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5 Steps to Prepare for a Data Science Job

A career in data science is hyped as the hottest job of the 21st century, but how do you become a data scientist? How should you, as an aspiring data scientist, or a student who aims at a data science job, prepare? What are the skills you need? What must you do? Fret not – this article will answer all your questions and give you links with which you can jump-start a new career in data science!

Data science as a field is a cross-disciplinary topic. By this, we mean that the data scientist has to know multiple fields and be an expert in many different things. A data scientist must have a strong foundation in the following subjects:

  1. Computer Science
  2. Statistical Research (solid foundation required)
  3. Linear Algebra
  4. Data Processing (data analyst expertise)
  5. Machine Learning
  6. Software Engineering
  7. Python Programming
  8. R Programming
  9. Business Domain Knowledge

The following diagram shows a little bit of the subjects you will need to master to become a high-quality data scientist:

data science skill set

Now unless you have been focused like a laser beam and have deliberately focused your studies in these areas, it is likely that you will not know one or more of the topics given above. Or you may know two or three really well but may not be solid in the rest. For example, you could be a computer science student who knows mathematics but not statistics to the in-depth level that Analysis of Statistical Research requires. Or you could be a statistician who has a little foundation in programming.

But there are ways to get past that crucial job interview. The five things you must do are:

  1. Learn Python and R from quality trainers with years of industry experience
  2. Build a portfolio of data science projects on GitHub
  3. Join Kaggle and participate in data science competitions
  4. Practice Interview Questions 
  5. Do basic Online Reputation Management to improve your online presence.

 

1. Learn Python and R from the best trainers available

r and python

There is no substitute for industry experience. If your instructor is not just an enthusiastic amateur (as in the case of many courses available online) but someone with 5+ years of industry experience working in the data science industry, you have the best possible trainers in the field. It is one thing to learn Python and R. It is quite a completely different thing to master Python and R. If you want to do well in the industry, mastery is required, not just basic abilities. Make sure your faculty members have verified industry experience. Because that experience is what will count in finally landing you a job in a top-notch data science company. You will always learn the most from experts who have industry experience rather than academics who have a Ph.D. even in the subject but have not worked in the field.

2. Build a GitHub Portfolio of Data Science Projects

Having an online portfolio in GitHub is critical!

All the best training in the field will take you nowhere if you don’t code what you learn and apply the lessons to real-life datasets and scenarios. You need to do data science projects. Try to make your projects as attractive as possible. As much as you can, your GitHub project portfolio should be built with these guidelines in mind:

  1. Use libraries, languages, and tools that your target companies work with.
  2. Use datasets that are used by your companies, and always use real-world data. (no academic datasets like the ones supplied with scikit-learn. Use Kaggle to get practice datasets.) The best datasets are programmatically constructed with APIs from Twitter, Facebook, Wikipedia, and similar real-world scenarios.
  3. Choose problems that have market value. Don’t choose an academic project, but solve a real-world industry problem.
  4. Extra marks for creativity and originality in the problem definitions and the questions answered by the portfolio projects.

3. Join Kaggle or TopCoder and participate in Competitions

 

Kaggle.com is your training arena.

If you are into data science, become a Kaggler immediately! Or, if your taste leans more towards development, join TopCoder (they also have data science tracks). Kaggle is widely touted as the home of data science and for good reason, since Kaggle has been hosting data science competitions for many years and is the international location of all the best data science competitions. One of the simplest ways to get a call from a reputed company is to rank as high as possible on Kaggle. What is more, you will be able to compare your performance with the top competition in the industry.

4. Practice Interview Questions

There are plenty of sites available online that have excellent collections of industry questions used in data science interviews. Now, no one expects you to mug up 200 interview questions, but they do expect you to be able to solve basic data science and algorithm questions in code (Python preferably) or in pseudocode. You also need to know basic concepts like what cross-validation is, the curse of dimensionality, and the problem of overfitting and how you deal with it in practice in real-world scenarios. You should also be able to explain the internal details of most data science algorithms, for example, AdaBoost. Knowledge of linear algebra, statistics, and some basic multivariable calculus is also required to possess that extra edge over the competition.

5. Manage your Online Search Reputation

This may not seem connected with data science, but it is a fundamental component in any job search. What is the first thing that a prospective employer looks for while hunting for job candidates, when given a name? That’s right – he’ll Google it first. What comes up when you Google your name? Is your online profile safe under scrutiny? That is:

  1. Is your name when searched on Google free of red flags like negative reports of any type (offensive material, controversies)?
  2. Does the search engine entry for your name represent your profile with accuracy?
  3. Are your public Facebook, Twitter and Google profiles free of any automatic red flags? (e.g. intimate pictures)?
  4. Does the Google visibility of your name depict your skill levels correctly?

