Big Data - Baudhyantram Coding Trainers & Developers

Web designing in a powerful way of just not an only professions. We have tendency to believe the idea that smart looking .

Course Duration

2 Months

Timings

10am To 6pm

Project Included

Two Projects Included

Machine Learning

Machine Learning

Machine Learning is a subset of artificial intelligence (AI) and involves the development of algorithms and models. That then enable computers to learn from and make decisions based on data, without being explicitly programmed to do so. The models developed can perform prediction, recommendation systems, fraud detection, and many other applications.

About Machine Learning Training Course

The training program teaches individuals the fundamentals and provide hands-on experience with developing machine learning models. The course typically covers topics such as supervised and unsupervised learning, model selection, overfitting, and regularization.  Course may also cover various algorithms such as linear and logistic regression, decision trees, and neural networks. It may include a combination of theoretical and practical components. In addition to programming, the course may also cover data preparation, data visualization, and model evaluation techniques. The training program aims to teach participants how to build and apply machine learning models to solve real-world problems. The course also aims to teach participants how to use various machine learning tools and libraries, such as Python, TensorFlow, and Keras, to build and evaluate models.

Goal & Target Audience

The goal of this training program is to equip individuals with the knowledge and skills needed to build models to real-world problems. The program aims to teach participants the fundamentals including supervised and unsupervised learning, deep learning, and neural networks. The course will also teach participants how to use popular tools and libraries, such as Python, TensorFlow, and Keras. The target audience for this training program includes:
  1. Data scientists, machine learning engineers, and AI researchers who want to expand their skills and knowledge.
  2. Software developers who want to integrate machine learning capabilities into their applications.
  3. Students and recent graduates who want to build a career in machine learning or artificial intelligence.
  4. Professionals from other fields, such as finance, healthcare, and marketing, who want to learn how to apply machine learning to their work.

Eligibility Criteria for Machine Learning

There are no strict eligibility criteria for learning machine learning, as it is is accessible to individuals with a wide range of backgrounds and skillsets. The following skills and knowledge can be helpful for individuals interested in learning machine learning:
  1. Mathematics: Knowledge of linear algebra, calculus, and probability theory for understanding the underlying mathematical concepts that drive the algorithms.
  2. Statistics: A solid understanding of statistical techniques, such as hypothesis testing, and regression analysis for evaluating the performance of the models.
  3. Programming: Familiarity with a programming language such as Python or R is essential for implementing the algorithms and working with data.
  4. Data analysis: Experience working with data, including data cleaning, preparation, and visualization, is important for preparing data for use in the models.
  5. Problem-solving skills: The ability to identify and solve problems, as well as to think creatively, for developing the models that can address complex challenges.

our address

32, Preeti Enclave Shimla Bypass, Saharanpur Rd, near ICICI Bank, Chowk, Dehradun, Uttarakhand 248001

Contact way

info@baudhyantram.com

+91 7900899996

Opening Houres

Mon - Sat(8.00am - 6.00pm)

Sunday - Closed

This course is perfect for absolute beginners with no previous coding experience, to intermediates looking to sharpen their skills to the expert level.

This course as well as every other course we offer is available offline as well as online.

Yes, but you must complete all the mentioned modules in this course successfully to receive the course completion certificate.

For the participants who complete the course, there will be a dedicated placement team to guide them for better placements.