-
08:30 - 12:30 CDT 3 sessions
- May
- Sat30
- Sun31
- Jun
- Sat06
-
22:30 - 02:30 CDT 3 sessions
- Jun
- Fri26
- Sat27
- Jul
- Fri03
-
08:30 - 12:30 CDT 3 sessions
- Jul
- Sat25
- Sun26
- Aug
- Sat01
Earn an industry-recognized Data Science Master’s certificate from Simplilearn
Learn through an AI-driven curriculum covering Python, SQL, advanced statistics, ML,DNNs and more
Strengthen your expertise in GenAI, LLMs, RAG, MLOps, Fabric ML, Azure ML and PowerBI with AI integration
Gain live, interactive guidance from industry experts across modules
Build hands-on proficiency with leading data science tools, ML frameworks, and AI-driven tools
Capstone from 3 domains and 15+ projects
Get lifetime access to self-paced learning resources for continuous skill growth
Program crafted to initiate your journey as a Data Scientist
Integrated labs for hands-on learning experience
View More
View Less
Can't find convenient schedule? Let us know
View More
View Less
View More
View Less
View More
View Less
View More
View Less
View More
View Less
Can't find convenient schedule? Let us know
View More
View Less
Can't find convenient schedule? Let us know
By the end of this data science course, participants will have mastered a robust set of over 15 technical and analytical skills that are essential for a successful career in the field. The curriculum is structured to build competencies that range from foundational data handling to advanced machine learning and AI implementation, preparing graduates for diverse and complex challenges.
The Data Scientist Capstone project is the final, summative component of the program where learners apply the full spectrum of skills they have acquired to solve a real-world data science problem. It is critically important because it serves as a bridge between academic learning and professional practice, allowing learners to demonstrate their expertise to potential employers through a tangible and comprehensive piece of work.
The curriculum provides hands-on experience with a comprehensive suite of more than 14 of the most prominent tools and programming languages used in the data science industry today. The selection is designed to ensure learners gain proficiency not just in one area, but across the entire data science stack, from data processing and analysis to machine learning and visualization.
Programming languages such as Python, which are the cornerstones of data science and statistical computing.
Essential Python libraries for data manipulation and scientific computing, including pandas, NumPy, SciPy, Scikit-Learn, and Matplotlib.
Database management with MySQL, a critical skill for handling and querying structured data.
Leading data visualization and business intelligence tools, specifically Tableau and Microsoft Power BI, for creating interactive dashboards.
Generative AI platforms and models, including practical experience with ChatGPT and DALL-E.
Data analysis and spreadsheet tools like Microsoft Excel, which are fundamental in many business contexts.
This data science course is a comprehensive 11-month professional program delivered in collaboration with Microsoft Azure. It transforms you into a job-ready professional by teaching you how to extract actionable insights from complex data.
You will acquire advanced skills in Generative AI, Machine Learning, and MLOps while mastering fundamental tools such as Python, SQL, and Power BI. The curriculum ensures you can use the latest data-driven technologies to address real-world business challenges by combining theoretical knowledge with over 15 industry projects and a capstone from three domains.
This Data Science Course is a comprehensive online program designed in collaboration with IBM to provide aspiring professionals with the skills required for a successful career in data science. It is a structured learning path that covers foundational to advanced topics, including Python, Machine Learning, SQL, and Generative AI, emphasizing hands-on experience and practical application.
Data science is an interdisciplinary field that uses scientific methods, processes, algorithms, and systems to extract knowledge and insights from structured and unstructured data. A data scientist gathers, processes, and analyzes large datasets to identify trends, make predictions, and provide actionable insights that help organizations make smarter, data-driven decisions.
Completing this program offers significant career advantages by providing a powerful combination of in-demand technical skills, industry-recognized credentials, and a deep understanding of practical business applications. It is designed to position graduates for leadership roles in the data-driven economy by making them highly valuable assets to any organization.
