. Rubric        │  │ 2. Anchored      │  │ 3. Reliability   │  │ 4. Data          │
│    Discovery     │→ │    Judge         │→ │    Aggregation   │→ │    Selection     │
│ (Kimi-K2.6,      │  │    Distillation  │  │ (mask unreliable │  │ (per-source      │
│  free-form       │  │ ◀── THIS MODEL   │  │  src×dim cells)  │  │  retention)      │
│  judging)        │  │                  │  │                  │  │                  │
└──────────────────┘  └──────────────────┘  └──────────────────┘  └──────────────────┘

MIRA-Text-Group1 lives in Stage 2: it scores the full Text / Chinese HTML web-design corpus so that downstream stages can apply reliability masking and source-aware retention.


Intended use

  • Primary: Score Chinese HTML web-design documents on this group's anchor dimensions to drive source-aware data selection and filtering.
  • Secondary: Research on rubric distillation, semantic quality scoring, and reliability diagnostics for heterogeneous training corpora.

Not intended for:

  • General-purpose chat or instruction following — fine-tuned to emit structured scores, not freeform dialogue.
  • Single-shot quality judgments without the anchor-dimension prompt template — outputs will be miscalibrated.
  • Records outside the Text / Chinese HTML web-design group; use the matching sibling scorer instead.

Deployment

The scorer is designed to be served via vLLM behind an OpenAI-compatible endpoint and called in batch from the MIRA scoring pipeline.

1. Serve with vLLM (recommended)

vllm serve whw06/MIRA-Text-Group1 \
    --tensor-parallel-size 8 \
    --dtype bfloat16 \
    --max-model-len 65536 \
    --max-num-batched-tokens 131072 \
    --gpu-memory-utilization 0.9 \
    --trust-remote-code \
    --port 8000

Why these values (verified on H200 141GB during the paper's per-source evaluation):

  • max-model-len=65536 — 2× the mid-training cutoff. Records can hit ~60K tokens for densely-tokenized sources; 40K runs into prompt-overflow errors.
  • max-num-batched-tokens=131072 — supports two full-length sequences per scheduling step.
  • gpu-memory-utilization=0.9 — 35B BF16 weights take ~70GB, leaving ~57GB KV cache. Roughly 4 concurrent 65K-context sequences per GPU.
  • 8-way tensor parallel works well for the 35B MoE on a single 8×H200/A100 node.

2. Call from Python

from openai import OpenAI

client = OpenAI(base_url="http://localhost:8000/v1", api_key="EMPTY")

resp = client.chat.completions.create(
    model="whw06/MIRA-Text-Group1",
    messages=[
        {"role": "system", "content": SYSTEM_PROMPT},   # group-B anchor calibration
        {"role": "user",   "content": USER_PROMPT},     # record + [A1]..[A15] template
    ],
    temperature=0.7,
    top_p=0.95,
    max_tokens=2048,
)
print(resp.choices[0].message.content)

3. Prompt template

The user message asks for one structured line per anchor dimension (top-15 of this group):

[A1] {anchor_dim_1}: <score>/10 — <justification>
[A2] {anchor_dim_2}: <score>/10 — <justification>
...
[A15] {anchor_dim_15}: <score>/10 — <justification>
overall: <0-100>
training_recommendation: <keep | downsample | drop>
domain_tag: <short tag>
brief: <one-sentence summary>

The system prompt embeds the top-12 anchor calibration references (canonical examples from clustering) so the student matches the teacher's scoring scale. The full prompt builder, anchor JSONL files, and output parser are in the project repo's scoring/score_text_anchored.py.


Training details

Teacher Kimi-K2.6 (free-form rubric discovery in Phase 1; anchored re-scoring in Phase 2)
Training data Kimi-K2.6 anchored labels on this group's Phase-2 corpus, split into a distillation set + a held-out validation split for reliability diagnostics
Loss Standard next-token CE over (score, rationale) labels for every anchor dimension
Hyperparameters Held constant across all MIRA student scorers; full settings in paper Appendix A.4
Validation Per-dimension teacher–student MAE and Spearman ρ on a held-out split; dimensions failing reliability thresholds are masked post-hoc (Figure 3 in the paper)

Training loss / step curve is preserved in trainer_state.json for full reproducibility.


Headline results (from the paper)

End-to-end downstream evaluation: Qwen2.5-Coder-14B mid-trained on 25B-token MIRA-selected subsets vs. baselines, then SFT, evaluated on 9 code benchmarks across 4 categories.

Method Code Gen MultiplE SQL (EX) SWE-Multi Macro Avg
Base + SFT (no mid) 53.91 72.57 64.24 3.67 48.60
Raw Mixture (50B) 53.71 67.42 94.18 40.00 63.83
Random (25B) 52.71 71.44 91.03 35.00 63.23
DataMan (25B) 53.82 71.38 93.84 33.00 63.01
DSIR (25B) 48.74 67.26 95.20 27.00 59.55
PPL (25B) 50.52 57.74 90.66 20.00 54.73
MIRA-Global (25B) 53.12 67.84 94.26 32.00 61.81
MIRA-Group (25B) 54.53 71.85 94.08 36.33 64.20
MIRA-Source (25B) 54.18 72.84 94.38 30.33 62.93

MIRA-Group matches the full 50B-token raw mixture while using only half the tokens, and out-performs all 25B-token selection baselines on the macro average. This scorer is one of the 12 student models used by the MIRA-Group variant.


Sibling models

MIRA releases one student scorer per source-group variant. Use the matching scorer for each record's format:


Limitations

  • MIRA addresses source-aware filtering only. Source discovery, mixture-ratio design, curriculum scheduling, deduplication and contamination control remain orthogonal concerns.
  • This scorer is calibrated against the Text / Chinese HTML web-design group; cross-domain transfer is not advised — use the matching sibling for other source formats.
  • Some anchor dimensions exhibit high teacher–student MAE and are masked post-hoc during aggregation (see paper §3.4). The model still emits scores for masked dimensions; downstream consumers should re-apply the reliability mask from the project repository.
  • Calibrated on 1 source within this group; behavior on out-of-distribution formats is unverified.

Citation

@inproceedings{wang2026mira,
  title     = {MIRA: Mid-training Rubric Anchoring for Source-Aware Data Selection},
  author    = {Wang, Haowen and Du, Yaxin and Yang, Jian and Wu, Jiajun and
               Liu, Shukai and Zhang, Yuxuan and Wang, Pingjie and Chen, Siheng and
               Zheng, Tuney and Zhou, Ming and Liu, Xianglong},
  booktitle = {Proceedings of the 2026 Conference on Empirical Methods in Natural Language Processing (EMNLP)},
  year      = {2026}
}

Acknowledgments

Built on Qwen3.5-35B-A3B-Base and the Megatron-LM training stack. Teacher labels generated with Kimi-K2.6.

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