#ml using python
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appsquadzsoftwarecompany · 2 years ago
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myconetted · 1 year ago
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python is my most used language and the one im most familiar with and it's usually quite nice but god there's some shit it really sucks at
types
imports
GIL
and you basically can't work around these things without a shitload of effort and sometimes a willingness to fork libraries
python also does not make it a pleasant affair to refactor to implement those workarounds
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espirittech · 4 months ago
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Why Python AI and Machine Learning Services Are Essential for Industries
In today’s rapidly evolving technological landscape, the importance of Python AI and machine learning services in the USA cannot be overstated. As businesses across various sectors seek to harness the power of artificial intelligence (AI) and machine learning (ML) to gain a competitive edge, the demand for proficient machine learning with Python services has surged. This article explores the significance of these services, highlights the best Python AI machine learning services in the USA, and examines the top AI and ML companies providing these services. The purpose of this article is to provide insights into how organizations can leverage Python-based AI and machine learning solutions to enhance their operational efficiency and drive growth.our website: www.espirittech.com
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projectchampionz · 6 months ago
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SUSTAINABLE PRACTICES AND TOURISM DEVELOPMENT AT THE NATIONAL MUSEUM IBADAN AS A STUDY AREA
SUSTAINABLE PRACTICES AND TOURISM DEVELOPMENT AT THE NATIONAL MUSEUM IBADAN AS A STUDY AREA ABSTRACT This research explores the role of sustainable practices in tourism development, with a focus on the National Museum Ibadan, Nigeria. The study investigates the current sustainable practices at the museum, their impact on tourism development, the challenges faced in integrating sustainability, and…
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max1461 · 10 months ago
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This is one of those things that I think the discourse has just entirely failed to capture. Twitblr anarchists are (ironically, if you know the origin of the phrase) very often unpractical pie-in-the-sky ideologues, but the larger body of anarchist and especially anarcho-syndicalist writing and thinking has generally been quite concerned with the minutia of social organization. Like, federalism, direct democracy, instant revocability of delegates, etc. These are the principles that, well, I suppose, real and committed anarcho-syndicalists spend a lot of time talking about? And anarcho-capitalists likewise are very concerned with the specifics of the systems by which their ideal society will be governed.
Now, I'm not quite an anarcho-syndicalist and I'm certainly not an anarcho-capitalist, I'm interested in drawing on ideas from both groups towards socialistic ends, but like. The common criticism that I see on here that anarchists just aren't thinking about specifics is... false? It's actually kind of more false than it would be of MLs imo. I just think there's a specific, super annoying breed of "anarchist" that fills these spaces with vacuous bullshit and puts everybody off.
This post is not principally targeted at ML opponents of anarchism, against whom I would mount slightly different arguments; rather it's an attempt to push back on what I see as the ML caricature of anarchism being largely accepted by left-liberals in the discoursosphere. The caricature of anarchism used to be, well, that one Monty Python scene.
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ieeeprojectcenter · 1 month ago
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Machine Learning Python Projects in chennai
Chennai is rapidly becoming a hub for Machine Learning innovation, making it a top destination for aspiring AI enthusiasts. With renowned institutes and tech parks, the city offers hands-on Python-based ML projects across industries—healthcare, fintech, automotive, and more. Students and professionals alike can build predictive models, NLP apps, and computer vision tools using libraries like scikit-learn and TensorFlow. Dive into real-world ML with Python in Chennai’s thriving tech ecosystem.
