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Webster University

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Missouri

United States

The Master of Science in Data Analytics program at Webster University is designed for individuals who aspire to excel in the increasingly vital field of data analysis. This comprehensive program focuses on providing students with a robust foundation in data analytics, which is not only critical in today’s data-driven environment but also opens the door to numerous career opportunities. By leveraging state-of-the-art technology and methodologies, students are equipped with the skills needed to extract meaningful insights from complex datasets, making them invaluable assets to any organization.

Within the Walker School of Business and Technology, the curriculum is meticulously crafted to cover various aspects of data analytics, including statistical analysis, machine learning, and data visualization. Specific courses such as Data Mining, Data Visualization, and Big Data Technologies allow students to delve deeply into both theoretical concepts and practical applications. The program not only emphasizes analytical techniques but also focuses on developing critical thinking and problem-solving skills, which are essential in navigating the complexities of real-world data scenarios.

The faculty members are a hallmark of Webster University’s Data Analytics program, featuring a blend of experienced professionals and academics renowned for their expertise in the field. Each instructor brings a wealth of knowledge gained from years of research and industry experience, ensuring that students receive high-quality education that is both current and relevant. The teaching methodology is interactive and hands-on, encouraging students to engage actively with the material and apply what they learn in real-time through projects and collaborative assignments.

Additionally, Webster University prides itself on providing ample research opportunities and resources for students. The program encourages students to participate in various research projects, allowing them to work closely with faculty mentors. Resources such as advanced labs, analytics tools, and access to extensive databases enhance the learning experience, enabling students to engage in innovative research that can lead to groundbreaking findings in the field of data analytics.

A significant advantage of the Master of Science in Data Analytics at Webster University is the strong emphasis on industry connections and internship possibilities. The university has established relationships with various organizations, providing students with significant networking opportunities and real-world experience. Internships and cooperative education placements are an integral component of the program, ensuring that graduates are not only academically prepared but also have practical expertise that enhances their employability.

The career pathways that open up for students upon completing this degree are extensive and varied. Graduates have gone on to hold key positions such as Data Scientist, Business Intelligence Analyst, and Machine Learning Engineer. The average base salary for graduates from this program is around $70,000, with many securing reputable positions in leading companies shortly after graduation. The program’s curriculum, combined with Webster’s commitment to student success, facilitates a high employment rate in the data analytics sector.

Alumni success stories are a testament to the effectiveness of the program. Numerous graduates have shared their experiences, highlighting how the skills and knowledge gained at Webster University have significantly advanced their careers. Alumni have praised the program for its rigorous academic standards, supportive faculty, and the real-world skills they acquired, which have propelled them into high-demand roles in various industries.

Unique features that distinguish the Master of Science in Data Analytics at Webster University include its commitment to fostering a diverse learning environment and the opportunity for students to collaborate on interdisciplinary projects. The program accommodates a wide range of backgrounds and perspectives, enriching the learning experience and preparing students to work in diverse teams. Furthermore, the emphasis on collaborative projects allows students to apply their analytical skills in practical settings, enhancing their readiness for the workforce.

Why Study Data Analytics at Webster University

  • A popular choice for international students with a diverse community, fostering a rich exchange of ideas and perspectives.
  • Learn from the best faculty members and become their research assistants, gaining invaluable insights and mentorship.
  • Access to high-end labs and resources to facilitate cutting-edge research work.
  • Excellent placement programs and strong industry connections that enhance job readiness and employment prospects after course completion.
  • A comprehensive curriculum that combines theoretical knowledge with practical applications, ensuring students are well-prepared for the workforce.

Admission to the Master of Science in Data Analytics at Webster University requires a few essential criteria. Prospective students must provide official transcripts, a well-crafted essay, an academic letter of recommendation, and a current resume. Additionally, international applicants are required to demonstrate English proficiency through standardized tests such as the TOEFL, PTE, or IELTS, with specified minimum scores. The program is designed for those who have a passion for data and seeks to enhance their analytical skills in a structured learning environment.

In conclusion, the Master of Science in Data Analytics from Webster University not only equips students with critical analytical skills but also prepares them for successful careers in a rapidly evolving field. With its rigorous curriculum, expert faculty, and supportive environment, this program stands out as a premier choice for anyone looking to make a significant impact in the world of data analytics.

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Duration

36 Months

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Median Salary

$65,000

Class Profile

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Class Size

30

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Average Age

26

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Average Work Experience

3 Years

Diversity

China:

10%

India:

5%

Others:

22%

Canada:

4%

United Kingdom:

3%

United States:

60%

Career Outcomes

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Median Earnings After Graduation

$65,000 / year

Prospective Job Roles

Data Engineer

Data Visualization Specialist

Database Administrator

Big Data Engineer

Data Architect

Actuary

Business Intelligence Analyst

Data Mining Specialist

Data Analyst

Quantitative Analyst

Risk Analyst

Data Scientist

Business Analyst

Operations Research Analyst

Statistician

Research Scientist

Software Engineer

Analytics Manager

Machine Learning Engineer

Top recruiters

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Eligibility Criteria

English Proficiency Tests

  • TOEFL

    80

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  • PTE

    53

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  • IELTS

    6

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Application Requirements

Here's everything you need to know to ensure a complete and competitive application—covering the key documents and criteria for a successful submission.

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    Transcript

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    Essay

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    Interview

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    Academic LOR

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    Resume

Application Deadlines

Fees and Funding

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Tuition Fees

$8,400 / year

Funding Options

External Sources - Scholarships

Department Funding

To apply, submit a complete application for admission within a few weeks of the priority deadline for best results.

Scholarships

The Webster University Data Analytics Scholarship is a merit-based scholarship that is awarded to students who are pursuing a degree in data analytics. The scholarship is worth $5,000 and is renewable for up to four years. To be eligible for the scholarship, students must have a minimum GPA of 3.0 and be a U.S. citizen or permanent resident. They must also be enrolled in a full-time undergraduate program at Webster University. The deadline to apply for the scholarship is March 15th.
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    Webster University

FAQs

  • A student can complete Data Analytics at Webster University with in 36.

  • The application fee to pursue Data Analytics at Webster University is USD 50 for international students.

  • The annual tuition fee to pursue Data Analytics at Webster University is USD 8400.

  • The submission of these scores mainly depends on the type of degree/ course selected at the Webster University. For example, the GMAT test is required to take admission to an abroad graduate management program, the LSAT is required during an abroad Law School admission process, and more. Therefore, check Webster University requirements before submitting a score.

  • Data Analytics can help Indian/ international students gain: 1. Quality and Practical Education 2. Global Recognition 3. International Exposure 4. Amazing Job Opportunities 5. Experience of Lifetime and more

  • If a student fulfils all the eligibility criteria and admission requirements of Webster University, they can easily pursue Data Analytics. The basic eligibility criteria include the following: 1. A GPA above 3 2. Well-written Statement of Purpose 3. An impressive Letter of Recommendation 4. A Work Experience Certificate (if required) 5. A Statement of Financial Proof 6. Academic Transcripts 7. Valid Visa, etc.

  • An MS degree at Webster University can usually be completed in 2 years. However, many universities offer a 1-year master’s specialisation as well. You can explore the official Webster University website to check the course/ degree duration.

  • One can apply for scholarships to pursue their international education at Webster University by: 1. Looking for country-specific scholarships by contacting the specific scholarship institutions. 2. Applying to or finding out if any subject-specific scholarships are available from the university website/ department.

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