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About Us:
As a Fortune 50 company with more than 400,000 team members worldwide, Target is an iconic brand and one of America's leading retailers.
Joining Target means promoting a culture of mutual care and respect and striving to make the most meaningful and positive impact. Becoming a Target team member means joining a community that values different voices and lifts each other up. Here, we believe your unique perspective is important, and you'll build relationships by being authentic and respectful.
Overview about TII
At Target, we have a timeless purpose and a proven strategy. And that hasn’t happened by accident. Some of the best minds from different backgrounds come together at Target to redefine retail in an inclusive learning environment that values people and delivers world-class outcomes. That winning formula is especially apparent in Bengaluru, where Target in India operates as a fully integrated part of Target’s global team and has more than 4,000 team members supporting the company’s global strategy and operations.
Pyramid Overview
A role with Target Data Science & Engineering means the chance to help develop and managestate of the artpredictive algorithms that use data at scale to automate and optimize decisions at scale. Whether you join our Statistics, Optimization or Machine Learning teams,you’llbe challenged to harness Target’s impressive data breadth to build the algorithms that power solutions our partners in Merchandizing, Marketing, Supply Chain Optimization, Network Security and Personalization rely on.
Team Overview
Target- Data ScienceCompetitive Intelligenceteamis offering an exciting opportunity to solvestate-of-the-artproblems for Competitor Product matching.Theteam is rapidly growing and creating massive business impact by buildingcuttingedgesystems. We use NLP, deep learning, classical machine learning,transformersbasedarchitectures, and GenAI/Agentic AI (including RAG pipelines, LLM-powered agents, and tool-use frameworks) to build bestin-classdata products. As we build the future of Competitive Intelligence, we are looking for driven and passionate individuals with deepexpertisein developing AI/ML systems at scale and leading highimpact charters.
If you are that person, you can expect to be involved in:
Leading the design, development,productionizationand ongoing upkeep of AIML systems across Competitive Product Classification, Matching and Validation.
Owning technical direction for a problem area: defining strategy, influencing roadmaps, setting quality bars, and driving execution through a team of scientists and engineers
Architecting end-to-end solutions that integrate AIML modeling, experimentation (offline + online), and engineering systems for scalability, latency, and reliability, includingtransformerbasedmodels, embedding systems, and retrieval-augmented generation (RAG) pipelines. Developing amultiyearvision for key ML & AI capabilities Competitive Intelligence, aligned to business outcomes and measurable metrics
Serving as a technical leader and mentor, raising the bar for scientific rigor, design reviews, and best practices across the organization
Preferred Domain Experience
We’relooking for strong domain depth and evidence of impact inthefollowing:NLP / Deep Learning / Agentic AI & GenAI / Search & Information retrieval (e-commerce or large-scale Retail or consumer products preferred), including Transformers, semantic search, vector databases, RAG systems, and autonomous/agent-based workflows
About You
4-year degree in a quantitative discipline (Science, Technology, Engineering, Mathematics) or equivalent practical experience
7+ years of professional data science / applied ML experience (or equivalent), with a strongtrack recordof delivering production AIML systems and measurable business impact
Deepexpertisein modern ML techniques including deep learning, NLP, GenAI, and Agentic AI approaches (such as Transformers, LLMs, RAG, and multi-agent systems), with strong judgment on when to use simpler methods
Demonstrated ability to lead large, ambiguous problem spaces: framing, solutioning, driving alignment, and delivering through cross-functional partners
Strong hands-on programming skills in Python, SQL, and Spark, plus comfort working closely with engineering stacks for online inference, data pipelines, and model lifecycle tooling on GCP or similar cloud provider.
Experience with LLM adaptation (e.g., fine-tuning, instruction tuning, preference optimization) and/or agentic workflows (tool use, RAG, evaluation harnesses, orchestration, safety/quality guardrails) applied to Product similarity/Classification or similar use-cases, including prompt engineering, context management, and grounding strategies
Strong analytical thinking and applied research skills: ability to build evaluation frameworks, perform error analysis, and iterate based on data and user outcomes
Excellent communication skills: able to influence technical and non-technical stakeholders, write clear RFCs/design docs, and drive decisions in reviews
Self-driven, results-oriented, and able tooperateas a multiplier across teams
Nice to Have
Publications or accepted papers/posters in industry tracks at top-tier conferences (e.g., SIGIR, KDD, WWW,NeurIPS, ICML, ACL, EMNLP,RecSys), or equivalentdemonstratedexternal technical contributions (open-source, patents, invited talks)
Experience operating AIML systems at scale: latency/throughput constraints, model monitoring, drift detection, experimentation platforms, and production incident learnings, including LLM system evaluation, retrieval quality metrics, and agent reliability/observability
Know More About Us here:
Life at Target- https://india.target.com/
Benefits- https://india.target.com/life-at-target/workplace/benefits
Culture- https://india.target.com/life-at-target/belonging
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