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sindhu14 · 4 months ago
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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: ✅ Web Development (Django, Flask) ✅ Data Science & Machine Learning (Pandas, NumPy, TensorFlow) ✅ Automation & Scripting (Web scraping, File automation) ✅ Game Development (Pygame) ✅ Cybersecurity & Ethical Hacking ✅ 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. Here’s 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
📌 Casual Learning – 3-6 months (for automation, scripting, or general knowledge) 📌 Professional Development – 6-12 months (for jobs in software, data science, etc.) 📌 Deep Mastery – 1-2 years (for AI, ML, complex projects, research)
Scope @ NareshIT:
At NareshIT’s 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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chiragqlanceblogs · 4 months ago
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How Python Powers Scalable and Cost-Effective Cloud Solutions
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Explore the role of Python in developing scalable and cost-effective cloud solutions. This guide covers Python's advantages in cloud computing, addresses potential challenges, and highlights real-world applications, providing insights into leveraging Python for efficient cloud development.
Introduction
In today's rapidly evolving digital landscape, businesses are increasingly leveraging cloud computing to enhance scalability, optimize costs, and drive innovation. Among the myriad of programming languages available, Python has emerged as a preferred choice for developing robust cloud solutions. Its simplicity, versatility, and extensive library support make it an ideal candidate for cloud-based applications.
In this comprehensive guide, we will delve into how Python empowers scalable and cost-effective cloud solutions, explore its advantages, address potential challenges, and highlight real-world applications.
Why Python is the Preferred Choice for Cloud Computing?
Python's popularity in cloud computing is driven by several factors, making it the preferred language for developing and managing cloud solutions. Here are some key reasons why Python stands out:
Simplicity and Readability: Python's clean and straightforward syntax allows developers to write and maintain code efficiently, reducing development time and costs.
Extensive Library Support: Python offers a rich set of libraries and frameworks like Django, Flask, and FastAPI for building cloud applications.
Seamless Integration with Cloud Services: Python is well-supported across major cloud platforms like AWS, Azure, and Google Cloud.
Automation and DevOps Friendly: Python supports infrastructure automation with tools like Ansible, Terraform, and Boto3.
Strong Community and Enterprise Adoption: Python has a massive global community that continuously improves and innovates cloud-related solutions.
How Python Enables Scalable Cloud Solutions?
Scalability is a critical factor in cloud computing, and Python provides multiple ways to achieve it:
1. Automation of Cloud Infrastructure
Python's compatibility with cloud service provider SDKs, such as AWS Boto3, Azure SDK for Python, and Google Cloud Client Library, enables developers to automate the provisioning and management of cloud resources efficiently.
2. Containerization and Orchestration
Python integrates seamlessly with Docker and Kubernetes, enabling businesses to deploy scalable containerized applications efficiently.
3. Cloud-Native Development
Frameworks like Flask, Django, and FastAPI support microservices architecture, allowing businesses to develop lightweight, scalable cloud applications.
4. Serverless Computing
Python's support for serverless platforms, including AWS Lambda, Azure Functions, and Google Cloud Functions, allows developers to build applications that automatically scale in response to demand, optimizing resource utilization and cost.
5. AI and Big Data Scalability
Python’s dominance in AI and data science makes it an ideal choice for cloud-based AI/ML services like AWS SageMaker, Google AI, and Azure Machine Learning.
Looking for expert Python developers to build scalable cloud solutions? Hire Python Developers now!
Advantages of Using Python for Cloud Computing
Cost Efficiency: Python’s compatibility with serverless computing and auto-scaling strategies minimizes cloud costs.
Faster Development: Python’s simplicity accelerates cloud application development, reducing time-to-market.
Cross-Platform Compatibility: Python runs seamlessly across different cloud platforms.
Security and Reliability: Python-based security tools help in encryption, authentication, and cloud monitoring.
Strong Community Support: Python developers worldwide contribute to continuous improvements, making it future-proof.
Challenges and Considerations
While Python offers many benefits, there are some challenges to consider:
Performance Limitations: Python is an interpreted language, which may not be as fast as compiled languages like Java or C++.
Memory Consumption: Python applications might require optimization to handle large-scale cloud workloads efficiently.
Learning Curve for Beginners: Though Python is simple, mastering cloud-specific frameworks requires time and expertise.
