Why data science certification courses are gaining popularity

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Why data science certification courses are gaining popularity

Date Science was coined in the 1960s to interpret data and make statistical sense of it. Back then, there was also almost no focus on using the branch of study for predicting future trends. 

However, the field of data science has seen massive advancements over time, making it one of the most promising domains in terms of job prospects and career growth. Businesses generate huge volumes of data daily that must be analyzed and interpreted. This highlights the importance of having high-quality data and understanding how to analyze it to make data-driven business decisions.

So, how did this happen? Why are so many people interested in learning data science today? Why is there such a buzz around data science certification courses? Let’s find out the answers to all these questions!

Who is a data scientist?

A data scientist is somebody who makes use of statistical techniques and programming languages along with industry knowledge to translate datasets into meaningful information. This information derived from huge volumes of data lays the foundation for various critical business decisions which can be used for workforce planning, production capacity, marketing strategies, etc. It’s not just about analytical skills; data scientists also combine the best social skills to uncover trends. Additionally, they must have excellent communication skills to communicate their data-driven insights to the organisation accurately.


Why are data science certification courses gaining popularity?

Several factors contribute to the increasing popularity of data science courses not only in India but also around the world. The following are the main reasons why a majority of people are subscribing to them:

Lucrative salaries 

Data science job roles are highly lucrative. Even entry-level data science positions pay nearly Rs. 7 Lakh per annum. In contrast, the country’s median annual salary for data science professionals stands at Rs. 16.8 Lakh. According to a recent Analytics India Magazine report, around 1,400 individuals employed in data science roles in the country earn more than Rs. 1 Crore annually!

Helps develop meaningful skills 

Not everything you learn for a profession applies in real life; however, this is not the case with data science. The analytical and decision-making skills you develop to become a data scientist are pretty practical and helpful in day-to-day real-life scenarios.

High job security 

With the advent of emerging technologies, many professionals risk being replaced by advanced technologies and software. However, the nature of the job of data science professionals is such that they cannot be easily replaced with technology even after the significant evolution of Artificial Intelligence as they serve as the fundamental link between human interactions and technology.

Surging demand 

There is no denying that data is the new oil for the world. This is highly evident in the growing demand for data scientists. Alone in India, the demand for professionals in the data science field has seen a yearly increase of 30.1% in April 2022. 

Steep Career Growth 

Data science knowledge not only helps you grasp data insights but also equips you with decision-making skills, which prepares you for critical leadership roles in the organisation in the future and adds a steep upward trajectory to your career graph.

 

How does Imarticus Learning’s Certificate in Data Science Program help you?

Imarticus Learning’s Certificate Program in Data Science and Machine Learning is a 5-month introductory course meant to equip you with the basics of the field. Under this course designed by the IIT faculty, you learn how to mine data along with mastering Python programming for using ML tools. It also introduces you to the world of SQL and Tableau. 

The course has been scheduled on weekends in an online mode. Therefore, it is conveniently accessible to individuals from all walks of life, be they students or working professionals looking to enhance their skill sets.

Wrapping up

Students, recent graduates, working professionals, or retired individuals who wish to learn data science and make a career out of it can enrol in our weekend-special fundamental course and upskill themselves. Data science has immense opportunities to offer both in terms of monetary and professional growth. You can pursue it as a full-time working professional or even take it as a highly-rewarding freelancing gig.

You can even combine it with your existing skill set in your current role, as no field today is untouched by data and its impact. By doing this, you will not only earn a handsome salary, but you will also remain in demand when nearly all operations become tech-savvy in the future.

Are you looking for professional advice? Feel free to contact us through chat support or visit our nearest training centers in Mumbai, Thane, Pune, Chennai, Bengaluru, Delhi, Gurgaon, or Ahmedabad.

The role of Mathematics in learning Data Science

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The role of Mathematics in learning Data Science

Advanced Mathematics is not about number crunching. It is more focused on telling the reason behind things, the systematic processes which make concepts a reality. And due to this, Mathematics plays a crucial and irreplaceable role in the field of data science.

Thus, if you aspire to learn data science to make a career in the field, you must have a strong understanding of mathematical concepts. You must be well equipped with pattern identification and designing algorithms if you look up to a data science career.

