Posted on: 20/11/2025
Position Overview :
As a MLE-2, you will design, implement, and optimize AI solutions while ensuring model success. You will lead the ML lifecycle from development to deployment, collaborate with cross-functional teams, and enhance AI capabilities to drive innovation and impact.
Key Responsibilities :
- Design and implement AI product features.
- Maintain and optimize existing AI systems.
- Train, evaluate, deploy, and monitor ML models.
- Design ML pipelines for experiment, model, and feature management.
- Implement A/B testing and scalable model inferencing APIs.
- Optimize GPU architectures, parallel training, and fine-tune models for improved performance.
- Deploy LLM solutions tailored to specific use cases.
- Ensure DevOps and LLMOps best practices using Kubernetes, Docker, and orchestration frameworks.
Technical Requirements :
- LLM & ML : Hugging Face OSS LLMs, GPT, Gemini, Claude, Mixtral, Llama
- LLMOps : MLFlow, Langchain, Langgraph, LangFlow, Langfuse, LlamaIndex, SageMaker, AWS Bedrock, Azure AI
- Databases : MongoDB, PostgreSQL, Pinecone, ChromDB
- Cloud : AWS, Azure
- DevOps : Kubernetes, Docker
- Languages : Python, SQL, JavaScript
- Certifications (Bonus) : AWS Professional Solution Architect, AWS Machine Learning Specialty, Azure Solutions Architect Expert
What You'll Do :
- Collaborate with cross-functional teams to design and build scalable ML solutions.
- Implement state-of-the-art ML techniques, including NLP, Generative AI, RAG, and Transformer architectures.
- Deploy and monitor ML models for high performance and reliability.
- Innovate through research, staying ahead of industry trends.
- Build scalable data pipelines following best practices.
- Present key insights and drive decision-making.
What You Need to Succeed :
- Be part of a high-energy team that works hard and celebrates success.
- Shape the future of AI-driven automation in the insurance industry.
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