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Certified Data Scientist Course
Become proficient in data science and cover its core concepts by enrolling in DataMites Certified Data Scientist ...Read more
Online
8 Months
₹ 59451 110000
Quick Facts
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Medium of instructions
English
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Mode of learning
Self study, Virtual Classroom
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Mode of Delivery
Video and Text Based
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Course overview
DataMites’ Data Scientist certification course is a highly specialised programme covering the fundamentals of data science. The online Certified Data Scientist Course includes inclusive realms such as Statistics, Machine Learning, and Business Domain Knowledge to give you a 360-degree learning experience.
The Certified Data Scientist training course is available in both online and offline modes of learning. While it is mainly focused on Python, it also includes R to help professionals working in R. Throughout the course, you will receive expert guidance from elite professors and mentors via theoretical lessons and 10+ industry-related projects.
Moreover, after successful course completion, DataMites' dedicated Placement Assistance Team (PAT) will provide you with end-to-end job support. You'll work with expert counsellors for career enhancement. You will also receive unlimited access to Data Science Cloud Lab for practice.
Also, the Certified Data Scientist classes course is accredited by the International Association of Business Analytics Certification (IABAC). So, the certification holds global recognition.
The highlights
- IABAC-aligned syllabus
- IABAC certification
- Multiple learning options
- Access to Data Science Cloud Lab
- Faculty from IIMS
- Internship + placement support available
- 10+ industry-related projects
- Decision-making case studies
- 1 Live client project
- 25 capstone projects
- Examination as a method of assessment
- Intensive live online training
- Self-study books and videos
Program offerings
- Online and offline learning options
- Iabac certification
- Iabac-aligned syllabus
- Internship
- Placement assistance
- Data science cloud lab for practice
- Expert trainers.
Course and certificate fees
Fees information
- The Data Scientist certification course fee depends upon the mode of learning you choose.
- You need to pay the entire course fee upfront.
Certified Data Science fee structure
Mode of learning | Total Fee | Discounted Fee |
Live Virtual | Rs. 110,000 | Rs. 59,451 |
Blended Learning | Rs. 66,000 | Rs. 34,951 |
In-Person Classroom | Rs. 110,000 | Rs. 64,451 |
certificate availability
Yes
certificate providing authority
IABAC
Who it is for
The Certified Data Scientist course is suitable for –
- Beginners in the field who wish to get a solid understanding of data science for better career opportunities
- Working professionals who want to switch their domain to data science
- Those whose jobs mainly revolve around data analytics and Machine Learning
- Project managers who wish to switch to management roles in data science projects
Eligibility criteria
There's no eligibility criteria for the Certified Data Scientist online training course.
Certification Qualifying Details
However, you need to clear the IABAC certification exam to qualify for the Certified Data Scientist Course certificate.
What you will learn
Once you have successfully completed the Certified Data Scientist programme by Data Mites, you will have –
- A better understanding of the data science project workflow
- Knowledge of statistical concepts
- Understanding of core Machine Learning algorithms
