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TechDev Academy

A Silicon Valley-based Startup Company founded by young entrepreneurs and professionals from different backgrounds including education, IT, science, business administration, and marketing in 2019.

Essential Things You Need to Know About Data Science

Essential Things You Need to Know About Data Science

Data Science

In its simplest form, data science refers to the field of study that works with massive volumes of data to extract valuable insights. With the world becoming increasingly connected, a huge volume of data is being generated regularly. Once companies capture this raw data, it means nothing to them unless they can derive meaningful information from it to make valuable business decisions. This is exactly where the importance of data science comes into the picture. Data science professionals use a wide variety of tools, techniques, and machine learning algorithms to discover unseen patterns from that raw data, which are essential for companies to get a competitive edge.

 

Top industries that use data science the most

While a wide range of industries can benefit from data science, here are the top five among them.

 

Retail: The retail industry, being consumer-focused in nature, depends heavily on relevance and personalization. The use of data science helps companies to understand consumer behavior in a better way.

Finance: Being an industry greatly driven by numbers, the finance sector is heavily reliant on data science. It helps financial institutions in risk assessment, customer analysis, identifying potential fraudulent behaviors, among others.

Healthcare: This industry uses data science to identify patterns and prescribe the right course of action for patients. The pharmaceutical industry also uses data science to plan and perform appropriate clinical trials.

Media: Here, data science is used to create content for targeted audiences, evaluate content performance, and suggest on-demand content.

Telecommunications: Telecom companies use data science to ensure better network deployment, allocate network resources, provide personalized offers, etc.

 

Top present and future jobs in the field of data science

In the data science field, a broad array of career paths is being steadily opening up. Here’re the top five job roles (in random order) that are in high demand not only today but will remain so in the future as well.

 

Data scientist: These professionals find, clean, organize, and process raw data to derive valuable insights.

Machine learning engineer: With the help of strong programming and statistical skills and a solid knowledge of software engineering, these professionals design, build and monitor machine learning systems.

Data analyst: These people build, deploy, and maintain analytic systems to derive actionable insights.

Data engineer: These professionals are in charge of transforming massive complicate datasets into simple analyzable formats, which are essential for data scientists to perform their jobs.

Data architect: These people integrate, centralize, and maintain different data sources of a company using the latest technologies.

 

Why students should start learning data science

Data Science

In today’s world, data has become omnipresent and a key that promotes the world’s digital transformation using advanced technologies such as artificial intelligence, IoT (Internet of Things), machine learning, etc. Therefore, it should not be a surprise that data science has become one of the fastest-growing career fields these days. The employment opportunity for data scientists is anticipated to grow much faster compared to the average of all other fields. There is already a major gap in the demand and supply of data science experts. And in the upcoming years, with the emergence of advanced technologies, employers will increasingly look for highly skilled data science professionals. As the majority of careers are steadily becoming integrated with big data and data mining applications, parents can help the kids become job-ready by motivating them to understand data science applications. It is a fact that the huge data flow will be continuous, which simply means more and more areas where valuable insights can be derived will continue to open up. Multiple studies have shown that there is a correlation between early exposure to math and later math success. Teaching the fundamentals of data science can happen at an early age. The key is ensuring the content remains appropriate to students’ cognitive abilities and makes them interested.

 

How to motivate kids to learn data science

So far, we have discussed the importance of introducing kids to the fundamentals of data science to make them better prepared for their future careers. However, the key question is how parents can accomplish this? Let’s take a look at some effective ways.

  • Show them applications of data science: By nature, kids tend to avoid taking part in an activity they become interested in it. Therefore, it would be prudent to demonstrate to them the real-life applications of data science. However, be sure to avoid complicated fields such as banking or insurance. Instead, try to tell them how data is used by Instagram or Netflix.
  • Use online games: This is a common yet highly effective method when it comes to making kids interested in something that seems to be uninteresting such as data science. Developed by IBM, Machine Learning for Kids is an activity kid that introduces children to the implications and principles of artificial intelligence and machine learning while allowing them to play with data. Suitable for different age groups, the kit comes with more than two dozen activities. Many statistics-related games are also available online that can help them learn, develop, and strengthen math skills and concepts.
  • Introduce them to coding: In data science, coding plays one of the most important roles. So, introducing them to coding is extremely crucial to make them familiar with the fundamentals of data science. Here also, you can take the help of online games such as CodeCombat, CodeMonkey, etc to help them learn to code while having fun.
  • Familiarize them with online visualization tools: Data visualization is an integral part of data science. Helping kids create colorful infographics and visualization using free tools is a fun and effective way to get them interested in data science.

 

Closing thoughts

Today, it has become essential for parents to take definitive approaches to help their kids fill the talent gap in the data science field. Keeping the exponential growth of data in mind, it is safe to assume that today’s kids will have to live in an age where having a robust understanding of the concepts of data science will become essential. All the parents need to do is start training their kids’ minds to develop the fundamental skill sets of data science from now.

