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Senior Member Technical Staff ( Lead AI Data Science Engineer)

The Nielsen Company
2 days ago
Full-time
On-site
Bengaluru, India

Company Description

At Nielsen, we are passionate about our work to power a better media future for all people by providing powerful insights that drive client decisions and deliver extraordinary results. Our talented, global workforce is dedicated to capturing audience engagement with content - wherever and whenever it’s consumed. Together, we are proudly rooted in our deep legacy as we stand at the forefront of the media revolution. When you join Nielsen, you will join a dynamic team committed to excellence, perseverance, and the ambition to make an impact together. We champion you, because when you succeed, we do too. We enable your best to power our future.

Gracenote, a Nielsen company, is dedicated to connecting audiences to the
entertainment they love, powering a better media future for all people. Gracenote is the content
data business unit of Nielsen that powers innovative entertainment experiences for the world’s
leading media companies. Our entertainment metadata and connected IDs deliver advanced
content navigation and discovery to connect consumers to the content they love and discover
new ones.
Gracenote’s industry-leading datasets cover TV programs, movies, sports, music and
podcasts in 80 countries and 35 languages. Gracenote provides common identifiers that are
universally adopted by the world’s leading media companies enabling powerful cross-media
entertainment experiences. Machine driven, human validated best-in-class data and images fuel
new search and discovery experiences across every screen.
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Job Description

Role Overview:

We are hiring a highly motivated Lead Machine Learning Engineer to build and scale production ML systems across text and image modalities. This is a hands-on individual contributor role for someone who can independently design and ship robust inference backends, automate training and deployment workflows, and improve model performance across both traditional ML and modern deep learning systems.

You will work to productionize models ranging from LLMs, transformers, embeddings, retrieval systems, and classical ML models (such as XGBoost). This role will balance focus between scaling inference backends and training/deployment automation. We are looking for someone who is comfortable operating with a high degree of autonomy, mentoring other engineers, and making strong technical decisions in a fast-moving environment.

Key Responsibilities:

  • Design, build, and scale the infrastructure and pipelines for serving machine learning models for both online and batch inference across various modalities/workloads. Technologies include LLMs, vision models, embedding models, reranking models, and other classical ML models across dataset size of terabyte and petabyte scale.

  • Build reliable, production-grade services and APIs for serving models for both internal and external products.

  • Automate training, evaluation, deployment, rollback, monitoring, and retraining workflows.

  • Improve latency, throughput, reliability, and cost efficiency of inference systems.

  • Profile and optimize model execution utilizing batching, caching, parallelism, quantization, and architecture-aware improvements.Β 

  • Improve the engineering rigor and quality through testing, CI/CD, observability, reproducibility, and incident response.

  • Collaborate with product, platform, and software teams to turn ambiguous business problems into production ML systems.

Qualifications

  • 8+ years of experience in software engineering, machine learning engineering, or ML infrastructure.

  • Strong experience building and operating production ML systems as a self-directed owner.

  • Deep expertise in Python and solid backend engineering fundamentals, including APIs, distributed systems, testing, debugging, and operational ownership.

  • Proven track record building production data or ML systems on AWS.

  • Comprehensive understanding of serving tradeoffs such as latency, throughput, autoscaling, concurrency, GPU or accelerator usage, memory pressure, costs.

  • Experience automating the ML lifecycle from experimentation and training through deployment and monitoring.

  • Hands-on experience with PyTorch or equivalent modern ML frameworks.

  • Ability to drive technical work end-to-end and make pragmatic architectural decisions.

  • Excellent communication skills and willingness to mentor engineers while remaining deeply hands-on.Β 

Preferred Qualifications:

  • Experience serving and optimizing LLMs in production.

  • Experience with computer vision, image understanding, vision transformers, or multimodal retrieval.

  • Experience with Kubernetes, containerization, or other large-scale distributed serving systems.

  • Experience with inference optimization techniques such as dynamic batching, KV or prefix caching, quantization, or model parallelism.

  • Experience with modern inference stacks such as vLLM, Triton, TensorRT, or similar.

  • Experience building evaluation, observability, and monitoring workflows for ML systems.

Additional Information

Please be aware that job-seekers may be at risk of targeting by scammers seeking personal data or money. Nielsen recruiters will only contact you through official job boards, LinkedIn, or email with aΒ nielsen.comΒ domain. Be cautious of any outreach claiming to be from Nielsen via other messaging platforms or personal email addresses. Always verify that email communications come from an @nielsen.comΒ address. If you're unsure about the authenticity of a job offer or communication, please contact Nielsen directly through our official website or verified social media channels.