PYTHON PROGRAMMING COURSE TRAINING IN HYDERABAD

About LearnAi.co.in

LearnAI.co.in, the premier training institute, offers a comprehensive Python programming course designed to cater to learners of all levels – from Beginners to Intermediate and Expert. Our beginner-friendly curriculum starts with the fundamentals, ensuring a smooth onboarding for newcomers. For intermediate learners, we delve deeper into Python's advanced concepts, enabling them to build real-world applications. Our expert-level training is tailored to hone your skills, offering hands-on experience and advanced projects. Join LearnAI.co.in today and embark on a Python programming journey that suits your expertise level.

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What is Python Programming?

Python programming is a versatile and beginner-friendly computer language used to instruct computers to perform tasks. It's popular for its simplicity and can be employed for various purposes, from web development to data analysis.

Why to learn Python Programming?

Learning Python programming is an excellent choice for career growth because it's widely used in various industries, from web development to data science, and has a strong job market demand. With its simplicity and versatility, mastering Python opens the door to a wide range of career opportunities and the potential for higher earning potential.

Who can Pursue Python Programming?

  • Any Degree pursuing or Graduated,
  • Bachelor’s, Master’s, PhD, and
  • Anyone interested in course
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COURSE CURRICULUM

Python

  • Introduction
  • Installation
  • Fundamental of Python
  • Variables
  • Comments
  • Print Statement
  • Operators
  • Mutable Data Types
  • Data Types
  • Special Data Types
  • Conditions
  • Loops
  • Functions
  • Break, Continue and Pass Statements
  • String Object and working
  • List
  • Tuple
  • Set
  • Dictionaries
  • Map
  • Reduce
  • Filter
  • Classes
  • Objects
  • Inheritance
  • Multiple Inheritance
  • Modules
  • Error Handling

Data Visualization

  • Matplotlib
  • Seaborn
  • Plotly
  • Cuflinks
  • Bokesh

Libraries

  • Numpy
  • Pandas
  • Random
  • Math
  • Scipy
  • sklearn
  • Keras
  • Tensorflow
  • OpenCV
  • NLTK
  • Spacy
  • Lot more…

Tableau

  • Introduction to Data Visualization
  • Introduction to Tableau
  • Basics charts and dashboards
  • Special Char Types
  • Dashboard design and principles
  • Connections with servers
  • Local file access
  • Hands on experience with worksheet

Web Scraping

  • Url
  • Beautiful Soup

Data base

  • SQL
  • MongoDB

Statistics

  • Basics of Statistics
  • Descriptive Statistics
  • Inferential Statistics
  • Qualitative Analysis
  • Quantitative Analysis
  • Hypothesis Testing
  • Data Distribution
  • Probability Distribution
  • Normal Distribution
  • Poison Distribution
  • Outlier Detection
  • Other Statistical Fundamentals

Machine Learning

  • Supervised Learning
  • Unsupervised Learning
  • Semi Supervised Learning
  • Reinforcement Learning

Supervised Learning

  1. Regression Models
  2. Classification Models

Regression Models

  • Introduction to Regression Models
  • Linear Models
  • Linear Regression
  • Multiple Regression
  • Ordinary Least Square Method
  • Non-Linear Models
  • Support Vector Regressor
  • Random Forest Regressor
  • Decision Tree

Evaluation Metrics for Regression Models

  • R-Square
  • Adjusted R Square
  • Mean Square Error
  • Root Mean Square Error
  • Mean Absolute Error

Classification Models

  • Introduction to Classification Models
  • Logistics Regression
  • Naïve Bayes
  • Support Vector Classifier
  • K-NN Classifier
  • Decision Tree Classifier
  • Random Forest Classifier

Evaluation Metrics for Classification Models

  • Accuracy
  • Precision
  • Recall
  • F1 Score
  • ROC Curve

Unsupervised Learning

  • Introduction to Unsupervised Learning

Clustering Models

  • Introduction to Clustering Models
  • K- Mean Clustering
  • Hierarchical Clustering
  • High Dimensional Clustering

Dimension Reduction

  • Principal Component Analysis (PCA) Reinforcement Learning

Reinforcement Learning

  • Introduction to Reinforcement Learning

Featurization, Model Selection & Tuning

  • Feature Extraction
  • Model Defects & Evaluation Metrics
  • Model Selection and Tuning
  • Comparison of machine learning models

