Refonte Learning | AI & Data Science Internship

Refonte Learning
Leeds
4 months ago
Applications closed

AI & Data Science Intern (Remote – United Kingdom)

Company: Refonte (Refonte AI)


Are you driven by curiosity about artificial intelligence and data science? Do you want to work on real-world projects that have a meaningful impact? JoinRefonte AI, a globally recognized leader in IT and Ed-tech, as anAI & Data Science Internand take the first step in your career within an innovative and supportive environment.


Learn More: https://refontelearning.com/


About Refonte AI

Refonte AI is a leader in IT and educational technology, specializing in advanced digital solutions across AI, data science, digital marketing, UI/UX design, web and app development, and more. We are committed to fostering innovation, achieving excellence, and empowering the next generation of tech talent through immersive, hands-on experience.


Why Join Us?

OurGlobal Training & Internship Program (RGTIP)provides you with real-world experience in a flexible, remote setting. As an AI & Data Science Intern, you’ll collaborate with a diverse, global team and gain exposure to cutting-edge AI and data science methodologies. This is an ideal opportunity to build your skills and make a significant impact.


What’s in It for You?

  • Hands-On Experience: Work on impactful AI and data science projects that add value to real business scenarios.
  • Skill Development: Enhance your knowledge in machine learning, data modeling, and data visualization tools like Python, TensorFlow, and Tableau.
  • Global Networking: Connect with data professionals and interns from around the world.
  • Mentorship: Receive guidance from industry experts committed to your learning journey.
  • Remote Flexibility: Work from anywhere in the UK, balancing your internship with other commitments.


Internship Overview

This program is structured to help you grow from foundational skills to advanced applications in AI and data science. You’ll work on a variety of projects, gaining hands-on experience and developing your ability to make data-driven decisions.


Projects You’ll Work On

  • Predictive Modeling: Build machine learning models to forecast business outcomes, using advanced algorithms and data-driven strategies.
  • Natural Language Processing (NLP): Explore NLP techniques to analyze and gain insights from textual data.
  • Image Recognition: Develop and refine image recognition models for real-world applications.
  • Recommendation Systems: Work on creating recommendation algorithms to enhance user experience in various applications.
  • Data Visualization: Use tools like Tableau and Python to visualize data and present actionable insights.


Roles & Responsibilities

As an AI & Data Science Intern, you will:

  • Collaborate with data scientists to collect, preprocess, and analyze datasets, gaining hands-on experience with large-scale data.
  • Use Python and machine learning libraries such as TensorFlow and scikit-learn to develop and test models.
  • Apply machine learning algorithms to practical business problems, including predictive analysis and classification tasks.
  • Experiment with NLP and image recognition techniques, understanding their applications and limitations.
  • Create compelling visualizations and reports to communicate data insights effectively.
  • Work closely with cross-functional teams to identify AI opportunities and provide data-driven solutions.


Qualifications

  • Currently pursuing or recently completed a degree in Data Science, Computer Science, AI, or a related field.
  • Strong programming skills, especially in Python, with familiarity in libraries such as TensorFlow, scikit-learn, and Pandas.
  • Knowledge of machine learning algorithms, data preprocessing, and model evaluation.
  • Excellent written and verbal communication skills for articulating complex concepts.
  • Ability to work independently and collaboratively within a remote team environment.


Additional Information

This is an unpaid internship under ourAI & Data Science Training & Internship Programwithin RGTIP. Our team will provide further details on the application process and onboarding after you apply.


Learn More: https://refontelearning.com/


Location

Remote (UK-based applicants preferred)


Thank you for considering Refonte AI as a launchpad for your career in AI and data science. We look forward to welcoming you to our innovative team!

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