Dear friends,
Last week, DeepLearning.AI invited a group of learners to our Palo Alto office’s courtyard. We had a good time chatting about paths into AI, career trajectories, applications people were working on, and challenges they were facing. You can see the group below.
A few people mentioned the challenge of persuading others to try a machine learning solution. Even at leading tech companies, it’s not uncommon for someone to say, “Yes, machine learning may work well for other applications, but for what we’re doing, non-learning software works fine.”
Still, machine learning might work better. If you believe that a learning algorithm can help optimize server allocations, improve product recommendations, or automate some part of a business process, how can you push your idea forward? Here are some tips that have worked for me:
Throughout this process, be open to learning that your idea isn’t sound after all or that it might need to change before it can be successful. I would guess that almost every successful AI application you read about in The Batch required someone to persuade others to give machine learning a shot.
Don’t let the skeptics shut you down. Don’t give up, keep pushing, and . . .
Keep learning! Andrew
NewsClues to the Secret Identity of Q
Machine learning algorithms may have unmasked the authors behind a sprawling conspiracy theory that has had a wide-ranging impact on U.S. politics. What’s new: Two research teams analyzed social media posts to identify Q, the anonymous figure at the center of a U.S. right-wing political movement called QAnon, The New York Times reported. Inspired by Q’s claims that U.S. society is run by a Satanic cabal, QAnon members have committed acts of violence. Some U.S. politicians have expressed support for the movement. CommuniQués: Q posted over three years starting on the website 4chan in October 2017 before migrating later that year to 8chan, which later shut down and relaunched as 8kun. Q stopped posting in December 2020. Elements of style: Swiss text-analysis firm OrphAnalytics clustered Q’s posts to track changes in authorship over time.
Meet the authors: Florian Cafiero and Jean-Baptiste Camps at École Nationale des Chartes built support vector machines (SVMs) to classify various authors as Q or not Q.
Yes, but: Both Furber and Watkins denied writing as Q to The New York Times. Why it matters: QAnon’s claims have been debunked by numerous fact-checkers, yet a 2022 survey found that roughly one in five Americans agreed with at least some of them. The movement’s appeal rests partly on the belief that Q is an anonymous government operative with a high-level security clearance. Evidence that Q is a pair of internet-savvy civilians may steer believers toward more credible sources of information. We’re thinking: Machine learning offers an evidence-based way to combat disinformation. To be credible, though, methods must be openly shared and subject to scrutiny. Kudos to these researchers for explaining their work.
Colleague in the MachineYour next coworker may be an algorithmic teammate with a virtual face. What’s new: WorkFusion unveiled a line of AI tools that automate daily business tasks. One thing that sets them apart is the marketing pitch: Each has a fictitious persona including a name, face (and accompanying live-action video), and professional résumé. How it works: WorkFusion offers a cadre of six systems it touts as virtual teammates. Each is dedicated to a role such as customer service coordinator and performs rote tasks such as entering data or extracting information from documents. At this point, their personas are superficial — they don’t affect a system’s operation, just the way it’s presented to potential customers.
Behind the news: WorkFusion’s virtual teammates are examples of robotic process automation (RPA), which automates office work by interacting with documents like spreadsheets and email. The RPA market is expected to grow 25 percent annually, reaching $7.5 billion by 2028.
Yes, but: Giving AI systems a persona raises the questions why a particular role was assigned to a particular sort of person and whether that persona reinforces undesirable social stereotypes. For instance, a 2019 United Nations report criticized voice assistants such as Amazon’s Alexa for using female voices as a default setting. Why it matters: People already anthropomorphize cars, guitars, and Roombas. Wherever people and AI work together closely, it may make sense to humanize the technology with a name and face, a practice that’s already common in the chatbot biz. Just watch out for the uncanny valley — a creepy realm populated by unsettling, nearly-but-not-quite-human avatars. We’re thinking: These virtual teammates are no match for HAL 9000, but we hope they’ll open the pod bay doors when you ask them to.
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The Global Landscape of AI PowerChina is poised to become the dominant national power in AI, new research suggests. What they found: The analysts examined each country according to 10 data points including total processing power, number of top supercomputers, private and public investments in AI, and volumes of research publications and patent filings.