Besides defining a systematic approach, Mathematics is also necessary for learning the latest and most commonly used technologies in the field of data science, such as Machine Learning, Deep Learning, and Artificial Intelligence. This is because all these technologies derive their foundation from Mathematics.

We at Imarticus Learning offer a Certificate Program in Data Science and Machine Learning which helps you not only understand the concepts of data science but also help you build a stronghold on the mathematical concepts you will require during your data science career journey. Our course focuses on the mathematical branch of Statistics, which forms the basis of all data science tools and concepts.

Mathematical Concepts Which You Must Know As A Data Scientist

Following are some of the key mathematical concepts which you must be well versed in if you aspire to a data science career:

  • Probability

Probability refers to the mathematical concept that lets you evaluate the likelihood of an event. It comes in really handy for making future predictions based on data sets using the latest technologies like Machine Learning. As a data scientist, probability helps with the reasoning for your decision-making.

A large number of real-life data problems are solved by data scientists with the help of probability and its allied concepts like Baye’s Theorem and Theory of Central Tendency.

  • Hypothesis Testing

Hypothesis Testing refers to the statistical concept of testing a hypothesis concerning the assumptions made for a population parameter such as its mean, variance, etc. Data scientists use hypothesis testing in several real-world data problems, such as finding the average order value for an e-commerce website or how much fuel wastage is avoidable by a petrol pump.

It also allows data scientists to make reliable predictions, such as how much an investor can expect in return from a financial instrument. As an aspiring data scientist, you must clearly understand concepts like null and alternative hypotheses, p-value, test statistics, and significance levels. 

  • Linear Algebra

Data scientists use linear algebraic concepts of matrices and vectors to speed up their analysis processes. Linear Algebra also finds its basis in Machine Learning and Deep Learning. It allows you to model complex algorithms and represent complex data in a simplified manner for easy data interpretation and decision-making.

  • Calculus

Calculus plays a very fundamental role in developing forecasting models for data scientists. If you aspire to make a career in the field, you must understand how the derivatives of a function work. However, the good part is that, unlike in school and college, you need not do the algebraic calculations for calculus manually because, as a data scientist, you can use computers and other advanced technologies for solving differential equations.

  • Regression

Regression is a statistical concept that lets you estimate the relationship between various dependent and independent variables. It finds an in-depth use in the field of big data for estimating trends and forecasts. Some real-life examples in which data scientists make use of the concept of regression are the estimation of demand and supply, inventories, sales figures, etc. 

Our Certificate Program in Data Science and Machine Learning not only equips you with the above-mentioned mathematical concepts but also introduces you to the concepts of machine learning and data visualisation along with programming languages. In addition to the diversified yet focused curriculum, we also provide career services such as resume building, mock interviews, and Capstone Project. 

Take Away

Data Science is one of the most promising fields of the future regarding job prospects and career growth. And this is the reason why programs in data science certification in India are becoming highly popular. 

According to the latest Analytics India Magazine report, around 1,400 data science professionals in India earn more than Rs. 1 Crore annually! And with the advancement in technologies and the growing importance of data for analysing consumer behavior, the demand for data scientists will only grow in the coming times. 

Are you looking for some professional data science career advice? Contact us through chat support or visit our nearest training centres in Mumbai, Thane, Pune, Chennai, Bengaluru,Gurgaon and delhi.

2022 Data science job trends, careers and industry insights

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2022 Data science job trends, careers, and industry insights

Without data, everything is just an opinion. And business decisions are not made on opinion; they are made based on facts and details. This is where a data scientist enters the business realm. 

But, what is data science exactly? Well, data science is the study of large volumes of data using advanced technology and programming tools to extract meaningful information from them. These data points serve as the foundation for making both primary as well as key and strategic business decisions.

Today, data scientists are quite high in demand in the job market. This can be primarily attributed to two reasons – the growing shift of businesses to the digital space and rise of the consumer behavioral analytics. 

Suppose you also want to ride this wave of growth in the space of data analytics. In that case, you can learn data science by getting enrolled in our Certificate Program in Data Science and Machine Learning and saying yes to your data science career dreams!

