Machine Learning has a variety of uses ranging from Cybersecurity, IT operations, Network Optimization, to Automated System monitoring and more, which is why Machine Learning is in-demand right now. Our Machine Learning Training Institute has the most up-to-date syllabus and modern infrastructure, along with experienced trainers as well. Therefore, our Machine Learning Course will give students a holistic learning of Machine Learning, which will eventually give them a prolonged, high-paying career in Machine Learning as a Machine Learning Engineer and so on. So go ahead and explore more down below to get all the information you need about our Machine Learning Course with certification & placements.
Machine Learning Training
DURATION
1.5 Months
Mode
Live Online / Offline
EMI
0% Interest
Let's take the first step to becoming an expert in Machine Learning Training
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What this Course Includes?
- Technology Training
- Aptitude Training
- Learn to Code (Codeathon)
- Real Time Projects
- Learn to Crack Interviews
- Panel Mock Interview
- Unlimited Interviews
- Life Long Placement Support
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Course Schedules
Course Syllabus
Course Fees
or any other questions...
Breakdown of Machine Learning Training Fee and Batches
Hands On Training
3-5 Real Time Projects
60-100 Practical Assignments
3+ Assessments / Mock Interviews
April 2025
Week days
(Mon-Fri)
Online/Offline
2 Hours Real Time Interactive Technical Training
1 Hour Aptitude
1 Hour Communication & Soft Skills
(Suitable for Fresh Jobseekers / Non IT to IT transition)
April 2025
Week ends
(Sat-Sun)
Online/Offline
4 Hours Real Time Interactive Technical Training
(Suitable for working IT Professionals)
Save up to 20% in your Course Fee on our Job Seeker Course Series
Syllabus of Machine Learning Training
Module 1 – Core Java Fundamentals
- Java Programming Language Keywords
- Literals and Ranges of All Primitive
- Data Types
- Array Declaration, Construction, and Initialization
Module 2 – Declarations and Access Control
- Declarations and Modifiers
- Declaration Rules
- Interface Implementation
Module 3 – Object Orientation, Overloading and Overriding, Constructors
- Benefits of Encapsulation
- Overridden and Overloaded Methods
- Constructors and Instantiation
- Legal Return Types
Module 4 – Flow Control, Exceptions, and Assertions
- Writing Code Using if and switch statements
- Writing Code Using Loops
- Handling Exceptions
- Working with the Assertion Mechanism
- Write Java Programs
Module 5 – TestNG
- Setting up TestNG
- Testing with TestNG
- Composing test and test suites
- Generating and analyzing HTML test reports
- Troubleshooting
Module 6 – Machine Learning
- Introducing Machine Learning
- To Automate or Not to Automate?
- Test Automation for Web Applications
- Machine Learning Components
- Supported Browsers
- Flexibility and Extensibility
Module 7 – Machine Learning -IDE
- Introduction
- Installing the IDE
- Opening the IDE
- IDE Features
- Building Test Cases
- Running Test Cases
- Debugging
- Writing a Test Suite
- Executing Machine Learning -IDE Tests on Different Browsers
Module 8 – XPATH
- Understanding of Source files and Target
- XPATH and different techniques
- Using attribute
- Text ()
- Following
Module 9 – Machine Learning
- Introduction
- How Machine Learning Works
- Installation
- Configuring Machine Learning With Eclipse
- Machine Learning RC Vs Machine Learning
- Programming your tests in WebDriver
- Debugging WebDriver test cases
- Troubleshooting
- Handling HTTPS and Security Pop-ups
- Running tests in different browsers
- Handle Alerts / Pop-ups and Multiple Windows using WebDriver
Module 10 – Automation Test Design Considerations
- Introducing Test Design
- What to Test
- Verifying Results
- Choosing a Location Strategy
- UI Mapping
- Handling Errors
- Testing Ajax Applications
- How to debug the test scripts
Module 11 – Handling Test Data
- Reading test data from excel file
- Writing data to excel file
- Reading test configuration data from text file
- Test logging
- Machine Learning Grid Overview
Module 12 – Building Automation Frameworks Using Machine Learning
- What is a Framework
- Types of Frameworks
- Modular framework
- Data Driven framework
- Keyword driven framework
- Hybrid framework
- Use of Framework
- Develop a framework using TestNG/WebDriver
Objectives of Learning Machine Learning Training
The Machine Learning Training will cover all the topics ranging from fundamental to advanced concepts, which will make it easy for students to grasp Machine Learning. The Machine Learning Course Curriculum is composed of some of the most useful and rare concepts that will surely give students a complete understanding of Machine Learning as well. So, some of those curriculum are discussed below as objectives:
- To make students well-versed with fundamental concepts of Machine Learning like – Core Java Fundamentals, Declarations and Access Control, Object Orientation, Overloading and Overriding, Constructors etc.
