Prepared for: Program-revision team Scope: Regulatory/accreditation compliance, California labor-market justification, and curriculum modernization for the non-credit CDCP Certificate of Completion in AI Infrastructure & Architecture (162h + 162h + 216h = 540h; 10 × 54 contact hours). Evidence basis: Research findings with adversarial verification verdicts. Claims marked refuted have been dropped or corrected; claims marked uncertain are hedged and collected in §7 for human verification.
Evidence note. The initial automated CCCCO research pass returned unusable placeholder data (a search-tool auth failure), so §2 was re-researched by hand against primary Chancellor's Office / Title 5 / Education Code sources on 2026-07-02 and is now verified — see references [C1]–[C6]. The ACCJC (§3), labor-market (§4), and industry/skills (§5–§6) sections rest on verified primary sources and are cited with confidence.
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1. Executive Summary
The certificate has a sound skeleton — Python/Git dev environments, containers/Kubernetes, cloud ML platforms, self-hosting, provider APIs, Model Context Protocol (MCP), and vector-DB/RAG workflows — but it is built around a 2023–2024 "run models locally + basic RAG" worldview and has not kept pace with the 2025–2026 production-agentic-systems stack. The single biggest technical gap is that the program teaches prototyping tools (Ollama, LM Studio, AnythingLLM/Open WebUI, N8N/Langflow/Flowise) as if they were production infrastructure, while a course branded "AI Infrastructure and Architecture" is expected to cover high-throughput inference serving, GPU orchestration at scale, LLMOps observability, guardrails/security, and AI governance [10][12][15][19][20].
What to change (headline recommendations):
- Keep the non-credit CDCP structure for now, but formally decide the credential path. Non-credit is the fastest, lowest-friction way to ship and update a fast-moving AI curriculum, and it is expressly exempt from ACCJC substantive-change review [5]. The recommendation (§2) is a stackable non-credit → for-credit pathway, mirroring the strongest CCC precedents (Grossmont, De Anza) [22][23].
- Reframe the "local model" and "low-code" content as dev-only, and add production serving (vLLM/TGI/TensorRT-LLM), GPU orchestration (GPU Operator, DRA, KAI Scheduler), and disaggregated inference (NVIDIA Dynamo) [15][16][17].
- Add the missing production competencies: agent frameworks (code-first), LLMOps observability/eval, fine-tuning/quantization, modern multi-stage RAG with rerankers and evals, guardrails/security (OWASP LLM Top 10 2025), AI governance (NIST AI RMF / ISO 42001 / EU AI Act), and GPU FinOps [10][12][14][19][20][26].
- Expand MCP coverage — it is current and correctly placed; MCP is now under the Linux Foundation's Agentic AI Foundation and is an industry standard, so deepen it (server-building, tool security) rather than replace it [11].
- Anchor SLOs, program review, and disaggregated completion/job-placement tracking from day one to satisfy ACCJC Standard 2 and Eligibility Requirement 11 even though no ACCJC filing is required for a non-credit offering [6][7].
- Ground the labor-market justification in verified EDD data: Data Scientists (+37.1%) and Computer & Information Research Scientists (+26.1%) are the fastest-growing target occupations statewide, Software Developers is the largest-employment and a top-5 bachelor's-level opening occupation, and Network/Systems Administrators is the lone decliner (−4.5%) — reinforcing a retrain-toward-cloud/MLOps thesis [1][2][3][8][9].
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2. Regulatory & Compliance Update (CCCCO)
Verified section (re-researched 2026-07-02). The items below are sourced to primary Chancellor's Office / Title 5 / Education Code references [C1]–[C6] listed in §9.
2.1 Governing handbook — PCAH 8th Edition (November 2019)
- The controlling reference for CCCCO curriculum/program approval is the Program and Course Approval Handbook (PCAH), 8th Edition (November 2019) — still the current edition as of mid-2026 [C1]. It is organized into credit and noncredit components and governs course/program submission, approval, chaptering, and maintenance. Build the revised program narrative and Course Outlines of Record (CORs) to the PCAH 8th-edition noncredit specifications.
- Approval flows college curriculum committee → district governing board → CCCCO Curriculum & Instruction Unit (Curriculum Inventory submission) [C1][C2]. Noncredit certificates are approved through this CCCCO noncredit process; they are outside ACCJC substantive-change jurisdiction (§3.3) [5] but not outside Title 5 / CCCCO approval — a separate, required track.
2.2 Noncredit certificate types & CDCP enhanced funding
Statutory/regulatory basis: Ed Code §84760.5 (defines CDCP categories), Ed Code §84750.5 (uniform FTES apportionment; §84750.5(d)(4)(A)(i) codifies CDCP funding at credit parity, enacted by SB 860 (2014), effective 2015–16), and Title 5 §55151 (CDCP program approval) [C3][C4].
- Enhanced (credit-parity) funding is available only for noncredit courses in four instructional domains — ESL, Elementary & Secondary Basic Skills, Short-Term Vocational, and Workforce Preparation — and only when the courses are sequenced (≥2) into an approved certificate [C3].
- Certificate of Completion = a course sequence leading to improved employment (short-term vocational / workforce prep). ← Correct classification for the AI Infrastructure certificate.
- Certificate of Competency = a sequence that prepares students to transition into credit coursework (credit certificate, associate degree, or transfer) [C3].
- Bottom line: the 540-hour AI Infrastructure certificate — classified Short-Term Vocational → Certificate of Completion — is CDCP-eligible for enhanced (credit-parity) funding once CCCCO-approved and documented as leading to improved employment with a demonstrated labor-market need (which §4 supplies). This confirms and now properly sources the original proposal's funding premise. Enhanced funding is not automatic — it follows CCCCO approval of the certificate and its course sequence [C3][C4].
2.3 Course Outline of Record (COR) & Distance Education
- Each noncredit COR must meet Title 5 §55002(c) standards (objectives, content, methods of instruction and evaluation, SLOs) and the PCAH 8th-edition noncredit COR fields [C1]. The program already includes a COR template — align it to these fields.
- Distance Education: each course offered online needs a DE addendum (Title 5 §55200 et seq.), and instruction must meet the federal Regular and Substantive Interaction (RSI) standard (34 CFR 600.2) [4]. Note the separate ACCJC 50%-of-courses DE substantive-change trigger in §3.3 [4][5].
