{"id":342,"date":"2025-03-16T06:28:52","date_gmt":"2025-03-16T06:28:52","guid":{"rendered":"https:\/\/thespear.org\/blog\/?p=342"},"modified":"2025-03-16T06:28:52","modified_gmt":"2025-03-16T06:28:52","slug":"jerry-wei-admission-file","status":"publish","type":"post","link":"https:\/\/thespear.org\/blog\/jerry-wei-admission-file\/","title":{"rendered":"\u535a\u5ba2 &#8211; \u65af\u5766\u798f\u5f55\u53d6\u6848\u4f8b"},"content":{"rendered":"\n<!DOCTYPE html>\n<html lang=\"zh\">\n<head>\n    <meta charset=\"UTF-8\">\n    <meta name=\"viewport\" content=\"width=device-width, initial-scale=1.0\">\n    <title>\u6770\u745e\u00b7\u97e6\u7684\u65af\u5766\u798f\u5f55\u53d6\u7533\u8bf7\u6848\u4f8b | \u6df1\u5ea6\u89e3\u6790<\/title>\n    <style>\n        body {\n            font-family: Arial, sans-serif;\n            line-height: 1.8;\n            margin: 20px;\n            color: #333;\n            background-color: #f9f9f9;\n        }\n        h1 {\n            background-color: #e6f7ff;\n            padding: 20px;\n            text-align: center;\n            color: #00529b;\n            border-radius: 8px;\n        }\n        h2, h3 {\n            margin-top: 30px;\n            padding-bottom: 5px;\n            color: #00529b;\n            border-bottom: 2px solid #ddd;\n        }\n        p {\n            margin: 10px 0;\n        }\n        ul {\n            margin: 10px 0;\n            padding-left: 20px;\n        }\n        ul li {\n            margin-bottom: 8px;\n        }\n        pre {\n            background: #f7f7f7;\n            padding: 15px;\n            border-radius: 8px;\n            overflow-x: auto;\n            white-space: pre-wrap;\n            margin: 15px 0;\n        }\n        .section {\n            margin-bottom: 25px;\n        }\n        .essay {\n            background: #fcfcfd;\n            padding: 20px;\n            border-radius: 5px;\n            font-family: 'Georgia', serif;\n            font-style: italic;\n            white-space: pre-wrap;\n            line-height: 1.6;\n        }\n        .comment {\n            font-weight: bold;\n            color: #00529b;\n            background: #e6f7ff;\n            padding: 15px;\n            border-left: 3px solid #3498db;\n            margin: 15px 0;\n        }\n    <\/style>\n<\/head>\n<body>\n\n<h1>\u6770\u745e\u00b7\u97e6\u7684\u65af\u5766\u798f\u5f55\u53d6\u7533\u8bf7\u6848\u4f8b | \u6df1\u5ea6\u89e3\u6790<\/h1>\n\n<p>\u65af\u5766\u798f\u5927\u5b66\u7684\u5f55\u53d6\u4e00\u76f4\u4ee5\u5176\u4e25\u82db\u7684\u6807\u51c6\u548c\u4f4e\u5f55\u53d6\u7387\u95fb\u540d\u3002\u6bcf\u5e74\uff0c\u6210\u5343\u4e0a\u4e07\u7684\u5168\u7403\u7533\u8bf7\u8005\u4e89\u593a\u6709\u9650\u5e2d\u4f4d\u3002\u5728\u672c\u6848\u4f8b\u4e2d\uff0c\u6211\u4eec\u5c06\u6df1\u5165\u89e3\u6790\u6770\u745e\u00b7\u97e6\u7684\u5b8c\u6574\u7533\u8bf7\u6750\u6599\uff0c\u5305\u62ec\u4ed6\u7cbe\u5f69\u7684\u4e2a\u4eba\u8bba\u6587\u3001\u8bfe\u5916\u6d3b\u52a8\u4ee5\u53ca\u77ed\u56de\u7b54\u5185\u5bb9\uff0c\u540c\u65f6\u5c55\u793a\u65af\u5766\u798f\u62db\u751f\u5b98\u9488\u5bf9\u4ed6\u7684\u8bc4\u4ef7\u4e0e\u5f55\u53d6\u51b3\u7b56\u3002<\/p>\n\n<h2>\u62db\u751f\u5b98\u8bc4\u4ef7\u4e0e\u6587\u4ef6\u7b80\u4ecb<\/h2>\n\n<p class=\"comment\">\u201c\u6770\u745e\u5c55\u73b0\u4e86\u5f3a\u70c8\u7684\u5b66\u672f\u52a8\u529b\u548c\u5bf9\u8ba1\u7b97\u8bed\u8a00\u5b66\u7684\u6df1\u539a\u5174\u8da3\u3002\u4ed6\u7684\u7533\u8bf7\u4f53\u73b0\u4e86\u6781\u9ad8\u7684\u77e5\u8bc6\u6d3b\u529b\uff08Intellectual