- Extensive knowledge of data mining practices, data forecasting, and data visualisation
- Insights to create a business case for data science projects
- Knowledge of delivering end-to-end projects to customers
The syllabus
DATA SCIENCE FOUNDATION
MODULE 1: DATA SCIENCE COURSE INTRODUCTION
MODULE 2: DATA SCIENCE ESSENTIALS
- Introduction to Data Science
- Evolution of Data Science
- Data Science Terminologies
- Data Science vs AI/Machine Learning
- Data Science vs Analytics
MODULE 3: DATA SCIENCE DEMO
- Business Requirement: Use Case
- Data Preparation
- Machine learning Model building
- Prediction with ML model
- Delivering Business Value
MODULE 4: ANALYTICS CLASSIFICATION
- Types of Analytics
- Diagnostic Analytics
- Predictive Analytics
- Prescriptive Analytics
MODULE 5: DATA SCIENCE AND RELATED FIELDS
- Introduction to AI
- Introduction to Computer Vision
- Introduction to Natural Language Processing
- Introduction to Reinforcement Learning
- Introduction to GAN
- Introduction to Generative Passive Models
MODULE 6: DATA SCIENCE ROLES & WORKFLOW
- Data Science Project workflow
- Roles: Data Engineer, Data Scientist, ML Engineer and MLOps Engineer
- Data Science Project stages
MODULE 7: MACHINE LEARNING INTRODUCTION
- What Is ML? ML Vs AI
- ML Workflow, Popular ML Algorithms
- Clustering, Classification And Regression
- Supervised Vs Unsupervised
MODULE 8: DATA SCIENCE INDUSTRY APPLICATIONS
- Data Science in Finance and Banking
- Data Science in Retail
- Data Science in Health Care
- Data Science in Logistics and Supply Chain
- Data Science in Technology Industry
- Data Science in Manufacturing
- Data Science in Agriculture
PYTHON FOUNDATION
MODULE 1: PYTHON BASICS
- Introduction of python
- Installation of Python and IDE
- Python objects
- Python basic data types
- Number & Booleans, strings
- Arithmetic Operators
- Comparison Operators
- Assignment Operators
- Operator’s precedence and associativity
MODULE 2: PYTHON CONTROL STATEMENTS
- IF Conditional statement
- IF-ELSE • NESTED IF
- Python Loops basics
- WHILE Statement
- FOR statements
- BREAK and CONTINUE statements
MODULE 3: PYTHON DATA STRUCTURES
- Basic data structure in python
- String object basics and inbuilt methods
- List: Object, methods, comprehensions
- Tuple: Object, methods, comprehensions
- Sets: Object, methods, comprehensions
- Dictionary: Object, methods, comprehensions
MODULE 4: PYTHON FUNCTIONS
- Functions basics
- Function Parameter passing
- Iterators
- Generator functions
- Lambda functions
- Map, reduce, filter functions
MODULE 5: PYTHON NUMPY PACKAGE
- NumPy Introduction
- Array – Data Structure
- Core Numpy functions
- Matrix Operations
MODULE 6: PYTHON PANDASPACKAGE
- Pandasfunctions
- Data Frame and Series – Data Structure
- Data munging with Pandas
- Imputation and outlier analysis
STATISTICS ESSENTIALS
MODULE 1: OVERVIEW OF STATISTICS
- Descriptive And Inferential Statistics
- Basic Terms Of Statistics
- Types Of Data
MODULE 2: HARNESSING DATA
- Random Sampling
- Sampling With Replacement And Without Replacement
- Cochran's Minimum Sample Size
- Simple Random Sampling
- Stratified Random Sampling
- Cluster Random Sampling
- Systematic Random Sampling
- Biased Random Sampling Methods
- Sampling Error
- Methods Of Collecting Data
MODULE 3: EXPLORATORY DATA ANALYSIS
- Exploratory Data Analysis Introduction
- Measures Of Central Tendencies: Mean, Median And Mode
- Measures Of Central Tendencies: Range, Variance And Standard Deviation
- Data Distribution Plot: Histogram
- Normal Distribution
- Z Value / Standard Value
- Empherical Rule and Outliers
- Central Limit Theorem
- Normality Testing
- Skewness & Kurtosis
- Measures Of Distance: Euclidean, Manhattan And MinkowskiDistance
MODULE 4: HYPOTHESIS TESTING
