Generative AI Engineer with AWS
  • FUGE TECHNOLOGIES INC
107 Days Ago
NA
NA
Remote
7-15 Years
Required Skills: AWS Sagemaker,AWS BedRock,Generative AI
Job Description
Role: Generative AI Engineer with AWS
Location: Remote
Mandatory Skills : AWS Sagemaker , AWS BedRock , Generative AI
 
Job Overview: 
AWS Experience - AWS Sagemaker is required, AWS BedRock would be a nice to have. 
Model Building, Accuracy Metrics, Finetuning - standard Data Science skillset. 
Proven expertise in model finetuning for LLMs - PEFT, LORA techniques would be a big plus. 
Able to understand what technique to use for data type. 
RAG Experience would be great to have - similar to AI Engineer. 
 
Machine Learning Engineering:  
• Develop, train, and deploy ML models, ensuring they are optimized for production environments.  
• Create and maintain automated feedback loops to enhance model accuracy and performance.  
• Implement ML pipelines for continuous evaluation and refinement of models in production.  
 
AI Orchestration & Integration:  
• Integrate Large Language Models (LLMs) into business applications.  
• Build AI orchestration systems to manage the end-to-end lifecycle of AI models, including deployment and scaling.  
• Work with Vector Databases (VectorDB) to store and query high-dimensional data for AI applications.  
 
Model Evaluation & Feedback Loops:  
• Set up evaluation metrics and processes to assess model performance over time.  
• Create feedback loops using real-world data to improve model reliability and accuracy.  
 
 Text-to-SQL & Generative AI-driven Solutions:  
• Develop GenAI-driven Text-to-SQL solutions to automate database queries based on natural language input.  
• Optimize GenAI workflows for database interactions and information retrieval.
  
Embedding/Chunking & Prompt Engineering:  
• Design and implement embedding and chunking strategies for scalable data processing.  
• Utilize prompt engineering techniques to fine-tune the performance of AI models in production environments.  
   
Required Qualifications:  
• Bachelor's or Master's degree in Computer Science, AI, Machine Learning, or a related field.  
• Proven experience in building, deploying, and maintaining ML models in production environments.  
• Proficiency in programming languages like Python, and frameworks such as TensorFlow, PyTorch, or similar.  
• Familiarity with LLMs, VectorDB, embedding/chunking strategies, and AI orchestration tools.  
• Strong understanding of model evaluation techniques and feedback loop systems.  
• Hands-on experience with Text-to-SQL and prompt engineering methodologies.  
• Knowledge of cloud platforms (AWS) and containerization tools (Docker, Kubernetes).

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