Vitality\uff09\u548c\u521b\u65b0\u6027\uff0c\u5c24\u5176\u662f\u5728\u8bed\u8a00\u5b66\u548c\u673a\u5668\u5b66\u4e60\u9886\u57df\u3002\u4ed6\u662f\u672c\u5e74\u5ea6\u9650\u5236\u6027\u65e9\u7533\u8bf7\uff08REA\uff09\u6c60\u4e2d\u7684\u6700\u597d\u4e4b\u4e00\u3002\u201d<\/p>\n\n<div class=\"section\">\n    <h2>\u5b8c\u6574\u7533\u8bf7\u8868\u4fe1\u606f\u53ca\u6210\u7ee9<\/h2>\n    <h3>\u6559\u80b2\u80cc\u666f<\/h3>\n    <pre>\nSchool: Oakton High School, Vienna, VA\nGPA: 4.826 \/ 4.0 (\u52a0\u6743)\nGraduation Date: June 2021\n\nAdditional College Course:\nNorthern Virginia Community College (09\/2019 - 06\/2020)\nCompleted college-level advanced math courses.\n    <\/pre>\n\n    <h3>\u6d4b\u8bd5\u6210\u7ee9<\/h3>\n    <pre>\nSAT: Total 1560\n- Evidence-based Reading and Writing: 770\n- Math: 790\n\nSAT Subject Test:\n- Math Level 2: 800\n\nAP Scores (11\u95e8\u79d1\u76ee\u6ee1\u52065\u5206):\n- Physics C Mechanics, English Language, Calculus BC, Statistics, Computer Science A,\n  Music Theory, Chinese Language, World History \u7b49\n    <\/pre>\n<\/div>\n<h2>\u8bfe\u5916\u6d3b\u52a8\u6e05\u5355<\/h2>\n<p>\u4ee5\u4e0b\u662f\u6770\u745e\u5217\u5728\u7533\u8bf7\u8868\u4e2d\u7684\u5b8c\u6574\u8bfe\u5916\u6d3b\u52a8\u5217\u8868\uff1a<\/p>\n<div class=\"activity-list\">\n<ul>\n    <li><strong>Research Intern:<\/strong> <br>\n        \u8fbe\u7279\u8305\u65af\u5b66\u9662 (Dartmouth College), 10-12\u5e74\u7ea7<br>\n        \u5f00\u53d1\u673a\u5668\u5b66\u4e60\u7b97\u6cd5\u7528\u4e8e\u7ed3\u76f4\u80a0\u764c\u68c0\u6d4b\uff0c\u5e76\u5728\u9876\u7ea7\u5b66\u672f\u4f1a\u8bae\u53d1\u8868\u4e24\u7bc7\u8bba\u6587\u3002\n    <\/li>\n    <li><strong>Computational Linguistics:<\/strong> <br>\n        \u81ea\u4e3b\u7814\u7a76\uff0c10-11\u5e74\u7ea7\u6691\u671f\u9879\u76ee<br>\n        \u521b\u5efa20,000+\u6587\u7ae0\u6570\u636e\u96c6\uff0c\u7528\u4e8e\u68c0\u6d4b\u653f\u6cbb\u65b0\u95fb\u4e2d\u7684\u9690\u85cf\u504f\u89c1\uff1b\n        \u7814\u7a76\u9879\u76ee\u6700\u7ec8\u5728 Intel \u56fd\u9645\u79d1\u5b66\u4e0e\u5de5\u7a0b\u535a\u89c8\u4f1a (ISEF) \u4e0a\u83b7\u5f97\u7b2c4\u540d\u3002\n    <\/li>\n    <li><strong>Linguistics and Machine Learning Blog:<\/strong> <br>\n        10-12\u5e74\u7ea7<br>\n        \u64b0\u519920\u7bc7\u5173\u4e8e\u8ba1\u7b97\u8bed\u8a00\u5b66\u548c\u673a\u5668\u5b66\u4e60\u7684\u535a\u6587\uff0c\u535a\u5ba2\u7d2f\u8ba1\u9605\u8bfb\u91cf\u8fbe 150,000 \u4ee5\u4e0a\uff1b\n        \u83b7\u9009\u201cMedium\u4eba\u5de5\u667a\u80fd50\u4f4d\u9876\u7ea7\u535a\u4e3b\u4e4b\u4e00\u201d\u8363\u8a89\u3002\n    <\/li>\n    <li><strong>President of Machine-Learning Club:<\/strong> <br>\n        11-12\u5e74\u7ea7<br>\n        \u9886\u5bfc\u4ff1\u4e50\u90e8\u6d3b\u52a8\uff0c\u6db5\u76d6\u673a\u5668\u5b66\u4e60\u5728\u533b\u5b66\u3001\u4e2a\u6027\u5316\u6570\u636e\u4fdd\u62a4\u4e2d\u7684\u5e94\u7528\u3002\n    <\/li>\n    <li><strong>Powerlifting:<\/strong> <br>\n        9-12\u5e74\u7ea7<br>\n        \u8fbe\u5230\u7f8e\u56fd\u4e3e\u91cd\u6807\u51c6\uff0c\u4ee5148\u78c5\u4f53\u91cd\u8fbe\u6210\u4e2a\u4eba\u7eaa\u5f55\uff1a\n        \u6df1\u8e72 275\u78c5\uff0c\u5367\u63a8195\u78c5\uff0c\u786c\u62c9295\u78c5\u3002\n    <\/li>\n    <li><strong>Popeyes Cashier:<\/strong> <br>\n        \u9ad8\u4e2d12\u5e74\u7ea7\uff0c\u603b\u5de5\u65f6 15 hr\/week during summer break<br>\n        \u6691\u671f\u6253\u5de5\u5b58\u5b66\u8d39\u3002\n    <\/li>\n    <li><strong>Model United Nations Vice President:<\/strong> <br>\n        9-12\u5e74\u7ea7 <br>\n        \u9886\u5bfc10+\u6a21\u62df\u8054\u5408\u56fd\u4f1a\u8bae\u89c4\u5212\uff0c\u63d0\u9ad8\u4ff1\u4e50\u90e8\u53c2\u4e0e\u7387\u3002\n    <\/li>\n    <li><strong>Member of ACL (Association of Computational Linguistics):<\/strong> <br>\n        \u53c2\u4e0e\u8ba8\u8bba\u8ba1\u7b97\u8bed\u8a00\u5b66\u7814\u7a76\uff0c\u5f62\u6210\u540e\u7eed\u9ad8\u6821\u7814\u7a76\u65b9\u5411\u7075\u611f\u3002\n    <\/li>\n    <li><strong>Academic Coursework:<\/strong> <br>\n        \u5b8c\u6210Coursera\u548cMIT\u8bfe\u7a0b (\u4f8b\u5982\uff1aNeurolinguistics\u7b49)\u3002\n    <\/li>\n<\/ul>\n<\/div>\n\n<div class=\"section\">\n    <h2>\u5b8c\u6574\u4e2a\u4eba\u4f5c\u6587\uff1a\u4e2a\u4eba\u8bba\u6587 (Main Essay)<\/h2>\n    <div class=\"essay\">\nGeorge Orwell didn\u2019t just write dystopian novels, he also inspired me to apply my love for  computer science in the most unexpected of places: studying linguistics. Let me elaborate\u2014during  my freshman year, I read 1984 and discovered the language of Newspeak, in which words such as  \u201coutstanding\u201d and \u201cwonderful\u201d were replaced with unambiguous words such as \u201cdoubleplusgood.\u201d  By enforcing a limited vocabulary, Newspeak prevented the working class from thinking anything  that diverged from the ruling party\u2019s beliefs, essentially acting as a vessel to promote an implicit  agenda.  \nThrough my morning routine of keeping up with the news, I noticed a trend in today\u2019s news that  was eerily similar to Orwell\u2019s warning of linguistic totalitarianism. News sources often report on the  same topic but present information in a way that only supports their own viewpoint, implicitly  pushing their political agenda on readers. Soon I began to wonder: is there a way to identify how  systemic and implicit biases manifest in today\u2019s news?  \nStrikingly, the answer came from another passion of mine\u2014computer science. In my sophomore  year, I took an online Coursera course on machine learning in which I learned about the recurrent  neural network, a statistical model that could automatically discover linguistic patterns in large  amounts of text. I thought the model could potentially help answer my question, so I set out to  gather a large dataset that I could use to train it.  \nOver the course of two weeks, I scoured the internet and compiled a dataset of over 20,000  articles about Donald Trump, one of the most polarizing topics in today\u2019s news. Each article came\nfrom one of four major news sources that each represent different points on the political spectrum  according to Media Bias\/Fact Check, a recognized website that categorizes the biases of news  organizations. Now that I had my dataset, I used differentiable programming tools to create a  custom model in Python for my project, debugging over a dozen failed configurations in the  process. In the end, my model successfully predicted a given news article\u2019s source with 85%  accuracy by detecting the article\u2019s hidden political biases.  \nNow that my model could accurately identify an article\u2019s source, I coded a way to extract how  much bias it associated with certain phrases of interest so that I could interpret the patterns that it  had learned. I found that the phrases it perceived as biased matched with what humans would  expect. For instance, the model recognized that, when referring to Trump, liberal sources tended  to use phrases with negative connotations such as \u201cTrump lost because he\u201d and \u201cTrump has a  history of,\u201d whereas conservative sources tended to use titles of respect such as \u201cPresident\u201d and  \u201cCommander-in-Chief.\u201d  \nIn addition to the newest statistical models, I also analyzed my dataset using two methods from  classical computational linguistics. One popular concept, the age of acquisition (AoA), measures the  age at which words are typically learned (for example, the AoA of \u201crun\u201d is 4.5 years old while the  AoA of \u201cabscond\u201d is 13.4 years old). I found that in my dataset, articles from conservative sources,  which typically target older audiences, had a higher average AoA than articles from liberal sources.  In terms of lexical diversity, the proportion of unique words in a text, I discovered that sources that  were categorized as more biased used a smaller proportion of unique words in their articles relative  to more-neutral sources. This may suggest that more-biased sources tend to narrowly select words  that support their agenda.  \nBy using both the latest statistical models and more-traditional computational linguistics  methods, I discovered new insights on how bias manifests in today\u2019s news. Although George Orwell  might not understand the mathematics behind my model, he certainly shares my sentiment about  the importance of language. As technology continues to improve, I hope to continue searching for  new ways to use computational methods for analyzing different types of biases in language.\n    <\/div>\n<\/div>\n\n<div class=\"section\">\n    <h2>\u8865\u5145\u77ed\u56de\u7b54 (Stanford Short Essays)<\/h2>\n\n    <h3>Short Essay 1: \u5206\u4eab\u4e00\u4e2a\u8ba9\u4f60\u5174\u594b\u7684\u5b66\u4e60\u7ecf\u5386<\/h3>\n    <div class=\"essay\">\n2019 was the most exciting year in computational linguistics since the beginning of the field in the 1950s due to the development of an algorithm called BERT. By learning from the entire Wikipedia database of over 2.5 billion words, BERT has acquired a wealth of general information about language and therefore can be used to tackle new linguistic tasks with only a limited amount of data.\nEven I experienced the effects of BERT. Before BERT came out, I had conducted research on using machine learning to detect political bias in news articles, a project for which I had to spend four weeks collecting and processing twenty thousand articles in order to sufficiently train a machine learning model. In my next project, which I worked on after BERT came out, I analyzed questions that people asked online about COVID-19, but was only able to collect a few hundred questions for my dataset. Whereas previous machine learning algorithms could not be sufficiently trained with such a small dataset, using BERT, I was able to perform complex linguistic analyses with surprising accuracy, despite the limited amount of data.