Data Science & Artificial Intelligence

BY
Boston Institute of Analytics

Learn to use Python/R to analyse and interpret data practically while enrolled in the Data Science & Artificial Intelligence.

Mode

Part time, Online

Duration

4 Months

Quick Facts

particular details
Medium of instructions English
Mode of learning Virtual Classroom, Campus Based/Physical Classroom
Mode of Delivery Video and Text Based

Course overview

The Data Science & Artificial Intelligence online course is a comprehensive programme that aims to provide students with the necessary skills and knowledge to succeed in the field of analytics. The course covers a wide range of topics including Python/R computing, machine learning, statistical concepts, BI dashboarding tools, and their real-world business applications. The Data Science & Artificial Intelligence certification by BIA begins with an induction module where students explore data science opportunities and gain career-ready skills. 

They also learn how to set up the required software tools and environment on their computers. The programme then moves on to cover fundamentals of Excel, advanced Excel, Python fundamentals, loops and functions in Python, Numpy fundamentals, and data manipulation with Pandas & data visualisation. The Data Science & Artificial Intelligence certification course offers different certification options including a 4-month diploma, a 6-month diploma with an internship, and a 10-month master diploma/postgraduate master diploma with on-job training as a data scientist. Upon completion of the course, students can apply for various job roles such as data scientist, machine learning engineer, deep learning engineer, data analyst, AI product manager, business intelligence analyst, and many more. Readers can also browse several other Data Science With Artificial Intelligence Courses online.

The highlights

  • 4 Months to Complete, 200+ Hours Course
  • Certification from the Boston Institute of Analytics
  • Two In One Certification
  • Classroom + Online Mode

Program offerings

  • Dual certification
  • Foundation course
  • Hands-on learning
  • Practical based
  • Live lecture
  • Weekend course

Course and certificate fees

certificate availability

Yes

certificate providing authority

Boston Institute of Analytics

Who it is for

The Data Science & Artificial Intelligence certification syllabus is designed for individuals who are interested in pursuing a career in data science and AI or those who want to enhance their data manipulation skills in their current professions. It caters to:

  • Data Engineer
  • Data Scientist
  • Data Analyst
  • Artificial Intelligence Engineer

Eligibility criteria

Academic Qualifications

Candidates from all academic streams such as arts, science, commerce, and engineering can apply for this course.

Certification Qualifying Details of Data Science & Artificial Intelligence

The certification for Data Science & Artificial Intelligence training is granted upon completing the course.

What you will learn

Data analysis Business analytics knowledge Knowledge of data visualization Machine learning Knowledge of algorithms

During Data Science & Artificial Intelligence classes, participants will learn:

  • Python and R computing skills
  • Machine Learning algorithms and their applications
  • Statistical concepts and their use in data analysis
  • Data visualization techniques using tools like Power BI and Tableau
  • Natural Language Processing (NLP) techniques for text analysis
  • Time series modelling and forecasting using ARIMA and SARIMA
  • Deep learning concepts and their application in neural networks

The syllabus

Induction

  • Explore Data Science Opportunities
  • Gain Career-Ready Skills
  • Software Installation
  • Practical Exercise: Set up the required software tools and environment (Anaconda, Jupyter, etc.) on your computer.

Fundamentals Of Excel

  • Master Data Cleaning Techniques
  • Visualise Data with Excel Charts
  • Efficient Subtotaling and Analysis
  • Practical Exercise: Clean and analyse a provided dataset using Excel's basic functions and charts.

Advanced Excel

  • Pivot Tables for Data Summarization
  • Data Analysis and Visualization
  • Data Linking for Comprehensive Reports
  • Practical Exercise: Create a Pivot Table and build advanced charts to analyse data from different angles.

Python Fundamentals

  • Python Basics and Operators
  • Control Flow with Conditional Statements
  • Python Data Types and Structures
  • Practical Exercise: Write Python code to solve simple programming problems, focusing on variables and operators.

