Data Scientist Hybrid W Only Apply
Position Overview:
As a Data Scientist ML/AI, you will play a pivotal role in developing, and deploying ML/AI models to revolutionize our retail operations. You will work with cross-functional teams to create data-driven solutions that enhance product recommendations, optimize inventory management, and personalize customer interactions.
Role Responsibilities:
- Model Development: Develop, and implement ML/AI models and algorithms to address specific retail challenges, such as personalized recommendations, automated content generation, and predictive analytics.
- Data Engineering: Collaborate with data engineers to preprocess, clean, and structure data for model training and evaluation. Ensure data pipelines are optimized for efficiency and accuracy.
- Machine Learning Operations (MLOps):
- Deploy and maintain machine learning models in production environments (Astronomer, AWS, Snowpark). Implement MLOps practices to ensure scalability, robustness, and monitoring of deployed models.
- Collaboration: Work closely with data scientists, software engineers, and business stakeholders to understand requirements and translate them into technical solutions.
- Performance Optimization: Continuously evaluate and fine-tune models to improve performance and accuracy. Utilize feedback and metrics to enhance model effectiveness.
- Documentation and Reporting: Maintain thorough documentation of model development processes and results. Communicate findings and insights to both technical and non-technical stakeholders.
Key Qualifications:
- Education: Bachelor's degree in Computer Science, Data Science, Engineering, or a related field. Advanced degree is a plus.
- Technical Skills:
- Proficiency in Python, including libraries such as TensorFlow, PyTorch, and scikit-learn.
- Experience with Large language models llama, Claude, etc.
- Knowledge of cloud platforms (e.g., AWS, GCP, Azure) and their machine learning services.
- Strong SQL knowledge for data manipulation and querying.
- Worked with modern data warehouses like Snowflake or BigQuery
- Used source control, Git and/or GitHub, proficiently
- Familiarity with MLOps tools and practices for deploying and managing machine learning models.
- Experience with data engineering practices and tools (e.g., ETL processes, data warehousing).
- Worked in an agile team environment
- Problem-Solving: Strong analytical and problem-solving skills with the ability to think creatively and strategically.
- Communication: Excellent verbal and written communication skills, with the ability to present complex technical concepts to diverse audiences.