- To make students more aware of Machine Learning by making them learn concepts like – TestNG, Machine Learning IDE, XPATH, Programming Tests in WebDriver etc.
- To make students more knowledgeable in advanced concepts of Machine Learning like- Testing Ajax Applications, How to debug the test scripts, Handling Test Data, Building Automation Frameworks Using Machine Learning etc.
Reason to choose SLA for Machine Learning Training
- SLA stands out as the Exclusive Authorized Training and Testing partner in Tamil Nadu for leading tech giants including IBM, Microsoft, Cisco, Adobe, Autodesk, Meta, Apple, Tally, PMI, Unity, Intuit, IC3, ITS, ESB, and CSB ensuring globally recognized certification.
- Learn directly from a diverse team of 100+ real-time developers as trainers providing practical, hands-on experience.
- Instructor led Online and Offline Training. No recorded sessions.
- Gain practical Technology Training through Real-Time Projects.
- Best state of the art Infrastructure.
- Develop essential Aptitude, Communication skills, Soft skills, and Interview techniques alongside Technical Training.
- In addition to Monday to Friday Technical Training, Saturday sessions are arranged for Interview based assessments and exclusive doubt clarification.
- Engage in Codeathon events for live project experiences, gaining exposure to real-world IT environments.
- Placement Training on Resume building, LinkedIn profile creation and creating GitHub project Portfolios to become Job ready.
- Attend insightful Guest Lectures by IT industry experts, enriching your understanding of the field.
- Panel Mock Interviews
- Enjoy genuine placement support at no cost. No backdoor jobs at SLA.
- Unlimited Interview opportunities until you get placed.
- 1000+ hiring partners.
- Enjoy Lifelong placement support at no cost.
- SLA is the only training company having distinguished placement reviews on Google ensuring credibility and reliability.
- Enjoy affordable fees with 0% EMI options making quality training affordable to all.
Highlights of The Machine Learning Training
What is Machine Learning?
Machine learning (ML), a branch of artificial intelligence (AI), involves creating algorithms that enable computers to learn from data and make decisions without explicit programming. By analyzing data, ML models can enhance their performance over time. Key aspects include algorithms, data, training, and various learning methods, with applications in areas like image recognition and autonomous vehicles.
What is Machine Learning Full Stack?
Machine Learning Full Stack involves managing the entire lifecycle of machine learning systems, from data collection and preprocessing to model development, deployment, and maintenance. It includes aspects such as data management, feature engineering, model training, evaluation, and scaling, ensuring a cohesive approach to building and maintaining ML solutions.
What are the reasons for learning Machine Learning?
The following are the reasons for learning Machine Learning:
- Career Advancement: Expertise in ML opens up high-demand roles such as data scientist, ML engineer, and AI specialist, with competitive salaries and diverse job opportunities.
- Broad Industry Application: ML is increasingly used across various sectors, including finance, healthcare, retail, and technology, making it a versatile skill applicable to many fields.
- Complex Problem Solving: ML provides tools to address intricate problems, like trend prediction, task automation, and large-scale data analysis, improving decision-making and efficiency.
- Innovation and Research Contribution: Studying ML allows you to engage in groundbreaking research and development, contributing to advancements in AI and technology.
What are the prerequisites for learning Machine Learning?
The following are the prerequisites for learning Machine Learning, but they are not mandatory:
- Probability and Statistics: A solid foundation in probability distributions, statistical tests, and hypothesis testing is vital for modeling and assessing data.+
- Python: Python is widely used in ML due to its rich ecosystem of libraries and frameworks. Proficiency in Python, including libraries such as NumPy and Pandas, is highly recommended.
- Data Cleaning: Skills in managing missing values, outliers, and inconsistencies are crucial for preparing data.
- Basic Algorithms: Understanding fundamental algorithms such as sorting and searching is helpful for comprehending more complex ML algorithms.
What are the course fees and duration?
Our Machine Learning Course Fees may vary depending on the specific course program you choose (basic / intermediate / full stack), course duration, and course format (remote or in-person). On an average the Machine Learning Course Fees range from 15k to 25k, for a duration of 2 months total with international certification.