If the answers to any of these questions are no, you may need to adjust or tweak your online profile. You can do this by blog posts, informed mature comments online, or even creating a blog for yourself and speaking about yourself to the world in a positive manner. This is critical for any job applicant today, in this online, digital, connected world.

You are a Product to be Marketed!

You are trying to sell yourself and your credibility online to people who have never seen you, and not even heard your name. Your Internet profile will make the key crucial difference here, to make sure you stand out from the competition. Many training sites are available that offer courses by amateurs or people with less than 2 years of industry experience. Don’t make the unwise choice to be satisfied with a low-price course. On the Internet, you will get only what you pay for. And this is your future career in the subject area of your dreams. Surely a little initial investment will go a long way in the long run.

Additionally, it will help to gain the employers’ perspective as well. You can refer to this Hiring Guide by TopTal for further reading.

Always keep learning. ML and AI are fields that move forward at an incredible pace. Subscribing to RSS feeds and online websites that keep you updated with the latest developments in the field is something that you absolutely have to do. Nothing shows your commitment to excellence a much as keeping up with the latest state-of-the-art research. And you can do it quite easily by using Reader applications like Feedly and Inoreader. Learning might be something you do in college. But mastery is something you aim towards for your entire lifetime. Never give up. All the best for your job search, which will definitely be successful if you can follow the instructions mentioned here on this blog post. Finally, pay special attention to your portfolio of data science projects on GitHub to make sure you stand out from the competition.

Business Analysis (BA) Career Path

Career path in Business Analysis

More organizations are adopting data-driven and technology-focused approaches to business and hence the need for analytics expertise continues to grow. As a result, career opportunities in analytics are around every corner. Due to this identifying analytics talent has become a priority for companies in nearly every industry, from healthcare, finance, and telecommunications to retail, energy, and sports.

In this blog, we will be talking about different career paths and option in the Business Analytics field. Furthermore, we will be discussing the qualifications required for being a business analyst and what are the primary roles a Business Analyst handles at a firm

In this blog, we will be discussing

  1. Who are Business Analyst
  2. Qualifications required for BA role
  3. Career options in BA role
  4. Career growth in BA role
  5. Responsibilities of a Business Analyst
  6. Expected Salary Packages in BA

Who are Business Analyst

Business analysts, also known as management analysts, work for all kinds of businesses, nonprofit organizations, and government agencies. Certainly, job functions can vary depending on the position, the work of business analysts involves studying business processes and operating procedures in search of ways to improve an organization’s operational efficiency and achieve better performance. Simply put, a Business Analyst is someone who works with people within an organization to understand their business problems and needs and then to interpret, translate and document those business needs in terms of specific business requirements for solution providers to implement.

Qualifications required to become a Business Analyst

Most entry-level business analyst positions require at least a bachelor’s degree. Therefore beginning Business Analysts need to have either a strong business background or extensive IT knowledge. Likewise, you can start to work as a business analyst with job responsibilities that include collecting, analyzing, communicating and documenting requirements, user-testing and so on. Entry-level jobs may include industry/domain expert, developer, and/or quality assurance.

With sufficient experience and good performance, a young professional can move into a junior business analyst position. In contrast, some choose instead to return to school to get master’s degrees before beginning work as business analysts in large organizations or consultancies.

Skills required to be a Business Analyst

Professional business analysts play a critical role in a company’s productivity, efficiency, and profitability. Hence, essential skill sets range from communication and interpersonal skills to problem-solving and critical thinking. Let us discuss each in a bit more detail

Communication Skills

First of all, Business analysts spend a significant amount of time interacting with clients, users, management, and developers. Therefore, being an effective communicator is key. You will be expected to facilitate work meetings, ask the right questions, and actively listen to your colleagues to take in new information and build relationships.

Problem-Solving Skills

Every project you work on is, at its core, is around developing a solution to a problem. Business analysts work to build a shared understanding of problems, outline the parameters of the project, and determine potential solutions. Hence, problem-solving skill is a must-have for this job position.

Negotiation Skills

A business analyst is an intermediary between a variety of people with various types of personalities: clients, developers, users, management, and IT. Therefore, you have to be able to achieve a profitable outcome for your company while finding a solution for the client that makes them happy. This balancing act demands the ability to influence a mutual solution and maintaining professional relationships.

Critical Thinking Skills

Business analysts must assess multiple choices before leading the team toward a solution. Effectively doing so requires a critical review of data, documentation, user input surveys, and workflow. They ask probing questions until every issue is evaluated in its entirety to determine the best conflict resolution. Therefore, critical thinking skill is a must have pre-requisite for this job position.

Career options in BA role

A career path of a business analyst usually begins with working at an entry level, and gradually with experience and with acquiring a better understanding of how businesses function, growing up the ladder.

Also, Business Analysts enjoy a seamless transition to different roles according to one’s interest because the profession consists of a set of skills which are highly specialized and can be applied to any industry and to any subject matter area successfully. As a result, this allows for the Business Analyst to move between industry, company and subject matter area with ease which becomes their career progression and a focus of professional development.

