You can gain professional experience with a data science internship. Learn more about what you can do to find one with this guide.
A data science internship can be the first step to starting a career as a professional. Offering hands-on experience in the work world, internships can provide networking opportunities, give you the chance to work with complex data sets, collaborate in a team environment, and experience the direct impact of your field of study. In this article, you'll explore valuable information about data science internships—from the benefits and requirements to where you can find them and what you should consider before applying. At the end, you'll also find online courses that can help you hone the critical skills you'll need to excel in the field.
Each data science internship will have unique benefits, duties, and skills required for the position. While every internship is different, the following sections outline what you can expect from most data science internships.
Internships offer many potential benefits, including the opportunity to gain work experience, practice your technical skills in the real world, and build your resume to help you on your career path.
Typically lasting for a fixed amount of time, such as four months, internships also allow students and early career professionals an opportunity to connect with a network of industry professionals. In some cases, an internship might even lead directly to a job later.
As a data science intern, the skills you’ll use may vary from one position to another. If you are a graduate student, you'll likely be expected to perform many more duties than an undergraduate in a similar position.
The list below includes some of the most common skills expected of data scientists, which you will likely encounter as an intern in the field.
Data scientists have a well-honed technical skill set that allows them to gather, analyze, and visualize data while developing data models that guide decisions and predict outcomes.
To perform all these critical duties, data scientists must often have a firm grasp of the following technical skills:
An understanding of programming languages, such as SQL, Python, or R.
An understanding of how to use machine learning to collect data and develop predictive machine learning models.
A grasp of software frameworks, such as Apache Hadoop, for processing big data.
Data scientists must work with both experts and non-experts to ensure that the best data is collected and the best decisions are made. As a result, you must embody some of the following common people skills:
Communication
Problem-solving
The first step to landing a data science internship is finding one. In this section, you'll learn where you should look, some common requirements, and tips to help you when you apply.
You can find a data science internship by searching for available internships on a job posting website or by searching for internships on a business’s dedicated job page.
To find a data science internship on a job posting site, go to your site of choice and search for “data science internship.” From there, you can view a list of currently available internships.
Some popular websites to search for internships include:
To find an internship on a business’s dedicated job page, go to a search engine, such as Google, and search “[business’s name] jobs.” Once on the dedicated job page, search for “data science internship” and see if any are available. You might also consider searching for a related position, such as “data analytics internship” or “data science engineer internship.”
The requirements for each data science internship will depend on the nature of the position. Nonetheless, some of the most common internship requirements include:
An understanding of scripting languages, such as SQL, Python, and R.
An ability to work with others in a fast-paced environment.
Research experience.
Enrollment in an undergraduate or graduate degree program in computer science, mathematics, statistics, or a related field
While many data science internships are geared toward those already enrolled in a relevant master’s degree program, some target undergraduates or even high schoolers. No matter your current education level, internships are likely available to you.
When applying for your internship, put your best foot forward. To help improve your chances of landing your next internship, consider the tips below.
1. Apply in advance. Internships can be competitive, so it’s helpful to make a good first impression by applying well in advance of the deadline. For example, if you're applying for a summer internship, apply much earlier in the year or, in some cases, in the fall of the previous year. Being early will also give you time to ensure all your application materials are complete.
2. Apply to more than one internship. Data science internships can attract many strong applicants, so it’s best to apply to many internships rather than pinning your hopes on just one.
3. Create a portfolio. A portfolio of your past or current work can highlight your skills in action and be a good supplement to your application.
4. Lean into your network. Your existing network of professional contacts could be a helpful resource for identifying available internships and soliciting feedback on your application material.
5. Get a recommendation letter ready. Your application will likely require a letter of recommendation from a teacher or relevant individual who knows you well. Writing a recommendation letter can take some time, so ask your recommender at least three weeks before the deadline.
6. Fine-tune your resume and cover letter. Tailor your cover letter and resume to each internship. Your cover letter and resume represent you professionally, so make sure to proofread both before submitting them.
As you search for data science internships, consider specializing in an area related to your interests and future career goals to get the most value from your experience. You can also use an internship to help you decide which career path to take. Some types of data science internships include:
Data analyst intern
Machine learning engineer intern
Data scientist intern
Business intelligence intern
Data engineering intern
Natural language processing (NLP) intern
Computer vision intern
Data security intern
Health care data science intern
Marketing analytics intern
A data science internship offers valuable hands-on experience that can enhance your career or help you decide which career path interests you most. To prepare for this next phase of your professional life, you might consider taking a relevant course online.
While the University of Michigan’s Python for Everybody Specialization offers beginners a crash course in programming, the IBM Data Science Professional Certificate can help you gain career-relevant skills and experience.
Data Science 实习生可以在各行各业工作。你可能会想到科技和金融行业,但你也可以在医疗保健、零售、政府、营销、娱乐、教育和许多其他行业找到实习机会。您可能会在自己从未考虑过的领域找到实习机会。
要想成为一名成功的数据科学家,你需要在掌握一套核心的人际交往技能的同时,掌握关键的技术技能。入门的最佳方式是接受所需的技能方面的适当培训和教育,如 Python 和数据 Visualization 工具 Tableau。
例如,IBM 数据科学专业证书可以帮助您学习 Python、SQL、数据分析和可视化以及构建机器学习模型的基础知识。
通常情况下,Data Science 实习期为两到三个月不等,但具体时长因实习单位而异。在某些情况下,您可能会找到只持续几周的实习("微型实习")或长达数月的实习。
虽然大多数实习都是在学校放假的暑假进行,但也有一些实习是在秋季、冬季和春季学年进行的。
Editorial Team
Coursera’s editorial team is comprised of highly experienced professional editors, writers, and fact...
此内容仅供参考。建议学生多做研究,确保所追求的课程和其他证书符合他们的个人、专业和财务目标。