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  • Discuss R&D projects.

  • Discuss allocation and make issue tracker tasks for prototype work.

  • Discuss milestones, deadlines.

  • Generate list of priorities for what we want our solution to achieve

Discussion items

All
TimeItemWhoNotes
Priorities (what problems are we solving?)All
    • Speed: speed is a feature. Predictably say how long some ingest will take.
    • Allowing recovery from failure; pick up where it left off.  Speed affects this; if it's fast enough you don't have to worry about it. Otherwise, make sure there's recovery. Harvesters should allow recovery, where possible. Indexers could also be less speedy than mappings and enrichments, and may deserve recovery features.
    • Adding automation that was originally specified: have a program that shepherds the process all the way through. Scheduling.
    • Eventually, provide a useable mapping DSL
      • Needs real market research
      • This is not a turnkey solution yet. Some things like DSLs will be evaluated later when we can more confident in understanding how big the user base is.
      • Writing mappings ourselves in the third system without a DSL will allow us to understand the problem space better.
    • Ability to debug things, especially mappings
Code examples

Michael et. al.

Got walkthroughs of the Python, Python + Spark, Java, and Scala prototypes

Considerations for language environments:

  • Staff allocation for necessary professional development
  • Mental "context switching" with multiple environments
Scheduling system
  • Server cost, if having to run more servers (consider execution speed memory usage if able to run on just one node, e.g.)
  • Performance
  • Ease of use for novice / non-programmer
  • Ease of writing a DSL in it
  • Ability to be explicit in code (e.g. types). Fewer inferences, LESS MAGIC!
  • Ease of deployment. (local, production, dependencies)
  • How easy for other institutions to adopt our code or experiment with it.
  • Developer enjoyment

What scale will we be working in for the foreseeable future?

  • Ingestion total or by provider?
  • Extra pressure b/c we want to reinvest more frequently - that could mean 10 million records per month
  • Targets for 12-24 months (these are just proposals)
    • 200 million records stored
    • 15 million records per month
  • CDL is today’s edge case but it is not a future-proof case
  • LOC is ready to open the floodgates - maybe 20 million every couple months - 5,000 is only a test case
  • NARA - 3.8 million

Priorities

  • Writing harvests, mappings, and enrichments in a scalable system
  • We can grow into decisions about how to scale
Scheduling system

Scheduling / operation chaining / "Plans" in the Prov-O sense

  • Need metrics for what qualifies job failure. (Partly thought out)
  • Need to get together and assess our experiences running ingests.
  • If we automate things, we need to know how to define success.
  • Tools exist that can help with this.
  • Need to schedule a period after basic manual ingest running is figured out, but need to design for there being a scheduling facility. Per "General consensus" section below, we will design programs for each activity in the ingest process that have their concerns passed to them. They will not know anything about the scheduling system that calls them. They will not be bound to them with database models. They will save manifests that document the results of their operations.
Roadmapping all of thisAll

Harvester development - At the end of next week (after language selection) we should vote to select which class of harvester we want to prototype

  •  ResourceSync (harvesting DPLA's sitemap)
  • API
    • NARA
    • CDL
  • OAI-PMH
    • WI
    • Digital Commonwealth



General consensus on the project's design philosophy is to follow these principles:

Sequence files

  • Seems preferable to have a record i/o abstraction that allows either single files or sequence files

Action items

  •