Loops & Functions In Python

  • Iterate with Loops in Python
  • Create and Use Python Functions
  • Advanced-Data Manipulation with Lambda
  • Practical Exercise: Implement loops and functions to perform tasks such as data processing and automation.

Numpy Fundamentals

  • Work with NumPy Arrays
  • Efficient Indexing and Slicing
  • Filtering and Boolean Indexing
  • Practical Exercise: Work with NumPy arrays to perform basic array operations, indexing, and filtering.

Data Manipulation With Pandas And Data Visualization

  • Master Pandas Data Structures
  • Explore Data and Visualise Insights
  • Introduction to Version Control with Git
  • Practical Exercise: Load and explore a dataset using Pandas, and create basic data visualisations using Matplotlib and Seaborn.

Introduction To Sql & Basic Querying

  • SQL for Data Retrieval
  • Data Modeling Fundamentals
  • Advanced Data Sorting and Filtering
  • Practical Exercise: Write SQL queries to retrieve and manipulate data from a sample database.

Advanced Sql Concept And Data Manipulation

  • Temporary Tables and Documentation
  • Aggregations and Grouping Data
  • Advanced SQL Operations and Joins
  • Practical Exercise: Perform more complex SQL operations, such as joining and aggregating data.

Fundamentals Of Statistics And Probability

  • Understand Data Types
  • Central Tendency and Variance
  • Probability and Distribution Basics
  • Practical Exercise: Calculate mean, median, variance, and standard deviation for a dataset.

Advanced Statistics And Hypothesis Testing

  • Hypothesis Testing Techniques
  • Interpret Data Visualisations
  • Correlation, Regression, and ANOVA
  • Practical Exercise: Perform hypothesis tests and analyse real datasets using statistical techniques.

Introduction To Machine Learning And Regression Basics

  • Dive into Machine Learning
  • Data Preprocessing Essentials
  • Linear Regression for Predictive Modeling
  • Practical Exercise: Implement a simple linear regression model and evaluate its performance.

Multiple Linear Regression & Model Evaluation

  • Evaluate Models with MAE, MSE, RMSE
  • Multiple Linear Regression
  • Practical Model Evaluation with Real Data
  • Practical Exercise: Build and evaluate a multiple linear regression model using a real-world dataset.

Logistic Regression And Classification Metrics

  • Master Logistic Regression
  • Classification Metrics for Model Assessment
  • ROC Curves and Model Performance
  • Practical Exercise: Train and evaluate logistic regression models for binary and multiclass classification problems.

Decision Trees And Ensemble Methods

  • Understand Decision Trees
  • Prevent Overfitting and Tree Pruning
  • Explore Random Forest and Gradient Boosting
  • Practical Exercise: Create decision tree models and explore the power of ensemble methods.

Model Evaluation And Validation Techniques

  • K-Fold Cross-Validation
  • Hyperparameter Tuning
  • In-Depth Classification Metrics
  • Practical Exercise: Apply K-fold cross-validation and hyperparameter tuning to improve model performance.

Unsupervised Learning

  • Discover K-Means Clustering
  • Hierarchical Clustering Techniques
  • Clustering for Data Insights
  • Practical Exercise: Implement K-Means clustering and hierarchical clustering on real data.

Dimensionality Reduction And Feature Selection

  • Reduce Dimensionality Effectively
  • Principal Component Analysis (PCA)
  • Feature Engineering for Improved Models
  • Practical Exercise: Apply PCA for dimensionality reduction and feature engineering to enhance model performance.

Support Vector Machines (Svm) And K-Nearest Neighbours (Knn)

  • Classification with SVM
  • K-Nearest Neighbors for Predictions
  • Choose K and Distances
  • Practical Exercise: Build and evaluate SVM and KNN models for classification problems.

Advanced Ensemble Learning

  • Bagging, Stacking, and Blending
  • Explore Advanced Ensemble Algorithms
  • Harness the Power of XGBoost and LightGBM
  • Practical Exercise: Implement bagging, stacking, and advanced ensemble algorithms like XGBoost and LightGBM on a dataset.

