MACHINE LEARNING SUMMER INTERNSHIP PROGRAM IN HYDERABAD

  • MACHINE LEARNING

COMPLETE TRAINING ON TECHNOLOGY | PROJECT DEVELOPEMENT


Training Fee

Rs.6500 /-

May June July

Register Now

Contact Us

MANOJ: +91 9676190678

HYDERABAD

407, 4th Floor, Pavani Prestige (R.S Brothers)Building, Ameerpet, Hyderabad, India Opposite Image Hospital & Beside KLM Fashion Mall.

About Machine Learning

Would you like to learn more about predictive analytics? Then look at Machine Learning Internship in Hyderabad at Tru Projects. Machine learning will automate tasks that most people thought could only be completed by humans. Don’t bite your nails now the services are available near to your home town Sr nagar , Ameerpet , Jntu , Kphp , Kukatpally , Dilshuknagar , Madhapur , L.B.Nagar ,Sec-bad ,Tarnaka , Uppal , Chaitanya Puri , ECIL , Ibrahimpat , Adilabad ,Uturu, Mancherial , Nirmal , Bhainsa, Asifabad , Karimnagar, Huzurabad , jagtial, Mettupalli ,Peddapalli, Mantini ,Sircilla , Nizamabad, Armoor ,Bodhan, Kamareddy, Banswada, Yellareddy , Ellareddy, Warangal (Rural), Narsampet , Bhupalpally, Mulugu ,Jangaon, Station Ghanpur, Mahabubabad, Thorrur , Khammam, kalluru , Kothagudem, Bhadrachalam ,Medak, Toopran, Narsapur ,Sangareddy, Zahirabad, Narayankedh.

The best Online Summer Internship Programs Machine Learning in Hyderabad and planning to create a fleshed-out profile in your resumes?  Hey hurry up then! Tru Projects offers the Summer Internship Program in Machine Learning in Hyderabad to help you improve your practical skills. Students are often anxious to Machine Learning Summer Intern because they are concerned that their Machine Learning Summer Internship 2023 for Freshers in Hyderabad would be filled with uninteresting activities for little or no pay. Despite the fact that not all internships pay in financially, some do pay in other ways. A Summer Internship on Machine Learning in Hyderabad offered by Tru Projects gives you the foundation for a successful career.

Machine Learning Internship for B Tech Students in Hyderabad Enhances the soft skills, corporate etiquette, attending numerous training sessions, how to conduct oneself in a machine learning Internship for students in Hyderabad, hands-on experience with Real Time Machine Learning Summer Intern 2023 in Hyderabad, knowing the sector and organization, current industry trends, and more in Machine Learning Internship Online in Hyderabad.

Machine Learning Summer Camp Program in Hyderabad allow you to expand your professional network in the following ways. A Machine Learning Summer Training in Hyderabad helps you to meet individuals from different walks of life and broaden your contacts, which is a crucial part of job growth. As a Machine Learning Online Intern Summer 2023 you will have additional opportunity to form relationships with corporate personnel that you may utilise later in your career with Summer 2022 Machine Learning Internship in Hyderabad at Tru Projects.
Students can gain real-world experience and exposure through research internships, as well as gain hands-on experience working in the real world. The internship has a learning curve for students with little professional experience. They gain experience working on real projects, communicating with various teams and clients, and gaining a deeper grasp of Internship. Internship Certification allows you to put your knowledge to the test while also learning workplace interpersonal skills, which can help you land a job.

With Certification Internship, a Summer Internship is a terrific way to learn about numerous careers. It is easier to obtain than full-time job in corporations because it usually does not require prior experience. When it’s time to hunt for a full-time job after interning, there are a few things to keep in mind, you will be a more desirable candidate than your contemporaries by attending Machine Learning Online Intern Summer 2022 in Hyderabad. Companies care more about your work experience than your academic qualifications. Before entering the job, the best internships allow you to put specific teaching approaches to the test. Instead of learning the hard way in your first job after college, an internship allows you to put what you’ve learned into practise in a safe environment where mistakes are expected. Internships during the summer allow you to shift from student to full-time work. Graduating and immediately starting a new career might be difficult at times in Final Year Machine Learning Internships for btech in Hyderabad. Not every boss is skilled at mentoring new employees at Internship. It might be disastrous if you are unable to adjust swiftly. Employers are always on the lookout for candidates who can seamlessly move from student to full-time work with minimal assistance of Training.

