L&T Finance
Website:
ltfs.com
Job details:
ML Engineer
About Company: L&T Finance
L&T Finance is a leading non-banking financial company (NBFC) in India, part of the larger Larsen & Toubro (L&T) Group. Established in 1994, L&T Finance has grown into a diversified financial services provider, offering a wide range of products including retail and corporate finance, housing finance, asset management, and wealth management services. With a strong focus on technology and innovation, L&T Finance is committed to leveraging cutting-edge solutions to enhance its
financial products and services, improve customer experiences, and drive sustainable growth in the rapidly evolving Indian financial sector.
About Team
We are a high-performance advanced ML team, operating out of Bangalore and Mumbai. The team is comprised of intelligent and enthusiastic data scientists and ML engineers with a proven track record. We are focused on bringing cutting edge AI technologies to sharpen and grow the lending businesses of L&T Finance.
Role Overview
We are seeking experienced ML Engineer to join our team. The ideal candidate will have a strong background in Machine Learning, with proficiency in this areas. This role offers the flexibility to specialize in one area while contributing to projects across both domains.
Experience
We welcome applications from candidates with a range of experience levels: -
Typically, we look for 1 -3 years of experience in Machine Learning.
Qualification -BS/BTech or MS/MTech.
Location -Mumbai or Bangalore
Key Responsibilities
1. Design and develop end-to-end machine learning models on GCP Vertex AI and other platforms.
2. Fetch and process data from BigQuery and various sources for model development.
3. Build and deploy models using Python and frameworks such as Scikit learn, XGBoost/CatBoost, TensorFlow, Keras, and Gemini. 4. Implement and work with a wide range of ML algorithms, including Regression, Classification, Forecasting, Unsupervised Learning, and Natural Language Processing.
5. Develop and deploy computer vision solutions, including preprocessing of image and video data.
6. Utilize and fine-tune state-of-the-art language models (LLMs) and foundation models for specific tasks and applications.
7. Implement advanced AI technologies like Retrieval-Augmented Generation (RAG)
and function calling to enhance LLM capabilities.
8. Build and maintain ML models in production for both real-time and batch-based use cases.
9. Conduct exploratory data analysis and feature mining across structured and unstructured data sources.
10. Develop and implement evaluation metrics to measure ML and LLM model performance and effectiveness.
11. Apply CI/CD & MLOps best practices for model deployment and automation of ML pipelines & monitoring.
12. Stay up to date with the latest advancements in machine learning, GenAI, and related AI/ML technologies.
Required Skills and Experience
• Strong proficiency in Python
• Expertise in Data Science and Machine Learning
• Experience with Natural Language Processing and Deep Learning
• Familiarity with Docker and Flask
• Proficiency in TensorFlow and Keras
• Experience with GCP Vertex AI, Vertex Pipelines, MLOps, Cloud Functions, BigQuery, Cloud Run, AutoML, DocAI, Gemini, Cloud Build, Artifact Registry, and Vertex AI endpoints
Desired Experience
• Experience in the Banking Financial Service Industries (BFSI) and/or B2C applications
• Knowledge of model and data explainability, bias mitigation, and best practices in highly regulated industries
• Hands-on experience with hyperparameter tuning and related best prac tices/tools
• Experience with reinforcement learning, with or without human feedback, for continuous model fine-tuning
• Familiarity with LLM frameworks like Langchain and LlamaIndex
• Experience with computer vision libraries such as OpenCV
Additional Qualifications (Good to Have)
• GCP — Google Certified Professional Machine Learning Engineer certification
• Advanced Certificate in Generative AI
• Strong background in statistics and probability
• Machine Learning / Data Science certifications or advanced coursework
•Knowledge of the BFSI and NBFC ecosystem
Key Technologies and Platforms
• Python, Scikit-learn, XGBoost/CatBoost, Pandas, NumPy • TensorFlow, Keras,PyTorch
• Natural Language Processing (NLP) libraries
• Computer Vision libraries (e.g., OpenCV)
• GCP Vertex AI suite (including Gemini)
• BigQuery, Cloud Functions, Cloud Run
• Docker, Flask
• Langchain, LlamaIndex (for LLM applications)
The ideal candidate will have a strong foundation Machine Learning, with the ability
to contribute across both domains. We welcome applicants who excel in this area
and are eager to expand their skills in the other, fostering a collaborative
environment that bridges traditional ML and cutting-edge GenAI technologies.
Click on Apply to know more.