Associate Director (AI Hub GTS)

Bangalore, Karnataka, India

KPMG India

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Roles & responsibilities

Here are some of the key responsibilities of AI Research Scientist: 

1.Develop the overarching technical vision for AI systems that support both current and future business needs. 2.Architect end-to-end AI applications, ensuring integration with legacy systems, enterprise data platforms, and microservices. 3.Work closely with business analysts and domain experts to translate business objectives into technical requirements and AI-driven solutions and applications. Partner with product management to design agile project roadmaps, aligning technical strategy with market needs. Coordinate with data engineering teams to ensure smooth data flows, quality, and governance across data sources. 4.Lead the design of reference architectures, roadmaps, and best practices for AI applications. 5.Evaluate emerging technologies and methodologies, recommending proven innovations that can be integrated into the organizational strategy. 6.Identify and define system components such as data ingestion pipelines, model training environments, continuous integration/continuous deployment (CI/CD) frameworks, and monitoring systems. 7.Utilize containerization (Docker, Kubernetes) and cloud services to streamline the deployment and scaling of AI systems. Implement robust versioning, rollback, and monitoring mechanisms that ensure system stability, reliability, and performance. 8.Ensure the architecture supports scalability, reliability, maintainability, and security best practices. 9.Project Management: You will oversee the planning, execution, and delivery of AI and ML applications, ensuring that they are completed within budget and timeline constraints. This includes project management defining project goals, allocating resources, and managing risks. 10.Oversee the lifecycle of AI application development—from conceptualization and design to development, testing, deployment, and post-PROD optimization. 11.Enforce security best practices during each phase of development, with a focus on data privacy, user security, and risk mitigation. 12.Provide mentorship to engineering teams and foster a culture of continuous learning.

Lead technical knowledge-sharing sessions and workshops to keep teams up-to-date on the latest advances in generative AI and architectural best practices.

Mandatory  technical & functional skills

•The ideal candidate should have a strong background in working or developing agents using langgraph, autogen, and CrewAI. •Proficiency in Python, with robust knowledge of machine learning libraries and frameworks such as TensorFlow, PyTorch, and Keras. •Proven experience with cloud computing platforms (AWS, Azure, Google Cloud Platform) for building and deploying scalable AI solutions. •Hands-on skills with containerization (Docker) and orchestration frameworks (Kubernetes), including related DevOps tools like Jenkins and GitLab CI/CD. •Experience using Infrastructure as Code (IaC) tools such as Terraform or CloudFormation to automate cloud deployments. •Proficient in SQL and NoSQL databases (e.g., PostgreSQL, MongoDB, Cassandra) to manage structured and unstructured data. •Expertise in designing distributed systems, RESTful APIs, GraphQL integrations, and microservices architecture.  - Knowledge of event-driven architectures and message brokers (e.g., RabbitMQ, Apache Kafka) to support robust inter-system communications.

Preferred technical & functional skills

•Experience with monitoring and logging tools (e.g., Prometheus, Grafana, ELK Stack) to ensure system reliability and operational performance. •Familiarity with cutting-edge libraries such as Hugging Face Transformers, OpenAI’s API integrations, and other domain-specific tools. •Large scale deployment of ML projects, with good understanding of DevOps /MLOps /LLM Ops •Training and fine tuning of Large Language Models or SLMs (PALM2, GPT4, LLAMA etc )

Key behavioral attributes/requirements

•Ability to mentor junior developers •Ability to own project deliverables and contribute towards risk mitigation •Understand business objectives and functions to support data needs

Roles & responsibilities

Here are some of the key responsibilities of AI architect: 

