Data Professionals Wanted: Data Scientists, Data Analysts, and the difference between them!

In today’s digital ocean, data is the water we swim in. Our technology records and tracks every digital action. Companies can nowadays accumulate and analyze swaths of valuable business data and orient themselves and their products towards future trends. Because data is at the center of everything we do, there is a huge demand for data-related talent. 

Data Analysts and Data Scientists are tasked with making sense of the immense quantity of available data and creating value from it, analyzing, making predictions, and suggesting recommendations to optimize a company’s resources and potential. Openings for Data Analysts and Data Scientists overwhelm today’s job market. 

The European Commission estimates that 100,000 new jobs in the data field were created in 2020 alone. Glassdoor’s #1 job is Data Scientist. Data scientists and analysts are in demand in every industry, but at the moment, the biggest players for data professionals are the financial, insurance, and most obviously tech industry.  The problem is that there are not enough Data Analysts and Data Scientists to fill all of those roles.

Data Scientists and Data Analysts (BI Analysts): What’s the Difference? 

We’ve discussed at a high level the demand for these two popular data job roles, but what’s the difference between them? What do they do, and what skills does one need to have to perform each role successfully?

A Analista de datos is essentially a business analyst with number crunching capabilities. Also known as Business Intelligence (BI) Analysts, their main task is to look into accumulated past data to identify trends and create data visualizations that inform business strategy. Data analysts need to be proficient in analytics software, data visualization software, and data management programs. 

They do not necessarily need to code, but they do need to be tech-savvy, and know how to plug into various data sources, and work with advanced software tools. Critical thinking, rigorous analysis, a good business acumen, and presentation skills are required skills for this job role.

Data Scientists are also data interpretation pros, but they are also required to have coding and mathematical modeling skills. Data Scientists are essentially programmers; they conceptualize and build new processes for data modeling using prototypes, algorithms, predictive models, and custom analysis with the goal of anticipating future needs. 

Data Scientists’ main programming language is Python, and they work with various data analysis and cloud tools with cute names, such as Numpy, Scipy, Matplotlib, Hadoop and Kaggle. The main skills that Data Scientists need to attain are problem solving, teamwork and self-study.

Where are all the data professionals?

Employed. Utilizing Big Data yields a competitive advantage so valuable that trained professionals in Data Science and Data Analytics are in sky-high demand. LinkedIn co-founder Allen Blue said, “there are very few data scientists passing out their resumes. Data scientists are almost all already employed, because they’re so much in demand.” According to a recent Villanova University survey, 82 percent of organizations in the U.S. say that they are planning to advertise positions that require data-analytics expertise. 

This is in addition to 72 percent of organizations that have already hired talent to fill open analytics positions in the last year. Still 78 percent of businesses say they have experienced challenges filling open data-analytics positions over the last 12 months. But universities simply aren’t producing trained professionals quickly enough. 

Wawiwa Tech Training’s Data Programs

Wawiwa Tech Training is an Israeli tech education provider that helps its partners around the world to  address this talent shortage through two separate programs for the training of Data Scientists and Data Analysts. All Wawiwa programs emphasize hands-on practice, which is necessary to become a job-ready data professional. 

Wawiwa’s Data Scientist Program

Wawiwa’s Data Scientist program is an entry point to the world of Data Science for beginners and career changers with math skills and some background in programming. The program spans 340 academic hours, over 8 months of part-time studies. Students develop knowledge of data science frameworks (e.g. data collection and analysis, machine learning, deep learning), programming (Python), and cloud tools.

 The program establishes students’ skills in understanding data, modeling, and presentation, through data science exercises, labs, and a final project.  By its conclusion, students can design and build a complete data prediction system, including writing a web scraping task to collect data from websites, storing and retrieving data from many data sources, designing and building prediction models from the data, and finally, deploy a complete model to the cloud. 

Wawiwa’s Data Analyst Program

Wawiwa’s Data Analyst program prepares students for the entry-level position as a Data Analyst through a 250-hour, 6-month part-time program. Students develop knowledge of market-leading technologies, ways to process information, data analysis capabilities, business intelligence, and more. 

The program establishes students’ technical, analytical, and business skills, through hands-on exercises and a final project. Graduates are more than ready to take on BI analyst roles that require the use of Excel, Tableau, Anaconda, and SQL. 

¡Asóciese con Wawiwa para ofrecer programas de formación tecnológica en menos de 6 meses!

Wawiwa cubre el vacío de competencias tecnológicas reciclando a personas para profesiones tecnológicas muy demandadas. Hay millones de vacantes en el sector tecnológico y no hay suficientes profesionales con los conocimientos y habilidades necesarios para cubrirlas. Lo que la industria necesita de sus empleados no se enseña en largas carreras académicas. Wawiwa ayuda a sus socios de todo el mundo a reciclar y mejorar las cualificaciones de las personas para puestos tecnológicos a través de centros o programas locales de formación tecnológica. La empresa utiliza una metodología de formación probada, contenidos de vanguardia, plataformas digitales para el aprendizaje y la evaluación, y sólidas relaciones con la industria, para ofrecer programas de formación que se traducen en una mayor empleabilidad y satisfacción de los graduados. Esto, a su vez, también crea una marca de formación fuerte y un negocio sostenible para los socios de Wawiwa.
big data, data, data analyst, data analytics, data science, data scientist, jobs, shortage, skills, tecnología, tecnología, formación

Compartir post

Entradas recientes

No habrá nuevas contrataciones sin pruebas de que la IA no puede hacer el trabajo
Aprender

Nada de nuevas contrataciones sin pruebas de que la IA no puede hacer el trabajo: el enfoque del CEO de Shopify y su impacto

Tobi Lütke, CEO de Shopify, ahora exige a todos los empleados que demuestren que la IA no puede hacer un trabajo antes de contratar a un nuevo empleado. Desde el código hasta la atención al cliente, la IA es la primera línea de ejecución, no una habilidad adicional. Este memorándum podría marcar el futuro del trabajo. ¿No sabe cómo utilizar la IA? Te estás quedando atrás y podrían despedirte. En Wawiwa, mantenemos un enfoque similar y estamos formando a la mano de obra global para prosperar en la era de la IA.

Leer Más "
Por qué su equipo necesita formación en ciberseguridad
Aprender

Por qué su equipo necesita formación en ciberseguridad

Conseguir un puesto junior es el primer paso en la construcción de una carrera tecnológica, pero ¿qué ocurrirá cuando la IA se apodere de los empleos de nivel inicial? Muchos puestos junior están desapareciendo a medida que las empresas confían en la IA en lugar de contratar juniors. ¿Cómo pueden los juniors introducirse en la industria tecnológica? Este blog explora la crisis de talento tecnológico junior: por qué está ocurriendo, qué significa para quienes buscan empleo y, lo más importante, cómo pueden encontrar trabajo los juniors en estas condiciones.

Leer Más "