TopTech MNC Employees Instructors:
Learn directly from industry leaders! Our courses feature instructors who are
Top tech MNC employees, bringing real-world experience and practical insights into the classroom. Stay ahead of the curve with knowledge that goes beyond traditional textbooks.
Partnership with Telangana's Largest IT Startup Incubators: As trail blazers in the education space, we've established partnerships with Telangana's largest IT startup incubators, including the renowned WowWarangal Startup Incubators. Immerse yourself in a n environment that nurtures innovation and prepares you for the dynamic world of startups.
Top MNC Industry Connections:
Connect with the best in the industry through our extensive network of top multinational companies. Benefit from exclusive interactions, workshops, and networking opportunities with professionals at the forefront of technological advancement
Industry Connections:
Our commitment t o bridging the gap between academia and industry is evident in our strong industry connections. Engage with industry experts, attend conferences, and join forums that provide valuable insights into the latest trends a n d developments.
Internship Opportunities:
Gain hands-on experience through exclusive internship opportunities with leading
companies. Apply your knowledge in practical settings, develop a robust skill set, and enhance your employability in the competitive tech landscape.
Placement Assistance:
Your success is our priority! Our dedicated placement assistance program is designed to guide you toward rewarding career opportunities. Leverage our connections with top companies for a smooth transition from student to
professional.
GlobalStandardCurriculum
Week 1-2: Introduction to Machine
Learning and Al
Overview of Machine Learning (ML) and Al
Types of Machine Learning: Supervised,
Unsupervised, and Reinforcement
Learning
Applications of Al in Various Industries Ethical Considerations in A
Week 3-4: Python Programming for
Machine Learning
Introduction to Python for Data Science
NumPy and Pandas for Data Manipulation
Matplotlib and Seaborn for Data
Visualization
Jupyter Notebooks for Interactive
Computing
Week 5-6: Exploratory Data Analysis (EDA) Data Cleaning and Preprocessing Statistical Analysis and Visualization Feature Engineering
Handling Missing Data
Week 7-8: Supervised Learning Algorithms
Linear Regression and Logistic Regression Decision Trees and Random Forests
Support Vector Machines (SVM) K-Nearest Neighbors (KNN)
SCIENC ENGLISH
MATH
Week 9-10: Unsupervised Learning Algorithms
K-Means Clustering
Hierarchical Clustering
Principal Component Analysis (PCA) Association Rule Mining
Week 11-12: Neural Networks and
Deep Learning
Introduction to Neural Networks Feedtorward Neural Networks Convolutional Neural Networks (CNN)
Recurrent Neural Networks (RNN)
Week 13-14: Natural Language Processing (NLP)
Introduction to NLP
Text Processing and Tokenization Sentiment Analysis
Named Entity Recognition (NER)
Week 15-16: Reinforcement Learning
Introduction to Reinforcement Learning Markov Decision Processes (MDP)
Q-Learning
Deep Q Network (DQN)
Week 17-18: Al and Ethics
Bias and Fairness in Machine Learning
Explainability and Interpretability Privacy Concerns ni Al
Al in Healthcare and Responsible Al
Week 19-20: Machine Learning in Production
Model Deployment and Serving Building RESTful APis for ML Models Containerization with Docker
Introduction to Model Monitoring
Week 23-24: Capstone Project
Participants work on a machine
learning project
Integration of skills learned
throughout the course Presentation and Documentation
Week 21-22: Al Applications Computer Vision Applications Speech Recognition and Synthesis
Recommendation Systems Al in Finance and
Industry-specific Applications
Week 25: Review and Exam Preparation
Comprehensive review of key concepts
Practice exams and quizzes
Exam preparation tips and resources
Week 26: Final Exam
1 Subject
34 Courses • 38 Students
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