ADCI

Technology

DataScientistII

₹18–28L ~AI est. Bengaluru, Karnataka, India FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid+ candidates.

The Brief

“Data Scientist II at ADCI. Skills: GenAI, NLP, Computer Vision, Machine Learning. Design and deploy scalable GenAI solutions. Design and deploy scalable NLP solutions”

Industry & Context.

Technology
Problems you'll solve

Problem solving

What They're Looking For.

Must Have

1 year ML research experience with PhD, 3+ years ML research experience with Masters, Expert in Computer Vision or NLP, Good understanding of both CV and NLP

Nice to Have

Post Graduate degree in EE, CS, Maths or Physics, Specialization in ML, NLP or Computer Vision, Scientific thinking, Track record of thought leadership, Solid understanding of ML/DL algorithms, CS fundamentals in data structures, CS fundamentals in algorithm design, CS fundamentals in complexity analysis

What You'll Do.

Design and deploy scalable GenAI solutions

Design and deploy scalable NLP solutions

Design and deploy scalable Computer Vision solutions

Develop novel LLM techniques

Develop deep learning techniques

Develop statistical techniques

Define research strategy

Define experiments strategy

Partner with business teams

Partner with engineering teams

Identify complex problems

Solve complex problems

Contribute to professional development

Improve technical knowledge

Improve engineering practices

Publish research work

Impact product strategy

Identify new business opportunities

Provide strategic direction

How You'll Work.

Team & Collaboration

Business teams; Engineering teams; Research teams; Technical teams

Communication Scope

Excellent communication; Verbal communication; Written communication

Full Job Description

RBS (Retail Business Services) Tech team works towards enhancing the customer experience (CX) and their trust in product data by providing technologies to find and fix Amazon CX defects at scale. Our platforms help in improving the CX in all phases of customer journey, including selection, discoverability & fulfilment, buying experience and post-buying experience (product quality and customer returns). The team also develops GenAI platforms for automation of Amazon Stores Operations. As a Sciences team in RBS Tech, we focus on foundational ML research and develop scalable state-of-the-art ML solutions to solve the problems covering customer experience (CX) and Selling partner experience (SPX). We work to solve problems related to multi-modal understanding (text and images), task automation through multi-modal LLM Agents, supervised and unsupervised techniques, multi-task learning, multi-label classification, aspect and topic extraction for Customer Anecdote Mining, image and text similarity and retrieval using NLP and Computer Vision for product groupings and identifying duplicate listings in product search results. Key job responsibilities As a Data Scientist, you will be responsible to design and deploy scalable GenAI, NLP and Computer Vision solutions that will impact the content visible to millions of customer and solve key customer experience issues. You will develop novel LLM, deep learning and statistical techniques for task automation, text processing, image processing, pattern recognition, and anomaly detection problems. You will define the research and experiments strategy with an iterative execution approach to develop AI/ML models and progressively improve the results over time. You will partner with business and engineering teams to identify and solve large and significantly complex problems that require scientific innovation. You will help the team leverage your expertise, by coaching and mentoring. You will contribute to the professional development o

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