Python Libraries and Tools for Cloud Computing
Python’s ecosystem includes powerful libraries and tools tailored for cloud computing, such as:
Boto3: AWS SDK for Python, used for cloud automation.
Google Cloud Client Library: Helps interact with Google Cloud services.
Azure SDK for Python: Enables seamless integration with Microsoft Azure.
Apache Libcloud: Provides a unified interface for multiple cloud providers.
PyCaret: Simplifies machine learning deployment in cloud environments.
Real-World Applications of Python in Cloud Computing
1. Netflix - Scalable Streaming with Python
Netflix extensively uses Python for automation, data analysis, and managing cloud infrastructure, enabling seamless content delivery to millions of users.
2. Spotify - Cloud-Based Music Streaming
Spotify leverages Python for big data processing, recommendation algorithms, and cloud automation, ensuring high availability and scalability.
3. Reddit - Handling Massive Traffic
Reddit uses Python and AWS cloud solutions to manage heavy traffic while optimizing server costs efficiently.
Future of Python in Cloud Computing
The future of Python in cloud computing looks promising with emerging trends such as:
AI-Driven Cloud Automation: Python-powered AI and machine learning will drive intelligent cloud automation.
Edge Computing: Python will play a crucial role in processing data at the edge for IoT and real-time applications.
Hybrid and Multi-Cloud Strategies: Python’s flexibility will enable seamless integration across multiple cloud platforms.
Increased Adoption of Serverless Computing: More enterprises will adopt Python for cost-effective serverless applications.
Conclusion
Python's simplicity, versatility, and robust ecosystem make it a powerful tool for developing scalable and cost-effective cloud solutions. By leveraging Python's capabilities, businesses can enhance their cloud applications' performance, flexibility, and efficiency.
Ready to harness the power of Python for your cloud solutions? Explore our Python Development Services to discover how we can assist you in building scalable and efficient cloud applications.
FAQs
1. Why is Python used in cloud computing?
Python is widely used in cloud computing due to its simplicity, extensive libraries, and seamless integration with cloud platforms like AWS, Google Cloud, and Azure.
2. Is Python good for serverless computing?
Yes! Python works efficiently in serverless environments like AWS Lambda, Azure Functions, and Google Cloud Functions, making it an ideal choice for cost-effective, auto-scaling applications.
3. Which companies use Python for cloud solutions?
Major companies like Netflix, Spotify, Dropbox, and Reddit use Python for cloud automation, AI, and scalable infrastructure management.
4. How does Python help with cloud security?
Python offers robust security libraries like PyCryptodome and OpenSSL, enabling encryption, authentication, and cloud monitoring for secure cloud applications.
5. Can Python handle big data in the cloud?
Yes! Python supports big data processing with tools like Apache Spark, Pandas, and NumPy, making it suitable for data-driven cloud applications.
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raomarketingpro · 7 months ago
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Free AI Tools
Artificial Intelligence (AI) has revolutionized the way we work, learn, and create. With an ever-growing number of tools, it’s now easier than ever to integrate AI into your personal and professional life without spending a dime. Below, we’ll explore some of the best free AI tools across various categories, helping you boost productivity, enhance creativity, and automate mundane tasks.
Wanna know about free ai tools
1. Content Creation Tools
ChatGPT (OpenAI)
One of the most popular AI chatbots, ChatGPT, offers a free plan that allows users to generate ideas, write content, answer questions, and more. Its user-friendly interface makes it accessible for beginners and professionals alike.
Best For:
Writing articles, emails, and brainstorming ideas.
Limitations:
Free tier usage is capped; may require upgrading for heavy use.
Copy.ai
Copy.ai focuses on helping users craft engaging marketing copy, blog posts, and social media captions.
2. Image Generation Tools
DALL·EOpenAI’s DALL·E can generate stunning, AI-created artwork from text prompts. The free tier allows users to explore creative possibilities, from surreal art to photo-realistic images.
