Gemini API

AppWizard
November 10, 2025
Google has introduced the File Search Tool, a retrieval-augmented generation (RAG) system integrated into the Gemini API. This tool allows developers to leverage documents and databases to provide factual context for Gemini responses, which include citations for verification. The File Search Tool utilizes the Gemini Embedding model to automate processes like file storage, chunking, embeddings, and dynamic context injection. It supports various file formats, including PDF, DOCX, TXT, and JSON. A demo application is available in the Google AI Studio, and the tool operates on a paid model, costing [openai_gpt model="gpt-4o-mini" prompt="Summarize the content and extract only the fact described in the text bellow. The summary shall NOT include a title, introduction and conclusion. Text: What you need to know Google is rolling out the File Search Tool, an easy-to-use RAG system that's built into the Gemini API. The File Search Tool can leverage documents and databases to ground Gemini responses with factual context. Gemini API responses using the File Search Tool include citations that allow users to check the model's work. In a significant advancement for developers, Google has introduced a native retrieval-augmented generation (RAG) system to its Gemini API, aptly named the File Search Tool. This innovative feature aims to simplify the integration of reliable data into AI applications, allowing developers to enhance their tools with factual context effortlessly. Described by Google as a "simple, integrated and scalable way to ground Gemini with your data," the File Search Tool promises outputs that are "more accurate, relevant and verifiable," as highlighted in the recent announcement. The File Search Tool operates by utilizing the Gemini Embedding model, alleviating users from the burdensome task of creating a custom RAG system. It automatically manages essential processes such as file storage, chunking, embeddings, and dynamic context injection. By employing vector search technology, the tool comprehensively understands user prompts and retrieves pertinent information from the supplied documents. It supports a variety of major file formats and programming types, including PDF, DOCX, TXT, and JSON, making it remarkably straightforward for users to integrate their existing databases with the Gemini API. For those eager to explore its capabilities, a demo application is available in the Google AI Studio, offering developers a glimpse into how the File Search Tool can be effectively utilized within their business applications. While the tool operates on a paid model, developers benefit from a fixed rate of [cyberseo_openai model="gpt-4o-mini" prompt="Rewrite a news story for a business publication, in a calm style with creativity and flair based on text below, making sure it reads like human-written text in a natural way. The article shall NOT include a title, introduction and conclusion. The article shall NOT start from a title. Response language English. Generate HTML-formatted content using tag for a sub-heading. You can use only , , , , and HTML tags if necessary. Text: What you need to knowGoogle is rolling out the File Search Tool, an easy-to-use RAG system that's built into the Gemini API.The File Search Tool can leverage documents and databases to ground Gemini responses with factual context.Gemini API responses using the File Search Tool include citations that allow users to check the model's work.Google is adding a native retrieval-augmented generation (RAG) system to the Gemini API in an effort to make it easier for developers to back up their AI tools with hard data. It's called the File Search Tool, and the company describes it as a "simple, integrated and scalable way to ground Gemini with your data." It results in outputs from the Gemini API that are "more accurate, relevant and verifiable," per the announcement blog post.The File Search Tool makes use of the Gemini Embedding model, but takes the heavy lifting required to develop a custom RAG system off the user. Instead, the tool handles file storage, chunking, embeddings, and dynamic context injection automatically. From there, the File Search Tool uses vector search to understand a given prompt and identify related information and data from provided documents.here. It includes most major file formats and programming types, like PDF, DOCX, TXT, and JSON. This makes it easy to take your existing database and hand it to the Gemini API via the File Search Tool.There's a demo app in the Google AI Studio that gives developers an idea of how the File Search Tool can be used in their business applications. The tool is paid, but developers only need to pay a fixed rate of $0.15 per 1 million tokens when initially embedding and indexing their files. After that, storage and embedding generation is free for each individual query.Google says this payment model "makes the File Search Tool both significantly easier and very cost-effective to build and scale with." It's available now in the Gemini API for those that want to try it out. (Image credit: Google)This is the second Gemini API announcement of the week, as Google previously unveiled support for JSON Schema, which makes it easier to use the API in multi-agent workflows.Get the latest news from Android Central, your trusted companion in the world of Android" temperature="0.3" top_p="1.0" best_of="1" presence_penalty="0.1" ].15 per 1 million tokens for the initial embedding and indexing of their files. Subsequent storage and embedding generation for each individual query come at no additional cost, rendering the File Search Tool both accessible and economically viable for scaling. Google emphasizes that this pricing structure significantly simplifies the development process, making the File Search Tool an attractive option for businesses looking to leverage AI with reliable data. This latest feature is now available in the Gemini API, inviting developers to experiment with its potential. (Image credit: Google) This announcement marks the second significant update to the Gemini API within the week, following Google's earlier introduction of support for JSON Schema, which enhances the API's usability in multi-agent workflows." max_tokens="3500" temperature="0.3" top_p="1.0" best_of="1" presence_penalty="0.1" frequency_penalty="frequency_penalty"].15 per 1 million tokens for initial embedding and indexing, with free subsequent storage and embedding generation for individual queries. This feature aims to simplify the integration of reliable data into AI applications.