2.4 Compliance checklist mapped to existing program sections
| Requirement | Governing source | Maps to program section | Status / action |
|---|---|---|---|
| PCAH-conformant non-credit program narrative | PCAH (edition TBD) | Overview, Requirements | Verify edition; confirm non-credit fields |
| CDCP category mapping (short-term vocational / workforce prep) | Ed Code / Title 5 (verify) | Overview, Career Pathways | Add explicit category justification |
| Labor-market need documentation | CCCCO non-credit approval | Career Pathways, References | Use §4 EDD data |
| COR fields per PCAH non-credit template | PCAH | COR template | Verify field completeness |
| DE addendum + RSI per course | 34 CFR 600.2 (RSI) [4] | Implementation | Add DE addenda if online |
| SLOs + program review + disaggregated data | ACCJC Std 2 / ER 11 [6][7] | Evaluation (SLO/program review) | Strengthen — §3 |
| Program discontinuance / teach-out | ACCJC Std 2, item 2viii [8-refs below] | Implementation | Add teach-out plan |
| Advisory committee / industry alignment | ACCJC 2.2 [6] | Implementation (advisory) | Confirm active advisory board |
2.5 Credential-structure analysis and recommendation
Three options were weighed:
| Option | Unit/hour implication | Approval path | Funding | Assessment |
|---|---|---|---|---|
| A. Keep non-credit CDCP Certificate of Completion (status quo) | 540 contact hours (162h + 162h + 216h = 10×54h), no units | CCCCO non-credit approval; no ACCJC substantive-change [5] | Enhanced CDCP FTES if category-eligible (verify) | Fastest to launch/update; lowest student barrier; best for rapidly-changing AI content |
| B. Add a for-credit Certificate of Achievement | Would require conversion to units (~16+ units triggers ACCJC review for credit) [refs below] | CCCCO credit approval plus ACCJC administrative approval if ≥16 units and significant resources [refs below] | Standard credit apportionment; transferability | Slower; heavier COR/curriculum-committee load; but confers transcripted, transferable credit |
| C. Stackable non-credit → credit pathway (recommended) | Keep 540h non-credit foundation; layer credit certificates on top | Non-credit now; phase in credit later | CDCP enhanced funding on the non-credit tier; credit apportionment on upper tiers | Matches Grossmont/De Anza precedents [22][23]; lowest-barrier entry with an achievement ceiling |
Recommendation: Option C (stackable non-credit → credit). Launch/maintain the current non-credit CDCP Certificate of Completion as the accessible entry tier (preserving the ACCJC non-credit exemption and enhanced CDCP funding, pending category verification), and design the courses so they can later articulate into a for-credit Certificate of Achievement / AS. This mirrors the two strongest verified CCC precedents:
- Grossmont College (Fall 2025) — first CCC Applied AI AS with a noncredit → degree stack (AI Fundamentals and AI Developer non-credit Certificates of Completion → Certificate of Achievement/AS, 32 units), including a dedicated Applied AI in Cloud Computing course [22].
- De Anza College (Fall 2026) — stackable no-cost non-credit foundational certificate → technical certificates (ML, deep learning, NLP, prompt engineering, AI agents) → AS in Applied AI; reported ~222-hour Applied AI Certificate of Completion [23] (medium confidence — see §7).
Credit-conversion thresholds to plan around (Title 5 §55070, as amended 2025) [C5][C5a]: a credit grouping of ≥16 semester units of degree-applicable coursework must be Chancellor-approved and can only be titled "Certificate of Achievement" (transcriptable); only ≥16-unit certificates are federal Title IV financial-aid eligible. A district may optionally submit 8 to <16 semester units for Certificate-of-Achievement approval. Sequences <8 units (or not submitted) are locally-approved certificates that cannot use the "Certificate of Achievement / Completion / Competency" titles or appear on the transcript, and a certificate cannot consist solely of basic-skills courses. (The April 2025 §55070 revision refined wording — "grouping" vs "sequence," the intersegmental-GE definition — but kept these unit thresholds.) Separately, ACCJC treats a new ≥16-unit credit certificate requiring significant institutional resources as an Administrative Approval substantive change; non-credit tiers remain exempt throughout [5].
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3. Accreditation (ACCJC)
3.1 The 2024 Standards touchpoints
The 2024 ACCJC Accreditation Standards (adopted June 2023; June 2025 edition) are organized into four standards: Standard 1 (Institutional Mission and Effectiveness), Standard 2 (Student Success), Standard 3 (Infrastructure and Resources), Standard 4 (Governance and Decision-Making) [6]. Standard 2 governs instructional program design for this certificate:
- 2.1 — academic programs must be in fields of study consistent with the institution's mission, with appropriate breadth, depth, and expected learning outcomes (ER 3, ER 9, ER 12) [6].
- 2.2 — the institution, relying on faculty and other stakeholders, designs and delivers programs reflecting relevant discipline and industry standards (ER 3, 9, 11, 14) — directly supports justifying the AI curriculum against current industry practice (which §5–§6 supply) [6].
- 2.5 — scheduling must ensure certificate programs can be completed in the expected period of time (ER 9) [6].
- 2.9 — the institution conducts systematic review and assessment of program quality (ER 11, 14) — the program-review/SLO engine [6].
- 1.3 and required documentation item 1v — institution-set standards for certificate completion specifically, alongside course completion, degree/transfer, job placement, and licensure pass rates, reviewed via meaningfully-disaggregated data [6].
3.2 SLO / assessment obligations (ER 9 and ER 11)
Eligibility Requirement 11 is the program-level SLO/assessment anchor: publish each program's expected SLOs and any program-specific achievement outcomes, and demonstrate through regular, systematic assessment that completers achieve them — including review of meaningfully-disaggregated data to identify and close achievement gaps [7]. ER 9 requires programs of sufficient content and length, at appropriate rigor, culminating in identified outcomes [7].
Action: Even though a non-credit certificate triggers no ACCJC filing, the college must still (a) publish program SLOs, (b) run a program-review cycle, and (c) track completion and job-placement data disaggregated by student group, in the program's Evaluation section [6][7]. (Caveat: ER 9/ER 11 documentation is framed around degree programs; applying it to a non-credit certificate is a reasonable inference but not named explicitly in the ERs — see §7.)