Craiyon (formerly DALL·E Mini)This free AI image generator is great for creating quick, fun illustrations. It’s entirely free but may not match the quality of professional tools.
3. Video Editing and Creation
Runway MLRunway ML offers free tools for video editing, including AI-based background removal, video enhancement, and even text-to-video capabilities.
Pictory.aiTurn scripts or blog posts into short, engaging videos with this free AI-powered tool. Pictory automates video creation, saving time for marketers and educators.
4. Productivity Tools
Notion AINotion's AI integration enhances the already powerful productivity app. It can help generate meeting notes, summarize documents, or draft content directly within your workspace.
Otter.aiOtter.ai is a fantastic tool for transcribing meetings, interviews, or lectures. It offers a free plan that covers up to 300 minutes of transcription monthly.
5. Coding and Data Analysis
GitHub Copilot (Free for Students)GitHub Copilot, powered by OpenAI, assists developers by suggesting code and speeding up development workflows. It’s free for students with GitHub’s education pack.
Google ColabGoogle’s free cloud-based platform for coding supports Python and is perfect for data science projects and machine learning experimentation.
6. Design and Presentation
Canva AICanva’s free tier includes AI-powered tools like Magic Resize and text-to-image generation, making it a top choice for creating professional presentations and graphics.
Beautiful.aiThis AI presentation tool helps users create visually appealing slides effortlessly, ideal for professionals preparing pitch decks or educational slides.
7. AI for Learning
Duolingo AIDuolingo now integrates AI to provide personalized feedback and adaptive lessons for language learners.
Khanmigo (from Khan Academy)This AI-powered tutor helps students with math problems and concepts in an interactive way. While still in limited rollout, it’s free for Khan Academy users.
Why Use Free AI Tools?
Free AI tools are perfect for testing the waters without financial commitments. They’re particularly valuable for:
Conclusion
AI tools are democratizing access to technology, allowing anyone to leverage advanced capabilities at no cost. Whether you’re a writer, designer, developer, or educator, there’s a free AI tool out there for you. Start experimenting today and unlock new possibilities!
4o
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web-scraping-tutorial-blog · 5 months ago
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Top 5 Programming Languages to Master in 2025
Programming language theory is the subfield of computer science that studies the design, implementation, analysis, characterization, and classification of programming languages.
1. Java
You might ask, “Is Java obsolete?” Of course not.
Why is Java still popular? Java is one of the oldest and most robust programming languages. It is also an object-oriented language mainly used for Android application development. This is one of the main reasons it is still used today. However, with the advent of programming languages ​​like Kotlin (also suitable for Android development), Java is becoming less popular.
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2. Swift
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3. SQL
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4. JavaScript
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5. Python
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The amazing thing about Python is that it’s a general-purpose programming language used to build a wide range of applications. Furthermore, it is active in artificial intelligence. Self-driving cars, Wal-Mart auto-payment, and many automation and machine learning (ML) apps were developed through Python. This makes this language more important and rapidly popularizes. In addition, Python is easier to learn than all other languages ​​and is easy for beginners. You can also build complex applications relatively easily and quickly. In the United States, the average salary for Python developers is about $ 78,000, while experienced developers can be as high as $ 122,000.
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augerer · 6 months ago
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@girderednerve replied to your post coming out on tumblr as someone whose taught "AI bootcamp" courses to middle school students AMA:
did they like it? what kinds of durable skills did you want them to walk away with? do you feel bullish on "AI"?
It was an extracurricular thing so the students were quite self-selecting and all were already interested in the topic or in doing well in the class. Probably what most interested me about the demographic of students taking the courses (they were online) was the number who were international students outside of the imperial core probably eventually looking to go abroad for college, like watching/participating in the cogs of brain drain.
