resu·mail

Machine Learning Engineer

at Neuralgo

Coimbatore, India Mid Posted 2026-02-11

Don't apply into the void — reach the hiring manager

ResuMail finds the recruiters and hiring managers behind this Machine Learning Engineer role at Neuralgo, drafts a personalised outreach email, and schedules the send — so your application actually gets seen.

Reach the hiring manager ›

About this role

Build the Future of Generative AI with goML At goML, we’re building the next generation of Machine Learning platforms and Generative AI services that solve real-world enterprise problems. We work at the intersection of cutting-edge research and production-grade engineering—turning ideas into scalable, impactful AI systems. We’re looking for a Generative AI / Machine Learning Engineer to join our core team of young hustlers. In this role, you’ll design, build, and productionize GenAI systems—from model training and fine-tuning to deployment and monitoring. If you’re excited about shaping how AI is built, scaled, and delivered, this is the place for you. Why You? Why Now? Generative AI is moving fast—from experimentation to enterprise adoption. We need engineers who can bridge research and production, build reliable ML pipelines, and turn GenAI breakthroughs into real business outcomes. This role is perfect for someone who enjoys ownership, experimentation, and solving complex problems end to end. What You’ll Do (Key Responsibilities) First 30 Days: Foundation & Immersion Understand goML’s ML and GenAI platforms, use cases, and architecture Get familiar with existing training, inference, and deployment pipelines Study current approaches to RAG, LLM fine-tuning, and model evaluation Collaborate with senior engineers and product teams to understand business problems First 60 Days: Build & Experiment Design and develop Generative AI solutions using techniques like RAG, transformers, and LLM-based architectures  Fine-tune pre-trained LLMs for domain-specific and task-specific use cases Build and maintain data pipelines for training and inference workflows  Apply strong software engineering practices to ML and GenAI pipelines Evaluate, analyze, and benchmark model performance and quality Develop and deploy proof-of-concept GenAI systems  First 180 Days: Ownership & Scale Own end-to-end ML/GenAI pipelines—from training to production deployment Implement model optimization and compression techniques where applicable Productionize ML and GenAI research for real-world enterprise use cases Monitor deployed models and continuously improve performance and reliability Stay current with advancements in Generative AI and apply them thoughtfully Collaborate cross-functionally to solve challenging business problems at scale What You Bring (Qualifications & Skills) Must-Have Bachelor’s or Master’s degree in Computer Science, Machine Learning, AI, or a related field  3–5 years of experience in Generative AI, Machine Learning, or related domains  Strong programming skills in Python  Hands-on experience with RAG and LLM-based architectures  Experience building data pipelines, deploying ML/GenAI models, and maintaining them in production  Solid understanding of ML/GenAI evaluation techniques  Proficiency with Git, Docker, and Linux-based systems  Experience working with cloud platforms, especially AWS ML/GenAI services  Nice-to-Have Exposure to model compression and optimization techniques  Experience with popular ML/GenAI frameworks and tools  Familiarity with MLOps practices and monitoring systems Experience working in fast-paced startup environments Who You Are A strong problem-solver with a research-driven yet pragmatic mindset Comfortable working independently and collaboratively Methodical, detail-oriented, and thoughtful in planning and execution A clear communicator who can explain complex ideas simply Why Work With Us? Be part of a core team building next-gen ML & GenAI platforms  Work on real enterprise problems, not just experiments  High ownership, rapid learning, and strong growth opportunities Remote-first, with opportunities for in-person collaboration  A culture built around curiosity, hustle, and impact

How to get this job at Neuralgo

  1. Don't rely on the portal. Cold applications for a role like Machine Learning Engineer land in a pile of hundreds. A direct, personalised message to the hiring manager or a referrer is the fastest way in.
  2. Find the right person. ResuMail surfaces the actual recruiters and hiring managers at Neuralgo — not a generic careers inbox.
  3. Send tailored outreach. ResuMail drafts an email personalised to your resume and this role, then paces and schedules sends so you stay out of spam.
  4. Follow up. One polite nudge after 5–7 days roughly doubles reply rates — scheduled for you.

Reach Neuralgo's hiring managers today.

Free to start. No credit card. Built for Indian job seekers.

Start free with ResuMail ›