新技能画画
Clyde Jin
2020-07-26
28

age:86 估算战力 372.66k 资产 2.55b NNB 20 XAN 249 LSD 0 ECS 47 SE 0 Refill 74 DefWon 6

“strength”: “92117.3321”, “speed”: “75640.6972”, “dexterity”: “91076.2132”, “defense”: “91170.6197”, “total”: “350004.8622”,

“manual_labor”: 2823, “intelligence”: 3500, “endurance”: 2705

存款100m+了 飞两三天卖一次, 能赚个10多m 今天获取了一个新技能,画画 用AE做特效, 下了些模板 今天学了一个, 给自己做了个只有两行动态字的头像gif 给木鱼大佬的老虎加了两行字,不知道大佬会不会用这个头像 给下线也做了简单的, 给陈教授也发了个gif,周末,估计在忙,没有回应。 近40的人了,学会了新技能, 给自己点赞, 接下去这个月,在b站多看看教程 好好掌握这门技能, 给群友们做简单的ps。

https://nga.178.com/read.php?&tid=20217469&pid=427792592&to=1

Star
Donate
儿童节
Previous
赌神发红包,扔东西做章
Next
Clyde Jin
280 Articles
0 Comments
0 Like
Recent Posts

HiddenMerit Daily · Issue 40

📊 HiddenMerit Daily · Issue 40 Focus on Database Frontiers, Practical Insights for DBAs June 10, 2026 | 5 Selected Global Breaking News 01|Alibaba Cloud Launches MongoDB 8.3 Domestically: Three AI‑Native Capabilities, Saying Goodbye to “Add‑On” AI In early June, Alibaba Cloud became the first in China to launch MongoDB 8.3. This version deeply integrates three major AI capabilities – vector search, auto‑embedding, and intelligent O&M – into the database engine, introducing an “AI‑Native” design philosophy – not “add‑on” AI support, but letting AI capabilities natively “grow” inside the database engine, achieving native search, native vectorisation, and native O&M. The Three AI‑Native Capabilities: Native Search: Vector and full‑text search are built into the engine layer; a single pipeline completes hybrid search combining “vector + full‑text + scalar,” with $rankFusion stage using the RRF algorithm for score fusion, eliminating the need for applications to switch between multiple systems. Native Vectorisation: Write‑time auto‑embedding, transparent to applications, zero sync overhead; the engine layer automatically listens for data changes via Change Stream, calls models to generate vectors, writes back to documents, and triggers index updates. Native O&M: Natural language management, AI‑assisted slow query analysis, index recommendations, and parameter tuning, covering all versions; this capability […]

HiddenMerit Daily · Issue 39

📊 HiddenMerit Daily · Issue 39 Focus on Database Frontiers, Practical Insights for DBAs June 9, 2026 | 5 Selected Global Breaking News 01|MongoDB 8.3 “AI‑Native” Launches Domestically, Alibaba Cloud Fires First Shot in AI Database Race In early June, Alibaba Cloud became the first in China to launch MongoDB 8.3. MongoDB 8.3 introduces an “AI‑Native” design philosophy – not “add‑on” AI support, but deep integration of three major capabilities – vector search, auto‑embedding, and intelligent O&M – directly into the database engine, achieving a trinity of “native search, native vectorisation, native O&M.” The three native AI capabilities in detail: Native Search: Vector and full‑text search are built into the engine layer; a single pipeline completes hybrid search combining “vector + full‑text + scalar” (with $rankFusion stage using the RRF algorithm for score fusion), eliminating the need for applications to switch between multiple systems. Native Vectorisation: Write‑time auto‑embedding, transparent to applications, zero sync overhead; the engine layer automatically listens for data changes via Change Stream, calls models to generate vectors, writes back to documents, and triggers index updates. Native O&M: Natural language management, AI‑assisted slow query analysis, index recommendations, and parameter tuning, covering all versions; this capability covers all versions […]

HiddenMerit Daily · Issue 38

📊 HiddenMerit Daily · Issue 38 Focus on Database Frontiers, Practical Insights for DBAs June 8, 2026 | 5 Selected Global Breaking News 01|Alibaba Cloud Launches MongoDB 8.3 Domestically: Three “Native” Capabilities for Vector Search, Auto‑Embedding, and Intelligent O&M On June 1, Alibaba Cloud became the first in China to launch MongoDB 8.3. This version deeply integrates three major AI capabilities – vector search, auto‑embedding, and intelligent O&M – directly into the database engine, moving away from “add‑on” AI solutions and achieving an AI‑Native design philosophy of “no data movement, no capability assembly, simplified architecture.” Three Native AI Capabilities: Native Search: Vector and full‑text search are built into the engine layer; a single pipeline completes hybrid search combining “vector + full‑text + scalar,” eliminating the need for applications to switch between multiple systems. Native Vectorisation: Write‑time auto‑embedding, transparent to applications, zero sync overhead; the entire flow from data write to vector generation is completed within the same database. Native O&M: Natural language management; AI‑assisted slow query analysis, index recommendations, and parameter tuning, covering all versions. MongoDB 8.3 also delivers impressive OLTP performance: compared to version 8.0, write throughput increases by 35%, read throughput by 45%, and ACID transaction throughput by […]

HiddenMerit Daily · Issue 37

📊 HiddenMerit Daily · Issue 37 Focus on Database Frontiers, Practical Insights for DBAs June 5, 2026 | 5 Selected Global Breaking News 01|Microsoft Azure HorizonDB Launches Public Preview: A PostgreSQL Rebuilt for AI Agents, Storage Engine Rewritten in Rust On June 2, at the Build 2026 conference keynote, Microsoft officially announced that Azure HorizonDB has entered public preview. This is a PostgreSQL‑compatible cloud database rebuilt from the ground up for agentic AI workloads, now available in 5 Azure regions globally. HorizonDB is not a simple upgrade to Azure Database for PostgreSQL, but a completely new architectural design. Key technical points: “Database‑as‑a‑log” architecture: Transactions are committed directly to a shared WAL (Write‑Ahead Log) storage, achieving sub‑millisecond multi‑region commit latency and eliminating the multi‑step coordination overhead of traditional PostgreSQL. Rust storage engine: Microsoft explicitly chose Rust over C/C++ to eliminate memory safety vulnerabilities such as buffer overflows at the language level. This design is highly significant for unattended AI agent high‑frequency query scenarios. Storage‑compute separation: Storage automatically scales to 128TB, compute can scale to 3072 vCores, and supports up to 15 read replicas. DiskANN vector search: Natively embedded vector search capability, supporting vectors of up to 16,000 dimensions (far exceeding pgvector’s […]
生成中...
扫描二维码
扫描二维码