Skip to main content

Production-grade adaptive meta-learning framework for continual model improvement. Implements research DOI: 10.5281/zenodo.17839490.

Project description

AIRBORNE-ANTARA

Adaptive Neural Thinking Architecture For Recursive Autonomy

V8.1 // CODENAME: "SENTIENT" EDITION (PRODUCTION READY)

Architecture System Status

"Intelligence is no longer just trained. It is synthesized through awareness."

Autonomous Consciousness Unified Memory
Consciousness
Recursive Workspace V2
Memory
Holographic Saliency Pooling

🏆 SENTIENT CAPABILITIES (V8.0)

[!IMPORTANT] ANTARA V8.0 is a non-destructive cognitive wrapper. It does not replace your model weights; it builds a "conscious" manifold around them.

1. Unified Memory (SI + EWC + Universal OGD)

Result: Eliminated catastrophic forgetting across arbitrary architectures. V9.3 Update: Implemented Universal Tensor Projection, extending memory protection to Conv2d, Attention, and RNN layers, making the entire backbone effectively immortal.

See airborne_antara/memory.py

2. Recursive Consciousness (System 2)

Result: Enabled slow, deliberative reasoning over complex tasks using the Recursive Global Workspace. The model now generates and evaluates thought traces before final execution.

See airborne_antara/consciousness_v2.py

3. Perception Gateway (Multi-Modal)

Result: Native support for Vision, Audio, and Text via ViT-style encoders with Dynamic Positional Interpolation for variable input scales.

See airborne_antara/perception.py

4. Autonomic Health (MoE-Aware)

Result: Self-healing neural substrate. V9.3 Update: The monitor is now MoE-Aware, surgically preserving dormant expert knowledge while rejuvenating truly dead neurons in active manifold paths.

See airborne_antara/core.py


🧬 THE 4 PILLARS OF SENTIENCE

1. CONSCIOUSNESS V2 (Global Workspace)

Technical Deep Dive ↗

Implements System 2 Thinking. Instead of a single forward pass, the model projects states into a recursive workspace to simulate "thinking about the problem."

  • Thought Trace: Internal hidden state evolution logged as "telemetry" for debugging.
  • Recursive Workspace: Dynamic number of internal reasoning loops based on task entropy.

2. HOLOGRAPHIC MEMORY (Unified Handler)

Technical Deep Dive ↗

Combines Elastic Weight Consolidation (EWC), Synaptic Intelligence (SI), and Orthogonal Gradient Descent (OGD).

  • Saliency Pooling: Dynamically prioritizes historical parameters to prevent erasure.
  • Experience Replay: Generative replay of "dreams" during idle cycles to consolidate learning.

3. MULTI-MODAL PERCEPTION GATEWAY

Technical Deep Dive ↗

Unified manifold for Vision (Transformers), Audio (Spectral-Temporal), and Text.

  • Positional Interpolation: Scalable attention windows for high-resolution vision.
  • Modality Fusion: Cross-modal attention tokens for joint reasoning.

4. AUTONOMIC HEALTH MONITOR

Technical Deep Dive ↗

A background daemon tracking the "Neural Health" of the host model.

  • Neural Shivering: Injecting controlled stochastic noise to prevent saturation.
  • Gradient Centralization: Modern optimization to stabilize deep manifold learning.

🧪 RESEARCH / EXPERIMENTAL (V9.2)

[!CAUTION] These features are in preview for the NeurIPS ablation suite and may exhibit instability in production.

  • Self-Awareness V2: Metacognitive engine calculating "Confidence" and "Competence" in real-time.
  • I-JEPA World Model: Predictive foresight for world-dynamic modeling.
  • Holographic Compression: Next-gen memory storage with $O(log N)$ retrieval complexity.

⚡ INTEGRATION PROTOCOL

The architecture is designed for "One-Line Cognitive Injection".

import torch
from airborne_antara import AdaptiveFramework, PRESETS

# 1. DEFINE YOUR PYTORCH MODEL (Transformer, CNN, etc.)
model = MySubstrate() 

# 2. INJECT SENTIENT LAYER
# Uses the 'production' preset: Consciousness V2 + Unified Memory + MoE
agent = AdaptiveFramework(model, PRESETS.production())

# 3. CONSCIOUS TRAINING LOOP
# The agent handles Mixed Precision (AMP), Memory Consolidation, and Thought Tracing
for inputs, targets in dataloader:
    metrics = agent.train_step(inputs, target_data=targets)
    
    print(f"Loss: {metrics['loss']:.4f} | Surprise: {metrics['surprise']:.4f}")
    print(f"Cognitive Mode: {metrics['mode']}") # [NORMAL, NOVELTY, PANIC]

🖥️ TELEMETRY INTERFACE

Visualizing the internal state (Surprise, Memory Adjacency, Expert Utilization) is possible via the CLI dashboard.

python -m airborne_antara --demo

Telemetry


📂 RESEARCH DOCUMENTATION


LEAD ARCHITECT: SURYAANSH PRITHVIJIT SINGH
V8.0 "Sentient" Release // 2026

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

airborne_antara-0.1.115.tar.gz (93.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

airborne_antara-0.1.115-py3-none-any.whl (92.8 kB view details)

Uploaded Python 3

File details

Details for the file airborne_antara-0.1.115.tar.gz.

File metadata

  • Download URL: airborne_antara-0.1.115.tar.gz
  • Upload date:
  • Size: 93.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.8

File hashes

Hashes for airborne_antara-0.1.115.tar.gz
Algorithm Hash digest
SHA256 9b77be93d24c88c0735583bb2c1e8a435782dc563a466849c53cb749e782c6b2
MD5 e35544decb0db80f7fdc1634964dec94
BLAKE2b-256 3042121de2a9d2ca5e3b120794a2adbd7641bb1cbbcb70e6c5dff076bd116e03

See more details on using hashes here.

File details

Details for the file airborne_antara-0.1.115-py3-none-any.whl.

File metadata

File hashes

Hashes for airborne_antara-0.1.115-py3-none-any.whl
Algorithm Hash digest
SHA256 037c16dd33872c45975ddf3d9317d1c3f589baa07fb7d6af1831b8be73584724
MD5 f247bd0704f8a28a98a75a36e9288adf
BLAKE2b-256 97e462154201e85308c00dd70da63fb451fea0931642a12b47449f5a583c71b8

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page