What Are the Significant Topics in B. Tech Artificial Intelligence and Machine Learning?
Machine Learning is a powerful tool that includes practices from various fields and the main objective is to make a generalizable model to get results. From banking sectors to telecommunication, many firms are increasingly employing machine learning algorithms to enhance operations efficiency.
B. Tech in AI and Machine Learning is being used by big businesses and organizations to get more meaningful and useful data. The insights and patterns from data permit organizations to execute economical and competitive practices rapidly ultimately increasing revenue, customer retention, and consumer satisfaction. Here are a few of the top machine learning topics and how they can help your business to succeed and excel.
Important topics in B. Tech Artificial Intelligence and Machine Learning
There are a lot of important topics in B.
Tech in Artificial Intelligence and Machine Learning. All of them are
mentioned below.
Supervised Learning:
Supervised Learning is also known as
supervised machine learning. It is defined by its use of labeled datasets to
train algorithms to categorize data or predict results accurately. As input
data is provided into the model, the model fixes its weights until it has been
fixed correctly. This happens as a part of the cross-validation process to
confirm that the model avoids under fitting and over fitting. Supervised
learning helps organizations and firms to solve a variety of real-world
problems at a large scale, such as classifying spam in a different folder from
your inbox. Some of the methods that are used in supervised learning include
neural networks, random forest, linear regression, naive Bayes, logistic
regression, and support vector machine (SVM). For example, Pinterest uses
supervised learning to manage spam and content discovery as well as to reduce
the churn of email newsletter subscribers. This learning is also used in
Bioinformatics to preserve human fingerprints and that can be later executed
into mobile phones to increase security.
Unsupervised Learning:
Unsupervised learning is also known as unsupervised machine learning. This learning uses machine learning algorithms to analyze and cluster unlabeled datasets. These algorithms find hidden patterns or data groupings without the need for human intervention.
This method’s ability to create similarities and differences in information makes it ideal for exploratory data analysis, cross-selling strategies, customer segmentation, and image and pattern recognition.
Unsupervised machine learning is
also applied in the dimension-reduction process to reduce the number of image
features. Two well-known and useful methods for this purpose are singular value
decomposition (SVD) and principal component analysis (PCA). Artificial neural
networks, Bayesian approaches to clustering, and clustering using k-means are
among the many algorithms used in unsupervised learning.
Semi-supervised Learning:
Semi-supervised Learning is also known as Semi-supervised machine learning. This is also an important topics in B. Tech Artificial Intelligence and Machine Learning. Semi-supervised learning provides a jolly medium between supervised and unsupervised learning. At the time of the training, it uses a smaller labeled data set to instruct classification and feature extraction from a larger, unlabeled data set.
Semi-supervised learning aims to anticipate and categorize unlabeled data using the labeled information set. Semi-supervised learning can easily rectify the problem of not having enough labeled data for a supervised learning algorithm. If enough data cannot be labeled due to price, it also helps.
Semi-supervised learning models
are usually used in organizations and industries that still require human
involvement. For example, semi-supervised learning is used in speech analysis
to label audio files, a work that still requires human intervention. It is
mostly used in web content categorization to arrange billions of web pages on
the internet.
Reinforcement learning:
Reinforcement learning is commonly known as Reinforcement machine learning. Reinforcement machine learning is a popular machine learning model in B. Tech in AI and Machine Learning syllabus that is very similar to supervised learning, but the algorithm isn’t trained using sample data. This model grasps as it goes by using trial and error. A sequence of successful results will be reinforced to create the top recommendation or policy for a given problem.
Reinforcement learning is being
used to optimize operational productivity in manufacturing, academics,
robotics, and supply chain logistics. For example, UK company Wayve has created
self-driving cars using reinforcement learning. As a result, reinforcement
learning modules help in controller optimization, parking, and lane changing.
Another business that uses reinforcement learning to assist in personalizing
ads for particular end users is ad recommendation systems.
Neural networks or Artificial Neural Networks (ANN):
The Artificial Neural Network (ANN) model is dеpеndеnt on how the human brain functions. The ANN model is customized to mathematically model the biology of a brain and mimic its tasks. ANN can recognize objects and spееch and animals similar to brain cells called neurons.
Neural networks are applied in facial recognition and stock market predictions and social media and to name a few. Netflix is probably one of the most prominent companies that employ artificial neural networks to deliver outstanding customer еxpеriеncе. These models allow Netflix to tailor customized recommendations and predict what shows usеrs would bе intеrеstеd in.
Dееp lеarning is basеd on thе
concеpt of artificial nеural nеtworks (ANNs). This subsеt of Machinе Lеarning
allows thе machinе to train itself to perform a task by еxposing thе multi
layеrеd nеural nеtwork to vast amounts of data.
