# Principal Research Scientist – Scaling

**Company**: Databricks
**Location**: San Francisco, California
**Work arrangement**: onsite
**Experience**: senior
**Job type**: full-time
**Salary**: $280,000-$350,000 USD
**Category**: Engineering
**Industry**: Technology
**Wikidata**: https://www.wikidata.org/wiki/Q18350420

**Apply**: https://job-boards.greenhouse.io/databricks/jobs/8521190002
**Canonical**: https://yubhub.co/jobs/job_1ea681d9-272

## Description

### Job Title: Principal Research Scientist – Scaling

### Department: Executive Engineering - Pipeline

### Role Summary:

As a Principal Research Scientist – Scaling, you will lead a team of world-class researchers and engineers to advance the state of the art in large-scale machine learning, focusing on post-training, RL and inference efficiency, optimization, and scaling.

### Responsibilities:

- Lead and grow a multidisciplinary research team focused on foundational and applied AI problems, with a particular emphasis on LLM scaling, efficiency, and systems performance.

- Define the scaling research roadmap in alignment with Databricks' strategic objectives, prioritizing advances in foundation model efficiency and large-scale training and inference.

- Drive algorithmic innovations for large-scale neural network training and inference, including novel optimizers, low-precision techniques, and model adaptation methods, and guide your team in rigorous empirical validation against state-of-the-art approaches.

- Optimize end-to-end ML systems for distributed training and RL, memory efficiency, and compute efficiency through close collaboration with core systems and platform teams, ensuring that research ideas translate into performant, reliable infrastructure.

- Partner with product and engineering to translate research breakthroughs, especially around scaling and efficiency, into customer-impacting capabilities in the Databricks AI platform.

- Foster a culture of scientific excellence and openness, including high-quality research practices, reproducible experimentation, and effective internal knowledge sharing across Databricks AI.

- Represent Databricks AI research externally through top-tier publications, conference talks, and collaborations with academia and the open-source community, with a focus on optimization and efficiency for large-scale models.

- Mentor and develop talent, providing both technical guidance (research agendas, experimentation, implementation) and career development support for research scientists and engineers.

### What You Will Do:

- Define and lead independent research programs on foundation model efficiency, covering topics such as optimizer design, low-precision training/inference, scalable model architectures, and efficient adaptation methods.

- Oversee the design and execution of large-scale experiments, including benchmarking against state-of-the-art methods and evaluating trade-offs in quality, latency, throughput, and cost.

- Work hands-on with your team on high-quality, efficient code in Python and PyTorch for research implementation, rapid prototyping, and integration with Databricks' production systems.

- Collaborate with distributed systems and infra teams to push the limits of distributed training, parallelism strategies, memory management, and hardware utilization for LLMs and other large models.

- Establish metrics, evaluation protocols, and best practices for scaling-focused research (e.g., training efficiency, inference cost, energy usage) and drive their adoption across Databricks AI.

- Champion responsible and robust deployment of scaling innovations, ensuring that model behavior, reliability, and safety remain first-class considerations.

### What We Look For:

- Proven ability to lead a research team to develop novel techniques for foundation model efficiency and related topics, with a strong track record of industry impact.

- Deep expertise in at least one of: generative AI, LLMs, distributed ML systems, model optimization, or responsible AI, with a strong emphasis on scaling and efficiency for large-scale neural networks.

- Hands on leadership - strong programming skills and demonstrated ability to write high-quality, efficient code in Python and PyTorch for research implementation and experimentation.

- Demonstrated ability to translate research innovation into scalable product capabilities in partnership with product and engineering teams.

- Excellent communication, leadership, and stakeholder management skills, with experience influencing cross-functional roadmaps and aligning research with business impact.

### Nice to Have:

- Prior work at the intersection of systems and ML, such as distributed training frameworks, compiler and kernel optimization for deep learning workloads, or memory-/compute-efficient model design.

- Strong industry and academic network in large-scale ML, with ongoing collaborations or service (e.g., PC/area chair) at top conferences in ML and systems.

- A strong record of research impact,such as first-author publications at top ML/systems conferences (e.g., ICLR, ICML, NeurIPS, MLSys), influential open-source contributions, or widely used deployed systems,especially in optimization or efficiency.

## Skills

### Required
- Python
- PyTorch
- Machine Learning
- Artificial Intelligence
- Research
- Leadership
- Communication
- Stakeholder Management

### Nice to have
- Generative AI
- LLMs
- Distributed ML Systems
- Model Optimization
- Responsible AI