- Hypothesis Testing Introduction
- P- Value, Confidence Interval
- Parametric Hypothesis Testing Methods
- Hypothesis Testing Errors : Type I And Type Ii
- One Sample T-test
- Two Sample Independent T-test
- Two Sample Relation T-test
- One Way Anova Test
MODULE 5: CORRELATION AND REGRESSION
- Correlation Introduction
- Direct/Positive Correlation
- Indirect/Negative Correlation
- Regression
- Choosing Right Method
MACHINE LEARNING ASSOCIATE
MODULE 1: MACHINE LEARNING INTRODUCTION
- What Is ML? ML Vs AI
- ML Workflow, Popular ML Algorithms
- Clustering, Classification And Regression
- Supervised Vs Unsupervised
MODULE 2: PYTHON NUMPY & PANDAS PACKAGE
- NumPy & Pandas functions
- Array – Data Structure
- Core Numpy functions
- Matrix Operations
- Data Frame and Series – Data Structure
- Data munging with Pandas
- Imputation and outlier analysis
MODULE 3: VISUALIZATION WITH PYTHON
- Visualization Packages (Matplotlib)
- Components Of A Plot, Sub-Plots
- Basic Plots: Line, Bar, Pie, Scatter
- Advanced Python Data Visualizations
MODULE 4: ML ALGO: LINEAR REGRESSION
- Introduction to Linear Regression
- How it works: Regression and Best Fit Line
- Modeling and Evaluation in Python
MODULE 5: ML ALGO: KNN
- Introduction to KNN
- How It Works: Nearest Neighbor Concept
- Modeling and Evaluation in Python
MODULE 6: ML ALGO: LOGISTIC REGRESSION
- Introduction to Logistic Regression
- How it works: Classification & Sigmoid Curve
- Modeling and Evaluation in Python
MODULE 7: PRINCIPLE COMPONENT ANALYSIS (PCA)
- Building Blocks Of PCA
- How it works: Finding Principal Components
- Modeling PCA in Python
MODULE 8: ML ALGO: K MEANS CLUSTERING
- Understanding Clustering (Unsupervised)
- K Means Algorithm
- How it works: K Means theory
- Modeling in Python
MACHINE LEARNING EXPERT
MODULE 1: MACHINE LEARNING INTRODUCTION
- What Is ML? ML Vs AI
- ML Workflow, Popular ML Algorithms
- Clustering, Classification And Regression
- Supervised Vs Unsupervised
MODULE 2: ML ALGO: LINEAR REGRESSSION
- Introduction to Linear Regression
- How it works: Regression and Best Fit Line
- Modeling and Evaluation in Python
MODULE 3: ML ALGO: LOGISTIC REGRESSION
- Introduction to Logistic Regression
- How it works: Classification & Sigmoid Curve
- Modeling and Evaluation in Python
MODULE 4: ML ALGO: KNN
- Introduction to KNN
- How It Works: Nearest Neighbor Concept
- Modeling and Evaluation in Python
MODULE 5: ML ALGO: K MEANS CLUSTERING
- Understanding Clustering (Unsupervised)
- K Means Algorithm
- How it works : K Means theory
- Modeling in Python
MODULE 6: PRINCIPLE COMPONENT ANALYSIS (PCA)
- Building Blocks Of PCA
- How it works: Finding Principal Components
- Modeling PCA in Python
MODULE 7: ML ALGO: DECISION TREE
- Random Forest Ensemble technique
- How it works: Bagging Theory
- Modeling and Evaluation in Python
MODULE 8 : ML ALGO: NAÏVE BAYES
- Introduction to Naive Bayes
- How it works: Bayes' Theorem
- Naive Bayes For Text Classification
- Modeling and Evaluation in Python
MODULE 9: GRADIENT BOOSTING, XGBOOST
- Introduction to Boosting and XGBoost
- How it works: weak learners' concept
- Modeling and Evaluation of in Python
MODULE 10: ML ALGO: SUPPORT VECTOR MACHINE (SVM)
- Introduction to SVM
- How It Works: SVM Concept, Kernel Trick
- Modeling and Evaluation of SVM in Python
MODULE 11: ARTIFICIAL NEURAL NETWORK (ANN)
- Introduction to ANN
- How It Works: Back prop, Gradient Descent
- Modeling and Evaluation of ANN in Python
MODULE 12: ADVANCED ML CONCEPTS
- Adv Metrics (Roc_Auc, R2, Precision, Recall)
- K-Fold Cross-validation
- Grid And Randomized Search CV In Sklearn
- Imbalanced Data Set: Smote Technique
- Feature Selection Techniques
ADVANCED DATA SCIENCE
MODULE 1: TIME SERIES FORECASTING - ARIMA
- What is Time Series?