I'm sure my perspective is influenced because my background is in statistics and not computer science. But I hope that they walked away with a greater understanding and familiarity with data and basic statistical concepts. Things like sample bias, types of data (categorical/quantitative/qualitative), correlation (and correlation not being causation), ways to plot and examine data. Lots of students weren't familiar before we started the course with like, what a csv file is/tabular data in general. I also tried to really emphasize that data doesn't appear in a vacuum and might not represent an "absolute truth" about the world and there are many many ways that data can become biased especially when its on topics where people's existing demographic biases are already influencing reality.
Maybe a bit tangential but there was a part of the course material that was teaching logistic regression using the example of lead pipes in flint, like, can you believe the water in this town was undrinkable until it got Fixed using the power of AI to Predict Where The Lead Pipes Would Be? it was definitely a trip to ask my students if they'd heard of the flint water crisis and none of them had. also obviously it was a trip for the course material to present the flint water crisis as something that got "fixed by AI". added in extra information for my students like, by the way this is actually still happening and was a major protest event especially due to the socioeconomic and racial demographics of flint.
Aside from that, python is a really useful general programming language so if any of the students go on to do any more CS stuff which is probably a decent chunk of them I'd hope that their coding problemsolving skills and familiarity with it would be improved.
do i feel bullish on "AI"? broad question. . . once again remember my disclaimer bias statement on how i have a stats degree but i definitely came away from after teaching classes on it feeling that a lot of machine learning is like if you repackaged statistics and replaced the theoretical/scientific aspects where you confirm that a certain model is appropriate for the data and test to see if it meets your assumptions with computational power via mass guessing and seeing if your mass guessing was accurate or not lol. as i mentioned in my tags i also really don't think things like linear regression which were getting taught as "AI" should be considered "ML" or "AI" anyways, but the larger issue there is that "AI" is a buzzy catchword that can really mean anything. i definitely think relatedly that there will be a bit of an AI bubble in that people are randomly applying AI to tasks that have no business getting done that way and they will eventually reap the pointlessness of these projects.
besides that though, i'm pretty frustrated with a lot of AI hysteria which assumes that anything that is labeled as "AI" must be evil/useless/bad and also which lacks any actual labor-based understanding of the evils of capitalism. . . like AI (as badly formed as I feel the term is) isn't just people writing chatGPT essays or whatever, it's also used for i.e. lots of cutting edge medical research. if insanely we are going to include "linear regression" as an AI thing that's probably half of social science research too. i occasionally use copilot or an LLM for my work which is in public health data affiliated with a university. last week i got driven batty by a post that was like conspiratorially speculating "spotify must have used AI for wrapped this year and thats why its so bad and also why it took a second longer to load, that was the ai generating everything behind the scenes." im saying this as someone who doesnt use spotify, 1) the ship on spotify using algorithms sailed like a decade ago, how do you think your weekly mixes are made? 2) like truly what is the alternative did you think that previously a guy from minnesota was doing your spotify wrapped for you ahead of time by hand like a fucking christmas elf and loading it personally into your account the night before so it would be ready for you? of course it did turned out that spotify had major layoffs so i think the culprit here is really understaffing.
like not to say that AI like can't have a deleterious effect on workers, like i literally know people who were fired through the logic that AI could be used to obviate their jobs. which usually turned out not to be true, but hasn't the goal of stretching more productivity from a single worker whether its effective or not been a central axiom of the capitalist project this whole time? i just don't think that this is spiritually different from retail ceos discovering that they could chronically understaff all of their stores.
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cheshire-castle-library · 7 months ago
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Anyone got opinions on ml books?
I need to teach myself machine learning now, because my advisor has decreed i have to use AI in my fucking dissertation.
And the only way im gonna do that and maintain any sense of honor or pride is if i write it my fucking self, so its A) ONLY doing data sorting and nothing "generative" B) so i know that its not fucking skeevy shit thats gonna call my research into question.
Im using python if that even matters.
