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Best Data Science Course In Latur With Placement

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Data Science course : 3 Month Personalized Live Advance Data Science Training is taught by industry experts in a comprehensive & question-oriented format.

Enroll Before: 1 March, 2025

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Students Trained

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1 March, 2025

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7:30 AM - 9:30 AM

Lecture Timings ( IST )

Suraj Patil
Suraj Patil
21. January, 2023.
Best platform for Software Testing for Professional Work Experience.
Prathmesh Belsare
Prathmesh Belsare
18. January, 2023.
Excellent teaching staff and all teachers are very good and friendly and best platform to develop our career, Thank you so much Bug spotter team.
vikas jadhav
vikas jadhav
18. January, 2023.
Best training institute ever. Great staff with good support and lot more about career guidance. Very detailed and comprehensive teaching.
abhijeet gadekar
abhijeet gadekar
18. January, 2023.
Excellent teaching staff everyone treat you as a friend..Bugspotter is good platform to change your life from zero to hero.....
Vijay Mahale
Vijay Mahale
18. January, 2023.
All the teachers at Buaspotter teach well, I thank them from the bottom of my heart.
Ashwini Deshmukh
Ashwini Deshmukh
18. January, 2023.
One of the best software Testing class.

Key Highlights Of The Advance Data Science Course

Get familiar with our online Python Data Science course syllabus.

Syllabus for Data Science Course

Online Advance Data Science Course in Pune is designed to teach students the basics to the advanced level concepts of Python Data Science with practice assignments and offline in-class projects which helps them to get placed in MNC’s.

Term 1

In this term, you will learn how to ace Python Basics, Python OOPS and Python Libraries like Pandas, Matplotlib, Numpy, etc…  

Python Basics :

  •  Why python
  • Python IDE
  • Basics of programming
  • Variables , Data Types
  • Conditional statements
  • Loops
  • Logical Thinking
  • Data Structures
  • Functions and types of arguments
  • Lambda Functions
  • memory Management
  • garbage collector
  • Copies - shallow copy, deep copy
  • Higher Order Functions - Map , Reduce , Filter
  • Iterable , Iterator , generator
  • Exception handling
  • Programming interview questions

Python OOPS :

  • Class
  • constructor and its types , Destructor
  • Types of variables - instance , static
  • Inheritance - Single , Multiple , Multilevel , Hierarchical
  • polymorphism
  • duck typing
  • Overloading - method , Operator , constructor
  • overriding - method , Constructor
  • Super Function
  • Encapsulation
  • access Modifiers
  • Abstraction
  • monkey patching

Pandas :

  • Introduction to Pandas
    Series Data Structure
  • Data Frame Data Structure
  • Merging DataFrame
  • Read Complex CSV , JSON , excel Files using pandas
  • Write to File
  • Data Frame Manipulation - head , Tail , Describe , shape ,Drop , inplace
  • loc & I=iloc
  • Apply Function
  • Value count
  • Add Column
  • Add Row To DataFrame - using concat,Append
  • Order By Operation
  • Sort Values
  • Group by operation
  • Pivot Table
  • Date/ Time Functionality
  • Example Manipulating DataFrame

Matplotlib :

  • line graph
  • bar Plot
  • scatter plot
  • pie chart
  • other function

Numpy :

  • Introduction to Numpy
  • Creating Arrays , Indexing , Slicing
  • Data Types
  • Copy vs View
  • Array Shape & Reshape
  • Arrays Split & Joins
  • Arrays Filter
  • Seaborn Model

Data Engineering in Python :

  • Handling Missing Data
  • Techniques to inpute missing Values
  • Meaningful Data transformation
  • Encoding Data
    Data Visualization in Python
  • Read Json , CSV's, excels

Term 2

In this term, you will learn how to ace MySQL, AWS, Tools & IDE’S

MYSQL :

  • DBMS & RDBMS
  • Data Types
  • DQL
  • DDL
  • DML
  • TCL
  • DCL
  • Key Constraints
  • Operators
  • Clouses
  • Aggregate Functions
  • Indexes
  • Views
  • Triggers
  • JOINS
  • Sub Queries & Nested Queries

