Overview
On Site
Accepts corp to corp applications
Contract - W2
Contract - to 10/30/2026
Skills
Advanced Analytics
Data Science
Testing
Data Engineering
Analytics
Object-Oriented Programming
Python
SQL
Apache Spark
Databricks
Visualization
Tableau
GL
Data Modeling
Normalization
Data Quality
Performance Management
Machine Learning (ML)
Regression Analysis
Supervised Learning
Unsupervised Learning
Natural Language
Modeling
Communication
Geospatial Analysis
Remote Sensing
Geographic Information System
Satellite
CGI
Artificial Intelligence
Publications
Patents
Data Structure
Time Series
Java
JavaScript
Scala
Monte Carlo Method
Sales
Finance
Analytical Skill
Job Details
Job Title: Data Scientist Machine Learning & Geospatial Analytics
Job Location: candidates who can work onsite in Urbandale or Austin, TX.
job duration: 15 months
Job Location: candidates who can work onsite in Urbandale or Austin, TX.
job duration: 15 months
Job Description:
As a Data Scientist for Intelligent Services Group (ISG), you will join a team leveraging petabyte-scale datasets for advanced analytics and model building to enable intelligent, automated equipment and improved decisions by farmers.
Our team partners with product managers and data engineers to design, scale, and deliver full stack data science solutions.
Join a passionate team making a difference by applying innovative technology to solve some of the world's biggest problems.
As a Data Scientist for Intelligent Services Group (ISG), you will join a team leveraging petabyte-scale datasets for advanced analytics and model building to enable intelligent, automated equipment and improved decisions by farmers.
Our team partners with product managers and data engineers to design, scale, and deliver full stack data science solutions.
Join a passionate team making a difference by applying innovative technology to solve some of the world's biggest problems.
You will:
Communicate with impact your findings and methodologies to stakeholders with a variety of backgrounds.
Work with high resolution machine and agronomic data in the development and testing of predictive models.
Develop and deliver production-ready machine learning approaches to yield insights and recommendations from precision agriculture data.
Define, quantify, and analyze Key Performance Indicators that define successful customer outcomes.
Work closely with the Data Engineering teams to ensure data is stored efficiently and can support the required analytics.
Communicate with impact your findings and methodologies to stakeholders with a variety of backgrounds.
Work with high resolution machine and agronomic data in the development and testing of predictive models.
Develop and deliver production-ready machine learning approaches to yield insights and recommendations from precision agriculture data.
Define, quantify, and analyze Key Performance Indicators that define successful customer outcomes.
Work closely with the Data Engineering teams to ensure data is stored efficiently and can support the required analytics.
Relevant skills include:
Demonstrated competency in developing production-ready models in an Object-Oriented Prog language such as Python.
Demonstrated competency in using data-access technologies such as SQL, Spark, Databricks, etc.
Experience with Visualization tools such as Tableau, Kepler.gl, etc.
Experience with Data Modeling techniques such as Normalization, data quality and coverage assessment, attribute analysis, performance management, etc.
Experience building machine learning models such as Regression, supervised learning, unsupervised learning, probabilistic inference, natural language modeling, etc.
Excellent communication skills.
Demonstrated competency in developing production-ready models in an Object-Oriented Prog language such as Python.
Demonstrated competency in using data-access technologies such as SQL, Spark, Databricks, etc.
Experience with Visualization tools such as Tableau, Kepler.gl, etc.
Experience with Data Modeling techniques such as Normalization, data quality and coverage assessment, attribute analysis, performance management, etc.
Experience building machine learning models such as Regression, supervised learning, unsupervised learning, probabilistic inference, natural language modeling, etc.
Excellent communication skills.
Able to effectively lead meetings, to document work for reproduction, to write persuasively, to communicate proof-of-concepts, and to effectively take notes.
What makes candidates stand-out are skills such as:
Experience with Geospatial data search and analysis, geo-indexing techniques, vector and raster data structures.
Experience with remote sensing, GIS tools, and satellite imagery analysis.
Experience with CVML
Experience with advanced AI techniques and tools.
Examples of professional work such as publications, patents, a portfolio of relevant project-work, etc.
Familiarity with Distributed Datasets
Experienced with a variety of data structures such as time-series, geo-tagged, text, structured, and unstructured.
Additional experience with other languages such as Java, JavaScript, Scala, etc.
Experience with simulations such as Monte Carlo simulation, Gibbs sampling, etc.
Experience with model validation, measuring model bias, measuring model drift, etc.
Experience collaborating with stakeholders from disciplines such as Product, Sales, Finance, etc.
Ability to communicate complex analytical insights in a manner which is clearly understandable by nontechnical audiences.
Experience with Geospatial data search and analysis, geo-indexing techniques, vector and raster data structures.
Experience with remote sensing, GIS tools, and satellite imagery analysis.
Experience with CVML
Experience with advanced AI techniques and tools.
Examples of professional work such as publications, patents, a portfolio of relevant project-work, etc.
Familiarity with Distributed Datasets
Experienced with a variety of data structures such as time-series, geo-tagged, text, structured, and unstructured.
Additional experience with other languages such as Java, JavaScript, Scala, etc.
Experience with simulations such as Monte Carlo simulation, Gibbs sampling, etc.
Experience with model validation, measuring model bias, measuring model drift, etc.
Experience collaborating with stakeholders from disciplines such as Product, Sales, Finance, etc.
Ability to communicate complex analytical insights in a manner which is clearly understandable by nontechnical audiences.
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.