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Data Science Training Programme

Abhishek singh

17 modules

English

Certificate of completion

Lifetime access

"Unlock the Power of Data with Our Comprehensive Data Science Training Programme - Gain Skills and Insights to Make Informed Decisions!"

Overview

The whole course duration is around 6 to 8 Months. Overall 65+ real time projects. 

After the completion of this course, the selected students will get 3 months of internships.

  • Comprehensive Data Science training course
  • Covers key concepts, tools, and techniques
  • Designed to help you excel in the field
  • Gain in-demand skills
  • Kick-start your Data Science career today

What you will learn

Python

Learn Python programming, mastering syntax, data structures, and algorithms, developing versatile skills for web development, automation, and data science.

Probability & Statistics

Master probability and statistics, gaining skills in data analysis, hypothesis testing, and probability models for informed decision-making and predictions.

Machine learning & Deep Learning

Explore machine learning and deep learning, understanding algorithms, training models, and applying neural networks for predictive analysis and pattern recognition.

Natural language Processing

Learn Natural Language Processing, decoding and analyzing human language, developing applications for text analysis, multi modal sentiment analysis, and many more.

Big Data Tools and Technologies

Learn about Big Data tools and technologies, mastering storage, processing, and analysis techniques for extracting valuable insights from vast datasets efficiently.

Tableau & PowerBI

Learn data visualization, analysis, and storytelling with Tableau and Power BI, mastering tools for impactful business insights through visuals.

Cloud Platform and ChatGPT

This section explores AWS, Azure, and GCP cloud platforms. It also details prompt engineering and demonstrates using ChatGPT for data science projects.

MLops & Airflow

Explore MLOPS principles and Airflow for orchestrating machine learning workflows, mastering deployment, monitoring, and scaling for efficient model management.