Top Data Science Job Trends and Industry Insights 2022

If you aspire to make a career in the field of data science, you must keep your skill set and knowledge base updated for the following job trends in the domain –

  • Demand For Data Scientists Increased by Over 30%

The demand for data scientists in India increased by 30.1% in April 2022, as compared to the last year. With this, India’s share in the global demand for data scientists increased from 9.4% in 2021 to 11.6% in 2022.

  • BFSI Sector Emerged as the Biggest Employer for Data Scientists

In FY2022, the BFSI sector accounted for the highest demand (26.6% ) for data scientists in India, according to the latest Analytics India Magazine (AIM) report. After the BFSI sector, the e-commerce and internet space hired the largest number of data scientists in the country.

  • Bengaluru – The New Hub For Data Scientists

The city of Bengaluru created the maximum number of Data Science jobs in India in 2022, with as many as more than 51,000 positions. This can be attributed to the city’s bent on the IT sector and the presence of several emerging startups and unicorns there. After Bengaluru, Delhi-NCR registered the highest number of data science jobs.

  • Employers Prefer Engineers Turned Data Scientists

In 2022, the majority of Individuals who got hired for data science job roles belonged to the engineering stream. As high as 56% of them were engineering undergraduates, and 25.9% were engineering masters. Non-engineering undergraduates comprised 35.2% of the sphere, whereas MBAs accounted for 17.4% of the hires.

  • Most Popular Data Science Designation – Business Analyst

As many as 39% of the data science jobs which were advertised in 2022 came with the designation of ‘Business Analyst’. The second-most popular title in the space, appearing in 34.6% of the job openings, has been that of ‘Data Engineer.’

A Sneak Peek into Data Science Careers

To bag a job in the data science domain, you need to have a good mix of both technical and non-technical skills.

Top Technical Skills For Data Science Career

Today, organisations are hiring individuals who are not only good at evaluating data using basic data analytics software but who can also automate them using augmented analytics technologies like Artificial Intelligence, Machine Learning, and Natural Language Processing (NLP) for real-time insights.

You must also be well equipped with programming languages like C++, Python, R, Java, and SQL and data visualization tools like Tableau to get your desired data science job. Knowledge of platforms like Hadoop and Apache Spark is also a plus.

Top Non-Technical Skills For Data Science Career

Just being technically sound is not enough; you must also possess the following non-technical skills to make a career in the field of data science – 

  1. Analytical skills
  2. Ability to work and collaborate in a team
  3. Good communication skills to translate your understanding of data to the stakeholders

Final Words

Data Science has been touted as the future of jobs, not only in India but all over the world. 

According to the latest Mckinsey report, almost all organizations will become data-driven, becoming a default setting. This indicates that in the near future, the reliance on data and the need for data scientists will only be a steep upward curve. So, if you wish to make a career in this emerging and growing field, you must start now and get a data science certification in India.

For detailed guidance and advice on the data science course, contact us through chat support, or drive to our training centers in Mumbai, Thane, Pune, Chennai, Bengaluru, Delhi, and Gurgaon. 

Building A Data Science Portfolio From Scratch

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Building A Data Science Portfolio From Scratch

Data Science is one of the most popular fields of work, especially among the millennials and Gen Z. But what is it exactly? Well, it is the field of study of tons of data to extract meaningful information for efficient and effective decision-making.

If you aspire to be a data scientist, it is important for you to understand two things really well. Firstly, you should be a master of your skills be it programming languages, use of statistical methods, or data visualisation, you should know all of these in and out. 

If you are looking for a short-term online course, which will help you upskill and enhance your knowledge base, come join our Certificate Program in Data Science and Machine Learning with iHUB DivyaSampark @IIT Roorkee.

Besides learning the concepts and methodologies of data science, you must also focus on building a strong portfolio of your work in the domain. Unlike management and engineering professionals, creating a resume is not enough to get your desired data science job.

You must have a strong portfolio of your projects and overall profile so that you can stand out among millions of other applicants. As part of our data science online training, we also teach you how you can build an impressive profile for yourself from scratch along with grooming you for mock interviews! So, what are you waiting for? Come join us today and take the first step toward your bright data science future.

Tips to Build An Awesome Data Science Portfolio From Scratch

Following are some of the tried and tested strategies that you can make use of to build an amazing data science portfolio – 

  • Let Your Portfolio Reflect Your True Passion

It is often said that you should fake it till you make it. But, that’s not advisable when it comes to your work portfolio. Mentioning projects and interests in your portfolio which look fancy but fail to inspire you does not help get the job you really want. 

