#python #cpu_profiling #memory_management #performance_analysis #profiling
https://github.com/emeryberger/scalene
https://github.com/emeryberger/scalene
GitHub
GitHub - emeryberger/scalene: Scalene: a high-performance, high-precision CPU, GPU, and memory profiler for Python
Scalene: a high-performance, high-precision CPU, GPU, and memory profiler for Python - emeryberger/scalene
#cplusplus #python #c_plus_plus #performance #monitoring #cross_platform #cpp #profiler #optimization #logging #python3 #developer_tools #performance_analysis #memory_profiler #profiling #memory_consumption #performance_optimization
https://github.com/dfeneyrou/palanteer
https://github.com/dfeneyrou/palanteer
GitHub
GitHub - dfeneyrou/palanteer: Visual Python and C++ nanosecond profiler, logger, tests enabler
Visual Python and C++ nanosecond profiler, logger, tests enabler - dfeneyrou/palanteer
#python #memory #memory_leak #memory_leak_detection #memory_profiler #profiler
https://github.com/bloomberg/memray
https://github.com/bloomberg/memray
GitHub
GitHub - bloomberg/memray: Memray is a memory profiler for Python
Memray is a memory profiler for Python. Contribute to bloomberg/memray development by creating an account on GitHub.
#typescript #detector #e2e #facebook #heap #hermes #javascript #leak #memory #nodejs #perf_tools #performance #snapshot #v8
https://github.com/facebookincubator/memlab
https://github.com/facebookincubator/memlab
GitHub
GitHub - facebook/memlab: A framework for finding JavaScript memory leaks and analyzing heap snapshots
A framework for finding JavaScript memory leaks and analyzing heap snapshots - facebook/memlab
#c_lang #c #c_plus_plus #cplusplus #cpp #cross_platform #garbage_collection #garbage_collector #gc #leak_detection #library #memory_allocation #memory_leak_detection #memory_management #portable
https://github.com/ivmai/bdwgc
https://github.com/ivmai/bdwgc
GitHub
GitHub - bdwgc/bdwgc: The Boehm-Demers-Weiser conservative C/C++ Garbage Collector (bdwgc, also known as bdw-gc, boehm-gc, libgc)
The Boehm-Demers-Weiser conservative C/C++ Garbage Collector (bdwgc, also known as bdw-gc, boehm-gc, libgc) - bdwgc/bdwgc
#java #cpu_usage #disk_utilization #hacktoberfest #hardware_information #jna #memory_usage #operating_system #process_list #processor #serialnumbers #system_monitoring #usb_devices
https://github.com/oshi/oshi
https://github.com/oshi/oshi
GitHub
GitHub - oshi/oshi: Native Operating System and Hardware Information
Native Operating System and Hardware Information. Contribute to oshi/oshi development by creating an account on GitHub.
#python #digital_investigation #forensics #incident_response #malware #memory #ram #volatility #volatility_framework
https://github.com/volatilityfoundation/volatility3
https://github.com/volatilityfoundation/volatility3
GitHub
GitHub - volatilityfoundation/volatility3: Volatility 3.0 development
Volatility 3.0 development. Contribute to volatilityfoundation/volatility3 development by creating an account on GitHub.
#python #agents #ai_agents #ai_agents_framework #artificial_intelligence #developer_tools #devtools #generative_ai #knowledge_graph #memory #rag
Potpie is an open-source platform that helps you automate code analysis, testing, and development tasks. It creates AI agents that understand your codebase deeply, allowing them to assist with debugging, feature development, and more. You can use pre-built agents for common tasks like debugging and testing, or create custom agents to handle specific needs. Potpie integrates seamlessly into your existing development workflow and works with codebases of any size or language. This makes it easier for developers to understand the codebase quickly, review code changes, and generate tests, saving time and improving efficiency.
https://github.com/potpie-ai/potpie
Potpie is an open-source platform that helps you automate code analysis, testing, and development tasks. It creates AI agents that understand your codebase deeply, allowing them to assist with debugging, feature development, and more. You can use pre-built agents for common tasks like debugging and testing, or create custom agents to handle specific needs. Potpie integrates seamlessly into your existing development workflow and works with codebases of any size or language. This makes it easier for developers to understand the codebase quickly, review code changes, and generate tests, saving time and improving efficiency.
