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Artificial Intelligence with Machine Learning, Deep Learning

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Oak Academy,OAK Academy Team

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  • 1 - Installing Anaconda Distribution for Windows.mp4
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  • 2 - Notebook Project Files Link regarding NumPy Python Programming Language Library.html
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  • 4 - 6 Article Advice And Links about Numpy Numpy Pyhon.html
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  • 6 - Introduction to NumPy Library.mp4
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  • 7 - The Power of NumPy.mp4
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  • 70 - Joining Pandas Dataframes Join Function.mp4
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  • 71 - Loading a Dataset from the Seaborn Library.mp4
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  • 72 - Examining the Data Set 1.mp4
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  • 73 - Aggregation Functions in Pandas DataFrames.mp4
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  • 75 - Coordinated Use of Grouping and Aggregation Functions in Pandas Dataframes.mp4
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  • 76 - Advanced Aggregation Functions Aggregate Function.mp4
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  • 80 - Examining the Data Set 3.mp4
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  • 81 - Pivot Tables in Pandas Library.mp4
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  • 87 - What is Machine Learning.mp4
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  • 88 - Machine Learning Terminology.mp4
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  • 89 - Project Files Link.html
  • 90 - Classification vs Regression in Machine Learning.mp4
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  • 91 - Machine Learning Model Performance Evaluation Classification Error Metrics.mp4
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  • 92 - Evaluating Performance Regression Error Metrics in Python.mp4
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  • 93 - Machine Learning With Python.mp4
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  • 94 - What is Supervised Learning in Machine Learning.mp4
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  • 95 - Linear Regression Algorithm Theory in Machine Learning AZ.mp4
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  • 100 - What is Bias Variance TradeOff.mp4
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  • 101 - What is Logistic Regression Algorithm in Machine Learning.mp4
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  • 102 - Logistic Regression Algorithm with Python Part 1.mp4
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  • 107 - KFold CrossValidation Theory.mp4
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  • 108 - KFold CrossValidation with Python.mp4
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  • 109 - K Nearest Neighbors Algorithm Theory.mp4
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  • 110 - K Nearest Neighbors Algorithm with Python Part 1.mp4
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  • 111 - K Nearest Neighbors Algorithm with Python Part 2.mp4
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  • 112 - K Nearest Neighbors Algorithm with Python Part 3.mp4
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  • 113 - Hyperparameter Optimization Theory.mp4
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  • 114 - Hyperparameter Optimization with Python.mp4
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  • 115 - Decision Tree Algorithm Theory.mp4
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  • 116 - Decision Tree Algorithm with Python Part 1.mp4
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  • 119 - Decision Tree Algorithm with Python Part 4.mp4
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  • 121 - Random Forest Algorithm Theory.mp4
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  • 122 - Random Forest Algorithm with Pyhon Part 1.mp4
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  • 123 - Random Forest Algorithm with Pyhon Part 2.mp4
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  • 124 - Support Vector Machine Algorithm Theory.mp4
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  • 125 - Support Vector Machine Algorithm with Python Part 1.mp4
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  • 129 - Unsupervised Learning Overview.mp4
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  • 130 - K Means Clustering Algorithm Theory.mp4
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  • 131 - K Means Clustering Algorithm with Python Part 1.mp4
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  • 135 - Hierarchical Clustering Algorithm Theory.mp4
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  • 138 - Principal Component Analysis PCA Theory.mp4
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  • 139 - Principal Component Analysis PCA with Python Part 1.mp4
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  • 142 - What is the Recommender System Part 1.mp4
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  • 144 - AI Machine Learning and Deep Learning.mp4
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  • 145 - History of Machine Learning.mp4
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  • 146 - Turing Machine and Turing Test.mp4
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  • 147 - What is Deep Learning.mp4
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  • 155 - Gathering data.mp4
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  • 157 - Choosing the right algorithm and model.mp4
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  • 161 - Anatomy of Neural Network.mp4
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  • 171 - Artificial Intelligence with Machine Learning Deep Learning.html
  • Description


    Artificial Intelligence (AI) with Python Machine Learning and Python Deep Learning, Transfer Learning, Tensorflow

    What You'll Learn?


