Software Engineer, AI Labs
Role details
Job location
Tech stack
Job description
We are looking for a software engineer to join BlackRock AI Labs. This role is suited to an engineer who enjoys building reliable production systems, working closely with data scientists and researchers, and helping turn AI and machine learning prototypes into robust products, platforms, and services.
You do not need to be a machine learning researcher. We are looking for someone with strong software engineering judgement who can design, implement, test, deploy, and operate well-scoped production components. You will contribute to cloud-native services, data and ML workflows, internal platforms, and tools that help AI Labs deliver impact safely, responsibly, and efficiently.
As an engineer, you will be expected to deliver meaningful features and improvements independently, while seeking guidance on more complex technical trade-offs. You will build breadth across the AI product lifecycle, strengthen your system design judgement, and contribute to the engineering quality and culture of the team.
In this role, you can expect to
- Design, build, test, deploy, andmaintainsecure, scalable software components that support machine learning and generative AI products in production.
- Own well-scoped features, services, tools, or platform capabilities from implementation through release and operational support.
- Collaborate closely with data scientists, researchers, product partners, and other engineers to translate exploratory AI workflows into reliable production systems.
- Write high-quality, maintainable, well-tested code that is fit for purpose and easy for others to understand, extend, andoperate.
- Improve the reliability, observability, performance, security, and usability of existing products, tools, and services.
- Participate in production support, troubleshooting, incident resolution, and follow-up improvements that reduce future operational risk.
- Contribute to technical design discussions, document decisions clearly, and escalate architectural risks or trade-offs whenappropriate.
- Participate in code reviews, testing practices, CI/CD workflows, and team engineering processes.
- Proactively contribute to team culture by sharing knowledge, giving constructive feedback, and helping the team improve how it works.
- Use modern engineering tools, including AI-enabled development tools whereappropriate, to improve productivity and engineering quality., * Machine learning or generative AI product lifecycles, including model serving, evaluation, monitoring, experimentation, or fine-tuning.
- Platform engineering or internal developer tooling that improves the productivity of engineers, data scientists, or researchers.
- Front-end or full-stack development where useful for delivering internal tools or user-facing workflows.
- Acceleratedcomputeinfrastructure such as GPUs, TPUs, or AWSInferentia.
- AI coding assistants or other modern developer productivity tools.
What success looks like
- Reliably deliver well-scoped features, fixes, and improvements that are adopted by users or improve team delivery.
- Build production software that is tested, observable, maintainable, secure, and operationally supportable.
- Help move AI ideas fromprototypetoward production by translating exploratory workflows into reliable, reusable engineering patterns.
- Develop stronger judgement around system design, trade-offs, reliability, and operational risk.
- Improve existing systems by reducing technical debt, increasing reliability, improving developer experience, or making services easier tooperate.
- Communicate clearly, ask good questions, raise risks early, and contribute positively to team culture.
Requirements
- Typically3+ years of professional software engineering experience, including experience shipping code to production environments.
- Strong programming skills in Python and practical experience with SQL.
- Experience building, testing, deploying, ormaintainingcloud-native applications, services, APIs, databases, data pipelines, or distributed systems.
- Good understanding of software engineering fundamentals, including code quality, automated testing, version control, code review, and maintainability.
- Ability to independently deliver well-scoped features or components, while seeking guidance on complex design decisions.
- Strong problem-solving skills, with the ability to debug issues, reason through trade-offs, and learnnew technologies.
- Strong communicationand collaboration skills, including the ability to work effectively with technical and non-technical partners.
Preferred experience
Experience in one or more of the following areas would be helpful, but we do not expect candidates to have all of them:
- Data pipelines, ETL tooling, or workflow orchestration frameworks such as Spark, Airflow,Dagster, or Flyte.
- Cloud infrastructure, containers, deployment automation, CI/CD pipelines, or DevOps practices.
- Observability and production support practices, including metrics, logging, tracing, alerting, and incident follow-up.
- Relational databases, columnar stores, data modelling, data validation, or performance tuning.
Benefits & conditions
To help you stay energized, engaged and inspired, we offer a wide range of employee benefits including: retirement investment and tools designed to help you in building a sound financial future; access to education reimbursement; comprehensive resources to support your physical health and emotional well-being; family support programs; and Flexible Time Off (FTO) so you can relax, recharge and be there for the people you care about.