Instructors for this data science course are selected through a rigorous process designed to ensure they are not only subject matter experts but also effective educators with significant real-world experience. The goal is to provide learners with instruction from industry practitioners who can bridge the gap between academic theory and practical application.
The admission process is designed to be straightforward and efficient, consisting of three simple steps to ensure that all interested and qualified candidates can apply and enroll smoothly. The process allows the admission panel to select candidates who are best suited for the program's rigorous curriculum.
Graduating from this data science course significantly boosts your earning potential in both the Indian and US markets. In 2026, the surge in AI adoption has kept salaries for data-driven roles at record highs.
The median base pay for a Data Scientist is $154K per year, with total compensation reaching $198,000 at top-tier firms (Source: Glassdoor).
The career path for a data scientist is not strictly linear and can branch in many directions, but it typically progresses from junior roles focused on technical execution to senior roles involving strategy, leadership, and complex problem-solving. Career growth often depends on a combination of technical skills, business acumen, and leadership capabilities.
The program is designed with flexibility to accommodate the schedules of busy working professionals. Missing an occasional live class will not negatively impact a learner's ability to complete the course, thanks to the "Flexi-learn" feature.
Yes, a recent graduate can significantly benefit from this data science course, as it is designed to impart the specific, job-ready skills that employers are seeking for entry-level positions. While work experience is preferred, the program's hands-on, project-based curriculum provides the practical experience needed to bridge the gap between academic knowledge and industry requirements.
Graduates with a comprehensive data science skill set are in high demand across nearly every major industry sector, as organizations increasingly rely on data to drive decisions. Top technology and multinational corporations are actively recruiting professionals with the skills taught in this program.
A refund policy is in place that allows for enrollment cancellation if a learner's circumstances change. The policy is structured to be clear and straightforward.
Simplilearn for Business works with Fortune 500 and mid-sized companies to provide their work talent with digital skills solutions for development. We offer diverse corporate training solutions, from short skill-based certification training to role-based learning paths. We also offer Simplilearn Learning Hub+ - a learning library with unlimited live and interactive solutions for the entire organization. Our curriculum consultants work with each client to select and deploy the learning solutions that best meet their teams’ needs and objectives.
The program is structured as a comprehensive learning path that takes learners through core foundational skills before moving to advanced topics and practical application. The total program duration is 11 months, with a format of live, online, interactive classes designed to accommodate working professionals while providing a structured and engaging schedule.
This program's blended learning model is fundamentally different from purely self-paced Massive Open Online Courses (MOOCs) because it is designed to maximize learner engagement, completion rates, and practical skill acquisition. It integrates the structure and support of traditional education with the flexibility of online learning, addressing the common issue of learner isolation found in self-paced formats.
Upon successful completion of this program, learners will possess a comprehensive and practical skill set that enables them to tackle complex data science challenges. The outcomes are focused on job-readiness, ensuring graduates can not only understand theoretical concepts but also apply them effectively using industry-standard tools and techniques to drive business value.
The curriculum provides hands-on experience with a comprehensive suite of more than 14 of the most prominent tools and programming languages used in the data science industry today. The selection is designed to ensure learners gain proficiency not just in one area, but across the entire data science stack, from data processing and analysis to machine learning and visualization.
The program integrates Generative AI, Prompt Engineering, and ChatGPT as a core component of its modern curriculum, recognizing their transformative impact on the data science field. This is addressed through a dedicated elective course and is woven into live interactive sessions, ensuring learners are proficient in these cutting-edge technologies.
The curriculum includes over 25 hands-on projects designed to provide practical experience across a variety of industries and business functions. These projects are not simple exercises but are structured to simulate real-world data science tasks, requiring learners to apply their skills to analyze data, build models, and generate actionable insights.
This data science certification is designed to prepare professionals for a wide range of roles within the data ecosystem. By providing a comprehensive curriculum that covers everything from data analysis and engineering to advanced machine learning, the program opens doors to numerous career opportunities in a rapidly growing field.
