Responsibilities:
'Deploying AI/ML solution to productions and generating value from it.
Developing End-to-End solutions with teammates and working with stakeholders, data team, business team and product team.
Helping dev-ops team to deploy and integrate solution with existing systems
• Data Quality and Availability: Ensuring the quality and availability of data for model training and validation can be a significant challenge. This includes dealing with missing, unstructured, or inconsistent data.
• Model Performance: Developing models that perform well in real-world scenarios is a complex task. It requires rigorous testing, validation, and continuous optimization.
• Scalability: Scaling AI solutions to handle large volumes of data and integrate with various business functions can be technically challenging.
• Keeping Up with Rapid Advances: The field of AI is advancing rapidly. Keeping up with the latest research, techniques, and tools can be demanding.
• Ethical and Regulatory Compliance: Ensuring that AI models are transparent, fair, and comply with all relevant regulations and ethical guidelines is a critical challenge. This includes understanding and mitigating potential biases in AI models.
2 - 4 years
Master’s in science, Stats, ML, DS/ Bachelors in Engg, Tech – DS, Comp Sci
Functional Skills:
Behavioural Skills: