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Machine Learning Engineer II - Data Science

HyrEzy Talent Solutions
Bangalore
3 - 6 Years
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4.7white-divider5+ Reviews

Posted on: 26/07/2025

Job Description

Job Description :


As a Machine Learning Engineer - 2 you will lead the design, implementation, optimization, and deployment of AI-powered features. You will take ownership of the full ML lifecycle from ideation to deployment and monitoring while working closely with cross-functional teams to deliver production-ready ML systems that directly impact customer outcomes.


Responsibilities :


- Design and develop AI product features aligned with customer and business needs.


- Maintain and enhance existing ML systems and infrastructure.


- Build and manage ML pipelines for experimentation, training, deployment, and monitoring.


- Conduct A/B testing and build scalable model inference APIs.


- Deploy LLM-based solutions customized to specific insurance use cases.


- Optimize GPU infrastructure, parallel training, and fine-tune foundation models.


- Implement DevOps/ML Ops best practices using Kubernetes, Docker, and orchestration frameworks.


- Collaborate with engineering, product, and research teams to design and implement scalable ML systems.


- Apply advanced ML techniques in NLP, Generative AI, Retrieval-Augmented Generation (RAG), and transformer models.


- Monitor, optimize, and maintain deployed models to ensure performance, accuracy, and reliability.


- Conduct applied research to keep up with and implement state-of-the-art advancements.


- Build robust data pipelines and model deployment infrastructure.


- Communicate findings and technical recommendations clearly to cross-functional stakeholders.


Requirements :


- Master's degree (or equivalent industry experience) in Machine Learning, Data Science, or related fields.

- 3 - 6 years of hands-on experience in Machine Learning and software/data engineering.


- Deep proficiency in Python and working experience with JavaScript.


- Strong background in NLP, LLMs, and model optimization.


- Prior exposure to ML Ops and model deployment workflows.


- Ability to work in a fast-paced environment with high accountability.


- A passion for innovation, learning, and building impactful solutions.


Technical Requirements Machine Learning & LLMs :


- Hugging Face LLMs, GPT, Gemini, Claude, Mixtral, LLaMA


- ML libraries : PyTorch, TensorFlow, Scikit-learn


LLMOps & Tools :


- MLFlow, Langchain, LangGraph, LangFlow, Langfuse


- LlamaIndex, AWS Bedrock, Azure AI, SageMaker


Cloud & Infrastructure :


- Cloud Platforms : AWS, Azure


- DevOps : Kubernetes, Docker


Databases & Storage :


- MongoDB, PostgreSQL, Pinecone, ChromaDB


Languages :


- Python, SQL, JavaScript


Bonus Certifications :


- AWS Certified Solution Architect - Professional.


- AWS Certified Machine Learning - Specialty.


- Azure Solutions Architect Expert.


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