https://github.com/potpie-ai/potpie
GitHub
GitHub - potpie-ai/potpie: Prompt-To-Agent : Create custom engineering agents for your codebase
Prompt-To-Agent : Create custom engineering agents for your codebase - potpie-ai/potpie
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#python #agent #ai #aiagent #application #chatbots #chatgpt #embeddings #llm #long_term_memory #memory #memory_management #python #rag #state_management #vector_database
Mem0 is a special tool that helps AI systems remember things. It makes AI interactions more personal and efficient by storing user preferences and past conversations. This means you don't have to repeat information, and the AI can give better answers based on what it knows about you. Mem0 also saves money by only sending important data to AI models, reducing costs up to 80%. It's easy to use and works with popular AI platforms like OpenAI and Claude.
https://github.com/mem0ai/mem0
Mem0 is a special tool that helps AI systems remember things. It makes AI interactions more personal and efficient by storing user preferences and past conversations. This means you don't have to repeat information, and the AI can give better answers based on what it knows about you. Mem0 also saves money by only sending important data to AI models, reducing costs up to 80%. It's easy to use and works with popular AI platforms like OpenAI and Claude.
https://github.com/mem0ai/mem0
GitHub
GitHub - mem0ai/mem0: Universal memory layer for AI Agents
Universal memory layer for AI Agents. Contribute to mem0ai/mem0 development by creating an account on GitHub.
#python #agent_computer_interface #ai_agents #computer_automation #computer_use #grounding #gui_agents #in_context_reinforcement_learning #memory #mllm #planning #retrieval_augmented_generation
Agent S2 is a smart AI assistant that handles computer tasks by breaking them into smaller steps and using specialized tools for each part, making it highly adaptable and efficient across different systems like Windows and Android. It outperforms other AI tools in completing complex tasks, learns from experience, and adjusts plans as needed, helping users automate digital work more reliably and effectively.
https://github.com/simular-ai/Agent-S
Agent S2 is a smart AI assistant that handles computer tasks by breaking them into smaller steps and using specialized tools for each part, making it highly adaptable and efficient across different systems like Windows and Android. It outperforms other AI tools in completing complex tasks, learns from experience, and adjusts plans as needed, helping users automate digital work more reliably and effectively.
https://github.com/simular-ai/Agent-S
GitHub
GitHub - simular-ai/Agent-S: Agent S: an open agentic framework that uses computers like a human
Agent S: an open agentic framework that uses computers like a human - simular-ai/Agent-S
#typescript #12_factor #12_factor_agents #agents #ai #context_window #framework #llms #memory #orchestration #prompt_engineering #rag
The 12-Factor Agents are a set of proven principles to build reliable, scalable, and maintainable AI applications powered by large language models (LLMs). They help you combine the creativity of AI with the stability of traditional software by managing prompts, context, tool calls, error handling, and human collaboration effectively. Instead of relying solely on complex frameworks, you can apply these modular concepts to improve your existing products quickly and reach high-quality AI performance for real users. This approach makes AI software easier to develop, debug, and scale, ensuring it works well in production environments[1][3][5].
https://github.com/humanlayer/12-factor-agents
The 12-Factor Agents are a set of proven principles to build reliable, scalable, and maintainable AI applications powered by large language models (LLMs). They help you combine the creativity of AI with the stability of traditional software by managing prompts, context, tool calls, error handling, and human collaboration effectively. Instead of relying solely on complex frameworks, you can apply these modular concepts to improve your existing products quickly and reach high-quality AI performance for real users. This approach makes AI software easier to develop, debug, and scale, ensuring it works well in production environments[1][3][5].
https://github.com/humanlayer/12-factor-agents
GitHub
GitHub - humanlayer/12-factor-agents: What are the principles we can use to build LLM-powered software that is actually good enough…
What are the principles we can use to build LLM-powered software that is actually good enough to put in the hands of production customers? - humanlayer/12-factor-agents
#python #ai #context #embedded #faiss #knowledge_base #knowledge_graph #llm #machine_learning #memory #nlp #offline_first #opencv #python #rag #retrieval_augmented_generation #semantic_search #vector_database #video_processing
Memvid lets you store millions of text pieces inside a single MP4 video file using QR codes, making your data 50-100 times smaller than usual databases. You can search this video instantly in under 100 milliseconds without needing servers or internet after setup. It works offline, is easy to use with simple Python code, and supports PDFs and chat with your data. The upcoming version 2 will add features like continuous memory updates, shareable capsules, fast local caching, and better video compression, making your AI memory smarter, faster, and more flexible. This means you get a powerful, portable, and efficient way to manage and search huge knowledge bases quickly and easily.