1.Develop the overarching technical vision for AI systems that support both current and future business needs. 2.Architect end-to-end AI applications, ensuring integration with legacy systems, enterprise data platforms, and microservices. 3.Work closely with business analysts and domain experts to translate business objectives into technical requirements and AI-driven solutions and applications. Partner with product management to design agile project roadmaps, aligning technical strategy with market needs. Coordinate with data engineering teams to ensure smooth data flows, quality, and governance across data sources. 4.Lead the design of reference architectures, roadmaps, and best practices for AI applications. 5.Evaluate emerging technologies and methodologies, recommending proven innovations that can be integrated into the organizational strategy. 6.Identify and define system components such as data ingestion pipelines, model training environments, continuous integration/continuous deployment (CI/CD) frameworks, and monitoring systems. 7.Utilize containerization (Docker, Kubernetes) and cloud services to streamline the deployment and scaling of AI systems. Implement robust versioning, rollback, and monitoring mechanisms that ensure system stability, reliability, and performance. 8.Ensure the architecture supports scalability, reliability, maintainability, and security best practices. 9.Project Management: You will oversee the planning, execution, and delivery of AI and ML applications, ensuring that they are completed within budget and timeline constraints. This includes project management defining project goals, allocating resources, and managing risks. 10.Oversee the lifecycle of AI application development—from conceptualization and design to development, testing, deployment, and post-PROD optimization. 11.Enforce security best practices during each phase of development, with a focus on data privacy, user security, and risk mitigation. 12.Provide mentorship to engineering teams and foster a culture of continuous learning.

Lead technical knowledge-sharing sessions and workshops to keep teams up-to-date on the latest advances in generative AI and architectural best practices.

Mandatory  technical & functional skills

•The ideal candidate should have a strong background in working or developing agents using langgraph, autogen, and CrewAI. •Proficiency in Python, with robust knowledge of machine learning libraries and frameworks such as TensorFlow, PyTorch, and Keras. •Proven experience with cloud computing platforms (AWS, Azure, Google Cloud Platform) for building and deploying scalable AI solutions. •Hands-on skills with containerization (Docker) and orchestration frameworks (Kubernetes), including related DevOps tools like Jenkins and GitLab CI/CD. •Experience using Infrastructure as Code (IaC) tools such as Terraform or CloudFormation to automate cloud deployments. •Proficient in SQL and NoSQL databases (e.g., PostgreSQL, MongoDB, Cassandra) to manage structured and unstructured data. •Expertise in designing distributed systems, RESTful APIs, GraphQL integrations, and microservices architecture.  - Knowledge of event-driven architectures and message brokers (e.g., RabbitMQ, Apache Kafka) to support robust inter-system communications.

Preferred technical & functional skills

•Experience with monitoring and logging tools (e.g., Prometheus, Grafana, ELK Stack) to ensure system reliability and operational performance. •Familiarity with cutting-edge libraries such as Hugging Face Transformers, OpenAI’s API integrations, and other domain-specific tools. •Large scale deployment of ML projects, with good understanding of DevOps /MLOps /LLM Ops •Training and fine tuning of Large Language Models or SLMs (PALM2, GPT4, LLAMA etc )

Key behavioral attributes/requirements

•Ability to mentor junior developers •Ability to own project deliverables and contribute towards risk mitigation •Understand business objectives and functions to support data needs

This role is for you if you have  the below

Educational qualifications

-Bachelor’s/Master’s degree in Computer Science -Certifications in Cloud technologies (AWS, Azure, GCP) and TOGAF certification (good to have)

Work experience: 11 to 14 Years of Experience

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* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

Tags: Agile APIs Architecture AWS Azure Cassandra CI/CD CloudFormation Computer Science DevOps Distributed Systems Docker ELK Engineering GCP Generative AI GitLab Google Cloud GPT Grafana GraphQL Jenkins Kafka Keras Kubernetes LLaMA LLMOps LLMs Machine Learning Microservices MLOps Model training MongoDB NoSQL OpenAI PaLM 2 Pipelines PostgreSQL Privacy Python PyTorch RabbitMQ Research Security SQL TensorFlow Terraform Testing TOGAF Transformers Unstructured data

Perks/benefits: Career development

Region: Asia/Pacific
Country: India

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