Expertise : Data Science, Data Analytics,Machine Learning, Deep Learning, AutoML, ML on Cloud, NLP
Learn more about the course
- Program Overview
- Success Stories
- Curriculum
- Tools
- Projects
- Certificate
- Instructors
- Career Support
- Fees
- FAQs
Why Choose Uncodemy's Data Science PG Program
In today’s data-driven world, where every click, swipe, and interaction generates valuable insights, a career in Data Science is your gateway to boundless opportunities. But not all Data Science programs are created equal. Here’s why Uncodemy’s Data Science Post-Graduate program stands out as your ultimate launchpad to success:
- Comprehensive Curriculum Designed for Industry Excellence: Our meticulously crafted curriculum bridges the gap between theoretical knowledge and real-world applications. Master Python, R, SQL, Machine Learning, AI, and Big Data Analytics to become job-ready from day one.
- Expert Mentors from the Industry: Learn directly from seasoned professionals and industry leaders. Our mentors ensure you grasp concepts thoroughly and apply them effectively in real-world scenarios.
- Real-World Projects and Case Studies: Experience experiential learning with live projects, industry case studies, and hackathons. Build a portfolio that showcases your practical skills and knowledge.
- Guaranteed Placement Assistance: Leverage Uncodemy’s strong industry connections and dedicated placement team to secure lucrative roles in leading organizations.
- Flexible Learning Options: Choose from online or offline learning modes tailored for working professionals and full-time students to suit your schedule.
- State-of-the-Art Infrastructure: Access cutting-edge technology at our modern training centers in Noida, Delhi, Gurgaon, Bangalore, Pune, and more.
- Post-Completion Support: Stay ahead with our alumni network, regular webinars, and updated course materials even after program completion.
- Affordable Excellence: Our competitively priced program ensures high-quality education is accessible to everyone, making it a smart investment for your future.
- Tailored for Beginners and Professionals: Whether a fresh graduate or a seasoned professional, our program caters to learners from all backgrounds.
- Join the Uncodemy Family: Be part of a vibrant community of learners, innovators, and achievers shaping the future of technology and business.
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Curriculum with cutting edge tools and skills
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Interactive mentor-led sessions
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Personalized projects as per your industry
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Learn from top Uncodemy faculty
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40+ Case Studies
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24*7 Dedicated Program Support
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Ranked no. 3
in MS in Business Analytics
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Ranked no. 6
in Executive education custom programs
Skills you will learn
- Python Foundations
- Data Visualization
- Business Statistics
- GenAi & Applications
- Ensemble Techniques
- Supervised Learning
- Unsupervised Learning
- Forecasting methods
- Exploratory Data Analysis
- Inferential Statistics
- Linear Regression
- Classification Models
- Model tuning
Our alumni work at top companies
About this Data Science Training Program
The Post Graduate Program in Data Science and Business Analytics is designed for professionals who want to transition their careers into data science and for aspiring data scientists. Unlike any other program, this online data science certificate program offers
- Weekly interactive mentor-led practice sessions
- Dedicated program support via a program manager
- An opportunity to interact and network with peers
- An E-portfolio to showcase your skills
- A certificate from Uncodemy to showcase your competence
Read more
Elevate Your Skills with On-Campus Immersion (Optional Add-on)
Enhance Your Expertise with AI & Deep Learning (Optional Add-on)
AI With Deep Learning
Dive deeper into the world of Artificial Intelligence and unlock advanced skills in deep learning.
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Neural Networks
Understand neural networks.
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Computer Vision
Master CNNs for image classification.
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Natural Language Processing
Learn NLP and transformers.
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Certificate of Completion
Earn PGP-AIML and PGP-DSBA certificates.
Comprehensive Curriculum
Unlock your potential with our comprehensive Data Science Post-Graduate program, specifically designed to shape the next generation of business analysts. Crafted by expert faculty at Uncodemy in Noida, Delhi NCR, this program offers deep domain exposure and equips you with powerful data visualization and insights tools. Whether you're analyzing data trends or creating compelling visual stories, our curriculum empowers you to master the skills that drive data-driven decision-making, setting you up for success in today’s competitive market.
