Summary
Carry source, decision, and output provenance through the main workflow so downstream agents can audit and cite it.
This issue was generated from an org-wide EvalOps mining pass on 2026-05-10 07:57 UTC. It combines live GitHub repo signals with a per-repo arXiv search. Treat the research links as grounding for a concrete implementation, not as a request for a literature review.
Repo Evidence
- Repository description: A multi-agent LLM system for detecting and resolving cognitive dissonance.
- Tree signals: 0 docs files, 1 workflows, 0 proto files, 19 test-like files.
README.md:12 includes latent-spec language: The paper studies a narrow problem: how should a system evaluate and resolve formalizable claim disagreements when proof is available as a resolution
README.md:17 includes latent-spec language: > Proof-first conflict resolution should be evaluated by separating > deterministic canonicalization, provider-assisted extraction, proof outcome,
README.md:28 includes latent-spec language: The paper contributes an evaluation decomposition with four distinct layers:
README.md:39 includes latent-spec language: This should be read as a methods paper with a narrow empirical stress test, not as a broad systems paper.
README.md:93 includes latent-spec language: - the necessity ablation is neutral on this benchmark - necessity should not be positioned as the paper’s main novelty
README.md:137 includes latent-spec language: closed - preservation auditing is therefore part of the resolution contract, not just a reporting detail
Research Grounding
Repo axes: research, evaluation, tooling, security
Search keywords: proof, extraction, should, formalizable, research, benchmark, claim, not, paper, preservation, https, cases
- arXiv:2506.19773v2 Automatic Prompt Optimization for Knowledge Graph Construction: Insights from an Empirical Study (Nandana Mihindukulasooriya, Niharika S. D'Souza, Faisal Chowdhury, Horst Samulowitz), 2025.
- arXiv:2507.03620v1 Is It Time To Treat Prompts As Code? A Multi-Use Case Study For Prompt Optimization Using DSPy (Francisca Lemos, Victor Alves, Filipa Ferraz), 2025.
- arXiv:2412.15298v1 A Comparative Study of DSPy Teleprompter Algorithms for Aligning Large Language Models Evaluation Metrics to Human Evaluation (Bhaskarjit Sarmah, Kriti Dutta, Anna Grigoryan, Sachin Tiwari, Stefano Pasquali, Dhagash Mehta), 2024.
- arXiv:2604.04869v1 Optimizing LLM Prompt Engineering with DSPy Based Declarative Learning (Shiek Ruksana, Sailesh Kiran Kurra, Thipparthi Sanjay Baradwaj), 2026.
- arXiv:2503.11118v1 UMB@PerAnsSumm 2025: Enhancing Perspective-Aware Summarization with Prompt Optimization and Supervised Fine-Tuning (Kristin Qi, Youxiang Zhu, Xiaohui Liang), 2025.
- arXiv:2605.02244v1 The Conversations Beneath the Code: Triadic Data for Long-Horizon Software Engineering Agents (Yelin Kim), 2026.
- arXiv:2503.23803v2 Thinking Longer, Not Larger: Enhancing Software Engineering Agents via Scaling Test-Time Compute (Yingwei Ma, Yongbin Li, Yihong Dong, Xue Jiang, Rongyu Cao, Jue Chen), 2025.
- arXiv:2508.04660v1 Multi-module GRPO: Composing Policy Gradients and Prompt Optimization for Language Model Programs (Noah Ziems, Dilara Soylu, Lakshya A Agrawal, Isaac Miller, Liheng Lai, Chen Qian), 2025.
- arXiv:2602.00997v1 Error Taxonomy-Guided Prompt Optimization (Mayank Singh, Vikas Yadav, Eduardo Blanco), 2026.
- arXiv:2602.03411v2 SWE-Master: Unleashing the Potential of Software Engineering Agents via Post-Training (Huatong Song, Lisheng Huang, Shuang Sun, Jinhao Jiang, Ran Le, Daixuan Cheng), 2026.
What To Build
- Add stable identifiers for source records, derived decisions, and emitted outputs.
- Thread those identifiers through logs/events/API responses without leaking secrets.
- Provide a query or debug surface that reconstructs the chain for one completed workflow.
Acceptance Criteria
Notes
- Generated issue 2/5 for
evalops/cognitive-dissonance-dspy by evalops_org_miner.py.
- Before implementation, confirm the sampled latent-spec snippets still match
main; this issue intentionally cites exact file paths/lines where the mining pass saw them.
Summary
Carry source, decision, and output provenance through the main workflow so downstream agents can audit and cite it.
This issue was generated from an org-wide EvalOps mining pass on 2026-05-10 07:57 UTC. It combines live GitHub repo signals with a per-repo arXiv search. Treat the research links as grounding for a concrete implementation, not as a request for a literature review.
Repo Evidence
README.md:12includes latent-spec language: The paper studies a narrow problem: how should a system evaluate and resolve formalizable claim disagreements when proof is available as a resolutionREADME.md:17includes latent-spec language: > Proof-first conflict resolution should be evaluated by separating > deterministic canonicalization, provider-assisted extraction, proof outcome,README.md:28includes latent-spec language: The paper contributes an evaluation decomposition with four distinct layers:README.md:39includes latent-spec language: This should be read as a methods paper with a narrow empirical stress test, not as a broad systems paper.README.md:93includes latent-spec language: - the necessity ablation is neutral on this benchmark - necessity should not be positioned as the paper’s main noveltyREADME.md:137includes latent-spec language: closed - preservation auditing is therefore part of the resolution contract, not just a reporting detailResearch Grounding
Repo axes: research, evaluation, tooling, security
Search keywords: proof, extraction, should, formalizable, research, benchmark, claim, not, paper, preservation, https, cases
What To Build
Acceptance Criteria
Notes
evalops/cognitive-dissonance-dspybyevalops_org_miner.py.main; this issue intentionally cites exact file paths/lines where the mining pass saw them.