Modules

Chapter 1- Python

18 attachments

Introduction to Python

Identifiers and Keywords in Python

Data Types & Type casting

Basic Operation and Operator in Python

Indentation, Comment and Inputs

Conditional statements in Python

Loops in Python

Data Structures in Python

Function in Python

Classes and OOPs concept

Regular expression

File handling

Exception handling

Libraries and modules

API development

Project 1

Project 2

Project 3

Chapter 2- Advance Python

9 attachments

Numpy

Pandas

Matplotlib, Seaborn and Plotly

Command line Arguments

Handling Data and time

Image Processing using OpenCV

Advance Image Processing

Project 4

Project 5

Chapter 3- Statistics

25 attachments

Introduction to statistics

Types of statistics

Descriptive Statistics

Variables and Types of Variables

Measure of Center and Measure of Spread

Measures of Central Tendency

Measures of Dispersion

Mean, Mode, Median

Range, Standard Deviation, Variance, Quartile, IQR

Covariance and Correlation between data

Inferential Statistics

Sample v/s Population

Hypothesis Testing

Null and Alternative hypotheses

Type I error vs Type II error

Establishing a rejection region and a significance level

What is the p-value

Learning about T-test

One Sample, two Sample T-test

Anova, One Way Annova and Two way Annova

Chi-square Analysis

Parametric and Non-parametric tests

Project 6

Project 7

Project 8

Chapter 4- Probability

12 attachments

Introduction to probability

Bayes Theorem

Bernoulli’s Theorem

Independent & Dependent Events

Conditional Probability

Distribution and its Types

What is Central Limit Theorem

Skewness & Kurtosis

Sampling and different sampling techniques

What is Outlier and its Significance

Project 9

Project 10

Chapter 5- Knowledge on Database and its types

13 attachments

Introduction to Database

Types of Databases

Relational Database

Object-Oriented Database

Distributed Database

NoSQL Database

Graph Database

Cloud Database

Centralization Database

Operational Database

Components of Database

Project 11

Project 12

Chapter 6- SQL

24 attachments

Introduction to Structured Query Language

What is RDBMS

Introduction and Types of SQL Operators

Creating Databases and Tables

Explore Entities and Relationships

Entity Relationship diagram

UML diagram

Various Types of SQL statements

SQL Joins

Multiple Joins

Subqueries

How to write Subqueries in SQL

Views

functions

Stored Procedure

Transactions

String, transformation, and Regex

Date time manipulation

Windows function

Project 13

Project 14

Project 15

Project 16

Project 17

Chapter 7- Data Science

20 attachments

Introduction to Data Science

Methodologies in Data Science

Understanding the Business Problem

Domain Knowledge

Data Collection

Checking the quality of data

Data Preprocessing and Cleaning

Exploratory data analysis

Feature engineering

Model building

Model evaluation

Model tunning

Model deployments

Model monitoring

Model Optimization

Model security and Privacy

Continuous improvement

Project 18

Project 19

Project 20

Chapter 8- Machine learning

21 attachments

Introduction to Machine learning

Types of Machine learning

Linear models

Regularization algorithm

Generalized linear models

Decision Tree algorithm

Ensemble model

Bagging algorithm

Boosting algorithm

Voting algorithm

Stacking algorithm

Support Vector Machine

K nearest neighbors

Naive Bayes classifier

Segmentation Techniques

Association Rule algorithm

Project 21

Project 22

Project 23

Project 24

Project 25

Chapter 9- Advance Machine learning

11 attachments

Feature engineering algorithm

Feature reduction algorithm

Time series algorithm

Automated machine learning tools

Casual Machine learning

Explainable AI

Project 26

Project 27

Project 28

Project 29

Project 30

Chapter 10- Deep learning

23 attachments

Introduction to deep learning

Real Life Applications of Deep Learning

Difference between Machine learning and deep learning

Challenges of Deep learning

Architecture of Deep learning projects

Various frameworks in deep learning

Introduction to Tensorflow

Artificial Neural Network

Convolutional Neural Network

Recurrent Neural Network

Restricted Boltzmann Machine

Autoencoder

Self Organizing Maps

Neural Style transfer

Hybrid Learning algorithm

Introduction to Transformers

Introduction to Bert

Large Language models

Project 31

Project 32

Project 33

Project 34

Project 35

Chapter 11- Natural language processing

12 attachments

Introduction to NLP

Typical NLP Tasks

Understanding text data

Text preprocessing in Python

Extracting Features from Text

Cross-lingual NLP

Multilingual NLP

Transfer Learning in NLP

Ethical considerations

Project 36

Project 37

Project 38

Chapter 12-PowerBI

12 attachments

Introduction to powerBI

Charts and Graphs

Power Query

Dax Expression

PowerBI Service

Row level and Page level Security

Scheduling, Data Gateway, and Mobile APP

Python, Machine learning and SQL in PowerBI

Project 39

Project 40

Project 41

Project 42

Chapter 13- Tableau

14 attachments

Introduction to Tableau

Working with Metadata

Data Blending

Filters

Charts and Graphs

Advance graphs and charts

Level of Details

How to create Dashboard and tell story

How to create story

Dashboard deployment

Dashboard Monitoring

Project 43

Project 44

Project 45

Chapter 14- Big Data

13 attachments

Introduction to Big data

Big Data Processing

Hadoop

Map Reduce

Apache Spark

Apache Airflow

Apache Kafka

Introduction to DataBricks

Project 46

Project 47

Project 48

Project 49

Project 50

Chapter 15- Docker

15 attachments

Introduction to Docker

Docker Architecture

Docker Installation

Docker Containers

Docker Images

Docker Volumes

Docker Networking

Docker Compose

Docker Swarm

Docker Security

Docker Orchestration

Docker Monitoring and Logging

Docker Integration with CI/CD

Project 51

Project 52

Chapter 16- Cloud platforms

11 attachments

Azure ML

AWS ML

Google ML

Project 53

Project 54

Project 55

Project 56

Project 57

Project 58

Project 59

Project 60

Chapter 17- MLops

27 attachments

Introduction to MLops

Architecture of MLops

Continuous Integration and Continuous Deployment (CI/CD)

Version control

Model training and evaluation

Model deployment and serving

Infrastructure management for ML systems

Model monitoring and performance tracking

Data versioning and management

Experiment tracking and management

Reproducibility and pipeline automation

Scalability and resource management

Governance, compliance, and security in ML systems

Data preprocessing and feature engineering

Hyperparameter tuning and optimization

Model testing and quality assurance

Error handling and fault tolerance in ML pipelines

Model retraining and updating

A/B testing and experimentation

ML model explainability and interpretability

Production monitoring and alerting

Model lifecycle management and retirement

Project 61

Project 62

Project 63

Project 64

Project 65

Certification

When you complete this course you receive a ‘Certificate of Completion’ signed and addressed personally by me.

