Data Scientist, Machine Learning
United States (remote)
Internal Job Title: Data Scientist I or II
Reports To: Senior Data Scientist
FLSA Status: Hourly, Non-Exempt, Part Time
Location: Remote
External Job Title: Data Scientist, Machine Learning | Part Time
Position Summary
The Data Scientist ML, part time, role will work on training ML models using data pipelines, Extraction Transformation Loading (ETL) processes, and data integration. This role will also deliver excellent customer experience by working directly with clients and customers. The role would need a commitment to 20 hours a week.
Key Responsibilities
Projects involving machine learning (ML) models in applications areas, estimating the performance gain and building a case for further development.
Build machine learning components for the Ever.Ag Data Science application platform.
Help configure and deploy ML models in customer implementations.
Help support pre-existing customer implementations.
Utilize statistical analysis to identify trends in customer and market data.
Collaborate on project data requirements, gather and validate information, and apply judgment and statistical tests to devise problem-solving actions.
Perform tests to ensure the accuracy of the models.
Work with existing tools and modeling techniques to solve the problem at hand. Work with a team of services professionals to deliver high-value products in a Software as a Service (SaaS) environment.
Report to the customer leadership teams on solutions and assist with decision making.
Potential for travel to customer sites.
Other duties as assigned.
Qualifications
Bachelor's or higher degree, preferably master’s or Ph.D., in a relevant field (e.g., Data Science, Computer Science, Engineering, Statistics). PhD candidates welcome.
Typically, 2+ years’ experience in building machine learning and/or forecasting models for academic/enterprise applications.
Experience implementing a breadth of different modelling approaches/ techniques in machine learning.
Experience manipulating and preparing large data sets to support advanced analytics.
Demonstrated ability to iteratively conceptualize, design and build data pipelines.
Hands on experience with common analysis and version control tools (SQL, Python, GitHub).
Demonstrable familiarity with code and programming concepts.
Collaborative, open, and respectful working style.
Familiarity with cloud-based technologies such as AWS is a plus.
Competencies for Success
Excellent written and verbal communication: Presents oneself clearly and articulately when speaking, assuring that others fully comprehend the intended message; Uses appropriate grammar tailored to the audience
Analytical and Critical Thinking: Review and manage data with strong attention to detail; combine facts with likely possibilities; articulate and resolve complex problems
Quality Focused: A recognition of the value of doing things the right way; having a high sense of integrity and thoughtfulness in your actions
Math Ability: Ability to calculate figures and amounts. Ability to work with mathematical concepts such as probability and statistical inference.
Reasoning Ability: Ability to think critically and solve problems with a variety of variables in situations where, at times, only limited standardization exists. The ability to define problems, collect data, establish facts, and draw conclusions. Ability to interpret a variety of technical instructions furnished in written, oral, diagram, or schedule form.
Action Oriented: A bias for action, when you see a problem, you solve it using your technical savvy and internal resources
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: AWS Computer Science CX Data pipelines Engineering ETL GitHub Machine Learning Mathematics ML models PhD Pipelines Python SQL Statistics
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