Lexsi Labs is one of the leading frontier labs focusing on building aligned, interpretable and safe Superintelligence. Most of the work involves on creating new methodologies for efficient alignment, interpretability lead-strategies and tabular foundational model research. Our mission is to create AI tools that empower researchers, engineers, and organizations to unlock AI's full potential while maintaining transparency and safety.
Our team thrives on a shared passion for cutting-edge innovation, collaboration, and a relentless drive for excellence. At Lexsi.ai, everyone contributes hands-on to our mission in a flat organizational structure that values curiosity, initiative, and exceptional performance.
As a research scientist at Lexsi.ai, you will be uniquely positioned in our team to work on very large-scale industry problems and push forward the frontiers of AI technologies. You will become a part of the unique atmosphere where startup culture meets research innovation, with key outcomes of speed and reliability.
Responsibilities
- You'll work on advanced problems related to AI explainability, AI safety, and AI alignment.
- You'll have flexibility in picking up the specialization areas within ML / DL and problem types that address the above challenges.
- Create new techniques around ML Observability & Alignment.
- Collaborate with MLEs and SDE to roll out the features and manage their quality until they are fully stable.
- Create and maintain technical and product documentation.
- Publish papers in open forums like arxiv and present in industry forums like ICLR NeurIPS etc.
Qualifications
Has a solid academic background in concepts of machine learning or deep learning or reinforcement learning.Master or Ph.D in key engineering topics like computer science or Mathematics is requiredShould have published peer-reviewed papers or contributed to opensource toolsHands-on experience in working with deep learning frameworks like Tensorflow, Pytorch etcEnjoys working on various DL problems that involve using different types of training data sets - textual, tabular, categorical, images etcComfortable deploying code in cloud environments / on-premise environments.Prior experience on working on Mechanistic interpretability methods - SAEs, Circuit discovery, DLB etc.2+ years of hands-on experience in Deep Learning or Machine Learning.Hands-on experience in implementing techniques like Transformer models, GANs, Deep Learning, etc.