 

  • Use of AWS
  • Cloud computing models
  • S3
  • AWS Data Pipeline
  • EMR
  • AWS Glue
  • Athena
  • Redshift

Azure devops :

  • Use Of Devops
  • CI/ CD Pipeline
  • work item
  • sprints
  • repository
  • state of task
  • Repose Clone
  • pull request

Git :

  • Use of Git
  • feature branch
  • clone
  • Add
  • Commit
  • Push

IDE :

  • PowerBI :
    • Dashboards
    • Application
  • DBeaver :
    • Connection Process
    • DB Manipulation
  • Jupyter Notebook :
    • Google Colaboratory
    • Pycharm

Term 3

In this term, you will learn how to ace Framework and industry projects

Pyspark :

  • Use of Pyspark For Data Science
  • Spark Session & RDD
  • Timestamp
  • Schema
  • Parallelize
  • Broadcast Variable
  • Create DataFrame
  • Transformations & actions
  • Empty DataFrame
  • Structure type and structure field
  • Select
  • Collect
  • WithColumn
  • Where & Filter
  • Drop & Drop Duplicate
  • orderby and sortby
  • Groupby
  • Joins
  • union and union all
  • union byname
  • map , flatmap
  • Sample by vs Sample
  • Pivote
  • maptype
  • Aggregate Functions
  • Windows Function
  • Read and Write in CSV
  • When
  • Split
  • collect
  • Row number
  • dense rank

1) E-Commerce

2) Banking Domain

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Live Projects
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HOURS OF VIDEO LEARNING

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Detailed Data Science Course Syllabus & Trainer List

Why to choose data science as a careeer

Data science is an exciting career choice because it offers the opportunity to work with cutting-edge technologies and solve real-world problems using data-driven insights. It is a rapidly growing field with high demand for skilled professionals across various industries, from healthcare to finance. With its blend of analytical, programming, and problem-solving skills, data science provides diverse job opportunities, competitive salaries, and the potential to make a significant impact in shaping business decisions and innovation.

Data Science Course in Latur

The Career Opportunities After Completing a Data Science Course in Latur

Data Engineer: Building and maintaining data pipelines, and working with data storage solutions and tools such as AWS Glue, Redshift, and MySQL.

Quantitative Analyst: Applying quantitative techniques to financial and business data, leveraging Python for data manipulation and analysis.

Data Analyst: Performing data analysis and visualization using tools like Pandas, Matplotlib, and PowerBI, and creating actionable insights from data.

Cloud Data Engineer: Working with cloud services and data pipelines, including AWS services like S3, EMR, and Athena.

DevOps Engineer: Implementing CI/CD pipelines and managing version control with Git, focusing on automation and integration in data engineering projects.

Tools You’ll Master

Mentors

Our Learners Work At

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Bug Spotter Reviews

Introduction to Data Science

Data Science is the practice of extracting meaningful insights from large datasets to solve real-world problems. Think of it as a detective’s work—analyzing patterns, trends, and valuable information to help businesses make informed decisions. As technology advances, data science becomes even more critical in processing and understanding vast amounts of data.

Why Data Science Matters

Data surrounds us in every aspect of life. Whether we shop online, use social media, or carry smartphones, data is being collected continuously. Businesses leverage this data to understand customer behavior, improve products, and predict future trends. By analyzing data effectively, data scientists provide insights that drive key decisions across industries.

Key Components of Data Science

Data science involves several essential steps that transform raw data into actionable insights:

  1. Data Collection and Sources: Gathering data from various sources such as surveys, websites, social media, and sensors. High-quality data collection ensures reliable insights.
  2. Data Cleaning: Raw data often contains errors, duplicates, or irrelevant information. Cleaning the data ensures accuracy and consistency before analysis.
  3. Data Analysis: Using statistical and computational techniques to identify patterns, relationships, and trends within the data, leading to valuable discoveries.