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Data Science and Business Analytics Foundations
The Foundations module is designed to equip you with essential statistics, Python, and business domain skills to establish the groundwork for the remainder of the course. It serves as an introduction to Data Science, and completing this course will give you the confidence to discuss related concepts.
Pre-work
This covers the prerequisites needed to begin the online Data Science and Business Analytics program and includes the basics of programming with Python.
Module 1: Python Foundations
Embark on a data-driven journey with our Python Foundations Module. Learn to read, manipulate, and visualize data using popular Python packages, enabling you to tell compelling stories, solve business problems, and deliver actionable insights with ease.
- Python Programming
Grasp the simplicity and readability of Python's syntax as you explore variables, data structures, conditional and looping statements, and functions. Build a robust skill set in Python essentials for effective coding and data organization.
- Python for Data Science
Explore crucial tools in Data Science—NumPy and Pandas. NumPy excels in mathematical computing with arrays and matrices, while Pandas, an open-source library, provides speed and flexibility for data manipulation and analysis. This module deep-dives into these essential libraries, equipping you to adeptly read, manipulate, and derive insights from data in the realm of Data Science.
- Python for Visualization
This module focuses on Matplotlib and Seaborn. Matplotlib, a dynamic library, enables static and animated visualizations, while Seaborn, built on Matplotlib, enhances data visualization in Python. This module provides an in-depth exploration of these tools, empowering you to create impactful visualizations that effectively summarize and communicate insights from diverse datasets.
- Exploratory Data Analysis
Explore the depths of Exploratory Data Analysis (EDA), unraveling data patterns and extracting meaningful insights using Python. Acquire the skills to inform strategic business decisions based on the comprehensive analysis of data.
Module 2: Business Statistics
Elevate your analytical skills with the Business Statistics module. Harness the power of Python to assess the reliability of business estimates through confidence intervals and hypothesis testing. Make informed decisions by analyzing data distributions, ensuring precision in resource allocation and strategic commitments.
- Inferential Statistics Foundations
Delve into the core of statistical analysis. Gain a comprehensive understanding of probability distributions, essential for making statistically-sound, data-driven decisions. Master the fundamentals to draw conclusions about populations based on samples.
- Estimation and Hypothesis Testing
Uncover the intricacies of estimation, determining population parameters from sample data, and master the art of hypothesis testing—a framework for drawing meaningful conclusions. Delve into essential concepts like the Central Limit Theorem and Estimation Theory, providing a solid foundation for robust statistical analysis in decision-making.
- Common Statistical Tests
Gain proficiency in hypothesis tests, essential for validating claims about population parameters in Data Science. This module introduces the most commonly used statistical tests, equipping you to choose the right test for business claims based on contextual nuances. Explore practical implementations in Python through real-world business examples, ensuring a comprehensive understanding of statistical testing in the Data Science realm.
Techniques
This program's Techniques module will give you a solid foundation in the most widely-used analytics and data science techniques. This will enable you to approach any business problem with confidence and ease.
Module 3: Supervised Learning - Foundations
Uncover the power of linear models in deciphering relationships between variables and continuous outcomes. Validate models, draw statistical inferences, and gain invaluable business insights into the key factors shaping decision-making.
- Intro
to Supervised Learning - Linear
Regression
Gain insights into Machine Learning, a subset of Artificial Intelligence, dedicated to pattern recognition and predictive analysis without explicit programming. This module specifically delves into the fundamentals of learning from data, the mechanics of the Linear Regression algorithm, and practical aspects of building and evaluating regression models using Python.
- Linear
Regression Assumptions and Statistical
Inference
Explore the critical facets of Linear Regression with our module on Assumptions and Statistical Inference. Gain insights into the essential assumptions that validate the model statistically. This module guides participants through understanding, checking, and ensuring the satisfaction of these assumptions. Learn how to address violations and draw meaningful statistical inferences from the model's output, ensuring a robust and reliable application of Linear Regression in data analysis.
Module 4: Supervised Learning - Classification
Master classification
models to discern relationships between variables
and categorical outcomes, extracting vital business
insights by identifying key decision-making
factors.
