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LexisNexis (RELX)
LexisNexis (RELX)

Provides data and technology services, analytics, predictive insights, and fraud prevention for a wide range of industries.

Senior Data Scientist I

职能数据科学
级别资深
地点Mumbai
方式现场办公
类型全职
发布1周前
立即申请

Would you like to be part of a team that delivers high-quality software to our customers?Are you a visible champion with a ‘can do’ attitude and enthusiasm that inspires others?About the Business

LexisNexis Risk Solutions is the essential partner in the assessment of risk. Within our Business Services vertical, we offer a multitude of solutions focused on helping businesses of all sizes drive higher revenue growth, maximize operational efficiencies, and improve customer experience. Our solutions help our customers solve difficult problems in the areas of Anti-Money Laundering/Counter Terrorist Financing, Identity Authentication & Verification, Fraud and Credit Risk mitigation and Customer Data Management. You can learn more about LexisNexis Risk at the link below, https://risk.lexisnexis.com

About the Team

You’ll join a collaborative squad that includes a Squad Lead, Business Analyst, Development Lead, Developers, and Testers. Our squad model encourages teamwork, shared responsibility, and efficient delivery—everyone contributes to achieving a common goal.

About the Role

You will join the Data Science team within the Brightmine Prod Tech organization. The team builds AI‑ and Generative AI‑driven capabilities for Brightmine’s client‑facing products. These products support HR teams across the US, UK, and the Netherlands in solving practical, real‑world challenges.

In this role, you will apply Machine Learning (ML), statistical methods, and Large Language Models (LLMs) to design, build, and deliver solutions that are used in real products. You will work end‑to‑end—from understanding the problem and experimenting with ideas through to deploying and maintaining solutions in production.

You will collaborate closely with a distributed, cross‑functional team of data scientists, software engineers, and product partners based in the US, UK, India, and the Netherland

Responsibilities:

  • 5+ years of relevance experience

  • Own data science work from problem definition through experimentation and deployment in production environments.

  • Develop ML, analytics, and AI or GenAI features that support Brightmine’s client‑facing products.

  • Apply ML, statistical, and LLM‑based approaches to create solutions that are practical, scalable, and aligned with business needs.

  • Design and run data‑driven experiments, using evidence and outcomes to guide technical and product decisions.

  • Write production‑quality Python code and contribute to shared GitHub repositories, with a focus on clarity, reliability, and maintainability.

  • Share insights, trade‑offs, and recommendations clearly with partners across product, engineering, and leadership.

  • Contribute to and continuously improve team data science practices.

Requirements:

  • Applied experience using machine learning, statistical methods, and/or LLM‑based techniques to solve real‑world problems.

  • A solid foundation in ML, statistics, and modern AI approaches, such as prompt‑based methods and retrieval‑augmented techniques.

  • Experience writing Python code used in production systems.

  • Hands‑on experience with Python‑based ML and LLM libraries.

  • Familiarity with concepts such as AI agents, vector databases, semantic search, or retrieval‑augmented generation (desirable but not required).

Learn more about the LexisNexis Risk team and how we work

We know your well-being and happiness are key to a long and successful career. We are delighted to offer country specific benefits. Click[here

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We are committed to providing a fair and accessible hiring process. If you have a disability or other need that requires accommodation or adjustment, please let us know by completing our Applicant Request Support Form or please contact 1-855-833-5120.

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关于LexisNexis (RELX)

LexisNexis (RELX)

Provides data and technology services, analytics, predictive insights, and fraud prevention for a wide range of industries.

10,001+

员工数

Alpharetta

总部位置

$41.2B

企业估值

评价

10条评价

4.0

10条评价

工作生活平衡

4.2

薪酬

2.8

企业文化

4.1

职业发展

2.9

管理层

3.2

72%

推荐率

优点

Great work-life balance and flexibility

Supportive and inclusive environment

Excellent benefits and health plans

缺点

Compensation and salary not competitive

Limited career advancement opportunities

Management communication issues

薪资范围

66个数据点

Junior/L3

Mid/L4

Senior/L5

Junior/L3 · Associate Data Scientist II

1份报告

$132,990

年薪总额

基本工资

$102,300

股票

-

奖金

-

$132,990

$132,990

面试评价

5条评价

难度

3.0

/ 5

时长

14-28周

体验

正面 0%

中性 80%

负面 20%

面试流程

1

Application Review

2

HR Screen

3

Technical Interview

4

Background Check

5

Offer

常见问题

Technical Knowledge

Past Experience

Behavioral/STAR

Data Analysis