The Data Science Process

A structured workflow guides data science projects:

  1. Collect data
  2. Clean and organize the data
  3. Analyze the data
  4. Build models
  5. Interpret and present findings

Each stage builds upon the previous one, leading to insights that influence decision-making.

How Data Science Projects Are Structured

Data science projects typically start with a specific problem, such as predicting sales or understanding customer preferences. The process includes:

  1. Gathering relevant data
  2. Cleaning and analyzing it
  3. Building predictive models
  4. Presenting the results in an accessible format for stakeholders

The Role of a Data Scientist

Data scientists use data to solve problems and make data-driven decisions. Their expertise spans statistics, computer science, and domain knowledge, allowing them to extract meaningful insights from complex datasets.

Key Responsibilities of Data Scientists

  1. Collecting and cleaning data
  2. Analyzing and interpreting data
  3. Building predictive models
  4. Communicating findings to business leaders

Applications of Data Science

Data science is applied across various fields to improve processes, forecast trends, and enhance decision-making:

  1. Healthcare: Predicting disease outbreaks, personalizing treatments, and improving patient care.
  2. E-commerce: Recommending products, forecasting trends, and enhancing customer experiences.
  3. Finance: Detecting fraud, managing risks, and making data-driven investment decisions.

How to Get Started in Data Science

If you’re interested in data science, here’s how to begin:

Courses and Resources for Beginners

Many online platforms offer beginner-friendly courses covering statistics, programming, and data analysis. Look for reputable sources to build a strong foundation.

Practical Experience and Projects

Hands-on experience is crucial. Start by analyzing publicly available datasets, such as those on Kaggle or data.gov, to practice data cleaning, analysis, and visualization.

By mastering these concepts and skills, you’ll be well on your way to a successful career in data science.

data science course in pune

Eligibility

for Data Science Course​

  • Open to All Graduates
    No matter your academic background—engineering, commerce, humanities, or any other field—you’re welcome! The only requirement is that you hold a degree.
  • Interest in Coding
    Prior coding experience isn’t necessary, but having an interest in programming will be helpful. You’ll learn Python, R, and SQL during the course. If you’re new to coding, don’t worry—these skills will develop as you progress.
  • Time Commitment
    To make the most of this course, plan to dedicate 3-4 hours per day for lectures, assignments, and hands-on exercises. Consistency is key to mastering the material.
  • No Experience? No Problem!
    You don’t need any prior experience in Data Science. This course starts from the basics and gradually builds up to advanced concepts, ensuring you can succeed even if you’re starting fresh.
  • Curious & Love Problem-Solving?
    A curious mindset and a passion for solving challenges are great assets in Data Science. If you enjoy exploring data and finding innovative solutions to real-world problems, you’re already on the right path!

FAQs

Frequently asked questions

1. What is a Data Science course, and why should I consider it?
A Data Science course teaches you how to analyze large datasets to uncover valuable insights. In today’s data-driven world, these skills are in high demand across industries like healthcare, finance, and e-commerce. By mastering data science, you can play a key role in helping businesses make informed, data-driven decisions.

2. Who is eligible for a Data Science course?
Anyone can enroll! Whether you have a background in mathematics, computer science, or any other field, you’re welcome. Many courses cater to beginners, so prior experience isn’t always required.

3. What skills will I learn in a Data Science course?
You’ll gain hands-on experience in:
✅ Programming (Python, R, SQL)
✅ Data cleaning & preprocessing
✅ Data visualization & statistical analysis
✅ Machine learning & predictive modeling
✅ Advanced topics like big data & deep learning (in some courses)

4. How long does it take to complete a Data Science course?
The duration varies:
⏳ Short introductory courses: A few weeks
📜 Comprehensive certifications/diplomas: Several months
The time commitment depends on the depth of the course.

5. Is a Data Science course difficult for beginners?
Not at all! Many courses are designed for beginners, starting with the basics and gradually progressing to advanced topics. With consistent practice, you can learn step by step.

6. What career opportunities are available after completing a Data Science course?
Completing a Data Science course opens doors to exciting careers such as:
💼 Data Analyst
🧠 Data Scientist
🤖 Machine Learning Engineer
📊 Business Intelligence Analyst
⚙️ Data Engineer
These roles are highly sought after in tech, finance, healthcare, and marketing industries.

