ML-ASSOC Study Plan (30 / 60 / 90 Days)

A practical ML-ASSOC study plan you can follow: 30-day intensive, 60-day balanced, and 90-day part-time schedules with weekly focus, suggested hours/week, and MLflow-first practice tips.

This page answers the question most candidates actually have: “How do I structure my ML‑ASSOC prep?”
ML‑ASSOC is platform-focused: learn the workflow and make MLflow instincts automatic.

Use the plan that matches your available time, then follow the loop: Syllabus → drills → review misses → mixed sets → timed runs.


How long should you study?

Your starting point Typical total study time Best-fit timeline
You use MLflow and build models on Databricks already 25–40 hours 30–60 days
You know ML but are newer to Databricks/MLflow 40–70 hours 60–90 days
You’re new to ML workflows 70–100+ hours 90 days

30-Day Intensive Plan

Target pace: ~8–10 hours/week.

Week Focus What to do Links
1 Data prep + features Feature engineering on Spark, leakage awareness, splitting strategy. Daily drills + miss log. SyllabusCheatsheet
2 Training + evaluation Metrics selection, CV/tuning awareness, interpreting results. Mixed sets mid-week. CheatsheetPractice
3 MLflow tracking Runs, params/metrics/artifacts, comparing runs, reproducibility. Make “what to log” automatic. SyllabusPractice
4 Model lifecycle Registry, versioning, stage transitions, deployment concepts. Finish with timed mixed runs. PracticeFAQ

60-Day Balanced Plan

Weeks Focus
1–2 Data prep + features
3–4 Training + evaluation
5–6 MLflow tracking + reproducibility
7–8 Registry + deployment concepts + timed runs

90-Day Part-Time Plan

Month Focus
1 Data prep and evaluation foundations
2 MLflow tracking and experiment management
3 Registry + deployment concepts + mixed practice

Practice loop (high ROI)

  • Keep a miss log and convert repeated mistakes into 1‑sentence rules.
  • Prefer answers that improve reproducibility (tracked runs, logged artifacts, versioned models).
  • Re-drill weak sections within 24–48 hours.