Your portfolio must be authentic. It should capture who you want to be and the projects you like or wish to work on in the future. You can do this by walking recruiters through your journey in the field, and what inspired you to enter the data science space. 

  • Highlight Your Strong Technical Understanding

Data Science is all about how well you understand all the technical concepts and implement them to solve real-life problems. You must mention all the data science certification courses completed by you along with the projects you have worked on, highlighting the specific techniques of which you made use. 

There are two important things which you must remember in this regard. Firstly, don’t clutter your portfolio with all the ML techniques and projects which you have worked on, mention only the important ones. The second thing which you must keep in mind is that you must customize this section as per the requirements of the job you are applying for. This helps you grab the attention of the recruiter and rank among relevant profiles.

  • Show Off Your Communication Skills

In order to solve complex real-life problems as a data scientist, you must possess good communication skills so that you can effectively translate the identified data insights to the leadership so that they can make key strategic decisions. Thus, you must showcase how good you are as a communicator. 

You can do so by mentioning narratives along with your work samples. Highlighting your strong communication side also helps recruiters understand how you approach problems and infer data to solve them.

  • Limit the Length of Your Portfolio to One Page

While creating a work portfolio, think like a recruiter who has tons of applications and profiles to go through. Keep the portfolio short in length, but to the point to ease the job of the recruiter by bringing their attention to the qualities and skill set they are looking for.  While doing this, ensure that your portfolio is well organised and categorised to speed up the screening process.

Take Away

Your work portfolio is like your first impression for the recruiter who can be offering you your dream data science job. Thus, it is important to get this first impression right by creating a stunning portfolio that highlights both your technical and non-technical skills. Your portfolio should mirror your capabilities, knowledge base, and your zeal for the role. 

Still unsure how to go about it? Feel free to contact us through chat support, or just visit our nearest training centers in Mumbai, Thane, Pune, Chennai, Bengaluru, Delhi, and Gurgaon. We are always happy to help you!

So You Want A Data Science Career? Start By Doing This

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So You Want A Data Science Career? Start By Doing This

If you are searching for how to start building a robust data science career, then you must have come across hard skill terms like machine learning (ML), analysis, and statistics. Apart from the hard skills, you should also possess soft skills like persuasive communication and critical thinking if you want to grow up in this role. The industry of data science is vast with endless opportunities so you just need to have the required skills and education to land your dream job in the future.

What are the different career options in data science?

Here are some of the most common job titles you can be entitled to if you want a career in data science: 

Data Mining Engineer 

A data mining engineer not only examines the data of their own business but information from third-party as well. Apart from analyzing data, a data mining engineer also develops complex algorithms for analyzing the data. 

Business Intelligence Analyst 

These analysts figure out business and market trends by using data. They analyze data and develop a clear picture of the company’s position.

Data Scientist 

Data scientists can translate any business case into an analytical agenda, creating hypotheses, interpreting data, and discovering patterns to measure the impact they create on businesses. They can also select relevant algorithms to help in analyzing the data further. Their role is not just limited to explaining what impact will be created by data on the company but also to bring out solutions that will be helpful for the company in dealing with these effects in the future. 

Data Architect

A data architect works in close association with system designers, developers, and users for creating blueprints that are used by data management systems to integrate, centralize, maintain and safeguard the sources of data.

Senior Data Scientist 

A senior data scientist has the potential to anticipate the future needs of a business. They collect data and also analyze it thoroughly to get through very complex business problems smoothly. Using their prior experience, they can design new standards and also drive their development. They also find out ways in which they can use the statistical data and create tools for analysis. 

An overview of Imarticus’ certificate programme in data science and machine learning

Our certificate program in data science and machine learning has been curated to help you know the initials of data science and machine learning. In collaboration with iHUB DivyaSampark @ IIT Roorkee, we have designed this programme to help individuals learn the fundamentals along with various aspects of data science and machine learning.

In the process, you will be also equipped with the knowledge required to implement these concepts to real-life problems. You will also know about data mining and machine learning tools using Python. One of the most remarkable aspects of this 5-month programme designed by eminent IIT faculty members is that it teaches you how to use data-based insights to create a positive impact on organizational growth. 