7. Are there any prerequisites for joining a Data Science course?
Some courses may recommend basic knowledge of math or programming, but many beginner-friendly programs teach everything from scratch. Check the course requirements before enrolling.

8. Will I learn machine learning in a Data Science course?
Yes! Most Data Science courses include machine learning, covering model building, predictive analytics, and pattern recognition to help you work with large datasets effectively.

9. How is a Data Science course different from a Data Analytics course?
🔹 Data Science: Covers programming, machine learning, and data modeling.
🔹 Data Analytics: Focuses more on analyzing existing data and generating insights.
If you’re interested in AI and predictive modeling, Data Science is the way to go!

10. Can I take a Data Science course online?
Absolutely! Many reputable universities and online platforms offer flexible online courses with video lectures, interactive exercises, and real-world projects—allowing you to learn at your own pace from anywhere.

11. What are the fees for a Data Science course in Thane?
At Bug Spotter Software Training Institute, the Data Science course fees are ₹30,000.

Data Engineer

Roles and Responsibility for Data Engineer

Roles and Responsibility for Data Engineer

Key Responsibilities of a Data Engineer

A Data Engineer plays a crucial role in designing, building, and maintaining the infrastructure that enables efficient data processing and analysis. Their primary responsibilities include:

1️⃣ Building Scalable Data Pipelines
Design and develop robust pipelines to efficiently ingest, transform, and load data from multiple sources.
Ensure smooth data flow while maintaining high performance and scalability.

2️⃣ Implementing Efficient Data Storage Solutions
Work with data warehouses, data lakes, and NoSQL databases to store and manage large datasets.
Optimize storage for fast retrieval, analysis, and reporting.

3️⃣ Transforming & Cleaning Data
Develop data transformation logic to clean, enrich, and normalize raw data.
Ensure data quality and consistency for accurate reporting and insights.

4️⃣ Collaborating with Business & Analytics Teams
Work closely with data analysts and stakeholders to understand data needs and business goals.
Design data models that support strategic decision-making.

5️⃣ Ensuring Data Quality, Security & Compliance
Implement monitoring tools and set up alerts to track data integrity.
Ensure compliance with data security regulations and industry standards.

6️⃣ Deploying & Maintaining Data Infrastructure
Manage and optimize data pipelines, storage stems, and cloud-based solutions for reliability and efficiency.

7️⃣ Sharing Knowledge & Best Practices
Contribute to the data engineering community by sharing insights, improving standards, and fostering collaboration.
By mastering these responsibilities, a Data Engineer ensures businesses have reliable, high-quality data to drive informed decisions. 🚀

Course Duration

Data Science in 3 Months?​

Can I Learn Data Science in 3 Months?

Yes, it’s absolutely possible to learn Data Science in 3 months, but it requires a strong commitment and focus. To achieve this, you’ll need to dedicate at least 3-4 hours every day to studying and practicing. This time should not only be spent watching videos but also solving problems, doing hands-on exercises, and applying what you learn to real-world situations. Consistent practice is key to mastering important topics like Machine Learning, Data Analysis, Statistics, and Data Visualization.

In addition to learning the theory, you should also work on projects. These projects help solidify your knowledge and give you practical experience, which is crucial for job applications. A strong portfolio of real-world projects will make you stand out to potential employers. The more projects you complete, the more confident you’ll be in your abilities.

However, learning Data Science in 3 months isn’t just about sticking to a schedule; it’s about staying focused and avoiding distractions. If you stay consistent and follow a clear plan, you can cover the key concepts and even build a solid project portfolio. By the end of 3 months, you could have a strong grasp of Data Science and be ready to apply for jobs.

In short, with the right mindset and effort, you can definitely learn Data Science and be job-ready in just 3 months.

Enroll Now and get 5% Off On Course Fees

Enroll Now and get 5% Off On Course Fees

Enroll Now and get 5% Off On Course Fees