Full-Time

Research Engineer

LLM

Confirmed live in the last 24 hours

Anyscale

Anyscale

201-500 employees

Platform for scaling AI workloads

Enterprise Software
AI & Machine Learning

Compensation Overview

$170.1k - $237kAnnually

Mid

San Francisco, CA, USA

Hybrid position in San Francisco, CA.

Category
Applied Machine Learning
Natural Language Processing (NLP)
AI & Machine Learning
Required Skills
Python
Pytorch
Natural Language Processing (NLP)
Requirements
  • Production level experience in Machine Learning, and in distributed ML Systems (Python/Pytorch)
  • 4+ years experience in one of those fields: Machine Learning, NLP, or CV, or ML Systems
  • Graduate degree (MSc or PhD) in one of the fields above
  • Published in a top-tier AI conference (Neurips, ICML, ICLR, CVPR, ACL, etc)
Responsibilities
  • Enhancing Ray for Large-Scale Training: Collaborate with the Ray Core and Ray Train teams to adapt and optimize Ray for efficient, large-scale GPU-heavy training, addressing current limitations and expanding its capabilities.
  • Developing the ADAG API: Explore and potentially implement an Accelerated DAG (ADAG) API for Ray, aiming to improve performance and scalability for complex ML workflows.
  • System Integration and Optimization: Create and refine integrations between Ray and other components, such as Ray Data, to streamline large-scale ML processes and ensure seamless operation across different systems.
  • Research and Innovation: Contribute to cutting-edge research in ML systems, identifying new opportunities and methods to push the boundaries of what Ray can achieve in large-scale training environments.
  • Prototype and Benchmarking: Design and build prototypes to test new features or enhancements, and conduct benchmarking to assess performance improvements and validate the effectiveness of your solutions.
  • Work on applied research, pushing state-of-the-art on large-scale model training
  • Advance Ray as the best open source library for large-scale machine learning

Anyscale provides a platform designed to scale and productionize artificial intelligence (AI) and machine learning (ML) workloads. Its main product, Ray, is an open-source framework that helps developers manage and scale AI applications across various fields, including Generative AI, Large Language Models (LLMs), and computer vision. Ray allows companies to enhance the performance, fault tolerance, and scalability of their AI systems, with some users reporting over 90% improvements in efficiency, latency, and cost-effectiveness. Anyscale primarily serves clients in the AI and ML sectors, including major companies like OpenAI and Ant Group, who rely on Ray for training large models. The company operates on a software-as-a-service (SaaS) model, charging clients a subscription fee for access to the Ray platform. Anyscale's goal is to empower organizations to effectively scale their AI workloads and optimize their operational efficiency.

Company Stage

Series C

Total Funding

$252.5M

Headquarters

San Francisco, California

Founded

2019

Growth & Insights
Headcount

6 month growth

-33%

1 year growth

81%

2 year growth

156%
Simplify Jobs

Simplify's Take

What believers are saying

  • Anyscale's recent $100M Series C funding at a $1 billion valuation indicates strong investor confidence and financial stability.
  • The launch of Anyscale Endpoints and Aviary projects demonstrates the company's commitment to innovation and addressing market needs for scalable AI solutions.
  • Collaborations with industry leaders like Nvidia enhance Anyscale's technological capabilities and market reach.

What critics are saying

  • The 'ShadowRay' vulnerability exposes significant security risks, potentially undermining client trust and operational stability.
  • The competitive landscape in AI and ML is intense, with rivals like OctoML and established cloud providers posing significant threats.

What makes Anyscale unique

  • Anyscale's Ray framework is a widely adopted open-source tool specifically designed for scaling AI applications, setting it apart from more general-purpose platforms.
  • The company's focus on optimizing cost-efficiency and scalability for large AI workloads, including generative AI and LLMs, provides a significant competitive edge.
  • Partnerships with tech giants like Nvidia and clients like OpenAI and Ant Group underscore Anyscale's credibility and effectiveness in the AI and ML space.

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Benefits

Medical, Dental, and Vision insurance

401K retirement savings

Flexible time off

FSA and Commuter benefits

Parental and family leave

Office & phone plan reimbursement