kaggle machine learning problems Videos

Did you mean?

Search Results - Showing 0 - 12 Of 37

Why is it exciting to bring together the biology, single cell, and machine learning communities? Cellarity's CEO Fabrice Chouraqui explains how we can design transformative data sets together.nnIn 2021, Cellarity partnered with Open Problems collaborators to develop the first benchmark competition for multimodal single-cell data integration using a first-of-its-kind multiomics benchmarking dataset. This dataset was the largest atlas of the human bone marrow measured across DNA, RNA, and protei
⏲ 2 min 6 sec ✓ 28-Sep-2022
the data janitor
⏲ 1 minute 57 seconds 👁 14.3K
Kaggle
⏲ 45 minutes 54 seconds 👁 20.2K
Welcome back to our journey through the world of Open RAN and machine learning. In this session, In this session, we'll explore the deployment of machine learning models in Open RAN networks, focusing on practical examples and deployment strategies.<br/><br/>Deployment Example:<br/>Consider a scenario where an Open RAN operator wants to optimize resource allocation by predicting network congestion. They decide to deploy a machine learning model to predict congestion based on historical traffic data and network conditions.<br/><br/>Deployment Steps:<br/><br/>1. Data Collection and Preprocessing:<br/>The operator collects historical traffic data, including throughput, latency, and user traffic patterns.<br/>They preprocess the data to remove outliers and normalize features.<br/><br/>2. Model Development:<br/>Data scientists develop a machine learning model, such as a regression model, to predict congestion based on the collected data.<br/>They use a development environment with libraries like TensorFlow or scikit-learn for model development.<br/><br/>3. Offline Model Training and Validation (Loop 1):<br/>The model is trained on historical data using algorithms like linear regression or decision trees.<br/>Validation is done using a separate dataset to ensure the model's accuracy.<br/><br/>4. Online Model Deployment and Monitoring (Loop 2):<br/>Once validated, the model is deployed in the network's edge servers or cloud infrastructure.<br/>Real-time network data, such as current traffic conditions, is fed into the model for predictions.<br/>Model performance is monitored using metrics like prediction accuracy and latency.<br/><br/>5. Closed-Loop Automation (Loop 3):<br/>The model's predictions are used by the network's orchestration and automation tools to dynamically allocate resources.<br/>For example, if congestion is predicted in a certain area, the network can allocate additional resources or reroute traffic to avoid congestion.<br/><br/>Subscribe to \
⏲ 4:9 👁 75K
Greg Hogg
⏲ 35 minutes 17 seconds 👁 13.3K
Ken Jee
⏲ 38 minutes 16 seconds 👁 184.8K
Welcome to Session 14 of our Open RAN series! In this session, we'll introduce supervised machine learning and its application in designing intelligent systems for Open RAN.<br/><br/><br/>Understanding Supervised Machine Learning:<br/>Supervised machine learning is a type of machine learning where the algorithm learns from labeled data. It involves training a model on a dataset that contains input-output pairs, where the input is the data and the output is the corresponding label or target variable. The algorithm learns to map inputs to outputs by finding patterns in the data. In Open RAN, supervised learning can be used for tasks such as predicting network performance based on historical data.<br/><br/>Types of Supervised Machine Learning:<br/>There are two main types of supervised machine learning: classification and regression. In classification, the algorithm learns to categorize data into predefined classes or categories. For example, it can classify network traffic into different application types (e.g., video streaming, web browsing). Regression, on the other hand, involves predicting continuous values or quantities. It is used when the output variable is a real or continuous value, such as predicting the signal strength of a network connection.<br/><br/>Binary and Multi-Class Classification:<br/>Binary classification involves categorizing data into two classes or categories. For example, it can be used to classify network traffic as either malicious or benign. Multi-class classification, on the other hand, involves categorizing data into more than two classes. It can be used to classify network traffic into multiple application types (e.g., video streaming, social media, email).<br/><br/>Regression in Machine Learning:<br/>Regression is a supervised learning technique used for predicting continuous values or quantities. It involves fitting a mathematical model to the data, which can then be used to make predictions. In Open RAN, regression can be used for tasks such as predicting network latency, throughput, or coverage based on various input variables such as network parameters, traffic patterns, and environmental conditions.<br/><br/>Subscribe to \
⏲ 4:28 👁 40K
Boris Meinardus
⏲ 7 minutes 5 seconds 👁 439.7K
Nicholas Renotte
⏲ 2 hours 31 minutes 36 seconds 👁 18.9K
Python's future looks promising due to its widespread adoption and ongoing developments in various domains. As technology advances, Python's flexibility and suitability for emerging fields like data science, AI, and machine learning position it well for continued growth and relevance in the foreseeable future.<br/>Is Python is used for machine learning better than Java? Python is the major code language for AI and ML. It surpasses Java in popularity and has many advantages, such as a great library ecosystem, Good visualization options, A low entry barrier, Community support, Flexibility, Readability, and Platform independence.<br/>Different programming languages will be ideal, depending on the use cases. Here are four popular coding languages that are suitable for AI-related applications and technologies: Python, Java, C++, and Julia.
⏲ 1:56 👁 15K
Unfold Data Science
⏲ 46 minutes 18 seconds 👁 124.7K
Forecastegy
⏲ 22 minutes 23 seconds 👁 16.5K
Pages 1 Of 4
... ...
Next »

Related Searches

Search Videos

Recent Searches

করে মামিকে jibonbd ওপেন গোসল করা | tamil audio speech audio | chum bajere tere pigeon hindi mp3 song download | www vibeo নাা ছেলে | bes koreci prem koreci mp3 songs leeun contactform upload cfg contactform 1upload cfg contactform 1inc cfg contactform inc upload php bangla waj 2015 boy বউ ভিডিও বাংলা video 2015অপু | বোরো করো দাদা ঠাকুর | navdeep hot ভাই ছোট বোনের সাথে মাহি গোপন ভিডিও sqq sch pop girls vrabonti full অভিনেত্রী শ | امید خلیلی مهمان امید ای ام | andin | bangla garam masala video | mollick নায়িকা পপি নেকেটতীর hot মাহিয়া মাহাটক কিরন মালা raw ray mistireolai school girls video bangladeshbangla school girls video | deathstroke all fight skills in arrow seires | b 16 11 pdf | ময়রুরীর হট গরম গান | shockwave | danladu onile nla 3 | purnima se নায়িকা মাহিয়া আকাতার মাহি ভিডিও ডাবলু ডাবলু ডাবà | মেয়েদের দারিয়ে পেষাব xnx potos | 11 বছরের মেয়ের মারার গল্পতুন বউ ভিডিও বাংলা মহিলাকে জোর করে চট | 07 mayamoy chokh mp3 | bangla song oh tune | tamannah | gbo | hridoy bhanga dheu movie all songs | کیودی پای دوبله های سمی و هات انجام دادم | dashi bhabi | hollywood new hit songs video free movie song tom todo na dil | bangla invite | আয়া | com bag talk song | boga pora boro callas | stag dance video 2014 | ww monmon photo com | sexi vedio কোয়েল | srabonti supet hot ঘরে ভাই বোন ¦ | oon j byzcy | bangla aunty chink imran album song puja inc 14 loop phenom | hifimov খেলনা ড্রোন মটর | matir o pinjirar sona moyns re toare | nil pori nilanjo na | http www সব নায়কা দের পিচার com বড় বড় ছবিুর্নিমার ছবি | shobusri বোনের বোদায় দিল বড় high fashion | super mario com | nonude videos |