Time Series Modelling With Arima And Sarima

  • Understand Time Series Data
  • Build ARIMA and SARIMA Models
  • Practical Forecasting and Model Evaluation
  • Practical Exercise: Analyse and forecast time series data using ARIMA and SARIMA models.

Introduction To Deep Learning

  • Overview of Artificial Neural Networks
  • Basic Deep Learning Concepts
  • Build and Train Simple Neural Networks
  • Practical Exercise: Build and train a simple neural network on a dataset using popular deep learning frameworks.

Deep Learning Architectures And Training

  • Dive into CNNs and RNNs
  • Train Deep Learning Models
  • Avoid Overfitting with Regularization
  • Practical Exercise: Create and train Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) for various tasks.

Natural Language Processing (Nlp)

  • Master NLP Essentials
  • Preprocess Text Data
  • Create Text Classification Models
  • Practical Exercise: Perform text preprocessing and build a text classification model using NLP techniques.

Model Deployment

  • Understand Model Deployment
  • Set Up Deployment Environment
  • Secure, Monitor, and Optimise Deployed Models
  • Practical Exercise: Deploy a machine learning model as a web API and monitor its performance.

Introduction To Generative Ai

  • Types of Generative Models
  • Understanding Generative Adversarial Networks (GANs)
  • Understanding Variational Autoencoders (VAE)
  • Practical Exercise: Setting up Python Environment and Deep Learning Libraries

Text Generation With Recurrent Neural Networks (Rnns)

  • Introduction to Text Generation
  • Best Practices to Review Creative Text Generation
  • Common Issues in Training RNNs
  • Practical Exercise: Building a text generator using RNNs.

Introduction To Transformers

  • RNN Vs Transformer Models
  • Overview of GPT-2 and BERT
  • NLP Applications and Text Generation with Transformers
  • Practical Exercise: Build a Language Model using GPT-2.

Power Bi

  • Introduction to Power BI
  • Data Transformation and Modeling
  • Create Interactive Dashboards
  • Practical Exercise: Transform data and create interactive dashboards in Power BI using real-world datasets.

Tableau

  • Explore Tableau Prep and Desktop
  • Visual Analytics and Calculations
  • Design Engaging Dashboards
  • Practical Exercise: Develop visualisations and dashboards in Tableau based on provided data.

Introduction To R

  • Get Started with R
  • Work with Variables and Data Types
  • Handle Data Frames and Apply Functions
  • Practical Exercise: Perform data manipulation and analysis in R, including creating custom functions.

Advanced R Programming

  • Data Frames and Custom Functions
  • Master Apply Functions
  • Work with Dates and Times in R
  • Practical Exercise: Utilise apply functions, handle dates and times, and work with data frames in R.

Admission details

Follow the steps below to join the online course.

Step 1- Click on the link below:

https://bostoninstituteofanalytics.org/data-science-and-artificial-intelligence/

Step 2- Click on “Enquire Now”. Submit the form and your contact details and a representative will contact you.

Step 3- Once the fees are paid, you are enrolled in the course.

How it helps

The Data Science & Artificial Intelligence certification benefits include:

  • Gain in-demand skills in data science and artificial intelligence
  • Enhance career prospects in a rapidly growing field
  • Obtain industry-recognised certifications
  • Hands-on experience with real-world datasets and projects

FAQs

Is prior programming experience required to enrol in the Data Science & Artificial Intelligence online course?

While prior programming experience is not mandatory, familiarity with basic programming concepts will be helpful.

What kind of datasets will be used in the Data Science & Artificial Intelligence online certification course?

The course uses real-world datasets to provide practical insights and hands-on experience.

Can I access the course material and recordings after completion?

Yes, students will have access to the course material and recordings for revision and reference purposes.

Will I receive a certificate upon completion of the course?

Yes, students will receive a certificate from the Boston Institute of Analytics upon successful completion of the course.

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