    • Machine learning isn’t just useful for predictive texting or smartphone voice recognition.
    • Learn Artificial intelligence with Machine Learning and deep learning with Hands-On Examples
    • Machine Learning Terminology, machine learning a-z
    • What is Machine Learning?
    • Evaluation Metrics for Python machine learning, Python Deep learning
    • Supervised Learning and unsupervised learning, transfer learning, ai, artificial intelligence programming
    • Machine Learning with SciKit Learn
    • Python, python machine learning and deep learning
    • Machine Learning, machine learning A-Z
    • Deep Learning, Deep learning a-z
    • Machine learning is constantly being applied to new industries and new problems. Whether you’re a marketer, video game designer, or programmer
    • Machine learning describes systems that make predictions using a model trained on real-world data.
    • Machine learning is being applied to virtually every field today. That includes medical diagnoses, facial recognition, weather forecasts, image processing
    • It's possible to use machine learning without coding, but building new systems generally requires code.
    • What is the best language for machine learning? Python is the most used language in machine learning.
    • Engineers writing machine learning systems often use Jupyter Notebooks and Python together.
    • Machine learning is generally divided between supervised machine learning and unsupervised machine learning.
    • Python instructors on Udemy specialize in everything from software development to data analysis, and are known for their effective, friendly instruction
    • What are the limitations of Python? Python is a widely used, general-purpose programming language, but it has some limitations.
    • How is Python used? Python is a general programming language used widely across many industries and platforms.
    • How is Python used? Python is a general programming language used widely across many industries and platforms.
    • How do I learn Python on my own? Python has a simple syntax that makes it an excellent programming language for a beginner to learn.

    Who is this for?


  • Anyone who wants to start learning "Machine Learning"
  • Anyone who needs a complete guide on how to start and continue their career with machine learning
  • Anyone who needs a complete guide on how to start and continue their career with machine learning
  • Students Interested in Beginning Data Science Applications in Python Environment
  • People Wanting to Specialize in Anaconda Python Environment for Data Science and Scientific Computing
  • Students Wanting to Learn the Application of Supervised Learning (Classification) on Real Data Using Python
  • People who want to learn machine learning, deep learning, python
  • People who want to learn artificial intelligence
  • People who want to learn artificial intelligence with machine learning
  • People who want to learn artificial intelligence with deep learning
  • People who want to learn artificial intelligence with transfer learning, supervised learning
  • People who want to learn artificial intelligence with machine learning, deep learning, transfer learning, supervised learning, unsupervised machine learning methods, ai
  • What You Need to Know?


  • Determination to learn artificial intelligence and patience
  • Desire to master on python, machine learning a-z, deep learning a-z
  • Motivation to learn the the second largest number of job postings relative program language among all others
  • Learn to create Machine Learning and Deep Algorithms in Python Code templates included.
  • Desire to learn artificial intelligence, deep learning, machine learning methods, supervised learning
  • Desire to learn history of machine learning, ai, artificial learning
  • Desire to learn fundamentals of machine learning, deep learning, artificial intelligence, ai, tensorflow
  • More details


    Description

    Hello there,

    Welcome to the “Artificial Intelligence with Machine Learning, Deep Learning ” course

    Artificial intelligence, Machine learning python, python, machine learning, Django, ethical hacking, python Bootcamp, data analysis, machine learning python, python for beginners, data science, machine learning, Django

    Artificial Intelligence (AI) with Python Machine Learning and Python Deep Learning, Transfer Learning, Tensorflow

    It’s hard to imagine our lives without machine learning Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models

    Ai, TensorFlow, PyTorch, scikit learn, reinforcement learning, supervised learning, teachable machine, python machine learning, TensorFlow python, ai technology, azure machine learning, semi-supervised learning, deep neural network, artificial general intelligence
    Machine learning isn’t just useful for predictive texting or smartphone voice recognition Machine learning is constantly being applied to new industries and new problems Whether you’re a marketer, video game designer, or programmer, my course on Udemy is here to help you apply machine learning to your work

    Data Science Careers Are Shaping The Future

    Data science experts are needed in almost every field, from government security to dating apps Millions of businesses and government departments rely on big data to succeed and better serve their customers So data science careers are in high demand

    Udemy offers highly-rated data science courses that will help you learn how to visualize and respond to new data, as well as develop innovative new technologies Whether you’re interested in machine learning, data mining, or data analysis, Udemy has a course for you

    • If you want to learn one of the employer’s most requested skills?