- Trend, Seasonality, cyclical and random
- Autoregressive Model (AR)
- Moving Average Model (MA)
- Stationarity of Time Series
- ARIMA Model
- Autocorrelation and AIC
MODULE 2: FEATURE ENGINEERING
- Introduction to Features Engineering
- Transforming Predictors
- Feature Selection methods
- Backward elimination technique
- Feature importance from ML modeling
MODULE 3: SENTIMENT ANALYSIS
- Introduction to Sentiment Analysis
- Python packages: TextBlob, NLTK
- Case study: Twitter Live Sentiment Analysis
MODULE 4: REGULAR EXPRESSIONS WITH PYTHON
- Regex Introduction
- Regex codes
- Text extraction with Python Regex
MODULE 5: ML MODEL DEPLOYMENT WITH FLASK
- Introduction to Flask
- URL and App routing
- Flask application – ML Model deployment
MODULE 6: ADVANCED DATA ANALYSIS WITH MS EXCEL
- MS Excel core Functions
- Pivot Table
- Advanced Functions (VLOOKUP, INDIRECT..)
- Linear Regression with EXCEL
- Goal Seek Analysis
- Data Table
- Solving Data Equation with EXCEL
- Monte Carlo Simulation with MS EXCEL
MODULE 7: AWS CLOUD FOR DATA SCIENCE
- Introduction of cloud
- Difference between GCC, Azure,AWS
- AWS Service ( EC2 and S3 service)
- AWS Service (AMI), AWS Service (RDS)
- AWS Service (IAM), AWS (Athena service)
- AWS (EMR), AWS, AWS (Redshift)
- ML Modeling with AWS Sage Maker
MODULE 8: AZURE FOR DATA SCIENCE
- Introduction to AZURE ML studio
- Data Pipeline and ML modeling with Azure
DATABASE: SQL AND MONGODB
MODULE 1: DATABASE INTRODUCTION
- DATABASE Overview
- Key concepts of database management
- CRUD Operations
- Relational Database Management System
- RDBMS vs No-SQL (Document DB)
MODULE 2: SQL BASICS
- Introduction to Databases
- Introduction to SQL
- SQL Commands
- MY SQL workbench installation
- Comments
- import and export dataset
MODULE 3: DATA TYPES AND CONSTRAINTS
- Numeric, Character, date time data type
- Primary key, Foreign key, Not null
- Unique, Check, default, Auto increment
MODULE 4: DATABASES AND TABLES (MySQL)
- Create database
- Delete database
- Show and use databases
- Create table, Rename table
- Delete table, Delete table records
- Create new table from existing data types
- Insert into, Update records
- Alter table
MODULE 5: SQL JOINS
- Inner join
- Outer join
- Left join
- Right join
- Cross join
- Self join
MODULE 6: SQL COMMANDS AND CLAUSES
- Select, Select distinct
- Aliases, Where clause
- Relational operators, Logical
- Between, Order by, In
- Like, Limit, null/not null, group by
- Having, Sub queries
MODULE 7 : DOCUMENT DB/NO-SQL DB
- Introduction of Document DB
- Document DB vs SQL DB
- Popular Document DBs
- MongoDB basics
- Data format and Key methods
- MongoDB data management
VERSION CONTROL WITH GIT
MODULE 1: GIT INTRODUCTION
- Purpose of Version Control
- Popular Version control tools
- Git Distribution Version Control
- Terminologies
- Git Workflow
- Git Architecture
MODULE 2: GIT REPOSITORY and GitHub
- Git Repo Introduction
- Create New Repo with Init command
- Copying existing repo
- Git user and remote node
- Git Status and rebase
- Review Repo History
- GitHub Cloud Remote Repo
MODULE 3: COMMITS, PULL, FETCH AND PUSH
- Code commits
- Pull, Fetch and conflicts resolution
- Pushing to Remote Repo
MODULE 4: TAGGING, BRANCHING AND MERGING
- Organize code with branches
- Checkout branch
- Merge branches
MODULE 5: UNDOING CHANGES
- Editing Commits
- Commit command Amend flag
- Git reset and revert
MODULE 6: GIT WITH GITHUB AND BITBUCKET
- Creating GitHub Account
- Local and Remote Repo
- Collaborating with other developers