3.3 Substantive-change implications
- Non-credit programs are exempt from ACCJC's substantive-change process — no notification, administrative approval, or committee review. This is confirmed verbatim in the Substantive Change Manual (May 2026), which lists "Non-credit courses and/or programs" as an exempt category [5]. (Correction per verdict: the manual lists five exempt categories, not four; the load-bearing conclusion — non-credit triggers no substantive-change filing — holds [5].)
- Distance Education exception applies regardless: if 50% or more of the courses are delivered via distance/correspondence education, advance notice through the substantive-change process is still expected, and the first course in a DE modality requires Administrative Approval; federal RSI requirements apply [4][5]. This matters if the certificate is delivered substantially online.
- Teach-out / program discontinuance: ACCJC required-documentation item 2viii requires policies ensuring enrolled students can complete in a timely way if a program is eliminated [6]. Given how fast AI tooling changes, build a teach-out plan into the Implementation section for any future course sunset.
- The specific substantive-change process timelines (ALO inquiry form; 15-day notification acknowledgment; 30/90/180-day administrative-approval windows) are largely confirmed, but the committee-approval payment deadline is internally inconsistent in ACCJC's own manual (Section 2 prose says "within 2 weeks," the flowchart says "at least 30 days") — flagged in §7 [5].
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4. Labor Market Justification (California)
Data sources & vintage. Figures below come from EDD's OEWS wage file (California-Statewide; May 2024 employment estimates with wages escalated to Q1 2025 dollars) and EDD's Long-Term Occupational Employment Projections 2024–2034, cross-referenced with the 2025 California Jobs Market Report [1][2][3]. All eight occupation figures were verified exactly against source [verdicts: confirmed].
BLS-API / OEWS data caveat. (1) The bulk EDD OEWS CSV used here is one release cycle behind the live EDD OEWS page, which now shows May 2025 employment / Q1 2026 wages — so employment counts differ slightly between the OEWS survey file and the projections file (different release vintages); both are legitimate official EDD numbers and are cited separately [9]. (2) There is no standalone SOC code for "MLOps Engineer" or "AI Engineer"; those roles are absorbed into 15-1252, 15-2051, and 15-1299, and any role-specific demand figures come from private vendors (Lightcast), not government statistics — treat as directional only [13]. (3) The statewide 8.8% baseline is on the 2023–2033 cycle while occupation growth rates are 2024–2034 — a minor cross-cycle comparison [8].
4.1 Per-occupation table (California statewide)
| SOC | Occupation | Base employment (2024, projections file) | Median annual wage | Mean annual wage (OEWS) | Projected growth 2024–34 | Total openings 2024–34 |
|---|---|---|---|---|---|---|
| 15-2051 | Data Scientists | 40,400 | $145,554 (proj) / $140,518 (OEWS) | $159,675 | +37.1% (fastest) → 55,400 | 40,180 [1] |
| 15-1221 | Computer & Information Research Scientists | 8,800 | $163,554 (proj) / $160,538 (OEWS) | $168,344 | +26.1% (2nd fastest) → 11,100 | 7,690 [1] |
| 15-1252 | Software Developers | 290,800 | $179,292 (proj) / $175,555 (OEWS) | $190,798 | +18.4% → 344,400 | 207,260 [1][2] |
| 11-3021 | Computer & Information Systems Managers | 96,800 | $221,952 (proj) / $215,259 (OEWS) | $237,025 | +16.5% → 112,800 | 82,270 [1] |
| 15-1241 | Computer Network Architects | 15,300 | $163,317 (proj) / $142,110 (OEWS) | $154,087 | +11.8% → 17,100 | 9,510 [1] |
| 15-1299 | Computer Occupations, All Other (catch-all for many AI/ML/MLOps roles) | 84,700 | $138,203 (proj) / $132,249 (OEWS) | $140,015 | +11.1% → 94,100 | 59,320 [1] |
| 15-1211 | Computer Systems Analysts | 62,000 | $131,295 (proj) / $131,129 (OEWS) | $136,553 | +9.7% → 68,000 | 41,500 [1] |
| 15-1244 | Network & Computer Systems Administrators | 26,900 | $109,420 (proj) / $109,518 (OEWS) | $117,612 | −4.5% (only decliner) → 25,700 | 11,510 [1] |
4.2 Demand narrative
- The AI/ML-adjacent occupations are the fastest-growing. Data Scientists (+37.1%) and Computer & Information Research Scientists (+26.1%) far outpace the statewide 8.8% all-occupations baseline (2023–2033, >21 million jobs) [8]. Seven of the eight target occupations exceed that baseline [8].
- Software Developers is both the largest and a flagged high-demand occupation. At 290,800 base employment and +18.4% growth, it is one of EDD's named high-demand careers and ranks #2 among all bachelor's-level occupations by projected openings (222,110, 2023–2033 cycle; $175,555 median; 9,838 online job ads June 12–Aug 10 2025 via Lightcast/CalJOBS) [2][3].
- The one decliner reinforces the retraining thesis. Network & Computer Systems Administrators is the only shrinking target occupation (−4.5%), consistent with cloud automation and managed services absorbing traditional on-prem sysadmin work — a direct argument for retraining toward cloud/MLOps-adjacent skills rather than legacy administration [1].
- AI is simultaneously displacing and creating tech roles. EDD's 2025 report attributes part of recent high-tech job losses (Professional & Business Services −179,100; Information −105,100) to "the rapid increase in the integration of artificial intelligence-related cost-saving measures," citing AI-driven layoffs shrinking entry-level jobs [3]. This supports training workers toward higher-value AI-building/AI-operating roles rather than commoditized ones.
- Emerging roles corroborate direction (low confidence). Vendor data (Lightcast) shows generative-AI unique job postings rising from ~55 (Jan 2021) to nearly 10,000 (May 2025), with California/Bay Area a top concentration — directional support for an AI-infrastructure credential, not a primary justification figure [13].
