Data Science Projects
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Perfect channel for Data Scientists

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If you want to grow, keep these 5 tips in mind:

1. Understand that real change takes timeβ€”stay patient.

2. Make learning a daily habit, even if it’s just a little.

3. Choose friends who push you to improve, not just those who agree.

4. Reflect on your progressβ€”celebrate every step forward.

5. Be mindful of your daily habitsβ€”they shape who you become.
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One of the way to live life

-Morning Sunlight.
-Cold Showers.
-Organic Food.
-Daily Exercise.
-Constant Learning.
-Writing.
-Avoiding Drama.
-3.5L of water.
-Cutting off negative company.

Take action.
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π—§π—›π—˜ 𝟭% π—₯π—¨π—Ÿπ—˜

doing nothing at all vs making small consistent effort

(1.00)³⁢⁡ = 1.00
(1.01)³⁢⁡ = 37.7
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Creating a one-month data analytics roadmap requires a focused approach to cover essential concepts and skills. Here's a structured plan along with free resources:

πŸ—“οΈWeek 1: Foundation of Data Analytics

β—ΎDay 1-2: Basics of Data Analytics
Resource: Khan Academy's Introduction to Statistics
Focus Areas: Understand descriptive statistics, types of data, and data distributions.

β—ΎDay 3-4: Excel for Data Analysis
Resource: Microsoft Excel tutorials on YouTube or Excel Easy
Focus Areas: Learn essential Excel functions for data manipulation and analysis.

β—ΎDay 5-7: Introduction to Python for Data Analysis
Resource: Codecademy's Python course or Google's Python Class
Focus Areas: Basic Python syntax, data structures, and libraries like NumPy and Pandas.

πŸ—“οΈWeek 2: Intermediate Data Analytics Skills

β—ΎDay 8-10: Data Visualization
Resource: Data Visualization with Matplotlib and Seaborn tutorials
Focus Areas: Creating effective charts and graphs to communicate insights.

β—ΎDay 11-12: Exploratory Data Analysis (EDA)
Resource: Towards Data Science articles on EDA techniques
Focus Areas: Techniques to summarize and explore datasets.

β—ΎDay 13-14: SQL Fundamentals
Resource: Mode Analytics SQL Tutorial or SQLZoo
Focus Areas: Writing SQL queries for data manipulation.

πŸ—“οΈWeek 3: Advanced Techniques and Tools

β—ΎDay 15-17: Machine Learning Basics
Resource: Andrew Ng's Machine Learning course on Coursera
Focus Areas: Understand key ML concepts like supervised learning and evaluation metrics.

β—ΎDay 18-20: Data Cleaning and Preprocessing
Resource: Data Cleaning with Python by Packt
Focus Areas: Techniques to handle missing data, outliers, and normalization.

β—ΎDay 21-22: Introduction to Big Data
Resource: Big Data University's courses on Hadoop and Spark
Focus Areas: Basics of distributed computing and big data technologies.


πŸ—“οΈWeek 4: Projects and Practice

β—ΎDay 23-25: Real-World Data Analytics Projects
Resource: Kaggle datasets and competitions
Focus Areas: Apply learned skills to solve practical problems.

β—ΎDay 26-28: Online Webinars and Community Engagement
Resource: Data Science meetups and webinars (Meetup.com, Eventbrite)
Focus Areas: Networking and learning from industry experts.


β—ΎDay 29-30: Portfolio Building and Review
Activity: Create a GitHub repository showcasing projects and code
Focus Areas: Present projects and skills effectively for job applications.

πŸ‘‰Additional Resources:
Books: "Python for Data Analysis" by Wes McKinney, "Data Science from Scratch" by Joel Grus.
Online Platforms: DataSimplifier, Kaggle, Towards Data Science

Tailor this roadmap to your learning pace and adjust the resources based on your preferences. Consistent practice and hands-on projects are crucial for mastering data analytics within a month. Good luck!
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For those of you who are new to Data Science and Machine learning algorithms, let me try to give you a brief overview. ML Algorithms can be categorized into three types: supervised learning, unsupervised learning, and reinforcement learning.

1. Supervised Learning:
- Definition: Algorithms learn from labeled training data, making predictions or decisions based on input-output pairs.
- Examples: Linear regression, decision trees, support vector machines (SVM), and neural networks.
- Applications: Email spam detection, image recognition, and medical diagnosis.

2. Unsupervised Learning:
- Definition: Algorithms analyze and group unlabeled data, identifying patterns and structures without prior knowledge of the outcomes.
- Examples: K-means clustering, hierarchical clustering, and principal component analysis (PCA).
- Applications: Customer segmentation, market basket analysis, and anomaly detection.

3. Reinforcement Learning:
- Definition: Algorithms learn by interacting with an environment, receiving rewards or penalties based on their actions, and optimizing for long-term goals.
- Examples: Q-learning, deep Q-networks (DQN), and policy gradient methods.
- Applications: Robotics, game playing (like AlphaGo), and self-driving cars.

Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624

Credits: https://t.iss.one/datasciencefun

Like if you need similar content

ENJOY LEARNING πŸ‘πŸ‘
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Hi guys,

Please don't pay anyone any amount to give you a job or internship. If you ever come across a post where recruiters ask for money, please reach out to me immediately at @guideishere12. While I do my best to verify every opportunity by asking recruiters for official email IDs, it's not always easy to spot the red flags. I'm human, and things can slip through despite my efforts.

Let's work together to keep this space safe and free from scams. Always stay cautious, double-check every link, and let's make sure we're all supporting each other.

All the best for your career πŸ‘πŸ‘
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Friendly reminder: Your hard work is appreciated. πŸ’œ
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Want to make a transition to a career in data?

Here is a 7-step plan for each data role

Data Scientist

Statistics and Math: Advanced statistics, linear algebra, calculus.
Machine Learning: Supervised and unsupervised learning algorithms.
xData Wrangling: Cleaning and transforming datasets.
Big Data: Hadoop, Spark, SQL/NoSQL databases.
Data Visualization: Matplotlib, Seaborn, D3.js.
Domain Knowledge: Industry-specific data science applications.

Data Analyst

Data Visualization: Tableau, Power BI, Excel for visualizations.
SQL: Querying and managing databases.
Statistics: Basic statistical analysis and probability.
Excel: Data manipulation and analysis.
Python/R: Programming for data analysis.
Data Cleaning: Techniques for data preprocessing.
Business Acumen: Understanding business context for insights.

Data Engineer

SQL/NoSQL Databases: MySQL, PostgreSQL, MongoDB, Cassandra.
ETL Tools: Apache NiFi, Talend, Informatica.
Big Data: Hadoop, Spark, Kafka.
Programming: Python, Java, Scala.
Data Warehousing: Redshift, BigQuery, Snowflake.
Cloud Platforms: AWS, GCP, Azure.
Data Modeling: Designing and implementing data models.

#data
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Data Science Projects
Want to make a transition to a career in data? Here is a 7-step plan for each data role Data Scientist Statistics and Math: Advanced statistics, linear algebra, calculus. Machine Learning: Supervised and unsupervised learning algorithms. xData Wrangling:…
ML Engineer/MLOps Engineer

ML Algorithms: Understanding various ML algorithms.
Model Deployment: Docker, Kubernetes, Flask.
Data Pipelines: Apache Airflow, Prefect.
DevOps: CI/CD, Git, Terraform.
Programming: Python, Java/C++.
Model Monitoring: Monitoring tools for ML models.
Cloud ML: AWS SageMaker, Google AI, Azure ML.
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Happy Diwali to all πŸŽ‡πŸͺ”
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AI Engineer

Deep Learning: Neural networks, CNNs, RNNs, transformers.
Programming: Python, TensorFlow, PyTorch, Keras.
NLP: NLTK, SpaCy, Hugging Face.
Computer Vision: OpenCV techniques.
Reinforcement Learning: RL algorithms and applications.
LLMs and Transformers: Advanced language models.
LangChain and RAG: Retrieval-augmented generation techniques.
Vector Databases: Managing embeddings and vectors.
AI Ethics: Ethical considerations and bias in AI.
R&D: Implementing AI research papers.
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For each role except for data analyst where programming is not explicitly required, it’s important to learn a programming language like Python. Knowing SQL is equally as important for all roles.

Data science is the first role that embraces machine learning, and as you’re headging towards AI, you’ll see its subsets like deep learning, reinforcement learning, as well as computer vision and NLP.
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Any person learning deep learning or artificial intelligence in particular, know that there are ultimately two paths that they can go:

1. Computer vision
2. Natural language processing.

I outlined a roadmap for computer vision I believe many beginners will find helpful.
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https://t.iss.one/machinelearning_deeplearning/283
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Free courses to learn data science & AI πŸ‘‡πŸ‘‡
https://www.linkedin.com/posts/sql-analysts_hi-guys-now-you-can-try-data-analytics-activity-7258037830583549953-6_jS

Share with your friends who want to build their career in this field ❀️

Like for more free content like this βœ…
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How to get started with data science

Many people who get interested in learning data science don't really know what it's all about.

They start coding just for the sake of it and on first challenge or problem they can't solve, they quit.

Just like other disciplines in tech, data science is challenging and requires a level of critical thinking and problem solving attitude.

If you're among people who want to get started with data science but don't know how - I have something amazing for you!

I created Best Data Science & Machine Learning Resources that will help you organize your career in data, from first learning day to a job in tech.

Share this channel link with someone who wants to get into data science and AI but is confused.
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https://t.iss.one/datasciencefun

Happy learning πŸ˜„πŸ˜„
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Data Science Resume Template Guide
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https://topmate.io/coding/1037796

It's absolutely free of cost for you all

Please provide 5 star ratings while providing your testimonials. So that I can come up with more awesome stuff for you guys ❀️

ENJOY LEARNING πŸ‘πŸ‘
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