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Python NumPy Basics Made Easy: A Complete Tutorial for Beginners
If you're new to programming or data analysis, learning NumPy is an essential step in your journey. NumPy, short forย Numerical Python, is a powerful Python library designed to work with numerical data efficiently. Itโs widely used in data science, machine learning, and scientific computing.
What is NumPy?
NumPy is a library that provides support for handling large arrays and matrices of numerical data. It also includes a vast collection of mathematical functions to process and analyze this data easily.
Why Should Beginners Learn NumPy?
Speed and Efficiency: Operations on large datasets are faster and more efficient in NumPy compared to Python lists.
Simplified Operations: It simplifies complex tasks like matrix operations and statistical calculations.
Wide Applications: From finance to physics, itโs used across industries for data analysis and visualization.
How to Start with NumPy
To begin, familiarize yourself with basic concepts like arrays, shapes, and dimensions. Arrays are central to NumPyโthey are like advanced lists that allow you to perform mathematical operations directly. Learn how to create and manipulate these arrays as a starting point.
NumPy opens the door to mastering Python-based data analysis and serves as a foundation for more advanced libraries like Pandas and TensorFlow.
For a deeper dive into NumPy concepts, visitย Tutorial and Exampleโs NumPy Tutorialย and enhance your learning with practical examples!
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Looking to learn Python NumPy? This Python NumPy Tutorial for Beginners covers essential concepts like arrays and data manipulation in an easy-to-understand way. Get started with clear examples and practical tips from TAE.
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hi! i'm shy as hell usually but trying to branch out cuz i saw u reblog that post abt asks. do u have any recs on where to start for a beginner coder (who has virtually no free time)? i feel like the landscape is so vast and overwhelming.
Hiii!! Thanks for the ask!
I think the best thing I've learned throughout my coding journey is that you must first pick a field that interests you. Computer Science is a VAST world, once you pick a field, you must really commit to it. For example, maybe data science interests you. You look up the requirements to be a date scientist. I don't have in-depth knowledge on it, but I do know that you need good knowledge about python and some of its modules like numpy, matplotlib etc. So you start learning the basics, and then move on to the modules. The key is to find what you love, then find what you need in order to pursue it.
For a kickstart I'd recommend w3schools โ it's a really good site that has so many tutorials on various languages.
I was also a person that had no free time at all to focus on my learning. But then I realised that you must make time if you want to work on something with dedication. So now I devote Sunday afternoons to learning and working on my projects, and I try to stick to it as much as possible, except for when I have uni exams or any submissions lol
Hope this helped!!
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Learning to code and becoming a data scientist without a background in computer science or mathematics is absolutely possible, but it will require dedication, time, and a structured approach. โจ๐๐ป ๐๐ปHereโs a step-by-step guide to help you get started:
1. Start with the Basics:
- Begin by learning the fundamentals of programming. Choose a beginner-friendly programming language like Python, which is widely used in data science.
- Online platforms like Codecademy, Coursera, and Khan Academy offer interactive courses for beginners.
2. Learn Mathematics and Statistics:
- While you donโt need to be a mathematician, a solid understanding of key concepts like algebra, calculus, and statistics is crucial for data science.
- Platforms like Khan Academy and MIT OpenCourseWare provide free resources for learning math.
3. Online Courses and Tutorials:
- Enroll in online data science courses on platforms like Coursera, edX, Udacity, and DataCamp. Look for beginner-level courses that cover data analysis, visualization, and machine learning.
4. Structured Learning Paths:
- Follow structured learning paths offered by online platforms. These paths guide you through various topics in a logical sequence.
5. Practice with Real Data:
- Work on hands-on projects using real-world data. Websites like Kaggle offer datasets and competitions for practicing data analysis and machine learning.
6. Coding Exercises:
- Practice coding regularly to build your skills. Sites like LeetCode and HackerRank offer coding challenges that can help improve your programming proficiency.
7. Learn Data Manipulation and Analysis Libraries:
- Familiarize yourself with Python libraries like NumPy, pandas, and Matplotlib for data manipulation, analysis, and visualization.
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Python for Beginners: Launch Your Tech Career with Coding Skills
Are you ready to launch your tech career but donโt know where to start? Learning Python is one of the best ways to break into the world of technologyโeven if you have zero coding experience.
In this guide, weโll explore how Python for beginners can be your gateway to a rewarding career in software development, data science, automation, and more.
Why Python Is the Perfect Language for Beginners
Python has become the go-to programming language for beginners and professionals alikeโand for good reason:
Simple syntax: Python reads like plain English, making it easy to learn.
High demand: Industries spanning the spectrum are actively seeking Python developers to fuel their technological advancements.
Versatile applications: Python's versatility shines as it powers everything from crafting websites to driving artificial intelligence and dissecting data.
Whether you want to become a software developer, data analyst, or AI engineer, Python lays the foundation.
What Can You Do With Python?
Python is not just a beginner languageโitโs a career-building tool. Here are just a few career paths where Python is essential:
Web Development: Frameworks like Django and Flask make it easy to build powerful web applications. You can even enroll in a Python Course in Kochi to gain hands-on experience with real-world web projects.
Data Science & Analytics: For professionals tackling data analysis and visualization, the Python ecosystem, featuring powerhouses like Pandas, NumPy, and Matplotlib, sets the benchmark.
Machine Learning & AI: Spearheading advancements in artificial intelligence development, Python boasts powerful tools such as TensorFlow and scikit-learn.
Automation & Scripting: Simple yet effective Python scripts offer a pathway to amplified efficiency by automating routine workflows.
Cybersecurity & Networking: The application of Python is expanding into crucial domains such as ethical hacking, penetration testing, and the automation of network processes.
How to Get Started with Python
Starting your Python journey doesn't require a computer science degree. Success hinges on a focused commitment combined with a thoughtfully structured educational approach.
Step 1: Install Python
Download and install Python from python.org. It's free and available for all platforms.
Step 2: Choose an IDE
Use beginner-friendly tools like Thonny, PyCharm, or VS Code to write your code.
Step 3: Learn the Basics
Focus on:
Variables and data types
Conditional statements
Loops
Functions
Lists and dictionaries
If you prefer guided learning, a reputable Python Institute in Kochi can offer structured programs and mentorship to help you grasp core concepts efficiently.
Step 4: Build Projects
Learning by doing is key. Start small:
Build a calculator
Automate file organization
Create a to-do list app
As your skills grow, you can tackle more complex projects like data dashboards or web apps.
How Python Skills Can Boost Your Career
Adding Python to your resume instantly opens up new opportunities. Here's how it helps:
Higher employability: Python is one of the top 3 most in-demand programming languages.
Better salaries: Python developers earn competitive salaries across the globe.
Remote job opportunities: Many Python-related jobs are available remotely, offering flexibility.
Even if you're not aiming to be a full-time developer, Python skills can enhance careers in marketing, finance, research, and product management.
If you're serious about starting a career in tech, learning Python is the smartest first step you can take. Itโs beginner-friendly, powerful, and widely used across industries.
Whether you're a student, job switcher, or just curious about programming, Python for beginners can unlock countless career opportunities. Invest time in learning todayโand start building the future you want in tech.
