Senior AI Engineer (Generative AI)

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Job Description

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Dice is the leading career destination for tech experts at every stage of their careers. Our client, RITWIK Infotech Inc, is seeking the following. Apply via Dice today!

**(Visa accepted: H1B, L2 EAD)**
**Key Responsibilities**
**Generative AI Application Development**

– Design, develop, and deploy production-grade Generative AI applications such as RAG systems, AI copilots, content intelligence tools, and workflow automation solutions.
– Build scalable GenAI pipelines capable of handling large-scale enterprise workloads.

**Agentic AI Systems**

– Architect and implement agentic workflows including tool/function calling, planning mechanisms, memory management, verification loops, and multi-agent orchestration.
– Develop reliable automation systems with built-in guardrails and failure-handling mechanisms.

**Architecture & Scalability**

– Design secure, scalable, and cost-efficient architectures for batch and real-time AI workloads.
– Optimize performance including latency reduction, throughput improvement, and resource efficiency.

**Model Integration & AI Tooling**

– Evaluate and integrate large language models (LLMs) from hosted and open-source providers.
– Implement embeddings, reranking models, prompt engineering frameworks, and multimodal AI solutions.

**Evaluation & Quality Assurance**

– Build evaluation frameworks to measure accuracy, relevancy, hallucination rates, and safety compliance.
– Implement offline and online testing strategies, including A/B experimentation.

**Data Retrieval Systems**

– Design efficient RAG pipelines and retrieval architectures.
– Develop indexing pipelines, optimize chunking strategies, and implement vector search and caching mechanisms.

**AI Operations (LLMOps / MLOps)**

– Implement CI/CD pipelines for AI systems.
– Manage model versioning, prompt configuration management, automated testing, monitoring, and rollback strategies.

**Security & Governance**

– Ensure compliance with enterprise standards including data privacy, PII protection, audit logging, and access controls.
– Implement content filtering and governance frameworks aligned with regulatory requirements.

**Technical Leadership**

– Mentor junior engineers through code reviews, architecture guidance, and best practices.
– Define standards and frameworks for scalable AI engineering practices.

**Cross-Functional Collaboration**

– Partner with Product, Data, Platform, and Design teams to define solution architecture, delivery milestones, and success metrics.

**Required Qualifications**

– 6+ years of software engineering experience
– 3+ years of experience building ML/AI systems
– Hands-on experience developing production-grade Generative AI applications
– Proven expertise building agentic AI systems in production environments
– Strong programming skills in Python (preferred), TypeScript, Java, or Go
– Experience with:

– LLM integration and prompt engineering
– RAG pipelines and vector databases
– embeddings and retrieval optimization
– distributed systems (REST APIs, async processing, queues)
– cloud platforms (AWS / Google Cloud Platform / Azure)
– containerization (Docker, Kubernetes)

– Experience implementing monitoring, evaluation metrics, safety guardrails, and cost optimization for AI systems
– Ability to work independently and lead complex AI initiatives

**Preferred Qualifications**

– Experience with fine-tuning models (LoRA, PEFT)
– Experience building multi-modal AI systems
– Familiarity with GenAI orchestration frameworks and observability tools
– Knowledge of security and privacy standards (SOC2, HIPAA, PII protection)
– Experience defining technical roadmaps and enterprise AI architecture

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