Neural Networks

  • Introduction to Deep Learning
  • Fundamental of Neural Networks
  • TensorFlow and Keras
  • Artificial Neural Networks (ANN)
  • Convolution Neural Networks (CNN)
  • Recurrent Neural Networks (RNN)
  • Evaluation of Deep Learning
  • Neural Networks Basics
  • Gradient Descent
  • Introduction to Perceptron & Neural Networks
  • Batch Normalization
  • Activation and Loss Functions
  • Hyper parameter tuning
  • SoftMax
  • Deep Neural Networks
  • Weights initialization

Image Pre-processing

  • Computer Vision
  • Open CV
  • Noise Detection
  • Noise Reduce
  • Low Pass Filters
  • Forward Propagation
  • Backward Propagation
  • Pooling & Padding

Natural Language Processing

  • Introduction to NLP
  • Corpus
  • Natural Language Understanding (NLU)
  • Natural Language Generator (NLG)
  • Tokenization (Word, Sentence, Blank, RegEx)
  • Frequency Distribution
  • Filtering
  • Stemming
  • Lemmatization
  • Stop Words
  • Regular Expressions
  • POS Tagging
  • Syntax Tree
  • Chunking
  • Lemmas
  • Hypernyms
  • Hyponyms
  • Synonyms
  • Antonyms
  • Distance Between words
  • Wordnet
  • Name Entity Recognition
  • Bag of words or Document Matrix
  • Count Vectorization
  • Term Frequency
  • Inverse Document Frequency
  • Sentimental Analysis

Job Roles

  • Python Developer
  • Data Scientist
  • Machine Learning Engineer
  • Web Developer
  • DevOps Engineer
  • Software Engineer
  • Data Analyst
  • Network Engineer
  • Artificial Intelligence (AI) Engineer
  • Automation Tester
  • Game Developer
  • Cybersecurity Analyst
  • Cloud Solutions Architect
  • Bioinformatics Analyst
  • Quantitative Analyst (Quant)
  • Financial Analyst
  • Geospatial Analyst
  • Robotics Engineer
  • Natural Language Processing (NLP) Engineer
  • Computer Vision Engineer

Components of Python Programming

  • Python Interpreter
  • Integrated Development Environments (IDEs):
    • PyCharm
    • Visual Studio Code
    • Jupyter Notebook
  • Text Editors:
    • Sublime Text
    • Atom
    • Notepad++
  • Package Managers:
    • pip
    • Conda
  • Version Control:
    • Git
    • GitHub
  • Virtual Environments:
    • Virtualenv
    • Anaconda
  • Testing Frameworks:
    • unittest
    • pytest
  • Web Frameworks:
    • Django
    • Flask
  • Data Visualization:
    • Matplotlib
    • Seaborn
    • Plotly
  • Database Management:
    • SQLAlchemy
    • SQLite
  • Task Automation:
    • Celery
    • Airflow
  • Documentation Tools:
    • Sphinx
    • ReadTheDocs
  • Collaboration and Communication:
    • Slack
    • Trello
  • Continuous Integration/Continuous Deployment (CI/CD):
    • Jenkins
    • Travis CI

What We Offer

24/7 Portal Support
24/7 Portal Access
Experience Trainers
Domain Expertise Trainers
Industrial Standard Course Structure
Job Oriented Programs
Recording Sessions
Assignments on Real time Scenarios
Job Support
Resume Preparations
Internships
Job Assistance
Working on Real Time Projects
Course Completion Certifications

We Provide Higher Quality Services

AND YOU’LL GET SOLUTIONS FOR EVERYTHING
Best Artificial Intelligence Training in Hyderabad with 100% placement Assistance. Learn Data Science with Python, Data Analysis, Artificial Intelligence, Machine Learning, Deep Learning, NLP, Statistics and Tableau.

Branches

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Phone: +91 9390023585
Email: info@learnai.co.in

Head Office

Address: 1st Floor, Rajadhani Theatre Complex, Pillar Number 1546, above Siri Mobiles, Dilsukhnagar, Hyderabad, Telangana 500060.
Phone: +91 9390023585
Email: info@learnai.co.in
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