Globally recognized as a premier educational hub, DataMites Institute delivers in-depth training programs across the pivotal fields of data science, artificial intelligence, and machine learning. They provide expert-led courses designed for both beginners and professionals aiming to boost their careers.
Python Modules Explained - Different Types and Functions - Python Tutorial
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Understanding Outliers in Machine Learning and Data Science
In machine learning and data science, an outlier is like a misfit in a dataset. It's a data point that stands out significantly from the rest of the data. Sometimes, these outliers are errors, while other times, they reveal something truly interesting about the data. Either way, handling outliers is a crucial step in the data preprocessing stage. If left unchecked, they can skew your analysis and even mess up your machine learning models.
In this article, we will dive into:
1. What outliers are and why they matter.
2. How to detect and remove outliers using the Interquartile Range (IQR) method.
3. Using the Z-score method for outlier detection and removal.
4. How the Percentile Method and Winsorization techniques can help handle outliers.
This guide will explain each method in simple terms with Python code examples so that even beginners can follow along.
1. What Are Outliers?
An outlier is a data point that lies far outside the range of most other values in your dataset. For example, in a list of incomes, most people might earn between $30,000 and $70,000, but someone earning $5,000,000 would be an outlier.
Why Are Outliers Important?
Outliers can be problematic or insightful:
Problematic Outliers: Errors in data entry, sensor faults, or sampling issues.
Insightful Outliers: They might indicate fraud, unusual trends, or new patterns.
Types of Outliers
1. Univariate Outliers: These are extreme values in a single variable.
Example: A temperature of 300ยฐF in a dataset about room temperatures.
2. Multivariate Outliers: These involve unusual combinations of values in multiple variables.
Example: A person with an unusually high income but a very low age.
3. Contextual Outliers: These depend on the context.
Example: A high temperature in winter might be an outlier, but not in summer.
2. Outlier Detection and Removal Using the IQR Method
The Interquartile Range (IQR) method is one of the simplest ways to detect outliers. It works by identifying the middle 50% of your data and marking anything that falls far outside this range as an outlier.
Steps:
1. Calculate the 25th percentile (Q1) and 75th percentile (Q3) of your data.
2. Compute the IQR:
{IQR} = Q3 - Q1
Q1 - 1.5 \times \text{IQR}
Q3 + 1.5 \times \text{IQR} ] 4. Anything below the lower bound or above the upper bound is an outlier.
Python Example:
import pandas as pd
# Sample dataset
data = {'Values': [12, 14, 18, 22, 25, 28, 32, 95, 100]}
df = pd.DataFrame(data)
# Calculate Q1, Q3, and IQR
Q1 = df['Values'].quantile(0.25)
Q3 = df['Values'].quantile(0.75)
IQR = Q3 - Q1
# Define the bounds
lower_bound = Q1 - 1.5 * IQR
upper_bound = Q3 + 1.5 * IQR
# Identify and remove outliers
outliers = df[(df['Values'] < lower_bound) | (df['Values'] > upper_bound)]
print("Outliers:\n", outliers)
filtered_data = df[(df['Values'] >= lower_bound) & (df['Values'] <= upper_bound)]
print("Filtered Data:\n", filtered_data)
Key Points:
The IQR method is great for univariate datasets.
It works well when the data isnโt skewed or heavily distributed.
3. Outlier Detection and Removal Using the Z-Score Method
The Z-score method measures how far a data point is from the mean, in terms of standard deviations. If a Z-score is greater than a certain threshold (commonly 3 or -3), it is considered an outlier.
Formula:
Z = \frac{(X - \mu)}{\sigma}
ย is the data point,
ย is the mean of the dataset,
ย is the standard deviation.
Python Example:
import numpy as np
# Sample dataset
data = {'Values': [12, 14, 18, 22, 25, 28, 32, 95, 100]}
df = pd.DataFrame(data)
# Calculate mean and standard deviation
mean = df['Values'].mean()
std_dev = df['Values'].std()
# Compute Z-scores
df['Z-Score'] = (df['Values'] - mean) / std_dev
# Identify and remove outliers
threshold = 3
outliers = df[(df['Z-Score'] > threshold) | (df['Z-Score'] < -threshold)]
print("Outliers:\n", outliers)
filtered_data = df[(df['Z-Score'] <= threshold) & (df['Z-Score'] >= -threshold)]
print("Filtered Data:\n", filtered_data)
Key Points:
The Z-score method assumes the data follows a normal distribution.
It may not work well with skewed datasets.
4. Outlier Detection Using the Percentile Method and Winsorization
Percentile Method:
In the percentile method, we define a lower percentile (e.g., 1st percentile) and an upper percentile (e.g., 99th percentile). Any value outside this range is treated as an outlier.
Winsorization:
Winsorization is a technique where outliers are not removed but replaced with the nearest acceptable value.
Python Example:
from scipy.stats.mstats import winsorize
import numpy as np
Sample data
data = [12, 14, 18, 22, 25, 28, 32, 95, 100]
Calculate percentiles
lower_percentile = np.percentile(data, 1)
upper_percentile = np.percentile(data, 99)
Identify outliers
outliers = [x for x in data if x < lower_percentile or x > upper_percentile]
print("Outliers:", outliers)
# Apply Winsorization
winsorized_data = winsorize(data, limits=[0.01, 0.01])
print("Winsorized Data:", list(winsorized_data))
Key Points:
Percentile and Winsorization methods are useful for skewed data.
Winsorization is preferred when data integrity must be preserved.
Final Thoughts
Outliers can be tricky, but understanding how to detect and handle them is a key skill in machine learning and data science. Whether you use the IQR method, Z-score, or Wins
orization, always tailor your approach to the specific dataset youโre working with.
By mastering these techniques, youโll be able to clean your data effectively and improve the accuracy of your models.
#science#skills#programming#bigdata#books#machinelearning#artificial intelligence#python#machine learning#data centers#outliers#big data#data analysis#data analytics#data scientist#database#datascience#data
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Python Programming Language: A Comprehensive Guide
ย Python is one of the maximum widely used and hastily growing programming languages within the world. Known for its simplicity, versatility, and great ecosystem, Python has become the cross-to desire for beginners, professionals, and organizations across industries.
What is Python used for

๐ What is Python?
Python is a excessive-stage, interpreted, fashionable-purpose programming language.ย The language emphasizes clarity, concise syntax, and code simplicity, making it an excellent device for the whole lot from web development to synthetic intelligence.
Its syntax is designed to be readable and easy, regularly described as being near the English language. This ease of information has led Python to be adopted no longer simplest through programmers but also by way of scientists, mathematicians, and analysts who may not have a formal heritage in software engineering.
๐ Brief History of Python
Late Nineteen Eighties:ย Guido van Rossum starts work on Python as a hobby task.
1991:ย Python zero.9.0 is released, presenting classes, functions, and exception managing.
2000:ย Python 2.Zero is launched, introducing capabilities like list comprehensions and rubbish collection.
2008: Python 3.Zero is launched with considerable upgrades but breaks backward compatibility.
