Quality & Integrity: Ensure data integrity throughout the modeling lifecycle, performing extensive Exploratory Data Analysis (EDA) and cleaning to prepare high-quality inputs.
Collaborate with DevOps and engineering teams to ensure algorithms run efficiently and scale reliably within the cloud environment.
Production Deployment: Implement and manage MLOps pipelines within Azure Machine Learning to ensure reproducible model training, versioning, testing, and continuous deployment into live operational environments.
Write clean, well-documented, and efficient Python code, adhering to software engineering best practices, including unit testing and code reviews.
Data Crunching and Manipulation: Execute complex data ingestion, exploration, and feature engineering tasks, applying rigorous statistical methods and domain knowledge to raw and disparate datasets.
Algorithm Development: Design, prototype, build, and validate machine learning and statistical models from scratch, without reliance on pre-packaged solutions.
Agentic AI Systems: Investigate and prototype intelligent software agents capable of autonomous decision-making, planning, and tool use, moving beyond simple predictive models.
Solution Design: Formulate and scope data science initiatives, defining clear objectives, success metrics, and a technical roadmap that directly addresses identified business requirements.
Generative AI: Explore, experiment with, and deploy large language models (LLMs) and other Gen AI techniques to create new products or optimize existing processes (e.g., semantic search, content generation, synthetic data creation).
Business Translation: Proactively engage with business stakeholders, product managers, and domain experts to deeply understand key organizational challenges and strategic goals.
Mentor junior team members and contribute to the growth of the team's overall ML/AI knowledge base.
Requirements
langchain
azure ml
sql
python
master's
a/b testing
Agent Development: Knowledge of agentic frameworks (e.g., LangChain, LlamaIndex) and experience designing multi-step, tool-using autonomous AI workflows.
Generative AI Experience: Practical experience fine-tuning, RAG-ifying, or deploying modern Large Language Models (LLMs) (e.g., OpenAI, Gemini, Llama).
Demonstrated ability to write production-level, highly optimized code for critical systems.
Statistical Rigor: Strong background in statistical modeling, experimental design (A/B testing), and model validation techniques.
Cloud ML Platforms: Proven, hands-on experience building and managing ML models and MLOps workflows specifically using Azure Machine Learning services (e.g., Azure ML Pipelines, Endpoints, Datastores).
Education: Master's degree or higher in Computer Science, Statistics, Mathematics, or a related quantitative field.
Data Skills: Expert proficiency in SQL and experience working with large-scale, high-velocity data, including ETL/ELT processes and data visualization.
Programming Mastery: 5+ years of professional experience leveraging Python for data science, including deep expertise in the PyData stack (e.g., Pandas, NumPy, Scikit-learn, TensorFlow/PyTorch).
Benefits
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Training + Development
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Interview process
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Visa Sponsorship
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Security clearance
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Company
Overview
60% Backed
KKR Investment
Held under 60% equity by KKR, a leading global investment firm.
6–7M tpa
Municipal Waste Handling
Processes 6–7 million tonnes per annum of municipal waste across regions.
USD 600M
Annual Revenues
Generates approximately USD 600 million in annual revenue.
400K+ Beds
Biomedical Waste Management
Serves over 400,000 hospital beds managing biomedical waste disposal.
Born from Ramky Enviro (est. 1994), it operates globally across India, Middle East and Singapore.
Operates globally owning biowaste, e‑waste, recycling and car‑park management sites.
Projects span municipal and hazardous waste streams, wastewater treatment, and integrated facility services.
Culture + Values
Building a circular economy model, emphasizing recycling everything
Focus on delivering Integrated Sustainability Solutions for Emerging Economies
Technology and innovation at scale
Holistic urban development with sustainability at the core
Rethink, Reduce, Reuse, Recover, Repurpose, Replenish, and Restore
Environment + Sustainability
6–7M tonnes/year
Municipal Solid Waste Managed
Operates across 23 cities in India, Middle East, and Singapore, managing municipal solid waste effectively.
1M tonnes/year
Industrial Hazardous Waste Processed
Processes industrial hazardous and regulated waste across 22 locations globally.
45K healthcare establishments
Biomedical Waste Serviced
Operates 25 biomedical waste facilities, servicing 400,000 hospital beds across global healthcare network.
85+ locations
Global Sustainability Footprint
Maintains a global footprint with operations in key regions including India, Middle East, Singapore, USA, and Africa.