- Logistic
Regression
This module covers the theoretical foundations of Logistic Regression, performance assessment, and the extraction of meaningful statistical inferences. Participants will grasp the intricacies of model interpretation, evaluate classification model performance, and discover the impact of threshold adjustments in Logistic Regression for enhanced predictive accuracy. Explore applications spanning medicine, finance, and manufacturing, ensuring a robust understanding and application of Logistic Regression in diverse fields.
- Decision
Tree
Explore the power of Decision Trees in our module, uncovering their role as supervised ML algorithms for hierarchical decision-making in both classification and regression scenarios. Delve into the intricacies of modeling complex, non-linear data with Decision Trees. This module elucidates the process of building a Decision Tree, introduces various pruning techniques to enhance performance, and provides insights into different impurity measures crucial for decision-making. Acquire a comprehensive understanding of the Decision Tree algorithm, empowering you to navigate its construction and optimization effectively.
Module 5: Ensemble Techniques and Model Tuning
In this course, you will learn how to combine the decisions from multiple models using ensemble techniques to improve model performance and make better predictions, and employ feature engineering techniques and hyperparameter tuning to arrive at generalized, robust models to optimize associated business costs
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Bagging and Random Forest
Random forest is a popular ensemble learning technique that comprises several decision trees, each using a subset of the data to understand patterns. The outputs of each tree are then aggregated to provide predictive performance. This module will explore how to train a random forest model to solve complex business problems.
(Introduction to Ensemble Techniques, Introduction to Bagging, Sampling with Replacement, Introduction to Random Forest)
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Boosting
Boosting models are robust ensemble models that comprise several sub-models, each of which is developed sequentially to improve upon the errors made by the previous one. This module will cover essential boosting algorithms like AdaBoost and XGBoost that are widely used in the industry for accurate and robust predictions.
(Introduction to Boosting, Boosting Algorithms (Adaboost, Gradient Boost, XGBoost), Stacking)
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Model Tuning
Model tuning is a crucial step in developing ML models and focuses on improving the performance of a model using different techniques like feature engineering, imbalance handling, regularization, and hyperparameter tuning to tweak the data and the model. This module covers the different techniques to tune the performance of an ML model to make it robust and generalized. (Feature Engineering, Cross-validation, Oversampling and Undersampling, Model Tuning and Performance, Hyperparameter Tuning, Grid Search, Random Search, Regularization)
Module 6: Unsupervised Learning
In this course, you will learn to use clustering algorithms to group data points based on their similarity, find hidden patterns or intrinsic structures in the data, and understand the importance of and how to perform dimensionality reduction.
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K-means Clustering
K-means clustering is a popular unsupervised ML algorithm that is used for identifying patterns in unlabeled data and grouping it. This module dives into the workings of the algorithm and the important points to keep in mind when implementing it in practical scenarios.
(Introduction to Clustering, Types of Clustering, K-means Clustering, Importance of Scaling, Silhouette Score, Visual Analysis of Clustering)
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Hierarchical Clustering and PCA
Hierarchical clustering organizes data into a tree-like structure of nested clusters, while dimensionality reduction techniques are used to transform data into a lower-dimensional space while retaining the most important information in it. This module covers the business applications of hierarchical clustering and how to reduce the dimension of data using PCA to aid in the visualization and feature selection of multivariate datasets.
(Hierarchical Clustering, Cophenetic Correlation, Introduction to Dimensionality Reduction, Principal Component Analysis)
Module 7: Introduction to Generative AI
In this course, you will get an overview of Generative AI, understand the difference between generative and discriminative AI, design, implement, and evaluate tailored prompts for specific tasks to achieve desired outcomes, and integrate open-source models and prompt engineering to solve business problems using generative AI.
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Introduction to Generative AI
Generative AI is a subset of AI that leverages ML models to learn the underlying patterns and structures in large volumes of training data and use that understanding to create new data such as images, text, videos, and more. This module provides a comprehensive overview of what generative AI models are, how they evolved, and how to apply them effectively to various business challenges.
(Supervised vs Unsupervised Machine Learning, Generative AI vs Discriminative AI, Brief timeline of Generative AI, Overview of Generative Models, Generative AI Business Applications)
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Introduction to Prompt Engineering
Prompt engineering refers to the process of designing and refining prompts, which are instructions provided to generative AI models, to guide the models in generating specific, accurate, and relevant outputs. This module provides an overview of prompts and covers common practices to effectively devise prompts to solve problems using generative AI models.
