How To Master Data Science: Start Your Journey From Scratch

data science course in hyderabad

A simple beginner-friendly guide that helps you understand the skills, tools, and steps you need to start your journey in Data Science from scratch.

What Comes Before Starting Your Data Science Career

There are three types of people we refer to as Data Analysts. You will first need to determine which type of data analyst you fall into, in order to plan the road to success in your career. If you are a recent college graduate and are looking for a new career opportunity or switch, or if you have been doing data-related work and want to enhance your skill set to become a Data Analyst, then there are options available for you to achieve this.

1.    Career Switchers

2.    STEM Graduates

3.    Data-Adjacent Professionals

1. CAREER SWITCHERS:

Career switchers are the individuals who are not from a data analytics background. This group includes individuals from business, the arts, and B. Tech graduates in computer science, electricity, electronics, and communication, among other fields. Career changers may struggle to lay technical groundwork, but by enrolling in a structured programme and focussing on developing data analysis skills, they will be off to a good start.

Roadmap For Career Switchers:·

Focus on the Basics: 

As a student from a nontechnical background, focus mainly on the basics to build real-time projects and solve complex problems. Learn what data science is, what roles it offers, etc. Make a list of all the challenges you face as a newcomer and work to overcome them.

Learn Python from scratch:

Python starts with data types, different kinds of operators, modules, packages, strings and their operations, and other data types like sets. dictionaries, tuples, and libraries like NumPy, pandas, Matplotlib, seaborn, and other libraries. Practice with real-world examples: data cleaning and simple analysis.    

Master Core Concepts

Statistics and probability help you understand data patterns, make predictions, and validate results. Statistics allows you to summarise, visualise, and draw conclusions Probability is a model of uncertainty and risk based on data. Together, they power machine learning algorithms and decision-making.

Excel & SQL are the core of data science. Data scientists use large databases to access, manipulate, and generate new data. Excel and SQL help you learn how to manipulate data and write queries. Data visualisation tools such as Excel, Tableau Public, and Power BI assist in the creation of dashboards that visualise the data obtained. Companies can use these visualisation tools to filter their data and make better decisions.

Build Projects

Building projects makes you start solving actual problems. Projects help you combine and apply your skills in Python, statistics, and machine learning. They also make an impression on the recruiters, proving that you can handle messy data, draw insights, and build solutions. If you are attending an interview, talking about a project you’ve built makes you stand out. It shows initiative, curiosity, and the ability to work independently. Always choose a project that can make an impact on the course you are studying.

Get Certified

Select a course that makes you certified. Certifications make you stand out. Especially if you are thinking of switching careers, your certifications validate your skills and show employers you are serious about the job. 

Prepare for Jobs

Create a resume that highlights all of your skills and achievements. Highlight the certifications, awards, and honors (if any). Prepare for aptitude tests and practise relevant topics from job descriptions.

2. STEM Graduates

STEM fields (science, technology, engineering and mathematics) are analytical in nature and can be an excellent foundation for transitioning to data science. Individuals working in these fields typically have a technical background but not necessarily a data background. This includes engineers, mathematicians, physicists, and information technology (IT) professionals who have not worked directly with data but have experience with data-driven technologies.

Roadmap for STEM Graduates:

Strengthen Python & NumPy

Technical students can readily relate to topics like NumPy and Pandas because they are already familiar with programming languages like Python. STEM Graduates can also learn other libraries like seaborn, Matplotlib, etc.

Learn Machine Learning

Data scientists should begin with supervised learning because it provides clear guidance through labelled data, making it easier to understand core concepts like classification and regression. It builds intuition for model evaluation, feature importance, and prediction accuracy. To effectively practice both approaches, scikit-learn offers user-friendly APIs and datasets (such as iris and digits).

Understanding the basics of data engineering.

As data scientists gain databases and ETL knowledge through access, cleansing and transformation (ETL) facilities, they also leverage cloud technologies and services (e.g., AWS, GCP) to store, process and analyze massive datasets. SQLite will help increase your SQL proficiency when creating queries against structured datasets.

Create Projects

You should create a project that incorporates data cleaning, solution modelling and results generation/visualization,. You can achieve a certification for that project by understanding each of the project phases.

Contribute to Open-Source Software

Joining competitions as a data scientist and contributing to GitHub based projects will allow you to learn practical, real-world problems while working cooperatively with your colleagues and enhancing your ability to work with data. You’ll have access to a wide variety of data sets to analyse as well as a plethora of tools and methods to utilize.

Building Your Network and Applying

You can display your practical, creative and innovative abilities as a data scientist through your portfolio and this will increase your credibility and assist you when looking to apply for jobs in a competitive market.

