Proof Download (The cohort is on going, it will be updated week by week. Thank you for the patience.)
WHAT WILL YOU GET!
What the course is
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It’s a cohort‑based live course offered via ByteByteGo, in collaboration with author Ali Aminian.
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The course emphasizes learn‑by‑doing: you build real‑world AI applications rather than just passively watching videos.
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It has a structured curriculum, designed to take people step by step from fundamentals to more advanced AI engineering topics.
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Includes live feedback and mentorship from instructors / peers.
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Strong community component: cohort learning, peer interaction.
What is appealing / advantages
Here are the strong points I see:
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Hands‑on approach
Builds actual projects, gives you experience with applying what you learn. That tends to help a lot with learning retention and being able to do work after the course. -
Structure + guided path
For many people, having a clear roadmap (fundamentals → advanced) helps avoid overwhelm and keeps progress steady. -
Mentorship and feedback
Getting live feedback / mentorship is often what separates a useful course from one where you learn a lot of theory but struggle to apply it. -
Peer/community component
Learning in a cohort with peers can be motivating; you can get help, see others’ work, collaborate, etc. -
Up to date / designed for current practices
ByteByteGo tends to aim for modern tools and methods, so likely you’ll get exposure to current practices in AI engineering. (Though the syllabus details beyond “fundamentals → advanced” aren’t fully public, based on what I saw so far.)
What to check carefully / possible downsides
No course is perfect; here are things to verify or be aware of:
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Prerequisites / background required
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How much coding / math background is expected? If you’re starting from scratch, how well will you be supported?
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Sometimes “learn‑by‑doing” courses assume you already know certain basics; if not, you may struggle or have to spend extra time catching up.
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Depth vs breadth
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Given it’s a cohort and live, there may be trade‑offs. Will the course go deep enough in all topics, or is it more shallow across many topics?
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The course promises going “from fundamentals to advanced,” but “advanced” means different things to different people.
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Timeline / pacing
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How fast is the cohort moving? Will there be enough time to digest, practice, debug, etc.?
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Do you get starter code / notebooks, or is more of the work expected to be from scratch? (Some in the comments asked about that.)
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Support beyond the live sessions
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Office hours? One‑on‑one help? Peer review? How responsive is the mentorship?
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How much access to instructors is included, and what is the ratio of students to instructors / mentors?
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What deliverables / portfolio work
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Do you finish the course with things you can show: apps, systems, code repos, possibly deployed models?
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Employers care about tangible projects you can demonstrate. If the course doesn’t deliver that, you’ll have to do extra work.
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Cost vs value
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What is the tuition / investment? Is the cost justified given what you will get (projects, mentorship, tools)?
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Consider also your time: live sessions require scheduling, and there’s self‑paced work, debugging, etc.
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Updates / relevance
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AI tools and frameworks evolve quickly. Is the course content likely to stay relevant?
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Do they incorporate recent developments (e.g. generative models, LLM pipelines, deployment, safety, ethics, etc.)?
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See More: Marcus Anderson – Deal Machine
Ali Aminian – Learn by Doing. Become an AI Engineer
Name of course: Ali Aminian – Learn by Doing. Become an AI Engineer
Delivery Method: Instant Download (Mega)
Contact for more details: isco.coursebetter@gmail.com





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