2024:ย Python three.12 is the modern day strong model, enhancing performance and typing support.
โญ Key Features of Python
Easy to Learn and Use:
Python's syntax is simple and similar to English, making it a high-quality first programming language.
Interpreted Language:
Python isn't always compiled into device code; it's far done line by using line the usage of an interpreter, which makes debugging less complicated.
Cross-Platform:
Python code runs on Windows, macOS, Linux, and even cell devices and embedded structures.
Dynamic Typing:
Variables donโt require explicit type declarations; types are decided at runtime.
Object-Oriented and Functional:
Python helps each item-orientated programming (OOP) and practical programming paradigms.
Extensive Standard Library:
Python includes a rich set of built-in modules for string operations, report I/O, databases, networking, and more.
Huge Ecosystem of Libraries:
From data technological know-how to net development, Python's atmosphere consists of thousands of programs like NumPy, pandas, TensorFlow, Flask, Django, and many greater.
๐ Basic Python Syntax
Here's an instance of a easy Python program:
python
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def greet(call):
ย ย print(f"Hello, call!")
greet("Alice")
Output:
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Hello, Alice!
Key Syntax Elements:
Indentation is used to define blocks (no curly bracesย like in different languages).
Variables are declared via task: x = 5
Comments use #:
# This is a remark
Print Function:
print("Hello")
๐ Python Data Types
Python has several built-in data kinds:
Numeric:ย int, go with the flow, complicated
Text: str
Boolean:ย bool (True, False)
Sequence:ย listing, tuple, range
Mapping:ย dict
Set Types:ย set, frozenset
Example:
python
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age = 25ย ย ย ย ย ย ย # int
name = "John"ย ย ย ย # str
top = 5.Nineย ย ย ย ย # drift
is_student = Trueย ย # bool
colors = ["red", "green", "blue"]ย # listing
๐ Control Structures
Conditional Statements:
python
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if age > 18:
ย ย print("Adult")
elif age == 18:
ย ย print("Just became an person")
else:
ย ย print("Minor")
Loops:
python
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for color in hues:
ย ย print(coloration)
while age < 30:
ย ย age += 1
๐ง Functions and Modules
Defining a Function:
python
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def upload(a, b):
ย ย return a + b
Importing a Module:
python
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import math
print(math.Sqrt(sixteen))ย # Output: four.0
๐๏ธ Object-Oriented Programming (OOP)
Python supports OOP functions such as lessons, inheritance, and encapsulation.
Python
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elegance Animal:
ย ย def __init__(self, call):
ย ย ย ย self.Call = name
def communicate(self):
ย ย ย ย print(f"self.Call makes a valid")
dog = Animal("Dog")
dog.Speak()ย # Output: Dog makes a legitimate
๐ง Applications of Python
Python is used in nearly each area of era:
1. Web Development
Frameworks like Django, Flask, and FastAPI make Python fantastic for building scalable web programs.
2. Data Science & Analytics
Libraries like pandas, NumPy, and Matplotlib permit for data manipulation, evaluation, and visualization.
Three. Machine Learning & AI
Python is the dominant language for AI, way to TensorFlow, PyTorch, scikit-research, and Keras.
4. Automation & Scripting
Python is extensively used for automating tasks like file managing, device tracking, and data scraping.
Five. Game Development
Frameworks like Pygame allow builders to build simple 2D games.
6. Desktop Applications
With libraries like Tkinter and PyQt, Python may be used to create cross-platform computing device apps.
7. Cybersecurity
Python is often used to write security equipment, penetration trying out scripts, and make the most development.
๐ Popular Python Libraries
NumPy:ย Numerical computing
pandas:ย Data analysis
Matplotlib / Seaborn:ย Visualization
scikit-study:ย Machine mastering
BeautifulSoup / Scrapy:ย Web scraping
Flask / Django: Web frameworks
OpenCV:ย Image processing
PyTorch / TensorFlow:ย Deep mastering
SQLAlchemy:ย Database ORM
๐ป Python Tools and IDEs
Popular environments and tools for writing Python code encompass:
PyCharm:ย Full-featured Python IDE.
VS Code:ย Lightweight and extensible editor.
Jupyter Notebook:ย Interactive environment for statistics technological know-how and studies.
IDLE:ย Pythonโs default editor.
๐ Strengths of Python
Easy to study and write
Large community and wealthy documentation
Extensive 0.33-birthday celebration libraries
Strong support for clinical computing and AI
Cross-platform compatibility
โ ๏ธ Limitations of Python
Slower than compiled languages like C/C++
Not perfect for mobile app improvement
High memory usage in massive-scale packages
GIL (Global Interpreter Lock) restricts genuine multithreading in CPython
๐งญ Learning Path for Python Beginners
Learn variables, facts types, and control glide.
Practice features and loops.
Understand modules and report coping with.
Explore OOP concepts.
Work on small initiatives (e.G., calculator, to-do app).
Dive into unique areas like statistics technological know-how, automation, or web development.
#What is Python used for#college students learn python#online course python#offline python course institute#python jobs in information technology
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How to Become a Data Scientist in 2025 (Roadmap for Absolute Beginners)
Want to become a data scientist in 2025 but donโt know where to start? Youโre not alone. With job roles, tech stacks, and buzzwords changing rapidly, itโs easy to feel lost.
But hereโs the good news: you donโt need a PhD or years of coding experience to get started. You just need the right roadmap.
Letโs break down the beginner-friendly path to becoming a data scientist in 2025.
โ๏ธ Step 1: Get Comfortable withย Python
Python is the most beginner-friendly programming language in data science.
What to learn:
Variables, loops, functions
Libraries like NumPy, Pandas, and Matplotlib
Why: Itโs the backbone of everything youโll do in data analysis and machine learning.
๐ข Step 2: Learn Basic Math &ย Stats
You donโt need to be a math genius. But you do need to understand:
Descriptive statistics
Probability
Linear algebra basics
Hypothesis testing
These concepts help you interpret data and build reliable models.
๐ Step 3: Master Dataย Handling
Youโll spend 70% of your time cleaning and preparing data.
Skills to focus on:
Working with CSV/Excel files
Cleaning missing data
Data transformation with Pandas
Visualizing data with Seaborn/Matplotlib
This is the โreal workโ most data scientists do daily.
๐งฌ Step 4: Learn Machine Learningย (ML)
Once youโre solid with data handling, dive into ML.
Start with:
Supervised learning (Linear Regression, Decision Trees, KNN)
Unsupervised learning (Clustering)
Model evaluation metrics (accuracy, recall, precision)
Toolkits: Scikit-learn, XGBoost
๐ Step 5: Work on Realย Projects
Projects are what make your resume pop.
Try solving:
Customer churn
Sales forecasting
Sentiment analysis
Fraud detection
Pro tip: Document everything on GitHub and write blogs about your process.
โ๏ธ Step 6: Learn SQL and Databases
Data lives in databases. Knowing how to query it with SQL is a must-have skill.
Focus on:
SELECT, JOIN, GROUP BY
Creating and updating tables
Writing nested queries
๐ Step 7: Understand the Businessย Side
Data science isnโt just tech. You need to translate insights into decisions.