    • If you are curious about Data Science and looking to start your self-learning journey into the world of data with Python?

    • If you are an experienced developer and looking for a landing in Data Science!

    In all cases, you are at the right place!

    We've designed for you “Artificial Intelligence with Machine Learning, Deep Learning” a straightforward course for Python Programming Language and Machine Learning

    In the course, you will have down-to-earth way explanations with projects With this course, you will learn machine learning step-by-step I made it simple and easy with exercises, challenges, and lots of real-life examples

    We will open the door of the Data Science and Machine Learning a-z world and will move deeper You will learn the fundamentals of Machine Learning A-Z and its beautiful libraries such as Scikit Learn

    Throughout the course, we will teach you how to artificial intelligence and fundamentals of machine learning and use powerful machine learning python algorithms

    Whether you work in machine learning or finance or are pursuing a career in web development or data science, Python is one of the most important skills you can learn Python's simple syntax is especially suited for desktop, web, and business applications Python's design philosophy emphasizes readability and usability Python was developed upon the premise that there should be only one way (and preferably one obvious way) to do things, a philosophy that has resulted in a strict level of code standardization The core programming language is quite small and the standard library is also large In fact, Python's large library is one of its greatest benefits, providing a variety of different tools for programmers suited for many different tasks
    Interested in the field of Machine Learning? Then this course is for you! It was designed by two professional Data Scientists who will share their knowledge and help you learn complex theories, algorithms, and coding libraries in a simple way They will walk you step-by-step into the World of Machine Learning With every tutorial, you will develop new skills and improve your understanding of this challenging yet lucrative sub-field of Data Science

    Learn python and how to use it to python data analysis and visualization, present data Includes tons of code data visualization

    In this course, you will learn artificial intelligence, machine learning, deep learning

    Also during the course, you will learn:

    This Machine Learning course is for everyone!

    My "Machine Learning with Hands-On Examples in Data Science" is for everyone! If you don’t have any previous experience, not a problem! This course is expertly designed to teach everyone from complete beginners, right through to professionals ( as a refresher)

    Why do we use a Python programming language in Machine learning?

    Python is a general-purpose, high-level, and multi-purpose programming language The best thing about Python is, it supports a lot of today’s technology including vast libraries for Twitter, data mining, scientific calculations, designing, back-end server for websites, engineering simulations, artificial learning, augmented reality and what not! Also, it supports all kinds of App development

    What you will learn?

    In this course, we will start from the very beginning and go all the way to the end of "Artificial intelligence with Machine Learning" with examples

    Before each lesson, there will be a theory part After learning the theory parts, we will reinforce the subject with practical examples

    During the course you will learn the following topics:

    • What is Machine Learning?

    • What is AI (artificial intelligence)?

    • More About Machine Learning

    • Machine Learning Terminology

    • Evaluation Metrics

    • What is Classification vs Regression?

    • Evaluating Performance-Classification Error Metrics

    • Evaluating Performance-Regression Error Metrics

    • Machine Learning with Python

    • Supervised Learning

    • artificial intelligence

    • Machine learning

    • Machine learning python

    • Ethical hacking, python Bootcamp

    • Fundamentals of Data analysis

    • Python machine learning

    • Python programming

    • Python examples

    • Python hands-on

    • Deep learning a-z

    • Machine learning a-z

    • Machine learning & data science a-z

    • machine learning algorithms

    • unsupervised learning

    • transfer learning

    • what is numpy?

    • what is data science?

