What will you learn in the internship training?
Course Title: Internship on Data Science - Machine Learning with Deep Learning
Course Duration: 110 Hours
- Introduction to Data Science
- Python for Data Science
- Data Manipulation and Visualization with Pandas
- Exploratory Data Analysis
- Feature Engineering and Selection
- Introduction to Statistical Modeling
- Linear Regression
- Logistic Regression
- Decision Trees and Random Forests
- Model Evaluation and Validation
- Descriptive Statistics
- Probability Distributions
- Hypothesis Testing
- Confidence Intervals
- ANOVA (Analysis of Variance)
- Correlation and Regression Analysis
- Experimental Design
- Introduction to Machine Learning
- Supervised Learning: Classification
- Supervised Learning: Regression
- Unsupervised Learning: Clustering
- Dimensionality Reduction
- Model Evaluation and Selection
- Ensemble Learning
- Support Vector Machines (SVM)
- Decision Trees and Random Forests
- Gradient Boosting Methods
- Introduction to Neural Networks
- Building Neural Networks with Keras
- Activation Functions and Optimization Techniques
- Convolutional Neural Networks (CNNs)
- Recurrent Neural Networks (RNNs)
- Transfer Learning
- Generative Adversarial Networks (GANs)
- Reinforcement Learning
- Advanced CNN Architectures (e.g., ResNet, Inception, etc.)
- Object Detection
- Image Segmentation
- Style Transfer
- Deep Reinforcement Learning
- Natural Language Processing (NLP) using Deep Learning
- Introduction to Reinforcement Learning
- Markov Decision Processes (MDPs)
- Value Iteration and Policy Iteration
- Q-Learning
- Deep Q-Networks (DQN)
- Policy Gradient Methods
- Actor-Critic Methods
- Introduction to NLP
- Text Preprocessing and Tokenization
- Word Embeddings (e.g., Word2Vec, GloVe)
- Text Classification
- Sentiment Analysis
- Named Entity Recognition
- Language Generation
- Sequence-to-Sequence Models
Data Science with Python:
Assignment 1:
- Analyze a dataset of your choice and perform data cleaning, exploration, and visualization.
- Apply statistical techniques to uncover patterns and insights from the data.
- Present your findings in a comprehensive report with visualizations.
Assignment 2:
- Build a machine learning model to predict customer churn for a telecom company.
- Preprocess the dataset, perform feature engineering, and split it into training and testing sets.
- Train different models (e.g., logistic regression, decision tree, random forest) and compare their performance using appropriate evaluation metrics.
Applied Statistics:
Assignment 1:
- Conduct a hypothesis test to determine if there is a significant difference in the average income between two different cities.
- Formulate the null and alternative hypotheses, choose an appropriate test statistic, and calculate the p-value.
- Interpret the results and provide conclusions based on the findings.
Assignment 2:
- Perform a regression analysis to explore the relationship between a company's advertising expenditure and its sales revenue.
- Collect the necessary data, fit a regression model, and interpret the coefficients.
- Evaluate the model's goodness of fit and make predictions based on the regression equation.
Machine Learning:
Assignment 1:
- Build a classification model using a supervised learning algorithm (e.g., logistic regression, support vector machines) to predict whether a loan applicant will default or not.
- Preprocess the data, perform feature selection, and evaluate the model's accuracy, precision, recall, and F1 score.
Assignment 2:
- Apply clustering techniques (e.g., k-means, hierarchical clustering) to segment customers based on their purchasing behavior.
- Visualize the clusters and analyze their characteristics.
- Propose marketing strategies for each segment to improve customer targeting and engagement.
Deep Learning with Tensorflow&Keras:
Assignment 1:
- Build a convolutional neural network (CNN) to classify images from the CIFAR-10 dataset.
- Train the model using transfer learning with a pre-trained network (e.g., VGG16, ResNet) and fine-tune the top layers.
- Evaluate the model's accuracy and compare it with a baseline model.
Assignment 2:
- Develop a recurrent neural network (RNN) model to generate text in the style of a given author or genre.
- Train the model on a large text corpus and generate new text samples based on a seed input.
- Evaluate the generated text for coherence and similarity to the training data.
Advance Deep Learning & Computer Vision:
Assignment 1:
- Implement a generative adversarial network (GAN) to generate realistic images of human faces.
- Train the GAN using a dataset of celebrity faces and evaluate the quality of the generated images using visual inspection and feedback from users.
Assignment 2:
- Build an object detection model using the YOLO (You Only Look Once) algorithm to detect and classify objects in images or video.
- Fine-tune the model on a specific dataset and evaluate its performance in terms of accuracy and speed.
Reinforcement Learning:
Assignment 1:
- Train an agent using the Q-learning algorithm to navigate a grid world environment and reach a goal state while avoiding obstacles.
- Implement the necessary components such as the state representation, action selection, and reward function.