Learn to:
Tell stories with data (data storytelling)
Build dashboards with tools like Power BI or Tableau
Align your analysis with business goals
๐ฅ Want a Structured Way to Learn Allย This?
Instead of guessing what to learn next, check out Intellipaatโs full Data Science course on YouTube. It covers Python, ML, real projects, and everything you need to build job-ready skills.
https://www.youtube.com/watch?v=rxNDw68XcE4
๐ Finalย Thoughts
Becoming a data scientist in 2025 is 100% possibleโโโeven for beginners. All you need is consistency, a good learning path, and a little curiosity.
Start simple. Build as you go. And let your projects speak louder than your resume.
Drop a comment if youโre starting your journey. And donโt forget to check out the free Intellipaat course to speed up your progress!
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What is Python, How to Learn Python?
What is Python?
Python is a high-level, interpreted programming language known for its simplicity and readability. It is widely used in various fields like: โ
Web Development (Django, Flask) โ
Data Science & Machine Learning (Pandas, NumPy, TensorFlow) โ
Automation & Scripting (Web scraping, File automation) โ
Game Development (Pygame) โ
Cybersecurity & Ethical Hacking โ
Embedded Systems & IoT (MicroPython)
Python is beginner-friendly because of its easy-to-read syntax, large community, and vast library support.
How Long Does It Take to Learn Python?
The time required to learn Python depends on your goals and background. Hereโs a general breakdown:
1. Basics of Python (1-2 months)
If you spend 1-2 hours daily, you can master:
Variables, Data Types, Operators
Loops & Conditionals
Functions & Modules
Lists, Tuples, Dictionaries
File Handling
Basic Object-Oriented Programming (OOP)
2. Intermediate Level (2-4 months)
Once comfortable with basics, focus on:
Advanced OOP concepts
Exception Handling
Working with APIs & Web Scraping
Database handling (SQL, SQLite)
Python Libraries (Requests, Pandas, NumPy)
Small real-world projects
3. Advanced Python & Specialization (6+ months)
If you want to go pro, specialize in:
Data Science & Machine Learning (Matplotlib, Scikit-Learn, TensorFlow)
Web Development (Django, Flask)
Automation & Scripting
Cybersecurity & Ethical Hacking
Learning Plan Based on Your Goal
๐ Casual Learning โ 3-6 months (for automation, scripting, or general knowledge) ๐ Professional Development โ 6-12 months (for jobs in software, data science, etc.) ๐ Deep Mastery โ 1-2 years (for AI, ML, complex projects, research)
Scope @ NareshIT:
At NareshITโs Python application Development program you will be able to get the extensive hands-on training in front-end, middleware, and back-end technology.
It skilled you along with phase-end and capstone projects based on real business scenarios.
Here you learn the concepts from leading industry experts with content structured to ensure industrial relevance.
An end-to-end application with exciting features
Earn an industry-recognized course completion certificate.
For more details:
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Python for Data Science: From Beginner to Expert โ A Complete Guide!
Python has become the go-to language for data science, thanks to its flexibility, powerful libraries, and strong community support. In this video, weโll explore why Python is the best choice for data scientists and how you can master itโfrom setting up your environment to advanced machine learning techniques.
๐น What You'll Learn:
โ
Why Python is essential for data science
โ
Setting up Python and key libraries (NumPy, Pandas, Matplotlib) โ
Data wrangling, visualization, and transformation
โ
Building machine learning models with Scikit-learn
โ
Best practices to enhance your data science workflow ๐ Whether you're a beginner or looking to refine your skills, this guide will help you level up in data science with Python. ๐ Donโt forget to like, subscribe, and hit the notification bell for more data science and Python content!
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Exploring Data Science Tools: My Adventures with Python, R, and More
Welcome to my data science journey! In this blog post, I'm excited to take you on a captivating adventure through the world of data science tools. We'll explore the significance of choosing the right tools and how they've shaped my path in this thrilling field.
Choosing the right tools in data science is akin to a chef selecting the finest ingredients for a culinary masterpiece. Each tool has its unique flavor and purpose, and understanding their nuances is key to becoming a proficient data scientist.
I. The Quest for the Right Tool
My journey began with confusion and curiosity. The world of data science tools was vast and intimidating. I questioned which programming language would be my trusted companion on this expedition. The importance of selecting the right tool soon became evident.
I embarked on a research quest, delving deep into the features and capabilities of various tools. Python and R emerged as the frontrunners, each with its strengths and applications. These two contenders became the focus of my data science adventures.
II. Python: The Swiss Army Knife of Data Science
Python, often hailed as the Swiss Army Knife of data science, stood out for its versatility and widespread popularity. Its extensive library ecosystem, including NumPy for numerical computing, pandas for data manipulation, and Matplotlib for data visualization, made it a compelling choice.
My first experiences with Python were both thrilling and challenging. I dove into coding, faced syntax errors, and wrestled with data structures. But with each obstacle, I discovered new capabilities and expanded my skill set.
III. R: The Statistical Powerhouse
In the world of statistics, R shines as a powerhouse. Its statistical packages like dplyr for data manipulation and ggplot2 for data visualization are renowned for their efficacy. As I ventured into R, I found myself immersed in a world of statistical analysis and data exploration.
My journey with R included memorable encounters with data sets, where I unearthed hidden insights and crafted beautiful visualizations. The statistical prowess of R truly left an indelible mark on my data science adventure.
IV. Beyond Python and R: Exploring Specialized Tools
While Python and R were my primary companions, I couldn't resist exploring specialized tools and programming languages that catered to specific niches in data science. These tools offered unique features and advantages that added depth to my skill set.
For instance, tools like SQL allowed me to delve into database management and querying, while Scala opened doors to big data analytics. Each tool found its place in my toolkit, serving as a valuable asset in different scenarios.
V. The Learning Curve: Challenges and Rewards
The path I took wasn't without its share of difficulties. Learning Python, R, and specialized tools presented a steep learning curve. Debugging code, grasping complex algorithms, and troubleshooting errors were all part of the process.
However, these challenges brought about incredible rewards. With persistence and dedication, I overcame obstacles, gained a profound understanding of data science, and felt a growing sense of achievement and empowerment.
VI. Leveraging Python and R Together
One of the most exciting revelations in my journey was discovering the synergy between Python and R. These two languages, once considered competitors, complemented each other beautifully.
I began integrating Python and R seamlessly into my data science workflow. Python's data manipulation capabilities combined with R's statistical prowess proved to be a winning combination. Together, they enabled me to tackle diverse data science tasks effectively.
VII. Tips for Beginners
For fellow data science enthusiasts beginning their own journeys, I offer some valuable tips:
Embrace curiosity and stay open to learning.
Work on practical projects while engaging in frequent coding practice.
Explore data science courses and resources to enhance your skills.
Seek guidance from mentors and engage with the data science community.
Remember that the journey is continuousโthere's always more to learn and discover.
My adventures with Python, R, and various data science tools have been transformative. I've learned that choosing the right tool for the job is crucial, but versatility and adaptability are equally important traits for a data scientist.
