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Posted May 21, 2026

Bioinformatics Engineer — Single-Cell AI

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About the position At LatchBio, our AI agents help thousands of scientists analyze and interpret data across the full stack of modern multi-omic technologies — starting with single-cell and spatial, and expanding fast. We're building the ground truth for AI in single-cell biology. Our benchmark scBench — 394 verifiable problems across six sequencing platforms — shows the best frontier model today still fails nearly half the time. We're hiring bioinformatics engineers to close that gap: scientists who can turn real experimental data into the precise, falsifiable questions that define what it means for an AI agent to actually understand scRNA-seq. Responsibilities • Own end-to-end scRNA-seq analyses across multiple projects: raw platform outputs → QC and failure diagnosis → normalization → dimensionality reduction → clustering → cell typing → differential expression → trajectory analysis → defended biological claim. • Build reproducible workflows and produce clear decision traces: what was filtered, why, what changed the conclusion, what would falsify the claim. • Distill analysis steps into precise, falsifiable biological questions with single defensible answers — the core unit of our eval suite. • Debug platform and data issues with precision: turn messy results across diverse sequencing chemistries into crisp hypotheses, sanity checks, and a stepwise debugging plan. Requirements • Experience with end-to-end data analysis for one or more of the following sequencing platforms: MissionBio, ParseBio, CSGenetics, BD Rhapsody, Illumina, or 10X Chromium • Analyzed 3+ datasets from raw data to end insight for either publications or industry experiments with real world consequences • Working understanding of platform-specific quality control thresholds and intuition for numerical examples of positive or negative results (e.g., 100K cells from a ParseBio run with 80% mitochondrial reads means something is wrong) • Familiarity with the landscape of computational biology tools for scRNA-seq tasks (e.g., Scanpy/Seurat for core workflows, cell typing frameworks like CellTypist or Azimuth, DE methods like DESeq2 or edgeR) • Strong understanding of experimental design, hypothesis generation and scientific conclusions from papers using one of the sequencing platforms described • Ability to distill an analysis step into a precise, falsifiable biological question with a single defensible answer • Working understanding of concepts in statistical inference: hypothesis testing, confidence intervals and/or estimators • Working understanding of important algorithms in high dimensional data analysis: e.g. PCA, neighborhood graphs, UMAP, clustering methods (Leiden/Louvain) Nice-to-haves • Published research that relied on modern single-cell RNA sequencing techniques. • Engineered tools or packages in the single-cell biology domain. • Experience generating training data for AI agents or foundation models. Benefits • $130k–$180k/yr (performance-based) • Equity • Unlimited PTO (truly) • Waterfront office in China Basin, San Francisco • Free lunch and dinner • 100% premium covered on Blue Shield's platinum health plan ($0 premium, $0 deductible) • 401(k) plan options • Work visa sponsorship • Company-sponsored professional development Apply tot his job Apply To this Job