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question:As a prompt generator for a generative AI called "Midjourney", you will create image prompts for the AI to visualize. I will give you a concept, and you will provide a detailed prompt for Midjourney AI to generate an image. Please adhere to the structure and formatting below, and follow these guidelines: Do not use the words "description" or ":" in any form. Do not place a comma between [ar] and [v]. Write each prompt in one line without using return. Structure: [1] = 美国士兵跪地看着自由女神像崩塌 [2] = a detailed description of [1] with specific imagery details. [3] = a detailed description of the scene's environment. [4] = a detailed description of the compositions. [5] = a detailed description of the scene's mood, feelings, and atmosphere. [6] = A style (e.g. photography, painting, illustration, sculpture, artwork, paperwork, 3D, etc.) for [1]. [7] = a detailed description of the scene's mood, feelings, and atmosphere. [ar] = Use "--ar 16:9" for horizontal images, "--ar 9:16" for vertical images, or "--ar 1:1" for square images. [v] = Use "--niji 6" for Japanese art style, or "--v 6" for other styles. Formatting: Follow this prompt structure: "/imagine prompt: [1], [2], [3], [4], [5], [6], [7], [ar] [v]". Your task: Create 4 distinct prompts for each concept [1], varying in details description, environment,compositions,atmosphere, and realization. Write your prompts in english. Do not describe unreal concepts as "real" or "photographic". Include one realistic photographic style prompt with lens type and size. Separate different prompts with two new lines. Example Prompts: /imagine prompt: cute dog, fluffy fur, wagging tail, playful expression, sitting on a grassy field, under a clear blue sky, with a colorful collar, in a natural and vibrant setting, by a lake, captured with a Nikon D750 camera, 50mm lens, shallow depth of field, composition focused on the dog's face, capturing its joyful spirit, in a style reminiscent of William Wegman's iconic dog portraits. --ar 1:1 --v 6 /imagine prompt: beautiful women in the coffee shop, elegant and sophisticated, sipping a cup of steaming coffee, natural sunlight streaming through the window, soft and warm color tones, vintage decor with cozy armchairs and wooden tables, a bookshelf filled with classic novels, delicate porcelain teacups, a hint of aromatic coffee beans in the air, captured by a Leica M10 camera, 35mm lens, capturing the essence of timeless beauty, composition focused on the woman's face and hands, reminiscent of a painting by Leonardo da Vinci. --ar 1:1 --v 6 /imagine prompt: A captivating Halo Reach landscape with a Spartan amidst a battlefield, fallen enemies around, smoke and fire in the background, emphasizing the Spartan's determination and bravery, detailed environment blending chaos and beauty, Illustration, digital art, --ar 16:9 --v 6
answer:/imagine prompt: An American soldier kneeling in front of the crumbling Statue of Liberty, tears in his eyes, hands reaching out in despair, fallen debris scattered around, a symbol of shattered hope and freedom, captured by a Canon 5D Mark IV camera, 50mm lens, with a dramatic depth of field, composition focusing on the soldier's face and the statue's damaged face, invoking a sense of loss and disbelief, in a realistic photographic style capturing the raw emotion of the moment. --ar 16:9 --v 6 /imagine prompt: Amidst the ruins of a once majestic city, an American soldier solemnly gazes at the broken and defaced Statue of Liberty, cracked and crumbling under the weight of destruction, smoke billowing in the distance, the soldier's uniform tattered and stained with dust, a haunting reminder of a lost civilization and forgotten ideals, Illustration, digital art, blending darkness and despair with a glimmer of hope in the soldier's eyes. --ar 16:9 --v 6 /imagine prompt: At the heart of a decaying metropolis, an American soldier knelt in reverence before the fallen Statue of Liberty, surrounded by the remnants of a bygone era, weeds reclaiming the once bustling streets, a rusted crown resting at his feet, the soldier's silhouette framed by the crumbling structure, a stark contrast of past glory and present decay, Sculpture, artwork, emphasizing the soldier's solitary vigil in a desolate world. --ar 16:9 --v 6 /imagine prompt: In a post-apocalyptic landscape, an American soldier kneels before the ruins of the Statue of Liberty, now a mere shadow of its former self, vines and moss creeping over the weathered stone, a sense of quiet resignation and determination in the soldier's posture, the overcast sky casting a somber light over the scene, with a haunting stillness that speaks of a world forever changed, 3D rendering, bringing to life the desolation and melancholy of a once proud symbol now fallen. --ar 16:9 --v 6
question:What is Amazon sage maker studio lab?
answer:Amazon SageMaker Studio Lab is a free service introduced by Amazon Web Services (AWS) aimed at developers, data scientists, and students interested in machine learning (ML) and artificial intelligence (AI). It provides a no-cost, easy-to-use platform that supports the complete machine learning development lifecycle, allowing users to build, train, and deploy machine learning models. Here are some key aspects of Amazon SageMaker Studio Lab: 1. **No Cost**: Studio Lab is free, making it accessible to individuals and organizations that want to experiment with or start learning about machine learning without incurring cloud costs. 2. **Ease of Use**: It offers a web-based integrated development environment (IDE) based on Jupyter Lab, which is familiar to many data scientists and researchers. This environment supports Python and comes pre-installed with many popular data science and machine learning libraries, such as Pandas, NumPy, TensorFlow, PyTorch, and SciKit-Learn. 3. **Compute Resources**: Users get access to certain compute resources for running notebooks and training models. While free, these resources are subject to usage limits to ensure fair access for all users. 4. **Managed Jupyter Notebooks**: The service manages Jupyter notebooks, including their setup, configurations, and dependencies, which reduces the setup time for users and allows them to focus more on their experiments and models. 5. **Collaboration**: SageMaker Studio Lab allows users to share their projects and collaborate with others, which is beneficial for educational purposes and team projects. 6. **Seamless Transition to AWS**: For projects that outgrow the capabilities of the free tier or require more advanced features, users can easily move their projects to AWS and leverage the full suite of Amazon SageMaker services for scaling their machine learning models and applications. 7. **Education and Learning**: It is also designed as a learning platform, offering access to tutorials and examples that cover various aspects of machine learning, from the basics to more advanced topics. Amazon SageMaker Studio Lab is part of Amazon's broader SageMaker suite, which provides more comprehensive and scalable services for machine learning and AI project development. Studio Lab is an excellent starting point for individuals and organizations new to machine learning or those looking to prototype models without significant investment.
