As a female software engineer, I am counted in most statistics and involved in many diversity initiatives. I’ve been to Grace Hopper for the last 5 years, including giving a tech talk last year on web performance. I was a mentor for Women Who Code, teaching algorithms and weekly to women entering the tech industry. I am literally on even though I have no idea how I got added in the first place. diversity coding this list of women engineers Here’s a surprise for you: I am not that diverse. What I mean by that is, in most regards, despite being a part of many diversity statistics, I’m not bringing in the diverse perspective that is . so critical to the success of any company Let me explain. To start, I was born in an upper middle class household. My family was not without its occasional financial problems. But for the most part, we were comfortable. I was afforded the opportunities to travel, to purchase whatever books I wanted, to buy that absurdly expensive TI-84 calculator for high school math classes. Education has always been a top priority in my family. My birth parents are both first-generation college graduates. My stepfather has a PhD in Mechanical Engineering. After I moved to the US, my parents drove me 30 minutes everyday to a better public high school 5 towns away. When I was applying to colleges, they took out whatever loans necessary for me to attend the best college I could. I was fortunate enough to be accepted into MIT. Did it take a lot of hard work to get there? Absolutely. But anyone familiar with the college admissions process will tell you that entry to top schools has a significant amount of luck involved. Because of MIT, I had a huge leg up when I was looking for jobs. Every fall, hundreds of tech companies attend the MIT Career Fair to recruit students. I got a summer internship after my freshman year with only one intro CS class under my belt. I’ve bombed many first round algorithms phone screens, but at least I was offered the opportunity to attempt these interviews until I got much better at them. After college, I moved to San Francisco with a large group of friends — my entire social circle in college, plus friends I met during internships in the Bay Area. Even now, my friends and I frequently talk about our respective learnings from work. I have also been fortunate to work at phenomenal companies like where diversity and inclusion are recognized and championed by everyone, from the founders to new hires. Plaid I am a citizen of the United States of America. The constantly changing US immigration policies don’t meaningfully impact me or my family when I’m planning for my career. I’m Asian. In a world where Asians are considered , people make assumptions even before they meet me based on my last name alone. a model minority I speak fluent English with minimal accent, despite having spent 15 years in China. Here in the US, we tend to . assume people who speak English fluently to somehow be more intelligent than those who don’t I am a young, straight, cis woman. I have liberal beliefs that mostly align with the Silicon Valley majority. I am an extroverted introvert. I’m comfortable speaking up in meetings and commenting on design docs and making my opinions heard. I don’t back down from a heated conversation. I drink. Not excessively, but the fact that I’m okay with alcohol consumption opens up a lot of doors socially and makes it easier for me to fit into new social environments. I don’t have physical or mental disabilities. All this is not to downplay the very real challenges that I and other female engineers face. do People often by default. assume that we work in non-technical roles The show that we have to try harder to get paid the same as a man would. statistics Every day, we have to walk between being “aggressive” and being “not assertive enough.” a narrow path We have fewer role models and the deeper down the technical stack we go. the higher up we look Even for those of us who’ve successfully made it into the tech industry, there’s . a higher likelihood of us leaving it That being said, I hope my story convinces you that in many aspects of the tech life, . I am in the majority even though according to current diversity statistics, most of which based on gender or ethnicity, I would be considered . I am in the majority diversity There is undoubtedly value in these diversity statistics. They force us to honestly examine our biases — conscious and unconscious — especially when it comes to gender or ethnicity. However, these numbers should be treated as heuristics, not the be all and end all. There are many kinds of diversity that exist that are difficult to quantify and measure, such as age, socioeconomic status, family upbringing, political belief, religious belief, gender identity, personality traits, … the list goes on. Otherwise, we run the risk of optimizing for the perception of diversity at the cost of actual diversity itself. To truly embrace diversity, we need to go above and beyond just ethnicity and gender statistics, looking at our differences in other dimensions as well. Here are some examples of things we can do to build a diverse and inclusive work environment. This is by no means an exhaustive list, but a good place to start nonetheless: Have an open mind when evaluating a resume from someone that didn’t go to one of the top few CS schools. Hire the best lawyers to help clear any potential immigration hurdles for our fellow employees. Create an environment where everyone’s opinions are heard. Encourage people to share their thoughts, instead of whoever speaks the loudest gets their way in product or technical decisions. Be respectful of people’s pronoun choices. Ask before assuming. Host social events that people with families can attend and people who prefer to not drink alcohol can enjoy. There are a hundred other things, big and small, that we can do to make people feel like they are valued. The point is, diversity is more than the simple division statistics you see. It’s everything that goes into creating a welcoming environment for everyone around us. Diversity is intangible and complex. It doesn’t end with simple statistics, it begins there. If you like this post, follow me on Twitter for more content on engineering, processes, backend systems, and diversity. Thanks to Ayesha Bose , Joy Zheng , Julianna Lamb , and Sashko Stubailo for their feedback on this post.