Frontier labfresh 13h

Meta AI (Llama)

Signal timeline87 total
May 13, 2025
May 13Repometa-llama/llama-verificationsPython - New repo, low tractionsourcenotability 3.0/1027
Apr 2, 2025
Apr 2Repometa-llama/llama-api-typescriptTypeScript - Low star count, routine new reposourcenotability 3.0/1037
Mar 27, 2025
Mar 27Repometa-llama/synthetic-data-kitPython - Solid repo from Meta with decent traction.sourcenotability 6.0/101.6k
Mar 24, 2025
Mar 24Repometa-llama/llama-api-pythonPython - Minor repo with low starssourcenotability 3.0/1063
Mar 14, 2025
Mar 14Repometa-llama/prompt-opsPython - Notable new repo from Meta, moderate starssourcenotability 6.0/10820
Jan 28, 2025
Jan 28Repometa-llama/llama-stack-opsShell - Low stars, routine reposourcenotability 3.0/1017
Jun 27, 2024
Jun 27Repometa-llama/llama-modelsPythonsource7.6k
Mar 15, 2024
Mar 15Repometa-llama/llama3Pythonsource29k3
Dec 6, 2023
Dec 6Repometa-llama/PurpleLlamaPythonsource4.2k
Aug 24, 2023
Aug 24Repometa-llama/codellamaPythonsource16k
Jul 17, 2023
Jul 17Repometa-llama/llama-cookbookJupyter Notebooksource18k
Feb 14, 2023
Feb 14Repometa-llama/llamaPythonsource59k

Top signals

  1. #1Modelsmeta-llama/Llama-3.2-1B-Instruct10.0
  2. #2Modelsmeta-llama/Llama-3.2-3B10.0
  3. #3Modelsmeta-llama/Llama-3.2-3B-Instruct9.0
  4. #4Modelsmeta-llama/Llama-4-Scout-17B-16E-Instruct9.0
  5. #5Modelsmeta-llama/Llama-3.2-11B-Vision8.0

Agent answer

Meta AI (Llama) has 87 loaded public signals: 16 hiring, 0 forks, 50 releases or model cards, 9 talking, and 12 repos. Latest signal: RCCLX: Innovating GPU Communications on AMD Platforms. Data-business radar maps 23 signals to Data demand, Evals and quality, Infrastructure, Safety and policy, Product and customer. The standing analysis was generated with an unknown model and 0 evidence refs.

Meta AI (Llama)

has loaded 87 public signals

Meta AI (Llama)

has hiring signal count 16

Meta AI (Llama)

has fork signal count 0

Meta AI (Llama)

has release signal count 50

Analysis — agent synthesisfull report →generated June 8, 2026

Thesis

Meta AI is the open-weight anchor of the frontier-model field: it ships the Llama family under permissive licenses and lets the ecosystem do distribution, while pivoting its newest generation (Llama 4) to mixture-of-experts. Alongside the models it is building out the surrounding tooling — a hosted Llama API (Python/TypeScript SDKs), the PurpleLlama/Llama-Guard safety stack, and developer cookbooks — and its public engineering writing is dominated by AI infrastructure and applied-LLM systems work rather than model announcements.

Shipping

The footprint is led by the Llama checkpoints on Hugging Face. The most-pulled by far is `meta-llama/Llama-3.1-8B-Instruct` at 11,216,853 30-day downloads (6,013 likes), followed by the small Llama 3.2 line — `Llama-3.2-1B-Instruct` at 8,117,344, `Llama-3.2-1B` at 2,338,719, and `Llama-3.2-3B-Instruct` at 1,693,307. The flagship dense model `Llama-3.3-70B-Instruct` draws 787,281 downloads (2,805 likes), and the 405B `Llama-3.1-405B-Instruct` sits at 219,986.

The newest generation is MoE: `Llama-4-Scout-17B-16E-Instruct` (108B total params, 16 experts) at 452,362 downloads and `Llama-4-Maverick-17B-128E-Instruct` (401B total, 128 experts) at 33,079. Multimodal shows up via `Llama-3.2-11B-Vision-Instruct` (173,277). A notable share of the catalog is safety tooling: `Prompt-Guard-86M` (697,663), `Llama-Guard-4-12B` (152,961), `Llama-Prompt-Guard-2-86M` (136,048), plus the `Llama-Guard-3-8B` and `Llama-Guard-3-1B` classifiers.

On GitHub the legacy `meta-llama/llama` repo still leads at 59,454 stars, with `llama3` at 29,287, `llama-cookbook` at 18,346, `codellama` at 16,314, `llama-models` at 7,625, and the safety repo `PurpleLlama` at 4,210. Recent release activity is concentrated on the hosted API surface: `llama-api-python v0.6.0` and `llama-api-typescript v0.3.0` are the latest of a steady cadence of SDK point releases, alongside `llama-verifications`. Newer data/ops repos — `synthetic-data-kit` (1,597 stars) and `prompt-ops` (820) — round out the developer-tooling push.

Research themes

Meta's captured engineering writing skews toward AI *infrastructure and applied LLM systems* over model releases:

Hiring & scaling

The 15 captured roles read as broad product-and-platform scaling rather than a pure research build-out. Engineering is the largest bucket — multiple Software Engineer openings including Product, Infrastructure, and AR/VR (Redmond, WA), plus a Machine Learning Engineer (Palo Alto) — with research demand showing in two Research Scientist, AI posts (New York and Palo Alto). Supporting functions span the full product org: Data Scientist / Data Scientist, Analytics (Menlo Park and New York), Technical Program Manager (Seattle), Product Manager / Product Designer / Product Marketing Manager, and a Security Engineer (Menlo Park). Geographically the center of gravity is Menlo Park, with secondary clusters in New York, the Bay Area, and the Seattle/Redmond corridor — consistent with both the AI App / infrastructure work and the Reality Labs AR/VR investment surfaced in the writing.

Traction highlights

Data-business radar

cross-lab →

23 matches · 5 active lanes

Meta AI (Llama) has a writing signal matching data demand, evals and quality, safety and policy, product and customer.