Sr. Software Dev. Engineer/MLE, AGI Customization

A global technology and e-commerce company leading in cloud computing, digital streaming, and artificial intelligence.
Machine Learning
Senior Software Engineer
In-Person
5,000+ Employees
5+ years of experience
AI · Enterprise SaaS

Description For Sr. Software Dev. Engineer/MLE, AGI Customization

The Artificial General Intelligence (AGI) team at Amazon is seeking an experienced Machine Learning Engineer to join their innovative team. This role focuses on advancing the state of Large Language Models through the development of customization capabilities including fine-tuning and distillation. The position offers a unique opportunity to work with Amazon's vast heterogeneous data sources and large-scale computing resources to develop multimodal Large Language Models and Generative AI solutions.

The team emphasizes a strong culture of mentorship and knowledge sharing, with experienced members providing one-on-one mentoring and thorough code reviews. They value work-life balance and offer flexibility in working hours, allowing team members to maintain a healthy personal life while working on cutting-edge AI technology.

As a senior member of the team, you'll be responsible for leading technical initiatives, collaborating with Applied Scientists, and driving the development of novel LLM training techniques. The role requires exceptional technical expertise in both Computer Science and Machine Learning, with opportunities to work on high-impact projects that shape the future of AGI at Amazon.

The ideal candidate should be passionate about new technologies, have a proven track record of delivering innovative features and products, and possess strong communication skills to effectively collaborate with both technical and business partners. The position offers growth opportunities through challenging projects and the chance to work with state-of-the-art AI technology in a supportive, learning-focused environment.

Last updated 35 minutes ago

Responsibilities For Sr. Software Dev. Engineer/MLE, AGI Customization

  • Lead development of novel LLM training techniques and optimizations
  • Collaborate with Applied Scientists to process data and scale machine learning models
  • Investigate design approaches and prototype new technology
  • Work in an Agile/Scrum environment to deliver high quality software
  • Evaluate technical feasibility of solutions

Requirements For Sr. Software Dev. Engineer/MLE, AGI Customization

Python
Java
  • 5+ years of non-internship professional software development experience
  • 5+ years of programming with at least one software programming language
  • 5+ years of leading design or architecture of new and existing systems
  • Experience as a mentor, tech lead or leading an engineering team
  • Strong machine learning background
  • Bachelor's degree in computer science or equivalent

Benefits For Sr. Software Dev. Engineer/MLE, AGI Customization

  • Work-Life Balance
  • Flexible Working Hours
  • Mentorship & Career Growth
  • Knowledge Sharing Environment

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