Platform Development and Evangelism:
- Build scalable AI platforms that are customer-facing.
- Evangelize the platform with customers and internal stakeholders.
- Ensure platform scalability, reliability, and performance to meet business needs.
· Machine Learning Pipeline Design:
- Design ML pipelines for experiment management, model management, feature management, and model retraining.
- Implement A/B testing of models.
- Design APIs for model inferencing at scale.
- Proven expertise with MLflow, SageMaker, Vertex AI, and Azure AI.
LLM Serving and GPU Architecture:
- Serve as an SME in LLM serving paradigms.
- Possess deep knowledge of GPU architectures.
- Expertise in distributed training and serving of large language models.
- Proficient in model and data parallel training using frameworks like DeepSpeed and service frameworks like vLLM.
Model Fine-Tuning and Optimization:
- Demonstrate proven expertise in model fine-tuning and optimization techniques.
- Achieve better latencies and accuracies in model results.
- Reduce training and resource requirements for fine-tuning LLM and LVM models.
LLM Models and Use Cases:
- Have extensive knowledge of different LLM models.
- Provide insights on the applicability of each model based on use cases.
- Proven experience in delivering end-to-end solutions from engineering to production for specific customer use cases.
DevOps and LLMOps Proficiency:
Proven expertise in DevOps and LLMOps practices. Knowledgeable in Kubernetes, Docker, and container orchestration. Deep understanding of LLM orchestration frameworks like Flowise, Langflow, and Langgraph.
Communication & Articulation
- Ability to explain complex AI/ML topics and design choices to technical and business audiences.
- Experience in presenting AI strategies and results to senior executives, highlighting impact.
- Ability to lead cross-functional discussions to clarify issues and achieve engineering consensus.
- Ability to persuade stakeholders and secures support on solution approaches.
Continuous Innovation & Adaptive Learning
- Proactively tracks emerging AI research, frameworks, and industry design patterns.
- Validates new concepts through quick experimentation and iterative "fail-fast" testing.
- Translates cutting-edge developments into practical improvements for production systems.
- Demonstrates a self-driven commitment to learning and adopting evolving AI technologies.
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