Many firms may offer interns a full-time employment if they have gained all of the essential skills and are contributing to the organisation in Real Time Machine Learning Summer Intern 2022 in Hyderabad. They don’t want to let go of you since you’re a solid investment for the Technical Internship in Hyderabad.

At a real-time summer internship, identifying your areas of interest is a various functions and specialties exist in each business. You will learn numerous information about the Online Internship Program so that you can make a more informed career choice. Within your major Programming Internships, the Intern Program will assist you in identifying your areas of interest. Our Machine Learning Summer Internship 2022 Students in Hyderabad is meant to assist students learn about the many industries throughout the world and how they might fit in.

Internships in their last year help students figure out what areas of interest and ability they have Machine Learning Online Internship in Hyderabad. And our Machine Learning Online Summer Internship Course in Hyderabad are a terrific way to get them started. We not only give training at our school, but we also provide a Machine Learning Internship for CSE Students in Hyderabad who have completed their certificate, which adds a lot of value to their profile when applying for higher education and jobs. If you want to be a part of any sector in our ever-changing world, you should always be on the lookout for Research Summer Intern Machine Learning in Hyderabad.

Machine Learning Internship for ECE Students in Hyderabad are a terrific opportunity to get real-world experience and insight into a sector you’re interested in. If you’re a student or just starting out in your profession, a Final Year Machine Learning Internships in Hyderabad can provide you with the necessary experience to prepare you for full-time employment. Final Year Machine Learning Internships for ece in Hyderabad can be paid or unpaid, with some unpaid internships providing additional perks like college credit. Paid internships are becoming increasingly prevalent, as opposed to the conventional internship paradigm, which involves labour in return for experience rather than compensation.
Summer internship on Machine Learning for B Tech Students in Hyderabad or Machine Leaning Final Year Summer Internship in Hyderabad may be available depending on aspects such as industry or professional, role duties, experience necessary, internship length, and inclusion of class credit.

An intern is a student who works for a development firm for a defined period of time, usually between semesters or concurrently with them. Not everyone will have an internship for six months or a year to get the essential work experience for a job directly after graduation. Programs for internships are more likely to be intensive and focused. Summer internship on Machine Learning for ECE Students in Hyderabad are appropriate for students in their last year of graduation.

Machine Learning Internship Certificate in Hyderabad can last anything from three months to two years. Internship for Freshers are not appropriate in some fields, such as fashion or editorial, because they do not provide enough time for the intern or the company to profit. Machine Learning Summer Internship 2022 for Freshers in Hyderabad provide additional depth in the workplace. Paid Internship Machine Learning Summer Online in Hyderabad allows you to polish your talents as you work on larger projects for longer periods of time, and become a more valuable member of the team in Tru Projects.

Summer internship on Machine Learning for CSE Students in Hyderabad might be advantageous even for a seasoned worker considering a career shift Machine Learning Summer Online Internship Course in Hyderabad. Internships Courses For Students have soft talents such as teamwork and leadership. Technical skills and industry expertise, on the other hand, are required before entering a new area of Summer 2023 Machine Learning Internship in Hyderabad.

If you are looking for Summer Online Training for Students Machine Learning or Machine Learning Internship for Freshers in Hyderabad join Tru Projects immediately to earn valuable experience. If you don’t want to deter anybody from looking for Remote Summer Internship Machine Learning in Hyderabad in the traditional manner, start by tapping into Tru Projects website for Paid Summer Internship Machine Learning in Hyderabad, depending on personal interest. But, because internet searches can help you locate internships and focus on what you want, but may not provide you the unique one like Machine Learning Online Summer Internship Students in Hyderabad. So don’t get freak out the Paid Online Summer Internship In Machine Learning in Hyderabad is opened for both Machine Learning 3rd year Summer Internship in Hyderabad and Final Year Machine Learning Internships for cse in Hyderabad.

Without a doubt, Tru Projects offers the greatest summer internship on Machine Learning for ECE Students in Hyderabad accessible. We are committed to helping the students to have fun while learning and in trainings. You can come to us if you need training since our team are teachers with years of expertise in a number of industries in Internship certification. The internships will help students comprehend the whole software development life cycle (SDLC). With the internships you will be able to comprehend the entire process of generating software in your own unique way in Tru Projects.

Working with us might lead to you becoming a Freshers Summer Machine Learning Internship in Hyderabad. The internships were created with care for students who desire to pursue their study or work in this field. Summer Intern may be adapted to one of the greatest summer internships available, which is especially advantageous to younger students.  The summer Training will be adapted to their specific needs. The research Internships will allow students to study the domains at their own speed because we recognise that each student has distinct goals. Many working professionals look forward to having a Machine Learning Internship for Computer Science Students in Hyderabad when they want to change their job position and try something new.

