Sr. AI Engineer-Promo Optimisation

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Job Id: R0000442383

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 while 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 Target in India
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 5,000 team members supporting the company’s global strategy and operations.

Pyramid Overview
A role with Target Data Science & Engineering means the opportunity to help develop, deploy, and operate state-of-the-art AI, machine learning, and optimization systems that use data at scale to automate and improve business decisions. Whether you work across Machine Learning, Optimization, Statistics, AI Engineering, or MLOps, you’ll be challenged to harness Target’s impressive data breadth to build intelligent systems that power solutions for partners in Marketing, Supply Chain Optimization, Personalization, Network Security, Merchandising, and Guest Experience.
Every team member in Target Data Science & Engineering is expected to contribute to high-quality modeling and engineering outcomes, write maintainable and performant production code, apply strong software engineering practices, and use retail domain knowledge to create measurable business impact.

Team Overview
The Promo Optimization team (Calibrate & Incentives) builds intelligent decisioning capabilities that power personalized promotions and offers for Target guests. The team is responsible for developing and scaling AI/ML systems that help determine which guests should receive which offers, at what depth, through which channels, and under what business constraints.
Promotions are a critical lever for guest engagement, loyalty, incremental sales, and enterprise growth. The team works at the intersection of AI engineering, machine learning, operations research, experimentation, marketing science, and production platform development to optimize promotional investments while improving guest relevance and business outcomes.

About the Role
As a Senior AI Engineer , you will help build and scale production-grade AI/ML capabilities that power Target’s promo optimization and personalized marketing ecosystem. You will partner closely with Data Scientists, Product Managers, Engineers, Analysts, and business stakeholders to turn AI ideas, models, and optimization strategies into reliable, scalable, secure, and high-performing production systems.
This role is ideal for engineers who enjoy building at the intersection of AI, software engineering, data platforms, and MLOps. You will work hands-on with Python, distributed data pipelines, Kafka and event-driven architectures, APIs, databases, model deployment, ML workflow orchestration, observability, and production support. You will also explore and apply emerging AI technologies such as Generative AI, LLMs, RAG, AI agents, model evaluation frameworks, and intelligent workflow automation to solve real retail problems at scale.
We are looking for someone with strong software engineering fundamentals, practical AI/ML deployment experience, and the ability to balance innovation with reliability, scalability, security, and maintainability. If you enjoy solving complex problems, building enterprise-grade AI platforms, and shaping the future of AI-powered retail decisioning, this is a great opportunity to make meaningful impact at Target.

Key Responsibilities

  • Build production-grade AI/ML applications, services, and platforms using Python and modern engineering practices, with a focus on clean code, testing, documentation, reliability, scalability, and maintainability.
  • Design and develop scalable data and ML pipelines for batch, streaming, and near-real-time processing using distributed data frameworks, Kafka or event-driven architecture, workflow orchestration tools, and enterprise data platforms.
  • Implement end-to-end model training, evaluation, deployment, inference, monitoring, and lifecycle management workflows that can scale across large datasets and high-impact enterprise use cases.
  • Partner with Data Scientists to convert prototypes, notebooks, statistical models, ML models, GenAI workflows, and optimization algorithms into reliable, reusable, and production-ready systems.
  • Build and deploy REST APIs, microservices, model-serving endpoints, batch scoring jobs, and event-driven integrations that expose AI/ML capabilities to downstream applications and business workflows.
  • Design scalable inference systems for promotion decisioning, segmentation, redemption prediction, offer ranking, campaign simulation, and personalized marketing use cases.
  • Work with SQL, NoSQL, object stores, feature stores, and distributed data systems to store, retrieve, transform, and manage structured and unstructured data for AI/ML applications.
  • Support production deployment and release management through CI/CD, containerization, automated testing, model versioning, automated validation, release controls, rollback strategies, and environment management.
  • Implement MLOps capabilities including feature pipelines, model registries, experiment tracking, automated retraining, performance monitoring, data drift detection, model drift detection, lineage, governance, and reproducibility.
  • Implement observability and reliability mechanisms, including logging, metrics, traces, dashboards, alerting, error handling, incident response, and root-cause analysis for production AI systems.
  • Optimize AI/ML services for latency, throughput, cost, scalability, reliability, and operational performance.
  • Evaluate and integrate Generative AI and LLM components, including prompt workflows, RAG pipelines, embeddings, vector databases, model evaluation, guardrails, safety controls, and orchestration patterns where applicable.
  • Explore agentic AI workflows, including planning, tool use, multi-step reasoning, workflow orchestration, and human-in-the-loop patterns for internal productivity and decision-support use cases.
  • Contribute to design reviews, architecture discussions, code reviews, operational readiness reviews, and engineering standards for AI/ML systems.
  • Troubleshoot production issues across data pipelines, model services, APIs, optimization workflows, and downstream integrations; identify root causes and implement durable fixes.
  • Create reusable frameworks, libraries, templates, and best practices that improve AI engineering velocity and quality across the team.
  • Communicate technical designs, trade-offs, system behavior, risks, and production performance clearly to technical and non-technical stakeholders.