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5. Curriculum Modernization
5.1 Course-by-course disposition
Semester 1 — Foundations
| Course | Verdict | Add / cut | Modern tools & techniques |
|---|---|---|---|
| AIINFRA 100 — Intro to AI Systems & Infrastructure | KEEP + UPDATE | Add a "prototype vs. production" framing that recurs across the program; add an AI-governance/ethics primer | Introduce the inference-serving landscape and the OWASP LLM Top 10 2025 [19] and NIST AI RMF [20] at survey level |
| AIINFRA 101 — Dev Environments & Tools (Python, Git, Conda/venv, Jupyter) | KEEP | Minor: add uv/modern packaging awareness; keep Git/Jupyter | Add experiment-tracking preview (MLflow) to foreshadow LLMOps [12] |
| AIINFRA 102 — Containerization & Orchestration (Docker, Compose, K8s, IaC) | KEEP + UPDATE | Add GPU-aware Kubernetes: NVIDIA GPU Operator, Dynamic Resource Allocation (GA in k8s 1.34), MIG partitioning | Terraform/IaC stays; add GPU scheduling concepts to bridge to the new GPU-orchestration module [17] |
Semester 2 — Deployment
| Course | Verdict | Add / cut | Modern tools & techniques |
|---|---|---|---|
| AIINFRA 200 — Cloud Platforms for AI (SageMaker, Azure ML, Vertex) | KEEP + UPDATE | Add cloud ML certification alignment (AWS ML Engineer-Associate, Google Cloud PMLE, Azure AI Engineer) [21]; add CI/CD-for-ML | Managed inference endpoints; cost/quota awareness feeding FinOps [26] |
| AIINFRA 201 — Self-Hosting & Local Model Servers (Linux, Hetzner, DO, Ollama, LM Studio) | UPDATE — reframe as dev-only | Explicitly frame Ollama/LM Studio as prototyping; add production serving engines | vLLM (PagedAttention, continuous batching), TGI v3, TensorRT-LLM; introduce disaggregated prefill/decode (NVIDIA Dynamo) [15][16] |
| AIINFRA 202 — All-in-One AI Apps (AnythingLLM, Open WebUI, RAG) | UPDATE | Keep as an intro to app assembly, but move real RAG rigor into the new RAG course | Frame these as reference UIs, not production RAG [10] |
Semester 3 — Advanced
| Course | Verdict | Add / cut | Modern tools & techniques |
|---|---|---|---|
| AIINFRA 300 — Enterprise AI Services (OpenAI, Claude, Bedrock, Vertex, OpenRouter APIs) | KEEP | Add cost/latency/observability instrumentation of provider calls | Tie provider usage to LLMOps tracing and FinOps [12][26] |
| AIINFRA 301 — Model Context Protocol Implementation | KEEP + EXPAND | MCP is current and correctly placed — deepen it | Add MCP server-building, tool security, and broader agentic standards (AGENTS.md, A2A); note MCP is now under the Linux Foundation's Agentic AI Foundation with 10,000+ public servers [11] |
| AIINFRA 302 — Vector Databases & AI Workflows (Pinecone, Chroma, pgvector/Supabase, N8N, Langflow, Flowise) | REPLACE/SPLIT | Split: (a) modernize vector-DB selection; (b) move workflow/agents to a new code-first agents course; low-code tools become an on-ramp, not the destination | Add Qdrant/Milvus/Weaviate/pgvector selection by scale, HNSW vs IVF, hybrid (dense+sparse) search, metadata filtering; link to OWASP LLM08 (vector/embedding weaknesses) [19][25] |
| AIINFRA 303 — Capstone (one version) | KEEP | Require a production-grade artifact instrumented with observability + evals + a guardrail | Capstone becomes the integration point for serving, RAG evals, and governance (see Phase 2, §8) |
5.2 New courses / modules to fill gaps
- Agentic AI & Agent Frameworks (code-first) — LangGraph (graph-based), CrewAI (role-based), OpenAI Agents SDK (handoff-based, released March 2025), Pydantic AI (2025 breakout); agent state/graph control flow, tool-calling, handoffs, human-in-the-loop interrupts/approvals, multi-agent orchestration. Teach the cost/efficiency lesson (LangGraph fastest on latency; CrewAI ~3× token footprint on simple flows). Fills the gap left by N8N/Langflow/Flowise, which are visual workflow tools, not production agent frameworks [10].
- LLMOps: Observability, Tracing & Evaluation — Langfuse (MIT, self-hostable), Arize Phoenix (50+ faithfulness/relevance/toxicity/hallucination metrics), LangSmith, OpenTelemetry/OpenLLMetry, MLflow tracing; the CLEAR evaluation framework (Cost, Latency, Efficacy, Assurance, Reliability). Currently entirely missing [12].
- High-Performance Inference Serving & GPU Orchestration — vLLM/SGLang/TensorRT-LLM/TGI; Ray Serve, Triton, KServe; continuous batching, PagedAttention/KV-cache, tensor/pipeline parallelism; GPU Operator, DRA, KAI Scheduler (gang/topology-aware scheduling), MIG, Slurm-on-K8s (Slinky), SkyPilot; NVIDIA Dynamo disaggregated serving. The biggest technical gap for a course branded "Infrastructure and Architecture" [15][16][17].
- Model Adaptation: Fine-Tuning & Quantization — LoRA/QLoRA/PEFT, DPO (has displaced classic RLHF), emerging GRPO; quantization formats GGUF/AWQ/GPTQ/FP8, KV-cache quantization; the heuristic "a larger model at lower precision usually beats a smaller model at higher precision." Single-GPU adaptation is accessible to this exact community-college audience [14][18].
- Production RAG: Rerankers, GraphRAG & Evals — hybrid search (dense+BM25), query rewriting, cross-encoder rerankers, GraphRAG, agentic RAG; mandatory evaluation with RAGAS and DeepEval (CI/CD quality gates). Replaces naive embed-and-retrieve [10].
- AI Security & Guardrails — OWASP LLM Top 10 (2025); NeMo Guardrails, Llama Guard 4 (12B multimodal, released Apr 30 2025), LLM Guard/Rebuff/Prompt Guard, Presidio (PII); direct vs. indirect prompt injection. Currently missing; essential given the agentic focus [19].
- AI Governance & Compliance — NIST AI RMF (methodology), ISO/IEC 42001 (auditable AMS), EU AI Act (binding law; prohibited practices + AI literacy applied Feb 2 2025, GPAI obligations Aug 2 2025, most high-risk requirements Aug 2 2026). Increasingly an employer/hiring requirement [20].