\nAfter witnessing BERT\u2019s effects firsthand, I was both astounded and inspired by how a single idea can change the way we do research in computational linguistics. In the future, I will continue studying computational linguistics and hope to one day develop my own algorithm that can allow others to utilize the power of computational methods to more accurately and accessibly study linguistic phenomena.\n    <\/div>\n\n    <h3>Short Essay 2: \u5199\u7ed9\u672a\u6765\u5ba4\u53cb\u7684\u4fe1<\/h3>\n    <div class=\"essay\">\nHi there,\nI\u2019m stoked to room with you! My brother left for college when I was thirteen, so I\u2019ve had my own room since then. It\u2019s nice to get to have a roommate again. Here are some fun \u201cme\u201d facts&#8230; I adore computers and anything to do with them. You\u2019ll probably see me arranging my custom  computer setup on my desk and plugging in a bunch of wires everywhere (I\u2019ll do my best to keep  the wires from turning into a big heap of wire monster, but no promises).  \nI love linguistics, and I\u2019m interested in how our use of language affects how we perceive the  world. I just finished reading Metaphors We Live By (which is about how we use metaphors to  understand abstract concepts), and I am now reading Syntactic Structures, a classic linguistics book  by Noam Chomsky, the father of linguistics.  \nHope you\u2019re okay with seeing boxes of protein bars\u2014I\u2019ve been powerlifting (a type of weightlifting  consisting of the bench press, squat, and deadlift) for about four years now. Feel free to lift with me  sometime!  \nPersonality-wise, I\u2019m an architect, like Michelle Obama and Elon Musk. Architects are  \u201cimaginative yet decisive\u201d and \u201ccurious about everything but remain focused.\u201d Spot-on\u2014one time  my cat was scratching my door while I was writing an essay, and I finished writing the entire essay  before opening the door to see what he wanted. Turns out, he just wanted to hop onto my window  sill to feel the cool breeze of fresh air.  \n    <\/div>\n\n    <h3>Short Essay 3: \u5bf9\u4f60\u6709\u610f\u4e49\u7684\u4e1c\u897f\u4ee5\u53ca\u539f\u56e0<\/h3>\n    <div class=\"essay\">\nOne alarming discovery that I made while studying computational linguistics is that artificial intelligence algorithms can be implicitly biased as a result of hidden biases in the data that they are trained on. As a classic example, computational linguistics algorithms often associate the word \u201cdoctor\u201d with \u201cman\u201d and \u201cnurse\u201d with \u201cwoman,\u201d even though gender is not referenced in the definition of \u201cdoctor\u201d or \u201cnurse.\u201d\nWhen algorithms with implicit biases make it into the real world, there are severe consequences. For example, Amazon developed an algorithm in 2014 that analyzed resumes to identify which job candidates to interview. A year after deploying it, however, Amazon found that the algorithm tended to select men because it had an implicit bias that women were less qualified than men for positions in the technology industry solely because of their gender.\nThese biased algorithms troubled me not only because they had invaded my home territory of computational linguistics, but also because they challenged an ideal that I was raised to believe in\u2014equal opportunity. As computational linguistics algorithms improve and take on larger roles in decision-making, I have a duty as an aspiring computational linguist to work on ensuring that our algorithms are fair and give everyone an equal opportunity.