We have an urgent requirement for AIML Technical Architect – AI/ML Practice with our client at Remote
Drop your resumes to [email protected]
Note: If you are not looking for a new opportunity, please refer someone like, will appreciate.
Title : AIML Technical Architect – AI/ML Practice
Location : Remote
Duration: long term Contract
Job description :
The candidate should be
- Bachelor’s or master’s degree (preferred) in Computer Science, Engineering, or a relevant field.
- Relevant architecture certifications, such as TOGAF, Zachman are good to have Cloud certifications i.e., AWS Certified Solutions Architect, Google ML Professional Cloud Architect, or Microsoft Certified: Azure Solutions Architect Expert, are a plus.
Expected Skillsets, Roles & Responsibilities:
Core Responsibilities/ Experience
- Vision and aptitude for problem understanding, outcome focus, structural breakdown of problems, exhibit art of problem solving, distill business situations to analytical solutions
- Experience in administering and leading data science implementations for business programs at scale in production environments
- Proven track record of driving business outcome across large scale data science driven programs across Retail, CPG, FMCG/ Healthcare/ Financial Services & Insurance/ Banking & Capital Markets/ High-Tech Manufacturing/ Digital Enterprises
- Strong analytical, problem-solving, and decision-making skills, with the ability to balance technical and business considerations.
- Ability to conduct and govern AI experimentation and arrive at solution optionality and possible impact
- Excellent communication and collaboration skills, with the ability to effectively convey complex technical concepts to both technical and non-technical stakeholders.
- Ability to work in a fast paced, dynamic environment and adapt to changing priorities & requirements.
- In-depth fundamental and experiential knowledge in statistics, probability, machine learning, optimization techniques and application of the apt algorithm/ solution per the business problem
- Experience in deep learning techniques, their business applications
- Experience in implementing statistical modelling as part of full stack developments in product deployments
- Basics of ML Ops, model monitoring, feedback and setup
- Knowledge and administrative experience in cloud computation systems (Azure, GCP, AWS) and their respective ML stack, data storage and ETL, pipelining and automation
- Basics of full stack implementation : User Story Formulation, Front End, Middleware and Backend layers, Integration, API setup and calling
- Experience working with cross-functional teams, including software developers, process experts, product managers, data engineers.
Good to have Experience
- In depth knowledge in Gen AI, functionality of LLM, (Open AI, Gemini) their business applications
- Knowledge in NLP, text matching, basic computer vision, visual identification & extraction, OCR techniques
- In-depth creating modular, maintainable, and extensible designs that support the development of scalable, secure, and efficient software systems.
- Knowledge of software architecture principles, design patterns, and best practices of full stack architectures and product developments
- In-depth knowledge of end-to-end ML Ops implementation
- Strong understanding of programming languages, frameworks, technologies : Python, PySpark, Java, Angular, React, Streamlit, Figma
- Knowledge of microservices architecture and containerization technologies, such as Docker and Kubernetes, to enable efficient deployment and management of distributed applications
- Knowledge of Agile, DevOps methodologies, tools and program administration practices
- Familiarity with agile working environments, agile principles, with usage of Scrum, Kanban and other agile frameworks
- Familiarity with data engineering principles, data storage, networking, database design and management, CI-CD pipelining including SQL and NoSQL databases
Regards, Nagendar Goud Mula Sr. US IT Recruiter linkedin.com/in/nagendar-goud-38680ba6 |