Yes, we provide dedicated career services as part of this program to help learners translate their newly acquired skills into tangible career outcomes. While it is not a direct job placement program, the support is structured to help graduates get noticed by top hiring companies and effectively navigate the job search process.
Yes, flexible financing options are available to make the program more accessible and allow learners to manage the investment in their education. These options are provided through established third-party partners and are designed to offer manageable payment plans instead of requiring a single, upfront payment.
The program includes a comprehensive, multi-channel support system designed to ensure learners have the assistance they need to succeed at every stage of their learning journey. This high-touch support model is a key feature that helps maximize completion rates and ensures a smooth and effective educational experience.
While these roles are related and often overlap, they focus on different aspects of the data life cycle and require distinct skill sets. A data analyst focuses on interpreting past data, a data scientist focuses on predicting future outcomes, and a machine learning engineer focuses on deploying predictive models at scale.
Data science is critically important in 2026 because organizations across every industry now recognize that data is one of their most valuable assets. The ability to effectively analyze this data provides a significant competitive advantage, enabling companies to optimize operations, understand customers, and innovate faster than their competitors.
Choosing the right online data science course requires evaluating several key factors to ensure the program aligns with your career goals and provides a genuine return on investment. The best courses offer a balance of a comprehensive curriculum, expert instruction, practical experience, and credible certification.
An Industry-collaborated data science certification, or one from a program with Microsoft, often carries more weight and value in the job market than a certificate from a standalone, non-accredited bootcamp. This is because the established brand provides a powerful signal of academic rigor, quality, and credibility to employers, which can be a significant differentiator in a competitive field.
Hands-on projects and a capstone are critically important and are often the most valuable components of a data science education. They are essential for bridging the gap between theoretical knowledge and practical application, which is what employers value most. A strong portfolio of project work is concrete proof that you can do the job.
Choosing between live online classes and self-paced video courses depends on your learning style, discipline, and career goals. Live classes offer structure and interaction, which is crucial for complex subjects like data science, while self-paced courses offer maximum flexibility.
The rise of Generative AI is significantly impacting the role of a data scientist, shifting it from a primary focus on building predictive models from scratch to a more strategic role involving the fine-tuning, implementation, and ethical oversight of powerful foundation models. It is augmenting the data scientist's capabilities rather than replacing them.
The data science job market in 2025 is being shaped by several major trends, primarily driven by progress in AI and the increasing need for specialized, business-focused data expertise. Professionals who stay ahead of these trends will be the most sought-after in the coming years.
Data scientists are in demand across nearly every sector of the economy, but several industries are leading the way in actively hiring for these roles due to the massive volume of data they generate and the potential for data-driven optimization and innovation.
While advanced degrees like a Master's or Ph.D. were once considered almost mandatory for data scientist roles, the industry landscape has evolved. Today, it is not strictly necessary, as many companies now prioritize demonstrated skills, practical project experience, and industry-recognized certifications over purely academic credentials.
Building a strong data science portfolio is one of the most effective ways to demonstrate your skills and stand out to employers. A good portfolio goes beyond listing skills on a resume and provides concrete evidence of your ability to handle data, build models, and communicate insights, which you can achieve through structured learning and personal initiative.
Data science interviews are typically rigorous and multi-faceted, testing technical knowledge, problem-solving skills, and business acumen. Avoiding common mistakes can significantly increase your chances of success. Many candidates falter not on complex algorithms, but on the fundamentals of communication and practical application.
Domain knowledge, a deep understanding of the specific industry or field in which you are working, such as finance, healthcare, or retail, is extremely important for a data scientist. While technical skills are the foundation, domain knowledge is what allows a data scientist to ask the right questions, understand the nuances of the data, and translate analytical results into actionable business insights.
Supervised, unsupervised, and reinforcement learning are the three main paradigms of machine learning, and they differ primarily in the type of data they use and the problems they are designed to solve. This program covers both supervised and unsupervised learning models in depth.
