School of Data Science and Business Intelligence https://sdbi.in Fri, 15 Dec 2023 05:57:27 +0000 en-US hourly 1 https://wordpress.org/?v=5.8.9 https://sdbi.in/wp-content/uploads/2020/04/cropped-fav-icon-32x32.png School of Data Science and Business Intelligence https://sdbi.in 32 32 Seizing Success: New Year’s Resolutions for 2024 https://sdbi.in/seizing-success-new-years-resolutions-for-2024/?utm_source=rss&utm_medium=rss&utm_campaign=seizing-success-new-years-resolutions-for-2024 https://sdbi.in/seizing-success-new-years-resolutions-for-2024/#respond Fri, 15 Dec 2023 05:52:43 +0000 https://sdbi.in/?p=17642 The time-honoured tradition of New Year resolutions is an opportunity for us to reflect on the past year and set goals for the coming year. The start of a new year can be exciting as we look for ways to improve our skills to stay current and make a greater impact on our work. If you […]

The post Seizing Success: New Year’s Resolutions for 2024 appeared first on School of Data Science and Business Intelligence.

]]>
The time-honoured tradition of New Year resolutions is an opportunity for us to reflect on the past year and set goals for the coming year. The start of a new year can be exciting as we look for ways to improve our skills to stay current and make a greater impact on our work. If you are a data scientist or analytics professional, there are many ways to set yourself up for success in the coming year! Here are some New Year resolutions that should be implemented in 2023:

1. Prioritize Continuous Learning

Take the time to try new skills you want to memorize in 2024 and choose one or more online courses that give you those skills. Continuing education is critical for information scientists and analysts, as it helps them remain up-to-date in an always-evolving field. New engineering and best practices are constantly being developed. Some places to start your research would be popular run suppliers such as Coursera DataCamp and edX.

  1. Reconnect With Office Mates

Interactions with your co-workers whether plotted in coming along or at work, are crucial. Purposeful formal and informal communication and conversation are important. Plan these untimely conversation pieces on the website to reduce employee productivity in organizations with new back-to-the-office (RTO) policies. It’s important to use the time you pass in the business office to establish substantial relationships with your co-doers.

 

  1. Refresh Your Resume

Despite this general advice, maintaining your CV and LinkedIn profile is always skilful practice and should be done in every new class. With recent tidings around layoffs and worldwide financial uncertainty, now is the time to get prepared if you begin looking for a job following class planned or unplanned. By regularly reviewing and updating your CV and online visibility, you can ensure that they accurately reflect your current skills, experience, and goals. Preferably in the class of 2024 so if you want to market yourself, be ready to answer immediately!

  1. Assess Your Working Style

Recently, respective road companies have proclaimed that they are acquiring out of RTO politics. Many of these are scheduled to be enforced by early 2024. Returning to an ordinary agency means being in power for two to four years a week, but this depends on other factors such as team dynamics or the degree of seniority. This is the perfect tense to pass judgment on how you are doing. The New Year’s Senate will do it for him. Some teachers boom in a whole remote area, while others want to get back up to solve. You don’t have to answer everything, but you no longer want to work at a layer that doesn’t suit your style. Determine where you fall on the spectrum. If your stream act surroundings do not conform to your style, begin the process of finding a suitable job.

  1. Create Your Opportunities

Don’t hold back for chances to come to make them! In the fast-paced world of information science and analytics professionals, wealthy people have time to pursue and attain career goals. In the New Year, you will confirm your plans and clearly define your career goals for the following 1, 3, and 5 years. Whether your ends include a change in the organization or a promotion within the same company, it is important to decide whether to implement your be-after and aim steps to accomplish your goals. It is likewise significant to know that strategies change over time. With all the bustle and hustle these years, even what you thought 12 or 18 calendar months ago may look out of date.

 

Strategy for making resolutions:

  • Remind myself: I tape my list of New Year’s resolutions to my desk so I can refer to them several times a day
  • Apply this to my work: I will apply many of the recommendations to my current work and future projects.
  • Implementation Goals: I will write down the time and place (or project) to implement this resolution (if possible).

TAKE THIS PROMISE

  • Improved folder and document naming methods
  • More use Github.
  • Construct simple answers
  • I won’t begin a project until I am aware of its advantages and potential savings.
  • Don’t let confirmation bias get the better of you!
  • One new talent every year
  • Put the MLOps idea into practice.
  • Avoid deploying a model without doing a deep analysis.

Conclusion
Reflecting on New Year’s resolutions for data scientists and analytics professionals provides an avenue to enhance skills, refine strategies, and embrace change in the evolving landscape of our careers. Prioritizing continuous learning, strengthening workplace connections, and redefining career goals remain pivotal pursuits. The coming year beckons us to fortify our adaptability, learn new technologies, and re-evaluate our work styles to align with our professional aspirations. With deliberate strategies and implementation goals in place, 2024 presents an opportunity to embrace growth, drive impactful transformations, and navigate the dynamic realm of data science and analytics with agility and purpose. Cheers to a year filled with professional development and impactful accomplishments!

The post Seizing Success: New Year’s Resolutions for 2024 appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/seizing-success-new-years-resolutions-for-2024/feed/ 0
Gen-Z in the Digital Marketing Era https://sdbi.in/gen-z-in-the-digital-marketing-era/?utm_source=rss&utm_medium=rss&utm_campaign=gen-z-in-the-digital-marketing-era https://sdbi.in/gen-z-in-the-digital-marketing-era/#respond Fri, 24 Nov 2023 13:34:46 +0000 https://sdbi.in/?p=17631 Understanding Generation Z in the Realm of Data Science Generation Z, or Gen Z, encompasses individuals born between 1997 and 2012, representing a cohort deeply entrenched in the digital world. The oldest among them are now in their mid-twenties, while the youngest are on the cusp of entering their tween years. This digitally native generation, […]

The post Gen-Z in the Digital Marketing Era appeared first on School of Data Science and Business Intelligence.

]]>
Understanding Generation Z in the Realm of Data Science

Generation Z, or Gen Z, encompasses individuals born between 1997 and 2012, representing a cohort deeply entrenched in the digital world. The oldest among them are now in their mid-twenties, while the youngest are on the cusp of entering their tween years. This digitally native generation, also known as “Zoomers,” has grown up in an era immersed in the internet, mobile phones, social networks, and online commerce from an early age.

Characteristics of Gen Z in the Digital Landscape

Gen Z’s comfort with digital platforms and adeptness in navigating online and offline realms has made them a formidable force in the consumer landscape. They are an educated generation, well-versed in leveraging technology for research and data collection, seamlessly transitioning between offline and online domains.

Understanding Gen Z’s Motivations

Driven by a desire for financial security, Gen Z seeks monetary rewards, career advancement opportunities, and a sense of purpose in the workplace. This cohort aspires to collaborate with companies committed to making a meaningful impact.

The Challenge for Marketers: Targeting Gen Z

Marketers are now tasked with connecting with this dynamic and content-hungry generation. Traditional marketing approaches often fall short, necessitating tailored strategies to captivate Gen Z’s attention.

Strategies for Successful Marketing to Gen Z

1. Create Channel-Specific Content: Leverage platforms like Instagram, Snapchat, TikTok, and Twitter to deliver targeted content, aligning with Gen Z’s preferences for different platforms and short-form content.

2. Harness the Power of Video: Embrace video content, a preferred medium for Gen Z, shaped by their affinity for platforms like YouTube and TikTok, to effectively engage and communicate messages.

3. Champion Authenticity: Establish authentic connections by showcasing the human side of your brand through behind-the-scenes content and transparent communication.

4. Influencer Engagement: Collaborate with influencers, leveraging their sway and persona to connect with Gen Z authentically. Consider micro-influencers who resonate strongly within specific niches

5. User-Generated Content (UGC): Encourage and leverage user-generated content, fostering credibility and authenticity, key attributes valued by Gen Z.

6. Strategic Posting Times: Time your content dissemination, recognizing the different online behaviours of Gen Z, particularly their peak social media usage times

Conclusion: Navigating the Gen Z Landscape

Understanding Generation Z’s preferences and behaviors in the digital realm is pivotal for successful marketing endeavors. Leveraging insights and crafting strategies that resonate authentically with Gen Z’s values and preferences can pave the way for meaningful connections and lasting brand loyalty.

Gen Z’s influence continues to burgeon, and tailoring marketing efforts to align with their preferences is a strategic imperative in today’s competitive landscape.

