Job Listings

Data Scientist - Causal Discovery

CPChem

You may not realize it, but you’ve likely used a product today made possible by the plastics and chemicals manufactured by Chevron Phillips Chemical. From medical supplies and electronics to food packaging and cosmetics, we create the building blocks for more than 70,000 consumer and industrial products.

Even as a global company with 5,000 employees, we maintain a “small company feel” and uphold a culture of respect, diversity, and inclusion. Ask any Chevron Phillips Chemical employee what they like best about their job, and universally, the answer is “the people I work with!” We value work-life balance, and love to see our employees thrive both professionally and personally. There has never been a better time to work for Chevron Phillips Chemical. If you’re ready to grow with us and become part of our vision of being the premier Chemical Company, apply today!

Purpose/Introduction

Chevron Phillips is seeking a Data Scientist specializing in Causal Discovery. The Data Scientist will develop and deploy advanced analytics deliverables within an agile team and manage their lifecycle. This position is a great opportunity for a professional with a strong background in causal inference and discovery, looking to apply their skills to real-world business problems in manufacturing. This position requires strong communication skills; abstraction, analytical, and logical reasoning skills; data analysis and data contextualization skills; and skills in the application of causality/causal inference principles to real-world problems.

This role will work with lines of business across our enterprise (manufacturing, supply chain, commercial, finance, reliability, and others), data engineering, and other analytics teams to help identify opportunities for machine learning and generative AI applications. They may work with data from a variety of sources (commercial, financial, manufacturing, etc.) and a variety of types (structured, semi-structured, unstructured, and time-series).

The successful candidate must collaborate with the Data Science team to continually refine our data science process, improve our model management, and identify new opportunities that the Data Science team can work.

Responsibilities
• Analyze and perform Exploratory Data Analysis (EDA) on raw datasets with the ability to develop visualizations to present key findings from EDA, communicating with stakeholders to ensure understanding of potential opportunities, forming testable hypotheses, and obtaining regular feedback
• Identify potential machine learning (ML) or Generative AI opportunities that drive business value and working them through our intake process to formally get placed on our backlog
• Apply knowledge of statistics, machine learning, programming, and data modeling to recognize patterns, identify opportunities, test business hypotheses, and make valuable discoveries leading to operational savings or growth
• Wrangle data to cleanse and prepare it for ML model development, including the engineering of features to improve model performance
• Apply causal discovery and causal inference techniques to understand the relationships between variables and identify potential causal effects and causal relationships in datasets at scale
• Manage and execute ML model life cycle management within our MLOps framework for all models developed
• Collaborate with cross-functional and cross-organizational teams to integrate causal models into business processes and decision-making

Required Qualifications
• Masters’ degree in a quantitative field such as engineering, computer science, mathematics, statistics, or data science. Significant equivalent work experience in causal inference may be considered as a substitute
• Strong understanding of and experience with causal discovery and causal inference methods
• Experience in data science related programming languages, such as Python, R, C, C++, SQL etc
• Experience with Big Data platforms, such as Spark, would be advantageous. Databricks experience is a bonus
• Proven ability to apply advanced analytics techniques to real-world problems
• Strong written and verbal communication skills
• Ability to be effective in a team environment
• Curiosity and enthusiasm to learn new domains
• Experience with managing ML models through an MLOps lifecycle, from experimentation through production deployment to model version updates
• Experience with distributed cloud providers such as Microsoft Azure, AWS, or GCP

Preferred Qualifications
• PhD in quantitative field such as engineering, computer science, mathematics, statistics, or data science; especially if the area of research is related to causal inference
• Experience applying causal inference techniques in an oil, gas, and/or chemical manufacturing context
• Experience or familiarity with working in an Agile team
• Direct Experience using MLflow as an MLOps platform
• Experience with Microsoft Azure

Chevron Phillips Chemical offers competitive salaries, a comprehe

Location: The Woodlands, TX

Posted: Sept. 15, 2024, 6:14 a.m.

Apply Now Company Website