Scientist I/II, mRNA Translation Dynamics
On-site
Fresh
Autonomous Science Platform
Compensation
$108,000-$170,000Description
Your Impact at LILA
We are seeking a curious, driven, and collaborative Scientist to join our discovery platform team focused on decoding mRNA translation dynamics. You will develop workflows that utilize next-generation pooled screening strategies like polysome profiling and Ribo-seq to to generate rich biological datasets that feed directly into Lila's machine learning models. This is a unique opportunity to help invent a new approach to biological discovery by integrating synthetic biology, high-throughput experimentation, and intelligent automation.
What You'll Be Building
- Design and execute high-throughput pooled screening campaigns to interrogate mRNA translation dynamics across diverse sequence and structural contexts
- Develop and optimize cell-free and in-cell assay systems for quantitative measurement of translation efficiency, kinetics, and regulation across different cell environments
- Collaborate closely with computational and ML teams to define data requirements, validate model predictions, and close the loop between experiment and prediction
- Establish and refine next-generation library design strategies, leveraging combinatorial and rational approaches to explore sequence space efficiently
- Analyze and interpret complex biological datasets, distilling key findings into actionable insights for platform advancement
- Contribute to the development of automated and semi-automated experimental pipelines to increase throughput and consistency
What You’ll Need to Succeed
- MSc with 4+ years of industry or academic experience, or PhD in a relevant field (molecular biology, bioengineering, synthetic biology, chemical biology, etc.)
- Deep expertise in mRNA biology and translation regulation
- Experience with next-generation sequencing based assays of mRNA translation such as polysome profiling and Ribo-seq
- Strong quantitative and analytical skills with experience handling large-scale biological datasets
- Excellent communication and collaboration skills with a track record of working effectively in interdisciplinary teams
Bonus Points For
- Experience integrating experimental data with machine learning or computational modeling pipelines
- Proficiency in Python, R, or other scripting languages for data analysis and visualization
- Background in generating and screening complex, high-diversity sequence libraries
- Familiarity with laboratory automation, liquid handling systems, or high-throughput workflow development
- Experience with in-situ sequencing of RNA with imaging like STARmap and Ribomap
Stack
PythonMachine Learning
- Posted
- Apr 9, 2026
- Last seen
- Jun 25, 2026
- First seen
- Jun 25, 2026
- Status
- active