Data Science Course Fees and Duration

Data Science Course Fees and Duration

Data science course fees and duration vary widely depending on the institute, course type, and mode of learning (online or offline). Here’s a generalized overview:

  • Course Duration
  • (BData science courses can range from short-term certifications (2–6 months) to full-fledged degree programs, such as B.Sc., B.Tech., or M.Sc. in Data Science, which may take 2–4 years. 
  • Course Fees:
    • Basic online self-paced courses can start from ₹30,000 to ₹60,000.
    • Instructor-led online and classroom training programs usually cost between ₹50,000 to ₹1,00,000.
    • Advanced courses with placement support and extensive training can go up to ₹1,50,000 or more.
    • Degree programs (B.Sc., M.Sc., or PG Diplomas) may have annual fees ranging from ₹1,00,000 to ₹3,00,000.
  • Mode of Learning: Courses are available in various formats, including online (self-paced or live instructor-led), classroom-based, and hybrid models.
  • Inclusions: Many programs offer hands-on projects, internship opportunities, placement support, and industry-recognized certifications.

For the most accurate and updated details, checking with individual institutes based on your location and learning preferences is best.

Brolly Academy is a Famous Data Science training institute in Hyderabad, 

  • The mode of Training is online, offline, and Hybrid 
  • 100% Placement Assistance 
  • Interview preparations and Resume preparation guidance

Introduction to Data Science Course Fees and Duration

Data Science is a rapidly growing field that combines statistical analysis, machine learning, and data processing techniques to extract insights from structured and unstructured data. With the increasing demand for data-driven decision-making across industries, data science courses have become highly sought after.

What is a Data Science Course?

A Data Science course is designed to equip learners with the essential skills to analyze and interpret complex data, build predictive models, and solve real-world problems using programming and analytics. These courses cover fundamental concepts such as:

  • Data collection, cleaning, and preprocessing
  • Statistical and mathematical foundations
  • Programming (Python, R, SQL)
  • Machine learning and artificial intelligence
  • Data visualization and storytelling
  • Big data technologies (Hadoop, Spark)
  • Deep learning and neural networks

Who Should Take a Data Science Course?

Data Science courses are ideal for:
  • Beginners interested in data analytics and AI
  • IT professionals looking to switch to data science
  • Business analysts and statisticians
  • Students pursuing careers in technology and analytics
  • Professionals from non-technical backgrounds who want to leverage data science in their domains

Types of Data Science Courses

  1. Certification Courses – Short-term training programs (2–6 months) focusing on practical skills.
  2. Diploma & PG Diploma – 6 months to 1-year programs covering advanced topics.
  3. Degree Programs (B.Sc./M.Sc./MBA in Data Science) – In-depth academic courses spanning 2–4 years.
  4. Specialized Courses – AI, Machine Learning, Business Analytics, and more.

Career Opportunities in Data Science

Upon completing a Data Science course, learners can explore roles such as:

With increasing reliance on data-driven insights, Data Science continues to be one of the most in-demand and lucrative career paths.

Why Choose a Data Science Course?

Data Science is one of the most in-demand and rapidly evolving fields, offering immense career opportunities across various industries. Here are some key reasons why you should consider enrolling in a Data Science course:

1. High Demand for Data Science Professionals

With the growing importance of data-driven decision-making, industries like healthcare, finance, e-commerce, and IT are actively seeking skilled data scientists. The demand for data professionals far exceeds the supply, creating abundant job opportunities.

2. Lucrative Career Opportunities

Data Science offers some of the highest-paying jobs in the tech industry. Salaries for data professionals vary based on experience, skills, and location, but they typically range from ₹6 LPA to ₹25+ LPA in India, with experienced professionals earning even more.

3. Wide Range of Applications

Data Science is not limited to IT and tech companies. It plays a crucial role in fields such as:

  • Healthcare (predicting disease outbreaks, medical diagnosis)
  • Finance (fraud detection, risk analysis)
  • Marketing (customer behavior analysis, targeted advertising)
  • Retail & E-commerce (recommendation engines, demand forecasting)

4. Opportunity to Work with Cutting-Edge Technologies

Data Science integrates advanced technologies like:

  • Machine Learning & AI for automation and predictive analytics
  • Big Data Technologies (Hadoop, Spark) for handling large datasets
  • Cloud Computing (AWS, Azure, GCP) for scalable data processing

5. Career Flexibility & Growth

A Data Science course provides skills that allow professionals to transition between roles such as:

  • Data Scientist
  • Machine Learning Engineer
  • Business Analyst
  • AI Engineer

Additionally, the field offers the flexibility to work in different industries and take up remote or freelance opportunities.

