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  1. rag-llm-system rag-llm-system Public

    A complete self-hosted AI research platform running on Docker with GPU acceleration. Combines LLM inference, vector search, web search, code execution. and fully searchable logging with Splunk - al…

    Python 1

  2. mlx-benchmark mlx-benchmark Public

    MLX LLM Benchmark Suite for Apple Silicon. Comprehensive benchmarking tools to measure LLM inference performance on Apple Silicon Macs, with metrics directly comparable to HuggingFace model cards.

    Python 3

  3. unsupervised-dl-insider-threat-detection unsupervised-dl-insider-threat-detection Public

    This implementation provides a complete end-to-end system for detecting insider threats in security log streams using unsupervised deep learning, as described in my research paper: Unsupervised Dee…

    Python

  4. Splunk-DDSS-Frozen-Bucket-Retriever Splunk-DDSS-Frozen-Bucket-Retriever Public

    When Splunk Cloud freezes buckets, they get pushed to S3 via Dynamic Data Self Storage (DDSS) unless you're using Splunk-managed archiving for Frozen buckets. If you need to search that data again,…

    Shell

  5. APG APG Public

    APG (Agent Policy Gateway) was created as an intent-classification and risk-assessment layer that sits between AgentGateway's transport and Cedar's policy evaluation, turning raw tool calls into se…

    Python 1

  6. agent-playground agent-playground Public

    LLM Harness for developing, debugging, and evaluating custom agents, tools, MCP servers, prompts, and memory constructs using Anthropic, OpenAI, or a local model.

    Python