- GPU FinOps — cost per 1,000 requests (not per GPU-hour); spot/preemptible for batch; quantization + KV-cache savings; right-sizing; fractional GPUs/MIG. Ties together serving, quantization, and orchestration [26] (some FinOps case-study figures are vendor-sourced — see §7).
5.3 Revised program map (162h + 162h + 216h = 540h)
At 54 contact hours per course (the Chancellor's-Office-recommended 18×3 standard) the full 10-course sequence totals 540 contact hours — a 30-unit credit-equivalent (Semesters 1–2 = three courses/162h each; Semester 3 = four courses/216h, including the AIINFRA 303 capstone). Content is modernized and redistributed within this envelope (an accelerated 6-month/Kubernetes-fundamentals variant remains a valid alternate format).
- Semester 1 — Foundations (162h): 100 Intro to AI Systems & Infrastructure (updated) · 101 Dev Environments & Tools (kept) · 102 Containerization & GPU-Aware Orchestration (updated)
- Semester 2 — Serving & Deployment (162h): 200 Cloud Platforms for AI + CI/CD-for-ML (updated) · 201 Production Inference Serving & GPU Orchestration (replaces "Self-Hosting"; Ollama/LM Studio reframed dev-only) · 202 Model Adaptation: Fine-Tuning & Quantization (new; replaces "All-in-One AI Apps")
- Semester 3 — Applied Production Systems (216h): 300 Agentic AI & MCP (merges enterprise APIs + expanded MCP + code-first agents) · 301 Production RAG + LLMOps Observability/Evals (replaces vector-DB/low-code course) · 302 AI Security, Guardrails & Governance (+ GPU FinOps) (new) · 303 Capstone (kept; production-grade, instrumented artifact)
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6. In-Demand Skills & Certifications Alignment
Employer demand for AI Infrastructure Engineer / MLOps / ML Platform / AI/ML Engineer roles in California converges on a consistent stack. Two live California postings verify the direction: Scale AI (Model Serving Platform) requires Python/Go/Rust/C++, Docker/Kubernetes, AWS/GCP + Terraform, and LLM-serving know-how with vLLM/SGLang/TensorRT-LLM as nice-to-haves [24] (salary/URL specifics flagged in §7); Hashlist requires production GenAI experience, MCP servers and agentic AI architectures, and CI/CD-integrated AI tooling [24].
| Ranked employer-demanded skill/cert [21][24] | Where it lives in the revised curriculum |
|---|---|
| 1. Python (+ Go/Rust/C++ for infra) | 101 (kept) |
| 2. Docker + Kubernetes | 102 (GPU-aware K8s) |
| 3. Cloud platforms (AWS/GCP/Azure) | 200 |
| 4. Infrastructure-as-code (Terraform) | 102, 200 |
| 5. CI/CD (Jenkins, GitHub Actions, GitLab CI) | 200 (CI/CD-for-ML) |
| 6. PyTorch / TensorFlow | 202 (fine-tuning) |
| 7. MLOps/data platform (Databricks, MLflow, Delta Lake, PySpark) | 301 (LLMOps/observability) |
| 8. LLM/GenAI (LangChain, RAG, prompt/agentic, vLLM/SGLang/TensorRT-LLM, MCP) | 201, 300, 301 |
| 9. Monitoring/observability (Prometheus, Grafana) | 301 |
| 10. Certifications (CKA/CKAD; AWS ML Engineer-Associate; Google Cloud PMLE; Azure AI Engineer; Databricks Data/ML Associate) | Align 102 → CKA/CKAD; 200 → cloud ML certs [21] |
Certification strategy. Following the Coastline College model (AI-for-Cybersecurity AS with NSA CAE-C validation and CompTIA alignment) [22-analog], the certificate can map explicitly to vendor-neutral Kubernetes certs (CKA/CKAD) and cloud ML certs as preferred qualifications. Reported salary premiums are directional (industry compensation analysis, not government wage data): CKA ~18–25%, CKS ~25–35% [24] (see §7 for the specific ML-postings-share figure).
Statewide positioning. The CCC Vision 2030 AI Workplan (July 2025) funds shared infrastructure (a $10M initial + $12M scaling Common Cloud Data Platform) and workforce MOUs with Nvidia, Google, OpenAI, Microsoft, IBM, Intel and others, but does not prescribe a technical AI-infrastructure curriculum — so a college proposing a specific AI-infrastructure/MLOps non-credit certificate is filling a real gap the system has not centrally defined, while aligning with the state's named priorities [27].