6. Structured Learning & Hands-on Experience

Most Data Science courses include:

  • Real-world projects
  • Industry-relevant case studies
  • Internship opportunities
  • Placement support

This practical experience enhances job readiness and increases employability. 

7. No Strict Background Requirement

Many Data Science courses welcome learners from diverse educational backgrounds, including engineering, mathematics, business, and even non-technical fields. With dedication and the right training, anyone can build a successful career in Data Science.

Types of Data Science Courses

Data Science courses vary based on depth, duration, and learning format. Here’s a breakdown:

1. Certificate Courses (2–6 months)

Ideal for beginners and professionals seeking quick skill upgrades. Covers Python, R, SQL, machine learning, and data visualization. Offered by platforms like Coursera, Udemy, and Simplilearn.
Pros: Short duration, flexible, cost-effective.
Cons: Limited depth, may lack industry recognition.

2. Diploma & PG Diploma Courses (6 months–1 year)

Structured programs offering hands-on training in data analysis, predictive modeling, and AI. Suitable for career transitions.
Pros: More in-depth than certificates, job-focused.
Cons: Can be expensive, not as comprehensive as a degree.

3. Degree Programs (Bachelors & Masters) (1–4 years)

Comprehensive academic programs like B.Sc., M.Sc., B.Tech., and MBA in Data Science. Offered by institutions like IITs, NMIMS, and global universities.
Pros: Strong foundation, better job prospects.
Cons: Time-consuming, costly.

4. Online vs. Offline Courses

  • Online: Flexible, affordable, and access to global experts, but requires self-discipline.
  • Offline: Structured learning, better networking, but less flexible and costlier.

Data Science Course Duration

The duration of Data Science courses varies based on the depth of learning, course type, and mode of study. Here’s a breakdown:

1. Short-Term Certification Programs (2–6 months)

These are ideal for beginners or professionals looking for a quick skill upgrade. They focus on Python, machine learning, data visualization, and basic analytics. Offered by platforms like Coursera, Udemy, and Simplilearn.

  • Best For: Quick upskilling, career enhancement.
  • Pros: Affordable, flexible, hands-on learning.
  • Cons: Limited depth, may not be sufficient for advanced roles.

2. Diploma & Advanced Diploma Courses (6 months–1 year)

These courses provide structured, practical training in data analytics, AI, and big data. They are suitable for career transitions and mid-level professionals.

  • Best For: Those looking for a job-oriented program.
  • Pros: More in-depth than certificates, industry-focused.
  • Cons: It can be expensive and not as comprehensive as a degree.

3. Undergraduate & Postgraduate Programs (1–4 years)

B.Sc., B.Tech., M.Sc., MBA, and PG Diplomas in Data Science cover theoretical and practical aspects in depth. These programs are offered by universities like IITs, NMIMS, and foreign institutions.

  • Best For: Students seeking a strong foundation in Data Science.
  • Pros: Comprehensive learning, better job prospects.
  • Cons: Time-consuming, requires significant investment.

4. Self-Paced Online Learning (Flexible duration)

Online platforms offer self-paced Data Science courses, allowing learners to progress at their convenience. Duration varies from weeks to months based on commitment.

  • Best For: Working professionals, independent learners.
  • Pros: Highly flexible, affordable, access to global instructors.
  • Cons: Requires self-discipline, and limited networking opportunities.

Data Science Course Fees in India

The cost of Data Science courses in India varies based on the course type, institute, and mode of learning. Below is a breakdown of the approximate fees:

1. Fees for Certification Courses (₹30,000 – ₹1,00,000)

Short-term certification programs, available online and offline, focus on essential skills like Python, SQL, and machine learning. Popular providers include Coursera, Udemy, and Simplilearn.

  • Affordable options: ₹30,000 – ₹50,000 (self-paced)
  • Premium courses: ₹50,000 – ₹1,00,000 (instructor-led, with placement support)

2. Fees for Diploma & PG Diploma Courses (₹50,000 – ₹2,00,000)

Diploma and PG Diploma courses offer structured training with real-world projects and placement assistance. Institutes like Great Lakes, IIIT-B, and UpGrad offer these programs.

