# Datasheet for mssense Evaluation Benchmark Following the *Datasheet for Datasets* template (Gebru et al., 2018, arXiv:1803.09010). Companion to the lighter [dataset_card.md](dataset_card.md) and the [evaluation_protocol.md](evaluation_protocol.md). Platform-specific terms (`mssense`, `LAT`, `LeBrain`, `IRIS`, `Intentia`) are defined in the **Terminology** table of the [README](../README.md). ## Motivation **For what purpose was the dataset created?** To provide an evaluation suite for `mssense` — the conversational intent-understanding and workflow-validation component developed within the Intentia research programme (Novelis R&D, 2026). Tasks: clarification policy, LAT audit, semantic judgment, workflow creation, business-rule extraction, visual grounding / governance and modification-intent handling. The benchmark covers the heterogeneity of inputs (text instructions, audio transcripts, screen captures, demo recordings) and outputs (`UNDERSTOOD`, `VALID`, `INVALID`, `QUESTION`, `THINKING`, `DONE`). The systems it evaluates are two method variants of `mssense`: **HCA-WA** (Hybrid Checkpointed Agent for Workflow Authoring) and **SGAR-WA** (Skill-Grounded Agentic Reasoning for Workflow Authoring, the current default). **Who created the dataset and on behalf of which entity?** Authored within the Intentia research programme (Novelis R&D). The `mssense_public_creation_wonderbread_v1_full` sub-corpus is derived from the public WONDERBREAD dataset (see Provenance in [LICENSE-DATA](../LICENSE-DATA)). **Who funded the creation of the dataset?** Internal R&D budget. ## Composition **What do the instances comprising the dataset represent?** Each instance represents one mssense-flavoured task: validate a LAT, audit a candidate LAT for ambiguity, generate a workflow from a description, extract a business rule from a free-form prompt, or judge a modification intent. The unit of an instance is one JSONL record carrying: - `benchmark_version` - `input_payload` (text, audio_url, capture artifact reference, demo reference) - `lat_candidate` (the LAT under analysis, when relevant) - `business_rules` (BR list, when relevant) - `channel_family` (`web` | `desktop` | `other`) - `input_modality` (`text` | `audio` | `capture` | `demo`) - `expected_decision` (`VALID` | `INVALID` | `UNDERSTOOD` | `QUESTION` | `THINKING` | `DONE`) - `expected_audit_question` (when `expected_decision == INVALID`) - `expected_issue_types` (list — `AMBIGUOUS_SELECTOR`, `MISSING_PRECONDITION`, `UNRESOLVED_VARIABLE`, `INCONSISTENT_FLOW`, `MISSING_VALUE`) - `expected_choices` - `oracle` (machine-readable ground truth) - `provenance` (block, origin_sample_id, source) - `difficulty`, `content_hash` **How many instances are there in total?** - v1.1-eval: **1865 evaluable samples** in `data/mssense_eval_benchmark_v1_1.jsonl` (this release). - v1.0-eval: 1772 samples (superseded; see [`../reports/CHANGELOG_v1.0_to_v1.1.md`](../reports/CHANGELOG_v1.0_to_v1.1.md)). No train/dev/test split. **Does the dataset contain all possible instances or is it a sample?** A curated sample union of three sub-corpora: - `mssense_public_audit_internal_v1*` — internal-origin audit cases - `mssense_public_validation_internal_v1*` — internal-origin validation cases - `mssense_public_creation_wonderbread_v1_full*` — WONDERBREAD-derived creation/demo cases **What data does each instance consist of?** One JSONL record in `data/mssense_eval_benchmark_v1_1.jsonl`, schema validated by `schema/evaluation_sample.v1_1.schema.json`. Cross-references to upstream WONDERBREAD ids are preserved in `provenance.origin_sample_id` when applicable. No PII; all names are synthetic. **Are there recommended data splits?** No. Pure evaluation suite. Reports are stratified by `task_family`, `channel_family`, `input_modality`, `expected_decision` and `difficulty`. **Are there any errors, sources of noise, or redundancies in the dataset?** - Multiple `expected_decision` codes coexist; the most frequent are `INVALID`, `VALID`, `UNDERSTOOD`, `QUESTION`. Methods that emit only a subset of these labels must document how they normalize. - WONDERBREAD-derived samples carry a more permissive ambiguity profile than internal-origin samples; stratified reporting captures this. **Is the dataset self-contained, or does it link to or otherwise rely on external resources?** Self-contained for the text / metadata path. Audio / capture / demo modalities reference relative artifact paths under `data/`; the original WONDERBREAD videos and key frames are not republished here (license-restricted) and must be obtained from the upstream dataset if needed for grounding studies. ## Collection process **How was the data acquired?** - **Internal audit / validation sub-corpora**: authored in-house by domain experts using a structured authoring rubric. - **WONDERBREAD-derived creation sub-corpus**: extracted programmatically by an internal pipeline that reads upstream `metadata.json + intent + action_trace + SOP` and emits records conforming to the canonical schema (`schema/evaluation_sample.v1_1.schema.json`). **What mechanisms or procedures were used to collect the data?** - Internal authoring tools producing JSONL. - A Python extractor for the WONDERBREAD-derived sub-corpus (internal, not distributed). - Manual review of hard cases against a publication-readiness checklist. **Over what timeframe was the data collected?