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Single-Cell RNA-seq — Clustering, Trajectory, DE & GRN (Synthetic HB3.1)

  • Task ID: biology.scrna_seq_analysis
  • Domain: biology
  • Subdomain: transcriptomics
  • Status: test
  • Tags: scrna_seq, clustering, pseudotime, differential_expression, gene_regulatory_network, pipeline_decisions

Public Summary

This page is generated from task metadata and selected public-safe excerpts.

Example B1 Prompt Excerpt

# Single-cell RNA-seq pipeline (synthetic counts)
> **Level B1**: Full pipeline specification — HB3.1-v0.5 workflow.
## Problem
You receive a **simulated single-cell RNA-seq count matrix** (`data/counts.npy`) plus minimal metadata (`data/system_info.json`). The data contain:
1. **TF genes** — columns `0 .. n_tf_genes-1` share an underlying sparse directed regulatory structure.
2. **Non-TF genes** — the remaining columns contain marker genes and other gene classes whose column indices are **randomly shuffled**. No biological identities are disclosed.
Your job is to implement a **single coherent pipeline** and export the artifacts listed below.
## Standard workflow (follow this structure)

Notes

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  • Higher-level prompt details and internal benchmark specifics may remain intentionally undisclosed.