  • Basic Diploma: ₹50,000 – ₹1,00,000
  • Advanced PG Diploma: ₹1,00,000 – ₹2,00,000

3. Fees for Undergraduate & Master’s Programs (₹1,00,000 – ₹10,00,000)

B.Sc., B.Tech., M.Sc., and MBA programs in Data Science are available at universities like IITs, NMIMS, and private institutions.

  • B.Sc./B.Tech. in Data Science: ₹2,00,000 – ₹10,00,000 (3–4 years)
  • M.Sc./M.Tech./MBA in Data Science: ₹1,00,000 – ₹6,00,000 (1–2 years)

4. Comparison of Online vs Offline Course Fees

  • Online Courses: ₹30,000 – ₹3,00,000 (flexible, self-paced or instructor-led)
  • Offline Classroom Courses: ₹50,000 – ₹10,00,000 (structured, interactive, better networking)

Factors Affecting Data Science Course Fees

Several factors influence the fees of Data Science courses. Below are the main aspects that determine the cost:

1. Institution & Course Provider

Reputed institutions, universities, and well-known course providers tend to charge higher fees due to their brand value, faculty expertise, and industry recognition. Courses offered by prestigious institutes like IITs, IIITs, and top global universities generally have higher fees. Similarly, well-established platforms like Simplilearn, UpGrad, and Coursera might also charge premium prices for their certifications.

2. Mode of Learning (Online vs Classroom)

  • Online Courses: Typically more affordable due to lower overhead costs (no physical infrastructure, fewer instructors). Self-paced courses are often cheaper, while instructor-led online courses with live sessions can cost more.
  • Classroom Courses: These are usually more expensive because of the costs associated with venue rental, in-person instructors, and other logistical expenses. Classroom-based learning may offer more direct interaction with peers and instructors, which can justify the higher price.

3. Curriculum & Additional Resources

The depth and comprehensiveness of the curriculum significantly impact course fees. Advanced programs covering topics like deep learning, AI, big Data Analytics, and specialized areas may come at a higher cost. Additionally, courses that include extra resources such as access to industry-specific datasets, tools, software, and specialized labs also tend to have higher fees.

4. Placement Assistance & Certification

Courses offering placement support, job guarantees, or internship opportunities often come with a higher price tag. These services are typically included in premium programs that provide career coaching, resume building, interview preparation, and direct connections with hiring companies. Certification from a recognized body or university can also add to the cost, especially if the certificate has industry recognition or is from a prestigious institution.

Best Institutes for Data Science in India: Brolly Academy

Brolly Academy is a leading training institute in India, offering top-quality Data Science programs designed to equip students with the skills needed to excel in this fast-growing field. Known for its comprehensive curriculum and hands-on training, Brolly Academy caters to individuals at various stages of their career, from beginners to professionals looking to upskill.

Why Choose Brolly Academy for Data Science?

  • Industry-Relevant Curriculum: Brolly Academy’s Data Science courses cover core topics such as Python programming, machine learning, data visualization, and big data analytics, designed to meet current industry demands.
  • Practical Learning: The academy emphasizes hands-on learning through real-world projects, case studies, and internships, ensuring students gain practical experience alongside theoretical knowledge.
  • Experienced Faculty: Brolly Academy boasts a team of experienced instructors who bring valuable industry experience and insights into the classroom.
  • Flexible Learning Options: With both online and offline modes of learning, Brolly Academy offers flexibility to students, making it easier to balance studies with work commitments.
  • Placement Support: Brolly Academy provides dedicated placement assistance, helping students connect with leading companies in the Data Science and tech industries.

ROI (Return on Investment) of a Data Science Course

Investing in a Data Science course offers high potential returns, given the growing demand for data-driven professionals across industries. Here’s a look at the ROI:

1. Job Opportunities & Career Growth

The data science field is expanding rapidly, with companies in finance, healthcare, e-commerce, and technology increasingly relying on data-driven decisions. By acquiring skills in machine learning, artificial intelligence, and data analytics, a Data Science course equips you for high-demand roles. This demand drives job stability and long-term career growth.

2. Salary Potential

Data Science professionals command competitive salaries due to the technical expertise required. In India, the average salary for entry-level roles starts high compared to other sectors, and with experience, the earning potential grows significantly.