What are some of the jobs related to Machine Learning?
The following are the jobs related to Machine Learning:
- Machine Learning Engineer
- Data Scientist
- AI Research Scientist
- Data Engineer
- Business Intelligence (BI) Analyst
- ML Ops Engineer
List a few real time Machine Learning applications.
The following are the real-time Machine Learning applications:
- Recommendation Systems
- Fraud Detection
- Autonomous Vehicles
- Real-Time Translation
- Chatbots and Virtual Assistants
- Personalized Advertising
Who are our Trainers for Machine Learning Training?
Our Mentors are from Top Companies like:
- Experienced Machine Learning Trainers with over 8 years in cutting-edge software technologies across diverse industries.
- They excel in programming languages such as Java, Python, R, and MATLAB, and are adept in ML algorithms including supervised, unsupervised, and deep learning techniques.
- Their expertise covers a broad range of ML models and concepts, including dimensionality reduction, recommender systems, reinforcement learning, natural language processing, and image processing.
- These trainers have led workshops on Machine Learning, Neural Networks, deep learning, and other related subjects at various educational institutions.
- They also have in-depth knowledge of Big Data technologies like Apache Spark, Hadoop, and Tableau.
- They are proficient in teaching various ML tools and techniques such as Linear Regression, Logistic Regression, Naive Bayes, K-Nearest Neighbors, SVM, Q-Learning, Decision Trees, and Random Forests.
- Additionally, they are skilled in statistical analysis tools such as SAS, Excel, and SPSS, as well as data visualization tools.
- With hands-on experience in deploying and optimizing ML solutions, they are experts in preparing students for Machine Learning certifications.
- They are committed to creating a collaborative and stimulating learning environment, building strong relationships with students, and motivating them through complex tasks, assignments, resume development, and interview preparation.
What Modes of Training are available for Machine Learning Training?
Offline / Classroom Training
- Direct Interaction with the Trainer
- Clarify doubts then and there
- Airconditioned Premium Classrooms and Lab with all amenities
- Codeathon Practices
- Direct Aptitude Training
- Live Interview Skills Training
- Direct Panel Mock Interviews
- Campus Drives
- 100% Placement Support
Online Training
- No Recorded Sessions
- Live Virtual Interaction with the Trainer
- Clarify doubts then and there virtually
- Live Virtual Interview Skills Training
- Live Virtual Aptitude Training
- Online Panel Mock Interviews
- 100% Placement Support
Corporate Training
- Industry endorsed Skilled Faculties
- Flexible Pricing Options
- Customized Syllabus
- 12X6 Assistance and Support
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Project Practices for Machine Learning Training
Traffic Flow Prediction
Develop a system to predict and manage traffic flow by analyzing real-time data from traffic cameras and sensors.
Chatbot with Real-Time Interaction
Create a chatbot that engages in real-time conversations, answers queries, and provides assistance using natural language understanding.
Face Recognition System
Implement a system that performs real-time face recognition from live video feeds or images to identify individuals.
Real-Time Fraud Detection
Build a fraud detection system that identifies and flags suspicious financial transactions as they occur.
Personalized Recommendation System
Develop a recommendation engine for e-commerce or streaming services that offers real-time, personalized suggestions based on user behavior.
Autonomous Vehicle Simulation
Design a simulation for self-driving cars that processes real-time sensor data (like cameras and Lidar) to make navigation decisions.
Real-Time Stock Market Prediction
Build a model to predict stock price movements by analyzing real-time market data and historical trends.
Predictive Maintenance for IoT Devices
Create a system that forecasts equipment failures using sensor data from industrial machines, enabling timely maintenance.
Real-Time Sentiment Analysis
Develop a model that classifies social media posts, customer reviews, or news articles in real time to determine sentiment.
The SLA way to Become
a Machine Learning Training Expert
Enrollment
Technology Training
Realtime Projects
Placement Training
Interview Skills
Panel Mock
Interview
Unlimited
Interviews
Interview
Feedback
100%
IT Career
Placement Support for a Machine Learning Training
Genuine Placements. No Backdoor Jobs at Softlogic Systems.
Free 100% Placement Support
Aptitude Training
from Day 1
Interview Skills
from Day 1
Softskills Training
from Day 1
Build Your Resume
Build your LinkedIn Profile
Build your GitHub
digital portfolio
Panel Mock Interview
Unlimited Interviews until you get placed
Life Long Placement Support at no cost
FAQs for
Machine Learning Training
What does dimensionality reduction involve, and why is it significant?
