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Condé Nast
Condé Nast

Global media company

Machine Learning Engineer I

职能机器学习
级别中级
地点DLF Downtown1, Chennai, India
方式现场办公
类型全职
发布1周前
立即申请

Condé Nast is a global media company producing the highest quality content with a footprint of more than 1 billion consumers in 32 territories through print, digital, video and social platforms. The company’s portfolio includes many of the world’s most respected and influential media properties including Vogue, Vanity Fair, Glamour, Self, GQ, The New Yorker, Condé Nast Traveler/Traveller, Allure, AD, Bon Appétit and Wired, among others.

Job Description

Location:

Chennai, TN

About Company:

Condé Nast is a global media company, home to iconic brands including Vogue, The New Yorker, GQ, Glamour, AD, Vanity Fair and Wired, among many others. The company's award-winning content reaches 84 million consumers in print, 367 million in digital and 379 million across social platforms, and generates more than 1 billion video views each month.

The company is headquartered in London and New York, and operates in 31 markets worldwide, including China, France, Germany, India, Italy, Japan, Mexico & Latin America, Russia, Spain, Taiwan, the U.K. and the U.S., with local licensee partners across the globe.

Job Summary
Condé Nast is looking for a Machine Learning Engineer I to play a key role in building and operating our recommendations platform. This role goes beyond productionizing data science work—you will take end-to-end ownership of ML-powered systems, from design to deployment to continuous improvement.
You will work as an equal partner with Data Scientists to shape solutions, define scalable architectures, and ensure reliable, high-performance ML systems in production. This is an ideal role for an engineer who thrives on ownership, can quickly understand complex systems, and is motivated to build and evolve production-grade ML platforms.

Key Responsibilities

  • Own and manage production ML pipelines and workflows, ensuring reliability,
    scalability, and performance.

  • Design, build, and continuously improve systems powering personalized
    recommendations and related use cases.

  • Collaborate with Data Scientists as a peer to co-design ML solutions, translating
    business and modeling requirements into robust engineering systems.

  • Take full lifecycle ownership of ML systems: design, development, deployment,
    monitoring, and iteration.

  • Build reusable frameworks and platforms that accelerate experimentation and
    productionization of ML use cases.

  • Develop and optimize both batch and near-real-time data processing pipelines.

  • Implement and maintain CI/CD pipelines for ML workflows and data systems.

  • Proactively monitor, debug, and resolve production issues, ensuring high system
    reliability and data quality.

  • Improve existing pipelines by identifying bottlenecks, reducing latency, and optimizing cost and performance.

  • Contribute to architectural decisions and help define best practices for ML
    engineering within the team.

  • Work in an agile environment with a strong focus on code quality, testing, and
    incremental delivery.

Desired Skills & Qualifications

  • 2–4 years of experience in software engineering, data engineering, or ML
    engineering roles.
  • Strong proficiency in Python and experience with libraries such as Py Torch,
    scikit-learn, Pandas, Num Py, and Py Spark.
  • Solid understanding of software engineering principles, data structures, and system design.
  • Hands-on experience building and maintaining production data pipelines or ML
    systems.
  • Experience with big data technologies such as Spark, Kafka, Hive, or Hadoop.
  • Familiarity with Databricks or AWS (S3, EC2, IAM, EMR, Sage Maker).
  • Experience designing workflows for large-scale data processing (batch or streaming).
  • Exposure to API development and serving ML models in production environments.
  • Working knowledge of Docker; familiarity with Kubernetes is a plus.
  • Experience implementing CI/CD pipelines for data or ML systems.
  • Strong debugging, problem-solving, and analytical skills.
  • Ability to quickly understand existing systems and take ownership with minimal
    ramp-up time.
  • Good communication skills and ability to collaborate effectively across teams.
  • Preferred Qualifications
  • Experience with Airflow or Astronomer for workflow orchestration.
  • Familiarity with MLflow or similar tools for experiment tracking and model lifecycle management.
  • Exposure to real-time or near-real-time ML use cases.
  • Experience working on recommendation systems or personalization platforms.

What happens next?

If you are interested in this opportunity, please apply below, and we will review your application as soon as possible. You can update your resume or upload a cover letter at any time by accessing your candidate profile.

Condé Nast is an equal opportunity employer. We evaluate qualified applicants without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, veteran status, age, familial status and other legally protected characteristics.

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关于Condé Nast

Condé Nast

Condé Nast is an American mass media company founded in 1909 by Condé Montrose Nast and owned by Advance Publications. Its headquarters are located at One World Trade Center in the Financial District of Lower Manhattan, New York City.

5,001-10,000

员工数

New York

总部位置

评价

10条评价

3.9

10条评价

工作生活平衡

2.8

薪酬

3.2

企业文化

4.1

职业发展

3.4

管理层

3.7

72%

推荐率

优点

Creative environment and projects

Good benefits and perks

Supportive team and colleagues

缺点

High workload and overwhelming demands

Long hours and work-life balance issues

Compensation could be better

薪资范围

0个数据点

Intern

Intern · Data Scientist

0份报告

$160,000

年薪总额

基本工资

$160,000

股票

-

奖金

-

$19,720

$184,000

面试评价

40条评价

难度

3.2

/ 5

时长

14-28周

录用率

37%

体验

正面 69%

中性 16%

负面 15%

面试流程

1

Phone Screen

2

Technical Interview

3

Hiring Manager

4

Team Fit

常见问题

Technical skills

Past experience

Team collaboration

Problem solving