SQL (Structured Query Language) remains a critical and non-negotiable skill for data scientists, even with the rise of Big Data technologies and NoSQL databases. The vast majority of the world's valuable business data is still stored in relational databases, and SQL is the universal language for accessing and manipulating that data.
A beginner should approach learning Python for data science in a structured, step-by-step manner that builds from core programming concepts to specialized data analysis libraries. An effective learning path, like the one in this program, starts with the fundamentals before moving to application.
Data storytelling is the practice of communicating the insights from data analysis through a compelling and easy-to-understand narrative. It is a crucial skill because it is the bridge between technical analysis and business action. Without a clear story, even the most brilliant analytical findings will fail to have an impact.
While it is challenging to get a data science job without any background in mathematics and statistics, you do not necessarily need a formal degree in these fields. What is required is a solid, practical understanding of the core concepts that underpin data analysis and machine learning.
Yes, many of our online bootcamps, professional certificates, and advanced training modules are structured to satisfy the requirements of US employer tuition reimbursement/tuition assistance programmes.
A data science certification course can help you get into in-demand roles such as:
These roles are sought after across industries like finance, healthcare, e-commerce, and technology, where organizations need experts to turn raw data into strategic insights.
Earn your Data Science course certificate
Our course is exhaustive and this Data Science certification is proof that you have taken a big leap in mastering the domain.
Differentiate yourself with a Masters Certificate
The knowledge and Data Science skills you've gained working on projects, simulations, case studies will set you ahead of the competition.
Share your achievement
Talk about your Data Science certification on LinkedIn, Twitter, Facebook, boost your resume, or frame it - tell your friends and colleagues about it.
The program helped me build a strong understanding of data science and machine learning, even coming from a non-technical background. It gave me the confidence to engage in technical discussions, guide my team better, and apply data-driven thinking in both research and leadership
Read more Read lessThe Data Scientist course was a great learning experience. The instructors explained concepts clearly, and the hands-on projects made it easy to apply what I learned. The content was also very helpful. Overall, it helped me build confidence in my data science skills.
Read more Read lessThe course was very practical and helped me look at data beyond traditional Excel. It improved how I analyze and visualize data, making my day-to-day work more efficient and saving time. The skills I gained also expanded my scope at work and contributed to my promotion.
Read more Read lessThe program provided valuable exposure to core data science concepts and tools, helping me strengthen my understanding of Python and analytics. Working on practical assignments and projects allowed me to apply my learning effectively and build greater confidence in using data science techniques in real-world scenarios.
Read more Read lessThe program gave me the opportunity to explore data science in depth and strengthen my understanding of key concepts such as Python, statistics, data analysis, and machine learning. It helped me build a new set of analytical skills that I can apply in my current role while also preparing myself for future opportunities in the data science field.
Read more Read lessI attended from United States, The trainers are very professional and friendly. They have good knowledge of AI/ML and helped me at the beginning of the course as I was completely new to it. After this course, I learned about the various advancements in the field of AI/ML. I am now recognized as a Subject Matter Expert in AI/ML by my organization.
Read more Read lessThis course helped a lot. It made me understand how to prioritize important stuff for you. It allowed me to learn and discuss new things like Data Science, Artificial Intelligence, and machine learning. I would also recommend attending Simplilearn's live classes; they give a lot of context and are 10x more helpful. I attended from the United States.
Read more Read lessI thoroughly enjoyed the program and my learning experience was great. Simplilearn’s support team is readily available. The instructors were experienced and the hands-on exercises helped us understand the concepts better. I chose Simplilearn after a lot of research and I have no regrets now. This program will definitely help me in my career ahead.
Read more Read lessThe course’s comprehensive structure covered essential data science topics like machine learning, data visualization, and big data on a user-friendly platform that blended self-paced learning with live sessions. Simplilearn's career support, including resume and interview prep, helped me secure a data science role after completing the program.
Read more Read lessSimplilearn United States has one of the best programs available online to earn real-world skills that are in demand worldwide. I just completed the Machine Learning Advanced course, and the LMS was excellent.
A Simplilearn representative will get back to you in one business day.