    With my up-to-date course, you will have a chance to keep yourself up-to-date and equip yourself with a range of Python programming skills I am also happy to tell you that I will be constantly available to support your learning and answer questions

    Artificial intelligence is growing exponentially There is no doubt about that But the further AI advances, the more complex the problems it needs to solve become The only way to solve such complex problems is with Deep Learning — which is why it's at the heart of Artificial Intelligence This course will help understand the broad and complex concept of Deep Learning in a robust, organized structure You will be working on real-world data sets to help you be confident in all the techniques on an instinctual level

    This course has suitable for everybody who is interested in Machine Learning and Deep Learning concepts

    First of all, in this course, we will learn some fundamental stuff of Python and the Numpy library These are our first steps in our Deep Learning journey After then we take a little trip to Machine Learning history Then we will arrive at our next stop Machine Learning Here we learn the machine learning concepts, machine learning workflow, models and algorithms, and what is neural network concept After then we arrive at our next stop Artificial Neural network And now our journey becomes an adventure In this adventure we'll enter the Keras world then we exit the Tensorflow world Then we'll try to understand the Convolutional Neural Network concept But our journey won't be over Then we will arrive at Recurrent Neural Network and LTSM We'll take a look at them After a while, we'll trip to the Transfer Learning concept And then we arrive at our final destination Projects Our play garden Here we'll make some interesting machine learning models with the information we've learned along our journey

    During the course you will learn:

    What is the AI, Machine Learning, and Deep Learning

    1. History of Machine Learning

    2. Turing Machine and Turing Test

    3. The Logic of Machine Learning such as

      • Understanding the machine learning models

      • Machine Learning models and algorithms

      • Gathering data

      • Data pre-processing

      • Choosing the right algorithm and model

      • Training and testing the model

      • Evaluation

    4. Artificial Neural Network with these topics

      • What is ANN

      • Anatomy of NN

      • The Engine of NN

      • Tensorflow

    5. Convolutional Neural Network

    6. Recurrent Neural Network and LTSM

    7. Transfer Learning

      In this course, we will start from the very beginning and go all the way to the end of "Deep Learning" with examples

    Before we start this course, we will learn which environments we can be used for developing deep learning projects

    Why would you want to take this course?

    Our answer is simple: The quality of teaching

    OAK Academy based in London is an online education company OAK Academy gives education in the field of IT, Software, Design, development in English, Portuguese, Spanish, Turkish, and a lot of different languages on the Udemy platform where it has over 1000 hours of video education lessons OAK Academy both increases its education series number by publishing new courses, and it makes students aware of all the innovations of already published courses by upgrading

    When you enroll, you will feel the OAK Academy`s seasoned developers' expertise Questions sent by students to our instructors are answered by our instructors within 48 hours at the latest

    What is machine learning?

    Machine learning describes systems that make predictions using a model trained on real-world data For example, let's say we want to build a system that can identify if a cat is in a picture We first assemble many pictures to train our machine learning model During this training phase, we feed pictures into the model, along with information around whether they contain a cat While training, the model learns patterns in the images that are the most closely associated with cats This model can then use the patterns learned during training to predict whether the new images that it's fed contain a cat In this particular example, we might use a neural network to learn these patterns, but machine learning can be much simpler than that Even fitting a line to a set of observed data points, and using that line to make new predictions, counts as a machine learning model

    What is machine learning used for?

    Machine learning is being applied to virtually every field today That includes medical diagnoses, facial recognition, weather forecasts, image processing, and more In any situation in which pattern recognition, prediction, and analysis are critical, machine learning can be of use Machine learning is often a disruptive technology when applied to new industries and niches Machine learning engineers can find new ways to apply machine learning technology to optimize and automate existing processes With the right data, you can use machine learning technology to identify extremely complex patterns and yield highly accurate predictions

    Does machine learning require coding?

    It's possible to use machine learning without coding, but building new systems generally requires code For example, Amazon’s Rekognition service allows you to upload an image via a web browser, which then identifies objects in the image This uses a pre-trained model, with no coding required However, developing machine learning systems involves writing some Python code to train, tune, and deploy your models It's hard to avoid writing code to pre-process the data feeding into your model Most of the work done by a machine learning practitioner involves cleaning the data used to train the machine They also perform “feature engineering” to find what data to use and how to prepare it for use in a machine learning model Tools like AutoML and SageMaker automate the tuning of models Often only a few lines of code can train a model and make predictions from it An introductory understanding of Python will make you more effective in using machine learning systems

    What are the limitations of Python?

