Pay Rate: $20.00 to a maximum of $25.00 Per Hour.
Position Purpose:
A Data Science Intern assists with analyzing large data sets to derive actionable insights and supports the development of machine learning models while gaining handson experience in applying data science techniques in a realworld business context.
Student Exploration and Experience Development (SEED) is a 12week internship opportunity at Veolia for students to gain handson experience in sustainability and ecological transformation. They will work on realworld projects receive mentorship from industry professionals and participate in workshops and networking events. The program aims to nurture talent promote innovation and foster meaningful connections between students and industry professionals. Overall the SEED program provides students with the skills knowledge and connections needed to make a positive impact in the industry.
Program Dates: June 2 2025 to August 22 2025.
Primary Duties/Responsibilities:
- Analyze and interpret complex datasets to extract meaningful insights aiding in datadriven decision making.
- Develop and implement machine learning models and algorithms to solve specific business problems enhancing operational efficiency.
- Clean preprocess and validate data to ensure accuracy completeness and uniformity for effective analysis.
- Collaborate with crossfunctional teams to understand business needs and provide datadriven recommendations and solutions.
- Prepare and present reports on findings and model outcomes to both technical and nontechnical stakeholders clearly communicating insights and implications.
Qualifications :
Education/Experience/Background:
- MS degree in Computer Science or computer related field from an accredited institution.
Knowledge/Skills/Abilities:
Skills:
- Experience developing with Python.
- Experience with SQL development.
- Good experience with Git.
- Understanding of machine learning algorithms including both supervised (like linear regression decision trees) and unsupervised learning (like clustering principal component analysis).
- Strong foundation in statistics and mathematics essential for understanding data distributions hypothesis testing and the mathematical underpinnings of machine learning algorithms.
- Skills in cleaning manipulating and preprocessing data using tools and techniques to handle missing values outliers and data transformation.
- Proficiency in data visualization tools (like Matplotlib Seaborn Plotly in Python) to present data findings effectively.
Abilities:
- Embrace mentorship through design sessions code reviews and community building.
- Strong analytical and problemsolving skills with the ability to work with large data sets and derive insights.
- Ability to translate realworld problems into analytical questions and devise datadriven solutions.
- Capabilities in conducting statistical tests and experiments to derive insights and validate models.
- The ability to critically evaluate data sources models and outcomes considering biases and assumptions.
- Good verbal and written communication skills as the role may involve presenting findings and collaborating with team members.
- A keen interest in data science and machine learning with a willingness to continuously learn and stay updated with industry trends and technologies.
Physical Requirements:
- Hybrid mode 3 days a week in the office).
Additional Information :
We are an Equal Opportunity Employer! All qualified applicants will receive consideration for employment without regard to race color religion sex sexual orientation gender identity national origin disability or protected veteran status.
Disclaimer: The salary other compensation and benefits information is accurate as of the date of this posting. The Company reserves the right to modify this information at any time subject to applicable law.
Remote Work :
No
Employment Type :
Fulltime