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Data Scientist II

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Join our dynamic team as a Data Scientist II and work at the forefront of data-driven innovation. You'll dive deep into exploratory data analysis, modeling, and MLOps to craft impactful solutions across multidisciplinary teams.

Duties and Responsibilities:

  • Collaborate and work across functional and multidisciplinary teams in a dynamic environment to develop an understanding of evolving/agile business needs

  • The Data Scientist role has work across the following four areas:

    • Exploratory data analysis:

      • Conduct in-depth exploratory data analysis (EDA) to uncover hidden patterns, anomalies, and trends.

      • Utilize statistical techniques and data visualization tools to communicate insights effectively to both technical and non-technical stakeholders.

      • Perform hypothesis testing and A/B testing to validate assumptions and measure the impact of data-driven decisions.

    • Feature engineering and enrichment:

      • Create and refine relevant features from raw data to enhance model performance.

      • Leverage large language models (LLMs) to generate novel features and augment existing datasets.

    • Modeling:

      • Design, develop, and deploy advanced machine learning models (e.g., regression, classification, clustering) to address complex business problems.

      • Continuously improve model performance by fine-tuning hyperparameters, exploring new algorithms, and incorporating feature engineering techniques.

      • Collaborate with domain experts to understand business objectives and translate them into actionable data science solutions.

    • Data Operations and MLOps:

      • Develop and maintain efficient data pipelines to extract, transform, and load (ETL) data from various sources.

      • Deploy and manage machine learning models in production environments using MLOps practices.

      • Monitor model performance, retrain as needed, and implement automated retraining pipelines.

      • Collaborate with software teams to ensure seamless integration of data science solutions into the broader technology stack.

Requirements and Qualifications:

  • BS/MS in Science (Statistics, Computer Science, Econometrics, Data Science, Artificial Intelligence ).

  • 1-5 years of experience with data science or computer science fields

  • Experience with common data science toolkits, programming languages, visualization tools and SQL/NoSQL databases.

  • Good applied statistical knowledge with emphasis in business and finance related statistical distributions, statistical testing, modeling, regression analysis, etc.

  • Good foundation of computer science knowledge such as data structure, operating system

  • Familiar or prone to adopt design thinking methods.

  • Able to work under pressure and change, and balance among speed, reliability, interpretability.

  • Experience with code versioning, code review and documentation.

  • Effective communication skills

  • Experience in building part-time projects which focuses on:

Additional skill based requirements:

Machine Learning

  • Understanding of machine learning algorithms such as k-NN, Naive Bayes, SVM, Decision trees.

  • Experience using ML frameworks such as TensorFlow, PyTorch, or scikit-learn.

  • Experience with Google Cloud Platform products and services such as Vision API, Recommendations API, Cloud Natural Language.

GenAI

  • Leverage the power of Generative AI to develop innovative solutions that push the boundaries of creativity and automation such as target labeling, building chatbot system, data enrichment, semantic search

  • Experience in designing and implementing RAG systems, including knowledge base construction, information retrieval, and model fine-tuning.

Algorithm Engineering

  • Strong ability to implement, improve, and deploy ML and Math models in Golang or Python.

  • Conduct systems tests for security, performance, and availability.

  • Develop and maintain the design and troubleshooting/error documentation.

  • Create cost effective scalable systems and develop innovative algorithm solutions.

Operations Research

  • Familiar with modeling problems as mathematical programming, constraint satisfaction, particle swarm optimization and other appropriate OR methodologies.

  • Familiar with tools such as Cplex, Gurobi, Google OR-Tools.