The post Gen-Z in the Digital Marketing Era appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/gen-z-in-the-digital-marketing-era/feed/ 0
Shaping Tomorrow: The Bright Future for Women in Data Science https://sdbi.in/shaping-tomorrow-the-bright-future-for-women-in-data-science/?utm_source=rss&utm_medium=rss&utm_campaign=shaping-tomorrow-the-bright-future-for-women-in-data-science https://sdbi.in/shaping-tomorrow-the-bright-future-for-women-in-data-science/#respond Sat, 28 Oct 2023 07:09:26 +0000 https://sdbi.in/?p=17617 In today’s rapidly evolving digital landscape, the world is generating an unprecedented amount of data. This data holds enormous potential to drive innovation, solve complex problems, and improve decision-making processes. As such, there is a growing need for skilled professionals who can extract valuable insights from this data – enter the data scientist. Data scientists […]

The post Shaping Tomorrow: The Bright Future for Women in Data Science appeared first on School of Data Science and Business Intelligence.

]]>
In today’s rapidly evolving digital landscape, the world is generating an unprecedented amount of data. This data holds enormous potential to drive innovation, solve complex problems, and improve decision-making processes. As such, there is a growing need for skilled professionals who can extract valuable insights from this data – enter the data scientist. Data scientists possess the unique ability to analyze, interpret, and communicate data-driven findings, making them indispensable assets in our increasingly data-driven world.

The world needs more data scientists, including women, to harness the growing volume of data and unlock its potential across various industries. As mentioned earlier, data scientists play a crucial role in analyzing, interpreting, and communicating valuable insights from large datasets. By promoting gender diversity and encouraging more women to enter the field, we can ensure a broader range of perspectives and ideas, leading to more innovative and effective solutions. Additionally, having more women data scientists helps reduce biases in data-driven decision-making and contributes to a more equitable and inclusive workforce, ultimately benefiting the diverse world we live in.

Data science is a fantastic career choice for women, but it can be tricky to get started. The good news is that there are many reasons why women are making great strides in the field. Here’s what we know about why data science is a great career choice for women and how to get started.

A growing number of women are becoming data scientists and tech leaders, but they face some serious roadblocks along the way. Here are some of the major issues women face in a male-dominated industry, and strategies they can use to overcome their human resources, business, administration, information technology, marketing, advertising, and sales.

  • Organize datasets and identify meaningful patterns
  • Build algorithms and design experiments to extract data to benefit the wider organization
  • Create clear reports that visualize and communicate data insights in a business
  • Use machine learning tools and statistical techniques to produce actionable solutions to problems
  • Use insights to locate business opportunities in various departments, like marketing or HR

Mathematics and computer science are two of the strongest prerequisites for a successful career in data science. Fortunately, there is a growing number of communities for women who want to break into these areas. For example, Women Who Code sponsors women’s coding workshops and support groups throughout the country. At this point, there’s enough interest in starting these types of spaces that companies such as Google and Facebook have been forced to start their own initiatives to encourage women to pursue careers in data science.

Female working statistics will continue to rise with more women becoming interested in data science, but still, the number of men coming into the field is greater. The biggest barrier for women entering data science is the perception that this field requires technical expertise in math and computer programming. While there are many specializations and roles within data science, including those that run on hardware, basic statistics can be done using Excel or python

Data scientists work in a variety of industries, including accounting and finance, Women in data science are essential in a data-driven world. We cannot accept large gender gaps where women are underrepresented, especially in industries that promise to change the world in such monumental ways. Women in statistics and data science will help prevent statistical bias, offer unique perspectives, and enjoy the benefits of a high-paying career path with a positive job outlook.

Data scientists and statisticians are in high demand, but the number of women available for the job is limited. As more and more people are relying on data to make decisions, we need more women working in this field, as they can help prevent bias and offer unique perspectives. The work being done by women in statistics and data science is paramount to achieving any goal.

Data Science: Where Women Lead the Way to Tomorrow

The future of women in data science depends on women who not only occupy roles in the industry but excel in executive roles and leadership positions in the data science and analytics space. Women in data science positions need education and confidence to pursue influential leadership positions.

The conversation about women in data science and the gender gap in technology has largely discussed the dangers of male-dominated workplace culture, the lack of mentorship provided to women, and the misconceptions about what it’s like to work in data, however, researchers are now examining how a lack of confidence is a major obstacle for women in statistics and data science.

Why Is Data Science a Fantastic Career Choice for Women?

The first and foremost reasons that come to mind when discussing data science as a positive career choice are the widely heard promises of high pay and job growth. Indeed, looking at the data on Glassdoor (put together by a data scientist, no doubt), Data Scientist salary in India ranges between ₹ 3.6 Lakhs to ₹ 25.0 Lakhs with an average annual salary of ₹ 12.7 Lakhs.

Data science is a fast-growing field that allows you to work in an analytical role with data as your tool to get insights and solve problems. In this role, you have the privilege of making systems, technologies, and even products based on analysis. A career in data science will provide you with a wide range of opportunities, such as self-driven career growth, working with cutting-edge technology and tools, learning from the best people in different fields, and gaining skills that are applicable to other sectors.

Female data scientists are in huge demand. This is due to the vast number of qualifications women (and men) can gain through data science degrees. There’s also a distinct image of what you might expect a female data scientist to look like—either a chick wearing hoodies or nerdy glasses.

 if you want to start or progress your career. In this post, I’m going to explain why being a female data scientist is an ideal choice for you and why it can open up multiple opportunities for success.

2.  The field of data science needs you.

 A new report on the gender balance in this multi-billion-dollar industry released by the Institute for Women and Technology (IWT) and McKinsey & Company shows that data science is making significant progress toward becoming more diverse, but a lack of women persists. More than half of all data scientists are men.  “This is not an anomaly, it’s a systemic problem,” said Diana Frank, senior vice president at McKinsey

Gender imbalance in data science is a growing problem. The field of data science needs more women and since you are here today, you can be part of the solution!

There are many reasons to become a data scientist, but the main one is that it’s a fantastic way to further your education and career in your field of interest. The skills that you learn while becoming a data scientist can help you break into any field possible. Data science proves itself as a highly lucrative career choice for women who dare to take it on and achieve success in this male-dominated industry.

3. Women’s Biggest Barriers and How to Overcome Them

You may also now be experiencing some degree of self-doubt, as is common for women in this situation. Indeed, this doubt remains one of the biggest barriers still preventing or hindering many women from entering the field. But it doesn’t have to be.

In a large industry, where representation is still lagging behind what researchers had expected based on the rapidly increasing number of women entering STEM and related fields, one could say that Women’s Biggest Barriers and How to Overcome Them is a must-read. In fact, many women still face a lot of roadblocks in becoming an ever more prominent force in software development and technology-related fields (engineering, programming). If you are one of them, it’s time to take a step back and look at this book as a platform for growth — not only yours but also for other women who might be interested in learning about coding or pursuing a data science degree.

But the truth is – those are justifications of fear and thus complete nonsense. Our brains are very powerful at making excuses for us all — even when trying to stick with a new exercise routine or a healthier diet.

A lot of us think that we can’t enter or excel at certain careers because of our personal circumstances, including gender and age. But this thinking has no basis in facts or research — in fact, it’s holding women back from seeing their full potential. Our brains are very good at justifying our thoughts and feelings — so instead of letting these barriers get in the way every time we try something new, let’s use them as motivation to overcome doubt and embrace opportunities!

There are many reasons why women find it difficult to enter the field of Data Science. A lot of barriers can be related to cultural issues, education, and a lack of awareness about the roles available in data science fields.

Women’s biggest barrier to becoming data scientists is the lack of role models in the field. There are so few women that it is hard for them to find role models and mentors, which leads to more discouragement. Women also face issues when their workplace cultures don’t consider them as experts and value their contributions as much as their male colleagues.

Data science is a field that’s quickly becoming a leading way to solve problems. Data scientists are responsible for evolving the way we do things, whether it’s understanding how people use technology and then figuring out how to make this technology better by learning from them, exploring new ways to analyze information in people’s lives, or even learning from data itself. For example, one of your jobs as a data scientist could be to figure out ways for a company like Facebook to encourage users to use more of its services. We’re using social media—known as the Facebook News Feed algorithm update process—so that we can get the most engagement possible while reducing spammy comments. While there are many types of roles you might end up serving in your career as a data scientist, no matter what type of role you end up playing, there are two skills that every good data scientist should have: analyzing and organizing data.

Types of Data science jobs:

  1. Data Scientist
  2. Data Architect
  3. Data Administrator
  4. Business Analyst
  5. Data Analyst
  6. Business Intelligence Manager
  7. Data/Analytics Manager

 

CONCLUSION:

I am a data scientist who is passionate about helping women find their voices in data science. I really believe that you can take your career to the next level by being prepared for potential obstacles and being able to overcome them. You will be expanding your perspectives and gaining a better understanding of how different datasets are similar and how they differ. You will also become familiar with tools and techniques based on the type of data you want to work with, which both help you build skills that will serve you well later on in your career.