Behind the news: The new report adds to Brookings’ growing body of research into national AI postures. Last November, the organization concluded that Singapore, India, and Germany ranked highest in terms of AI talent due to high numbers of STEM graduates and tech workers already in the market. The previous month, it ranked the efforts of 44 nations to fulfill their AI aspirations, giving high marks to China, Germany, and India. Why it matters: AI is an emerging arena for geopolitical competition. Understanding the global distribution of AI development and investment can help leaders make appropriate decisions and aspiring AI practitioners find sources of knowledge and employment. We’re thinking: Many observers frame global competition in AI as a winner-take-all tournament. We believe there are great opportunities for international collaboration that would lift everyone.
Weather Forecast by GANA new deep learning technique increased the precision of short-term rainfall forecasts. What's new: Suman Ravuri, Karel Lenc, Matthew Willson, and colleagues at DeepMind, UK Meteorological Office, University of Exeter, and University of Reading developed the Deep Generative Model of Radar (DGMR) to predict amounts of precipitation up to two hours in advance. Key insight: State-of-the-art precipitation simulations struggle with short time scales and small distance scales. A generative adversarial network (GAN) can rapidly generate sequences of realistic images. Why not weather maps? A conditional GAN, which conditions its output on a specific input — say, previous weather history — could produce precipitation maps of future rainfall in short order. How it works: Given a random input, a GAN learns to produce realistic output through competition between a discriminator that judges whether output is synthetic or real and a generator that aims to fool the discriminator. A conditional GAN works the same way but adds an input that conditions both the generator’s output and the discriminator’s judgment. The authors trained a conditional GAN, given radar images of cloud cover, to generate a series of precipitation maps that represent future rainfall.
Results: The authors tested their approach at multiple time intervals and distance scales according to the continuous ranked probability score, a modified version of mean average error in which lower is better. Its output was on par with or slightly more accurate than that of the next-best competitor, Pysteps. Of 56 meteorologists who compared the generated and ground-truth precipitation maps, roughly 90 percent found that the authors’ predictions had higher “accuracy and value” than the Pysteps output with respect to medium and heavy rain events. Why it matters: GANs can produce realistic images whether they’re cat photos or precipitation maps. A conditional GAN can turn that capability into a window on the future. Moreover, by averaging multiple attempts by the conditional GAN, it’s possible to compute the certainty of a given outcome. We're thinking: Predicting the weather isn’t just hard, it’s variably hard — it’s far harder at certain times than at others. An ensemble approach like this can help to figure out whether the atmosphere is in a more- or less-predictable state.
Work With Andrew Ng
Frontend Desktop Application Engineer (Latin America): Landing AI seeks software development engineers to build scalable AI applications and deliver optimized inference software. Requirements include experience with JavaScript and open-source frameworks like React as well as cross-platform applications. Apply here
Data Analysts (Latin America): Factored seeks expert data analysts to analyze datasets for insights using descriptive modeling. Excellent English skills and a strong background in Python or R coding is required. Apply here
Data Engineer (Latin America): Factored is looking for top data engineers with experience with data structures and algorithms, operating systems, computer networks, and object-oriented programming. Experience with Python and excellent English skills are required. Apply here
Senior Technical Program Manager: Landing AI seeks a program manager to bridge its team and business partners while executing its engineering programs. The ideal candidate has a strong background in customer relationship management and two years in a technical role. Apply here
Software Development Engineer (Latin America): Landing AI is looking for a software engineer with experience in best practices and proficiency in programming languages, as well as experience with end-to-end product development. In this role, you will help to design and develop infrastructure for machine learning services and deliver high-quality AI products to our clients. Apply here
Machine Learning Engineer: Workera is looking for an engineer to shape its product and create strategic advantages. You will build an intelligence layer critical to the value Workera offers its customers. Apply here
Data Scientist: Workera is looking for a data scientist to create unique value for users and enterprise clients. You will improve the company’s assessment capability, generate personalized learning plans, index content, and build other valuable applications. Apply here
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