Also if you advise is "use chatgpt" or "use stable diffusion" please don't advise that without a well founded argument. I dont need tech thudes i need math nerds
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aionlinemoney · 7 months ago
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The Role of Machine Learning Engineer: Combining Technology and Artificial Intelligence
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Artificial intelligence has transformed our daily lives in a greater way than we can’t imagine over the past year, Impacting how we work, communicate, and solve problems. Today, Artificial intelligence furiously drives the world in all sectors from daily life to the healthcare industry. In this blog we will learn how machine learning engineer build systems that learn from data and get better over time, playing a huge part in the development of artificial intelligence (AI). Artificial intelligence is an important field, making it more innovative in every industry. In the blog, we will look career in Machine learning in the field of engineering.
What is Machine Learning Engineering?
Machine Learning engineer is a specialist who designs and builds AI models to make complex challenges easy. The role in this field merges data science and software engineering making both fields important in this field. The main role of a Machine learning engineer is to build and design software that can automate AI models. The demand for this field has grown in recent years. As Artificial intelligence is a driving force in our daily needs, it become important to run the AI in a clear and automated way.
A machine learning engineer creates systems that help computers to learn and make decisions, similar to human tasks like recognizing voices, identifying images, or predicting results. Not similar to regular programming, which follows strict rules, machine learning focuses on teaching computers to find patterns in data and improve their predictions over time.
Responsibility of a Machine Learning Engineer:
Collecting and Preparing Data
Machine learning needs a lot of data to work well. These engineers spend a lot of time finding and organizing data. That means looking for useful data sources and fixing any missing information. Good data preparation is essential because it sets the foundation for building successful models.
Building and Training Models
The main task of Machine learning engineer is creating models that learn from data. Using tools like TensorFlow, PyTorch, and many more, they build proper algorithms for specific tasks. Training a model is challenging and requires careful adjustments and monitoring to ensure it’s accurate and useful.
Checking Model Performance
When a model is trained, then it is important to check how well it works. Machine learning engineers use scores like accuracy to see model performance. They usually test the model with separate data to see how it performs in real-world situations and make improvements as needed.
Arranging and Maintaining the Model
After testing, ML engineers put the model into action so it can work with real-time data. They monitor the model to make sure it stays accurate over time, as data can change and affect results. Regular updates help keep the model effective.
Working with Other Teams
ML engineers often work closely with data scientists, software engineers, and experts in the field. This teamwork ensures that the machine learning solution fits the business goals and integrates smoothly with other systems.
Important skill that should have to become Machine Learning Engineer:
Programming Languages
Python and R are popular options in machine learning, also other languages like Java or C++ can also help, especially for projects needing high performance.
Data Handling and Processing
Working with large datasets is necessary in Machine Learning. ML engineers should know how to use SQL and other database tools and be skilled in preparing and cleaning data before using it in models.
Machine Learning Structure
ML engineers need to know structure like TensorFlow, Keras, PyTorch, and sci-kit-learn. Each of these tools has unique strengths for building and training models, so choosing the right one depends on the project.
Mathematics and Statistics
A strong background in math, including calculus, linear algebra, probability, and statistics, helps ML engineers understand how algorithms work and make accurate predictions.
Why to become a Machine Learning engineer?
A career as a machine learning engineer is both challenging and creative, allowing you to work with the latest technology. This field is always changing, with new tools and ideas coming up every year. If you like to enjoy solving complex problems and want to make a real impact, ML engineering offers an exciting path.
Conclusion 
Machine learning engineer plays an important role in AI and data science, turning data into useful insights and creating systems that learn on their own. This career is great for people who love technology, enjoy learning, and want to make a difference in their lives. With many opportunities and uses, Artificial intelligence is a growing field that promises exciting innovations that will shape our future. Artificial Intelligence is changing the world and we should also keep updated our knowledge in this field, Read AI related latest blogs here.
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beeapothecary · 9 months ago
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AI Pollen Project Update 1
Hi everyone! I have a bunch of ongoing projects in honey and other things so I figured I should start documenting them here to help myself and anyone who might be interested. Most of these aren’t for a grade, but just because I’m interested or want to improve something.