If you have any doubts about whether or not data science is for you, don’t listen to that inner voice of doubt. You are absolutely smart enough, and the skills you will gain as a data scientist will be extremely valuable!

Our institute is dedicated to empowering women in data science by equipping them with the necessary skills and knowledge to excel in their careers. By preparing our students for potential challenges and teaching them how to overcome these obstacles, we believe they will gain valuable insights into the similarities and differences between various datasets.

Our curriculum focuses on introducing tools and techniques tailored to the type of data our students will encounter, helping them build a strong foundation for future success.

We encourage all aspiring data scientists, regardless of any doubts or uncertainties, to embrace their potential and join our institute. You are undoubtedly intelligent and capable, and the skills you acquire here will prove to be invaluable in your data science journey!

The post Shaping Tomorrow: The Bright Future for Women in Data Science appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/shaping-tomorrow-the-bright-future-for-women-in-data-science/feed/ 0
WHAT IS THE FUTURE OF DATA SCIENCE ? https://sdbi.in/what-is-the-future-of-data-science/?utm_source=rss&utm_medium=rss&utm_campaign=what-is-the-future-of-data-science https://sdbi.in/what-is-the-future-of-data-science/#respond Wed, 13 Sep 2023 14:10:57 +0000 https://sdbi.in/?p=17597 Welcome to an exciting journey into the future of data science! In this blog, we’ll unravel the captivating world of data science, breaking it down into six fascinating categories. First, we’ll look at the history of data science and how it became so popular in the quick-paced world of today. This field’s progress has been […]

The post WHAT IS THE FUTURE OF DATA SCIENCE ? appeared first on School of Data Science and Business Intelligence.

]]>
Welcome to an exciting journey into the future of data science! In this blog, we’ll unravel the captivating world of data science, breaking it down into six fascinating categories.

First, we’ll look at the history of data science and how it became so popular in the quick-paced world of today. This field’s progress has been nothing short of amazing.

We’ll next get into the five initial actions that data science normally takes. For a thorough understanding of the data science process, these phases must be understood.

Then, we’ll take a detailed look at the tech world and how data science has woven itself into the very fabric of today’s technology. It provides a window into the core of innovation.

We’ll also explore the huge benefits that data science provides for the future. Its effects are profound throughout industries, including banking, healthcare & other industry.

We’ll go through the degrees, qualifications, and fundamental abilities required for a successful career in this sector for individuals hoping to join the ranks of data scientists. It is a travel map for your data science endeavors.

Finally, we’ll look at all of the opportunities for employment in the field of data science, highlighting the fascinating prospects that lie ahead.

So buckle up as we set out on this thrilling path into the future of data science. There is information here for everyone, whether you are new with questions or a seasoned expert.

Let’s begin!

Data science is a revolution. With each passing minute and every piece of data that is produced, the potential for future business outcomes is becoming clear. Data scientists are providing the vision and drive to improve how businesses use data to improve their operations and ultimately lower costs while increasing top-line revenue.

Data science has become the new buzzword in the business world, yet businesses have been slow to understand its importance. This post will examine why companies are unable to handle the data, not understanding it to make appropriate decisions and find solutions.

Data Science is not new, but the ability to use it is. As companies struggle to handle their exponentially expanding data, data science has become essential for reshaping the way we think about marketing, sales and customer support in the future.

Let’s start…………………

What is the future of data science?

Nothing less than a revolution is taking place in the field of data science, which is transforming the corporate environment one byte at a time. The ability of fresh data to alter future business results becomes more apparent with each passing second. The innovators who are advancing how organizations use data to improve operations, save costs, and increase top-line income are data scientists.

But here’s the twist: while “data science” has become the buzzword of our times, many businesses are still struggling to grasp its true significance. They’re like ships adrift in a sea of data, not fully comprehending how to harness it for informed decisions and innovative solutions.
The concept of data science isn’t new, but the power to wield it effectively is.

Data science will be crucial in changing how we approach marketing, sales, and customer support in the future as data grows dramatically. It will fundamentally alter how companies of all sizes interact with their clients.

However, difficulties abound. It is challenging for businesses to stay ahead due to inadequate IT infrastructure, a lack of competent personnel, and a constantly changing industry. Although they recognize the value of data science, they frequently find it difficult to adjust to its dynamic nature.

Looking ahead, the future of data science offers a world in which developing technologies reduce the cost of intelligence collection. AI, augmented reality, and blockchain will be at the forefront, permanently altering the data environment. It’s a world in which robots, data abundance, and user-centric businesses are rewriting the rules.

In essence, data science is the skill of discovering patterns in data and applying that information to make better business decisions. It is not a new concept, but its applications are limitless in this age of the internet. Data science combines business knowledge with mathematics, employing complicated algorithms to get business insights. It is critical not just for commerce, but also for illness forecasting, weather prediction, healthcare enhancement, and even fraud detection.

So, whether you’re navigating the business world or the huge data-driven environment, keep in mind that data science is more than just a tool; it’s the compass that will lead us through the unexplored areas of our data-rich future.

Five Initials Steps of Data Scientist

A data scientist must go through five steps, often known as the life cycle, before drawing any conclusions:

Acquisition – This is the data collection stage. The data collected here is unstructured raw data.

Exploration – This is the most time-consuming task on the path of life. Here the data is cleaned and marked as useful or useless. Data scientists translate it into a model ready for the next step.

Modeling – This is part of the data scientist’s process of looking at the data and deciding which model is best for the desired analysis.

 Analysis – This is the main part of the whole process. Perform various analyses of the data to get the desired results.

Reporting – The results obtained are presented in a readable format that can be a chart or just a report. Here the data is presented in an easy-to-understand format.

LET’S HAVE A LOOK INTO THE TECH WORLD…………….

The future of data science is poised to usher in a significant transformation in data acquisition, analysis, and retention. Over the past decade, we’ve witnessed an explosion of data, driven by the proliferation of the Internet of Things (IoT) and the influence of social media. 

Experts anticipate that the increasing prevalence of machines will lead to a surge in the utilization of computer systems and mobile devices in the coming years. Consumers are using social media not only for entertainment but also for business monitoring and more. Some prognosticators foresee a surge in the application of machine learning algorithms within the realm of social media.

The proliferation of the Internet of Things (IoT) and the ubiquity of social media platforms are expected to make Big Data even more integral to our daily lives. This transformation has already commenced, with some companies recognizing the immense value of data analytics. As a result, they are investing in platforms and acquiring messaging apps such as WhatsApp, Facebook Messenger, and Skype, among others. Even tech giants like Facebook and Google are acquiring software that streamlines the process of data collection, analysis, and interpretation, heralding a profound shift in our way of life.

It’s undeniable that Big Data is a hot topic in the present day. Unlike just a decade ago, the act of collecting and analyzing vast quantities of information has evolved into a highly lucrative, multibillion-dollar industry.

The future of data science is poised to make significant contributions as the volume of data on the Internet continues to grow exponentially. Data science will play a vital role in various fields, including:

  1. Image Recognition: With the increasing volume of data, companies can refine their image recognition systems. For example, consider Tesla’s self-driving cars, which rely on accurate road mapping. As more people drive the same routes repeatedly, the quality of these maps improves, enhancing the driving experience for others on the same roads.
  2. Healthcare Advancement: The growing patient database will enable the healthcare system to identify gaps quickly. This data can aid governments in addressing impending health crises promptly and effectively.
  3. Weather Forecasting: Abundant historical data and powerful analytics tools may soon enable more accurate weather forecasting. This advancement could potentially save lives and reduce property damage by predicting and preparing for severe storms.
  4. Fraud Detection: Algorithms and artificial intelligence tools can swiftly identify and rectify fraudulent transactions, making financial systems more secure. AI has the potential to proactively prevent such activities as well.
  5. Gaming: Video game companies are increasingly leveraging data to enhance the gaming experience. Personal preferences and behavior data can be used to tailor games to individual players.
  6. Logistics: Advanced AI systems, like Google Maps, already provide route recommendations and real-time traffic updates. These systems can further evolve to address various logistical challenges, such as avoiding traffic accidents.
  7.  Recommender Systems: The entertainment industry is benefiting from data collected by apps and websites like Netflix, Amazon Prime, Disney+, and other OTT platforms. User browsing history serves as a valuable database, allowing these companies to provide personalized recommendations.

As data science continues to advance, its applications will extend across diverse sectors, driving innovation and efficiency in various industries.

Data Scientist Degrees and Qualifications:

Data scientists come from diverse educational backgrounds and follow various pathways to success in this dynamic field. They serve as modern-day explorers, navigating the intricate world of data using knowledge from various disciplines. The field of data science offers a range of educational options, and specialized programs are on the rise, nurturing the next generation of data specialists.

