Overview
Immerse yourself in the rapidly evolving field of Data Science at Stevens Institute of Technology. Situated in Hoboken, New Jersey, this Doctoral program offers a comprehensive curriculum that integrates statistical, mathematical, and computational methods with domain expertise. Engage with distinguished faculty members who are experts in areas such as machine learning, data mining, and big data analytics. Through collaborative projects and hands-on research, students in this program are equipped to address challenges in industries ranging from finance and healthcare to technology and beyond. Develop a deep understanding of data science methodologies, contribute to advancements in data-driven decision-making, and shape the future of extracting insights from complex datasets. Join a vibrant community committed to pushing the boundaries of data science research, where your contributions can impact diverse fields through data-driven innovation.
Key Features
- Comprehensive Curriculum: Integrate statistical, mathematical, and computational methods with domain expertise.
- Research Opportunities: Engage in cutting-edge projects spanning machine learning, data mining, and big data analytics.
- State-of-the-Art Facilities: Access advanced resources for data analysis and computation.
- Industry Collaboration: Collaborate with professionals to address real-world challenges in data science.
- Expert Faculty: Learn from distinguished professors with diverse expertise in data science.
- Networking Events: Participate in conferences, seminars, and industry forums related to data science.
Programme Structure
Research areas include:
- Machine Learning and Deep Learning
- Data Mining and Knowledge Discovery
- Big Data Analytics
- Natural Language Processing
- Computer Vision
Key information
Duration
- Full-time
- 72 months
Start dates & application deadlines
- Starting
- Apply before
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- Starting
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Language
Delivered
Campus Location
- Hoboken, United States
Disciplines
Data Science & Big Data View 29 other PhDs in Data Science & Big Data in United StatesWhat students do after studying
Academic requirements
English requirements
Other requirements
General requirements
- Online Application
- Transcripts from all post-secondary institutions attended
- Two letters of recommendation (academic or professional only)
- Resume/CV
- Personal Statement
- $60 non-refundable Application Fee
- Proof of English language proficiency
- GRE/GMAT test score(s) (may be waived in certain cases)
- Writing sample
Tuition Fees
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International Applies to you
Applies to youNon-residents45986 USD / year≈ 45986 USD / year - Out-of-State45986 USD / year≈ 45986 USD / year
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Domestic
Applies to youIn-State45986 USD / year≈ 45986 USD / year
Living costs
Hoboken
The living costs include the total expenses per month, covering accommodation, public transportation, utilities (electricity, internet), books and groceries.
Funding
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Scholarships Information
Below you will find PhD's scholarship opportunities for Data Science.
Available Scholarships
You are eligible to apply for these scholarships but a selection process will still be applied by the provider.
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