As I summarize my expedition, I emphasize the significance of selecting tools that align with your project requirements and objectives. Each tool has a unique role to play, and mastering them unlocks endless possibilities in the world of data science.
I encourage you to embark on your own tool exploration journey in data science. Embrace the challenges, relish the rewards, and remember that the adventure is ongoing. May your path in data science be as exhilarating and fulfilling as mine has been.
Happy data exploring!
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Tips for the Best Way to Learn Python from Scratch to Pro
Python, often regarded as one of the most beginner-friendly programming languages, offers an excellent entry point for those looking to embark on a coding journey. Whether you aspire to become a Python pro or simply want to add a valuable skill to your repertoire, the path to Python proficiency is well-paved. In this blog, weโll outline a comprehensive strategy to learn Python from scratch to pro, and weโll also touch upon how ACTE Institute can accelerate your journey with its job placement services.
1. Start with the basics:
Every journey begins with a single step. Familiarise yourself with Pythonโs fundamental concepts, including variables, data types, and basic operations. Online platforms like Codecademy, Coursera, and edX offer introductory Python courses for beginners.
2. Learn Control Structures:
Master Pythonโs control structures, such as loops and conditional statements. These are essential for writing functional code. Sites like HackerRank and LeetCode provide coding challenges to practice your skills.
3. Dive into Functions:
Understand the significance of functions in Python. Learn how to define your functions, pass arguments, and return values. Functions are the building blocks of Python programmes.
4. Explore Data Structures:
Delve into Pythonโs versatile data structures, including lists, dictionaries, tuples, and sets. Learn their usage and when to apply them in real-world scenarios.
5. Object-Oriented Programming (OOP):
Python is an object-oriented language. Learn OOP principles like classes and objects. Understand encapsulation, inheritance, and polymorphism.
6. Modules and Libraries:
Pythonโs strength lies in its extensive libraries and modules. Explore popular libraries like NumPy, Pandas, and Matplotlib for data manipulation and visualisation.
7. Web Development with Django or Flask:
If web development interests you, pick up a web framework like Django or Flask. These frameworks simplify building web applications using Python.
8. Dive into Data Science:
Python is a dominant language in the field of data science. Learn how to use libraries like SciPy and Scikit-Learn for data analysis and machine learning.
9. Real-World Projects:
Apply your knowledge by working on real-world projects. Create a portfolio showcasing your Python skills. Platforms like GitHub allow you to share your projects with potential employers.
10. Continuous learning:
Python is a dynamic language, with new features and libraries regularly introduced. Stay updated with the latest developments by following Python communities, blogs, and podcasts.
The ACTE Institute offers a structured Python training programme that covers the entire spectrum of Python learning. Hereโs how they can accelerate your journey:
Comprehensive Curriculum:ย ACTEโs Python course includes hands-on exercises, assignments, and real-world projects. Youโll gain practical experience and a deep understanding of Pythonโs applications.
Experienced Instructors:ย Learn from certified Python experts with years of industry experience. Their guidance ensures you receive industry-relevant insights.
Job Placement Services:ย One of ACTEโs standout features is its job placement assistance. They have a network of recruiting clients, making it easier for you to land a Python-related job.
Flexibility:ย ACTE offers both online and offline Python courses, allowing you to choose the mode that suits your schedule.
The journey from Python novice to pro involves continuous learning and practical application.ย ACTE Instituteย can be your trusted partner in this journey, providing not only comprehensive Python training but also valuable job placement services. Whether you aspire to be a Python developer, data scientist, or web developer, mastering Python opens doors to diverse career opportunities. So, take that first step, start your Python journey, and let ACTE Institute guide you towards Python proficiency and a rewarding career.
I hope I answered your question successfully. If not, feel free to mention it in the comments area. I believe I still have much to learn.
If you feel that my response has been helpful, make sure to Follow me on Tumblr and give it an upvoteย to encourage me to upload more content about Python.
Thank you for spending your valuable time and upvotes here. Have a great day.
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Python Development Course: Empowering the Future with Softs Solution Service
Python, a high-level programming language, has emerged as a favorite among developers worldwide due to its emphasis on readability and efficiency. Originating in the late 1980s, Python was conceived by Guido van Rossum as a successor to the ABC language. Its design philosophy, encapsulated by the phrase "Beautiful is better than ugly", reflects a commitment to aesthetic code and functionality.ย
What sets Python apart is its versatile nature. It supports multiple programming paradigms, including procedural, object-oriented, and functional programming. This flexibility allows developers to use Python for a wide range of applications, from web development and software engineering to scientific computing and artificial intelligence.ย
Pythonโs standard library is another of its strengths, offering a rich set of modules and tools that enable developers to perform various tasks without the need for additional installations. This extensive library, combined with Pythonโs straightforward syntax, makes it an excellent language for rapid application development.ย
One of Python's most significant contributions to the tech world is its role in data science and machine learning. Its easy-to-learn syntax and powerful libraries, like NumPy, Pandas, and Matplotlib, make it an ideal language for data analysis and visualization. Furthermore, frameworks like TensorFlow and PyTorch have solidified Python's position in the development of machine learning models.ย
Education in Python programming has become crucial due to its growing demand in the industry. Recognizing this, institutions like Softs Solution Service, IT training institute in Ahmedabad, have stepped up to provide comprehensive Python Development Training. Their Online Python Development Course is tailored to meet the needs of both beginners and seasoned programmers. This course offers an in-depth exploration of Python's capabilities, covering everything from basic syntax to advanced programming concepts.ย
The course structure usually begins with an introduction to Python's basic syntax and programming concepts. It then progressively moves into more complex topics, such as data structures, file operations, error and exception handling, and object-oriented programming principles. Participants also get to work on real-life projects, which is vital for understanding how Python can be applied in practical scenarios.ย
A significant advantage of online courses like the one offered by Softs Solution Service is their accessibility. Students can learn at their own pace, with access to a wealth of resources and support from experienced instructors. Additionally, these courses often provide community support, where learners can interact with peers, share knowledge, and collaborate on projects.ย
Python's future seems bright as it continues to evolve with new features and enhancements. Its growing popularity in various fields, including web development, data analytics, artificial intelligence, and scientific research, ensures that Python developers will remain in high demand.ย
In summary, Python is not just a programming language; it's a tool that opens a world of possibilities for developers, data scientists, and tech enthusiasts. With resources like the Online Python Development Course from Softs Solution Service, mastering Python has become more accessible than ever, promising exciting opportunities in the ever-evolving world of technology.