    Python is a widely used, general-purpose programming language, but it has some limitations Because Python is an interpreted, dynamically typed language, it is slow compared to a compiled, statically typed language like C Therefore, Python is useful when speed is not that important Python's dynamic type system also makes it use more memory than some other programming languages, so it is not suited to memory-intensive applications The Python virtual engine that runs Python code runs single-threaded, making concurrency another limitation of the programming language Though Python is popular for some types of game development, its higher memory and CPU usage limits its usage for high-quality 3D game development That being said, computer hardware is getting better and better, and the speed and memory limitations of Python are getting less and less relevant making Python even more popular

    How is Python used?

    Python is a general programming language used widely across many industries and platforms One common use of Python is scripting, which means automating tasks in the background Many of the scripts that ship with Linux operating systems are Python scripts Python is also a popular language for machine learning, data analytics, data visualization, and data science because its simple syntax makes it easy to quickly build real applications You can use Python to create desktop applications Many developers use it to write Linux desktop applications, and it is also an excellent choice for web and game development Python web frameworks like Flask and Django are a popular choices for developing web applications Recently, Python is also being used as a language for mobile development via the Kivy third-party library, although there are currently some drawbacks Python needs to overcome when it comes to mobile development

    What jobs use Python?

    Python is a popular language that is used across many industries and in many programming disciplines DevOps engineers use Python to script website and server deployments Web developers use Python to build web applications, usually with one of Python's popular web frameworks like Flask or Django Data scientists and data analysts use Python to build machine learning models, generate data visualizations, and analyze big data Financial advisors and quants (quantitative analysts) use Python to predict the market and manage money Data journalists use Python to sort through information and create stories Machine learning engineers use Python to develop neural networks and artificial intelligent systems

    How do I learn Python on my own?

    Python has a simple syntax that makes it an excellent programming language for a beginner to learn To learn Python on your own, you first must become familiar with the syntax But you only need to know a little bit about Python syntax to get started writing real code; you will pick up the rest as you go Depending on the purpose of using it, you can then find a good Python tutorial, book, or course that will teach you the programming language by building a complete application that fits your goals If you want to develop games, then learn Python game development If you're going to build web applications, you can find many courses that can teach you that, too Udemy’s online courses are a great place to start if you want to learn Python on your own

    What is data science?

    We have more data than ever before But data alone cannot tell us much about the world around us We need to interpret the information and discover hidden patterns This is where data science comes in Data science uses algorithms to understand raw data The main difference between data science and traditional data analysis is its focus on prediction Data science seeks to find patterns in data and use those patterns to predict future data It draws on machine learning to process large amounts of data, discover patterns, and predict trends Data science includes preparing, analyzing, and processing data It draws from many scientific fields, and as a science, it progresses by creating new algorithms to analyze data and validate current methods

    What does a data scientist do?

    Data Scientists use machine learning to discover hidden patterns in large amounts of raw data to shed light on real problems This requires several steps First, they must identify a suitable problem Next, they determine what data are needed to solve such a situation and figure out how to get the data Once they obtain the data, they need to clean the data The data may not be formatted correctly, it might have additional unnecessary data, it might be missing entries, or some data might be incorrect Data Scientists must, therefore, make sure the data is clean before they analyze the data To analyze the data, they use machine learning techniques to build models Once they create a model, they test, refine, and finally put it into production

    What are the most popular coding languages for data science?

    Python is the most popular programming language for data science It is a universal language that has a lot of libraries available It is also a good beginner language R is also popular; however, it is more complex and designed for statistical analysis It might be a good choice if you want to specialize in statistical analysis You will want to know either Python or R and SQL SQL is a query language designed for relational databases Data scientists deal with large amounts of data, and they store a lot of that data in relational databases Those are the three most-used programming languages Other languages such as Java, C++, JavaScript, and Scala are also used, albeit less so If you already have a background in those languages, you can explore the tools available in those languages However, if you already know another programming language, you will likely be able to pick up Python very quickly

    How long does it take to become a data scientist?