This particular data science programme will also help individuals build a very strong base in databases and gain specialization in machine learning with Python as it will lead to data-oriented decision-making. This programme is an attempt to raise professionals who can render meaningful data insights and help businesses follow the right path to achieve their growth objectives. 

Why choose Imarticus’ certificate programme in data science and machine learning?

There are plenty of data science courses available but the programme that we offer stands apart from the rest in many aspects, such as: 

Get LIVE training sessions by IIT faculty and industry experts 

The programme will be delivered to you live through online classes taken by top Indian faculty belonging to IIT Delhi, IIT Roorkee, and other distinguished institutes. Industry experts also have intense knowledge about data science and machine learning as they have been working on relevant projects in several organizations. 

Startup mentorship and funding programme

Those who are enthusiastic about start-ups can also pitch ideas and seek funding support on this platform created by iHUB DivyaSampark @IIT Roorkee under the national scheme of Digital India. 

Recognition from iHUB DivyaSampark @ IIT Roorkee and the Department of Science and Technology 

Once you complete the programme, you will receive a certificate issued by iHUB DivyaSampark @ IIT Roorkee, Department of Science and Technology in partnership with Imarticus Learning under NM-ICPS. The certificate will create a huge impact on your profile and will give a boost to your data science career. 

Conclusion

So, if you have already decided on starting a career in data science and machine learning, what are you even waiting for? Go ahead and get registered for this certificate programme on our website. You can also call us to chat with us to know more details about this certificate programme that is a magic wand for all data science aspirants. 

5 SQL Tricks Every Data Scientist Must Know

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5 SQL Tricks Every Data Scientist Must Know

The world of data science is changing the way we work, communicate, and live. Data scientists are at the forefront of this change, helping unlock new insights and improve our lives. But in order to do so, they need to understand SQL—the standard language for managing data in relational databases. 

Data science courses offered by Imarticus learning include SQL, Data Visualization with Power BI, Python, and many others. Let us look at the tips and tricks to get you to speed up.

  1. Use wildcard characters for ranges of values

If you want to find all the numbers between 1 and 10—for example—you can just type “1-10” into your query and get results instantly. You can also use “*” as a wildcard character for any value (e.g., “*a?” would return results with aaaa or aaa).

  1. Use LIKE and WITH to find specific patterns in strings

If you’re looking for a particular pattern within a string—like if someone’s name is “John Smith”—you can use LIKE to find those exact characters in your query: WHERE FIRST_NAME = ‘John’ AND LAST_NAME = ‘Smith’.

Use the LIKE operator to find all rows that match a pattern of characters or numbers. For example, if you want to find all the customers whose names start with “J,” use “Name” LIKE ‘J%’.

WITH statement. The WITH statement allows you to define a temporary table for your query so that you can use the results without repeating yourself.

For example, imagine you have data on all the colleges in the US that’s stored in one table called “college,” and they’re all represented by their state abbreviation (e.g., “WA” is Washington). Let’s say you want to know what percentage of incoming freshmen at each college paid full tuition (the answer will probably be 100%). You could try writing this query:

SELECT CAST(cnty AS FLOAT) AS percent_full_tuition FROM college

But you’ll get an error because CAST() only works with numbers. Instead, you can wrap up our query in a WITH statement like:

WITH college_data AS ( SELECT CAST(cnty AS FLOAT) AS percent_full_tuition FROM college )

  1. Sorting data

Data sorting is a key process in the data analysis process. It allows you to put your data into a specific order to easily find and analyze the information you need. One of the most basic ways to sort data is using an ORDER BY clause.

In SQL, you can use the ORDER BY clause to sort your query results according to any column or columns present in your query. To do this, simply add an ORDER BY clause that specifies how you want your query results sorted:

SELECT * FROM tbl_name ORDER BY col1 ASC;

This will sort your results by column col1 in ascending order (A-Z). If we wanted it sorted in descending order (Z-A), we would use DESC instead:

SELECT * FROM tbl_name ORDER BY col1 DESC;

The above query would return all records from table tbl_name with col1 values first, then col2 values, etc., until all records have been returned and displayed on the screen.