One of the projects I’m working on is a machine learning model to help with pollen identification under visual methods. There’s very few people who are specialized to identify the origins of pollens in honey, which is pretty important for research! And the people who do it are super busy because it’s very time consuming. This is meant to be a tool and an aid so they can devote more time to the more important parts of the research, such as hunting down geographical origins, rather than the mundane parts like counting individual pollen and trying to group all the species in a sample.
The model will have 3 goals to aid these researchers:
Count overall pollen and individual species of pollen in a sample of honey
Provide the species of each pollen in a sample
Group pollen species together with a confidence listed per sample
Super luckily there’s pretty large pollen databases out there with different types of imaging techniques being used (SEM, electron microscopy, 40X magnification, etc). I’m kind of stumped on which python AI library to use, right now I’ve settled on using OpenCV to make and train the model, but I don’t know if there’s a better option for what I’m trying to do. If anyone has suggestions please let me know
This project will be open source and completely free once I’m done, and I also intend on making it so more confirmed pollen species samples with confirmed geographical origins can be added by researchers easily. I am a firm believer that ML is a tool that’s supposed to make the mundane parts easier so we have time to do what brings us joy, which is why Im working on this project!
I’m pretty busy with school, so I’ll make the next update once I have more progress! :)
Also a little note: genetic tests are more often used for honey samples since it is more accessible despite being more expensive, but this is still an important part of the research. Genetic testing also leaves a lot to be desired, like not being able to tell the exact species of the pollen which can help pinpoint geographical location or adulteration.
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partisan-by-default · 1 year ago
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Several big businesses have published source code that incorporates a software package previously hallucinated by generative AI.
Not only that but someone, having spotted this reoccurring hallucination, had turned that made-up dependency into a real one, which was subsequently downloaded and installed thousands of times by developers as a result of the AI's bad advice, we've learned. If the package was laced with actual malware, rather than being a benign test, the results could have been disastrous.
According to Bar Lanyado, security researcher at Lasso Security, one of the businesses fooled by AI into incorporating the package is Alibaba, which at the time of writing still includes a pip command to download the Python package huggingface-cli in its GraphTranslator installation instructions.
There is a legit huggingface-cli, installed using pip install -U "huggingface_hub[cli]".
But the huggingface-cli distributed via the Python Package Index (PyPI) and required by Alibaba's GraphTranslator – installed using pip install huggingface-cli – is fake, imagined by AI and turned real by Lanyado as an experiment.
He created huggingface-cli in December after seeing it repeatedly hallucinated by generative AI; by February this year, Alibaba was referring to it in GraphTranslator's README instructions rather than the real Hugging Face CLI tool.
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onemanscienceband · 10 months ago
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So there's this python project called Anaconda. it bundles together lots of scientific and ML and data and visualization packages and provides a repository and tool for installing it all and managing python environments. It's VERY heavily used in science and data analysis, to the point where it's basically the default system for python in academia.
back in January this guy named Barry Libert became the CEO of Anaconda. he's an ex McKinsey guy, worked for Arthur Anderson (the company that did the accounting for Enron lol), was a managing director for a big real estate equity firm, he's all over the boards of AI and tech companies. makes startups like the rest of us take a shit. just smells of money and the ruthless pursuit of it
anyway the deal with anaconda was always "if you're a non-profit or academic, don't worry about the licensing, it's free for you". that's generally the way it is for academia and software. there's exceptions (i'm looking at you pymol, fuck you) but not many.
so lol. now. six months after the Money Guy joined the company, they start sending out nastygrams shaking down universities for money: https://www.theregister.com/2024/08/08/anaconda_puts_the_squeeze_on/ . They're giving quotes to the press maintaining that their software is free for academics at the same time they're sending messages to non-profits threatening to back-bill them for their use of the software
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