1.
Dimensionality reduction aims to decrease the number of features in a dataset while retaining as much essential information as possible. Techniques such as Principal Component Analysis (PCA) and t-Distributed Stochastic Neighbor Embedding (t-SNE) are used to simplify models, cut down on computational costs, and address issues like the curse of dimensionality.
How does cross-validation enhance the evaluation of machine learning models?
2.
Cross-validation improves model evaluation by dividing the data into multiple subsets or folds. The model is trained on some of these folds and tested on the others. This process is repeated several times, and the results are averaged, providing a more accurate assessment of the model’s performance.
What are activation functions in neural networks, and what role do they play?
3.
Activation functions introduce non-linearity into neural networks, enabling them to learn and model complex patterns. Examples include ReLU (Rectified Linear Unit), Sigmoid, and Tanh. These functions decide whether a neuron should be activated, helping the network capture a broad range of functions.
Can you explain how decision trees operate, including their main benefits and drawbacks?
4.
Decision trees operate by partitioning data into subsets based on feature values, forming a tree-like structure of decisions and outcomes. They are valued for their interpretability and ease of use but can suffer from overfitting and can be sensitive to slight changes in the data.
What is the purpose of regularization, and what are some common methods?
5.
Regularization is used to prevent overfitting by adding a penalty to the complexity of the model. Common methods include L1 regularization (Lasso), which promotes sparsity by setting some weights to zero, and L2 regularization (Ridge), which penalizes large weights without necessarily eliminating them.
What is the purpose of regularization, and what are some common methods?
6.
Regularization is used to prevent overfitting by adding a penalty to the complexity of the model. Common methods include L1 regularization (Lasso), which promotes sparsity by setting some weights to zero, and L2 regularization (Ridge), which penalizes large weights without necessarily eliminating them.
What does transfer learning involve, and how is it applied in machine learning?
7.
Transfer learning involves leveraging a model that has been pre-trained on a large dataset for a new, related task. This technique allows for fine-tuning the existing model rather than starting from scratch, which is particularly useful when there is limited data or computational resources.
What are Generative Adversarial Networks (GANs), and what is their operational mechanism?
8.
Generative Adversarial Networks (GANs) are composed of two opposing neural networks: the generator and the discriminator. The generator creates synthetic data, while the discriminator assesses the authenticity of this data. They are trained together, with the generator trying to create data that can fool the discriminator, and the discriminator aiming to correctly identify real versus fake data.
Where is the corporate office of Softlogic Systems located?
9.
The corporate office of the Softlogic Systems is located at the institute’s K.K.Nagar branch.
What payment methods does Softlogic accept?
10.
Softlogic accepts a wide range of payment methods, including:
- Cash
- Debit cards
- Credit cards (MasterCard, Visa, Maestro)
- Net banking
- UPI
- Including EMI.
Additional Information for
Machine Learning Training
Our Machine Learning Training has the best curriculum among other IT institutes ever. Our institute is located in the hub of IT companies, which creates abundance of opportunities for candidates.. Our Machine Learning course syllabus will teach you topics that no other institute will teach. Enroll in our Machine Learning training to explore some innovative Top project ideas for the Machine Learning.
1.
Scopes available in the future for learning Machine Learning
The following are the scopes available in the future for learning Machine Learning Course:
- Advanced AI Systems: ML will be integral in developing more sophisticated AI technologies, combining with natural language processing, computer vision, and robotics to build more intelligent and autonomous systems.
- Customized Medicine: ML will advance personalized medicine by analyzing genetic information and patient records to customize treatments and predict health risks.
- Self-Driving Technologies: ML will enhance autonomous vehicles, improving their safety, navigation, and real-time decision-making capabilities.
- Algorithmic Trading: ML will be used to develop advanced trading algorithms that forecast market trends and make more efficient trading decisions.
- IoT Innovations: ML integration with Internet of Things (IoT) devices will lead to smarter homes and industries, enhancing predictive maintenance and automation.
- Enhanced Language Models: ML will facilitate the creation of more advanced NLP models for tasks like translation, sentiment analysis, and human-computer interaction, improving communication tools and virtual assistants.
- Adaptive Learning: ML will foster the development of personalized educational tools that adjust to individual learning styles and progress, thereby enhancing educational experiences.
- Bias Reduction: ML research will focus on methods to minimize biases and ensure fairness in AI systems, addressing ethical issues and promoting equitable technology use.