Skip to main content

Caching mindful of computation/storage costs

Project description

Caching for Analytic Computations

Humans repeat stuff. Caching helps.

Normal caching policies like LRU aren't well suited for analytic computations where both the cost of recomputation and the cost of storage routinely vary by one million or more. Consider the following computations

# Want this
np.std(x)        # tiny result, costly to recompute

# Don't want this
np.transpose(x)  # huge result, cheap to recompute

Cachey tries to hold on to values that have the following characteristics

  1. Expensive to recompute (in seconds)
  2. Cheap to store (in bytes)
  3. Frequently used
  4. Recenty used

It accomplishes this by adding the following to each items score on each access

score += compute_time / num_bytes * (1 + eps) ** tick_time

For some small value of epsilon (which determines the memory halflife.) This has units of inverse bandwidth, has exponential decay of old results and roughly linear amplification of repeated results.

Example

>>> from cachey import Cache
>>> c = Cache(1e9, 1)  # 1 GB, cut off anything with cost 1 or less

>>> c.put('x', 'some value', cost=3)
>>> c.put('y', 'other value', cost=2)

>>> c.get('x')
'some value'

This also has a memoize method

>>> memo_f = c.memoize(f)

Status

Cachey is new and not robust.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

cachey-0.2.1.tar.gz (6.5 kB view hashes)

Uploaded Source

Built Distribution

cachey-0.2.1-py3-none-any.whl (6.4 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page