Data Science Intern

CONNECTMETA.AI
Leeds
1 year ago
Applications closed

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About the Company:

Oeson is a leading IT corporation globally recognized for its expertise in providing top-notch IT and Ed-tech services. Specializing in digital marketing, data science, data analytics, UI-UX design, web development, and app development, we are dedicated to innovation, excellence, and empowering talents worldwide.

Like the look of this opportunity Make sure to apply fast, as a high volume of applications is expected Scroll down to read the complete job description.Learn More:

www.oesonlearning.comJob Summary:Oeson is seeking enthusiastic individuals who are looking to learn with us in the field of Data Science while working on live projects internationally. We are not just offering a flexible work environment but also offering to work with people in a global team.Projects You Will Work On:- Finance Fraud Detection:

Develop advanced fraud detection algorithms leveraging financial data analysis.- Recommender System:

Contribute to personalized recommendation systems, enhancing user experiences across platforms.- Sentiment Analysis:

Explore sentiment analysis to extract insights from textual data, shaping user sentiment understanding.- Chatbots:

Engage in intelligent chatbot development, revolutionizing customer interactions and support.- Image/Audio Video Classification:

Push boundaries with multimedia technology by working on image and audio video classification projects.- Text Analysis:

Uncover hidden patterns in textual data through sophisticated text analysis techniques.Roles & Responsibilities:- Collaborate with our esteemed data science experts to collect, clean, and analyze extensive datasets, honing skills in data preprocessing and visualization.- Contribute to the development of predictive models and algorithms, employing cutting-edge machine learning techniques to solve real-world challenges.- Work closely with team members to design, implement, and evaluate experiments, fostering a collaborative and innovative environment.- Stay updated with the latest industry trends and best practices in data science, applying newfound knowledge to enhance project outcomes.Qualifications:- Currently pursuing any degree showcasing a strong commitment to continuous learning and professional growth.- Exceptional written and verbal communication skills, vital for effective collaboration and articulation of complex ideas.- Demonstrated ability to work both independently and as part of a cohesive team, highlighting adaptability and strong teamwork capabilities.Note:This position is unpaid. After submitting your application, our team will contact you to proceed with the application details and joining process.Location:Remote, Leeds, England, United Kingdom

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