У нас вы можете посмотреть бесплатно Learn Advanced SQL Smartly - How to Calculate Running Total? - Window Functions | Leetcode 534 или скачать в максимальном доступном качестве, видео которое было загружено на ютуб. Для загрузки выберите вариант из формы ниже:
Если кнопки скачивания не
загрузились
НАЖМИТЕ ЗДЕСЬ или обновите страницу
Если возникают проблемы со скачиванием видео, пожалуйста напишите в поддержку по адресу внизу
страницы.
Спасибо за использование сервиса ClipSaver.ru
Welcome to this episode of our groundbreaking series designed to take your SQL skills to the next level! In this series, we're tackling 50 of the most challenging and insightful interview questions on #advanced SQL, aimed at transforming you from an intermediate user to a bona fide #sql expert. Whether you're preparing for a job #interview , seeking to enhance your data manipulation capabilities, or simply passionate about mastering the complexities of SQL, this series is your ultimate roadmap. Calculate Running Totals Using JOINS: • Learn this TRICK Calculate Running Total W... SQL 50 Playlist: • SQL 50 Question: https://leetcode.com/problems/game-pl... SQL Schema: Create table If Not Exists Activity (player_id int, device_id int, event_date date, games_played int) Truncate table Activity insert into Activity (player_id, device_id, event_date, games_played) values ('1', '2', '2016-03-01', '5') insert into Activity (player_id, device_id, event_date, games_played) values ('1', '2', '2016-05-02', '6') insert into Activity (player_id, device_id, event_date, games_played) values ('1', '3', '2017-06-25', '1') insert into Activity (player_id, device_id, event_date, games_played) values ('3', '1', '2016-03-02', '0') insert into Activity (player_id, device_id, event_date, games_played) values ('3', '4', '2018-07-03', '5') Pandas Schema: data = [[1, 2, '2016-03-01', 5], [1, 2, '2016-05-02', 6], [1, 3, '2017-06-25', 1], [3, 1, '2016-03-02', 0], [3, 4, '2018-07-03', 5]] activity = pd.DataFrame(data, columns=['player_id', 'device_id', 'event_date', 'games_played']).astype({'player_id':'Int64', 'device_id':'Int64', 'event_date':'datetime64[ns]', 'games_played':'Int64'}) What to Expect: Detailed Explanations: We don't just solve the question; we dissect it. You'll understand not only the 'how' but also the 'why' behind each solution, ensuring you can apply these principles to a variety of SQL challenges. Step-by-Step Approach: Our tutorials are designed to be easy to follow. Real-World Applications: These aren't just theoretical exercises. Each question is selected for its relevance to real-world SQL problems, ensuring you gain practical skills that you can apply in a professional setting. Why This Series? SQL remains one of the most in-demand skills in the tech industry, and for a good reason. It's the backbone of data analysis, database management, and many forms of programming. As data continues to drive decision-making in businesses worldwide, the ability to manipulate and retrieve data efficiently becomes increasingly valuable. This series is designed to equip you with these skills, ensuring you're not just ready for your next job interview but also prepared to tackle real-world data challenges. Who Should Watch? Intermediate SQL users looking to advance their skills. Job seekers preparing for technical interviews. Data professionals seeking to deepen their understanding of SQL. Anyone with a passion for data and an eagerness to learn.