  1. Using Arrays

Each value within an array has its own unique index number that determines its position with other values within the array.

For example, if we had an array containing three values: John Doe, Jane Smith, and Joe Brown—and each value had its own index number (1, 2, 3), then our array would look like this: [John Doe] [Jane Smith] [Joe Brown].

The advantage of using arrays over traditional data structures, such as strings or objects, is that arrays allow you to store multiple values together without worrying about their order or relationship with one another. 

Arrays are a common data structure in SQL. An array is a collection of items with the same type and share the same name but may have different values. Arrays are useful because they allow you to store related information together without having to create separate tables for each item or value.

You can manipulate arrays in many ways using SQL syntax, including accessing elements within an array using subscripts or using functions that operate on an entire array (like SUM()).

  1. Derived table

A derived table lets you pull out just the parts of your query that are interesting to you, without worrying about what else might be in there. For example, say you have a bunch of users’ names and their favorite colors:

SELECT name FROM users_table WHERE age > 18;

This query would give us a whole list of users’ names, but we don’t really care about the rest—we just want to know what people like as their favorite color! We could do this with another query:

SELECT name FROM users_table WHERE age > 18;

SELECT favorite_color FROM users_table WHERE age > 18;

This would give us back just one column instead of two (which is why it’s called a “derived” table).

Looking to get a deep and better understanding of SQL, then get in touch with us at Imarticus Learning by visiting our offline centers in major cities throughout India or through chat support. If you are a fresh graduate or have just started your career, Imarticus can offer an extensive data science certification program that ventures through each aspect necessary for data scientists.

Does Machine Learning Excite You? Check Out Our Data Analytics Course!

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Machine learning (ML) is truly a blessing to modern computing and technology, possessing the ability to endow systems and machines, the ability to think for themselves and tackle tasks on their own without any supervision of humans. Machine learning is able to do this by creating artificial neural networks which simulate how human brains work. Machine learning is assisted by data science and supports its applications in various fields.

Even though machine learning was initially invested upon with the primary focus on Artificial Intelligence, it was later recognized as a separate field and started being heavily invested upon from the 1990s and is one of the most valuable fields of computing that has one of the highest industry requirements of skilled professionals and freshers holding expertise in various skills and tools which assist in machine learning.

In this article, we will learn more about machine learning and how a well-planned data analytics course can help you progress in your career if you are already in this field or how it can help freshers get exposed to ML. 

What is machine learning?

Machine learning first came into existence due to the interest of having systems and computers learn from data on their own. “Machine learning” was first termed by Arthur Samuel in 1959, who was working in IBM at that time. During his tenure there, he was responsible for various important projects related to computer gaming and AI. It all started when Mr. Samuel took the initiative to teach computers how to play games through the game of Checkers on IBM’s first commercially available computer, the IBM 701.

Eventually, machine learning started being used for various purposes and borrowed many models and approaches from statistics and probability theory. AI uses predictive analytics along with machine learning to execute the various responses or trigger actions. All of this is acquired from the training data set which helps the machine in learning and equips it with the information.

Machine learning is an important branch of computing and data science that creates autonomous systems which learn from data on their own. A machine trained with clean processed data eventually identifies trends and patterns to respond to situations without human supervision.

Machine learning also promotes the automatic improvement and development of algorithms or data models which improve on their own. Machine learning is an important part of Artificial Intelligence which uses data mining, predictive analytics, and various tools to assist machines in learning more extensively with methods like deep learning to allow them to execute functions that emulate the responses of a human, just much more accurate and fast.

Machine learning is also not biased unless specifically asked to do so, hence promoting unbiased AI-supported systems that make fewer errors. Data mining is also a very relevant field and quite valuable to machine learning as it helps systems come to conclusions without having some bits of data or having unknown bits of information. Machine learning is a type of predictive analytics which is backed by data and is exploratory in nature.

Perks of a Data Science Prodegree from Imarticus

The Data Science Prodegree is a great data science course that students and working professionals can choose to gain more exposure and skills in the fields of machine learning, business analytics, and AI.

