Data cleaning, atau cleansing, adalah proses mengoreksi dan menghapus record yang tidak akurat dari database atau tabel. Secara garis besar

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Data cleaning, atau cleansing, adalah proses mengoreksi dan menghapus record yang tidak akurat dari database atau tabel. Secara garis besar
"tiktok is bad because many people keep seeing X type of problematic content"
sucks for them but I'm different. I only see tiktoks of people telling stories, cute queer fashion, and funny videos of horses.
AI continues to streamline several processes in the medical field. Artificial intelligence in the medical field has already been adding value to medical diagnostics.
another crazy sunday that I might didn't like
Me: So what kind of shows do you like?
Co-worker: I really like Black Mirror, it would really suck to live in a world like that tho.
Me: *Tries really hard not to look at the camera like its the office since we are being monitored by cameras, an AI analyses our mood and our conversations, we use facial recognition to access our workstation and every second of time is accounted for metrics*
Blisters, Fingers, Feet
There's so much going on inside living cells that scientists often face a choice – study the genes and proteins that produce chemical signals on the inside, or focus on changes in growth, movement or shape (morphology) from the outside. A new set of computer techniques links the two approaches together, here using machine learning to spot changes on the surface of three cells, while keeping tabs on chemical signals or ‘pathways’ firing inside. Highlighted in bright colours, ball-like blebs appear like blisters on the surface of a human cancer cell (left), usually indicating imminent self-destruction. Filopodia are finger-like projections of a moving human lung cell (middle), while lamellipodia are ‘feet’ that help a cell from the immune system (right) crawl around sharing information during an infection. Such automated analysis will help cell biologists and clinicians to make sense of the vast amount of information revealed using sensitive light-sheet microscopy.
Written by John Ankers
Image from work by Meghan K Driscoll and colleagues
UT Southwestern Medical Center, Dallas, TX, USA
Originally published under a Creative Commons Licence (BY 4.0)
Published in BioRxiv, July 2018
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Cloud of Genes
Biologists strive to understand life, but often they find themselves swamped with information. Studies of how genes switch on or off, known as gene expression, sometimes examine hundreds of genes at once, inside millions of single cells – useful information, but a headache to interpret. A new set of software, called Scanpy, applies automated analysis to these mountains of data. Looking like impressionist art, 1.3 million mouse brain cells are grouped or 'clustered' into colours and locations on this chart. Each cluster might correspond to changes in a different gene, or a relationship between different cells. But it’s not all about producing pretty graphs – patterns in this cloud of numbers may give clues to treating diseases, and Scanpy allows computers to learn to spot them. Machine learning algorithms can be plugged in to take the pressure of biologists surrounded by life’s complexity.
Written by John Ankers
Image from work by F. Alexander Wolf, Philipp Angerer and Fabian J. Theis
Helmholtz Zentrum München – German Research Center for Environmental Health, Institute of Computational Biology, Munich, Germany
Image originally published under a Creative Commons Licence (BY 4.0)
Published in Genome Biology, February 2018
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Machine Learning Algorithms: Complete Guide to Types and Applications
Machine Learning Algorithms: The Technology Behind Smart Systems
Artificial Intelligence is reshaping industries, and Machine Learning Algorithms are one of the most important technologies driving this transformation. These algorithms help computer systems learn from data, identify patterns, and improve performance without needing explicit programming for every task.
Today, Machine Learning Algorithms power many digital applications including recommendation systems, virtual assistants, fraud detection tools, and predictive analytics platforms. As technology continues evolving, understanding these algorithms has become valuable for students, developers, and businesses.
What Are Machine Learning Algorithms?
Machine Learning Algorithms are mathematical models designed to help computers learn from information and make decisions. Instead of relying only on predefined instructions, these systems analyze data and continuously improve accuracy through experience.
The major categories of Machine Learning Algorithms include:
Supervised Learning
These algorithms use labeled datasets where correct outputs are already known.
Examples:
Linear Regression
Decision Trees
Random Forest
Unsupervised Learning
These algorithms discover hidden patterns in data without predefined labels.
Examples:
K-Means Clustering
Principal Component Analysis (PCA)
Reinforcement Learning
These algorithms learn through rewards and penalties.
Applications:
Robotics
Autonomous vehicles
Game AI systems
Benefits of Machine Learning Algorithms
Organizations use Machine Learning Algorithms because they provide several advantages:
Faster processing of large data sets
Improved prediction accuracy
Better decision-making
Reduced manual work
Increased efficiency and productivity
Applications of Machine Learning Algorithms
Common real-world applications include:
Medical diagnosis systems
Product recommendation engines
Fraud detection tools
Customer behavior analysis
Personalized education platforms
The future of Machine Learning Algorithms continues to expand as Artificial Intelligence becomes more advanced. Learning about these technologies can help individuals understand modern AI systems and prepare for future digital opportunities.