question:But how it's made free?
answer:Amazon SageMaker Studio Lab is made free to users as part of Amazon Web Services' broader strategy to encourage the adoption of their cloud platform and machine learning technologies. While the service itself does not incur direct costs to users for accessing its basic features and resources, there are several strategic reasons and mechanisms behind its free offering: 1. **Fostering Adoption**: By providing free access to SageMaker Studio Lab, AWS aims to lower the barrier to entry for learning and experimenting with machine learning and artificial intelligence. This democratization of access not only helps in building a larger community of ML practitioners but also increases the likelihood that these individuals and organizations will use AWS's paid services as their needs grow. 2. **Educational Support**: AWS is investing in the education of future developers, data scientists, and ML engineers by providing them with tools to learn and experiment at no cost. Educated users are more likely to become future customers or recommend AWS services within their organizations. 3. **Resource Limits**: While Studio Lab is free, it comes with certain limitations on compute resources and usage. These limitations help AWS manage cost while still providing value to users. For projects that require more resources or advanced features, users are encouraged to transition to the more comprehensive, paid version of SageMaker or other AWS services. 4. **Cost of Acquisition**: Offering free services like SageMaker Studio Lab can be seen as a customer acquisition cost. Acquiring a user through free services and eventually converting them into a paying customer for other services can be more cost-effective than traditional marketing and sales efforts. 5. **Upsell and Cross-Sell Opportunities**: Engaging users with a free service opens up opportunities for AWS to upsell more advanced features and cross-sell other services within its ecosystem. As users' projects and needs grow, they might need more storage, compute power, or specific AWS features not covered under the free tier of Studio Lab. 6. **Community Building and Feedback**: A large base of users experimenting with and learning through SageMaker Studio Lab contributes to the machine learning and AI community. It also provides AWS with valuable feedback and usage patterns, helping them improve their platform and develop new features that address users' needs. By offering SageMaker Studio Lab for free, Amazon benefits from creating a large community of users who are familiar with AWS technologies, potentially leading to future revenue as these users' needs evolve and require the capabilities of AWS's paid services.
question:Are their any great free resources like sage maker
answer:Yes, there are several free resources and platforms available for those interested in machine learning, data science, and AI development, similar to Amazon SageMaker Studio Lab. Below are some notable platforms and resources that offer free access to various degrees, allowing individuals to learn, experiment, and build machine learning models without incurring significant costs. 1. **Google Colab**: Google Colab is a free Jupyter notebook environment that runs entirely in the cloud. It allows users to write and execute Python code via the browser, comes with most of the commonly used libraries pre-installed, and offers free access to GPUs and TPUs for faster computation. It's a great tool for machine learning, data analysis, and education. 2. **Kaggle**: Known for its machine learning competitions, Kaggle also offers a no-cost environment to run Jupyter notebooks in the cloud. It provides access to datasets, computing power (including GPUs), and a community of data scientists and ML engineers. Kaggle is an excellent platform for those looking to practice their machine learning skills and network with the ML community. 3. **Microsoft Learn**: Microsoft offers free learning resources and hands-on modules through Microsoft Learn for various technologies, including Azure Machine Learning. While Azure services typically come with costs, Microsoft Learn provides sandboxed environments and free Azure credits on signing up, allowing learners to experiment with and deploy machine learning models without direct charges. 4. **IBM Watson Studio**: IBM offers a lite (free) tier of its Watson Studio, a platform that enables users to build, train, and deploy machine learning models. While the lite tier has its limitations, it provides enough capabilities to get started with machine learning projects. 5. **GitHub and GitLab**: Both platforms offer free repositories for storing and collaborating on code, with integrated CI/CD pipelines that can be used for machine learning projects. GitHub also provides GitHub Actions, which can automate workflows within the machine learning project lifecycle. 6. **Anaconda**: While not a cloud service, Anaconda is a free, open-source distribution of Python and R for scientific computing and data science. It simplifies package management and deployment for machine learning and data science projects and comes with a suite of pre-installed libraries. 7. **Deepnote**: A newer player in the field, Deepnote offers a collaborative Jupyter notebook environment designed for data science teams. It has a free tier with some limitations but provides a very user-friendly interface and integrates with various data sources and tools. 8. **Observable**: Focused more on data visualization and analysis, Observable is a JavaScript notebook platform that allows for dynamic and interactive data exploration. It's free to use for public projects and is a powerful tool for data scientists wanting to share their insights. Each of these platforms has its strengths and is suited to different types of projects, learning styles, and levels of expertise. Whether you're a beginner looking to learn machine learning basics or an experienced practitioner requiring advanced computational resources, there's likely a free or cost-effective resource available to support your needs.