Assignment 2:
- Apply deep reinforcement learning techniques (e.g., deep Q-network, policy gradient) to train an agent to play a classic video game, such as Pong or Breakout, using raw pixel inputs.
Hands-on Projects and Mini Projects
Exploratory Data Analysis (EDA)
Analyze and visualize a dataset to gain insights and understand patterns, correlations, and trends within the data.
Sentiment Analysis
Analyze text data to determine the sentiment or emotion associated with a given text, such as classifying movie reviews as positive or negative.
Image Classification
Develop a deep learning model using convolutional neural networks (CNNs) to classify images into specific categories, such as classifying images of animals into different species.
Predictive Modeling
Build a machine learning model to predict a specific outcome or make future predictions based on a given dataset, using algorithms like linear regression, logistic regression, or decision trees.
Recommendation System
Create a recommendation system that suggests personalized recommendations to users based on their past behavior, using techniques like collaborative filtering or content-based filtering.
Natural Language Processing (NLP) Application
Build an NLP-based project, such as sentiment analysis of customer reviews, text classification, or text generation using techniques like tokenization, word embeddings, and recurrent neural networks (RNNs).
Unlock the Power of Data with Industry Experts
At our internship program, you'll dive into the exciting world of data science, machine learning, and deep learning. Led by industry experts with extensive real-world experience, this immersive training will equip you with the skills and knowledge needed to thrive in today's data-driven landscape.
Realize Your Potential with Practical Projects and Hands-On Learning
Through hands-on exercises and real-world projects, you'll gain practical experience in data analysis, predictive modeling, and deep learning techniques. Our carefully designed curriculum focuses on industry-relevant skills, ensuring you're ready to tackle complex data challenges.
Why Choose Our Data Science Internship?
Get Certified
Yes! You will be certified for this training once you submit the task given, if any
Industry Recognized:
Receive an instructor-endorsed certificate with company’s logo to validate your accomplishments and boost your job prospects.
Easily shareable:
Add the certificate to your CV or resume, or directly share it on LinkedIn
Enhances Credibility:
Utilize your certificate to enhance your professional credibility and differentiate yourself as an expert
Expand Potential Opportunities:
By showcasing your acquired skill set through your certificate, you can attract employers and open doors to desired job opportunities.
Know your mentors/trainers.
Previous Summer Internship
SEE HOW WE’RE CHANGING LIVES THROUGH EDUCATION – HEAR FROM OUR STUDENTS!
Testimonials
Don't just take our word for it. Here's what our satisfied Data science interns have to say:
–Omkar Kiran
- Abhisheik
Avail this INTERNSHIP Offer (Save upto 25,000/-)
₹4999 - ₹30,000/-
- Enrol now and unlock all benefits worth ₹10,000 absolutely free.
- Take advantage of the discounted price of 4999 and save a total of INR 25,000/-
- Offer Valid till September 2024
Note: Invest in your future today. Join our internship programs and become a sought-after professional in your field. The possibilities are endless! 💪✨
Benefits
Ready to Take the Next Step? Enroll in our internship training program today and:
- Learn from industry experts in application development.
- Gain practical skills through real-world projects.
- Enhance your resume with valuable experience in cutting-edge technologies.
- Join a vibrant community of coding enthusiasts.
Don't miss out on this opportunity to kickstart your career in the exciting field of Data Science. Limited spots available. Register now to secure your place.
Enroll Now *Unlock Your Programming Potential!
Amazing Bonuses worth Rs.10,000/-
- 10+ Case Studies: Gain real-world insights and solutions.
- 10 Mini Projects: Showcase your skills with hands-on experience.
- Sample Internship Report: Learn from a comprehensive example.
- Hands-on Experience: Apply your knowledge in real-world scenarios.
- Portfolio Building: Create a strong showcase for potential employers.
- Personalized Support: Get expert guidance throughout your training.
Frequently Asked Questions
- 110 hours Total
- Live Session
- Two Batches Available
- 1st – Starting From - September 2024
The internship requires basic programming knowledge and familiarity with the Python programming language. Prior experience in coding will be beneficial.
The internship is designed to provide hands-on experience and practical training in Python programming. You will work on real-world projects and assignments that will enhance your programming skills and problem-solving abilities.
Yes, upon successful completion of the internship, you will receive a certification that recognizes your participation and achievement in the Python programming training program.
Throughout the internship, you will have the opportunity to work on diverse real-world projects, such as building web applications, data analysis, machine learning algorithms, and more. These projects will help you apply your Python programming skills in practical scenarios.
Our trainers are industry experts with extensive experience in Python programming. They will provide guidance, support, and mentorship throughout the internship, ensuring you have a comprehensive understanding of the concepts and assisting you in overcoming any challenges you may encounter.
We have a “NO REFUND POLICY”. For related queries email us at bhimsen@knowxindia.com. Feel free to reach out to us if you have any additional questions or require further information about the Python internship program.