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Apple Machine Learning Journal VS Data Science from Scratch

Compare Apple Machine Learning Journal VS Data Science from Scratch and see what are their differences

Apple Machine Learning Journal logo Apple Machine Learning Journal

A blog written by Apple engineers

Data Science from Scratch logo Data Science from Scratch

Data Science and Python, starting at zero
  • Apple Machine Learning Journal Landing page
    Landing page //
    2022-12-13
  • Data Science from Scratch Landing page
    Landing page //
    2019-07-07

Apple Machine Learning Journal features and specs

  • Expert Insight
    The journal provides in-depth insights from Apple's own machine learning experts, offering unique and valuable perspectives on the latest research and applications in the field.
  • Practical Applications
    The content often focuses on real-world applications and implementations of machine learning within Apple's ecosystem, making it highly relevant for practitioners.
  • High-Quality Content
    The articles in the journal are meticulously reviewed and curated, ensuring high-quality and reliable information.
  • Cutting-Edge Research
    Readers get early access to cutting-edge research and innovations directly from Apple's R&D teams.
  • Free Access
    The journal is freely accessible to the public, removing barriers for anyone interested in learning from industry leaders.

Possible disadvantages of Apple Machine Learning Journal

  • Apple-Centric
    The focus is predominantly on Apple's ecosystem, which may limit the applicability of some insights and solutions for those working with other platforms.
  • Infrequent Updates
    The journal does not publish new content as frequently as some other machine learning blogs or journals, potentially limiting its usefulness for staying up-to-date with the latest in the field.
  • Technical Depth
    While the technical rigor is generally high, this can make the content less accessible to beginners or those without a strong background in machine learning.
  • Limited Interactivity
    The journal primarily provides static articles and lacks interactive elements or community features such as forums or comment sections for reader engagement.
  • Bias Towards Proprietary Solutions
    The solutions and approaches advocated often align closely with Apple's proprietary technologies, which may not always be applicable or optimal for all contexts and use cases.

Data Science from Scratch features and specs

  • Hands-On Learning
    The book encourages a practical approach to learning data science by implementing algorithms and concepts from scratch, helping readers understand the underlying mechanics.
  • Comprehensive Coverage
    It covers a wide range of fundamental topics in data science such as statistics, data visualization, linear algebra, and machine learning, providing a solid foundation.
  • Python-Based
    Since the book is centered around Python, a popular programming language in data science, it is accessible to a large audience already familiar with Python.
  • Developer-Friendly
    The content is ideal for developers looking to transition into data science, as it focuses on programming and algorithmic aspects of data science.

Possible disadvantages of Data Science from Scratch

  • Steep Learning Curve
    Beginners may find the approach challenging if they do not have prior programming experience in Python or understanding of mathematical concepts.
  • Lack of Real-World Applications
    The focus on building from scratch may lack the practical application perspective and real-world examples that some learners might seek.
  • Outdated Information
    As data science is a rapidly evolving field, some methodologies, tools, or libraries discussed might be outdated or less common in the industry today.
  • Less Emphasis on Tools
    The book emphasizes building concepts from scratch over familiarizing readers with powerful existing data science libraries and tools like TensorFlow or PyTorch.

Apple Machine Learning Journal videos

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Data Science from Scratch videos

Data Science from Scratch by Joel Grus: Review | Learn python, data science and machine learning

More videos:

  • Review - Data Science Full Course 2020 | Data Science For Beginners | Data Science from Scratch | Simplilearn

Category Popularity

0-100% (relative to Apple Machine Learning Journal and Data Science from Scratch)
AI
88 88%
12% 12
Developer Tools
100 100%
0% 0
Data Science And Machine Learning
Reporting & Dashboard
0 0%
100% 100

User comments

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Social recommendations and mentions

Based on our record, Apple Machine Learning Journal seems to be more popular. It has been mentiond 7 times since March 2021. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.

Apple Machine Learning Journal mentions (7)

  • Apple Intelligence Foundation Language Models
    Https://machinelearning.apple.com Fun fact: Their first paper, Improving the Realism of Synthetic Images (2017; https://machinelearning.apple.com/research/gan), strongly hints at eye and hand tracking for the Apple Vision Pro released 5 years later. - Source: Hacker News / 9 months ago
  • Does anyone else suspect that the official iOS ChatGPT app might be conducting some local inference / edge-computing? [Discussion]
    For your reference, Apple's pages for Machine Learning for Developers and for their research. The Apple Neural Engine was custom designed to work better with their proprietary machine learning programs -- and they've been opening up access to developers by extending support / compatibility for TensorFlow and PyTorch. They've also got CoreML, CreateML, and various APIs they are making to allow more use of their... Source: almost 2 years ago
  • Which papers should I implement or which Projects should I do to get an entry level job as a Computer vision engineer at MAANG ?
    We even host annual poster sessions of those PhD intern’s work while at our company, and it’ll give you an idea of the caliber of work. It may not be as great as Nvidia, Stryker, Waymo, or Tesla (which are not part of MAANG but I believe are far more ahead in CV), but it’s worth of considering. Source: about 2 years ago
  • Apple’s secrecy created engineer burnout
    They have something for ML: https://machinelearning.apple.com. - Source: Hacker News / about 3 years ago
  • [D] Is anyone working on open-sourcing Dall-E 2?
    They're more subtle about it, I think. https://machinelearning.apple.com/ Some of the papers are pretty good. I don't disagree with your sentiment in aggregate, though. Source: about 3 years ago
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Data Science from Scratch mentions (0)

We have not tracked any mentions of Data Science from Scratch yet. Tracking of Data Science from Scratch recommendations started around Mar 2021.

What are some alternatives?

When comparing Apple Machine Learning Journal and Data Science from Scratch, you can also consider the following products

Amazon Machine Learning - Machine learning made easy for developers of any skill level

Gyana - Intuitive easy-to-use report and dashboard tool to stop wasting time on repetitive and tedious tasks.

Machine Learning Playground - Breathtaking visuals for learning ML techniques.

Deepnote - A collaboration platform for data scientists

Lobe - Visual tool for building custom deep learning models

Amie - GitHub for research and data science