Diploma in Data Science and Artificial Intelligence

BY
Boston Institute of Analytics

Learn the fundamentals of data science and artificial intelligence with the Diploma in Data Science & Artificial Intelligence certification by the Boston Instit

Mode

Part time, Online

Duration

6 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
Frequency of Classes Weekends

Course overview

The Diploma in Data Science & Artificial Intelligence is a certification course designed to equip students with the essential skills and knowledge required to excel in the rapidly evolving fields of data science and artificial intelligence. This dynamic course offers a blend of theoretical foundations and hands-on practical experience, ensuring that participants develop a deep understanding of the underlying concepts and gain proficiency in applying them to real-world scenarios. 

The Diploma in Data Science & Artificial Intelligence certification by the Boston Institute of Analytics covers a wide range of topics, including machine learning, data analysis, statistical modelling, and neural networks. Students will have the opportunity to work on industry-relevant projects, honing their analytical and problem-solving abilities. 

Read more:

  • Data Science Certification Courses
  • Artificial Intelligence Certification Courses

The highlights

  • 6 months course
  • 2 months of Internship
  • Certification from the Boston Institute of Analytics
  • Two-in-One Certification
  • Classroom + Online Mode
  • Interactive classes
  • Hands-on learning experience

Program offerings

  • Course readings
  • Practical learning

Course and certificate fees

certificate availability

Yes

certificate providing authority

Boston Institute of Analytics

Who it is for

The Diploma in Data Science & Artificial Intelligence certification course is designed for Data Analysts, Machine Learning Engineers, and Data Scientists to serve as a valuable endorsement of expertise, enhancing career prospects and employability in industries that increasingly rely on data-driven decision-making. The course reflects the latest trends and advancements in the field, keeping students abreast of emerging technologies

Eligibility criteria

Academic Qualifications

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

Certification Qualifying Details 

To qualify for the Diploma in Data Science & Artificial Intelligence training, candidates are required to complete the full course. 

What you will learn

R programming Knowledge of python

The Diploma in Data Science & Artificial Intelligence certification syllabus, students will provided with the expertise to develop and implement machine learning algorithms, enabling them to extract valuable insights and predictions from data. Students will gain programming skills, particularly in languages such as Python and R, essential for data manipulation and model development. 

Upon completion of the Diploma in Data Science & Artificial Intelligence certification course, students will possess a solid foundation in statistical modeling, enabling them to make informed decisions based on data-driven evidence. With hands-on experience in working on real-world projects, students will also develop a problem-solving mindset and the ability to apply their knowledge to practical scenarios.

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.

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 Analyze Data From Different Angles.

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.

Data Manipulation With Pandas & Data Visualization

  • Master Pandas Data Structures
  • Explore Data And Visualize Insights
  • Introduction To Version Control With Git
  • Practical Exercise: Load And Explore A Dataset Using Pandas, And Create Basic Data Visualizations Using Matplotlib And Seaborn.

Advanced Sql Concept & 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.

Advanced Statistics & Hypothesis Testing

  • Hypothesis Testing Techniques
  • Interpret Data Visualizations
  • Correlation, Regression, And Anova
  • Practical Exercise: Perform Hypothesis Tests And Analyze Real Datasets Using Statistical Techniques.

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.

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.

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.

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

  • Classification With Svm
  • K-Nearest Neighbors For Predictions
  • Choose K And Distances
  • Practical Exercise: Build And Evaluate Svm And Knn Models For Classifcation Problems.

Time Series Modeling With Arima And Sarima

  • Understand Time Series Data
  • Build Arima And Sarima Models
  • Practical Forecasting And Model Evaluation
  • Practical Exercise: Analyze And Forecast Time Series Data Using Arima And Sarima Models.

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.

Model Deployment

  • Understand Model Deployment
  • Set Up Deployment Environment
  • Secure, Monitor, And Optimize Deployed Models
  • Practical Exercise: Deploy A Machine Learning Model As A Web Api And Monitor Its Performance.

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.

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.

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.

Fundamentals Of Excel

  • Master Data Cleaning Techniques
  • Visualize Data With Excel Charts
  • Efficient Subtotaling And Analysis
  • Practical Exercise: Clean And Analyze A Provided Dataset Using Excel's Basic Functions And Charts.

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.

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.

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.

Fundamentals Of Statistics & Probability

  • Understand Data Types
  • Central Tendency And Variance
  • Probability And Distribution Basics
  • Practical Exercise: Calculate Mean, Median, Variance, And Standard Deviation For A Dataset.

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.

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 Multiclassclassification Problems.

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.

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.

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.

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 Deeplearning Frameworks.

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.

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.

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

Tableau

  • Explore Tableau Prep And Desktop
  • Visual Analytics And Calculations
  • Design Engaging Dashboards
  • Practical Exercise: Develop Visualizations And Dashboards In Tableau Based On Provided Data.

Advanced R Programming

  • Data Frames And Custom Functions
  • Master Apply Functions
  • Work With Dates And Times In R
  • Practical Exercise: Utilize Apply Functions, Handle Dates And Times, And Work With Data Frames In R.

Admission details

To join the Diploma in Data Science & Artificial Intelligence classes, candidates need to follow these steps: 

Step 1: Browse the official URL

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

Step 2: Candidates are required to submit the online application by filling out all the necessary and relevant information such as primary email address, name, phone number, and motivation letter.

Step 3: Thereafter, they are required to pay the course fee in the payment gateway option.

Step 4: Candidates would then have to access the course and start the learning process.


Filling the form

To enrol for the Diploma in Data Science & Artificial Intelligence training, candidates are required to submit the online application which asks for details such as primary email address, name, phone number and a motivation letter.

How it helps

The Diploma in Data Science & Artificial Intelligence certification benefits the student by providing a comprehensive and well-rounded education, ensuring students gain proficiency in key areas such as data analysis, machine learning, and statistical modeling. This course makes graduates versatile and well-equipped to tackle diverse challenges in the data science and artificial intelligence domains. 

FAQs

How can I apply for the Diploma in Data Science & Artificial Intelligence certification course?

Candidates need to submit an online application form by submitting their official details and pay the course fee in the payment gateway option.

What is the duration of the Diploma in Data Science & Artificial Intelligence by the Boston Institute of Analytics?

The certification programme is 6 months in duration with access to course readings and hands-on learning experience.

Are there any scholarship options available for Diploma in Data Science & Artificial Intelligence training?

Candidates are not provided with any scholarship options for this certification programme. 

Who can enrol for the Diploma in Data Science & Artificial Intelligence classes?

This course is designed for data scientists, data analysts and machine learning engineers to help students understand the fundamentals involved in data science and artificial intelligence.

Are there any prerequisites for the Diploma in Data Science & Artificial Intelligence training?

Candidates do not need any prerequisites for this certification programme.

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