#IT Training and Internship#Softs Solution Service#IT Training Institute in Ahmedabad#Online Python Development Course#Python Development Training#Python Development Course
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25 Udemy Paid Courses for Free with Certification (Only for Limited Time)

2023 Complete SQL Bootcamp from Zero to Hero in SQL
Become an expert in SQL by learning through concept & Hands-on coding :)
What you'll learn
Use SQL to query a database Be comfortable putting SQL on their resume Replicate real-world situations and query reports Use SQL to perform data analysis Learn to perform GROUP BY statements Model real-world data and generate reports using SQL Learn Oracle SQL by Professionally Designed Content Step by Step! Solve any SQL-related Problems by Yourself Creating Analytical Solutions! Write, Read and Analyze Any SQL Queries Easily and Learn How to Play with Data! Become a Job-Ready SQL Developer by Learning All the Skills You will Need! Write complex SQL statements to query the database and gain critical insight on data Transition from the Very Basics to a Point Where You can Effortlessly Work with Large SQL Queries Learn Advanced Querying Techniques Understand the difference between the INNER JOIN, LEFT/RIGHT OUTER JOIN, and FULL OUTER JOIN Complete SQL statements that use aggregate functions Using joins, return columns from multiple tables in the same query
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Python Programming Complete Beginners Course Bootcamp 2023
2023 Complete Python Bootcamp || Python Beginners to advanced || Python Master Class || Mega Course
What you'll learn
Basics in Python programming Control structures, Containers, Functions & Modules OOPS in Python How python is used in the Space Sciences Working with lists in python Working with strings in python Application of Python in Mars Rovers sent by NASA
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Learn PHP and MySQL for Web Application and Web Development
Unlock the Power of PHP and MySQL: Level Up Your Web Development Skills Today
What you'll learn
Use of PHP Function Use of PHP Variables Use of MySql Use of Database
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T-Shirt Design for Beginner to Advanced with Adobe Photoshop
Unleash Your Creativity: Master T-Shirt Design from Beginner to Advanced with Adobe Photoshop
What you'll learn
Function of Adobe Photoshop Tools of Adobe Photoshop T-Shirt Design Fundamentals T-Shirt Design Projects
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Complete Data Science BootCamp
Learn about Data Science, Machine Learning and Deep Learning and build 5 different projects.
What you'll learn
Learn about Libraries like Pandas and Numpy which are heavily used in Data Science. Build Impactful visualizations and charts using Matplotlib and Seaborn. Learn about Machine Learning LifeCycle and different ML algorithms and their implementation in sklearn. Learn about Deep Learning and Neural Networks with TensorFlow and Keras Build 5 complete projects based on the concepts covered in the course.
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Essentials User Experience Design Adobe XD UI UX Design
Learn UI Design, User Interface, User Experience design, UX design & Web Design
What you'll learn
How to become a UX designer Become a UI designer Full website design All the techniques used by UX professionals
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Build a Custom E-Commerce Site in React + JavaScript Basics
Build a Fully Customized E-Commerce Site with Product Categories, Shopping Cart, and Checkout Page in React.
What you'll learn
Introduction to the Document Object Model (DOM) The Foundations of JavaScript JavaScript Arithmetic Operations Working with Arrays, Functions, and Loops in JavaScript JavaScript Variables, Events, and Objects JavaScript Hands-On - Build a Photo Gallery and Background Color Changer Foundations of React How to Scaffold an Existing React Project Introduction to JSON Server Styling an E-Commerce Store in React and Building out the Shop Categories Introduction to Fetch API and React Router The concept of "Context" in React Building a Search Feature in React Validating Forms in React
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Complete Bootstrap & React Bootcamp with Hands-On Projects
Learn to Build Responsive, Interactive Web Apps using Bootstrap and React.
What you'll learn
Learn the Bootstrap Grid System Learn to work with Bootstrap Three Column Layouts Learn to Build Bootstrap Navigation Components Learn to Style Images using Bootstrap Build Advanced, Responsive Menus using Bootstrap Build Stunning Layouts using Bootstrap Themes Learn the Foundations of React Work with JSX, and Functional Components in React Build a Calculator in React Learn the React State Hook Debug React Projects Learn to Style React Components Build a Single and Multi-Player Connect-4 Clone with AI Learn React Lifecycle Events Learn React Conditional Rendering Build a Fully Custom E-Commerce Site in React Learn the Foundations of JSON Server Work with React Router
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Build an Amazon Affiliate E-Commerce Store from Scratch
Earn Passive Income by Building an Amazon Affiliate E-Commerce Store using WordPress, WooCommerce, WooZone, & Elementor
What you'll learn
Registering a Domain Name & Setting up Hosting Installing WordPress CMS on Your Hosting Account Navigating the WordPress Interface The Advantages of WordPress Securing a WordPress Installation with an SSL Certificate Installing Custom Themes for WordPress Installing WooCommerce, Elementor, & WooZone Plugins Creating an Amazon Affiliate Account Importing Products from Amazon to an E-Commerce Store using WooZone Plugin Building a Customized Shop with Menu's, Headers, Branding, & Sidebars Building WordPress Pages, such as Blogs, About Pages, and Contact Us Forms Customizing Product Pages on a WordPress Power E-Commerce Site Generating Traffic and Sales for Your Newly Published Amazon Affiliate Store
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The Complete Beginner Course to Optimizing ChatGPT for Work
Learn how to make the most of ChatGPT's capabilities in efficiently aiding you with your tasks.
What you'll learn
Learn how to harness ChatGPT's functionalities to efficiently assist you in various tasks, maximizing productivity and effectiveness. Delve into the captivating fusion of product development and SEO, discovering effective strategies to identify challenges, create innovative tools, and expertly Understand how ChatGPT is a technological leap, akin to the impact of iconic tools like Photoshop and Excel, and how it can revolutionize work methodologies thr Showcase your learning by creating a transformative project, optimizing your approach to work by identifying tasks that can be streamlined with artificial intel
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AWS, JavaScript, React | Deploy Web Apps on the Cloud
Cloud Computing | Linux Foundations | LAMP Stack | DBMS | Apache | NGINX | AWS IAM | Amazon EC2 | JavaScript | React
What you'll learn
Foundations of Cloud Computing on AWS and Linode Cloud Computing Service Models (IaaS, PaaS, SaaS) Deploying and Configuring a Virtual Instance on Linode and AWS Secure Remote Administration for Virtual Instances using SSH Working with SSH Key Pair Authentication The Foundations of Linux (Maintenance, Directory Commands, User Accounts, Filesystem) The Foundations of Web Servers (NGINX vs Apache) Foundations of Databases (SQL vs NoSQL), Database Transaction Standards (ACID vs CAP) Key Terminology for Full Stack Development and Cloud Administration Installing and Configuring LAMP Stack on Ubuntu (Linux, Apache, MariaDB, PHP) Server Security Foundations (Network vs Hosted Firewalls). Horizontal and Vertical Scaling of a virtual instance on Linode using NodeBalancers Creating Manual and Automated Server Images and Backups on Linode Understanding the Cloud Computing Phenomenon as Applicable to AWS The Characteristics of Cloud Computing as Applicable to AWS Cloud Deployment Models (Private, Community, Hybrid, VPC) Foundations of AWS (Registration, Global vs Regional Services, Billing Alerts, MFA) AWS Identity and Access Management (Mechanics, Users, Groups, Policies, Roles) Amazon Elastic Compute Cloud (EC2) - (AMIs, EC2 Users, Deployment, Elastic IP, Security Groups, Remote Admin) Foundations of the Document Object Model (DOM) Manipulating the DOM Foundations of JavaScript Coding (Variables, Objects, Functions, Loops, Arrays, Events) Foundations of ReactJS (Code Pen, JSX, Components, Props, Events, State Hook, Debugging) Intermediate React (Passing Props, Destrcuting, Styling, Key Property, AI, Conditional Rendering, Deployment) Building a Fully Customized E-Commerce Site in React Intermediate React Concepts (JSON Server, Fetch API, React Router, Styled Components, Refactoring, UseContext Hook, UseReducer, Form Validation)
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Run Multiple Sites on a Cloud Server: AWS & Digital Ocean
Server Deployment | Apache Configuration | MySQL | PHP | Virtual Hosts | NS Records | DNS | AWS Foundations | EC2
What you'll learn
A solid understanding of the fundamentals of remote server deployment and configuration, including network configuration and security. The ability to install and configure the LAMP stack, including the Apache web server, MySQL database server, and PHP scripting language. Expertise in hosting multiple domains on one virtual server, including setting up virtual hosts and managing domain names. Proficiency in virtual host file configuration, including creating and configuring virtual host files and understanding various directives and parameters. Mastery in DNS zone file configuration, including creating and managing DNS zone files and understanding various record types and their uses. A thorough understanding of AWS foundations, including the AWS global infrastructure, key AWS services, and features. A deep understanding of Amazon Elastic Compute Cloud (EC2) foundations, including creating and managing instances, configuring security groups, and networking. The ability to troubleshoot common issues related to remote server deployment, LAMP stack installation and configuration, virtual host file configuration, and D An understanding of best practices for remote server deployment and configuration, including security considerations and optimization for performance. Practical experience in working with remote servers and cloud-based solutions through hands-on labs and exercises. The ability to apply the knowledge gained from the course to real-world scenarios and challenges faced in the field of web hosting and cloud computing. A competitive edge in the job market, with the ability to pursue career opportunities in web hosting and cloud computing.