For those eager to embark on this journey straight out of high school, the first step is obtaining a BSc in Data Science & Business Analytics. This foundational program equips students with the skills needed to enter the field of data science. Importantly, data science provides not only a variety of starting points but also opportunities to pivot. Graduates looking for new directions have numerous choices. They can pursue an MSc in Data Science & Big Data Analytics, delving deeper into the complexities of data. Alternatively, a Post Graduation Diploma in Data Science offers a specialized and expedited pathway. These programs are accredited by the University of Mumbai through the School of Data Science & Business Intelligence & its globally recognized degrees. In today’s interconnected and diverse world, this recognition holds significant value.

But what if you lack formal training or a degree in data science? Diversity is highly appreciated in the field of data science. Candidates with diverse educational backgrounds, such as computer science, statistics, and information technology, can seamlessly transition into the field. Advanced degrees in statistics or mathematics can be particularly helpful, as they enhance problem-solving abilities. The demand for programmers has also made computer science degrees increasingly popular.

Regardless of their educational backgrounds, individuals entering data science must possess a deep understanding of both technical programming and the intricacies of business operations. In the end, data science welcomes those who are willing to study, analyze, and derive insights from the ever-expanding world of data, whether they are recent high school graduates or professionals changing careers. While qualifications may vary, the thirst for knowledge remains a constant driving force.

Skills Data Scientists Should Focus on
  1.  SAS stands for Statistical Analysis Software. It is used for information management, analysis, and reporting.
  2. MATLAB This software is used to clean and analyze complex.
  3. R is a programming language with data, statistical computing& graphics support.
  4. SQL is a programming language for data management.
  5. Hadoop is a Java-based language for processing big data. It is gaining popularity, but it is not necessary to be a data scientist. These technical skills are essential for data scientists to excel in their field. But if a data scientist wants to excel, he must work on the following non-technical skills.
  6. Understanding the Business Acumen is critical if a business data scientist wants to take an organization to the next level. Solving organizational problems should be a data scientist’s primary focus.
  7. Communication skills and soft skills are essential requirements for any job
  8. Statistics one of the important parts of data science. The analyzed data is presented in one of two inferential or descriptive forms.
  9. Mathematics Mathematical topics such as probability and linear algebra play an important role in the study and practice of data science.
  10. Analytics Analytical Reasoning Finding solutions to complex problems is a daily task for data scientists. Training your brain to think logically is a skill that a data scientist can acquire.
Data Science Jobs

Data has applications in nearly every field, and data scientists play a crucial role in helping companies make informed decisions, contributing to their growth. There are three primary types of careers in data science:

  1. Data Analyst: Data analysts focus on processing data and summarizing the results.
  2. Data Scientists: Data scientists are responsible for analyzing results and creating models to interpret large datasets.
  3. Data Engineer: Data engineers work on creating and maintaining data warehouses with constantly shifting loads. These roles are closely related and can sometimes overlap. For example, a data scientist may also perform the duties of a data engineer.

In addition to these roles, there are other key positions within the data science field:

– Database Administrator: Database administrators are in charge of assuring the smooth operation of all company databases. They control access to these databases, backups, and recoveries.

– Machine Learning Engineer: Machine learning engineers are in high demand and must be well-versed in technologies such as SQL and REST APIs. They also do A/B testing, data pipeline construction, and machine learning algorithm implementation.

– Data Architect: Data architects provide data management solutions that allow databases to be easily connected, centralised, and protected by effective security mechanisms. They also supply data engineers with the tools and technologies they require.

– Statistician: Statisticians are well-versed in statistical theory and data organisation. They not only extract useful insights from data, but they also create new approaches for data engineers to use.

– Business Analyst: Business analysts have a unique position in data science. They are familiar with data-driven technology and how to manage big amounts of data. Their key responsibility is to discriminate between high-value and low-value data and to determine how Big Data may be translated into useful business insights for business success.

– Data and Analytics Manager: Data and analytics managers manage data science operations and delegate work to their teams depending on their abilities and knowledge. They should be knowledgeable in technologies such as SAS, R, and SQL, as well as have good managerial abilities.

These various roles collectively contribute to the field of data science, where professionals work together to harness the power of data for informed decision-making and business success.

CONCLUSION:

Data science seamlessly integrates business acumen with mathematical brilliance, aided by complicated algorithms, to solve the mysteries of business intelligence. This framework enables you to build predictive models that will help your company make better decisions.

Although not wholly new, the use of data science has increased dramatically in our internet-driven age. Data, which includes analytics and storage, has evolved into a valuable resource. Facebook and Google are investing in technologies to exploit the massive amounts of data created by everyday people. Big Data is the future, and we’re well-positioned to succeed in this emerging frontier.

Consider this: the evolution of data science parallels the evolution of the computing industry over the last two decades. Computers, which were once only instruments for productivity, are now a vital part of our everyday lives, connecting, entertaining, teaching, and safeguarding us.

As we look ahead, one fact is undeniable: the need for data scientists is increasing, with firms making significant expenditures in this sector. You may pave your road to a bright career in data science by taking the correct measures. We hope that this blog has enlightened your route by providing insights for going on your own journey in this ever-changing universe.

So, take the moment, investigate the possibilities, and let the realm of data science to reveal your limitless potential. Your future is calling!

The post WHAT IS THE FUTURE OF DATA SCIENCE ? appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/what-is-the-future-of-data-science/feed/ 0
Using Machine Learning to Predict IPL Team Wins and the Outcomes of Future IPL Matches https://sdbi.in/using-machine-learning-to-predict-ipl-team-wins-and-the-outcomes-of-future-ipl-matches/?utm_source=rss&utm_medium=rss&utm_campaign=using-machine-learning-to-predict-ipl-team-wins-and-the-outcomes-of-future-ipl-matches https://sdbi.in/using-machine-learning-to-predict-ipl-team-wins-and-the-outcomes-of-future-ipl-matches/#respond Tue, 23 May 2023 11:43:38 +0000 https://sdbi.in/?p=17561 Welcome back to our thrilling blog section!  Today, we have an absolutely captivating topic to dive into. So, let’s brace ourselves as we venture into the awe-inspiring world of machine learning. Here, we’ll unlock the potential to revolutionize how we predict the exhilarating triumphs of IPL teams and foresee the outcomes of those nail-biting matches […]

The post Using Machine Learning to Predict IPL Team Wins and the Outcomes of Future IPL Matches appeared first on School of Data Science and Business Intelligence.

]]>
Welcome back to our thrilling blog section! 

Today, we have an absolutely captivating topic to dive into. So, let’s brace ourselves as we venture into the awe-inspiring world of machine learning. Here, we’ll unlock the potential to revolutionize how we predict the exhilarating triumphs of IPL teams and foresee the outcomes of those nail-biting matches that lie ahead. Get ready to embark on this extraordinary journey as we combine the power of technology with the magic of cricket. So, grab your cricket gear, fasten your seatbelts, and let’s embark on this extraordinary adventure together!

The Indian Premier League

The Indian Premier League, or IPL, has captured the hearts of millions around the globe. With intense competition and exceptional talent on display, it’s a cricket tournament like no other. But with so many variables at play, accurately predicting the winner can be a challenging task. That’s where machine learning comes in.

The ability to train computers to learn from data and generate predictions based on that knowledge is known as machine learning, which is a subset of artificial intelligence. These algorithms can analyze historical information such as teams, players, and match outcomes, in the case of IPL win prediction in order to spot patterns and trends that indicate which team is most likely to win.

Machine Learning Algorithm

The capacity of machine learning to take into account a huge variety of factors that might influence a match’s outcome is what makes it unique. Machine learning algorithms may consider anything from prior team performances and player forms to pitch conditions and even weather forecasts. This enables predictions that are more precise than those made merely on the basis of human intuition.

 

Data Collection and Cleaning

Once we have a clean dataset, it’s time to select the best machine learning method. There are several choices, including logistic regression, decision trees, and neural networks. The decision is based on the size, complexity, and level of accuracy that are sought for the dataset.

After choosing an algorithm, we proceed to train our machine learning model. In order to do this, the data must be split into training and testing sets. While the testing set assesses the model’s accuracy, the training set teaches the algorithm to recognize patterns and trends. We make the model more accurate until it reaches the target degree of accuracy.

Visuals of Model Training

Our model is now prepared to perform its magic! Our machine learning algorithm predicts the most probable winning side once we enter the pertinent information, including team names, players, pitch conditions, and even the weather forecast.