** Authoring + extraction: April–June 2026. **Were any ethical review processes conducted?** Not formally. Internal review focused on (a) absence of PII in audit/validation cases, (b) compliance with WONDERBREAD's upstream license for the creation sub-corpus, (c) no real customer data exposed. ## Preprocessing / cleaning / labeling **Was any preprocessing/cleaning/labeling done?** - Label canonicalisation: upstream WONDERBREAD `intent` is mapped to the mssense expected-decision taxonomy. - LAT extraction: `action_trace` is normalised into the LAT shape (`{id, channel, action, params, …}`). - Content hashing per record (`content_hash`). - Hard-case adjudication: a subset of high-difficulty WONDERBREAD samples was manually reviewed for label correctness. **Was the "raw" data saved in addition to the preprocessed/cleaned/labeled data?** The extractor inputs and intermediate manifests are retained internally for reproducibility; they are not vendored here. The original WONDERBREAD media is not republished either (see LICENSE-DATA). ## Uses **Has the dataset been used for any tasks already?** - Internal `mssense` regression evaluation across successive method versions. - End-to-end approach sweeps over the `mssense` HTTP surface. **Is there a repository that links to any or all papers or systems that use the dataset?** This dataset is the evaluation suite associated with the manuscript *Closed-Vocabulary Action Trace Generation for Conversational RPA Authoring* (Yahaya Alassan, Ettifouri, Dahhane; Novelis), submitted to the *Journal of Object Technology*. **What (other) tasks could the dataset be used for?** Any evaluation of clarification-policy agents, structured-question generation, LAT auditing methods, or workflow-creation systems on a multi-modal corpus. **Are there tasks for which the dataset should not be used?** - Training a model from scratch (evaluation-only by design). - Republishing WONDERBREAD images / videos via this benchmark (the original upstream license governs those artifacts). ## Why a New Benchmark? (V5.15.h.3) A reviewer of this dataset will reasonably ask whether an existing public corpus could substitute for it. The detailed answer is in [`related_benchmarks_comparison.md`](related_benchmarks_comparison.md) (twelve candidate public datasets analysed property-by-property) and [`why_new_benchmark.md`](why_new_benchmark.md) (one-page gap analysis). In short: the problem requires four properties — (i) closed-vocabulary RPA actions, (ii) conversational input, (iii) multi-step durable trace, (iv) multi-modal coverage — and no public corpus satisfies all four simultaneously. WONDERBREAD is reused as the upstream source of the `workflow_creation` sub-corpus but cannot substitute for the whole. ## Statistical power and inter-annotator agreement (V5.15.h.3) - A priori statistical-power analysis per research question is in [`statistical_power_analysis.md`](statistical_power_analysis.md). The full corpus supports detection of 5–10 % absolute effect-size differences at α = 0.05, power = 0.80, on the four RQ-relevant comparisons. - Inter-annotator agreement is **not applicable** to 1593 of the 1865 samples (the controlled-balanced and augmented blocks) by construction; the remaining 272 internally-authored seeds followed a documented rubric with hard-case team review. See [`inter_annotator_agreement.md`](inter_annotator_agreement.md). A formal κ measurement on a stratified subset is planned for the v1.2 release. ## Distribution **Will the dataset be distributed to third parties outside of the entity on behalf of which it was created?** Yes for the internal-origin sub-corpora under CC-BY-4.0. Distribution of the WONDERBREAD-derived sub-corpus is conditioned on attribution to WONDERBREAD upstream. **How will the dataset be distributed?** JSONL + schemas + harness + reports + manifest, with the LICENSE-DATA provenance clause attached. Hosting channel TBD. **Will the dataset be distributed under a copyright or other intellectual property (IP) license?** - Code, scripts, schema: Apache-2.0 (`LICENSE`). - Internal-origin data: CC-BY-4.0 (`LICENSE-DATA`). - WONDERBREAD-derived sub-corpus: CC-BY-4.0 + cumulative attribution to WONDERBREAD upstream. **Have any third parties imposed IP-based or other restrictions on the data associated with the instances?** The WONDERBREAD upstream license imposes attribution; this benchmark complies by (a) explicit citation in LICENSE-DATA, (b) not republishing upstream media. ## Maintenance **Who will be supporting/hosting/maintaining the dataset?** The Intentia research programme (Novelis R&D). The dataset is hosted at its DOI landing page (`https://doi.org/10.5281/zenodo.21105006`). **Will the dataset be updated?** Yes. v1.0-eval and v1.1-eval are the first published milestones; changes are tracked in [`../reports/CHANGELOG_v1.0_to_v1.1.md`](../reports/CHANGELOG_v1.0_to_v1.1.md). **Will older versions of the dataset continue to be supported/hosted/maintained?** Yes — each versioned release is preserved under its own DOI on the hosting platform. **If others want to extend/augment/build on/contribute to the dataset, is there a mechanism for them to do so?** Contributions are welcome via the dataset's DOI landing page. Extensions must respect the canonical schema (`schema/evaluation_sample.v1_1.schema.json`) and document any new label codes.