AIML Lead
Mondee
8 - 10 years
Hyderabad
Posted: 10/01/2026
Job Description
Job Position:- AIML Lead
Experience Required- 8-10 years
Job Type- Full-time
Location - Hyderabad, India
Notice:- 0-30days
Overview
We are seeking a dynamic AI/ML Leader to drive innovation and implementation across AI, Generative AI, and Multimodal AI initiatives. The ideal candidate will lead the end-to-end development of intelligent solutions that enhance products and business outcomes. This role requires a blend of technical expertise, strategic thinking, and people leadership with proficiency in AI/ML frameworks, cloud platforms, and MLOps practices .
In addition, the AI/ML Lead will play a pivotal role in building high-performing teams , fostering cross-functional collaboration , and promoting AI excellence across the organization.
Key Responsibilities
1. AI/ML Solution Development & Delivery
- Lead the design, development, and deployment of AI and ML-based solutions aligned with business objectives.
- Evaluate and implement AI frameworks, libraries, and platforms (TensorFlow, PyTorch, Hugging Face, LangChain, AutoML).
- Define and execute data strategies for AI/ML pipelines including data ingestion, feature engineering, and model lifecycle management.
- Ensure that AI models are scalable, maintainable, and production-ready for real-time and batch applications.
2. Cloud & Infrastructure Enablement
- Oversee the deployment of AI workloads on AWS, GCP, Azure, or OCI with a focus on performance, scalability, and cost-efficiency.
- Lead the design of containerized and serverless AI solutions using Docker, Kubernetes, and modern DevOps practices.
- Ensure security, reliability, and fault tolerance across AI infrastructure.
3. Data Strategy & Management
- Collaborate with data engineering teams to build robust data architectures supporting AI-driven analytics and automation.
- Establish data governance frameworks , storage strategies, and metadata management processes.
- Leverage big data platforms such as Databricks, Snowflake, and Spark for model training and data processing.
4. MLOps & Continuous Delivery
- Build and manage end-to-end MLOps pipelines using MLflow, Kubeflow, SageMaker, or Vertex AI.
- Integrate CI/CD processes for model versioning, validation, and deployment automation.
- Implement monitoring and alerting mechanisms to ensure model performance and reliability in production.
5. Leadership & Collaboration
- Lead a cross-functional team of AI engineers, data scientists, and product owners to deliver impactful AI initiatives.
- Provide mentorship and technical guidance to team members and foster a culture of innovation.
- Collaborate with product and business stakeholders to align AI initiatives with strategic priorities.
- Conduct technical reviews and enforce best practices across teams.
6. Performance Optimization
- Monitor AI model performance and drive optimization for accuracy, latency, and resource utilization .
- Develop and implement cost management and scaling strategies for AI workloads.
- Troubleshoot and resolve complex system and deployment challenges.
7. Innovation & Research
- Stay abreast of emerging AI trends and technologies , including Generative AI and agentic automation.
- Drive proof-of-concept (PoC) projects to evaluate new AI capabilities.
- Contribute to research publications, patents, and AI community engagements to promote organizational thought leadership.
8. Stakeholder Engagement
- Present AI/ML strategies and outcomes to leadership and technical stakeholders.
- Support business development and pre-sales efforts through technical presentations and solution demonstrations.
- Collaborate with customers and partners to define solution roadmaps and drive successful delivery.
Experience Requirements
- 8+ years of total professional experience in technology and solution delivery .
- 2+ years of hands-on experience in AI/ML model development, deployment, and scaling .
- 5+ years of experience with cloud platforms such as AWS, GCP, Azure, or OCI.
Technical Skills
- AI/ML Frameworks: TensorFlow, PyTorch, Hugging Face, LangChain, AutoML.
- Cloud AI Services: SageMaker, Vertex AI, Azure ML, Bedrock, LLM APIs.
- MLOps Tools: MLflow, Kubeflow, TFX, CI/CD pipelines, Docker, Kubernetes.
- Data Engineering: Spark, Databricks, BigQuery, Snowflake, Airflow.
- Programming: Python (advanced), Java/Scala, SQL, PySpark.
- Agentic AI: RPA tools (UiPath, Automation Anywhere), process mining.
- Proven experience with DevOps, automation, and AI lifecycle management .
Preferred Qualifications
- Masters degree in Computer Science, Engineering, or related technical field .
- Certifications in AWS, Azure, or GCP (e.g., Solutions Architect or Cloud AI Engineer).
- Experience with real-time AI applications , streaming data , and microservices architecture .
- Knowledge of Responsible AI practices , including ethics, fairness, and bias detection.
- Expertise in Python, TensorFlow, PyTorch, scikit-learn , and other modern AI libraries.
Soft Skills
- Strong leadership and mentoring capabilities with experience leading technical teams.
- Excellent communication and stakeholder management skills.
- Strategic and analytical problem-solving mindset .
- Collaborative, adaptable, and able to thrive in fast-paced, evolving environments .
Services you might be interested in
Improve Your Resume Today
Boost your chances with professional resume services!
Get expert-reviewed, ATS-optimized resumes tailored for your experience level. Start your journey now.