https://github.com/Olow304/memvid
Memvid lets you store millions of text pieces inside a single MP4 video file using QR codes, making your data 50-100 times smaller than usual databases. You can search this video instantly in under 100 milliseconds without needing servers or internet after setup. It works offline, is easy to use with simple Python code, and supports PDFs and chat with your data. The upcoming version 2 will add features like continuous memory updates, shareable capsules, fast local caching, and better video compression, making your AI memory smarter, faster, and more flexible. This means you get a powerful, portable, and efficient way to manage and search huge knowledge bases quickly and easily.
https://github.com/Olow304/memvid
GitHub
GitHub - memvid/memvid: Memory layer for AI Agents. Replace complex RAG pipelines with a serverless, single-file memory layer.…
Memory layer for AI Agents. Replace complex RAG pipelines with a serverless, single-file memory layer. Give your agents instant retrieval and long-term memory. - memvid/memvid
#python #agent #context_engineering #electron #embedding_models #memory #proactive_ai #python #python3 #rag #react #vector_database #vision_language_model
MineContext is a special AI tool that helps you work more efficiently. It collects information from your computer screen and other sources, then uses this data to give you useful insights, summaries, and reminders. This helps you stay organized and focused on important tasks. MineContext is also very private because it stores all your data on your local device, not in the cloud. It's like having a personal assistant that helps you manage your digital life better.
https://github.com/volcengine/MineContext
MineContext is a special AI tool that helps you work more efficiently. It collects information from your computer screen and other sources, then uses this data to give you useful insights, summaries, and reminders. This helps you stay organized and focused on important tasks. MineContext is also very private because it stores all your data on your local device, not in the cloud. It's like having a personal assistant that helps you manage your digital life better.
https://github.com/volcengine/MineContext
GitHub
GitHub - volcengine/MineContext: MineContext is your proactive context-aware AI partner(Context-Engineering+ChatGPT Pulse)
MineContext is your proactive context-aware AI partner(Context-Engineering+ChatGPT Pulse) - volcengine/MineContext
#python #agent #ai #aiagent #awesome #chatgpt #hacktoberfest #hacktoberfest2025 #llm #long_short_term_memory #memori_ai #memory #memory_management #python #rag #state_management
Memori is an open-source memory engine that gives AI language models human-like memory using standard SQL databases like PostgreSQL, MySQL, or SQLite.[1][2] With just one line of code, you can enable any LLM to remember conversations, learn from interactions, and maintain context across sessions.[1] The key benefits are significant cost savings of 80-90% compared to expensive vector databases, complete data ownership and transparency since memories are stored in SQL databases you control, and zero vendor lock-in allowing you to export and move your data anywhere.[1][3] Memori works with popular frameworks like OpenAI, Anthropic, and LangChain, making it easy to integrate into existing projects without complex setup.[1]
https://github.com/GibsonAI/Memori
Memori is an open-source memory engine that gives AI language models human-like memory using standard SQL databases like PostgreSQL, MySQL, or SQLite.[1][2] With just one line of code, you can enable any LLM to remember conversations, learn from interactions, and maintain context across sessions.[1] The key benefits are significant cost savings of 80-90% compared to expensive vector databases, complete data ownership and transparency since memories are stored in SQL databases you control, and zero vendor lock-in allowing you to export and move your data anywhere.[1][3] Memori works with popular frameworks like OpenAI, Anthropic, and LangChain, making it easy to integrate into existing projects without complex setup.[1]
https://github.com/GibsonAI/Memori
GitHub
GitHub - MemoriLabs/Memori: SQL Native Memory Layer for LLMs, AI Agents & Multi-Agent Systems
SQL Native Memory Layer for LLMs, AI Agents & Multi-Agent Systems - MemoriLabs/Memori
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