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7. Risks & Human-Verification List
A. CCCCO items — now verified (2026-07-02), with residual procedural confirmations
- §2 was re-researched against primary sources after the automated pass failed, and is no longer an open gap: PCAH 8th Edition (Nov 2019) [C1]; CDCP basis Ed Code §84760.5 / §84750.5 + Title 5 §55151, credit-parity funding per SB 860 [C3][C4]; Certificate-of-Achievement thresholds Title 5 §55070 as amended 2025 [C5][C5a]; Vision 2030 stackable/CPL support [C6]. [resolved]
- CDCP eligibility classification is correct but approval is procedural. The Short-Term Vocational → Certificate of Completion mapping is right, but enhanced funding still requires CCCCO approval of the certificate + its course sequence; confirm the local submission path with your college Curriculum Committee / Articulation Officer before asserting funding in the proposal. [procedural]
B. ACCJC nuances to verify
- Committee-approval payment deadline is internally inconsistent in ACCJC's own manual ("2 weeks" in prose vs. "30 days" in the flowchart). Do not cite a single figure without checking the current manual [5]. [uncertain]
- "Category F" label for the substantive-change category was not verifiable from the retrieved primary source; the manual does not use lettered categories. Do not cite "category F." [uncertain]
- ER 9 / ER 11 are degree-framed; applying them to a non-credit certificate is a reasonable inference, not explicit text. Present as best practice, not a naming citation [7]. [uncertain]
- RSI citation set (34 CFR 600.2; Standards 1.4/2.1/2.2/2.6/2.9/3.9) comes from a DE-policy PDF not independently re-retrieved; the RSI requirement itself is well-established [4]. [uncertain]
C. Labor-market / skills figures to hedge
- MLOps/AI-Engineer demand numbers are vendor-sourced (Lightcast), not government data — directional only [13]. [confirmed as low-confidence]
- Scale AI posting: technical requirements confirmed, but the cited salary band ($180K–$225K) matches a non-senior listing while a near-duplicate "Senior" listing shows $216,200–$270,250, and the LinkedIn URL digit may be mistyped. Verify exact posting/title/URL before quoting [24]. [refuted as cited — corrected]
- California ML-postings share: cited as ~29% but at least one source shows 32%. Verify against the actual CompTIA report table before quoting precisely [24]. [uncertain]
- Certification salary premiums are industry compensation analysis, not government wage data — label directional [24]. [uncertain]
D. Curriculum-claim figures to soften
- "~80% of RAG failures are retrieval, not generation" — corrected to ~73%; the 80% figure applies to overall RAG project failure rate, a different metric. Use 73% [10]. [refuted — corrected]
- "60% of new 2026 RAG deployments include eval from day one (up from <30%)" — single aggregator source; treat as unverified [10]. [uncertain]
- GPU FinOps case study ($39K→$16K/month) and "55–80% of AI GPU spend is inference" — single vendor/marketing source; present as illustrative [26]. [uncertain]
- "Token consumption grows ~20x by 2030" — closest verified figure is Goldman Sachs' 24× (2026→2030); adjust base year/figure before citing precisely [14/26-adjacent]. [confirmed-with-adjustment]
- "LoRA/QLoRA cover ~95% of production fine-tuning" and vector-DB scale thresholds (e.g., "Qdrant 500K–50M vectors") are soft rules-of-thumb, not hard statistics [14][25]. [confirmed-as-illustrative]
- KAI Scheduler "de facto reference" is promotional framing (CNCF Sandbox project); accurate underlying facts, soften the superlative [17]. [confirmed-with-nuance]
E. Comparative/precedent claims to re-confirm
- De Anza (222h figure), Coastline (NSA CAE-C through 2030), Chaffey/Bakersfield, MiraCosta/Saddleback precedents were medium/low confidence or not independently re-fetched [22][23]. Confirm before citing specific hours/structures. [uncertain]
- CCC AI Consortium (cccaic.org) was unreachable; member list/curriculum templates unverified — confirm via ASCCC/BACCC [22-analog]. [low confidence]
---
8. Phase 2 & Phase 3 Groundwork
Phase 2 — Capstone project research (to tee up). The revised 303 Capstone should require a production-grade, instrumented artifact rather than a prototype: an agentic or RAG system that (a) serves a quantized model via vLLM/TGI, (b) is instrumented with LLMOps tracing (Langfuse/Phoenix) and an automated eval harness (RAGAS/DeepEval), (c) enforces at least one guardrail (NeMo Guardrails / Llama Guard) mapped to an OWASP LLM Top 10 risk, and (d) reports a FinOps metric (cost per 1,000 requests) [12][15][19][26]. Phase 2 research should draft the capstone rubric, define SLO-linked assessment tied to ER 11 [7], and specify facility/GPU-access needs (the CCC Common Cloud Data Platform and NVIDIA/cloud MOUs are potential resources [27]).
Phase 3 — Interactive web conversion (to tee up). The final program-revision proposal (Overview, Requirements, Core Curriculum, COR template, Implementation, Evaluation, Career Pathways, References) is a strong candidate for conversion to an interactive web artifact: a stackable-pathway visualizer (non-credit → credit), a labor-market dashboard driven by the §4 EDD table, a course-modernization matrix (KEEP/UPDATE/REPLACE), and a skills-to-curriculum crosswalk. Phase 3 groundwork: confirm the canonical section list, freeze the verified data tables, and resolve the §7 verification items so the interactive version ships only confirmed claims.
---
9. References
- California Long-Term Occupational Employment Projections 2024–2034 (EDD CSV,
lt-occ-emp-2024-2034.csv). https://data.ca.gov/dataset/715d1324-ac02-4b11-b922-86bafa6eb80f/resource/274e273c-d18c-4d84-b8df-49b4d13c14ce/download/lt-occ-emp-2024-2034.csv - California OEWS Wage Data (EDD,
oews-2009-2025_original.csv). https://data.ca.gov/dataset/6411456b-594b-4b73-af57-ce8dd401f2e2/resource/aef4c53a-7e17-418c-acc1-d189e39b6caa/download/oews-2009-2025_original.csv - 2025 California Jobs Market Report (EDD, DE 864 Rev. 3 8-25). https://edd.ca.gov/siteassets/files/pdf_pub_ctr/2025_california_jobs_market_report.pdf