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Cloud-Powered Web App Development with AWS and PHP
AWS Foundations | IAM | Amazon EC2 | Load Balancing | Auto-Scaling Groups | Route 53 | PHP | MySQL | App Deployment
What you'll learn
Understanding of cloud computing and Amazon Web Services (AWS) Proficiency in creating and configuring AWS accounts and environments Knowledge of AWS pricing and billing models Mastery of Identity and Access Management (IAM) policies and permissions Ability to launch and configure Elastic Compute Cloud (EC2) instances Familiarity with security groups, key pairs, and Elastic IP addresses Competency in using AWS storage services, such as Elastic Block Store (EBS) and Simple Storage Service (S3) Expertise in creating and using Elastic Load Balancers (ELB) and Auto Scaling Groups (ASG) for load balancing and scaling web applications Knowledge of DNS management using Route 53 Proficiency in PHP programming language fundamentals Ability to interact with databases using PHP and execute SQL queries Understanding of PHP security best practices, including SQL injection prevention and user authentication Ability to design and implement a database schema for a web application Mastery of PHP scripting to interact with a database and implement user authentication using sessions and cookies Competency in creating a simple blog interface using HTML and CSS and protecting the blog content using PHP authentication. Students will gain practical experience in creating and deploying a member-only blog with user authentication using PHP and MySQL on AWS.
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CSS, Bootstrap, JavaScript And PHP Stack Complete Course
CSS, Bootstrap And JavaScript And PHP Complete Frontend and Backend Course
What you'll learn
Introduction to Frontend and Backend technologies Introduction to CSS, Bootstrap And JavaScript concepts, PHP Programming Language Practically Getting Started With CSS Styles, CSS 2D Transform, CSS 3D Transform Bootstrap Crash course with bootstrap concepts Bootstrap Grid system,Forms, Badges And Alerts Getting Started With Javascript Variables,Values and Data Types, Operators and Operands Write JavaScript scripts and Gain knowledge in regard to general javaScript programming concepts PHP Section Introduction to PHP, Various Operator types , PHP Arrays, PHP Conditional statements Getting Started with PHP Function Statements And PHP Decision Making PHP 7 concepts PHP CSPRNG And PHP Scalar Declaration
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Learn HTML - For Beginners
Lean how to create web pages using HTML
What you'll learn
How to Code in HTML Structure of an HTML Page Text Formatting in HTML Embedding Videos Creating Links Anchor Tags Tables & Nested Tables Building Forms Embedding Iframes Inserting Images
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Learn Bootstrap - For Beginners
Learn to create mobile-responsive web pages using Bootstrap
What you'll learn
Bootstrap Page Structure Bootstrap Grid System Bootstrap Layouts Bootstrap Typography Styling Images Bootstrap Tables, Buttons, Badges, & Progress Bars Bootstrap Pagination Bootstrap Panels Bootstrap Menus & Navigation Bars Bootstrap Carousel & Modals Bootstrap Scrollspy Bootstrap Themes
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JavaScript, Bootstrap, & PHP - Certification for Beginners
A Comprehensive Guide for Beginners interested in learning JavaScript, Bootstrap, & PHP
What you'll learn
Master Client-Side and Server-Side Interactivity using JavaScript, Bootstrap, & PHP Learn to create mobile responsive webpages using Bootstrap Learn to create client and server-side validated input forms Learn to interact with a MySQL Database using PHP
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Linode: Build and Deploy Responsive Websites on the Cloud
Cloud Computing | IaaS | Linux Foundations | Apache + DBMS | LAMP Stack | Server Security | Backups | HTML | CSS
What you'll learn
Understand the fundamental concepts and benefits of Cloud Computing and its service models. Learn how to create, configure, and manage virtual servers in the cloud using Linode. Understand the basic concepts of Linux operating system, including file system structure, command-line interface, and basic Linux commands. Learn how to manage users and permissions, configure network settings, and use package managers in Linux. Learn about the basic concepts of web servers, including Apache and Nginx, and databases such as MySQL and MariaDB. Learn how to install and configure web servers and databases on Linux servers. Learn how to install and configure LAMP stack to set up a web server and database for hosting dynamic websites and web applications. Understand server security concepts such as firewalls, access control, and SSL certificates. Learn how to secure servers using firewalls, manage user access, and configure SSL certificates for secure communication. Learn how to scale servers to handle increasing traffic and load. Learn about load balancing, clustering, and auto-scaling techniques. Learn how to create and manage server images. Understand the basic structure and syntax of HTML, including tags, attributes, and elements. Understand how to apply CSS styles to HTML elements, create layouts, and use CSS frameworks.