Other roles that one can take up after gaining experience as a Business Analyst can be

  1. Operations Manager
  2. Product Owner
  3. Management Consultant
  4. Project Manager
  5. Subject Matter Expert
  6. Business Architect
  7. Program Manager

Career growth in BA role

Once you have several years of experience in the industry, you will finally reach a pivotal turning point where you can choose the next step in your business analyst career. After three to five years, you can be positioned to move up into roles such as IT business analyst, senior/lead business analyst or product manager.

But broadly beyond all the fancy names given to designations, we can consider four levels of professional analytics roles:

Level 1: The Business Analyst

  • Analyzes information for patterns and trends
  • Applies analytics to solve business problems
  • Identifies processes and business areas in need of improvement

Level 2: The Data Scientist

  • Builds analytics models and algorithms
  • Implements technical solutions to solve business problems
  • Extracts meaning from and interprets data

Level 3: The Analytics Decision Maker

  • Leverages data to influence decision-making, strategy, and operations
  • Explores and integrates the use of data to gain competitive advantages
  • Uses analytics to drive growth and create better organizational outcomes

Level 4: The Analytics Leader

  • Leads advanced analytics projects
  • Aligns business and analytics within the organization
  • Oversees data management and data governance

Responsibilities of a Business Analyst

Modern Analyst identifies several characteristics that make up the role of a business analyst as follows:

  • Working with the business to identify opportunities for improvement in business operations and processes
  • Involved in the design or modification of business systems or IT systems
  • Interacting with the business stakeholders and subject matter experts in order to understand their problems and needs
  • The analyst gathers, documents, and analyzes business needs and requirements
  • Solving business problems and, as needed, designs technical solutions
  • The analyst documents the functional and, sometimes, technical design of the system
  • Interacting with system architects and developers to ensure the system is properly implemented
  • Test the system and create system documentation and user manuals

Expected Salary Packages of BA

The average salary of a business analyst in India is around 6.5 L.P.A. As one continues to gain the experience in this field, the salary gets more lucrative.

The more experience you have as a business analyst, the more likely you are to be assigned larger and/or more complex projects. After eight to 10 years in various business analysis positions, you can advance to chief technology officer or work as a consultant. You can take the business analyst career path as far as you would like, progressing through management levels as far as your expertise, talents, and desires take you.

Conclusion

So with so many interesting, promising and rewarding options available for Business Analysts, they need to first get a firm hold about the basics of data analysis. You can also have a look at this post to know more about what are the different components in data science. It will help you to boost your business analyst career.

We, at Dimensionless Technologies, offer data science course which helps to make you industry ready. Do go through our website and let us know how we may help you.

5 Must Have Skills for a Data Scientist

Skills of a Data Scientist

In this world of advanced and futuristic technology which are mostly data driven, Data Scientists are the most sought after people to find solutions to data problems across various industries, ranging from tech to healthcare to government agencies. Depending on the needs of the industry, the requirements of a data science job can vary from cleaning and visualize data to training an AI chatbot. However, there are a few important skills which a Data Scientist should adhere to while applying for a job in any industry. Here are the 5 must have skills for a data scientist –

 

Mathematics and Statistics

Mathematics and statistics are the foundation of data science and sound knowledge of both helps a Data Scientist to understand how to deal with a dataset. Knowledge of calculus, linear algebra, descriptive and inferential statistics is required to evaluate the data properly and decipher the relevant parameters to come up with a data-oriented solution.

Programming

Programming is a fundamental skill that a Data Scientist should have as it helps to augment statistical methods, analyze and visualize datasets and also to create automation tools to deal with redundant tasks. Knowledge of R and Python programming are important as the former is required mostly for statistical analyses and the latter to work with development of tools based on the performed analyses. Companies working on software development are more interested in Python as it helps to create APIs or deploy code on the server based on the tools created for analyses or automation.

Domain Knowledge

Industry knowledge and product intuition give the ability to understand the complex system which generates all the data. Product knowledge helps a Data Scientist to create hypotheses of different ways a system can behave and produce results. Also, the need for defining metrics of performance of a product and debugging analyses helps a company to keep track of the progress along with various hindrances faced while developing a product.

Communication

Effective communication is the key to success and it holds true across all domains or job roles. One of the biggest challenges of being Data Scientist is to explain the analyses to people who are handling the business and a better storytelling method provides the decision makers with a clear and concise way to effectively act on the insights of the analyses. Data visualization is another fundamental skill to learn as a good graph is always better than a bunch of text and numbers.

Creativity

Being a good Data Scientist also means to use the power of creativity while dealing with data. Creative thinking helps to spot trends, find connections between datasets, cost and time effective ways to perform analyses or produce results, and communicating the results of the analyses in an informative and attractive manner.