Participating in webinars, attending meetups and following your peers via LinkedIn allows you to keep track of what is happening in the industry. After you have applied for entry-level roles in either data analysis or data engineering.

3. Data-Adjacent Professionals

Individuals who are currently working with data are considered Data-Adjacent Professionals and can include data analysts, software engineers, and business intelligence professionals.

These professions usually possess skill sets that include familiarity with tools such as Excel, SQL, and/or basic analytics, as well as some level of understanding of data flows and associated tools.

Data-Adjacent Professionals will need to become skilled at machine learning and acquire deeper levels of statistical knowledge.

A Roadmap for Data-Adjacent Professionals

Tools for Introduction to Python

Transitioning from an Excel-based workflow to the use of Python with the pandas library will allow for greater flexibility in data manipulation and analysis capabilities. Techniques for SQL Optimization and Advanced Join operations should be covered in order to improve Database Query Performance.

Increase Statistical Understanding

How to Design/A/B Tests and Analyze Results of A/B Tests for Business Strategy Purpose/Product Change. How to Interpret A/B Test Results through Confidence Intervals and Statistical Significance.

Master Machine Learning

Understanding how to Evaluate Models and Perform Feature Engineering and Model/Pipeline Development Applications. Working with Datasets from your Industry Area (sales, financial) and performing Operations on those Datasets.

Automating & Deploying Models

As a final step, to enable Machine Learning Models to be Deployed to End-Users as Interactive Web Applications, it will be beneficial to learn either Flask or Streamlit. Flask allows you to build your own Custom API’s as well as Scalable Services. Streamlit allows for easy creation of User-Friendly Dashboards with Minimal Code Required.

Upskill with Certifications

As an experienced professional, certifications validate your skills and highlight your expertise in the respective field. Choose a training program that provides certifications.

Position Yourself

Highlight your domain and include the skills you have gained throughout the data science training. Apply for roles that suit your portfolio accordingly.

Data Science Coaching Hyderabad

There’s a growing interest in careers in data science because there are many job opportunities for people interested in entering the field of data science. Additionally, the supply of qualified candidates to meet this growing demand for data scientists is very low. In fact, a recent study of over 12,852 data science job postings across multiple job boards (e.g. PayScale, Glassdoor, and LinkedIn) found that over 91% of the job listings were dedicated to full-time opportunities.

As a result of the current demand and lack of qualified candidates for these opportunities, many professionals are beginning to consider pursuing a career in data science.

You can Learn Python, SQL, Statistics, and Model Deployment as you learn Data Science. White Scholars has one of the Best Data Science Courses in Hyderabad, providing you with everything you need for a successful career in data science through Structured Training Programs – a combination of theoretical Training and Hands-on Projects, plus Mentoring from Industry Experts.

If you want to become a Data Professional, then White Scholars will provide you with an Industry Relevant Curriculum that can be used to develop your Career.

The Course includes Simplified Lessons on Complex Topics such as A/B Testing, Flask/Streamlit Deployment, and SQL Optimization. You will also receive Career Guidance and develop Practical Skills and Credentials to showcase your abilities in the Job Market.

Faq’s

1. Do I need coding knowledge before starting a data science course?

No, you don’t need coding experience. At White Scholars Academy, they teach Python and SQL from the basics, so even beginners can follow along easily. You will also be working on real-time projects under a mentor’s guidance. Additionally, you will be doing a final project for each module and presenting it.

2. How long does it take to learn data science from scratch?

It usually takes 6 to 7 months of focused learning. White Scholars provides a structured programme that includes daily classes, projects, and recordings to help you stay on track. You will also get class recordings and notes for each class.

3. What skills will I learn on the beginner data science course?

You’ll learn how to use Python, SQL, Power BI and Tableau as a beginner data science student. White Scholars also offer practical experience using real-world data sets to give learners a greater understanding of how to use these tools in the real-world context.

Furthermore, learners will also work on projects during each module that allow for the improvement of their cognitive processes as well as a deeper exploration of the topics.

4. Does White Scholars provide job support after I complete the course?

Yes, White Scholars provides its graduates with internships and placement support at leading companies. In addition to that, White Scholars also provides support in building your resume and preparing for interviews. Additionally, White Scholars provides weekly classes on communication skills and holds tests for each module to assess participants’ skills.

5. Can I take the data science course online if I am unable to attend in person?

White Scholars provides “hybrid” learning options for students who would like to learn remotely or who can attend class in-person. After each class, participants have access to recordings and class notes to assist their learning and review of topics at any time. Mentors are available either online or offline to assist learners with their questions regarding course material.