Data Scientist

Kroll · India

Full-time · Entry level · Posted 12 days ago

Kroll is hiring a Data Scientist to join its Enterprise Data Group. This role is
ideal for an early- to mid-career practitioner who is eager to develop deep
expertise across the ML lifecycle while contributing to high-impact work in a
sophisticated, collaborative data science team.

 

Our program spans fintech product development, digital transformation, process
automation with machine learning, business intelligence, data governance, and
generative AI. You will be embedded in a team of experienced data scientists and
engineers who will invest in your growth — and work alongside professionals from
the world's largest financial institutions, law enforcement agencies, and
government bodies.

 

At Kroll, your work will help deliver clarity to our clients' most complex
governance, risk, and transparency challenges. Apply now to join One team, One
Kroll.

 

Responsibilities

* Build, train, and evaluate machine learning models across traditional ML,
NLP, and LLM/GenAI use cases, under the guidance of senior team members

* Contribute to data pipelines and feature engineering workflows in Databricks
using PySpark and Delta Lake

* Support model deployment and monitoring on Azure — including Azure AI
Foundry, Azure OpenAI, and Azure Functions — and help maintain production
model health

* Contribute to LLM and generative AI workflows — including prompt engineering,
RAG pipelines, and agentic applications built on frameworks such as LangChain
or LlamaIndex — under the guidance of senior team members

* Conduct exploratory data analysis and communicate findings clearly through
code, documentation, and team presentations

* Write clean, well-tested, and reproducible Python code; contribute to shared
codebases and track experiments via MLflow

* Partner with senior data scientists and cross-functional stakeholders to
understand business problems and translate them into analytical approaches

* Participate actively in code reviews, team rituals, and knowledge-sharing
sessions

* Develop your skills proactively — engage with new tools, research, and
techniques relevant to the team's work

 

Requirements

* Bachelor's or Master's degree in computer science, statistics, mathematics,
data science, or a related quantitative field

* 1–3 years of practical data science or ML experience (internships, co-ops,
research, and strong project work all count)

* Proficiency in Python and familiarity with core ML libraries (scikit-learn,
pandas, NumPy)

* Solid understanding of foundational ML concepts: supervised and unsupervised
learning, model evaluation, cross-validation, and feature engineering

* Exposure to at least one deep learning or NLP framework (PyTorch, TensorFlow,
or Hugging Face Transformers) and familiarity with LLM concepts such as
prompt engineering, embeddings, or retrieval-augmented generation

* Comfort working with structured and unstructured data, including text and
document-based sources

* Basic understanding of the ML lifecycle — from data preparation and
experimentation through evaluation and handoff

* Clear, organised communication skills — able to document work and explain
methods to peers and stakeholders

* Curiosity, rigour, and a strong drive to learn in a fast-paced, collaborative
environment

 

Preferred

* Hands-on experience with Databricks, Spark/PySpark, or cloud ML platforms
(Azure AI Foundry, AWS SageMaker, or GCP Vertex AI)

* Hands-on experience with LLM/GenAI and agentic workflows — prompt
engineering, RAG, embeddings, vector databases, or building with frameworks
such as LangChain, LlamaIndex, or Semantic Kernel

* Familiarity with MLflow or other experiment tracking and model versioning
tools

* Experience in financial services, risk, compliance, or a regulated industry

* Knowledge of responsible AI principles, including fairness, transparency, and
data privacy

 

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