Learn Latest Trend and Updates in Artificial Intelligence with LSET Industry Experts
The Artificial Intelligence Course offers comprehensive training on artificial intelligence fundamentals. Through practical scenarios, students enhance their intelligence and skills in artificial intelligence. This hands-on programme focuses on developing intelligence, applying intelligence to real-world cases, and mastering techniques essential for success in the rapidly evolving field of artificial intelligence.
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*Modules of our curriculum are subject to change. We update our curriculum based on the new releases of the libraries, frameworks, Software, etc. Students will be informed about the final curriculum in the course induction class.
The Artificial Intelligence Course at LSET offers an immersive learning experience, designed to equip students with a robust understanding of artificial intelligence. This course covers the core concepts of intelligence, exploring its applications across various industries. With hands-on training, students develop the intelligence needed to tackle real-world challenges. The curriculum is continually updated to reflect the latest advancements, ensuring participants stay at the forefront of AI intelligence. By engaging in lectures, projects, and internships, students will enhance their intelligence, making them proficient in the rapidly evolving field of artificial intelligence.
Machine Learning: Dive into the intelligence behind predictive models, including supervised and unsupervised learning, and explore the latest developments in reinforcement learning.
Natural Language Processing (NLP): Gain insights into the intelligence of language models, with a focus on recent breakthroughs like GPT-4 and its applications in chatbots and language translation.
Computer Vision: Explore the intelligence driving image and video analysis, including advancements in facial recognition, object detection, and autonomous vehicle technology.
Deep Learning: Understand the intelligence of neural networks, with a particular emphasis on convolutional and recurrent neural networks, crucial for tasks like image classification and time-series analysis.
Ethical AI: Engage with the intelligence required to navigate the ethical implications of AI, addressing biases, privacy concerns, and the societal impacts of intelligent systems.
Edge AI: Discover the intelligence that powers AI at the edge, enabling smart devices to process data locally, enhancing speed and privacy in real-time applications.
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Hands-on Workshops
Interview Preparation
CV Preparation
Personality Development
Join our Artificial Intelligence Course to build a solid foundation in machine learning, increase job opportunities, and gain practical experience in AI project creation. Take advantage of this opportunity to immerse yourself in the world of artificial intelligence with LSET.
*Modules of our curriculum are subject to change. We update our curriculum based on the new releases of the libraries, frameworks, Software, etc. Students will be informed about the final curriculum in the course induction class.
We love to answer questions, empower students, and motivate professionals. Feel free to fill out the form and clear up your doubts related to our Artificial Intelligence Course.
Pre-Work: Math for AI and Statistics Refresher: Revisits essential mathematical concepts and statistical principles crucial for effectively understanding and applying AI algorithms.
Programming with Python: Delves into Python, a widely used language in AI and data science, covering essential programming skills and data manipulation.
Data Structures and Algorithms: Explores critical data structures and algorithms essential for efficient problem-solving and building effective AI applications.
Machine Learning: Introduces key machine learning concepts, techniques, and models, including regression, classification, and probability theory.
Advanced Machine Learning: Provides a deep dive into advanced machine learning concepts, including decision trees, ensemble methods, and feature engineering.
Natural Language Processing (NLP): Offers insights into computer and human language interaction, covering applications like chatbot development and sentiment analysis.
Computer Vision (CV): Concentrates on empowering machines to understand and interpret visual data, covering areas such as image classification and recognition.
Ethical Implications of AI: Explores ethical concerns, bias, and regulations surrounding AI, fostering responsible and ethical AI development and deployment.
Industry Applications and Use Cases: Showcases real-world applications of AI in diverse domains, including impactful examples of AI technologies.
The course is designed to be accessible to individuals with or without a technical background, offering a thorough introduction to AI concepts, terminology, and applications without requiring prior programming or computer science expertise. Throughout the program, learners can engage in practical demonstrations of AI through mini-projects, further solidifying their understanding of AI in action.
In addition to the core AI curriculum, the course offers specialized modules covering data science, machine learning models, deep learning, computer vision, and natural language processing. It also provides a comprehensive overview of AI’s ethical considerations and societal impacts, ensuring a well-rounded understanding of the field.
The course syllabus is meticulously crafted to prepare aspiring AI enthusiasts for successful careers by providing hands-on experience, foundational knowledge, and exposure to cutting-edge AI technologies.
Following are the steps involved in the LSET’s project-based learning;
Step 1: Project Idea Discussion
In this step, students get introduced to the problem and develop a strategy to build the solution.
Step 2: Build Product Backlog
This step requires students to enhance the existing starter product backlog available in the project. This helps students to think about real-life business requirements and formulate them in good user stories.
Step 3: Design Releases and Sprints
In this step, students define software releases and plan sprints for each release. Students must go through sprint planning individually and learn about story points and velocity.
Step 4: Unit and Integration Tests
In this step, students learn to write unit tests to ensure every application part works fine.
Step 5: Use CICD to Deploy
In this step, students learn to use CICD (Continuous Integration Continuous Delivery) pipeline to build their application as a docker image and deploy it to Kubernetes.
London has been a leading international financial centre since the 19th century. In recent years, London has seen many FinTech start-ups and significant innovations in the banking sector. This project aims to introduce students to the financial industry and technologies used to handle billions of daily transactions. As part of this project, students will learn the current technological advances and build up their knowledge to start a simple banking application. This application uses agile project management practices to build basic functionality. Students will be presented with user stories to create the initial project backlog. Students need to enhance this backlog by adding more relevant user stories and working on them.
LSET emphasises project-based learning as it allows the students to master the course content by going through near real-world work experience. LSET projects are carefully designed to teach the industry-required skills and mindset. It motivates the students on various essential aspects like learning to work in teams, improving communication with peers, taking the initiative to look for innovative solutions, enhancing problem-solving skills, understanding the end user requirements to build user-specific products, etc.
Capstone Projects build students’ confidence in handling projects and applying their newly learned skills to solve real-world problems. This allows the students to reflect upon their learning and find the opportunity to get the most out of the course. Learn more about Capstone Projects here.
Get started on your journey to becoming a professional in artificial intelligence
Taking the LSET could provide you with the perfect starting point for your career in Artificial Intelligence.
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