It’s crucial to remember that machine learning is not a precise science. The projections will always be subject to some degree of uncertainty. The accuracy is a function of the model’s complexity, the quality and completeness of the data, and the data itself. The results of matches may also be influenced by additional aspects that the data or the model may not have considered.

Visuals of Cricket Match Drama

Nevertheless, machine learning has the potential to be an effective technique for forecasting IPL game results. These algorithms give us predictions that are more accurate than those we would get from our intuition alone by looking at previous data and seeing patterns and trends. They serve as a guide for cricket enthusiasts, assisting us in making more educated choices on our preferred IPL teams and players.

Conclusion
Machine learning is a powerful tool for predicting IPL match outcomes.

By analyzing historical data and uncovering patterns and trends, machine learning algorithms provide more accurate predictions than intuition alone.

However, it’s essential to understand the limitations of machine learning and use the predictions as a guide rather than a guarantee.
With the right approach, machine learning empowers cricket fans to make more informed predictions about their favorite teams and players in the IPL tournament.

So embrace the potential of machine learning and enhance your IPL experience.

Until then, happy cricketing!

 

Stay tuned for more exciting topics

 

The post Using Machine Learning to Predict IPL Team Wins and the Outcomes of Future IPL Matches appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/using-machine-learning-to-predict-ipl-team-wins-and-the-outcomes-of-future-ipl-matches/feed/ 0
Choosing the Right Career Path: Why SYJC Students Should Consider Data Science https://sdbi.in/choosing-the-right-career-path-why-syjc-students-should-consider-data-science/?utm_source=rss&utm_medium=rss&utm_campaign=choosing-the-right-career-path-why-syjc-students-should-consider-data-science https://sdbi.in/choosing-the-right-career-path-why-syjc-students-should-consider-data-science/#respond Fri, 12 May 2023 09:34:43 +0000 https://sdbi.in/?p=17550 Here, we’ll talk about an issue that many SYJC students encounter: deciding which graduation course to take once their results are out. It’s not an easy decision to make, and the pressure to choose the right course can often be overwhelming. Knowing where to begin might be difficult with so many alternatives available. One of […]

The post Choosing the Right Career Path: Why SYJC Students Should Consider Data Science appeared first on School of Data Science and Business Intelligence.

]]>
Here, we’ll talk about an issue that many SYJC students encounter: deciding which graduation course to take once their results are out.

It’s not an easy decision to make, and the pressure to choose the right course can often be overwhelming. Knowing where to begin might be difficult with so many alternatives available.

One of the most significant factors to consider is your interests and passions. What academic areas do you find interesting, and how do you envision yourself using your skills in the future? You may keep yourself motivated and interested throughout your academic career by picking a course that fits your interests.

Another essential factor to consider is the job prospects in your chosen field. Research the industry and see what kind of opportunities are available in the market. It’s essential to choose a course that has good job prospects, as it will help you secure a stable career after graduation.

In today’s fast-paced world, it’s essential to keep up with the latest industry trends to make informed decisions about your career path. One of the most in-demand fields right now is the IT industry, with cybersecurity, AI, and data science being some of the most promising topics.

If you’re inclined towards science, cybersecurity and AI are excellent career options to consider. Both fields are growing rapidly and have excellent job prospects in the market.

On the other hand, if you’re interested in data science, you’ll be happy to hear that both science and commerce students can choose careers in this field. Data science is a rapidly expanding discipline that provides countless prospects for career growth.

Data science jobs are in high demand, and experts anticipate that this trend will keep going. With so many job vacancies in the market, choosing a career in data science could be a wise decision for SYJC students.

Degree with Future Success and Recognition

A full-time study in data science, cyber security, and AI is now offered by the University of Mumbai and is open to students who have completed their 12th grade. 

This course provides students with a comprehensive understanding of data science and its applications in industry.

For SYJC students who desire to pursue a profession in data science, There is a Mumbai-based institute School of Data Science & Business Intelligence affiliated with Patkar Varde College at Goregaon that offers a full-time degree in data science. The course is accredited by the University of Mumbai and globally recognized, providing students with access to a wide range of employment prospects 

This course’s curriculum includes a wide range of subjects, including statistical analysis, data mining, and machine learning. Additionally, students will get the chance to work on real-world projects and gain hands-on expertise.

Students at SYJC can access a wide range of employment prospects by successfully completing this degree. One of the most promising disciplines is data science, which has a tonne of employment openings and high development potential.

Opportunities for employment

One of the most significant advantages of data science is the ample job opportunities available in the market. Data science is a growing field, and many companies across various industries require data scientists to analyze and interpret large volumes of data.

The attraction of data science lies in its multidisciplinary nature, which brings together components of computer science, statistics, mathematics, and domain expertise. This implies that both science and commerce students can successfully pursue a career in data science.

Students who desire to study data science, don’t require any specialized knowledge to begin. The full-time data science degree offered by School of Data Science & Business Intelligence accredited with the University of Mumbai, includes all the necessary material and equips students with the abilities they need to succeed in this industry.

Students that select this career path obtain useful abilities in statistical analysis, machine learning, data mining, data visualization, and other areas in addition to the many job options and multidisciplinary nature of data science. These abilities are in great demand in the industry and have great potential for professional advancement.

Jobs & Salaries 

Data scientists are in great demand in India since the profession is so in-demand. In India, a data scientist makes an average annual pay of roughly 9.5 lakhs, according to Glassdoor. However, the wage range might change depending on the applicant’s experience, organization, region, and job description.

Talking about job profiles, data scientists may find employment in a range of sectors, including e-commerce, healthcare, and finance. Data scientist job descriptions sometimes contain those for data analysts, data engineers, machine learning engineers, and research scientists.

Data analysts must examine data to find patterns and trends that may be used to guide business choices. On the other side, data engineers are in charge of creating and maintaining the infrastructure needed to store and process data.

For the purpose of making predictions or seeing patterns in data, machine learning engineers create models and algorithms. Research scientists use novel methods and technology to enhance data analysis while working on cutting-edge research projects.

There are many employment possibilities and job profiles available, so if you’re thinking about a career in data science, you’ll have much to pick from. Data science is a fantastic career choice that may provide you with financial stability and advancement, and it has a respectable income range.

Summary 

Are you a SYJC student wondering what career path to take after graduation? Making a decision might be difficult since there are so many possibilities accessible. To make educated decisions regarding your professional path, it’s crucial to stay current with industry trends in today’s fast-paced environment. One of the most in-demand professions today is data science, which offers endless opportunities for professional advancement.

The blog’s content encourages students towards choosing a course following SYJC and directs them towards a Mumbai-based institution that grants a full-time degree in data science. Students leave the institute with a thorough grasp of data science and its uses in business. The program is globally recognized and certified by the University of Mumbai, giving students access to a wide range of job opportunities.

Key Takeaways

Consider your interests and passions when choosing a career path

Research the job prospects in your chosen field

Data science is a quickly expanding discipline with high demand and excellent job prospects

 Step-by-Step Process 

Identify your interests and passions

Research the job prospects in your chosen field

Consider pursuing a full-time degree in data science

Gain hands-on experience through real-world projects

Pursue a career, which offers a wide range of job opportunities

 

The post Choosing the Right Career Path: Why SYJC Students Should Consider Data Science appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/choosing-the-right-career-path-why-syjc-students-should-consider-data-science/feed/ 0
“The Power of Female Data Scientists: Shaping a More Equitable Future in Tech” https://sdbi.in/the-power-of-female-data-scientists-shaping-a-more-equitable-future-in-tech/?utm_source=rss&utm_medium=rss&utm_campaign=the-power-of-female-data-scientists-shaping-a-more-equitable-future-in-tech https://sdbi.in/the-power-of-female-data-scientists-shaping-a-more-equitable-future-in-tech/#respond Thu, 23 Mar 2023 08:48:10 +0000 https://sdbi.in/?p=17538 In today’s rapidly evolving digital landscape, the world is generating an unprecedented amount of data. This data holds enormous potential to drive innovation, solve complex problems, and improve decision-making processes. As such, there is a growing need for skilled professionals who can extract valuable insights from this data – enter the data scientist. Data scientists […]

The post “The Power of Female Data Scientists: Shaping a More Equitable Future in Tech” appeared first on School of Data Science and Business Intelligence.

]]>
In today’s rapidly evolving digital landscape, the world is generating an unprecedented amount of data. This data holds enormous potential to drive innovation, solve complex problems, and improve decision-making processes. As such, there is a growing need for skilled professionals who can extract valuable insights from this data – enter the data scientist. Data scientists possess the unique ability to analyze, interpret, and communicate data-driven findings, making them indispensable assets in our increasingly data-driven world.