Internship Tracks

Machine Learning

Day - 1: Introduction to Machine Learning
1. Introduction to Machine Learning.
2. How Machine Learning Useful in Daily Life
3. Machine Learning Goals and Deliverables.
4. Why Machine Learning
5. Machine Learning Tools.
Programming Essentials
Day - 2: Introduction to Python
1.Introduction to Python
2.Anaconda Installation and Introduction to Jupyter Notebook
Day - 3: Python Basics
1. Data Structures in Python (Lists, Tuples, Dictionaries, sets)
Day - 4: Python Baiscs
1.Loops, conditional arguments, Comprehensions, Inbuilt functions , string manipulation etc.
Day - 5: Python Baiscs
1.Introuction to OOPS, Inheritence,Polymorphism,Encapsualtion,Abstraction
Day - 6: Python for Data Science - Numpy
1. Introduction to Numpy.
2. Operations in Numpy
Day - 7: Python for Data Science - Pandas
1. Introduction to Pandas.
2. Operations in Pandas – Pandas Basics, Indexing and selecting Data,Merge and Append, Grouping and Summarizing, Lambda functions and Pivot tables
3. Introduction to Reading.
Day - 8: Python for Data Science - Matplotlub
1. Introduction to Matplotlib.
2. Types of plots with ExamplesInheritence,Polymorphism,Encapsualtion,Abstraction
Day - 9: Introduction to SQL
1. Introduction to Database design,.
2. Basics of SQL, Data Retrieval, sorting, compound functions and relational operators, pattern matching with wild cards.
3. Basics on Table creation, updating, modifying etc.
4. Overall Structure of data retrieval queries, Merging tables, User Defined Functions (UDF), Frames.
Statistics & Exploratory Data Analysis (EDA)
Day - 10: Introduction to Data Analytics
1. Business and Data Understanding
2. CRISP-DM Framework – Data Preparation, Modelling, Evaluation and Deployment
Day - 11: Data Visualization in Python
1.Introduction to visualization and Importance of Visualization
2. Introduction to various charts
3. Data visualization toolkit in Python (Libraries or modules available in Python)
4. Plotting Data in Python using matplotlib and seaborn – Univariate Distributions, Bi-variate Distributions
5. Plotting Time series data
Day - 12: Exploratory Data Analysis
1. Introduction to Data Sourcing and various sources available for data collection
2. Data Cleaning – Fixing rows and columns, Missing value Treatment, standardizing values, handling invalid values, Filtering data
Day - 13: Exploratory Data Analysis
1. Data types – Numerical, Categorical (ordered and unordered)
2. Univariate Analysis, Bivariate Analysis, Segmented univariate Analysis
3. Derived Metrics and Feature Engineering
Day - 14: Exploratory Data Analysis
1. Introduction to Outliers.
2. Identify Outliers
3. Outliers Handling using Imputation Techniques
Day - 15: Inferential Statistics
1. Introduction to inferential statistics – basics of probability, Random Variables, Expected value, Probability Distributions
2. Discrete and Continuous Probability Distributions
3. Central Limit Theorem – Introduction and Industrial applications
Day - 16: Hypothesis Testing
1. understanding Hypothesis Testing, Null and Alternate Hypothesis, Industry Relevance
2. Concepts of Hypothesis Testing – p value method, critical value method
3. Types of Errors, T Distribution, other types of tests
4. Industry Demonstration and A/B Testing
Day - 17: Case Study
1. Credit Analysis EDA
2. GDP EDA Analysis
Machine Learning - I
Day - 18: Introduction to Machine Learning
1. Introduction to Machine Learning – Supervised and Unsupervised learning Methods
Day - 19: Simple Linear Regression
1. Introduction to Regression and Best Fit Line
2. Assumptions of Linear Regression (LINE)
3. Cost Functions, Strength of Linear relationship – OLS, coefficient of correlation, coefficient of Determination
4. Intuition to Gradient Descent for optimizing cost function
5. Hypothesis Testing in Linear Regression
6. Building a Linear Model – Reading Data, Cleaning Data, Libraries available – Sklearn, Statsmodel.api
7. Model Building using Sklearn and Training and Test Data, Model Development, Model validation using Residual Analysis, Evaluation against the test Data
Day - 20: Multiple Linear Regression
1. Using Multiple Predictors for Linear Regression
2. Introduction to overfitting, Multi-collinearity
3. Dealing with Categorical variables – OHE, Dummies, Label Encoding
4. Building the model using statesmodel.api and importance of p-values
5. Model Evaluation Metrics – Coefficient of Determination, Adjusted R2, RMSE, AIC, BIC and other model evaluation Metrics
6. Variable Selection – RFE, Step wise selection etc.
7. Gradient Descent and Normal Equation for Multiple Linear Regression
8. Industry Demonstration: Linear Regression Case Study
Day - 21: Logistic Regression
1. Introduction to Classification
2. Binary classification using univariate logistic regression
3. Maximum Likelihood function, Sigmoid Curve and Best Fit
4. Intuition of odds and log-odds
5. Feature selection using RFE
6. Model evaluation – Confusion Matrix and Accuracy
7. Why Accuracy is not Enough and introduction to sensitivity, specificity, precision, recall, area under curve
8. Logistic Regression Case Study
Day - 22: Unsupervised Learning:Clustering
Means Clustering:

