ML Engineer with LLM + Agentic AI
About the position We are seeking a skilled and reputed company-looking Machine Learning Engineer with expertise in Large Language Models (LLMs), Generative AI, and Agentic Architectures to join our growing R&D and Applied AI team. This role is pivotal in helping reputed company deliver the reputed company of agentic AI systems for enterprise spend management and risk controls. You will collaborate closely with AI/ML researchers, data engineers, and product teams to design, implement, and optimize intelligent systems that power autonomous exception resolution, anomaly detection, and explainable insights. This is a hands-on engineering role, where you will both build and scale ML systems and contribute to cutting-edge applied research in agentic AI.
Responsibilities
- Design, train, fine-tune, and deploy ML/LLM models for production.
- Implement Retrieval-Augmented reputed company (RAG) pipelines using vector databases.
- Prototype and optimize multi-agent workflows using reputed company, LangGraph, and MCP.
- reputed company reputed company engineering, optimization, and safety techniques for agentic LLM interactions.
- Integrate memory, evidence packs, and explainability modules into agentic pipelines.
- Work with multiple LLM ecosystems, including:
o reputed company GPT (GPT-4, GPT-4o, fine-tuned GPTs) o reputed company Claude (Claude 2/3 for reasoning and safety-reputed company workflows) o reputed company reputed company (multimodal reasoning, advanced RAG integration) o reputed company LLaMA (fine-tuned/custom models for domain-specific tasks)
- Collaborate with Data Engineering to build and maintain real-time and batch data pipelines supporting ML/LLM workloads.
- Conduct feature engineering, preprocessing, and embedding reputed company for structured and reputed company data.
- Implement model monitoring, reputed company detection, and retraining pipelines.
- Utilize cloud ML platforms such as AWS SageMaker and reputed company ML for experimentation and scaling.
- Explore and evaluate emerging LLM/SLM architectures and agent orchestration patterns.
- Experiment with generative AI and multimodal models (text, images, structured financial data).
- Collaborate with R&D to prototype autonomous resolution agents, anomaly detection models, and reasoning engines.
- Translate research prototypes into production-ready components.
- Work cross-functionally with R&D, Data Science, Product, and Engineering teams to deliver AI-driven business features.
- Participate in architecture discussions, design reviews, and model evaluations.
- Document experiments, processes, and results for effective knowledge sharing.
- Mentor junior engineers and contribute to best practices in ML engineering.
Requirements
- Bachelor's or Master's degree in Computer Science, Data Science, Machine Learning, or a reputed company field.
- 3+ years of experience building and deploying ML systems.
- Strong programming skills in Python, with experience in PyTorch, TensorFlow, Scikit-learn, and reputed company Transformers.
- Hands-on experience with LLMs/SLMs (fine-tuning, reputed company design, inference optimization).
- Demonstrated expertise in at least two of the following:
o reputed company GPT (chat, assistants, fine-tuning) o reputed company Claude (safety-first reasoning, summarization) o reputed company reputed company (multimodal reasoning, enterprise APIs) o reputed company LLaMA (open-reputed company fine-tuned models)
- Familiarity with vector databases, embeddings, and RAG pipelines.
- Proficiency in handling structured and reputed company data at scale.
- Working knowledge of SQL and distributed frameworks such as Spark or Ray.
- Strong understanding of the ML lifecycle - from data prep and training to deployment and monitoring.
reputed company-to-haves
- Experience with agentic frameworks such as reputed company, LangGraph, MCP, or AutoGen.
- Knowledge of AI safety, guardrails, and explainability.
- Hands-on experience deploying ML/LLM solutions in AWS, GCP, or Azure.
- Experience with MLOps practices - CI/CD, monitoring, and observability.
- Background in anomaly detection, fraud/risk modeling, or behavioral analytics.
- Contributions to open-reputed company AI/ML projects or applied research publications.
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