- Bitbucket Git account
BIG DATA FOUNDATION
MODULE 1: BIG DATA INTRODUCTION
- Big Data Overview
- Five Vs of Big Data
- What is Big Data and Hadoop
- Introduction to Hadoop
- Components of Hadoop Ecosystem
- Big Data Analytics Introduction
MODULE 2 : HDFS AND MAP REDUCE
- HDFS – Big Data Storage
- Distributed Processing with Map Reduce
- Mapping and reducing stages concepts
- Key Terms: Output Format, Partitioners, Combiners, Shuffle, and Sort
- Hands-on Map Reduce task
MODULE 3: PYSPARK FOUNDATION
- PySpark Introduction
- Spark Configuration
- Resilient distributed datasets (RDD)
- Working with RDDs in PySpark
- Aggregating Data with Pair RDDs
MODULE 4: SPARK SQL and HADOOP HIVE
- Introducing Spark SQL
- Spark SQL vs Hadoop Hive
- Working with Spark SQL Query Language
MODULE 5 : MACHINE LEARNING WITH SPARK ML
- Introduction to MLlib Various ML algorithms supported by MLib
- ML model with Spark ML
- Linear regression
- logistic regression
- Random forest
MODULE 6: KAFKA and Spark
- Kafka architecture
- Kafka workflow
- Configuring Kafka cluster
- Operations
BI ANALYST
MODULE 1: TABLEAU FUNDAMENTALS
- Introduction to Business Intelligence & Introduction to Tableau
- Interface Tour, Data visualization: Pie chart, Column chart, Bar chart.
- Bar chart, Tree Map, Line Chart
- Area chart, Combination Charts, Map
- Dashboards creation, Quick Filters
- Create Table Calculations
- Create Calculated Fields
- Create Custom Hierarchies
MODULE 2: POWER-BI BASICS
- Power BI Introduction
- Basics Visualizations
- Dashboard Creation
- Basic Data Cleaning
- Basic DAX FUNCTION
MODULE 3 : DATA TRANSFORMATION TECHNIQUES
- Exploring Query Editor
- Data Cleansing and Manipulation:
- Creating Our Initial Project File
- Connecting to Our Data Source
- Editing Rows
- Changing Data Types
- Replacing Values
MODULE 4: CONNECTING TO VARIOUS DATA SOURCES
- Connecting to a CSV File
- Connecting to a Webpage
- Extracting Characters
- Splitting and Merging Columns
- Creating Conditional Columns
- Creating Columns from Examples
- Create Data Model
Admission details
- Open the Certified Data Scientist course webpage.
- Choose your preferred mode of learning and click on ‘Enquire Now.’
- Now, create your account by providing the required contact information.
- DataMites will contact you within 24 hours to discuss the next steps.
How it helps
The Data Mites’ Certified Data Scientist training course has been specially designed to cover the core concepts of data science. All the Certified Data Scientist Course modules comprise immensely valuable case studies and real-world projects. As a result, you can receive hands-on training and achieve a firm grip over the course material.
Besides, once you complete the course and pass the IABAC certification exam, you'll receive a globally recognised certificate. So, you can find lucrative job opportunities around the world.
FAQs
What if I miss a live training session of an online certified Data Scientist course?
All online sessions are recorded so you can view them later. In case of classroom sessions, you can speak to the coordinator to allow you to join the session in another batch.
Do I need to buy any software prior to starting with the programme?
No, most of the software used in the Certified Data Scientist Course is either free or open-source. So, you need not invest in any software prior to training.
What is the method of assessment for certification?
You will need to appear for a certification examination to qualify for the certificate.