 

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JOHN H. FALK

Director of the Institute for Learning Innovation and Sea Grant Professor Emeritus of Free-Choice Learning at Oregon State University

 

Dr. John H. Falk is Director of the Institute for Learning Innovation and Sea Grant Professor Emeritus of Free-Choice Learning at Oregon State University. He is a leading expert on free-choice learning; the learning that occurs when people have significant choice and control over what, where, and when they learn.

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CHRISTINE CUNNINGHAM

Professor of Practice of Education and Engineering at Penn State University

 

Dr. Christine Cunningham is a Professor of Practice of Education and Engineering at Penn State University. Her work focuses on making engineering more relevant, accessible, and inclusive, especially for underserved and underrepresented populations. She does this by creating researched-based engineering curricula for PreK-8 children and their educators. Her book, Engineering in Elementary STEM Education, describes her groundbreaking work. Previously, Cunningham was the Founding Director of Engineering is Elementary. Cunningham has received a number of awards; in 2017 her work was recognized with the prestigious Harold W. McGraw Jr. Prize in Education.

 

CHRIS ROGERS

Chris Rogers Professor and Chair of Mechanical Engineering at Tufts University

 

His research interests are:

Engineering Education, Robotics, and Musical Instrument Design

 

Education

Ph., D Mechanical Engineering, Stanford University
M.S., Mechanical Engineering, Stanford University
B.S., Mechanical Engineering, Stanford University

 

Biography

Chris Rogers earned his B.S., M.S., and Ph.D. in mechanical engineering at Stanford University, where he worked with Professor John Eaton on his thesis on particle motion in a boundary layer flow. Rogers joined the Department of Mechanical Engineering at Tufts School of Engineering in 1989. He is involved in a number of research areas, including particle-laden flows (a continuation of his thesis), telerobotics and controls, the slurry flows in chemical-mechanical planarization, the engineering of musical instruments, measuring flame shapes of couch fires, measuring fruit-fly locomotion, and engineering education (kindergarten to college). At Tufts, Rogers has exercised his strong commitment to teaching by exploring a number of new directions, including teaching robotics with LEGO bricks and teaching manufacturing by building musical instruments. His teaching work extends to the elementary school level, where he talks with over 1,000 teachers around the world every year on methods of introducing young children to engineering.

 

RumeysaDogan

RUMEYSA DOGAN

Co-founder and COO at TechDev Academy

  • Graduated from top-ranked business school with high honor
  • Worked in top global companies as Vodafone, Benetton Group, etc
  • Experienced in Product Management and Digital Marketing Analytics
  • Managed Entrepreneurship Club and mentored several entrepreneurs

 

 

ismail-marulcu

ISMAIL MARULCU

Co-founder & Chief Education Officer at TechDev Academy

  • Educator and Researcher since 2001
  • M.Ed. in Curriculum and Instruction from Boston College
  • Ph.D. in STEM Education from Boston College
  • Mentored more than 100 pre-service teachers, college students, and high school students

 

 

PaolaGomez

PAOLA G. GONZALES

Mentor & Educator

  • over 2,000 hours mentoring students and 4 years of teaching experience
  • spearheaded a nonprofit organization that provides mentorship to underrepresented students at the UC, Davis
  • an active member of the Surfrider Foundation

 

 

AyushKanodia

AYUSH KANODIA

Ph.D. Student in Computer Science at Stanford

  • Ph.D. Candidate in Computer Science at Stanford Uni.
  • Worked as a software engineer for Google
  • Expert in the intersection of Computer Science and Economics.

 

 

KairatSabyrov

KAIRAT SABYROV

Ph.D., Data Scientist

  • B.S. in chemistry and physics
  • Ph.D. In physical chemistry
  • Data science instructor at Lambda School
  • Worked at Lawrence Berkeley National Lab at the UC, Berkeley

 

 

BAHRUDIN TRBALIC

Ph.D., Candidate at Stanford University

  • Studied Physics & Electrical Engineering at MIT.
  • Worked at MIT as a Medical Data Analyst and Product Developer.
  • The founder and lead developer of Expert Experiments.
  • Received the 2023 Robert H. Siemann Graduate Fellowship and 2022 NASA Astrophysics Research and Analysis Award.
  • Spearheaded STEM camps across Europe and Asia.
  • He has been mentoring students for years.

 

 

SHASHA ANRONIKOV

Researcher at Stanford University

  • Recent honors graduate from Cornell University with a major in biological sciences and a minor in business at the College of Agriculture and Life Sciences.
  • Currently working at Stanford University in the Nolan Lab to conduct immunopathology research.

 

 

LISA WANG

BSc Harvard University Graduate

  • Studied Environmental Science and Engineering.
  • Cross-registered to Harvard Univ. and MIT.
  • An advisor to the Harvard Undergraduate Clean Energy Group.
  • Co-founder of Coolant, a company that builds software to unlock nature-based carbon markets.

 

 

SEMI HASAJ

MBA Data Scientist at C3 AI

  • Studied Data Science while obtaining his Master's of Business Analytics at MIT.
  • Studied Space Engineering in Toronto, Canada where he grew up.
  • He has spent years tutoring others because he loves to help people learn and grow.