 

  • Acquire skills and learn how to use required tools and algorithms
  • Gain valuable industry and course certifications
  • Get placement support and opportunities from the best companies
  • Advanced live classroom learning supported by technology and real-life projects

 

Imarticus’s Data Science course with Placement is a great choice if you wish to advance in your career and learn about machine learning, AI, business analytics, or data analysis which will help you become more effective as a data scientist and pursue your dream career in this respectable field.

5 NLP techniques every data scientist should know

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Have you ever wanted to master NLP? If so, I have five techniques that will change your life! In the last few decades, computers able to understand and process natural language. As a result, many new applications can leverage this technology for more accurate processing of text data.

One of these is Natural Language Processing (NLP). NLP has become an essential part of our lives as it allows us to talk with machines in a way they understand. This blog post will discuss five NLP techniques every data scientist should know. 

1) Tokenization: 

  • A technique that breaks up sentences into individual words or word tokens. 
  • It is the first step in text processing as it gives us a way to deal with each word individually. 
  • Tokenization is either done by splitting up an input string into words or groups of the word. Depending on the application, you might choose one over the other. 
  • For example, splitting words would be the best approach to find new misspelled versions of a known word. 

2) Stemming: 

  • Stemming is a method that reduces words to their root. It allows us to deal with variations of a comment by using its root form instead. 
  • For example, “running,” “runs,” and “ran” would all be reduced to the stem word “run.” Stemming algorithms share the same purpose: to remove the grammatical additions of words to get their root form. 
  • It allows for automatic text simplification, which is essential when condensing the input data into a single searchable string.

3) Lemmatization: 

  • Lemmatization is a process that reduces inflected words to their base or dictionary form. 
  • For example, reduction of “walked,” “walking,” and “walk” to the root word walk.
  • Lemmatization is stemming done right. Stemming reduces words to their root forms, but it does not take into account morphological rules. On the other hand, Lemmatization builds up word knowledge, which allows for base or uninflected word matching.

4) Keywords Extraction: 

  • This process finds the most important words when applied to text, phrases, or sentences. 
  • Keywords extraction means finding essential words in a given sentence, and this gets done by using TF-IDF (Term Frequency-Inverse Document Frequency).

5) Sentimental Analysis: 

  • Sentiment analysis is a text mining technique that has applications in many fields. 
  • It can also be helpful when building chatbots as word sentiment can give us an idea of what the user is saying. 
  • Sentimental Analysis helps identify emotional, social, or opinionated aspects within written language.

Explore and Learn Data Science with Imarticus Learning

Our Data Science course details include Capstone Initiatives, real-world business projects, relevant case studies, and mentorship from industry leaders who matter to help students become experienced Data Scientists.

Some course USP:

  • This data science course in India aid the students in learning job-relevant skills.
  • Impress employers & showcase skills with the certification of data science endorsed by India’s most prestigious academic collaborations.
  • World-Class Academic Professors to learn from through live online sessions and discussions.

Contact us through the chat support system or visit Mumbai, Thane, Pune, Chennai, Bengaluru, Delhi, and Gurgaon training centers.

How to Excel in Data Science?

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Data science has been growing and has infiltrated everyday life, even if sometimes we are not aware of it. To excel in this discipline that is becoming so popular there are several things you can do, and you should know that the first of these is not necessarily to learn data science although it is of course on the list. It is very common that when you go to a website you will be recommended products that might also be of interest to you. 

Or when you search about something, the search engine completes the sentence for you or makes a suggestion. All this is driven by data science, but do you know what data science is? Do you understand what it means? Do you know where data science is applied? Understanding this is the first step to becoming an excellent data scientist followed of course by a good data science certification course

What Is Data Science?

Data science is first and foremost the discipline of making data useful. Above all data science has become a new approach to problem-solving and strategizing. Although the computing power of today’s computers and data centers is an element without which Data Science would not have much scope, we are dealing with a discipline where other areas of knowledge converge that cannot always be clearly defined.

Several subfields include mining large amounts of information, making decisions based on limited information, and using patterns to automate tasks. Each subfield encompasses a science or technology, and it is important to understand the differences, 

 

  • Analytics

 

Analytics allows for the analysis of all types of data in real-time, historical, unstructured, etc. Above all, it is the process of examining data sets to find trends, hidden patterns, correlations, and conclude the information extracted. It is now possible to analyze data and get answers almost immediately, which is not possible with traditional solutions.