3. Skill Development & Industry Recognition

Completing a Data Science course enhances your skills and industry credibility. It boosts employability and opens doors to global opportunities, making the investment worthwhile in the long term.

Career Opportunities After Completing a Data Science Course

Upon completion of a Data Science course, you can pursue various career paths across industries. Some of the most common roles include:

  • Data Scientist
  • Machine Learning Engineer
  • Data Analyst
  • Data Engineer
  • Business Intelligence Analyst
  • AI Specialist
  • Quantitative Analyst (in finance)
  • Data Science Consultant

These roles exist in a variety of sectors including healthcare, finance, retail, technology, and government, offering a broad spectrum of career opportunities.

Average Salary of a Data Scientist in India

The salary of a Data Scientist in India varies depending on experience, location, and job role. However, here are some rough estimates:

  • Entry-Level (0-2 years): ₹6,00,000 – ₹10,00,000 per annum
  • Mid-Level (3-5 years): ₹10,00,000 – ₹18,00,000 per annum
  • Senior-Level (5+ years): ₹18,00,000 – ₹30,00,000+ per annum

Top tech hubs like Bangalore, Hyderabad, and Pune tend to offer higher salaries.

How to Choose the Right Data Science Course?

Choosing the right Data Science course can be crucial for your career, as it impacts the skills you acquire and your future opportunities. Here are some key factors to consider:

1. Course Content and Curriculum

Make sure the course covers essential topics like Python, machine learning, data visualization, and statistical analysis. The curriculum should also be up-to-date with the latest trends in Data Science, such as Deep Learning, AI, and big data analytics.

2. Mode of Learning (Online vs Offline)

Decide whether you prefer learning in a structured classroom setting (offline) or a flexible, self-paced online course. Online courses are often more affordable and convenient, while offline courses can offer direct interaction with instructors and peers.

3. Instructor Expertise

Look into the qualifications and industry experience of the instructors. Experienced instructors with a strong industry background are more likely to offer practical insights and real-world applications, enhancing your learning experience.

4. Placement Assistance & Career Support

Choose a course that provides placement support, internships, or career coaching. Many institutes and platforms offer dedicated support for job placements, resume building, and interview preparation, which can be crucial in landing your first job.

5. Reviews & Testimonials

Check reviews and testimonials from past students. They can provide valuable insights into the course quality, content, teaching methods, and post-course support.

6. Certification and Accreditation

Make sure the course provides a certificate upon completion, especially if it’s recognized by industry leaders or universities. Accredited courses can add more value to your resume and career.

Things to Consider Before Enrolling

Before committing to a Data Science course, consider the following:
  • Your Career Goals: Are you looking to switch careers, upskill, or gain deeper expertise? Choose a course that aligns with your career goals and desired learning outcomes.
  • Time Commitment: Data Science is a complex field that requires significant time and effort. Ensure you can dedicate the time needed to complete the course successfully.
  • Budget: Consider your budget and whether the course offers good value for the fee. Higher-cost courses may offer more features, but affordable options can still provide great content.
  • Prerequisites: Some courses require prior knowledge of programming or mathematics. Check the prerequisites to ensure you’re prepared for the course content.

Free vs Paid Data Science Courses

1. Free Courses

  • Pros:
    • No financial commitment.
    • Great for beginners to explore the basics of Data Science.
    • Available on platforms like Coursera, edX, and YouTube.
  • Cons:
    • Limited content depth, often not comprehensive.
    • Lacks structured support and career services.
    • May not provide certification or recognition.

2. Paid Courses

  • Pros:
    • Comprehensive and in-depth content, with advanced topics.
    • Structured learning paths, assignments, and real-world projects.
    • Certification and job placement support.
  • Cons:
    • Higher cost, which might not be affordable for everyone.
    • May require a longer time commitment.

Data Science Course Fees and Duration

Conclusion: Is a Data Science Course Worth It?

Yes, a Data Science course can be a highly valuable investment for your career, depending on your goals and commitment. Here’s why:

1. High Demand for Data Science Professionals

Data Science is one of the fastest-growing fields, with a wide range of industries — from healthcare to finance — relying on data-driven insights. Completing a course in Data Science opens doors to multiple career opportunities, such as Data Scientist, Machine Learning Engineer, and AI Specialist. This demand ensures job security and long-term career growth.

