Sr Associate - AI | ML Engineer
Teachers Insurance and Annuity Association of America (TIAA)
All India • 1 month ago
Experience: 5 to 9 Yrs
PREMIUM
Deal of the Day
--:--:--
A recruiter messaged CVX24 Premium users few seconds ago.
Upgrade to CVX24 Premium: Only $2.49
- Free Resume Writing
-
Get a Verified Blue tick
- See who viewed your profile
- Unlimited chat with recruiters
- Rank higher in recruiter searches
- Get up to 10× more recruiter visibility
- Get practical interview tips and guidance
- Receive verified recruiter messages directly
- Unlock hidden jobs, not visible to free users
$4.99
$2.49
🔥 50% OFF
Activate
$4.99
$2.49
all inc.
(Validity: 6 Months. After payment confirmation we will reach out to you)
Enter Your Details
Job Description
As an AI Platform Lead Engineer, your role involves building and maintaining systems that support AI and machine learning applications. You will focus on ensuring the systems are scalable, efficient, and reliable.
Key Responsibilities and Duties:
- Deploy, manage, and scale AI systems in cloud environments
- Support model activity and deployment infrastructure
- Collaborate with infrastructure and application development teams, data engineers, and model owners for better integration of AI applications
- Put ML models into production with considerations for scalability, optimization, resource availability, and security
Educational Requirements:
- University degree preferred
Work Experience:
- Required: 5+ years
- Preferred: 7+ years
Physical Requirements:
- Sedentary Work
Generative AI Development:
- Design and implement Generative AI solutions, including:
- RAG (Retrieval-Augmented Generation) pipelines: Build systems integrating vector databases, embedding models, and LLMs
- Prompt engineering and optimization: Develop robust prompting strategies, templates, and workflows
- LLM fine-tuning and reinforcement learning: Customize foundation models using various methods to improve performance
- Model evaluation and benchmarking: Establish evaluation frameworks and conduct testing across models
- Observability and monitoring: Implement logging, tracing, and alerting systems for production environments
- Build production-grade AI agents using low-code platforms and high-code custom implementations
- Integrate diverse AI/ML capabilities to solve complex business problems
- Stay current with the evolving AI landscape to enhance solution capabilities
(Note: The additional details of the company were not present in the provided job description) As an AI Platform Lead Engineer, your role involves building and maintaining systems that support AI and machine learning applications. You will focus on ensuring the systems are scalable, efficient, and reliable.
Key Responsibilities and Duties:
- Deploy, manage, and scale AI systems in cloud environments
- Support model activity and deployment infrastructure
- Collaborate with infrastructure and application development teams, data engineers, and model owners for better integration of AI applications
- Put ML models into production with considerations for scalability, optimization, resource availability, and security
Educational Requirements:
- University degree preferred
Work Experience:
- Required: 5+ years
- Preferred: 7+ years
Physical Requirements:
- Sedentary Work
Generative AI Development:
- Design and implement Generative AI solutions, including:
- RAG (Retrieval-Augmented Generation) pipelines: Build systems integrating vector databases, embedding models, and LLMs
- Prompt engineering and optimization: Develop robust prompting strategies, templates, and workflows
- LLM fine-tuning and reinforcement learning: Customize foundation models using various methods to improve performance
- Model evaluation and benchmarking: Establish evaluation frameworks and conduct testing across models
- Observability and monitoring: Implement logging, tracing, and alerting systems for production environments
- Build production-grade AI agents using low-code platforms and high-code custom implementations
- Integrate diverse AI/ML capabilities to solve complex business problems
- Stay current with the evolving AI landscape to enhance solution capabilities
(Note: The additional details of the company were not present in the provided job description)
Skills Required
data engineering
scalability
optimization
security
reinforcement learning
monitoring
NLP
computer vision
AI systems
machine learning applications
cloud environments
model activity
deployment infrastructure
model integration
ML models
resource availability
Generative AI solutions
RAG pipelines
LLMs
prompt engineering
finetuning
model evaluation
observability
AI agents
document intelligence
Posted on: March 26, 2026
Relevant Jobs
Step 2 of 2