\nAs I continue studying computational linguistics, I will also continue to analyze bias in algorithms. My current research has already shown that algorithms can discover implicit political biases in language, and moving forward I plan to find new methods to actively reduce bias in computational linguistics algorithms.\n    <\/div>\n<\/div>\n\n<h2>\u62db\u751f\u5b98\u5bf9\u9762\u8bd5\u7684\u603b\u7ed3<\/h2>\n<div class=\"comment\">\n\u201c\u6770\u745e\u7684\u9762\u8bd5\u4e0d\u4ec5\u8ba9\u4ed6\u7684\u5b66\u672f\u5174\u8da3\u66f4\u52a0\u51f8\u663e\uff0c\u8fd8\u4f53\u73b0\u4e86\u4ed6\u5728\u673a\u5668\u5b66\u4e60\u9879\u76ee\u548c\u793e\u4f1a\u4f26\u7406\u65b9\u9762\u7684\u575a\u6301\u4e0e\u4e13\u6ce8\u3002\u4ed6\u662f\u672a\u6765\u53ef\u4ee5\u63a8\u52a8\u516c\u5e73 AI \u53d1\u5c55\u7684\u9886\u5bfc\u8005\u4e4b\u4e00\u3002\u201d\n<\/div>\n<div class=\"comment\">\n<p>\u6770\u745e\u63d0\u5230\u4e86\u4ed6\u5bf9\u8bed\u8a00\u5b66\u548c\u673a\u5668\u5b66\u4e60\u7684\u70ed\u60c5\uff0c\u540c\u65f6\u8868\u8fbe\u4e86\u5e0c\u671b\u5728\u65af\u5766\u798f\u5f00\u5c55\u66f4\u9ad8\u6df1\u7814\u7a76\u7684\u76ee\u6807\u3002\u4ed6\u5e0c\u671b\u672a\u6765\u901a\u8fc7\u5b66\u672f\u548c\u7814\u7a76\u89e3\u51b3\u56e0\u7b97\u6cd5\u504f\u89c1\u5bfc\u81f4\u7684\u793e\u4f1a\u95ee\u9898\u3002<\/p>\n<\/div>\n<div class=\"section\">\n    <h2>\u65af\u5766\u798f\u62db\u751f\u5b98\u603b\u7ed3\uff1a\u4e3a\u4ec0\u4e48\u6770\u745e\u88ab\u5f55\u53d6\uff1f<\/h2>\n\n    <h3>1. \u601d\u60f3\u6d3b\u529b (IV) \u4e0e\u5b66\u4e60\u70ed\u60c5<\/h3>\n    <p>\u6770\u745e\u8868\u73b0\u51fa\u4e86\u975e\u51e1\u7684\u6c42\u77e5\u6b32\uff0c\u7279\u522b\u662f\u5728\u8ba1\u7b97\u8bed\u8a00\u5b66\u548c\u673a\u5668\u5b66\u4e60\u9886\u57df\u3002\u4ed6\u7684\u7533\u8bf7\u6750\u6599\u53cd\u6620\u4e86\u4ed6\u5bf9\u7814\u7a76\u7684\u5f3a\u70c8\u70ed\u60c5\uff0c\u4ee5\u53ca\u8d85\u8d8a\u8bfe\u5802\u7684\u63a2\u7d22\u7cbe\u795e\u3002\u5728\u4ed6\u7684\u4e2a\u4eba\u8bba\u6587\u4e2d\uff0c\u4ed6\u901a\u8fc7\u53d7\u4e54\u6cbb\u00b7\u5965\u5a01\u5c14\u7684\u300a1984\u300b\u542f\u53d1\uff0c\u5c06\u8bed\u8a00\u5b66\u4e0e\u8ba1\u7b97\u673a\u79d1\u5b66\u8054\u7cfb\u8d77\u6765\uff0c\u8ba8\u8bba\u73b0\u4ee3\u793e\u4f1a\u4e2d\u7684\u65b0\u95fb\u504f\u89c1\u95ee\u9898\uff0c\u8fd9\u5c55\u73b0\u4e86\u4ed6\u601d\u7ef4\u7684\u6df1\u5ea6\u3002<\/p>\n    \n    <h3>2. \u5353\u8d8a\u7684\u5b66\u672f\u8868\u73b0\u4e0e\u8003\u8bd5\u6210\u7ee9<\/h3>\n    <p>\u6770\u745e\u7684 GPA \u4e3a <strong>4.826\uff08\u6743\u91cd\u5236\uff09<\/strong>\uff0c\u5728\u9ad8\u4e2d\u4e2d\u540d\u5217\u524d\u8305\u3002\u4ed6\u7684 SAT \u6210\u7ee9\u4e3a <strong>1560<\/strong>\uff08\u9605\u8bfb\u4e0e\u5199\u4f5c 770\uff0c\u6570\u5b66 790\uff09\uff1bSAT \u79d1\u76ee\u8003\u8bd5\u6570\u5b66\u4e8c\u7ea7\u6ee1\u5206 <strong>800<\/strong>\uff0c11 \u95e8 AP \u8003\u8bd5\u5168\u90e8\u53d6\u5f97\u6ee1\u5206\u3002\u4ed6\u5728 10 \u5e74\u7ea7\u4fee\u5b8c\u9ad8\u4e2d\u6570\u5b66\u8bfe\u7a0b\u540e\uff0c\u53c8\u5728\u793e\u533a\u5927\u5b66\u5b8c\u6210\u9ad8\u7ea7\u6570\u5b66\u8bfe\u7a0b\uff0c\u5c55\u73b0\u4e86\u4ed6\u5bf9\u5b66\u672f\u7684\u9ad8\u5ea6\u8ffd\u6c42\u3002<\/p>\n\n    <h3>3. \u7a81\u7834\u6027\u7684\u7814\u7a76\u4e0e\u8bfe\u5916\u6d3b\u52a8\u7684\u6df1\u5ea6\u5f71\u54cd<\/h3>\n    <ul>\n        <li>\u6770\u745e\u901a\u8fc7\u5f00\u53d1 <strong>\u653f\u6cbb\u504f\u89c1\u65b0\u95fb\u68c0\u6d4b\u7b97\u6cd5\u7814\u7a76<\/strong>\uff0c\u5206\u6790\u4e86 20,000+ \u65b0\u95fb\u6570\u636e\u96c6\uff0c\u83b7\u5f97\u4e86 Intel \u56fd\u9645\u79d1\u5b66\u4e0e\u5de5\u7a0b\u535a\u89c8\u4f1a (ISEF) \u7b2c 4 \u540d\u3002<\/li>\n        <li>\u4ed6\u8fd8\u5f00\u53d1\u4e86 <strong>COVID-19 \u95ee\u7b54\u7cfb\u7edf<\/strong>\uff0c\u8be5\u7814\u7a76\u88ab\u9080\u8bf7\u5728\u9876\u5c16\u8ba1\u7b97\u8bed\u8a00\u5b66\u5927\u4f1a ACL \u4e0a\u6f14\u8bb2\u3002<\/li>\n        <li>\u4f5c\u4e3a\u535a\u4e3b\uff0c\u4ed6\u64b0\u5199\u4e86 20+ \u7bc7\u8bed\u8a00\u5b66\u548c\u673a\u5668\u5b66\u4e60\u7684\u535a\u6587\uff0c\u603b\u9605\u8bfb\u91cf\u8fbe <strong>150,000<\/strong>\uff0c\u5e76\u83b7\u5f97\u4e86 &#8220;AI \u9876\u7ea7\u535a\u4e3b&#8221; \u7684\u8363\u8a89\u79f0\u53f7\u3002<\/li>\n        <li>\u62c5\u4efb\u673a\u5668\u5b66\u4e60\u4ff1\u4e50\u90e8\u4e3b\u5e2d\uff0c\u4ed6\u7ec4\u7ec7\u548c\u9886\u5bfc\u4e86\u5173\u4e8e\u4eba\u5de5\u667a\u80fd\u5728\u533b\u7597\u5065\u5eb7\u4e0e\u6570\u636e\u5b89\u5168\u9886\u57df\u5e94\u7528\u7684\u8ba8\u8bba\u3002<\/li>\n    <\/ul>\n\n    <h3>4. \u5c06\u5b66\u672f\u4e0e\u73b0\u5b9e\u793e\u4f1a\u95ee\u9898\u7d27\u5bc6\u7ed3\u5408<\/h3>\n    <p>\u6770\u745e\u5c06\u8bed\u8a00\u5b66\u548c\u8ba1\u7b97\u673a\u79d1\u5b66\u7684\u5b66\u672f\u7814\u7a76\u4e0e\u73b0\u5b9e\u793e\u4f1a\u95ee\u9898\u7d27\u5bc6\u7ed3\u5408\uff0c\u7279\u522b\u662f\u5728\u51cf\u5c11\u4eba\u5de5\u667a\u80fd\u7b97\u6cd5\u504f\u89c1\u548c\u89e3\u51b3\u793e\u4f1a\u4e0d\u516c\u5e73\u65b9\u9762\u3002\u4ed6\u5728\u8bba\u6587\u548c\u77ed\u56de\u7b54\u4e2d\u63d0\u5230\u8fc7\uff0c\u4ed6\u81f4\u529b\u4e8e\u901a\u8fc7 AI \u6280\u672f\u63a8\u52a8\u793e\u4f1a\u516c\u5e73\u53d1\u5c55\uff0c\u8fd9\u4e0e\u65af\u5766\u798f\u6ce8\u91cd\u793e\u4f1a\u9053\u5fb7\u548c\u8d23\u4efb\u7684\u4ef7\u503c\u89c2\u5b8c\u7f8e\u5951\u5408\u3002<\/p>\n\n    <h3>5. \u5f3a\u5927\u7684\u4e2a\u4eba\u6545\u4e8b\u4e0e\u96be\u5fd8\u7684\u4f5c\u6587<\/h3>\n    <p>\u4ed6\u7684\u7533\u8bf7\u4f5c\u6587\u5c06\u5b66\u672f\u6df1\u5ea6\u4e0e\u4eba\u683c\u9b45\u529b\u5de7\u5999\u7ed3\u5408\u3002\u4ed6\u7684\u4e3b\u6587\u4e66\u4ee5\u4e54\u6cbb\u00b7\u5965\u5a01\u5c14\u7684\u300a1984\u300b\u4e3a\u5f15\u5165\u70b9\uff0c\u63a2\u8ba8\u4e86\u8bed\u8a00\u4e0e\u8ba1\u7b97\u673a\u79d1\u5b66\u7684\u4ea4\u96c6\uff0c\u540c\u65f6\u5c55\u793a\u4e86\u4ed6\u5bf9\u793e\u4f1a\u8bae\u9898\u7684\u6d1e\u5bdf\u529b\u3002\u800c\u4ed6\u7684\u201c\u5ba4\u53cb\u4fe1\u201d\u5219\u4ece\u8f7b\u677e\u5e7d\u9ed8\u7684\u89d2\u5ea6\u5c55\u73b0\u4e86\u4ed6\u7684\u591a\u9762\u6027\uff0c\u4f8b\u5982\u4ed6\u5bf9\u8bed\u97f3\u5b66\u3001\u8ba1\u7b97\u673a\u79d1\u5b66\u7684\u70ed\u60c5\u548c\u529b\u91cf\u4e3e\u91cd\u7684\u5174\u8da3\u3002<\/p>\n\n    <h3>6. \u575a\u97e7\u7684\u6bc5\u529b\u4e0e\u9886\u5bfc\u529b<\/h3>\n    <p>\u4ed6\u901a\u8fc7\u62c5\u4efb\u673a\u5668\u5b66\u4e60\u4ff1\u4e50\u90e8\u4e3b\u5e2d\u548c\u6a21\u62df\u8054\u5408\u56fd\u526f\u4e3b\u5e2d\u4f53\u73b0\u4e86\u6770\u51fa\u7684\u9886\u5bfc\u80fd\u529b\u3002\u6770\u745e\u7684\u52aa\u529b\u4e0d\u4ec5\u5f71\u54cd\u4e86\u81ea\u5df1\uff0c\u4e5f\u6269\u5c55\u5230\u4e86\u8eab\u8fb9\u7684\u540c\u5b66\u3002\u4f8b\u5982\uff0c\u4ed6\u5c06\u4ff1\u4e50\u90e8\u53c2\u4e0e\u4f1a\u8bae\u7684\u9891\u7387\u4ece 