(Introduction to Prompts, The Need for Prompt Engineering, Different Types of Prompts (Conditional, Few-shot, Chain-of-thought, Returning Structured Output), Limitations of Prompt Engineering)
Module 8: Introduction to SQL
This course will help you gain an understanding of the core concepts of databases and SQL, gain practical experience writing simple SQL queries to filter, manipulate, and retrieve data from relational databases, and utilize complex SQL queries with joins, window functions, and subqueries for data extraction and manipulation to solve real-world data problems and extract actionable business insights.
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Querying Data with SQL
SQL is a widely used querying language for efficiently managing and manipulating relational databases. This module provides an essential foundation for understanding and working with relational databases. Participants will explore the principles of database management and Structured Query Language (SQL), and learn how to fetch, filter, and aggregate data using SQL queries, enabling them to extract valuable insights from large datasets efficiently.
(Introduction to Databases and SQL, Fetching data, Filtering data, Aggregating data)
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Advanced Querying
SQL offers a wide range of numeric, string, and date functions, gaining proficiency in leveraging these functions to perform advanced calculations, string manipulations, and date operations. SQL joins are used to combine data from multiple tables effectively and window functions enable performing complex analytical tasks such as ranking, partitioning, and aggregating data within specified windows. This module provides a comprehensive exploration of the various functions and joins available within SQL for data manipulation and analysis, enabling them to summarize and analyze large datasets effectively.
(In-built functions (Numeric, Datetime, Strings), Joins, Window functions)
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Enhancing Query Proficiency
Subqueries allow one to nest queries within other queries, enabling more complex and flexible data manipulation. This module will equip participants with advanced techniques for filtering data based on conditional expressions or calculating derived values to extract and manipulate data dynamically.
(Subqueries, Order of query execution)
Domain Exposure
Explore a variety of real-life challenges in the Self-Paced Domain Exposure module. Learn how to apply data science and analytics principles to solve diverse problems at your own pace, gaining valuable insights and skills tailored to your schedule.
Introduction to Data Science
Gain an understanding of the evolution of Data Science over time, their application in industries, the mathematics and statistics behind them, and an overview of the life cycle of building data driven solution.
Pre-Work
Gain a fundamental understanding of the basics of Python programming and build a strong foundation of coding to build Data Science applications
Data Visualization in Tableau
Read, explore and effectively visualize data using Tableau and tell stories by analyzing data using Tableau dashboards
Time Series Forecasting
Learn how to describe components of a time series data and analyze them using special techniques and methods for time series forecasting.
Model Deployment
In this course, you will learn the role of model deployment in realizing the value of an ML model and how to build and deploy an application using Python.
Marketing and Retail Analytics
Understand the role of predictive modeling in influencing customer behavior and how businesses leverage analytics in marketing and retail applications to make data-driven decisions
Finance And Risk Analytics
Develop a deep appreciation of credit and market risk and understand how banks and other financial institutions use predictive analytics for modeling their risk
Web and Social Media Analytics
Understand and appreciate the most widely used tools of web analytics which form the basis for rational and sound online business decisions, and learn how to analyze social media data, including posts, content, and marketing campaigns, to create effective online marketing strategies.
Supply Chain and Logistics Analysis
Get exposed to the discipline of supply chain management and its stakeholders, understand the role of logistics in businesses and supply chains, and learn methods of forecasting prices, demand, and indexes
On-Campus Immersion in Decision Science and AI (Optional Paid Program)
The Decision Science and AI is a 3-day on-campus Program that presents a valuable opportunity to explore AI use cases and become a driving force behind AI-driven initiatives within your organization. It comprises of dynamic discussions, collaboration with like-minded professionals, and engaging networking sessions hosted at the prestigious Uncodemy.