2. Competitive Salaries

Data Science professionals command attractive salaries. Entry-level salaries are often higher than many other technical fields, and as you gain experience, your earning potential increases significantly. A course in Data Science equips you with the skills necessary to enter this lucrative job market.

3. Skill Development & Versatility

A Data Science course equips you with highly sought-after skills such as programming, machine learning, statistical analysis, and data visualization. These skills are not only applicable to Data Science roles but also transferable to various other sectors like business analytics, artificial intelligence, and software development.

4. Career Advancement

For professionals looking to transition into a Data Science career, these courses offer practical, industry-relevant knowledge that can help facilitate a smoother transition. Many courses also offer placement support and career coaching to help you land your first job in the field.

5. Cost vs. Return on Investment

While Data Science courses can be costly, the return on investment is significant. The skills you gain can lead to better job prospects, higher salaries, and career advancement. When you compare the cost of a course to the salary potential and career opportunities in Data Science, it often proves to be a worthwhile investment.

Final Thought

If you’re passionate about working with data, solving complex problems, and entering a high-growth, high-paying industry, a Data Science course is definitely worth it. The skills you develop will not only enhance your career prospects but also empower you to contribute meaningfully in the data-driven world of today.

Data Science Course Fees and Duration

FAQ’s

1. How long is the Data Science course?

The duration of a Data Science course can vary depending on the type of program you choose:

  • Short-term certification courses: Typically 1-3 months
  • Diploma & PG Diploma courses: 6 months to 1 year
  • Undergraduate & Master’s programs: 2-4 years
  • Self-paced online courses: Flexible, you can learn at your own pace

The fee for a Data Science degree program (such as B.Tech or M.Tech) in India typically ranges from:

  • Undergraduate degree (B.Tech): ₹2,00,000 – ₹10,00,000 per year
  • Master’s degree (M.Tech): ₹2,00,000 – ₹10,00,000 per year These fees can vary based on the institution and its location.

Yes, Data Science salaries are relatively high due to the technical expertise required in this field. The average salary in India for a Data Scientist is:

  • Entry-level (0-2 years): ₹6,00,000 – ₹10,00,000 per annum
  • Mid-level (3-5 years): ₹10,00,000 – ₹18,00,000 per annum
  • Senior-level (5+ years): ₹18,00,000 – ₹30,00,000+ per annum

Salaries can vary depending on location, experience, and the company.

It is possible to get a basic understanding of Data Science within 3 months, especially if you focus on core concepts like Python programming, basic machine learning, and data visualization. However, mastering Data Science requires more time, as the field involves continuous learning and practice. You can start with a short-term certification course and expand your knowledge over time.
Data Science can be challenging, especially if you’re new to programming or statistics. However, with consistent effort and proper guidance, the complexity can be managed. Courses are designed to break down the subject into manageable concepts, and many resources are available to support learners along the way.

The fee for a Data Science course varies based on the course type and provider:

  • Certification courses: ₹30,000 – ₹1,00,000
  • Diploma & PG Diploma courses: ₹50,000 – ₹2,00,000
  • Undergraduate & Master’s programs: ₹1,00,000 – ₹10,00,000

Fees can also depend on whether the course is online or offline and the institution’s reputation.

Yes, Data Science jobs are in high demand across industries like finance, healthcare, and technology. The growth of AI, machine learning, and big data ensures continued demand for skilled professionals.

Prerequisites include a basic understanding of:

  • Mathematics & Statistics
  • Programming (Python/R)
  • Data Handling & Visualization
  • Machine Learning
  • Database Knowledge (SQL)

These can be learned through courses, and many programs cater to beginners.

Top sources include:

  • Online Platforms: Coursera, edX, Udemy, DataCamp
  • Books: “Python for Data Analysis”, “Hands-On Machine Learning”
  • Institutes: Brolly Academy, IITs, IIITs, Great Lakes

Choose based on your preferred learning style.

Popular Data Science communities:

  • Stack Overflow (for programming help)
  • Kaggle (competitions and discussions)
  • Reddit: r/datascience, r/MachineLearning
  • Towards Data Science (on Medium)
  • LinkedIn Groups (Data Science-focused groups)

These platforms offer valuable insights, networking, and learning opportunities.

Enroll for Data Science Free Demo Class

*By filling the form you are giving us the consent to receive emails from us regarding all the updates.

Enroll for Course Free Demo Class

*By filling the form you are giving us the consent to receive emails from us regarding all the updates.