7 tips for rationalizing your application portfolio
A strong application portfolio is an essential IT resource. Ensuring that the portfolio is ready to meet enterprise operational and financial needs is essential to long-term business success. Unfortunately, applications tend to accumulate over time, leading to bloat that creates confusion, undermines efficiency, and introduces risk to the organization . Application rationalization streamlines an existing application portfolio to improve efficiency, reduce complexity, make room for innovation, and lower the total cost of ownership (TCO) through a specific set of processes. Application rationalization is a daunting task for any CIO. Here are seven tips that can make the process faster and easier. Be methodical and make use of metadata “Application management is periodically necessary to redu
Could not retrieve the full article text.
Read on CIO Magazine →CIO Magazine
https://www.cio.com/article/4143432/7-tips-for-rationalizing-your-application-portfolio.htmlSign in to highlight and annotate this article

Conversation starters
Daily AI Digest
Get the top 5 AI stories delivered to your inbox every morning.
More about
updateproductapplicationb8640
tests : add unit test coverage for llama_tensor_get_type ( #20112 ) Add unit test coverage for llama_tensor_get_type Fix merge conflicts, add more schemas clang formatter changes Trailing whitespace Update name Start rebase Updating files with upstream changes prior to rebase Changes needed from rebase Update attn_qkv schema, change throw behaviour Fix merge conflicts White space Update with latest changes to state counters Revert accidental personal CLAUDE.md changes Change quotation mark Reuse metadata.name since we have it Move test-only stuff out of llama-quant.cpp Hide the regex functionality back in llama-quant.cpp, use a unique pointer to a new struct 'compiled_tensor_type_patterns' which contains the patterns cont : inital deslop guidelines Cleanup based on review comments Continue

Microsoft s MAI-Transcribe-1 runs 2.5x faster than its predecessor at $0.36 per audio hour
MAI-Transcribe-1 converts speech to text quickly and accurately in 25 languages, even with background noise. Microsoft is already using the model in its own products. The article Microsoft s MAI-Transcribe-1 runs 2.5x faster than its predecessor at $0.36 per audio hour appeared first on The Decoder .
Knowledge Map
Connected Articles — Knowledge Graph
This article is connected to other articles through shared AI topics and tags.
More in Products

Microsoft s MAI-Transcribe-1 runs 2.5x faster than its predecessor at $0.36 per audio hour
MAI-Transcribe-1 converts speech to text quickly and accurately in 25 languages, even with background noise. Microsoft is already using the model in its own products. The article Microsoft s MAI-Transcribe-1 runs 2.5x faster than its predecessor at $0.36 per audio hour appeared first on The Decoder .

Sakana AI launches "Ultra Deep Research" to automate weeks of strategy work
Sakana AI has unveiled "Sakana Marlin," an AI assistant for business customers that researches autonomously for up to eight hours and delivers finished analyses. The tool is designed to compress weeks of strategy work into hours and is currently in beta testing. The article Sakana AI launches "Ultra Deep Research" to automate weeks of strategy work appeared first on The Decoder .

Even Microsoft knows Copilot shouldn't be trusted with anything important
Terms admit it is for entertainment only and may get things wrong A recent surge of interest in Microsoft's Terms of Use for Copilot is a reminder that AI helpers are really just a bit of fun.…



Discussion
Sign in to join the discussion
No comments yet — be the first to share your thoughts!