Full-Time

Research Engineer

Generative AI

Confirmed live in the last 24 hours

DeepMind

DeepMind

1,001-5,000 employees

Develops artificial general intelligence systems

AI & Machine Learning
Biotechnology
Education

Mid, Senior

London, UK

Category
Applied Machine Learning
Deep Learning
AI & Machine Learning
Required Skills
Python
Tensorflow
Pytorch
Pandas
Requirements
  • Possesses a deep intellectual curiosity and a relentless drive to understand the intricacies of machine learning models and training systems.
  • A true team player who prioritizes collective success. This person is flexible, collaborative, and willing to contribute wherever needed to achieve project goals, fostering a positive and supportive team environment.
  • Embraces a hacker mindset, fearlessly diving into complex codebases and technical challenges. Capable of both rapid prototyping for experimentation and developing robust, production-ready code for long-term solutions.
  • Programming experience in Python and machine learning libraries such as jax, tensorflow or pytorch.
  • Experience implementing state of the art machine learning algorithms and understand how to analyze results using notebooks and libraries such as pandas.
  • Great communication skills, able to explain ideas at the conceptual level.
Responsibilities
  • Understand, design, build, and maintain highly scalable and efficient ML systems and pipelines.
  • Optimize existing codebases for performance, reliability, and resource utilization.
  • Push the boundaries of AI by exploring new research avenues and implementing cutting-edge techniques; validating their effectiveness through comprehensive experimental testing and analysis.
  • Stay abreast of the latest advancements in the field and identify opportunities to apply them.
  • Provide technical guidance and mentorship to other engineers and researchers.
  • Take ownership of critical issues and drive collaborative efforts to ensure project success.

This company leads in the field of artificial general intelligence (AGI), with notable applications across healthcare, energy management, and biotechnology. Their work in early diagnostic tools for eye diseases, optimizing energy usage in major data centers, and groundbreaking contributions to protein structure prediction underlines their commitment to harnessing AI for diverse practical applications. The company's dedication to pushing the boundaries of AI technology not only propels the industry forward but also creates a dynamic and impactful working environment for its employees.

Company Stage

Acquired

Total Funding

$4.9M

Headquarters

London, United Kingdom

Founded

2010

Simplify Jobs

Simplify's Take

What believers are saying

  • DeepMind's advancements in AI-driven drug discovery, such as collaborations with Lilly and Novartis, promise significant contributions to healthcare and pharmaceuticals.
  • The introduction of AlphaCode 2 and other AI models showcases DeepMind's continuous innovation and leadership in competitive programming and AI research.
  • DeepMind's AI tools for music creation and weather forecasting demonstrate the company's versatility and potential to revolutionize multiple industries.

What critics are saying

  • The backlash against Google's Gemini AI model could impact DeepMind's reputation and trustworthiness in the AI community.
  • The competitive landscape in AI is intense, with rapid advancements from other tech giants potentially overshadowing DeepMind's innovations.

What makes DeepMind unique

  • DeepMind's pioneering work in AI, such as the development of AlphaFold and AlphaCode, sets it apart as a leader in both scientific research and practical AI applications.
  • The company's integration with Google's vast resources and data infrastructure provides a significant competitive advantage over standalone AI firms.
  • DeepMind's focus on ethical AI and its collaborations with industry leaders like Lilly and Novartis highlight its commitment to impactful and responsible AI innovation.

Help us improve and share your feedback! Did you find this helpful?