The world needs more data scientists, including women, to harness the growing volume of data and unlock its potential across various industries. As mentioned earlier, data scientists play a crucial role in analyzing, interpreting, and communicating valuable insights from large datasets. By promoting gender diversity and encouraging more women to enter the field, we can ensure a broader range of perspectives and ideas, leading to more innovative and effective solutions. Additionally, having more women data scientists helps reduce biases in data-driven decision-making and contributes to a more equitable and inclusive workforce, ultimately benefiting the diverse world we live in.The world needs more data scientists, including women,.

Data science is a fantastic career choice for women, but it can be tricky to get started. The good news is that there are many reasons why women are making great strides in the field. Here’s what we know about why data science is a great career choice for women and how to get started.

A growing number of women are becoming data scientists and tech leaders, but they face some serious roadblocks along the way. Here are some of the major issues women face in a male-dominated industry, and strategies they can use to overcome their human resources, business, administration, information technology, marketing, advertising, and sales.

  • Organize datasets and identify meaningful patterns

  • Build algorithms and design experiments to extract data to benefit the wider organization
  • Create clear reports that visualize and communicate data insights in a business
  • Use machine learning tools and statistical techniques to produce actionable solutions to problems
  • Use insights to locate business opportunities in various departments like marketing or HR

Mathematics and computer science are two of the strongest prerequisites for a successful career in data science. Fortunately, there is a growing number of communities for women who want to break into these areas. For example, Women Who Code sponsors women’s coding workshops and support groups throughout the country. At this point, there’s enough interest in starting these types of spaces that companies such as Google and Facebook have been forced to start their own initiatives to encourage women to pursue careers in data science.

Female working statistics will continue to rise with more women becoming interested in data science, but still, the number of men coming into the field is greater. The biggest barrier for women entering data science is the perception that this field requires technical expertise in math and computer programming. While there are many specializations and roles within data science, including those that run on hardware, basic statistics can be done using Excel or python

Data scientists work in a variety of industries, including accounting and finance, Women in data science are essential in a data-driven world. We cannot accept large gender gaps where women are underrepresented, especially in industries that promise to change the world in such monumental ways. Women in statistics and data science will help prevent statistical bias, offer unique perspectives, and enjoy the benefits of a high-paying career path with a positive job outlook.

Data scientists and statisticians are in high demand, but the number of women available for the job is limited. As more and more people are relying on data to make decisions, we need more women working in this field, as they can help prevent bias and offer unique perspectives. The work being done by women in statistics and data science is paramount to achieving any goal.

*** The Future for Women in Data Science ***

The future of women in data science depends on women who not only occupy roles in the industry but excel in executive roles and leadership positions in the data science and analytics space. Women in data science positions need education and confidence to pursue influential leadership positions.

The conversation about women in data science and the gender gap in technology has largely discussed the dangers of male-dominated workplace culture, the lack of mentorship provided to women, and the misconceptions about what it’s like to work in data, however, researchers are now examining how a lack of confidence is a major obstacle for women in statistics and data science.

1. Why Is Data Science a Fantastic Career Choice for Women?

The first and foremost reasons that come to mind when discussing Data Science as a positive career choice are the widely heard promises of high pay and job growth. Indeed, looking at the data on Glassdoor (put together by a Data Scientist no doubt) The national average salary for a Data Scientist is $1,21,314 in the United States.

Data science is a fast-growing field that allows you to work in an analytical role with data as your tool to get insights and solve problems. In this role, you have the privilege of making systems, technologies, and even products based on analysis. A career in data science will provide you with a wide range of opportunities, such as self-driven career growth, working with cutting-edge technology and tools, learning from the best people in different fields, and gaining skills that are applicable to other sectors.

Female data scientists are in huge demand. This is due to the vast number of qualifications women (and men) can gain through data science degrees. There’s also a distinct image of what you might expect a female data scientist to look like — either a chick wearing hoodies or nerdy glasses.

 if you want to start or progress your career. In this post, I’m going to explain why being a female data scientist is an ideal choice for you and why it can open up multiple opportunities for success.

2.  The field of data science needs you.

A new report on the gender balance in this multi-billion-dollar industry released by the Institute for Women and Technology (IWT) and McKinsey & Company shows that data science is making significant progress toward becoming more diverse, but a lack of women persists. More than half of all data scientists are men.  “This is not an anomaly, it’s a systemic problem,” said Diana Frank, senior vice president at McKinsey

Gender imbalance in data science is a growing problem. The field of data science needs more women and since you are here today, you can be part of the solution!

There are many reasons to become a data scientist, but the main one is that it’s a fantastic way to further your education and career in your field of interest. The skills that you learn while becoming a data scientist can help you break into any field possible. Data science proves itself as a highly lucrative career choice for women who dare to take it on and achieve success in this male-dominated industry.

3. Women’s Biggest Barriers and How to Overcome Them

You may also now be experiencing some degree of self-doubt, as is common for women in this situation. Indeed, this doubt remains one of the biggest barriers still preventing or hindering many women from entering the field. But it doesn’t have to be.

In a large industry, where representation is still lagging behind what researchers had expected based on the rapidly increasing number of women entering STEM and related fields, one could say that Women’s Biggest Barriers and How to Overcome Them is a must-read. In fact, many women still face a lot of roadblocks in becoming an ever more prominent force in software development and technology-related fields (engineering, programming). If you are one of them, it’s time to take a step back and look at this book as a platform for growth — not only yours but also for other women who might be interested in learning about coding or pursuing a data science degree.

 But the truth is – those are justifications of fear and thus complete nonsense. Our brains are very powerful at making excuses for us all — even when trying to stick with a new exercise routine or a healthier diet.

A lot of us think that we can’t enter or excel at certain careers because of our personal circumstances, including gender and age. But this thinking has no basis in facts or research — in fact, it’s holding women back from seeing their full potential. Our brains are very good at justifying our thoughts and feelings — so instead of letting these barriers get in the way every time we try something new, let’s use them as motivation to overcome doubt and embrace opportunities!

 There are many reasons why women find it difficult to enter the field of Data Science. A lot of barriers can be related to cultural issues, education, and a lack of awareness about the roles available in data science fields.

Women’s biggest barrier to becoming data scientists is the lack of role models in the field. There are so few women that it is hard for them to find role models and mentors, which leads to more discouragement. Women also face issues when their workplace cultures don’t consider them as experts and value their contributions as much as their male colleagues.

Data science is a field that’s quickly becoming a leading way to solve problems. Data scientists are responsible for evolving the way we do things – whether it’s understanding how people use technology and then figuring out how to make this technology better by learning from them or exploring new ways to analyze information in people’s lives, or even learning from data itself. For example, one of your jobs as a Data Scientist could be to figure out ways for a company like Facebook to encourage users to use more of its services. we’re using social media – known as the FB News Feed Algorithm update process – so that we can get the most engagement possible while reducing spammy comments. While there are many types of roles you might end up serving in your career as a data scientist, no matter what type of role you end up playing, there are two skills that every good data scientist should have: Analysing and Organizing Data.

Types of Data Science jobs:

  1. Data Scientist
  2. Data Architect
  3. Data Administrator
  4. Business Analyst
  5. Data Analyst
  6. Business Intelligence Manager
  7. Data/Analytics Manager

CONCLUSION:

Our institute is dedicated to empowering women in data science by equipping them with the necessary skills and knowledge to excel in their careers. By preparing our students for potential challenges and teaching them how to overcome these obstacles, we believe they will gain valuable insights into the similarities and differences between various datasets.

 Our curriculum focuses on introducing tools and techniques tailored to the type of data our students will encounter, helping them build a strong foundation for future success.

We encourage all aspiring data scientists, regardless of any doubts or uncertainties, to embrace their potential and join our institute. You are undoubtedly intelligent and capable, and the skills you acquire here will prove to be invaluable in your data science journey!

The post “The Power of Female Data Scientists: Shaping a More Equitable Future in Tech” appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/the-power-of-female-data-scientists-shaping-a-more-equitable-future-in-tech/feed/ 0
“Google Unleashes Cutting-Edge AI Feature Bard for ChatGPT: The Future of Conversational AI is Here” https://sdbi.in/google-unleashes-cutting-edge-ai-feature-bard-for-chatgpt-the-future-of-conversational-ai-is-here/?utm_source=rss&utm_medium=rss&utm_campaign=google-unleashes-cutting-edge-ai-feature-bard-for-chatgpt-the-future-of-conversational-ai-is-here https://sdbi.in/google-unleashes-cutting-edge-ai-feature-bard-for-chatgpt-the-future-of-conversational-ai-is-here/#respond Thu, 09 Feb 2023 08:52:42 +0000 https://sdbi.in/?p=17524 A change has occurred not only from television to Netflix but also in live-streamed platforms like Tik Tok to Instagram Reels. Artificial intelligence, or AI, has been the most recent revolution, period. The “BARD” announcement by Google is undoubtedly a turning point in the AI period, which actually began a few years ago, but open […]

The post “Google Unleashes Cutting-Edge AI Feature Bard for ChatGPT: The Future of Conversational AI is Here” appeared first on School of Data Science and Business Intelligence.

