

Motion Recruitment
Data Scientist / Mid-level / Contract / Chicago / Hybrid
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Data Scientist II, contract through September 30 with potential for extension, in Chicago (hybrid). Requires 3–5 years' experience in data science, strong Python skills, and familiarity with AWS. Background in pharma or biotech preferred.
🌎 - Country
United States
💱 - Currency
$ USD
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💰 - Day rate
Unknown
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🗓️ - Date
February 6, 2026
🕒 - Duration
More than 6 months
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🏝️ - Location
Hybrid
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📄 - Contract
Unknown
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🔒 - Security
Unknown
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📍 - Location detailed
North Chicago, IL
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🧠 - Skills detailed
#AWS (Amazon Web Services) #Datasets #R #Cloud #Tableau #Visualization #NoSQL #ML (Machine Learning) #Predictive Modeling #Databases #"ETL (Extract #Transform #Load)" #Data Analysis #Data Engineering #Plotly #Python #SQL (Structured Query Language) #Data Science
Role description
We are seeking a Data Scientist II to support clinical data research and operations for a leading global biopharmaceutical organization. This is a contract role based in Lake County, IL, with a hybrid schedule (on-site Tuesday–Thursday) and an ASAP start, currently slated through September 30 with strong potential for extension. In this role, you’ll work hands-on with Python, machine learning, statistical modeling, and AWS cloud technologies, helping design and scale data workflows that directly support R&D and scientific teams.
This role sits at the intersection of data science, research, and real-world impact. You’ll work side-by-side with R&D scientists, influencing how clinical and research data is analyzed, modeled, and scaled for future growth. If you enjoy building and improving ML-driven datasets, collaborating across disciplines, and seeing your work directly support scientific innovation, this role delivers. The team is open to diverse backgrounds — including candidates from biotech or pharma who may not have held a formal “Data Scientist” title but bring strong statistical thinking and Python expertise. It’s a great opportunity to deepen your applied ML experience in a collaborative, research-focused environment while maintaining work-life balance with a predictable hybrid schedule.
Contract Duration
ASAP – September 30 (with possibility of extension)
Required Skills & Experience
• 3–5 years of hands-on experience in data science, analytics, or predictive modeling
• Strong proficiency in Python for data analysis and modeling
• Experience with statistical analysis and machine learning techniques
• Ability to analyze and work with large datasets
• Experience collaborating with cross-functional teams, including scientists or R&D partners
• Bachelor’s degree with relevant professional experience
Desired Skills & Experience
• Background in pharma, biotech, or medical research
• Experience scaling or improving data workflows
• Familiarity with AWS cloud environments
• Exposure to ML operations concepts
• Working knowledge of SQL, relational or NoSQL databases, or data engineering concepts (ETL, data warehousing)
• Familiarity with data visualization tools such as Tableau, Plotly, or Dash
What You Will Be Doing
Tech Breakdown
• 50% Python, statistical analysis & machine learning
• 25% Cloud & ML workflow support (AWS)
• 15% Data visualization & analytics
• 10% Data infrastructure & datasets support
Daily Responsibilities
• 70% Hands-On data analysis, modeling, and workflow development
• 10% Strategic planning and problem solving
• 20% Cross-team collaboration with R&D, scientists, and analytics partners
Posted By: Ally Mitchell
We are seeking a Data Scientist II to support clinical data research and operations for a leading global biopharmaceutical organization. This is a contract role based in Lake County, IL, with a hybrid schedule (on-site Tuesday–Thursday) and an ASAP start, currently slated through September 30 with strong potential for extension. In this role, you’ll work hands-on with Python, machine learning, statistical modeling, and AWS cloud technologies, helping design and scale data workflows that directly support R&D and scientific teams.
This role sits at the intersection of data science, research, and real-world impact. You’ll work side-by-side with R&D scientists, influencing how clinical and research data is analyzed, modeled, and scaled for future growth. If you enjoy building and improving ML-driven datasets, collaborating across disciplines, and seeing your work directly support scientific innovation, this role delivers. The team is open to diverse backgrounds — including candidates from biotech or pharma who may not have held a formal “Data Scientist” title but bring strong statistical thinking and Python expertise. It’s a great opportunity to deepen your applied ML experience in a collaborative, research-focused environment while maintaining work-life balance with a predictable hybrid schedule.
Contract Duration
ASAP – September 30 (with possibility of extension)
Required Skills & Experience
• 3–5 years of hands-on experience in data science, analytics, or predictive modeling
• Strong proficiency in Python for data analysis and modeling
• Experience with statistical analysis and machine learning techniques
• Ability to analyze and work with large datasets
• Experience collaborating with cross-functional teams, including scientists or R&D partners
• Bachelor’s degree with relevant professional experience
Desired Skills & Experience
• Background in pharma, biotech, or medical research
• Experience scaling or improving data workflows
• Familiarity with AWS cloud environments
• Exposure to ML operations concepts
• Working knowledge of SQL, relational or NoSQL databases, or data engineering concepts (ETL, data warehousing)
• Familiarity with data visualization tools such as Tableau, Plotly, or Dash
What You Will Be Doing
Tech Breakdown
• 50% Python, statistical analysis & machine learning
• 25% Cloud & ML workflow support (AWS)
• 15% Data visualization & analytics
• 10% Data infrastructure & datasets support
Daily Responsibilities
• 70% Hands-On data analysis, modeling, and workflow development
• 10% Strategic planning and problem solving
• 20% Cross-team collaboration with R&D, scientists, and analytics partners
Posted By: Ally Mitchell





