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职位Fox Corporation

Senior Machine Learning Engineer

Fox Corporation

Senior Machine Learning Engineer

Fox Corporation

IND-KA-Bengaluru

·

On-site

·

Full-time

·

1mo ago

必备技能

Python

PyTorch

TensorFlow

Machine Learning

Recommendation Systems

A/B Testing

OVERVIEW OF THE COMPANY

Fox Corporation

Under the FOX banner, we produce and distribute content through some of the world’s leading and most valued brands, including: FOX News Media, FOX Sports, FOX Entertainment, FOX Television Stations and Tubi Media Group. We empower a diverse range of creators to imagine and develop culturally significant content, while building an organization that thrives on creative ideas, operational expertise and strategic thinking.

JOB DESCRIPTION

OVERVIEW OF THE COMPANY:

Fox Corporation is home to industry-leading brands including FOX News Media, FOX Sports, FOX Entertainment, FOX Television Stations, and Tubi Media Group. We combine innovative technology, deep data insights, and world-class content to shape the future of digital entertainment. Our DTC platforms are built to deliver highly personalized, scalable user experiences to millions of global users.

ABOUT THE ROLE:

FOX Corporation is looking for a SDE (L2), ML / Senior Engineer, ML to join the Personalization & Recommendations (PnR) team and help drive the evolution of personalized content discovery across our streaming products. In this role, you’ll be a hands-on contributor responsible for designing, building, and deploying ML models for recommendations, ranking, and semantic search, and ensuring they evolve through continuous learning and experimentation.

You will work at the intersection of ML model development, production engineering, and data-driven experimentation, collaborating with cross-functional teams to ensure scalable, performant, and personalized experiences. This role is ideal for engineers who have built and iterated on production-grade personalization systems and thrive on both deep technical challenges and business impact.

A SNAPSHOT OF YOUR RESPONSIBILITIES:

  • Design and build scalable recommendation and personalization models (ranking, re-ranking, user embeddings, semantic retrieval)

  • Own the full model lifecycle: from data preparation, training, and evaluation, to versioning, deployment, and monitoring

  • Develop and maintain continuous training loops and model refresh strategies for dynamic personalization

  • Set up and interpret A/B experiments to optimize model performance and user engagement

  • Collaborate with data engineers, MLOps teams, and product managers to ensure models integrate seamlessly into real-time and batch inference pipelines

  • Leverage platforms like Databricks, MLflow, and feature stores to streamline model experimentation and reproducibility

  • Apply LLMs and AI agents to improve personalization workflows and accelerate ML development pipelines

  • Contribute to architecture decisions for personalization services and model serving infrastructure

  • Mentor and provide technical guidance to junior data scientists and ML engineers, conducting code reviews, sharing best practices, and supporting their growth in areas such as model development, experimentation, and productionization

WHAT YOU WILL NEED:

  • At least 3-7 years of experience in machine learning, applied data science, or related fields, with a strong focus on recommendation systems or personalization

  • Demonstrated experience in developing and deploying ML models into production environments

  • Deep understanding of ranking systems, user behavior modeling, and evaluation techniques (e.g., NDCG, AUC, MAP, CTR)

  • Proficient in Python and ML libraries like Py Torch, Tensor Flow, and frameworks such as Transformers or LightGBM

  • Experience with Databricks, Spark, or similar big data platforms for large-scale model training and data processing

  • Familiarity with model versioning, feature stores, experiment tracking, and MLflow

  • Strong grasp of A/B testing design, analysis, and interpreting results for iterative model improvements

  • Experience with LLM-based pipelines, semantic search, or vector similarity systems (e.g., FAISS, Vespa) is a plus

  • Comfort working in cloud-native environments such as AWS or GCP

NICE TO HAVE, BUT NOT REQUIRED

  • Experience using or building AI agents, Lang Chain, or workflow automation frameworks for model experimentation

  • Exposure to real-time inference systems and streaming architectures (Kafka, Flink)

  • Experience working on personalization systems at scale, particularly for high-traffic applications or live events
    Contributions to open-source ML tools or research in personalization-related fields

We are an equal opportunity employer and all qualified applicants will receive consideration for employment without regard to race, color, religion, sex, national origin, gender identity, disability, protected veteran status, or any other characteristic protected by law. We will consider for employment qualified applicants with criminal histories consistent with applicable law.

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关于Fox Corporation

Fox Corporation

Fox Corporation, commonly known as Fox Corp or Fox, is an American multinational mass media company headquartered at 1211 Avenue of the Americas in Midtown Manhattan with offices also in Burbank, California.

10,001+

员工数

New York

总部位置

$16.5B

企业估值

评价

3.6

10条评价

工作生活平衡

3.2

薪酬

2.8

企业文化

4.1

职业发展

3.4

管理层

3.0

68%

推荐给朋友

优点

Great team culture and supportive colleagues

Good benefits and health coverage

Challenging and interesting projects

缺点

Management and leadership issues

Low compensation relative to workload

High-pressure and stressful environment

薪资范围

25个数据点

Junior/L3

Mid/L4

Senior/L5

Junior/L3 · Staff Accountant

1份报告

$83,950

年薪总额

基本工资

$73,000

股票

-

奖金

-

$83,950

$83,950

面试经验

50次面试

难度

3.2

/ 5

时长

14-28周

录用率

36%

体验

正面 62%

中性 24%

负面 14%

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