Applications of Machine Learning in B. Tech Artificial intelligence and Machine Learning
- Prediction: Machine learning (ML) can be used to
forecast and predict several different things, such as travel time, weather,
retail sales, loan eligibility, and stock prediction.
- Medical diagnosis: Both terminal and non-terminal diseases can
be identified using machine learning.
- Financial
associations and trade companies use algorithms to find out trading tactics and
discover fraudulent deals, guests, credit defaults, and credit checks.
- Image recognition: Machines can effortlessly identify objects,
people, positions, and digital images by using image segmentation algorithms.
- Speech recognition is the process of converting spoken commands
and queries into a manual. It's the process of turning spoken words into
written language. This approach is used by numerous virtual assistants,
including Microsoft's Cortana, Apple's Siri, Amazon's Alexa, Google Assistant,
and Google Home Speakers. Text can be
converted by machines using automatic language rephrasing and auto-corrections.
- Recommendation machines These are used by e-commerce stores, movie
online apps, and recommendation machines to suggest the coming item, film, or
series to watch predicated on a user's purchases or viewing activities as well
as what other users have chosen to buy or observe.
B. Tech Artificial Intelligence and Machine Learning course highlights
Level of Program |
Undergraduate |
Program Duration |
4 Years |
Eligibility Criteria |
Applicants qualifying their 10+2
exam from a recognized Board and Science stream (Physics and Mathematics
compulsory subjects) are eligible |
Admission Process |
Admissions procedures that are
merit-based and entrance exam-based |
Average Course Fee |
INR 1,00,000/- to INR 1,50,000/-
per annum |
Average Starting Salary |
Between 10 LPA and 15 LPA |
Job Profiles |
Data scientist, computer vision
engineer, principal data scientist, data analyst, etc. |
B. Tech in Artificial Intelligence Syllabus
Given below is the B. Tech Artificial Intelligence Syllabus for the students. Go through them.
Semester 1 |
Semester 2 |
Physics |
Basic Electronics Engineering |
Physics Lab |
Basic Electronics Engineering
Lab |
Mathematics I |
Mathematics II |
Playing with Big Data |
Data Structures with C |
Programing in C Language |
Data Structures-Lab |
Programing in C Language Lab |
Discrete Mathematical Structures |
Open Source and Open Standards |
Introduction to IT and Cloud
Infrastructure Landscape |
Communication WKSP 1.1 |
Communication WKSP 1.2 |
Communication WKSP 1.1 Lab |
Communication WKSP 1.2 Lab |
Seminal Events in Global History |
Environmental Studies |
- |
Appreciating Art Fundamentals |
Semester 3 |
Semester 4 |
Computer System Architecture |
Introduction to Java and OOPS |
Design and Analysis of
Algorithms |
Operating Systems |
Design and Analysis of
Algorithms Lab |
Data Communication and Computer
Networks |
Web Technologies |
Data Communication and Computer
Networks Lab |
Web Technologies Lab |
Introduction to Java and OOPS |
Functional Programming in Python |
Applied Statistical Analysis
(for AI and ML) |
Introduction to Internet of
Things |
Current Topics in AI and ML |
Communication WKSP 2.0 |
Database Management Systems
& Data Modelling |
Communication WKSP 2.0 Lab |
Database Management Systems
& Data Modelling Lab |
Securing Digital Assets |
Impact of Media on Society |
Introduction to Applied
Psychology |
- |
Semester 5 |
Semester 6 |
Formal Languages & Automata
Theory |
Reasoning, Problem Solving and
Robotics |
Mobile Application Development |
Introduction to Machine Learning |
Mobile Application Development
Lab |
Natural Language Processing |
Algorithms for Intelligent
Systems |
Minor Subject 2 – General
Management |
Current Topics in AI and ML |
Minor Subject 3 - Finance for
Modern Professional |
Software Engineering & Product
Management |
Design Thinking |
Minor Subject: - 1. A Look at Contemporary
English Literature or An Overview of Linguistics |
Communication WKSP 3.0 |
Minor Project I |
Minor Project II |
Semester 7 |
Semester 8 |
Program elective |
Robotics and Intelligent Systems |
Web Technologies |
Major Projects 2 |
Major Project- 1 |
Program Elective-5 |
Comprehensive Examination |
Program Elective-6 |
Professional Ethics and Values |
Open Elective - 4 |
Industrial Internship |
Universal Human Value &
Ethics |
Open Elective - 3 |
- |
CTS-5 Campus to corporate |
- |
Introduction to Deep Learning |
- |
Final Thoughts
At last, whether you look to
pursue b. tech artificial intelligence Syllabus
or not, these machine learning subjects encompass us. Businesses or big
industries heavily rely on these techniques, which range from artificial neural
networks to supervised learning, to enhance productivity and stay ahead of the
competition.
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