

Codebase Inc
Data Science (Geospatial Advanced Analytics) at St Louis,MO
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Data Science (Geospatial Advanced Analytics) position in St. Louis, MO, hybrid (3 days in-office). Contract type is C2C or W2, requiring expertise in Python, GIS software, cloud computing, and big data technologies.
🌎 - Country
United States
💱 - Currency
$ USD
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💰 - Day rate
Unknown
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🗓️ - Date
November 18, 2025
🕒 - Duration
Unknown
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🏝️ - Location
Hybrid
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📄 - Contract
W2 Contractor
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🔒 - Security
Unknown
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📍 - Location detailed
St Louis, MO
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🧠 - Skills detailed
#Programming #Azure #Hadoop #Libraries #Data Science #SQL (Structured Query Language) #Statistics #GCP (Google Cloud Platform) #AWS (Amazon Web Services) #Classification #Python #"ETL (Extract #Transform #Load)" #Cloud #Kafka (Apache Kafka) #Big Data #Scala #Monitoring #Predictive Modeling #Spark (Apache Spark) #BI (Business Intelligence) #R #ML (Machine Learning) #Spatial Data #Data Pipeline #Pandas #Datasets
Role description
Title : Data Science (Geospatial Advanced Analytics) –
Location : St. Louis, MO – Hybrid- 3 days a week in office.
Job type : C2C or W2
• Geospatial Data Scientist: This role combines data science with geospatial technology to develop models and tools that extract meaningful insights from large datasets. Professionals in this field often use machine learning to analyze spatial data for applications like predicting urban growth, analyzing transportation patterns, or assessing resource management.
• Geospatial Engineer: These engineers focus on building and maintaining scalable, cloud-based data infrastructures for geospatial applications. They lead the development of data pipelines (ETL processes) to ingest, clean, and transform large volumes of geospatial and big data for analysis.
• Senior Geospatial Analyst: Senior analysts lead complex spatial modeling projects and use advanced statistical methods to analyze geographic data. They may specialize in specific domains like urban planning, business intelligence, or environmental monitoring.
• Remote Sensing Scientist/Analyst: This role uses satellite and aerial imagery to gather and interpret data for a variety of applications, including environmental monitoring, defense, and disaster response. Advanced analytics is often used to detect changes over time, perform image classification, and extract features automatically.
• LiDAR Analyst: Using Light Detection and Ranging (LiDAR) technology, these specialists create detailed 3D models of landscapes. They apply advanced analytics to point cloud data to gain insights for applications like infrastructure planning and natural resource management.
• Geospatial Developer: These developers build the applications and tools that enable others to work with geospatial data effectively. This includes creating web mapping applications, customizing GIS software, and building location services.
Key skills for advanced geospatial analytics
• Programming: Python is essential, often with libraries like GeoPandas and Shapely, along with experience in R or SQL.
• Cloud Computing: Proficiency with platforms like Google Cloud (GCP), AWS, or Azure is crucial for managing and processing large geospatial datasets.
• Data Science & Modeling: Experience with predictive modeling, machine learning, and spatial statistics is critical for extracting meaningful insights.
• GIS Software: Expertise in professional-grade software like Esri ArcGIS (Pro, Online, Enterprise) and open-source alternatives like QGIS is required.
• Big Data Technologies: Experience with big data technologies such as Hadoop, Spark, or Kafka is valuable for handling massive datasets.
Title : Data Science (Geospatial Advanced Analytics) –
Location : St. Louis, MO – Hybrid- 3 days a week in office.
Job type : C2C or W2
• Geospatial Data Scientist: This role combines data science with geospatial technology to develop models and tools that extract meaningful insights from large datasets. Professionals in this field often use machine learning to analyze spatial data for applications like predicting urban growth, analyzing transportation patterns, or assessing resource management.
• Geospatial Engineer: These engineers focus on building and maintaining scalable, cloud-based data infrastructures for geospatial applications. They lead the development of data pipelines (ETL processes) to ingest, clean, and transform large volumes of geospatial and big data for analysis.
• Senior Geospatial Analyst: Senior analysts lead complex spatial modeling projects and use advanced statistical methods to analyze geographic data. They may specialize in specific domains like urban planning, business intelligence, or environmental monitoring.
• Remote Sensing Scientist/Analyst: This role uses satellite and aerial imagery to gather and interpret data for a variety of applications, including environmental monitoring, defense, and disaster response. Advanced analytics is often used to detect changes over time, perform image classification, and extract features automatically.
• LiDAR Analyst: Using Light Detection and Ranging (LiDAR) technology, these specialists create detailed 3D models of landscapes. They apply advanced analytics to point cloud data to gain insights for applications like infrastructure planning and natural resource management.
• Geospatial Developer: These developers build the applications and tools that enable others to work with geospatial data effectively. This includes creating web mapping applications, customizing GIS software, and building location services.
Key skills for advanced geospatial analytics
• Programming: Python is essential, often with libraries like GeoPandas and Shapely, along with experience in R or SQL.
• Cloud Computing: Proficiency with platforms like Google Cloud (GCP), AWS, or Azure is crucial for managing and processing large geospatial datasets.
• Data Science & Modeling: Experience with predictive modeling, machine learning, and spatial statistics is critical for extracting meaningful insights.
• GIS Software: Expertise in professional-grade software like Esri ArcGIS (Pro, Online, Enterprise) and open-source alternatives like QGIS is required.
• Big Data Technologies: Experience with big data technologies such as Hadoop, Spark, or Kafka is valuable for handling massive datasets.






