Pace Tech Fellow Blog

Stay up-to-date on the newest in Tech:

How to stand-out as a job-seeker, employer, and Higher-Ed decision maker in the everchanging Tech industry

Our Blog

Visit our blog for breaking updates, trends and breakthroughs sourced from the best that the continuing education landscape has to offer.

Blog Img

Data Science

  1. Priorities to keep in mind when building a data warehouse

    4 Things to Keep in Mind When Creating a Data Warehouse

    Categories: Data Science

    Building a data warehouse is a critical responsibility for any company that wants to make informed decisions based on data. A data warehouse is a repository of integrated data from different sources within an organization. It allows companies to analyze large amounts of data and make data-driven decisions. For example, a data warehouse can inform a company about customer behavior, sales trends, and inventory management. With this information, a company can make more informed and efficient decisions, leading to fewer errors and better outcomes.

    To build a data warehouse, several things need to be kept in mind. A data warehouse needs to be designed to meet the unique needs of a company, taking into account its specific goals and objectives. It requires a thoughtful approach to ensure that it is effective and efficient in its purpose. Below, we will identify four priorities to keep in mind when building a data warehouse.

    How Do I Build a Data Warehouse?

    Building a data warehouse requires careful planning and execution. It is a complex process that involves many different factors. To ensure that your data warehouse is effective and efficient, there are several things that you need to keep in mind. Below, we will identify four priorities to keep in mind when building a data warehouse.

    Priority #1: Define the Purpose of Your Data Warehouse

    Before starting the construction of a data warehouse, it's crucial to define its purpose. Determine what data you will collect, why you will collect it, and how you will use it. Understanding your goals and objectives is critical in designing an effective data warehouse. With a clear purpose, you can ensure that your data warehouse is designed to meet your specific needs.

    Once you have defined your purpose, you can then decide what data sources you will use to populate your data warehouse. Data can come from various sources such as CRM systems, ERP systems, social media, website analytics,

    Read more
  2. Is an AI and machine learning bootcamp worth it?

    Is an AI & Machine Learning Bootcamp Worth It? | Pace

    Categories: Data Science

    Discover the advantages of gaining hands-on experience and learning from industry experts, as well as the potential drawbacks such as the high cost and lack of depth in material covered.

    Read more
  3. Benefits of government sponsored data education

    4 Benefits of Government-Sponsored Data Education | Pace

    Categories: Data Science

    In this blog, we'll explore five benefits of government-sponsored data education programs.

    Read more
  4. How to land a data science job with no experience

    How to Land a Data Science Job with No Experience

    Categories: Data Science

    Can I Get a Data Science Job with No Experience?

    Data science is a rapidly growing field that offers high-paying, rewarding careers. However, breaking into the industry can be challenging, particularly if you don't have prior experience. In this blog, we'll explore how you can land a data science job, even if you have no experience. We'll discuss the steps you can take to acquire the skills needed for data science, build a portfolio, and market yourself effectively.

    Take an Online Bootcamp

    One of the best ways to acquire the skills needed for data science is by taking an online bootcamp. Online bootcamps are a cost-effective and flexible way to learn the skills needed to become a data scientist. Bootcamps cover topics such as programming languages like Python, statistics, data modeling, and data visualization. By completing an online bootcamp, you'll be well-equipped to take on the challenges of modern data science.

    To get the most out of your bootcamp experience, it's essential to choose a reputable bootcamp provider. Look for bootcamps that offer hands-on, project-based learning, and provide access to experienced instructors and mentors. Additionally, consider enrolling in a bootcamp that offers career services

    Read more
  5. Solving for the largest modern data engineering skills gaps

    Solving for the Largest Modern Data Engineering Skills Gaps | Pace

    Categories: Data Science

    Discover the importance of data analysis, filtering, presentation, and governance. Plus, find out how a data engineering bootcamp from Pace can help you acquire these essential skills.

    Read more
  6. best Data Science bootcamps

    The 5 Best Data Science Bootcamps to Accelerate Your Career in 2023

    Categories: Data Science

    A college degree is no longer the only way to build a successful career in Data Science. 

    Traditional university education models require both a significant time and financial investment, a combination that has led many adult learners to question if pursuing a traditional education is worth it.

    Here’s the truth: a degree is still a great way to establish the foundation of a career.

    But if a degree doesn’t fit into your lifestyle or budget (or you just don’t want to go to school for another four years), a bootcamp is a viable option.

    Finding the right Data Science bootcamp isn’t always easy, but it is relatively simple once you know the factors to consider and the bootcamp elements to look for.

    What are the best Data Science bootcamps?

    We recommend the Pace Data Science Bootcamp for remote students and the NYC Data Science Bootcamp and Codeup’s Data Science Bootcamp for learners who prefer in-person Data Science education.

    1. Pace’s Data Science Bootcamp

    Location: Fully remote

    Commitment: Part-time (less than 15 hours per week)

    Length: 24 weeks

    Price: $2,500

    Pace’s Data Science Bootcamp equips you with the knowledge, tools and training you need to achieve your career goals. Through this bootcamp, you’ll learn foundational Data Science concepts and strategies, learn how to analyze and organize data and better understand how to navigate the w

    Read more
  7. top data science trends 2023

    5 Must-Monitor Data Science Trends for 2023

    Categories: Data Science

    Data science is a field where data scientists, and other data professionals, analyze trends in data sets to give companies operations about their performance. The current demand for data transparency in the business world creates more opportunities than ever for data scientists to gather, analyze and process data in new ways.

    What data science trends will define 2023?

    Data science isn’t just for data scientists. 60% of the world’s companies currently use data and analytics to improve operations, a figure destined to grow in the next year. Trends in artificial intelligence, data democratization, data-as-a-service, data governance and augmented analytics could define the direction of the data science world in 2023.

    1. Artificial intelligence

    Artificial intelligence (AI) might conjure images of JARVIS from the Iron Man movies for some; others might picture a never-ending row of computers with complicated switches and flashing lights. In reality, AI uses an intelligent algorithm to process data automatically and utilize it for specific purposes, which means many data practices, like gathering, can be completed by computer.

    Here are some examples of the ways AI can help a business:

    • Optimize customer service — Many online businesses use chatbots to make customer communication more convenient, even when a live customer service agent is available to speak with a particular customer.
    • Elevate productivity — Not everyone has the luxury
    Read more
  8. how to become a data specialist

    How to Become a Data Specialist: 3 Steps

    Categories: Data Science

    So, you’re interested in becoming a data specialist. Maybe it’s time for a career change? Perhaps you’ve discovered you have a talent for data organization. Whatever the reason, there’s no better time to enter the world of data analysis.

    Here are the 3 steps between you and a data specialist career:

    1. Complete your education in data analysis.
    2. Develop your data analysis style through work experience.
    3. Continually improve your data skills.

    Data specialist careers are full of potential, rich in opportunities for growth and flexibility.

    Unlike more rigid career paths, data analysis has a career for virtually everyone, no matter your job goals. Here’s how to get started, in four easy steps.

    What is the career path of a data specialist?

    Aspiring data specialists should sign up for formal education, develop their data analysis style and pursue continuing education as data analysis trends change and evolve.

    As an essential part of any organization, data specialists help businesses:

    • Apply data science and data management best practices
    • Use data to make sound strategic decisions
    • Organize data into usable formats for all employees
    • Write algorithm scripts using Python and other programming languages

    Not every data specialist follows the same career path, but most follow similar steps.

    First comes the education — aspiring data specialists will need education in statistics, problem solving, data visualization and other skills. There are a

    Read more
Page