Course Certificate

Testimonials

I would highly recommend Dataspoof to anyone looking to get started in data science or expand their existing knowledge. I was thoroughly impressed with the quality of instruction and the level of detail provided throughout the course. The instructor was knowledgeable and engaging and was always available to answer questions and provide feedback.

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Rabia Naveed

MS Student (UK)

It was really impressive and incredible to be the part of this learning journey. The way of teaching was quite different from other institutions, which made it more amazing and helpful. Everyone should try this once and figure out own experience.

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Aman Sharma

Undergrad Student (India)

Dataspoof definitely go above and beyond, by being thoughtful and productive in all aspects. They were creative in coming up with ways to go beyond what we asked them to do. They clearly understood our training and learning requirements and were able to recommend the content and courses they we would need.

Testimonial | Photograph | {{name}}

Abdul Bashit

MS Student (UK)

Great experience. They have good expert team to delivery the best training Thank you

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Aishwarya

MS Student (UK)

Before starting this course, I had no previous knowledge of machine learning, but I was keen to learn something new. The course is extremely well structured, presents the concepts (some very difficult) in a clear and almost intuitive manner with going too much into detail with mathematical proofs, making the course accessible to anyone. The mentors were fantastic and provided prompt responses, links to tutorials and test cases, which all helped me get through the course.

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Prashant Kumar

Undergrad Student (India)

Dataspoof courses teaches data science from the beginner level so it is really easy to understand. It also have same amazing additional resources which is important to build up further knowledge in this field. So i highly recommend this platform to every one who likes to learn data science and it's tools. Thanks.

Testimonial | Photograph | {{name}}

Duke

Undergrad Student (Myammar)

FAQs

What are the prerequisites for enrolling in the data science training program?

You just need a laptop and internet connection

What is the course duration

The duration of the program typically ranges from 6 to 8 months. This timeframe provides ample opportunity for in-depth learning and comprehensive coverage of the course content.

Will the training program include hands-on projects or real-world applications?

Yes, there will 65+ project based on the real world application

Is there a flexible schedule available for working professionals?

Yes, we offer a flexible schedule to accommodate working professionals. We understand the importance of balancing work commitments with professional development. Therefore, our courses provide options for scheduling that can fit around your work schedule. This allows you to pursue your training and upskilling at a time that is convenient for you.

What is the cost of the data science training program, and are there any payment options or scholarships available?

The program is priced at INR 30,000. We offer the convenience of payment in two equal installments (EMIs) if preferred. This allows you to manage the cost of the program in a more flexible and convenient manner.

Is the fees refundable?

Nope

Do you provide placement also?

While we do not offer direct job placements, we do provide an internship program for a duration of 3 months to a selected few students upon completion of the course. This internship opportunity allows students to gain practical experience and apply their learnings in a real-world setting. It serves as an additional stepping stone in their journey towards building a successful career.

Is the course accessible lifetime

Yes, the course provides lifetime access to the learning materials. Once you enroll in the program, you will have access to the course content for a duration of 3 years. This extended access allows you to revisit the materials, refer back to the lessons, and continue learning at your own pace even after completing the course.

About the creator

About the creator

Abhishek singh

Our courses are designed with a focus on real-time implementation of Big Data, Machine Learning, and Cloud technologies in live projects. We emphasize hands-on experience and practical learning throughout our courses. Each course provides comprehensive knowledge of a technology, starting from the basics and progressing to advanced concepts. Our lectures are structured to explain the code in a manner that is easily understandable, even for individuals without a technical background.

 

 

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