Part-Time Data Science Trainer (Remote)
Job Description
Learning Saint is hiring an experienced Part-Time Data Science Trainer to deliver live, instructor-led online training to learners from technical and non-technical backgrounds.
This role is ideal for professionals with strong hands-on Data Science experience who are comfortable teaching applied concepts in a structured, academic environment.
Key Responsibilities
• Deliver live online training sessions in Data Science and related technologies
• Teach core concepts using practical, real-world examples and datasets
• Guide learners through hands-on exercises, projects, and assignments
• Conduct doubt-clearing and revision sessions
• Support learners with capstone projects and applied problem-solving
• Maintain course quality, curriculum standards, and session discipline
• Collaborate with the academic team for assessments and learner progress
Required Skills & Qualifications
• Strong hands-on experience in Python and SQL
• Solid understanding of Statistics, Probability, and Linear Algebra
• Experience with Data Analysis, Data Visualization, and Exploratory Data Analysis (EDA)
• Working knowledge of Machine Learning algorithms (Supervised & Unsupervised)
• Experience using libraries such as Pandas, NumPy, Matplotlib, Seaborn, Scikit-learn
• Ability to explain technical concepts clearly to diverse learners
• Prior teaching, mentoring, or corporate training experience preferred
Preferred Qualifications
• Experience working on real-world Data Science or Analytics projects
• Exposure to tools such as Power BI, Tableau, or Excel (advanced)
• Experience with Git/GitHub and project-based learning
• Industry or academic certifications in Data Science or Analytics (optional)
Who Should Apply
• Working professionals with industry Data Science experience
• Trainers, instructors, or mentors with live teaching exposure
• Candidates comfortable conducting live online sessions
• Individuals committed to learner success and academic quality
Work Details
• Mode: Remote (Online)
• Type: Part-Time / Contract
• Schedule: Flexible (as per assigned batches)
Application Process
Interested candidates may apply by submitting their resume.
• Shortlisted candidates will be contacted for an interview and demo session.
Apply tot his job
Apply To this Job