⏱ 39 mnt
📚 11 pelajaran
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Tentang kursus ini
How do autonomous systems, robotics, and game-playing agents learn to make optimal decisions in dynamic environments? Reinforcement learning provides the mathematical and algorithmic framework to train systems through trial and error. This text-based course guides you from the fundamental concepts of agent-environment interaction to implementing core reinforcement learning algorithms. You will build a solid theoretical foundation and learn how to formulate real-world engineering problems as reinforcement learning tasks.
What you'll learn:
- Understand the core terminology of reinforcement learning, including states, actions, rewards, and policies.
- Formulate decision-making problems using Markov Decision Processes (MDPs).
- Implement classic tabular methods such as Q-learning and SARSA.
- Explore deep reinforcement learning architectures, including Deep Q-Networks (DQN).
- Apply reward shaping techniques to guide agent learning effectively.
- Discover how reinforcement learning principles are applied to modern AI systems, including alignment techniques like RLHF.
The course begins with foundational definitions and the mathematics of decision-making before progressing to policy optimization and deep learning integrations. You will read clear explanations alongside structured code snippets designed to solidify your understanding. This course is designed for engineers, software developers, and aspiring AI practitioners who are new to reinforcement learning. Basic familiarity with Python and elementary probability is helpful, but no prior machine learning experience is required. Start reading today to unlock the potential of autonomous decision-making systems.
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Apa yang saya butuhkan untuk mengikuti kursus ini?
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Cukup ponsel atau komputer dengan internet. Tidak ada instalasi atau perangkat khusus.
Bagaimana cara membayar?
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Dengan kartu via Stripe, atau kripto. Kami tidak menyimpan detail kartu — Stripe menanganinya dengan aman.
Bisakah saya mendapat refund?
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Ya — refund penuh dalam 30 hari, tanpa pertanyaan.
Berapa lama saya akan punya akses?
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Selamanya. Setelah membeli, kursus jadi milik Anda untuk dikunjungi lagi kapan saja.
Apakah saya akan mendapat sertifikat?
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Ya. Setelah selesai, Anda akan menerima sertifikat yang bisa ditambahkan ke profil LinkedIn.
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