Gamma Genesis

A native sparse-active architecture program by Gamma AI. Designed for efficient reasoning, multilingual intelligence, and verified model evolution in one consolidated system.

Model lines 30B-A6B and 100B+
Core method EvoStream verified evolution
Training rule Verifier-first, no-regress
Runtime idea AXB active budget 10-30%

Two Model Lines

Gamma AI is building two connected model lines: a compact sparse-active release first, and a larger frontier-class Genesis line after the engineering loop is proven.

First release line

Gamma 30B-A6B

The first release line: a 30B-class sparse-active system targeting roughly A6B balanced active compute, designed around Gamma routing, EvoStream iteration, verifier-first training, multilingual capability, and strict no-regress validation.

Status
Active validation and release-candidate hardening
Goal
Efficient multilingual reasoning model for public release
Frontier Genesis line

Gamma 100B+

The frontier line: a Genesis-native 100B+ model designed to scale the same principles: sparse-active capacity, AXB compute control, hybrid long-context memory, rigorous evaluation, and cloud-native training operations.

Status
Architecture and cloud build plan in preparation
Goal
Single consolidated frontier-class Gamma release

Genesis Native

Gamma Genesis Native is Gamma AI's architecture line: hybrid sequence memory, sparse active compute, task-driven routing, AXB active-budget control, MTP acceleration, and verifier-first training.

The product direction is intentionally simple: one consolidated model, strong reasoning, efficient inference, transparent validation, and documentation that can be defended.

Architecture Direction

Large total capacity, low active compute, Gamma-native routing, and strict acceptance gates.

01

Hybrid attention plus Mamba-3/MIMO SSM

Global attention keeps exact binding and tool structure. The SSM track is the long-context memory path that should reduce cache pressure and improve sequence efficiency.

02

LatentMoE plus TDMoE

Latent expert organization handles capacity. Task-driven routing selects cognitive modes such as reasoning, code, safety, memory, math, multilingual work, and tool use.

03

AXB dynamic active budget

One checkpoint should adapt its active compute to hardware: eco near 10%, balanced near 20%, quality near 30%. The first public target is the 30B-A6B class.

04

EvoStream verified evolution

EvoStream is our disciplined improvement loop: plan, train, verify, compare, and promote only when measurable gains survive no-regress gates.

Verified Progress

We publish engineering states that have passed internal checks. Public benchmark claims wait for complete peer runs.

Current release line Gamma 30B-A6B
Validation baseline G1-350 targeted9 PASS, balanced96 PASS
Measured improvement +0.020834 balanced96, zero regressions
Next engineering cycle G1-359 training, G1-360 validation, G1-361 orchestration
Execution mode Cloud-first, laptop as command and audit station

Operating Principles

One consolidated release is the goal. Gamma AI is not building a public-facing router disguised as a model.

Every improvement must pass verification, safety, multilingual, and no-regress checks before promotion.

Every paid GPU cycle starts with a plan, writes logs, uploads durable artifacts, destroys the instance, and updates project status.

Near Roadmap

The next work is engineering, not narration: finish the validation loop, harden the release candidate, then run fair peer benchmarks.

  1. 01

    Run G1-359 continuation and G1-360 strict validation on cloud GPU.

  2. 02

    Analyze deltas, weak rows, multilingual coverage, and safety behavior.

  3. 03

    Package the strongest Gamma 30B-A6B release candidate with provenance.

  4. 04

    Benchmark against same-class peers before any public performance claim.

  5. 05

    Scale the proven EvoStream workflow to the Gamma 100B+ line.