 

  • Statistics

 

Statistics is mainly concerned with putting data in order and analyzing it to obtain predictions and forecasts about specific phenomena. It is made up of methods, procedures, and formulas that enable relevant conclusions to be drawn. Its main objective is to improve the understanding of information. 

 

  • Artificial Intelligence

 

Thanks to machine learning, artificial intelligence can process massive amounts of data, which we as humans could never do. It also refines models through algorithms and predictive analytics, allowing machines to perform activities that we can consider intelligent on their own.

In short, data science employs a variety of technologies and methods to process and analyze data. The important thing to become excellent at data science is to find a good data science certification course. By finding a course that fully exploits your capabilities and develops your skills you can become an excellent data scientist.

Why Study Data Science?

If you learn data science you will make you part of the changing world. You will develop skills in computer science, programming, statistics and learn how to analyze and use the information to solve problems and develop strategies. There are many sources of learning but not all of them will suit your needs and those of the market. Our data science courses are designed by industry experts so you will learn real-world applications to generate useful solutions.  

The program Post Graduate Program In Data Analytics & Machine Learning is designed for those looking to build their career in data science especially for recent graduates and early career professionals. The Data Science courses will go a long way to ensuring that you become an architect of your future. Seeing the increasing demand for the application of this discipline, it is logical to expect an increase in the demand for data science professionals.

How to become a data scientist by optimizing your career

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In 2021, many businesses have transformed themselves digitally. Businesses are interacting with customers on digital channels. The digital channels are also helping businesses to provide services round-the-clock to customers. Business organizations have never cared about their IT infrastructure more than now. With accelerating digital transformation, the amount of data produced by business organizations is also increasing.

There is a need for skilled data scientists in the industry that can perform high-end data analysis and extract insights. It is why many young aspirants want to learn data science and secure their careers. Read on to the best way to learn data science and secure your career. 

Roles of data scientists in 2021

Before you go on a job hunt in the industry, you should know about the roles of a data scientist. Some of the tasks performed by a data scientist in 2021 are as follows:

  • Data scientists must collect data from various sources to perform analysis. In starting, data scientists collect unstructured data that makes no sense. However, the unstructured data contains many meaningful insights that will be uncovered after analysis.
  • Once data is collected from different sources, it needs to be cleaned and classified. Redundant data points or outliers need to be removed for high-end data analysis. At present, data scientists use many analytics platforms for faster data cleaning and classification.
  • A data scientist also performs exploratory data analysis to identify the main characteristics of a data set. Via exploratory data analysis, data sources are manipulated to get the answers needed.
  • Data scientists are also involved in developing better analytics models. Analytics models run on algorithms are performing data analysis without any manual support. Data scientists also use new-age technologies to develop better analytics models.
  • Data scientists often collaborate with other IT teams to find loopholes in the IT infrastructure. With analytics results, data scientists try to implement methods that could drive business performance.
  • Data scientists also make data accessible for everyone in a business organization. They represent complex data via several visualization techniques. It makes data easier to understand by every employee of a business organization.
  • Business organizations rely on data scientists to find trends and patterns among data sets. Those patterns are then used to prepare market forecasts and demand forecasts.

Skillset required for becoming a data scientist in 2021

data science online course can help you in acquiring the competencies required by a data scientist. The skills required by data scientists in 2021 are listed below:

  • Data scientists need to be fluent in coding languages like Python, Java, SQL, and MATLAB. A reliable data science online course can help learn the coding languages used by data scientists.
  • Data scientists need to have a sense of the current business landscape in which they are working. Many firms spend funds on data science training with business in focus for their employees.
  • Analytical and data visualization skills are necessary for a data scientist. Young aspirants can undergo data science training to learn data mining, munging, visualization, and reporting.

Which is the best course to learn the skills needed by a data scientist?

Imarticus provides the best data science certification courses for young aspirants. It also offers a PG Program in Data Analytics & ML for working data scientists. Its Data Science Prodegree is also popular among aspirants in India. 

All the data science courses offered by Imarticus Learning follow an industry-endorsed curriculum. The industry-oriented curriculum focuses on teaching industry practices to job seekers. By learning techniques and practices used by data scientists, you will be job-ready. Start your data science certification course to become a successful data scientist!