]]>
A change has occurred not only from television to Netflix but also in live-streamed platforms like Tik Tok to Instagram Reels. Artificial intelligence, or AI, has been the most recent revolution, period. The “BARD” announcement by Google is undoubtedly a turning point in the AI period, which actually began a few years ago, but open AI indicated a shift with Chatgpt and expedited Google’s “BIG MOVES.”

The search giant has confirmed that it will soon begin public testing of its new AI chatbot, called Bard based on the company’s ” Language Model for Conversational Applications (LaMDA)”. Sundar Pichai, CEO of Alphabet and Google, also discussed the addition of artificial intelligence tools to Google Search. It should be noted that Lambda is currently only being tested in a small number of the company’s Demo Kitchen app customers. What precisely are BARDs, and why did Google decide to introduce this new technology at such short notice? A talking chatbot named Bard is based on Google and LaMDA.

Before Google makes the experimental AI conversation service more broadly accessible to the public, Sundar Pichai stated that it will be made available to trusted testers in the upcoming weeks.

Let’s look more closely at the purpose for this declaration.

Why has Google announced Bard?

This proclamation must be understood. Microsoft is getting ready to reveal ChatGPT’s inclusion in its Bing search engine. Days before Google’s own AI presentation, Microsoft announced a fascinating event. OpenAI CEO Sam Altman poses with Microsoft CEO Satya Nadella earlier this month. Microsoft has already made a $10 billion investment in OpenAI this year, and incorporating ChatGPT into Bing will cause significant problems for Google and its primary search operation.

It may be true that Google pioneered transformer technology, but it’s too late to change AI at this point. In many aspects, ChatGPT is referred to as the “demise of Google Search” because it can offer AI voice for lengthy articles and occasionally quite elegant user-question responses. Of course, nothing is perfect, but AI needs to learn how to get better and fix errors.

What is Bard and when can I access it?

LaMDA and Google’s own AI conversational chatbot serve as the foundation for Bard. A conversational chatbot named Bard is built on Google and “Lambda.” Before Google makes its conversational AI service more broadly accessible to the public, Pichai is calling it a “experimental” service that will be offered to trusted testers in the coming weeks.

 If you are wondering how to sign up for it, Remember that it is not yet accessible to the general public. LaMDA has been under testing for about two years, and Bards release is actually happening much faster than that, given the cautious and methodical approach Google has taken with LaMDA. Bard makes an effort to offer insightful, distinctive responses. In brief, it provides in-depth discussions and responses in the form of essays, much like ChatGPT does currently. The user can ask Bard to explain recent scientific findings from NASA’s James Webb Space Telescope to a 9-year-old youngster or find out more about the top soccer players of the present and then perform drills to develop his skills.

Conclusion:- 

Google has stated that it intends to integrate AI capabilities into search results. You can rapidly comprehend the big picture and learn more from other websites, such as blogs, thanks to AI-powered search capabilities that translate complex facts and multiple points of view into easy formats.  Playing the same piano and guitar,   How to locate or incorporate views in topic files. Once more, these functionalities will be available soon. This means that when searching for information on Google in the future you can expect snippets of information gleaned from blogs or articles

 

 

 

 

The post “Google Unleashes Cutting-Edge AI Feature Bard for ChatGPT: The Future of Conversational AI is Here” appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/google-unleashes-cutting-edge-ai-feature-bard-for-chatgpt-the-future-of-conversational-ai-is-here/feed/ 0
Google Vs ChatGPT https://sdbi.in/google-vs-chatgpt/?utm_source=rss&utm_medium=rss&utm_campaign=google-vs-chatgpt https://sdbi.in/google-vs-chatgpt/#respond Tue, 31 Jan 2023 12:38:03 +0000 https://sdbi.in/?p=17517 Hey…you yes!  Do you believe if I say that artificial intelligence is 1 million  users in one day? It sounds crazy right guys am speaking about OPEN AI (chat GPT) Netflix – 3.4 years Facebook – 10 months Spotify – 3.5 months Instagram – 2.5 months Chat GPT – 5 days In contrast, many users […]

The post Google Vs ChatGPT appeared first on School of Data Science and Business Intelligence.

]]>
Hey…you yes!
 Do you believe if I say that artificial intelligence is 1 million  users in one day? It sounds crazy right guys am speaking about OPEN AI (chat GPT)
  • Netflix – 3.4 years
  • Facebook – 10 months
  • Spotify – 3.5 months
  • Instagram – 2.5 months
  • Chat GPT – 5 days

In contrast, many users are now contrasting ChatCPT with Google and expressing their opinions about both services.

Here, we’ll demonstrate the differences between the two systems and how they set themselves apart from their respective services.

Google

Google is a popular search engine that can answer all of its users’ questions. It should be noted that Google is controlled by millions of writers who write around the clock to look up any information

  1. Google offers several ways to find the best match.
  2. Google has a huge database with all the latest information.
  3. Google delivers in real time.
  4. Google is the best at providing personalized results. 
  5. Google is free.

OpenAI

OpenAI has been developed by OpenAI. AI (artificial intelligence) is a chatbot. This chatbot is a human chatting with another human. Humans can interact in the same way that this chatbot can. It would be best if you typed your question, it you and provide get an answer

  1. ChatGPT sometimes lacks diversity in responses
  2. The main disadvantage of ChatGPT is that it is limited by data.
  3. ChatGPT has serious accuracy issues.
  4. Code debugging is another great feature of ChatGPT that should not be overlooked.

It takes text requests and generates human-like responses to questions in few well known

Chatgpt works as Google intended, but the two platforms are fundamentally different. 

Chat Gpt is an AI bot that excels at natural language processing (NLP) and human-like responses.

Google is a search engine that retrieves information related to your query from billions of websites.

Google search engine is better in terms of quality and accuracy of answers. It has matured over time, with more accurate and localized results for countries.

Chat GPT is a new product that provides simple and clear answers in an easy-to-read format. It provides simple answers more concisely. Chat GPT knows nothing about a data model limited to 2021. This means that Chat GPT doesn’t know what’s happening in 2023.

Chat GPT cannot compare messages with other complete or recent messages because it does not have access to the Internet. So the knowledge about Chat GPT is limited. It is only accessible during training

Chat GPT is currently free to use, but Open AI will monetize it sooner or later.

“After all, creating responses to text requests requires a lot of resources. When Elon Musk asked the CEO of OpenAI, Alex Altman replied that each request costs about a penny.”

Google is a search engine and does not have the same language processing capabilities as ChatGPTA. I told you earlier that ChatGPTs main appeal is its human interaction. Google does not give you a single answer but gives you a different result and leaves it up to the user to answer as accurately as possible.if you’re new in any profession if you read a couple of various types of articles & blogs then you get the idea about it.

While googling “you’re boss of yourself” because is in your hands

 In contrast, ChatGPT provides comprehensive and clear answers to your questions in human language.

ChatGPT admits that it occasionally provides incorrect answers. This may seem like a minor error, but it means a lot. If you doubt the validity of ChatGPT, you should look elsewhere for awesome information. 

Google is also useful for certain types of questions, as it searches the web and returns a brief but concise answer right in line. For example, if you search “Apple stock ticker” or “Cheap flights to Aruba,” it will display a ticker chart with current price information, or a calendar with the most likely cheapest days to fly and a dialogue box that connects you to multiple web sites to shop for tickets on your chosen date. ChatGPT does not search the internet in real time and has only been trained on data up to 2021, making it completely useless for these types of queries.

Reasons why people stay away from Chat GPT
  • No Source for the Result Text-Only Result
  • Slow No Query Suggestions Factual Errors 
  • User sometimes can’t search for products which aren’t connected to the internet at all

Thanks in part to its hegemony with Apple (which permits it to be the default search engine on iOS with hefty payments every year in a deal under scrutiny by the US antitrust), Google search has been winning across all platforms.

On the other hand, Google provides multiple results for each query and allows users to select relevant information.

However, Google uses sophisticated algorithms to index and rank web pages that provide accurate and relevant results

Google is also extremely dependable, owing to the company’s large operations budget and years of experience. ChatGPT is still in beta testing and occasionally goes down.The strength of ChatGPT comes in its awareness of human language and ability to produce a response based on millions of pages of text.

Google is a multinational technology company that specializes in Internet-related services and products. It provides search engine, online advertising technologies, cloud computing, software, and hardware solutions.