AppWizard
October 16, 2025
Google has released an update to its video generation model, Veo, now known as Veo 3.1. This version enhances the creative experience for users of the Gemini app and Gemini API. Key features of Veo 3.1 include richer soundscapes, greater narrative control, and enhanced realism in textures. The update also introduces new editing tools, such as an "Insert" feature for quick scene alterations and the ability to remove unwanted elements, similar to the Magic Eraser functionality. As of October 15, Flow is incorporating these updates, while Veo 3.1 is available through the Gemini APU for developers, Vertex AI for enterprise customers, and the Gemini app.
AppWizard
September 3, 2025
Google has reintroduced the Androidify app, enhanced with AI to create personalized Android Bot avatars using user photos or text prompts. The app utilizes Google’s Gemini 2.5 Flash and Imagen AI models for tailored avatar creation. Originally launched in 2011, it was removed from the Play Store in 2020 and announced for revival at Google I/O earlier this year. Users can create a custom Android Bot by uploading a photo or entering a text prompt, with an option for AI-generated suggestions. The app analyzes images and validates text prompts to generate avatars that reflect user likeness while adhering to brand safety protocols. Users can further customize their Bots with various backgrounds and formats, and the app is available for free on the Google Play Store and web. Additionally, users can create an 8-second video of their Bot every Friday. The app employs modern development tools and its source code is available on GitHub.
AppWizard
August 5, 2025
The Gemini Android application beta has introduced a feature allowing users to attach audio files, such as MP3s, to chat conversations. This feature, noted in version 16.30.59.sa.arm64 of the Google app beta, includes a “Talk live about this” prompt when a file is attached. However, the audio processing capabilities are still in early development, with inconsistent processing of audio input and occasional irrelevance in responses. The Gemini API supports audio input for tasks like generating descriptions, summarizing spoken information, and transcribing speech, with support for MP3, WAV, and FLAC formats. The integration of audio file attachment is part of a broader development initiative by Google, although no official launch date has been announced.
AppWizard
May 21, 2025
Google has launched the Androidify app, allowing users to create personalized Android Bots by uploading a photo and selecting a color scheme. The app utilizes the Gemini API and is designed with Google’s Material 3 aesthetic, ensuring compatibility with various devices. Unlike its previous version, which was limited to a website, the new app offers a more refined experience with plans for a specialized image generator version. Users must compile the app themselves to access its features, which may limit its reach. There are hopes for the app's availability on the Play Store in the future.
AppWizard
April 22, 2025
Google has launched the Gemini 2.5 Flash, an updated version of its Gemini AI model featuring hybrid reasoning capabilities that allow developers to adjust the model's 'thinking' process. This new model is designed to be faster, more cost-effective, and outperforms competing AI models in benchmark tests. The Gemini 2.5 Flash is available in preview through the Gemini API via Google AI Studio and Vertex AI. It builds on the foundation of the earlier Gemini 2.0 Flash models.
AppWizard
October 22, 2024
Android developers are utilizing the Gemini API for innovative features such as personalized meal planning, chat-based journaling, and AI-generated usernames. The stable version of Vertex AI will soon be launched in Firebase, allowing developers to integrate Gemini 1.5 Flash and Gemini 1.5 Pro into their applications, with inference processes managed on Google's servers. Examples of applications using the Gemini API include: - The Meal Planner app, which uses Gemini 1.5 Flash to create personalized meal plans based on dietary preferences, resulting in a 17% increase in premium subscriptions. - The Life journaling app, which features an AI assistant named "Leo" for conversational journaling, allowing users to customize the chatbot's tone and behavior. - The HiiKER app, which generates unique usernames for users based on geographical location, enhancing user engagement and retention. Developers are encouraged to explore the advanced features of the Gemini Cloud models and Vertex AI in Firebase, with resources available during AI in Android Spotlight Week.
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