- ACCJC Policy on Distance Education and on Correspondence Education, June 2025. https://accjc.org/wp-content/uploads/Policy-on-Distance-and-on-Correspondence-Education.pdf
- ACCJC Substantive Change Manual, May 2026 Edition. https://accjc.org/wp-content/uploads/Substantive-Change-Manual.pdf
- ACCJC 2024 Accreditation Standards (June 2025 edition). https://accjc.org/wp-content/uploads/ACCJC-2024-Accreditation-Standards.pdf
- ACCJC Eligibility Requirements for Accreditation, January 2024. https://accjc.org/wp-content/uploads/Eligibility-Requirements-for-Accreditation.pdf
- EDD Employment Projections page (confirms 2024–2034 vintage). https://labormarketinfo.edd.ca.gov/data/employment-projections.html
- EDD OEWS Employment and Wage Statistics page. https://labormarketinfo.edd.ca.gov/data/oes-employment-and-wages.html
- RAG in Production 2026: GraphRAG, Hybrid Retrieval, and Evals. https://ailearningguides.com/rag-production-patterns-2026/ · Top 5 Reranking Models (MachineLearningMastery). https://machinelearningmastery.com/top-5-reranking-models-to-improve-rag-results/
- Donating the Model Context Protocol and establishing the Agentic AI Foundation (Anthropic). https://www.anthropic.com/news/donating-the-model-context-protocol-and-establishing-of-the-agentic-ai-foundation · Linux Foundation press release. https://www.linuxfoundation.org/press/linux-foundation-announces-the-formation-of-the-agentic-ai-foundation
- Best LLM Observability Tools (Firecrawl). https://www.firecrawl.dev/blog/best-llm-observability-tools · Top 5 LLM and Agent Observability Tools (MLflow). https://mlflow.org/top-5-agent-observability-tools/
- Lightcast: The Generative AI Job Market: 2025 Data Insights. https://lightcast.io/resources/blog/the-generative-ai-job-market-2025-data-insights
- LLM Fine-Tuning Guide: LoRA, QLoRA, DPO, GRPO, RLHF (Future AGI). https://futureagi.com/blog/llm-fine-tuning-guide-2025/
- Comparing the Top 6 Inference Runtimes for LLM Serving in 2025 (MarkTechPost). https://www.marktechpost.com/2025/11/07/comparing-the-top-6-inference-runtimes-for-llm-serving-in-2025/
- Introducing NVIDIA Dynamo (NVIDIA). https://developer.nvidia.com/blog/introducing-nvidia-dynamo-a-low-latency-distributed-inference-framework-for-scaling-reasoning-ai-models/
- Kubernetes GPU Scheduling: DRA, KAI, MIG (TechPlained). https://www.techplained.com/kubernetes-gpu-scheduling · Slurm-on-Kubernetes (NVIDIA). https://developer.nvidia.com/blog/running-large-scale-gpu-workloads-on-kubernetes-with-slurm/
- Quantization Techniques for AI Inference 2026: GGUF, AWQ, GPTQ, FP8 (Sesame Disk). https://sesamedisk.com/quantization-techniques-ai-inference-2026/
- OWASP Top 10 for LLM Applications 2025 (official). https://genai.owasp.org/llm-top-10/
- EU AI Act Implementation Timeline (official). https://artificialintelligenceact.eu/implementation-timeline/ · EU AI Act vs NIST AI RMF vs ISO/IEC 42001 (EC-Council). https://www.eccouncil.org/cybersecurity-exchange/responsible-ai-governance/eu-ai-act-nist-ai-rmf-and-iso-iec-42001-a-plain-english-comparison/
- AWS Certified ML Engineer – Associate. https://aws.amazon.com/certification/certified-machine-learning-engineer-associate/ · Google Cloud Professional ML Engineer. https://cloud.google.com/learn/certification/machine-learning-engineer · Databricks ML Associate. https://www.databricks.com/learn/certification/machine-learning-associate
- Grossmont College Applied AI AS/Certificate (catalog). https://catalog.gcccd.edu/grossmont/associate-degree-programs-certificates/stem/artificial-intelligence-as-cert-achievement/ · Grossmont launch news. https://www.gcccd.edu/news/articles/2025/2025-11-06-applied-ai-at-grossmont.php · Foothill College AI Certificate. https://catalog.foothill.edu/degrees-certificates/artificial-intelligence/ · Coastline AI for Cybersecurity AS. https://catalog.cccd.edu/coastline/pathways/computer-cyber-sciences/cybersecurity/ai-cybersecurity-as/
- De Anza College Applied AI degree. https://www.deanza.edu/news/2026/applied-artificial-intelligence-degree-fall-2026.html · GovTech coverage. https://www.govtech.com/education/higher-ed/de-anza-college-launches-associate-degree-in-applied-ai
- AI Infrastructure Engineer, Model Serving Platform (Scale AI). https://www.linkedin.com/jobs/view/ai-infrastructure-engineer-model-serving-platform-at-scale-ai-4196120822 (URL/salary to verify — §7) · AI Infrastructure Engineer (Hashlist). https://www.linkedin.com/jobs/view/ai-infrastructure-engineer-at-hashlist-4422814745 · CompTIA State of the Tech Workforce 2026. https://www.comptia.org/en-us/resources/research/state-of-the-tech-workforce-2026/ · LinkedIn Jobs on the Rise 2026. https://www.linkedin.com/pulse/linkedin-jobs-rise-2026-25-fastest-growing-roles-us-linkedin-news-dlb1c
- Best Vector Databases 2026 (Firecrawl). https://www.firecrawl.dev/blog/best-vector-databases · pgvector vs Pinecone vs Qdrant vs Weaviate (Kalvium). https://www.kalviumlabs.ai/blog/vector-databases-compared-pgvector-pinecone-qdrant-weaviate/
- AI Inference Cost Economics in 2026: GPU FinOps Playbook (Spheron). https://www.spheron.network/blog/ai-inference-cost-economics-2026/ (vendor source — treat figures as illustrative, §7) · FinOps for AI (Flexera). https://www.flexera.com/blog/finops/finops-for-ai-governing-the-unique-economics-of-intelligent-workloads/
- California Community Colleges Vision 2030 Artificial Intelligence Workplan, July 2025. https://www.cccco.edu/-/media/CCCCO-Website/docs/vision2030/artificial-intelligence-workplan.pdf · CCCCO AI initiative. https://ai.cccco.edu/
CCCCO Primary Sources — §2 (hand-verified 2026-07-02)
- [C1] Program and Course Approval Handbook (PCAH), 8th Edition (Nov 2019) — current edition; credit + noncredit components. https://www.cccco.edu/-/media/CCCCO-Website/docs/curriculum/program-course-approval-handbook-8th-edition.pdf
- [C2] CCCCO Curriculum & Instruction Unit (approval authority for 116 colleges). https://www.cccco.edu/About-Us/Chancellors-Office/Divisions/Educational-Services-and-Support/What-we-do/Curriculum-and-Instruction-Unit