ChatGPT is an AI language model developed by OpenAI that uses deep learning to generate human-like text responses. It is capable of answering a wide range of questions and generating text for various applications, including conversation, summarization, and language translation.

In summary, Google is a technology giant that offers a range of products and services related to the internet, while ChatGPT is an AI language model that can generate human-like text for various use cases.

 

The post Google Vs ChatGPT appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/google-vs-chatgpt/feed/ 0
Can a Non-Technical Student Become a Data Scientist? https://sdbi.in/can-a-non-technical-student-become-a-data-scientist/?utm_source=rss&utm_medium=rss&utm_campaign=can-a-non-technical-student-become-a-data-scientist https://sdbi.in/can-a-non-technical-student-become-a-data-scientist/#respond Tue, 29 Nov 2022 12:25:14 +0000 https://sdbi.in/?p=17476 A non-technical student can become a data scientist you will need to have strong analytical and mathematical skills. You should be able to understand and work with complex data sets. It simply means that you’re an aspiring data science professional.  Data science has become popular in recent years and with the demand of companies to […]

The post Can a Non-Technical Student Become a Data Scientist? appeared first on School of Data Science and Business Intelligence.

]]>
A non-technical student can become a data scientist you will need to have strong analytical and mathematical skills. You should be able to understand and work with complex data sets. It simply means that you’re an aspiring data science professional.  Data science has become popular in recent years and with the demand of companies to access more data and trends, many students are trying their hand as with anything, you should be able to use statistical software packages and be familiar with programming languages such as Python or R Data Science is important. So, data has become the fuel of industries. It is the new electricity. Companies require data to function, grow and improve their businesses.

NON Technical & Technical Student

If you’ve ever wondered how to become a data scientist, this guide will give you a fast-track tutorial on how to get there. Here’s a quick overview of everything that’s been covered since we started.

As a data scientist, you will need to have a strong understanding of data collection, data preparation, data analysis, and data visualization. You will also need to have strong programming skills to be able to manipulate and analyze data.

Data science is a field that evolves at a faster pace than traditional statistical methods. This means that you’ll need to keep up and constantly learn new things. To become a data scientist, you need to have an understanding of how to extract insights from large data sets and present them back in a meaningful way to the business and beautifully represent them, and be good at storytelling. It is always good to have practical insight into any technology that you are working on.

However, even non-technical students can be successful data scientists if they are willing to put in the work.

There are many ways for a non-technical student to become a data scientist. which can provide the necessary skillset and training to work as a data scientist. Finally, many data scientists start their careers by working as data analysts. The ability to understand complex problems and find ways to solve them through data analysis or data engineer positions in larger companies.

Data Science Step Discuss the skills and knowledge needed to become a data scientist.

The skills you need to become a data scientist are quite diverse and can be gained through experience. In this article, we’ll take a deep look at all the different skills you need to get started in the exciting field of data science. A data scientist is a person who is skilled in the art of extracting valuable information from large sets of data. The field involves a lot of complex algorithms, artificial intelligence, and statistical principles that help people extract knowledge from data.

What are the prerequisites for becoming a data scientist?

The prerequisites for becoming a data scientist vary depending on the data scientist’s role and industry. However, some common prerequisites are often required for data scientist roles, such as in mathematics, statistics, or computer science. Additionally, many data scientists require experience working with data and code.

3 Major things in Data Science Let us explain in detail…Mainly focus on these three major things

Persistence is key when it comes to learning new things

  • Mathematics –

— linear algebra

— matrix algebra

–probability (accuracy, hypothesis testing (null hypothesis, alternative)

–statistical statistics (continuous data distributions (uniform, normal/gaussian distribution), discrete data distribution, moments.

  • Statistics –

–data types

–a measure of central tendency (mean, mode, median),

–measure of variability

–measurements of relationships between variables (co-variance, correlation)

  • Computer Science

— Python (NumPy, pandas, mat plot)

–machine learning (scikit-learn (SK learn), seaborn, Keres, tensor flow, SciPy)

— A tableau is a great tool for data visualization, and it integrates well with SQL Queries

Tableau provides different products Tableau can easily help you summarize your model metrics and it save time and helps you create better-looking visuals in less time. EDA is an important part of the data science tableau and is documented in the browser.

Define the role of a data scientist.

Define the role of Data Scientist

Data scientists are in high demand in the job market. This is due to their ability to make sense of large amounts of data and turn that data into actionable insights.

Data Scientists analyse large amounts of raw information to find patterns that will help improve our company & build data products to extract valuable business insights. In this role, you should be highly analytical with a knack for analysis, math, and statistics.

  1. Excellent problem-solving skills.

Data scientists need to be able to find solutions to problems that have never been solved before. They need to be able to think critically and come up with new solutions to problems that have been encountered before.

  1. Excellent modelling and data analysis skills.

A data scientist is responsible for developing and managing data-driven solutions. They work with a variety of data sources to identify trends and make informed decisions. They also use data to improve business processes and decision-making.

Data scientists need to be able to understand data in a way

To become a data scientist, you will need to have strong analytical and mathematical skills. You should be able to understand and work with complex data sets. Additionally, you should be able to use statistical software packages and be familiar with programming languages such as Python or R.

Data scientists typically have a broad background in math and statistics, but they also often have experience working in other fields where they are required to analyze large amounts of data and make decisions based on what they see. In fact, the term “data scientist” is often used interchangeably with “statistician” or “analyst”.

At its core, data science involves using quantitative techniques like statistical modelling, machine learning, and visualization tools to solve real-world problems. A typical day for a data scientist at an organization might involve:

Analyzing large datasets (e.g., social media posts) from multiple sources (e.g., news articles).

Implementing predictive models based on historical data sets (e.g., weather forecasts).

Presenting results from the analysis, including visualizations of results that provide insights into patterns in the data set (e.g., heatmaps highlighting where people are tweeting about politics). Finally, the data scientists need to know how to use statistical software packages such as SPSS and Excel. They should also know how to program in either Python or R (or both).

Discuss the different types of data scientists.

There are many different types of data scientists, each with their unique skill sets and abilities. Here are few types of data scientists:

1) Data Scientist as Statistician.

2) Data Scientist as Mathematician.

3) Data Scientists as Data Engineers.

4) Data Scientists as Machine Learning Scientists.

5) Data Scientist as Actuarial Scientist.

6) Data Scientists as Business Analytic Practitioners.

7) Data Scientist as Software Programming Analysts

8) Spatial Data Scientist

9) Data Scientist as Digital Analytic Consultant

10) Data Scientist as Quality Analyst

Data Scientist Salaries

According to Robert Half Technology’s 2022 Salary Guide, data scientists earn an average annual salary between $105,750 and $180,250 per year. However, can vary depending on location. For example, average salaries in cities across the United States include:

San Francisco: $121,836

Seattle: $108,399

New York: $101,387

Boston: $101,064

Los Angeles: $99,014

Austin: $96,495

Additionally, as data scientists gain experience, they often move into more senior positions with higher pay. These include:

Senior Data Scientist: $125,925

Data Science Manager: $135,401

Data Science Director: $157,273

Essential Data Science Skills

Most data scientists use the following core skills in their daily work:

Statistical analysis: Identify patterns in data. This includes having a keen sense of pattern detection and anomaly detection.

Machine learning: Implement algorithms and statistical models to enable a computer to automatically learn from data.

Computer science: Apply the principles of artificial intelligence, database systems, human/computer interaction, numerical analysis, and software engineering.

Programming: programs and analyse large datasets to uncover answers to complex problems. Data scientists need to be comfortable writing code working in a variety of languages such as Java, R, Python, and SQL.

Data storytelling: Communicate actionable insights using data, often for a non-technical audience.

Data scientists play a key role in helping organizations make sound decisions. As such, they need “soft skills” in the following areas.

Business intuition: Connect with stakeholders to gain a full understanding of the problems they’re looking to solve.

Analytical thinking: Find analytical solutions to abstract business issues.

Critical thinking: Apply objective analysis of facts before concluding.

Inquisitiveness: Look beyond what’s on the surface to discover patterns and solutions within the data.

Interpersonal skills: Communicate with a diverse audience across all levels of an organization.

Conclusion:

So, after knowing what exactly Data Science is and why it’s important, you have to explore further. So, data has become the fuel of industries. Companies use data to function, grow, and improve their businesses. Although the industry of data science is fairly new, it is already a major player in many industries. Data has become a vital resource for companies, and data scientists are essential to its success. “The goal is to turn data into information and information into insight”

The post Can a Non-Technical Student Become a Data Scientist? appeared first on School of Data Science and Business Intelligence.

]]>
https://sdbi.in/can-a-non-technical-student-become-a-data-scientist/feed/ 0