Grant Analysis Report

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Detailed Analysis

Overall
65
C
SEO
70
25%
Performance
65
25%
Mobile
75
15%
Security
80
20%
seo
70
performance
65
mobile
75
security
80

SEO Analysis

Title Tag

Length: 31 characters (Optimal: 40-60)

Meta Description

Length: 160 characters (Optimal: 120-160)

H1 Headings

Found: 1 H1 tag

Heading Hierarchy

H1: 1, H2: 4, H3: 1

PageSpeed Insights (Placeholder)

Desktop Score 90
Mobile Score 70

* Placeholder data. Integrate PageSpeed Insights API for real metrics.

Meta Tags Analysis

Tag Status Details
TitleGood31 chars
DescriptionGood160 chars
H1Present1 found
H2-H6Present6 headings

Image Analysis

Alt Tags
Missing: 0 / Total: 1
File Sizes
Optimized: Yes
WebP Usage
Enabled
Lazy Loading
Implemented

Link Analysis

5
Total Links
5
Internal
4
External
0
Broken
Note: Broken link checking requires external API integration

Mobile-Friendliness

Viewport Set

Width=device-width, initial-scale=1

Mobile Friendly

Page passes mobile-friendly test

Tap Targets

Adequate spacing between links

Font Size

Readable without zooming

SSL/TLS Certificate

Status
Valid
Issuer
Let's Encrypt
Grade
A+

Security Headers

Header Status Grade
HSTSPresentA
CSPPresentA
X-Frame-OptionsPresentA
X-Content-TypePresentA
Referrer-PolicyPresentA
Permissions-PolicyMissingC

Technology Stack

CMS/Framework
Symfony
Server
Nginx
PHP Version
8.3
Database
PostgreSQL

DNS Records (Placeholder)

A Record
172.16.0.1
MX
mail.example.com
NS
ns1.example.com

* DNS data requires external API integration

WHOIS Data (Placeholder)

Registrar
Example Registrar
Registration Date
2020-01-01
Expiry Date
2027-01-01
Days Until Expiry
349

* WHOIS data requires external API integration

Core Web Vitals

LCP
3081ms
Needs Improvement
FID/INP
125ms
Good
CLS
0.000
Good
FCP
1214ms
Good

* Placeholder values. Integrate PageSpeed Insights API for real Core Web Vitals data.

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Open · 165 days left D U.S. National Science Foundation

Human Networks and Data Science

Funding
$8.0M
Award Range
$10,000 – $1.2M
Expected Awards
25
Deadline
--
Days
--
Hrs
--
Min
--
Sec
Aug 06, 2026
Posted May 20, 2023 (1008 days ago)
Closes Aug 6, 2026 (in 165 days)

Grant Details

Opportunity Number
23-568
CFDA / ALN
47.075
Opportunity Category
Discretionary (D)
Funding Category
Science and Technology (ST)
Funding Instrument
Grant (G)
Cost Sharing
No Cost Sharing (No)

Eligibility

Unrestricted (99)

Description

The Human Networks and Data Science program (HNDS) supports research that enhances understanding of human behavior by leveraging data and network science research across a broad range of topics. HNDS research will identify ways in which dynamic, distributed, or heterogeneous data can provide novel answers to fundamental questions about individual or group behavior. HNDS is especially interested in proposals that provide data-rich insights about human networks to support improved health, prosperity, and security. HNDS has two tracks: (1) Human Networks and Data Science – Infrastructure (HNDS-I). Infrastructure proposals will address the development of data resources and relevant analytic techniques that support fundamental Social, Behavioral and Economic (SBE) research. Successful infrastructure proposals will construct, within the financial resources provided by the award, databases or relevant analytic techniques and produce a finished product that will enable previously impossible data-intensive research in the social sciences. The databases or techniques should have significant impacts, either across multiple fields or within broad disciplinary areas, by making possible new types of data-intensive research in the SBE sciences. (2) Human Networks and Data Science – Core Research (HNDS-R). Core research proposals will advance theory in a core SBE discipline by the application of data and network science methods. This includes the leveraging of large data sets with diverse spatio-temporal scales of measurement and linked qualitative and quantitative approaches, as well as multi-scale, multi-level network data and techniques of network analysis. Supported projects are expected to yield results that will enhance, expand, and transform theory and methods, and that generate novel understandings of human behavior – particularly understandings that can lead to significant societal benefits or opportunities. HNDS-R encourages core research proposals that make innovative use of NSF-supported data networks, databases, centers and other forms of scientific infrastructure including those developed by HNDS-I (formerly RIDIR) projects.
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