Day 1
- Welcome & Program Orientation
- Introduction to Decision Sciences & AI
- Campus Tour & Group Photo
- Introduction to Dynamic Programming
- Programming an AI agent to Play a Variant of Blackjack
Day 2
- Introduction to Reinforcement Learning
- Programming an AI Agent that learns by itself to play computer games
- Session with Industry Mentor
- The Art and Science of Negotiations
Day 3
- Project Brief and Active group work
- Group work on Project
- Certifications and Photo Ops
AI With Deep Learning (Optional Paid Program)
Introduction to Neural Network
This course is designed to provide you with a comprehensive understanding of Deep Learning, specifically Artificial Neural Networks. These networks consist of multiple hierarchical levels and serve as fundamental building blocks for knowledge discovery, application, and prediction from data. Through this course, you will gain expertise in effectively applying Artificial Neural Networks to real-world scenarios.
- Pre-work for Deep Learning, Artificial Neurons, Tensorflow, and Keras
- Introduction to Artificial Neural Networks
- Building Blocks of Artificial Neural Networks
Introduction to Computer Vision
Gain expertise in leveraging Convolutional Neural Networks (CNNs) to empower computer systems with visual perception and comprehension. This program equips you with the skills to effectively process and utilize image data for business applications.
- Pre-work for Computer Vision
- Introduction to CNN - Working with Images
- Transfer Learning
Introduction to Natural Language Processing
This course will explore the fascinating application of Neural Networks in enabling computers to comprehend human language. Specifically, you will learn how to analyze text data and determine its underlying sentiment.
- Pre-work: Natural Language Processing
- Vectorization and Sentiment Analysis
- Sequential Natural Language Processing using Deep Learning
Become a data scientist
Tools and technologies
Dive into Unodemy's top-rated Data Science course & master essential skills for a data-driven future.
- Excel
- Tableau
- Power-Bi
- ggplot
- Jupyter
- Numpy
- Python
- Pandas
- Looker
- Matplotlib
- Google Colab
- SQL
- MySql
- ML
Real-World Industry Projects
Transform Your Skills with Practical Learning
Engage with projects designed to mimic real-world challenges, enhancing your problem-solving skills and equipping you with industry-relevant expertise.
- Identify trends in customer preferences and delivery times
- Provide actionable insights to optimize delivery operations.
- Develop strategies to enhance customer satisfaction and retention.
- Measure user engagement metrics such as clicks and session duration.
- Identify the most effective design to boost user interaction.
- Provide data-driven recommendations for better website performance.
- Analyze key factors like brand, condition, and market trends.
- Predict optimal prices for refurbished electronic devices.
- Maximize profitability while maintaining competitive pricing.
- Analyze booking patterns, room preferences, and payment methods.
- Help hotels proactively manage cancellation risks.
- Improve customer satisfaction and operational efficiency.
- Identify factors influencing approval or rejection.
- Streamline the decision-making process with predictive analytics.
- Provide recommendations to optimize application review efficiency.
- Group stocks based on similar financial attributes.
- Build diversified portfolios to manage risk and maximize returns.
- Apply unsupervised learning to real-world financial problems.
- Extract insights on trends and patterns.
- Answer critical business questions to aid decision-making.
- Provide actionable recommendations to improve profitability.
Upskill from uncodemy
Get renowned Data Science PG Program Certificate
Earn 9.0 Continuing Education Units (CEUs) on successful completion of the program
* Image for illustration only. Certificate subject to change.
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MS - Business Analytics
QS World University rankings, 2022
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Executive Education
Custom Programs by Financial Times, 2022
For any feedback & queries regarding the program, please reach out to us at info@uncodemy.com
Instructors
Uncodemy collaborates with renowned international MNCs and reputed startups to bring you top-tier instructors for our Data Science PG program. These trainers, with experience at Fortune 500 companies, offer invaluable insights into the ever-evolving field of Data Science—providing you with cutting-edge knowledge and industry best practices, even before gaining hands-on experience. Learn from the best and stay ahead of the curve in this dynamic, high-demand field!
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Mr.Upendra Kumar Tiwari
Ex-Employee: Walmart | Ericsson | Cognizant -
Irshad Khan
Ex-Employee: KPMG | Global logic | Ministry of health and welfare9+ years of relevant work experience
Read MoreExpertise : Python, SQl, Machine learning,Tabluea, Artificial intelligence, Deep learning, Power BI, Mloops
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Syed Najeeb
Ex-Employee: Air India | ISAP India | Ramtech Software Solutions7+ years of relevant work experience
Read MoreExpertise : Python, ML, DL, NLP, Power BI,Tableau, SPSS, SAS, MS-Excel, SQL, HTML, CSS.
