Code in Place 2025 is a free, 6-week online Python course from Stanford University, running April 21 to May 31, 2025. Based on Stanford’s CS106A, it teaches beginners core concepts like loops, variables, and control flow through lectures, assignments, and live sections (1:10 student-to-teacher ratio). No prior experience needed—just 7+ hours/week, a computer, and internet. Features include Spanish lectures, code-style feedback, and a sharable Stanford-hosted portfolio. Join 30,000+ learners and 3,000+ volunteer mentors worldwide, with 24/7 peer support via forums. In 2023, over 77,000 registered, so apply fast! You can also teach as a section leader (requires Python basics up to lists/dictionaries; training provided). Learner deadline: April 9, 2025, at 11:59 PM—only 5 days left! Past experiments like pair-programming have boosted learning outcomes, making this a transformative experience.
Location : Online, Global
Categories : Computer Science
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