1. Understanding clustering with practical examples
2. KMeans Clustering – understanding the algorithm
3. Practical consideration for KMeans Clustering – Elbow curve, silhouette metric and hopkings test for clustering tendency of data, impact of outliers

Day - 23: Unsupervised Learning
Hierarchical Clustering:

1. Hierarchical clustering Algorithm
2. Interpreting the dendogram and Types of Linkages
3. Comparison of Kmeans clustering and Hierarchical clustering – advantages and disadvantages

Day - 24: Unsupervised Learning:Principal Component Analysis(PCA)
1. Intuition behind PCA and practical examples
2. Variance as information and basis transformation of vectors
3. Singular Value Decomposition and Identifying optimum principal components using scree plots
4. Model building with PCA
5. Advantages of PCA and Limitations
Machine Learning - II
Day - 25: Support Vector Machine Algorithm
SVM:
1. Introduction to SVM and How does it works.
2. Advantages and Disadvantages of SVM
3. Kernal Functions in used in SVM
4. Applications of SVM
5. Implementation of SVM using Python
Day - 26: K Nearest Neighbors Algorithm
KNN:
1. Introduction to KNN and How does it works.
2. Advantages and Disadvantages of KNN
3. Applications of KNN
4. Implementation of KNN using Python
Day - 27: Naive Bayes Algorithm
Naive Bayes:
1. Intoduction to Naive Bayes
2. Advantage and Disadvantage of Naive Bayes
3. Applications of Naive Bayes
4. Implementation of Naive Bayes using Python
Day - 28: Tree Models
Decision Trees:

1. Introduction to decision trees and Interpretation
2. Homogeneity measures for splitting a node 1. Gini Index 2. Entropy 3. R2
3. Understanding Hyper parameters – Truncation and Pruning
4. Advantages and Disadvantages
Random Forest:

1. Introduction to ensembling, bagging and intuition
2. Random Forest – Introduction and Hyperparamters
3. Building a model using Random Forest
4. Hyper-parameters impact on model and tuning them
5. Importance of predictors using Random Forrest

Day - 29: Boosting
1. Intuition behind Boosting
2. Introduction to Boosting Algorithms : XGBoost, lightGBM, Catboost
3. Advantages of Boosting Algorithms
4.XGBoost Model Building and importance of various Hyper parameters
5. Hyper-parameter tuning for XGBoost
Day - 30: Case Study
Correlation and Regression Analysis of Physicochemical Parameters of River Water for the Evaluation of Percentage
Day - 31: Case Study
Telecom Churn – Group Case Study
Day - 32: Time Series
1. Introduction to Time Series
2. Trend and seasonality
3. Decomposition
4. moothing (moving average)
5. SES, Holt & Holt-Winter Model
Day - 33: Time Series
1. AutoRegression, Lag Series, ACF, PACF
2. IADF, Random walk and Auto Arima
Day - 34: Text Mining
1. Introduction to Text Mining
2. Text cleaning, regular expressions, Stemming, Lemmatization
3. Word cloud, Principal Component Analysis, Bigrams & Trigrams
4. Text classification, Document vectors, Text classification using Doc2vec
Day - 35: Case Study
sentiment analysis Twiter Data
Day - 36: Project Development
Day - 37: Project Development
Day - 38: Project Development
Day - 39: Project Development
Day - 40: Project Development
Day - 41: Project Development
Day - 42: Project Development
Day - 43: Project Development
Day - 44: Project Development
Day - 45: Project Development