
Manager - Happy Robot - Business Support
About the role
Job Title: Manager – Happy Robots
- GenAI automation support
Job Location: Chennai
This role is responsible for configuring, deploying, operating, and continuously improving AI-powered automation solutions on the Happy Robots platform. This role focuses on low-code / no-code GenAI product configuration and ensures AI solutions are production-ready, compliant, scalable, cost-optimized, and ethically sound. The position serves as a critical execution layer between Business Unit IT (BUIT) priorities and real-world AI deployments, enabling reliable and responsible AI automation across digital and voice channels.
Key Responsibilities:
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GenAI Product Configuration & Deployment
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Configure and deploy low-code/no-code GenAI-powered conversational and automation solutions on the Happy Robots platform.
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Implement workflows, business rules, orchestration logic, and integrations based on BUIT-defined priorities and solution designs.
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Perform prompt engineering, policy engineering, and guardrail configuration for LLM-powered agents.
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Configure multi-channel AI experiences across voice, email, SMS, and chat.
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Data Preparation, Annotation & Model Enablement
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Perform data annotation, labeling, cleansing, and validation for structured and unstructured datasets.
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Design and generate synthetic data when real data is insufficient or unavailable.
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Support training, fine-tuning, testing, and evaluation of AI models (including LLM-based workflows).
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Ensure data quality, lineage, and traceability across training and inference pipelines.
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Testing, Validation & Responsible AI
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Conduct functional, performance, and regression testing of configured AI solutions.
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Prepare audit logs, model cards, decision records, and test documentation.
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Evaluate AI solutions for:
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Bias and fairness
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Ethical compliance
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Explainability and transparency
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Ensure adherence to Responsible AI, data privacy, and regulatory standards.
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Production Support & Continuous Improvement
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Monitor AI solutions in production for:
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Accuracy and response quality
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Latency, availability, and throughput
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Cost and token usage optimization
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Perform issue analysis, root cause identification, and corrective actions.
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Implement continuous improvements through prompt refinement, workflow optimization, and configuration updates.
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MLOps & Platform Operations
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Support model lifecycle management, including versioning, upgrades, rollback strategies, and registry management.
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Assist with platform and model upgrades while ensuring solution stability.
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Collaborate on deployment pipelines, monitoring dashboards, and alerting mechanisms.
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Support scaling, reliability, and resilience of AI solutions.
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Integration & Backend Enablement
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Configure and manage API integrations with internal systems and third-party platforms.
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Support data flows across conversational agents, databases, and enterprise systems.
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Work with backend services for authentication, security, and system interoperability.
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Operational & Automation Use-Case Enablement
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Enable AI Workers and automation use cases such as:
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Appointment scheduling
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Vendor coordination
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Shipment tracking
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Document ingestion and data entry
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Configure contextual understanding in TTS and voice-based AI, including tone, rhythm, and intent fidelity.
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Support document processing workflows, including extraction, validation, and system handoffs.
Required Qualification & Skills:
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Bachelor’s or Master’s in Computer Science, Engineering, Data Science, or related field.
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Minimum 3 years of relevant experience in the GenAI domain
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Proficiency in Python (mandatory) for AI workflows, automation, and data processing.
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Full-stack experience with React, TypeScript, and Node.js.
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Strong understanding of APIs, backend services, and system integrations.
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Hands-on experience building and operating AI-powered applications.
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Practical expertise in:
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Large Language Model (LLM) prompting and tuning
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Prompt orchestration and policy engineering
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Understanding of ML/DL fundamentals
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Experience working with conversational AI, NLP, and GenAI platforms.
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Experience with data pipelines, preprocessing, and dataset management.
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Exposure to MLOps practices, including:
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Model deployment
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Monitoring and evaluation
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Scaling and cost optimization
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Familiarity with model/version registries and lifecycle management.
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Working knowledge of database design and processing (SQL/NoSQL).
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Understanding of data modeling for conversational and automation workloads.
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Advanced analytical and reasoning abilities to interpret AI behavior and outcomes.
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Experience configuring multi-channel conversational systems (voice and digital).
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Strong grasp of workflow coordination and automation logic.
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Understanding of context-aware TTS systems and voice AI design considerations.
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Hands-on experience with document processing and intelligent data entry workflows.
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Experience with low-code / no-code AI platforms or enterprise automation tools.
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Familiarity with Responsible AI frameworks, model governance, and compliance controls.
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Exposure to cloud environments (Azure, AWS, or GCP) in AI deployments.
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Understanding of cost controls and token management for LLM-based systems.
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Comfort working in cross-functional teams (Product, BUIT, Compliance, Ops).
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Strong documentation and operational handover skills.
Benefits and perks
•Learning Budget
Required skills
GenAI operations
Workflow configuration
Data annotation
Testing
Responsible AI
About DHL
Chennai
Headquarters