Linkeei Linkeei
    #ai #best #seo #makemoneyonline #affiliatemarketing
    Gelişmiş Arama
  • Giriş
  • Kayıt

  • Gündüz modu
  • © 2025 Linkeei
    Yaklaşık • Rehber • Bize Ulaşın • Geliştiriciler • Gizlilik Politikası • Kullanım Şartları • Geri ödeme • Linkeei App install

    Seç Dil

  • Arabic
  • Bengali
  • Chinese
  • Croatian
  • Danish
  • Dutch
  • English
  • Filipino
  • French
  • German
  • Hebrew
  • Hindi
  • Indonesian
  • Italian
  • Japanese
  • Korean
  • Persian
  • Portuguese
  • Russian
  • Spanish
  • Swedish
  • Turkish
  • Urdu
  • Vietnamese

Kol saati

Kol saati Makaralar Filmler

Olaylar

Etkinliklere Göz At Etkinliklerim

Blog

Makalelere göz at

Piyasa

Yeni ürünler

Sayfalar

Benim Sayfalar Beğenilen Sayfalar

daha

forum Keşfetmek popüler gönderiler Oyunlar Meslekler Teklifler
Makaralar Kol saati Olaylar Piyasa Blog Benim Sayfalar Hepsini gör
Pallavi Desai
User Image
Kapağı yeniden konumlandırmak için sürükleyin
Pallavi Desai

Pallavi Desai

@shweta
  • Zaman çizelgesi
  • Gruplar
  • Beğeniler
  • Arkadaşlar 0
  • Resimler
  • Videolar
  • Makaralar
  • Ürün:% s
0 Arkadaşlar
3 Mesajları
Erkek
image
Pallavi Desai
Pallavi Desai
8 w

Introduction to Full-Stack Development
Full-Stack Development is the process of building and managing both the frontend (client-side) and backend (server-side) components of a web or mobile application.

A Full-Stack Developer is someone who is skilled in handling the entire development process, from creating user interfaces to managing databases and servers.
https://www.sevenmentor.com/fu....ll-stack-training-in

Favicon 
www.sevenmentor.com

SevenMentor

Beğen
Yorum Yap
Paylaş
Pallavi Desai
Pallavi Desai
28 w

https://www.sevenmentor.com/fa....shion-designing-cour

image
Beğen
Yorum Yap
Paylaş
Pallavi Desai
Pallavi Desai
1 y

Data science is a multidisciplinary field that encompasses a wide range of topics and skills. Here are some of the key topics within data science:

Statistics: Understanding statistical concepts is fundamental to data science. Topics include descriptive statistics, inferential statistics, probability, hypothesis testing, and more.

Machine Learning: Machine learning is a core component of data science. It involves techniques for building predictive models, including regression, classification, clustering, and deep learning.

Data Analysis: Data analysis involves exploring, cleaning, and transforming data to extract meaningful insights. This includes data visualization, data wrangling, and exploratory data analysis (EDA).

Data Wrangling: Data often needs to be cleaned and prepared for analysis. Data wrangling involves tasks like handling missing data, dealing with outliers, and transforming data into a usable format.

Data Visualization: Communicating insights effectively is important. Data visualization techniques include creating charts, graphs, and interactive dashboards to present data in a clear and understandable way.

Big Data Technologies: Dealing with large datasets often requires knowledge of big data technologies like Hadoop, Spark, and distributed computing.

SQL (Structured Query Language): SQL is essential for working with relational databases, which are commonly used to store and retrieve data.

Python and R Programming: These programming languages are widely used in data science for data analysis, machine learning, and data visualization.

Data Mining: Data mining techniques involve discovering patterns, trends, and relationships in data. This can include association rule mining, anomaly detection, and pattern recognition.

Feature Engineering: Creating relevant and informative features from raw data is a critical step in building effective machine learning models.

Natural Language Processing (NLP): NLP is used to work with and analyze text data, including tasks like sentiment analysis, text classification, and language generation.

Time Series Analysis: Time series data, which is data collected over time, is common in fields like finance and forecasting. Time series analysis techniques are used to model and make predictions based on such data.

Dimensionality Reduction: Techniques like Principal Component Analysis (PCA) and t-Distributed Stochastic Neighbor Embedding (t-SNE) help reduce the dimensionality of data while preserving important information.

Optimization: Optimization techniques are used to fine-tune machine learning models and find the best parameters for algorithms.

Data Ethics and Privacy: Data scientists must be aware of ethical considerations and privacy concerns related to data collection and analysis.

Domain Knowledge: Depending on the application area (e.g., healthcare, finance, marketing), domain-specific knowledge is often required to understand the context and nuances of the data.

Experimental Design: Planning and conducting experiments to gather data for analysis is important in fields like A/B testing and scientific research.

Model Interpretability: Understanding and explaining the decisions made by machine learning models is crucial, especially in regulated industries.
https://www.sevenmentor.com/da....ta-science-classes-i

Data Science Classes in Nagpur | SevenMentor
Favicon 
www.sevenmentor.com

Data Science Classes in Nagpur | SevenMentor

SevenMentor is an ideal option for pupils seeking for Data Science Classes in Nagpur that enables you to gain inside ideas by working on live industry projects.
Beğen
Yorum Yap
Paylaş
avatar

Charan Teja

This was a very informative post. I appreciate the way you explained the concept in simple terms. Looking forward to more content like this!

<a href="https://aimarketingmasters.in/\">AI Digital Marketing Course in Hyderabad</a>
Beğen
· cevap · 1751368853

Yorum Sil

Bu yorumu silmek istediğinizden emin misiniz?

Daha fazla Mesajları yükle

Arkadaşlıktan Çıkar

Arkadaşlık etmek istediğinden emin misin?

Bu kullanıcıyı rapor et

Teklifi Düzenle

Katman eklemek








Bir resim seçin
Seviyeni sil
Bu kademeyi silmek istediğinize emin misiniz?

yorumlar

İçeriğinizi ve gönderilerinizi satmak için birkaç paket oluşturarak başlayın. Para kazanma

Cüzdan tarafından ödeme

Ödeme uyarısı

Öğeleri satın almak üzeresiniz, devam etmek ister misiniz?

Geri ödeme istemek