Job Description
Sr AI Engineer / Data Scientist / MLOps Consultant
Location : United States – Remote
Employment Type : Full-Time and Contract
We are seeking an experienced and highly technical Data Scientist to join our customer-facing consulting team. This remote role requires a blend of advanced Machine Learning (ML) expertise, deep knowledge of MLOps principles, and a proven track record in client-facing implementation. The successful candidate will be instrumental in designing, deploying, and maintaining production-grade ML solutions, including advanced Generative AI and Natural Language Processing (NLP) models, for our diverse client base.Key Responsibilities
- Serve as a primary technical consultant, leading and executing end-to-end ML project implementations directly with clients, translating complex business problems into robust technical solutions.
Exhibit excellent communication, presentation, and stakeholder management skills to clearly articulate technical findings, proposals, and project status to both technical and non-technical audiences.
Design, build, and maintain production-grade ML pipelines, focusing on continuous integration, continuous delivery (CI / CD), and advanced MLOps practices to ensure reliability and scalability of models.Implement and optimize cutting-edge Generative AI and NLP applications, demonstrating hands-on experience with technologies like Retrieval Augmented Generation (RAG) and Large Language Models (LLMs) in a production setting.Manage underlying solution infrastructure, demonstrating proficiency in technologies such as Docker, pipeline orchestrators, and database systems.Leverage expertise in distributed computing frameworks, specifically in scalable machine learning and high-performance data processing (e.g., using technologies like Apache Spark).Contribute to the strategic growth of the ML Practice Team, including participation in technical assignments and knowledge transfer activities.Ensure all client engagements and training activities are properly documented and reported via designated partner platforms.Required Qualifications
4+ years of hands-on professional experience developing, deploying, and managing Machine Learning models, with a mandatory requirement for
productionizing and maintaining models in a live environment.
3+ years of experience in a customer-facing consulting or solutions architect role, focused on technical implementation and delivery.
Excellent verbal and written communication skills for effective client and internal team interaction.
Expertise in MLOps lifecycle management, including model versioning, testing, monitoring, and automated deployment best practices.Demonstrable experience with infrastructure management, encompassing containerization (Docker) and data pipeline orchestration.Deep understanding of programming for data-intensive and scalable ML applications.Proven experience in deploying and managing Generative AI and NLP solutions for client applications.Preferred Qualifications
Hands-on experience with modern ML platform stacks, such as Databricks MLOps Stacks.Knowledge of specific tools and techniques used in scalable machine learning and large-scale data processing.Demonstrated commitment to continuous learning in emerging ML fields, such as LLMs and GenAI application architectures.Requirements
Hands-on experience with modern ML platform stacks, such as Databricks MLOps Stacks.Knowledge of specific tools and techniques used in scalable machine learning and large-scale data processing.Demonstrated commitment to continuous learning in emerging ML fields, such as LLMs and GenAI application architectures.Requirements
4+ years of hands-on professional experience developing, deploying, and managing Machine Learning models, with a mandatory requirement for productionizing and maintaining models in a live environment.3+ years of experience in a customer-facing consulting or solutions architect role, focused on technical implementation and delivery.Excellent verbal and written communication skills for effective client and internal team interaction.Expertise in MLOps lifecycle management, including model versioning, testing, monitoring, and automated deployment best practices.Demonstrable experience with infrastructure management, encompassing containerization (Docker) and data pipeline orchestration.Deep understanding of programming for data-intensive and scalable ML applications.Proven experience in deploying and managing Generative AI and NLP solutions for client applications.