    This answer, of course, varies The more time you devote to learning new skills, the faster you will learn It will also depend on your starting place If you already have a strong base in mathematics and statistics, you will have less to learn If you have no background in statistics or advanced mathematics, you can still become a data scientist; it will just take a bit longer Data science requires lifelong learning, so you will never really finish learning A better question might be, "How can I gauge whether I know enough to become a data scientist?" Challenge yourself to complete data science projects using open data The more you practice, the more you will learn, and the more confident you will become Once you have several projects that you can point to as good examples of your skillset as a data scientist, you are ready to enter the field

    How can I learn data science on my own?

    It is possible to learn data science on your own, as long as you stay focused and motivated Luckily, there are a lot of online courses and boot camps available Start by determining what interests you about data science If you gravitate to visualizations, begin learning about them Starting with something that excites you will motivate you to take that first step If you are not sure where you want to start, try starting with learning Python It is an excellent introduction to programming languages and will be useful as a data scientist Begin by working through tutorials or Udemy courses on the topic of your choice Once you have developed a base in the skills that interest you, it can help to talk with someone in the field Find out what skills employers are looking for and continue to learn those skills When learning on your own, setting practical learning goals can keep you motivated

    Does data science require coding?

    The jury is still out on this one Some people believe that it is possible to become a data scientist without knowing how to code, but others disagree A lot of algorithms have been developed and optimized in the field You could argue that it is more important to understand how to use the algorithms than how to code them yourself As the field grows, more platforms are available that automate much of the process However, as it stands now, employers are primarily looking for people who can code, and you need basic programming skills The data scientist role is continuing to evolve, so that might not be true in the future The best advice would be to find the path that fits your skill set

    What skills should a data scientist know?

    A data scientist requires many skills They need a strong understanding of statistical analysis and mathematics, which are essential pillars of data science A good understanding of these concepts will help you understand the basic premises of data science Familiarity with machine learning is also important Machine learning is a valuable tool to find patterns in large data sets To manage large data sets, data scientists must be familiar with databases Structured query language (SQL) is a must-have skill for data scientists However, nonrelational databases (NoSQL) are growing in popularity, so a greater understanding of database structures is beneficial The dominant programming language in Data Science is Python — although R is also popular A basis in at least one of these languages is a good starting point Finally, to communicate findings, data scientists require knowledge of visualizations Data visualizations allow them to share complex data in an accessible manner

    Is data science a good career?

    The demand for data scientists is growing We do not just have data scientists; we have data engineers, data administrators, and analytics managers The jobs also generally pay well This might make you wonder if it would be a promising career for you A better understanding of the type of work a data scientist does can help you understand if it might be the path for you First and foremost, you must think analytically Data science is about gaining a more in-depth understanding of info through data Do you fact-check information and enjoy diving into the statistics? Although the actual work may be quite technical, the findings still need to be communicated Can you explain complex findings to someone who does not have a technical background? Many data scientists work in cross-functional teams and must share their results with people with very different backgrounds If this sounds like a great work environment, then it might be a promising career for you

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    Hi there,By 2024, there will be more than 1 million unfilled computing jobs and the skills gap is a global problem. This was our starting point.At OAK Academy, we are the tech experts who have been in the sector for years and years. We are deeply rooted in the tech world. We know the tech industry. And we know the tech industry's biggest problem is the “tech skills gap” and here is our solution.OAK Academy will be the bridge between the tech industry and people who-are planning a new career-are thinking career transformation-want career shift or reinvention,-have the desire to learn new hobbies at their own paceBecause we know we can help this generation gain the skill to fill these jobs and enjoy happier, more fulfilling careers. And this is what motivates us every day.We specialize in critical areas like cybersecurity, coding, IT, game development, app monetization, and mobile. Thanks to our practical alignment we are able to constantly translate industry insights into the most in-demand and up-to-date courses,OAK Academy will provide you the information and support you need to move through your journey with confidence and ease.Our courses are for everyone. Whether you are someone who has never programmed before, or an existing programmer seeking to learn another language, or even someone looking to switch careers we are here.OAK Academy here to transforms passionate, enthusiastic people to reach their dream job positions.If you need help or if you have any questions, please do not hesitate to contact our team.
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    • Release Date 2024/06/21