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Kunal Arora
Ex-Employee: Noidavery | Keventers | Red & Wine9 years of relevant work experience
Read MoreExpertise : Python, SQL, Excel, Power BI, Tableau, ML, DL, NLP, Time Series, IOT Devices, Prompt Engineering, Chatbot
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Pradyumn Singh
Head of Training & Placement15+ years of relevant work experience
Read MorePradyumn Singh, the Head of Training & Placement at Uncodemy. With 15+ years of expertise, he has led Software Testing, Development, and Digital Marketing teams.
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Priyanka
Head of the HR & Placement10+ years of relevant work experience
Read MorePriyanka, the Head of the HR & Placement Department at Uncodemy. With a decade of experience, she has skillfully led the HR team, overseeing training and recruitment.
Acing The Interviews
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CAREER SESSIONS
Engage one-on-one with industry experts for valuable insights and guidance.
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INTERVIEW PREPARATION
Gain Insights into Recruiter Expectations.
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RESUME & LINKEDIN PROFILE REVIEW
Showcase Your Strengths Impressively
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E-PORTFOLIO
Create a Professional Portfolio Demonstrating Skills and Expertise
Program Fee
Starting at 5,999 INR/month
Program Fee: 40,000 INR + GST
Pay in Installments
RecommendedAs low as 5000/month
for 12 months
Upfront Payment & Referral
34,999 INR
29,999 INR
Benefits of learning with us
- High-quality content
- 7 hands-on projects
- Live mentored learning in micro classes
- Doubt solving by industry experts
- Flexible learning approach
- Career support services
Application process
Our admissions close once the requisite number of participants enroll for the upcoming batch . Apply early to secure your seats.
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1. Fill application form
Apply by filling a simple online application form.
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2. Interview Process
Go through a screening call with the Admission Director’s office.
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3. Join program
Selected candidates will receive an offer letter. Secure your seat by paying the admission fee.
Frequently asked questions
Program Details
What is the duration of the Data Science Post-Graduate Programme?
The program typically spans 6 to 12 months, depending on the mode of study (full-time or part-time) and your learning pace.
Is prior experience in programming required for this course?
No prior programming experience is required. Our course begins with the basics of Python, R, and SQL, and gradually progresses to advanced concepts.
What skills will I gain from the program?
You will gain skills in:
- Data Analysis: Expertise in analyzing datasets using statistical techniques and exploratory methods.
- Machine Learning and AI: Develop models using predictive, supervised, and unsupervised learning algorithms.
- Big Data and Cloud Technologies: Work with advanced tools like Hadoop, Spark, and cloud services for large-scale data management.
- Data Visualization Tools: Proficiency in Tableau, Power BI, and Matplotlib for creating impactful visual dashboards.
- Statistical Analysis and Predictive Modeling: Build robust models to forecast trends and derive actionable insights.
Eligibility Criteria
Will I get hands-on experience during the program?
Yes! The program includes numerous hands-on projects, live case studies, and industry-relevant assignments to help you apply your knowledge in real-world scenarios.
Admission Queries
Can I attend the program online?
Yes! We offer flexible online learning options, allowing you to learn at your own pace and convenience.
Does the program include placement assistance?
Absolutely! We provide dedicated placement support, including resume building, mock interviews, and access to our exclusive job portal where top companies post openings. Our students have been placed in leading firms worldwide.
Fee Related Queries
What qualifications do I need to enroll?
Anyone with a bachelor's degree or a strong interest in data science can enroll. While prior technical knowledge is not required, a basic understanding of math and statistics will be beneficial.
What certifications will I receive upon completion?
Upon successful completion, you will receive a globally recognized Post-Graduate Certification in Data Science, validating your expertise and enhancing your job prospects.
Why Data Science and Business Analytics?
Will I have access to study materials after completing the course?
Yes! You will have lifetime access to study materials, recorded lectures, and course updates to keep your skills sharp even after Graduate.
Can I switch between online and offline modes during the program?
Yes, we offer flexible learning modes, so you can switch between online and offline classes as per your convenience and schedule.
How do I get started?
Simply visit our website and enroll today! You can also schedule a call with our academic counselor to discuss your learning goals and program details.