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PHP & MySQL - Certification Course for Beginners
Learn to Build Database Driven Web Applications using PHP & MySQL
What you'll learn
PHP Variables, Syntax, Variable Scope, Keywords Echo vs. Print and Data Output PHP Strings, Constants, Operators PHP Conditional Statements PHP Elseif, Switch, Statements PHP Loops - While, For PHP Functions PHP Arrays, Multidimensional Arrays, Sorting Arrays Working with Forms - Post vs. Get PHP Server Side - Form Validation Creating MySQL Databases Database Administration with PhpMyAdmin Administering Database Users, and Defining User Roles SQL Statements - Select, Where, And, Or, Insert, Get Last ID MySQL Prepared Statements and Multiple Record Insertion PHP Isset MySQL - Updating Records
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Linode: Deploy Scalable React Web Apps on the Cloud
Cloud Computing | IaaS | Server Configuration | Linux Foundations | Database Servers | LAMP Stack | Server Security
What you'll learn
Introduction to Cloud Computing Cloud Computing Service Models (IaaS, PaaS, SaaS) Cloud Server Deployment and Configuration (TFA, SSH) Linux Foundations (File System, Commands, User Accounts) Web Server Foundations (NGINX vs Apache, SQL vs NoSQL, Key Terms) LAMP Stack Installation and Configuration (Linux, Apache, MariaDB, PHP) Server Security (Software & Hardware Firewall Configuration) Server Scaling (Vertical vs Horizontal Scaling, IP Swaps, Load Balancers) React Foundations (Setup) Building a Calculator in React (Code Pen, JSX, Components, Props, Events, State Hook) Building a Connect-4 Clone in React (Passing Arguments, Styling, Callbacks, Key Property) Building an E-Commerce Site in React (JSON Server, Fetch API, Refactoring)
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Internet and Web Development Fundamentals
Learn how the Internet Works and Setup a Testing & Production Web Server
What you'll learn
How the Internet Works Internet Protocols (HTTP, HTTPS, SMTP) The Web Development Process Planning a Web Application Types of Web Hosting (Shared, Dedicated, VPS, Cloud) Domain Name Registration and Administration Nameserver Configuration Deploying a Testing Server using WAMP & MAMP Deploying a Production Server on Linode, Digital Ocean, or AWS Executing Server Commands through a Command Console Server Configuration on Ubuntu Remote Desktop Connection and VNC SSH Server Authentication FTP Client Installation FTP Uploading
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Linode: Web Server and Database Foundations
Cloud Computing | Instance Deployment and Config | Apache | NGINX | Database Management Systems (DBMS)
What you'll learn
Introduction to Cloud Computing (Cloud Service Models) Navigating the Linode Cloud Interface Remote Administration using PuTTY, Terminal, SSH Foundations of Web Servers (Apache vs. NGINX) SQL vs NoSQL Databases Database Transaction Standards (ACID vs. CAP Theorem) Key Terms relevant to Cloud Computing, Web Servers, and Database Systems
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Java Training Complete Course 2022
Learn Java Programming language with Java Complete Training Course 2022 for Beginners
What you'll learn
You will learn how to write a complete Java program that takes user input, processes and outputs the results You will learn OOPS concepts in Java You will learn java concepts such as console output, Java Variables and Data Types, Java Operators And more You will be able to use Java for Selenium in testing and development
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Learn To Create AI Assistant (JARVIS) With Python
How To Create AI Assistant (JARVIS) With Python Like the One from Marvel's Iron Man Movie
What you'll learn
how to create an personalized artificial intelligence assistant how to create JARVIS AI how to create ai assistant
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Keyword Research, Free Backlinks, Improve SEO -Long Tail Pro
LongTailPro is the keyword research service we at Coursenvy use for ALL our clients! In this course, find SEO keywords,
What you'll learn
Learn everything Long Tail Pro has to offer from A to Z! Optimize keywords in your page/post titles, meta descriptions, social media bios, article content, and more! Create content that caters to the NEW Search Engine Algorithms and find endless keywords to rank for in ALL the search engines! Learn how to use ALL of the top-rated Keyword Research software online! Master analyzing your COMPETITIONS Keywords! Get High-Quality Backlinks that will ACTUALLY Help your Page Rank!
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#udemy#free course#paid course for free#design#development#ux ui#xd#figma#web development#python#javascript#php#java#cloud
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python training london
python training london
what is python programmingWelcome to the captivating world of Python programming! If you've ever been curious about coding or are looking to enhance your skills, then you're in the right place. Whether you're a beginner eager to dip your toes into the vast ocean of programming or an experienced developer seeking to expand your repertoire, Python has something incredible in store for everyone.
In this blog post, we'll explore everything there is to know about Python - from its origins and benefits, to what makes it such a popular language among programmers worldwide. So grab your favorite beverage and get ready to embark on an exhilarating journey into the realm of Python programming. Let's dive in!
What is Python?Python is a high-level, interpreted programming language that was created by Guido van Rossum and first released in 1991. Known for its simplicity and readability, Python has gained immense popularity among programmers of all levels. It supports multiple programming paradigms, including object-oriented, procedural, and functional programming.
One of the standout features of Python is its clean and elegant syntax. With minimalistic code structure, developers can write concise programs that are easy to understand and maintain. The language also boasts a vast standard library that provides ready-to-use modules for various tasks such as file handling, networking operations, database access, and more.
Python's versatility extends beyond traditional software development. It finds application in areas like web development using frameworks like Django or Flask, data analysis with libraries like pandas or NumPy, machine learning through scikit-learn or TensorFlow - just to scratch the surface.
Furthermore, Python's cross-platform compatibility allows you to run your code seamlessly on different operating systems such as Windows, macOS, Linux without any modifications. This flexibility makes it an ideal choice for building applications across diverse environments.
Whether you're creating simple scripts or complex applications/systems from scratch โ Python offers an extensive range of tools and resources to make your coding experience smooth sailing. Its vast community support ensures that you'll never be short on help when facing challenges along the way.
In summary (not conclusive), Python is a dynamic programming language loved by beginners and professionals alike due to its simplicity yet powerful capabilities across various domains โ making it an essential tool in every programmer's arsenal.
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Unlock the World of Data Analysis: Programming Languages for Success!
๐ก When it comes to data analysis, choosing the right programming language can make all the difference. Here are some popular languages that empower professionals in this exciting field
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๐ Python: Known for its versatility, Python offers a robust ecosystem of libraries like Pandas, NumPy, and Matplotlib. It's beginner-friendly and widely used for data manipulation, visualization, and machine learning.
๐ R: Built specifically for statistical analysis, R provides an extensive collection of packages like dplyr, ggplot2, and caret. It excels in data exploration, visualization, and advanced statistical modeling.
๐ข SQL: Structured Query Language (SQL) is essential for working with databases. It allows you to extract, manipulate, and analyze large datasets efficiently, making it a go-to language for data retrieval and management.
๐ป Java: Widely used in enterprise-level applications, Java offers powerful libraries like Apache Hadoop and Apache Spark for big data processing. It provides scalability and performance for complex data analysis tasks.
๐ MATLAB: Renowned for its mathematical and numerical computing capabilities, MATLAB is favored in academic and research settings. It excels in data visualization, signal processing, and algorithm development.
๐ฌ Julia: Known for its speed and ease of use, Julia is gaining popularity in scientific computing and data analysis. Its syntax resembles mathematical notation, making it intuitive for scientists and statisticians.
๐ Scala: Scala, with its seamless integration with Apache Spark, is a valuable language for distributed data processing and big data analytics. It combines object-oriented and functional programming paradigms.
๐ช The key is to choose a language that aligns with your specific goals and preferences. Embrace the power of programming and unleash your potential in the dynamic field of data analysis! ๐ป๐
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