About You

  • Bachelor’s degree in Computer Science, Engineering, Data Science, Machine Learning, Mathematics, Statistics, or a related technical field, or equivalent practical experience.
  • 4+ years of experience in software engineering, AI engineering, machine learning engineering, data engineering, MLOps, or production ML systems.
  • Strong hands-on programming experience in Python, with the ability to write modular, maintainable, well-tested, production-quality code.
  • Experience building and deploying end-to-end AI/ML pipelines, including data preparation, feature engineering, model training, model evaluation, model deployment, inference, monitoring, and lifecycle management.
  • Strong understanding of MLOps practices, including CI/CD for ML, model versioning, experiment tracking, automated validation, model registry, retraining workflows, deployment automation, and production monitoring.
  • Experience designing and operating scalable model inference systems, batch scoring pipelines, APIs, microservices, or event-driven ML integrations.
  • Experience working with distributed data processing systems such as Spark, Hadoop/Hive, or equivalent large-scale data platforms.
  • Experience with SQL and one or more database technologies, including relational databases, NoSQL databases, object stores, or feature stores.
  • Strong software engineering fundamentals, including data structures, algorithms, system design, API design, testing, code reviews, error handling, debugging, and documentation.
  • Working knowledge of machine learning concepts, model evaluation, feature engineering, model serving, and common ML frameworks.
  • Experience with containerization, orchestration, cloud platforms, workflow schedulers, and modern DevOps practices.
  • Good understanding of observability and reliability for AI/ML systems, including monitoring, alerting, logging, performance tracking, debugging, and root-cause analysis.
  • Ability to partner effectively with Data Scientists and translate experimental models or notebooks into scalable production systems.
  • Ability to work in ambiguous problem spaces, break down complex systems, and deliver high-quality solutions against business timelines.
  • Excellent written and verbal communication skills, with the ability to explain technical concepts, trade-offs, and system behavior to both technical and non-technical audiences.

Must-Have Skills

  • Strong Python engineering experience with production-quality coding practices.
  • Hands-on experience building and deploying AI/ML pipelines or ML-powered applications.
  • Practical experience with MLOps, model deployment, CI/CD, monitoring, and lifecycle management.
  • Experience with large-scale data processing using SQL and distributed data platforms.
  • Experience building APIs, services, batch jobs, or event-driven integrations for AI/ML use cases.
  • Strong debugging, testing, documentation, and production support capabilities.
  • Ability to collaborate with Data Science, Product, Engineering, and business teams to deliver scalable AI solutions.

Preferred / Good-to-Have Skills

  • Experience building applications using Generative AI and LLMs, including prompt engineering, RAG architectures, embeddings, vector databases, evaluation frameworks, and model orchestration.
  • Exposure to agentic AI systems, including multi-agent workflows, planning, tool usage, orchestration frameworks, and autonomous or semi-autonomous decision-making patterns.
  • Experience implementing LLM observability, evaluation, guardrails, safety controls, and responsible AI practices for production GenAI systems.
  • Experience with promotion optimization, personalization, recommender systems, marketing technology, retail media, customer targeting, pricing, or offer decisioning.
  • Experience working with optimization models or decisioning systems, including linear programming, mixed-integer programming, simulation, heuristics, or constraint-based systems.
  • Experience building reusable AI platforms, shared ML services, feature platforms, model-serving platforms, or internal developer tools used across multiple teams.
  • Experience designing high-throughput, low-latency, cost-efficient inference systems for production workloads.
  • Experience with cloud-based ML platforms, Kubernetes, Docker, Airflow, model registries, feature stores, or workflow orchestration tools.
  • Experience with ML frameworks and tools such as scikit-learn, XGBoost, TensorFlow, PyTorch, MLflow, Kubeflow, Ray, LangChain, LlamaIndex, or similar technologies.
  • Experience with experimentation platforms, A/B testing infrastructure, causal measurement systems, or business impact measurement.

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Competitive benefits

We are proud to provide benefits that support you, your family and your future.

Health and well-being

Target in India (TII) prioritizes our people by offering healthcare support, fitness programs, teleheath benefits (i.e., screenings and consultations) and 24/7 confidential mental well-being telecounseling support.

Financial well-being

Your financial well-being is bright with TII's comprehensive flexible insurance program, National Pension System, learning assistance program, day care support and much more.

Paid time off

TII encourages work-life balance with paid time off like privilege, casual, bereavement and parental leaves that offer support in all stages of life.

Competitive pay

TII knows our people are everything and proudly provides equitable and competitive pay.

Other benefits

From digitalized cafeteria solutions to transportation services to broadband reimbursement, enjoy special everyday perks.

Creating a culture of joy

We bring out the best in each other every day.

A group of Target team members giving each other a thumbs up as they huddle in the back of the store.

Inclusivity

We value diverse voices and approaches. We act with authenticity and respect. We create equitable experiences for all.

Connection

We build trusted relationships. We collaborate across business functions. We recognize and celebrate progress.

Drive

We do what is right for Target, our team and guests. We deliver results that matter. We continually learn by valuing progress over perfection.

Grow with Target

We are fully invested in your personal and professional growth because our people are our power. 

Target's leadership truly empowers personal and professional growth, fostering an environment where we care, grow and win together.

Sandeep Sr. Engineering Manager – Target Tech, Corporate

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