Email us – info@nsim.in | Speak to Our Expert +91-9811020518
Boost your career with our Master in Data Science course, crafted to provide you with the advanced skills and knowledge essential for success in today’s data-driven landscape. Whether you’re aiming to transition into a growing field or advance in your current role, this course will help you seize new opportunities and become a leader in data science.
Skills Assessment & Estimation Training
Resume and LinkedIn Profile Development
Mastering Negotiation and Persuasion Skills
Practice Job Interviews and Placement
Highest Package
Average Package
Placement Rate
Average Salary Hike
*Placement Statistics According to the 2024 Internal Report.
Our graduates can collaborate with prestigious brands across various industries, leveraging their skills in digital marketing strategies, SEO optimization, social media management, and more. Their expertise enhances the brands’ online presence and showcases the high level of training and knowledge they’ve acquired through our program. This hands-on experience with leading companies highlights their ability to drive impactful results and adapt to the ever-evolving digital landscape.
Begin your adventure with an overview of Numpy, a core Python package. Learn the fundamentals of working with arrays and carrying out effective calculations to set the stage for your data science abilities.
Discover how to use Pandas to clean, transform, and get your data ready for analysis. To make sure your datasets are prepared for modeling, this subject covers the fundamental data manipulation techniques.
Dive into data visualization with Python, mastering techniques to create insightful and compelling charts and graphs that bring your data to life.
Understand the core concepts of linear models, and learn how to apply them to both regression and classification problems, forming the basis for predictive modeling.
Explore various data preprocessing techniques that enhance the quality of your data, ensuring your models receive the best possible input for accurate predictions.
Delve into decision trees, a versatile tool in machine learning. Learn how to build, visualize, and interpret decision trees for both regression and classification tasks.
Discover the simplicity and power of the Naive Bayes algorithm, particularly effective for text classification and other categorical data problems.
Learn how to combine multiple models to improve prediction accuracy. This module introduces composite estimators and how they can be used to enhance model performance.
Master the techniques for selecting the best model and evaluating its performance. Understand metrics, cross-validation, and the trade-offs involved in model selection.
Learn the importance of feature selection in model building, and explore various techniques to identify and select the most significant features for your models.
Get hands-on with the Nearest Neighbors algorithm, a simple yet powerful method for classification and regression, particularly in high-dimensional spaces.
Explore clustering techniques to group similar data points together, an essential skill for unsupervised learning tasks like market segmentation and anomaly detection.
Learn how to identify outliers and anomalies in your data, a critical aspect of fraud detection, network security, and other domains.
Delve into Support Vector Machines (SVM), a powerful algorithm for classification and regression tasks, particularly in high-dimensional spaces.
Understand the challenges of working with imbalanced datasets and explore techniques to address these issues, ensuring your models are fair and accurate.
Learn how to boost your model’s performance using ensemble methods like bagging, boosting, and stacking, which combine the strengths of multiple models.
Apply linear regression techniques to real-world data, learning how to build and interpret models that predict continuous outcomes.
Explore the dynamics of online learning models and how they adapt to new data, providing continuous improvement in predictions.
Use data science techniques to predict customer churn, helping businesses retain valuable customers by identifying at-risk individuals.
Build models to predict income levels based on various factors, a common task in socio-economic research and financial services.
Analyze employee data to predict who might leave the company, providing valuable insights for human resources and organizational planning.
Download Brochure
Download Brochure
Download Brochure