( Microsoft Certified Training)
with
Certificate of Excellence from Microsoft & Official Courseware from Microsoft
AI & ML with Python Programming
Artificial Intelligence (AI) is a branch of Science which deals with helping machines find solutions to complex problems in a more human-like fashion. This course helps to Understand the definition of AI ( “general” and “narrow”), the relationship between AI and Machine, Supervise &Unsupervised, Reinforcement Learning. After this programparticipants will able to start AI & ML with Python Programming
Course outline
Module-1
• Introduction – Data Science (AI/ML)?
• Data Extraction
• Data Wrangling
• Data Exploration
• Data Visualisation
• Statistics
Module-2 Python
• Overview of Python
• Creating “Hello World” code
• Variables
• Python files I/O Functions
• Numbers
• Strings and related operations
• Tuples and related operations
• Lists and related operations
• Dictionaries and related operations
• Tuple – properties, related operations, compared with a list
• List – properties, related operations
• Dictionary – properties, related operations
Module-3
• NumPy – arrays
• Operations on arrays
• Indexing slicing and iterating
• Pandas – data structures & index operations
• Reading and Writing data from Excel/CSV formats into Pandas
• Matplotlib library
Module-4
• Python Revision (numpy, Pandas, scikit learn, matplotlib)
• What is Machine Learning?
• Machine Learning Use-Cases
• Machine Learning Process Flow
• Machine Learning Categories
• Linear regression
• What are Classification and its use cases?
Supervised Learning
• What is Decision Tree?
• Confusion Matrix
• What is Random Forest?
• What is Naïve Bayes?
• How Naïve Bayes works?
• Implementing Naïve Bayes Classifier
• What is Support Vector Machine?
Module-5
Unsupervised Learning
• What is Clustering & its Use Cases?
• What is K-means Clustering?
• How does K-means algorithm work?
• What is Hierarchical Clustering?
• How Hierarchical Clustering works? Reinforcement Learning
• What is Reinforcement Learning
• Why Reinforcement Learning
• Elements of Reinforcement Learning
• Exploration vs Exploitation dilemma
• Market Basket Analysis
Module-6
• Introduction to Dimensionality
• Why Dimensionality Reduction
• PCA (Principal Component Analysis)
• Factor Analysis Time Series Analysis (TSA)
• What is Time Series Analysis?
• Importance of TSA
• Components of TSA
• White Noise
• AR model (Auto regression )
• MA model (moving-average )
• ARMA model (Auto regressive moving average)
• ARIMA model ( Auto Regressive Integrated Moving Average )
• Stationarity
• Data Visualization
Hands on for all the modules:
o Creating “Hello World” code
o Linear Regression
o Logistic regression
o Decision tree
o Principal Component Analysis (PCA)
o Factor Analysis
o Time Series Analysis/ Forecasting
o Market Basket Analysis
o Data Visualization
Fee: Rs 999 + 18% GST
Available Online (Recorded)
Mode of Training: Online
Available Online (Recorded)
Mode of Training: Online