We are looking for an insatiably curious, always learning Senior Research Scientist. You could get a chance to work on the most important and challenging problems at scale. As a software engineer dedicated to developing Gen AI-based ML systems, you will be involved in the deployment of ML models, building ML systems and pipelines to ensure reliable systems are deployed at scale to provide value for researchers. This is an engineering-dominated role, but the candidate should have basic knowledge of ML, especially NLP Transformer-based (LLM) models, to be able to handle the systems better.
Responsibilities
ML System Development: Design, develop, and maintain scalable and efficient machine learning systems, including writing ML services and APIs.
Model Deployment: Implement and manage the deployment of machine learning models, including transformer-based LLMs, into production environments, ensuring reliability and scalability.
Infrastructure Management: Collaborate with infrastructure teams to optimise and manage the underlying systems supporting machine learning workflows.
Data Pipeline Creation: Create robust and efficient data pipelines for collecting, processing, and preparing datasets for machine learning models.
Collaboration: Work closely with data scientists, researchers, and cross-functional teams to integrate ML solutions into existing software infrastructure.
Performance Optimisation: Continuously optimise and improve the performance of machine learning algorithms and systems.
Documentation: Develop and maintain documentation for machine learning systems, APIs, and data pipelines to ensure clarity and ease of use for team members.
Requirements
3+ years of experience, including working on designing multi-component systems.
Strong grasp of one high-level language like Python.
General awareness of SQL and database design concepts.
Solid understanding of testing fundamentals.
Strong communication skills.
Should have prior experience in managing and executing technology products.
Decent understanding of various Gen AI-based ML approaches.
Experience in building agentic architectures using langgraph or similar libraries.
Bonus
Prior experience working with high-volume, always-available web applications.
Experience working with the cloud.
Knowledge of cloud platforms such as AWS, GCP, or Azure.
Experience with deploying small and big open source LLMs in production environments using containerization tools like Docker.
Experience in distributed systems.
Experience working with a Start-up is a plus point.
Searching, interviewing and hiring are all part of the professional life. The TALENTMATE Portal idea is to fill and help professionals doing one of them by bringing together the requisites under One Roof. Whether you're hunting for your Next Job Opportunity or Looking for Potential Employers, we're here to lend you a Helping Hand.
Disclaimer: talentmate.com is only a platform to bring jobseekers & employers together.
Applicants
are
advised to research the bonafides of the prospective employer independently. We do NOT
endorse any
requests for money payments and strictly advice against sharing personal or bank related
information. We
also recommend you visit Security Advice for more information. If you suspect any fraud
or
malpractice,
email us at abuse@talentmate.com.
You have successfully saved for this job. Please check
saved
jobs
list
Applied
You have successfully applied for this job. Please check
applied
jobs list
Do you want to share the
link?
Please click any of the below options to share the job
details.
Report this job
Success
Successfully updated
Success
Successfully updated
Thank you
Reported Successfully.
Copied
This job link has been copied to clipboard!
Apply Job
Upload your Profile Picture
Accepted Formats: jpg, png
Upto 2MB in size
Your application for Senior Gen AI Engineer
has been successfully submitted!
To increase your chances of getting shortlisted, we recommend completing your profile.
Employers prioritize candidates with full profiles, and a completed profile could set you apart in the
selection process.
Why complete your profile?
Higher Visibility: Complete profiles are more likely to be viewed by employers.
Better Match: Showcase your skills and experience to improve your fit.
Stand Out: Highlight your full potential to make a stronger impression.
Complete your profile now to give your application the best chance!