This job has expired
Data and AI Engineer
atOsotspa PCLKey Responsibilities:
- DataOps, MLOps, and AIOps
- Design, build, and optimize scalable, secure, and efficient data pipelines for AI/ML workflows.
- Automate data ingestion, transformation, and deployment across AWS, GCP, and Azure.
- Implement MLOps and AIOps for model versioning, monitoring, and automated retraining.
- Ensure performance, security, scalability, and cost efficiency in AI lifecycle management.
- Performance Optimization & Security
- Monitor, troubleshoot, and optimize AI/ML pipelines and data workflows to enhance reliability.
- Implement data governance policies, security best practices, and compliance standards.
- Collaborate with cybersecurity teams to address vulnerabilities and ensure data protection.
- Data Engineering & System Integration
- Develop and manage real-time and batch data pipelines to support AI-driven applications.
- Enable seamless integration of AI/ML solutions with enterprise systems, APIs, and external platforms.
- Ensure data consistency, quality, and lineage tracking across the AI/ML ecosystem.
- AI/ML Model Deployment & Optimization
- Deploy and manage AI/ML models in production, ensuring accuracy, scalability, and efficiency.
- Automate model retraining, performance monitoring, and drift detection for continuous improvement.
- Optimize AI workloads for resource efficiency and cost-effectiveness on cloud platforms.
- Continuous Learning & Innovation
- Stay updated on AI/ML advancements, cloud technologies, and big data innovations.
- Contribute to proof-of-concept projects, AI process improvements, and best practices.
- Participate in internal research, knowledge-sharing, and AI governance discussions.
- Cross-Functional Collaboration & Business Understanding
- Work with business teams to ensure AI models align with organizational objectives.
- Gain a basic understanding of how AI/ML supports predictive analytics, demand forecasting, automation, personalization, and content generation.
Qualifications:
- Education:
Bachelor’s degree in Computer Science, Data Engineering, Information Technology, or a related field. Advanced degrees or relevant certifications (e.g., AWS Certified Data Analytics, Google Professional Data Engineer, Azure Data Engineer) are a plus. - Experience:
- Minimum of 3-5 years’ experience in a data engineering or operations role, with a focus on DataOps, MLOps, or AIOps.
- Proven experience managing cloud platforms (AWS, GCP, and/or Azure) in a production environment.
- Hands-on experience with designing, operating, and optimizing data pipelines and AI/ML workflows.
- Technical Skills:
- Proficiency in scripting languages such as Python and Bash, along with experience using automation tools.
- Familiarity with containerization and orchestration technologies (e.g., Docker, Kubernetes) is desirable.
- Strong knowledge of data processing frameworks (e.g., Apache Spark) and data pipeline automation tools.
- Expertise in data warehouse solutions and emerging data lakehouse architectures.
- Experience with AWS technologies is a plus, especially AWS Redshift and AWS SageMaker, as well as similar tools on other cloud platforms.
- Understanding of machine learning model deployment and monitoring tools
Experience required
- any or no experience
Salary
- Negotiable
Job function
- Engineering
Job type
- Full-time
Company overview
Osotspa Public Company Limited, founded in 1891, is a leading Thai consumer products company with over 130 years of experience in delivering quality products. The company specializes in non-alcoholic beverages, personal care products, healthcare products, and confectionery in 39 ...
Why join us: At Osotspa, we offer a dynamic environment where innovation and passion come together. Joining our team provides you with the opportunity to contribute to a global leader in consumer goods. We offer a collaborative work culture that values personal and professional growth. We bel ...
Benefits
- Provident fund
- Employee discount
- Learning & Development Opportunities