- [C3] CCCCO Noncredit Curriculum & Instructional Programs — CDCP categories; Certificate of Completion vs Certificate of Competency; enhanced-funding rules. https://www.cccco.edu/About-Us/Chancellors-Office/Divisions/Educational-Services-and-Support/What-we-do/Curriculum-and-Instruction-Unit/Curriculum/Noncredit-Curriculum-and-Instructional-Programs
- [C4] ASCCC Noncredit Instruction / Adult Education Basics — Ed Code §84750.5 / §84760.5, Title 5 §55151, SB 860 (2014) credit-parity funding. https://www.asccc.org/sites/default/files/Noncredit_Instruction_Adult_Education_Basics.pdf
- [C5] Title 5 §55070 Credit Certificates (Cornell LII). https://www.law.cornell.edu/regulations/california/5-CCR-55070
- [C5a] CCCCO Final Revisions to Title 5 §55070 re Credit Certificates of Achievement (adopted 2025). https://www.cccco.edu/-/media/CCCCO-Website/docs/regulatory-action/final-reg-text-certificate-of-achievement-final-v2-4-25-a11y-002.pdf
- [C6] CCCCO Vision 2030: A Roadmap for California Community Colleges — mirrored credit/noncredit pathways; Credit for Prior Learning via the MAP (Mapping Articulated Pathways) Initiative. https://www.cccco.edu/About-Us/Vision-2030 · https://vision2030.cccco.edu/
---
Appendix: Compiled References
Reference List
A. CCCCO / Title 5 / Ed Code
- CCCCO Artificial Intelligence Workplan, July 2025
- CCCCO AI initiative overview
- California Community Colleges AI Consortium
B. ACCJC
- ACCJC 2024 Accreditation Standards (June 2025 edition, PDF)
- ACCJC Adopts 2024 Accreditation Standards
- ACCJC Substantive Change Manual, May 2026 Edition (PDF)
- ACCJC Policy on Substantive Change, January 2026 (PDF)
- ACCJC Policy on Distance Education and on Correspondence Education, June 2025 (PDF)
- ACCJC Eligibility Requirements for Accreditation, January 2024 (PDF)
C. EDD / LMI / BLS / Projections / COE
- California OEWS wage data CSV (EDD)
- California Long-Term Occupational Employment Projections 2024-2034 (EDD CSV)
- 2025 California Jobs Market Report (EDD, DE 864 Rev. 3 8-25)
- EDD Employment Projections page
- EDD OEWS Employment and Wage Statistics page
- Employment Projections - Labor Market Information - CA.gov
- EDD Labor Market Information Division - Home Page
- Centers of Excellence for Labor Market Research -- Collections
D. Industry Tools & Techniques
- Lightcast: The Generative AI Job Market: 2025 Data Insights
- Lightcast: Beyond the Buzz -- AI Skills Command 28% Salary Premium
- The best AI agent frameworks (LangChain)
- Best AI Agent Frameworks 2025: LangGraph, CrewAI, OpenAI, LlamaIndex, AutoGen (Maxim AI)
- Best Multi-Agent Frameworks 2026: LangGraph, CrewAI, OpenAI SDK
- Donating the Model Context Protocol and establishing the Agentic AI Foundation (Anthropic)
- Linux Foundation Announces the Formation of the Agentic AI Foundation
- Best LLM Observability Tools (Firecrawl)
- Top 5 LLM and Agent Observability Tools (MLflow)
- Best AI Agent Observability Tools 2026 (Latitude)
- Comparing the Top 6 Inference Runtimes for LLM Serving in 2025 (MarkTechPost)
- vLLM vs TensorRT-LLM vs HF TGI vs LMDeploy — Technical Comparison (MarkTechPost)
- Introducing NVIDIA Dynamo, a Low-Latency Distributed Inference Framework (NVIDIA)
- Kubernetes GPU Scheduling: DRA, KAI, MIG (TechPlained)
- Running Large-Scale GPU Workloads on Kubernetes with Slurm (NVIDIA)
- SkyPilot (GitHub)
- LLM Fine-Tuning Guide: LoRA, QLoRA, DPO, GRPO, RLHF (Future AGI)
- The ML Practitioner's Guide to Fine-Tuning Language Models (MachineLearningMastery)
- Quantization Techniques for AI Inference 2026: GGUF, AWQ, GPTQ, FP8 (Sesame Disk)
- LLM Quantization: GPTQ, AWQ, and GGUF for Efficient Deployment (Calmops)
- RAG in Production 2026: GraphRAG, Hybrid Retrieval, and Evals
- Top 5 Reranking Models to Improve RAG Results (MachineLearningMastery)
- RAG Techniques Compared: Best Practices Guide (Starmorph)
- OWASP Top 10 for LLM Applications 2025 (official)
- LLM Guardrails: Production Safety Layers Reference 2026 (Digital Applied)
- LLM Guardrails: Best Practices (Datadog)
- EU AI Act Implementation Timeline (official EU AI Act portal)
- EU AI Act vs NIST AI RMF vs ISO/IEC 42001: A Plain English Comparison (EC-Council)
- ISO/IEC 42001 and EU AI Act: A Practical Pairing (ISACA)
- Best Vector Databases 2026: A Complete Comparison Guide (Firecrawl)
- pgvector vs Pinecone vs Qdrant vs Weaviate (2026): Which We Use in Production (Kalvium)
- AI Inference Cost Economics in 2026: GPU FinOps Playbook (Spheron)
- FinOps for AI: Governing the Unique Economics of Intelligent Workloads (Flexera)
E. Peer Programs & Job Market
- De Anza College Launches Silicon Valley's First Associate Degree in Applied Artificial Intelligence
- Silicon Valley to get its first two-year degree focused on AI – The Press Democrat
- De Anza College Launches Associate Degree in Applied AI
- Applied Artificial Intelligence Associate in Science and Certificate of Achievement | Grossmont-Cuyamaca CCD Catalog
- Grossmont College launches first of its kind, Applied Artificial Intelligence Associate Science degree
- Artificial Intelligence - Academic Catalog - Foothill College
- AI for Cybersecurity, Associate of Science Degree < Coastline College
- Press Release: Coastline College's AI for Cybersecurity Program Earns NSA Validation Through 2030
- Chaffey College to Launch Four New Computer Technology Programs
- BC Offering Free Media Literacy Certificate Program
- Associate in Science in Artificial Intelligence - Academic Map | MiraCosta
- Artificial Intelligence and Machine Learning Suite | MiraCosta College in partnership with ed2go
- Introduction to Artificial Intelligence | Saddleback College
- AI - Bay Area Community College Consortium
- AIDA - Bay Area Community College Consortium
- AI Infrastructure Engineer, Model Serving Platform | Scale AI
- AI Infrastructure Engineer at Hashlist (San Francisco, CA)
- State of the Tech Workforce 2026 | CompTIA Research
- Key employment metrics, market insights and the impact of AI revealed in CompTIA State of Tech Workforce 2026 report
- LinkedIn Jobs on the Rise 2026: The 25 fastest-growing roles in the U.S.
- AWS Certified Machine Learning Engineer – Associate
- Professional ML Engineer Certification | Google Cloud
- Databricks Certified Machine Learning Associate