 

 

SAMY AWWAD

Junior at Stanford University

  • Studying Symbolic Systems with a focus on Neurosciences and plans to be a medical doctor.
  • Founded ImmuniGlobal, a national nonprofit in vaccine education, and he was featured in Healthline magazine.
  • A published researcher in PubMed.
  • Honored by the CDC as a Flu Fighter during the COVID-19 pandemic.
  • Enthusiastic about empowering young changemakers.

 

 

HASAN TUNCER

Ph.D., Product Manager at Cruise

  • BSc. in Computer Science at Koc University, Istanbul.
  • Ph.D. in Computing and Information Scienves at Rochester Institute of Technology in New York.
  • Worked as a software engineering at Wall Street.
  • Product Manager for Cloud Services (at IBM Silicon Valley Lab), autonomous vehicles (at NIO, aka Chinese Tesla, Uber ATG, Aurora and Cruise)

 

 

RayYucel

RAY YUCEL

Ph.D., Data Scientist in Magnimind Inc.

  • B.S in Materials Engineering
  • M.Sc in Management
  • Ph.D. Candidate in Economics
  • Data scientist at Magnimind Inc.
  • Employs deep learning in finance and health care data

 

 

SofoklisGoulas

SOFOKLIS GOULAS

Ph.D., Senior Research Associate at the Hoover Institution at Stanford University

  • Senior research associate, Stanford Uni.
  • The use of data science and machine learning in economics
  • M.Sc. in finance and economics, Warwick business school
  • MS and a Ph.D. in economics, the Uni. of North Carolina at Chapel Hill
  • Worked at the Uni. of North Carolina and at the Bank of Greece

 

 

EnricoSantus

ENRICO SANTUS

Senior Data Scientist at Bayer

  • Senior data scientist at Bayer
  • Postdoc at MIT, in the group of Regina Barzilay
  • Experience in NLP in Oncology, Cardiology and Palliative Care
  • Experience in Fake News Detection, Sentiment Analysis, and Lexical Semantics.
  • Invited to talk at the White House

 

 

EMILY HALFORD

Data Analyst

  • Data analyst working in psychiatric epidemiology
  • Data Science&Mental Health Expert with the BBN Times
  • Master of Public Health, Columbia Uni.

 

 

RyanSpitler

RYAN SPITLER

Ph.D., Co-Founder and Deputy Director of the Precision Health and Integrated Diagnostics Center (PHIND) at Stanford University

  • Faculty Member, Standford Uni.
  • Founding Partner at Boutique Venture Partners
  • B.S. in Molecular Cell and Developmental Biology, UC, Santa Cruz
  • Ph.D. In Cellular and Developmental Biology, UC, Irvine

 

 

muratbaday

MURAT BADAY

Scientist at Stanford Uni, Founder & CEO at TechDev Academy

  • Co-founder of Smartlens, Magnimind, Wowso, Nanosight
  • M.S. in Physics from the University of Pittsburgh
  • Ph.D. in Computational Biology and Biophysics from the Uni. of Illinois at Urbana-Champaign
  • Mentored and tutored over 100 high school students
  • Developed novel ideas and has over 8 patents

 

 

GyunelRashidova

GYUNEL RASHIDOVA

B.S. in Biological Sciences,
Research assistant at the Laboratory of Biosensors and Bioinstrumentation

  • iGEM alumni, received Gold Medal among 250 teams
  • Fellowship holder from Women in Tech international organization
  • Founder of social projects:
    “OncoSense” - fabrication of device for the detection of cancer biomarkers;
    “RemiSee” - promotion of a colorblind-friendly educational platform
  • AIESEC alumni, organized case competitions with over 300 participants
  • Organized iGEM Biohackathon and Summer Camp for high-school and university students to apply coding for solving real case studies

 

 

SoudehYaghouti

SOUDEH YAGHOUTI

Ph.D., Data Scientist at Megalab, Silicon Valley

  • Ph.D. in Electrical Engineering, University of Naples Federico II, Italy.
  • More than 4 years of experience in data-driven research on electrical network systems.
  • Collaborating with TechDev Academy for several years and taught students data analysis projects.
  • Collaborated with Stanford scientists on projects that aimed to automate medical diagnosis of diseases with the help of image processing techniques and AI.

 

 

AIZHAN IBRAYEVA

MSc Researcher at Stanford University

  • MS. Aerospace Engineering from Purdue University.
  • Did research at Stanford University, Aerospace Science Lab (Purdue), Rarefied Gas Dynamics Lab (Purdue)
  • Worked on projects supported by NASA.
  • Worked as Engineer at Silicon Valley Startup companies.
  • Mentored Students from top US school

 

The class has 5 available spots.
You can add the class during course registration!

 

June 1-5

Mon-Fri 2 hours of daily instruction and 2 hours of self-paced project development.

June 8-12

Mon-Fri 2 hours of daily instruction and 2 hours of self-paced project development.

June 15-19

Mon-Fri 2 hours of daily instruction and 2 hours of self-paced project development.

The class capacity is full.
Please try other classes!