1 \u6b21\u589e\u52a0\u5230 5 \u6b21\n\n<\/body>\n<\/html>\n\n","protected":false},"excerpt":{"rendered":"<p>\u6770\u745e\u00b7\u97e6\u7684\u65af\u5766\u798f\u5f55\u53d6\u7533\u8bf7\u6848\u4f8b | \u6df1\u5ea6\u89e3\u6790 \u6770\u745e\u00b7\u97e6\u7684\u65af\u5766\u798f\u5f55\u53d6\u7533\u8bf7\u6848\u4f8b | \u6df1\u5ea6\u89e3\u6790 \u65af\u5766\u798f\u5927\u5b66\u7684\u5f55\u53d6\u4e00\u76f4\u4ee5\u5176\u4e25\u82db\u7684\u6807\u51c6\u548c\u4f4e\u5f55\u53d6\u7387\u95fb\u540d\u3002\u6bcf\u5e74\uff0c\u6210\u5343\u4e0a\u4e07\u7684\u5168\u7403\u7533\u8bf7\u8005\u4e89\u593a\u6709\u9650\u5e2d\u4f4d\u3002\u5728\u672c\u6848\u4f8b\u4e2d\uff0c\u6211\u4eec\u5c06\u6df1\u5165\u89e3\u6790\u6770\u745e\u00b7\u97e6\u7684\u5b8c\u6574\u7533\u8bf7\u6750\u6599\uff0c\u5305\u62ec\u4ed6\u7cbe\u5f69\u7684\u4e2a\u4eba\u8bba\u6587\u3001\u8bfe\u5916\u6d3b\u52a8\u4ee5\u53ca\u77ed\u56de\u7b54\u5185\u5bb9\uff0c\u540c\u65f6\u5c55\u793a\u65af\u5766\u798f\u62db\u751f\u5b98\u9488\u5bf9\u4ed6\u7684\u8bc4\u4ef7\u4e0e\u5f55\u53d6\u51b3\u7b56\u3002 \u62db\u751f\u5b98\u8bc4\u4ef7\u4e0e\u6587\u4ef6\u7b80\u4ecb \u201c\u6770\u745e\u5c55\u73b0\u4e86\u5f3a\u70c8\u7684\u5b66\u672f\u52a8\u529b\u548c\u5bf9\u8ba1\u7b97\u8bed\u8a00\u5b66\u7684\u6df1\u539a\u5174\u8da3\u3002\u4ed6\u7684\u7533\u8bf7\u4f53\u73b0\u4e86\u6781\u9ad8\u7684\u77e5\u8bc6\u6d3b\u529b\uff08Intellectual Vitality\uff09\u548c\u521b\u65b0\u6027\uff0c\u5c24\u5176\u662f\u5728\u8bed\u8a00\u5b66\u548c\u673a\u5668\u5b66\u4e60\u9886\u57df\u3002\u4ed6\u662f\u672c\u5e74\u5ea6\u9650\u5236\u6027\u65e9\u7533\u8bf7\uff08REA\uff09\u6c60\u4e2d\u7684\u6700\u597d\u4e4b\u4e00\u3002\u201d \u5b8c\u6574\u7533\u8bf7\u8868\u4fe1\u606f\u53ca\u6210\u7ee9 \u6559\u80b2\u80cc\u666f School: Oakton High School, Vienna, VA GPA: 4.826 \/ 4.0 (\u52a0\u6743) Graduation Date: June 2021 Additional College Course: Northern Virginia Community College (09\/2019 &#8211; 06\/2020) Completed college-level advanced math courses. \u6d4b\u8bd5\u6210\u7ee9 SAT: Total 1560 &#8211; Evidence-based Reading and Writing: 770 &#8211; Math: 790 [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":343,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"site-container-style":"default","site-container-layout":"default","site-sidebar-layout":"default","disable-article-header":"default","disable-site-header":"default","disable-site-footer":"default","disable-content-area-spacing":"default","footnotes":""},"categories":[6],"tags":[],"class_list":["post-342","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-blog"],"_links":{"self":[{"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/posts\/342","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/comments?post=342"}],"version-history":[{"count":1,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/posts\/342\/revisions"}],"predecessor-version":[{"id":344,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/posts\/342\/revisions\/344"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/media\/343"}],"wp:attachment":[{"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/media?parent=342"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/categories?post=342"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/thespear.org\/blog\/wp-json\/wp\/v2\/tags?post=342"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}