Generative AI Architect
PwC
Job Description
Model Development and Deployment:
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Fine-tune pre-trained generative models for domain-specific use cases.
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Data Collection, Sanitization and Data Preparation strategy for Model fine tuning.
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Evaluate, select, and deploy appropriate Generative AI frameworks (e.g., PyTorch, TensorFlow, Crew AI, Autogen, Langgraph, Agentic code, Agentflow).
Innovation and Strategy:
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Stay up to date with the latest advancements in Generative AI and recommend innovative applications to solve complex business problems.
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Define and execute the AI strategy roadmap, identifying key opportunities for AI transformation.
Collaboration and Leadership:
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Collaborate with cross-functional teams, including data scientists, engineers, and business stakeholders.
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Mentor and guide team members on AI/ML best practices and architectural decisions.
Performance Optimization:
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Monitor the performance of deployed AI models and systems, ensuring robustness and accuracy.
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Optimize computational costs and infrastructure utilization for large-scale deployments.
Ethical and Responsible AI:
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Ensure compliance with ethical AI practices, data privacy regulations, and governance frameworks.
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Implement safeguards to mitigate bias, misuse, and unintended consequences of Generative AI.
Requirements:
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Bachelor's or master’s degree in computer science, Data Science, or a related field.
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13+ years of relevant technical/technology experience, with significant expertise in GenAI projects with production deployment experience.
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Preferred real time experience in building scalable, Modular Multi-Agent System Design with dynamic tool integration, Context-Aware Reasoning
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Require familiarity with emerging Model Context Protocols (MCP) and dynamic tool integration to build flexible agentic systems
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Advanced programming skills in Python and fluency in data processing frameworks like Apache Spark.
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Should have strong knowledge on LLM’s foundational model (openai GPT4o, O1, Claude, Gemini, Llama 4 etc), while need to have strong knowledge on opensource Model’s like Llama 3.2, Phi etc.
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Proven track record with event-driven architectures and real-time data processing systems.
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Familiarity with Azure DevOps and other LLMOps tools for operationalizing AI workflows.
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Deep experience with Azure OpenAI Service and vector DBs, including API integrations, prompt engineering, and model fine-tuning. Or equivalent tech in AWS/GCP.
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Knowledge of containerization technologies such as Kubernetes and Docker.
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Comprehensive understanding of data lakes and strategies for data management.
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Expertise in LLM frameworks including Langchain, Llama Index, and Semantic Kernel.
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Proficiency in cloud computing platforms such as Azure or AWS.
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Exceptional leadership, problem-solving, and analytical abilities.
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Superior communication and collaboration skills, with experience managing high-performing teams.
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Ability to operate effectively in a dynamic, fast-paced environment.
Nice to Have Skills:
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Experience with additional technologies such as Datadog, and Splunk.
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Possession of relevant solution architecture certificates and continuous professional development in data engineering and GenAI.
Professional and Educational Background:
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BE / B.Tech / MCA / M.Sc / M.E / M.Tech / MBA, Any Degree