About Becoming
Becoming is building Developmental Intelligence: AI for predicting how organisms change over time.
Most experimental systems fail when metabolic demands become too high. We are building systems that don’t — by tightly integrating hardware, biology, and software into platforms that operate continuously over long time horizons.
Software is the connective tissue of this platform. It turns physical systems into controllable, observable, and ultimately predictable systems.
The Role
We are seeking an Applied AI Engineer to help build the software, infrastructure, and data systems that power our biological intelligence platform.
This role sits at the intersection of software engineering, AI infrastructure, data engineering, and scientific computing. You will work closely with biologists, machine learning researchers, and automation engineers to create systems that transform experimental data into predictive models of living systems.
You will contribute across the stack—from laboratory data ingestion pipelines and cloud infrastructure to internal tools, model-serving systems, and user-facing applications.
This role is ideal for engineers who enjoy building practical AI systems and are excited to work on technically challenging problems in biology.
What You’ll Own
Software Engineering
Design and develop production-grade software systems
Build internal applications and scientific tooling
Develop APIs and backend services
Build and maintain web applications and dashboards
Create systems for experiment tracking and data visualization
Improve software reliability, testing, and deployment processes
Data & AI Infrastructure
Build and maintain large-scale biological data pipelines
Design systems for ingestion, storage, transformation, and retrieval of multimodal biological data
Develop infrastructure supporting AI model training and evaluation
Optimize data movement between laboratory systems, cloud environments, and computational pipelines
Improve dataset quality, lineage, reproducibility, and governance
Support model serving and inference infrastructure
Cloud & Platform Engineering
Design and maintain cloud infrastructure
Improve scalability, reliability, and observability of internal systems
Manage containerized and distributed workloads
Build deployment and CI/CD systems
Support high-performance computing and GPU infrastructure
Optimize cloud utilization and cost efficiency
Security & IT
Improve organizational cybersecurity posture
Manage identity and access controls
Implement security monitoring and incident response processes
Support device management and endpoint security
Develop data security and compliance practices
Help establish security standards appropriate for sensitive biological and AI data
Cross-Functional Collaboration
Work closely with scientists to understand data generation workflows
Partner with machine learning researchers to support model development
Collaborate with automation and hardware teams on laboratory integrations
Translate scientific requirements into scalable software systems
Who You Are
You are someone who:
Operates with high agency — you see gaps across the stack and take ownership of fixing them
Takes responsibility for end-to-end product outcomes, not just individual components
Brings high energy to building robust, usable, real-world software
Acts with high integrity — you care about correctness, reliability, and clarity
Communicates directly and clearly, especially when tradeoffs or failures arise
Is self-aware about your strengths and gaps, proactively fills them and open to feedback
Requirements
Required
BS, MS, or PhD in Computer Science, Engineering, Mathematics, Physics, or related field
At least 1 year of industry experience
Strong proficiency in modern frontend technologies (e.g. React, TypeScript, or similar)
Strong backend experience (e.g. Python, Go, Rust, Node, or similar)
Experience with cloud platforms (AWS, GCP, or Azure)
Experience designing and maintaining APIs, services, and data models
Comfort working with time-series data and stateful systems
Strong understanding of databases and data architectures
Familiarity with Linux environments and software deployment
Thrives in startup fast pace and high intensity environments
Benefits
Competitive salary and meaningful equity depending on experience level
Full benefits
High-trust, high-ownership environment
Rapid growth in scope and responsibility